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Product description
MLOps Machine Learning Operations E-Learning
Bridge the gap between data science and deployment with MLOps.
Embark on a transformative journey into the world of MLOps (Machine Learning Operations)—the intersection of data science, DevOps, and engineering. This training equips you with the knowledge and skills needed to take machine learning models from experimental notebooks to production-grade pipelines.
In this course, you’ll explore:
The fundamentals of MLOps and how it differs from standard ML workflows
Tools and frameworks for version control, CI/CD, deployment, and monitoring
Building scalable, reproducible, and automated ML pipelines
Best practices in model governance, data security, and infrastructure
Fostering collaboration between data science, engineering, and operations
Built on an Agile learning framework, this course promotes continuous improvement through practical, iterative learning.
Why Choose This Training?
Combines ML, DevOps, and IT operations in a unified training path
Hands-on practice with tools for automation, deployment, and model monitoring
Learn to scale and operationalize machine learning effectively
Covers the full ML lifecycle from experimentation to post-deployment
Includes e-learning, mentor support, labs, assessments & 365-day access
Who Should Enroll?
This course is perfect for:
Data scientists aiming to bring their models into production
ML and DevOps engineers looking to master MLOps tools and practices
IT professionals and AI students seeking hands-on MLOps experience
Teams and organizations ready to scale ML operations across departments
This Learning Kit with more than 23 hours of learning is divided into three tracks:
Demo MLOps Machine Learning Operations Training
Course content
Track 1: Intro to MLOps
In this track of the MLOps Aspire Journey, the focus will be on understanding the fundamental concepts and principles that underpin this transformative field. Explore the evolution of MLOps, dissect the MLOps workflow, and delve into the challenges and best practices that await you on this exciting journey. Courses (1½ hour):
Getting Started with MLOps
Course: 1 Hour, 27 Minutes
Course Overview
Introducing MLOps
What's Different About MLOps?
Factors Affecting Machine Learning (ML) Models in Production
Solving Machine Learning Problems
The Machine Learning Canvas
End-to-end Machine Learning Workflow
ML Workflow Architectural Patterns
Stages in MLOps Maturity Level
Stages in MLOps Maturity Level 1 and 2
Course Summary
Track 2: MLFlow
In this track of the MLOps Aspire Journey, the focus will be on how to track, manage, and deploy your machine learning models efficiently. From MLFlow tracking and models to model deployment and CI/CD integration, this track empowers you with essential MLOps skills. Courses (11 hours +)
MLOps with MLflow: Getting Started
Course: 1 Hour, 27 Minutes
Course Overview
Introducing MLflow
The Machine Learning Workflow
Understanding Model Deployment
MLflow Concepts and Components
The Features of MLflow
Model Signature
MLflow Tracking
Installing MLflow
Installing MLflow in a Virtual Environment
Viewing the MLflow User Interface (UI) and Directory Structure
Setting up an MLflow Virtual Environment for Jupyter
Course Summary
MLOps with MLflow: Creating & Tracking ML Models
Course: 1 Hour, 45 Minutes
Course Overview
Loading, Cleaning, and Visualizing Data for Machine Learning
Viewing Data Statistics with Pandas Profiling
Creating an MLflow Experiment
Creating an MLflow Run and Logging Artifacts
Creating a Run in a With Block and Viewing Run Info
Creating Multiple Runs for Different Models
Running Polynomial and Random Forest Regression Models
Comparing and Visualizing Models
Using MLflow Autologging
Viewing Autologged Metrics and Artifacts
Exploring the conda.yaml File
Configuring Autologging to Log Test Metrics
Comparing MLflow Models Using the UI
Course Summary
MLOps with MLflow: Registering & Deploying ML Models
Course: 1 Hour, 57 Minutes
Course Overview
Visualizing and Cleaning Data
Creating an Experiment from the MLflow U
Running a Classification Model and Viewing its Metrics
Analyzing Model Insights Using SHAP
Running Multiple Classification Models
Comparing Models Programmatically
Registering an MLflow Model
Modifying Registered Model Versions
Registering Another Model and Viewing the Registered Model
Serving Models to a Local REST Endpoint
Creating an Azure Machine Learning (Azure ML) Account
Registering a Model on Azure
Accessing Models through Azure REST Endpoints
Course Summary
MLOps with MLflow: Hyperparameter Tuning ML Models
Course: 1 Hour, 37 Minutes
Course Overview
Understanding How MLflow Works with Databricks
Creating a Databricks Workspace and Cluster
Uploading a File to DBFS and Running a Model from Databricks
Setting Up the Objective Function for Hyperparameter Tuning
Understanding the Objective Function and Viewing the Runs
Defining the Search Space and Search Algorithm
Running a Hyperparameter Tuning Model and Viewing the Results
Setting Up SQLite and Using MLflow with SQLite
Performing Data Cleaning and Building a Regression Model
Building and Tracking a Regression Model Using statsmodels
Course Summary
MLOps with MLflow: Creating Time-series Models & Evaluating Models
Course: 1 Hour, 23 Minutes
Course Overview
Cleaning Data for a Time-series Model
Training a Model and Viewing the Artifacts
Performing Cross-validation and Evaluating Performance
Cleaning Data and Performing Encoding
Creating a Machine Learning Model and Setting Up Model Evaluation
Evaluating a Model and Analyzing the Lift Curve
Understanding the Precision-Recall Curve and Beeswarm Charts
Using a Metric Threshold to Evaluate a Model
Course Summary
MLOps with MLflow: Tracking Deep Learning Models
Course: 1 Hour, 31 Minutes
Course Overview
Preprocessing Image Data for Machine Learning and Viewing the Images
Training and Running an Image Classification Model
Viewing Performance and Registering an Image Classification Model
Deploying a Model to Azure, Viewing It, and Making Predictions
Exploring PyTorch and Viewing Images for Machine Learning
Setting Up and Running an Image Classification Model
Viewing Model Performance, Serving It, and Making Predictions
Running a Sentiment Analysis Model and Viewing Logged Artifacts
Course Summary
MLOps with MLflow: Using MLflow Projects & Recipes
Course: 2 Hours, 8 Minutes
Course Overview
MLflow Projects
Creating, Viewing, and Modifying an MLflow Project
Creating and Running an Experiment for a Project and Viewing Results
MLflow Recipes
Creating an MLflow Recipe and Exploring Its Files
Using the MLflow Regression Template
Viewing and Modifying Files in a Recipe
Modifying the train.py and the custom_metrics.py File
Working with the recipe.yaml and local.yaml Files
Creating a Recipe and Viewing the Recipe Pipeline
Running Our Recipe and Viewing Model Evaluation Results
Validating Models Based on a Metrics Threshold
Setting up a Classification Recipe and Modifying the YAML Files
Running a Classification Recipe and Viewing the Results
Training Models with Data from DBFS and Delta Lakes
Course Summary
Track 3: Data Version Control
In this track of the MLOps Aspire Journey, you will discover the power of Data Version Control (DVC) and its role in simplifying experiment tracking, model management, and automation in MLOps. Explore DVC's VS Code extension, command-line tools, and open-source version control system. Learn to streamline your machine learning workflows and enable continuous machine learning with DVC. Courses (9 hours +)
MLOps with Data Version Control: Getting Started
Course: 1 Hour, 52 Minutes
Course Overview
Data Version Control (DVC)
A Brief Overview of Git
DVC Concepts
Installing Git
Installing DVC
Creating a Git Local Repository
Connecting to GitHub from Git
Configuring a Remote Storage Configuration in DVC
Pushing Files to DVC Remote Storage
Creating a Machine Learning (ML) Model in Python
Pushing an ML Model to DVC and Git
Viewing the Files Committed to GitHub
Running and Pushing a Different Model Version
Reverting to Previous Code Versions in Git
Course Summary
MLOps with Data Version Control: Working with Pipelines & DVCLive
Course: 2 Hours, 12 Minutes
Course Overview
Setting up a Machine Learning (ML) Pipeline Stage
Adding a Stage to a Data Version Control (DVC) Pipeline
Using the dvc.lock File
Executing a DVC Pipeline
Setting up a DVC Project for Regression Analysis
Setting up Iterative Studio and DVCLive
Setting up Data for Visualizing and Tracking Using DVC
Logging Plots Using DVCLive
Logging and Tracking Images Using DVCLive
Tracking Experiments with DVCLive
Pushing Experiment Files to DVC
Committing a Pull Request to Merge Experiment Details
Running and Tracking a kNN Regression Experiment with DVC
Tracking Model Artifacts
Registering Models with the Studio Registry
Course Summary
MLOps with Data Version Control: Tracking & Serving Models with DVC & MLEM
Course: 1 Hour, 54 Minutes
Course Overview
Preprocessing Data for Churn Prediction
Tracking and Comparing Logistic Regression Experiments
Tracking and Comparing Random Forest Experiments
Tracking an XGBoost Experiment
Tracking Artifacts and Registering a Classification Model
Setting up the DVC Project for Hyperparameter Tuning
Performing Hyperparameter Tuning Using Optuna
MLEM
Extracting Model Codification Using MLEM
Using MLEM to Serve Models Locally on FastAPI
Installing and Setting up Docker
Deploying a Model in a Docker Container
Getting Predictions from a Docker Hosted Model
Course Summary
MLOps with Data Version Control: Tracking & Logging Deep Learning Models
Course: 1 Hour, 31 Minutes
Course Overview
Setting up an S3 Bucket and IAM User on AWS
Configuring Cloud Remotes on Data Version Control (DVC)
Visualizing and Tracking the CIFAR 10 Dataset
Tracking Sample Images with DVC
Setting up the CNN for Image Classification
Tracking PyTorch Lightning Model Training
Improving Image Classification
Configuring Azure Cloud Storage as DVC Remote
Training and Logging TensorFlow Models
Tracking TensorFlow Models Using DVC
Course Summary
MLOps with Data Version Control: Creating & Using DVC Pipelines
Course: 1 Hour, 21 Minutes
Course Overview
Configuring a DVC Project for an ML Pipeline
Tracking Training Data with DVC
Adding the Data Process Stage to the ML Pipeline
Executing Pipeline Stages
Adding a Train Stage to the ML Pipeline
Executing the Data Process and Train Stages
Adding and Executing the Evaluate Stage in a Pipeline
Eliminating a Duplicate dvc.yaml File
Running DVC Experiment Pipelines
Queueing and Running Experiments
Course Summary
MLOps with Data Version Control: CI/CD Using Continuous Machine Learning
Course: 1 Hour, 3 Minutes
Course Overview
Continuous Machine Learning (CML)
Configuring Google Drive as DVC Remote Storage
Authorizing DVC to Use Google Drive
Creating DVC Pipeline
Configuring a CML Workflow for CI/CD
Triggering CI/CD with Git Push
Viewing Metric and Plot Comparisons with CML Reports
Course Summary
Assessment:
Final Exam: MLOps
Specifications
Article number
148046318
SKU
148046318
Language
English
Qualifications of the Instructor
Certified
Course Format and Length
Teaching videos with subtitles, interactive elements and assignments and tests
Lesson duration
23:08 Hours
Assesments
The assessment tests your knowledge and application skills of the topics in the learning pathway. It is available 365 days after activation.
Online Virtuele labs
Receive 12 months of access to virtual labs corresponding to traditional course configuration. Active for 365 days after activation, availability varies by Training
Online mentor
You will have 24/7 access to an online mentor for all your specific technical questions on the study topic. The online mentor is available 365 days after activation, depending on the chosen Learning Kit.
Progress monitoring
Access to Material
365 days
Technical Requirements
Computer or mobile device, Stable internet connections Web browsersuch as Chrome, Firefox, Safari or Edge.
Support or Assistance
Helpdesk and online knowledge base 24/7
Certification
Certificate of participation in PDF format
Price and costs
Course price at no extra cost
Cancellation policy and money-back guarantee
We assess this on a case-by-case basis
Award Winning E-learning
Tip!
Provide a quiet learning environment, time and motivation, audio equipment such as headphones or speakers for audio, account information such as login details to access the e-learning platform.
MLOps Machine Learning Operations E-Learning Training Certified teachers Quizzes...
€239,58€198,00
Specifications
Article number
148046318
SKU
148046318
Language
English
Qualifications of the Instructor
Certified
Course Format and Length
Teaching videos with subtitles, interactive elements and assignments and tests
Lesson duration
23:08 Hours
Assesments
The assessment tests your knowledge and application skills of the topics in the learning pathway. It is available 365 days after activation.
Online Virtuele labs
Receive 12 months of access to virtual labs corresponding to traditional course configuration. Active for 365 days after activation, availability varies by Training
Online mentor
You will have 24/7 access to an online mentor for all your specific technical questions on the study topic. The online mentor is available 365 days after activation, depending on the chosen Learning Kit.
Progress monitoring
Access to Material
365 days
Technical Requirements
Computer or mobile device, Stable internet connections Web browsersuch as Chrome, Firefox, Safari or Edge.
Support or Assistance
Helpdesk and online knowledge base 24/7
Certification
Certificate of participation in PDF format
Price and costs
Course price at no extra cost
Cancellation policy and money-back guarantee
We assess this on a case-by-case basis
Award Winning E-learning
Tip!
Provide a quiet learning environment, time and motivation, audio equipment such as headphones or speakers for audio, account information such as login details to access the e-learning platform.
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