惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

WordPress大学
WordPress大学
The Register - Security
The Register - Security
Hugging Face - Blog
Hugging Face - Blog
博客园 - 聂微东
GbyAI
GbyAI
Recent Commits to openclaw:main
Recent Commits to openclaw:main
博客园_首页
D
Docker
S
Security @ Cisco Blogs
K
Kaspersky official blog
爱范儿
爱范儿
Simon Willison's Weblog
Simon Willison's Weblog
TaoSecurity Blog
TaoSecurity Blog
V
V2EX
C
CXSECURITY Database RSS Feed - CXSecurity.com
T
Troy Hunt's Blog
Cloudbric
Cloudbric
博客园 - 三生石上(FineUI控件)
Cyber Security Advisories - MS-ISAC
Cyber Security Advisories - MS-ISAC
The Hacker News
The Hacker News
美团技术团队
S
SegmentFault 最新的问题
L
Lohrmann on Cybersecurity
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
宝玉的分享
宝玉的分享
The Last Watchdog
The Last Watchdog
Y
Y Combinator Blog
M
MIT News - Artificial intelligence
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
奇客Solidot–传递最新科技情报
奇客Solidot–传递最新科技情报
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
Martin Fowler
Martin Fowler
Google Online Security Blog
Google Online Security Blog
K
KPMG report finds enterprise disconnect between AI and its ROI | CIO
C
Cybersecurity and Infrastructure Security Agency CISA
T
Tor Project blog
Vercel News
Vercel News
The Cloudflare Blog
G
Google Developers Blog
T
Threat Research - Cisco Blogs
AI
AI
Stack Overflow Blog
Stack Overflow Blog
I
InfoQ
Scott Helme
Scott Helme
S
Schneier on Security
大猫的无限游戏
大猫的无限游戏
The GitHub Blog
The GitHub Blog
S
Securelist
IT之家
IT之家
Microsoft Azure Blog
Microsoft Azure Blog

Hacker News: Show HN

PurrrrrFocus: Pomodoro Timer App - App Store Workflow Engine — Multi-Step Orchestration for Bun RapidPhoto: Pro Photo Editor App - App Store GitHub - DheerG/swarms: Achieve extraordinary results with claude code across a variety of tasks SPICE simulation → oscilloscope → verification with Claude Code — Lucas Gerads Show HN: VCoding – A 5 MB native Windows IDE with no dynamic dependencies Show HN: LLMs don't hallucinate because they're bad at math, it's the format GitHub - Agent-FM/agentfm-core: AgentFM is a peer-to-peer network that turns everyday computers into a decentralized AI supercomputer. AgentFM lets you run massive AI workloads directly across a global mesh of idle CPUs and GPUs. Show HN: Tracking Top US Science Olympiad Alumni over Last 25 Years GitHub - Potarix/agent-hub: One place to talk to all your agents Show HN: Runtime security for AI agents(injection,tool abuse, data exfiltration) GitHub - dubeyKartikay/lazyspotify: Terminal Spotify client for macOS and Linux GitHub - the-banana-tool/king-louie: Easy to use GUI Personal AI Assistant. Win/Linux/Mac. Show HN I made my vacation rental bookable by AI agents–no Airbnb, 0% commission GitHub - basteez/jsf-autoreload: maven plugin to enable hot reload on jsf projects uvm32/hosts/host-gdbstub at main · ringtailsoftware/uvm32 GitHub - labsai/EDDI: Config-driven engine that turns JSON into production-grade AI agents. Multi-agent orchestration, 12+ LLM providers, MCP/A2A protocols, RAG, persistent memory, and enterprise compliance (EU AI Act, GDPR, HIPAA). Built on Quarkus. GitHub - glitchnsec/fortyone-oss: AI Executive Assistant Platform Quickstart | Alien GitHub - muxshed/shed: One stream in, or many. Every destination, simultaneously. No cloud middleman, no per-channel fees, no limits. GitHub - ocrbase-hq/ocrbase: 📄 PDF/IMG ->.MD/JSON Document OCR API for PaddleOCR and GLMOCR. Self-hostable. GitHub - impactjo/home-memory: MCP server that lets your AI assistant remember everything about your home. GitHub - Sets88/dbcls: DbCls is a powerful terminal database client that supports various databases GitHub - neptun2000/heor-agent-mcp GitHub - SeanFDZ/macmind: Single-layer transformer in HyperTalk for the classic Macintosh RollQuation: Math Puzzles - Apps on Google Play GitHub - dropbox/witchcraft Show HN: Agent-cache – Multi-tier LLM/tool/session caching for Valkey and Redis GitHub - opentalon/opentalon: OpenTalon is an open-source platform built from the ground up in Go as a robust alternative to OpenClaw LinkedIn™ 职位抓取工具 - Chrome 应用商店 GitHub - EdoardoBambini/Agent-Armor-Iaga: AI agents are getting tool access — shell, file system, databases, APIs, secrets. But **nobody is governing what they actually do with it**. Frameworks like LangChain, CrewAI, AutoGen, and Claude Code give agents the power to execute. Agent Armor gives you the power to control, audit, and approve every single action before it happens. HN Vibes — Week 15, Apr 7–13 2026 GitHub - chojs23/ec: Easy terminal-native 3-way git mergetool vim-like workflow GitHub - SethPyle376/hiraeth: Local AWS emulator focused on fast integration testing, with SQS support, SQLite-backed state, and a debug-friendly web UI. GitHub - JakOb-dotcom/cloud-sandbox-security-analysis: Technical analysis and Proof of Concept (PoC) regarding environment variable exfiltration in containerized cloud sandboxes via side-channel data leaks. Springboards - Flint Alpha Show HN: A simpler coding agent harness GitHub - audiodude/sudomake-friends GitHub - 256thFission/mini-mythos: OSS clone of Anthropic’s Mythos harness to locate C/C++ memory vulnerabilities Show HN: OpenParallax: OS-level privilege separation for AI agent execution Hacker News Sorted - Chrome 应用商店 Show HN: How to Install Docker on Ubuntu 24.04 LTS: Complete 2026 Guide GitHub - himanshudongre/smriti GitHub - sverrirsig/claude-control: macOS desktop dashboard for monitoring and managing multiple Claude Code sessions GitHub - ory/dockertest: Write better integration tests! Dockertest helps you boot up ephermal docker images for your Go tests with minimal work. Chiral - Chrome 应用商店 Show HN: Two Claudes collaborating through shared memory on a $100 mini-PC GitHub - pmichaillat/latex-cv: Minimalist LaTeX template for academic CVs GitHub - oguzbilgic/posse: A web UI for Anthropic Managed Agents. GitHub - sshiraz/depsly: Dependency risk analysis tool for npm packages ABI Add safari/agent-harness — Safari browser automation via safari-mcp by achiya-automation · Pull Request #212 · HKUDS/CLI-Anything GitHub - Halfblood-Prince/trustcheck: Verify PyPI package attestations and improve Python supply-chain security GitHub - oguzbilgic/kern-ai: Agents that do the work and show it. GitHub - bruits/satteri: High-performance Markdown and MDX processing for the JavaScript ecosystem GitHub - tylergibbs1/feedstock: High-performance web crawler and scraper for TypeScript, powered by Bun and Playwright GitHub - Grimm67123/grimmbot: The self-improving sandboxed and open-source AI agent. With persistent memory and scheduling. GitHub - whitevanillaskies/whitebloom: Local whiteboard that blooms. GitHub - hwdsl2/docker-whisper: Docker image for a self-hosted Whisper speech-to-text server with speaker diarization and OpenAI-compatible transcription and translation APIs. Powered by faster-whisper. Supports all Whisper models, NVIDIA GPU (CUDA) acceleration, JSON/SRT/VTT output, SSE streaming, offline mode, and multi-arch (amd64, arm64). GitHub - yisding/reviewwiggum GitHub - MarwanAlsoltany/serrors: Structured errors for Go: sentinel hierarchies, typed data, custom formatting, and slog integration. GitHub - soatok/age-php GitHub - Luthiraa/markitme GitHub - stagas/rtdiff: realtime git diff gui and AI-assisted commits GitHub - tombedor/excalicharts GitHub - wh1le/excalidraw-edit: Open and edit .excalidraw files from the terminal. Offline, auto-saves to disk. MalExt Sentry - Malicious Extension Scanner - Chrome 应用商店 GitHub - syi0808/asciianimesvg: Generate animated ASCII art SVGs from text. CLI, Rust library, WASM, and web editor. GitHub - zaina-ml/ml_forge: A visual-based graph node editor for training computer vision models. GitHub - anakin87/llm-rl-environments-lil-course: 🌱 A little course on Reinforcement Learning Environments for evaluating and training Language Models GitHub - takaakit/superpowers-uml: Superpowers-UML modifies Superpowers to ensure a software development workflow in which AI agents design through UML modeling. AdriByte Studio - Sviluppo Web e Soluzioni Digitali GitHub - chouligi/angel-copilot: Your personalized Angel Investment Advisor Show HN: MoodSense AI (ML and FastAPI and Gradio, Deployed on Hugging Face) Moodsense Ai - a Hugging Face Space by aman179102 GitHub - agenteractai/lodmem: Level Of Detail Context Management for Agents GitHub - ostefani/subnetlens: A fast, concurrent network scanner with a TUI and plain-text CLI, built in Go. It discovers live hosts on your network, scans their open ports, resolves hostnames, and fingerprints operating systems—delivered. Cyber Pulse: Agentic Intel - Apps on Google Play Whisper API: Self-Hostable Speech to Text Transcription The Agent-Web Protocol Stack: A Research Thesis GitHub - msmarkgu/RelayFreeLLM: A restful API designed to route user prompts to various AI model providers. Show HN: Provepy – A Python decorator that proves your code using Lean and LLMs Show HN: Pardonned.com – A searchable database of US Pardons GitHub - patrickdappollonio/dux: Dux is a terminal UI that lets you run multiple AI coding agents side by side, each in its own git worktree, with full companion terminals, macros, commit generation, and a command palette that knows more tricks than you do. kMC Crystal Simulator Show HN: HyperFlow – A self-improving agent framework built on LangGraph GitHub - stef41/vibescore: 🎵 Grade your vibe-coded project. One command, instant letter grade across security, quality, dependencies, and testing. GitHub - stef41/lmscan: 🔍 Detect AI-generated text and fingerprint which LLM wrote it. Open-source GPTZero alternative. Zero dependencies, works offline. imgur.com GitHub - visionscaper/collabmem: Enabling long-term collaboration with Agentic AI - building up episodic and world model memory over time with in-context awareness 在 Steam 上购买 FriedrichAI: Offline AI 立省 10% GitHub - atripati/ark: AI Runtime Kernel — a context operating system for AI agents. Eliminates tool bloat, loads only what’s needed, and gives LLMs their reasoning space back. GitHub - nowork-studio/toprank: Open-source Claude Code skills for SEO, SEM, Google Ads GitHub - tacomanator/sash: Lightweight macOS menu bar app for reliably cycling through windows of the current application. Appents | Social Media Management for Product-First Teams GitHub - pnhoang/youtube-spam-blocker: Automatically detects and hides spam messages in YouTube Live chat. Set rate limits, keyword filters, and block repeat offenders. GitHub - decisionnode/DecisionNode: CLI + Local MCP - A shared structured memory store across Claude Code, Cursor, Windsurf, Antigravity, and every MCP client. Semantically queryable. GitHub - AvaCodeSolutions/django-email-learning: An open source Django app for creating email-based learning platforms with IMAP integration and React frontend components. The $100K Gap in Kubernetes Security Tooling Function Calling Harness: From 6.75% to 100%
GitHub - BuffaloTechRider/Autodidact: Self-learning AI agent that gets smarter and cheaper over time. Routes between local and cloud LLMs, learns from every interaction, remembers everything.
waterbuffalo · 2026-05-19 · via Hacker News: Show HN

🧠 Autodidact (v1.0.x)

** A local-first, self-evolving AI agent framework that slashes cloud API costs by distilling knowledge onto the edge.**

Autodidact is an AI agent with a local brain that works like a human. When asked a question or given a task, it thinks first and evaluates whether the local brain can handle it. If yes, it executes. If not, it escalates - by searching Google or asking someone smarter (a more powerful cloud model) - just like how humans work. After the escalation, it learns the new knowledge, skills, or tool usages so next time it won't have to ask similar questions again.

autodidact_fullflow.mp4

📊 Core Benchmarks (v1.x Dev Run)

  • 67% of repetitive codebase/doc queries successfully intercepted by local memory or rag.
  • ~70% cost saved over just 30 standard development queries.
autodidact-session-summary

Four-command quickstart

pip install autodidact             # or: pip install "autodidact[openai,bedrock,pdf]"
autodidact init                    # zero-friction setup: auto-detects Ollama, pulls models, configures cloud
autodidact learn <path>            # A brand-new agent has an empty brain. `autodidact learn` seeds it with existing knowledge. <Path> points to the folder having documents or code you want the agent to learn.
autodidact chat                    # start talking to the agent

Windows note: If autodidact isn't found after install, use python -m autodidact instead (e.g. python -m autodidact init). This happens when Python's Scripts/ folder isn't in your PATH.

That's it. autodidact init walks you through five setup modes:

  1. Local + Cloud (default) — Ollama local model + cloud API for escalation. Best cost savings.
  2. Cloud + Cloud — cheap cloud model + expensive cloud model. No GPU or Ollama required.
  3. Local + Local — small Ollama + big Ollama. Fully offline, still learns from escalations. Free.
  4. Custom local — any OpenAI-compatible server (llama.cpp, LM Studio, vLLM, LocalAI) + optional cloud.
  5. Local only — single Ollama model. Free. No escalation learning.

If Ollama isn't installed, the wizard offers to install it (with retry on failure). If your model isn't pulled, it pulls it automatically. If Ollama isn't running, it starts the daemon for you. On corporate networks where Ollama can't be installed, mode 2 or 4 work without it.

How it works - the human analogy

When you encounter a question, you go through this sequence:

  1. Do I know the answer? → Check your memory
  2. Am I confident I can answer it? → Self-assess
  3. If yes → Answer (free, fast)
  4. If no → Ask someone smarter (costs time and often money too, but you get the right answer)
  5. Remember what you learned → Store it
  6. Next time, start from step 1 → You're smarter now

Humans do this every day. The more tasks we do, the more knowledgeable we become, the fewer questions we ask.

Autodidact makes AI work the same way.

On day one, it asks a lot of questions. By week two, it handles most tasks independently. By month three, it's the expert. Every cloud escalation becomes permanent local knowledge. Every interaction makes it smarter. It never forgets what it learned.

Query → Think  (check memory)
      → Try    (local model answers if confident)
      → Ask    (escalate to cloud when uncertain)
      → Learn  (store the answer for next time)
      ──────────────────────────────────────────
      Next similar query → Answer from memory, $0.00

Solving the cold start

A brand-new agent has an empty brain. autodidact learn seeds it with existing knowledge:

autodidact learn ~/docs/policies/     # ingest a folder of docs
autodidact learn ./README.md          # ingest a single file
autodidact learn --stats              # show what's been ingested

Supports .md, .txt, .py, .ts, .js, .yaml, .json, .csv, .html, and 15+ other text formats. Code files are split on function/class boundaries via tree-sitter (pip install "autodidact[code]"). PDFs via pip install "autodidact[pdf]". Chunks are stored separately from learned Q&A (one is reference material, the other is experience), but both get retrieved and injected into the prompt at query time.

See it learn

autodidact_fullflow.mp4

Feed it your docs:

$ autodidact learn ./engineering-docs/
[1] deployment-guide.md → 8 chunks
[2] architecture.md     → 15 chunks
─── Ingestion Complete ───
Files: 2 · Chunks: 23 · Synthesizing knowledge in background...

Ask something the docs alone can't fully answer:

you> How do I fix "connection refused" on staging?

[CLOUD] Three common causes, ranked by frequency:
  1. VPN dropped after sleep — `vpn connect staging`
  2. Service crashed         — `kubectl get pods -n staging`
  3. Stale DNS post-deploy   — `sudo dscacheutil -flushcache`

↳ Source: deployment-guide.md
💰 $0.012 | Route: cloud | ✅ Learned

The docs had the deployment steps, but the local model does not have the troubleshooting wisdom or not confident enough in in reasoning or judgemnt. Cloud provided it. The agent learned it.

Next time:

you> Staging is down again, connection errors

[LOCAL] This is almost always the VPN (it drops after sleep). Quick fix:
  1. `vpn connect staging`
  2. Still failing? `kubectl get pods -n staging` — service may have crashed
  3. After a deploy, flush DNS: `sudo dscacheutil -flushcache`
  ↳ Context: memory (2 facts)
  💰 $0.00 | Route: local

Same knowledge. Zero cost. The answer is better than raw docs because it leads with the most likely cause (learned from the cloud's reasoning, not just document text).

That's the loop. Every escalation makes the agent smarter. Every smart answer saves money. Over time, cloud calls approach zero.

What's in v1.0.x

  • Zero-friction setup wizard. Auto-detects Ollama, pulls models, starts daemon, retries on failure. Installs via Homebrew (macOS) or official installer. Presets for 11 cloud providers including Google AI Studio (free tier, no credit card).
  • Five setup modes. Local+Cloud, Cloud+Cloud, Local+Local, Custom server, Local-only. Works everywhere — GPU, no GPU, corporate network, offline.
  • AST-aware code chunking. autodidact learn uses tree-sitter to split code on function/class boundaries (Python, JS, TS). Each chunk is a complete semantic unit with its class header preserved. Non-code files use overlap-based text splitting.
  • Hybrid retrieval. BM25 keyword search (FTS5) + vector similarity, merged via Reciprocal Rank Fusion. RRF orders results; cosine similarity scores them — so downstream thresholds remain meaningful.
  • Document synthesis. autodidact learn doesn't just index — it extracts key facts into memory (background, non-blocking). The agent answers from internalized knowledge, not raw chunks.
  • Confidence-based routing. GSA pre-screen + logprob uncertainty + refusal detection. Escalates when uncertain, stays local when confident. Non-answer detection prevents learning from "I don't know" cloud responses.
  • Learning from escalations. Structured knowledge extraction from cloud responses (background, non-blocking). Deduplication on insert. Memory recall at 0.80+ similarity serves learned answers directly.
  • Visible learning UX. [THINKING], [MEMORY], [LOCAL], [CLOUD], [LEARNED] tags show what the agent is doing and why.
  • Cost tracking. autodidact savings reports cumulative cost avoided vs an all-cloud baseline.
  • Local-first. All state in one portable SQLite file (~/.autodidact/memory.db). Works offline after setup.
  • Multi-provider. Ollama, any OpenAI-compatible server (llama.cpp, LM Studio, vLLM), AWS Bedrock, Google AI Studio, OpenRouter, and 8 more. 11 cloud provider presets.

Commands

autodidact init             Zero-friction setup wizard
autodidact chat             Interactive chat with visible thought process
autodidact query "q"        Single-query mode
autodidact learn <path>     Ingest documents (cold-start fix)
autodidact savings          Cumulative cost savings
autodidact memory stats     Knowledge store size + breakdown
autodidact memory search    Search what the agent has learned

What's NOT in v1.0.x (coming in v1.5 and v2.0)

  • No conversational query rewriting (v1.5 — rewrite follow-up queries into self-contained searches using conversation history)
  • No markdown-aware chunking (v1.5 — respect tables, code fences, headings as atomic units; tree-sitter markdown grammar)
  • No parent-child retrieval (v1.5 — index small chunks, return parent section on hit)
  • No contextual chunking (v1.5 — prepend LLM-generated context to chunks before embedding, bridges NL↔code gap)
  • No topic-based knowledge pages (v1.5 — knowledge compiled into pages, not flat facts)
  • No OpenAI-compatible proxy mode (v1.5 — autodidact serve)
  • No agentic retrieval (v2.0 — model reads files on demand via tools, no static chunking needed)
  • No tool execution (v2.0 — terminal, file ops, ReAct loop)
  • No skill learning from tasks (v2.0 — learns procedures, not just facts)
  • No reranking (v2.0 — cross-encoder on retrieval candidates)
  • No MCP server (v2.0)

All of these are designed and planned.

What we have verified empirically:

  • logprob_uncertainty is the dominant routing signal (AUROC 0.65-0.83 across 3 model families × 2 datasets).
  • Zero-shot inference-time signals match supervised routing baselines (RouteLLM) at zero per-model training cost.
  • Naive multi-signal fusion hurts - the best single signal beats the mean of all 6 signals.
  • Signal quality correlates with RLHF calibration training across model families (Qwen > Llama).

Full write-up: paper. Research findings have their own home at zero-shot-llm-confidence.

Roadmap

Version What Status
v1.0.7 AST-aware chunking, Google AI Studio provider, memory transfer, non-answer filtering Current
v1.5 Query rewriting, markdown-aware chunking, parent-child retrieval, contextual chunking, topic pages, autodidact serve proxy Planned
v2.0 Agentic retrieval (readFile), tool execution, skill learning, tiered routing, reranking, MCP server Designed
v3.0 Agent network — agents teaching each other Planned

Tech stack

  • Python 3.10+
  • SQLite (WAL mode) - all state in one portable file
  • FAISS - vector retrieval
  • tree-sitter - AST-aware code chunking (optional, for .py, .js, .ts)
  • Pydantic v2 - validation
  • Typer + Rich - CLI
  • Ollama / OpenAI-compatible / AWS Bedrock / Google AI Studio - LLM backends

Contributing

See CONTRIBUTING.md.

Good first issues:

  • autodidact serve - OpenAI-compatible proxy (drop-in for Cursor, Aider, any tool)
  • MCP server for Claude Desktop / Cursor / Gemini CLI
  • PDF document ingestion (unstructured parser)
  • Topic-based knowledge pages (v1.5 core feature)
  • Skill extraction from cloud responses (procedures, not just facts)
  • autodidact status dashboard (learning curve + cost savings visualization)

License

MIT - see LICENSE.


Built by BuffaloTechRider. Repository: BuffaloTechRider/Autodidact.