Contract review agents with human approval gates and immutable audit trails.
Your contract review agent extracts clauses, flags risks, and suggests redlines faster than a junior associate. But your general counsel won't approve it for production use. The issue isn't accuracy — it's accountability. Hatch provides the accountability infrastructure.
The problem.
During an M&A due diligence sprint, your agent processes a data room of 800 contracts over 72 hours. The document parser throws an OOM exception at contract 412. On restart, the agent has no record of which contracts it already processed — it starts from contract 1. Contracts 1 through 411 are processed a second time: duplicate risk flags written to the review database, duplicate summary emails sent to the deal team, duplicate entries in the audit log. The deal team now has two conflicting risk assessments for 411 contracts and no way to know which run's output to trust. The data room review is paused while your engineering team manually reconciles the duplicates under M&A timeline pressure.
The accountability gap that keeps legal agents out of production is specific: when the agent flags clause 14.3 of a vendor agreement as non-standard, the reviewing lawyer needs to see exactly what text the agent read, which policy rule it applied, what the standard position is, what the deviation is, and what the agent recommended. Not a summary — the raw inputs, the rule reference, and the output, all in a queryable record tied to the contract ID and the agent version that processed it. If opposing counsel challenges the review six months after signing, 'the AI flagged it' is not a defensible answer without this trace.
Law firms and legal departments operate under privilege and confidentiality obligations that create a specific infrastructure constraint: contract data cannot transit systems that are not covered by your information security policy. Most SaaS agent platforms process data in shared infrastructure. An agent that sends contract text to a multi-tenant LLM API endpoint, where the request is logged in a vendor's system under opaque retention policies, is a privilege risk your general counsel will not accept. The compute needs to be in your environment, or in a single-tenant environment you control.
What Hatch handles.
Agents that run on Hatch.
Contract reviewer
Ingests contracts from a document queue (S3 event or webhook), extracts text via a PDF parser running in a sidecar container, runs clause extraction and risk assessment against a versioned policy ruleset, writes a structured review record to your matter database with full reasoning, and pauses for lawyer approval before any output is sent to the deal team or external parties.
500+ contracts/week during due diligence periods
Compliance monitor
Subscribes to a regulatory change feed (Thomson Reuters, Wolters Kluwer, or an internal feed), compares each regulatory update against the clause-level index of your active contract portfolio, flags contracts with potentially non-compliant provisions, and generates a structured report with contract ID, clause reference, regulatory citation, and recommended action — queryable by practice area or jurisdiction.
Continuous monitoring across all active contracts
Due diligence agent
Processes data room documents in parallel across a configurable worker pool, extracts key provisions by document type (employment, IP assignment, customer, supplier), identifies liability caps, indemnification obligations, and change-of-control triggers, and produces a structured diligence summary keyed by document ID — with a complete WAL of every document processed so the M&A team knows exactly what was reviewed and when.
1,000+ documents during due diligence sprints
The 2-week PoC.
Take your contract analysis agent. Deploy it on Hatch in your own cloud account. In two weeks, it processes contracts with clause extraction, risk flagging, and lawyer escalation — with an immutable, append-only audit log of every agent decision, queryable by your legal team, and zero data transiting external systems.
Why now.
The EU AI Act classifies AI systems used for interpreting legal documents in high-risk categories that require conformity assessments, technical documentation, and human oversight mechanisms before deployment. Article 14 specifically requires that high-risk AI systems be designed to allow effective human oversight, including the ability to override outputs. If you deploy a contract review agent without a documented human approval mechanism and an audit trail that satisfies Article 17's record-keeping requirements, you are deploying a non-compliant system into a jurisdiction where enforcement began in 2025. Building the approval and logging infrastructure now is cheaper than a conformity assessment retrofit after the fact.
Have an agent stuck in staging?
Tell us what it does and where it's stuck. We'll scope a 2-week PoC and show you what production looks like.
book a call →