开源项目
🔥 Alishahryar1 / free-claude-code - Use claude code and codex for free in the terminal, VSCode e
GitHub热门项目 | Use claude code and codex for free in the terminal, VSCode extension, and discord like OpenClaw (voice supported) | Stars: 36,218 | 258 stars today | 语言: Python
AI 资讯
When AI Agents Start Working Together: Three Challenges No One Talks About
The trajectory of AI agents over the past two years has been remarkably clear: from single-purpose tools to personal assistants. Everyone runs their own agent, feeds it tasks, gets results back. It works well for individual productivity. Then comes the question every team eventually asks: can these agents work together? The answer is yes, but the problems you encounter along the way are rarely the ones you expected. They aren't about model capabilities or prompt engineering. They're about communication, context, and coordination — the same class of problems that distributed systems engineers have been solving for decades, now showing up in a new form. Here are three challenges that caught us off guard when we started building agent collaboration into Octo , an open-source workplace platform where AI agents and humans share the same communication space. Challenge 1: Context Visibility Boundaries When you use an agent personally, context management is straightforward. You decide what information the agent sees; its output comes back to you. The boundary is clean — it's just your workspace. In a team setting, that boundary dissolves. One of the first issues we ran into was surprisingly simple. We had an agent summarizing discussions across several channels. During testing it started pulling roadmap discussions from a product channel into an engineering planning thread. Nothing sensitive leaked externally, but it immediately exposed how unclear our context boundaries were. Traditional software handles this through API gateways, data permissions, and microservice boundaries. But agent context isn't just structured data — it includes conversation history, reasoning chains, and intermediate states. An agent's thought process during a task is valuable context, but it might also contain information that shouldn't cross team boundaries. What you need is fine-grained context visibility control. Not "everything open" or "everything closed," but dynamic rules that determine whic
AI 资讯
HelmSharp: render Helm charts from .NET without shelling out to helm
TL;DR: I built a .NET library that renders Helm charts and drives Kubernetes releases without shelling out to the helm CLI. 129/129 templates across ingress-nginx, cert-manager, external-dns, podinfo, and metrics-server now render successfully. The main entry point is HelmSharp.Action, with lower-level packages available for chart loading, rendering, Kubernetes operations, and release storage. MIT licensed, looking for feedback and early adopters. Why I Built This At work, our .NET services deploy to Kubernetes through Helm. Every Docker image had to bundle the helm binary — another dependency to manage, another layer in the image, another surface for CVEs. I wanted to cut that out entirely and do Helm-style rendering directly in-process. The .NET ecosystem doesn't really have this. There are YAML libraries. There are Kubernetes client libraries. There are template engines. But nothing ties them together the way helm template does — values merging, named templates, include , range , toYaml , the whole Sprig function set, all wired into a single render pipeline. So I started building one. (This is also my first real open source project — I'd spent years consuming OSS without contributing back, and HelmSharp is what came out of deciding to change that.) What HelmSharp Does HelmSharp is a multi-package .NET SDK (net8.0 / net9.0 / net10.0) that covers: Package What it does HelmSharp.Action High-level Helm client — TemplateAsync , UpgradeInstallAsync , RollbackAsync HelmSharp.Chart Chart loading from directories and .tgz , values merging, --set / --set-json style overrides HelmSharp.Engine Helm-style template rendering — 100+ Sprig/Helm functions HelmSharp.Kube Kubernetes apply, delete, and wait (no kubectl needed) HelmSharp.Release Release history stored in Kubernetes Secrets (Helm-compatible) HelmSharp.Repo Chart repository index, pull, and search Plus Registry , Storage , PostRenderer extension points Here's the lower-level rendering API — no result objects, no stdout
开发者
Лёгкая панель для управления личным VPN-сервером на Xray
У большинства self-hosted VPN-панелей одна и та же боль: Docker-стек, внешняя БД, реверс-прокси и куча конфигов, которые надо связать между собой, прежде чем хоть что-то заработает. Мне хотелось наоборот — что-то, что можно закинуть на свежий VPS и поднять меньше чем за минуту. Так появилась РосПанель : self-hosted панель для администрирования личного VPN-сервера на Xray-core , который поставляется одним статическим бинарником . React-фронтенд вшит через go:embed , база — встроенный SQLite, отдельного веб-сервера нет. Поставил, открыл, добавил юзера. Главная идея: один бинарник, ничего лишнего Цель, которая определила всё остальное, — радикальная простота. В отличие от Marzban и 3x-ui, у РосПанели нет Docker-обвязки, нет внешней БД и нет отдельного веб-сервера, который надо настраивать. Всё живёт в одном исполняемом файле: Веб-интерфейс собирается в web/dist и вшивается в Go-бинарник на этапе сборки. Состояние хранится в SQLite (чистый Go-драйвер modernc , то есть без CGO ). Конфиг Xray всегда генерируется из базы и применяется супервизором — SQLite это единственный источник правды, а не JSON, который правят руками. В итоге деплой — это просто положить бинарник и systemd-юнит. Никакой оркестрации, ничего не надо держать в синхроне. Что она на самом деле делает РосПанель — это панель управления (control plane), а не VPN-клиент. Она настраивает и обслуживает ваш собственный сервер: генерирует конфиг Xray, выдаёт ссылки на подписки и показывает статистику. Протоколы из коробки — один конфиг Xray, один набор учёток: VLESS-Vision (TCP/443 + uTLS-fingerprint) Trojan-WS (через fallback на 443) Hysteria2 (UDP с port-hopping) VLESS-gRPC-REALITY (отдельный порт, маскировка под чужой TLS) Маскировка — панель спрятана за секретным путём. Любой другой путь отдаёт сайт-заглушку (11 готовых шаблонов), так что сервер неотличим от обычного хостинга. Без знания /<secret>/ форму логина не найти. TLS, который просто работает — ACME через Let's Encrypt или ZeroSSL, авто-продление и self
AI 资讯
I opened my first PR to LiveKit's agents repo — here's the bug I found
I've been growing my open source portfolio one contribution at a time, and this week I landed on something genuinely interesting in livekit/agents (11k+ stars, the framework behind a ton of real-time voice AI agents). The bug If you're building a voice agent on a realtime model (OpenAI Realtime, xAI, Gemini Live), the model streams your transcription back in chunks. A single utterance can fire many user_input_transcribed events before it's final — token by token for OpenAI/xAI, or as one big interim blob for Gemini. If you want to react exactly once per utterance (say, show a "user is typing" indicator on your frontend via RPC), you need a stable key to correlate all those interim events together. That key already existed internally — InputTranscriptionCompleted carries an item_id . But when the framework re-emitted it upward as the public UserInputTranscribedEvent , the item_id was silently dropped — leaving consumers with no reliable way to dedupe across providers. The fix Small once you see it: add the field, forward it. class UserInputTranscribedEvent ( BaseModel ): transcript : str is_final : bool item_id : str | None = None # new ... def _on_input_audio_transcription_completed ( self , ev : llm . InputTranscriptionCompleted ) -> None : self . _session . _user_input_transcribed ( UserInputTranscribedEvent ( transcript = ev . transcript , is_final = ev . is_final , item_id = ev . item_id ) ) Two files, about 10 lines of real change. The actual work was tracing the event from the realtime model layer, through AgentActivity , up to AgentSession , to find exactly where the field got swallowed. The takeaway I didn't need to understand all of livekit-agents to land this — just one event's lifecycle, end to end. Small, well-scoped issues are the most achievable way into a big codebase, especially when someone's already mapped the territory in the issue itself. PR is up, CI green, waiting on review: github.com/livekit/agents/pull/6172
开源项目
🔥 tashfeenahmed / freellmapi - OpenAI-compatible proxy that stacks the free tiers of 16 LLM
GitHub热门项目 | OpenAI-compatible proxy that stacks the free tiers of 16 LLM providers (~1.7B tokens/month) behind one /v1 endpoint — plus any custom OpenAI-compatible endpoint. Smart routing, automatic failover, encrypted keys. Personal experimentation only. | Stars: 11,267 | 226 stars today | 语言: TypeScript
AI 资讯
𝗪𝗵𝗮𝘁 𝗶𝗳 𝐫𝐞𝐥𝐢𝐚𝐛𝐥𝐲 𝗮𝘂𝘁𝗼𝗺𝗮𝘁𝗶𝗻𝗴 𝘆𝗼𝘂𝗿 𝗱𝗮𝘁𝗮 𝘀𝗰𝗶𝗲𝗻𝗰𝗲 𝐭𝐚𝐬𝐤𝐬 𝘄𝗮𝘀 𝐟𝐢𝐧𝐚𝐥𝐥𝐲 𝘄𝗶𝘁𝗵𝗶𝗻 𝗿𝗲𝗮𝗰𝗵?!
We all know the grind of working with data, even with AI tools: every experiment starts with re-explaining everything, every iteration needs you to prompt, wait, review, correct, and repeat. And the moment you close the session, everything learned is gone. It makes us the bottleneck, and this hinders human-AI collaboration... So I built 𝐎𝐩𝐞𝐧𝐃𝐚𝐭𝐚𝐒𝐜𝐢, an autonomous agent purpose-built for DS/ML, and tested it on Kaggle. I enrolled in a recent competition, ran the agent with no hints, no guidance, while ironing my shirts. In one shot, it landed AUC 0.95, a top-30% finish out of 3K+ teams and 36K+ submissions using hashtag#Anthropic's Claude Sonnet 4.6. (More on this in README) The top-1 outperformed this agent by merely 0.004, but at the cost of massive manual effort even while using popular AI tools. The needed a dozen model families, deep learning, 400-feature notebooks, AutoML sweeps across many libraries, and 186 models ensembled carefully. Essentially a few weeks worth of effort and time!! OpenDataSci abstracts away all the complexity and has so much to offer for DS/ML automation: → Owns the entire development lifecycle from EDA to final evaluation → Plans, codes, and executes autonomously in a secure local sandbox → Self-reviews and corrects before anything reaches you → Remembers your data across sessions, gets smarter each run → Runs parallel experiments and ensembles → Has advanced context management for token efficiency and quality → Ships with predefined skills for DS/ML, so it knows how to do things right → Bring your own knowledge: out-of-the-box support for custom skills → Works with any major LLM provider (hashtag#Anthropic, hashtag#OpenAI, hashtag#Bedrock, hashtag#VertexAI, hashtag#Ollama, hashtag#vLLM, and any OpenAI-compatible server). This and so much more!! You set the goal. It does the work. No data science knowledge required. 🔗 https://github.com/f4roukb/open-data-sci 📦 pip install open-data-sci Spin it up on your data and see what it achieves!
开源项目
🔥 rezarahiminia / worldcup2026 - Grab your football API data for FIFA World Cup 2026 competit
GitHub热门项目 | Grab your football API data for FIFA World Cup 2026 competition! | Stars: 301 | 103 stars this week | 语言: JavaScript
开源项目
🔥 base / base - All components used to run Base
GitHub热门项目 | All components used to run Base | Stars: 703 | 10 stars today | 语言: Rust
开源项目
🔥 jely2002 / youtube-dl-gui - Open Video Downloader - A cross-platform GUI for youtube-dl
GitHub热门项目 | Open Video Downloader - A cross-platform GUI for youtube-dl made in Rust with Tauri and Vue + Typescript. | Stars: 8,609 | 66 stars today | 语言: Rust
开源项目
🔥 modem-dev / hunk - Review-first terminal diff viewer for agentic coders
GitHub热门项目 | Review-first terminal diff viewer for agentic coders | Stars: 5,267 | 142 stars today | 语言: TypeScript
开源项目
🔥 firecrawl / firecrawl - The API to search, scrape, and interact with the web at scal
GitHub热门项目 | The API to search, scrape, and interact with the web at scale. 🔥 | Stars: 136,071 | 505 stars today | 语言: TypeScript
开源项目
🔥 facebook / lexical - Lexical is an extensible text editor framework that provides
GitHub热门项目 | Lexical is an extensible text editor framework that provides excellent reliability, accessibility and performance. | Stars: 23,545 | 3 stars today | 语言: TypeScript
开源项目
🔥 FlowiseAI / Flowise - Build AI Agents, Visually
GitHub热门项目 | Build AI Agents, Visually | Stars: 53,863 | 107 stars today | 语言: TypeScript
开源项目
🔥 qist / tvbox - OK影视、tvbox配置文件,如果喜欢,请Fork自用。使用前请仔细阅读仓库说明,一旦使用将被视为你已了解。
GitHub热门项目 | OK影视、tvbox配置文件,如果喜欢,请Fork自用。使用前请仔细阅读仓库说明,一旦使用将被视为你已了解。 | Stars: 9,952 | 31 stars today | 语言: JavaScript
开源项目
🔥 Darkatse / TauriTavern - The classic Sillytavern, now has been rewritten in Tauri/Rus
GitHub热门项目 | The classic Sillytavern, now has been rewritten in Tauri/Rust. | Stars: 741 | 13 stars today | 语言: JavaScript
开源项目
🔥 THUDM / slime - slime is an LLM post-training framework for RL Scaling.
GitHub热门项目 | slime is an LLM post-training framework for RL Scaling. | Stars: 6,592 | 175 stars today | 语言: Python
开源项目
🔥 topoteretes / cognee - Cognee is the open-source AI memory platform for agents. Giv
GitHub热门项目 | Cognee is the open-source AI memory platform for agents. Give your AI agents persistent long-term memory across sessions with a self-hosted knowledge graph engine. | Stars: 18,425 | 361 stars today | 语言: Python
开源项目
🔥 smicallef / spiderfoot - SpiderFoot automates OSINT for threat intelligence and mappi
GitHub热门项目 | SpiderFoot automates OSINT for threat intelligence and mapping your attack surface. | Stars: 18,583 | 288 stars today | 语言: Python
开源项目
🔥 mikumifa / biliTickerBuy - b站会员购购票辅助工具
GitHub热门项目 | b站会员购购票辅助工具 | Stars: 3,685 | 164 stars today | 语言: Python