Course Objectives:
The course will enable the students to
Course | Learning outcome (at course level) | Learning and teaching strategies | Assessment Strategies | |
Course Code | Course title | |||
24DCAI 802A |
DEEP LEARNING LAB (PRACTICAL) | CO157.Apply the concepts of image processing. CO158. Compare and evaluate the performance of different deep learning models. CO159. Develop deep learning models to encode and reconstruct the original data. CO160. Modify the hyper-parameters and optimize deep learning models. CO161. Develop custom ensembles using bagging, boosting and stacking. CO162. Contribute effectively in course-specific interaction
| Approach in teaching. Interactive Lectures, Group Discussion, Case Study
Learning activities for the students. Self-learning assignments, Machine Learning exercises, presentations
| Class test, Semester end examinations, Quiz, Practical Assignments, Presentation |
Practical based on following topics.
Computer Vision: -
Deep Learning: -
a) Select a suitable time series dataset. Example – predict sentiments based on product reviews
b) Apply for prediction
3. Implement an artificial neural network on GPUs
a) Implement ANN on GPUs.
b) Deploy the model using Amazon SageMaker or other platforms available.
4. Implement MLP, RBM, DBN algorithms.
5. Implement Auto-encoders for the following:
a) Data Compression
b) Image de-noising
c) Dimensionality reduction
6. Design and evaluate ensemble models using boosting stacking and bagging.
Suggested Text Books:
Aston Zhang, Zachary C. Lipton, Mu Li, and Alexander J. Smola, "Dive into Deep Learning", Amazon Science, 2021.
Suggested Reference Books:
Reference Journals:
e-Resources including links