LIVE AI Engineering Bootcamp for Software Engineers

codebasics · Intermediate ·📊 Data Analytics & Business Intelligence ·4mo ago

Key Takeaways

The video introduces a live AI engineering bootcamp for software engineers with minimum 2 years of experience, covering LLM foundations, RAG, vector DB, advanced agentic context engineering, and multi-agent systems, with a focus on practical learning and industry relevance.

Full Transcript

For the first time ever, we are launching a live AI engineering boot camp for software engineers. There's a lot of demand from software professionals to learn AI. We in fact conducted a survey and 134 people showed interest. Now, we have a regular self-paced AI engineering boot camp. This new live boot camp is going to be different from that. In this video, I'm going to explain the details of this new boot camp and also discuss uh who will benefit the most from this live format. We will have live classes on Wednesday and Saturday 7 to 11:00 p.m. IST where there will be 2 hours of learning, 30 minutes of break, 1 hour of uh doubt clearing. Now this will be suitable for software engineers with minimum 2 years of experience. If you don't have minimum 2 years of experience in software engineering, this boot camp is not for you because we are going to assume you have knowledge of programming uh you know design thinking, system design etc. And when we teach Python, we are going to use Python or pretty much any other concept. We are going to use this transfer learning technique where let's say you know Java, you know certain concepts in Java and we will map them to Python concepts. So it will be a fastpaced twomon boot camp. Every week we are having two sessions. So total 8 weeks, every week two sessions. So total sessions will be 16 sessions. And that's it folks. Okay, it will be very practical boot camp from very first lecture itself. We will start building the things. Now I have this AI and data consultancy company called ATL technologies where we work on real AI projects from our clients in UAE and US. We have gained a lot of knowledge by working on this real projects and we are going to use that knowledge to teach you. it will be very much industry relevant and once again I want to uh say this again that this is for software engineers with minimum 2 years experience these software engineers are working professionals they don't have time to watch self-paced videos etc and that is the reason we are coming up with this live format also the world of AI is changing fast okay things are evolving fast therefore we want to teach things live so that if something new comes up we can incorporate it in this uh particular boot camp. Now if you're curious about the content then in that we will have uh LLM foundation we'll start with that we'll cover the fundamentals of rag vector DB uh even in ATLIC when we get projects many projects are rag projects okay so we are just covering what is happening in the real life then advanced agentic context engineering multi- aent system I'm giving you some rough curriculum this is going to evolve we will include clude features that will help you the most. Okay, we are going to talk about evaluation of course very important observability monitoring AI in cloud AI first development v coding has become a norm nowadays. So how do you use AI first development to develop projects fast? You know claw.md skills.mmd and some of the other principles of w coding we will teach and we are going to build any number of products throughout the boot camp. So it will be very much hands-on boot camp. Now the important feature in this boot camp is the soft skills. So we are going to teach you mindset to be successful in this uncertain times. Uh we will teach time management, stakeholder management, orchestration, uh so many things which will help you perform the best in this uh time period of major technology shift. Then at the end we will have a hackathon. So we'll form groups uh among the live cohort students. They will participate in hackathon. We will uh give you access uh of a tool or a platform where you can publish your projects and you can build your online credibility. Now in addition you are going to get our entire current JNI boot camp which is self-paced. Okay folks. So this is the boot camp. Here we have uh recorded lectures. So let's say at any point uh you want to refer to a particular concept then you can do that. See this live boot camp is only 2 months fastpace you learn quickly you learn to build AI projects quickly. But let's say we have a session on Wednesday and Saturday and remaining days you want to go in depth and uh learn some more theory more mathematics and so on then we have huge content here. This content is worth 6 to 8 months actually. So it's up to you if you want to let's say math and statistics we have actually projects also. So if you want to do it, you will get access to this uh entire boot camp. Some of you may have question if we are going to teach statistical ML and deep learning or not. Well, right now the plan is to teach you generative AI, agentic AI, something that is very prevalent in the industry uh in this live boot camp. If you want to learn traditional ML, deep learning etc. You are given this uh boot camp which is self-paced and you can watch videos and learn it on your own. If you look at ongoing projects in the industry, majority of these projects are related to geni a genti. So we want to teach you what is most relevant uh in the industry and then of course statistical ML and deep learning is also used. For that you can refer to this particular boot camp's content and video lectures. Other than the teaching content, we will have many other features such as project portfolio website. So if you want to transition as a full-time AI engineer, we will uh give you this feature where you can build your project portfolio LinkedIn optimizer. Uh we will give interview practice platform where you can uh practice by writing Python code uh just like hacker rank and you can uh practice on those interview questions. We will evaluate your code. We will also provide you several other career development features or portals. Okay, this particular boot camp if you have already bought it then you will get price reduction. If you're interested in that uh go with it. Uh and then DA and DE we have many data analyst and data engineering students. They will also get some price uh reduction. Uh you can check our page for further details. Folks, I'm super excited about this boot camp because as I said before it is the first time that I'm doing it live and live interaction of course has lot of value. You have doubts we will resolve those doubts. You will write code along with me. There is going to be lot of practical learning and it will be fastpace. You spend two months with us and you will start building the projects. Okay. Many software engineers who are working in the industry right now have a need of integrating AI features in their current software stack. It will help those people. It will also help those people who want to transition full-time into AI engineering role. All right. Check video description for the link below. If you have any other questions, post in the comment box below. We will answer those. Thank you very much for watching. And if you have a friend or somebody who is a software engineer who wants to learn AI, please uh feel free to share this information with them.

Original Description

We are launching a LIVE AI Engineering bootcamp for software engineers with minimum 2 years of experience. This will be fast paced 2 months live cohort. Here we will teach you how you can build AI features in your current software application and also how to transition to full time AI engineer role. Link: https://bit.ly/3OkfXTL Do you want to learn technology from me? Check https://codebasics.io/?utm_source=description&utm_medium=yt&utm_campaign=description&utm_id=description for my affordable video courses. Need help building software or data analytics/AI solutions? My company https://www.atliq.com/ can help. Click on the Contact button on that website. 🎥 Codebasics Hindi channel: https://www.youtube.com/channel/UCTmFBhuhMibVoSfYom1uXEg #️⃣ Social Media #️⃣ 🧑‍🤝‍🧑 Discord for Community Support: https://discord.gg/r42Kbuk 📸 Codebasics' Instagram: https://www.instagram.com/codebasicshub/ 📝 Codebasics' Linkedin : https://www.linkedin.com/company/codebasics/ ------ 📝 Dhaval's Linkedin : https://www.linkedin.com/in/dhavalsays/ 📝 Hem's Linkedin: https://www.linkedin.com/in/hemvad/ 📽️ Hem's Instagram for daily tips: https://www.instagram.com/hemvadivel/ 📸 Dhaval's Personal Instagram: https://www.instagram.com/dhavalsays/ 🔗 Patreon: https://www.patreon.com/codebasics?fan_landing=true
Watch on YouTube ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Playlist

Uploads from codebasics · codebasics · 0 of 60

← Previous Next →
1 Python Tutorial - 1. Install python on windows
Python Tutorial - 1. Install python on windows
codebasics
2 Python Tutorial - 2. Variables
Python Tutorial - 2. Variables
codebasics
3 Python Tutorial - 3. Numbers
Python Tutorial - 3. Numbers
codebasics
4 Python Tutorial - 4. Strings
Python Tutorial - 4. Strings
codebasics
5 Python Tutorial - 5. Lists
Python Tutorial - 5. Lists
codebasics
6 Python Tutorial - 6. Install PyCharm on Windows
Python Tutorial - 6. Install PyCharm on Windows
codebasics
7 PyCharm Tutorial - 7. Debug python code using PyCharm
PyCharm Tutorial - 7. Debug python code using PyCharm
codebasics
8 Python Tutorial -  8. If Statement
Python Tutorial - 8. If Statement
codebasics
9 Python Tutorial - 9. For loop
Python Tutorial - 9. For loop
codebasics
10 Python Tutorial -  10. Functions
Python Tutorial - 10. Functions
codebasics
11 Python Tutorial - 11. Dictionaries and Tuples
Python Tutorial - 11. Dictionaries and Tuples
codebasics
12 Python Tutorial - 12. Modules
Python Tutorial - 12. Modules
codebasics
13 Python Tutorial - 13. Reading/Writing Files
Python Tutorial - 13. Reading/Writing Files
codebasics
14 How to install Julia on Windows
How to install Julia on Windows
codebasics
15 Python Tutorial - 14. Working With JSON
Python Tutorial - 14. Working With JSON
codebasics
16 Julia Tutorial - 1. Variables
Julia Tutorial - 1. Variables
codebasics
17 Julia Tutorial - 2. Numbers
Julia Tutorial - 2. Numbers
codebasics
18 Python Tutorial - 15. if __name__ == "__main__"
Python Tutorial - 15. if __name__ == "__main__"
codebasics
19 Julia Tutorial - Why Should I Learn Julia Programming Language
Julia Tutorial - Why Should I Learn Julia Programming Language
codebasics
20 Python Tutorial  - 16. Exception Handling
Python Tutorial - 16. Exception Handling
codebasics
21 Julia Tutorial - 3. Complex and Rational Numbers
Julia Tutorial - 3. Complex and Rational Numbers
codebasics
22 Julia Tutorial - 4. Strings
Julia Tutorial - 4. Strings
codebasics
23 Python Tutorial -  17. Class and Objects
Python Tutorial - 17. Class and Objects
codebasics
24 Julia Tutorial - 5. Functions
Julia Tutorial - 5. Functions
codebasics
25 Julia Tutorial - 6. If Statement and Ternary Operator
Julia Tutorial - 6. If Statement and Ternary Operator
codebasics
26 Julia Tutorial - 7. For While Loop
Julia Tutorial - 7. For While Loop
codebasics
27 Python Tutorial  - 18. Inheritance
Python Tutorial - 18. Inheritance
codebasics
28 Julia Tutorial - 8. begin and (;) Compound Expressions
Julia Tutorial - 8. begin and (;) Compound Expressions
codebasics
29 Python Tutorial - 12.1 - Install Python Module (using pip)
Python Tutorial - 12.1 - Install Python Module (using pip)
codebasics
30 Julia Tutorial - 9. Tasks (a.k.a. Generators or Coroutines)
Julia Tutorial - 9. Tasks (a.k.a. Generators or Coroutines)
codebasics
31 Julia Tutorial - 10. Exception Handling
Julia Tutorial - 10. Exception Handling
codebasics
32 Python Tutorial  - 19. Multiple Inheritance
Python Tutorial - 19. Multiple Inheritance
codebasics
33 Python Tutorial - 20. Raise Exception And Finally
Python Tutorial - 20. Raise Exception And Finally
codebasics
34 Python Tutorial - 21. Iterators
Python Tutorial - 21. Iterators
codebasics
35 Python Tutorial - 22. Generators
Python Tutorial - 22. Generators
codebasics
36 Python Tutorial - 23. List Set Dict Comprehensions
Python Tutorial - 23. List Set Dict Comprehensions
codebasics
37 Python Tutorial - 24. Sets and Frozen Sets
Python Tutorial - 24. Sets and Frozen Sets
codebasics
38 Python Tutorial - 25. Command line argument processing using argparse
Python Tutorial - 25. Command line argument processing using argparse
codebasics
39 Debugging Tips - What is bug and debugging?
Debugging Tips - What is bug and debugging?
codebasics
40 Debugging Tips - Conditional Breakpoint
Debugging Tips - Conditional Breakpoint
codebasics
41 Debugging Tips - Watches and Call Stack
Debugging Tips - Watches and Call Stack
codebasics
42 Python Tutorial - 26. Multithreading - Introduction
Python Tutorial - 26. Multithreading - Introduction
codebasics
43 Git Tutorial 3:  How To Install Git
Git Tutorial 3: How To Install Git
codebasics
44 Git Tutorial 1: What is git / What is version control system?
Git Tutorial 1: What is git / What is version control system?
codebasics
45 Git Tutorial 2 : What is Github? | github tutorial
Git Tutorial 2 : What is Github? | github tutorial
codebasics
46 Git Tutorial 4: Basic Commands: add, commit, push
Git Tutorial 4: Basic Commands: add, commit, push
codebasics
47 Git Tutorial 5: Undoing/Reverting/Resetting code changes
Git Tutorial 5: Undoing/Reverting/Resetting code changes
codebasics
48 Git Tutorial 6: Branches (Create, Merge, Delete a branch)
Git Tutorial 6: Branches (Create, Merge, Delete a branch)
codebasics
49 Git Github Tutorial 10: What is Pull Request?
Git Github Tutorial 10: What is Pull Request?
codebasics
50 Git Tutorial 7: What is HEAD?
Git Tutorial 7: What is HEAD?
codebasics
51 Git Tutorial 9: Diff and Merge using meld
Git Tutorial 9: Diff and Merge using meld
codebasics
52 Difference between Multiprocessing and Multithreading
Difference between Multiprocessing and Multithreading
codebasics
53 Python Tutorial - 27. Multiprocessing Introduction
Python Tutorial - 27. Multiprocessing Introduction
codebasics
54 Python Tutorial - 28. Sharing Data Between Processes Using Array and Value
Python Tutorial - 28. Sharing Data Between Processes Using Array and Value
codebasics
55 Git Tutorial 8 - .gitignore file
Git Tutorial 8 - .gitignore file
codebasics
56 Python Tutorial - 29. Sharing Data Between Processes Using Multiprocessing Queue
Python Tutorial - 29. Sharing Data Between Processes Using Multiprocessing Queue
codebasics
57 Python Tutorial - 30. Multiprocessing Lock
Python Tutorial - 30. Multiprocessing Lock
codebasics
58 Python Tutorial - 31. Multiprocessing Pool (Map Reduce)
Python Tutorial - 31. Multiprocessing Pool (Map Reduce)
codebasics
59 What is code?
What is code?
codebasics
60 Python unit testing - pytest introduction
Python unit testing - pytest introduction
codebasics

The live AI engineering bootcamp teaches software engineers with minimum 2 years of experience how to build AI features in their current software applications and transition to full-time AI engineer roles, with a focus on practical learning and industry relevance. The bootcamp covers LLM foundations, RAG, vector DB, advanced agentic context engineering, and multi-agent systems, and includes a hackathon and project portfolio building. The bootcamp is designed to help software engineers integrate

Key Takeaways
  1. Learn LLM foundations
  2. Understand RAG and vector DB
  3. Master advanced agentic context engineering and multi-agent systems
  4. Build AI features in software applications
  5. Transition to full-time AI engineer role
  6. Participate in hackathon and build project portfolio
💡 The live AI engineering bootcamp provides software engineers with the skills and knowledge needed to integrate AI features in their current software applications and transition to full-time AI engineer roles, with a focus on practical learning and industry relevance.

Related Reads

📰
Python Excel Automation: Create, Edit, and Format Text Boxes
Automate Excel tasks using Python to create, edit, and format text boxes in spreadsheets
Medium · Programming
📰
From Spreadsheets to Spark: Why Traditional Analytics Tools Reach Their Limits
Learn why traditional analytics tools like spreadsheets reach their limits and how to transition to more scalable solutions like Spark
Medium · Data Science
📰
Skill Verification for Data Roles: What Employers Should Know
Employers can verify data skills through practical assessments to ensure candidates can apply their knowledge in real-world scenarios, making hiring more effective
Dev.to AI
📰
The Data Engineering Skills Matrix AI Just Broke!
Discover how AI is changing data engineering skills and what it means for your team's SQL expertise
Medium · AI
Up next
This could be the most perfect data frontend
Matt Williams
Watch →