Genre: eLearning | MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | VTT | Size: 3.66 GB | Duration: 6h 28m
Go from Beginner to Expert with building intuition on single neuron till deep neural networks in Keras & tensorflow
What you'll learn
Deep learning using Keras to implement various problems like Binary Classification, Multi Class classification, & Regression
Intuition on Deep Learning Neural Networks by implementing the code in Python using Keras Library
Learn Python to kick start Deep Learning journey
Build intuition on Various Models in Deep learning and Learning algorithms in Deep learning
Description
You might have seen in many articles as -
"AI is the new future"
"Deep Learning Will Make Truly Self-Driving Cars a Reality"
"Deep Learning hottest career for the next decade "
"Deep Learning aides in Scientific discovery "
... the list goes on!!!
Yes. AI is the new future, with the various technological advancements in hardware and software, Deep Learning algorithms are able to perform better compared to last decade. Combined with true power in hardware and research for better Deep Learning models, the field AI is growing exponentially.
With all the latest demand we have in this present world, We at ManifoldAILearning decided to create the course - DEEP LEARNING from Scratch- Keras Tensorflow
With this course, you will kick start your journey into deep learning and build intuition on Deep Neural Networks with hands on exercise and high quality video tutorial.
This is the course structure of Deep learning :
Basic Nuts & Bolts of Deep Learning
Crash Course on Python
Understanding various models in Deep learning
Implement Deep learning neural networks using keras with Tensorflow backend
Implement Deep learning on common types of problems like Binary Classification, Multi Class classification & Regression
*** Why Deep Learning 101 !!***
Here are top reasons we think Deep Learning is best for you:
1. EXPERT DESIGNED COURSE STRUCTURE
The one challenge every learner finds is , getting lost in the topics of Deep Learning before stepping into it. Hence we focused on building a sold structure for this course, so that no matter what your skill level may be, you will find it intuitive on the concepts of Essentials required for kick starting your Deep learning journey.
With Exercise after each module will help you as a learner to gain knowledge as well as build confidence on the topics.
2. HIGH QUALITY INTUITIVE TUTORIALS
We want the students to gain intuition as well as knowing how to make it work by coding. So, we have divided our each topic into two sub sections, where we explain the concepts theoretically with intuitive videos as well as practical section to implement the topics we have learnt in theory section. This will make you, as a student to have a complete learning experience.
3. PRACTICAL HANDS-ON EXERCISE
Every practical section starts with us coding along with you , and explaining & build intuition as how each line works and behave. We believe this is important, as after the completion of this course, you should be able to apply to other datasets of your choice.
All the codes and data sets are also available for you to download & practice at your own pace.
We believe that this course will be very useful to you, as Deep learning 101 is designed to kick start your Deep Learning journey with required essentials and be a part of technological advancement which is driving today & Tomorrow's technology.
We believe that -
" The best time to prepare for tomorrow's technology is by learning today ".
So Start now!! We will see you in Lesson 1 of Deep Learning 101
- Team ManifoldAILearning
Who this course is for:
Anyone looking to start career in Deep learning
Anyone wants to build Deep learning - Neural networks
Anyone wants to implement Deep Learning using Keras
Anyone wants to learn to code in Python to implement Deep learning
Anyone wants to be in Latest Trend in technology - Deep learning
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