מה צריך לדעת לפני
שתתחיל

מתחיל 4 June 2026 08:36

נגמר 4 June 2026

00 ימים
00 שעות
00 דקות
00 שניות
course image

MLOps - Automated Machine Learning Made Easy

Explore AI and ML optimization techniques to enhance business outcomes through data understanding and model improvement.
MLCon | Machine Learning Conference via YouTube

MLCon | Machine Learning Conference

6076 קורסים


45 minutes

שדרוג אופציונלי זמין

Not Specified

התקדמות בקצב שלך

Conference Talk

שדרוג אופציונלי זמין

סקירה כללית

Explore AI and ML optimization techniques to enhance business outcomes through data understanding and model improvement.

סילבוס

  • Introduction to MLOps
  • Overview of MLOps and its importance
    Key differences between MLOps and traditional DevOps
    Business benefits of implementing MLOps
  • Fundamentals of Machine Learning
  • Supervised vs. Unsupervised Learning
    Overview of Popular Machine Learning Models
    Introduction to Model Evaluation Metrics
  • Data Understanding and Preprocessing
  • Data Collection and Exploration
    Data Cleaning and Transformation
    Feature Selection and Engineering
  • Model Selection and Training
  • Choosing the Right Model for the Problem
    Hyperparameter Tuning Techniques
    Training Robust ML Models
  • Model Evaluation and Validation
  • Cross-Validation Techniques
    Bias-Variance Tradeoff
    Performance Metrics Analysis
  • Deploying Machine Learning Models
  • Model Packaging with Docker and Kubernetes
    Continuous Integration/Continuous Deployment (CI/CD) for ML Models
    Scaling Solutions for Production Environments
  • Monitoring and Maintenance
  • Monitoring Model Performance in Production
    Handling Concept Drift and Data Drift
    Retraining and Updating Models
  • Automation in MLOps
  • Automation of ML Pipelines with Tools (e.g., MLflow, Kubeflow)
    Automated Testing and Validation of Models
    Leveraging Infrastructure as Code (IaC) for ML
  • Case Studies and Real-World Applications
  • MLOps in Retail, Finance, Healthcare
    Case Study: End-to-End MLOps Pipeline
    Lessons Learned from MLOps Implementations
  • Emerging Trends in MLOps
  • Explainability and Ethics in AI
    Privacy-Preserving Machine Learning
    Future Directions in MLOps
  • Course Review and Capstone Project
  • Course Summation and Review
    Capstone Project: Building and Deploying an Automated ML Solution
    Feedback and Course Wrap-up

נושאים

Conference Talks