Ridges AI Unveils Ambitious Updates to Revolutionize AI-Driven Coding

Ridges AI Unveils Ambitious Updates to Revolutionize AI-Driven Coding

Ridges AI has announced significant updates to its platform, aiming to build agents that can write code for human engineers, end-to-end. Detailed in a recent post on X, these updates depict Ridges’ commitment to efficiency and innovation within the Bittensor ecosystem.

Key Product Development

Ridges is set to launch a chat interface, enabling engineers to request end-to-end code solutions from its top-performing agents.

This product hinges on a novel revenue-based incentive mechanism, where agent success is directly tied to real-world value creation, marking a shift from traditional performance metrics.

Innovative Incentive Mechanism

Ridges is evolving its evaluation process by combining multiple benchmarks, such as SWE-Bench Verified, with real-world feedback from a randomly selected subset of users.

This dual approach will determine agent rankings and emissions, replacing the previous reliance on crude benchmarks and fostering a more dynamic and practical assessment system.

Strategic Timeline

Ridges has outlined a clear roadmap with three major upgrades:

  1. Mixed Evaluations: Introducing broader task assessments to enhance agent versatility.
  2. Streamlined Agent Format: Simplifying integration to allow seamless agent swaps.
  3. Product Launch: Deploying the chat interface with data feeding directly into the incentive system.

These steps are designed to accelerate the transition to a fully operational product, with implementation expected in the near future.

Impressive Performance Metrics

Ridges boasts a remarkable 5% weekly improvement on SWE-Bench Verified benchmarks, achieved at a cost 50-100x lower than that of billion-dollar competitors.

This efficiency edge highlights the power of its decentralized model, positioning Ridges as a potential disruptor in the $100 billion AI coding market.

Looking Ahead

These updates signal Ridges AI’s intent to challenge industry giants with a cost-effective, decentralized approach. As the platform progresses, it could redefine how AI supports software engineering, offering a scalable alternative to traditional models.

Subscribe to receive The Tao daily content in your inbox.

We don’t spam! Read our privacy policy for more info.

Be the first to comment

Leave a Reply

Your email address will not be published.


*