56 subscribers
با برنامه Player FM !
پادکست هایی که ارزش شنیدن دارند
حمایت شده
Scaling Machine Learning with Data Mesh // Shawn Kyzer // Coffee Sessions #116
Manage episode 338103156 series 3241972
MLOps Coffee Sessions #116 with Shawn Kyzer, Principal Data Engineer at Thoughtworks (Spain), Scaling Machine Learning with Data Mesh co-hosted by Adam Sroka.
// Abstract
You can't just get something done by using tools. You need to go much deeper than that and it is very clear that Data Mesh is the same thing. You have to educate the organization about the movement.
In this session, Shawn broke down the cultural piece of data mesh and how many parallels there are with the MLOps Movement when it comes to the cultural side of MLOps.
// Bio
Shawn is passionate about harnessing the power of data strategy, engineering, and analytics in order to help businesses uncover new opportunities. As an innovative technologist with over 13 years of experience, Shawn removes technology as a barrier and broadens the art of the possible for business and product leaders. His holistic view of technology and emphasis on developing and motivating strong engineering talent, with a focus on delivering outcomes whilst minimising outputs, is one of the characteristics which sets him apart from the crowd.
Shawn’s deep technical knowledge includes distributed computing, cloud architecture, data science, machine learning, and engineering analytics platforms. He has years of experience working as a consultant practitioner for a variety of prestigious clients ranging from secret clearance level government organizations to Fortune 500 companies.
// MLOps Jobs board
https://mlops.pallet.xyz/jobs
MLOps Swag/Merch
https://mlops-community.myshopify.com/
// Related Links
https://odsc.com/speakers/scaling-machine-learning-with-data-mesh/ https://docs.google.com/presentation/d/1rVtltHkRkP_JaGZdkAS3U_SXfr5Gg-RP980FKXh0YNU/edit?usp=sharing
--------------- ✌️Connect With Us ✌️ -------------
Join our slack community: https://go.mlops.community/slack
Follow us on Twitter: @mlopscommunity
Sign up for the next meetup: https://go.mlops.community/register
Catch all episodes, blogs, newsletters, and more: https://mlops.community/
Connect with Demetrios on LinkedIn: https://www.linkedin.com/in/dpbrinkm/
Connect with Adam on LinkedIn: https://www.linkedin.com/in/aesroka/
Connect with Shawn on LinkedIn: https://www.linkedin.com/in/shawn-kyzer-msit-mba-b5b8a4b/
Timestamps:
[00:00] Introduction to Shawn Kyzer
[00:43] Takeaways
[04:00] Data Mesh for ML projects
[11:22] The signal for the exploratory part of a new modeling project
[14:13] Ownership and centralization
[16:20] Lack of technology and some implementations literature
[17:10] Python stronghold from Microsoft blogs
[23:09] Integration with self-serve data platform
[25:31] Starting a platform team
[30:04] Quick wins
[32:09] Metrics monitoring
[34:18] Metrics break up
[38:32] Limit to capabilities and not worth doing
[41:39] Culture and technology holds
[44:03] Setting the foundation
[46:53] Unforeseen benefits
[52:19] Lightning question
441 قسمت
Manage episode 338103156 series 3241972
MLOps Coffee Sessions #116 with Shawn Kyzer, Principal Data Engineer at Thoughtworks (Spain), Scaling Machine Learning with Data Mesh co-hosted by Adam Sroka.
// Abstract
You can't just get something done by using tools. You need to go much deeper than that and it is very clear that Data Mesh is the same thing. You have to educate the organization about the movement.
In this session, Shawn broke down the cultural piece of data mesh and how many parallels there are with the MLOps Movement when it comes to the cultural side of MLOps.
// Bio
Shawn is passionate about harnessing the power of data strategy, engineering, and analytics in order to help businesses uncover new opportunities. As an innovative technologist with over 13 years of experience, Shawn removes technology as a barrier and broadens the art of the possible for business and product leaders. His holistic view of technology and emphasis on developing and motivating strong engineering talent, with a focus on delivering outcomes whilst minimising outputs, is one of the characteristics which sets him apart from the crowd.
Shawn’s deep technical knowledge includes distributed computing, cloud architecture, data science, machine learning, and engineering analytics platforms. He has years of experience working as a consultant practitioner for a variety of prestigious clients ranging from secret clearance level government organizations to Fortune 500 companies.
// MLOps Jobs board
https://mlops.pallet.xyz/jobs
MLOps Swag/Merch
https://mlops-community.myshopify.com/
// Related Links
https://odsc.com/speakers/scaling-machine-learning-with-data-mesh/ https://docs.google.com/presentation/d/1rVtltHkRkP_JaGZdkAS3U_SXfr5Gg-RP980FKXh0YNU/edit?usp=sharing
--------------- ✌️Connect With Us ✌️ -------------
Join our slack community: https://go.mlops.community/slack
Follow us on Twitter: @mlopscommunity
Sign up for the next meetup: https://go.mlops.community/register
Catch all episodes, blogs, newsletters, and more: https://mlops.community/
Connect with Demetrios on LinkedIn: https://www.linkedin.com/in/dpbrinkm/
Connect with Adam on LinkedIn: https://www.linkedin.com/in/aesroka/
Connect with Shawn on LinkedIn: https://www.linkedin.com/in/shawn-kyzer-msit-mba-b5b8a4b/
Timestamps:
[00:00] Introduction to Shawn Kyzer
[00:43] Takeaways
[04:00] Data Mesh for ML projects
[11:22] The signal for the exploratory part of a new modeling project
[14:13] Ownership and centralization
[16:20] Lack of technology and some implementations literature
[17:10] Python stronghold from Microsoft blogs
[23:09] Integration with self-serve data platform
[25:31] Starting a platform team
[30:04] Quick wins
[32:09] Metrics monitoring
[34:18] Metrics break up
[38:32] Limit to capabilities and not worth doing
[41:39] Culture and technology holds
[44:03] Setting the foundation
[46:53] Unforeseen benefits
[52:19] Lightning question
441 قسمت
همه قسمت ها
×
1 A Candid Conversation Around MCP and A2A // Rahul Parundekar and Sam Partee // #316 SF Live 1:04:42

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

1 GraphBI: Expanding Analytics to All Data Through the Combination of GenAI, Graph, & Visual Analytics // Paco Nathan & Weidong Yang // #310 1:14:01

1 I Am Once Again Asking "What is MLOps?" // Oleksandr Stasyk // #308 1:07:22

1 Agents of Innovation: AI-Powered Product Ideation with Synthetic Consumer Testing // Luca Fiaschi // #306 1:02:23

1 We're All Finetuning Incorrectly // Tanmay Chopra // #304 1:00:30






1 From Rules to Reasoning Engines // George Mathew // #296 1:05:26

1 GenAI Traffic: Why API Infrastructure Must Evolve... Again // Erica Hughberg // #296 1:06:24

1 Future of Software, Agents in the Enterprise, and Inception Stage Company Building // Eliot Durbin // #293 54:26

1 The Agent Landscape - Lessons Learned Putting Agents Into Production 1:08:40

1 Evolving Workflow Orchestration // Alex Milowski // #291 1:14:34




1 Navigating Machine Learning Careers: Insights from Meta to Consulting // Ilya Reznik // #286 1:00:36


1 Machine Learning, AI Agents, and Autonomy // Egor Kraev // #282 1:05:20
به Player FM خوش آمدید!
Player FM در سراسر وب را برای یافتن پادکست های با کیفیت اسکن می کند تا همین الان لذت ببرید. این بهترین برنامه ی پادکست است که در اندروید، آیفون و وب کار می کند. ثبت نام کنید تا اشتراک های شما در بین دستگاه های مختلف همگام سازی شود.