Private beta for action-taking AI agents

Agentic AI Moves Fast. Argos Puts Control In The Loop

Review, edit, approve, or block risky actions before they reach customers, records, or systems - with evidence saved for every decision.

For teams with live or near-live action-taking AI agents.

Start with one workflow where an AI agent can affect a customer, record, refund, spreadsheet, or internal system. We help you put the first approval checkpoint in place.

For technical teams: Argos wraps risky tool calls with one beforeAction() checkpoint, then returns allow, block, escalate, or approval_required.

1

Agent action ready

Email, CRM, refund, sheet, API

2

Argos checkpoint

Risk checked before execution

3

Human review

Approve, edit, deny, or escalate

4

Evidence saved

Decision and outcome recorded

Problem

AI agents are no longer just writing drafts.

They are sending messages, updating records, triggering workflows, and touching systems your team depends on. That creates a new kind of risk: not just a bad answer, but an action that should never have happened.

Argos gives your team a checkpoint before the action becomes real.

Interactive simulation

Try the control flow

Choose a risky action and see how Argos pauses it before anything reaches a customer, record, refund, spreadsheet, or internal system.

Step 1 · Agent attempts action

Send client email

Approval required

Agent wants to send a follow-up email to a high-value customer.

Tool
Email
Target
External customer
Risk
High-value account
1

Action attempted

Agent wants to send a follow-up email to a high-value customer.

2

Risk flagged

High-value account

3

Reviewer decision

Sarah, Operations reviewer

4

Evidence saved

Decision saved with the risk explanation and approval snapshot.

Result: Sent after review

Sarah J. approved the customer email after checking the account context and risk note.

What Argos does

Argos turns risky agent actions into reviewable decisions.

Argos sits between your AI agent and the tools it uses. When an agent tries to take a sensitive action, Argos checks the tool, target, business object, and risk level.

Low-risk actions can continue. Risky actions pause for human approval. Blocked actions stop before they reach the customer or system.

Afterward, Argos saves a clear record of what happened, who approved it, and why.

Evidence packet

Stopped before execution

Approval required
  1. 1

    AI drafted

  2. 2

    Argos paused

  3. 3

    Human approved

Before executionHuman reviewEvidence saved

Email sent after review

01

Agent requests permission

beforeAction() carries the tool, target, workflow, and business context before anything executes.

02

Argos checks context

Argos evaluates the tool, target, business object, and risk level before the action reaches the system.

03

Risky actions pause

Sensitive actions wait for a reviewer to approve, deny, or escalate with the reason clearly visible.

04

Evidence stays attached

Argos keeps a clear record of what happened, who approved it, and why.

SDK/API checkpoint

One checkpoint before the action.

Add Argos before the tool call that matters. Your agent asks for permission before it sends, updates, refunds, deletes, or edits something important.

Example: Before An Agent Sends A Customer Email.

Your system still executes the action. Argos controls whether it should proceed, pauses risky actions for approval, and records the evidence afterward.

await argos.beforeAction({
  agentId: "sales-agent-01",
  workflowId: "client-email-approval",
  tool: "email",
  action: "send",
  targetType: "customer"
});

Who this is for

Argos is for teams whose AI agents can act.

If an agent can change something your business depends on, you need a checkpoint before that action becomes real.

Argos is for you if:

  • Your AI agent can email customers.
  • Your AI agent can update CRM records.
  • Your AI agent can edit spreadsheets or trackers.
  • Your AI agent can trigger refunds, invoices, or internal workflows.
  • Your clients ask, "How do we know the AI won't mess up?"

Argos is not for you if:

  • -You only use ChatGPT manually.
  • -Your AI does not take actions.
  • -You only need prompt debugging or model traces.

Where Argos adds control

Built for the moments where AI mistakes become business problems.

Start with one workflow. Add approval only where risk matters.

Revenue Ops

Control CRM changes before they affect pipeline, forecasting, or customer records.

Example: an agent tries to move a deal to Closed Won. Argos pauses the update and routes it for approval.

Customer Support

Review sensitive replies before they reach customers.

Example: an agent drafts a refund confirmation or policy response. Argos checks the context before release.

Finance

Block or escalate actions involving money movement.

Example: an agent triggers a refund or changes an invoice field. Argos requires finance sign-off first.

Internal Operations

Keep spreadsheets and internal trackers from becoming silent points of failure.

Example: an agent edits rows in an operational tracker. Argos records the change and the approval trail.

Control layer

Not another dashboard after the damage is done.

Observability tools help teams understand what happened inside an AI system.

Argos focuses on the moment before the business action happens.

Instead of only asking “what did the model output?”, Argos asks:

  • Should this action be allowed?
  • Who needs to approve it?
  • What business object is affected?
  • Can we prove what happened later?

Primary question

Observability tools

What did the model output?

Argos

Should this action have been allowed?

Primary user

Observability tools

AI engineers and developers

Argos

Ops leads, agency founders, CTOs

Main event

Observability tools

LLM call or trace

Argos

Business action attempted by an agent

Output

Observability tools

Trace, metrics, evals

Argos

Approval decision, risk case, evidence packet

Timing

Observability tools

After execution

Argos

Before risky action + after evidence

Argos complements observability tools. It does not replace them.

Native approvals

Why not just use native SDK approvals?

Native agent frameworks can pause a tool call. Argos gives teams the operational control layer around that pause: policy rules, reviewer routing, an approval inbox, evidence packets, audit-friendly records, and reusable controls across workflows.

Comparison 1

Native HITL approval

Tool-level pause

Argos

Workflow-level policy checkpoint

Comparison 2

Native HITL approval

Developer-managed state

Argos

Approval inbox and decision record

Comparison 3

Native HITL approval

App-specific implementation

Argos

Reusable control layer across workflows

Comparison 4

Native HITL approval

Approval or rejection only

Argos

Allow, block, escalate, approval_required, and evidence

Comparison 5

Native HITL approval

Hard to show clients

Argos

Client-safe evidence packets and reports

Comparison 6

Native HITL approval

Lives inside one agent stack

Argos

Works around custom agents and API/tool calls

Argos complements native approval tools. It does not replace your agent stack.

Pricing

Start with one risky workflow.

One approval checkpoint. Mapped within 7 days. Founder-assisted, not self-serve.

Currently open

Founding Design Partner

For AI agencies and teams deploying agents into live business workflows.

$299/mo

Locked in for the founding scope while your subscription remains active.

We personally help you identify your riskiest AI agent action, wrap it with the Argos SDK, route it through approval, and generate an evidence trail your team or client can trust.

What you get:

  • Founder-led onboarding call
  • We map your riskiest agent workflow together
  • First approval checkpoint configured with you
  • Approval inbox for your review team
  • Evidence packets for every intercepted action
  • Plain-English risk explanations
  • API key setup and SDK integration support
  • Direct founder access during the pilot
  • Your workflow priorities shape the roadmap directly

Pilot scope:

  • 1 controlled workflow
  • Up to 2 agents
  • Up to 3 reviewers
  • Email, CRM, Sheets, refund, or internal API workflow
Our commitment: First approval checkpoint mapped within 7 days, assuming access to the workflow and a technical point of contact. If we cannot identify and configure a viable checkpoint with you, you do not continue.

Agency plans start at $999/mo when you expand beyond the founding scope.

Enterprise and self-hosted deployment available on request.

FAQ

Frequently asked questions

How does Argos integrate?

You add Argos before the tool call that matters. Your agent calls beforeAction(), Argos returns allow, approval_required, block, or escalate, and your workflow continues based on that decision.

Do I need to replace my agent stack?

No. Argos is designed to sit around your existing agent workflow. It can work with custom agents, LangChain, CrewAI, LlamaIndex, OpenAI Assistants, n8n, or any system that calls tools or APIs.

Does Argos send the email or update the CRM for me?

No. Your system still executes the action. Argos controls whether the action should proceed, pauses risky actions for approval, and records the evidence afterward.

What data does Argos store?

By default, Argos stores metadata and redacted action summaries only. It should not receive raw email bodies, API keys, credentials, customer lists, or secrets.

Who is Argos for?

Argos is for teams whose AI agents can send, update, edit, refund, delete, or call APIs. It is not for teams only using ChatGPT manually.

Company

Built by Aurevon Technologies Limited

Argos is built by Aurevon Technologies Limited, based in DIFC. We are building infrastructure for safer AI agent deployment - starting with pre-action control, approval workflows, and evidence trails.

Bring one risky workflow.

We will help you map one risky AI-agent workflow, configure the first approval checkpoint, and generate an evidence trail your team or client can trust.