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| 🔗 Stories, Tutorials & Articles |
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| Why we're rethinking cache for the AI era |
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| Cloudflare data shows that 32% of network traffic originates from automated traffic, including AI assistants fetching data for responses. AI bots often issue high-volume requests and access rarely visited content, impacting cache efficiency. Cloudflare researchers propose AI-aware caching algorithms and a new cache layer to address the impact of AI traffic on CDN cache. |
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| Use Garry Tan's exact Claude Code setup: 23 opinionated tools that serve as CEO, Designer, Eng Manager, Release Manager, Doc Engineer, and QA |
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| CTO at ZAR shares his experience managing 10 engineers, shipping code, and operating at the C-level with an AI assistant named Claude Code. The system allows him to maintain context across multiple workstreams, automate tasks, and scale his productivity. In just three weeks, he has documented 82 meeting notes, held 47 meetings, and captured 11,579 lines of institutional knowledge. |
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| State of Context Engineering in 2026 |
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| Context engineering has evolved in the AI engineering field since mid-2025 with the introduction of patterns for managing context effectively. These patterns include progressive disclosure, compression, routing, retrieval strategies, and tool management, each addressing a different dimension of the context engineering problem. The discipline of context engineering involves finding the smallest possible set of high-signal tokens to maximize the likelihood of desired outcomes within an AI system. |
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| Qwen3.6-Plus: Towards Real World Agents |
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| Qwen3.6-Plus, the latest release following Qwen3.5 series, offers enhanced agentic coding capabilities and sharper multimodal reasoning. The model excels in frontend web development and complex problem-solving, setting a new standard in the developer ecosystem. Qwen3.6-Plus is available via Alibaba Cloud Model Studio with a 1M context window by default and improved agentic coding capability. |
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| Our most intelligent open models, built from Gemini 3 research and technology to maximize intelligence-per-parameter |
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| Built from Gemini 3 research and technology, Gemma 4 offers maximum compute and memory efficiency for mobile and IoT devices. Develop autonomous agents, multimodal applications, and multilingual experiences with Gemma 4's unprecedented intelligence-per-parameter. |
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| From zero to a RAG system: successes and failures |
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An engineer spun up an internal chat with a local LLaMA model via Ollama, a Python Flask API, and a Streamlit frontend.
They moved off in-memory LlamaIndex to batch ingestion into ChromaDB (SQLite). Checkpoints and tolerant parsing went in to stop RAM disasters.
Indexing produced 738,470 vectors (~54 GB). They rented an NVIDIA RTX 4000 VM for embeddings and pushed originals to Azure Blob via SAS links. |
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