56 subscribers
התחל במצב לא מקוון עם האפליקציה Player FM !
פודקאסטים ששווה להאזין
בחסות
Hierarchy of Machine Learning Needs // Phil Winder // MLOps Meetup #3
Manage episode 313294552 series 3241972
MLOps community meetup #3! Last Wednesday we talked to Phil Winder, CEO, Winder Research.
//Abstract
Phil Winder of Winder Research joined us for the 3rd instalment of our MLOps community meetup. In this clip taken from the long conversation, he speaks about why or why not he sees companies automating the retraining of Machine Learning Models. You can find the whole conversation here: https://www.youtube.com/watch?v=MRES5IxVnME
The topic of conversation for our virtual meetup was an in-depth look at a pyramid of software engineering best practices that built up to incorporate data science best practices. That is to say, we analyzed “the essentials”, "nice to have" and "optimal" ways of doing data science.
Machine Learning/Data Science/AI is an extension of the technical stack. So you can't really talk about Data science best practices without accidentally talking about software engineering best practices. For example, model provenance doesn't count for anything if you don't have code or container provenance. Just as Maslow has the basic human needs so too do we have basic MLOps needs. Where does "MLOps", as a "thing", starts and end? For example, the four very reasonable best practices of the operation of models, but these are usually consumed into higher-level abstractions because there is a lot more to do than "just" provenance.
//Bio
Dr Phil Winder is a multidisciplinary software engineer and data scientist. As the CEO of Winder Research, a Cloud-Native data science consultancy, he helps startups and enterprises improve their data-based processes, platforms, and products. Phil specializes in implementing production-grade cloud-native machine learning and was an early champion of the MLOps movement. More recently, Phil has authored a book on Reinforcement Learning (RL) (https://rl-book.com) which provides an in-depth introduction of industrial RL to engineers. He has thrilled thousands of engineers with his data science training courses in public, private, and on the O’Reilly online learning platform. Phil’s courses focus on using data science in industry and cover a wide range of hot yet practical topics, from cleaning data to deep reinforcement learning. He is a regular speaker and is active in the data science community. Phil holds a PhD and M.Eng. in electronic engineering from the University of Hull and lives in Yorkshire, U.K., with his brewing equipment and family.
//This was a virtual fireside chat between Phil Winder and Demetrios Brinkmann. relevant links can be found below:
Join our MLOps slack community: https://bit.ly/3aOTwgR
Connect with Demetrios on LinkedIn: https://www.linkedin.com/in/dpbrinkm/
Connect with Phil on LinkedIn: https://www.linkedin.com/in/drphilwinder/
Follow Phil on Twitter: https://twitter.com/DrPhilWinder
Learn more about Phil's company Winder research: https://winderresearch.com/
445 פרקים
Manage episode 313294552 series 3241972
MLOps community meetup #3! Last Wednesday we talked to Phil Winder, CEO, Winder Research.
//Abstract
Phil Winder of Winder Research joined us for the 3rd instalment of our MLOps community meetup. In this clip taken from the long conversation, he speaks about why or why not he sees companies automating the retraining of Machine Learning Models. You can find the whole conversation here: https://www.youtube.com/watch?v=MRES5IxVnME
The topic of conversation for our virtual meetup was an in-depth look at a pyramid of software engineering best practices that built up to incorporate data science best practices. That is to say, we analyzed “the essentials”, "nice to have" and "optimal" ways of doing data science.
Machine Learning/Data Science/AI is an extension of the technical stack. So you can't really talk about Data science best practices without accidentally talking about software engineering best practices. For example, model provenance doesn't count for anything if you don't have code or container provenance. Just as Maslow has the basic human needs so too do we have basic MLOps needs. Where does "MLOps", as a "thing", starts and end? For example, the four very reasonable best practices of the operation of models, but these are usually consumed into higher-level abstractions because there is a lot more to do than "just" provenance.
//Bio
Dr Phil Winder is a multidisciplinary software engineer and data scientist. As the CEO of Winder Research, a Cloud-Native data science consultancy, he helps startups and enterprises improve their data-based processes, platforms, and products. Phil specializes in implementing production-grade cloud-native machine learning and was an early champion of the MLOps movement. More recently, Phil has authored a book on Reinforcement Learning (RL) (https://rl-book.com) which provides an in-depth introduction of industrial RL to engineers. He has thrilled thousands of engineers with his data science training courses in public, private, and on the O’Reilly online learning platform. Phil’s courses focus on using data science in industry and cover a wide range of hot yet practical topics, from cleaning data to deep reinforcement learning. He is a regular speaker and is active in the data science community. Phil holds a PhD and M.Eng. in electronic engineering from the University of Hull and lives in Yorkshire, U.K., with his brewing equipment and family.
//This was a virtual fireside chat between Phil Winder and Demetrios Brinkmann. relevant links can be found below:
Join our MLOps slack community: https://bit.ly/3aOTwgR
Connect with Demetrios on LinkedIn: https://www.linkedin.com/in/dpbrinkm/
Connect with Phil on LinkedIn: https://www.linkedin.com/in/drphilwinder/
Follow Phil on Twitter: https://twitter.com/DrPhilWinder
Learn more about Phil's company Winder research: https://winderresearch.com/
445 פרקים
All episodes
×
1 Bridging the Gap Between AI and Business Data // Deepti Srivastava // #325 57:13

1 The Creator of FastAPI’s Next Chapter // Sebastián Ramírez // #324 1:09:37

1 Everything Hard About Building AI Agents Today 47:02

1 Tricks to Fine Tuning // Prithviraj Ammanabrolu // #318 54:01

1 Packaging MLOps Tech Neatly for Engineers and Non-engineers // Jukka Remes // #322 55:30

1 Hard Learned Lessons from Over a Decade in AI 48:42

1 Product Metrics are LLM Evals // Raza Habib CEO of Humanloop // #320 53:06

1 Getting AI Apps Past the Demo // Vaibhav Gupta // #319 50:29

1 Building Out GPU Clouds // Mohan Atreya // #317 47:57

1 A Candid Conversation Around MCP and A2A // Rahul Parundekar and Sam Partee // #316 SF Live 1:04:42

1 AI in M&A: Building, Buying, and the Future of Dealmaking // Kison Patel // #315 55:32

1 AI, Marketing, and Human Decision Making // Fausto Albers // #313 49:40

1 MLOps with Databricks // Maria Vechtomova // #314 52:43

1 Making AI Reliable is the Greatest Challenge of the 2020s // Alon Bochman // #312 1:01:37

1 Behavior Modeling, Secondary AI Effects, Bias Reduction & Synthetic Data // Devansh Devansh // #311 1:01:35
ברוכים הבאים אל Player FM!
Player FM סורק את האינטרנט עבור פודקאסטים באיכות גבוהה בשבילכם כדי שתהנו מהם כרגע. זה יישום הפודקאסט הטוב ביותר והוא עובד על אנדרואיד, iPhone ואינטרנט. הירשמו לסנכרון מנויים במכשירים שונים.