Top 5 Coursera Courses and Specializations to Learn Machine Learning and Deep Learning in 2026

My favorite Coursera Courses, Specialization and Professional certificate to learn Machine Learning and Deep Learning in 2026

Top 5 Coursera Courses and Specializations to Learn Machine Learning and Deep Learning

Hello guys, Machine Learning and Deep Learning aren’t future technologies anymore — they’re right now technologies reshaping every industry.

In 2026, companies aren’t asking “should we use AI?” They’re asking “why aren’t we using more AI?” The demand for ML engineers has exploded. Salaries are skyrocketing. Opportunities are everywhere.

But here’s the challenge: ML and Deep Learning are complex. There’s math involved. There are frameworks. There are concepts that don’t click on first attempt. You need instruction from people who understand not just the theory, but how to apply it in practice.

That’s where Coursera comes in. Coursera partners with the world’s best AI experts. When you take a course from Andrew Ng (literally the founder of AI education), you’re learning from someone who’s shaped how millions learn ML.

In 2026, the question isn’t whether you should learn ML. It’s when you’ll start. Let me show you the five best Coursera courses and specializations to get you there.

5 Best Machine Learning and Deep Learning Courses and Certificates from Coursera for 2026

Without any further ado, here are the top 5 Machine Learning and Deep Learning Courses and certificates you can join on Coursera in 2026

1. Machine Learning Specialization by Andrew Ng

This is where most people should start. Andrew Ng designed this specialization specifically to help people break into AI with no prerequisites.

What You’ll Learn:

  • Machine learning fundamentals from scratch
  • Supervised learning (regression, classification)
  • Unsupervised learning (clustering, anomaly detection)
  • Practical machine learning workflow
  • How to build and train ML models
  • Evaluation metrics and model selection
  • Real-world problem-solving with ML
  • Python and scikit-learn implementation

Why It’s Essential: Andrew doesn’t assume you know anything. He starts from zero and builds systematically. By the end, you understand ML deeply — not just how to use libraries, but why things work.

The specialization includes 3 courses that build on each other perfectly. You’re not jumping around randomly; you’re following a well-designed learning path.

Best For: Beginners completely new to ML, career changers entering AI, anyone wanting a solid foundation.

Time Commitment: 3–4 months at 5–7 hours/week

Enrollment: 715,414 students have already taken this — testimonial to its quality

Progression: Start here before deep learning. This gives you the foundation that makes Deep Learning click.

Here is the link to join — Take Machine Learning Specialization

2. Deep Learning Specialization by Andrew Ng

After Machine Learning Specialization, this is your natural next step. The Deep Learning Specialization is the most comprehensive deep learning program available.

What You’ll Learn:

  • Neural network fundamentals and intuition
  • Building and training deep neural networks
  • Convolutional Neural Networks (CNNs) for computer vision
  • Recurrent Neural Networks (RNNs) for sequences
  • Natural Language Processing with deep learning
  • Transformer architectures and attention mechanisms
  • Advanced optimization techniques
  • Hyperparameter tuning and regularization
  • Practical deep learning projects

Why It’s Transformative: This specialization was updated in 2024 with cutting-edge techniques like transformers and attention mechanisms. You’re learning what’s actually used in production, not outdated material.

The 5-course series takes you from basics to state-of-the-art. By the end, you can build production-ready deep learning systems.

Best For: ML engineers ready to go deeper, computer vision specialists, NLP practitioners, researchers.

Time Commitment: 4–6 months at 8–10 hours/week

Enrollment: 956,905 students — the most popular deep learning specialization globally

Student Rating: 4.9/5 (136,900+ reviews)

Progression: Take Machine Learning Specialization first, then this. They’re designed to flow together.

Here is the link to join — Take Deep Learning Specialization

3. IBM AI Engineering Professional Certificate

IBM’s certificate is designed specifically for career acceleration. It’s not academic — it’s practical, focused on getting you employed.

What You’ll Learn:

  • Machine learning algorithms and their applications
  • Deep learning frameworks (TensorFlow, Keras, PyTorch)
  • Computer vision and NLP applications
  • Building and deploying ML models
  • Real-world AI engineering projects
  • Industry best practices
  • Resume and interview preparation

Why It’s Valuable: IBM designed this certificate knowing exactly what employers want. Every project is portfolio-ready. You’ll have tangible work to show employers.

The focus on practical deployment means you learn not just how to build models, but how to put them in production — crucial knowledge most ML courses skip.

Best For: Career changers wanting to land an AI engineering role, developers wanting practical ML skills, people with limited time.

Time Commitment: 4–5 months at 5–7 hours/week

Enrollment: 173,999 professionals have enrolled

Job Outcomes: IBM tracks employment outcomes — people completing this certificate get job offers

Career Impact: This certificate is recognized by employers. It carries weight on your resume.

Here is the link to join this course — Take IBM AI Engineering Professional Certificate

4. IBM Deep Learning with PyTorch, Keras, and TensorFlow Professional Certificate

If you want to go deep into the tools and frameworks, this certificate is your path. It’s hands-on, framework-heavy, and practical.

What You’ll Learn:

  • PyTorch fundamentals and advanced techniques
  • Keras API and TensorFlow ecosystem
  • Building CNNs from scratch
  • Transfer learning and fine-tuning
  • Building and training RNNs and LSTMs
  • Natural Language Processing with deep learning
  • Practical deep learning projects
  • Deployment and production considerations

Why It’s Different: Most deep learning courses teach concepts then show implementations. This course teaches frameworks as concepts. You learn PyTorch, Keras, and TensorFlow deeply.

You build actual production-grade models using real frameworks. By the end, you can pick up any deep learning project and execute it.

Best For: Python developers wanting deep learning skills, engineers needing framework expertise, researchers needing implementation skills.

Time Commitment: 3–4 months at 8–10 hours/week

Enrollment: 10,494 professionals — smaller, focused cohort

Framework Coverage: PyTorch, Keras, TensorFlow — the three most important frameworks

Practical Focus: Every module includes hands-on projects using real datasets

Here is the link to join this certification — IBM Deep Learning with PyTorch, Keras, and TensorFlow Professional Certificate

5. Data Analytics and Deep Learning Specialization

This specialization takes a unique angle — it combines data analytics with deep learning, showing you how real-world data flows into deep learning pipelines.

What You’ll Learn:

  • Advanced data preprocessing and cleaning
  • Big data technologies and tools
  • Exploratory data analysis
  • Building predictive models with deep learning
  • Analyzing complex datasets
  • Data visualization techniques
  • End-to-end ML pipeline development
  • Real-world case studies

Why It’s Valuable: Most people learn deep learning in isolation. This specialization shows you the complete journey: data collection → preprocessing → analysis → modeling → deployment.

You learn that deep learning is just the final piece of a much larger system. Understanding the complete pipeline makes you a 10x better engineer.

Best For: Data analysts transitioning to deep learning, engineers building end-to-end ML systems, people wanting the complete ML lifecycle.

Time Commitment: 4–5 months at 6–8 hours/week

Unique Angle: Data-first approach instead of just algorithm-focused

Real-World Focus: Emphasis on working with messy, real-world data

Here is the link to join this course — Data Analytics and Deep Learning Specialization

My Recommended Learning Path

Path 1: Complete ML/DL Mastery (6–12 months)

  1. Months 1–4: Machine Learning Specialization
    Build your foundation
  2. Months 5–10: Deep Learning Specialization
    Go deep into neural networks
  3. Months 11–12: IBM Deep Learning with Frameworks
    Master implementation

Path 2: Fast-Track to Employment (4–5 months)

  1. Month 1: Machine Learning Specialization
    Get fundamentals fast
  2. Months 2–4: IBM AI Engineering Professional Certificate
    Build portfolio and get job-ready

Path 3: Data-Centric Learning (5–6 months)

  1. Months 1–3: Data Analytics and Deep Learning Specialization
    Learn complete pipeline
  2. Months 4–6: Deep Learning Specialization
    Deepen deep learning knowledge

Why These 5 Courses and Professional certificates Stand Out?

  1. Taught by Andrew Ng — The person who literally created modern AI education (ML and DL specializations)
  2. Taught by IBM — Industry leader with real-world ML/DL applications (IBM certificates)
  3. Practical Focus — Every course includes real projects with real data
  4. Job-Ready — Certificates and specializations recognized by employers
  5. Updated for 2026 — Including transformers, latest techniques, modern frameworks
  6. Flexible — Learn at your own pace, on your own schedule
  7. Affordable — Especially with Coursera Plus discount, they are now offering 40% discount on annual plan.

Coursera Plus | Unlimited Access to 10,000+ Online Courses

Unlock Everything With Coursera Plus

Here’s the game-changer: instead of buying individual courses, get Coursera Plus.

What You Get:

  • All 3,000+ Coursera courses (unlimited)
  • All specializations and professional certificates
  • Guided projects
  • Hands-on labs
  • One-year subscription

The Math:

  • Machine Learning Specialization alone: $39/month (~$156 for 4 months)
  • Deep Learning Specialization: $39/month (~$234 for 6 months)
  • IBM AI Certificate: $39/month (~$156 for 4 months)

Total if bought separately: $546+

Coursera Plus at 40% OFF: ~$239.40 for 12 months (regularly $399)

You pay $239.40 and get unlimited access to all of these courses plus 2,995 others. You could take 10 courses and it pays for itself.

This 40% discount is limited. When it expires, prices go back to regular pricing.

Get Coursera Plus at 40% OFF

The Bottom Line

That’s all about the 5 best Coursera courses, specialization and professional certificate to learn Machine Learning and Deep Learning in 2026. Machine Learning and Deep Learning are the most important skills you can learn in 2026.

These five Coursera courses give you a complete pathway from absolute beginner to job-ready professional:

  1. Machine Learning Specialization — Build your foundation
  2. Deep Learning Specialization — Master neural networks
  3. IBM AI Engineering — Get employed fast
  4. IBM Deep Learning Frameworks — Master implementation
  5. Data Analytics + DL — Understand the complete pipeline

Pick a path based on your goal. Commit to it. Actually do the projects. In 6 months, you’ll be miles ahead of developers who are still “thinking about” learning ML.

Your best time to start was yesterday. Your second-best time is today.

Start Your ML Journey

The future of AI belongs to people who learn it now. Make sure you’re one of them.

Start with Coursera Plus today and get unlimited access to all these courses plus thousands more.

Happy learning!

Other AI and Machine Learning articles you may like

Thanks for reading this article. If you like this article and these Coursera AI courses then please share them with your friends and colleagues. If you have any questions or feedback, then please drop a note.

P. S. — By the way, if you find Coursera courses useful, which they are because they are created by reputed companies and universities around the world, I suggest you join the Coursera Plus, a subscription plan from Coursera which gives you unlimited access to their most popular courses, specialization, professional certificate, and guided projects. It cost around $399/year but its complete worth of your money as you get unlimited certificates.

Coursera Plus | Unlimited Access to 10,000+ Online Courses


Top 5 Coursera Courses and Specializations to Learn Machine Learning and Deep Learning in 2026 was originally published in Javarevisited on Medium, where people are continuing the conversation by highlighting and responding to this story.

This post first appeared on Read More