Are you intrigued by the world of Artificial Intelligence (AI) and Machine Learning (ML) and want to explore their applications further? Look no further! In this comprehensive Best Courses Guide (BCG), we have curated the best free online courses, resources, and tutorials to help you learn applied AI and ML. We have meticulously selected these courses from Class Central’s vast catalog of over 200,000 online courses. Whether you are a beginner or an advanced learner, these courses cover a range of topics and provide valuable insights into the principles and applications of AI and ML.
Keep reading to discover our top picks and delve into the exciting world of Applied AI & ML!
Here are our top picks
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What is Applied AI & ML?
Artificial intelligence (AI) and machine learning (ML) are cutting-edge fields with diverse applications, ranging from self-driving cars to natural language processing and computer vision. If you are new to these fields, fret not! AI focuses on enabling computers to exhibit human-like intelligence, while ML, a branch of AI, deals with learning from vast amounts of data. The best way to solidify your understanding of AI and ML is by putting your knowledge into practice through various applications that can sharpen your skills and provide valuable insights.
Why You Should Trust Us
At Class Central, a trusted platform for online education akin to Tripadvisor, we have assisted 60 million learners in discovering their next course. With over a decade of experience in the online education space, we have curated a catalog of 200,000 online courses and 200,000 user reviews. As avid online learners ourselves, the Class Central team has collectively completed over 400 online courses, including online degrees.
Courses Overview
- The largest course in this guide has over 510,000 enrollments
- Combined, the courses account for 1.6 million enrollments
- All courses are either free or free-to-audit, except for two
- 8 courses cater to advanced or intermediate learners, while the rest are beginner-friendly
- Coursera is the most represented provider with 8 courses
Embark on a journey into the realm of Convolutional Neural Networks with the free-to-audit course by DeepLearning.AI. This course delves into computer vision and its myriad applications, from autonomous driving to face recognition and radiology image analysis. By mastering Convolutional Neural Networks, you’ll learn to build and apply them to various visual tasks, enhancing your industry-relevant skills.
Prerequisites: Intermediate Python skills, basic understanding of linear algebra and machine learning.
Key Learnings:
- Master the fundamentals of Convolutional Neural Networks (CNNs) and their architecture
- Implement deep neural models for multi-class image classification
- Explore case studies of effective CNNs like LeNet-5, ResNet, and Inception network
- Tackle object localization, detection, and face recognition using ConvNets
- Apply neural style transfer with deep ConvNets for artistic image generation
How We Made Our Picks and Tested Them
Our selection process for this guide follows a proven methodology consisting of three key steps:
Firstly, leveraging Class Central’s extensive database, we meticulously analyzed ratings, reviews, and course popularity to create an initial shortlist.
Secondly, drawing upon our collective experience and knowledge in online learning, we evaluated each course to ensure its relevance and quality, enhancing the guide iteratively.
Thirdly, we strived to include a diverse range of courses, even those with lower enrollments, to offer a comprehensive lineup catering to various learner needs.
By combining data-driven insights, personal experiences, and thorough research, we have curated a top-notch guide to Applied AI & ML courses that you can trust. Our dedication to this guide transcends 10 hours of meticulous work, with a commitment to ongoing updates and refinements in the future.
Fabio has meticulously revised the research and the latest version of this article to ensure its accuracy and relevance.