Compare the Top AI Memory Layers that integrate with MCPTotal as of January 2026

This a list of AI Memory Layers that integrate with MCPTotal. Use the filters on the left to add additional filters for products that have integrations with MCPTotal. View the products that work with MCPTotal in the table below.

What are AI Memory Layers for MCPTotal?

AI memory layers refer to specialized components within artificial intelligence architectures that store and retrieve contextual information to improve decision-making and learning. These layers enable models to remember past interactions, patterns, or data points, enhancing continuity and relevance in tasks like natural language processing or reinforcement learning. By incorporating memory layers, AI systems can better handle complex sequences, adapt to new inputs, and maintain state over longer durations. Memory layers can be implemented using techniques such as attention mechanisms, recurrent networks, or external memory modules. This capability is crucial for building more sophisticated, human-like AI that can learn from experience and context over time. Compare and read user reviews of the best AI Memory Layers for MCPTotal currently available using the table below. This list is updated regularly.

  • 1
    Chroma

    Chroma

    Chroma

    Chroma is an AI-native open-source embedding database. Chroma has all the tools you need to use embeddings. Chroma is building the database that learns. Pick up an issue, create a PR, or participate in our Discord and let the community know what features you would like.
    Starting Price: Free
  • 2
    Pinecone

    Pinecone

    Pinecone

    The AI Knowledge Platform. The Pinecone Database, Inference, and Assistant make building high-performance vector search apps easy. Developer-friendly, fully managed, and easily scalable without infrastructure hassles. Once you have vector embeddings, manage and search through them in Pinecone to power semantic search, recommenders, and other applications that rely on relevant information retrieval. Ultra-low query latency, even with billions of items. Give users a great experience. Live index updates when you add, edit, or delete data. Your data is ready right away. Combine vector search with metadata filters for more relevant and faster results. Launch, use, and scale your vector search service with our easy API, without worrying about infrastructure or algorithms. We'll keep it running smoothly and securely.
  • 3
    Hyperspell

    Hyperspell

    Hyperspell

    Hyperspell is an end-to-end memory and context layer for AI agents that lets you build data-powered, context-aware applications without managing the underlying pipeline. It ingests data continuously from user-connected sources (e.g., drive, docs, chat, calendar), builds a bespoke memory graph, and maintains context so future queries are informed by past interactions. Hyperspell supports persistent memory, context engineering, and grounded generation, producing structured or LLM-ready summaries from the memory graph. It integrates with your choice of LLM while enforcing security standards and keeping data private and auditable. With one-line integration and pre-built components for authentication and data access, Hyperspell abstracts away the work of indexing, chunking, schema extraction, and memory updates. Over time, it “learns” from interactions; relevant answers reinforce context and improve future performance.
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