Companies Home Search Profile

Katonic MLOps Certification Course

Focused View

Katonic MLOps Platform,Subhrajit Mohanty

3:00:55

6 View
  • 001 Introduction to Program.mp4
    02:49
  • 002 Why MLOps.mp4
    17:33
  • 003 Lifecycle of an ML System.mp4
    04:23
  • 004 Activities to Productionize a Model.mp4
    03:05
  • 005 What is MLOps.mp4
    10:51
  • 006 Maturity Levels in MLOps.mp4
    02:43
  • 001 Instructor Introduction.mp4
    00:58
  • 002 Why Docker.mp4
    02:47
  • 003 What are Containers.mp4
    01:52
  • 004 What are Virtual Machines.mp4
    02:17
  • 005 What is Docker.mp4
    03:43
  • 006 Why Kubernetes.mp4
    06:32
  • 007 What are Pods.mp4
    02:58
  • 008 Kubernetes Deployment.mp4
    05:38
  • 009 Working with Namespaces.mp4
    01:48
  • 010 Walkthrough.mp4
    13:19
  • 001 MLOps Stack Requirements.mp4
    13:12
  • 002 MLOps Landscape.mp4
    02:13
  • 003 Katonic MLOps Platform Introduction.mp4
    01:02
  • 004 Problem Description & Introduction to Feature Engineering.mp4
    02:32
  • 005 AI Model Lifecycle.mp4
    08:51
  • 006 MLOps Platform Overview.mp4
    18:24
  • 001 Instructor Introduction.mp4
    00:27
  • 002 Goals of the End-to-End Demo.mp4
    01:36
  • 003 Problem Statement Description.mp4
    02:50
  • 004 AI Model Lifecycle.mp4
    05:29
  • 005 Use Case Overview.mp4
    02:53
  • 006 Creating a Workspace.mp4
    01:21
  • 007 Fetching Data.mp4
    00:40
  • 008 Notebook Overview.mp4
    06:45
  • 009 Working with Experiments.mp4
    01:39
  • 010 Registering a Model.mp4
    01:13
  • 011 Building an ML Pipeline.mp4
    06:48
  • 012 Deploy a Model.mp4
    04:03
  • 013 Building an App using Streamlit.mp4
    06:35
  • 014 Building an Inference Pipeline.mp4
    03:21
  • 015 Scheduling a Pipeline Run.mp4
    02:09
  • 016 Model Monitoring.mp4
    01:54
  • 017 Retraining a Model.mp4
    01:42
  • Description


    Understand the concepts of MLOps, Kubernetes, Docker & learn how to build an E2E use case on Katonic MLOps Platform

    What You'll Learn?


    • Introduction to MLOps
    • Introduction to Kubernetes & Docker
    • MLOps Platform Introduction and Walkthrough
    • Build an End-to-End ML Use Case

    Who is this for?


  • Data Scientists
  • Aspiring MLOps Professionals and Enthusiasts
  • Individuals interested in data and AI industry
  • What You Need to Know?


  • Python
  • Concepts of Machine Learning
  • More details


    Description

    Machine Learning Operations (MLOps) provides an end-to-end machine learning development process to design, build and manage reproducible, testable, and evolvable ML-powered software.

    It is a set of practices for collaboration and communication between data scientists and operations professionals. Deploying these practices increases the quality, simplifies the management process, and automates the deployment of Machine Learning models in large-scale production environments.

    With this course, get introduced to MLOps concepts and best practices for deploying, evaluating, monitoring and operating production ML systems.


    This course covers the following topics:


    1. What is MLOps?

    2. Lifecycle of an ML System

    3. Activities to Productionize a Model

    4. Maturity Levels in MLOps

    5. What is Docker?

    6. What are Containers, Virtual Machines and Pods?

    7. What is Kubernetes?

    8. Working with Namespaces

    9. MLOps Stack Requirements

    10. MLOps Landscape

    11. AI Model Lifecycle

    12. Introduction to Katonic MLOps Platform

    13. End-to-End use case walkthrough

      1. Creating a workspace

      2. Fetching data and working with notebooks.

      3. Building an ML pipeline

      4. Registering & deploying a model

      5. Building an app using Streamlit

      6. Scheduling a pipeline run

      7. Model Monitoring

      8. Retraining a model


    By the end of this course, you will be able to:

    • Understand the concepts of Kubernetes, Docker and MLOps.

    • Realize the challenges faced in ML model deployments and how MLOps plays a key role in operationalizing AI.

    • Design an end-to-end ML production system.

    • Develop a prototype, deploy, monitor and continuously improve a production-sized ML application.


    Who this course is for:

    • Data Scientists
    • Aspiring MLOps Professionals and Enthusiasts
    • Individuals interested in data and AI industry

    User Reviews
    Rating
    0
    0
    0
    0
    0
    average 0
    Total votes0
    Focused display
    Category
    Katonic MLOps Platform
    Katonic MLOps Platform
    Instructor's Courses
    Katonic MLOps platform is a collaborative platform with a unified UI to manage all data science in one place. The platform combines the creative scientific process of data scientists with the professional software engineering process to build and deploy Machine Learning models into production safely, quickly, and in a sustainable way.
    Subhrajit Mohanty
    Subhrajit Mohanty
    Instructor's Courses
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 39
    • duration 3:00:55
    • English subtitles has
    • Release Date 2024/02/26