Generative AI Course in Gurgaon Overview

Generative AI course in Gurgaon at Gyansetu is a holistic, practical course that will provide you with the necessary skill set in the future of artificial intelligence. The course addresses the basic principles of the field of generative models (GANs and VAEs) as well as delves into more advanced AI applications, like large language models (LLMs), prompt engineering, and multimodal applications. You will get to create practical AI projects like chatbots, content generators and voice agents using real world projects which will imitate industry needs.

It is a perfect course that can be taken by both beginners and professionals who do not have any prior experience with any type of coding and has flexible options in terms of batches with either classroom or online learning in order to address the needs of different learners. With expert guidance, hand-to-one mentorships, and access to live meetings, experts in the leading technology companies will take you through the program and help you in a personalized manner. Also, the course highlights the best practice of using and deploying AI ethically.

By the time you graduate, you will have an industry-respected certification to prove your competency and boost your employment opportunities in AI-enabled positions with Gyansetu specific placement service and hiring partner network. The course provides you with the ability to be innovative and take the lead in an ever-changing world of Generative AI.

Why choose Gyansetu’s Generative AI course in Gurgaon?

The Generative AI course at Gyansetu in Gurgaon has been designed in a way that it provides a practical learning experience that is industry-oriented to enable you to have future-ready AI skills. Here’s why it stands out:

  1. Expert Mentorship and Industry Insights: Gain knowledge and insights of experienced mentors who have worked in Microsoft, Google, and Amazon, and have direct experience of the application of AI to industry.
  2. Holistic Curriculum: Learn to Master prompt engineering, large language models, image/audio generation, and ethical use of AI in a project-based learning program that teaches students to apply the concepts to real-world situations.
  3. Flexible Learning: Select the option of weekday, weekend, or fast-track batches of online classroom learning and in-person classroom learning as well to fit into your schedule.
  4. Career Support and Placements: Gyansetu has good links in the industry and this can help you get personalized mentorship, resume construction, mock interviews and assurance of a job interview.
  5. Lifetime Access and Resources: Access unlimited session recordings, study materials, assignments and on-going project support even after completing the course.
  6. No Pre-Requirement: Accessible to beginner and advanced levels, it contains simple guidelines that can be read by anyone with no familiarity with coding and AI.
  7. Small Batch Size: Small batch sizes are maintained to ensure every student receives individual attention.
  8. Recognized Certification: Graduates receive an internationally recognized, industry-ready certification on completion of the Generative AI training in Gurgaon.
  9. Affordable Fee Structure: Competitive course fees are offered with multiple EMI options, making world-class data analytics training accessible to every passionate learner.
  10. Recorded Lectures: We provide access to study material, recorded lectures which helps learners to learn at their own pace.

generative-ai-course-in-gurgaon

Key Highlights of Generative AI Course

100% Placement Support
Free Course Repeat Till You Get Job
Mock Interview Sessions
1:1 Doubt Clearing Sessions
Flexible Schedules
Real-time Industry Projects

Placement Stats

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Maximum salary hike
170%
Average salary hike
90%

Our Alumni in Top Companies

Generative AI Course Placement Highlights

Avinash
74 % Hike
Data Analyst
NTK
Google
Data Analyst
Google
Priya Paswan
57 % Hike
Sales Consultant
Hear.com
Senior Data Analyst
Vistara

Batches Timing for Generative AI Course

Track Weekdays (Tue-Fri) Weekends (Sat-Sun) Fast Track
Course Duration 4 Months 6 Months 30 Days
Hours Per Day 2-3 Hours 3-4 Hours 6 Hours
Training Mode Classroom/Online Classroom/Online Classroom/Online

Generative AI Certification Course in Gurgaon

Gyansetu doesn’t only teach you Generative AI, it prepares you to become the best in innovation and get yourself a position in the future labor market.​ The Generative AI course offered by Gyansetu in Gurgaon has become one of the most sought-after certifications that can prove that you are well acquainted with the latest technologies in the field of AI and that you possess the necessary working skills.

After completing the program successfully, you will be awarded an industry-approved certificate that will confirm your mastery of the fields of generative models, prompt engineering, AI automation, and the ethical application of AI. The certification is meant to elevate your career profile and raise your presence to leading employers in the field of technology, creative, and business in the use of AI.

The certification is done through tough tests such as project-based testing, practical tests that are in line with the use of AI in the real world. Your capstone projects simulating a situation in the industry will also hone your skills and will be a great addition to your resume. Here are key benefits of certification: 

  • Industry-Recognized Credential: Graduates receive a certificate which is recognized globally and showcases the skills of the learners.
  • Enhanced Career Opportunities: This certificate boosts employability by opening doors to high-demand roles.
  • Lifetime Validation:  This certificate support long-term career growth, role transitions in an evolving AI-powered job market.

Generative AI Course Curriculum in Gurgaon

In Gurgaon, Gyansetu offers a Generative AI course that includes both introductory and advanced studies such as generative models, such as GANs and VAEs, prompt engineering, large language models (LLMs), and natural language processing. With real-life projects, practical case studies, and ethical AI practices, you will receive practical AI-text, image, audio and video generation skills. Deployment methods and integration with popular AI tools and frameworks are also covered in the curriculum to ensure that you are ready to face challenges in the industry.

Module 1: Artificial Intelligence Fundamentals 6 Topics

1.1 Introduction to AI

  • What is Artificial Intelligence?
  • AI vs. Automation vs. Analytics: Understanding the distinctions
  • Types of AI: Narrow AI, General AI, and Super AI
  • Real-world examples of AI in action

 

1.2 AI Family Tree

  • AI, Machine Learning (ML), and Deep Learning (DL): Relationships and differences
  • Supervised vs. Unsupervised vs. Reinforcement Learning (brief overview)
  • Neural Networks: The building blocks

 

1.3 History & Evolution of AI

  • Key milestones: From Turing Test to AlphaGo to ChatGPT
  • AI winters and breakthroughs
  • Current state of AI

 

1.4 Core AI Applications

  • Natural Language Processing (NLP): chatbots, translation, sentiment analysis
  • Computer Vision (CV): facial recognition, object detection, medical imaging
  • Robotics & Autonomous Systems
  • Predictive Analytics: forecasting, recommendation systems

 

1.5 AI Across Industries

  • HR: Recruitment screening, employee engagement analysis
  • Operations: Supply chain optimization, predictive maintenance
  • Healthcare: Diagnosis assistance, drug discovery
  • Retail: Personalization, inventory management
  • Education: Adaptive learning, automated grading
  • Finance: Fraud detection, algorithmic trading
  • Manufacturing: Quality control, process automation

 

1.6 Future of AI

  • Emerging trends: Multimodal AI, Edge AI, Quantum ML
  • Opportunities: Productivity gains, innovation acceleration
  • Risks: Job displacement, privacy concerns, weaponization
Module 2: Generative AI Foundations 9 Topics

2.1 Introduction to Generative AI

  • What is Generative AI? Definition and characteristics
  • Traditional AI (predictive) vs. Generative AI (creative)
  • Everyday GenAI applications: Writing assistants, image generators, code completion
  • Popular GenAI tools: ChatGPT, Claude, Gemini, DALL-E, Midjourney

 

2.2 How GenAI Works

  • Large Language Models (LLMs) explained simply
  • Introduction to Transformers: Attention mechanism in plain language
  • Tokens and tokenization
  • Training vs. Fine-tuning vs. Inference
  • Parameters and model size (7B, 70B, 405B – what do they mean?)

 

2.3 Key GenAI Models Overview

  • OpenAI GPT family (GPT-4, GPT-4o, o1)
  • Anthropic Claude (Sonnet, Opus, Haiku)
  • Google Gemini
  • Meta LLaMA
  • Open-source vs. Closed-source models
  • Strengths and limitations of each

 

2.4 Recent Trends & Important Concepts

  • Multimodal AI (text + image + audio + video)
  • Context windows and long-form understanding
  • Retrieval-Augmented Generation (RAG)
  • AI reasoning models (o1, o3)
  • Real-time AI and streaming responses

 

2.5 Prompt Engineering Fundamentals

  • What is a prompt?
  • Anatomy of a good prompt: Role, Task, Context, Format, Constraints
  • Text generation and completion
  • Summarization: Short vs. detailed summaries
  • Rewriting: Tone adjustment (formal, casual, persuasive, empathetic)
  • Translation and localization

 

2.6 Prompt Structures

  • Instructional prompts
  • Role-based prompts (“Act as a…”)
  • Template-based prompts
  • Structured output requests (JSON, tables, lists)

 

2.7 Core Prompting Techniques

  • Zero-shot prompting: Direct instructions
  • Few-shot prompting: Learning from examples
  • Chain of Thought (CoT): Step-by-step reasoning
  • Tree of Thoughts (ToT): Exploring multiple reasoning paths
  • Self-consistency: Multiple attempts for better answers

 

2.8 Multi-turn Interactions

  • Context retention and conversation memory
  • Building on previous responses
  • Clarification and refinement loops

 

2.9 Limitations & Quality Evaluation

    • Hallucinations: What they are and how to spot them
    • Bias in AI outputs
    • Factual accuracy verification
    • Evaluating output quality: Relevance, coherence, accuracy, creativity
    • When to use AI vs. human judgment
Module 3: Advanced LLMs & Prompting Techniques 7 Topics

3.1 LLM Deep Dive

  • How transformers process language
  • Attention mechanisms visualized
  • Pre-training and next-token prediction
  • Temperature and sampling parameters
  • Top-p, Top-k sampling explained

 

3.2 LLMs vs. Small Language Models (SLMs)

  • When to use LLMs vs. SLMs
  • Edge deployment and efficiency
  • Cost considerations

 

3.3 Popular LLM Comparison

  • GPT-4: Strengths in reasoning and creativity
  • Claude: Long context and nuanced understanding
  • Gemini: Multimodal capabilities
  • LLaMA: Open-source flexibility
  • Use case mapping: Which model for which task?

 

3.4 Advanced Prompting Techniques

  • Self-consistency prompting
  • Instruction tuning and prompt optimization
  • Negative prompting (what to avoid)
  • Constraint-based prompting
  • Persona switching and style guides
  • Prompt chaining for complex tasks

 

3.5 Context Management

  • Working with large documents
  • Context window limitations and strategies
  • Summarization for context compression
  • Conversation history management

 

3.6 Introduction to Embeddings

  • What are embeddings?
  • Vector representations of text
  • Semantic search applications
  • Use cases: Document similarity, recommendation systems

 

3.7 Fine-tuning Basics

  • What is fine-tuning?
  • When to fine-tune vs. prompt engineer
  • Transfer learning concept
  • No-code fine-tuning platforms (brief overview)

4.1 Introduction to Agentic AI

  • What is Agentic AI?
  • Key characteristics: Autonomy, goal-directedness, adaptability
  • Agentic AI vs. Traditional AI workflows
  • Real-world examples: Research agents, customer service agents, coding agents

 

4.2 AI Agents vs. Chatbots

  • Chatbots: Reactive, scripted interactions
  • AI Agents: Proactive, goal-oriented, tool-using
  • Comparison matrix

 

4.3 Components of Agentic AI

  • Memory: Short-term and long-term context retention
  • Planning: Breaking down goals into sub-tasks
  • Tool Use: API calls, web search, code execution, database queries
  • Autonomy: Self-directed task completion
  • Reflection: Self-evaluation and improvement

 

4.4 Agent Frameworks Overview

  • LangChain: Modular components for agent building
  • AutoGen: Multi-agent conversations
  • CrewAI: Role-based agent collaboration
  • OpenAI Assistants API: Built-in agent capabilities
  • Comparison and use case mapping

 

4.5 AI Orchestration

  • What is orchestration?
  • Workflow design for agent tasks
  • Human-in-the-loop (HITL) integration
  • Error handling and fallback strategies

5.1 No-Code AI Overview

  • What is no-code/low-code?
  • Benefits: Speed, accessibility, cost-effectiveness
  • Limitations: Customization constraints, vendor lock-in
  • When to use no-code vs. custom development

 

5.2 Workflow Automation Fundamentals

  • Triggers, actions, and conditions
  • API integrations basics
  • Data mapping and transformation
  • Error handling and testing

 

5.3 Zapier

  • Platform overview and interface
  • Building your first Zap
  • Multi-step workflows
  • AI-powered Zaps with ChatGPT integration
  • Filters, formatters, and utilities
  • Best practices and optimization
  • Hands-on: Automate email-to-task workflow

 

5.4 Make.com

  • Visual workflow builder
  • Modules, routes, and scenarios
  • Advanced routing and error handling
  • Data stores and aggregators
  • Scheduling and webhooks
  • Hands-on: Build a content aggregation workflow

 

5.5 n8n

  • Self-hosted automation (overview)
  • Node-based workflow design
  • Custom code nodes
  • Integrations and credentials management
  • Hands-on: Create a Slack notification system

 

5.6 Notion AI

  • AI writing and editing
  • Database automation
  • Template creation with AI
  • Q&A over workspace knowledge
  • Hands-on: Build an AI-powered knowledge base

 

5.7 Airtable

  • AI-powered data management
  • Automation with AI fields
  • Integration with other tools
  • Building mini-apps
  • Hands-on: Create a project tracker with AI summaries

 

5.8 Glide

  • No-code app builder
  • AI-powered features
  • Data binding and workflows
  • Mobile app prototyping
  • Hands-on: Build a simple internal tool

 

5.9 Canva AI

  • Text-to-design generation
  • AI brand kit creation
  • Magic Resize and Magic Eraser
  • AI-powered content suggestions
  • Hands-on: Create a presentation with AI

 

5.10 Tome AI

  • AI-powered storytelling
  • Auto-generating narratives
  • Interactive presentations
  • Hands-on: Build a pitch deck

 

5.11 Gamma.app

  • AI slide deck creation
  • One-click formatting
  • Collaborative editing
  • Hands-on: Generate a training module

 

5.12 Integrating AI into Business Processes

  • Identifying automation opportunities
  • Workflow mapping and optimization
  • Change management considerations
  • Measuring ROI of automation
  • Building a toolkit for your role

6.1 Agent Design Principles

  • Defining agent goals and scope
  • Task decomposition
  • User experience considerations
  • Edge case handling

 

6.2 No-Code Agent Platforms

  • Relevance AI: Building AI teams
  • Stack AI: Workflow-based agents
  • Flowise: Visual LLM app builder
  • Voiceflow: Conversational agents
  • Platform comparison and selection

 

6.3 Building Your First Agent

  • Step-by-step agent creation
  • Defining instructions and personality
  • Adding tools and integrations
  • Knowledge base integration (RAG)
  • Testing and iteration

 

6.4 Practical: AI Research Assistant Agent

  • Goal: Automated web research and summarization
  • Components:
    1. Web search capability
    2. Content extraction
    3. Summarization
    4. Report generation
    5. Email delivery
    6. Tools: n8n/Make + GPT API + Google Docs
  • Build process:
    1. Design the workflow
    2. Set up web search module
    3. Configure summarization
    4. Create output template
    5. Add scheduling
    6. Test and refine

 

6.5 Advanced Agent Features

  • Memory and context persistence
  • Multi-tool orchestration
  • Conditional logic and branching
  • User input handling
  • Feedback loops

 

6.6 Deployment & Monitoring

  • Publishing your agent
  • Usage analytics
  • Performance monitoring
  • Iterative improvement
  • Cost management

7.1 AI Challenges

 

Bias

  • What is AI bias?
  • Sources: Training data, algorithm design, human feedback
  • Types: Gender, racial, cultural, socioeconomic
  • Real-world examples and consequences
  • Detection and mitigation strategies

 

Hallucinations

  • What are hallucinations?
  • Why LLMs hallucinate
  • Identifying hallucinations
  • Mitigation: Verification, grounding, confidence scoring

 

Privacy & Security

  • Data privacy concerns
  • Prompt injection attacks
  • Data leakage risks
  • Secure AI usage practices
  • Compliance considerations (GDPR, CCPA)

Misinformation & Deepfakes

  • AI-generated content detection
  • Deepfake risks
  • Watermarking and provenance
  • Media literacy in AI age

 

7.2 Responsible AI Principles

  • Fairness: Eliminating discriminatory outcomes
  • Accountability: Clear ownership and responsibility
  • Transparency: Explainability and disclosure
  • Explainability: Understanding AI decisions
  • Privacy: Data protection and consent
  • Safety & Security: Robustness and resilience
  • Human Control: Human-in-the-loop systems

 

7.3 Global AI Ethics Frameworks

 

OECD AI Principles

  • Inclusive growth and sustainability
  • Human-centered values
  • Transparency and explainability
  • Robustness and safety
  • Accountability

 

EU AI Act

  • Risk-based approach
  • Prohibited AI practices
  • High-risk AI systems
  • Transparency obligations
  • Compliance requirements

 

NITI Aayog (India)

  • #AIForAll vision
  • Responsible AI strategy
  • Focus on explainability and fairness
  • Sector-specific guidelines

 

UNESCO Recommendation on AI Ethics

  • Human rights and dignity
  • Environmental sustainability
  • Cultural diversity
  • Gender equality

 

Microsoft Responsible AI

  • Six principles framework
  • Impact assessments
  • Governance structure
  • Practical tools

 

7.4 Safe & Responsible Usage

 

Verifying AI Outputs

  • Cross-referencing with trusted sources
  • Fact-checking methodologies
  • Using multiple AI models for comparison
  • Critical evaluation frameworks

 

Human-in-the-Loop (HITL) Systems

  • When to require human oversight
  • Designing HITL workflows
  • Balancing automation and control
  • Decision authority frameworks

 

Trust & Compliance

  • Building organizational AI policies
  • Training and awareness programs
  • Audit trails and documentation
  • Incident response plans

 

7.5 Responsible AI Guardrails

  • Input validation and filtering
  • Output moderation
  • Rate limiting and abuse prevention
  • Content policies and guidelines
  • Monitoring and alerting systems

 

7.6 Case Studies of AI Misuse

  • Amazon’s biased recruiting tool
  • COMPAS recidivism algorithm
  • Deepfake political videos
  • ChatGPT jailbreaks and prompt injection
  • Lessons learned and best practices

 

7.7 Building Ethical AI Culture

  • Organizational responsibilities
  • Individual accountabilities
  • Ethical decision-making frameworks
  • Continuous learning and adaptation

Multimodal AI

  • GPT-4 Vision, Gemini 1.5 Pro
  • Audio and video generation
  • Applications in business

 

AI Video & Audio Tools

  • Runway ML, Synthesia, ElevenLabs
  • Use cases: Training videos, marketing content
  • Ethical considerations

 

Retrieval-Augmented Generation (RAG)

  • What is RAG?
  • Building knowledge bases
  • No-code RAG solutions

 

AI in Code Generation

  • GitHub Copilot, Cursor, Replit AI
  • Low-code development acceleration
  • When to use AI coding assistants

Industry Ready Data Analyst Projects

Designed by Industry Experts
Get Real-World Experience
AI-Powered Customer Support Chatbot
  • Business Problem: Customer support teams struggle with high query volumes, delayed responses, and inconsistent service quality.
  • Overview: Build an intelligent chatbot capable of understanding customer queries, retrieving relevant information, and generating accurate, human-like responses to improve support efficiency and customer satisfaction.
  • Tech Stack: Python, NLP, LLM APIs, Prompt Engineering, Vector Databases, REST APIs
Resume Screening & Talent Matching System
  • Business Problem: Recruiters spend excessive time manually screening resumes, leading to delayed hiring and missed talent.
  • Overview: Develop a Generative AI system that analyzes resumes, extracts skills, matches candidates with job descriptions, and generates shortlisting insights automatically.
  • Tech Stack: Python, NLP, LLMs, Embedding Models, SQL, Prompt Engineering
AI-Based Marketing Content Generator
  • Business Problem: Marketing teams require large volumes of personalized content across channels, which is time-consuming and costly.
  • Overview: Create a Generative AI solution that produces high-quality marketing copy, product descriptions, and campaign content tailored to different audiences.
  • Tech Stack: Python, LLM APIs, Prompt Engineering, Text Generation Models, REST APIs
  • Business Problem: Organizations struggle to extract insights from large volumes of unstructured documents such as policies, reports, and manuals.
  • Overview: Build a system where users can upload documents and ask questions, receiving accurate, context-aware answers generated directly from the document content.
  • Tech Stack: Python, LLMs, Vector Databases, Embeddings, PDF/Text Parsing Tools
  • Business Problem: Sales teams lack real-time insights from customer data, leading to missed opportunities and inefficient targeting.
  • Overview: Develop a Generative AI assistant that analyzes sales data and generates insights, summaries, and recommendations to support data-driven sales strategies.
  • Tech Stack: Python, SQL, LLMs, Data Analysis Libraries, Prompt Engineering
  • Business Problem: Developers spend significant time writing repetitive code and debugging, slowing down product development cycles.
  • Overview: Create an AI assistant that generates code snippets, explains logic, and assists in debugging based on developer prompts.
  • Tech Stack: Python, LLMs, Code Generation Models, Prompt Engineering, APIs
  • Business Problem: Learners often receive generic course content that does not align with their skill level or learning goals.
  • Overview: Build a Generative AI system that analyzes learner behavior and generates personalized learning paths, recommendations, and progress summaries.
  • Tech Stack: Python, LLMs, Machine Learning Models, SQL, Recommendation Algorithms
clock-icon
320+
Hours of content
video
80+
Live sessions
hammer
7+
Tools and software

Generative AI Skills you can add in your CV

Generative AI Tools Covered

What Sets This Program Apart?

GyanSetu
Other Courses
all-in-one Complete Toolkit

✔ LLM fundamentals & Gen AI models
✔ Transformers & Diffusion models
✔ Toolkits for app building (APIs, Agents)
✔ Deployment & scaling

✘ Only basic AI theory
✘ Limited tooling exposure

progress-icon Beginner to Pro Roadmap

✔ Starts from fundamentals → advanced Gen AI solutions

✘ No structured progression

empowered AI-Powered Learning

✔ Built-in AI learning + Gen AI tools and projects

✘ No AI tools covered

focused Career Specialization

✔ AI Engineer
✔ GenAI Developer
✔ Prompt Engineering Specialist

✘ Only general AI overview

exposure Real Industry Projects

✔ Chatbots
✔ Autonomous agents
✔ Deployable AI apps

✘ Only demos / sample projects

mentorship Industry Mentors

✔ Mentors with real AI engineering experience

✘ Generic instructors

practice Career Support

✔ Resume building
✔ Mock interviews
✔ Placement assistance

✘ No structured job support

course in gurgaon
Who is this course for?
  • Students and Recent Graduates
  • Working Professionals
  • Career Changers
  • IT Professionals
  • Educators and Academic Researchers
  • Entrepreneurs and Business Owners

Career Assistance for Generative AI Course in Gurgaon

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Job Opportunities Guaranteed

Get a 100% Guaranteed Interview Opportunities Post Completion of the training.

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Access to Job Application & Alumni Network

Get chance to connect with Hiring partners from top startups and product-based companies.

Mock Interview Session

Get One-On-One Mock Interview Session with our Experts. They will provide continuous feedback and improvement plan until you get a job in industry.

Live Interactive Sessions

Live interactive sessions with industry experts to gain knowledge on the skills expected by companies. Solve practice sheets on interview questions to help crack interviews.

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Career Oriented Sessions

Personalized career focused sessions to guide on current interview trends, personality development, soft skill and HR related questions.

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Resume & Naukri Profile Building

Get help in creating resume & Naukri Profile from our placement team and learn how to grab attention of HR’s for shortlisting your profile.

Top Companies Hiring for Generative AI Role

Honours & Awards Recognition

Awarded by GD Goenka University
GD Goenka University
Gyansetu conducted Power BI training for Livpure employees
Livpure
Gyansetu conducted Advanced Excel training for Denso International Employees
Denso International
Gyansetu conducted Full Stack Development training for ReverseLogix employees
ReverseLogix
Gyansetu conducted Advanced Java training for BML Munjal University students
BML Munjal University
Delivering training to Wedapt
Delivering Training To Wedapt
Gyansetu conducted workshop on Cloud Computing and Data Analytics for Manav Rachna University students
Manav Rachna University
Gyansetu conducted Java workshop for GLA University students
GLA University
Gyansetu conducted Data Analytics Workshop for DPGITM students
DPGITM
Certificate Issued to Gyansetu by GD Goenka University
GD Goenka University

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Our Learners Testimonials

Ankita Mishra
Gyansetu’s commitment to practical learning has been evident throughout my journey as an Associate at EY. The institute’s focus on hands-on projects and real-world applications of Data Analytics principles equipped me with the skills and confidence needed to tackle complex business challenges in my role.
Anupriya Gupta
Transitioning into the role of Data Analyst at Google, I attribute much of my readiness to Gyansetu's practical learning environment. The institute's hands-on projects and real-world case studies provided me with the opportunity to develop the analytical skills necessary to thrive in a dynamic organization like Google.
Karan Bansal
I had a great learning experience with Gyansetu. The trainers were knowledgeable and supportive. The practical approach and hands-on training helped me in my work as an Insurance Operations Associate at Accenture.
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Frequently Asked Questions

Who can join this course?

Generative AI course in gurgaon is designed for everyone who has basic computer skills and curiosity about AI. For this course no prior coding is required and it is suitable for beginners, professionals and career changers.

What is the course duration?

The duration of the course depends on which batch you wish to choose. Gyansetu offers 3 batch options which includes – 30 days, 3 months, 6 months. These are available on weekends and weekdays. 

Is the course available online?

Yes, Gyansetu offers flexible learning formats which include offline, online and hybrid formats. 

During your generative AI course in Gurgaon you will be working on real-world projects which includes building chatbots, AI content generators and tools for image, audio and video generation.

During the course you will be working with popular frameworks which are widely used in Generative AI development that includes OpenAI APIs, GPT, Hugging Face Transformers and others.

Yes, Gyansetu offers 100% placement assistance by providing them dedicated support in resume building, interview preparation, job referrals through strong industry partnership.

Yes, upon completion of the course we provide an industry-recognized certificate which has globally recognised NASSCOM accreditation. This certificate validates that you have expertise in Generative AI technologies.

You will get lifetime access to session recordings, assignments, project materials and study resources. This will help you to revise things whenever you need.

At Gyansetu, we keep our batch size small just to ensure that the learners get to enquire about their problems. This provides personalized attention to learners and makes the session interactive.

No, it is not necessary to have prior coding knowledge but basic computer skills can help you to learn in an easy way. Gyansetu’s curriculum is designed in a beginner friendly manner and it gradually advances which makes it easy to learn.

After completing your generative AI course you can apply for roles like AI developer, Content Creator, Automation Engineer and AI researcher.

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