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| ## Inference Labs | |
| ### Auditable Autonomy for ML Engineers | |
| Autonomous models make real-world decisions, but their inferences are not verifiable. | |
| Humans rely on cryptographic identity to secure access, payments, and accountability. ML systems lack a standard way to prove what a model computed, how it was executed, or whether an output has been tampered with. | |
| **Inference Labs builds verification primitives for machine learning.** | |
| We pioneered **Auditable Autonomy**, a research-driven framework that brings cryptographic verification to model inference. Our **Proof of Inference** approach makes every forward pass, agent decision, and workflow execution independently verifiable, while preserving IP through **veiled model weights and biases**. | |
| On this page you will find: | |
| - Research on verifiable and auditable inference | |
| - Benchmarks for integrity, performance, and overhead | |
| - Models and reference implementations with built-in verification | |
| - Tools for protecting proprietary weights and biases | |
| - Experiments for deploying ML in adversarial and regulated environments | |
| Verification becomes a first-class primitive for ML systems, enabling trustworthy deployment at scale. |