ACCELERATE WITH AI/ML ENGINEERING

04 MONTHS COMPREHENSIVE STUDY

AI Foundations Key Knowledge Areas

• AI Basics
• History of AI
• Rule Based AI to GenAI to Agentic
• AI Enterprise AI use cases
• Modern AI, Current Landscape,
• Job Opportunities
• Role of Mathematics,
• Statistics, Algorithms, Programming,
• Today’s Programming, Assisted Programming
• Programming Concepts / Building Blocks Introduction

• Python Intro
• IDEs
• Installations
• Variables
• Conditional Statements
• Loops
• Casting
• Strings
• Booleans
• Lists, Tuples, Sets, Dictionaries
• User defined functions
• Built in Functions
• Range, Regex,
• Libraries Installations PIP
• OOP Concepts
• Classes
• Constructor
• User Defined functions
• Polymorphism
• Inheritance
• Encapsulation
• Importing Modules, libraries
• Utilizing modules

• Python for AI
• Essential Python / mathematics
• Numpy Library
Numpy Important Functions
• Pandas Library
Pandas Important Functions
• Practical Examples

• Typical Data Workflows / Pipeline
• EDAs
• Data cleaning
• Data Wrangling
• Feature Engineering
• Practical Examples

Regression
Linear Regression
MSE
MAE

Classification,
Logistic Regression
Support Vector Machines
Confusion Matrix
TP-FP-TN-FN
Precision
Recall
F1-Score
Specificity
TPR
FPR
Practical Examples
Statistical Features
Class Balance Techniques
Random Sampling
Over Sampling
SMOTE
ADASYN
Under Sampling
TOMEK Links
Near Miss

• Clustering
K-Means
DBSCAN
• Dimensionality Reduction
Principal Component Analysis
Covariance, PC1, PC2
• Practical Examples

• RL Algorithm
• Q-Learning
• On Policy / Off Policy
• SARSA
• Practical Example

  • Additional ML Algos
  • Ensemble Learning
  • Bagging
  • Random Forest
  • Boosting
  •  XgBoost /  AdaBoost
  • Practical Examples
  • DDL
  • DML
  • DCL
  • TCL
  • Queries
  • Selection
  • Updating
  • Deletion
  • Clauses
  • Joins
  • Constraints
  • Aggregations

• Neural Network Basics
• Perceptron History
• Multi-Layer Perceptrons (MLPs)
• Activation Functions
• Sigmoid
• ReLu
• Softmax
• Forward & Backpropagation
• Loss Functions
• Binary Cross entropy
• Categorical Cross entropy
• Sparse categorical cross entropy
• Binary Data
• Little Endian / Big Endian
• Simple Model Evaluation
• Accuracy & Confusion Matrix
• Training Accuracy
• Training Loss
• Validation Accuracy
• Validation Loss
• Practical Implementation ANN
xamples

  • Text Preprocessing:
  • Tokenization,
  • Stop words
  • Stemming
  • Lemmatization
  • Bag of Words
  • TF-IDF
  • Word Embedding (Word2Vec)
  • Sentiment Analysis
  • Tools: NLTK, spaCy

Linguistic Analysis

  • LLMs Introduction
  • LLM-Specific Tokenization & Embeddings
  • Pre-training vs Fine-tuning (concepts)
  • Convolutions (Intuition)
  • Convolutional Neural Networks (CNNs)
  • Stride
  • Kernels
  • Common Kernels
  • Simple Image Classification
  • Image Segmentation (overview)
  • Object Detection
  • Practical Examples
  • RAG Concepts
  • Problems with LLMs
  • Practical Example
  • Prompt Controlling
  • Introduction to Sequence Models
  • Attention Mechanism (intuitive explanation)
  • Encoder–Decoder Architecture (conceptual)
  • Pretrained Models Overview: GPT, BERT
  •  

• What is Generative AI?
• Applications in Text, Images, Audio
• Human-AI Collaboration Examples
• Responsible AI Overview

Groq API
• Practical Examples

• Basic Prompt Patterns
• Common Prompt Types
• Chain-of-Thought Prompts
• Crux by Toseef, Context-of-Context

• Groq based Chatbots
• Pretrained models
• Computer Vision Applications
• DeepSeek based Apps
• Qwen based Apps
• ChatGPT based Apps
• Domain-Specific Examples

MASTER PYTHON, DATA WORKFLOWS, NLP, COMPUTER VISION & GENERATIVE AI

Our Four-Month Comprehensive AI & Machine Learning Course is an intensive, industry-aligned learning program designed for serious learners who want to move beyond fundamentals and master advanced, real-world AI systems.
This program includes everything covered in our 2-month AI/ML course, plus Natural Language Processing (NLP), Computer Vision, Transformers, and API-driven AI development using OpenAI, DeepSeek, and Groq.

This is a challenging, vibrant, and career-focused learning experience built to prepare you for modern AI roles.

TNBits delivers professionally designed training and capacity-building programs focused on Artificial Intelligence and advanced IT technologies. Our courses are co-created by experienced academicians and industry practitioners, ensuring a strong balance between theoretical foundations and real-world application.

Expert Tutors

  • Courses follow a disciplined structure grounded in established principles

  • Content is shaped to reflect how concepts are applied in real-world environments

  • Learning progresses logically, supporting both understanding and application

Practicals Oriented

  • Course material is framed around practical scenarios and real operational contexts

  • Emphasis on applying concepts to realistic problems and use cases

  • Encourages sound judgment, analytical thinking, and professional discipline

Beginner's Friendly

  • Programs are suitable for beginners, early-career professionals, and experienced learners

  • Foundational pathways do not assume prior specialization

  • Designed to accommodate learners from diverse academic and professional backgrounds

Monthly Installments

  • Monthly installment options available

  • Fee structure designed to support sustained learning and long-term development

  • Special Discount offers on Lump Sum payments and early bird registrations

WHY THIS COURSE STANDS OUT

  • 16 weeks of intensive, structured learning

  • Covers classical ML + modern Generative AI

  • Hands-on projects using real APIs and real data

  • Career-focused curriculum aligned with industry demand

  • Designed for learners aiming for AI Engineer, ML Engineer, or Data Scientist roles

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FOUR-MONTH COMPREHENSIVE AI & MACHINE LEARNING COURSE

BEGINNER TO ADVANCED — NO PRIOR EXPERIENCE REQUIRED

Our Four-Month AI & Machine Learning Course is a complete beginner-to-advanced learning program designed for students from all backgrounds.
The first two months cover the full beginner-level AI/ML curriculum, making this course suitable even if you have no prior experience in programming, data science, or AI.

The remaining two months take you into advanced AI, Machine Learning, and Generative AI, ensuring a smooth and structured learning progression.

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WHO CAN ENROLL

This course is ideal for:

  • Beginners with zero technical background

  • Students from any academic discipline

  • Professionals looking to switch careers into AI

  • Developers wanting to advance into modern AI and ML

  • Anyone interested in Artificial Intelligence and Machine Learning

No prior coding or AI knowledge is required.

WHY THIS COURSE IS DIFFERENT

  • COMPLETE AI ECOSYSTEM COVERAGE
    Covers the full spectrum of Artificial Intelligence — from Python and Machine Learning to NLP, Computer Vision, Transformers, and Generative AI.

  • BALANCE OF THEORY AND REAL-WORLD PRACTICE
    Concepts are taught with strong theoretical foundations and immediately applied through hands-on implementation and real datasets.

  • MODERN, INDUSTRY-RELEVANT CURRICULUM
    Includes cutting-edge technologies actively used in the industry such as OpenAI API, DeepSeek API, and Groq-powered AI systems.

  • END-TO-END AI SYSTEM DEVELOPMENT
    Learn how to design, train, evaluate, and deploy complete AI workflows, not just isolated models.

  • FOCUS ON REAL APPLICATIONS, NOT JUST TOOLS
    Emphasis on solving real-world problems using AI rather than memorizing algorithms or libraries.

  • PROJECT-DRIVEN LEARNING APPROACH
    Every major concept is reinforced through practical projects, helping build a strong, job-ready portfolio.

  • CLASSICAL ML + ADVANCED AI TOGETHER
    Combines traditional Machine Learning techniques with modern Deep Learning and Generative AI, ensuring long-term relevance.

  • API-BASED AI DEVELOPMENT SKILLS
    Gain experience building AI-powered applications using production-level APIs used by real companies.

  • CAREER-FOCUSED SKILL DEVELOPMENT
    Designed to develop problem-solving, model optimization, and system-thinking skills required for AI Engineer and ML roles.

  • INTENSIVE, HIGH-IMPACT LEARNING EXPERIENCE
    A challenging and vibrant program built to push learners beyond surface-level understanding.

Enroll Today

Take the first step towards becoming an AI and Machine Learning expert. This is your chance to gain hands-on experience, advanced knowledge, and a portfolio that stands out.