Governance-as-Code for AI agents. Declarative constraints with deterministic enforcement. Provisioning Identity, Tool-based rules, Brokering Credentials & Ensuring safe deployment
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Updated
Jun 1, 2026 - Go
Governance-as-Code for AI agents. Declarative constraints with deterministic enforcement. Provisioning Identity, Tool-based rules, Brokering Credentials & Ensuring safe deployment
DCEE is a lightweight Python framework for validating data against contracts and enforcing SLA rules. Built on pandas and boto3, it provides simple, fast data validation without heavy dependencies.
Secure runtime for multi-agent AI. Kernel sandboxing (seccomp-bpf), real-time PII redaction, Merkle audit trails.
Lightweight runtime enforcement for agentic AI. PII masking, policy checks, and Merkle audit trails as a decorator.
👟 SUP: Sycophancy Under Pressure
Execution boundary for autonomous systems. Deterministic runtime enforcement of executable constraints before state-changing actions occur.
Deterministic pre-execution gate for AI agents (fail-closed, YAML policy)
Stop AI agents before they do damage — behavioral sequence detection blocks credential exfiltration, config harvesting, and secret leakage before the network call fires
The open source runtime enforcement for AI agents.
Execution boundary for autonomous systems. Deterministic runtime enforcement of executable constraints before state-changing actions occur.
In this project, we design and develop a framework leveraging formal runtime enforcement approaches to enforce the lifecycle constraints of a document at runtime, preserving its integrity and privacy using cryptographic approaches alongside.
Enforce tool-usage contracts on agent tool calls — block before side effects.
AIP security plugin for OpenClaw: skill signing, capability manifests, runtime enforcement
Official Python SDK for MachineID - simple device registration and validation for AI agents.
Compiler-Kernel Co-Designed execution integrity enforcement using Policy-Carrying Code (PCC) and eBPF-LSM.
Workload-scoped runtime enforcement for AI workloads. Deterministic governance at the workload boundary.
External kill switch for autonomous runtimes. Validate at enforcement boundaries. Revoke to halt execution.
Runtime governance infrastructure for autonomous AI agents. VGS-001 to VGS-011. DOI: 10.5281/zenodo.20264923
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