Best Software Training Institute in Hyderabad – Version IT

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₹ 25000

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Best Generative AI Development Training in Bangalore

The expanding trend of Artificial Intelligence is quickly changing the way companies become innovative, automate, and become larger. Of all AI technologies, Generative AI has become the most disruptive technology that shapes the future, giving machines the ability to produce content, process large volumes of data, create intelligent agents, design products, simulate experiences and do complex human-like reasoning. Version IT provides the best possible Generative AI Development Training in Bangalore to assist the professionals to master these transformative capabilities and ensure that they fit the demands of the industry today.

Overview of Generative AI Development Training in Bangalore

The course is suitable to anyone who is an engineer, data professional, product strategist, and technology leader that is interested in developing real-world Generative AI applications with LLMs, multimodal models, RAG architectures, LLMOps, and responsible deployment workflows. The training at Version IT empowers it with a robust project-oriented method, professional mentorship, flexibility in learning through hybrid learning, and career-focused support, which allow transitioning to high-paying Generative AI positions with confidence.

Generative AI Development Course Programme Snapshot

Here’s what our Generative AI Development Course in Bangalore offer:

  • Time: 6 months advanced certification Programme.
  • Training Hours: 105+ Hours of Intensive Instructor-Learned Training.
  • Practice: 2 Live Capstone Projects and Mini-Projects.
  • Mode: Hybrid Training, Classroom in Hyderabad + Accessibility Online.
  • Career Assistance: Career Support Placement Assistance and Interview Preparation.

Market of Generative AI and Career Advancement

Gen AI has been the most prolific technology in history. Key industries such as finance, telecommunication, manufacturing, healthcare, cybersecurity and IT services are highly investing in GenAI transformation. The need for GenAI skills is rising, and firms are focusing on highly skilled individuals who can design intelligent automation and agent-based artificial intelligence systems.

By the year 2030, the Global GenAI market will be of multi-billion dollar scale.

  • One out of four businesses is investing in specialized Generative AI teams.
  • Their high-paid tech professionals include AI developers and LLM engineers.
  • Indian salaries are between 6 LPA, to 60 LPA and way beyond that internationally.

Individuals who establish robust expertise in the development of Generative AIs as well as model deployment attain a high competitive advantage and open the door to faster career advancement in all industries.

Opportunities in the career after completing Generative AI Development Online Training in Bangalore

After completing Generative AI Development Online Training in Bangalore at Version IT you can become:

  • Generative AI Engineer
  • LLM Developer / NLP Engineer
  • AI Product Manager
  • Independent AI Agent Programmer.
  • ML / DL Engineer
  • AI Conversation Coder.
  • GenAI Consultant
  • AI Research Associate

The demand of generative AI specialists is rapidly rising as companies become more modernized with the help of intelligent tools. This programme will prepare you with the knowledge to create actual business applications and be competitive in the dynamic AI economy.

Who Is to Take Part in this Generative AI Course?

Our Generative AI Training in Bangalore is ideal for:

  • Python Programmers, Full-Stack Engineers and Software Developers.
  • ML Engineers, NLP Specialists and Data Scientists.
  • Cloud Engineers, Devops Engineers and System Architects.
  • AI adoption in companies by Product Managers and Tech Leaders.
  • Beginners, newly graduated students and hopefuls on an AI career.

And whether you are looking to change careers, upskill to get a promotion, or apply AI within your own organization, this programme will provide you with the technical and strategic skills which will see you succeed.

Why Version IT to develop Generative AI Course in Bangalore?

Version IT has been known to provide technology training that is of industry relevancy and in accordance with the prevailing job market demands. The programme is concealed in the practical learning and field of real deployment, so you can not only learn the concepts but also effectively apply in real world solutions.

Key Advantages

  • Industry-Driven Curriculum is created to prepare students practically to work in their jobs.
  • Practical learning on actual applications and projects.
  • Capstone Projects showing skills at the portfolio level.
  • Education by skilled AI experts.
  • Availability of the most recent AI tools, frameworks, and deployment platforms.
  • Placement assistance and structured interview.

The programme is more focused on product-building skills instead of theoretical knowledge where professionals can create deployable, meaningful AI applications.

Tools & Technologies Covered

  • Python | Hugging and Transformers, LangChain, Vector Databases (FAISS, Pinecone, Chroma).
  • TensorFlow and PyTorch OpenAI GPT Gemini Claude Llama.
  • Docker and Kubernetes and RAG Pipelines and Model Serving Frameworks.

Eligibility Criteria

  • Tech / B.E / MCA / M.Tech / M.Sc / MBA desired.
  • Basic knowledge of code minimum (Python suggested)
  • Qualified working professionals and fresh graduates are eligible.

Career Outcomes

At the end of the Generative AI Development Training in Bangalore, the students will be able to:

  • Create and implement actual Generative AI.
  • Design intelligent smart automation.
  • Implement LLMs and RAG in the enterprise systems.
  • Create excellent project portfolios of the leading companies.
  • Move to high-paying AI engineering jobs.

Topics You will Learn

Introduction to the Course

● Introduction-What We will Learn In This Course

Introduction to Python
  • Getting Started With Python
  • Python Basics-Syntax
  • Variables In Python
  • Basics Data Types In Python
  • Operators In Python
Python Control Flow
  • Conditional Statements (if, elif, else)
  • Loops
Data Structures Using Python

● Lists and List Comprehension
● Tuples
● Dictionaries
● Sets

Functions in Python

● Getting Started With Functions
● Lambda Function In Python
● Map Function In Python
● Filter Functions In Python

Importing, Creating Modules and Package

● Import Modules And Packages
● Standard Libraries Overview

File Handling

● File Operations With Python
● Working with File Paths

Exception Handling

● Exception Handling With try except else and finally blocks

OOPs

● Classes & Objects
● Single And Multiple Inheritance
● Polymorphism
● Encapsulation
● Abstraction

Machine Learning for Natural Language Processing (NLP)

● Tokenization
● Text Pre-processing
○ Stemming
○ Lemmatization
○ Stopwords
● Text Vectorization
○ Bag Of Words
○ N Grams
○ TF-IDF
● Word Embeddings
○ Word2Vec
○ CBOW
○ Skip Grams
○ GloVe
● Parts Of Speech Tagging
● Named Entity Recognition

Deep Learning for Natural Language Processing (NLP)

● Welcome to the module on DL
● Introduction to DL
● Understanding Deep Learning

Artificial Neural Networks

What is a Neuron
● Activation Functions
● Step Function
● Linear Function
● Sigmoid Function
● TanH Function
● ReLU Function
● Backpropagation vs Forward Pass
● Gradient Descent
● ANN Intuition
● ANN (Hyper Parameter Optimization)
● Step By Step Training With ANN
○ Optimizer
○ Loss Functions
○ Finding Optimal Hidden Layers And Hidden Neurons In ANN

Recurrent Neural Networks

● RNN Forward Propagation with Time
● Simple RNN Backward Propagation
● Problems With RNN
● End to End Deep Learning Projects with Simple RNN

Long Short Term Memory (LSTM)

● Why LSTM
● LSTM Architecture
● Forget Gate In LSTM
● Input Gate And Candidate Memory In LSTM
● Output Gate In LSTM
● Training Process In LSTM
● Variants Of LSTM
● GRU RNN Indepth Intuition

● LSTM and GRU End to End Deep Learning Project

Bidirection RNN

● Bidirectional RNN
○ Why To Use It?
○ Advantages & disadvantages
○ Applications

Encoders

● Introduction to Encoders
● Encoder Architecture
● Introduction to BERT
● BERT Configurations
● BERT Fine Tuning
● BERT Pre Training (Masked LM)
● Input Embeddings BERT
● RoBERTa
● DistilBERT
● AlBERT

Decoders

● Introduction to Decoders
● Decoder Architecture
● GPT Architecture
● GPT (Masked Multi Head Attention)
● GPT Training

Sequence to Sequence Architecture

● Encoder and Decoder
● Indepth Intuition oF Encoder & Decoder
● Sequence to Sequence Architecture
● Problems With Encoder and Decoder

Attention Mechanism

● Seq2Seq Networks
● Attention Mechanism Architecture

Transformers

● What and Why To Use Transformers
● Understanding The basic Architecture of Encoder
● Self Attention Layer Working
● Multi Head Attention
● Feed Forward Neural Network With Multi Head Attention
● Positional Encoding
● Layer Normalization
● Layer Normalization Examples
● Complete Encoder Transformer Architecture
● Decoder-Plan Of Action
● Decoder-Masked Multi Head Attention
● Encoder and Decoder Multi Head Attention
● Decoder Final Linear And Softmax Layer

Introduction to Generative AI

● What is Generative AI- AI Vs ML Vs DL Vs Generative AI
● How Open AI ChatGPt or LLama3 LLM Models are trained
● Evolution of LLM Models
● All LLM Models Analysis

Data Preprocessing and Embeddings

● Data Preprocessing
○ Cleaning
○ embeddings
● End to end Generative AI Pipeline

Introduction to Large Language Models

● Introduction to Large Language Models & its architecture
● In depth intuition of transformer – Attention all your need paper
● How ChatGPT is trained.

Complete Guide to OpenAI

● Introduction to OpenAI
● What is OpenAI API and how to generate OpenAI API key?
● Local Environment Setup
● Hands on OpenAI – Chat completion API and Completion API
● Function Calling in OpenAI
● Project: Fine-tuning of GPT-3 model for text classification
● Project: Audio Transcript Translation with Whisper
● Project: Image generation with DALL-E

Vector Database

● Vector Databases
● Vector Index vs Vector Database
● How Vector db works
● Vector Database (Practicals)

Introduction to Langchain for Generative AI

● Complete Langchain Ecosystem
● Creating Virtual Environment
● Getting Started With Langchain And OpenAI

Lang Chain – Basic to Advance

● Introduction & Installation and setup of langchain
● Prompt Templates in Langchain
● Chains in Langchain
● Langchain Agents and Tools
● Memory in Langchain
● Documents Loader in Langchain
● Multi-Dataframe Agents in Langchain
● How to use Hugging face Open Source LLM with Langchain
● Project: Interview Questions Creator Application
● Project: Custom Website Chatbot

Components & Modules in Langchain

● Introduction To Basic Components And Modules in Langchain
● Data Ingestion With Documents Loaders
● Text Splitting Techniques
○ Recursive Character Text Splitter
○ Character Text splitter
○ HTML Header Text Splitter
○ Recursive Json Splitter
● OpenAI Embedding
○ Ollama Embeddings
○ Huggingface Embeddings

Open Source LLM

● Introduction to open source LLMs – Llama
● How to use open source LLMs with Langchain
● Custom Website Chatbot using Open source LLMs
● Open Source LLMs – Falcon

Retrieval Augmented Generation [RAG]

● Introduction & Importance of RAG
● RAG Practical demo
● RAG Vs Fine-tuning
● Build a Q&A App with RAG using Gemini Pro and Langchain
● Retrieval Augmented Generation (RAG)

Fine Tuning LLMs

● What is fine tuning?
● Parameter Efficient Fine – Tuning
○ LoRA
○ OLoRA
○ Meta Llama 2 on Custom Data

LlamaIndex – Basic to Advance

● Introduction to LlamaIndex & end to tend Demo
● Project: Financial Stock Analysis using LlamaIndex

LLM Apps Deployment

● How to Deploy Generative AI Application
○ Flask
○ AWS

FAQ's

Companies are automating their processes, improving their productivity, and making customer experience more personal, accelerating innovation, and improving decision-making using Agentic and Generative AI. These technologies assist enterprises to lower the costs of operation, improve their efficiency, create insights and develop intelligent systems with autonomy of actions and ability to solve problems.
According to Agentic AI, this is what helps systems to act independently, examine complex situations and make decisions without the oversight of a human. With the shift in industries to complete automation of operations, the demand is high on the need to employ highly experienced professionals able to create and support agent-based systems, which promise an exemplary career development.
CCE-IISc is a top-notch research-based learning institution whose curriculum is industry oriented, faculty is highly qualified, and the laboratories have modern facilities with advanced technology. Through projects, mentorship and networking, students acquire new skills in real-time, making them graduate as a job-ready entity and in accordance with the global standards on AI innovation.

Yes, you can create mobile and web apps with DOT NET Full Stack. Xamarin, a DOT NET-based framework, enables developers to use DOT NET for cross-platform mobile app development, even though it is often associated with online apps.

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