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Casetext’s acquisition by Thomson Reuters illustrates the present-day limitations of large language models trained primarily on caselaw. But really, you know, his original baby since what 2018 2017. It’s been trained on caselaw. And if not, AI, on this machinelearning Large Language Models specifically?
Context leverages machinelearning and natural language processing from Ravel, a company LexisNexis acquired in 2017. Context can help identify the caselaw judges and adversaries rely on the most, and how likely a court is to grant their motions. Context is also a helpful tool outside of the courtroom.
Casetext’s acquisition by Thomson Reuters illustrates the present-day limitations of large language models trained primarily on caselaw. But really, you know, his original baby since what 2018 2017. It’s been trained on caselaw. And if not, AI, on this machinelearning Large Language Models specifically?
Most legal tech startups make bold declarations about public interest, access to justice and democratizing the law when it suits them. Caselaw books waiting to be scanned. Harvard would contribute the law books and run the scanning process inside the law library. We also couldn’t keep digitizing the law forever.
Demo video: [link] Founded: 9/1/2017, Birmingham, MI Target customer: Law firms (all sizes), corporate legal departments, and eDiscovery service providers (our current paying customers are law firms). Who are your competitors? No one is providing exactly what Altumatim offers. and Beagle. What makes you unique or innovative?
Most legal tech startups make bold declarations about public interest, access to justice and democratizing the law when it suits them. Caselaw books waiting to be scanned. Harvard would contribute the law books and run the scanning process inside the law library. We also couldn’t keep digitizing the law forever.
Demo video: [link] Founded: 9/1/2017, Birmingham, MI Target customer: Law firms (all sizes), corporate legal departments, and eDiscovery service providers (our current paying customers are law firms). Who are your competitors? No one is providing exactly what Altumatim offers. and Beagle. What makes you unique or innovative?
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