Ƶ's advanced algorithms compare contract clauses against your approved playbook. It flags deviations, highlighting potential risks or non-standard terms. This empowers legal teams to quickly identify and address off-playbook language, ensuring consistency and compliance across agreements.
Legal AI for Off-Playbook Flagging
Instantly identify and flag contract provisions that deviate from your established playbook, ensuring consistency and mitigating risk.
Streamline your contract review process
Ensuring Playbook Compliance
Manually checking contracts against playbooks is time-consuming and error-prone.
Automated Playbook Adherence Check
Ƶ swiftly identifies clauses that deviate from your playbook, ensuring consistency and reducing risk.
Strengthen Your Contract Governance
Implement Ƶ's off-playbook flagging. Enhance your contract compliance today.
Book your personalised demo now
8,300 professionals rely on our Trusted Off-Playbook Flagging
Get answers to some
Frequently Asked Questions
Ƶ's advanced contract review capabilities can identify and flag non-standard terms. It compares contract language against your playbook, highlighting deviations. This empowers legal teams to quickly spot potential issues and ensure compliance with company standards.
Ƶ flags off-playbook language, mitigating risks like inconsistent terms, unfavorable clauses, or non-compliant provisions. This feature helps legal teams maintain contract standardization, reduce negotiation time, and ensure adherence to company policies and regulatory requirements.
Ƶ swiftly scans and flags problematic clauses in contracts, often in seconds. It uses advanced machine learning to compare clauses against your playbook, highlighting deviations or potential issues for quick review. This rapid identification empowers lawyers to focus on strategic decision-making.
Ƶ continuously improves its capabilities, but doesn't learn directly from user-flagged issues. Our team of legal experts and AI specialists regularly update and refine the system based on broader patterns and feedback, ensuring high-quality, legally sound outputs while maintaining data privacy.