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Data Management Discovery Trial Preparation

EDRM - Electronic Discovery Reference Model

The Legal Ops Advantage: Why Smart Lawyers Don’t Go It Alone

Picture this: you’re in-house counsel, and your company’s just been sued. But you’ve seen this film before. You know (with reasonable certainty) how much it’ll cost to get from complaint to Rule 26, through discovery, motions...more

EDRM - Electronic Discovery Reference Model

Trial Exhibit Management

During a panel on trial practice at the recent Masters’ Conference in Los Angeles, moderated by Professor Shannon Bales, panelists emphasized the critical role of consistency—blending humor, real-world anecdotes, and...more

EDRM - Electronic Discovery Reference Model

Creating a Compelling Argument in the BP Trial: Halliburton’s Closing

In our recent articles exploring how generative AI can transform trial preparation, we demonstrated how Large Language Models (LLMs) could analyze complex trial materials to generate sophisticated closing arguments. Our first...more

EDRM - Electronic Discovery Reference Model

Using Generative AI to Create Compelling Closing Arguments in Complex Litigation

In our recent article “Understanding GenAI Response Limits: What Every Legal Professional Should Know,” we explored how legal professionals can overcome the traditional length limitations of Large Language Models that...more

Baker Donelson

Sitting with the C-Suite: Breaking Boundaries on the Traditional War Room

Baker Donelson on

AJ Shankar is the chief executive officer of Everlaw. Prior to founding Everlaw, AJ graduated from Harvard with an A.B. in Mathematics and Computer Science, and received his Ph.D. in Computer Science from the University of...more

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