Top Gen AI Course in Thiruvanmiyur With 100% Job Support ⭐ | Updated 2025

Gen AI Course for All Graduates, Non-IT Professionals, Diploma Holders & Career Gap Aspirants — ₹22,000/- only.

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Gen AI Course in Thiruvanmiyur

  • Join the Best Gen AI Training Institute in Thiruvanmiyur to Master AI Skills and Modern Industry Practices.
  • Our Gen AI Training in Thiruvanmiyur Covers LLMs, Prompt Engineering, RAG, Neural Networks, Automation and AI Model Deployment.
  • Learn at Your Convenience with Flexible Options: Weekday, Weekend or Fast-track Batches.
  • Get Hands-on Experience by Working on Live AI Projects Guided by Certified Gen AI Experts.
  • Earn a Globally Recognized Gen AI Certification With 100% Job Placement Assistance.
  • Receive Expert Support in Building a Strong Resume and Excelling in Job Interviews.

WANT IT JOB

Become a Generative AI Engineer in 3 Months

Freshers Salary

3 LPA

To

8 LPA

Affordable High-Quality Training in Thiruvanmiyur!
INR ₹23000
INR ₹22000

10229+

(Placed)
Freshers To IT

5109+

(Placed)
NON-IT to IT

7652+

(Placed)
Career Gap

4864+

(Placed)
Less Then 60%

Our Hiring Partners

Overview of the Gen AI Course

The Gen AI Course in Thiruvanmiyur helps beginners learn artificial intelligence from the basics with easy, step-by-step guidance. Our Gen AI Training in Thiruvanmiyur covers LLMs, prompt engineering, automation and real project practice. Students also get support through Gen AI Internships in Thiruvanmiyur to gain hands-on experience. We focus on building practical skills so freshers can understand AI concepts with confidence. With strong Gen AI Placement assistance, learners can start their careers faster. This course is perfect for anyone who wants to begin their journey in Gen AI and grow in today’s tech industry.

What You'll Learn From Gen AI Certification Course in Thiruvanmiyur

Build strong Gen AI skills through beginner-friendly training that helps you understand how modern AI systems work.

Learn how to work with LLMs, prompts and AI tools using clear examples and practical demonstrations.

Gain hands-on experience by working on industry-based Gen AI projects that improve your real-time problem-solving abilities.

Understand important topics like model tuning, automation workflows and data handling for real-world applications.

Improve your confidence as you progress from basic AI concepts to advanced techniques used in the tech industry.

Get expert-led guidance, along with Gen AI Course in Thiruvanmiyur, to help you build a strong portfolio and grow your career.

Additional Info

Course Highlights

  • Kickstart Your Gen AI Learning: Master LLMs, prompt engineering, automation, model building and practical AI workflows in one complete program.
  • Get dedicated placement assistance with real opportunities from top companies looking for skilled Gen AI professionals.
  • Join a growing community of learners successfully trained and supported through our strong network of hiring partners.
  • Learn from certified Gen AI experts with extensive industry experience in AI development and real-world project implementation.
  • Enjoy beginner-friendly classes, hands-on AI projects and complete career guidance designed to support you at every stage.
  • Benefit from flexible schedules, affordable fees and 100% placement support ideal for freshers and anyone starting a career in AI.

Benefits You Gain from an Gen AI Training in Thiruvanmiyur

  • Saves Time – Gen AI helps you finish tasks much faster by automating routine work. It quickly creates content, answers questions and organizes information, reducing manual effort. This allows you to complete daily tasks more easily. Freshers can save time and work more efficiently with less stress.
  • Easy Learning – Gen AI explains difficult topics in simple and clear language, making learning easier for beginners. It provides step-by-step answers and examples that help you understand quickly. You can ask any doubt at any time and get instant support. This makes studying smoother and more comfortable.
  • Boosts Creativity – Gen AI helps generate new ideas for writing, projects and creative tasks. It gives suggestions that inspire fresh thinking when you feel stuck. Beginners can use it to improve their creativity and produce high-quality work. This makes learning and creating more fun and exciting.
  • Smarter Decisions – Gen AI analyzes information and gives helpful insights to guide decisions. It compares options and helps you pick the best solution with confidence. Even freshers can make better choices with AI support. This is useful for studies, projects and everyday problem-solving.
  • Career Growth – Gen AI skills are in high demand and help freshers stand out in job markets. Learning Gen AI tools opens opportunities in technology, automation and data-related roles. It builds strong practical skills that employers look for. This leads to better career options and long-term growth.

Popular Tools Taught in Gen AI Course

  • ChatGPT – ChatGPT is a Gen AI tool that helps you write content, answer questions and understand topics easily. It can explain complex ideas in simple words, making learning smoother. You can use it for study help, creative writing or daily tasks. Freshers find it very beginner-friendly and useful.
  • Google Gemini – Google Gemini is an AI tool that can understand text, images and videos. It helps you create content, summarize information and solve problems quickly. Beginners can use it for projects, research and learning new concepts. AI functions are easy to explore thanks to its straightforward UI.
  • Microsoft Copilot – Microsoft Copilot supports tasks inside Word, Excel, PowerPoint and other apps. It helps you create documents, build data sheets and generate presentations faster. Freshers can complete assignments quickly with its suggestions. It is designed to make everyday work easier and smarter.
  • Midjourney – Midjourney is a Gen AI tool that creates images from text descriptions. You just type what you want and it generates creative visuals. Beginners can use it for project designs, artwork and presentations. It makes graphic creation simple even for those with no design skills.
  • GitHub Copilot – GitHub Copilot helps you write code by giving suggestions and completing lines automatically. It learns from your coding style and supports many programming languages. Freshers can learn coding faster with its guidance. It is a great tool for beginners starting their programming journey.

Top Frameworks Every Gen AI Should Know

  • TensorFlow – TensorFlow is a powerful framework used to build and train AI and machine learning models. It helps beginners understand how neural networks work through simple tools and examples. Many companies use it for real-world AI applications. It is beginner-friendly and great for learning Gen AI basics.
  • PyTorch – PyTorch is an easy-to-use framework popular for research and deep learning projects. It allows you to build AI models step by step and see results instantly. Freshers like it because the code is simple and flexible. It is widely used in Gen AI development and experiments.
  • LangChain – LangChain helps you create applications using large language models (LLMs) like ChatGPT. It connects different AI tools, databases and prompts to build smart AI apps. Beginners can use it to make chatbots, automation tools and Gen AI workflows. It makes working with LLMs much easier.
  • Hugging Face Transformers – Hugging Face provides ready-made AI models for text, images, speech and more. You can use these models without deep coding knowledge. Freshers can experiment with chatbots, translation, summarizing and other AI tasks. It makes Gen AI learning fast and simple.
  • LangGraph – LangGraph helps you design multi-step AI workflows using graphs and nodes. It is useful for creating advanced Gen AI applications like agents and decision-making systems. Beginners can understand AI logic better with its clear structure. It makes building complex AI systems easier and more visual.

Essential Skills You’ll Learn in a Gen AI Course

  • Prompt Engineering – Prompt engineering teaches you how to give clear and effective instructions to AI tools. With the right prompts you can generate accurate answers, content or solutions. This skill helps beginners communicate better with AI models. It is one of the most important abilities in Gen AI jobs.
  • LLM Understanding – You will learn Large Language Models (LLMs) think, learn and respond. This helps understand why AI gives certain answers and how to improve them. Beginners can easily grasp these concepts with simple examples. It builds a strong base for advanced Gen AI work.
  • Data Handling Skills – Gen AI requires working with data, so you will learn to clean, organize and prepare information. These skills help AI models understand data correctly. Freshers can learn this step by step without needing deep technical knowledge. Its essential for building accurate AI results.
  • AI Automation – You will discover how to use Gen AI technologies to automate operations in order to reduce manual labor and save time. This includes generating reports, creating content and building simple workflows. Even beginners can use automation to work smarter. It helps to complete tasks quickly and efficiently.
  • Model Fine-Tuning – This skill teaches you how to adjust AI models to give better and more personalized results. Freshers can learn fine-tuning with guided examples and simple methods. It helps improve accuracy for business tasks and projects. This skill is highly valued in top AI careers.

Key Roles and Responsibilities of Gen AI Profession

  • Gen AI Developer – A Gen AI Developer builds applications using LLMs, automation tools and AI frameworks. Responsibilities include creating prompts, testing models and improving AI accuracy. Work also involves integrating AI into apps or websites. This role focuses on turning ideas into working AI solutions.
  • AI Prompt Engineer – An AI Prompt Engineer designs clear and effective prompts that guide AI tools to produce the best results. The job requires understanding how models respond to different instructions. Responsibilities include testing prompts, refining outputs and improving performance. This role is key to ensuring high-quality AI responses.
  • AI Data Analyst – An AI Data Analyst prepares, analyzes and organizes data for training AI systems. Responsibilities include cleaning datasets, identifying patterns and supporting model development. Insights from data help improve AI accuracy and performance. This role combines analytical thinking with AI understanding.
  • AI Automation Specialist – An AI Automation Specialist creates automated workflows that reduce manual work. Responsibilities include building AI-driven processes, testing automation tools and improving efficiency. The role involves using Gen AI to speed up tasks like reporting and content creation. This helps companies work faster with fewer errors.
  • AI Research Assistant – An AI Research Assistant supports research teams by testing new models, collecting data and analyzing results. Responsibilities include running experiments, documenting findings and exploring new Gen AI techniques. This role helps improve the latest AI technologies. It is ideal for those interested in innovation and learning.

Why Gen AI is the Smart Choice for Freshers

  • High Demand for AI Skills – Gen AI skills are needed in almost every industry today, from IT to marketing and healthcare. Companies are actively hiring freshers who understand AI tools and workflows. Talent is in greater demand than it is being supplied. This gives newcomers excellent employment prospects.
  • Easy to Learn for Beginners – Gen AI concepts are taught in simple steps, making them easy for freshers to understand. Many tools require basic learning and offer user-friendly interfaces. Even non-technical students can start with simple tasks and grow gradually. This makes the field accessible to almost everyone.
  • Good Salary Growth – AI-related jobs offer higher starting salaries compared to many other entry-level fields. Skills like prompt engineering, automation and AI tool usage are highly valued. As freshers gain experience, their earnings increase quickly. This makes Gen AI a rewarding long-term career path.
  • Wide Range of Job Roles – Gen AI opens doors to various job roles such as AI Developer, Prompt Engineer, Data Analyst and Automation Specialist. Freshers can choose roles that match their interests and strengths. The flexibility helps build a career in different AI areas. This variety keeps the field exciting and future-proof.
  • Future-Proof Career – AI technology is growing rapidly and will play a major role in future jobs. Training in Gen AI prepares freshers for upcoming industry changes and trends. Skills gained today remain relevant for many years. This makes the career stable, secure and full of long-term possibilities.

Landing Remote Jobs with Gen AI Skills

  • Works Well with Online Tools – Gen AI skills make it easy to work with online platforms, automation tools and AI software used in remote jobs. Tasks like writing, coding and data analysis can be done from anywhere. Companies prefer candidates who can work independently using AI support. This increases chances of getting remote roles.
  • Improves Communication Tasks – Gen AI tools help create clear emails, reports, presentations and documentation. Strong communication is important for remote work and AI makes it easier to stay clear and professional. Freshers can handle tasks faster and more accurately. This makes them suitable for remote positions.
  • Supports Time Management – AI tools help plan schedules, organize tasks and manage workloads effectively. Remote jobs require good discipline and Gen AI makes tracking work much simpler. Automated reminders and quick AI support reduce delays. This helps build trust with employers in remote setups.
  • Enables Global Collaboration – Gen AI helps break language barriers, summarize long messages and make teamwork smoother. Remote roles often require working with international teams and AI supports easy communication. It becomes simpler to understand instructions and share ideas clearly. This makes freshers more ready for global remote work.
  • Boosts Productivity from Home – AI tools help complete tasks like research, content creation, coding and analysis much faster. Higher productivity makes remote employees more valuable to companies. Freshers can deliver results quickly even without office support. This improves chances of getting and keeping remote jobs.

What to Expect in Your First Gen AI Job

  • Learning New Tools Daily – Gen AI jobs involve working with tools like ChatGPT, Gemini and automation platforms. New updates and features appear often, so learning becomes a regular part of the job. Freshers get comfortable with experimenting and improving their skills. This helps build confidence in real work situations.
  • Working on Small AI Tasks First – Beginners usually start with simple tasks such as writing prompts, testing outputs or creating basic AI workflows. These tasks help build a strong foundation without pressure. More challenging work is assigned once confidence and skills grow. This gradual progress makes the job easier to adapt to.
  • Collaborating with Tech Teams – Most Gen AI roles involve teamwork with developers, analysts and designers. Clear communication is important because AI tasks often connect with other projects. Freshers get support from seniors who guide them through processes. This teamwork helps build practical knowledge quickly.
  • Solving Real Problems with AI – AI is used to make work faster, smarter and more accurate. Tasks may include automating reports, creating content, analyzing data or improving customer responses. Each assignment teaches how to apply AI in real situations. This experience helps freshers grow professionally.
  • Continuous Skill Improvement – The AI field changes fast, so staying updated becomes part of everyday work. Training sessions, online learning and exploring new tools become regular habits. Employers encourage freshers to improve their abilities. This builds a strong long-term career path in the Gen AI industry.

Leading Companies are Hiring for Gen AI Professionals

  • Microsoft – Microsoft is building a wide range of Gen AI products such as Copilot, Azure AI and Bing Chat. It hires AI engineers, researchers and prompt engineers to work on real-world problems using cloud AI. The company provides strong infrastructure, tools and research support for growing Gen AI talent. It’s ideal for people who want to work on scalable enterprise AI solutions.
  • Google (DeepMind & Google AI) – Google is major player in generative AI through its DeepMind and Google Brain teams. It works on advanced AI research, such as multimodal models and reasoning systems. Professionals here get exposure to cutting-edge projects and large-scale datasets. Google offers a mix of research and product-based roles, making it great for ambitious AI talent.
  • Meta (Facebook AI Research) – Meta invests heavily in Gen AI, building models like Llama and AI tools for its social platforms. Teams at Meta focus on open-source AI, creative AI research and AI for virtual environments. Working here gives Gen AI professionals a chance to experiment, publish research and develop large-scale AI systems. The company promotes innovation and collaboration across its AI labs.
  • Amazon Web Services (AWS) – AWS offers Gen AI solutions through its Bedrock platform and supports many foundation models by providing scalable infrastructure. AI professionals at Amazon can build, deploy and optimize AI models with cloud tools. The company encourages innovation in generative AI applications like chatbots, automation and enterprise AI. This makes AWS strong employer for those aiming to work on AI at cloud scale.
  • NVIDIA – NVIDIA powers much of the Gen AI world through its GPUs and AI frameworks like such as CUDA and NeMo. Engineers and researchers at NVIDIA build and optimize deep learning models using its hardware and software stack. Working here means contributing to the core technology that trains and runs large AI models. Its great for Gen AI professionals interested in both software and hardware innovation.
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Upcoming Batches For Classroom and Online

Weekdays
22 - Dec - 2025
08:00 AM & 10:00 AM
Weekdays
24 - Dec - 2025
08:00 AM & 10:00 AM
Weekends
27 - Dec - 2025
(10:00 AM - 01:30 PM)
Weekends
28 - Dec - 2025
(09:00 AM - 02:00 PM)
Can't find a batch you were looking for?
INR ₹22000
INR ₹23000

OFF Expires in

Who Should Take a Gen AI Certification Course

IT Professionals

Non-IT Career Switchers

Fresh Graduates

Working Professionals

Diploma Holders

Professionals from Other Fields

Salary Hike

Graduates with Less Than 60%

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Job Roles For Gen AI Professionals

Gen AI Engineer

AI Developer

AI Consultant

MLOps Engineer

AI Security Specialist

Gen AI Architect

AI Infrastructure Manager

AI Insights Specialist

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Tools Covered For Gen AI Course in Offline

OpenAI GPT Models Google Gemini Anthropic Claude Microsoft Copilot Amazon Bedrock Hugging Face Transformers Stability AI MidJourney

What’s included ?

Convenient learning format

📊 Free Aptitude and Technical Skills Training

  • Learn basic maths and logical thinking to solve problems easily.
  • Understand simple coding and technical concepts step by step.
  • Get ready for exams and interviews with regular practice.
Dedicated career services

🛠️ Hands-On Projects

  • Work on real-time projects to apply what you learn.
  • Build mini apps and tools daily to enhance your coding skills.
  • Gain practical experience just like in real jobs.
Learn from the best

🧠 AI Powered Self Interview Practice Portal

  • Practice interview questions with instant AI feedback.
  • Improve your answers by speaking and reviewing them.
  • Build confidence with real-time mock interview sessions.
Learn from the best

🎯 Interview Preparation For Freshers

  • Practice company-based interview questions.
  • Take online assessment tests to crack interviews
  • Practice confidently with real-world interview and project-based questions.
Learn from the best

🧪 LMS Online Learning Platform

  • Explore expert trainer videos and documents to boost your learning.
  • Study anytime with on-demand videos and detailed documents.
  • Quickly find topics with organized learning materials.

Gen AI Course Syllabus

  • 🏫 Classroom Training
  • 💻 Online Training
  • 🚫 No Pre Request (Any Vertical)
  • 🏭 Industrial Expert

Our Gen AI Course in Thiruvanmiyur offers a complete beginner-friendly syllabus designed for students and freshers. The program covers core Gen AI concepts, prompt engineering, LLM basics, automation workflows and popular AI tools used in real projects. Gain practical experience through Gen AI Internships and hands-on industry case studies. The course also includes AI tool integration, data handling basics and real-world application building. Plus, dedicated placement support helps with resume preparation, interview guidance and job readiness for Gen AI Training in Thiruvanmiyur.

  • Introduction to Generative AI – Learn Gen AI basics, including models, neural networks, embeddings and prompt engineering for a strong foundation.
  • Advanced Gen AI Techniques – Explore fine-tuning, RAG, transformers and leading models like GPT, LLaMA and diffusion models.
  • Hands-On AI Projects – Work on real-world projects like image recognition and chatbots to gain practical experience.
  • AI Tools and Deployment – Work with LangChain, Hugging Face, vector databases and cloud platforms to build and deploy Gen AI apps efficiently.
Introduction to Gen AI
Core Gen AI Services
Gen AI Administration Training
Gen AI Development Training
AI Automation & MLOps
Gen AI Analytics & Monitoring
Gen AI Strategy & Real-Time Projects

This module provides foundational knowledge of Generative AI:

  • Importance of Gen AI: Benefits, industry adoption, and business impact.
  • Core Concepts: Natural Language Processing, Computer Vision, Large Language Models, Automation, and Multimodal AI.
  • Key Platforms: Overview of OpenAI APIs, Hugging Face, LangChain, TensorFlow, and PyTorch.
  • Career Paths: Roles such as Gen AI Engineer, AI Developer, MLOps Engineer, and AI Security Specialist.

This module covers essential Gen AI tools and functionalities:

  • AI Administration: Managing datasets, model versions, pipelines, and resource allocation.
  • Data Management: Configuring embeddings, vector databases, training datasets, and ensuring data quality.
  • Model Configuration: Fine-tuning LLMs, setting up workflows with LangChain, and automating deployments.
  • Monitoring & Analytics: MLflow dashboards, logs, and performance metrics for AI system insights.

Learn to configure and manage Gen AI environments effectively:

  • Admin Interface: Navigation through Hugging Face Hub, OpenAI Playground, and AI pipelines.
  • Automation Tools: MLflow, Kubeflow, and infrastructure-as-code for AI workflows.
  • Security & Access: Role-based permissions, API key management, ethical AI practices, and compliance.
  • Performance Tracking: Monitoring accuracy, drift, logs, and generative model utilization.

This module provides hands-on learning for Gen AI application development:

  • Generative Development: Chatbots, text-to-image models, summarization tools, and automation workflows.
  • UI & Application Components: Deploying AI-driven dashboards, conversational apps, and multimodal interfaces.
  • App Building: Designing scalable generative applications, reusable prompts, and automation scripts.
  • Testing & Deployment: Using staging environments, CI/CD pipelines, and version-controlled AI deployments.

Learn to integrate and automate AI workflows using Gen AI :

  • MLOps Modules: CI/CD pipelines, infrastructure automation, and configuration management for AI.
  • Serverless & Automation: Automating model pipelines, orchestration with LangChain, and scheduled triggers.
  • Integration: Connecting AI with APIs, enterprise systems, and hybrid environments.
  • Automation Tools Overview: MLflow, Kubeflow, Vertex AI, and Python SDK workflows.

Understand how to track performance and optimize AI operations:

  • Dashboards & Monitoring: MLflow dashboards, model logs, metrics, and alerting.
  • Performance Analytics: Accuracy trends, cost optimization, and latency analysis.
  • KPIs & Metrics: Response time, efficiency, accuracy, scalability, and model drift.
  • Data Management Tools: Vector databases, ETL pipelines, AI data preprocessing, and generative analytics.

Apply Gen AI skills to real-world AI scenarios:

  • Project Planning: Define use cases, goals, and timelines for AI implementations.
  • Live Projects: Work on real Gen AI solutions, conversational apps, and multimodal workflows.
  • Performance Review: Analyze dashboards, logs, and output quality for improvements.
  • Capstone Project: Build end-to-end Gen AI solutions including automation, generative applications, and monitoring dashboards.

🎁 Free Addon Programs

Aptitude, Spoken English

🎯 Our Placement Activities

Daily Task, Soft Skills, Projects, Group Discussions, Resume Preparation, Mock Interview

Gain Hands-On Experience with Gen AI Projects

Placement Support Overview

Today's Top Job Openings for Gen AI Professionals

Gen AI Engineer

Company Code : GAI452

Chennai, Tamilnadu

₹40,000 – ₹55,000 a month

Any Degree

Exp 0-2 yrs

  • We’re hiring a Gen AI Engineer to build chatbots, fine-tune models, and automate workflows. Candidates should be familiar with LLMs, embeddings, dashboards, and Gen AI model administration.
  • Easy Apply

    Gen AI Developer

    Company Code : LLM739

    Chennai, Tamilnadu

    ₹55,000 – ₹85,000 a month

    B.Tech

    Exp 1-3yr

  • Join us as a Gen AI Developer to design, train, test, and deploy generative applications. Proficiency in Python, LangChain, Prompt Engineering, and model integration is required.
  • Easy Apply

    Gen AI Consultant

    Company Code : VEC621

    Chennai, Tamilnadu

    ₹60,000 – ₹95,000 a month

    Any Degree

    Exp 2-4 yrs

  • Seeking a Gen AI Consultant to analyze business use cases, implement AI-driven solutions, and optimize workflows. Strong communication and problem-solving skills are essential for successful client engagement.
  • Easy Apply

    Gen AI Architect

    Company Code : ARC884

    Chennai, Tamilnadu

    ₹65,000 – ₹75,000 a month

    B.E. in Computer Science

    Exp 3–6 yrs

  • We’re looking for a Gen AI Architect to design scalable AI solutions, oversee integrations, and ensure alignment with business goals. Expertise in AI models, security, and system architecture is required.
  • Easy Apply

    Gen AI Business Analyst

    Company Code : BAN537

    Chennai, Tamilnadu

    ₹50,000 – ₹80,000 a month

    Any Degree

    Exp 1-3 yrs

  • Become a Gen AI Business Analyst to gather requirements, document AI-driven processes, and translate them into Gen AI solutions. Collaborate with stakeholders to ensure accurate implementation and optimized workflows.
  • Easy Apply

    Gen AI Specialist

    Company Code : SPC269

    Chennai, Tamilnadu

    ₹65,000 – ₹95,000 a month

    Any Degree

    Exp 2–4 yrs

  • We’re hiring a Gen AI Specialist to manage AI-driven processes, monitor performance, and implement best practices across chatbots, content generation, and automation. Expertise in LLMs and reporting is preferred.
  • Easy Apply

    Gen AI Project Manager

    Company Code : PMG418

    Chennai, Tamilnadu

    ₹50,000 – ₹70,000 a month

    Any Degree

    Exp 3–5 yrs

  • Join us as a Gen AI Project Manager to plan, execute, and monitor AI projects. Responsible for timelines, budgets, and stakeholder communication while ensuring successful deployment of Gen AI solutions.
  • Easy Apply

    Gen AI Implementation Specialist

    Company Code : IMP562

    Chennai, Tamilnadu

    ₹70,000 – ₹80,000 a month

    Any Degree

    Exp 2–4 yrs

  • We are looking for a Gen AI Implementation Specialist to deploy generative solutions, configure pipelines, automate workflows, and provide user training. Strong knowledge of AI best practices and integrations is required.
  • Easy Apply

    Highlights for Gen AI Internships in Thiruvanmiyur

    Real-Time Projects

    • 1. Gain hands-on experience by working on live Gen AI applications and automation use cases.
    • 2. Learn real-world problem-solving through chatbot, content generation, and workflow integration scenarios.
    Book Session

    Skill Development Workshops

    • 1. Participate in focused sessions on trending Gen AI tools and frameworks.
    • 2. Learn directly from industry experts through guided practical exercises on prompts, pipelines, and models.
    Book Session

    Employee Welfare

    • 1. Enjoy benefits like health coverage, flexible hours, and wellness programs during internships or training.
    • 2. Companies prioritize mental well-being and work-life balance for all employees in Gen AI teams.
    Book Session

    Mentorship & Peer Learning

    • 1. Learn under experienced Gen AI mentors to guide your technical and career growth.
    • 2. Collaborate with peers to enhance learning through scenario-based exercises and group projects.
    Book Session

    Soft Skills & Career Readiness

    • 1. Improve communication, teamwork, and time management skills for professional AI roles.
    • 2. Prepare for interviews and workplace dynamics with mock sessions, case studies, and expert guidance.
    Book Session

    Certification

    • 1. Earn recognized credentials to validate your Gen AI skills.
    • 2. Boost your resume with course or project completion certificates from reputed Gen AI training platforms.
    Book Session

    Sample Resume for Gen AI (Fresher)

    • 1. Simple and Neat Resume Format

      – Use a clean layout with clear sections such as summary, Gen AI skills, certifications, education, and projects.

    • 2. List of AWS Skills You Know

      – Highlight skills like Prompt Engineering, LLM Fine-Tuning, LangChain, Vector Databases, Workflow Automation, Model Deployment, Dashboards, and AI-Powered Applications.

    • 3. Real-Time Projects and Achievements

      – Include 1–2 Gen AI projects with a brief description, tools used, and key outcomes or achievements.

    Top Gen AI Tricky Interview Questions and Answers (2025 Guide)

    Ans:

    Generative AI refers to advanced systems capable of creating fresh content such as text, images, audio or code using models such GPT and Stable Diffusion. Its importance comes from its ability to automate creative tasks, personalize user experiences and support innovation across multiple fields. By producing high-quality content quickly, it enhances productivity and expands the possibilities of digital transformation.

    Ans:

    Setting specific objectives and determining the precise business need are the first steps in a successful Gen AI project. After goals are established, the necessary data is collected, cleansed and prepared before the model is integrated or adjusted. Accurate results and seamless deployment are ensured by careful workflow design, extensive testing and ongoing stakeholder involvement.

    Ans:

    Tools like Hugging Face Transformers and OpenAI APIs are essential to the creation of Gen AI since they provide access to sophisticated models. While LangChain facilitates organized workflows, frameworks like PyTorch and TensorFlow help with model construction and training. Vector databases such as Pinecone or Weaviate hold embeddings for quick retrieval, while MLflow aids in experiment tracking.

    Ans:

    Gathering user requirements and creating fast prototypes to test concepts are key components of designing user-centered AI solutions. Reliable model outputs, intuitive user interface design and timely optimization all contribute to the development of useful and user-friendly systems. Testing and ongoing feedback guarantee that the solution develops and satisfies actual user needs.

    Ans:

      A Large Language Model is a sophisticated AI system that has been trained on massive text datasets to understand and generate human-like language. Applications like conversation assistants, summarizers, coding assistants and intelligent search tools are powered by it. It provides insightful and pertinent answers for a range of application cases by examining context and patterns.

    Ans:

    By closely examining system behavior, verifying data quality and modifying model settings as necessary, AI problems can be solved. Root causes can be swiftly identified with the aid of experimentation, organized testing and detailed documentation. Teamwork guarantees effective problem-solving and consistent project execution.

    Ans:

    The goal of prompt engineering is to develop structured inputs that direct AI models to generate precise and practical results. Robust prompts improve model dependability, decrease errors and improve content uniformity. For generative systems to produce high-quality results, this makes it an essential ability.

    Ans:

    By reading research papers, attending webinars and keeping up with top AI communities like Hugging Face and OpenAI, professionals stay current. Practical knowledge is strengthened by participating in forums and testing with the newest models and technologies. In a field that is changing quickly, these activities help experts stay up to date and competitive.

    Ans:

    An AI dashboard displays essential performance metrics including accuracy, response time, usage cost and signs of model drift. These insights make it easier to monitor overall system health and optimize resource allocation. With clear analytics, teams can maintain model reliability and ensure smooth ongoing operations.

    Ans:

    Scalable, moral and economical solutions are needed to match AI projects with corporate objectives. Compliance and sustainability are ensured by including MLOps, governance requirements and responsible AI standards. Through well-managed AI adoption this strategy helps firms accomplish strategic results while promoting long-term success.

    Company-Specific Interview Questions from Top MNCs

    1. How can Generative AI be explained and what purpose does it serve?

    Ans:

    The term "generative AI" describes sophisticated systems that use models like GPT, BERT and Stable Diffusion to create new content, such as graphics, code, text or audio. Its responsibilities include improving corporate activities with intelligent generation capabilities, automating creative processes and producing new outputs. This technology facilitates increased productivity and broadens the scope of digital operations.

    2. What key principles support a strong Gen AI adoption strategy?

    Ans:

    Successful Gen AI adoption depends on clean datasets, well-crafted prompts and properly automated pipelines supported by human oversight. Continuous evaluation, ethical usage and alignment with organizational goals keep the system reliable and efficient. These principles help maintain trust and ensure the AI remains valuable throughout its usage.

    3. How can teams collect accurate requirements for Gen AI initiatives?

    Ans:

    Speaking with stakeholders, examining current procedures and identifying obstacles through surveys, interviews and workflow analysis are all part of the requirement gathering process. The appropriate models, data sources and implementation techniques are chosen with the aid of these insights. A thorough comprehension of company requirements guarantees that the finished product remains applicable and efficient.

    4. What elements are essential for creating a user-friendly Gen AI experience?

    Ans:

    A user-friendly design includes simple interfaces, straightforward prompt input options and cleanly formatted outputs. Accessibility features, clear examples and smooth integration with existing tools further improve usability. Transparent and explainable outputs help users trust the system and interact with it comfortably.

    5. How can a Large Language Model (LLM) be described and how does it operate?

    Ans:

    A Large Language Model is neural network trained on massive text datasets to interpret and produce natural language. It supports functions such as summarizing content, generating code, translating text and powering conversational tools. Through understanding context it provides meaningful and coherent responses across varied applications.

    6. What considerations are important when building a Gen AI monitoring dashboard?

    Ans:

    A strong dashboard highlights major statistics such as accuracy, response speed, cost usage and model drift indicators. Visual charts and graphs make insights easy to understand and evaluate. Continuous tracking, along with user feedback, allows teams to improve performance and maintain system stability.

    7. What does automation mean in the context of Generative AI?

    Ans:

    Gen AI automation involves creating workflows where AI automatically produces content, fine-tunes models or performs repetitive digital tasks. This approach increases efficiency, consistency and speed while reducing manual effort. It enables businesses to scale operations and introduce new solutions more rapidly.

    8. What are the major phases involved in delivering a Gen AI project?

    Ans:

    Requirement identification, architectural planning, data preparation and model training or customization are all common components of a Gen AI project. Evaluation, deployment and ongoing monitoring to guarantee seamless operation come next. Every stage guarantees that the solution stays precise and in line with user expectations.

    9. How can the effectiveness of a Gen AI model be assessed?

    Ans:

    Metrics including accuracy, F1 score and assessment in real-world situations are used to test model performance. The system's output quality is improved through user feedback and prompt enhancements. This combination strategy guarantees that business requirements and technological standards are constantly satisfied.

    10. How can uniformity be maintained across different Gen AI projects?

    Ans:

    Standardized workflows, uniform prompt formats and organized documentation procedures all contribute to uniformity. Collaboration is facilitated by reusable templates, naming conventions and version control systems. Maintaining quality and dependability across all AI installations is facilitated by routine audits and reviews.

    1. How can Generative AI be described and what sets it apart from conventional AI methods?

    Ans:

    Generative AI refers to advanced systems that create fresh content such as images, text, code or audio using models like GPT, DALL·E and Stable Diffusion. Unlike traditional AI that mostly predicts or classifies data, Generative AI produces new, creative outputs. This ability opens doors for innovation, automation and smarter digital solutions across industries.

    2. What core abilities are important for someone working in Generative AI?

    Ans:

    Large language models, multimodal systems and frameworks like PyTorch or TensorFlow are all necessary for a competent professional in generative AI. It is crucial to have expertise in automated pipeline construction, model fine-tuning and prompt engineering. The creation of successful AI applications is further aided by Python proficiency, API utilization, analytical thinking and teamwork.

    3. How should a Generative AI project be planned and carried out effectively?

    Ans:

    Establishing objectives, comprehending user expectations and identifying obstacles through stakeholder talks are the first steps in a successful project. After that, data is collected, models are modified and workflows are organized for efficient operation. Throughout the process, ongoing testing and improvement assist ensured that the finished product is reliable and accurate.

    4. How is a Large Language Model (LLM) defined and what makes it important in Generative AI?

    Ans:

    A Large Language Model is a deep learning system trained on massive text collections to interpret and generate natural language. These models support tasks such as translation, summarization, coding assistance and chat-based interactions. Their ability to understand context makes them a foundation for many modern Generative AI applications.

    5. How can Generative AI solutions be created to provide a simple and user-friendly experience?

    Ans:

    Simple interfaces, unambiguous prompt structures and uniform output formatting are characteristics of user-friendly AI systems. Accessibility is increased by including guiding features like examples, tooltips and robust error handling. Users of different skill levels can easily interact with AI technologies because to these design decisions.

    6. What tools and technologies are frequently used in Generative AI development?

    Ans:

    Generative AI projects commonly rely on OpenAI APIs and Hugging Face models for quick deployment. LangChain supports workflow automation, while MLflow and TensorBoard help track model progress and performance. Integrations are enabled through Python, custom SDKs and vector databases like Pinecone or Weaviate for efficient semantic search.

    7. Why are monitoring dashboards important in Generative AI operations?

    Ans:

    Dashboards offer real-time visibility into key indicators such as accuracy, speed and data drift. Monitoring tools help teams detect issues early, evaluate patterns and optimize model behavior. This ongoing oversight ensures that AI outputs remain reliable and aligned with business requirements.

    8. How should teams manage feedback and challenges during AI rollout?

    Ans:

    User and stakeholder feedback is collected in order to identify gaps and opportunities for improvement. Adjustments are then made to prompts, model setups and data pipelines as needed. Ethical procedures and open communication facilitate smooth changes, ensuring system stability and scalability.

    9. What testing approaches are recommended for evaluating Generative AI solutions?

    Ans:

    Testing involves user acceptance trials, controlled sandbox checks, regression analysis and performance evaluation to ensure accuracy and consistency. Regular review cycles and iterative feedback help refine the system. These methods verify that the AI operates reliably once deployed in real-world environments.

    10. How can AI professionals stay informed about the latest advancements in Generative AI?

    Ans:

    Staying updated includes studying research papers, joining webinars and engaging with AI communities such as Hugging Face and OpenAI. Experimenting with emerging models and tools strengthens practical knowledge. Networking with experts further helps professionals keep pace with the rapid evolution of Generative AI.

    1. How does the role of a Generative AI Engineer differ from that of a Developer?

    Ans:

    A Generative AI Engineer focuses on building, managing and optimizing AI workflows and automation pipelines to ensure scalability and system efficiency. In contrast, a Developer concentrates on coding, integrating APIs,nd customizing models to implement specific features. Engineers oversee the full AI infrastructure while Developers fine-tune models and enhance application performance.

    2. Why is requirement gathering important in a Generative AI project?

    Ans:

    Gathering requirements involves analyzing workflows, conducting stakeholder interviews and reviewing business objectives. This ensures that AI solutions align with both user needs and organizational goals. Clear requirements reduce complexity and guide the project toward producing meaningful, impactful results.

    3. What are the best practices for implementing Generative AI solutions?

    Ans:

    Effective implementation includes using high-quality data, automating workflows and following consistent naming conventions. Employing structured testing, scalable dashboards and continuous validation ensures reliable and accurate AI outputs. These practices help maintain performance and efficiency across all AI projects.

    4. Which tools and frameworks are commonly used in Generative AI development and deployment?

    Ans:

    Popular tools include OpenAI and Hugging Face APIs for pre-trained models, while LangChain supports automated workflows. Python and SDKs enable custom integrations, MLflow and TensorBoard monitor performance and vector databases like Pinecone or Weaviate store embeddings. Deployment often leverages Docker or Kubernetes for scalability.

    5. Why is maintaining data security critical in Generative AI projects?

    Ans:

    Data security protects sensitive information during model training, testing and deployment. Encryption, secure API management and controlled access prevent unauthorized use or breaches. Robust security protocols maintain compliance, protect organizational integrity and build user trust.

    6. How can AI pipelines and datasets be efficiently created and utilized?

    Ans:

    Efficient pipelines begin with clear project objectives and expected outcomes. Relevant datasets are collected, cleaned and prepared for training or fine-tuning models. Structured workflows, validation checkpoints and monitoring ensure consistent performance and accurate AI outputs.

    7. What are the key phases of executing a Generative AI project?

    Ans:

    A project begins with analyzing requirements and identifying data needs, followed by workflow design and model selection. Subsequent phases include data preparation, model fine-tuning and pipeline construction. Testing, validation and deployment are completed with continuous monitoring to maintain optimal performance.

    8. How should stakeholder feedback be managed during AI projects?

    Ans:

    Feedback should be documented, prioritized and applied to refine models or prompts as needed. Transparent communication ensures stakeholders are updated on changes while iterative testing guarantees that the final AI solution meets both business objectives and user expectations.

    9. What practices help ensure the success of Generative AI initiatives?

    Ans:

    Success relies on leveraging reliable pre-trained models, maintaining structured datasets and avoiding unnecessary hardcoding. Continuous documentation, regular validation and monitoring of models ensure accuracy and stability. Following these practices supports scalable, maintainable and high-performing AI systems.

    10. How can professionals keep pace with the fast-evolving Generative AI field?

    Ans:

    Staying current requires reading AI research papers, blogs and industry updates, attending webinars and conferences and engaging in communities such as Hugging Face or OpenAI. Experimenting with new tools and obtaining relevant certifications helps maintain hands-on expertise and practical knowledge.

    1. What distinguishes a Generative AI Engineer from a Developer?

    Ans:

    A Generative AI Engineer focuses on building AI workflows, managing data pipelines and automating processes to ensure system efficiency and scalability without extensive coding. In contrast a Developer writes code, integrates APIs and fine-tunes models to deliver customized AI features. Engineers manage infrastructure while Developers optimize functionality and performance.

    2. How are requirements effectively collected in a Generative AI project?

    Ans:

    Requirements are gathered through stakeholder interviews, surveys and workshops to understand business objectives and user expectations. This process determines key aspects such as dataset preparation, model selection and workflow design. Accurate requirement gathering ensures the AI solution aligns with goals and delivers measurable results.

    3. Which tools and frameworks are essential for Generative AI development?

    Ans:

    Commonly used tools include OpenAI and Hugging Face APIs for accessing and refining pre-trained models, while LangChain supports workflow automation. Python and SDKs enable custom scripting and MLflow or TensorBoard track model performance. Vector databases like Pinecone or Weaviate assist in semantic search, while dashboards offer real-time insights for decision-making.

    4. How is a Large Language Model (LLM) defined and applied in practice?

    Ans:

    A Large Language Model is a sophisticated AI system trained on extensive text datasets to comprehend and generate human-like language. LLMs are applied in chatbots, recommendation engines, summarization tools and code generation. Proper prompt engineering and fine-tuning ensure outputs meet both business needs and user expectations.

    5. How can Generative AI systems remain secure while being user-friendly?

    Ans:

    Security measures include encrypted data handling, access controls and safe API management. User experience is enhanced through clear interfaces, structured prompts and consistent output formatting. Rigorous testing across devices ensures accessibility, inclusivity and ease of use for all types of users.

    6. How are AI dashboards and monitoring systems created?

    Ans:

    Dashboards are designed by identifying critical metrics such as accuracy, latency and cost efficiency. Visualization tools like graphs and charts make data easier to interpret. Iterative improvements and user feedback refine dashboards, enabling teams to make data-driven decisions and optimize AI performance effectively.

    7. What methods are used to validate and test Generative AI solutions?

    Ans:

    Validation involves sandbox testing, regression analysis and user acceptance evaluations to ensure quality and stability. Continuous feedback and monitoring allow refinement of models for accuracy and relevance. These steps guarantee reliable and high-performing AI systems in real-world deployments.

    8. What key practices ensure successful Generative AI implementation?

    Ans:

    Success depends on using clean, high-quality datasets, scalable workflows and structured pipelines. Pre-trained models save time, while standardized naming and automated processes enhance stability. Adhering to these practices ensures AI systems remain accurate, maintainable and efficient throughout deployment.

    9. How should conflicting stakeholder feedback be handled in AI projects?

    Ans:

    Conflicting input is managed by documenting all feedback, analyzing its impact and prioritizing changes based on feasibility and business value. Transparent communication keeps stakeholders informed while balancing feedback ensures the project aligns with organizational goals without compromising quality or performance.

    10. How can professionals stay updated with the latest trends in Generative AI?

    Ans:

    Staying current involves reading research papers, following updates from OpenAI and Hugging Face and attending industry webinars or conferences. Active participation in professional communities and experimenting with new tools strengthens practical knowledge. Certifications and hands-on projects help maintain expertise and adapt to emerging AI technologies.

    1. How does a Generative AI Engineer differ from a Developer?

    Ans:

    A Generative AI Engineer focuses on building AI infrastructure, managing data pipelines, automating workflows and ensuring scalable deployment of models. In contrast, a Developer emphasizes coding, integrating APIs and fine-tuning models to create functional AI applications. Engineers ensure system reliability while developers enhance model performance and application functionality.

    2. How are features prioritized when developing a Generative AI solution?

    Ans:

    Feature prioritization is guided by business goals, user requirements and expected impact on performance. Evaluating stakeholder feedback, analyzing workflow efficiency and estimating productivity gains help determine which features deliver the highest value. This approach ensures critical functionalities are implemented first for maximum effectiveness.

    3. What steps are involved in building and launching a new Generative AI solution?

    Ans:

    Building a Generative AI solution begins with understanding business needs and preparing clean, relevant datasets. Appropriate models are selected, pipelines are constructed and the system is tested in sandbox environments. Iterative refinements based on feedback ensure the solution is optimized for real-time deployment and continuous performance monitoring.

    4. How is security and accessibility ensured in Generative AI systems?

    Ans:

    Security is maintained through encryption, access control and API authentication, protecting sensitive data throughout training and deployment. Accessibility is enhanced with intuitive prompts, consistent outputs and user-friendly interfaces compatible across devices. These measures create safe and easy-to-use AI systems for diverse users.

    5. Which metrics are used to measure the success of a Generative AI implementation?

    Ans:

    Success is evaluated using metrics like model accuracy, response latency, user engagement and operational cost efficiency. Real-time dashboards and feedback loops track system performance continuously. These insights help align AI outputs with business objectives and enable ongoing optimization.

    6. Can you describe a challenging problem in Generative AI and how it was resolved?

    Ans:

    One challenge involved inconsistent responses from a fine-tuned large language model. By analyzing the dataset, refining prompts and adding contextual templates, the model’s outputs became more consistent. Continuous monitoring and iterative optimization further improved accuracy and user satisfaction.

    7. What tools and platforms are commonly used in Generative AI development?

    Ans:

    Key tools include OpenAI and Hugging Face APIs for pre-trained models, LangChain for automating workflows and Python SDKs for custom integration. MLflow and TensorBoard are used for performance tracking, while vector databases like Pinecone and Weaviate efficiently manage embeddings. These platforms support both development and deployment of AI systems.

    8. How is conflicting feedback from stakeholders managed in AI projects?

    Ans:

    Conflicting feedback is assessed against business priorities and technical feasibility. Each input is documented and communicated transparently to all stakeholders. Decisions are guided by data-driven insights, ensuring alignment between project capabilities and stakeholder expectations.

    9. Why is data critical in Generative AI projects?

    Ans:

    Data is the foundation of Generative AI, directly influencing model training, predictions and output quality. Clean, well-structured datasets improve performance, while continuous monitoring ensures reliability and ethical compliance. Proper data management ensures AI solutions deliver accurate and actionable results.

    10. How do professionals continue growing in the Generative AI field?

    Ans:

    Professional growth involves studying research papers, attending webinars and participating in AI communities. Hands-on practice with emerging frameworks, tools and models along with pursuing relevant certifications, helps maintain practical expertise. This approach ensures adaptability in the fast-evolving AI landscape.

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    The details mentioned here are for supportive purposes only. There are no tie-ups or links with the corresponding PGs.

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    Top Gen AI Job Opportunities for Freshers

    • 1. Gen AI Roles at Startups and Tech Companies
    • 2. Campus Placements and AI Research Jobs
    • 3. Internship-to-Job Programs
    • 4. Apply Through Job Portals
    • 5. Skills That Help You Get Hired

    Getting Started With Gen AI Course in Thiruvanmiyur

    Easy Coding
    8 Lakhs+ CTC
    No Work Pressure
    WFH Jobs (Remote)

    Why Gen AI is the Ultimate Career Choice

    High Demand

    Companies prefer multi-skilled professionals can handle entire project cycles.

    Global Opportunities

    Open doors to remote and international job markets.

    High Salary

    Enjoy competitive salaries and rapid career advancement.

    Flexible Career Path

    Explore roles such as developer, architect, freelancer, or entrepreneur.

    Future-Proof Career

    Stay relevant with skills that are consistently in demand in the evolving tech landscape.

    Versatility Across Industries

    Work in various domains like e-commerce, healthcare, finance, and more.

    Career Support

    Placement Assistance

    Exclusive access to ACTE Job portal

    Mock Interview Preparation

    1 on 1 Career Mentoring Sessions

    Career Oriented Sessions

    Resume & LinkedIn Profile Building

    Get Advanced Gen AI Certification

    You'll receive a certificate proving your industry readiness.Just complete your projects and pass the pre-placement assessment.This certification validates your skills and prepares you for real-world roles.

    Generative AI training offers a variety of certifications designed for different skill levels and career tracks, including:

    • Certified Generative AI Practitioner (CGAP)
    • Generative AI Developer Certification
    • Generative AI Engineer Certification
    • Specialist Certification in Natural Language Processing (NLP)
    • Professional Generative AI Architect Certification

    A Generative AI certification significantly boosts employability by validating expertise in AI, machine learning and automation. It equips professionals with in-demand skills, making them highly attractive to employers. Combined with hands-on experience this certification strongly positions candidates for immediate job opportunities in AI-driven roles.

    The time required for certification varies according to course complexity and individual learning pace. Beginner programs, such as the Generative AI Practitioner, can be completed in 6–8 weeks. Advanced certifications like Developer or Professional Architect programs may take 3–6 months. Bootcamps often last 8–12 weeks, while self-paced learners can progress at a schedule that suits their needs.

    Earning a Generative AI certification offers several advantages:

    • Recognized expertise in AI, machine learning and emerging technologies worldwide.
    • Enhanced career growth with potential for higher salaries.
    • Increased professional credibility in modern technology domains.
    • Stronger presence on resumes, LinkedIn profiles and professional networks.
    • Practical experience through hands-on projects and real-world AI applications.

    Key strategies for exam preparation include:

    • Enrolling in structured, mentor-led training programs for guided learning.
    • Practicing consistently with AI tools, APIs and live project exercises.
    • Reviewing official study materials and taking mock exams to gauge readiness.
    • Gaining applied experience through real-world AI projects and tasks.
    • Participating in AI communities and online forums to stay updated and receive peer support.

    Complete Your Course

    A Downloadable Certificate in PDF Format, Immediately Available to You When You Complete Your Course.

    Get Certified

    A Physical Version of Your Officially Branded and Security-Marked Certificate.

    Get Certified

    Lowest Gen AI Training Fees in Thiruvanmiyur

    Affordable, Quality Training for Freshers to Launch IT Careers & Land Top Placements.

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    How is ACTE's Gen AI Training in Thiruvanmiyur Different?

    Feature

    ACTE Technologies

    Other Institutes

    Affordable Fees

    Competitive Pricing With Flexible Payment Options.

    Higher Gen AI Fees With Limited Payment Options.

    Industry Experts

    Well Experienced Trainer From a Relevant Field With Practical AWS Training

    Theoretical Class With Limited Practical

    Updated Syllabus

    Updated and Industry-relevant Gen AI Course Curriculum With Hands-on Learning.

    Outdated Curriculum With Limited Practical Training.

    Hands-on projects

    Real-world Gen AI Projects With Live Case Studies and Collaboration With Companies.

    Basic Projects With Limited Real-world Application.

    Certification

    Industry-recognized Gen AI Certifications With Global Validity.

    Basic Gen AI Certifications With Limited Recognition.

    Placement Support

    Strong Placement Support With Tie-ups With Top Companies and Mock Interviews.

    Basic Placement Support

    Industry Partnerships

    Strong Ties With Top Tech Companies for Internships and Placements

    No Partnerships, Limited Opportunities

    Batch Size

    Small Batch Sizes for Personalized Attention.

    Large Batch Sizes With Limited Individual Focus.

    LMS Features

    Lifetime Access Course video Materials in LMS, Online Interview Practice, upload resumes in Placement Portal.

    No LMS Features or Perks.

    Training Support

    Dedicated Mentors, 24/7 Doubt Resolution, and Personalized Guidance.

    Limited Mentor Support and No After-hours Assistance.

    Gen AI Course FAQs

    1. What basic skills are needed to start a career in Generative AI?

    Fundamental skills like computer literacy, logical thinking and analytical abilities provide a strong base for a career in Generative AI. A curiosity for AI, interest in emerging technologies and problem-solving mindset are highly beneficial. Prior programming knowledge can help accelerate learning, though it is not required for beginners.
    The demand for Generative AI professionals is growing rapidly across sectors such as IT, healthcare, finance and retail. Companies are increasingly adopting AI-driven automation and analytics to optimize processes and decision-making. This trend has created numerous opportunities for AI Developers, Engineers and Specialists worldwide.
    The training program covers wide range of technologies, including AI fundamentals, model fine-tuning, natural language processing, computer vision and workflow automation using AI APIs. Students also learn performance monitoring, analytics and optimization techniques, ensuring AI systems run efficiently and scale effectively across real-world applications.
    Hands-on projects form an essential part of the learning process. Students engage in creating AI models, designing chatbots, automating content generation and developing workflow automation tools. These exercises improve problem-solving skills and give exposure to real-world AI applications.
    Career support is included in the course structure. Learners receive guidance on showcasing AI skills, projects and certifications effectively. Mock interviews, portfolio preparation and career counseling sessions enhance employability and readiness for top AI roles.
    The program is open to students, fresh graduates, IT professionals and even non-technical individuals interested in AI. Since training starts with basic AI and machine learning concepts, prior technical experience is not mandatory.
    A formal degree is not necessary for building a career in Generative AI. Employers place more emphasis on certifications, practical experience and demonstrable skills. Structured training combined with applied AI projects often opens doors to professional roles, even without a degree.
    Basic computer literacy and logical reasoning are sufficient for beginners. Programming knowledge can help with advanced tasks but is not required initially. A strong interest in automation, emerging technologies and data-driven solutions helps accelerate learning and understanding of AI concepts.
    Coding is not required at the start. The course employs no-code and low-code tools, allowing learners to build AI applications easily. Programming concepts are gradually introduced later for tasks such as model customization and process automation.

    1. What type of placement assistance is provided after training?

    Placement support includes resume building, mock interviews and career mentoring. Partnerships with AI-focused companies, startups and technology organizations help learners secure roles aligned with their Generative AI skills.

    2. Do learners work on live projects to strengthen their resumes?

    Yes, live projects are integrated into the curriculum. Students gain hands-on experience in building AI models, developing chatbots, automating workflows and generating content. These projects enhance technical knowledge and add credibility to professional portfolios.

    3. Can learners apply to top AI and IT companies after completing training?

    Completing the Generative AI course prepares learners for roles in leading companies such as TCS, Infosys, Wipro, Accenture and Capgemini. Certified professionals with strong technical and problem-solving skills are highly sought after in global AI organizations.

    4. Is placement support available for freshers with no prior experience?

    Yes, dedicated programs guide beginners through job readiness sessions, mock assessments and project-based learning. Even those with no IT background can transition into AI roles with continuous support and practical exposure.
    All participants earn a recognized certification upon successful completion. This credential validates skills in AI tools, workflows and applied projects. Institutes also guide learners toward advanced certifications like AI Developer or AI Engineer.
    Generative AI is a fast-growing global technology offering immense career opportunities. Certified professionals can explore roles in IT, fintech, healthcare and other industries, often achieving higher salaries and long-term career advancement.
    No strict prerequisites are required. Anyone with basic computer literacy and logical reasoning can start the course. It is designed to gradually build strong AI knowledge for beginners and professionals alike.
    Certification enhances technical expertise and opens doors to roles like AI Developer, NLP Specialist and Automation Engineer. It boosts employability, increases earning potential and prepares professionals for advanced domains within AI.
    Learners gain hands-on experience in model creation, prompt engineering and automation. The program also covers NLP, computer vision and AI analytics equipping participants to design, deploy and optimize intelligent AI applications.

    1. Is placement assistance included in the course fee?

    Yes, the program includes complete placement support, such as resume review, mock interviews and job referrals. Collaboration with hiring companies provides access to real job opportunities in AI and automation.
    Fees differ based on course depth, teaching approach, learning resources and support services. Institutes offering hands-on projects, modern tools and structured programs may charge slightly higher fees due to enhanced practical training.
    Yes the Gen AI Course is designed to be accessible for students and professionals. Many institutes offer installment plans, discounts and scholarships, providing excellent value for the career benefits gained.
    Yes, fees remain consistent across cities and training modes, whether classroom, online or fast-track. This ensures equal learning quality and value for all participants.
    Learn (Generative AI, Prompt Engineering, LLMs, MLOps, NLP, Computer Vision, and AI-Powered Applications) at just 22,000/- Only.
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