DevOps, DataOps, MLOps
Learn how to apply Machine Learning Operations (MLOps) to solve real-world problems. The course covers end-to-end solutions with Artificial Intelligence (AI) pair programming using technologies like GitHub Copilot to build solutions for machine learning (ML) and AI applications. This course is for people working (or seeking to work) as data scientists, software engineers or developers, data analysts, or other roles that use ML.
By the end of the course, you will be able to use web frameworks (e.g., Gradio and Hugging Face) for ML solutions, build a command-line tool using the Click framework, and leverage Rust for GPU-accelerated ML tasks.
Week 1: Explore MLOps technologies and pre-trained models to solve problems for customers.
Week 2: Apply ML and AI in practice through optimization, heuristics, and simulations.
Week 3: Develop operations pipelines, including DevOps, DataOps, and MLOps, with Github.
Week 4: Build containers for ML and package solutions in a uniformed manner to enable deployment in Cloud systems that accept containers.
Week 5: Switch from Python to Rust to build solutions for Kubernetes, Docker, Serverless, Data Engineering, Data Science, and MLOps.
Watch on Coursera ↗
(saves to browser)
Sign in to unlock AI tutor explanation · ⚡30
More on: AI Pair Programming
View skill →Related AI Lessons
⚡
⚡
⚡
⚡
Role of Model Architecture In Inference — Inference Series
Medium · Machine Learning
Role of Model Architecture In Inference — Inference Series
Medium · Deep Learning
What isn’t said clearly
cannot be relied on as truth.
Medium · Deep Learning
The Idempotency Nightmare in AI Pipelines: Data Loss and Recovery
Dev.to AI
🎓
Tutor Explanation
DeepCamp AI