{"collectionById":{"76d23fbd-a202-403b-8313-b3bc36d46679":{"id":"76d23fbd-a202-403b-8313-b3bc36d46679","name":"Research Post","fieldSchemas":[{"id":"1d8c181d-1ccd-446e-87b0-482ccb3ee240","name":"Title","type":"plain_text","role":"primary"},{"id":"571c37b5-f5fc-4742-a5de-b4da6f3415b3","name":"Slug","type":"slug","role":"slug"},{"id":"b849df26-d533-44dc-8e06-3cd46965a12f","name":"Publish date","type":"date"},{"id":"23af29f5-243e-4242-b068-66de843652ad","name":"Tag","type":"plain_text"},{"id":"8d3b3780-1c4a-4036-8fdb-f65b1013c759","name":"Hero Image","type":"image"},{"id":"72793aa2-c60c-4f34-b560-b3f2b852cb63","name":"摘要","type":"plain_text"}],"itemById":{"809bd036-e216-4bdb-ae70-dbd1d65b4804":{"id":"809bd036-e216-4bdb-ae70-dbd1d65b4804","index":"\"NO","collectionId":"76d23fbd-a202-403b-8313-b3bc36d46679","fields":[{"id":"0959b9cd-3c18-4c14-9bf7-deaae0e2d552","value":"fable-5-expensive-intelligence-needs-expensive-work","itemId":"809bd036-e216-4bdb-ae70-dbd1d65b4804","fieldSchemaId":"571c37b5-f5fc-4742-a5de-b4da6f3415b3"},{"id":"e1a67196-e141-41ac-9451-007e1b7bc2d2","value":"Fable 5: Expensive Intelligence Needs Expensive Work","itemId":"809bd036-e216-4bdb-ae70-dbd1d65b4804","fieldSchemaId":"1d8c181d-1ccd-446e-87b0-482ccb3ee240"},{"id":"f2b97869-0e2e-47de-bf84-f9ef9fa7752d","value":"Live Chats","itemId":"809bd036-e216-4bdb-ae70-dbd1d65b4804","fieldSchemaId":"23af29f5-243e-4242-b068-66de843652ad"},{"id":"dd510b0d-be28-4167-b952-d897181030d5","value":"{\"image\":\"fae412b7384bed86b4da6bf69eb58029de51ee35\",\"imageThumbnail\":\"fae412b7384bed86b4da6bf69eb58029de51ee35\",\"originalImageHeight\":728,\"originalImageWidth\":1024,\"altText\":\"Fable 5: Expensive Intelligence Needs Expensive Work\",\"fileName\":\"690f7701-c1b5-4d3e-9858-d1db2136f11a_1024x728.png\"}","itemId":"809bd036-e216-4bdb-ae70-dbd1d65b4804","fieldSchemaId":"8d3b3780-1c4a-4036-8fdb-f65b1013c759"},{"id":"fedef734-849d-4a46-b932-205150f68711","value":"Frontier models may capture 80% of model revenue, while lower-cost and open-source models may process 80% of tokens.","itemId":"809bd036-e216-4bdb-ae70-dbd1d65b4804","fieldSchemaId":"72793aa2-c60c-4f34-b560-b3f2b852cb63"},{"id":"4a4a3ca2-09eb-42cb-b075-866e7c317cc5","value":"2026-06-25","itemId":"809bd036-e216-4bdb-ae70-dbd1d65b4804","fieldSchemaId":"b849df26-d533-44dc-8e06-3cd46965a12f"}]},"cd412711-7095-43ca-8389-8011dab2f900":{"id":"cd412711-7095-43ca-8389-8011dab2f900","index":"\"Nf","collectionId":"76d23fbd-a202-403b-8313-b3bc36d46679","fields":[{"id":"f1d20fa1-7867-4265-ae2a-83861af06f83","value":"inventing-anthropic-two-ingredients-behind-the-ai-winner","itemId":"cd412711-7095-43ca-8389-8011dab2f900","fieldSchemaId":"571c37b5-f5fc-4742-a5de-b4da6f3415b3"},{"id":"2eea312c-4c7c-45e4-af50-c6ac3b032b4a","value":"Inventing Anthropic: Two Ingredients Behind the AI Winner","itemId":"cd412711-7095-43ca-8389-8011dab2f900","fieldSchemaId":"1d8c181d-1ccd-446e-87b0-482ccb3ee240"},{"id":"0e8aff66-bf31-42a7-b509-6823b5cb1bbf","value":"2026-06-18","itemId":"cd412711-7095-43ca-8389-8011dab2f900","fieldSchemaId":"b849df26-d533-44dc-8e06-3cd46965a12f"},{"id":"95b6c68b-b8fe-4405-983b-2473fe2b195f","value":"The rise of Anthropic is a case study in how focus and culture can become strategy.","itemId":"cd412711-7095-43ca-8389-8011dab2f900","fieldSchemaId":"72793aa2-c60c-4f34-b560-b3f2b852cb63"},{"id":"284d4171-d179-40d9-b3c6-4b7d79566d55","value":"Deep Dive","itemId":"cd412711-7095-43ca-8389-8011dab2f900","fieldSchemaId":"23af29f5-243e-4242-b068-66de843652ad"},{"id":"ca67a7ea-67aa-4356-bc78-1554f93aa4fa","value":"{\"image\":\"2b5b4fc4c50b92d559307ff120a89343cdd0cc19\",\"imageThumbnail\":\"2b5b4fc4c50b92d559307ff120a89343cdd0cc19\",\"originalImageHeight\":1058,\"originalImageWidth\":1486,\"altText\":\"Inventing Anthropic: Two Ingredients Behind the AI Winner\",\"fileName\":\"1393639d-5078-4519-88be-1b7f809f23e2_1486x1058.png\"}","itemId":"cd412711-7095-43ca-8389-8011dab2f900","fieldSchemaId":"8d3b3780-1c4a-4036-8fdb-f65b1013c759"}]}}}},"slugByItemId":{"d495e0e3-e929-4163-9d3e-0fec19ef9c2c":"beyond-deepseek-what-chinas-model","7b886fb4-c171-49aa-877e-475cf8b97f18":"how-openai-could-turn-the-tables","598cfcc0-365f-40c6-9f63-6631c6f5a6ff":"will-chinese-ai-leap-ahead-or-follow","91e6e6f8-7396-4490-b421-e7e2ff664063":"rl-scaling-from-research-trick-to","d285731a-bce6-45c3-9dac-26edd7829535":"pulse-how-openai-starts-outrunning","c23fe0ec-cf33-40e2-b090-b73d06099e9a":"generalist-and-the-270000-hour-advantage","80ff4031-030f-4caf-b7a9-1825fd8cb70f":"agi-2026-are-we-the-final-white-collar","940cd5e4-2e54-4b7a-941f-c0ea4e37df50":"beyond-the-cloud-are-llms-the-new","0c9ed8bc-cb92-4008-9f50-15867c8349d3":"our-thoughts-on-llm-part-one","fb158125-2004-4c70-972d-88d6846176ab":"decode-the-buzzword-why-harness-engineering-matters-now","cd412711-7095-43ca-8389-8011dab2f900":"inventing-anthropic-two-ingredients-behind-the-ai-winner","a54b6460-7b13-40d1-b52f-59d326989a10":"openclaw-is-the-signal-our-thesis-on-long-horzion-agents","61387d11-a584-4b82-b223-7fd449542135":"the-ai-bubble-reckoning-1999-all","f650e52a-191a-4241-a8b4-12705cb62385":"ai-for-life-science-landscape","3db0c5d9-c44c-4950-a175-45c033132ebe":"ai-coding-landscape-how-agents-disrupt","c4aeef83-34d4-411e-b40c-b432dd225928":"continual-learning-next-paradigm","809bd036-e216-4bdb-ae70-dbd1d65b4804":"fable-5-expensive-intelligence-needs-expensive-work"}}