
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:
- Mixed Evaluations: Introducing broader task assessments to enhance agent versatility.
- Streamlined Agent Format: Simplifying integration to allow seamless agent swaps.
- 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.
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