[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"summary-b49e70319fe290f5-optimizing-rag-retrieval-with-hierarchical-search-summary":3,"summaries-facets-categories":97,"summary-related-b49e70319fe290f5-optimizing-rag-retrieval-with-hierarchical-search-summary":5671},{"id":4,"title":5,"ai":6,"body":13,"categories":66,"created_at":68,"date_modified":68,"description":60,"extension":69,"faq":68,"featured":70,"kicker_label":68,"meta":71,"navigation":78,"path":79,"published_at":80,"question":68,"scraped_at":81,"seo":82,"sitemap":83,"source_id":84,"source_name":85,"source_type":86,"source_url":87,"stem":88,"tags":89,"thumbnail_url":68,"tldr":94,"tweet":68,"unknown_tags":95,"__hash__":96},"summaries\u002Fsummaries\u002Fb49e70319fe290f5-optimizing-rag-retrieval-with-hierarchical-search-summary.md","Optimizing RAG Retrieval with Hierarchical Search",{"provider":7,"model":8,"input_tokens":9,"output_tokens":10,"processing_time_ms":11,"cost_usd":12},"openrouter","google\u002Fgemini-3.1-flash-lite",3990,504,2915,0.0017535,{"type":14,"value":15,"toc":59},"minimark",[16,21,25,29,32,49,52,56],[17,18,20],"h2",{"id":19},"the-inefficiency-of-flat-retrieval","The Inefficiency of Flat Retrieval",[22,23,24],"p",{},"Standard Retrieval-Augmented Generation (RAG) typically employs a \"flat\" retrieval strategy, where every chunk in a corpus is treated as an independent entity. In a system with 100 documents and 20 chunks per document, a single query forces the system to perform 2,000 similarity computations. This approach is not only computationally expensive but often degrades precision, as the system may retrieve irrelevant chunks from documents that are only tangentially related to the user's intent.",[17,26,28],{"id":27},"the-hierarchical-advantage","The Hierarchical Advantage",[22,30,31],{},"Hierarchical RAG optimizes this process by introducing a two-stage architecture that mimics how a human might search a library: first identifying the relevant books, then searching within those specific volumes.",[33,34,35,43],"ol",{},[36,37,38,42],"li",{},[39,40,41],"strong",{},"Stage 1 (Document Filtering):"," The system searches a collection of document-level summaries rather than raw chunks. This drastically reduces the search space.",[36,44,45,48],{},[39,46,47],{},"Stage 2 (Targeted Chunk Retrieval):"," Once the most relevant documents are identified, the system performs a similarity search only within the chunks belonging to those specific documents.",[22,50,51],{},"This architecture provides a significant performance boost. In the author's benchmark, this method reduced the number of similarity computations from 2,000 to approximately 60—a 33x reduction in computational overhead.",[17,53,55],{"id":54},"trade-offs-and-considerations","Trade-offs and Considerations",[22,57,58],{},"While hierarchical retrieval offers higher precision and lower latency, it introduces a dependency on the quality of the initial document-level retrieval. If the first stage fails to identify the correct document, the system will never find the relevant information, regardless of how accurate the second stage is. Therefore, builders must implement monitoring for \"stage-1 misses\" to ensure the system maintains high recall. By narrowing the search scope, the system effectively filters out noise that would otherwise clutter the context window, leading to more accurate and relevant LLM responses.",{"title":60,"searchDepth":61,"depth":61,"links":62},"",2,[63,64,65],{"id":19,"depth":61,"text":20},{"id":27,"depth":61,"text":28},{"id":54,"depth":61,"text":55},[67],"AI & LLMs",null,"md",false,{"content_references":72,"triage":73},[],{"relevance":74,"novelty":75,"quality":75,"actionability":75,"composite":76,"reasoning":77},5,4,4.35,"Category: AI & LLMs. The article provides a detailed exploration of optimizing RAG retrieval, addressing a specific pain point for AI developers regarding computational efficiency and precision in AI-powered products. It presents a novel hierarchical approach that significantly reduces computational overhead, making it actionable for developers looking to implement this strategy.",true,"\u002Fsummaries\u002Fb49e70319fe290f5-optimizing-rag-retrieval-with-hierarchical-search-summary","2026-06-29 19:47:39","2026-06-30 12:57:04",{"title":5,"description":60},{"loc":79},"b49e70319fe290f5","Level Up Coding","article","https:\u002F\u002Flevelup.gitconnected.com\u002Fhierarchical-rag-document-summaries-to-chunk-retrieval-dc2a1dd62d7f?source=rss----5517fd7b58a6---4","summaries\u002Fb49e70319fe290f5-optimizing-rag-retrieval-with-hierarchical-search-summary",[90,91,92,93],"llm","ai-tools","python","rag","Hierarchical RAG improves precision and reduces computational costs by replacing flat, corpus-wide similarity searches with a two-stage process: document-level filtering followed by targeted chunk retrieval.",[93],"9W3P9r2A8eHavAWLYrGRq3dTi3loFa8MACN3AunCHOs",[98,101,104,106,109,112,114,116,119,121,123,125,127,130,132,134,136,138,141,143,145,147,149,151,153,155,157,159,161,163,165,167,169,171,173,175,178,181,183,185,187,189,191,193,195,197,199,201,204,206,208,210,212,214,216,218,220,222,224,226,228,230,232,235,237,239,241,243,245,247,249,251,253,255,257,259,262,264,266,268,270,272,274,276,278,280,282,284,286,288,290,292,294,296,298,300,302,304,306,308,310,312,314,316,318,321,323,325,327,329,331,333,335,337,339,342,344,346,348,350,352,354,356,358,360,362,364,367,369,371,373,375,377,379,381,384,386,388,390,392,394,396,398,400,402,404,406,408,410,412,414,416,418,420,422,424,426,428,430,433,435,437,440,442,444,446,448,450,452,454,456,458,460,462,464,466,469,471,473,475,477,479,481,483,485,488,490,492,494,496,498,500,502,504,506,508,510,512,514,516,518,520,522,524,526,528,530,532,534,536,538,540,542,544,546,548,550,552,554,556,558,560,562,564,566,568,570,572,574,576,578,580,582,584,586,588,590,592,594,596,598,600,602,604,606,608,610,612,614,616,618,620,622,624,626,628,630,632,634,636,638,640,642,644,646,648,650,652,654,656,658,660,662,664,666,668,670,672,674,676,678,680,682,684,686,688,690,692,694,696,698,700,702,704,706,708,710,712,714,716,718,720,722,724,727,729,731,733,736,738,740,742,744,746,748,750,752,754,757,759,761,763,765,767,769,771,773,775,777,779,781,783,785,787,789,791,793,795,797,799,801,803,805,807,809,811,813,815,817,819,821,823,825,827,829,831,833,835,837,839,841,843,845,847,849,851,853,855,857,859,861,863,865,867,869,871,873,875,877,879,881,883,885,887,889,891,893,895,897,899,901,903,905,907,909,911,913,915,917,919,921,923,925,927,929,931,933,935,937,939,941,943,945,947,949,951,953,955,957,959,961,963,965,967,969,971,973,975,977,979,981,983,985,987,989,991,993,995,997,999,1001,1003,1006,1008,1010,1012,1014,1016,1018,1020,1022,1024,1026,1028,1030,1032,1034,1036,1038,1040,1042,1044,1046,1048,1050,1052,1054,1056,1058,1060,1062,1064,1066,1068,1070,1072,1074,1076,1078,1080,1082,1084,1086,1088,1090,1092,1094,1096,1098,1100,1102,1104,1106,1108,1110,1112,1114,1116,1118,1120,1122,1124,1126,1128,1130,1132,1134,1136,1138,1140,1142,1144,1146,1148,1150,1152,1154,1156,1158,1160,1163,1165,1167,1169,1171,1173,1175,1177,1179,1181,1183,1185,1187,1189,1191,1193,1195,1197,1199,1201,1203,1205,1207,1209,1211,1213,1215,1217,1219,1221,1223,1225,1227,1229,1231,1233,1235,1237,1239,1241,1243,1245,1247,1249,1251,1253,1255,1257,1259,1261,1263,1265,1267,1269,1271,1273,1276,1278,1280,1282,1284,1286,1288,1290,1292,1294,1296,1298,1300,1302,1304,1306,1308,1310,1312,1314,1316,1318,1320,1322,1324,1326,1328,1330,1332,1334,1336,1338,1340,1342,1344,1346,1348,1350,1352,1354,1356,1358,1360,1362,1364,1366,1368,1370,1372,1374,1376,1378,1380,1382,1384,1386,1388,1390,1392,1394,1396,1398,1401,1403,1405,1407,1409,1411,1413,1415,1417,1419,1421,1423,1425,1427,1429,1431,1433,1435,1437,1439,1441,1443,1445,1447,1449,1452,1454,1456,1458,1460,1462,1464,1466,1468,1470,1472,1474,1476,1478,1480,1482,1484,1486,1488,1490,1492,1494,1496,1498,1500,1502,1504,1506,1508,1510,1512,1514,1516,1518,1520,1522,1524,1526,1528,1530,1532,1534,1536,1538,1540,1542,1544,1546,1548,1550,1552,1554,1556,1558,1560,1562,1564,1566,1568,1570,1572,1574,1576,1578,1580,1582,1584,1586,1588,1590,1592,1594,1596,1598,1600,1602,1604,1606,1608,1610,1612,1614,1616,1618,1620,1622,1624,1626,1628,1630,1632,1634,1636,1638,1640,1642,1644,1646,1648,1650,1652,1654,1656,1658,1660,1662,1664,1666,1668,1670,1672,1674,1676,1678,1680,1682,1684,1686,1688,1690,1692,1694,1696,1698,1700,1702,1704,1706,1708,1710,1712,1714,1716,1718,1720,1722,1724,1726,1728,1730,1732,1734,1736,1738,1740,1742,1744,1746,1748,1750,1752,1754,1756,1758,1760,1762,1764,1766,1768,1770,1772,1774,1776,1778,1780,1782,1784,1786,1788,1790,1792,1794,1796,1799,1801,1803,1805,1807,1809,1811,1813,1815,1817,1819,1821,1823,1825,1827,1829,1831,1833,1835,1837,1839,1841,1843,1845,1847,1849,1851,1853,1855,1857,1859,1861,1863,1865,1867,1869,1871,1874,1876,1878,1880,1882,1884,1886,1888,1890,1892,1894,1896,1898,1900,1902,1904,1906,1908,1910,1912,1914,1916,1918,1920,1922,1924,1926,1928,1930,1932,1934,1936,1938,1940,1942,1944,1946,1948,1950,1952,1954,1956,1958,1960,1962,1964,1966,1968,1970,1973,1975,1977,1979,1981,1983,1985,1987,1989,1991,1993,1995,1997,1999,2001,2003,2005,2007,2010,2012,2014,2016,2018,2020,2022,2024,2026,2028,2030,2032,2034,2036,2038,2040,2042,2044,2046,2048,2050,2052,2054,2056,2058,2060,2062,2064,2066,2068,2070,2072,2074,2076,2078,2080,2082,2084,2086,2088,2090,2092,2094,2096,2098,2100,2102,2104,2106,2108,2110,2112,2114,2116,2118,2120,2122,2124,2126,2128,2130,2132,2134,2136,2138,2140,2142,2144,2146,2148,2150,2152,2154,2156,2158,2160,2162,2164,2166,2168,2170,2172,2174,2176,2178,2180,2182,2184,2186,2188,2190,2192,2194,2196,2198,2200,2202,2204,2206,2208,2210,2212,2214,2216,2218,2220,2222,2224,2226,2228,2230,2232,2234,2236,2238,2240,2242,2244,2246,2248,2250,2252,2254,2256,2258,2260,2262,2264,2266,2268,2270,2272,2274,2276,2278,2280,2282,2284,2286,2288,2290,2292,2294,2296,2298,2300,2302,2304,2306,2308,2310,2312,2314,2316,2318,2320,2322,2324,2326,2328,2330,2332,2334,2336,2338,2340,2342,2344,2346,2348,2350,2352,2354,2356,2358,2360,2362,2364,2366,2368,2370,2372,2374,2376,2378,2380,2382,2384,2386,2388,2390,2392,2394,2396,2398,2400,2402,2404,2406,2408,2410,2412,2414,2416,2418,2420,2422,2424,2426,2428,2430,2432,2434,2436,2438,2440,2442,2444,2446,2448,2450,2452,2454,2456,2458,2460,2462,2464,2466,2468,2470,2472,2474,2476,2478,2480,2482,2484,2486,2488,2490,2492,2494,2496,2498,2500,2502,2504,2506,2508,2510,2512,2514,2516,2518,2520,2522,2524,2526,2528,2531,2533,2535,2537,2539,2541,2543,2545,2547,2549,2551,2553,2555,2557,2559,2561,2563,2565,2567,2569,2571,2573,2575,2577,2579,2581,2583,2585,2587,2589,2591,2593,2595,2597,2599,2601,2603,2605,2607,2609,2611,2613,2615,2617,2619,2621,2623,2625,2628,2630,2632,2634,2636,2638,2640,2642,2644,2646,2648,2650,2652,2654,2656,2658,2660,2662,2664,2666,2668,2670,2672,2674,2676,2678,2680,2682,2684,2686,2688,2690,2692,2694,2696,2698,2700,2702,2704,2706,2708,2710,2712,2714,2716,2718,2720,2722,2724,2726,2728,2730,2732,2734,2736,2738,2740,2742,2744,2746,2748,2750,2752,2754,2756,2758,2760,2762,2764,2766,2768,2770,2772,2774,2776,2778,2780,2782,2784,2786,2788,2790,2792,2794,2796,2798,2800,2802,2804,2806,2808,2810,2812,2814,2816,2818,2820,2822,2824,2826,2828,2830,2832,2834,2836,2838,2840,2842,2844,2846,2848,2850,2852,2854,2856,2858,2860,2862,2864,2866,2868,2870,2872,2874,2876,2878,2880,2882,2884,2886,2888,2890,2892,2894,2896,2898,2900,2902,2904,2906,2908,2910,2912,2914,2916,2918,2920,2922,2924,2926,2928,2930,2932,2934,2936,2938,2940,2942,2944,2946,2948,2950,2952,2954,2956,2958,2960,2962,2964,2966,2968,2970,2972,2974,2976,2978,2980,2982,2984,2986,2988,2990,2992,2994,2996,2998,3000,3002,3004,3006,3008,3010,3012,3014,3016,3018,3020,3022,3024,3026,3028,3030,3032,3034,3036,3038,3040,3042,3044,3046,3048,3050,3052,3054,3056,3058,3060,3062,3064,3066,3068,3070,3072,3074,3076,3078,3080,3082,3084,3086,3088,3090,3092,3094,3096,3098,3100,3102,3104,3106,3108,3110,3112,3114,3116,3118,3120,3122,3124,3126,3128,3130,3132,3134,3136,3138,3140,3142,3144,3146,3148,3150,3152,3154,3156,3158,3160,3162,3164,3166,3168,3170,3172,3174,3176,3178,3180,3182,3184,3186,3188,3190,3192,3194,3196,3198,3200,3202,3204,3206,3208,3210,3212,3214,3216,3218,3220,3222,3224,3226,3228,3230,3232,3234,3236,3238,3240,3242,3244,3246,3248,3250,3252,3254,3256,3258,3260,3262,3264,3266,3268,3270,3272,3274,3276,3278,3280,3282,3284,3286,3288,3290,3292,3294,3296,3298,3300,3302,3304,3306,3308,3310,3312,3314,3316,3318,3320,3322,3324,3326,3328,3330,3332,3334,3336,3338,3340,3342,3344,3346,3348,3350,3352,3354,3356,3358,3360,3362,3364,3366,3368,3370,3372,3374,3376,3378,3380,3382,3384,3386,3388,3390,3392,3394,3396,3398,3400,3402,3404,3406,3408,3410,3412,3414,3416,3418,3420,3422,3424,3426,3428,3430,3432,3434,3436,3438,3440,3442,3444,3446,3448,3450,3452,3454,3456,3458,3460,3462,3464,3466,3468,3470,3472,3474,3476,3478,3480,3482,3484,3486,3488,3490,3492,3494,3496,3498,3500,3502,3504,3506,3508,3510,3512,3514,3516,3518,3520,3522,3524,3526,3528,3530,3532,3534,3536,3538,3540,3542,3544,3546,3548,3550,3552,3554,3556,3558,3560,3562,3564,3566,3568,3570,3572,3574,3576,3578,3580,3582,3584,3586,3588,3590,3592,3594,3596,3598,3600,3602,3604,3606,3608,3610,3612,3614,3616,3618,3620,3622,3624,3626,3628,3630,3632,3634,3636,3638,3640,3642,3644,3646,3648,3650,3652,3654,3656,3658,3661,3663,3665,3667,3669,3671,3673,3675,3677,3679,3681,3683,3685,3687,3689,3691,3693,3695,3697,3699,3701,3703,3705,3707,3709,3711,3713,3715,3717,3719,3721,3723,3725,3727,3729,3731,3733,3735,3737,3739,3741,3743,3745,3747,3749,3751,3753,3755,3757,3759,3761,3763,3765,3767,3769,3771,3773,3775,3777,3779,3781,3783,3785,3787,3789,3791,3793,3795,3797,3799,3801,3803,3805,3807,3809,3811,3813,3815,3817,3819,3821,3823,3825,3827,3829,3831,3833,3835,3837,3839,3841,3843,3845,3847,3849,3851,3853,3855,3857,3859,3861,3863,3865,3867,3869,3871,3873,3875,3877,3879,3881,3883,3885,3887,3889,3891,3893,3895,3897,3899,3901,3903,3905,3907,3909,3911,3913,3915,3917,3919,3921,3923,3925,3927,3929,3931,3933,3935,3937,3939,3941,3943,3945,3947,3949,3951,3953,3955,3957,3959,3961,3963,3965,3967,3969,3971,3973,3975,3977,3979,3981,3983,3985,3987,3989,3991,3993,3995,3997,3999,4001,4003,4005,4007,4009,4011,4013,4015,4017,4019,4021,4023,4025,4027,4029,4031,4033,4035,4037,4039,4041,4043,4045,4047,4049,4051,4053,4055,4057,4059,4061,4063,4065,4067,4069,4071,4073,4075,4077,4079,4081,4083,4085,4087,4089,4091,4093,4095,4097,4099,4101,4103,4105,4107,4109,4111,4113,4115,4117,4119,4121,4123,4125,4127,4129,4131,4133,4135,4137,4139,4141,4143,4145,4147,4149,4151,4153,4155,4157,4159,4161,4163,4165,4167,4169,4171,4173,4175,4177,4179,4181,4183,4185,4187,4189,4191,4193,4195,4197,4199,4201,4203,4205,4207,4209,4211,4213,4215,4217,4219,4221,4223,4225,4227,4229,4231,4233,4235,4237,4239,4241,4243,4245,4247,4249,4251,4253,4255,4257,4259,4261,4263,4265,4267,4269,4271,4273,4275,4277,4279,4281,4283,4285,4287,4289,4291,4293,4295,4297,4299,4301,4303,4305,4307,4309,4311,4313,4315,4317,4319,4321,4323,4325,4327,4329,4331,4333,4335,4337,4339,4341,4343,4345,4347,4349,4351,4353,4355,4358,4360,4362,4364,4366,4368,4370,4372,4374,4376,4378,4380,4382,4384,4386,4388,4390,4392,4394,4396,4398,4400,4402,4404,4406,4408,4410,4412,4414,4416,4418,4420,4422,4424,4426,4428,4430,4432,4434,4436,4438,4440,4442,4444,4446,4448,4450,4452,4454,4456,4458,4460,4462,4464,4466,4468,4470,4472,4474,4476,4478,4480,4482,4484,4486,4488,4490,4492,4494,4496,4498,4500,4502,4504,4506,4508,4510,4512,4514,4516,4518,4521,4523,4525,4527,4529,4531,4533,4535,4537,4539,4541,4543,4545,4547,4549,4551,4553,4555,4557,4559,4561,4563,4565,4567,4569,4571,4573,4575,4577,4579,4581,4583,4585,4587,4589,4591,4593,4595,4597,4599,4601,4603,4605,4607,4609,4611,4613,4615,4617,4619,4621,4623,4625,4627,4629,4631,4633,4635,4637,4639,4641,4643,4645,4647,4649,4651,4653,4655,4657,4659,4661,4663,4665,4667,4669,4671,4673,4675,4677,4679,4681,4683,4685,4687,4689,4691,4693,4695,4697,4699,4701,4703,4705,4707,4709,4711,4713,4715,4717,4719,4721,4723,4725,4727,4729,4731,4733,4735,4737,4739,4741,4743,4745,4747,4749,4751,4753,4755,4757,4759,4761,4763,4765,4767,4769,4771,4773,4775,4777,4779,4781,4783,4785,4787,4789,4791,4793,4795,4797,4799,4801,4803,4805,4807,4809,4811,4813,4815,4817,4819,4821,4823,4825,4827,4829,4831,4833,4835,4837,4839,4841,4843,4845,4847,4849,4851,4853,4855,4857,4859,4861,4863,4865,4867,4869,4871,4873,4875,4877,4879,4881,4883,4885,4887,4889,4891,4893,4895,4897,4899,4901,4903,4905,4907,4909,4911,4913,4915,4917,4919,4921,4923,4925,4927,4929,4931,4933,4935,4937,4939,4941,4943,4945,4947,4949,4951,4953,4955,4957,4959,4961,4963,4965,4967,4969,4971,4973,4975,4977,4979,4981,4983,4985,4987,4989,4991,4993,4995,4997,4999,5001,5003,5005,5007,5009,5011,5013,5015,5017,5019,5021,5023,5025,5027,5029,5031,5033,5035,5037,5039,5041,5043,5045,5047,5049,5051,5053,5055,5057,5059,5061,5063,5065,5067,5069,5071,5073,5075,5077,5079,5081,5083,5085,5087,5089,5091,5093,5095,5097,5099,5101,5103,5105,5107,5109,5111,5113,5115,5117,5119,5121,5123,5125,5127,5129,5131,5133,5135,5137,5139,5141,5143,5145,5147,5149,5151,5153,5155,5157,5159,5161,5163,5165,5167,5169,5171,5173,5175,5177,5179,5181,5183,5185,5187,5189,5191,5193,5195,5197,5199,5201,5203,5205,5207,5209,5211,5213,5215,5217,5219,5221,5223,5225,5227,5229,5231,5233,5235,5237,5239,5241,5243,5245,5247,5249,5251,5253,5255,5257,5259,5261,5263,5265,5267,5269,5271,5273,5275,5277,5279,5281,5283,5285,5287,5289,5291,5293,5295,5297,5299,5301,5303,5305,5307,5309,5311,5313,5315,5317,5319,5321,5323,5325,5327,5329,5331,5333,5335,5337,5339,5341,5343,5345,5347,5349,5351,5353,5355,5357,5359,5361,5363,5365,5367,5369,5371,5373,5375,5377,5379,5381,5383,5385,5387,5389,5391,5393,5395,5397,5399,5401,5403,5405,5407,5409,5411,5413,5415,5417,5419,5421,5423,5425,5427,5429,5431,5433,5435,5437,5439,5441,5443,5445,5447,5449,5451,5453,5455,5457,5459,5461,5463,5465,5467,5469,5471,5473,5475,5477,5479,5481,5483,5485,5487,5489,5491,5493,5495,5497,5499,5501,5503,5505,5507,5509,5511,5513,5515,5517,5519,5521,5523,5525,5527,5529,5531,5533,5535,5537,5539,5541,5543,5545,5547,5549,5551,5553,5555,5557,5559,5561,5563,5565,5567,5569,5571,5573,5575,5577,5579,5581,5583,5585,5587,5589,5591,5593,5595,5597,5599,5601,5603,5605,5607,5609,5611,5613,5615,5617,5619,5621,5623,5625,5627,5629,5631,5633,5635,5637,5639,5641,5643,5645,5647,5649,5651,5653,5655,5657,5659,5661,5663,5665,5667,5669],{"categories":99},[100],"Developer Productivity",{"categories":102},[103],"Business & SaaS",{"categories":105},[67],{"categories":107},[108],"AI Automation",{"categories":110},[111],"Product Strategy",{"categories":113},[67],{"categories":115},[100],{"categories":117},[118],"Software Engineering",{"categories":120},[67],{"categories":122},[103],{"categories":124},[],{"categories":126},[67],{"categories":128},[129],"Inference & Serving",{"categories":131},[67],{"categories":133},[67],{"categories":135},[108],{"categories":137},[],{"categories":139},[140],"AI News & Trends",{"categories":142},[108],{"categories":144},[67],{"categories":146},[103],{"categories":148},[67],{"categories":150},[108],{"categories":152},[140],{"categories":154},[108],{"categories":156},[108],{"categories":158},[67],{"categories":160},[108],{"categories":162},[67],{"categories":164},[67],{"categories":166},[67],{"categories":168},[140],{"categories":170},[67],{"categories":172},[67],{"categories":174},[],{"categories":176},[177],"Design & Frontend",{"categories":179},[180],"Data Science & Visualization",{"categories":182},[140],{"categories":184},[67],{"categories":186},[67],{"categories":188},[],{"categories":190},[67],{"categories":192},[108],{"categories":194},[118],{"categories":196},[67],{"categories":198},[108],{"categories":200},[67],{"categories":202},[203],"Marketing & Growth",{"categories":205},[177],{"categories":207},[67],{"categories":209},[108],{"categories":211},[67],{"categories":213},[],{"categories":215},[],{"categories":217},[177],{"categories":219},[67],{"categories":221},[108],{"categories":223},[100],{"categories":225},[118],{"categories":227},[177],{"categories":229},[67],{"categories":231},[118],{"categories":233},[234],"DevOps & Cloud",{"categories":236},[108],{"categories":238},[111],{"categories":240},[140],{"categories":242},[67],{"categories":244},[],{"categories":246},[67],{"categories":248},[],{"categories":250},[108],{"categories":252},[118],{"categories":254},[],{"categories":256},[118],{"categories":258},[67],{"categories":260},[261],"Governance & Standards",{"categories":263},[103],{"categories":265},[],{"categories":267},[],{"categories":269},[67],{"categories":271},[67],{"categories":273},[108],{"categories":275},[67],{"categories":277},[67],{"categories":279},[108],{"categories":281},[67],{"categories":283},[67],{"categories":285},[67],{"categories":287},[],{"categories":289},[118],{"categories":291},[],{"categories":293},[],{"categories":295},[118],{"categories":297},[],{"categories":299},[118],{"categories":301},[67],{"categories":303},[67],{"categories":305},[203],{"categories":307},[67],{"categories":309},[177],{"categories":311},[177],{"categories":313},[67],{"categories":315},[118],{"categories":317},[108],{"categories":319},[320],"GovTech & Public-Sector Adoption",{"categories":322},[118],{"categories":324},[67],{"categories":326},[67],{"categories":328},[108],{"categories":330},[108],{"categories":332},[180],{"categories":334},[67],{"categories":336},[140],{"categories":338},[108],{"categories":340},[341],"Legal AI Tools",{"categories":343},[108],{"categories":345},[203],{"categories":347},[108],{"categories":349},[111],{"categories":351},[118],{"categories":353},[320],{"categories":355},[],{"categories":357},[108],{"categories":359},[],{"categories":361},[108],{"categories":363},[108],{"categories":365},[366],"RAG & Retrieval",{"categories":368},[103],{"categories":370},[67],{"categories":372},[118],{"categories":374},[234],{"categories":376},[177],{"categories":378},[67],{"categories":380},[],{"categories":382},[383],"Agents & Orchestration",{"categories":385},[118],{"categories":387},[67],{"categories":389},[],{"categories":391},[108],{"categories":393},[103],{"categories":395},[],{"categories":397},[67],{"categories":399},[],{"categories":401},[100],{"categories":403},[118],{"categories":405},[103],{"categories":407},[67],{"categories":409},[67],{"categories":411},[140],{"categories":413},[67],{"categories":415},[],{"categories":417},[67],{"categories":419},[],{"categories":421},[118],{"categories":423},[180],{"categories":425},[],{"categories":427},[67],{"categories":429},[177],{"categories":431},[432],"Models & Frontier Labs",{"categories":434},[],{"categories":436},[177],{"categories":438},[439],"Regulation & Governance of AI",{"categories":441},[108],{"categories":443},[],{"categories":445},[67],{"categories":447},[67],{"categories":449},[108],{"categories":451},[140],{"categories":453},[103],{"categories":455},[67],{"categories":457},[],{"categories":459},[118],{"categories":461},[108],{"categories":463},[67],{"categories":465},[111],{"categories":467},[468],"AI Policy & Regulation",{"categories":470},[],{"categories":472},[67],{"categories":474},[111],{"categories":476},[108],{"categories":478},[67],{"categories":480},[108],{"categories":482},[],{"categories":484},[180],{"categories":486},[487],"Evals & Reliability",{"categories":489},[67],{"categories":491},[],{"categories":493},[100],{"categories":495},[320],{"categories":497},[468],{"categories":499},[67],{"categories":501},[103],{"categories":503},[67],{"categories":505},[108],{"categories":507},[67],{"categories":509},[108],{"categories":511},[383],{"categories":513},[67],{"categories":515},[118],{"categories":517},[67],{"categories":519},[],{"categories":521},[],{"categories":523},[67],{"categories":525},[320],{"categories":527},[67],{"categories":529},[67],{"categories":531},[],{"categories":533},[177],{"categories":535},[],{"categories":537},[67],{"categories":539},[],{"categories":541},[108],{"categories":543},[67],{"categories":545},[177],{"categories":547},[],{"categories":549},[67],{"categories":551},[108],{"categories":553},[67],{"categories":555},[103],{"categories":557},[108],{"categories":559},[67],{"categories":561},[67],{"categories":563},[118],{"categories":565},[177],{"categories":567},[108],{"categories":569},[],{"categories":571},[118],{"categories":573},[108],{"categories":575},[],{"categories":577},[140],{"categories":579},[],{"categories":581},[67],{"categories":583},[67],{"categories":585},[103,203],{"categories":587},[],{"categories":589},[67],{"categories":591},[67],{"categories":593},[108],{"categories":595},[],{"categories":597},[],{"categories":599},[67],{"categories":601},[177],{"categories":603},[67],{"categories":605},[],{"categories":607},[67],{"categories":609},[234],{"categories":611},[],{"categories":613},[108],{"categories":615},[140],{"categories":617},[67],{"categories":619},[177],{"categories":621},[],{"categories":623},[140],{"categories":625},[67],{"categories":627},[129],{"categories":629},[67],{"categories":631},[108],{"categories":633},[140],{"categories":635},[432],{"categories":637},[67],{"categories":639},[203],{"categories":641},[],{"categories":643},[108],{"categories":645},[103],{"categories":647},[118],{"categories":649},[67],{"categories":651},[108],{"categories":653},[],{"categories":655},[67,234],{"categories":657},[67],{"categories":659},[67],{"categories":661},[67],{"categories":663},[108],{"categories":665},[67,118],{"categories":667},[180],{"categories":669},[67],{"categories":671},[67],{"categories":673},[118],{"categories":675},[108],{"categories":677},[468],{"categories":679},[203],{"categories":681},[67],{"categories":683},[108],{"categories":685},[67],{"categories":687},[67],{"categories":689},[108],{"categories":691},[],{"categories":693},[67],{"categories":695},[108],{"categories":697},[67],{"categories":699},[67,103],{"categories":701},[103],{"categories":703},[],{"categories":705},[177],{"categories":707},[177],{"categories":709},[67],{"categories":711},[],{"categories":713},[],{"categories":715},[140],{"categories":717},[],{"categories":719},[100],{"categories":721},[67],{"categories":723},[118],{"categories":725},[726],"Generative UI & Design-to-Code",{"categories":728},[67],{"categories":730},[177],{"categories":732},[67],{"categories":734},[735],"Algorithmic Accountability",{"categories":737},[108],{"categories":739},[118],{"categories":741},[140],{"categories":743},[177],{"categories":745},[],{"categories":747},[67],{"categories":749},[67],{"categories":751},[67],{"categories":753},[108],{"categories":755},[756],"MLOps & Infrastructure",{"categories":758},[67],{"categories":760},[67],{"categories":762},[67],{"categories":764},[67],{"categories":766},[140],{"categories":768},[100],{"categories":770},[67],{"categories":772},[108],{"categories":774},[234],{"categories":776},[67],{"categories":778},[177],{"categories":780},[67],{"categories":782},[108],{"categories":784},[],{"categories":786},[],{"categories":788},[129],{"categories":790},[177],{"categories":792},[140],{"categories":794},[180],{"categories":796},[],{"categories":798},[67],{"categories":800},[67],{"categories":802},[103],{"categories":804},[67],{"categories":806},[67],{"categories":808},[67],{"categories":810},[140],{"categories":812},[129],{"categories":814},[67],{"categories":816},[177],{"categories":818},[],{"categories":820},[108],{"categories":822},[118],{"categories":824},[],{"categories":826},[67],{"categories":828},[67],{"categories":830},[108],{"categories":832},[118],{"categories":834},[67],{"categories":836},[180],{"categories":838},[],{"categories":840},[67],{"categories":842},[],{"categories":844},[67],{"categories":846},[],{"categories":848},[111],{"categories":850},[103],{"categories":852},[108],{"categories":854},[108],{"categories":856},[],{"categories":858},[100],{"categories":860},[67],{"categories":862},[103],{"categories":864},[140],{"categories":866},[100],{"categories":868},[],{"categories":870},[67],{"categories":872},[],{"categories":874},[],{"categories":876},[140],{"categories":878},[140],{"categories":880},[],{"categories":882},[383],{"categories":884},[67],{"categories":886},[177],{"categories":888},[118],{"categories":890},[],{"categories":892},[341],{"categories":894},[103],{"categories":896},[],{"categories":898},[],{"categories":900},[100],{"categories":902},[180],{"categories":904},[],{"categories":906},[203],{"categories":908},[108],{"categories":910},[103],{"categories":912},[108],{"categories":914},[103],{"categories":916},[118],{"categories":918},[],{"categories":920},[129],{"categories":922},[111],{"categories":924},[67],{"categories":926},[177],{"categories":928},[118],{"categories":930},[103],{"categories":932},[67],{"categories":934},[108],{"categories":936},[103],{"categories":938},[67],{"categories":940},[67],{"categories":942},[],{"categories":944},[],{"categories":946},[118],{"categories":948},[180],{"categories":950},[111],{"categories":952},[67],{"categories":954},[108],{"categories":956},[67],{"categories":958},[],{"categories":960},[140],{"categories":962},[111],{"categories":964},[67],{"categories":966},[487],{"categories":968},[234],{"categories":970},[],{"categories":972},[108],{"categories":974},[],{"categories":976},[100],{"categories":978},[],{"categories":980},[67],{"categories":982},[67],{"categories":984},[177],{"categories":986},[203],{"categories":988},[118],{"categories":990},[108],{"categories":992},[],{"categories":994},[118],{"categories":996},[100],{"categories":998},[],{"categories":1000},[140],{"categories":1002},[67,234],{"categories":1004},[1005],"Design Systems for AI",{"categories":1007},[67],{"categories":1009},[140],{"categories":1011},[67],{"categories":1013},[67],{"categories":1015},[103],{"categories":1017},[67],{"categories":1019},[],{"categories":1021},[67],{"categories":1023},[67],{"categories":1025},[103],{"categories":1027},[67],{"categories":1029},[],{"categories":1031},[108],{"categories":1033},[118],{"categories":1035},[118],{"categories":1037},[177],{"categories":1039},[140],{"categories":1041},[180],{"categories":1043},[67],{"categories":1045},[100],{"categories":1047},[468],{"categories":1049},[67],{"categories":1051},[108],{"categories":1053},[67],{"categories":1055},[118],{"categories":1057},[118],{"categories":1059},[],{"categories":1061},[],{"categories":1063},[108],{"categories":1065},[111],{"categories":1067},[],{"categories":1069},[67],{"categories":1071},[],{"categories":1073},[177],{"categories":1075},[108],{"categories":1077},[118],{"categories":1079},[177],{"categories":1081},[67],{"categories":1083},[177],{"categories":1085},[],{"categories":1087},[],{"categories":1089},[140],{"categories":1091},[108],{"categories":1093},[108],{"categories":1095},[67],{"categories":1097},[67],{"categories":1099},[67],{"categories":1101},[103],{"categories":1103},[67],{"categories":1105},[67],{"categories":1107},[],{"categories":1109},[118],{"categories":1111},[118],{"categories":1113},[67],{"categories":1115},[118],{"categories":1117},[103],{"categories":1119},[],{"categories":1121},[67],{"categories":1123},[67],{"categories":1125},[67],{"categories":1127},[108],{"categories":1129},[100],{"categories":1131},[103],{"categories":1133},[140],{"categories":1135},[108],{"categories":1137},[129],{"categories":1139},[203],{"categories":1141},[67],{"categories":1143},[108],{"categories":1145},[],{"categories":1147},[177],{"categories":1149},[],{"categories":1151},[67],{"categories":1153},[67],{"categories":1155},[],{"categories":1157},[118],{"categories":1159},[103],{"categories":1161},[1162],"Visual & Generative Media",{"categories":1164},[108],{"categories":1166},[],{"categories":1168},[67],{"categories":1170},[67],{"categories":1172},[234],{"categories":1174},[180],{"categories":1176},[468],{"categories":1178},[118],{"categories":1180},[203],{"categories":1182},[67],{"categories":1184},[177],{"categories":1186},[67],{"categories":1188},[118],{"categories":1190},[108],{"categories":1192},[],{"categories":1194},[],{"categories":1196},[108],{"categories":1198},[100],{"categories":1200},[108],{"categories":1202},[432],{"categories":1204},[67],{"categories":1206},[111],{"categories":1208},[103],{"categories":1210},[],{"categories":1212},[67],{"categories":1214},[111],{"categories":1216},[67],{"categories":1218},[67],{"categories":1220},[67],{"categories":1222},[67],{"categories":1224},[67],{"categories":1226},[203],{"categories":1228},[67],{"categories":1230},[383],{"categories":1232},[67],{"categories":1234},[67],{"categories":1236},[67],{"categories":1238},[67],{"categories":1240},[67],{"categories":1242},[177],{"categories":1244},[108],{"categories":1246},[],{"categories":1248},[108],{"categories":1250},[],{"categories":1252},[234],{"categories":1254},[118],{"categories":1256},[],{"categories":1258},[432],{"categories":1260},[108],{"categories":1262},[67],{"categories":1264},[177,67],{"categories":1266},[100],{"categories":1268},[],{"categories":1270},[67],{"categories":1272},[100],{"categories":1274},[1275],"Medical Imaging & Radiology",{"categories":1277},[177],{"categories":1279},[108],{"categories":1281},[118],{"categories":1283},[],{"categories":1285},[67],{"categories":1287},[67],{"categories":1289},[67],{"categories":1291},[],{"categories":1293},[],{"categories":1295},[67],{"categories":1297},[383],{"categories":1299},[67],{"categories":1301},[100],{"categories":1303},[67],{"categories":1305},[67],{"categories":1307},[],{"categories":1309},[108],{"categories":1311},[67],{"categories":1313},[111],{"categories":1315},[118],{"categories":1317},[67],{"categories":1319},[383],{"categories":1321},[67],{"categories":1323},[108],{"categories":1325},[67],{"categories":1327},[177],{"categories":1329},[108],{"categories":1331},[234],{"categories":1333},[177],{"categories":1335},[103],{"categories":1337},[108],{"categories":1339},[67],{"categories":1341},[67],{"categories":1343},[67],{"categories":1345},[67],{"categories":1347},[67],{"categories":1349},[108],{"categories":1351},[118],{"categories":1353},[67],{"categories":1355},[111],{"categories":1357},[],{"categories":1359},[140],{"categories":1361},[],{"categories":1363},[111],{"categories":1365},[108],{"categories":1367},[1005],{"categories":1369},[1005],{"categories":1371},[177],{"categories":1373},[67],{"categories":1375},[67],{"categories":1377},[108],{"categories":1379},[118],{"categories":1381},[177],{"categories":1383},[108],{"categories":1385},[140],{"categories":1387},[],{"categories":1389},[67],{"categories":1391},[],{"categories":1393},[67],{"categories":1395},[67],{"categories":1397},[67],{"categories":1399},[1400],"Contract Review & E-Discovery",{"categories":1402},[177],{"categories":1404},[67],{"categories":1406},[100],{"categories":1408},[140],{"categories":1410},[67],{"categories":1412},[67],{"categories":1414},[203],{"categories":1416},[118],{"categories":1418},[67],{"categories":1420},[67],{"categories":1422},[108],{"categories":1424},[108],{"categories":1426},[735],{"categories":1428},[108],{"categories":1430},[108],{"categories":1432},[67],{"categories":1434},[67],{"categories":1436},[108],{"categories":1438},[67],{"categories":1440},[383],{"categories":1442},[366],{"categories":1444},[67],{"categories":1446},[108],{"categories":1448},[67],{"categories":1450},[1451],"Law-Firm Practice & Adoption",{"categories":1453},[67],{"categories":1455},[108],{"categories":1457},[177],{"categories":1459},[67],{"categories":1461},[67],{"categories":1463},[],{"categories":1465},[],{"categories":1467},[118],{"categories":1469},[],{"categories":1471},[100],{"categories":1473},[234],{"categories":1475},[67],{"categories":1477},[],{"categories":1479},[100],{"categories":1481},[103],{"categories":1483},[67],{"categories":1485},[203],{"categories":1487},[],{"categories":1489},[103],{"categories":1491},[103],{"categories":1493},[],{"categories":1495},[67],{"categories":1497},[67],{"categories":1499},[118],{"categories":1501},[],{"categories":1503},[],{"categories":1505},[],{"categories":1507},[],{"categories":1509},[67],{"categories":1511},[108],{"categories":1513},[234],{"categories":1515},[67],{"categories":1517},[100],{"categories":1519},[118],{"categories":1521},[67],{"categories":1523},[67],{"categories":1525},[118],{"categories":1527},[111],{"categories":1529},[67],{"categories":1531},[756],{"categories":1533},[67],{"categories":1535},[203],{"categories":1537},[118],{"categories":1539},[103],{"categories":1541},[67],{"categories":1543},[67],{"categories":1545},[177],{"categories":1547},[67],{"categories":1549},[67],{"categories":1551},[67],{"categories":1553},[108],{"categories":1555},[67,100],{"categories":1557},[383],{"categories":1559},[67],{"categories":1561},[118],{"categories":1563},[118],{"categories":1565},[177],{"categories":1567},[108],{"categories":1569},[118],{"categories":1571},[67],{"categories":1573},[67],{"categories":1575},[],{"categories":1577},[],{"categories":1579},[67],{"categories":1581},[],{"categories":1583},[67],{"categories":1585},[118],{"categories":1587},[180],{"categories":1589},[140],{"categories":1591},[177],{"categories":1593},[67],{"categories":1595},[118],{"categories":1597},[],{"categories":1599},[108],{"categories":1601},[67],{"categories":1603},[67],{"categories":1605},[67],{"categories":1607},[67],{"categories":1609},[],{"categories":1611},[108],{"categories":1613},[67],{"categories":1615},[67],{"categories":1617},[],{"categories":1619},[108],{"categories":1621},[67],{"categories":1623},[67],{"categories":1625},[103],{"categories":1627},[67],{"categories":1629},[],{"categories":1631},[100],{"categories":1633},[67],{"categories":1635},[177],{"categories":1637},[118],{"categories":1639},[67],{"categories":1641},[100],{"categories":1643},[67],{"categories":1645},[118],{"categories":1647},[203],{"categories":1649},[108],{"categories":1651},[108],{"categories":1653},[67,177],{"categories":1655},[67],{"categories":1657},[140],{"categories":1659},[67],{"categories":1661},[140],{"categories":1663},[108],{"categories":1665},[177],{"categories":1667},[],{"categories":1669},[118],{"categories":1671},[234],{"categories":1673},[177],{"categories":1675},[118],{"categories":1677},[67],{"categories":1679},[111],{"categories":1681},[67],{"categories":1683},[108],{"categories":1685},[],{"categories":1687},[],{"categories":1689},[67],{"categories":1691},[],{"categories":1693},[],{"categories":1695},[111],{"categories":1697},[118],{"categories":1699},[67],{"categories":1701},[108],{"categories":1703},[108],{"categories":1705},[103],{"categories":1707},[108],{"categories":1709},[234],{"categories":1711},[67],{"categories":1713},[67],{"categories":1715},[129],{"categories":1717},[67],{"categories":1719},[67],{"categories":1721},[108],{"categories":1723},[67],{"categories":1725},[67],{"categories":1727},[341],{"categories":1729},[735],{"categories":1731},[],{"categories":1733},[177],{"categories":1735},[1451],{"categories":1737},[118],{"categories":1739},[],{"categories":1741},[],{"categories":1743},[108],{"categories":1745},[],{"categories":1747},[],{"categories":1749},[203],{"categories":1751},[203],{"categories":1753},[108],{"categories":1755},[118],{"categories":1757},[],{"categories":1759},[67],{"categories":1761},[67],{"categories":1763},[118],{"categories":1765},[1400],{"categories":1767},[177],{"categories":1769},[177],{"categories":1771},[67],{"categories":1773},[108],{"categories":1775},[100],{"categories":1777},[67],{"categories":1779},[67],{"categories":1781},[177],{"categories":1783},[177],{"categories":1785},[108],{"categories":1787},[108],{"categories":1789},[67],{"categories":1791},[],{"categories":1793},[67],{"categories":1795},[],{"categories":1797},[1798],"Interaction & Product Design",{"categories":1800},[67],{"categories":1802},[108],{"categories":1804},[261],{"categories":1806},[140],{"categories":1808},[118],{"categories":1810},[67],{"categories":1812},[67],{"categories":1814},[118],{"categories":1816},[100],{"categories":1818},[67],{"categories":1820},[],{"categories":1822},[108],{"categories":1824},[108],{"categories":1826},[],{"categories":1828},[118],{"categories":1830},[67],{"categories":1832},[100],{"categories":1834},[1798],{"categories":1836},[67],{"categories":1838},[100],{"categories":1840},[100],{"categories":1842},[],{"categories":1844},[118],{"categories":1846},[],{"categories":1848},[108],{"categories":1850},[140],{"categories":1852},[67],{"categories":1854},[108],{"categories":1856},[67],{"categories":1858},[108],{"categories":1860},[67],{"categories":1862},[140],{"categories":1864},[180],{"categories":1866},[67],{"categories":1868},[111],{"categories":1870},[118],{"categories":1872},[1873],"Coding Agents & Dev Productivity",{"categories":1875},[140],{"categories":1877},[177],{"categories":1879},[],{"categories":1881},[67],{"categories":1883},[735],{"categories":1885},[],{"categories":1887},[67],{"categories":1889},[67],{"categories":1891},[140],{"categories":1893},[],{"categories":1895},[],{"categories":1897},[67],{"categories":1899},[],{"categories":1901},[108],{"categories":1903},[67],{"categories":1905},[],{"categories":1907},[118],{"categories":1909},[118],{"categories":1911},[67],{"categories":1913},[180],{"categories":1915},[],{"categories":1917},[67],{"categories":1919},[67],{"categories":1921},[67],{"categories":1923},[180],{"categories":1925},[118],{"categories":1927},[],{"categories":1929},[],{"categories":1931},[108],{"categories":1933},[108],{"categories":1935},[320],{"categories":1937},[118],{"categories":1939},[118],{"categories":1941},[108],{"categories":1943},[140],{"categories":1945},[140],{"categories":1947},[108],{"categories":1949},[108],{"categories":1951},[67],{"categories":1953},[100],{"categories":1955},[1798],{"categories":1957},[67,234],{"categories":1959},[],{"categories":1961},[177],{"categories":1963},[118],{"categories":1965},[100],{"categories":1967},[67],{"categories":1969},[108],{"categories":1971},[1972],"The Designer's Role & Craft",{"categories":1974},[177],{"categories":1976},[],{"categories":1978},[108],{"categories":1980},[67],{"categories":1982},[108],{"categories":1984},[108],{"categories":1986},[67],{"categories":1988},[203],{"categories":1990},[67],{"categories":1992},[118],{"categories":1994},[177],{"categories":1996},[67],{"categories":1998},[],{"categories":2000},[108],{"categories":2002},[177],{"categories":2004},[67],{"categories":2006},[67],{"categories":2008},[2009],"AI UX Patterns",{"categories":2011},[108],{"categories":2013},[108],{"categories":2015},[108],{"categories":2017},[108],{"categories":2019},[203],{"categories":2021},[180],{"categories":2023},[67],{"categories":2025},[108],{"categories":2027},[67],{"categories":2029},[1005],{"categories":2031},[],{"categories":2033},[203],{"categories":2035},[140],{"categories":2037},[118],{"categories":2039},[67],{"categories":2041},[108],{"categories":2043},[],{"categories":2045},[],{"categories":2047},[67],{"categories":2049},[108],{"categories":2051},[67],{"categories":2053},[108],{"categories":2055},[320],{"categories":2057},[177],{"categories":2059},[140],{"categories":2061},[118],{"categories":2063},[67],{"categories":2065},[108],{"categories":2067},[108],{"categories":2069},[],{"categories":2071},[67],{"categories":2073},[],{"categories":2075},[],{"categories":2077},[67],{"categories":2079},[67],{"categories":2081},[108],{"categories":2083},[118],{"categories":2085},[],{"categories":2087},[],{"categories":2089},[180],{"categories":2091},[129],{"categories":2093},[67],{"categories":2095},[180],{"categories":2097},[140],{"categories":2099},[67],{"categories":2101},[67],{"categories":2103},[108],{"categories":2105},[108],{"categories":2107},[67],{"categories":2109},[108],{"categories":2111},[],{"categories":2113},[],{"categories":2115},[67],{"categories":2117},[234],{"categories":2119},[67],{"categories":2121},[],{"categories":2123},[],{"categories":2125},[177],{"categories":2127},[756],{"categories":2129},[108],{"categories":2131},[100],{"categories":2133},[1972],{"categories":2135},[],{"categories":2137},[],{"categories":2139},[67],{"categories":2141},[],{"categories":2143},[],{"categories":2145},[118],{"categories":2147},[140],{"categories":2149},[203],{"categories":2151},[103],{"categories":2153},[67],{"categories":2155},[67],{"categories":2157},[103],{"categories":2159},[],{"categories":2161},[177],{"categories":2163},[67],{"categories":2165},[108],{"categories":2167},[103],{"categories":2169},[67],{"categories":2171},[67],{"categories":2173},[100],{"categories":2175},[67],{"categories":2177},[],{"categories":2179},[100],{"categories":2181},[67],{"categories":2183},[203],{"categories":2185},[108],{"categories":2187},[140],{"categories":2189},[67],{"categories":2191},[103],{"categories":2193},[67],{"categories":2195},[67],{"categories":2197},[67],{"categories":2199},[108],{"categories":2201},[],{"categories":2203},[67],{"categories":2205},[118],{"categories":2207},[100],{"categories":2209},[67],{"categories":2211},[67],{"categories":2213},[],{"categories":2215},[383],{"categories":2217},[140],{"categories":2219},[67],{"categories":2221},[67],{"categories":2223},[],{"categories":2225},[103],{"categories":2227},[103],{"categories":2229},[67],{"categories":2231},[67],{"categories":2233},[111],{"categories":2235},[67],{"categories":2237},[67],{"categories":2239},[118],{"categories":2241},[118],{"categories":2243},[67],{"categories":2245},[],{"categories":2247},[118],{"categories":2249},[67],{"categories":2251},[118],{"categories":2253},[468],{"categories":2255},[],{"categories":2257},[],{"categories":2259},[67],{"categories":2261},[140],{"categories":2263},[],{"categories":2265},[234],{"categories":2267},[67],{"categories":2269},[67],{"categories":2271},[177],{"categories":2273},[726],{"categories":2275},[],{"categories":2277},[67],{"categories":2279},[67],{"categories":2281},[118],{"categories":2283},[67],{"categories":2285},[67],{"categories":2287},[67,234],{"categories":2289},[67],{"categories":2291},[67],{"categories":2293},[177],{"categories":2295},[108],{"categories":2297},[],{"categories":2299},[108],{"categories":2301},[108],{"categories":2303},[67],{"categories":2305},[67],{"categories":2307},[67],{"categories":2309},[180],{"categories":2311},[67],{"categories":2313},[2009],{"categories":2315},[100],{"categories":2317},[180],{"categories":2319},[100],{"categories":2321},[118],{"categories":2323},[177],{"categories":2325},[108],{"categories":2327},[67],{"categories":2329},[],{"categories":2331},[67],{"categories":2333},[140],{"categories":2335},[67],{"categories":2337},[108],{"categories":2339},[67],{"categories":2341},[67],{"categories":2343},[103],{"categories":2345},[],{"categories":2347},[234],{"categories":2349},[67],{"categories":2351},[320],{"categories":2353},[177],{"categories":2355},[177],{"categories":2357},[118],{"categories":2359},[108],{"categories":2361},[67],{"categories":2363},[103],{"categories":2365},[140],{"categories":2367},[67],{"categories":2369},[177],{"categories":2371},[108],{"categories":2373},[67],{"categories":2375},[67],{"categories":2377},[432],{"categories":2379},[],{"categories":2381},[67],{"categories":2383},[67],{"categories":2385},[67],{"categories":2387},[],{"categories":2389},[],{"categories":2391},[67],{"categories":2393},[67],{"categories":2395},[67],{"categories":2397},[67],{"categories":2399},[118],{"categories":2401},[67],{"categories":2403},[67],{"categories":2405},[108],{"categories":2407},[67],{"categories":2409},[67],{"categories":2411},[67],{"categories":2413},[67],{"categories":2415},[],{"categories":2417},[118],{"categories":2419},[180],{"categories":2421},[67],{"categories":2423},[108],{"categories":2425},[67],{"categories":2427},[],{"categories":2429},[],{"categories":2431},[67],{"categories":2433},[67],{"categories":2435},[67],{"categories":2437},[140],{"categories":2439},[],{"categories":2441},[67],{"categories":2443},[177],{"categories":2445},[67],{"categories":2447},[234],{"categories":2449},[1451],{"categories":2451},[140],{"categories":2453},[118],{"categories":2455},[118],{"categories":2457},[118],{"categories":2459},[140],{"categories":2461},[140],{"categories":2463},[234],{"categories":2465},[],{"categories":2467},[140],{"categories":2469},[67],{"categories":2471},[100],{"categories":2473},[118],{"categories":2475},[67],{"categories":2477},[140],{"categories":2479},[],{"categories":2481},[67],{"categories":2483},[118],{"categories":2485},[180],{"categories":2487},[67],{"categories":2489},[140],{"categories":2491},[67],{"categories":2493},[118],{"categories":2495},[108],{"categories":2497},[140],{"categories":2499},[108],{"categories":2501},[234],{"categories":2503},[108],{"categories":2505},[67],{"categories":2507},[67],{"categories":2509},[118],{"categories":2511},[67],{"categories":2513},[],{"categories":2515},[103],{"categories":2517},[118],{"categories":2519},[],{"categories":2521},[],{"categories":2523},[67],{"categories":2525},[108],{"categories":2527},[67],{"categories":2529},[2530],"Frameworks & Tooling",{"categories":2532},[67],{"categories":2534},[67],{"categories":2536},[118],{"categories":2538},[67],{"categories":2540},[67],{"categories":2542},[],{"categories":2544},[180],{"categories":2546},[180],{"categories":2548},[100],{"categories":2550},[108],{"categories":2552},[177],{"categories":2554},[],{"categories":2556},[1451],{"categories":2558},[67],{"categories":2560},[118],{"categories":2562},[67],{"categories":2564},[234],{"categories":2566},[234],{"categories":2568},[],{"categories":2570},[108],{"categories":2572},[140],{"categories":2574},[140],{"categories":2576},[67],{"categories":2578},[108],{"categories":2580},[],{"categories":2582},[177],{"categories":2584},[67],{"categories":2586},[67],{"categories":2588},[],{"categories":2590},[67],{"categories":2592},[],{"categories":2594},[118],{"categories":2596},[67],{"categories":2598},[118],{"categories":2600},[234],{"categories":2602},[67],{"categories":2604},[118],{"categories":2606},[103],{"categories":2608},[67],{"categories":2610},[1451],{"categories":2612},[],{"categories":2614},[108],{"categories":2616},[100],{"categories":2618},[100],{"categories":2620},[],{"categories":2622},[108],{"categories":2624},[67],{"categories":2626},[2627],"AI Design Tooling",{"categories":2629},[177],{"categories":2631},[67],{"categories":2633},[67],{"categories":2635},[118],{"categories":2637},[177],{"categories":2639},[67],{"categories":2641},[118],{"categories":2643},[140],{"categories":2645},[111],{"categories":2647},[118],{"categories":2649},[108],{"categories":2651},[],{"categories":2653},[67],{"categories":2655},[67],{"categories":2657},[108],{"categories":2659},[67],{"categories":2661},[67],{"categories":2663},[],{"categories":2665},[108],{"categories":2667},[2530],{"categories":2669},[67],{"categories":2671},[108],{"categories":2673},[108],{"categories":2675},[118],{"categories":2677},[118],{"categories":2679},[],{"categories":2681},[118],{"categories":2683},[67],{"categories":2685},[67],{"categories":2687},[108],{"categories":2689},[103],{"categories":2691},[67],{"categories":2693},[],{"categories":2695},[67],{"categories":2697},[1798],{"categories":2699},[],{"categories":2701},[67],{"categories":2703},[67],{"categories":2705},[],{"categories":2707},[67],{"categories":2709},[67],{"categories":2711},[67],{"categories":2713},[203],{"categories":2715},[140],{"categories":2717},[67],{"categories":2719},[67],{"categories":2721},[1451],{"categories":2723},[100],{"categories":2725},[67],{"categories":2727},[67],{"categories":2729},[180],{"categories":2731},[67],{"categories":2733},[140],{"categories":2735},[108],{"categories":2737},[],{"categories":2739},[67],{"categories":2741},[177],{"categories":2743},[67],{"categories":2745},[203],{"categories":2747},[67],{"categories":2749},[108],{"categories":2751},[],{"categories":2753},[],{"categories":2755},[],{"categories":2757},[100],{"categories":2759},[140],{"categories":2761},[108],{"categories":2763},[67],{"categories":2765},[67],{"categories":2767},[67],{"categories":2769},[341],{"categories":2771},[177],{"categories":2773},[108],{"categories":2775},[67],{"categories":2777},[],{"categories":2779},[108],{"categories":2781},[108],{"categories":2783},[],{"categories":2785},[67],{"categories":2787},[108],{"categories":2789},[67],{"categories":2791},[],{"categories":2793},[67],{"categories":2795},[67],{"categories":2797},[140],{"categories":2799},[177],{"categories":2801},[108],{"categories":2803},[177],{"categories":2805},[108],{"categories":2807},[103],{"categories":2809},[],{"categories":2811},[],{"categories":2813},[67],{"categories":2815},[67],{"categories":2817},[100],{"categories":2819},[108],{"categories":2821},[140],{"categories":2823},[],{"categories":2825},[177],{"categories":2827},[],{"categories":2829},[118],{"categories":2831},[118],{"categories":2833},[177],{"categories":2835},[118],{"categories":2837},[67],{"categories":2839},[],{"categories":2841},[67],{"categories":2843},[67],{"categories":2845},[],{"categories":2847},[203],{"categories":2849},[67],{"categories":2851},[234],{"categories":2853},[118],{"categories":2855},[],{"categories":2857},[108],{"categories":2859},[67],{"categories":2861},[100],{"categories":2863},[432],{"categories":2865},[108],{"categories":2867},[108],{"categories":2869},[67],{"categories":2871},[67],{"categories":2873},[],{"categories":2875},[100],{"categories":2877},[67],{"categories":2879},[103],{"categories":2881},[118],{"categories":2883},[177],{"categories":2885},[],{"categories":2887},[],{"categories":2889},[],{"categories":2891},[108],{"categories":2893},[118],{"categories":2895},[177],{"categories":2897},[140],{"categories":2899},[67],{"categories":2901},[140],{"categories":2903},[108],{"categories":2905},[177],{"categories":2907},[67],{"categories":2909},[],{"categories":2911},[67],{"categories":2913},[129],{"categories":2915},[108],{"categories":2917},[177],{"categories":2919},[140],{"categories":2921},[103],{"categories":2923},[118],{"categories":2925},[67],{"categories":2927},[140],{"categories":2929},[203],{"categories":2931},[],{"categories":2933},[],{"categories":2935},[180],{"categories":2937},[383],{"categories":2939},[67],{"categories":2941},[108],{"categories":2943},[67,118],{"categories":2945},[140],{"categories":2947},[67],{"categories":2949},[67],{"categories":2951},[108],{"categories":2953},[67],{"categories":2955},[108],{"categories":2957},[67],{"categories":2959},[67],{"categories":2961},[],{"categories":2963},[1005],{"categories":2965},[118],{"categories":2967},[177],{"categories":2969},[67],{"categories":2971},[67],{"categories":2973},[67],{"categories":2975},[180],{"categories":2977},[108],{"categories":2979},[203],{"categories":2981},[234],{"categories":2983},[],{"categories":2985},[67],{"categories":2987},[103],{"categories":2989},[108],{"categories":2991},[100],{"categories":2993},[108],{"categories":2995},[67],{"categories":2997},[108],{"categories":2999},[111],{"categories":3001},[118],{"categories":3003},[67],{"categories":3005},[67],{"categories":3007},[],{"categories":3009},[],{"categories":3011},[],{"categories":3013},[234],{"categories":3015},[67],{"categories":3017},[140],{"categories":3019},[67],{"categories":3021},[67],{"categories":3023},[67],{"categories":3025},[67],{"categories":3027},[],{"categories":3029},[180],{"categories":3031},[103],{"categories":3033},[108],{"categories":3035},[67],{"categories":3037},[],{"categories":3039},[67],{"categories":3041},[108],{"categories":3043},[67],{"categories":3045},[234],{"categories":3047},[],{"categories":3049},[177],{"categories":3051},[177],{"categories":3053},[],{"categories":3055},[118],{"categories":3057},[67],{"categories":3059},[177],{"categories":3061},[67],{"categories":3063},[103],{"categories":3065},[108],{"categories":3067},[67],{"categories":3069},[],{"categories":3071},[140],{"categories":3073},[67],{"categories":3075},[67],{"categories":3077},[67],{"categories":3079},[177],{"categories":3081},[108],{"categories":3083},[140],{"categories":3085},[],{"categories":3087},[108],{"categories":3089},[108],{"categories":3091},[177],{"categories":3093},[67],{"categories":3095},[67],{"categories":3097},[67],{"categories":3099},[383],{"categories":3101},[67],{"categories":3103},[],{"categories":3105},[67],{"categories":3107},[67],{"categories":3109},[234],{"categories":3111},[140],{"categories":3113},[180],{"categories":3115},[468],{"categories":3117},[180],{"categories":3119},[],{"categories":3121},[],{"categories":3123},[],{"categories":3125},[108],{"categories":3127},[108],{"categories":3129},[118],{"categories":3131},[67],{"categories":3133},[366],{"categories":3135},[118],{"categories":3137},[67],{"categories":3139},[67],{"categories":3141},[67],{"categories":3143},[67],{"categories":3145},[108],{"categories":3147},[],{"categories":3149},[],{"categories":3151},[67],{"categories":3153},[],{"categories":3155},[67],{"categories":3157},[108],{"categories":3159},[177],{"categories":3161},[67],{"categories":3163},[67],{"categories":3165},[],{"categories":3167},[111],{"categories":3169},[67],{"categories":3171},[177],{"categories":3173},[67],{"categories":3175},[108],{"categories":3177},[103],{"categories":3179},[67],{"categories":3181},[203],{"categories":3183},[108],{"categories":3185},[67],{"categories":3187},[726],{"categories":3189},[67],{"categories":3191},[108],{"categories":3193},[67],{"categories":3195},[118],{"categories":3197},[67],{"categories":3199},[432],{"categories":3201},[177],{"categories":3203},[],{"categories":3205},[140],{"categories":3207},[383],{"categories":3209},[108],{"categories":3211},[67],{"categories":3213},[],{"categories":3215},[140],{"categories":3217},[320],{"categories":3219},[108],{"categories":3221},[108],{"categories":3223},[67],{"categories":3225},[67],{"categories":3227},[108],{"categories":3229},[],{"categories":3231},[103],{"categories":3233},[108],{"categories":3235},[],{"categories":3237},[118],{"categories":3239},[67],{"categories":3241},[100],{"categories":3243},[140],{"categories":3245},[234],{"categories":3247},[129],{"categories":3249},[108],{"categories":3251},[108],{"categories":3253},[67],{"categories":3255},[108],{"categories":3257},[100],{"categories":3259},[],{"categories":3261},[67],{"categories":3263},[67],{"categories":3265},[],{"categories":3267},[],{"categories":3269},[177],{"categories":3271},[67,103],{"categories":3273},[108],{"categories":3275},[67],{"categories":3277},[],{"categories":3279},[100],{"categories":3281},[180],{"categories":3283},[103],{"categories":3285},[67],{"categories":3287},[118],{"categories":3289},[67],{"categories":3291},[108],{"categories":3293},[67],{"categories":3295},[67],{"categories":3297},[67],{"categories":3299},[140],{"categories":3301},[1005],{"categories":3303},[108],{"categories":3305},[67],{"categories":3307},[],{"categories":3309},[],{"categories":3311},[108],{"categories":3313},[67],{"categories":3315},[234],{"categories":3317},[],{"categories":3319},[67],{"categories":3321},[108],{"categories":3323},[129],{"categories":3325},[108],{"categories":3327},[383],{"categories":3329},[],{"categories":3331},[341],{"categories":3333},[108],{"categories":3335},[67],{"categories":3337},[203],{"categories":3339},[67],{"categories":3341},[180],{"categories":3343},[108],{"categories":3345},[67],{"categories":3347},[383],{"categories":3349},[67],{"categories":3351},[234],{"categories":3353},[],{"categories":3355},[67],{"categories":3357},[203],{"categories":3359},[177],{"categories":3361},[67],{"categories":3363},[67],{"categories":3365},[],{"categories":3367},[203],{"categories":3369},[140],{"categories":3371},[67],{"categories":3373},[67],{"categories":3375},[468],{"categories":3377},[100],{"categories":3379},[67],{"categories":3381},[],{"categories":3383},[],{"categories":3385},[177],{"categories":3387},[67],{"categories":3389},[180],{"categories":3391},[203],{"categories":3393},[108],{"categories":3395},[203],{"categories":3397},[140],{"categories":3399},[],{"categories":3401},[67],{"categories":3403},[],{"categories":3405},[67],{"categories":3407},[487],{"categories":3409},[67],{"categories":3411},[67],{"categories":3413},[108],{"categories":3415},[383],{"categories":3417},[67],{"categories":3419},[67],{"categories":3421},[67],{"categories":3423},[],{"categories":3425},[67,118],{"categories":3427},[140],{"categories":3429},[108],{"categories":3431},[118],{"categories":3433},[108],{"categories":3435},[756],{"categories":3437},[118],{"categories":3439},[67],{"categories":3441},[100],{"categories":3443},[],{"categories":3445},[],{"categories":3447},[108],{"categories":3449},[67],{"categories":3451},[118],{"categories":3453},[100],{"categories":3455},[118],{"categories":3457},[118],{"categories":3459},[67],{"categories":3461},[203],{"categories":3463},[67],{"categories":3465},[118],{"categories":3467},[],{"categories":3469},[67],{"categories":3471},[177,67],{"categories":3473},[234],{"categories":3475},[100],{"categories":3477},[],{"categories":3479},[67],{"categories":3481},[67],{"categories":3483},[103],{"categories":3485},[103],{"categories":3487},[67],{"categories":3489},[67],{"categories":3491},[320],{"categories":3493},[67],{"categories":3495},[118],{"categories":3497},[180],{"categories":3499},[108],{"categories":3501},[67],{"categories":3503},[67],{"categories":3505},[140],{"categories":3507},[203],{"categories":3509},[177],{"categories":3511},[67],{"categories":3513},[67],{"categories":3515},[67],{"categories":3517},[67],{"categories":3519},[100],{"categories":3521},[67],{"categories":3523},[108],{"categories":3525},[108],{"categories":3527},[118],{"categories":3529},[140],{"categories":3531},[118],{"categories":3533},[],{"categories":3535},[],{"categories":3537},[180],{"categories":3539},[67],{"categories":3541},[118],{"categories":3543},[67],{"categories":3545},[177],{"categories":3547},[383],{"categories":3549},[341],{"categories":3551},[320],{"categories":3553},[67],{"categories":3555},[67],{"categories":3557},[67],{"categories":3559},[180],{"categories":3561},[67],{"categories":3563},[67],{"categories":3565},[67],{"categories":3567},[108],{"categories":3569},[100],{"categories":3571},[108],{"categories":3573},[67,103],{"categories":3575},[],{"categories":3577},[177],{"categories":3579},[],{"categories":3581},[111],{"categories":3583},[67],{"categories":3585},[140],{"categories":3587},[100],{"categories":3589},[100],{"categories":3591},[108],{"categories":3593},[108],{"categories":3595},[108],{"categories":3597},[67],{"categories":3599},[67],{"categories":3601},[103],{"categories":3603},[118],{"categories":3605},[203],{"categories":3607},[67],{"categories":3609},[],{"categories":3611},[140],{"categories":3613},[67],{"categories":3615},[67],{"categories":3617},[67],{"categories":3619},[67],{"categories":3621},[67],{"categories":3623},[118],{"categories":3625},[140],{"categories":3627},[118],{"categories":3629},[118],{"categories":3631},[67],{"categories":3633},[67],{"categories":3635},[341],{"categories":3637},[67],{"categories":3639},[108],{"categories":3641},[140],{"categories":3643},[67],{"categories":3645},[67],{"categories":3647},[67],{"categories":3649},[108],{"categories":3651},[67],{"categories":3653},[67],{"categories":3655},[67],{"categories":3657},[2530],{"categories":3659},[3660],"Clinical AI",{"categories":3662},[177],{"categories":3664},[67],{"categories":3666},[67],{"categories":3668},[67],{"categories":3670},[234],{"categories":3672},[2009],{"categories":3674},[67],{"categories":3676},[111],{"categories":3678},[67],{"categories":3680},[108],{"categories":3682},[67],{"categories":3684},[67],{"categories":3686},[140],{"categories":3688},[67],{"categories":3690},[108],{"categories":3692},[203],{"categories":3694},[67],{"categories":3696},[67],{"categories":3698},[103],{"categories":3700},[67],{"categories":3702},[432],{"categories":3704},[67],{"categories":3706},[],{"categories":3708},[67],{"categories":3710},[118],{"categories":3712},[67],{"categories":3714},[],{"categories":3716},[],{"categories":3718},[67],{"categories":3720},[],{"categories":3722},[103],{"categories":3724},[67],{"categories":3726},[108],{"categories":3728},[140],{"categories":3730},[140],{"categories":3732},[140],{"categories":3734},[140],{"categories":3736},[],{"categories":3738},[100],{"categories":3740},[108],{"categories":3742},[140],{"categories":3744},[67],{"categories":3746},[487],{"categories":3748},[111],{"categories":3750},[67],{"categories":3752},[100],{"categories":3754},[108],{"categories":3756},[67],{"categories":3758},[67],{"categories":3760},[67,108],{"categories":3762},[108],{"categories":3764},[234],{"categories":3766},[140],{"categories":3768},[108],{"categories":3770},[140],{"categories":3772},[108],{"categories":3774},[67],{"categories":3776},[],{"categories":3778},[140],{"categories":3780},[203],{"categories":3782},[100],{"categories":3784},[67],{"categories":3786},[67],{"categories":3788},[],{"categories":3790},[118],{"categories":3792},[],{"categories":3794},[100],{"categories":3796},[108],{"categories":3798},[140],{"categories":3800},[67],{"categories":3802},[140],{"categories":3804},[100],{"categories":3806},[140],{"categories":3808},[140],{"categories":3810},[],{"categories":3812},[103],{"categories":3814},[108],{"categories":3816},[140],{"categories":3818},[140],{"categories":3820},[140],{"categories":3822},[140],{"categories":3824},[140],{"categories":3826},[140],{"categories":3828},[140],{"categories":3830},[140],{"categories":3832},[140],{"categories":3834},[140],{"categories":3836},[180],{"categories":3838},[100],{"categories":3840},[67],{"categories":3842},[67],{"categories":3844},[108],{"categories":3846},[108],{"categories":3848},[],{"categories":3850},[67,100],{"categories":3852},[],{"categories":3854},[108],{"categories":3856},[140],{"categories":3858},[108],{"categories":3860},[756],{"categories":3862},[67],{"categories":3864},[67],{"categories":3866},[67],{"categories":3868},[67],{"categories":3870},[320],{"categories":3872},[67],{"categories":3874},[108],{"categories":3876},[103],{"categories":3878},[108],{"categories":3880},[108],{"categories":3882},[],{"categories":3884},[108],{"categories":3886},[177],{"categories":3888},[140],{"categories":3890},[67],{"categories":3892},[],{"categories":3894},[],{"categories":3896},[108],{"categories":3898},[177],{"categories":3900},[67],{"categories":3902},[],{"categories":3904},[67],{"categories":3906},[],{"categories":3908},[203],{"categories":3910},[67],{"categories":3912},[],{"categories":3914},[],{"categories":3916},[140],{"categories":3918},[100],{"categories":3920},[67],{"categories":3922},[67],{"categories":3924},[103],{"categories":3926},[67],{"categories":3928},[67],{"categories":3930},[67],{"categories":3932},[103],{"categories":3934},[177],{"categories":3936},[],{"categories":3938},[67],{"categories":3940},[140],{"categories":3942},[],{"categories":3944},[67],{"categories":3946},[67],{"categories":3948},[177],{"categories":3950},[67],{"categories":3952},[203],{"categories":3954},[67],{"categories":3956},[234],{"categories":3958},[],{"categories":3960},[108],{"categories":3962},[203],{"categories":3964},[118],{"categories":3966},[],{"categories":3968},[67],{"categories":3970},[],{"categories":3972},[108],{"categories":3974},[177],{"categories":3976},[118],{"categories":3978},[],{"categories":3980},[2530],{"categories":3982},[103],{"categories":3984},[100],{"categories":3986},[180],{"categories":3988},[108],{"categories":3990},[177],{"categories":3992},[118],{"categories":3994},[],{"categories":3996},[],{"categories":3998},[67],{"categories":4000},[100],{"categories":4002},[67],{"categories":4004},[203],{"categories":4006},[],{"categories":4008},[108],{"categories":4010},[108],{"categories":4012},[108],{"categories":4014},[67],{"categories":4016},[140],{"categories":4018},[118],{"categories":4020},[67],{"categories":4022},[108],{"categories":4024},[111],{"categories":4026},[67],{"categories":4028},[108],{"categories":4030},[67],{"categories":4032},[111],{"categories":4034},[203],{"categories":4036},[140],{"categories":4038},[],{"categories":4040},[203],{"categories":4042},[],{"categories":4044},[118],{"categories":4046},[108],{"categories":4048},[],{"categories":4050},[67],{"categories":4052},[67],{"categories":4054},[67],{"categories":4056},[67],{"categories":4058},[108],{"categories":4060},[103],{"categories":4062},[100],{"categories":4064},[67],{"categories":4066},[177],{"categories":4068},[118],{"categories":4070},[118],{"categories":4072},[67],{"categories":4074},[180],{"categories":4076},[108],{"categories":4078},[67],{"categories":4080},[108],{"categories":4082},[67],{"categories":4084},[103],{"categories":4086},[177],{"categories":4088},[118],{"categories":4090},[108],{"categories":4092},[67],{"categories":4094},[111],{"categories":4096},[67],{"categories":4098},[108],{"categories":4100},[67],{"categories":4102},[140],{"categories":4104},[],{"categories":4106},[100],{"categories":4108},[67],{"categories":4110},[67],{"categories":4112},[67],{"categories":4114},[118],{"categories":4116},[67],{"categories":4118},[118],{"categories":4120},[67],{"categories":4122},[108],{"categories":4124},[67],{"categories":4126},[67],{"categories":4128},[67],{"categories":4130},[67],{"categories":4132},[],{"categories":4134},[67],{"categories":4136},[177],{"categories":4138},[103],{"categories":4140},[140],{"categories":4142},[108],{"categories":4144},[67],{"categories":4146},[67],{"categories":4148},[177],{"categories":4150},[108],{"categories":4152},[67],{"categories":4154},[203],{"categories":4156},[67],{"categories":4158},[180],{"categories":4160},[67],{"categories":4162},[67],{"categories":4164},[140],{"categories":4166},[67],{"categories":4168},[67],{"categories":4170},[108],{"categories":4172},[234],{"categories":4174},[67],{"categories":4176},[118],{"categories":4178},[108],{"categories":4180},[180],{"categories":4182},[],{"categories":4184},[108],{"categories":4186},[118],{"categories":4188},[67],{"categories":4190},[1873],{"categories":4192},[177],{"categories":4194},[261],{"categories":4196},[67],{"categories":4198},[100],{"categories":4200},[118],{"categories":4202},[103],{"categories":4204},[118],{"categories":4206},[67],{"categories":4208},[],{"categories":4210},[108],{"categories":4212},[108],{"categories":4214},[67],{"categories":4216},[67],{"categories":4218},[180],{"categories":4220},[],{"categories":4222},[140],{"categories":4224},[],{"categories":4226},[140],{"categories":4228},[67],{"categories":4230},[67],{"categories":4232},[108],{"categories":4234},[108],{"categories":4236},[108],{"categories":4238},[],{"categories":4240},[140],{"categories":4242},[67],{"categories":4244},[],{"categories":4246},[67],{"categories":4248},[67],{"categories":4250},[],{"categories":4252},[177],{"categories":4254},[118],{"categories":4256},[108],{"categories":4258},[67],{"categories":4260},[67],{"categories":4262},[203],{"categories":4264},[67],{"categories":4266},[67],{"categories":4268},[100],{"categories":4270},[],{"categories":4272},[67],{"categories":4274},[67],{"categories":4276},[],{"categories":4278},[100],{"categories":4280},[140],{"categories":4282},[118],{"categories":4284},[383],{"categories":4286},[67],{"categories":4288},[67],{"categories":4290},[67],{"categories":4292},[118],{"categories":4294},[140],{"categories":4296},[177],{"categories":4298},[67],{"categories":4300},[67],{"categories":4302},[67],{"categories":4304},[140],{"categories":4306},[177],{"categories":4308},[67],{"categories":4310},[140],{"categories":4312},[177],{"categories":4314},[67],{"categories":4316},[140],{"categories":4318},[108],{"categories":4320},[108],{"categories":4322},[108],{"categories":4324},[118],{"categories":4326},[140],{"categories":4328},[108],{"categories":4330},[108],{"categories":4332},[67],{"categories":4334},[118],{"categories":4336},[177],{"categories":4338},[67],{"categories":4340},[],{"categories":4342},[108],{"categories":4344},[],{"categories":4346},[],{"categories":4348},[],{"categories":4350},[108],{"categories":4352},[103],{"categories":4354},[108],{"categories":4356},[4357],"Liability & Ethics",{"categories":4359},[67],{"categories":4361},[108],{"categories":4363},[100],{"categories":4365},[108],{"categories":4367},[103],{"categories":4369},[203],{"categories":4371},[108],{"categories":4373},[],{"categories":4375},[468],{"categories":4377},[108],{"categories":4379},[],{"categories":4381},[100],{"categories":4383},[108],{"categories":4385},[],{"categories":4387},[108],{"categories":4389},[67],{"categories":4391},[67],{"categories":4393},[140],{"categories":4395},[67],{"categories":4397},[67],{"categories":4399},[108],{"categories":4401},[67],{"categories":4403},[67],{"categories":4405},[140],{"categories":4407},[108],{"categories":4409},[118],{"categories":4411},[177],{"categories":4413},[100],{"categories":4415},[67],{"categories":4417},[],{"categories":4419},[108],{"categories":4421},[108],{"categories":4423},[383],{"categories":4425},[177],{"categories":4427},[234],{"categories":4429},[140],{"categories":4431},[67],{"categories":4433},[177],{"categories":4435},[67],{"categories":4437},[100],{"categories":4439},[],{"categories":4441},[108],{"categories":4443},[67],{"categories":4445},[67],{"categories":4447},[108],{"categories":4449},[67],{"categories":4451},[177],{"categories":4453},[],{"categories":4455},[108],{"categories":4457},[111],{"categories":4459},[140],{"categories":4461},[108],{"categories":4463},[103],{"categories":4465},[],{"categories":4467},[67],{"categories":4469},[111],{"categories":4471},[67],{"categories":4473},[108],{"categories":4475},[140],{"categories":4477},[100],{"categories":4479},[234],{"categories":4481},[67],{"categories":4483},[67],{"categories":4485},[67],{"categories":4487},[140],{"categories":4489},[103],{"categories":4491},[67],{"categories":4493},[177],{"categories":4495},[140],{"categories":4497},[234],{"categories":4499},[67],{"categories":4501},[108],{"categories":4503},[],{"categories":4505},[432],{"categories":4507},[],{"categories":4509},[67],{"categories":4511},[234],{"categories":4513},[180],{"categories":4515},[108],{"categories":4517},[108],{"categories":4519},[4520],"Design News & Tools",{"categories":4522},[67],{"categories":4524},[140],{"categories":4526},[67],{"categories":4528},[100],{"categories":4530},[67],{"categories":4532},[177],{"categories":4534},[108],{"categories":4536},[108],{"categories":4538},[67],{"categories":4540},[383],{"categories":4542},[67],{"categories":4544},[383],{"categories":4546},[203],{"categories":4548},[67],{"categories":4550},[108],{"categories":4552},[],{"categories":4554},[67],{"categories":4556},[67],{"categories":4558},[67],{"categories":4560},[140],{"categories":4562},[100],{"categories":4564},[],{"categories":4566},[67],{"categories":4568},[67],{"categories":4570},[118],{"categories":4572},[487],{"categories":4574},[118],{"categories":4576},[177],{"categories":4578},[67],{"categories":4580},[67,108],{"categories":4582},[203,103],{"categories":4584},[67],{"categories":4586},[67],{"categories":4588},[67],{"categories":4590},[],{"categories":4592},[108],{"categories":4594},[],{"categories":4596},[118],{"categories":4598},[67],{"categories":4600},[118],{"categories":4602},[],{"categories":4604},[108],{"categories":4606},[67],{"categories":4608},[140],{"categories":4610},[67],{"categories":4612},[],{"categories":4614},[108],{"categories":4616},[67],{"categories":4618},[],{"categories":4620},[177],{"categories":4622},[67],{"categories":4624},[108],{"categories":4626},[67],{"categories":4628},[67],{"categories":4630},[100],{"categories":4632},[108],{"categories":4634},[67],{"categories":4636},[],{"categories":4638},[234],{"categories":4640},[203],{"categories":4642},[103],{"categories":4644},[103],{"categories":4646},[67],{"categories":4648},[100],{"categories":4650},[100],{"categories":4652},[67],{"categories":4654},[108],{"categories":4656},[67],{"categories":4658},[67],{"categories":4660},[67],{"categories":4662},[118],{"categories":4664},[67],{"categories":4666},[100],{"categories":4668},[108],{"categories":4670},[67],{"categories":4672},[203],{"categories":4674},[67],{"categories":4676},[140],{"categories":4678},[67],{"categories":4680},[67],{"categories":4682},[108],{"categories":4684},[67],{"categories":4686},[],{"categories":4688},[118],{"categories":4690},[],{"categories":4692},[118],{"categories":4694},[108],{"categories":4696},[100],{"categories":4698},[],{"categories":4700},[180],{"categories":4702},[234],{"categories":4704},[67],{"categories":4706},[118],{"categories":4708},[67],{"categories":4710},[],{"categories":4712},[140],{"categories":4714},[108],{"categories":4716},[118],{"categories":4718},[177],{"categories":4720},[67],{"categories":4722},[108],{"categories":4724},[118],{"categories":4726},[108],{"categories":4728},[140],{"categories":4730},[67],{"categories":4732},[100],{"categories":4734},[140],{"categories":4736},[118],{"categories":4738},[67],{"categories":4740},[177],{"categories":4742},[103],{"categories":4744},[67],{"categories":4746},[67],{"categories":4748},[67],{"categories":4750},[67],{"categories":4752},[67],{"categories":4754},[108],{"categories":4756},[67],{"categories":4758},[108],{"categories":4760},[67],{"categories":4762},[67],{"categories":4764},[100],{"categories":4766},[67],{"categories":4768},[108],{"categories":4770},[108],{"categories":4772},[177],{"categories":4774},[108],{"categories":4776},[108],{"categories":4778},[100],{"categories":4780},[108],{"categories":4782},[177],{"categories":4784},[],{"categories":4786},[67],{"categories":4788},[180],{"categories":4790},[383],{"categories":4792},[67],{"categories":4794},[67],{"categories":4796},[67],{"categories":4798},[118],{"categories":4800},[],{"categories":4802},[108],{"categories":4804},[203],{"categories":4806},[67],{"categories":4808},[140],{"categories":4810},[108],{"categories":4812},[67],{"categories":4814},[203],{"categories":4816},[108],{"categories":4818},[103],{"categories":4820},[103],{"categories":4822},[67],{"categories":4824},[67],{"categories":4826},[67],{"categories":4828},[100],{"categories":4830},[],{"categories":4832},[67],{"categories":4834},[108],{"categories":4836},[108],{"categories":4838},[67],{"categories":4840},[67],{"categories":4842},[67],{"categories":4844},[118],{"categories":4846},[],{"categories":4848},[100],{"categories":4850},[67],{"categories":4852},[67],{"categories":4854},[108],{"categories":4856},[108],{"categories":4858},[],{"categories":4860},[118],{"categories":4862},[118],{"categories":4864},[67],{"categories":4866},[203],{"categories":4868},[103],{"categories":4870},[177],{"categories":4872},[],{"categories":4874},[67],{"categories":4876},[108],{"categories":4878},[100],{"categories":4880},[67],{"categories":4882},[118],{"categories":4884},[100],{"categories":4886},[140],{"categories":4888},[180],{"categories":4890},[140],{"categories":4892},[108],{"categories":4894},[],{"categories":4896},[140],{"categories":4898},[108],{"categories":4900},[177],{"categories":4902},[180],{"categories":4904},[67],{"categories":4906},[],{"categories":4908},[108],{"categories":4910},[2530],{"categories":4912},[140],{"categories":4914},[118],{"categories":4916},[67],{"categories":4918},[67],{"categories":4920},[103],{"categories":4922},[67],{"categories":4924},[100],{"categories":4926},[1451],{"categories":4928},[234],{"categories":4930},[100],{"categories":4932},[],{"categories":4934},[],{"categories":4936},[140],{"categories":4938},[108],{"categories":4940},[140],{"categories":4942},[],{"categories":4944},[108],{"categories":4946},[108],{"categories":4948},[108],{"categories":4950},[],{"categories":4952},[67],{"categories":4954},[],{"categories":4956},[140],{"categories":4958},[100],{"categories":4960},[177],{"categories":4962},[67],{"categories":4964},[108],{"categories":4966},[140],{"categories":4968},[67],{"categories":4970},[140],{"categories":4972},[],{"categories":4974},[140],{"categories":4976},[100],{"categories":4978},[383],{"categories":4980},[108],{"categories":4982},[67],{"categories":4984},[],{"categories":4986},[118],{"categories":4988},[108],{"categories":4990},[111],{"categories":4992},[108],{"categories":4994},[100],{"categories":4996},[],{"categories":4998},[],{"categories":5000},[],{"categories":5002},[177],{"categories":5004},[108],{"categories":5006},[67],{"categories":5008},[67],{"categories":5010},[],{"categories":5012},[],{"categories":5014},[],{"categories":5016},[177],{"categories":5018},[67],{"categories":5020},[],{"categories":5022},[108],{"categories":5024},[67],{"categories":5026},[100],{"categories":5028},[],{"categories":5030},[],{"categories":5032},[177],{"categories":5034},[67],{"categories":5036},[140],{"categories":5038},[],{"categories":5040},[203],{"categories":5042},[140],{"categories":5044},[203],{"categories":5046},[180],{"categories":5048},[67],{"categories":5050},[67],{"categories":5052},[],{"categories":5054},[],{"categories":5056},[108],{"categories":5058},[],{"categories":5060},[67],{"categories":5062},[383],{"categories":5064},[67],{"categories":5066},[67],{"categories":5068},[67],{"categories":5070},[],{"categories":5072},[108],{"categories":5074},[67],{"categories":5076},[67],{"categories":5078},[],{"categories":5080},[108],{"categories":5082},[67],{"categories":5084},[140],{"categories":5086},[67],{"categories":5088},[203],{"categories":5090},[103],{"categories":5092},[67],{"categories":5094},[67],{"categories":5096},[108],{"categories":5098},[180],{"categories":5100},[108],{"categories":5102},[108],{"categories":5104},[],{"categories":5106},[],{"categories":5108},[67],{"categories":5110},[],{"categories":5112},[140],{"categories":5114},[103],{"categories":5116},[],{"categories":5118},[],{"categories":5120},[177],{"categories":5122},[100],{"categories":5124},[],{"categories":5126},[103],{"categories":5128},[203],{"categories":5130},[67],{"categories":5132},[118],{"categories":5134},[100],{"categories":5136},[180],{"categories":5138},[103],{"categories":5140},[118],{"categories":5142},[118],{"categories":5144},[],{"categories":5146},[67],{"categories":5148},[],{"categories":5150},[108],{"categories":5152},[100],{"categories":5154},[177],{"categories":5156},[67],{"categories":5158},[100],{"categories":5160},[108],{"categories":5162},[234],{"categories":5164},[67],{"categories":5166},[67],{"categories":5168},[67],{"categories":5170},[100],{"categories":5172},[180],{"categories":5174},[108],{"categories":5176},[],{"categories":5178},[67],{"categories":5180},[118],{"categories":5182},[140],{"categories":5184},[118],{"categories":5186},[67],{"categories":5188},[111],{"categories":5190},[],{"categories":5192},[177],{"categories":5194},[140],{"categories":5196},[100],{"categories":5198},[108],{"categories":5200},[67],{"categories":5202},[67],{"categories":5204},[108],{"categories":5206},[67],{"categories":5208},[67],{"categories":5210},[103],{"categories":5212},[108],{"categories":5214},[108,234],{"categories":5216},[108],{"categories":5218},[118],{"categories":5220},[67],{"categories":5222},[67],{"categories":5224},[180],{"categories":5226},[108],{"categories":5228},[203],{"categories":5230},[108],{"categories":5232},[103],{"categories":5234},[],{"categories":5236},[108],{"categories":5238},[67],{"categories":5240},[103],{"categories":5242},[],{"categories":5244},[],{"categories":5246},[118],{"categories":5248},[67],{"categories":5250},[67],{"categories":5252},[108],{"categories":5254},[180],{"categories":5256},[203],{"categories":5258},[67],{"categories":5260},[67],{"categories":5262},[108],{"categories":5264},[],{"categories":5266},[108],{"categories":5268},[140],{"categories":5270},[108],{"categories":5272},[],{"categories":5274},[140],{"categories":5276},[118],{"categories":5278},[2530],{"categories":5280},[100],{"categories":5282},[118],{"categories":5284},[67],{"categories":5286},[108],{"categories":5288},[67],{"categories":5290},[67],{"categories":5292},[203],{"categories":5294},[118],{"categories":5296},[],{"categories":5298},[140],{"categories":5300},[67],{"categories":5302},[],{"categories":5304},[108],{"categories":5306},[67],{"categories":5308},[67],{"categories":5310},[67],{"categories":5312},[108],{"categories":5314},[67],{"categories":5316},[67],{"categories":5318},[111],{"categories":5320},[108],{"categories":5322},[67],{"categories":5324},[67],{"categories":5326},[67],{"categories":5328},[67],{"categories":5330},[67],{"categories":5332},[67],{"categories":5334},[103],{"categories":5336},[],{"categories":5338},[111],{"categories":5340},[140],{"categories":5342},[108],{"categories":5344},[67],{"categories":5346},[118],{"categories":5348},[],{"categories":5350},[118],{"categories":5352},[118],{"categories":5354},[108],{"categories":5356},[118],{"categories":5358},[67],{"categories":5360},[67],{"categories":5362},[118],{"categories":5364},[67],{"categories":5366},[108],{"categories":5368},[140],{"categories":5370},[67],{"categories":5372},[67],{"categories":5374},[67],{"categories":5376},[103],{"categories":5378},[67],{"categories":5380},[108],{"categories":5382},[177],{"categories":5384},[],{"categories":5386},[67],{"categories":5388},[180],{"categories":5390},[108],{"categories":5392},[67],{"categories":5394},[],{"categories":5396},[67],{"categories":5398},[67],{"categories":5400},[140],{"categories":5402},[67],{"categories":5404},[67],{"categories":5406},[108],{"categories":5408},[203],{"categories":5410},[],{"categories":5412},[],{"categories":5414},[118],{"categories":5416},[140],{"categories":5418},[118],{"categories":5420},[140],{"categories":5422},[67],{"categories":5424},[203],{"categories":5426},[67],{"categories":5428},[100],{"categories":5430},[108],{"categories":5432},[67],{"categories":5434},[108],{"categories":5436},[108],{"categories":5438},[67],{"categories":5440},[103],{"categories":5442},[],{"categories":5444},[180],{"categories":5446},[67],{"categories":5448},[],{"categories":5450},[140],{"categories":5452},[67],{"categories":5454},[180],{"categories":5456},[67],{"categories":5458},[118],{"categories":5460},[118],{"categories":5462},[118],{"categories":5464},[108],{"categories":5466},[108],{"categories":5468},[108],{"categories":5470},[67],{"categories":5472},[67],{"categories":5474},[177],{"categories":5476},[180],{"categories":5478},[180],{"categories":5480},[],{"categories":5482},[140],{"categories":5484},[67],{"categories":5486},[67],{"categories":5488},[118],{"categories":5490},[],{"categories":5492},[140],{"categories":5494},[140],{"categories":5496},[140],{"categories":5498},[],{"categories":5500},[108],{"categories":5502},[67],{"categories":5504},[],{"categories":5506},[100],{"categories":5508},[103],{"categories":5510},[],{"categories":5512},[67],{"categories":5514},[67],{"categories":5516},[],{"categories":5518},[118],{"categories":5520},[],{"categories":5522},[],{"categories":5524},[],{"categories":5526},[],{"categories":5528},[67],{"categories":5530},[140],{"categories":5532},[],{"categories":5534},[],{"categories":5536},[67],{"categories":5538},[67],{"categories":5540},[67],{"categories":5542},[180],{"categories":5544},[67],{"categories":5546},[180],{"categories":5548},[],{"categories":5550},[180],{"categories":5552},[180],{"categories":5554},[234],{"categories":5556},[108],{"categories":5558},[118],{"categories":5560},[],{"categories":5562},[],{"categories":5564},[180],{"categories":5566},[118],{"categories":5568},[118],{"categories":5570},[118],{"categories":5572},[],{"categories":5574},[100],{"categories":5576},[118],{"categories":5578},[118],{"categories":5580},[100],{"categories":5582},[118],{"categories":5584},[103],{"categories":5586},[118],{"categories":5588},[118],{"categories":5590},[118],{"categories":5592},[180],{"categories":5594},[140],{"categories":5596},[140],{"categories":5598},[67],{"categories":5600},[118],{"categories":5602},[180],{"categories":5604},[234],{"categories":5606},[180],{"categories":5608},[180],{"categories":5610},[180],{"categories":5612},[],{"categories":5614},[103],{"categories":5616},[],{"categories":5618},[234],{"categories":5620},[118],{"categories":5622},[118],{"categories":5624},[118],{"categories":5626},[108],{"categories":5628},[140,103],{"categories":5630},[180],{"categories":5632},[],{"categories":5634},[],{"categories":5636},[180],{"categories":5638},[],{"categories":5640},[180],{"categories":5642},[140],{"categories":5644},[108],{"categories":5646},[],{"categories":5648},[118],{"categories":5650},[67],{"categories":5652},[177],{"categories":5654},[],{"categories":5656},[67],{"categories":5658},[],{"categories":5660},[140],{"categories":5662},[100],{"categories":5664},[180],{"categories":5666},[],{"categories":5668},[118],{"categories":5670},[140],[5672,5781,5977,6345],{"id":5673,"title":5674,"ai":5675,"body":5681,"categories":5735,"created_at":68,"date_modified":68,"description":60,"extension":69,"faq":68,"featured":70,"kicker_label":68,"meta":5736,"navigation":78,"path":5768,"published_at":5769,"question":68,"scraped_at":5770,"seo":5771,"sitemap":5772,"source_id":5773,"source_name":5774,"source_type":86,"source_url":5775,"stem":5776,"tags":5777,"thumbnail_url":68,"tldr":5778,"tweet":68,"unknown_tags":5779,"__hash__":5780},"summaries\u002Fsummaries\u002F352a655761b08b28-35b-models-on-rtx-4090-turboquant-kv-compression-u-summary.md","35B Models on RTX 4090: TurboQuant KV Compression Unlocks 32K Context",{"provider":7,"model":5676,"input_tokens":5677,"output_tokens":5678,"processing_time_ms":5679,"cost_usd":5680},"x-ai\u002Fgrok-4.1-fast",6914,2052,13171,0.00190195,{"type":14,"value":5682,"toc":5729},[5683,5687,5690,5694,5697,5701,5707,5713,5719,5722,5726],[17,5684,5686],{"id":5685},"q4_k_m-quantization-delivers-90-95-quality-at-60-original-size","Q4_K_M Quantization Delivers 90-95% Quality at 60% Original Size",[22,5688,5689],{},"Q4_K_M GGUF compresses model weights to ~0.6 GB per billion parameters (7B → 4GB, 32B → 19GB, 70B → 40GB) by storing weights in 4 bits with K-quant block grouping and M-medium mixed precision for sensitive layers. This preserves 90-95% of FP16 accuracy, making it the default for local runs on HuggingFace\u002FOllama. Dense 35B models need 21-22GB VRAM for weights alone on RTX 4090 (24GB total), leaving ~2GB for KV cache—insufficient beyond short contexts. MoE 35B (e.g., Qwen2.5-35B-A3B) activates only 3B params\u002Ftoken, fitting in ~20GB with 1.2GB KV at 64K context due to fewer active heads, reducing TurboQuant's necessity.",[17,5691,5693],{"id":5692},"turboquant-stacks-on-weights-for-long-context-memory-wins","TurboQuant Stacks on Weights for Long-Context Memory Wins",[22,5695,5696],{},"TurboQuant compresses KV cache to 2-4 bits at inference (PolarQuant + QJL, e.g., bits=3) without touching weights, enabling dense models like Mistral Small 3.1 24B or Qwen2.5-32B (64 layers, 8 GQA heads, head_dim=128) to handle 32K context on 24GB VRAM. Formula: 2 × layers × heads × head_dim × seq_len × bytes\u002Felement. Without it, 16K context KV hits ~4GB (total ~24GB borderline); with turbo3, drops to ~1.2GB, freeing space for 32K (~2.4GB). Fused Triton kernels compute attention on compressed KV, speeding up >8K contexts (major at 32K+). Asymmetric K@3bits\u002FV@2bits saves more with zero quality loss empirically.",[17,5698,5700],{"id":5699},"three-paths-to-turboquant-on-24gb-gpus-today","Three Paths to TurboQuant on 24GB GPUs Today",[22,5702,5703,5706],{},[39,5704,5705],{},"PyPI turboquant-kv",": Wrap HF Transformers (load_in_4bit) with TurboQuantModel(bits=3).enable_decoder_fused_attention() for Python scripts; handles 512+ new tokens on long inputs.",[22,5708,5709,5712],{},[39,5710,5711],{},"vLLM fork (0xSero\u002Fturboquant)",": install_turboquant_vllm(bits=3, head_dim=128) before LLM(model, gpu_memory_utilization=0.92); prebuilt codebooks for d=128\u002F256 at 2\u002F3\u002F4 bits; server-friendly.",[22,5714,5715,5718],{},[39,5716,5717],{},"llama.cpp fork (turboquant_plus)",": Build with CUDA, run llama-server -m model-Q4_K_M.gguf --cache-type-k turbo3 --cache-type-v turbo2 -c 32768 -ngl 99. Turbo4 ≈ q8_0 quality, turbo3 best tradeoff, turbo2 extreme. Fits 32K on Qwen2.5-32B (19GB weights + \u003C4GB KV).",[22,5720,5721],{},"Quality holds ≥8B models; speedups context-dependent (\u003C2K: memory only). Experimental—await Google impl (Q2-Q3 2026), llama.cpp #20969, vLLM #38171 merges.",[17,5723,5725],{"id":5724},"optimal-stack-q4_k_m-gguf-turboquant_plus-turbo32","Optimal Stack: Q4_K_M GGUF + turboquant_plus turbo3\u002F2",[22,5727,5728],{},"Download Q4_K_M GGUF, use llama.cpp fork at 16-32K context. Achieves reliable 35B dense inference where defaults crash; 128K impossible (KV still GBs post-compression).",{"title":60,"searchDepth":61,"depth":61,"links":5730},[5731,5732,5733,5734],{"id":5685,"depth":61,"text":5686},{"id":5692,"depth":61,"text":5693},{"id":5699,"depth":61,"text":5700},{"id":5724,"depth":61,"text":5725},[67],{"content_references":5737,"triage":5766},[5738,5743,5746,5750,5754,5757,5760,5763],{"type":5739,"title":5740,"url":5741,"context":5742},"other","GGUF","https:\u002F\u002Fhuggingface.co\u002Fdocs\u002Fhub\u002Fgguf","mentioned",{"type":5739,"title":5744,"url":5745,"context":5742},"AWQ","https:\u002F\u002Fhuggingface.co\u002Fdocs\u002Ftransformers\u002Fquantization\u002Fawq",{"type":5739,"title":5747,"url":5748,"context":5749},"VRAM Requirements for AI Models","https:\u002F\u002Fwillitrunai.com\u002Fblog\u002Fvram-requirements-for-ai-models","cited",{"type":5751,"title":5752,"context":5753},"tool","turboquant-kv","recommended",{"type":5751,"title":5755,"url":5756,"context":5753},"0xSero\u002Fturboquant","https:\u002F\u002Fgithub.com\u002F0xSero\u002Fturboquant.git",{"type":5751,"title":5758,"url":5759,"context":5753},"turboquant_plus","https:\u002F\u002Fgithub.com\u002FTheTom\u002Fturboquant_plus.git",{"type":5739,"title":5761,"url":5762,"context":5742},"llama.cpp discussion #20969","https:\u002F\u002Fgithub.com\u002Fggml-org\u002Fllama.cpp\u002Fdiscussions\u002F20969",{"type":5739,"title":5764,"url":5765,"context":5742},"vLLM issue #38171","https:\u002F\u002Fgithub.com\u002Fvllm-project\u002Fvllm\u002Fissues\u002F38171",{"relevance":74,"novelty":75,"quality":75,"actionability":75,"composite":76,"reasoning":5767},"Category: AI & LLMs. The article provides in-depth technical insights on running large language models efficiently, addressing the pain point of integrating AI features into products. It offers specific implementation paths for using TurboQuant, which is actionable for developers looking to optimize AI model performance.","\u002Fsummaries\u002F352a655761b08b28-35b-models-on-rtx-4090-turboquant-kv-compression-u-summary","2026-04-15 12:31:01","2026-04-15 15:39:14",{"title":5674,"description":60},{"loc":5768},"352a655761b08b28","Towards AI","https:\u002F\u002Fpub.towardsai.net\u002Frunning-a-35b-model-locally-with-turboquant-whats-actually-possible-right-now-1ac5327430b0?source=rss----98111c9905da---4","summaries\u002F352a655761b08b28-35b-models-on-rtx-4090-turboquant-kv-compression-u-summary",[90,91,92],"Stack Q4_K_M weight quantization with TurboQuant's 3-bit KV cache compression to run dense 35B models at 32K context on 24GB VRAM, fitting weights (20GB) + KV cache (under 4GB) with room to spare—use llama.cpp forks today.",[],"sGRm9blteDamXpWHWdqmPUk1Seq5Nct_nBmywP1bFT0",{"id":5782,"title":5783,"ai":5784,"body":5789,"categories":5955,"created_at":68,"date_modified":68,"description":60,"extension":69,"faq":68,"featured":70,"kicker_label":68,"meta":5956,"navigation":78,"path":5966,"published_at":68,"question":68,"scraped_at":5967,"seo":5968,"sitemap":5969,"source_id":5970,"source_name":5971,"source_type":86,"source_url":5765,"stem":5972,"tags":5973,"thumbnail_url":68,"tldr":5974,"tweet":68,"unknown_tags":5975,"__hash__":5976},"summaries\u002Fsummaries\u002Fd32d038984e0c1db-turboquant-4-7x-kv-cache-compression-in-vllm-summary.md","TurboQuant: 4-7x KV Cache Compression in vLLM",{"provider":7,"model":5676,"input_tokens":5785,"output_tokens":5786,"processing_time_ms":5787,"cost_usd":5788},10176,1474,8441,0.0027497,{"type":14,"value":5790,"toc":5950},[5791,5795,5798,5801,5805,5808,5887,5890,5894,5897,5947],[17,5792,5794],{"id":5793},"turboquant-delivers-superior-kv-cache-compression","TurboQuant Delivers Superior KV Cache Compression",[22,5796,5797],{},"TurboQuant uses online vector quantization with QR rotation, Lloyd-Max codebooks, and bit-packing for 2-4 bit (including 2.5\u002F3.5 fractional) KV caches, achieving provably near-optimal distortion within 2.7x of information-theoretic limits. Unlike scalar methods like FP8 (e4m3\u002Fe5m2) or INT4, it preserves inner products unbiased—key for attention—while enabling 4-5x memory savings. Paper benchmarks show perfect Needle-in-a-Haystack recall at 4x compression and competitive LongBench scores at 2.5-3.5 bits\u002Fdim. It requires no preprocessing, runs online, and suits accelerators.",[22,5799,5800],{},"vLLM alternatives (FP8, compressed-tensors) optimize MSE element-wise but lack vector codebooks, inner-product focus, theoretical guarantees, or sub-4-bit flexibility.",[17,5802,5804],{"id":5803},"proven-zero-loss-performance-and-throughput-gains","Proven Zero-Loss Performance and Throughput Gains",[22,5806,5807],{},"PoC on Qwen2.5-7B (H200, 4K-16K context) yields:",[5809,5810,5811,5830],"table",{},[5812,5813,5814],"thead",{},[5815,5816,5817,5821,5824,5827],"tr",{},[5818,5819,5820],"th",{},"Config",[5818,5822,5823],{},"Exact Match",[5818,5825,5826],{},"Avg Cache GB",[5818,5828,5829],{},"vs Full",[5831,5832,5833,5848,5861,5874],"tbody",{},[5815,5834,5835,5839,5842,5845],{},[5836,5837,5838],"td",{},"Full",[5836,5840,5841],{},"6\u002F6",[5836,5843,5844],{},"0.510",[5836,5846,5847],{},"1.0x",[5815,5849,5850,5853,5855,5858],{},[5836,5851,5852],{},"TQ 2-bit",[5836,5854,5841],{},[5836,5856,5857],{},"0.068",[5836,5859,5860],{},"7.5x",[5815,5862,5863,5866,5868,5871],{},[5836,5864,5865],{},"TQ 3.5-bit",[5836,5867,5841],{},[5836,5869,5870],{},"0.112",[5836,5872,5873],{},"4.5x",[5815,5875,5876,5879,5881,5884],{},[5836,5877,5878],{},"TQ 4-bit",[5836,5880,5841],{},[5836,5882,5883],{},"0.132",[5836,5885,5886],{},"3.9x",[22,5888,5889],{},"Upstream PR #38280 (Qwen2.5-1.5B, H200) confirms 12\u002F12 exact matches across bit-widths, TTFT\u002FITL latency matching baseline (9.3ms\u002F8.4ms), and 21% throughput boost at batch=16. Phase 2 adds bit-packed uint8 storage (ceil(head_size*bits\u002F8)+2 bytes\u002Fslot) for full ratios.",[17,5891,5893],{"id":5892},"straightforward-vllm-integration-path","Straightforward vLLM Integration Path",[22,5895,5896],{},"Aligns with vLLM's framework:",[5898,5899,5900,5916,5923,5930,5937,5940],"ul",{},[36,5901,5902,5903,5907,5908,5911,5912,5915],{},"Extend ",[5904,5905,5906],"code",{},"CacheDType"," in ",[5904,5909,5910],{},"cache.py","\u002F",[5904,5913,5914],{},"torch_utils.py"," for integer indices.",[36,5917,5918,5919,5922],{},"Add ",[5904,5920,5921],{},"@register_quantization_config(\"turboquant\") TurboQuantConfig"," targeting Attention layers.",[36,5924,5925,5926,5929],{},"Implement ",[5904,5927,5928],{},"TurboQuantKVCacheMethod"," (extends BaseKVCacheMethod) for codebook params, MSE\u002FIP variants, per-head support.",[36,5931,5932,5933,5936],{},"Update ",[5904,5934,5935],{},"is_quantized_kv_cache()"," detection.",[36,5938,5939],{},"CUDA\u002FTriton encode\u002Fdecode kernels (43\u002F43 tests pass).",[36,5941,5942,5943,5946],{},"Adjust ",[5904,5944,5945],{},"KVCacheSpec"," for codebook overhead\u002Fvariable ratios.",[22,5948,5949],{},"PoC covers steps 1-5; PR #38280 integrates fully with Triton attention. Related: PolarQuant, ollama\u002Follama#15051, llama.cpp#20977, vllm-omni#2214.",{"title":60,"searchDepth":61,"depth":61,"links":5951},[5952,5953,5954],{"id":5793,"depth":61,"text":5794},{"id":5803,"depth":61,"text":5804},{"id":5892,"depth":61,"text":5893},[67],{"content_references":5957,"triage":5962},[5958],{"type":5959,"title":5960,"url":5961,"context":5749},"paper","TurboQuant: Online Vector Quantization with Near-optimal Distortion Rate","https:\u002F\u002Farxiv.org\u002Fpdf\u002F2504.19874",{"relevance":75,"novelty":5963,"quality":75,"actionability":75,"composite":5964,"reasoning":5965},3,3.8,"Category: AI & LLMs. The article discusses TurboQuant's vector quantization for KV cache compression, which is relevant for AI engineers looking to optimize LLM performance. It provides specific integration steps for vLLM, making it actionable for developers, though the content is quite technical and may not be accessible to all audiences.","\u002Fsummaries\u002Fd32d038984e0c1db-turboquant-4-7x-kv-cache-compression-in-vllm-summary","2026-04-16 03:08:39",{"title":5783,"description":60},{"loc":5966},"d32d038984e0c1db","__oneoff__","summaries\u002Fd32d038984e0c1db-turboquant-4-7x-kv-cache-compression-in-vllm-summary",[90,91,92],"TurboQuant vector quantization compresses vLLM KV caches 3.9-7.5x at 2-4 bits\u002Fdim with perfect Needle-in-a-Haystack recall, zero latency overhead, and 21% throughput gains.",[],"XlnqSgcG5nhgzzRW6Sdk3XPgtmFuSj6gJC1hWx2uIwk",{"id":5978,"title":5979,"ai":5980,"body":5985,"categories":6332,"created_at":68,"date_modified":68,"description":60,"extension":69,"faq":68,"featured":70,"kicker_label":68,"meta":6333,"navigation":78,"path":6334,"published_at":6335,"question":68,"scraped_at":68,"seo":6336,"sitemap":6337,"source_id":6338,"source_name":85,"source_type":86,"source_url":6339,"stem":6340,"tags":6341,"thumbnail_url":68,"tldr":6342,"tweet":68,"unknown_tags":6343,"__hash__":6344},"summaries\u002Fsummaries\u002Fllm-as-judge-evaluates-rag-keyword-beats-vector-summary.md","LLM-as-Judge Evaluates RAG: Keyword Beats Vector",{"provider":7,"model":5676,"input_tokens":5981,"output_tokens":5982,"processing_time_ms":5983,"cost_usd":5984},5849,1975,17506,0.0021348,{"type":14,"value":5986,"toc":6327},[5987,5991,5998,6004,6024,6029,6047,6062,6066,6077,6098,6101,6172,6175,6202,6205,6225,6228,6263,6267,6270,6316,6323],[17,5988,5990],{"id":5989},"rag-needs-automated-internal-evaluation-for-optimization","RAG Needs Automated Internal Evaluation for Optimization",[22,5992,5993,5994,5997],{},"RAG systems require quantitative evaluation to compare optimizations like retrieval strategies, avoiding manual checks that are slow and subjective—integrate into CI\u002FCD pipelines like unit tests. Focus on ",[39,5995,5996],{},"internal evaluation"," of retrieval and generation modules:",[22,5999,6000,6003],{},[39,6001,6002],{},"Retrieval metrics",":",[5898,6005,6006,6012,6018],{},[36,6007,6008,6011],{},[39,6009,6010],{},"Relevance",": Retrieved chunks match query?",[36,6013,6014,6017],{},[39,6015,6016],{},"Coverage",": All relevant database chunks fetched?",[36,6019,6020,6023],{},[39,6021,6022],{},"Correctness",": High signal-to-noise ratio, relevant chunks ranked top?",[22,6025,6026,6003],{},[39,6027,6028],{},"Generation metrics",[5898,6030,6031,6036,6042],{},[36,6032,6033,6035],{},[39,6034,6010],{},": Answer aligns with query, no off-topic drift?",[36,6037,6038,6041],{},[39,6039,6040],{},"Factuality",": Answer grounded in retrieved sources, no hallucinations?",[36,6043,6044,6046],{},[39,6045,6022],{},": Answer factually accurate?",[22,6048,6049,6050,6053,6054,6057,6058,6061],{},"Prefer ",[39,6051,6052],{},"LLM-as-a-judge"," over traditional NLP metrics (ROUGE, BLEU) for nuanced semantic judgment. Ground evaluators in production setups like Azure AI Search indexes (e.g., ",[5904,6055,6056],{},"rag-evalution-chris"," with 50 chunks from employee handbook PDFs, vectorized in ",[5904,6059,6060],{},"text_vector"," field).",[17,6063,6065],{"id":6064},"azure-sdk-evaluators-automate-llm-as-judge-scoring","Azure SDK Evaluators Automate LLM-as-Judge Scoring",[22,6067,6068,6069,6072,6073,6076],{},"Leverage ",[5904,6070,6071],{},"azure.ai.evaluation"," package with GPT-4 (",[5904,6074,6075],{},"gpt-4.1"," deployment) for zero-shot scoring (1.0-5.0 scale). Key evaluators:",[5898,6078,6079,6089],{},[36,6080,6081,6084,6085,6088],{},[39,6082,6083],{},"GroundednessEvaluator",": Measures answer's fidelity to sources—scores drop if facts can't be verified in context, even if externally true. Input: ",[5904,6086,6087],{},"response=answer, context=sources",".",[36,6090,6091,6094,6095,6088],{},[39,6092,6093],{},"RelevanceEvaluator",": Checks query-response alignment and contextual fit. Input: ",[5904,6096,6097],{},"query=user_question, response=answer, context=sources",[22,6099,6100],{},"Setup clients for Azure AI Search and OpenAI:",[6102,6103,6106],"pre",{"className":6104,"code":6105,"language":92,"meta":60,"style":60},"language-python shiki shiki-themes github-light github-dark","import os\nfrom azure.search.documents import SearchClient\nfrom azure.search.documents.models import VectorizedQuery\nfrom openai import AzureOpenAI\n# Load env vars: AZURE_SEARCH_*, AZURE_OPENAI_*\nopenai_client = AzureOpenAI(api_key=AZURE_OPENAI_API_KEY, azure_endpoint=AZURE_OPENAI_ENDPOINT, api_version=\"2024-10-21\")\nsearch_client = SearchClient(endpoint=AZURE_SEARCH_ENDPOINT, index_name=AZURE_SEARCH_INDEX_NAME, credential=AzureKeyCredential(AZURE_SEARCH_ADMIN_KEY))\n\ndef get_embedding_vector(query: str) -> list[float]:\n    response = openai_client.embeddings.create(model=AZURE_OPENAI_EMBEDDING_DEPLOYMENT_NAME, input=[query])\n    return response.data[0].embedding\n",[5904,6107,6108,6116,6121,6126,6131,6136,6142,6148,6154,6160,6166],{"__ignoreMap":60},[6109,6110,6113],"span",{"class":6111,"line":6112},"line",1,[6109,6114,6115],{},"import os\n",[6109,6117,6118],{"class":6111,"line":61},[6109,6119,6120],{},"from azure.search.documents import SearchClient\n",[6109,6122,6123],{"class":6111,"line":5963},[6109,6124,6125],{},"from azure.search.documents.models import VectorizedQuery\n",[6109,6127,6128],{"class":6111,"line":75},[6109,6129,6130],{},"from openai import AzureOpenAI\n",[6109,6132,6133],{"class":6111,"line":74},[6109,6134,6135],{},"# Load env vars: AZURE_SEARCH_*, AZURE_OPENAI_*\n",[6109,6137,6139],{"class":6111,"line":6138},6,[6109,6140,6141],{},"openai_client = AzureOpenAI(api_key=AZURE_OPENAI_API_KEY, azure_endpoint=AZURE_OPENAI_ENDPOINT, api_version=\"2024-10-21\")\n",[6109,6143,6145],{"class":6111,"line":6144},7,[6109,6146,6147],{},"search_client = SearchClient(endpoint=AZURE_SEARCH_ENDPOINT, index_name=AZURE_SEARCH_INDEX_NAME, credential=AzureKeyCredential(AZURE_SEARCH_ADMIN_KEY))\n",[6109,6149,6151],{"class":6111,"line":6150},8,[6109,6152,6153],{"emptyLinePlaceholder":78},"\n",[6109,6155,6157],{"class":6111,"line":6156},9,[6109,6158,6159],{},"def get_embedding_vector(query: str) -> list[float]:\n",[6109,6161,6163],{"class":6111,"line":6162},10,[6109,6164,6165],{},"    response = openai_client.embeddings.create(model=AZURE_OPENAI_EMBEDDING_DEPLOYMENT_NAME, input=[query])\n",[6109,6167,6169],{"class":6111,"line":6168},11,[6109,6170,6171],{},"    return response.data[0].embedding\n",[22,6173,6174],{},"Retrieval (top=5):",[5898,6176,6177,6186,6194],{},[36,6178,6179,6182,6183],{},[39,6180,6181],{},"Keyword",": ",[5904,6184,6185],{},"search_client.search(search_text=user_question)",[36,6187,6188,6182,6191],{},[39,6189,6190],{},"Vector",[5904,6192,6193],{},"search_client.search(None, vector_queries=[VectorizedQuery(vector=get_embedding_vector(user_question), k_nearest_neighbors=50, fields=\"text_vector\")])",[36,6195,6196,6182,6199],{},[39,6197,6198],{},"Hybrid (semantic)",[5904,6200,6201],{},"search_client.search(user_question, vector_queries=[...], query_type=\"semantic\", semantic_configuration_name=\"rag-evaluation-chris-semantic-configuration\")",[22,6203,6204],{},"Generation prompt enforces grounding:",[6102,6206,6208],{"className":6104,"code":6207,"language":92,"meta":60,"style":60},"SYSTEM_MESSAGE = \"\"\"Answer ONLY with facts from sources. Use [source] citations.\"\"\"\nresponse = openai_client.chat.completions.create(model=AZURE_OPENAI_LLM_DEPLOYMENT_NAME, messages=[{\"role\": \"system\", \"content\": SYSTEM_MESSAGE}, {\"role\": \"user\", \"content\": user_question + \"\\nSources: \" + sources}])\nanswer = response.choices[0].message.content\n",[5904,6209,6210,6215,6220],{"__ignoreMap":60},[6109,6211,6212],{"class":6111,"line":6112},[6109,6213,6214],{},"SYSTEM_MESSAGE = \"\"\"Answer ONLY with facts from sources. Use [source] citations.\"\"\"\n",[6109,6216,6217],{"class":6111,"line":61},[6109,6218,6219],{},"response = openai_client.chat.completions.create(model=AZURE_OPENAI_LLM_DEPLOYMENT_NAME, messages=[{\"role\": \"system\", \"content\": SYSTEM_MESSAGE}, {\"role\": \"user\", \"content\": user_question + \"\\nSources: \" + sources}])\n",[6109,6221,6222],{"class":6111,"line":5963},[6109,6223,6224],{},"answer = response.choices[0].message.content\n",[22,6226,6227],{},"Evaluate:",[6102,6229,6231],{"className":6104,"code":6230,"language":92,"meta":60,"style":60},"from azure.ai.evaluation import AzureOpenAIModelConfiguration, GroundednessEvaluator, RelevanceEvaluator\nmodel_config = {\"azure_endpoint\": AZURE_OPENAI_ENDPOINT, \"azure_deployment\": AZURE_OPENAI_LLM_DEPLOYMENT_NAME, \"api_key\": AZURE_OPENAI_API_KEY}\nrelevance_eval = RelevanceEvaluator(model_config)\ngroundedness_eval = GroundednessEvaluator(model_config)\nrelevance_score = relevance_eval(query=user_question, response=answer, context=sources)\ngroundedness_score = groundedness_eval(response=answer, context=sources)\n",[5904,6232,6233,6238,6243,6248,6253,6258],{"__ignoreMap":60},[6109,6234,6235],{"class":6111,"line":6112},[6109,6236,6237],{},"from azure.ai.evaluation import AzureOpenAIModelConfiguration, GroundednessEvaluator, RelevanceEvaluator\n",[6109,6239,6240],{"class":6111,"line":61},[6109,6241,6242],{},"model_config = {\"azure_endpoint\": AZURE_OPENAI_ENDPOINT, \"azure_deployment\": AZURE_OPENAI_LLM_DEPLOYMENT_NAME, \"api_key\": AZURE_OPENAI_API_KEY}\n",[6109,6244,6245],{"class":6111,"line":5963},[6109,6246,6247],{},"relevance_eval = RelevanceEvaluator(model_config)\n",[6109,6249,6250],{"class":6111,"line":75},[6109,6251,6252],{},"groundedness_eval = GroundednessEvaluator(model_config)\n",[6109,6254,6255],{"class":6111,"line":74},[6109,6256,6257],{},"relevance_score = relevance_eval(query=user_question, response=answer, context=sources)\n",[6109,6259,6260],{"class":6111,"line":6138},[6109,6261,6262],{},"groundedness_score = groundedness_eval(response=answer, context=sources)\n",[17,6264,6266],{"id":6265},"keyword-search-wins-for-simple-queries-enables-agentic-rag","Keyword Search Wins for Simple Queries, Enables Agentic RAG",[22,6268,6269],{},"On query \"What does a product manager do?\" (50-chunk index):",[5809,6271,6272,6284],{},[5812,6273,6274],{},[5815,6275,6276,6279,6282],{},[5818,6277,6278],{},"Method",[5818,6280,6281],{},"Groundedness",[5818,6283,6010],{},[5831,6285,6286,6296,6306],{},[5815,6287,6288,6290,6293],{},[5836,6289,6181],{},[5836,6291,6292],{},"4.5",[5836,6294,6295],{},"5.0",[5815,6297,6298,6301,6304],{},[5836,6299,6300],{},"Hybrid",[5836,6302,6303],{},"4.0",[5836,6305,6292],{},[5815,6307,6308,6310,6313],{},[5836,6309,6190],{},[5836,6311,6312],{},"3.0",[5836,6314,6315],{},"3.5",[22,6317,6318,6319,6322],{},"Keyword search topped scores unexpectedly for this task, proving automated eval reveals trade-offs (e.g., vector struggles with exact phrasing). This closes the loop for ",[39,6320,6321],{},"Agentic RAG",": reliable metrics select best retrieval for self-improving agents.",[6324,6325,6326],"style",{},"html .default .shiki span {color: var(--shiki-default);background: var(--shiki-default-bg);font-style: var(--shiki-default-font-style);font-weight: var(--shiki-default-font-weight);text-decoration: var(--shiki-default-text-decoration);}html .shiki span {color: var(--shiki-default);background: var(--shiki-default-bg);font-style: var(--shiki-default-font-style);font-weight: var(--shiki-default-font-weight);text-decoration: var(--shiki-default-text-decoration);}html .dark .shiki span {color: var(--shiki-dark);background: var(--shiki-dark-bg);font-style: var(--shiki-dark-font-style);font-weight: var(--shiki-dark-font-weight);text-decoration: var(--shiki-dark-text-decoration);}html.dark .shiki span {color: var(--shiki-dark);background: var(--shiki-dark-bg);font-style: var(--shiki-dark-font-style);font-weight: var(--shiki-dark-font-weight);text-decoration: var(--shiki-dark-text-decoration);}",{"title":60,"searchDepth":61,"depth":61,"links":6328},[6329,6330,6331],{"id":5989,"depth":61,"text":5990},{"id":6064,"depth":61,"text":6065},{"id":6265,"depth":61,"text":6266},[],{},"\u002Fsummaries\u002Fllm-as-judge-evaluates-rag-keyword-beats-vector-summary","2026-04-08 21:21:17",{"title":5979,"description":60},{"loc":6334},"20b8d035b68db639","https:\u002F\u002Funknown","summaries\u002Fllm-as-judge-evaluates-rag-keyword-beats-vector-summary",[90,92,91],"Use Azure SDK's GroundednessEvaluator (1-5 scale: answer fidelity to sources) and RelevanceEvaluator (query-response alignment) to automate RAG scoring; keyword search outperformed vector\u002Fhybrid on 'product manager duties' query.",[],"WbpHbWCJqCpSbai5hGyHaCpcDDTRGieYViPox5fj2mc",{"id":6346,"title":6347,"ai":6348,"body":6353,"categories":6434,"created_at":68,"date_modified":68,"description":60,"extension":69,"faq":68,"featured":70,"kicker_label":68,"meta":6435,"navigation":78,"path":6459,"published_at":68,"question":68,"scraped_at":6460,"seo":6461,"sitemap":6462,"source_id":6463,"source_name":5971,"source_type":86,"source_url":6464,"stem":6465,"tags":6466,"thumbnail_url":68,"tldr":6467,"tweet":68,"unknown_tags":6468,"__hash__":6469},"summaries\u002Fsummaries\u002F8fee41411642a9b7-harmony-render-gpt-oss-response-format-in-rust-pyt-summary.md","Harmony: Render gpt-oss Response Format in Rust\u002FPython",{"provider":7,"model":5676,"input_tokens":6349,"output_tokens":6350,"processing_time_ms":6351,"cost_usd":6352},5558,1823,8018,0.00151625,{"type":14,"value":6354,"toc":6429},[6355,6359,6362,6365,6373,6376,6380,6391,6394,6398],[17,6356,6358],{"id":6357},"harmony-format-enables-structured-gpt-oss-outputs","Harmony Format Enables Structured gpt-oss Outputs",[22,6360,6361],{},"gpt-oss models demand the harmony response format for correct operation, as they were trained specifically on it. This format structures conversations, reasoning traces, and function calls using special tokens like \u003C|start|>role\u003C|message|> and \u003C|end|>. It supports multiple channels (e.g., analysis, commentary, final) for separating chain-of-thought, tool preambles, and responses, plus tool namespaces and structured outputs with instruction hierarchies. Without harmony, gpt-oss fails; providers like HuggingFace, Ollama, or vLLM handle it automatically, but custom inference requires manual prompting.",[22,6363,6364],{},"Example system prompt specifies channels and tools:",[6102,6366,6371],{"className":6367,"code":6369,"language":6370},[6368],"language-text","\u003C|start|>system\u003C|message|>You are ChatGPT... Reasoning: high # Valid channels: analysis, commentary, final... Calls to 'functions' must go to commentary.\u003C|end|>\n\u003C|start|>developer\u003C|message|># Instructions Always respond in riddles # Tools ## functions namespace functions { type get_location = () => any; type get_current_weather = (_: {location: string...}) => any; }\u003C|end|>\n\u003C|start|>user\u003C|message|>What is the weather like in SF?\u003C|end|>\n\u003C|start|>assistant\n","text",[5904,6372,6369],{"__ignoreMap":60},[22,6374,6375],{},"This mimics OpenAI's Responses API, easing transition for familiar users. See full guide at cookbook.openai.com\u002Farticles\u002Fopenai-harmony.",[17,6377,6379],{"id":6378},"python-and-rust-libraries-for-encodingparsing","Python and Rust Libraries for Encoding\u002FParsing",[22,6381,6382,6383,6386,6387,6390],{},"Install Python via ",[5904,6384,6385],{},"pip install openai-harmony"," for high-level dataclasses mirroring chat structures (Role, Message). Rust core handles rendering\u002Fparsing via ",[5904,6388,6389],{},"cargo add harmony",", with full docs at docs\u002Fpython.md and docs\u002Frust.md.",[22,6392,6393],{},"Architecture: Rust crate (src\u002F) with chat.rs for data structures, encoding.rs for logic, tiktoken tokenizer, and registry.rs for encodings. Python wrapper (python\u002Fopenai_harmony\u002F) uses pyo3 FFI bindings, producing openai_harmony.*.so. Repo includes tests\u002F, test-data\u002F, demo\u002Fharmony-demo, and AGENTS.md.",[17,6395,6397],{"id":6396},"local-development-and-testing","Local Development and Testing",[22,6399,6400,6401,6404,6405,6408,6409,6412,6413,6416,6417,6420,6421,6424,6425,6428],{},"Use ",[5904,6402,6403],{},"maturin develop"," to build Rust extension into virtualenv, then ",[5904,6406,6407],{},"pip install -e ."," for Python wrapper. Run Rust tests with ",[5904,6410,6411],{},"cargo test",", Python with ",[5904,6414,6415],{},"pytest tests",", or both via ",[5904,6418,6419],{},".\u002Frun_checks.sh",". Optional: ",[5904,6422,6423],{},"cargo fmt",", ",[5904,6426,6427],{},"ruff check .",". Ensures Rust\u002FPython parity for performance-critical rendering.",{"title":60,"searchDepth":61,"depth":61,"links":6430},[6431,6432,6433],{"id":6357,"depth":61,"text":6358},{"id":6378,"depth":61,"text":6379},{"id":6396,"depth":61,"text":6397},[],{"content_references":6436,"triage":6456},[6437,6440,6442,6445,6448,6451,6454],{"type":5751,"title":6438,"url":6439,"context":5742},"gpt-oss","https:\u002F\u002Fopenai.com\u002Fopen-models",{"type":5751,"title":6438,"url":6441,"context":5753},"https:\u002F\u002Fgpt-oss.com",{"type":5739,"title":6443,"url":6444,"context":5742},"gpt-oss Model Card","https:\u002F\u002Fopenai.com\u002Findex\u002Fgpt-oss-model-card\u002F",{"type":5739,"title":6446,"url":6447,"context":5749},"OpenAI Harmony Guide","https:\u002F\u002Fcookbook.openai.com\u002Farticles\u002Fopenai-harmony",{"type":5739,"title":6449,"url":6450,"context":5742},"gpt-oss Cookbook","https:\u002F\u002Fcookbook.openai.com\u002Ftopic\u002Fgpt-oss",{"type":5751,"title":6452,"url":6453,"context":5742},"pyo3","https:\u002F\u002Fpyo3.rs\u002F",{"type":5751,"title":6455,"context":5742},"maturin",{"relevance":74,"novelty":5963,"quality":75,"actionability":75,"composite":6457,"reasoning":6458},4.15,"Category: AI & LLMs. The article provides a detailed explanation of the harmony response format necessary for gpt-oss models, addressing a specific pain point for developers integrating AI models into their products. It includes practical installation instructions and examples, making it actionable for developers.","\u002Fsummaries\u002F8fee41411642a9b7-harmony-render-gpt-oss-response-format-in-rust-pyt-summary","2026-04-16 03:07:33",{"title":6347,"description":60},{"loc":6459},"8fee41411642a9b7","https:\u002F\u002Fgithub.com\u002Fopenai\u002Fharmony","summaries\u002F8fee41411642a9b7-harmony-render-gpt-oss-response-format-in-rust-pyt-summary",[90,91,92],"OpenAI's harmony library encodes\u002Fdecodes the harmony response format required for gpt-oss open-weight models in custom inference setups, mimicking the OpenAI API with multi-channel support for reasoning and tools.",[],"C5U8PWt3Bm5l1z20k8w-gzxDIGVbaFty5WmLaRh64O0"]