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GitHub
Stop losing data science context. Build knowledge graphs.
KMDS turns fragmented notebooks and data workflows into structured, searchable knowledge graphs. Scan repos using local LLMs, chat with your experimental history, and visually audit your data engineering artifacts—all 100% locally.
Hey Product Hunt community! 👋As data teams, we have all been there: a data scientist leaves the company, or you revisit a project after six months, and the research trail is completely cold. You are left staring at fragmented Jupyter notebooks, wondering why a specific modeling decision or data engineering choice was made.We built KMDS (Knowledge Management for Data Science) to solve this exact problem. It is an open-source, ontology-backed ecosystem designed to capture, organize, and reuse insights from your data science experiments.Key Features:Local Repo Scanning: Use local LLMs acting as specialized personas (Data Scientist, Tech Lead, Architect) to auto-generate structured knowledge graphs from your codebase.Interactive UI Workbench: Visually audit, explore, and safely edit your knowledge graphs without messing up raw files.Natural Language Ingestion: Simply describe your experimental insights in plain English, and KMDS maps them into the ontology.Semantic AI Search: Query your team's historical findings using local vector indices powered by Ollama.KMDS runs entirely on your local machine to keep your data and IP secure.Check out our GitHub repository, give it a spin, and let us know your thoughts! What features or integrations should we build next? We would love your feedback! 👇
About GitHub on Product Hunt
“Stop losing data science context. Build knowledge graphs.”
GitHub was submitted on Product Hunt and earned 9 upvotes and 1 comments, placing #45 on the daily leaderboard. KMDS turns fragmented notebooks and data workflows into structured, searchable knowledge graphs. Scan repos using local LLMs, chat with your experimental history, and visually audit your data engineering artifacts—all 100% locally.
On the analytics side, GitHub competes within Analytics, Developer Tools, Artificial Intelligence, GitHub and YouTube — topics that collectively have 1.2M followers on Product Hunt. The dashboard above tracks how GitHub performed against the three products that launched closest to it on the same day.
Who hunted GitHub?
GitHub was hunted by Rajiv Sambasivan. A “hunter” on Product Hunt is the community member who submits a product to the platform — uploading the images, the link, and tagging the makers behind it. Hunters typically write the first comment explaining why a product is worth attention, and their followers are notified the moment they post. Around 79% of featured launches on Product Hunt are self-hunted by their makers, but a well-known hunter still acts as a signal of quality to the rest of the community. See the full all-time top hunters leaderboard to discover who is shaping the Product Hunt ecosystem.
For a complete overview of GitHub including community comment highlights and product details, visit the product overview.