[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"summary-8fccb91a66931ef3-the-future-of-ai-shifting-from-monolithic-agents-t-summary":3,"summaries-facets-categories":165,"summary-related-8fccb91a66931ef3-the-future-of-ai-shifting-from-monolithic-agents-t-summary":5669},{"id":4,"title":5,"ai":6,"body":13,"categories":120,"created_at":122,"date_modified":122,"description":112,"extension":123,"faq":122,"featured":124,"kicker_label":122,"meta":125,"navigation":144,"path":145,"published_at":146,"question":122,"scraped_at":147,"seo":148,"sitemap":149,"source_id":150,"source_name":151,"source_type":152,"source_url":153,"stem":154,"tags":155,"thumbnail_url":160,"tldr":161,"tweet":162,"unknown_tags":163,"__hash__":164},"summaries\u002Fsummaries\u002F8fccb91a66931ef3-the-future-of-ai-shifting-from-monolithic-agents-t-summary.md","The Future of AI: Shifting from Monolithic Agents to Composition",{"provider":7,"model":8,"input_tokens":9,"output_tokens":10,"processing_time_ms":11,"cost_usd":12},"openrouter","google\u002Fgemini-3.1-flash-lite",8900,924,4481,0.003611,{"type":14,"value":15,"toc":111},"minimark",[16,21,25,29,32,35,39,68,72,75,79],[17,18,20],"h2",{"id":19},"the-failure-of-monolithic-inheritance","The Failure of Monolithic Inheritance",[22,23,24],"p",{},"Modern agent development is currently stuck in an 'inheritance' trap. Developers build large, general-purpose agents (like Claude or ChatGPT) and attempt to extend their capabilities by stacking endless tools, skills, and context (via protocols like MCP). This approach leads to diminishing returns: as the context window inflates with unrelated data, the agent's performance degrades, costs skyrocket, and debugging becomes a nightmare. These monolithic agents are difficult to port, impossible to share, and prone to 'hallucinating' permissions because they are given too much power over too many domains.",[17,26,28],{"id":27},"the-case-for-composition-over-inheritance","The Case for Composition over Inheritance",[22,30,31],{},"Schroeder advocates for applying the classic software engineering principle of 'composition over inheritance' to AI. Instead of one massive agent that knows everything, developers should build small, domain-specific agents—each with its own targeted system prompt, minimal toolset, and isolated message history.",[22,33,34],{},"These agents act as specialized experts. A 'Figma agent' only knows Figma; a 'Gmail agent' only knows Gmail. A primary coordinator agent orchestrates these specialists using natural language. This mimics the human organizational structure seen in complex engineering feats like the Apollo 11 mission, where teams of experts with specific, limited responsibilities collaborated to achieve a larger goal.",[17,36,38],{"id":37},"why-domain-specific-agents-win","Why Domain-Specific Agents Win",[40,41,42,50,56,62],"ul",{},[43,44,45,49],"li",{},[46,47,48],"strong",{},"Token Efficiency:"," By isolating context, agents only process the information relevant to their specific task, often achieving over 80% greater token efficiency.",[43,51,52,55],{},[46,53,54],{},"Cost Optimization:"," Small, specialized tasks can be offloaded to smaller, cheaper models (e.g., DeepSeek V4 Flash) rather than relying on expensive frontier models for every step. This is critical for customer-facing products where unit economics matter.",[43,57,58,61],{},[46,59,60],{},"Reliability and Security:"," Smaller agents have strictly defined capabilities. You can enforce granular permissions, ensuring an agent only accesses what it absolutely needs, which significantly reduces the risk of 'flying too close to the sun' with over-privileged models.",[43,63,64,67],{},[46,65,66],{},"Scalability:"," Because each agent is an isolated execution environment, they can be parallelized and deployed across distributed infrastructure without requiring massive, monolithic compute clusters.",[17,69,71],{"id":70},"the-path-forward","The Path Forward",[22,73,74],{},"Schroeder predicts that 2027 will be the year of 'multi-agent orchestration.' As token costs rise (he notes a 30% increase in cost-per-IQ-adjusted-token in 2026), businesses will be forced to move away from inefficient, monolithic agent designs. The emergence of frameworks like Vercel's 'Eve' signals the beginning of this shift toward modular, composable agent ecosystems.",[17,76,78],{"id":77},"key-takeaways","Key Takeaways",[40,80,81,87,93,99,105],{},[43,82,83,86],{},[46,84,85],{},"Stop building monolithic agents:"," Avoid the temptation to shove every tool and skill into a single system prompt.",[43,88,89,92],{},[46,90,91],{},"Adopt composition:"," Break complex workflows into smaller, domain-specific agents that communicate with a central coordinator.",[43,94,95,98],{},[46,96,97],{},"Prioritize portability:"," Design agents that are self-contained, making them easier to test, share, and deploy across different environments.",[43,100,101,104],{},[46,102,103],{},"Optimize for cost:"," Use smaller models for specialized tasks to keep inference costs sustainable for production-scale applications.",[43,106,107,110],{},[46,108,109],{},"Focus on observability:"," Small, isolated agents are easier to trace and debug than large, non-deterministic monolithic systems.",{"title":112,"searchDepth":113,"depth":113,"links":114},"",2,[115,116,117,118,119],{"id":19,"depth":113,"text":20},{"id":27,"depth":113,"text":28},{"id":37,"depth":113,"text":38},{"id":70,"depth":113,"text":71},{"id":77,"depth":113,"text":78},[121],"Agents & Orchestration",null,"md",false,{"content_references":126,"triage":139},[127,132,135],{"type":128,"title":129,"url":130,"context":131},"tool","Vercel AI SDK","https:\u002F\u002Fsdk.vercel.ai\u002Fdocs","mentioned",{"type":128,"title":133,"url":134,"context":131},"Eve (Vercel)","https:\u002F\u002Fvercel.com\u002Fblog\u002Feve",{"type":136,"title":137,"url":138,"context":131},"other","Model Context Protocol (MCP)","https:\u002F\u002Fmodelcontextprotocol.io\u002F",{"relevance":140,"novelty":140,"quality":140,"actionability":141,"composite":142,"reasoning":143},4,3,3.8,"Category: Agents & Orchestration. The article discusses the shift from monolithic agents to domain-specific agents, addressing pain points like reliability and cost, which are crucial for engineers building production systems. It presents a novel perspective on agent architecture that could influence practical implementations, though it lacks detailed actionable steps for immediate application.",true,"\u002Fsummaries\u002F8fccb91a66931ef3-the-future-of-ai-shifting-from-monolithic-agents-t-summary","2026-06-29 03:00:14","2026-06-29 14:32:43",{"title":5,"description":112},{"loc":145},"8fccb91a66931ef3","AI Engineer","video","https:\u002F\u002Fwww.youtube.com\u002Fwatch?v=spNAUEgq_A8","summaries\u002F8fccb91a66931ef3-the-future-of-ai-shifting-from-monolithic-agents-t-summary",[156,157,158,159],"agents","architectures","llm","mlops","https:\u002F\u002Fi.ytimg.com\u002Fvi\u002FspNAUEgq_A8\u002Fhqdefault.jpg","Justin Schroeder argues that the future of AI lies in 'domain-specific agents'—small, specialized, composable units—rather than monolithic agents, to solve the reliability, cost, and complexity issues inherent in current agentic architectures.","This talk argues that the current approach to AI agents—stuffing tools and context into a single large model—is fundamentally flawed. The speaker advocates for a shift toward \"domain-specific agents\" that are modular and composable, rather than relying on monolithic systems or just adding more tools via the [Model Context Protocol](https:\u002F\u002Fmodelcontextprotocol.io\u002F).",[],"27IdPH99HZIKVr_8tIKIG2rIJBZ3Q6m8iafcQRKHNzs",[166,169,172,175,178,181,183,185,188,190,192,194,196,199,201,203,205,207,210,212,214,216,218,220,222,224,226,228,230,232,234,236,238,240,242,245,248,250,252,254,256,258,260,262,264,266,268,271,273,275,277,279,281,283,285,287,289,291,293,295,297,299,302,304,306,308,310,312,314,316,318,320,322,324,327,329,331,333,335,337,339,341,343,345,347,349,351,353,355,357,359,361,363,365,367,369,371,373,375,377,379,381,383,386,388,390,392,394,396,398,400,402,405,407,409,411,413,415,417,419,421,423,425,427,430,432,434,436,438,440,442,444,446,448,450,452,454,456,458,460,462,464,466,468,470,472,474,476,478,480,482,484,486,488,490,493,495,497,500,502,504,506,508,510,512,514,516,518,520,522,524,526,529,531,533,535,537,539,541,543,545,548,550,552,554,556,558,560,562,564,566,568,570,572,574,576,578,580,582,584,586,588,590,592,594,596,598,600,602,604,606,608,610,612,614,616,618,620,622,624,626,628,630,632,634,636,638,640,642,644,646,648,650,652,654,656,658,660,662,664,666,668,670,672,674,676,678,680,682,684,686,688,690,692,694,696,698,700,702,704,706,708,710,712,714,716,718,720,722,724,726,728,730,732,734,736,738,740,742,744,746,748,750,752,754,756,758,760,762,764,766,768,770,772,774,776,778,780,782,785,787,789,791,794,796,798,800,802,804,806,808,810,812,815,817,819,821,823,825,827,829,831,833,835,837,839,841,843,845,847,849,851,853,855,857,859,861,863,865,867,869,871,873,875,877,879,881,883,885,887,889,891,893,895,897,899,901,903,905,907,909,911,913,915,917,919,921,923,925,927,929,931,933,935,937,939,941,943,945,947,949,951,953,955,957,959,961,963,965,967,969,971,973,975,977,979,981,983,985,987,989,991,993,995,997,999,1001,1003,1005,1007,1009,1011,1013,1015,1017,1019,1021,1023,1025,1027,1029,1031,1033,1035,1037,1039,1041,1043,1045,1047,1049,1051,1053,1055,1057,1059,1062,1064,1066,1068,1070,1072,1074,1076,1078,1080,1082,1084,1086,1088,1090,1092,1094,1096,1098,1100,1102,1104,1106,1108,1110,1112,1114,1116,1118,1120,1122,1124,1126,1128,1130,1132,1134,1136,1138,1140,1142,1144,1146,1148,1150,1152,1154,1156,1158,1160,1162,1164,1166,1168,1170,1172,1174,1176,1178,1180,1182,1184,1186,1188,1190,1192,1194,1196,1198,1200,1202,1204,1206,1208,1210,1212,1214,1217,1219,1221,1223,1225,1227,1229,1231,1233,1235,1237,1239,1241,1243,1245,1247,1249,1251,1253,1255,1257,1259,1261,1263,1265,1267,1269,1271,1273,1275,1277,1279,1281,1283,1285,1287,1289,1291,1293,1295,1297,1299,1301,1303,1305,1307,1309,1311,1313,1315,1317,1319,1321,1323,1325,1327,1330,1332,1334,1336,1338,1340,1342,1344,1346,1348,1350,1352,1354,1356,1358,1360,1362,1364,1366,1368,1370,1372,1374,1376,1378,1380,1382,1384,1386,1388,1390,1392,1394,1396,1398,1400,1402,1404,1406,1408,1410,1412,1414,1416,1418,1420,1422,1424,1426,1428,1430,1432,1434,1436,1438,1440,1442,1444,1446,1449,1451,1453,1455,1457,1459,1461,1463,1465,1467,1469,1471,1473,1475,1477,1479,1481,1483,1485,1487,1489,1491,1493,1495,1498,1500,1502,1504,1506,1508,1510,1512,1514,1516,1518,1520,1522,1524,1526,1528,1530,1532,1534,1536,1538,1540,1542,1544,1546,1548,1550,1552,1554,1556,1558,1560,1562,1564,1566,1568,1570,1572,1574,1576,1578,1580,1582,1584,1586,1588,1590,1592,1594,1596,1598,1600,1602,1604,1606,1608,1610,1612,1614,1616,1618,1620,1622,1624,1626,1628,1630,1632,1634,1636,1638,1640,1642,1644,1646,1648,1650,1652,1654,1656,1658,1660,1662,1664,1666,1668,1670,1672,1674,1676,1678,1680,1682,1684,1686,1688,1690,1692,1694,1696,1698,1700,1702,1704,1706,1708,1710,1712,1714,1716,1718,1720,1722,1724,1726,1728,1730,1732,1734,1736,1738,1740,1742,1744,1746,1748,1750,1752,1754,1756,1758,1760,1762,1764,1766,1768,1770,1772,1774,1776,1778,1780,1782,1784,1786,1788,1790,1792,1794,1796,1798,1800,1802,1804,1806,1808,1810,1812,1814,1816,1818,1820,1822,1824,1826,1828,1830,1832,1834,1836,1838,1841,1843,1845,1847,1849,1851,1853,1855,1857,1859,1861,1863,1865,1867,1869,1871,1873,1875,1877,1879,1881,1883,1885,1887,1889,1891,1893,1895,1897,1899,1901,1903,1905,1907,1909,1911,1914,1916,1918,1920,1922,1924,1926,1928,1930,1932,1934,1936,1938,1940,1942,1944,1946,1948,1950,1952,1954,1956,1958,1960,1962,1964,1966,1968,1970,1972,1974,1976,1978,1980,1982,1984,1986,1988,1990,1992,1994,1996,1998,2000,2002,2004,2006,2009,2011,2013,2015,2017,2019,2021,2023,2025,2027,2029,2031,2033,2035,2037,2039,2041,2043,2046,2048,2050,2052,2054,2056,2058,2060,2062,2064,2066,2068,2070,2072,2074,2076,2078,2080,2082,2084,2086,2088,2090,2092,2094,2096,2098,2100,2102,2104,2106,2108,2110,2112,2114,2116,2118,2120,2122,2124,2126,2128,2130,2132,2134,2136,2138,2140,2142,2144,2146,2148,2150,2152,2154,2156,2158,2160,2162,2164,2166,2168,2170,2172,2174,2176,2178,2180,2182,2184,2186,2188,2190,2192,2194,2196,2198,2200,2202,2204,2206,2208,2210,2212,2214,2216,2218,2220,2222,2224,2226,2228,2230,2232,2234,2236,2238,2240,2242,2244,2246,2248,2250,2252,2254,2256,2258,2260,2262,2264,2266,2268,2270,2272,2274,2276,2278,2280,2282,2284,2286,2288,2290,2292,2294,2296,2298,2300,2302,2304,2306,2308,2310,2312,2314,2316,2318,2320,2322,2324,2326,2328,2330,2332,2334,2336,2338,2340,2342,2344,2346,2348,2350,2352,2354,2356,2358,2360,2362,2364,2366,2368,2370,2372,2374,2376,2378,2380,2382,2384,2386,2388,2390,2392,2394,2396,2398,2400,2402,2404,2406,2408,2410,2412,2414,2416,2418,2420,2422,2424,2426,2428,2430,2432,2434,2436,2438,2440,2442,2444,2446,2448,2450,2452,2454,2456,2458,2460,2462,2464,2466,2468,2470,2472,2474,2476,2478,2480,2482,2484,2486,2488,2490,2492,2494,2496,2498,2500,2502,2504,2506,2508,2510,2512,2514,2516,2518,2520,2522,2524,2526,2528,2530,2532,2534,2536,2538,2540,2542,2544,2546,2548,2550,2552,2554,2556,2558,2561,2563,2565,2567,2569,2571,2573,2575,2577,2579,2581,2583,2585,2587,2589,2591,2593,2595,2597,2599,2601,2603,2605,2607,2609,2611,2613,2615,2617,2619,2621,2623,2625,2627,2629,2631,2633,2635,2637,2639,2641,2643,2645,2647,2649,2651,2653,2656,2658,2660,2662,2664,2666,2668,2670,2672,2674,2676,2678,2680,2682,2684,2686,2688,2690,2692,2694,2696,2698,2700,2702,2704,2706,2708,2710,2712,2714,2716,2718,2720,2722,2724,2726,2728,2730,2732,2734,2736,2738,2740,2742,2744,2746,2748,2750,2752,2754,2756,2758,2760,2762,2764,2766,2768,2770,2772,2774,2776,2778,2780,2782,2784,2786,2788,2790,2792,2794,2796,2798,2800,2802,2804,2806,2808,2810,2812,2814,2816,2818,2820,2822,2824,2826,2828,2830,2832,2834,2836,2838,2840,2842,2844,2846,2848,2850,2852,2854,2856,2858,2860,2862,2864,2866,2868,2870,2872,2874,2876,2878,2880,2882,2884,2886,2888,2890,2892,2894,2896,2898,2900,2902,2904,2906,2908,2910,2912,2914,2916,2918,2920,2922,2924,2926,2928,2930,2932,2934,2936,2938,2940,2942,2944,2946,2948,2950,2952,2954,2956,2958,2960,2962,2964,2966,2968,2970,2972,2974,2976,2978,2980,2982,2984,2986,2988,2990,2992,2994,2996,2998,3000,3002,3004,3006,3008,3010,3012,3014,3016,3018,3020,3022,3024,3026,3028,3030,3032,3034,3036,3038,3040,3042,3044,3046,3048,3050,3052,3054,3056,3058,3060,3062,3064,3066,3068,3070,3072,3074,3076,3078,3080,3082,3084,3086,3088,3090,3092,3094,3096,3098,3100,3102,3104,3106,3108,3110,3112,3114,3116,3118,3120,3122,3124,3126,3128,3130,3132,3134,3136,3138,3140,3142,3144,3146,3148,3150,3152,3154,3156,3158,3160,3162,3164,3166,3168,3170,3172,3174,3176,3178,3180,3182,3184,3186,3188,3190,3192,3194,3196,3198,3200,3202,3204,3206,3208,3210,3212,3214,3216,3218,3220,3222,3224,3226,3228,3230,3232,3234,3236,3238,3240,3242,3244,3246,3248,3250,3252,3254,3256,3258,3260,3262,3264,3266,3268,3270,3272,3274,3276,3278,3280,3282,3284,3286,3288,3290,3292,3294,3296,3298,3300,3302,3304,3306,3308,3310,3312,3314,3316,3318,3320,3322,3324,3326,3328,3330,3332,3334,3336,3338,3340,3342,3344,3346,3348,3350,3352,3354,3356,3358,3360,3362,3364,3366,3368,3370,3372,3374,3376,3378,3380,3382,3384,3386,3388,3390,3392,3394,3396,3398,3400,3402,3404,3406,3408,3410,3412,3414,3416,3418,3420,3422,3424,3426,3428,3430,3432,3434,3436,3438,3440,3442,3444,3446,3448,3450,3452,3454,3456,3458,3460,3462,3464,3466,3468,3470,3472,3474,3476,3478,3480,3482,3484,3486,3488,3490,3492,3494,3496,3498,3500,3502,3504,3506,3508,3510,3512,3514,3516,3518,3520,3522,3524,3526,3528,3530,3532,3534,3536,3538,3540,3542,3544,3546,3548,3550,3552,3554,3556,3558,3560,3562,3564,3566,3568,3570,3572,3574,3576,3578,3580,3582,3584,3586,3588,3590,3592,3594,3596,3598,3600,3602,3604,3606,3608,3610,3612,3614,3616,3618,3620,3622,3624,3626,3628,3630,3632,3634,3636,3638,3640,3642,3644,3646,3648,3650,3652,3654,3656,3658,3660,3662,3664,3666,3668,3670,3672,3674,3676,3679,3681,3683,3685,3687,3689,3691,3693,3695,3697,3699,3701,3703,3705,3707,3709,3711,3713,3715,3717,3719,3721,3723,3725,3727,3729,3731,3733,3735,3737,3739,3741,3743,3745,3747,3749,3751,3753,3755,3757,3759,3761,3763,3765,3767,3769,3771,3773,3775,3777,3779,3781,3783,3785,3787,3789,3791,3793,3795,3797,3799,3801,3803,3805,3807,3809,3811,3813,3815,3817,3819,3821,3823,3825,3827,3829,3831,3833,3835,3837,3839,3841,3843,3845,3847,3849,3851,3853,3855,3857,3859,3861,3863,3865,3867,3869,3871,3873,3875,3877,3879,3881,3883,3885,3887,3889,3891,3893,3895,3897,3899,3901,3903,3905,3907,3909,3911,3913,3915,3917,3919,3921,3923,3925,3927,3929,3931,3933,3935,3937,3939,3941,3943,3945,3947,3949,3951,3953,3955,3957,3959,3961,3963,3965,3967,3969,3971,3973,3975,3977,3979,3981,3983,3985,3987,3989,3991,3993,3995,3997,3999,4001,4003,4005,4007,4009,4011,4013,4015,4017,4019,4021,4023,4025,4027,4029,4031,4033,4035,4037,4039,4041,4043,4045,4047,4049,4051,4053,4055,4057,4059,4061,4063,4065,4067,4069,4071,4073,4075,4077,4079,4081,4083,4085,4087,4089,4091,4093,4095,4097,4099,4101,4103,4105,4107,4109,4111,4113,4115,4117,4119,4121,4123,4125,4127,4129,4131,4133,4135,4137,4139,4141,4143,4145,4147,4149,4151,4153,4155,4157,4159,4161,4163,4165,4167,4169,4171,4173,4175,4177,4179,4181,4183,4185,4187,4189,4191,4193,4195,4197,4199,4201,4203,4205,4207,4209,4211,4213,4215,4217,4219,4221,4223,4225,4227,4229,4231,4233,4235,4237,4239,4241,4243,4245,4247,4249,4251,4253,4255,4257,4259,4261,4263,4265,4267,4269,4271,4273,4275,4277,4279,4281,4283,4285,4287,4289,4291,4293,4295,4297,4299,4301,4303,4305,4307,4309,4311,4313,4315,4317,4319,4321,4323,4325,4327,4329,4331,4333,4335,4337,4339,4341,4343,4345,4347,4349,4351,4353,4355,4357,4359,4361,4363,4365,4368,4370,4372,4374,4376,4378,4380,4382,4384,4386,4388,4390,4392,4394,4396,4398,4400,4402,4404,4406,4408,4410,4412,4414,4416,4418,4420,4422,4424,4426,4428,4430,4432,4434,4436,4438,4440,4442,4444,4446,4448,4450,4452,4454,4456,4458,4460,4462,4464,4466,4468,4470,4472,4474,4476,4478,4480,4482,4484,4486,4488,4490,4492,4494,4496,4498,4500,4502,4504,4506,4508,4510,4512,4514,4516,4518,4520,4522,4524,4526,4528,4531,4533,4535,4537,4539,4541,4543,4545,4547,4549,4551,4553,4555,4557,4559,4561,4563,4565,4567,4569,4571,4573,4575,4577,4579,4581,4583,4585,4587,4589,4591,4593,4595,4597,4599,4601,4603,4605,4607,4609,4611,4613,4615,4617,4619,4621,4623,4625,4627,4629,4631,4633,4635,4637,4639,4641,4643,4645,4647,4649,4651,4653,4655,4657,4659,4661,4663,4665,4667,4669,4671,4673,4675,4677,4679,4681,4683,4685,4687,4689,4691,4693,4695,4697,4699,4701,4703,4705,4707,4709,4711,4713,4715,4717,4719,4721,4723,4725,4727,4729,4731,4733,4735,4737,4739,4741,4743,4745,4747,4749,4751,4753,4755,4757,4759,4761,4763,4765,4767,4769,4771,4773,4775,4777,4779,4781,4783,4785,4787,4789,4791,4793,4795,4797,4799,4801,4803,4805,4807,4809,4811,4813,4815,4817,4819,4821,4823,4825,4827,4829,4831,4833,4835,4837,4839,4841,4843,4845,4847,4849,4851,4853,4855,4857,4859,4861,4863,4865,4867,4869,4871,4873,4875,4877,4879,4881,4883,4885,4887,4889,4891,4893,4895,4897,4899,4901,4903,4905,4907,4909,4911,4913,4915,4917,4919,4921,4923,4925,4927,4929,4931,4933,4935,4937,4939,4941,4943,4945,4947,4949,4951,4953,4955,4957,4959,4961,4963,4965,4967,4969,4971,4973,4975,4977,4979,4981,4983,4985,4987,4989,4991,4993,4995,4997,4999,5001,5003,5005,5007,5009,5011,5013,5015,5017,5019,5021,5023,5025,5027,5029,5031,5033,5035,5037,5039,5041,5043,5045,5047,5049,5051,5053,5055,5057,5059,5061,5063,5065,5067,5069,5071,5073,5075,5077,5079,5081,5083,5085,5087,5089,5091,5093,5095,5097,5099,5101,5103,5105,5107,5109,5111,5113,5115,5117,5119,5121,5123,5125,5127,5129,5131,5133,5135,5137,5139,5141,5143,5145,5147,5149,5151,5153,5155,5157,5159,5161,5163,5165,5167,5169,5171,5173,5175,5177,5179,5181,5183,5185,5187,5189,5191,5193,5195,5197,5199,5201,5203,5205,5207,5209,5211,5213,5215,5217,5219,5221,5223,5225,5227,5229,5231,5233,5235,5237,5239,5241,5243,5245,5247,5249,5251,5253,5255,5257,5259,5261,5263,5265,5267,5269,5271,5273,5275,5277,5279,5281,5283,5285,5287,5289,5291,5293,5295,5297,5299,5301,5303,5305,5307,5309,5311,5313,5315,5317,5319,5321,5323,5325,5327,5329,5331,5333,5335,5337,5339,5341,5343,5345,5347,5349,5351,5353,5355,5357,5359,5361,5363,5365,5367,5369,5371,5373,5375,5377,5379,5381,5383,5385,5387,5389,5391,5393,5395,5397,5399,5401,5403,5405,5407,5409,5411,5413,5415,5417,5419,5421,5423,5425,5427,5429,5431,5433,5435,5437,5439,5441,5443,5445,5447,5449,5451,5453,5455,5457,5459,5461,5463,5465,5467,5469,5471,5473,5475,5477,5479,5481,5483,5485,5487,5489,5491,5493,5495,5497,5499,5501,5503,5505,5507,5509,5511,5513,5515,5517,5519,5521,5523,5525,5527,5529,5531,5533,5535,5537,5539,5541,5543,5545,5547,5549,5551,5553,5555,5557,5559,5561,5563,5565,5567,5569,5571,5573,5575,5577,5579,5581,5583,5585,5587,5589,5591,5593,5595,5597,5599,5601,5603,5605,5607,5609,5611,5613,5615,5617,5619,5621,5623,5625,5627,5629,5631,5633,5635,5637,5639,5641,5643,5645,5647,5649,5651,5653,5655,5657,5659,5661,5663,5665,5667],{"categories":167},[168],"Developer Productivity",{"categories":170},[171],"Business & SaaS",{"categories":173},[174],"AI & LLMs",{"categories":176},[177],"AI Automation",{"categories":179},[180],"Product Strategy",{"categories":182},[174],{"categories":184},[168],{"categories":186},[187],"Software Engineering",{"categories":189},[174],{"categories":191},[171],{"categories":193},[],{"categories":195},[174],{"categories":197},[198],"Inference & Serving",{"categories":200},[174],{"categories":202},[174],{"categories":204},[177],{"categories":206},[],{"categories":208},[209],"AI News & Trends",{"categories":211},[177],{"categories":213},[174],{"categories":215},[171],{"categories":217},[177],{"categories":219},[209],{"categories":221},[177],{"categories":223},[177],{"categories":225},[174],{"categories":227},[177],{"categories":229},[174],{"categories":231},[174],{"categories":233},[174],{"categories":235},[209],{"categories":237},[174],{"categories":239},[174],{"categories":241},[],{"categories":243},[244],"Design & Frontend",{"categories":246},[247],"Data Science & Visualization",{"categories":249},[209],{"categories":251},[174],{"categories":253},[174],{"categories":255},[],{"categories":257},[174],{"categories":259},[177],{"categories":261},[187],{"categories":263},[174],{"categories":265},[177],{"categories":267},[174],{"categories":269},[270],"Marketing & Growth",{"categories":272},[244],{"categories":274},[174],{"categories":276},[177],{"categories":278},[174],{"categories":280},[],{"categories":282},[],{"categories":284},[244],{"categories":286},[174],{"categories":288},[177],{"categories":290},[168],{"categories":292},[187],{"categories":294},[244],{"categories":296},[174],{"categories":298},[187],{"categories":300},[301],"DevOps & Cloud",{"categories":303},[177],{"categories":305},[180],{"categories":307},[209],{"categories":309},[174],{"categories":311},[],{"categories":313},[174],{"categories":315},[],{"categories":317},[177],{"categories":319},[187],{"categories":321},[],{"categories":323},[187],{"categories":325},[326],"Governance & Standards",{"categories":328},[171],{"categories":330},[],{"categories":332},[],{"categories":334},[174],{"categories":336},[174],{"categories":338},[177],{"categories":340},[174],{"categories":342},[174],{"categories":344},[177],{"categories":346},[174],{"categories":348},[174],{"categories":350},[174],{"categories":352},[],{"categories":354},[187],{"categories":356},[],{"categories":358},[],{"categories":360},[187],{"categories":362},[],{"categories":364},[187],{"categories":366},[174],{"categories":368},[174],{"categories":370},[270],{"categories":372},[174],{"categories":374},[244],{"categories":376},[244],{"categories":378},[174],{"categories":380},[187],{"categories":382},[177],{"categories":384},[385],"GovTech & Public-Sector Adoption",{"categories":387},[187],{"categories":389},[174],{"categories":391},[174],{"categories":393},[177],{"categories":395},[177],{"categories":397},[247],{"categories":399},[209],{"categories":401},[177],{"categories":403},[404],"Legal AI Tools",{"categories":406},[177],{"categories":408},[270],{"categories":410},[177],{"categories":412},[180],{"categories":414},[187],{"categories":416},[385],{"categories":418},[],{"categories":420},[177],{"categories":422},[],{"categories":424},[177],{"categories":426},[177],{"categories":428},[429],"RAG & Retrieval",{"categories":431},[171],{"categories":433},[174],{"categories":435},[187],{"categories":437},[301],{"categories":439},[244],{"categories":441},[174],{"categories":443},[],{"categories":445},[121],{"categories":447},[187],{"categories":449},[174],{"categories":451},[],{"categories":453},[177],{"categories":455},[],{"categories":457},[174],{"categories":459},[],{"categories":461},[168],{"categories":463},[187],{"categories":465},[171],{"categories":467},[174],{"categories":469},[174],{"categories":471},[209],{"categories":473},[174],{"categories":475},[],{"categories":477},[174],{"categories":479},[],{"categories":481},[187],{"categories":483},[247],{"categories":485},[],{"categories":487},[174],{"categories":489},[244],{"categories":491},[492],"Models & Frontier Labs",{"categories":494},[],{"categories":496},[244],{"categories":498},[499],"Regulation & Governance of AI",{"categories":501},[177],{"categories":503},[],{"categories":505},[174],{"categories":507},[174],{"categories":509},[177],{"categories":511},[209],{"categories":513},[171],{"categories":515},[174],{"categories":517},[],{"categories":519},[187],{"categories":521},[177],{"categories":523},[174],{"categories":525},[180],{"categories":527},[528],"AI Policy & Regulation",{"categories":530},[],{"categories":532},[174],{"categories":534},[180],{"categories":536},[177],{"categories":538},[174],{"categories":540},[177],{"categories":542},[],{"categories":544},[247],{"categories":546},[547],"Evals & Reliability",{"categories":549},[174],{"categories":551},[],{"categories":553},[168],{"categories":555},[385],{"categories":557},[528],{"categories":559},[174],{"categories":561},[171],{"categories":563},[174],{"categories":565},[177],{"categories":567},[174],{"categories":569},[177],{"categories":571},[121],{"categories":573},[174],{"categories":575},[187],{"categories":577},[174],{"categories":579},[],{"categories":581},[],{"categories":583},[174],{"categories":585},[385],{"categories":587},[174],{"categories":589},[174],{"categories":591},[],{"categories":593},[244],{"categories":595},[],{"categories":597},[174],{"categories":599},[],{"categories":601},[177],{"categories":603},[174],{"categories":605},[244],{"categories":607},[],{"categories":609},[174],{"categories":611},[177],{"categories":613},[174],{"categories":615},[171],{"categories":617},[177],{"categories":619},[174],{"categories":621},[174],{"categories":623},[187],{"categories":625},[244],{"categories":627},[177],{"categories":629},[],{"categories":631},[187],{"categories":633},[177],{"categories":635},[],{"categories":637},[209],{"categories":639},[],{"categories":641},[174],{"categories":643},[174],{"categories":645},[171,270],{"categories":647},[],{"categories":649},[174],{"categories":651},[174],{"categories":653},[177],{"categories":655},[],{"categories":657},[],{"categories":659},[174],{"categories":661},[244],{"categories":663},[174],{"categories":665},[],{"categories":667},[174],{"categories":669},[301],{"categories":671},[],{"categories":673},[177],{"categories":675},[209],{"categories":677},[174],{"categories":679},[244],{"categories":681},[],{"categories":683},[209],{"categories":685},[174],{"categories":687},[198],{"categories":689},[174],{"categories":691},[177],{"categories":693},[209],{"categories":695},[492],{"categories":697},[174],{"categories":699},[270],{"categories":701},[],{"categories":703},[177],{"categories":705},[171],{"categories":707},[187],{"categories":709},[174],{"categories":711},[177],{"categories":713},[],{"categories":715},[174,301],{"categories":717},[174],{"categories":719},[174],{"categories":721},[174],{"categories":723},[177],{"categories":725},[174,187],{"categories":727},[247],{"categories":729},[174],{"categories":731},[174],{"categories":733},[187],{"categories":735},[177],{"categories":737},[528],{"categories":739},[270],{"categories":741},[177],{"categories":743},[174],{"categories":745},[174],{"categories":747},[177],{"categories":749},[],{"categories":751},[121],{"categories":753},[177],{"categories":755},[174],{"categories":757},[174,171],{"categories":759},[171],{"categories":761},[],{"categories":763},[244],{"categories":765},[244],{"categories":767},[174],{"categories":769},[],{"categories":771},[],{"categories":773},[209],{"categories":775},[],{"categories":777},[168],{"categories":779},[174],{"categories":781},[187],{"categories":783},[784],"Generative UI & Design-to-Code",{"categories":786},[174],{"categories":788},[244],{"categories":790},[174],{"categories":792},[793],"Algorithmic Accountability",{"categories":795},[177],{"categories":797},[187],{"categories":799},[209],{"categories":801},[244],{"categories":803},[],{"categories":805},[174],{"categories":807},[174],{"categories":809},[174],{"categories":811},[177],{"categories":813},[814],"MLOps & Infrastructure",{"categories":816},[174],{"categories":818},[174],{"categories":820},[174],{"categories":822},[174],{"categories":824},[209],{"categories":826},[168],{"categories":828},[174],{"categories":830},[177],{"categories":832},[301],{"categories":834},[174],{"categories":836},[244],{"categories":838},[174],{"categories":840},[177],{"categories":842},[],{"categories":844},[],{"categories":846},[198],{"categories":848},[244],{"categories":850},[209],{"categories":852},[247],{"categories":854},[],{"categories":856},[174],{"categories":858},[174],{"categories":860},[171],{"categories":862},[174],{"categories":864},[174],{"categories":866},[174],{"categories":868},[209],{"categories":870},[198],{"categories":872},[174],{"categories":874},[244],{"categories":876},[],{"categories":878},[177],{"categories":880},[187],{"categories":882},[],{"categories":884},[174],{"categories":886},[174],{"categories":888},[177],{"categories":890},[187],{"categories":892},[174],{"categories":894},[247],{"categories":896},[],{"categories":898},[174],{"categories":900},[],{"categories":902},[174],{"categories":904},[],{"categories":906},[180],{"categories":908},[171],{"categories":910},[177],{"categories":912},[177],{"categories":914},[],{"categories":916},[168],{"categories":918},[174],{"categories":920},[171],{"categories":922},[209],{"categories":924},[168],{"categories":926},[],{"categories":928},[174],{"categories":930},[],{"categories":932},[],{"categories":934},[209],{"categories":936},[209],{"categories":938},[],{"categories":940},[121],{"categories":942},[174],{"categories":944},[244],{"categories":946},[187],{"categories":948},[],{"categories":950},[404],{"categories":952},[171],{"categories":954},[],{"categories":956},[],{"categories":958},[168],{"categories":960},[247],{"categories":962},[],{"categories":964},[270],{"categories":966},[177],{"categories":968},[171],{"categories":970},[177],{"categories":972},[171],{"categories":974},[187],{"categories":976},[],{"categories":978},[198],{"categories":980},[180],{"categories":982},[174],{"categories":984},[244],{"categories":986},[187],{"categories":988},[171],{"categories":990},[174],{"categories":992},[177],{"categories":994},[171],{"categories":996},[174],{"categories":998},[],{"categories":1000},[],{"categories":1002},[187],{"categories":1004},[247],{"categories":1006},[180],{"categories":1008},[174],{"categories":1010},[177],{"categories":1012},[174],{"categories":1014},[],{"categories":1016},[209],{"categories":1018},[180],{"categories":1020},[174],{"categories":1022},[547],{"categories":1024},[301],{"categories":1026},[],{"categories":1028},[177],{"categories":1030},[],{"categories":1032},[168],{"categories":1034},[],{"categories":1036},[174],{"categories":1038},[174],{"categories":1040},[244],{"categories":1042},[270],{"categories":1044},[187],{"categories":1046},[177],{"categories":1048},[],{"categories":1050},[187],{"categories":1052},[168],{"categories":1054},[],{"categories":1056},[209],{"categories":1058},[174,301],{"categories":1060},[1061],"Design Systems for AI",{"categories":1063},[174],{"categories":1065},[209],{"categories":1067},[174],{"categories":1069},[174],{"categories":1071},[171],{"categories":1073},[174],{"categories":1075},[],{"categories":1077},[174],{"categories":1079},[171],{"categories":1081},[174],{"categories":1083},[],{"categories":1085},[177],{"categories":1087},[187],{"categories":1089},[187],{"categories":1091},[244],{"categories":1093},[209],{"categories":1095},[247],{"categories":1097},[174],{"categories":1099},[168],{"categories":1101},[528],{"categories":1103},[174],{"categories":1105},[177],{"categories":1107},[174],{"categories":1109},[187],{"categories":1111},[187],{"categories":1113},[],{"categories":1115},[],{"categories":1117},[177],{"categories":1119},[180],{"categories":1121},[],{"categories":1123},[174],{"categories":1125},[],{"categories":1127},[244],{"categories":1129},[177],{"categories":1131},[187],{"categories":1133},[244],{"categories":1135},[174],{"categories":1137},[244],{"categories":1139},[],{"categories":1141},[],{"categories":1143},[209],{"categories":1145},[177],{"categories":1147},[177],{"categories":1149},[174],{"categories":1151},[174],{"categories":1153},[174],{"categories":1155},[171],{"categories":1157},[174],{"categories":1159},[174],{"categories":1161},[],{"categories":1163},[187],{"categories":1165},[187],{"categories":1167},[174],{"categories":1169},[187],{"categories":1171},[171],{"categories":1173},[],{"categories":1175},[174],{"categories":1177},[174],{"categories":1179},[174],{"categories":1181},[177],{"categories":1183},[168],{"categories":1185},[171],{"categories":1187},[209],{"categories":1189},[177],{"categories":1191},[198],{"categories":1193},[270],{"categories":1195},[174],{"categories":1197},[177],{"categories":1199},[],{"categories":1201},[244],{"categories":1203},[],{"categories":1205},[174],{"categories":1207},[174],{"categories":1209},[],{"categories":1211},[187],{"categories":1213},[171],{"categories":1215},[1216],"Visual & Generative Media",{"categories":1218},[177],{"categories":1220},[],{"categories":1222},[174],{"categories":1224},[174],{"categories":1226},[301],{"categories":1228},[247],{"categories":1230},[528],{"categories":1232},[187],{"categories":1234},[270],{"categories":1236},[174],{"categories":1238},[244],{"categories":1240},[174],{"categories":1242},[187],{"categories":1244},[177],{"categories":1246},[],{"categories":1248},[],{"categories":1250},[177],{"categories":1252},[168],{"categories":1254},[177],{"categories":1256},[492],{"categories":1258},[174],{"categories":1260},[180],{"categories":1262},[171],{"categories":1264},[],{"categories":1266},[174],{"categories":1268},[180],{"categories":1270},[174],{"categories":1272},[174],{"categories":1274},[174],{"categories":1276},[174],{"categories":1278},[174],{"categories":1280},[270],{"categories":1282},[174],{"categories":1284},[121],{"categories":1286},[174],{"categories":1288},[174],{"categories":1290},[174],{"categories":1292},[174],{"categories":1294},[174],{"categories":1296},[244],{"categories":1298},[177],{"categories":1300},[],{"categories":1302},[177],{"categories":1304},[],{"categories":1306},[301],{"categories":1308},[187],{"categories":1310},[],{"categories":1312},[492],{"categories":1314},[177],{"categories":1316},[174],{"categories":1318},[244,174],{"categories":1320},[168],{"categories":1322},[],{"categories":1324},[174],{"categories":1326},[168],{"categories":1328},[1329],"Medical Imaging & Radiology",{"categories":1331},[244],{"categories":1333},[177],{"categories":1335},[187],{"categories":1337},[],{"categories":1339},[174],{"categories":1341},[174],{"categories":1343},[174],{"categories":1345},[],{"categories":1347},[],{"categories":1349},[174],{"categories":1351},[121],{"categories":1353},[174],{"categories":1355},[168],{"categories":1357},[174],{"categories":1359},[174],{"categories":1361},[],{"categories":1363},[177],{"categories":1365},[174],{"categories":1367},[180],{"categories":1369},[187],{"categories":1371},[174],{"categories":1373},[121],{"categories":1375},[174],{"categories":1377},[177],{"categories":1379},[174],{"categories":1381},[244],{"categories":1383},[177],{"categories":1385},[301],{"categories":1387},[244],{"categories":1389},[171],{"categories":1391},[177],{"categories":1393},[174],{"categories":1395},[174],{"categories":1397},[174],{"categories":1399},[177],{"categories":1401},[187],{"categories":1403},[174],{"categories":1405},[180],{"categories":1407},[],{"categories":1409},[209],{"categories":1411},[],{"categories":1413},[180],{"categories":1415},[177],{"categories":1417},[1061],{"categories":1419},[1061],{"categories":1421},[244],{"categories":1423},[174],{"categories":1425},[174],{"categories":1427},[177],{"categories":1429},[187],{"categories":1431},[244],{"categories":1433},[177],{"categories":1435},[209],{"categories":1437},[],{"categories":1439},[174],{"categories":1441},[],{"categories":1443},[174],{"categories":1445},[174],{"categories":1447},[1448],"Contract Review & E-Discovery",{"categories":1450},[244],{"categories":1452},[174],{"categories":1454},[168],{"categories":1456},[209],{"categories":1458},[174],{"categories":1460},[174],{"categories":1462},[270],{"categories":1464},[174],{"categories":1466},[174],{"categories":1468},[177],{"categories":1470},[177],{"categories":1472},[793],{"categories":1474},[177],{"categories":1476},[121],{"categories":1478},[174],{"categories":1480},[174],{"categories":1482},[177],{"categories":1484},[174],{"categories":1486},[121],{"categories":1488},[429],{"categories":1490},[174],{"categories":1492},[177],{"categories":1494},[174],{"categories":1496},[1497],"Law-Firm Practice & Adoption",{"categories":1499},[174],{"categories":1501},[177],{"categories":1503},[244],{"categories":1505},[174],{"categories":1507},[174],{"categories":1509},[],{"categories":1511},[],{"categories":1513},[187],{"categories":1515},[],{"categories":1517},[168],{"categories":1519},[301],{"categories":1521},[174],{"categories":1523},[],{"categories":1525},[168],{"categories":1527},[171],{"categories":1529},[174],{"categories":1531},[270],{"categories":1533},[],{"categories":1535},[171],{"categories":1537},[171],{"categories":1539},[],{"categories":1541},[174],{"categories":1543},[174],{"categories":1545},[187],{"categories":1547},[],{"categories":1549},[],{"categories":1551},[],{"categories":1553},[],{"categories":1555},[174],{"categories":1557},[177],{"categories":1559},[301],{"categories":1561},[174],{"categories":1563},[168],{"categories":1565},[187],{"categories":1567},[174],{"categories":1569},[174],{"categories":1571},[187],{"categories":1573},[180],{"categories":1575},[174],{"categories":1577},[814],{"categories":1579},[174],{"categories":1581},[270],{"categories":1583},[187],{"categories":1585},[171],{"categories":1587},[174],{"categories":1589},[174],{"categories":1591},[244],{"categories":1593},[174],{"categories":1595},[174],{"categories":1597},[174],{"categories":1599},[177],{"categories":1601},[174,168],{"categories":1603},[121],{"categories":1605},[174],{"categories":1607},[187],{"categories":1609},[187],{"categories":1611},[244],{"categories":1613},[177],{"categories":1615},[187],{"categories":1617},[174],{"categories":1619},[174],{"categories":1621},[],{"categories":1623},[],{"categories":1625},[174],{"categories":1627},[],{"categories":1629},[174],{"categories":1631},[187],{"categories":1633},[247],{"categories":1635},[209],{"categories":1637},[244],{"categories":1639},[174],{"categories":1641},[187],{"categories":1643},[],{"categories":1645},[177],{"categories":1647},[174],{"categories":1649},[174],{"categories":1651},[174],{"categories":1653},[174],{"categories":1655},[],{"categories":1657},[177],{"categories":1659},[174],{"categories":1661},[174],{"categories":1663},[],{"categories":1665},[177],{"categories":1667},[174],{"categories":1669},[171],{"categories":1671},[174],{"categories":1673},[],{"categories":1675},[168],{"categories":1677},[174],{"categories":1679},[244],{"categories":1681},[187],{"categories":1683},[174],{"categories":1685},[168],{"categories":1687},[174],{"categories":1689},[187],{"categories":1691},[270],{"categories":1693},[177],{"categories":1695},[177],{"categories":1697},[174,244],{"categories":1699},[174],{"categories":1701},[209],{"categories":1703},[174],{"categories":1705},[209],{"categories":1707},[177],{"categories":1709},[244],{"categories":1711},[],{"categories":1713},[187],{"categories":1715},[301],{"categories":1717},[244],{"categories":1719},[187],{"categories":1721},[174],{"categories":1723},[180],{"categories":1725},[174],{"categories":1727},[177],{"categories":1729},[],{"categories":1731},[],{"categories":1733},[],{"categories":1735},[],{"categories":1737},[180],{"categories":1739},[187],{"categories":1741},[174],{"categories":1743},[177],{"categories":1745},[177],{"categories":1747},[171],{"categories":1749},[177],{"categories":1751},[301],{"categories":1753},[174],{"categories":1755},[174],{"categories":1757},[198],{"categories":1759},[121],{"categories":1761},[174],{"categories":1763},[177],{"categories":1765},[174],{"categories":1767},[174],{"categories":1769},[404],{"categories":1771},[793],{"categories":1773},[],{"categories":1775},[244],{"categories":1777},[1497],{"categories":1779},[187],{"categories":1781},[],{"categories":1783},[],{"categories":1785},[177],{"categories":1787},[],{"categories":1789},[],{"categories":1791},[270],{"categories":1793},[270],{"categories":1795},[177],{"categories":1797},[187],{"categories":1799},[],{"categories":1801},[174],{"categories":1803},[174],{"categories":1805},[187],{"categories":1807},[1448],{"categories":1809},[244],{"categories":1811},[244],{"categories":1813},[174],{"categories":1815},[177],{"categories":1817},[168],{"categories":1819},[174],{"categories":1821},[174],{"categories":1823},[244],{"categories":1825},[244],{"categories":1827},[177],{"categories":1829},[177],{"categories":1831},[174],{"categories":1833},[],{"categories":1835},[174],{"categories":1837},[],{"categories":1839},[1840],"Interaction & Product Design",{"categories":1842},[174],{"categories":1844},[177],{"categories":1846},[326],{"categories":1848},[209],{"categories":1850},[187],{"categories":1852},[174],{"categories":1854},[187],{"categories":1856},[168],{"categories":1858},[174],{"categories":1860},[],{"categories":1862},[177],{"categories":1864},[177],{"categories":1866},[],{"categories":1868},[187],{"categories":1870},[174],{"categories":1872},[168],{"categories":1874},[1840],{"categories":1876},[174],{"categories":1878},[168],{"categories":1880},[168],{"categories":1882},[],{"categories":1884},[187],{"categories":1886},[],{"categories":1888},[177],{"categories":1890},[209],{"categories":1892},[174],{"categories":1894},[177],{"categories":1896},[174],{"categories":1898},[177],{"categories":1900},[174],{"categories":1902},[209],{"categories":1904},[247],{"categories":1906},[174],{"categories":1908},[180],{"categories":1910},[187],{"categories":1912},[1913],"Coding Agents & Dev Productivity",{"categories":1915},[209],{"categories":1917},[244],{"categories":1919},[],{"categories":1921},[793],{"categories":1923},[],{"categories":1925},[174],{"categories":1927},[174],{"categories":1929},[209],{"categories":1931},[],{"categories":1933},[],{"categories":1935},[],{"categories":1937},[177],{"categories":1939},[174],{"categories":1941},[],{"categories":1943},[187],{"categories":1945},[187],{"categories":1947},[174],{"categories":1949},[247],{"categories":1951},[],{"categories":1953},[174],{"categories":1955},[174],{"categories":1957},[174],{"categories":1959},[247],{"categories":1961},[187],{"categories":1963},[],{"categories":1965},[],{"categories":1967},[177],{"categories":1969},[177],{"categories":1971},[385],{"categories":1973},[187],{"categories":1975},[187],{"categories":1977},[177],{"categories":1979},[209],{"categories":1981},[209],{"categories":1983},[177],{"categories":1985},[177],{"categories":1987},[174],{"categories":1989},[168],{"categories":1991},[1840],{"categories":1993},[174,301],{"categories":1995},[],{"categories":1997},[244],{"categories":1999},[187],{"categories":2001},[168],{"categories":2003},[174],{"categories":2005},[177],{"categories":2007},[2008],"The Designer's Role & Craft",{"categories":2010},[244],{"categories":2012},[],{"categories":2014},[177],{"categories":2016},[174],{"categories":2018},[177],{"categories":2020},[177],{"categories":2022},[174],{"categories":2024},[270],{"categories":2026},[174],{"categories":2028},[187],{"categories":2030},[244],{"categories":2032},[174],{"categories":2034},[],{"categories":2036},[177],{"categories":2038},[244],{"categories":2040},[174],{"categories":2042},[174],{"categories":2044},[2045],"AI UX Patterns",{"categories":2047},[177],{"categories":2049},[177],{"categories":2051},[177],{"categories":2053},[177],{"categories":2055},[270],{"categories":2057},[247],{"categories":2059},[174],{"categories":2061},[177],{"categories":2063},[174],{"categories":2065},[1061],{"categories":2067},[],{"categories":2069},[270],{"categories":2071},[209],{"categories":2073},[187],{"categories":2075},[174],{"categories":2077},[177],{"categories":2079},[],{"categories":2081},[],{"categories":2083},[174],{"categories":2085},[177],{"categories":2087},[174],{"categories":2089},[177],{"categories":2091},[385],{"categories":2093},[244],{"categories":2095},[209],{"categories":2097},[187],{"categories":2099},[174],{"categories":2101},[177],{"categories":2103},[177],{"categories":2105},[],{"categories":2107},[174],{"categories":2109},[],{"categories":2111},[],{"categories":2113},[174],{"categories":2115},[174],{"categories":2117},[177],{"categories":2119},[187],{"categories":2121},[],{"categories":2123},[],{"categories":2125},[247],{"categories":2127},[198],{"categories":2129},[174],{"categories":2131},[247],{"categories":2133},[209],{"categories":2135},[174],{"categories":2137},[174],{"categories":2139},[177],{"categories":2141},[177],{"categories":2143},[174],{"categories":2145},[177],{"categories":2147},[],{"categories":2149},[],{"categories":2151},[174],{"categories":2153},[301],{"categories":2155},[174],{"categories":2157},[],{"categories":2159},[],{"categories":2161},[244],{"categories":2163},[814],{"categories":2165},[177],{"categories":2167},[168],{"categories":2169},[2008],{"categories":2171},[],{"categories":2173},[],{"categories":2175},[174],{"categories":2177},[],{"categories":2179},[],{"categories":2181},[187],{"categories":2183},[209],{"categories":2185},[270],{"categories":2187},[171],{"categories":2189},[174],{"categories":2191},[174],{"categories":2193},[171],{"categories":2195},[],{"categories":2197},[244],{"categories":2199},[174],{"categories":2201},[177],{"categories":2203},[171],{"categories":2205},[174],{"categories":2207},[174],{"categories":2209},[168],{"categories":2211},[174],{"categories":2213},[],{"categories":2215},[168],{"categories":2217},[174],{"categories":2219},[270],{"categories":2221},[177],{"categories":2223},[209],{"categories":2225},[174],{"categories":2227},[171],{"categories":2229},[174],{"categories":2231},[174],{"categories":2233},[174],{"categories":2235},[177],{"categories":2237},[],{"categories":2239},[174],{"categories":2241},[187],{"categories":2243},[168],{"categories":2245},[174],{"categories":2247},[174],{"categories":2249},[],{"categories":2251},[121],{"categories":2253},[209],{"categories":2255},[174],{"categories":2257},[174],{"categories":2259},[],{"categories":2261},[171],{"categories":2263},[171],{"categories":2265},[174],{"categories":2267},[174],{"categories":2269},[180],{"categories":2271},[174],{"categories":2273},[174],{"categories":2275},[187],{"categories":2277},[187],{"categories":2279},[174],{"categories":2281},[],{"categories":2283},[187],{"categories":2285},[174],{"categories":2287},[528],{"categories":2289},[],{"categories":2291},[],{"categories":2293},[174],{"categories":2295},[209],{"categories":2297},[],{"categories":2299},[301],{"categories":2301},[174],{"categories":2303},[174],{"categories":2305},[244],{"categories":2307},[784],{"categories":2309},[],{"categories":2311},[174],{"categories":2313},[187],{"categories":2315},[174],{"categories":2317},[174],{"categories":2319},[174,301],{"categories":2321},[174],{"categories":2323},[174],{"categories":2325},[244],{"categories":2327},[177],{"categories":2329},[],{"categories":2331},[177],{"categories":2333},[177],{"categories":2335},[174],{"categories":2337},[174],{"categories":2339},[174],{"categories":2341},[247],{"categories":2343},[174],{"categories":2345},[2045],{"categories":2347},[168],{"categories":2349},[247],{"categories":2351},[168],{"categories":2353},[187],{"categories":2355},[244],{"categories":2357},[177],{"categories":2359},[174],{"categories":2361},[],{"categories":2363},[174],{"categories":2365},[209],{"categories":2367},[174],{"categories":2369},[177],{"categories":2371},[174],{"categories":2373},[174],{"categories":2375},[171],{"categories":2377},[],{"categories":2379},[301],{"categories":2381},[174],{"categories":2383},[385],{"categories":2385},[244],{"categories":2387},[244],{"categories":2389},[187],{"categories":2391},[177],{"categories":2393},[174],{"categories":2395},[171],{"categories":2397},[209],{"categories":2399},[174],{"categories":2401},[244],{"categories":2403},[177],{"categories":2405},[174],{"categories":2407},[174],{"categories":2409},[492],{"categories":2411},[],{"categories":2413},[174],{"categories":2415},[174],{"categories":2417},[174],{"categories":2419},[],{"categories":2421},[],{"categories":2423},[174],{"categories":2425},[174],{"categories":2427},[174],{"categories":2429},[174],{"categories":2431},[187],{"categories":2433},[174],{"categories":2435},[174],{"categories":2437},[177],{"categories":2439},[174],{"categories":2441},[174],{"categories":2443},[174],{"categories":2445},[174],{"categories":2447},[],{"categories":2449},[247],{"categories":2451},[174],{"categories":2453},[177],{"categories":2455},[174],{"categories":2457},[],{"categories":2459},[],{"categories":2461},[174],{"categories":2463},[174],{"categories":2465},[174],{"categories":2467},[209],{"categories":2469},[],{"categories":2471},[174],{"categories":2473},[244],{"categories":2475},[174],{"categories":2477},[301],{"categories":2479},[1497],{"categories":2481},[209],{"categories":2483},[187],{"categories":2485},[187],{"categories":2487},[187],{"categories":2489},[209],{"categories":2491},[209],{"categories":2493},[301],{"categories":2495},[],{"categories":2497},[209],{"categories":2499},[174],{"categories":2501},[168],{"categories":2503},[187],{"categories":2505},[174],{"categories":2507},[209],{"categories":2509},[],{"categories":2511},[174],{"categories":2513},[187],{"categories":2515},[247],{"categories":2517},[174],{"categories":2519},[209],{"categories":2521},[174],{"categories":2523},[187],{"categories":2525},[177],{"categories":2527},[209],{"categories":2529},[177],{"categories":2531},[301],{"categories":2533},[177],{"categories":2535},[174],{"categories":2537},[174],{"categories":2539},[187],{"categories":2541},[174],{"categories":2543},[],{"categories":2545},[171],{"categories":2547},[187],{"categories":2549},[],{"categories":2551},[],{"categories":2553},[174],{"categories":2555},[177],{"categories":2557},[174],{"categories":2559},[2560],"Frameworks & Tooling",{"categories":2562},[174],{"categories":2564},[174],{"categories":2566},[174],{"categories":2568},[174],{"categories":2570},[],{"categories":2572},[247],{"categories":2574},[247],{"categories":2576},[168],{"categories":2578},[177],{"categories":2580},[244],{"categories":2582},[],{"categories":2584},[1497],{"categories":2586},[174],{"categories":2588},[187],{"categories":2590},[174],{"categories":2592},[301],{"categories":2594},[301],{"categories":2596},[],{"categories":2598},[177],{"categories":2600},[209],{"categories":2602},[209],{"categories":2604},[174],{"categories":2606},[177],{"categories":2608},[],{"categories":2610},[244],{"categories":2612},[174],{"categories":2614},[174],{"categories":2616},[],{"categories":2618},[174],{"categories":2620},[],{"categories":2622},[187],{"categories":2624},[174],{"categories":2626},[187],{"categories":2628},[301],{"categories":2630},[174],{"categories":2632},[187],{"categories":2634},[171],{"categories":2636},[174],{"categories":2638},[1497],{"categories":2640},[],{"categories":2642},[177],{"categories":2644},[168],{"categories":2646},[168],{"categories":2648},[],{"categories":2650},[177],{"categories":2652},[174],{"categories":2654},[2655],"AI Design Tooling",{"categories":2657},[244],{"categories":2659},[174],{"categories":2661},[174],{"categories":2663},[187],{"categories":2665},[244],{"categories":2667},[174],{"categories":2669},[187],{"categories":2671},[209],{"categories":2673},[180],{"categories":2675},[187],{"categories":2677},[177],{"categories":2679},[],{"categories":2681},[174],{"categories":2683},[174],{"categories":2685},[177],{"categories":2687},[174],{"categories":2689},[174],{"categories":2691},[],{"categories":2693},[177],{"categories":2695},[2560],{"categories":2697},[174],{"categories":2699},[177],{"categories":2701},[177],{"categories":2703},[187],{"categories":2705},[187],{"categories":2707},[],{"categories":2709},[187],{"categories":2711},[174],{"categories":2713},[174],{"categories":2715},[177],{"categories":2717},[171],{"categories":2719},[174],{"categories":2721},[],{"categories":2723},[174],{"categories":2725},[1840],{"categories":2727},[],{"categories":2729},[174],{"categories":2731},[174],{"categories":2733},[],{"categories":2735},[174],{"categories":2737},[121],{"categories":2739},[174],{"categories":2741},[270],{"categories":2743},[209],{"categories":2745},[174],{"categories":2747},[174],{"categories":2749},[1497],{"categories":2751},[168],{"categories":2753},[174],{"categories":2755},[174],{"categories":2757},[247],{"categories":2759},[174],{"categories":2761},[209],{"categories":2763},[177],{"categories":2765},[],{"categories":2767},[174],{"categories":2769},[244],{"categories":2771},[174],{"categories":2773},[270],{"categories":2775},[174],{"categories":2777},[177],{"categories":2779},[],{"categories":2781},[],{"categories":2783},[],{"categories":2785},[168],{"categories":2787},[209],{"categories":2789},[177],{"categories":2791},[174],{"categories":2793},[174],{"categories":2795},[174],{"categories":2797},[404],{"categories":2799},[244],{"categories":2801},[177],{"categories":2803},[174],{"categories":2805},[],{"categories":2807},[177],{"categories":2809},[177],{"categories":2811},[],{"categories":2813},[174],{"categories":2815},[177],{"categories":2817},[174],{"categories":2819},[],{"categories":2821},[174],{"categories":2823},[174],{"categories":2825},[209],{"categories":2827},[244],{"categories":2829},[177],{"categories":2831},[244],{"categories":2833},[177],{"categories":2835},[171],{"categories":2837},[],{"categories":2839},[],{"categories":2841},[174],{"categories":2843},[174],{"categories":2845},[168],{"categories":2847},[177],{"categories":2849},[209],{"categories":2851},[],{"categories":2853},[244],{"categories":2855},[],{"categories":2857},[187],{"categories":2859},[187],{"categories":2861},[244],{"categories":2863},[187],{"categories":2865},[174],{"categories":2867},[],{"categories":2869},[174],{"categories":2871},[174],{"categories":2873},[],{"categories":2875},[270],{"categories":2877},[174],{"categories":2879},[301],{"categories":2881},[187],{"categories":2883},[],{"categories":2885},[177],{"categories":2887},[174],{"categories":2889},[168],{"categories":2891},[492],{"categories":2893},[177],{"categories":2895},[177],{"categories":2897},[174],{"categories":2899},[174],{"categories":2901},[],{"categories":2903},[168],{"categories":2905},[174],{"categories":2907},[171],{"categories":2909},[187],{"categories":2911},[244],{"categories":2913},[],{"categories":2915},[],{"categories":2917},[],{"categories":2919},[177],{"categories":2921},[187],{"categories":2923},[244],{"categories":2925},[209],{"categories":2927},[174],{"categories":2929},[209],{"categories":2931},[177],{"categories":2933},[244],{"categories":2935},[174],{"categories":2937},[],{"categories":2939},[174],{"categories":2941},[198],{"categories":2943},[177],{"categories":2945},[244],{"categories":2947},[209],{"categories":2949},[171],{"categories":2951},[187],{"categories":2953},[174],{"categories":2955},[209],{"categories":2957},[270],{"categories":2959},[],{"categories":2961},[],{"categories":2963},[247],{"categories":2965},[121],{"categories":2967},[174],{"categories":2969},[177],{"categories":2971},[174,187],{"categories":2973},[209],{"categories":2975},[174],{"categories":2977},[174],{"categories":2979},[177],{"categories":2981},[174],{"categories":2983},[177],{"categories":2985},[174],{"categories":2987},[174],{"categories":2989},[],{"categories":2991},[1061],{"categories":2993},[187],{"categories":2995},[244],{"categories":2997},[174],{"categories":2999},[174],{"categories":3001},[247],{"categories":3003},[177],{"categories":3005},[270],{"categories":3007},[301],{"categories":3009},[],{"categories":3011},[174],{"categories":3013},[171],{"categories":3015},[177],{"categories":3017},[168],{"categories":3019},[177],{"categories":3021},[174],{"categories":3023},[177],{"categories":3025},[180],{"categories":3027},[187],{"categories":3029},[174],{"categories":3031},[174],{"categories":3033},[],{"categories":3035},[],{"categories":3037},[],{"categories":3039},[301],{"categories":3041},[174],{"categories":3043},[209],{"categories":3045},[174],{"categories":3047},[174],{"categories":3049},[174],{"categories":3051},[174],{"categories":3053},[],{"categories":3055},[247],{"categories":3057},[171],{"categories":3059},[177],{"categories":3061},[174],{"categories":3063},[],{"categories":3065},[174],{"categories":3067},[177],{"categories":3069},[174],{"categories":3071},[301],{"categories":3073},[],{"categories":3075},[244],{"categories":3077},[244],{"categories":3079},[],{"categories":3081},[187],{"categories":3083},[174],{"categories":3085},[244],{"categories":3087},[174],{"categories":3089},[171],{"categories":3091},[177],{"categories":3093},[174],{"categories":3095},[],{"categories":3097},[209],{"categories":3099},[174],{"categories":3101},[174],{"categories":3103},[244],{"categories":3105},[177],{"categories":3107},[209],{"categories":3109},[],{"categories":3111},[177],{"categories":3113},[177],{"categories":3115},[244],{"categories":3117},[174],{"categories":3119},[174],{"categories":3121},[174],{"categories":3123},[121],{"categories":3125},[174],{"categories":3127},[],{"categories":3129},[174],{"categories":3131},[174],{"categories":3133},[301],{"categories":3135},[209],{"categories":3137},[247],{"categories":3139},[528],{"categories":3141},[247],{"categories":3143},[],{"categories":3145},[],{"categories":3147},[],{"categories":3149},[177],{"categories":3151},[177],{"categories":3153},[187],{"categories":3155},[174],{"categories":3157},[429],{"categories":3159},[187],{"categories":3161},[174],{"categories":3163},[174],{"categories":3165},[174],{"categories":3167},[174],{"categories":3169},[177],{"categories":3171},[],{"categories":3173},[],{"categories":3175},[174],{"categories":3177},[],{"categories":3179},[174],{"categories":3181},[177],{"categories":3183},[244],{"categories":3185},[174],{"categories":3187},[174],{"categories":3189},[],{"categories":3191},[180],{"categories":3193},[174],{"categories":3195},[244],{"categories":3197},[174],{"categories":3199},[171],{"categories":3201},[174],{"categories":3203},[270],{"categories":3205},[177],{"categories":3207},[174],{"categories":3209},[784],{"categories":3211},[174],{"categories":3213},[177],{"categories":3215},[174],{"categories":3217},[187],{"categories":3219},[174],{"categories":3221},[492],{"categories":3223},[244],{"categories":3225},[],{"categories":3227},[209],{"categories":3229},[121],{"categories":3231},[177],{"categories":3233},[174],{"categories":3235},[],{"categories":3237},[209],{"categories":3239},[385],{"categories":3241},[177],{"categories":3243},[177],{"categories":3245},[174],{"categories":3247},[174],{"categories":3249},[177],{"categories":3251},[],{"categories":3253},[171],{"categories":3255},[177],{"categories":3257},[],{"categories":3259},[187],{"categories":3261},[174],{"categories":3263},[168],{"categories":3265},[209],{"categories":3267},[301],{"categories":3269},[198],{"categories":3271},[177],{"categories":3273},[177],{"categories":3275},[174],{"categories":3277},[177],{"categories":3279},[168],{"categories":3281},[],{"categories":3283},[174],{"categories":3285},[174],{"categories":3287},[],{"categories":3289},[],{"categories":3291},[244],{"categories":3293},[174,171],{"categories":3295},[177],{"categories":3297},[174],{"categories":3299},[],{"categories":3301},[168],{"categories":3303},[247],{"categories":3305},[171],{"categories":3307},[174],{"categories":3309},[187],{"categories":3311},[174],{"categories":3313},[177],{"categories":3315},[174],{"categories":3317},[174],{"categories":3319},[174],{"categories":3321},[209],{"categories":3323},[1061],{"categories":3325},[177],{"categories":3327},[174],{"categories":3329},[],{"categories":3331},[],{"categories":3333},[177],{"categories":3335},[174],{"categories":3337},[301],{"categories":3339},[],{"categories":3341},[174],{"categories":3343},[177],{"categories":3345},[198],{"categories":3347},[177],{"categories":3349},[121],{"categories":3351},[],{"categories":3353},[404],{"categories":3355},[177],{"categories":3357},[174],{"categories":3359},[270],{"categories":3361},[174],{"categories":3363},[247],{"categories":3365},[177],{"categories":3367},[174],{"categories":3369},[121],{"categories":3371},[174],{"categories":3373},[301],{"categories":3375},[],{"categories":3377},[174],{"categories":3379},[270],{"categories":3381},[244],{"categories":3383},[174],{"categories":3385},[174],{"categories":3387},[],{"categories":3389},[270],{"categories":3391},[209],{"categories":3393},[174],{"categories":3395},[174],{"categories":3397},[528],{"categories":3399},[168],{"categories":3401},[174],{"categories":3403},[],{"categories":3405},[],{"categories":3407},[244],{"categories":3409},[174],{"categories":3411},[247],{"categories":3413},[270],{"categories":3415},[177],{"categories":3417},[270],{"categories":3419},[209],{"categories":3421},[],{"categories":3423},[174],{"categories":3425},[],{"categories":3427},[174],{"categories":3429},[547],{"categories":3431},[174],{"categories":3433},[174],{"categories":3435},[177],{"categories":3437},[121],{"categories":3439},[174],{"categories":3441},[174],{"categories":3443},[174],{"categories":3445},[],{"categories":3447},[174,187],{"categories":3449},[209],{"categories":3451},[177],{"categories":3453},[187],{"categories":3455},[177],{"categories":3457},[814],{"categories":3459},[187],{"categories":3461},[174],{"categories":3463},[168],{"categories":3465},[],{"categories":3467},[],{"categories":3469},[177],{"categories":3471},[174],{"categories":3473},[187],{"categories":3475},[168],{"categories":3477},[187],{"categories":3479},[187],{"categories":3481},[174],{"categories":3483},[270],{"categories":3485},[174],{"categories":3487},[187],{"categories":3489},[],{"categories":3491},[174],{"categories":3493},[244,174],{"categories":3495},[301],{"categories":3497},[168],{"categories":3499},[],{"categories":3501},[174],{"categories":3503},[121],{"categories":3505},[171],{"categories":3507},[171],{"categories":3509},[174],{"categories":3511},[174],{"categories":3513},[385],{"categories":3515},[174],{"categories":3517},[187],{"categories":3519},[177],{"categories":3521},[174],{"categories":3523},[174],{"categories":3525},[209],{"categories":3527},[270],{"categories":3529},[244],{"categories":3531},[174],{"categories":3533},[174],{"categories":3535},[174],{"categories":3537},[174],{"categories":3539},[168],{"categories":3541},[174],{"categories":3543},[177],{"categories":3545},[177],{"categories":3547},[187],{"categories":3549},[209],{"categories":3551},[187],{"categories":3553},[],{"categories":3555},[],{"categories":3557},[247],{"categories":3559},[174],{"categories":3561},[187],{"categories":3563},[174],{"categories":3565},[244],{"categories":3567},[121],{"categories":3569},[404],{"categories":3571},[385],{"categories":3573},[174],{"categories":3575},[174],{"categories":3577},[174],{"categories":3579},[247],{"categories":3581},[174],{"categories":3583},[174],{"categories":3585},[174],{"categories":3587},[177],{"categories":3589},[168],{"categories":3591},[177],{"categories":3593},[174,171],{"categories":3595},[],{"categories":3597},[244],{"categories":3599},[],{"categories":3601},[180],{"categories":3603},[174],{"categories":3605},[209],{"categories":3607},[168],{"categories":3609},[168],{"categories":3611},[177],{"categories":3613},[177],{"categories":3615},[177],{"categories":3617},[174],{"categories":3619},[174],{"categories":3621},[171],{"categories":3623},[187],{"categories":3625},[270],{"categories":3627},[174],{"categories":3629},[],{"categories":3631},[209],{"categories":3633},[174],{"categories":3635},[174],{"categories":3637},[174],{"categories":3639},[174],{"categories":3641},[174],{"categories":3643},[187],{"categories":3645},[209],{"categories":3647},[187],{"categories":3649},[187],{"categories":3651},[174],{"categories":3653},[174],{"categories":3655},[404],{"categories":3657},[174],{"categories":3659},[177],{"categories":3661},[209],{"categories":3663},[174],{"categories":3665},[174],{"categories":3667},[177],{"categories":3669},[174],{"categories":3671},[174],{"categories":3673},[174],{"categories":3675},[2560],{"categories":3677},[3678],"Clinical AI",{"categories":3680},[244],{"categories":3682},[174],{"categories":3684},[174],{"categories":3686},[174],{"categories":3688},[301],{"categories":3690},[2045],{"categories":3692},[174],{"categories":3694},[180],{"categories":3696},[174],{"categories":3698},[177],{"categories":3700},[174],{"categories":3702},[174],{"categories":3704},[209],{"categories":3706},[174],{"categories":3708},[177],{"categories":3710},[270],{"categories":3712},[174],{"categories":3714},[174],{"categories":3716},[171],{"categories":3718},[174],{"categories":3720},[492],{"categories":3722},[174],{"categories":3724},[],{"categories":3726},[174],{"categories":3728},[187],{"categories":3730},[174],{"categories":3732},[],{"categories":3734},[],{"categories":3736},[174],{"categories":3738},[],{"categories":3740},[171],{"categories":3742},[174],{"categories":3744},[177],{"categories":3746},[209],{"categories":3748},[209],{"categories":3750},[209],{"categories":3752},[209],{"categories":3754},[],{"categories":3756},[168],{"categories":3758},[177],{"categories":3760},[209],{"categories":3762},[174],{"categories":3764},[547],{"categories":3766},[180],{"categories":3768},[174],{"categories":3770},[168],{"categories":3772},[177],{"categories":3774},[174],{"categories":3776},[174,177],{"categories":3778},[177],{"categories":3780},[301],{"categories":3782},[209],{"categories":3784},[177],{"categories":3786},[209],{"categories":3788},[177],{"categories":3790},[174],{"categories":3792},[],{"categories":3794},[209],{"categories":3796},[270],{"categories":3798},[168],{"categories":3800},[174],{"categories":3802},[174],{"categories":3804},[],{"categories":3806},[187],{"categories":3808},[],{"categories":3810},[168],{"categories":3812},[177],{"categories":3814},[209],{"categories":3816},[174],{"categories":3818},[209],{"categories":3820},[168],{"categories":3822},[209],{"categories":3824},[209],{"categories":3826},[],{"categories":3828},[171],{"categories":3830},[177],{"categories":3832},[209],{"categories":3834},[209],{"categories":3836},[209],{"categories":3838},[209],{"categories":3840},[209],{"categories":3842},[209],{"categories":3844},[209],{"categories":3846},[209],{"categories":3848},[209],{"categories":3850},[209],{"categories":3852},[247],{"categories":3854},[168],{"categories":3856},[174],{"categories":3858},[174],{"categories":3860},[177],{"categories":3862},[177],{"categories":3864},[],{"categories":3866},[174,168],{"categories":3868},[],{"categories":3870},[177],{"categories":3872},[209],{"categories":3874},[177],{"categories":3876},[814],{"categories":3878},[174],{"categories":3880},[174],{"categories":3882},[174],{"categories":3884},[174],{"categories":3886},[385],{"categories":3888},[174],{"categories":3890},[177],{"categories":3892},[171],{"categories":3894},[177],{"categories":3896},[814],{"categories":3898},[],{"categories":3900},[177],{"categories":3902},[244],{"categories":3904},[209],{"categories":3906},[174],{"categories":3908},[],{"categories":3910},[],{"categories":3912},[177],{"categories":3914},[244],{"categories":3916},[174],{"categories":3918},[],{"categories":3920},[174],{"categories":3922},[],{"categories":3924},[270],{"categories":3926},[174],{"categories":3928},[],{"categories":3930},[],{"categories":3932},[209],{"categories":3934},[168],{"categories":3936},[174],{"categories":3938},[171],{"categories":3940},[174],{"categories":3942},[174],{"categories":3944},[174],{"categories":3946},[171],{"categories":3948},[244],{"categories":3950},[],{"categories":3952},[174],{"categories":3954},[209],{"categories":3956},[],{"categories":3958},[174],{"categories":3960},[174],{"categories":3962},[244],{"categories":3964},[174],{"categories":3966},[270],{"categories":3968},[174],{"categories":3970},[301],{"categories":3972},[],{"categories":3974},[177],{"categories":3976},[270],{"categories":3978},[187],{"categories":3980},[],{"categories":3982},[174],{"categories":3984},[],{"categories":3986},[177],{"categories":3988},[244],{"categories":3990},[187],{"categories":3992},[],{"categories":3994},[2560],{"categories":3996},[171],{"categories":3998},[168],{"categories":4000},[247],{"categories":4002},[177],{"categories":4004},[244],{"categories":4006},[187],{"categories":4008},[],{"categories":4010},[],{"categories":4012},[174],{"categories":4014},[168],{"categories":4016},[174],{"categories":4018},[270],{"categories":4020},[],{"categories":4022},[177],{"categories":4024},[177],{"categories":4026},[177],{"categories":4028},[209],{"categories":4030},[187],{"categories":4032},[174],{"categories":4034},[177],{"categories":4036},[180],{"categories":4038},[174],{"categories":4040},[177],{"categories":4042},[174],{"categories":4044},[180],{"categories":4046},[270],{"categories":4048},[209],{"categories":4050},[],{"categories":4052},[270],{"categories":4054},[],{"categories":4056},[187],{"categories":4058},[177],{"categories":4060},[],{"categories":4062},[174],{"categories":4064},[174],{"categories":4066},[174],{"categories":4068},[174],{"categories":4070},[177],{"categories":4072},[171],{"categories":4074},[168],{"categories":4076},[174],{"categories":4078},[244],{"categories":4080},[187],{"categories":4082},[187],{"categories":4084},[174],{"categories":4086},[247],{"categories":4088},[177],{"categories":4090},[174],{"categories":4092},[177],{"categories":4094},[174],{"categories":4096},[171],{"categories":4098},[244],{"categories":4100},[187],{"categories":4102},[177],{"categories":4104},[174],{"categories":4106},[180],{"categories":4108},[174],{"categories":4110},[177],{"categories":4112},[174],{"categories":4114},[209],{"categories":4116},[],{"categories":4118},[168],{"categories":4120},[174],{"categories":4122},[174],{"categories":4124},[174],{"categories":4126},[187],{"categories":4128},[174],{"categories":4130},[187],{"categories":4132},[174],{"categories":4134},[177],{"categories":4136},[174],{"categories":4138},[174],{"categories":4140},[174],{"categories":4142},[174],{"categories":4144},[],{"categories":4146},[174],{"categories":4148},[244],{"categories":4150},[171],{"categories":4152},[209],{"categories":4154},[177],{"categories":4156},[174],{"categories":4158},[174],{"categories":4160},[244],{"categories":4162},[177],{"categories":4164},[174],{"categories":4166},[270],{"categories":4168},[174],{"categories":4170},[247],{"categories":4172},[174],{"categories":4174},[174],{"categories":4176},[209],{"categories":4178},[174],{"categories":4180},[174],{"categories":4182},[177],{"categories":4184},[301],{"categories":4186},[174],{"categories":4188},[177],{"categories":4190},[247],{"categories":4192},[],{"categories":4194},[177],{"categories":4196},[187],{"categories":4198},[174],{"categories":4200},[1913],{"categories":4202},[244],{"categories":4204},[326],{"categories":4206},[174],{"categories":4208},[168],{"categories":4210},[187],{"categories":4212},[171],{"categories":4214},[187],{"categories":4216},[174],{"categories":4218},[],{"categories":4220},[177],{"categories":4222},[177],{"categories":4224},[174],{"categories":4226},[174],{"categories":4228},[247],{"categories":4230},[],{"categories":4232},[209],{"categories":4234},[],{"categories":4236},[209],{"categories":4238},[174],{"categories":4240},[174],{"categories":4242},[177],{"categories":4244},[177],{"categories":4246},[177],{"categories":4248},[],{"categories":4250},[209],{"categories":4252},[174],{"categories":4254},[],{"categories":4256},[174],{"categories":4258},[174],{"categories":4260},[],{"categories":4262},[244],{"categories":4264},[187],{"categories":4266},[177],{"categories":4268},[174],{"categories":4270},[174],{"categories":4272},[270],{"categories":4274},[174],{"categories":4276},[174],{"categories":4278},[168],{"categories":4280},[],{"categories":4282},[174],{"categories":4284},[174],{"categories":4286},[],{"categories":4288},[168],{"categories":4290},[209],{"categories":4292},[187],{"categories":4294},[121],{"categories":4296},[174],{"categories":4298},[174],{"categories":4300},[174],{"categories":4302},[187],{"categories":4304},[209],{"categories":4306},[244],{"categories":4308},[174],{"categories":4310},[174],{"categories":4312},[174],{"categories":4314},[209],{"categories":4316},[244],{"categories":4318},[174],{"categories":4320},[209],{"categories":4322},[244],{"categories":4324},[174],{"categories":4326},[209],{"categories":4328},[177],{"categories":4330},[177],{"categories":4332},[177],{"categories":4334},[187],{"categories":4336},[209],{"categories":4338},[177],{"categories":4340},[177],{"categories":4342},[174],{"categories":4344},[187],{"categories":4346},[244],{"categories":4348},[174],{"categories":4350},[],{"categories":4352},[177],{"categories":4354},[],{"categories":4356},[],{"categories":4358},[],{"categories":4360},[177],{"categories":4362},[171],{"categories":4364},[177],{"categories":4366},[4367],"Liability & Ethics",{"categories":4369},[174],{"categories":4371},[177],{"categories":4373},[168],{"categories":4375},[177],{"categories":4377},[171],{"categories":4379},[270],{"categories":4381},[177],{"categories":4383},[],{"categories":4385},[528],{"categories":4387},[177],{"categories":4389},[],{"categories":4391},[168],{"categories":4393},[177],{"categories":4395},[],{"categories":4397},[177],{"categories":4399},[174],{"categories":4401},[174],{"categories":4403},[209],{"categories":4405},[174],{"categories":4407},[174],{"categories":4409},[177],{"categories":4411},[174],{"categories":4413},[174],{"categories":4415},[209],{"categories":4417},[177],{"categories":4419},[187],{"categories":4421},[244],{"categories":4423},[168],{"categories":4425},[174],{"categories":4427},[],{"categories":4429},[177],{"categories":4431},[177],{"categories":4433},[121],{"categories":4435},[244],{"categories":4437},[301],{"categories":4439},[209],{"categories":4441},[174],{"categories":4443},[244],{"categories":4445},[174],{"categories":4447},[168],{"categories":4449},[],{"categories":4451},[177],{"categories":4453},[174],{"categories":4455},[174],{"categories":4457},[177],{"categories":4459},[174],{"categories":4461},[244],{"categories":4463},[],{"categories":4465},[177],{"categories":4467},[180],{"categories":4469},[209],{"categories":4471},[177],{"categories":4473},[171],{"categories":4475},[],{"categories":4477},[174],{"categories":4479},[180],{"categories":4481},[174],{"categories":4483},[177],{"categories":4485},[209],{"categories":4487},[168],{"categories":4489},[301],{"categories":4491},[174],{"categories":4493},[174],{"categories":4495},[174],{"categories":4497},[209],{"categories":4499},[171],{"categories":4501},[174],{"categories":4503},[244],{"categories":4505},[209],{"categories":4507},[301],{"categories":4509},[174],{"categories":4511},[177],{"categories":4513},[],{"categories":4515},[492],{"categories":4517},[],{"categories":4519},[174],{"categories":4521},[301],{"categories":4523},[247],{"categories":4525},[177],{"categories":4527},[177],{"categories":4529},[4530],"Design News & Tools",{"categories":4532},[174],{"categories":4534},[209],{"categories":4536},[174],{"categories":4538},[168],{"categories":4540},[174],{"categories":4542},[244],{"categories":4544},[177],{"categories":4546},[177],{"categories":4548},[174],{"categories":4550},[121],{"categories":4552},[174],{"categories":4554},[121],{"categories":4556},[270],{"categories":4558},[174],{"categories":4560},[177],{"categories":4562},[],{"categories":4564},[174],{"categories":4566},[174],{"categories":4568},[174],{"categories":4570},[209],{"categories":4572},[168],{"categories":4574},[],{"categories":4576},[174],{"categories":4578},[174],{"categories":4580},[187],{"categories":4582},[547],{"categories":4584},[187],{"categories":4586},[244],{"categories":4588},[174],{"categories":4590},[174,177],{"categories":4592},[270,171],{"categories":4594},[174],{"categories":4596},[174],{"categories":4598},[174],{"categories":4600},[],{"categories":4602},[177],{"categories":4604},[],{"categories":4606},[187],{"categories":4608},[174],{"categories":4610},[187],{"categories":4612},[],{"categories":4614},[177],{"categories":4616},[174],{"categories":4618},[209],{"categories":4620},[174],{"categories":4622},[],{"categories":4624},[177],{"categories":4626},[174],{"categories":4628},[],{"categories":4630},[244],{"categories":4632},[174],{"categories":4634},[177],{"categories":4636},[174],{"categories":4638},[174],{"categories":4640},[168],{"categories":4642},[177],{"categories":4644},[174],{"categories":4646},[],{"categories":4648},[301],{"categories":4650},[270],{"categories":4652},[171],{"categories":4654},[171],{"categories":4656},[174],{"categories":4658},[168],{"categories":4660},[168],{"categories":4662},[174],{"categories":4664},[177],{"categories":4666},[174],{"categories":4668},[174],{"categories":4670},[174],{"categories":4672},[187],{"categories":4674},[174],{"categories":4676},[168],{"categories":4678},[177],{"categories":4680},[174],{"categories":4682},[270],{"categories":4684},[121],{"categories":4686},[209],{"categories":4688},[174],{"categories":4690},[174],{"categories":4692},[177],{"categories":4694},[174],{"categories":4696},[],{"categories":4698},[187],{"categories":4700},[],{"categories":4702},[187],{"categories":4704},[177],{"categories":4706},[168],{"categories":4708},[],{"categories":4710},[247],{"categories":4712},[301],{"categories":4714},[174],{"categories":4716},[187],{"categories":4718},[174],{"categories":4720},[],{"categories":4722},[209],{"categories":4724},[177],{"categories":4726},[187],{"categories":4728},[244],{"categories":4730},[174],{"categories":4732},[177],{"categories":4734},[187],{"categories":4736},[177],{"categories":4738},[209],{"categories":4740},[174],{"categories":4742},[168],{"categories":4744},[209],{"categories":4746},[187],{"categories":4748},[174],{"categories":4750},[244],{"categories":4752},[171],{"categories":4754},[174],{"categories":4756},[174],{"categories":4758},[174],{"categories":4760},[174],{"categories":4762},[174],{"categories":4764},[177],{"categories":4766},[174],{"categories":4768},[177],{"categories":4770},[174],{"categories":4772},[174],{"categories":4774},[168],{"categories":4776},[174],{"categories":4778},[177],{"categories":4780},[177],{"categories":4782},[244],{"categories":4784},[177],{"categories":4786},[177],{"categories":4788},[168],{"categories":4790},[177],{"categories":4792},[244],{"categories":4794},[],{"categories":4796},[174],{"categories":4798},[247],{"categories":4800},[121],{"categories":4802},[174],{"categories":4804},[174],{"categories":4806},[174],{"categories":4808},[187],{"categories":4810},[],{"categories":4812},[177],{"categories":4814},[270],{"categories":4816},[174],{"categories":4818},[209],{"categories":4820},[177],{"categories":4822},[174],{"categories":4824},[270],{"categories":4826},[177],{"categories":4828},[171],{"categories":4830},[171],{"categories":4832},[174],{"categories":4834},[174],{"categories":4836},[174],{"categories":4838},[168],{"categories":4840},[],{"categories":4842},[174],{"categories":4844},[177],{"categories":4846},[177],{"categories":4848},[174],{"categories":4850},[174],{"categories":4852},[174],{"categories":4854},[187],{"categories":4856},[],{"categories":4858},[168],{"categories":4860},[174],{"categories":4862},[174],{"categories":4864},[177],{"categories":4866},[177],{"categories":4868},[],{"categories":4870},[187],{"categories":4872},[187],{"categories":4874},[174],{"categories":4876},[270],{"categories":4878},[244],{"categories":4880},[],{"categories":4882},[174],{"categories":4884},[177],{"categories":4886},[168],{"categories":4888},[174],{"categories":4890},[187],{"categories":4892},[168],{"categories":4894},[209],{"categories":4896},[247],{"categories":4898},[209],{"categories":4900},[177],{"categories":4902},[],{"categories":4904},[209],{"categories":4906},[177],{"categories":4908},[244],{"categories":4910},[247],{"categories":4912},[174],{"categories":4914},[],{"categories":4916},[177],{"categories":4918},[2560],{"categories":4920},[209],{"categories":4922},[187],{"categories":4924},[174],{"categories":4926},[174],{"categories":4928},[171],{"categories":4930},[174],{"categories":4932},[168],{"categories":4934},[1497],{"categories":4936},[301],{"categories":4938},[168],{"categories":4940},[],{"categories":4942},[],{"categories":4944},[209],{"categories":4946},[177],{"categories":4948},[209],{"categories":4950},[],{"categories":4952},[177],{"categories":4954},[177],{"categories":4956},[177],{"categories":4958},[],{"categories":4960},[174],{"categories":4962},[],{"categories":4964},[209],{"categories":4966},[168],{"categories":4968},[244],{"categories":4970},[174],{"categories":4972},[209],{"categories":4974},[174],{"categories":4976},[209],{"categories":4978},[],{"categories":4980},[209],{"categories":4982},[168],{"categories":4984},[121],{"categories":4986},[177],{"categories":4988},[174],{"categories":4990},[],{"categories":4992},[187],{"categories":4994},[177],{"categories":4996},[180],{"categories":4998},[177],{"categories":5000},[168],{"categories":5002},[],{"categories":5004},[],{"categories":5006},[],{"categories":5008},[244],{"categories":5010},[177],{"categories":5012},[174],{"categories":5014},[174],{"categories":5016},[],{"categories":5018},[],{"categories":5020},[],{"categories":5022},[244],{"categories":5024},[174],{"categories":5026},[],{"categories":5028},[177],{"categories":5030},[174],{"categories":5032},[168],{"categories":5034},[],{"categories":5036},[],{"categories":5038},[244],{"categories":5040},[174],{"categories":5042},[209],{"categories":5044},[],{"categories":5046},[270],{"categories":5048},[209],{"categories":5050},[270],{"categories":5052},[247],{"categories":5054},[174],{"categories":5056},[174],{"categories":5058},[],{"categories":5060},[],{"categories":5062},[177],{"categories":5064},[],{"categories":5066},[174],{"categories":5068},[121],{"categories":5070},[174],{"categories":5072},[174],{"categories":5074},[],{"categories":5076},[177],{"categories":5078},[174],{"categories":5080},[174],{"categories":5082},[],{"categories":5084},[177],{"categories":5086},[174],{"categories":5088},[209],{"categories":5090},[174],{"categories":5092},[270],{"categories":5094},[171],{"categories":5096},[174],{"categories":5098},[174],{"categories":5100},[177],{"categories":5102},[247],{"categories":5104},[177],{"categories":5106},[177],{"categories":5108},[],{"categories":5110},[],{"categories":5112},[174],{"categories":5114},[],{"categories":5116},[209],{"categories":5118},[171],{"categories":5120},[],{"categories":5122},[],{"categories":5124},[244],{"categories":5126},[168],{"categories":5128},[],{"categories":5130},[171],{"categories":5132},[270],{"categories":5134},[174],{"categories":5136},[187],{"categories":5138},[168],{"categories":5140},[247],{"categories":5142},[171],{"categories":5144},[187],{"categories":5146},[187],{"categories":5148},[],{"categories":5150},[174],{"categories":5152},[],{"categories":5154},[177],{"categories":5156},[168],{"categories":5158},[244],{"categories":5160},[174],{"categories":5162},[168],{"categories":5164},[177],{"categories":5166},[301],{"categories":5168},[174],{"categories":5170},[174],{"categories":5172},[174],{"categories":5174},[168],{"categories":5176},[247],{"categories":5178},[177],{"categories":5180},[],{"categories":5182},[174],{"categories":5184},[187],{"categories":5186},[209],{"categories":5188},[187],{"categories":5190},[174],{"categories":5192},[180],{"categories":5194},[],{"categories":5196},[244],{"categories":5198},[209],{"categories":5200},[168],{"categories":5202},[177],{"categories":5204},[174],{"categories":5206},[174],{"categories":5208},[177],{"categories":5210},[174],{"categories":5212},[174],{"categories":5214},[171],{"categories":5216},[177],{"categories":5218},[177,301],{"categories":5220},[177],{"categories":5222},[187],{"categories":5224},[174],{"categories":5226},[174],{"categories":5228},[247],{"categories":5230},[177],{"categories":5232},[270],{"categories":5234},[177],{"categories":5236},[171],{"categories":5238},[],{"categories":5240},[177],{"categories":5242},[174],{"categories":5244},[171],{"categories":5246},[],{"categories":5248},[],{"categories":5250},[187],{"categories":5252},[174],{"categories":5254},[177],{"categories":5256},[247],{"categories":5258},[270],{"categories":5260},[174],{"categories":5262},[174],{"categories":5264},[177],{"categories":5266},[],{"categories":5268},[177],{"categories":5270},[209],{"categories":5272},[177],{"categories":5274},[],{"categories":5276},[209],{"categories":5278},[187],{"categories":5280},[2560],{"categories":5282},[168],{"categories":5284},[187],{"categories":5286},[174],{"categories":5288},[177],{"categories":5290},[174],{"categories":5292},[174],{"categories":5294},[270],{"categories":5296},[187],{"categories":5298},[],{"categories":5300},[209],{"categories":5302},[174],{"categories":5304},[],{"categories":5306},[177],{"categories":5308},[174],{"categories":5310},[174],{"categories":5312},[174],{"categories":5314},[177],{"categories":5316},[174],{"categories":5318},[174],{"categories":5320},[180],{"categories":5322},[177],{"categories":5324},[174],{"categories":5326},[174],{"categories":5328},[174],{"categories":5330},[174],{"categories":5332},[174],{"categories":5334},[171],{"categories":5336},[],{"categories":5338},[180],{"categories":5340},[209],{"categories":5342},[177],{"categories":5344},[174],{"categories":5346},[187],{"categories":5348},[],{"categories":5350},[187],{"categories":5352},[187],{"categories":5354},[177],{"categories":5356},[187],{"categories":5358},[174],{"categories":5360},[174],{"categories":5362},[187],{"categories":5364},[174],{"categories":5366},[177],{"categories":5368},[209],{"categories":5370},[174],{"categories":5372},[174],{"categories":5374},[174],{"categories":5376},[171],{"categories":5378},[174],{"categories":5380},[177],{"categories":5382},[244],{"categories":5384},[],{"categories":5386},[174],{"categories":5388},[247],{"categories":5390},[177],{"categories":5392},[174],{"categories":5394},[],{"categories":5396},[174],{"categories":5398},[174],{"categories":5400},[209],{"categories":5402},[174],{"categories":5404},[174],{"categories":5406},[177],{"categories":5408},[270],{"categories":5410},[],{"categories":5412},[],{"categories":5414},[187],{"categories":5416},[209],{"categories":5418},[187],{"categories":5420},[209],{"categories":5422},[174],{"categories":5424},[270],{"categories":5426},[174],{"categories":5428},[168],{"categories":5430},[177],{"categories":5432},[174],{"categories":5434},[177],{"categories":5436},[177],{"categories":5438},[174],{"categories":5440},[171],{"categories":5442},[],{"categories":5444},[247],{"categories":5446},[174],{"categories":5448},[],{"categories":5450},[209],{"categories":5452},[174],{"categories":5454},[247],{"categories":5456},[174],{"categories":5458},[187],{"categories":5460},[187],{"categories":5462},[187],{"categories":5464},[177],{"categories":5466},[177],{"categories":5468},[177],{"categories":5470},[174],{"categories":5472},[244],{"categories":5474},[247],{"categories":5476},[247],{"categories":5478},[],{"categories":5480},[209],{"categories":5482},[174],{"categories":5484},[174],{"categories":5486},[187],{"categories":5488},[],{"categories":5490},[209],{"categories":5492},[209],{"categories":5494},[209],{"categories":5496},[],{"categories":5498},[177],{"categories":5500},[174],{"categories":5502},[],{"categories":5504},[168],{"categories":5506},[171],{"categories":5508},[],{"categories":5510},[174],{"categories":5512},[174],{"categories":5514},[],{"categories":5516},[187],{"categories":5518},[],{"categories":5520},[],{"categories":5522},[],{"categories":5524},[],{"categories":5526},[174],{"categories":5528},[209],{"categories":5530},[],{"categories":5532},[],{"categories":5534},[174],{"categories":5536},[174],{"categories":5538},[174],{"categories":5540},[247],{"categories":5542},[174],{"categories":5544},[247],{"categories":5546},[],{"categories":5548},[247],{"categories":5550},[247],{"categories":5552},[301],{"categories":5554},[177],{"categories":5556},[187],{"categories":5558},[],{"categories":5560},[],{"categories":5562},[247],{"categories":5564},[187],{"categories":5566},[187],{"categories":5568},[187],{"categories":5570},[],{"categories":5572},[168],{"categories":5574},[187],{"categories":5576},[187],{"categories":5578},[168],{"categories":5580},[187],{"categories":5582},[171],{"categories":5584},[187],{"categories":5586},[187],{"categories":5588},[187],{"categories":5590},[247],{"categories":5592},[209],{"categories":5594},[209],{"categories":5596},[174],{"categories":5598},[187],{"categories":5600},[247],{"categories":5602},[301],{"categories":5604},[247],{"categories":5606},[247],{"categories":5608},[247],{"categories":5610},[],{"categories":5612},[171],{"categories":5614},[],{"categories":5616},[301],{"categories":5618},[187],{"categories":5620},[187],{"categories":5622},[187],{"categories":5624},[177],{"categories":5626},[209,171],{"categories":5628},[247],{"categories":5630},[],{"categories":5632},[],{"categories":5634},[247],{"categories":5636},[],{"categories":5638},[247],{"categories":5640},[209],{"categories":5642},[177],{"categories":5644},[],{"categories":5646},[187],{"categories":5648},[174],{"categories":5650},[244],{"categories":5652},[],{"categories":5654},[174],{"categories":5656},[],{"categories":5658},[209],{"categories":5660},[168],{"categories":5662},[247],{"categories":5664},[],{"categories":5666},[187],{"categories":5668},[209],[5670,5739,5840,5932],{"id":5671,"title":5672,"ai":5673,"body":5678,"categories":5721,"created_at":122,"date_modified":122,"description":112,"extension":123,"faq":122,"featured":124,"kicker_label":122,"meta":5722,"navigation":144,"path":5726,"published_at":5727,"question":122,"scraped_at":5727,"seo":5728,"sitemap":5729,"source_id":5730,"source_name":5731,"source_type":5732,"source_url":5733,"stem":5734,"tags":5735,"thumbnail_url":122,"tldr":5736,"tweet":122,"unknown_tags":5737,"__hash__":5738},"summaries\u002Fsummaries\u002Fd21bc60bc19731c0-improving-long-horizon-llm-planning-via-symbolic-f-summary.md","Improving Long-Horizon LLM Planning via Symbolic Feedback",{"provider":7,"model":8,"input_tokens":5674,"output_tokens":5675,"processing_time_ms":5676,"cost_usd":5677},6011,424,2470,0.00213875,{"type":14,"value":5679,"toc":5717},[5680,5684,5687,5691,5694,5714],[17,5681,5683],{"id":5682},"the-challenge-of-long-horizon-planning","The Challenge of Long-Horizon Planning",[22,5685,5686],{},"Large Language Models often struggle with long-horizon decision-making, frequently generating infeasible or logically incorrect plans. These failures stem from the model's inability to maintain strict adherence to task constraints and semantics over extended sequences. The proposed framework addresses this by moving away from pure natural language generation toward a structured, feedback-driven refinement loop.",[17,5688,5690],{"id":5689},"symbolic-feedback-and-iterative-refinement","Symbolic Feedback and Iterative Refinement",[22,5692,5693],{},"The core of the framework is a three-part mechanism designed to enforce reliability:",[40,5695,5696,5702,5708],{},[43,5697,5698,5701],{},[46,5699,5700],{},"Symbolic Mapping:"," The system maps logical symbols into natural language descriptions. This bridges the gap between formal constraints and the model's linguistic capabilities, ensuring the LLM understands the underlying task requirements.",[43,5703,5704,5707],{},[46,5705,5706],{},"Symbolic Verifier:"," Instead of relying on the LLM to self-correct based on vague intuition, a dedicated verifier checks the generated plan against formal constraints. When errors are detected, the verifier translates these failures into specific, actionable corrective instructions that the LLM can interpret and execute.",[43,5709,5710,5713],{},[46,5711,5712],{},"Plan Recognizer:"," To prevent the model from drifting, a plan recognizer evaluates goal reachability. This provides a signal that guides the refinement process toward valid, achievable end-states.",[22,5715,5716],{},"By combining these components, the framework enables an iterative self-refinement loop where the LLM continuously updates its plan based on concrete, symbolic feedback rather than probabilistic guessing. This approach consistently improves both the feasibility and correctness of plans in complex, multi-step tasks.",{"title":112,"searchDepth":113,"depth":113,"links":5718},[5719,5720],{"id":5682,"depth":113,"text":5683},{"id":5689,"depth":113,"text":5690},[121],{"content_references":5723,"triage":5724},[],{"relevance":140,"novelty":140,"quality":140,"actionability":141,"composite":142,"reasoning":5725},"Category: Agents & Orchestration. The article discusses a framework for improving LLM planning reliability, which directly addresses the audience's interest in architectures and tool use for AI systems. It presents a novel approach to enhancing decision-making in LLMs through symbolic feedback, which is a new angle in the field. However, while it provides insights into the framework, it lacks detailed actionable steps that the audience could immediately implement.","\u002Fsummaries\u002Fd21bc60bc19731c0-improving-long-horizon-llm-planning-via-symbolic-f-summary","2026-06-29 14:33:22",{"title":5672,"description":112},{"loc":5726},"d21bc60bc19731c0","arXiv cs.AI","article","https:\u002F\u002Farxiv.org\u002Fabs\u002F2606.27757","summaries\u002Fd21bc60bc19731c0-improving-long-horizon-llm-planning-via-symbolic-f-summary",[158,156,157],"This framework enhances LLM planning reliability by using a symbolic verifier to identify errors and provide corrective, interpretable instructions for iterative self-refinement.",[],"xebUSOJ_vs7Z1nvn4lXfWDfeRGEaC-ESX4ZfP6b_gPg",{"id":5740,"title":5741,"ai":5742,"body":5747,"categories":5818,"created_at":122,"date_modified":122,"description":112,"extension":123,"faq":122,"featured":124,"kicker_label":122,"meta":5819,"navigation":144,"path":5829,"published_at":5830,"question":122,"scraped_at":5830,"seo":5831,"sitemap":5832,"source_id":5833,"source_name":5731,"source_type":5732,"source_url":5825,"stem":5834,"tags":5835,"thumbnail_url":122,"tldr":5837,"tweet":122,"unknown_tags":5838,"__hash__":5839},"summaries\u002Fsummaries\u002Fde46927d081e1cdc-agent-native-immune-system-anis-architecture-for-r-summary.md","Agent-Native Immune System (ANIS): Architecture for Runtime Defense",{"provider":7,"model":8,"input_tokens":5743,"output_tokens":5744,"processing_time_ms":5745,"cost_usd":5746},6253,556,2914,0.00239725,{"type":14,"value":5748,"toc":5813},[5749,5753,5756,5760,5763,5785,5789,5792,5810],[17,5750,5752],{"id":5751},"the-shift-from-static-alignment-to-runtime-immunity","The Shift from Static Alignment to Runtime Immunity",[22,5754,5755],{},"Traditional AI security relies on perimeter defense and training-time alignment (e.g., RLHF). These methods are insufficient for autonomous agents, which operate in dynamic environments with persistent memory and external tool access. The authors argue that a fully aligned agent remains vulnerable to runtime exploits like memory poisoning, tool-chain manipulation, and multi-agent protocol attacks. They propose the Agent-Native Immune System (ANIS), an endogenous defense architecture that functions as a dynamic \"law enforcement\" mechanism during runtime, distinct from the static \"constitutional\" values established during training.",[17,5757,5759],{"id":5758},"the-immune-tower-and-harness-triad","The Immune Tower and Harness Triad",[22,5761,5762],{},"ANIS introduces two core structural concepts for agent security:",[40,5764,5765,5775],{},[43,5766,5767,5770,5771,5774],{},[46,5768,5769],{},"The Immune Tower (L0-L5):"," A six-layer hierarchical defense framework. A critical component is ",[46,5772,5773],{},"Barrier Immunity (L1)",", which provides non-cognitive, physical-and-logical isolation to prevent unauthorized access before it reaches the agent's reasoning loop.",[43,5776,5777,5780,5781,5784],{},[46,5778,5779],{},"The Harness Triad:"," A meta-cognitive automation backbone consisting of Meta, Self, and Auto components. This system enables ",[46,5782,5783],{},"Continual Immune Learning (CIL)",", allowing the agent to dynamically update its \"vaccines\" (defense protocols) in response to novel, evolving threats.",[17,5786,5788],{"id":5787},"taxonomy-and-future-challenges","Taxonomy and Future Challenges",[22,5790,5791],{},"The framework formalizes the distinction between superficial defenses and robust security measures:",[40,5793,5794,5800],{},[43,5795,5796,5799],{},[46,5797,5798],{},"Agent Viruses vs. Agent Vaccines:"," The authors distinguish between non-parametric, superficial defenses and parametric, robust vaccines that provide deep protection.",[43,5801,5802,5805,5806,5809],{},[46,5803,5804],{},"Evaluation Metrics:"," A major open challenge is the definition of new metrics, such as the ",[46,5807,5808],{},"Autoimmunity Rate",", which measures the false-positive intervention rate of the defense system.",[22,5811,5812],{},"The authors emphasize that the future of agent security lies in understanding the co-evolutionary dynamics between pathogens and vaccines within collective intelligence ecosystems, necessitating standardized immune protocols for agentic workflows.",{"title":112,"searchDepth":113,"depth":113,"links":5814},[5815,5816,5817],{"id":5751,"depth":113,"text":5752},{"id":5758,"depth":113,"text":5759},{"id":5787,"depth":113,"text":5788},[121],{"content_references":5820,"triage":5827},[5821],{"type":5822,"title":5823,"author":5824,"url":5825,"context":5826},"paper","Agent-Native Immune System: Architecture, Taxonomy, and Engineering","Bo Shen et al.","https:\u002F\u002Farxiv.org\u002Fabs\u002F2606.28270","reviewed",{"relevance":140,"novelty":140,"quality":140,"actionability":141,"composite":142,"reasoning":5828},"Category: Agents & Orchestration. The article discusses a novel architecture for runtime defense in autonomous agents, addressing a specific pain point related to security in dynamic environments. It introduces the Immune Tower and Harness Triad, which provide actionable insights into improving agent security, although it lacks detailed implementation steps.","\u002Fsummaries\u002Fde46927d081e1cdc-agent-native-immune-system-anis-architecture-for-r-summary","2026-06-29 14:33:24",{"title":5741,"description":112},{"loc":5829},"de46927d081e1cdc","summaries\u002Fde46927d081e1cdc-agent-native-immune-system-anis-architecture-for-r-summary",[156,158,5836,157],"evals","The Agent-Native Immune System (ANIS) shifts AI security from static training-time alignment to dynamic, runtime defense, using a six-layer 'Immune Tower' to protect autonomous agents against memory poisoning and tool-chain manipulation.",[],"mkalbeihUoM5ScBYXC-cvpT68EdDH7YpzNIluqiu4U8",{"id":5841,"title":5842,"ai":5843,"body":5848,"categories":5911,"created_at":122,"date_modified":122,"description":112,"extension":123,"faq":122,"featured":124,"kicker_label":122,"meta":5912,"navigation":144,"path":5921,"published_at":5922,"question":122,"scraped_at":5922,"seo":5923,"sitemap":5924,"source_id":5925,"source_name":5731,"source_type":5732,"source_url":5917,"stem":5926,"tags":5927,"thumbnail_url":122,"tldr":5929,"tweet":122,"unknown_tags":5930,"__hash__":5931},"summaries\u002Fsummaries\u002F357649c737150a2a-personality-prompting-in-multi-agent-teams-task-de-summary.md","Personality Prompting in Multi-Agent Teams: Task-Dependent Impact",{"provider":7,"model":8,"input_tokens":5844,"output_tokens":5845,"processing_time_ms":5846,"cost_usd":5847},5891,548,3497,0.00229475,{"type":14,"value":5849,"toc":5906},[5850,5854,5857,5864,5868,5879,5883,5886],[17,5851,5853],{"id":5852},"the-impact-of-personality-on-agentic-workflows","The Impact of Personality on Agentic Workflows",[22,5855,5856],{},"Research indicates that while personality prompting—specifically manipulating traits like agreeableness—effectively shifts the communication style of LLM agents, its impact on objective performance is highly dependent on the nature of the task.",[22,5858,5859,5860,5863],{},"In structured, deterministic environments like ",[46,5861,5862],{},"coding tasks",", agents prompted with low agreeableness exhibit significant shifts in communication (e.g., more adversarial or blunt language) without negatively impacting milestone completion or code quality. In these domains, the model's underlying reasoning capabilities appear to override the stylistic constraints imposed by personality prompts.",[17,5865,5867],{"id":5866},"when-personality-becomes-a-performance-bottleneck","When Personality Becomes a Performance Bottleneck",[22,5869,5870,5871,5874,5875,5878],{},"Conversely, in ",[46,5872,5873],{},"open-ended research collaboration"," and ",[46,5876,5877],{},"competitive bargaining",", personality manipulation is a critical performance variable. When agents are prompted to be less agreeable in these contexts, performance degrades substantially. This suggests that for tasks requiring high levels of social coordination, consensus-building, or negotiation, the \"personality\" of the agent is not merely cosmetic but a functional component of the system's success.",[17,5880,5882],{"id":5881},"design-implications-for-multi-agent-systems","Design Implications for Multi-Agent Systems",[22,5884,5885],{},"These findings suggest that developers should not treat personality as a global configuration for multi-agent systems. Instead, personality-based prompting should be:",[40,5887,5888,5894,5900],{},[43,5889,5890,5893],{},[46,5891,5892],{},"Context-Aware:"," Apply cooperative personality traits to agents handling negotiation or collaborative brainstorming.",[43,5895,5896,5899],{},[46,5897,5898],{},"Task-Isolated:"," Recognize that for technical, objective-driven tasks (like coding or data processing), personality constraints may introduce unnecessary communication overhead without providing any functional benefit.",[43,5901,5902,5905],{},[46,5903,5904],{},"Evaluated via Domain:"," Performance benchmarks for agentic systems must include diverse task types to ensure that stylistic prompting does not inadvertently sabotage collaborative workflows.",{"title":112,"searchDepth":113,"depth":113,"links":5907},[5908,5909,5910],{"id":5852,"depth":113,"text":5853},{"id":5866,"depth":113,"text":5867},{"id":5881,"depth":113,"text":5882},[121],{"content_references":5913,"triage":5918},[5914],{"type":5822,"title":5915,"author":5916,"url":5917,"context":5826},"When Does Personality Composition Matter for Multi-Agent LLM Teams?","Aryan Keluskar, Amrita Bhattacharjee, Huan Liu","https:\u002F\u002Farxiv.org\u002Fabs\u002F2606.27443",{"relevance":140,"novelty":141,"quality":140,"actionability":141,"composite":5919,"reasoning":5920},3.6,"Category: Agents & Orchestration. The article discusses the impact of personality prompting on LLM agents, which directly relates to architectures and multi-agent systems. It provides insights into how personality affects performance in different task contexts, addressing a specific audience pain point regarding agent behavior in production systems.","\u002Fsummaries\u002F357649c737150a2a-personality-prompting-in-multi-agent-teams-task-de-summary","2026-06-29 14:33:21",{"title":5842,"description":112},{"loc":5921},"357649c737150a2a","summaries\u002F357649c737150a2a-personality-prompting-in-multi-agent-teams-task-de-summary",[156,158,157,5928],"benchmarks","Personality manipulation in LLM agents significantly alters communication style but only degrades task performance in open-ended or collaborative domains, while remaining largely neutral in structured coding tasks.",[],"khba6PHL-_BeKYoJyqhesmkiK9D7MqAS_PlkEMURIFk",{"id":5933,"title":5934,"ai":5935,"body":5940,"categories":5984,"created_at":122,"date_modified":122,"description":112,"extension":123,"faq":122,"featured":124,"kicker_label":122,"meta":5985,"navigation":144,"path":5994,"published_at":5922,"question":122,"scraped_at":5922,"seo":5995,"sitemap":5996,"source_id":5997,"source_name":5731,"source_type":5732,"source_url":5990,"stem":5998,"tags":5999,"thumbnail_url":122,"tldr":6001,"tweet":122,"unknown_tags":6002,"__hash__":6003},"summaries\u002Fsummaries\u002Fa2eaa59f5c919b59-internalizing-future-aware-planning-in-llm-agents-summary.md","Internalizing Future-Aware Planning in LLM Agents",{"provider":7,"model":8,"input_tokens":5936,"output_tokens":5937,"processing_time_ms":5938,"cost_usd":5939},6084,537,2602,0.0023265,{"type":14,"value":5941,"toc":5980},[5942,5946,5949,5953,5956,5977],[17,5943,5945],{"id":5944},"the-problem-reactive-vs-proactive-planning","The Problem: Reactive vs. Proactive Planning",[22,5947,5948],{},"Standard LLM agents are fundamentally reactive, struggling with long-horizon tasks because they lack an internal world model to simulate outcomes before committing to an action. While some models can mimic foresight, they often suffer from a \"format-capability gap,\" where they produce plausible-looking plans without genuine predictive grounding. The authors argue that effective world modeling requires moving beyond simple fine-tuning to a structured, capability-first training pipeline.",[17,5950,5952],{"id":5951},"a-three-stage-training-paradigm","A Three-Stage Training Paradigm",[22,5954,5955],{},"To bridge the gap between superficial mimicry and grounded foresight, the authors propose a unified training approach that forces the model to verbalize both a prospective state rollout and a plan-conditioned success estimate (a text-based equivalent of a Q-value):",[5957,5958,5959,5965,5971],"ol",{},[43,5960,5961,5964],{},[46,5962,5963],{},"World Model Agentic Mid-Training (WM-AMT):"," This stage focuses on injecting latent predictive capabilities into the policy, ensuring the model learns to represent future states internally.",[43,5966,5967,5970],{},[46,5968,5969],{},"Format-Eliciting SFT (FE-SFT):"," Once the capability is present, this stage structures the output to ensure the model can consistently express its foresight in a usable, textual format.",[43,5972,5973,5976],{},[46,5974,5975],{},"Foresight-Conditioned Reinforcement Learning (FC-RL):"," The final stage refines the model's ability to calibrate its simulations, ensuring that the generated \"what-if\" scenarios are both accurate and useful for decision-making.",[22,5978,5979],{},"By separating the acquisition of predictive capability from the formatting and calibration stages, the model develops a more robust internal world model. This approach consistently outperforms standard training baselines in search and mathematical reasoning tasks, demonstrating that grounded foresight is achievable through a deliberate, multi-stage training process.",{"title":112,"searchDepth":113,"depth":113,"links":5981},[5982,5983],{"id":5944,"depth":113,"text":5945},{"id":5951,"depth":113,"text":5952},[121],{"content_references":5986,"triage":5992},[5987],{"type":5822,"title":5988,"author":5989,"url":5990,"context":5991},"Internalizing the Future: A Unified Agentic Training Paradigm for World Model Planning","Xuan Zhang et al.","https:\u002F\u002Farxiv.org\u002Fabs\u002F2606.27483","cited",{"relevance":140,"novelty":140,"quality":140,"actionability":141,"composite":142,"reasoning":5993},"Category: Agents & Orchestration. The article discusses a novel three-stage training paradigm for LLM agents that enhances their planning capabilities, addressing a specific pain point of reactive behavior in AI systems. While it presents actionable insights, the implementation details may not be sufficient for immediate application by engineers.","\u002Fsummaries\u002Fa2eaa59f5c919b59-internalizing-future-aware-planning-in-llm-agents-summary",{"title":5934,"description":112},{"loc":5994},"a2eaa59f5c919b59","summaries\u002Fa2eaa59f5c919b59-internalizing-future-aware-planning-in-llm-agents-summary",[156,158,6000,157],"post-training","To move LLM agents beyond reactive behavior, this paper introduces a three-stage training paradigm that enables agents to perform grounded 'what-if' simulations and success estimation.",[],"u72eXzcUXf4x0_6aAnzYdYGdPzDw3b5rkLV9tjIbVV0"]