• Skip to primary navigation
  • Skip to main content
  • Skip to primary sidebar
  • Skip to footer
CourseDelta – Find the best courses

CourseDelta - Find the best courses

  • Business
  • Creative
  • Education
  • Lifestyle
  • Technology

Machine Learning Deep Learning model deployment from Udemy

June 2, 2023 by Michelle

Course Preview Machine Learning Deep Learning model deployment

Rating: 4.4 out of 5
Paid: Yes
Platform: Udemy

Get Course

Overview

If you’ve been wanting to dive into machine learning and deep learning, here’s a course that not only helps you develop models but also teaches you how to make them accessible to different applications! This beginner-friendly course covers a variety of deployment techniques and provides hands-on examples to ensure you get the most out of the learning experience.

In this comprehensive course, you’ll learn how to create classification models using Scikit-learn, save and export the models and standard scalers to different environments, create REST APIs for local and cloud applications, and even work with TensorFlow and PyTorch models. Plus, you’ll explore machine learning model building with Scikit-learn, TensorFlow Keras, and PyTorch for beginners. Just make sure to have a Google Cloud (GCP) free trial account ready for some exciting cloud-based labs! By the time you’ve completed this course, you’ll have a solid understanding of machine learning deployment and be ready to take on exciting new projects in the field!

Current Coupon

Udemy usually has a very limited availability of discount codes, by clicking the check and activate coupon button below we’ll try to automatically find and apply a coupon for you (if any are available).

Check & Activate Coupon

Skills you’ll learn

  1. Deploying Machine Learning and Deep Learning Models using various techniques.
  2. Creating and implementing REST APIs with Python Flask.
  3. Building and deploying TensorFlow and Keras models using TensorFlow Serving.
  4. Deploying PyTorch Models and converting them to TensorFlow format using ONNX.
  5. Implementing text classifier models for sentiment analysis, like Twitter sentiment analysis.
  6. Deploying models using TensorFlow.js and JavaScript.
  7. Tracking model training experiments and deployment with MLFlow.
  8. Utilizing Google Cloud Platform (GCP) for cloud-based labs and deployment.

Summary

Dive into the fascinating world of Machine Learning and Deep Learning model deployment with FutureX Skills’ highly-rated course. Comprising 58 carefully curated lessons, this engaging educational resource has already captivated over 10,000 eager students, garnering an impressive 4.4 out of 5 rating. Don’t miss the opportunity to enhance your knowledge and skills in this rapidly evolving field!

Ready to Take Your Skills to the Next Level?

Don’t miss out on this opportunity to learn from the best in the field.

Get Course

Related posts:

  1. MLOps: ML Model Deployment AWS Sagemaker, GCP, Apple Cases from Udemy
  2. Deployment of Machine Learning Models from Udemy
  3. Machine Learning, Data Science and Deep Learning with Python from Udemy
  4. A deep understanding of deep learning (with Python intro) from Udemy
  5. A deep understanding of deep learning (with Python intro) from Udemy
  6. OpenStack Installation and Deployment from Udemy
  7. ArcSWAT Model with ArcGIS – Run for any Study Area – GIS from Udemy
  8. 31 Startup Business Model : Best Course for Entrepreneurs from Udemy

Primary Sidebar

Recent Posts

  • UX Designer Salary Guide: How Much Do UX Designers Make?
  • Is Data Science Hard?
  • What is the Average Digital Marketing Salary?
  • How to Become a DevOps Engineer
  • Programmers’ Guide to AI Tools: Boost Your Development Process

Footer

CourseDelta

Online Education at Your Fingertips!

Copyright © 2023 CourseDelta
All rights reserved

Categories

  • Business
  • Creative
  • Education
  • Lifestyle
  • Technology

Company

  • Blog
  • About Us
  • Contact Us
  • Privacy Policy
  • Terms of Use
  • Affiliate Disclosure

Copyright © 2025 · Genesis Sample on Genesis Framework · WordPress · Log in