Full Stack Generative AI Course For Beginners
Unlock the potential of Generative AI with our in-depth course, crafted to equip you with the expertise to create, fine-tune, and deploy advanced AI models. Guided by seasoned professionals, you'll gain expertise in generative models like GPT, Gemini,LLAMA, CLAUDE etc, apply design thinking for innovative AI solutions, and master Retrieval-Augmented Generation (RAG). This flexible, online program allows you to learn at your own pace, covering data preparation, model fine-tuning, integration,deployment and ethical AI practices. Engage in real-world projects across various industries, preparing for a dynamic career in AI with practical skills and hands-on experience.
- Learn how to develop, train, and fine-tune various generative models such as GANs, VAEs, and autoregressive models to generate realistic images, text, and other data.
- Gain a deep understanding of Transformer architectures, including how they work, their evolution, and their application in natural language processing tasks.
- Master the art of creating effective prompts to enhance the performance and relevance of AI-generated responses, including techniques for zero-shot, few-shot, and chain-of-thought prompting.
- Learn strategies for collecting, cleaning, and augmenting datasets to ensure high-quality input for training generative models, which is crucial for model accuracy and performance.
- Acquire skills in integrating generative AI models using APIs from platforms like OpenAI, Hugging Face, and Google Cloud AI, and deploying these models in real-world applications.
- Understand the ethical implications of generative AI, including how to identify and mitigate biases, ensure fairness, and address privacy concerns in AI applications.
- TensorFlow: An open-source platform for machine learning, ideal for building and training generative models like GANs and VAEs.
- PyTorch: A flexible, open-source library for developing and experimenting with generative models using dynamic computational graphs.
- Hugging Face Transformers: Provides easy-to-use interfaces for state-of-the-art transformer models, facilitating the integration and fine-tuning of models like GPT-3, BERT, and T5.
- Keras: A high-level neural networks API that simplifies building and training deep learning models on top of TensorFlow, CNTK, or Theano.
- OpenAI API: Offers access to advanced generative models like GPT-3 through an easy-to-use API, enabling powerful AI capabilities without extensive machine learning expertise.
- LangChain: An open-source framework that simplifies the development of applications powered by large language models (LLMs) by chaining interoperable components.
- LlamaIndex: Provides a simple interface to connect LLMs with data, building indices for efficient and accurate information retrieval.
- Gemini API: A service that provides cutting-edge generative AI capabilities for various applications, offering powerful tools for AI-driven content creation and analysis.
- Stakeholder Communication: Clearly explain generative AI capabilities, limitations, and benefits to stakeholders, aligning project goals with business objectives.
- Comprehensive Documentation: Maintain detailed documentation of generative AI models, workflows, and results to ensure team members and stakeholders can easily understand and collaborate.
- Project Management: Effectively plan, coordinate, and monitor generative AI projects, ensuring timely completion and adherence to business goals.
- Insightful Data Presentation: Translate complex generative AI data and model outputs into understandable and actionable insights for non-technical audiences.
- Interdisciplinary Collaboration: Facilitate seamless cooperation between data scientists, engineers, and business teams to integrate generative AI solutions into business processes and strategies.
- Learn to apply these models to solve real-world problems across different industries, especially BFSI.
- Utilize AI to develop innovative solutions for complex problems.Enhance your ability to think creatively about how AI can be used to address unique challenges.
- Apply design thinking principles to create user-centric AI solutions.Learn to empathize with end-users, define clear problem statements, ideate solutions, and iterate through prototyping and testing.
- Develop skills in creating and testing prototypes of AI applications, ensuring they meet user needs and solve the intended problems effectively.
- Understand the importance of data quality and relevance in developing effective AI solutions.
- Learn best practices for deploying AI solutions at scale, ensuring reliability and performance.
- Learn strategies to ensure fairness, transparency, and accountability in AI solutions.
- Enhance your ability to work collaboratively with interdisciplinary teams to develop AI solutions.
- Learn to apply these models to solve real-world problems across different industries, especially BFSI.
- Utilize AI to develop innovative solutions for complex problems.Enhance your ability to think creatively about how AI can be used to address unique challenges.
- Apply design thinking principles to create user-centric AI solutions.Learn to empathize with end-users, define clear problem statements, ideate solutions, and iterate through prototyping and testing.
- Develop skills in creating and testing prototypes of AI applications, ensuring they meet user needs and solve the intended problems effectively.
- Understand the importance of data quality and relevance in developing effective AI solutions.
- Learn best practices for deploying AI solutions at scale, ensuring reliability and performance.
- Learn strategies to ensure fairness, transparency, and accountability in AI solutions.
- Enhance your ability to work collaboratively with interdisciplinary teams to develop AI solutions.
Banking & Finance
Gain a foundational understanding of Generative AI, including its core concepts and objectives. Explore its applications in various industries such as healthcare, automotive, and retail.
- 1.1 Core Concepts:
- Understand the basic principles and objectives of Generative AI.
- 1.2 Generative Models:
- Learn about GANs, VAEs, and autoregressive models.
- 1.3 Applications:
- Explore real-world applications in healthcare, automotive, and BFSI.
- 1.4 Transformers and LLMs:
- Introduction to Transformer architecture and Large Language Models, their capabilities, limitations, and impact.
- Introduction to Transformer architecture and Large Language Models, their capabilities, limitations, and impact.
Explore what foundation models are, their historical development, and their significance in advancing AI research and applications
- 1.1 Definition and Importance:
- Understand what foundation models are and their role in AI.
- 1.2 Pretraining:
- Learn about the objectives, processes, and significance of pretraining.
- 1.3 Fine-tuning
- Understand the differences between pretraining and fine-tuning, including techniques and strategies.
- 1.4 Examples:
- Explore prominent foundation models like GPT, BERT, and T5.
Understand the platforms and APIs available for deploying generative AI models, focusing on their features, capabilities, and use cases.
- 1.1 Popular Platforms:
- Learn about Google Cloud AI, Microsoft Azure AI, AWS AI, OpenAI, and Hugging Face.
- 1.2 API Integration:
- Understand the role of APIs in integrating generative AI models
- 1.3 Features and Capabilities:
- Explore key functionalities and support for various generative models.
- 1.4 Platform Comparison:
- Evaluate platforms based on performance, scalability, cost, and ease of use.
Gain technical insights into LLMs, their architecture, data preparation techniques, and training processes.
- 1.1 Popular Models:
- Overview of models like GPT-3, BERT, and T5, and their applications.
- 1.2 Architecture:
- Understand the key components and architecture of LLMs, especially Transformers.
- 1.3 Data Preparation:
- Learn strategies for data collection, cleaning, and augmentation.
- 1.4 Training and Tuning:
- Explore hyperparameter tuning, performance metrics, and training workflows.
Learn about prompt engineering, its significance, and how it enhances the quality and relevance of AI-generated responses.
- 1.1 Core Concepts:
- Understand what prompt engineering is and its historical contex.
- 1.2 Techniques:
- Explore methods for creating effective prompts.
- 1.3 Applications:
- Discover practical applications and case studies demonstrating its impact.
- 1.4 Types of Prompting:
- Learn about zero-shot, few-shot, and chain-of-thought prompting strategies.
Develop practical skills for creating AI-powered applications, especially chatbots, for the BFSI industry.
- 1.1 Chatbot Development:
- Steps for defining goals, designing flows, selecting technology, and integrating LLMs.
- 1.2 API Integration:
- Guide for developing chatbots using API integration and deploying LLMs locally.
- 1.3 Domain-Specific Solutions:
- Design chatbots for finance and e-commerce.
- 1.4 BFSI Projects:
- Undertake projects like fraud detection, loan approval assistants, and insurance claim processing.
Understand the role of vector databases and LangChain-like frameworks in AI applications, particularly in the BFSI industry.
- 1.1 Vector Databases:
- Learn about high-dimensional data storage and performance benefits.
- 1.2 LangChain Framework:
- Explore its components, features, and capabilities.
- 1.3 Integration:
- Step-by-step guide to integrating LLMs with vector databases using LangChain.
- 1.4 Case Studies:
- Practical examples demonstrating improved performance and functionality.
Explore the Retrieval-Augmented Generation (RAG) architecture and techniques for integrating local data sources with LLMs.
- 1.1 RAG Overview:
- Understand the architecture and its components (retriever and generator).
- 1.2 Benefits:
- Learn about the advantages of RAG, including improved accuracy and context-awareness.
- 1.3 Data Integration:
- Techniques for grounding LLMs to local training datasets.
- 1.4 Applications:
- Case studies in customer support, fraud detection, and risk management in the BFSI sector.
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If you answered "Yes" to any of these questions, SkillCamper's Data Analyst Bootcamp is the perfect fit for you!
From career switchers to college grads, we have helped a diverse range of learners kickstart & progress rapidly in their data science careers.
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16 weeks course
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1:1 support may or may not be available
No learner support
Access to industry experts
No access to any mentor
Access to industry may or may not be available
No access to industry experts
Live classes with experts
No live classes
Live classes only
No live classes
Dedicated academic counselors to ensure you complete course requirements
No accountability
Accountability through assignments and grading
Limited accountability
15-20 hours of time commitment per week - designed for working professionals
No time commitment
Full-time commitment - not made for working professionals
8-10 hours per week of time commitment - suited to working professionals
SkillCamper
Youtube Tutorials
& Courses
Other Bootcamps & Degree Programs
Online Certification
Program
$$$
0-$
$$$
$
16 weeks course
No time limit
20-60 weeks course
3-4 weeks course
1:1 Mentorship
No learner support
1:1 support may or may not be available
No learner support
Access to industry experts
No access to any mentor
Access to industry may or may not be available
No access to industry experts
Live classes with experts
No live classes
Live classes only
No live classes
Dedicated academic counselors to ensure you complete course requirements
No accountability
Accountability through assignments and grading
Limited accountability
15-20 hours of time commitment per week - designed for working professionals
No time commitment
Full-time commitment - not made for working professionals
8-10 hours per week of time commitment - suited to working professionals
Learn on a cutting-edge AI learning platform. Get mentored by industry experts with decades of experience, on a platform designed for ease and personalized learning journeys. It is excellence in learning, made accessible.
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Curriculum & Course Materials
Live coding environment
AI-based learning platform
100+ hours of instruction
20+ assignments
10+ banking & finance case studies
Banking & finance domain focused curriculum
Capstone projects
Live Classes
Limited
Flexible study options
Cancel anytime in first 7 days, full refund
Mentors
15+ hours of sessions with industry veterans & experts
Personalized mentorship by course instructors
Unlimited 1:1 doubt solving sessions
Career Support
Personalized placement assistance
1:1 mock interviews with industry experts
Soft-skills training module
Essential digital tools for digital workplace module
Interview preparation module
Masterclass on resume building & LinkedIn
Access to curated companies & jobs
POPULAR
Live Interaction
Self paced
Course Fee
$1000
$750
Curriculum & Course Materials
Live coding environment
AI-based learning platform
100+ hours of instruction
20+ assignments
10+ banking & finance case studies
Banking & finance domain focused curriculum
Capstone projects
Live Classes
Limited
Flexible study options
Cancel anytime in first 7 days, full refund
Mentors
15+ hours of sessions with industry veterans & experts
Personalized mentorship by course instructors
Unlimited 1:1 doubt solving sessions
Career Support
Personalized placement assistance
1:1 mock interviews with industry experts
Soft-skills training module
Essential digital tools for digital workplace module
Interview preparation module
Masterclass on resume building & LinkedIn
Access to curated companies & jobs