What Is MLOps and
How Does It Work in
AI Projects?
iabac.org‌
MLOps stands for Machine Learning Operations.‌
It combines machine learning (ML) with DevOps
principles.‌
Focuses on automating ML model development,‌
‌
deployment, and monitoring.‌
Goal: streamline collaboration between data scientists‌
‌
and IT teams.‌
Understanding MLOps
iabac.org‌
Data Management: Collecting, cleaning, and versioning datasets.‌
Model Development: Building and training models efficiently.‌
Model Deployment: Automating release into production.‌
Monitoring & Maintenance: Tracking model performance and drift.‌
Continuous Integration & Delivery (CI/CD): Ensuring reliable‌
‌
updates.‌
Key Components of MLOps
iabac.org‌
How MLOps Works in AI Projects
Model Creation: Data scientists experiment and train models.‌
Pipeline Automation: MLOps automates testing and validation.‌
Deployment: Models are integrated into production systems.‌
Monitoring: Performance metrics and drift are continuously
tracked.‌
Iteration: Models are retrained as new data arrives.‌
iabac.org‌
Benefits and Outcomes
Faster deployment of AI models.‌
Improved collaboration across teams.‌
Consistent model performance in production.‌
Scalable and repeatable ML workflows.‌
Better governance and traceability of AI systems.‌
iabac.org‌
Thank You
visit: www.iabac.org
iabac.org‌

What Is MLOps and How Does It Work in AI Projects | IABAC

  • 1.
    What Is MLOpsand How Does It Work in AI Projects? iabac.org‌
  • 2.
    MLOps stands forMachine Learning Operations.‌ It combines machine learning (ML) with DevOps principles.‌ Focuses on automating ML model development,‌ ‌ deployment, and monitoring.‌ Goal: streamline collaboration between data scientists‌ ‌ and IT teams.‌ Understanding MLOps iabac.org‌
  • 3.
    Data Management: Collecting,cleaning, and versioning datasets.‌ Model Development: Building and training models efficiently.‌ Model Deployment: Automating release into production.‌ Monitoring & Maintenance: Tracking model performance and drift.‌ Continuous Integration & Delivery (CI/CD): Ensuring reliable‌ ‌ updates.‌ Key Components of MLOps iabac.org‌
  • 4.
    How MLOps Worksin AI Projects Model Creation: Data scientists experiment and train models.‌ Pipeline Automation: MLOps automates testing and validation.‌ Deployment: Models are integrated into production systems.‌ Monitoring: Performance metrics and drift are continuously tracked.‌ Iteration: Models are retrained as new data arrives.‌ iabac.org‌
  • 5.
    Benefits and Outcomes Fasterdeployment of AI models.‌ Improved collaboration across teams.‌ Consistent model performance in production.‌ Scalable and repeatable ML workflows.‌ Better governance and traceability of AI systems.‌ iabac.org‌
  • 6.