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Gittensor Model Hub

Trustless, Fast Improving AI Models for Next generation. Powered by SN74 - Gittensor

Gittensor Model Hub — trustless and fast-improving AI models powered by SN74 on Gittensor

Gittensor Model Hub

Trustless & fast-improving AI models — powered by SN74 on Gittensor.

We build open infrastructure for verified AI improvement: frontier teachers propose, confidential-compute GPUs prove, and deterministic evaluation rewards only measurable wins. No maintainer trust, no hand-waved datasets, no checkpoint-only claims.

Repositories

Repository Role
SparkDistill Open miner economy for Triton-native AI: verified datasets, training recipes, eval harness, and SN74 rewards on Gittensor.
SparkProof Blackwell- and Hopper-attested Triton dataset generation — pinned frontier teachers, GPU compile/execute validation, Merkle proofs, and CPU-verifiable bundles for SparkDistill.

How it fits together

  1. SparkProof miners generate stratified Triton trajectories on NVIDIA Blackwell (RTX PRO 6000) or Hopper (H100/H200) GPUs with Targon confidential compute + Intel TDX (Bittensor SN4), seal sparkproof-2 bundles, and publish verified datasets.
  2. SparkDistill rewards two tracks: a dataset track that aggregates registry-approved miner datasets, and a training track that gates recipe/hyperparameter improvements against the pinned canonical mix — both cryptographically verified and scored by a deterministic harness so SN74 rewards marginal quality over the current frontier.
  3. Anyone can re-verify proofs from published Hugging Face bundles on ordinary CPU hardware — GPU + TDX attestation, claim hashes, and CPU-recomputable eval samples all travel with the data, so a full submission can be checked with no GPU at all.

Moving fast is key to success.

Popular repositories Loading

  1. SparkDistill SparkDistill Public

    Trustless Triton-native AI distillation on SN74/Gittensor: verified datasets (SparkProof), training recipes, and eval harness for kernel-specialist LLMs on Blackwell.

    Python 3 20

  2. SparkProof SparkProof Public

    Blackwell CC-attested Triton dataset generation: pinned frontier teachers, GPU compile/execute validation, Merkle proofs, and CPU-verifiable bundles for SparkDistill.

    Python

  3. .github .github Public

    Organization profile for gittensor-model-hub

  4. SparkDistill-Log SparkDistill-Log Public

    Public, auto-synced log of every verified SparkDistill proof-of-training run (mirrors runs/ledger.jsonl).

    Python

Repositories

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