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Course Overview

This program provides an in-depth journey into Deep Learning using Python. Learners begin with neural network fundamentals, RNNs, LSTMs, GRUs, embeddings, sentiment analysis, and transformer-based models like BERT and HuggingFace. The course also covers text generation, translation, and encoder-decoder architectures. Deep learning modules include perceptrons, CNNs, transfer learning, GANs, embeddings, autoencoders, and optimization methods. Students gain hands-on experience in building, deploying, and monitoring AI models, while addressing data drift and retraining. Practical case studies and end-to-end ML projects emphasize deployment, scalability, and governance using TensorFlow, scikit-learn, Pandas, and NumPy.

Our programming will be done in Python.

We will use scikit-learn, NumPy, and Pandas for general programming tasks, and the TensorFlow deep learning framework for building AI models.

All topics will be taught accordingly.

Course Content

  • Problem Definition ( Any one Algorithm will be used)
  • Introduction of Deep Learning
  • Basics of Statistics , Linear Algebra , Probablity
  • Problem Definition
  • Data Collection
  • Data Preprocessing
  • EDA
  • Data Partioning
  • Metrics for Regression and Cllasification
  • Simple Perceptron
  • Types of Layers ( Dense , hidden , Input)
  • Optimizers
  • Regularisation , Batch Normalisation
  • Methods of Model Building
  • Introduction to Convoultional Network
  • Prebuilt models
  • Transfer Learning
  • GAN
  • Clusstering , RBM
  • Introduction to Embeddings
  • Introduction to LSTMS
  • NLP Tasks ( Encoder - Decoder, Transformers)
  • Autoencoders
  • Hyper parameter tuning
  • Model evaulation
  • Model Deployment
  • Model Monitoring
  • Data Drift
  • Model Retrainig
  • Deep Learning in Clouds
  • Deep Learning for Mobiles and IOT
  • Auto ML

1: Do I need any experience?

Absolutely! Many AI courses are designed specifically for beginners. They start with foundational concepts and often use beginner-friendly tools and platforms that minimize complex coding. Look for courses labeled "Introductory," "No-code AI," or "AI for Everyone." These will help you build a solid understanding of the principles before you advance to more technical, programming-heavy topics.
These terms are often used interchangeably, but they represent a hierarchy of concepts:
- Artificial Intelligence (AI) is the broadest field, focused on creating machines capable of intelligent behavior.
- Machine Learning (ML) is a subset of AI that gives computers the ability to learn from data without being explicitly programmed for every task.
- Deep Learning (DL) is a further subset of ML that uses complex neural networks to solve advanced problems like image and speech recognition.
Most foundational courses will cover the relationship between these fields, while specialized courses will dive deep into one area.
Our courses are project-based to ensure you gain hands-on experience. You'll work on real-world projects such as building a movie recommendation system, developing a chatbot, or creating an image classifier. These projects form a practical portfolio that demonstrates your skills to employers. This hands-on approach prepares you for roles like AI Specialist, Machine Learning Engineer, or Data Analyst, and equips you with in-demand skills to solve business problems.

Student Reviews

Considering primary motivation for the generation of narratives is a useful concept