IT

CCS355: Neural Networks and Deep Learning syllabus for IT 2021 regulation (Professional Elective-VII)

Neural Networks and Deep Learning detailed syllabus for Information Technology (IT) for 2021 regulation curriculum has been taken from the Anna Universities official website and presented for the IT students. For course code, course name, number of credits for a course and other scheme related information, do visit full semester subjects post given below.

For Information Technology 6th Sem scheme and its subjects, do visit IT 6th Sem 2021 regulation scheme. For Professional Elective-VII scheme and its subjects refer to IT Professional Elective-VII syllabus scheme. The detailed syllabus of neural networks and deep learning is as follows.

Neural Networks and Deep Learning

Course Objectives:

Download the iStudy App for all syllabus and other updates.
Get it on Google Play

Unit I

INTRODUCTION 6 Neural Networks-Application Scope of Neural Networks-Artificial Neural Network: An IntroductionEvolution of Neural Networks-Basic Models of Artificial Neural Network- Important Terminologies of ANNs-Supervised Learning Network.

Unit II

Download the iStudy App for all syllabus and other updates.
Get it on Google Play

Unit III

THIRD-GENERATION NEURAL NETWORKS 6 Spiking Neural Networks-Convolutional Neural Networks-Deep Learning Neural Networks-Extreme Learning Machine Model-Convolutional Neural Networks: The Convolution Operation – Motivation -Pooling – Variants of the basic Convolution Function – Structured Outputs – Data Types – Efficient Convolution Algorithms – Neuroscientific Basis – Applications: Computer Vision, Image Generation, Image Compression.

Unit IV

Download the iStudy App for all syllabus and other updates.
Get it on Google Play

Unit V

RECURRENT NEURAL NETWORKS 6 Recurrent Neural Networks: Introduction – Recursive Neural Networks – Bidirectional RNNs – Deep Recurrent Networks – Applications: Image Generation, Image Compression, Natural Language Processing. Complete Auto encoder, Regularized Autoencoder, Stochastic Encoders and Decoders, Contractive Encoders.

Lab Experiments:

Download the iStudy App for all syllabus and other updates.
Get it on Google Play

Additional Experiments:

  1. Train a Deep learning model to classify a given image using pre trained model
  2. Recommendation system from sales data using Deep Learning
  3. Implement Object Detection using CNN
  4. Implement any simple Reinforcement Algorithm for an NLP problem

Course Outcomes:

At the end of this course, the students will be able to:

  1. Apply Convolution Neural Network for image processing.
  2. Understand the basics of associative memory and unsupervised learning networks.
  3. Apply CNN and its variants for suitable applications.
  4. Analyze the key computations underlying deep learning and use them to build and train deep neural networks for various tasks.
  5. Apply autoencoders and generative models for suitable applications.

Text Books:

Download the iStudy App for all syllabus and other updates.
Get it on Google Play

Reference Books:

  1. Aurelien Geron, Hands-On Machine Learning with Scikit-Learn and TensorFlow, Oreilly, 2018.
  2. Josh Patterson, Adam Gibson, Deep Learning: A Practitioners Approach, OReilly Media, 2017.
  3. Charu C. Aggarwal, Neural Networks and Deep Learning: A Textbook, Springer International Publishing, 1st Edition, 2018.
  4. Learn Keras for Deep Neural Networks, Jojo Moolayil, Apress,2018
  5. Deep Learning Projects Using TensorFlow 2, Vinita Silaparasetty, Apress, 2020
  6. Deep Learning with Python, FRANQOIS CHOLLET, MANNING SHELTER ISLAND,2017.
  7. S Rajasekaran, G A Vijayalakshmi Pai, Neural Networks, FuzzyLogic and Genetic Algorithm, Synthesis and Applications, PHI Learning, 2017.
  8. Pro Deep Learning with TensorFlow, Santanu Pattanayak, Apress,2017
  9. James A Freeman, David M S Kapura, Neural Networks Algorithms, Applications, and Programming Techniques, Addison Wesley, 2003.

For detailed syllabus of all the other subjects of Information Technology 6th Sem, visit IT 6th Sem subject syllabuses for 2021 regulation.

For all Information Technology results, visit Anna University IT all semester results direct link.

Leave a Reply

Your email address will not be published. Required fields are marked *

*