[Exclusive] QuantumBlack Round-table // Gen AI Buy vs Build, Commercial vs Open Source
Join our virtual conference 'AI in Production': https://home.mlops.community/home/events/ai-in-production-2024-02-15
MLOps Coffee Sessions Special episode with QuantumBlack, AI by McKinsey, GenAI Buy vs Build, Commercial vs Open Source, fueled by our Premium Brand Partner, Quantum Black
Do you build or buy?
Check the QuantumBlack team discussing the different sides of buying vs building your own GenAI solution.
Let's look at the trade-offs companies need to make - including some of the considerations of using black box solutions that do not provide transparency on what data sources were used.
Whether you are a business leader or a developer exploring the space of GenAI, this talk provides you with valuable insights to prepare you for how you can be more informed and prepared for navigating this fast-moving space.
// Bio
Ilona Logvinova
Ilona Logvinova is the Head of Innovation for McKinsey Legal, working across the legal department to identify, lead, and implement cross-cutting and impactful innovation initiatives, covering legal technologies and reimagination of the profession initiatives. At McKinsey Ilona is also Managing Counsel for McKinsey Digital, working closely with emerging technologies across use cases and industries. Prior to joining McKinsey, Ilona was Senior Counsel at Mastercard, where she worked on ground-up technology builds and tech transactions to leverage the company’s core assets and explore broader partnership opportunities. Prior to Mastercard, Ilona was an Associate at Fried Frank, where she specialized in leveraged finance representing borrowers and lenders in secured and unsecured financings. Ilona has a BA from Columbia University with a joint major in Economics and Philosophy and her JD from the Benjamin N. Cardozo School of Law. In her spare time, Ilona enjoys salsa dancing, and exploring her longtime hometown of New York City and its culture; indulging in theatre, independent film, the culinary landscape, and the arts – especial
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