Claude Unlocked 1 Million Tokens For Everybody: What Happens Now?
If Claude is part of your workflow, the new 1 million token limit from Anthropic is a big deal. The news about Anthropic unlocking 1 million tokens landed at #1 on Hacker News with over 1,100 points and 485 comments. That’s significant traction. The context window makes headlines, but the interesting part is what Anthropic did around it: pricing, benchmarks, and the strategic message underneath. Read All
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Karo (Product with Attitude)
April 1st, 2026
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byKaro (Product with Attitude)@withattitude
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AI Product Manager turning everyone into AI builders and experimenters. Substack Bestseller.
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「半歩先」こそが実装の急所ーー量子アニーリング7年の実践で見えた、日本企業が勝つための条件
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