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MLOps for DevOps People
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Manage episode 438453184 series 2483573
Bret and Nirmal are joined by Maria Vechtomova, a MLOps Tech Lead and co-founder of Marvelous MLOps, to discuss the obvious and not-so obvious differences between a MLOps Engineer and traditional DevOps jobs.
š My next course is coming soon! I've opened the waitlist for those wanting to go deep in GitHub Actions for DevOps and AI automation in 2025. I'm so thrilled to announce this course. The waitlist allows you to quickly sign up for some content updates, discounts, and more as I finish building the course. https://learn.bretfisher.com/waitlistš¾
Maria is here to discuss how DevOps engineers can adopt and operate machine learning workloads, also known as MLOps. With her expertise, we'll explore the challenges and best practices for implementing ML in a DevOps environment, including some hot takes on using Kubernetes.
There's also a video version to watch on YouTube.
ā
Topicsā
Marvelous MLOps on LinkedIn
Marvelous MLOps Substack
Marvelous MLOps YouTube Channel
Creators & Guests
- Cristi Cotovan - Editor
- Beth Fisher - Producer
- Bret Fisher - Host
- Maria Vechtomova - Guest
- Nirmal Mehta - Host
- (00:00) - Intro
- (02:04) - Maria's Content
- (03:22) - Tools and Technologies in MLOps
- (09:21) - DevOps vs MLOps: Key Differences
- (19:22) - Transitioning from DevOps to MLOps
- (22:52) - Model Accuracy vs Computational Efficiency
- (24:46) - MLOps with Sensitive Data
- (29:10) - MLOps Roadmap and Getting Started
- (32:36) - Tools and Platforms for MLOps
- (37:14) - Adapting MLOps Practices to Future Trends
- (44:08) - Is Golang an Option for CI/CD Automation?
You can also support my free material by subscribing to my YouTube channel and my weekly newsletter at bret.news!
Grab the best coupons for my Docker and Kubernetes courses.
Join my cloud native DevOps community on Discord.
Grab some merch at Bret's Loot Box
Homepage bretfisher.com
189 episodes
Fetch error
Hmmm there seems to be a problem fetching this series right now. Last successful fetch was on October 09, 2025 17:11 ()
What now? This series will be checked again in the next day. If you believe it should be working, please verify the publisher's feed link below is valid and includes actual episode links. You can contact support to request the feed be immediately fetched.
Manage episode 438453184 series 2483573
Bret and Nirmal are joined by Maria Vechtomova, a MLOps Tech Lead and co-founder of Marvelous MLOps, to discuss the obvious and not-so obvious differences between a MLOps Engineer and traditional DevOps jobs.
š My next course is coming soon! I've opened the waitlist for those wanting to go deep in GitHub Actions for DevOps and AI automation in 2025. I'm so thrilled to announce this course. The waitlist allows you to quickly sign up for some content updates, discounts, and more as I finish building the course. https://learn.bretfisher.com/waitlistš¾
Maria is here to discuss how DevOps engineers can adopt and operate machine learning workloads, also known as MLOps. With her expertise, we'll explore the challenges and best practices for implementing ML in a DevOps environment, including some hot takes on using Kubernetes.
There's also a video version to watch on YouTube.
ā
Topicsā
Marvelous MLOps on LinkedIn
Marvelous MLOps Substack
Marvelous MLOps YouTube Channel
Creators & Guests
- Cristi Cotovan - Editor
- Beth Fisher - Producer
- Bret Fisher - Host
- Maria Vechtomova - Guest
- Nirmal Mehta - Host
- (00:00) - Intro
- (02:04) - Maria's Content
- (03:22) - Tools and Technologies in MLOps
- (09:21) - DevOps vs MLOps: Key Differences
- (19:22) - Transitioning from DevOps to MLOps
- (22:52) - Model Accuracy vs Computational Efficiency
- (24:46) - MLOps with Sensitive Data
- (29:10) - MLOps Roadmap and Getting Started
- (32:36) - Tools and Platforms for MLOps
- (37:14) - Adapting MLOps Practices to Future Trends
- (44:08) - Is Golang an Option for CI/CD Automation?
You can also support my free material by subscribing to my YouTube channel and my weekly newsletter at bret.news!
Grab the best coupons for my Docker and Kubernetes courses.
Join my cloud native DevOps community on Discord.
Grab some merch at Bret's Loot Box
Homepage bretfisher.com
189 episodes
All episodes
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