English | MP4 | AVC 1280×720 | AAC 44KHz 2ch | 32 lectures (2h 30m) | 1.31 GB
Build, optimize, and deploy LLM-based solutions with a hands-on real-world project.
Are you ready to dive into the fascinating world of AI-powered applications?
Do you want to solve real-world problems using cutting-edge large language models (LLMs)?
This is the perfect course for you!
This course is your step-by-step guide to designing, developing, and deploying an AI application using Streamlit, Python, and OpenAI models. You’ll not only learn the theory and development process but also gain hands-on experience with a practical, real-world example: ACE Interview, a powerful AI-driven interview application that has already helped thousands of people prepare for their interviews. By exploring the structure of ACE Interview, you’ll see how the concepts taught in this course are applied in practice. Moreover, we’ll share the challenges and mistakes we encountered during its development—and how we overcame them—so you can avoid similar pitfalls in your own projects.
By completing this course, you’ll acquire a versatile and highly practical skill set including:
- Python Programing with Streamlit – Learn to build interactive, user-friendly web apps using one of the most popular frameworks.
- Prompt Engineering – Master the art of designing, refining, and testing prompts to maximize the performance of your AI projects.
- System Architecture Design – Learn to create activity diagrams to visually map out your application’s structure, making it easier to plan and communicate your ideas effectively.
- Utilizing LLMs: Understand how to leverage large language models for different use cases, including the differences between hosting models and using APIs, as well as open-source versus closed-source options.
- Cost Management: Analyze and predict the cost associated with your AI projects to make informed decisions.
Our course takes you through every stage of the development process:
- Planning stage: Design the architecture, database and prompts to lay a strong foundation for your project.
- Prototype stage: Build a fully functional Streamlit to showcase in your portfolio.
- Development stage: Explore the real-world challenges you may encounter while working on your project and learn effective strategies to solve them. These include issues like prompt injections, handling hallucinations, scaling your application, optimizing token usage, and managing cost to ensure your project is both efficient and scalable.
By the end of this course, you’ll have more than just a working prototype of an AI interview simulator—you’ll have the knowledge and confidence to create your own AI-powered applications.
Whether you’re looking to break into the booming field of AI development or enhance your existing skill set, this course will empower you to succeed in one of the most exciting and in-demand career paths of the future.
What you’ll learn
- Build interactive and user-friendly web applications using Streamlit and Python.
- Master prompt engineering to design, refine, and test effective prompts for AI applications.
- Gain a solid understanding of the development process for AI-powered applications.
- Learn how to leverage large language models (LLMs) for real-world use cases.
- Understand how to create activity diagrams to plan and map out your application’s architecture.
- Learn how to tackle real-world challenges, including prompt injections, hallucinations, and scaling applications.
Table of Contents
Introduction to the Course
1 Introduction to the Course
2 What does the course cover
3 The Interview Tool’s Specifics
Planning stage
4 Hosting an LLM vs Using an API
5 Open-Source vs Closed-Source Models
6 Tokens
7 Pricing Hosting an LLM vs Pay-by-Token
8 Initial Prompt Development Part 1
9 Initial Prompt Development Part 2
10 Database Design and Schema Development
11 What Is an Activity Diagram
12 Creating an Activity Diagram
13 Concluding the Planning Stage
Crafting and Testing AI Prompts
14 The OpenAI Playground
15 Optimizing Temperature and Top P for Different Use Cases
16 Prompt Engineering for Software Development
17 How to Test Out a Prompt Template
Getting to Know Streamlit
18 Setting up environment
19 Streamlit’s Pros and Cons
20 Streamlit Elements Titles, Headers, and Formatting
21 Streamlit Elements Text Methods
22 Streamlit Elements Chat Elements
23 Sessin State
Developing the prototype
24 Initializing an OpenAI Client
25 Implementing the Chat Functionality
26 Building the Setup Page
27 Enhancing Chatbot Interaction with Session State
28 Refining Our Project
29 Implementing Feedback Functionality Part 1
30 Implementing Feedback Functionality Part 2
31 Uploading Your Project in GitHub
32 Deploying Your Streamlit App
Resolve the captcha to access the links!