The Data Exchange with Ben Lorica
En podcast av Ben Lorica - Torsdagar
![](https://is1-ssl.mzstatic.com/image/thumb/Podcasts211/v4/dc/3b/13/dc3b1304-aa2c-ae0f-06c1-d4a109610167/mza_13312015929661048725.jpg/300x300bb-75.jpg)
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270 Avsnitt
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Applications of Knowledge Graphs
Publicerades: 2022-01-13 -
Key AI and Data Trends for 2022
Publicerades: 2022-01-06 -
Large Language Models
Publicerades: 2021-12-30 -
Data and Machine Learning Platforms at Shopify
Publicerades: 2021-12-23 -
What is AI Engineering?
Publicerades: 2021-12-16 -
NLP and AI in Financial Services
Publicerades: 2021-12-09 -
Modern Experimentation Platforms
Publicerades: 2021-12-02 -
Reinforcement Learning in Real-World Applications
Publicerades: 2021-11-24 -
MLOps Anti-Patterns
Publicerades: 2021-11-18 -
Why You Need a Modern Metadata Platform
Publicerades: 2021-11-11 -
Making Large Language Models Smarter
Publicerades: 2021-11-04 -
AI Begins With Data Quality
Publicerades: 2021-10-28 -
Modernizing Data Integration
Publicerades: 2021-10-21 -
Deploying Machine Learning Models Safely and Systematically
Publicerades: 2021-10-14 -
Large-scale machine learning and AI on multi-modal data
Publicerades: 2021-10-07 -
Machine Learning in Astronomy and Physics
Publicerades: 2021-09-30 -
The Unreasonable Effectiveness of Multiple Dispatch
Publicerades: 2021-09-23 -
How To Lead In Data Science
Publicerades: 2021-09-16 -
Why interest in graph databases and graph analytics are growing
Publicerades: 2021-09-09 -
The State of Data Journalism
Publicerades: 2021-09-02
A series of informal conversations with thought leaders, researchers, practitioners, and writers on a wide range of topics in technology, science, and of course big data, data science, artificial intelligence, and related applications. Anchored by Ben Lorica (@BigData), the Data Exchange also features a roundup of the most important stories from the worlds of data, machine learning and AI. Detailed show notes for each episode can be found on https://thedataexchange.media/ The Data Exchange podcast is a production of Gradient Flow [https://gradientflow.com/].