Course Content
Module 1: Current Challenges in eDiscovery
Traditional eDiscovery Pain Points The Data Deluge: Volume, Velocity, Variety Cost and Time Implications Human Error and Inconsistency
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Module 2: How AI Supports Document Review
Introduction to AI in Legal Machine Learning Fundamentals for eDiscovery Natural Language Processing (NLP) in Document Review AI-Powered Document Classification and Tagging
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Module 3: Predictive Coding & Clustering
Understanding Predictive Coding (Technology Assisted Review - TAR) Active Learning Workflows Clustering for Conceptual Grouping Sampling and Validation Techniques
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Module 4: Producing with Precision: Bates Stamping & Redaction
Automated Bates Stamping with AI AI-Assisted Redaction for PII/PHI Quality Control and Verification of AI Outputs
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Module 5: Integrating with LegalGPTs eDiscovery Tools
Overview of LegalGPTs Platform Hands-on with LegalGPTs AI Features Workflow Integration Strategies Case Studies: Success Stories with LegalGPTs
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Module 6: Cost Savings and Compliance Considerations
Quantifying ROI of AI in eDiscovery Ethical Considerations of AI in Legal Practice Data Security and Privacy with AI Tools Regulatory Compliance and Best Practices
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AI for eDiscovery: From Collection to Production

Effective integration of AI tools into your existing eDiscovery workflows is crucial for maximizing their benefits. This section will discuss best practices for:

Designing efficient AI-driven workflows.
Training your team to leverage AI tools effectively.
Measuring the impact of AI on your eDiscovery process.
Seamlessly integrating LegalGPTs with other legal tech solutions.