JACK ROBERTS · 3H AGO
Combining Fable 5 with Hermes Agent enables powerful, cost-effective AI workflows by using cheaper models for data gathering and compression, then routing only high-judgment tasks to Fable 5. The video demonstrates three use cases: a routing control system, one-shot website and agent deployment, and productivity improvement via model orchestration. Key strategies include 'compress, judge, and execute' and using Fable 5 for taste, architecture, strategy review, and codification.
[llm] [agents] [local-models] [cost-optimization] [hermes-agent] [fable-5]
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AI ENGINEER · 4H AGO
Cursor trains AI models for code generation using a recursive self-improvement loop. The outer loop gathers user feedback and online metrics to create better evals and training tasks, while the inner loop uses reinforcement learning and techniques like textual feedback to rapidly improve model checkpoints. Scaling compute via partnerships with SpaceX and automating research workflows with agent systems are key to accelerating this process.
[llm] [agents] [reinforcement-learning] [code-generation] [model-training] [cursor]
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AUSTIN MARCHESE · 9H AGO
Anthropic engineers automate their work by following four rules: match the bottleneck to the right solution, create proactive systems where Claude comes to you, read traces to monitor and improve automations, and hand Claude objectives rather than just tasks. The key is to identify your actual bottleneck (like the slowest hiker in a troop), build a bottom-up system with triggers, workers, access, and receipts, manually review logs to catch drift, and give Claude high-level goals with clear success criteria and an evaluator.
[llm] [agents] [automation] [anthropic] [claude] [workflow]
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