Mastering MLOps: From Model Development to Deployment
Development100% OFF

Mastering MLOps: From Model Development to Deployment

Udemy Instructor
0(12.0K students)
Self-paced
All Levels

About this course

In today’s AI-driven world, the demand for efficient, reliable, and scalable Machine Learning (ML) systems has never been higher. MLOps (Machine Learning Operations) bridges the critical gap between ML model development and real-world deployment, ensuring seamless workflows, reproducibility, and robust monitoring. This comprehensive course, Mastering MLOps: From Model Development to Deployment, is designed to equip learners with hands-on expertise in building, automating, and scaling ML pipelines using industry-standard tools and best practices.Throughout this course, you will dive deep into the key principles of MLOps, learning how to manage the entire ML lifecycle — from data preprocessing, model training, and evaluation to deployment, monitoring, and scaling in production environments.

You’ll explore the core differences between MLOps and traditional DevOps, gaining clarity on how ML workflows require specialized tools and techniques to handle model experimentation, versioning, and performance monitoring effectively.You’ll gain hands-on experience with essential tools such as Docker for containerization, Kubernetes for orchestrating ML workloads, and Git for version control. You’ll also learn to integrate cloud platforms like AWS, GCP, and Azure into your MLOps pipelines, enabling scalable deployments in production environments. These skills are indispensable for anyone aiming to bridge the gap between AI experimentation and real-world scalability.One of the key highlights of this course is the practical, hands-on projects included in every chapter.

From building end-to-end ML pipelines in Python to setting up cloud infrastructure and deploying models locally using Kubernetes, you’ll gain actionable skills that can be directly applied in real-world AI and ML projects.In addition to mastering MLOps tools and workflows, you'll learn how to address common challenges in ML deployment, including scalability issues, model drift, and monitoring performance in dynamic environments. By the end of this course, you’ll be able to confidently transition ML models from Jupyter notebooks to robust production systems, ensuring they deliver consistent and reliable results.Whether you are a Data Scientist, Machine Learning Engineer, DevOps Professional, or an AI enthusiast, this course will provide you with the skills and knowledge necessary to excel in the evolving field of MLOps.Don’t just build Machine Learning models — learn how to deploy, monitor, and scale them with confidence. Join us in this transformative journey to Master MLOps: From Model Development to Deployment, and position yourself at the forefront of AI innovation.This course is your gateway to mastering the intersection of AI, ML, and operational excellence, empowering you to deliver impactful and scalable AI solutions in real-world production environments.

Skills you'll gain

Data ScienceEnglish

Available Coupons

Course Information

Level: All Levels

Suitable for learners at this level

Duration: Self-paced

Total course content

Instructor: Udemy Instructor

Expert course creator

This course includes:

  • 📹Video lectures
  • 📄Downloadable resources
  • 📱Mobile & desktop access
  • 🎓Certificate of completion
  • ♾️Lifetime access
$0$101.99

Save $101.99 today!

Enroll Now - Free

Redirects to Udemy • Limited free enrollments

You May Also Like

Explore more courses similar to this one

Android P - Programming, Development and Certification
Development
892 left

Android P - Programming, Development and Certification

Udemy Instructor

This course is meticulously designed to introduce you to the latest features released in the Developer Preview for the upcoming Android P release, ensuring your app stays at the cutting edge of technological advancements. As mobile technology continues to evolve, it is crucial for developers to keep pace with new features and functionalities to maintain competitive and user-friendly applications. This course provides the knowledge and practical skills required to achieve this.We begin with an in-depth exploration of the new Android Studio and the Pixel 2 Emulator. Android Studio, the official integrated development environment (IDE) for Google's Android operating system, comes with a range of enhancements in its latest version. The Pixel 2 Emulator, meanwhile, allows developers to test their applications on a virtual device that simulates the Pixel 2’s hardware and software environment. By understanding these tools, you can streamline your development process and optimize your workflow for maximum efficiency.One of the key features we'll cover is the Display Cutout, also known as the "notch." With the increasing trend of edge-to-edge screens, many devices now come with a display cutout at the top for cameras and sensors. This course will show you how to design your app to accommodate various screen shapes and sizes, ensuring that content is displayed optimally without being obscured by the cutout. You'll learn how to use the WindowInsets class to manage cutouts and create a seamless user experience across different devices.The Image Decoder API is another significant feature in Android P. It provides a modern way to decode images, offering better performance and additional functionalities compared to the BitmapFactory class. The Image Decoder supports animated images and allows for scaling and post-processing of images during decoding. In this course, you'll learn how to implement the Image Decoder API to handle images more efficiently, reducing memory usage and improving the overall performance of your app.Notifications have been a core feature of Android for a long time, and with Android P, they have become even more powerful. The updated notifications system includes new features such as support for images and smart replies, making it easier for users to interact with notifications without opening the app. This course will guide you through the process of creating and managing these richer, more interactive notifications. You'll learn how to use the Notification.Builder class to customize notifications with images, action buttons, and inline replies, enhancing user engagement and improving the overall user experience.In addition to these key features, the course will also touch on other noteworthy enhancements in Android P, such as improved security measures, support for the new HEIF image format, and enhancements to the Autofill framework. By the end of this course, you will have a comprehensive understanding of the new features in Android P and how to integrate them into your projects effectively.Whether you are an experienced developer or just starting your journey in Android development, this course offers valuable insights and practical skills. By staying up-to-date with the latest tools and features, you can ensure your app remains relevant and competitive in the ever-evolving mobile landscape. Join us to master the new features of Android P and take your app development skills to the next level.

4.64.0KSelf-paced
FREE$111.99
Enroll