# Roadmap

<figure><img src="/files/jZhYwCBKss6GKml2GGC9" alt=""><figcaption><p>Darwin Chain Roadmap</p></figcaption></figure>

Our AI innovation roadmap highlights key milestones and objectives for the upcoming quarters. We are committed to building robust infrastructure, launching impactful features, and creating a community ecosystem.

### Q3 2024: AI Stack Proof of Concept (PoC)

In the third quarter of 2024, our primary focus will be developing and demonstrating the AI Stack Proof of Concept (PoC). This foundational work will lay the groundwork for future advancements and ensure that our AI stack is functional and scalable.

### Q4 2024: Inference Infrastructure Development and Community Features Launch&#x20;

As we move into the fourth quarter of 2024, our efforts will shift toward enhancing our inference infrastructure and launching community-driven features. These developments are crucial for improving the performance and usability of our AI solutions while creating a collaborative environment.

### Q1 2025: Testnet Launch and Verifiable Inference&#x20;

The first quarter of 2025 marks significant milestones with the launch of our testnet and the introduction of verifiable inference mechanisms. These steps are essential for testing and validating our technologies in a real-world environment.

### Q2 2025: Ecosystem Development, Finetune Infra Development, and Model Evaluation Modules

In the second quarter of 2025, we will focus on expanding our ecosystem, enhancing our infrastructure for model fine-tuning, and developing model evaluation modules. These efforts will ensure our AI models continually improve and meet the highest standards.


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