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| 🔗 Stories, Tutorials & Articles |
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| Scaling Karpathy's Autoresearch: What Happens When the Agent Gets a GPU Cluster |
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| A team pointed Claude Code at autoresearch and spun up 16 Kubernetes GPUs. The setup ran ~910 experiments in 8 hours. val_bpb dropped from 1.003 to 0.974 (2.87%). Throughput climbed ~9×. Parallel factorial waves revealed AR=96 as the best width. The pipeline used H100 for cheap screening and H200 for validation. SkyPilot provisioned the clusters and enabled agent-led provisioning. This avoided one-by-one tuning. |
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| OpenAI to acquire Astral |
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OpenAI will acquire Astral, pending regulatory close. It will fold Astral's open-source Python tools — uv, Ruff, and ty — into Codex.
Teams will integrate the tools. Codex will plan changes, modify codebases, run linters and formatters, and verify results across Python workflows.
System shift: This injects production-grade Python tooling into an AI assistant. It marks a move from code generation to more AI-driven execution of full development toolchains.
Codex won't just spit snippets. It will run the build. |
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| OpenClaw is a great movement, but dead product. what's next? |
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| After talking to 50+ individuals experimenting with OpenClaw, it's clear that while many have tried it and even explored it for more than 3 days, only around 10% have attempted automating real actions. However, most struggle to maintain these automations at a production level due to challenges with context management and the fragility of LLM-driven agents. As more startups focus on developing vertical OpenClaws tailored for specific use cases, we may see improvements in plumbing, handling edge cases, hosting, context management, and security in the next 6 months. |
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| OpenClaw Tutorial: AI Stock Agent with Exa and Milvus |
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| An autonomous market agent ships. OpenClaw handles orchestration. Exa returns structured, semantic web results. Milvus (or Zilliz Cloud) stores vectorized trade memory. A 30‑minute Heartbeat keeps it running. Custom Skills load on demand. Recalls query 1536‑dim embeddings. Entire stack runs for about $20/month. |
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| Building AI Teams with Sandboxes & Agent |
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Docker Agent runs teams of specialized AI agents. The agents split work: design, code, test, fix. Models and toolsets are configurable.
Docker Sandboxes isolate each agent in a per-workspace microVM. The sandbox mounts the host project path, strips host env vars, and limits network access.
Tooling moves from single-model prompts to orchestrated agent teams inside sandboxed microVMs. This alters dev automation. |
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