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Launching SYNTHETIC-2: our next-gen open reasoning dataset and planetary-scale synthetic data generation run. Powered by our P2P inference stack and DeepSeek-R1-0528, it verifies traces for the hardest RL tasks. Contribute towards AGI via open, permissionless compute.

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Planetary-Scale Inference Our peer-to-peer decentralized inference stack moves into production, enabling everyone—from consumer GPUs to hyperscale clusters—to contribute meaningfully towards open-source AI progress.

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Pipeline Parallelism No single GPU holds the full model - each handles a stage, streaming activations forward. This lets smaller GPUs run large models like DeepSeek-R1. Hidden states pass stage to stage; the final GPU decodes a token, sends it back, and the cycle continues.

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Verification with TOPLOC v2 To trust results from thousands of permissionless compute nodes, we must verify their generations cheaply. Our TOPLOC verifiable inference work employs a compact locality sensitive hashing scheme for intermediate activations, which can detect unauthorized modifications to models, prompts, or precision. TOPLOC v2 extends this scheme to the pipeline parallel inference setting: • Group-level reward: If the final output is correct, we treat it as evidence that all pipeline stages behaved honestly. • Blame assignment on failure: If a result fails verification, we replay proofs stage-by-stage, pinpoint the first faulty worker, reject the output, and slash that node’s reward.

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Protocol We’ve updated our protocol codebase with the following feature and scalability improvements over the past couple of months: • Dynamic Grouping: Worker GPU nodes are now dynamically grouped based on task requirements and geolocation to maximize pipeline utilization and inference and training efficiency. • Extensible Plugin System: A modular plugin architecture now enables reusable components across different compute pools. • P2P Communication Layer: We’ve introduced secure peer-to-peer communication between protocol components - such as the validator and the orchestrator. • AMD Support: ROCm devices such as the MI300X can now join the compute pool. • Observability & Monitoring: We’ve integrated Prometheus dashboards to better monitor the global compute fabric.

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SYNTHETIC-2 Dataset A next-gen open dataset for reasoning: • Verified traces from DeepSeek-R1-0528 and Qwen3 for supervised fine-tuning • Difficulty-annotated RL tasks via pass@k from smaller models • 20+ diverse tasks with programmatic verifiers • Includes non-verifiable prompts to broaden SFT coverage beyond math/coding

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How to Contribute Compute • Fully Managed: Contribute GPUs directly through Prime Intellect • Self-Hosted: Bring your own idle GPUs Click “Contribute Compute” on the dashboard. Nodes sync, run models, and rank on the leaderboard. Join now:

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Live view of our dashboard

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Next Steps Building on SYNTHETIC-2, we're launching a new distributed RL run with large-scale async RL building on INTELLECT-2’s success, to train SOTA reasoning models. Coming soon: open-source verifiers, tool-use & coding agents in INTELLECT-3.

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Read more in our release

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Alex Ratner

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