Sun.Mar 11, 2018

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ALSP – Not Just Your Daddy’s LPO, Part Two: eDiscovery Trends

eDiscovery Daily

Editor’s Note: Tom O’Connor is a nationally known consultant, speaker, and writer in the field of computerized litigation support systems. He has also been a great addition to our webinar program, participating with me on several recent webinars. Tom also wrote a terrific four part informational overview on Europe’s General Data Protection Regulation (GDPR) titled eDiscovery and the GDPR: Ready or Not, Here it Comes (and participated with me on a webcast on the same topic) and wrote another te

GDPR 28
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VA launches platform for developers to build apps for vets

Information Management Resources

Lighthouse Lab will help test APIs enabling veterans to gain access to healthcare information.

Access 37
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PDPC Responds to Feedback On The Public Consultation On Approaches to Managing Personal Data In The Digital Economy Introduction

Data Protection Report

Introduction. On 1 February 2018, Singapore Personal Data Protection Commission ( PDPC ) released its response to feedback on its public consultation on approaches to managing personal data in the digital economy, which took place in Q3 2017 (the Public Consultation ). The purpose of the Public Consultation, was to seek public feedback on proposed changes to Singapore’s data protection regime, the Personal Data Protection Act ( PDPA ).

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Pilot to recruit patients to share EHR data with researchers

Information Management Resources

Four major health IT vendors and 13 provider sites are looking to enroll a total of 1,300 participants.

IT 29
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Peak Performance: Continuous Testing & Evaluation of LLM-Based Applications

Speaker: Aarushi Kansal, AI Leader & Author and Tony Karrer, Founder & CTO at Aggregage

Software leaders who are building applications based on Large Language Models (LLMs) often find it a challenge to achieve reliability. It’s no surprise given the non-deterministic nature of LLMs. To effectively create reliable LLM-based (often with RAG) applications, extensive testing and evaluation processes are crucial. This often ends up involving meticulous adjustments to prompts.