# 2nd Report Of January 2026

### Mainnet Performance

* Validator nodes: 102
* Miner nodes: 1,021
* Wallets (net change): +62

### Project Progress

#### Large Language Model Development

* Optimized Morpheus as the foundational large language model for AI Agents — 100% (Integration and debugging with the Agent Model Center remains).
* Introduced DeepSeek V3's Mixture-of-Experts (MoE) framework to improve base-model training efficiency — 100%.

#### Distributed Privacy Computing Support

* Extended the MANTA compute system to support privacy-preserving training and inference required by Agents — 0% (on hold).
* Adapted MANTA to support MoE-based training and inference for DeepSeek V3 — 0% (on hold).

#### Agent Model Center (MVP)

* Deployed the first version of the Model Center, initialized with Agent Tools from MATRIX AI, enabling users to assemble custom Agents — 100%.

Integrated the "Agent Registry" platform, allowing users to publish, browse, and call Agent Matrices created by others, enabling networked collaboration.

Implemented a multi-language collaboration scheduling mechanism, enabling Agents with different language preferences to participate jointly in the same task.

* Expanded compatible baseline models for the Agent Model Center; introduced DeepSeek V3 as one of the supported benchmarks — 98%.

#### AI Agent (MVP)

* Released a Morpheus-based AI Agent MVP for user testing — 100%.

#### Brainwave Distributed Database (NeuraMATRIX)

* Launched NeuraMATRIX, the first ecosystem application; started user data collection and anonymized preprocessing — 64%.

#### Others

* established a collaboration with the China Western Research and Development Promotion Association in the areas of AI and blockchain.

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