A lot of devs building with AI are hitting the same wall where the context just falls apart. We're excited to see more teams reaching for cognee as a solution. Here are some recent use cases we’ve seen: - A legal-tech demo grounded in a knowledge graph to extract and reason over complex documents. - A healthcare assistant that synthesizes pathology, scan reports, referrals, and clinical notes across systems and formats. - A feedback analysis engine that turns 10,000+ job reviews into searchable sentiment and emerging trends. - Internal-facing chatbots where employees can only query data they’re allowed to see. - An AI agentic platform where cognee helps continuously improve knowledge accuracy. - A language-learning tool that builds a personal vocab list from YouTube videos. If you’re building something with #cognee, #AIMemory, or want to learn more, share it in our Discord!
cognee
IT-Dienstleistungen und IT-Beratung
Berlin, BE 898 Follower:innen
cognee is building a memory engine for AI apps and AI agents
Info
cognee builds an OSS memory engine for AI apps and AI agents. The tool helps you create a GraphRAG and supports Vector Stores, Graph stores, and various LLM providers Privacy policy: https://xmrrwallet.com/cmx.ptopoteretes.notion.site/Privacy-Policy-11237007fa82807e8fced55da84276f7
- Website
-
https://xmrrwallet.com/cmx.pwww.cognee.ai
Externer Link zu cognee
- Branche
- IT-Dienstleistungen und IT-Beratung
- Größe
- 2–10 Beschäftigte
- Hauptsitz
- Berlin, BE
- Art
- Privatunternehmen
- Gegründet
- 2024
Orte
-
Primär
Schönhauser Allee
163
Berlin, BE 10435, DE
Beschäftigte von cognee
-
🔧 Daniel Molnar
The Data Janitor
-
Marius Obiegala
Founding Partner Combination Ventures
-
Vasilije Markovic
Founder @ Cognee inc | Semantic memory for AI apps and Agents At cognee we not work with recruiters
-
Hajdu László, Ph.D.
Software Engineer/AI Developer, Researcher/Knowledge Graph Expert
Updates
-
cognee hat dies direkt geteilt
Yesterday we merged PR # 1167, contributed by Vinay, adding dynamic resizing to cognee’s graph visualizer. A concise, well-tested patch that immediately improves workflows for everyone. This is exactly why we love open source: iterative wins delivered by passionate engineers worldwide. To every maintainer, reviewer, and first-time contributor—thank you for making cognee better than we could ever build alone. To be part of the story, check our open issues, ship your first contribution and join our community. We review fast, we give thoughtful feedback, and we love spotlighting new contributors. Find the links below.
-
-
RAG can fish out a quote. We build the whole mind-map. Spin it up with `pip install cognee` and a few lines of Python; the graph viz comes for free. Full write-up and code snippets are below.
RAG recalls text. cognee remembers how it all fits together. See how graph-powered memory inside a Deepnote notebook boosts HotpotQA results from 0 to 50 % EM, slashes hallucinations, and lets you query data like a network graph.
-
Context engineering—where the gains are happening After a month of debates in Reddit threads, Discords, and Slacks we captured practices teams keep asking for: 🔹Long- vs short-term memory 🔹Graph-plus-vector retrieval 🔹Token budgeting that doesn’t hurt quality If you’re already experimenting, this guide will help your workflow get better. The link is in the comments 👇🏼
-
Did you know cognee already plugs into 14 different databases? Relational, Vector, Graph and hybrids in between—are all first-class citizens in our stack. 🔍 Where are you keeping your data right now? Drop your stack below 👇 benchmarks, migration wins, hybrid surprises welcome. Let’s compare notes and level up our memory architectures together!
-
-
cognee × Redis: A blazing fast memory stack for AI agents 🌪️ Cognee now speaks Redis! Why Redis? - Millisecond-level retrieval for real-time agents - Built-in hybrid & full-text search, short-term context - Declarative schemas with RedisVL keep setup friction near zero Same ECL pipeline, broader choice of backends. Dive deeper from the link below 👇🏼
-
cognee hat dies direkt geteilt
Build faster AI memory... by combining cognee's innovative AI memory solutions with Redis's ultra-fast vector database and semantic caching, developers can now build smarter, more responsive AI agents—at scale and with lower costs. Check it out! https://xmrrwallet.com/cmx.plnkd.in/gs79qByw Tyler Hutcherson Kyle Banker Jeremy Plichta Manvinder Singh Mike Moss Megan Boone Katie Dunn Jim Allen Wallace #memory #agents #AI
-
📬 Launching Monthly AI Memory Insights later today Issue 1 (a 5-minute roundup) packs: - Curated takeaways from the recent arxiv papers - Real-world retrieval fixes you can copy now - Highlights from the r/AIMemory debate 👇 Subscribe now and be among the first to get Issue 1 (the link is the comments)
-
-
Context engineering: hype or the missing link between prompts and production? From smarter RAG chunking to compressing chat history, how we stage information for an LLM can make or break the result. We’ve just opened a lively debate on r/AIMemory—come weigh in! 🚀 Jump into the Reddit thread 🎙️ Office Hours today at 17:00 CET on the Cognee Discord Bring your stories, questions, ideas—we’ll unpack them together. The links are in the comment! 👇
-