- Overview
- Prerequisites
- Audience
- Curriculum
Description:
Have you ever wished you could build your own AI-powered app like ChatGPT — without needing to know how to code? Whether you're a product manager, business analyst, QA professional, or a curious technologist, this one-day immersive workshop will empower you to turn that vision into reality.
“Build LLM Powered Applications with No-Code” is your gateway into the world of Generative AI and Large Language Models (LLMs), designed specifically for professionals without a technical background. You’ll gain practical, hands-on experience using Lang flow — a powerful visual, drag-and-drop tool that lets you design and deploy LLM applications without writing a single line of code.
You'll also dive into advanced concepts like Retrieval Augmented Generation (RAG) and Agentic-AI, all within the visual builder environment Lang flow provides. With Lang flow, you can prototype and deploy powerful applications in minutes — making it ideal for professionals looking to build, test, and iterate fast.
Whether you're looking to enhance workflows, build customer-facing AI solutions, or just stay ahead in your career, this course gives you the foundation to do so — quickly, creatively, and confidently.
Duration: 1 Day
Course Code: BDT485
Learning Objectives:
After this course, you will be able to:
- Understand what LLMs are and how they are used in industry
- Craft effective prompts and use prompt templates (zero, one, few-shot)
- Build conversational experiences using data in various formats (CSV, PDF, etc.)
- Use agents to complete multi-step tasks automatically
- Build RAG applications using embeddings and vector databases
- Create multi-agent workflows using Agentic-AI principles
No programming experience required, experience playing with ChatGPT or equivalent LLMs will be nice but not required
This course is designed for non-coding software engineers, business analysts, QA, product managers who want to build Generative AI based applications without writing any code – no machine learning experience required.
Course Outline:
- Introduction to Large Language Models (LLMs)
- A brief history of Generative AI and LLMs
- What is a Large Language Model?
- Why LLMs are disrupting industries
- Hands-on: Create the lab environment and work with LLM
- Using Model Prompts and Prompt Templates
- What is a prompt?
- Types of prompts: zero-shot, one-shot, few-shot
- Hands-on: Build a simple chat application using prompt and prompt templates
- Build a captivating conversation using different types of documents formats
- Introduction to data connectors
- Uploading and interacting with CSV, PDF, and other formats
- Hands-on: Load a CSV file and get insights in the data
- Using Agents to perform tasks
- What are agents in context of AI?
- Types of agents: tool-using agents, reasoning agents, reactive agents
- Hands-on: couple of labs using agents
- Building RAG applications
- What is Retrieval Augmented Generation (RAG)?
- Why RAG is important for custom knowledge applications
- Understanding embeddings and vector stores
- Hands-on: Build an RAG application with vector storage and embeddings
- Using Agentic-AI to build multi-agent applications
- What is Agentic-AI?
- How agents can collaborate to perform complex workflows
- Tools that make multi-agent applications possible in no-code platforms
- Hands-on: Build financial report application using multiple agents
Training material provided: Yes (Digital format)
Hands-on Lab: Students can use either open-source models or OpenAI models. Instructions will be provided to install tools for local machines or a website build use (free of charge) to build applications