Comprehensive Guide to Learning MLOps Tools in Arabic
A Deep Dive into Cutting-Edge Tools for Streamlining Machine Learning Operations. Learn CML, DVC, and MLFlow tools.
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707 students
Created by *
Last updated 4/2024
Arabic

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You purchased this course on Apr. 10, 2024
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Comprehensive Guide to Learning MLOps Tools in Arabic
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707 studentsWhat you'll learn
12 sections • 12 lectures • 6h 10m total length
Expand all sectionsIntroduction1 lecture • 1min
Code material & Community1 lecture • 1min
ML Experimentation with CML Tool - CI/CD1 lecture • 56min
ML Experimentation with DVC & CML Tools - CI/CD1 lecture • 31min
ML Experimentation using DVC pipelines - CI/CD1 lecture • 44min
Dive deep in DVC pipelines & DVC Studio1 lecture • 1hr 11min
Intro to MLFlow & MLFlow Tracking in depth1 lecture • 55min
Apply MLFlow Tracking on our project1 lecture • 26min
MLFlow Project Component1 lecture • 36min
MLFlow Models Component1 lecture • 15min
2 more sectionsRequirements
Welcome to this course
This course is Comprehensive Guide to Learning MLOps Tools in Arabic by Eng/Mohammed Agoor
In this course, we delve into the core tools reshaping the landscape of Machine Learning Operations (MLOps). In this comprehensive course, you'll gain an in-depth understanding of three pivotal technologies: Continuous Machine Learning (CML), Data Version Control (DVC), and MLflow. Through a blend of theoretical insights, practical demonstrations, and hands-on exercises, you'll emerge equipped to optimize every aspect of your machine-learning workflow.
CML (Continuous Machine Learning) enables seamless integration of machine learning models into your development process, automating tasks and facilitating collaboration across teams. DVC (Data Version Control) empowers you to effectively manage large-scale datasets, ensuring reproducibility and scalability in your ML projects. MLflow simplifies the deployment, monitoring, and management of machine learning models, providing a unified platform for experimentation and productionization.
Throughout this course, you'll explore each tool in depth, learning how to harness its capabilities to enhance productivity, streamline workflows, and accelerate innovation. From setting up CML pipelines to tracking experiments with MLflow and versioning data with DVC, you'll acquire practical skills that can be immediately applied in real-world scenarios.
Whether you're a data scientist, machine learning engineer, or AI enthusiast, "Mastering MLOps" offers invaluable insights and techniques to optimize your machine learning operations and drive impactful results.
What You'll Learn:
Through a series of engaging modules, you'll explore a wealth of concepts and practical techniques:
Whether you're aiming to streamline your machine learning workflows, enhance collaboration, or optimize model deployment and monitoring, this course has you covered. Through practical demonstrations, you'll gain mastery over CML for automating tasks, DVC for efficient data version control, and MLflow for seamless model management.
Join us now and embark on an enriching learning journey that will set you on the path to mastering important MLOps tools.
Enroll NOW!
Who this course is for:
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A Deep Dive into Cutting-Edge Tools for Streamlining Machine Learning Operations. Learn CML, DVC, and MLFlow tools.
*
707 students
Created by *
Last updated 4/2024
Arabic

Preview this course
You purchased this course on Apr. 10, 2024
Go to course
30-Day Money-Back GuaranteeThis course includes:
- 6 hours on-demand video
- 1 article
- Access on mobile and TV
- Full lifetime access
- Certificate of completion
Share*Apply CouponTraining 5 or more people?
Get your team access to 25,000+ top Udemy courses anytime, anywhere.
*
Comprehensive Guide to Learning MLOps Tools in Arabic
*
707 studentsWhat you'll learn
- Comprehensive understanding of MLOps principles and best practices
- Deep dive into Continuous Machine Learning (CML)
- Deep dive into Data Version Control (DVC)
- Experiment tracking, model versioning, and artifact management with DVC
- Deep dive into MLflow
- Experiment tracking, model versioning, and artifact management with MLflow
- Hands-on experience with real-world examples and projects to solidify learning
- MLFlow Tracking, Models, Projects, and Registry
12 sections • 12 lectures • 6h 10m total length
Expand all sectionsIntroduction1 lecture • 1min
Code material & Community1 lecture • 1min
ML Experimentation with CML Tool - CI/CD1 lecture • 56min
ML Experimentation with DVC & CML Tools - CI/CD1 lecture • 31min
ML Experimentation using DVC pipelines - CI/CD1 lecture • 44min
Dive deep in DVC pipelines & DVC Studio1 lecture • 1hr 11min
Intro to MLFlow & MLFlow Tracking in depth1 lecture • 55min
Apply MLFlow Tracking on our project1 lecture • 26min
MLFlow Project Component1 lecture • 36min
MLFlow Models Component1 lecture • 15min
2 more sectionsRequirements
- Python programming language
- Intermediate knowledge of machine and deep learning
- Intermediate knowledge of version control (Git)
Welcome to this course
This course is Comprehensive Guide to Learning MLOps Tools in Arabic by Eng/Mohammed Agoor
In this course, we delve into the core tools reshaping the landscape of Machine Learning Operations (MLOps). In this comprehensive course, you'll gain an in-depth understanding of three pivotal technologies: Continuous Machine Learning (CML), Data Version Control (DVC), and MLflow. Through a blend of theoretical insights, practical demonstrations, and hands-on exercises, you'll emerge equipped to optimize every aspect of your machine-learning workflow.
CML (Continuous Machine Learning) enables seamless integration of machine learning models into your development process, automating tasks and facilitating collaboration across teams. DVC (Data Version Control) empowers you to effectively manage large-scale datasets, ensuring reproducibility and scalability in your ML projects. MLflow simplifies the deployment, monitoring, and management of machine learning models, providing a unified platform for experimentation and productionization.
Throughout this course, you'll explore each tool in depth, learning how to harness its capabilities to enhance productivity, streamline workflows, and accelerate innovation. From setting up CML pipelines to tracking experiments with MLflow and versioning data with DVC, you'll acquire practical skills that can be immediately applied in real-world scenarios.
Whether you're a data scientist, machine learning engineer, or AI enthusiast, "Mastering MLOps" offers invaluable insights and techniques to optimize your machine learning operations and drive impactful results.
What You'll Learn:
Through a series of engaging modules, you'll explore a wealth of concepts and practical techniques:
- Comprehensive understanding of MLOps principles and best practices
- Deep dive into Continuous Machine Learning (CML)
- Deep dive into Data Version Control (DVC)
- Experiment tracking, model versioning, and artifact management with DVC
- Deep dive into MLflow
- Experiment tracking, model versioning, and artifact management with MLflow
- Hands-on experience with real-world examples and projects to solidify learning
- MLFlow Tracking, Models, Projects, and Registry
Whether you're aiming to streamline your machine learning workflows, enhance collaboration, or optimize model deployment and monitoring, this course has you covered. Through practical demonstrations, you'll gain mastery over CML for automating tasks, DVC for efficient data version control, and MLflow for seamless model management.
Join us now and embark on an enriching learning journey that will set you on the path to mastering important MLOps tools.
Enroll NOW!
Who this course is for:
- Artificial Intelligence Engineers
- Data Scientists/ Analysts
- MLOps/AIOps Engineers
- Anyone with interest in AI field
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