Files
aitbc/docs/8_development/api_reference.md
oib 825f157749 Update Python version requirements and fix compatibility issues
- Bump minimum Python version from 3.11 to 3.13 across all apps
- Add Python 3.11-3.13 test matrix to CLI workflow
- Document Python 3.11+ requirement in .env.example
- Fix Starlette Broadcast removal with in-process fallback implementation
- Add _InProcessBroadcast class for tests when Starlette Broadcast is unavailable
- Refactor API key validators to read live settings instead of cached values
- Update database models with explicit
2026-02-24 18:41:08 +01:00

2.2 KiB

API Reference - Edge Computing & ML Features

Edge GPU Endpoints

GET /v1/marketplace/edge-gpu/profiles

Get consumer GPU profiles with filtering options.

Query Parameters:

  • architecture (optional): Filter by GPU architecture (turing, ampere, ada_lovelace)
  • edge_optimized (optional): Filter for edge-optimized GPUs
  • min_memory_gb (optional): Minimum memory requirement

Response:

{
  "profiles": [
    {
      "id": "cgp_abc123",
      "gpu_model": "RTX 3060",
      "architecture": "ampere",
      "consumer_grade": true,
      "edge_optimized": true,
      "memory_gb": 12,
      "power_consumption_w": 170,
      "edge_premium_multiplier": 1.0
    }
  ],
  "count": 1
}

POST /v1/marketplace/edge-gpu/scan/{miner_id}

Scan and register edge GPUs for a miner.

Response:

{
  "miner_id": "miner_123",
  "gpus_discovered": 2,
  "gpus_registered": 2,
  "edge_optimized": 1
}

GET /v1/marketplace/edge-gpu/metrics/{gpu_id}

Get real-time edge GPU performance metrics.

Query Parameters:

  • hours (optional): Time range in hours (default: 24)

POST /v1/marketplace/edge-gpu/optimize/inference/{gpu_id}

Optimize ML inference request for edge GPU.

ML ZK Proof Endpoints

POST /v1/ml-zk/prove/inference

Generate ZK proof for ML inference correctness.

Request:

{
  "inputs": {
    "model_id": "model_123",
    "inference_id": "inference_456",
    "expected_output": [2.5]
  },
  "private_inputs": {
    "inputs": [1, 2, 3, 4],
    "weights1": [0.1, 0.2, 0.3, 0.4],
    "biases1": [0.1, 0.2]
  }
}

POST /v1/ml-zk/verify/inference

Verify ZK proof for ML inference.

POST /v1/ml-zk/fhe/inference

Perform ML inference on encrypted data using FHE.

Request:

{
  "scheme": "ckks",
  "provider": "tenseal",
  "input_data": [[1.0, 2.0, 3.0, 4.0]],
  "model": {
    "weights": [[0.1, 0.2, 0.3, 0.4]],
    "biases": [0.5]
  }
}

GET /v1/ml-zk/circuits

List available ML ZK circuits.

Error Codes

Edge GPU Errors

  • 400: Invalid GPU parameters
  • 404: GPU not found
  • 500: GPU discovery failed

ML ZK Errors

  • 400: Invalid proof parameters
  • 404: Circuit not found
  • 500: Proof generation/verification failed