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University & Pro Programs

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McCombs School of Business at The University of Texas at Austin

23 Weeks  • Online

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McCombs School of Business at The University of Texas at Austin

10 weeks  • Online

For Grade 8-12 students
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Master Artificial Intelligence
18 coding exercises 3 projects

Free Deep Learning Courses

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Skills: GAN, GAN research trends, Practical tips for effective GAN implementation, ethical implications

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Learn Deep Learning Online & Gain Certificates

What is Deep Learning?

Deep learning is a type of Artificial Intelligence (AI) that employs algorithms and techniques inspired by the arrangement and function of the human brain. It is based on a type of Machine Learning, where computers learn from data without relying on predetermined rules. It can be used to recognize objects, classify images, and understand natural language. Deep Learning (DL) revolutionizes how businesses, organizations, and industries work. It is becoming increasingly important to the current industry because of its potential to improve efficiency, reduce costs, and increase customer experience. Get familiar with this in-demand industry skill through Great Learning’s free Deep Learning courses that cover basic to advanced concepts.

 

Why Learn Deep Learning?

In the past decade, there has been a tremendous increase in the use of Deep Learning as Artificial Intelligence (AI) technology. This technology has been applied widely in various industrial fields, including medical diagnostics, autonomous driving, media & entertainment, and natural language processing. 

 

Deep Learning is a subset of Machine Learning, which is the capability of a computer system to learn without being explicitly programmed. It involves the use of artificial neural networks which emulate the workings of the human brain. In Deep Learning, the neural network is used to identify patterns in data and then learn to make decisions based on these patterns. 

 

In recent years, there has been an upsurge in demand for Deep Learning expertise in various industries. The technology is being used in industries ranging from medical diagnostics and autonomous driving to media & entertainment. 


One of the most common applications of Deep Learning is in medical diagnostics, which is used to identify different diseases by analyzing images or CT Scans. Deep Learning systems are also used in robotic surgery to help the robot determine the best route to take for a procedure. Similarly, Deep Learning is used in autonomous driving to detect objects such as pedestrians and vehicles. 

 

In the media & entertainment field, Deep Learning is used for video object segmentation and object recognition, as well as facial recognition and voice recognition. For example, Deep Learning can detect objects in a video, such as a person's face or clothes, and recognize movements or gestures, such as the action of raising a hand.


Deep Learning is applied to analyze and understand written or spoken language in Natural Language Processing(NLP). This technology can be used to detect sentiment in text, identify topics of conversations, and translate between languages. 


Learning Deep Learning has become essential for professionals in the various industries that are making use of it. With the current demand for Deep Learning expertise, gaining knowledge in this field has become essential for professionals who wish to stay ahead of the competition. It can be an invaluable asset for those who want to work in the cutting-edge field of AI technology.


Benefits of Learning Deep Learning
Deep learning has evolved into one of the most talked about topics in technology as more and more people are realizing the potential of this powerful machine learning technology. It has revolutionized the way computers can learn by enabling them to learn from large amounts of data. This has made it a valuable tool for businesses, researchers, and scientists. Here are some of the key benefits of learning Deep Learning.


1. Greater Prediction Accuracy
Deep learning algorithms are able to learn complex patterns and make predictions that are much more accurate than traditional Machine Learning algorithms. This improved accuracy is beneficial in many areas, such as medicine, finance, and robotics, where decision-making needs to be as precise as possible.

 

2. Increased Efficiency
Deep learning algorithms use advanced techniques such as natural language processing, convolutional neural networks, and recurrent neural networks to quickly process large sets of data. This results in faster and better predictions, saving businesses time and money.

 

3. Increased Automation
Machine Learning algorithms have been used for some time to automate tasks that would otherwise have to be done manually. Deep learning increases this automation by taking the capability a step further, allowing machines to understand complex data patterns and make decisions with minimal human intervention.

 

4. Faster Development
Deep learning algorithms are able to quickly develop models based on data that is provided. This makes the development of complex models much faster and more efficient than with traditional Machine Learning algorithms.

 

5. Improved Understanding 

Deep learning algorithms are able to understand data in greater depth than traditional Machine Learning algorithms. This improved understanding helps businesses and scientists to understand the data better and make better decisions.

 

These are only a few of the benefits of learning Deep Learning. As businesses and scientists continue to realize its potential, its use will only increase. By learning Deep Learning, you will be well-placed to take advantage of this rapidly advancing technology. Advance in your career by enrolling in Great Learning's Artificial Intelligence and Machine Learning Program by the University of Texas at Austin’s McCombs School of Business and gain in-demand industry skills along with the certificate of course completion.

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Learner reviews of the Free Deep Learning Courses

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Reviewer Profile

5.0

“Engaging and Informative Learning Experience”
I really appreciated the well-structured curriculum that covered both essential skills and tools. The instructor's clarity and the depth of the topics made it easy to follow, and I gained a lot of valuable knowledge. The quizzes and assignments helped reinforce my learning.
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5.0

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“Deepfake Basics: The Best Topic and Best Start to Learn”
Deepfakes are a type of synthetic media that use artificial intelligence (AI) to manipulate or generate images or videos. They can be used to convincingly replace someone's face in existing footage with someone else's, or even create entirely new, realistic-looking videos of people saying or doing things they never did. How Deepfakes Work: Deepfakes rely on a type of AI called deep learning, specifically a technique known as Generative Adversarial Networks (GANs). GANs consist of two neural networks.
Reviewer Profile

5.0

Country Flag India
“Deepfake Refers to Synthetic Media Artifacts That Manipulate Someone's Image or Voice to Create Fake but Convincing Video or Audio Recordings.”
Deepfakes use deep learning algorithms like neural networks to manipulate facial expressions, voice, and movement. While deepfakes have legitimate applications in entertainment, education, advertising, and social media, they also raise concerns about misinformation, identity theft, privacy invasion, and cyberbullying. To address these issues, various detection methods have been developed, including digital watermarking, machine learning-based detection, and visual inspection.
Reviewer Profile

5.0

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“Great Learning: Expert Faculty, Engaging Content, and a Supportive Community Transformed My Career!”
Great Learning transformed my career journey! Their expert faculty, engaging content, and supportive community provided a fantastic learning experience. The practical projects and industry-relevant curriculum helped me gain hands-on experience and boost my confidence. I highly recommend Great Learning to anyone looking to upskill or change careers!
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4.0

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“It Was Fun Learning and the Tools Were Amazing.”
The instructor demonstrated deep knowledge of the subject matter and employed an effective teaching style, making complex concepts more accessible. I appreciated their responsiveness to questions and willingness to provide extra help. The assignments and projects were challenging yet manageable, promoting a deeper understanding of the material, and the group discussions facilitated valuable interactions with peers. However, I believe incorporating more multimedia resources, such as videos or podcasts, would enhance the learning experience.
Reviewer Profile

4.0

“Interesting Way to Learn with Videos, but Needs Improved Accessibility with Subtitles”
I was able to learn more about AI thanks to these videos with the support of subtitles, but some others lack this accessibility element. Even so, I tried to learn with the help of the visual materials like the slides recorded in these videos. I'm deaf, so I'm learning these topics online where I can read and understand better with materials that I can process visually.
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5.0

Country Flag India
“I Gained a Solid Understanding of How Deepfakes Are Generated by Training Models on Extensive Datasets of Images and Videos.”
What I find fascinating about deepfakes is their innovative use of artificial intelligence to create highly realistic synthetic media. The technology showcases the incredible capabilities of deep learning, demonstrating how machines can learn intricate patterns and reproduce them in a way that can be nearly indistinguishable from reality.
Reviewer Profile

5.0

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“Great introductory course on deepfakes”
What a world! Deepfakes can achieve so much, and it's important to be aware of them. So, this is a good introductory course.
Reviewer Profile

5.0

Country Flag India
“Deepfakes Demonstration Course of AI”
Nicely structured Deepfakes demonstration course of Artificial Intelligence.
Reviewer Profile

5.0

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“I enjoyed how the practical applications and interactive discussions helped deepen my understanding.”
I loved the course; the way every module was made was amazing.

Meet your faculty

Meet industry experts who will teach you relevant skills in artificial intelligence

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Sunil Kumar Vuppala

Director-Data Science
  • IIT Roorkee, IIM Ahmedabad alumnus with 20+ years of experience
  • Director at Ericsson specializing in AI, ML, and analytics

Frequently Asked Questions

How can I learn the Deep Learning Course for free?

Great Learning offers free Deep Learning courses, which address basic to advanced concepts. Enroll in courses that suit your career goals through the pool of courses and earn Deep Learning course completion certificates.
 

Can I learn Deep Learning Courses on my own?

With the support of online learning platforms, it is now possible to learn concepts on your own. Great Learning Academy is a platform that provides free Deep Learning courses where learners can learn at their own pace.  
 

How long does it take to complete these Deep Learning courses?

These free Deep Learning courses offered by Great Learning Academy contain self-paced videos allowing learners to learn crucial Deep Learning skills at their convenience.
 

Will I have lifetime access to these Deep Learning courses with certificates?

Yes. You will have lifelong access to these free Deep Learning courses Great Learning Academy offers.

What are my next learning options after these Deep Learning courses?

You can enroll in Great Learning's Artificial Intelligence and Machine Learning Program by the University of Texas at Austin’s McCombs School of Business, which will help you gain advanced AIML skills in demand in industries. Complete the course to earn a certificate of course completion.

 

Is it worth learning Deep Learning?

Yes, Deep Learning can be very powerful. It is a rapidly growing field, and there are many potential applications for it. It can solve complex problems, from image recognition and speech recognition to language understanding and natural language processing. It can also be used in self-driving cars, robotics, and other autonomous applications.
 

Why is Deep Learning so popular?

Deep Learning has become increasingly popular in recent years due to its potential to solve complex problems, such as computer vision and natural language processing, more accurately and effectively than traditional Machine Learning methods. 
It is also popular because of its ability to quickly and accurately process large amounts of data, identify patterns, and extract valuable insights that can be used for decision-making. Furthermore, developing new algorithms and hardware tailored explicitly for Deep Learning has enabled the technology to become even more powerful and easy to use.
 

Will I get certificates after completing these free Deep Learning courses?

You will be awarded free Deep Learning certificates after the completion of your enrolled Deep Learning free courses.
 

What knowledge and skills will I gain upon completing these free Deep Learning courses?

You will learn about Tensorflow, Kera, neural networks, backpropagation, multilayer perceptron, and more through these free Deep Learning courses.
 

How much do these Deep Learning courses cost?

These Deep Learning courses are provided by Great Learning Academy for free, allowing any learner to learn Deep Learning and gain crucial skills.
 

Who are eligible to take these free Deep Learning courses?

Learners, from freshers to working professionals who wish to learn the latest skills in Deep Learning can enroll in these free Deep Learning courses and earn certificates of course completion.
 

What are the steps to enroll in these free Deep Learning courses?

Choose the free Deep Learning courses you are looking for and click on the "Enroll Now" button to start learning Deep Learning.
 

Why take Deep Learning courses from Great Learning Academy?

Great Learning Academy is the proactive initiative by Great Learning, the leading e-Learning platform, to offer free industry-relevant courses. Free Deep Learning courses contain courses ranging from beginner-level to advanced-level to help learners choose the best fit for them.

 

What jobs demand you learn Deep Learning?

There are several jobs that require you to learn Deep Learning, including:

  • AI Research Scientist
  • Machine Learning Engineer
  • Data Scientist
  • Computer Vision Engineer
  • Image Recognition Specialist
  • Autonomous Vehicle Engineer
  • Robotics Engineer
  • Natural Language Processing (NLP) Engineer
  • Speech Recognition Scientist