Machine Learning Operations (MLOps) for Generative AI

This live training will provide an in-depth understanding of how MLOps principles are applied to the development, deployment, and management of generative AI models. Participants will learn best practices for operationalizing AI in real-world scenarios.
Duration: 1 Day
Hours: 2 Hours
Training: Live Training
Training Level: All Level
Live Session
Single Attendee
$149.00 $249.00
Live Session
Recorded
Single Attendee
$199.00 $332.00
6 month Access for Recorded
Live+Recorded
Single Attendee
$249.00 $416.00
6 month Access for Recorded

About the Course:

In this hands-on, live training, participants will explore the intersection of Machine Learning Operations (MLOps) and Generative AI. The session will cover the entire lifecycle of AI models, from data collection and model training to deployment, monitoring, and scaling. We’ll dive into the unique challenges posed by generative models, like GPT and DALL·E, and explore the tools, practices, and frameworks needed to manage these models at scale. Participants will leave with practical knowledge of MLOps techniques and strategies that can be immediately applied to generative AI projects.

Course Objective:

  • Understand the fundamental concepts and importance of MLOps in generative AI.
  • Learn best practices for deploying, monitoring, and scaling generative AI models.
  • Gain hands-on experience with MLOps tools for versioning, testing, and automating model pipelines.
  • Explore the lifecycle of generative AI projects, including data handling, model training, and continuous delivery.
  • Learn how to implement security, compliance, and ethical considerations in MLOps for generative AI.
  • Develop strategies for managing model performance, drift, and monitoring in real-time production environments.

Who is the Target Audience?

  • AI Engineers and Data Scientists
  • MLOps Engineers
  • Software Engineers working with AI systems
  • Machine Learning/AI Researchers
  • DevOps professionals interested in MLOps
  • Product Managers and CTOs working with AI-powered products

Basic Knowledge:

  • Basic understanding of machine learning and AI concepts
  • Familiarity with Python and machine learning frameworks (TensorFlow, PyTorch, etc.)
  • Basic knowledge of DevOps practices and cloud platforms (AWS, GCP, Azure)
  • Understanding of software development lifecycle (SDLC) concepts

Curriculum
Total Duration: 2 Hours
Introduction to MLOps and Generative AI

  • What is MLOps?  
  • Why MLOps matters for generative AI  
  • Key challenges in generative AI model lifecycle management  

End-to-End MLOps Pipeline for Generative AI

  • Data pipeline: Preprocessing, augmentation, and storage for generative models  
  • Model development: Training, fine-tuning, and versioning  
  • Model deployment: Continuous integration and continuous delivery (CI/CD) for generative AI models  

Tools and Platforms for MLOps

  • Overview of popular MLOps tools: MLflow, Kubeflow, TFX, Metaflow  
  • Managing experiments and model versioning  
  • Integrating generative AI models into a CI/CD pipeline  

Model Monitoring, Evaluation, and Scaling

  • Performance metrics for generative AI models (e.g., loss, accuracy, quality)  
  • Handling model drift and continuous retraining  
  • Scaling generative models in production (GPU/TPU considerations, distributed computing)  

Security, Ethics, and Compliance in MLOps

  • Privacy concerns in generative AI (e.g., data privacy, model explainability)  
  • Bias and fairness in generative models  
  • Ensuring compliance with industry regulations (GDPR, HIPAA, etc.)  

Case Studies and Real-world Applications

  • Real-life case studies of MLOps in generative AI (e.g., GPT-3/4, image generation models like DALL·E)  
  • Challenges and lessons learned from scaling generative AI in production  

Best Practices and Future Trends in MLOps for Generative AI

  • Future trends in AI and MLOps (e.g., autoML, AI governance)  
  • Best practices for managing generative AI systems at scale  

Q&A