LegalOn ships with playbooks drafted by experienced lawyers for common contract types. These encode what to flag, what to propose, and how to explain issues to business partners.
The platform highlights risky clauses, deviations from standards, and missing protections, and proposes redlines directly in context.
Each issue can include a plain‑language explanation suitable for non‑lawyers, helping align legal and commercial teams.
LegalOn tracks review times, issue frequency, and negotiation outcomes, providing dashboards that show where processes can be improved.
LegalOn can plug into contract intake forms, CLMs, and productivity suites so review is automatically triggered as contracts enter the pipeline.
Legal teams run NDAs, MSAs, SOWs, and SaaS agreements through LegalOn to quickly identify risks and generate redlines consistent with their policy playbooks.
Growing companies use LegalOn to handle increasing contract volume without proportionally increasing headcount, reserving human time for complex negotiations and escalations.
Organizations codify their contract positions in LegalOn and refine those rules over time, moving from ad hoc contracting to standardized, data-driven negotiation strategies.
LegalOn helps teams compare third‑party paper against their own preferred templates, showing exactly where terms diverge and what changes are needed to align risk.
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