Raj Cloud Technologies

Artificial Intelligence + Machine Learning Training

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NEW BATCH STARTING, 2 September 2025

Live Instructor Led Training

Artificial Intelligence (AI) enables machines to simulate human thinking, while Machine Learning (ML), a subset of AI, allows systems to learn from data. Real-world examples include AI powers chatbots for customer support; in healthcare, it predicts diseases from scans; in finance, it detects fraud; in e-commerce, it recommends products; and in manufacturing, it predicts equipment failures to prevent downtime.

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Artificial Intelligence + Machine Learning Online Training

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Course Curriculum

Artificial Intelligence with Machine Learning Training Curriculum

Week 1: Basic Statistics for AI/ML and Python Installation

Understand the project life cycle

  • Roles and responsibilities of different kinds of roles.
  • What is Data?
  • Types of Data: structured and unstructured
  • Statistical data types

Descriptive Statistics

  • Mean, Median, Mode
  • Range and Variance and Standard Deviation
  • Scatter plot
  • Real-world scenarios of descriptive stats in AI

Python Basics

  • Introduction to Jupiter Note book / Google collab
  • Data Types (int, float, str, bool)
  • Creating Variables
  • Arithmetic, comparison, Logical Operators

Control Structures & Functions

  • for loops
  • range() , Functions (pre-defined, user defined) expressions

Week 2: Python Libraries and Fundamentals in Machine Learning – Part 1

Python Libraries

  • NumPy arrays and vectorized operations
  • Pandas and with exploring a dataset
  • Matplotlib basic plotting
  • Real-world EDA practice

ML Pipeline Overview

  • ML lifecycle and workflow
  • Supervised vs. Unsupervised learning

Regression Algorithms

  • What is meant by Model
  • Linear Regression (Simple & Multiple)
  • Regression evaluation metrics (MSE, RMSE, R^2)
  • Hands-on: Predicting house prices

Classification Algorithms

  • Logistic Regression fundamentals
  • Classification use cases (e.g., cancer detection)
  • Hands-on with sklearn models

Model Evaluation Techniques

  • Confusion Matrix
  • Accuracy score

Week 3: Advanced Machine Learning – Part 2

Feature Engineering

  • One-hot and Label Encoding
  • Feature Scaling: Standard vs MinMax

Data partition:

  • Training and Test data

Tree-Based Models

  • Decision Tree algorithm
  • Splitting Criteria: Gini vs Entropy
  • Overfitting and pruning techniques
  • Bagging and Random Forest ensemble learning

Unsupervised Learning

  • K-Means Clustering: Elbow Method
  • Distance metrics: Euclidean
  • Applications of clustering in real-world problems
  • Hands-on clustering mini project
  • Feature selection techniques

# ASSIGNING A PROJECT TO WORK ON MACHINE LEARNING APPLICATIONS

Week 4: Fundamentals in Natural Language Processing – Part 1

Introduction to NLP

  • NLP pipeline overview
  • Applications: chatbots, sentiment analysis, etc.
  • Challenges of NLP
  • Text encoding techniques overview
  • Introduction to nltk

Text Cleaning & Tokenization

  • Removing punctuation, numbers, stop words
  • Lemmatization vs Stemming
  • Tokenization using nltk
  • Case study: cleaning feedbacks data

Text Vectorization

  • Bag of Words (BoW)
  • TF-IDF implementation
  • Sparse matrix representation
  • Visualization with word clouds

Text Classification

  • Sentiment Analysis
  • End-to-end NLP pipeline using Scikit-learn
  • Dataset splitting and vectorization
  • Training Logistic Regression

# ASSIGNING A PROJECT TO WORK ON NLP BASED MACHINE LEARNING APPLICATION

Week 5: Fundamentals in Deep Learning – Part 1

Neural Networks Fundamentals

  • Perceptron model and activation functions
  • Feedforward NN architecture
  • Forward and backward propagation
  • Loss functions: MSE, Cross-Entropy
  • Model intuition with simple examples

Training Deep Models

  • Epochs, Batches, and Batch Size
  • Optimizers: SGD, Adam
  • Hands-on: Build a basic NN using Keras

Keras/TensorFlow Practice

  • TensorFlow/Keras basics
  • Model.compile(), .fit(), .evaluate()
  • Evaluate performance on test data
  • Case Study: Improve model performance

# ASSIGNING A PROJECT TO WORK ON ANN

Week 6: Advanced in Natural Language Processing – Part 2

Word Embeddings

  • Word2Vec: Skip-gram & CBOW
  • Visualizing word vectors
  • Hands-on: Pre-trained embeddings usage

Sequence Models and RNN Basics

  • Sequential data and temporal relationships
  • Introduction to RNNs and limitations
  • Tokenizing and padding sequences
  • Preparing text data for DL
  • Keras Embedding layer overview

NLP Capstone Project

  • Select a domain-specific problem (e.g., reviews, healthcare)
  • Dataset analysis and cleaning
  • Model selection and evaluation
  • Presenting the outcome
  • Review and feedback

# NLP Case Study: Embeddings → RNN Sequence Models

Week 7: Advanced in Deep Learning – Part 2

CNNs for Image Classification

  • Convolution and pooling operations
  • CNN architecture and feature extraction
  • Activation maps
  • Building CNNs with Keras
  • MNIST image classification project

Transfer Learning

  • Concept of Transfer Learning
  • Pre-trained models: VGG16, ResNet50
  • Feature extraction vs Fine-tuning
  • Load, modify and evaluate pre-trained models
  • Image classification case study

# ASSIGNING A PROJECT TO WORK ON CONVOLUTIONAL NEURAL NETWORKS(CNN)

Week 8: Advanced AI – Part 2

Transformers & Hugging Face

  • Introduction to transformers
  • Pretrained models: BERT, GPT
  • Hugging Face installation & usage
  • Text classification pipeline with Transformers
  • Fine-tuning basics

DL with NLP (Transformers)

  • Transformer architecture recap
  • BERT for sequence classification
  • Tokenizer and model pipeline
  • Evaluate model performance
  • NLP fine-tuning best practices

Deep Learning Capstone Project

  • Choose between NLP or Image-based project
  • Define objective and strategy
  • Model training and validation

# ASSIGNING A PROJECT TO WORK ON (NLP + DL)

Career Designations You Can Aim For:

After completing this program, you’ll be equipped to pursue exciting roles such as:

• Machine Learning Engineer
• Data Scientist
• AI Engineer
• NLP Engineer
• Computer Vision Engineer
• Data Analyst with AI Expertise
• AI Product Consultant / AI Research Associate

These roles span across sectors like IT, healthcare, finance, e-commerce, manufacturing, and even education.

Upon completing this training

What you’ll learn Upon completing this training

Course Instructed By:

Mr.Adhvaith Reddy

AI & Data Science trainer with 15+ years in EdTech, specializing in hands-on, outcome-based programs. He simplifies complex AI/ML concepts for diverse learners and designs industry-ready curriculum using tools like Python, SQL, and Tableau, empowering career transitions and real-world learning in technical education. Approved trainer by Raj Cloud Technologies.

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Artificial Intelligence + Machine Learning

19,999 30,000

Live Session Timing: 8:00 PM, IST

What our students say?

Meghana R
Meghana R
@meghana-r
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I just want to share my experience about Natraj sir training, it is one of the best training I had ever on informatica. I learned lots of real time concepts from Raj sir training and also they are very useful in my job. The training is based on Realtime scenarios so that you will get familiar with the concepts of informatica and Oracle and Unix. Thank you Raj sir for giving us such a nice training and so much of confidence...
Akash Dhus
Akash Dhus
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It's a fantastic course for a beginner also. I could feel the effort that was put into to make sure people understood. Thank you Raj, when I become one the greatest, I will remember this beginning. A wonderful experience . The lecturers are great with a very nice way on interacting and lots of useful material. Thank you for all your cooperation. Hope to see more of you in future. Thank you once again.
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