
Deep Learning for Academic Research
Empowering Academicians to Revolutionize Research with Deep Learning
Skills you will gain:
About Program:
The Deep Learning for Academic Research workshop focuses on the theoretical foundations and practical applications of deep learning in academia. Through hands-on projects and case studies, participants will gain expertise in leveraging neural networks, advanced architectures, and data-driven methodologies to enhance their research outputs. The workshop is tailored for academicians and PhD scholars aiming to integrate deep learning into their research workflows.
Aim: This workshop equips researchers and academicians with in-depth knowledge of deep learning techniques, emphasizing their applications in academic research. Participants will learn to design, implement, and analyze deep learning models for solving complex research problems across disciplines.
Program Objectives:
- Provide a comprehensive understanding of deep learning concepts and frameworks.
- Equip participants with practical skills for implementing deep learning in academic research.
- Teach data preprocessing, model optimization, and ethical AI practices.
- Enable participants to use deep learning tools for publication-ready research.
- Develop a capstone project demonstrating real-world application of deep learning in research.
What you will learn?
- Introduction to Deep Learning
- Deep Learning vs. Machine Learning
- Overview of neural networks: Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs)
- Deep Learning Frameworks
- Setting up TensorFlow, Keras, and PyTorch for research
- Building and training neural networks
- Convolutional Neural Networks (CNNs)
- Applications of CNNs in image processing and research
- Practical hands-on: Building CNN models
- Recurrent Neural Networks (RNNs) and Long Short-Term Memory (LSTM)
- Applications in time-series data and sequence prediction
- Model Evaluation and Tuning in Deep Learning
- Model evaluation metrics for deep learning
- Tuning deep learning models for improved performance
Day wise Schedule:
- Day 1: Introduction to Deep Learning and Frameworks
- Setting up TensorFlow and Keras for research
- Introduction to neural networks
- Day 2: Building Convolutional Neural Networks (CNNs)
- Practical session: Building and training CNNs on research datasets
- Day 3: Recurrent Neural Networks (RNNs) and LSTM
- Hands-on session: Applying RNNs and LSTM to time-series data
- Day 4: Deep Learning Model Evaluation and Optimization
- Practical: Tuning and evaluating deep learning models for research
Mentor Profile
Fee Plan
Get an e-Certificate of Participation!

Intended For :
Academicians, researchers, and PhD scholars across various disciplines such as engineering, healthcare, social sciences, and natural sciences.
Career Supporting Skills
Program Outcomes
- Mastery of deep learning techniques tailored for academic research.
- Practical experience with frameworks like TensorFlow and PyTorch.
- Knowledge of advanced architectures such as CNNs, RNNs, and transformers.
- Ability to develop reproducible and ethical deep learning research projects.
