This product was not featured by Product Hunt yet.
It will not be visible on their landing page and won't be ranked (cannot win product of the day regardless of upvotes).

Product Thumbnail

RagBucket

Build once. Query anywhere with portable RAG artifacts

Open Source
Developer Tools
Artificial Intelligence
GitHub
Visit WebsiteSee on Product HuntVercel

Hunted byAnik ChandAnik Chand

RagBucket packages semantic vectors, FAISS indexes, chunks, retrieval memory, and runtime metadata into a single portable `.rag` artifact. Most RAG systems today are tightly coupled to vector DBs and retrieval pipelines. RagBucket makes retrieval memory portable and reusable across projects, environments, and providers. Build once. Query anywhere. Supports: • OpenAI • Cohere • Gemini • Voyage AI • Groq • Anthropic • Local SentenceTransformers

Top comment

Hey everyone 👋 I built RagBucket after repeatedly facing the same issue while building RAG systems: the retrieval memory was always trapped inside vector databases, embedding pipelines, and infrastructure setups. ML models are portable: `.pt` `.onnx` `.gguf` But RAG systems usually are not. So RagBucket introduces portable `.rag` artifacts that package: • semantic vectors • FAISS indexes • chunks • retrieval configs • runtime metadata into a reusable file that can be loaded anywhere. One use case I’m especially excited about: building reusable domain-specific retrieval artifacts like: medical.rag finance.rag legal.rag engineering.rag and loading them into different applications without rebuilding embeddings/indexes every time. Would genuinely love feedback from the community 🙌

Comment highlights

No comment highlights available yet. Please check back later!

About RagBucket on Product Hunt

Build once. Query anywhere with portable RAG artifacts

RagBucket was submitted on Product Hunt and earned 2 upvotes and 1 comments, placing #157 on the daily leaderboard. RagBucket packages semantic vectors, FAISS indexes, chunks, retrieval memory, and runtime metadata into a single portable `.rag` artifact. Most RAG systems today are tightly coupled to vector DBs and retrieval pipelines. RagBucket makes retrieval memory portable and reusable across projects, environments, and providers. Build once. Query anywhere. Supports: • OpenAI • Cohere • Gemini • Voyage AI • Groq • Anthropic • Local SentenceTransformers

RagBucket was featured in Open Source (68.5k followers), Developer Tools (514.1k followers), Artificial Intelligence (471.1k followers) and GitHub (41.3k followers) on Product Hunt. Together, these topics include over 208.1k products, making this a competitive space to launch in.

Who hunted RagBucket?

RagBucket was hunted by Anik Chand. 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.

Want to see how RagBucket stacked up against nearby launches in real time? Check out the live launch dashboard for upvote speed charts, proximity comparisons, and more analytics.