knowledge_gpt
devdocs
knowledge_gpt | devdocs | |
---|---|---|
10 | 239 | |
1,520 | 33,940 | |
- | 0.9% | |
8.2 | 9.6 | |
4 months ago | 4 days ago | |
Python | Ruby | |
MIT License | Mozilla Public License 2.0 |
Stars - the number of stars that a project has on GitHub. Growth - month over month growth in stars.
Activity is a relative number indicating how actively a project is being developed. Recent commits have higher weight than older ones.
For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.
knowledge_gpt
-
Nvidia's Chat with RTX is a promising AI chatbot that runs locally on your PC
From "Artificial intelligence is ineffective and potentially harmful for fact checking" (2023) https://news.ycombinator.com/item?id=37226233 : pdfgpt, knowledge_gpt, elasticsearch
pdfGPT: https://github.com/bhaskatripathi/pdfGPT :
> PDF GPT allows you to chat with the contents of your PDF file by using GPT capabilities.
GH "pdfgpt" topic: https://github.com/topics/pdfgpt
knowledge_gpt: https://github.com/mmz-001/knowledge_gpt
From https://news.ycombinator.com/item?id=39112014 : paperai
neuml/paperai:
- Are there any good free GPT-powered AI summarizer for very long text?
-
Tell me what AI product you wish existed or that you want to build, and I'll reply with resources, guides and tools you can use to build it
You could also do a basic version by writing the topics and info in a PDF, and then uploading that PDF to this site https://knowledgegpt.streamlit.app and then asking your questions using that
-
I've built a few tools on top of GPT-3.5 (text generation, q&a with embeddings). AMA about resources and AI dev stacks for building with OpenAI's APIs
Yep, that'd work too -- then you can use something like https://knowledgegpt.streamlit.app
-
Support KB Chatbot - how to train best?
I saw KnowledgeGPT praised earlier today for Q&A, that might be worth trying.
- KnowledgeGPT – Accurate answers and instant citations for your documents
-
Show HN: DocsGPT, open-source documentation assistant, fully aware of libraries
Yesterday, an undergraduate from Sri Lanka released KnowledgeGPT[1] which allows you to upload your docs and get answers from ChatGPT. It also uses FAISS so I'm wondering if DocsGPT is somehow related or inspired by the former.
It also appears the Github library for DocsGPT was created shortly after the release of KnowledgeGPT.
1: https://github.com/mmz-001/knowledge_gpt
devdocs
-
Show HN: I made a better Perplexity for developers
Hi HN,
I am Jiayuan, and I'm here to introduce a tool we've been building over the past few months: Devv (https://devv.ai). In simple terms, it is an AI-powered search engine specifically designed for developers.
Now, you might ask, with so many AI search engines already available—Perplexity, You.com, Phind, and several open-source projects—why do we need another one?
We all know that Generative Search Engines are built on RAG (Retrieval-Augmented Generation)[1] combined with Large Language Models (LLMs). Most of the products mentioned above use indexes from general search engines (like Google/Bing APIs), but we've taken a different approach.
We've created a vertical search index focused on the development domain, which includes:
- Documents: These are essentially the single source of truth for programming languages or libraries; I believe many of you are users of Dash (https://kapeli.com/dash) or devdocs (https://devdocs.io/).
- Code: While not natural language, code contains rich contextual information. If you have a question related to the Django framework, nothing is more convincing than code snippets from Django's repository.
- Web Search: We still use data from search engines because these results contain additional contextual information.
Our reasons for doing this include:
- The quality of the index is crucial to the RAG system; its effectiveness determines the output quality of the entire system.
- We focus more on the Index (RAG) rather than LLMs because LLMs evolve rapidly; even models performing well today may be superseded by better ones in a few months, and fine-tuning an LLM now has relatively low costs.
- All players are currently exploring what kind of LLM product works best; we hope to contribute some different insights ourselves (and plan to open source parts of our underlying infrastructure in return for contributions back into open source communities).
Some brief product features:
- Three modes: - Fast mode: Offers quick answers within seconds. - Agent mode: For complex queries where Devv Agent infers your question before selecting appropriate solutions. - GitHub mode(currently in beta): Links directly with your own GitHub repositories allowing inquiries about specific codebases.
- Clean & intuitive UI/UX design.
- Currently only available as web version but Chrome extension & VSCode plugin planned soon!
Technical details regarding how we build our Index:
- Documents section involves crawling most documentation sources using scripts inspired by devdocs project’s crawler logic then slicing them up according function/symbol dimensions before embedding into vector databases;
- Codes require special treatment beyond just embeddings alone hence why custom parsers were developed per language type extracting logical structures within repos such as architectural layouts calling relationships between functions definitions etc., semantically processed via LMM;
- Web searches combine both selfmade indices targeting developer niches alongside traditional API based methods. We crawled relevant sites including blogs forums tech news outlets etc..
For the Agent Mode, we have actually developed a multi-agent framework. It first categorizes the user's query and then selects different agents based on these categories to address the issues. These various agents employ different models and solution steps.
Future Plans:
- Build a more comprehensive index that includes internal context (The Devv for Teams version will support indexing team repositories, documents, issue trackers for Q&A)
- Fully localized: All of the above technologies can be executed locally, ensuring privacy and security through complete localization.
Devv is still in its very early stages and can be used without logging in. We welcome everyone to experience it and provide feedback on any issues; we will continue to iterate on it.
[1]: https://arxiv.org/abs/2005.11401
-
Every Dunder Method in Python
> I've started to preface all python searches with 'site:python.org'
You might find DevDocs to be useful: https://devdocs.io/
-
The Ultimate Roadmap to a Full-Stack Developer
DevDocs - Aggregates documentation from various sources into a single, easy-to-navigate interface, covering frontend and backend technologies. DevDocs
-
Must-have for slacking off! 2024 Efficient Dev Tools for Increasing Productivity
DevDocs, an offline API documentation browser, supports multilingual, offering developers a quick and efficient way to access tech docs. From front-end to back-end and mobile development, it integrates official documentation, providing a sleek, user-friendly interface.
-
Concrete.css
Environmental lighting conditions rule the day! I have astigmatism and I prefer bright backgrounds; #000 text on #fff backgrounds works great for me, but that's because I work in a room lit by a 250W 30,000 lumen corn-cob LED bulb[0] that makes my small office as bright on the inside as the shaded ground from a tree on an overcast day (which is quite bright compared to usual indoor lighting). In a room that bright, high contrast text works great and is highly readable, with "dark mode" often looking washed out and muddy. Even small reductions in contrast (such as what https://devdocs.io does with text of #333 in light mode) can make me notice and wish for greater contrast.
[0] - https://www.benkuhn.net/lux/
- SQL for Data Scientists in 100 Queries
-
DevDocs
Here's how to add a new scraper: https://github.com/freeCodeCamp/devdocs/blob/main/.github/CO...
Or open an issue and wait for somebody else to implement the scraper.
-
19 Handy Websites for Web Developers
Imagine a single, intuitive platform where you can access comprehensive documentation for a vast array of programming languages, frameworks, libraries, and tools. That's the magic of DevDocs. This exceptional resource eliminates the frustration of juggling multiple tabs and websites in your quest for information. DevDocs brings everything together into one easy-to-use interface.
- Q je u potrazi za 30 novih ljudi /s
-
How would you work effectively with an extremely slow 56Kbps connection?
Mosh for a stable connection, Offline documentation such as msdn, wikipedia (via kiwi etc), zeal for local access to https://devdocs.io/; Self host tabby for ai autocompletion. For many shell programs check what mulinux was using back then, and what are the modern replacements such as elinks instead of links. Mutt for mail, for irc doesn't matter much, use a desktop one but setup a bouncher on a vps, I used to have one on a raspberry pi 1, you can use rss reader for reddit (not sure if still works) and blogs
What are some alternatives?
openai-cookbook - Examples and guides for using the OpenAI API
zeal - Offline documentation browser inspired by Dash
awesome-text-summarization - The guide to tackle with the Text Summarization
godot-docs - Godot Engine official documentation
chatgpt_telegram_bot - 💬 Telegram bot with ChatGPT, Python-based, using OpenAI's API.
github-cheat-sheet - A list of cool features of Git and GitHub.
vault-ai - OP Vault ChatGPT: Give ChatGPT long-term memory using the OP Stack (OpenAI + Pinecone Vector Database). Upload your own custom knowledge base files (PDF, txt, epub, etc) using a simple React frontend.
alfred-search-in-devdocs - Documentation search in devdocs
marqo - Unified embedding generation and search engine. Also available on cloud - cloud.marqo.ai
vim-godot - Use vim and godot engine to make games
localGPT - Chat with your documents on your local device using GPT models. No data leaves your device and 100% private.
nvim-rs - A rust library for neovim clients