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Il y a 2 modules dans ce cours
Stop letting manual deployments create bottlenecks and introduce risk. Automate, Evaluate and Deploy ML Models Confidently is a hands-on course designed for ML engineers and data scientists ready to master production-grade MLOps. You will move beyond chasing simple accuracy scores and learn to make sophisticated, data-driven decisions by analyzing hyperparameter optimization trials from Optuna, expertly balancing technical performance with critical business KPIs like inference cost and latency.
The core of this course is building a complete CI/CD pipeline from the ground up using GitHub Actions. You will integrate MLflow for end-to-end experiment tracking and reproducibility, and implement crucial validation gates that automatically prevent underperforming models from ever reaching production. You will leave this course with a portfolio-ready project that proves you can build, manage, and deploy reliable, automated, and scalable machine learning systems with confidence, bridging the critical gap between experimentation and real-world value. Upon completion, learners are encouraged to deepen their expertise with the "MLOps Specialization" or explore advanced model techniques in the "Deep Learning Specialization".
This module teaches learners how to move beyond simple accuracy metrics to make sophisticated, data-driven model selection decisions. By analyzing hyperparameter optimization results, learners will master the art of balancing technical performance with real-world business value and resource constraints, ensuring they choose the right model for the job.
Inclus
2 vidéos1 lecture2 devoirs1 laboratoire non noté
Afficher les informations sur le contenu du module
2 vidéos•Total 13 minutes
More Accurate Isn't Always Better •6 minutes
Analyzing Logs with Optuna •7 minutes
1 lecture•Total 10 minutes
Foundations of Model Selection: Trade-offs and the Pareto Front•10 minutes
2 devoirs•Total 21 minutes
Critique the Recommendation •15 minutes
Knowledge Check•6 minutes
1 laboratoire non noté•Total 30 minutes
Analyze Optuna Trials and Recommend a Model•30 minutes
Continuous Integration for ML Workflows
Module 2•2 heures à terminer
Détails du module
This module transitions from analysis to automation. Learners will build a complete CI/CD pipeline using GitHub Actions to automatically retrain, evaluate, and deploy models. This ensures a reliable, repeatable, and scalable path to production, bridging the gap between experimentation and operations.
Inclus
3 vidéos1 lecture3 devoirs
Afficher les informations sur le contenu du module
3 vidéos•Total 23 minutes
From Manual Drudgery to Automated Deployment •7 minutes
Setting Up a Python Environment for Reliable CI/CD (Part 1)•7 minutes
Configuring a CI/CD Pipeline for Model Training and Validation•9 minutes
1 lecture•Total 7 minutes
The CI/CD Blueprint for ML•7 minutes
3 devoirs•Total 65 minutes
Assemble and Run a Production CI Pipeline for ML•30 minutes
Debug the Broken Pipeline•5 minutes
Model Automation and Deployment Project•30 minutes
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