MLOps Training in Hyderabad | Machine Learning Operations Training PowerPoint PPT Presentation

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Title: MLOps Training in Hyderabad | Machine Learning Operations Training


1
MLOps
  • Tools and Platforms A Comprehensive Overview

2
Introduction to MLOps
  • Definition MLOps combines Machine Learning (ML)
    with IT Operations (Ops)
  • Objective Streamline the end-to-end ML lifecycle
  • Importance Enhances collaboration, efficiency,
    and scalability in ML projects

3
Key Components of MLOps
  • Data Management Tools for data storage,
    processing, and versioning
  • Model Development IDEs and frameworks for model
    training and experimentation
  • Model Deployment Platforms for deploying models
    to production environments

4
Data Management Tools
  • Data Storage Apache Hadoop, AWS S3
  • Data Processing Apache Spark, Databricks
  • Data Versioning DVC (Data Version Control),
    Pachyderm

5
Model Development Tools
  • IDEs Jupyter Notebook, PyCharm
  • Frameworks TensorFlow, PyTorch
  • Experimentation MLflow, Weights Biases

6
Model Deployment Tools
  • Deployment Platforms Kubernetes, Docker
  • Serving Models TensorFlow Serving, KFServing
  • Monitoring Prometheus, Grafana

7
Integrated MLOps Platforms
  • End-to-End Platforms Databricks, Azure ML
  • Cloud Platforms AWS SageMaker, Google AI
    Platform
  • Open-Source Solutions Kubeflow, MLflow

8
Conclusion
  • Summary Recap of the importance and variety of
    MLOps tools
  • Future Trends Growth in automation and AI-driven
    MLOps

9
CONTAC
  • Machine Learning Operations Training
  • Address- Flat no 205, 2nd Floor,
  • Nilgiri Block, Aditya Enclave,
  • Ameerpet, Hyderabad-1
  • Ph. No 91-9989971070 
  • Visit www.visualpath.in
  • E-Mail online_at_visualpath.in

10
THANK YOU
Visit www.visualpath.in
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