Program Highlights
In the era of AI-driven innovation, deep learning is the backbone of modern applications in vision, language, automation, and predictive intelligence. InfosecTrain’s Deep Learning Specialization Training is an advanced, industry-focused program designed for AI engineers, developers, and data professionals who want to build production-ready neural networks. Participants gain expertise in designing and deploying CNNs, RNNs, Transformers, and generative models using TensorFlow and PyTorch, moving beyond theory into real-world AI model training, optimization, and deployment for enterprise and research use cases.
28 Hour LIVE Instructor-led Training
Hands-on Labs
Practical Applications
Real-world projects
Capstone Project
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Dedicated Telegram Support Group
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InfosecTrain’s Deep Learning Specialization Training will offer a comprehensive deep learning specialization with hands-on projects. This Deep Learning Online Training will cover Neural Networks, CNN, RNN, NLP, and essential AI concepts, making it ideal for beginners and professionals. Recognized as one of the Best Deep Learning Training in India, our Deep Learning training blends theory and practical exposure. This AI and Deep Learning Training helps participants master Machine Learning (ML) and Deep Learning (DL) skills with real-time use cases and industry-ready certification support.
- Module 1: Introduction to Deep Learning
- What is AI, ML, and Deep Learning? Differences and applications.
- Understanding data-driven learning and neural network basics.
- Introduction to Python libraries for deep learning (NumPy, TensorFlow, PyTorch).
- Hands-On Lab: Build a simple neural network to recognize handwritten digits (MNIST).
- Module 2: Neural Network Fundamentals
- How neural networks learn: forward propagation, backward propagation, and gradient descent.
- Activation functions, cost functions, and vectorization concepts.
- Regularization techniques: L1, L2, and Dropout.
- Hands-On Lab: Train a fully connected neural network on MNIST or CIFAR-10.
- Module 3: Convolutional Neural Networks (CNNs)
- Understanding feature extraction in images using convolutions and pooling.
- Popular CNN architectures: LeNet, AlexNet, VGG, ResNet.
- Image preprocessing, data augmentation, and handling overfitting.
- Hands-On Lab: Build an image classification model for CIFAR-10 or custom dataset.
- Mini Project: Detect objects in images using CNN.
- Module 4: Sequence Models and Recurrent Neural Networks
- Sequential data: text, speech, and time-series modeling.
- RNNs, LSTM, and GRU units: how memory helps predict sequences.
- Handling long-term dependencies and vanishing gradient problems.
- Hands-On Lab: Sentiment analysis on movie reviews using LSTM.
- Mini Project: Next-word prediction for text sequences.
- Module 5: Attention Mechanism and Transformers
- Introduction to attention: focusing on relevant data points in sequences.
- Transformer architecture: encoder-decoder, multi-head attention, and self-attention.
- Applications in NLP: translation, summarization, and question-answering systems.
- Hands-On Lab: Build a transformer-based text classification model.
- Mini Project: Summarize text or classify documents using transformers.
- Module 6: Advanced Deep Learning Concepts
- Transfer Learning: leveraging pre-trained models to save time and resources.
- Generative Models: autoencoders and GANs for creative AI solutions.
- Fine-tuning models for domain-specific tasks.
- Hands-On Lab: Fine-tune a pre-trained CNN or Transformer for a custom dataset.
- Module 7: Deployment and Real-World Applications
- Evaluating model performance: metrics, confusion matrices, and error analysis.
- Deploy AI models using Flask, FastAPI, or Streamlit.
- Integrating AI models into web apps or business workflows.
- Hands-On Lab: Fine-tune a pre-trained CNN or Transformer for a custom dataset.
- Capstone Project: End-to-end AI solution combining multiple deep learning techniques.
This training is ideal for:
- AI/ML Engineers looking to strengthen deep learning expertise.
- Data Scientists and Analysts who want to apply deep learning in real-world problems.
- Software Developers and Programmers aiming to enter the AI/ML domain.
- Students and professionals seeking practical hands-on experience with AI.
- Professionals in Finance, Healthcare, Retail, or Security who want to leverage AI for automation, analysis, and predictive modeling.
- Python Programming: Basic understanding of variables, loops, functions, and libraries.
- Machine Learning Fundamentals: Understanding supervised vs. unsupervised learning, basic regression/classification concepts.
- Mathematics: Basic linear algebra (vectors, matrices) and statistics concepts.
- Optional: Familiarity with Pandas, NumPy, or Jupyter Notebooks for coding practice.
Upon successful completion of the training, participants will be able to:
- Understand neural networks and deep learning fundamentals.
- Build and train CNNs, RNNs, LSTMs, and Transformer models.
- Apply deep learning to computer vision, NLP, and time-series tasks.
- Optimize models with advanced techniques for better performance.
- Deploy models into real-world applications and workflows.
- Build portfolio-ready projects demonstrating practical AI skills.
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It was a very good experience with the team. The class was clear and understandable, and it benefited me in learning all the concepts and gaining valuable knowledge.
I loved the overall training! Trainer is very knowledgeable, had clear understanding of all the topics covered. Loved the way he pays attention to details.
I had a great experience with the team. The training advisor was very supportive, and the trainer explained the concepts clearly and effectively. The program was well-structured and has definitely enhanced my skills in AI. Thank you for a wonderful learning experience.
The class was really good. The instructor gave us confidence and delivered the content in an impactful and easy-to-understand manner.
The program helped me understand several areas I was unfamiliar with. The instructor was exceptionally skilled and confident in delivering content.
The program was well-structured and easy to follow. The instructor’s use of real-life AI examples made it easier to connect with and understand the concepts.
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Frequently Asked Questions
What is the Deep Learning Specialization Training Course by InfosecTrain?
An advanced Deep Learning Training Course for AI engineers and developers, covering Neural Networks, CNNs, RNNs, Transformers, and real-world model deployment through hands-on labs and projects.
Who can join the Deep Learning Specialization Training?
AI/ML engineers, data scientists, developers, analysts, and tech professionals aiming to master Deep Learning, computer vision, NLP, and AI automation workflows.
What are the prerequisites for this Deep Learning Training?
Basic Python programming, machine learning concepts, and linear algebra/statistics. Familiarity with NumPy, Pandas, TensorFlow, or PyTorch recommended.
What modules are included in the Deep Learning Specialization Course?
Modules cover Deep Learning fundamentals, Neural Networks, CNNs, RNNs/LSTMs, Transformers, transfer learning, generative models, deployment, and a capstone project.
Does InfosecTrain provide certification for this training?
Yes. Participants receive a certificate of completion issued by InfosecTrain, validating skills in Deep Learning, CNNs, RNNs, Transformers, and model deployment.
How long is the Deep Learning Specialization Training?
28 hours of live instructor-led training, including hands-on labs, mini-projects, and a capstone project.
What tools and frameworks are covered in the course?
Python, NumPy, TensorFlow, PyTorch, Pandas, Flask, FastAPI, Streamlit, applied to AI and Deep Learning Training workflows.
Is this Deep Learning Training available online?
Yes. InfosecTrain Deep Learning Online Training includes live sessions, recorded lectures, labs, and project-based learning accessible remotely.
Are there any practical or hands-on projects included?
Yes. Includes hands-on labs, mini-projects in computer vision and NLP, and a capstone project for production-ready deep learning solutions.
How can I enroll in the Deep Learning Specialization Training Course?
Enroll via the InfosecTrain website by selecting the course and completing registration, or you can contact our course advisors by emailing us at sales@infosectrain.com.