מה צריך לדעת לפני
שתתחיל
מתחיל 4 June 2026 08:36
נגמר 4 June 2026
00
ימים
00
שעות
00
דקות
00
שניות
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
- Fundamentals of Machine Learning
- Data Understanding and Preprocessing
- Model Selection and Training
- Model Evaluation and Validation
- Deploying Machine Learning Models
- Monitoring and Maintenance
- Automation in MLOps
- Case Studies and Real-World Applications
- Emerging Trends in MLOps
- Course Review and Capstone Project
Overview of MLOps and its importance
Key differences between MLOps and traditional DevOps
Business benefits of implementing MLOps
Supervised vs. Unsupervised Learning
Overview of Popular Machine Learning Models
Introduction to Model Evaluation Metrics
Data Collection and Exploration
Data Cleaning and Transformation
Feature Selection and Engineering
Choosing the Right Model for the Problem
Hyperparameter Tuning Techniques
Training Robust ML Models
Cross-Validation Techniques
Bias-Variance Tradeoff
Performance Metrics Analysis
Model Packaging with Docker and Kubernetes
Continuous Integration/Continuous Deployment (CI/CD) for ML Models
Scaling Solutions for Production Environments
Monitoring Model Performance in Production
Handling Concept Drift and Data Drift
Retraining and Updating Models
Automation of ML Pipelines with Tools (e.g., MLflow, Kubeflow)
Automated Testing and Validation of Models
Leveraging Infrastructure as Code (IaC) for ML
MLOps in Retail, Finance, Healthcare
Case Study: End-to-End MLOps Pipeline
Lessons Learned from MLOps Implementations
Explainability and Ethics in AI
Privacy-Preserving Machine Learning
Future Directions in MLOps
Course Summation and Review
Capstone Project: Building and Deploying an Automated ML Solution
Feedback and Course Wrap-up
נושאים
Conference Talks