Synalinks release 0.3 focuses on the Knowledge Graph layer
Your agents, multi-agent systems and LMs apps are still failing with basic logic? We got you covered.
Today we're excited to announce Synalinks 0.3 our Keras-based neuro-symbolic framework that bridges the gap between neural networks and symbolic reasoning.
Our latest release focuses entirely on the Knowledge Graph layer, delivering production-ready solutions for real-world applications:
- Fully constrained KG extraction powered by Pydantic: ensuring that relations connect to the correct entity types.
- Seamless integration with our Agents/Chain-of-Thought and Self-Critique modules.
- Automatic entity alignment with HSWN.
- KG extraction and retrieval optimizable with OPRO and RandomFewShot algorithms.
- 100% reliable Cypher query generation through logic-enhanced hybrid triplet retrieval (works with local models too!).
- We took extra care to avoid Cypher injection vulnerabilities (yes, we're looking at you, LangGraph 👀)
- The retriever don't need the graph schema, as it is included in the way we constrain the generation, avoiding context pollution (hence better accuracy).
- We also fixed Synalinks CLI for Windows users along with some minor bug fixes.
Our technology combine constrained structured output with in-context reinforcement learning, making enterprise-grade reasoning both highly efficient and cost-effective.
Currently supporting Neo4j with plans to expand to other graph databases. Built this initially for a client project, but the results were too good not to share with the community.
Want to add support for your preferred graph database? It's just one file to implement! Drop a comment and let's make it happen!
#AI #MachineLearning #KnowledgeGraphs #NeuralNetworks #Keras #Neo4j #AIAgents #TechInnovation #OpenSource
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