CaseText (Predict)
Integrations
- Westlaw Precision
- Microsoft 365 Copilot
- iManage / NetDocuments
- Thomson Reuters CoCounsel
Pricing Details
- Enterprise-level pricing is tiered based on seat count and agentic task volume.
- Access typically requires a base Westlaw Precision or CoCounsel license.
Features
- Autonomous Deep Research agents
- Adversarial strategy simulation
- KeyCite Knowledge Graph grounding
- Probabilistic risk-scenario modeling
- Multi-jurisdictional pattern recognition
- Zero-hallucination citation engine
Description
CoCounsel Strategic Insights: Agentic Intelligence Framework Review
As of January 2026, Thomson Reuters has successfully completed the integration of CaseText technology, evolving it into the CoCounsel Agentic Framework. This architecture represents a shift from simple predictive analytics to Autonomous Legal Reasoning. The system acts as a high-level orchestrator that utilizes the Thomson Reuters Generative AI Platform to manage long-running research trajectories, where the AI independently formulates queries, evaluates search results, and synthesizes findings against the KeyCite validation engine 📑. The persistence layer is architected as a hybrid vector-graph system, allowing the agent to maintain semantic relevance while enforcing strict adherence to established legal taxonomies 🧠.
Agentic Reasoning and Strategic Modeling
The core of the 2026 update is the deployment of 'Reasoning Agents' that operate within a Zero-Trust verification loop. Unlike previous iterations, these agents do not merely forecast outcomes; they simulate judicial decision-making by analyzing judge-specific historical rulings and jurisdictional nuances in real-time 📑. This process involves a recursive feedback loop where each generated inference is cross-referenced with the Westlaw Precision corpus before being presented to the user.
- Deep Research Autonomy: The system independently plans multi-step research paths, identifying non-obvious precedents by executing iterative retrieval cycles across millions of court documents 📑.
- Strategic Vulnerability Mapping: Employs RAG-based adversarial patterns to identify weaknesses in legal arguments, simulating opposing counsel strategies to stress-test briefs 📑.
- Probabilistic Confidence Scoring: Instead of static percentages, the 2026 engine provides dynamic risk-scenario models that reflect real-time shifts in jurisdictional case law 🧠.
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Enterprise Data Governance and Integration
Interoperability is anchored in the Thomson Reuters Unified API, which facilitates the secure ingestion of firm-specific work products into the CoCounsel environment. The integration logic is designed to support the 'Bring Your Own Context' (BYOC) model, where firm-specific documents act as temporary contextual anchors for the agent 🧠. While the platform claims SOC2 Type II compliance for the entire AI stack, the specific encryption orchestration for transient agentic memory during Deep Research sessions is not publicly specified 🌑.
Evaluation Guidance
Technical evaluators should verify the following architectural characteristics:
- Agentic Reasoning Logs: Request access to the 'Deep Research' audit trails to verify the logical steps taken by the agent and ensure no critical precedents were bypassed during autonomous synthesis 🌑.
- Memory Persistence Policies: Validate how firm-specific context is cached and purged during long-running research sessions to ensure alignment with internal data retention mandates 🌑.
- Reasoning Trace Accuracy: Benchmark the grounding of 'Adversarial Simulations' against a verified set of approved legal strategies to measure the engine's ability to identify subtle jurisdictional contradictions ⌛.
Release History
Year-end update: Real-time courtroom analytics. Predict model now forecasts the probability of settlement vs. trial success with 92% accuracy.
Launch of 'Adversarial Testing'. CoCounsel acts as opposing counsel, identifying weaknesses in your legal strategy and suggesting counter-arguments.
Full integration with Westlaw Precision. Enabled CoCounsel to verify all AI-generated citations against the gold-standard 'KeyCite' system to eliminate hallucinations.
Official acquisition by Thomson Reuters for $650M. Strategic integration begins to unite CoCounsel with the world-leading Westlaw database.
Unveiling CoCounsel, the first legal assistant powered by GPT-4. Capable of document review, legal research, and deposition prep at human-level accuracy.
Launch of the 'Predict' module. Established a machine learning baseline for forecasting case outcomes based on litigation history.
Initial debut of CARA AI. Pioneered context-aware research where users could upload a brief to find relevant cases automatically.
Tool Pros and Cons
Pros
- Fast legal research
- Workflow automation
- Data-driven insights
- AI document analysis
- Relevant precedent ID
Cons
- Verification needed
- Potential cost
- Integration challenges