What is Circlemind?
The platform leverages a combination of Vector Databases and Knowledge Graphs, enabling capabilities like multi-hop retrieval, reasoning over entire datasets, and handling dynamic, evolving information. It focuses on understanding the interconnections within data, making it suitable for complex tasks such as analyzing codebases or finding nuanced information ("needle in a haystack"). Circlemind aims to provide a RAG system that works effectively out-of-the-box and continuously improves by learning from every interaction and information point, tailoring its knowledge structure to best serve specific requirements.
Features
- Promptable GraphRAG: Create sophisticated RAG pipelines using plain English descriptions.
- Agentic RAG Framework: Incorporates agents to enhance retrieval pipeline capabilities and understanding based on use case.
- Vector Databases + Knowledge Graphs: Combines technologies for advanced data representation and retrieval.
- Always Self-Improving: Learns from interactions and information, constantly refining its knowledge structure.
- Multi-Hop Retrieval: Reasons over memories and retrieves interconnected information seamlessly.
- Whole Dataset Reasoning: Understands data in aggregate to answer complex queries effectively.
- Dynamic Data Handling: Stores and adapts to evolving information over time.
- Needle in a Haystack Retrieval: Navigates knowledge graphs to find specific, nuanced information.
- Codebase Understanding: Comprehends the interconnections between components in codebases.
Use Cases
- Analyzing satellite images for land use changes (residential developments, green spaces, wildfires).
- Analyzing customer support transcripts to identify common issues, themes, sentiment, and trends.
- Analyzing pediatric medical records for trends in childhood obesity and related health issues.
- Analyzing classic fairy tales for recurring themes, archetypes, and connections to contemporary issues.
- Analyzing online restaurant reviews for trends in customer sentiment regarding food quality, service, and cleanliness.
- Building sophisticated RAG pipelines for domain-specific knowledge retrieval.
- Developing AI applications requiring deep data analysis and context understanding.
FAQs
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What is Agentic RAG?
Agentic RAG is a framework that uses agents to enhance the retrieval pipeline's capabilities. Circlemind employs agentic GraphRAG to analyze, understand, and retrieve data tailored to specific use cases. -
What does 'promptable' mean in the context of Circlemind?
Promptable means you can guide Circlemind's graph construction using English descriptions of your data, domain, desired behavior, and example queries. The AI uses these descriptions to design and implement an optimized knowledge graph. -
When is GraphRAG more advantageous than naive RAG?
GraphRAG excels in scenarios with domain-specific, dynamic information, evolving knowledge, and nuanced context retrieval. It outperforms naive RAG significantly in accuracy for deep data analysis, domain understanding, and integrating multiple data points. Naive RAG is better suited for low-latency use cases with static data and lower precision requirements.
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Circlemind Uptime Monitor
Average Uptime
100%
Average Response Time
294 ms