2nd Report Of April 2025

April 22, 2025

Mainnet Performance

  • Validator Nodes: 103

  • Miner Nodes: 1,174

  • New Wallets: +43


Project Updates

1. Large Model Initialization

  • Optimization of Morpheus as the Base Large Model for AI Agents: 67%

    • Model tuning and optimization are fully complete; current efforts are focused on integration testing with the Agent Model Center.

    • Work is being done to optimize API interfaces to ensure Morpheus integrates seamlessly with other models and tools in the platform.

  • Integration of DeepSeek V3's MOE Model Framework: 87%

    • Final version of the MOE framework has been fully integrated and is now stably running within Morpheus.

    • Conducted comprehensive performance testing to evaluate training speed, accuracy, and memory consumption.


2. Support for Distributed Privacy Computing (On Hold)

  • Expansion of the MANTA Architecture for Privacy-Preserving Agent Training and Inference: 0%

  • Optimization of MANTA for DeepSeek V3 MOE Model Requirements: 0%


3. Agent Model Center (MVP)

  • Initial Version Deployment: 77%

    • First version of the Model Center has been released with Agent Tools from MATRIX AI, allowing users to build custom agents from available modules.

    • Introduced a visual development environment enabling drag-and-drop agent design, configuration-based customization, and code-level scripting.

  • Extension of Compatible Baseline Models – Integration of DeepSeek V3: 70%

    • Improved the model selection and comparison interface to help users quickly find and utilize suitable baseline models for training and inference.


4. AI Agent MVP

  • Testable MVP Version Based on Morpheus: 30%

    • Development may shift from releasing isolated agents to fully integrating functionality into the Agent Center.


5. Launch of Brainwave Distributed Database

  • Deployment of NeuraMATRIX’s First Ecosystem Application & Data Collection: 17%

    • Continued user data collection and anonymization.

    • MetaTron firmware updated to improve EEG signal recognition accuracy.


6. Others

  • MCP Framework Integrated into MANTA

    • MCP performs semantic analysis of input tasks and decomposes them into semantic subtasks, each with clear context (e.g., input data type, execution goals, dependencies, and preconditions).

    • These subtasks offer deeper intent comprehension compared to traditional task slicing, allowing more accurate distribution to optimal nodes in a decentralized environment.

  • Open-Source MCP Router Tool Released

    • Built on MATRIX’s distributed AI Agent service network technology, this router allows users to direct tasks to suitable nodes in a decentralized agent architecture.

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