Oreilly - Artificial Intelligence with Python – Deep Neural Networks - 9781789132670
Oreilly - Artificial Intelligence with Python – Deep Neural Networks
by Prateek Joshi | Released January 2018 | ISBN: 9781789132670


Learn different Artificial Intelligence learning techniques with neural networksAbout This VideoLearn the fundamentals of Deep Learning and use them to build intelligent systemsSolve real-world problems such as face detection, handwriting recognition, and moreWork with reinforcement learning, convolutional networks, and other deep learning conceptsIn DetailThe course is an introduction to the basics of deep learning methods. We will start with object detection and tracking, in which we will track faces, objects and eyes. We will then build a neural network and an OCR. We will then learn how to build learning agents that can learn from interacting with the environment. We will use Deep Learning with Convolutional Neural Networks, and use TensorFlow to build neural networks. We will then build an image classifier using convolutional neural networks. Show and hide more
  1. Chapter 1 : Object Detection and Tracking
    • The Course Overview 00:02:08
    • Installing OpenCV 00:01:35
    • Frame Differencing 00:02:43
    • Tracking Objects Using Colorspaces 00:03:26
    • Object Tracking Using Background Subtraction 00:03:25
    • Building an Object Tracker Using the CAMShift Algorithm 00:05:32
    • Optical Flow Based Tracking 00:04:42
    • Face Detection and Tracking 00:04:45
  2. Chapter 2 : Artificial Neural Networks
    • Introduction to Artificial Neural Networks 00:03:30
    • Building a Perceptron Based Classifier 00:02:40
    • Constructing Single and Multilayer Neural Networks 00:05:08
    • Building a Vector Quantizer 00:02:32
    • Analyzing Sequential Data Using Recurrent Neural Networks 00:02:25
    • Visualizing Characters in an Optical Character Recognition Database 00:02:36
    • Building an Optical Character Recognition Engine 00:03:23
  3. Chapter 3 : Reinforcement Learning
    • What Is Reinforcement Learning? 00:04:55
    • Creating an Environment 00:02:47
    • Building a Learning Agent 00:02:42
  4. Chapter 4 : Deep Learning with Convolutional Neural Networks
    • What are Convolutional Neural Networks? 00:05:33
    • Building a Perceptron-Based Linear Regressor 00:03:45
    • Building an Image Classifier Using a Single Layer Neural Network 00:02:53
    • Building an Image Classifier Using a Convolutional Neural Network 00:06:30
  5. Show and hide more

    Oreilly - Artificial Intelligence with Python – Deep Neural Networks


 TO MAC USERS: If RAR password doesn't work, use this archive program: 

RAR Expander 0.8.5 Beta 4  and extract password protected files without error.


 TO WIN USERS: If RAR password doesn't work, use this archive program: 

Latest Winrar  and extract password protected files without error.


 Coktum   |  

Information
Members of Guests cannot leave comments.


SermonBox - Seasonal Collection

SermonBox - The Series Pack Collection

Top Rated News

  • Christmas Material
  • Laser Cut & Print Design Elements Bundle - ETSY
  • Daz3D - All Materials - SKU 37000-37999
  • Cgaxis - All Product - 2019 - All Retail! - UPDATED!!!
  • DigitalXModels Full Collections
  • Rampant Design Tools Full Collections Total: $4400
  • FilmLooks.Com Full Collection
  • All PixelSquid Product
  • The Pixel Lab Collection
  • Envato Elements Full Sources- 3200+ Files
  • Ui8.NET Full Sources
  • The History of The 20th Century
  • The Dover Collections
  • Snake Interiors Collections
  • Inspirational Collections
  • Veer Fancy Collections
  • All Ojo Images
  • All ZZVE Collections
  • All Sozaijiten Collections
  • All Image Broker Collections
  • Shuterstock Bundle Collections
  • Tattoo Collections
  • Blend Images Collections
  • Authors Tuorism Collections
  • Motion Mile - Big Bundle
  • PhotoBacks - All Product - 2018
  • Dekes Techniques - Photoshop & Illustrator Course - 1 to 673
Telegram GFXTRA Group
Udemy - Turkce Gorsel Ogrenme Setleri - Part 2
Videohive Wow Pack Series


rss