[Instructor-Led Classes] Experience Building Generative AI Course: Internship Certificate #genai
Key Takeaways
The video discusses an instructor-led course on generative AI, covering topics such as Python, SQL, data warehousing, machine learning, and deep learning, with a focus on providing real-time project experience and job placement assistance.
Full Transcript
Instructor-led live classes on generative AI or agent AK engineering. So now this is an experience building course. The reason why it is an experience building courses now if you are a fresher, career gap, or a working professional, in order to bridge the gap between what recruiters are asking as versus what you are learning, you need to have an experience. So in BPEC, we are doing consulting projects to our clients. So what we are doing is we will be trying to give those consulting projects to work on it and to show it in your resume. So we will be altering the use cases and all of that here and there a bit. We don't share the data of our clients. We breach means like we change the data a bit here and there. And we try to give it to the learners in order to experience a real-time job environment. And this live classes are starting from 2nd April and there are two slots. One is weekday slot Monday to Friday. The timings are 8:00 p.m. to 9:30 p.m. IST. Another one is weekend slot which is morning 7:00 a.m. to 10:00 a.m. IST Saturday and Sunday. And the duration going to be 6 months of duration and the goal is like to take you from zero means like no coding to job switch within 180 days is the goal behind this particular program. And what we do is we will be trying to focus on the real-time projects especially. So the reason as I said when a recruiter is asking, they will be asking for relevant experience in January, relevant experience in Python, relevant experience in SQL. So they don't want a guy who know SQL or who know Python. They want a guy who had an experience in Python, who had an experience in SQL. And the actual takeaways for example, you are working on different projects here. So now the experience you witnessed in the projects at a real-time scale. So at a system design scale. At building scale, at really reducing the hallucination scale, or handling the guardrail scale. So that is something they are looking for. So now even everyone is new into the space of AI, GenAI, agent AK. So they want to hire someone who had an experience with the real-time challenges. So that is what we are trying to bridge it with this real-time projects. Apart from it, let's say you are from software development. Now this projects may not be sufficient for you. We need to customize the real-time projects for your software development. We will be giving those projects. Or you are maybe from a finance background. We want to give project from finance and GenAI space so that you are able to place it in your resume. So now we these are examples of it and we will be providing other projects based on your background. And the next one the curriculum actually starts with introduction. We will be starting with basics of Python zero on Python. We learn advanced data structures. Basically it is a self-recorded Python zero to job level is live classes. And AI Python coding interview prep live classes. You will be working on hands-on SQL projects with data warehousing concepts. Hands-on advanced SQL concepts live classes. Applied statistics live classes. Statistics with real-time project demonstration live classes. Probability distribution live classes. Feature engineering technique live classes. Applied machine learning supervised all of these are live classes. ML Ops CI/CD Docker Kubernetes live classes. Azure ML Studio Azure AWS Sagemaker Studio. Advanced deep learning PyTorch. You learn all of them from basics. Computer vision mastering using TensorFlow. Natural language understanding. Transfer learning. OpenCV YOLO. So like recurrent neural networks LSTMs. Transformer model BERT T5 ELMo. Now these concepts are very important for your interviews. Transformer models. Fundamentals of generative AI. Generative AI prompt engineering. LangChain framework. Amazon Bedrock GenAI on cloud. Retrieval augmented generation advanced drag. Agent AK AI development. Within that you have types multi-agent single agent human in loop. LangRaps. MCP model context protocol. Fine-tuning pre-training language models. They are asking in interviews. LLM Ops and production based deployment. So now this is all the part of the agenda where you are learning everything needed for your generative AI and agent AK AI space. And if you want to really customize the agenda, yes we can do that. And once we completed all the agenda, there going to be a procedure with your resume building. We help you with resume building. We guide you on mock interviews and the interview questions from our previous learners. So our learners are going to the interviews. We try to take that particular question bank. We share it with you so that you can prepare a proper approach. And how to explain as a working professional. How to explain as a means like as a career gap, as a fresher. The pitch. How exactly you are trying to say how you made a switch or why you are making a switch from your current role into AI GenAI space. So all of this detailed explanation we will be doing in our live classes. Mostly the challenge people faces when the content is self-study, people are unable to focus properly. They are unable to have a proper consistency. In case if your goal is consistency, I personally suggest weekday classes. If you don't find a time then the goal going to be only weekday or weekend option you have it. That is Saturday and Sunday morning 7:00 a.m. to 10:00 a.m. IST. But if you are looking for a consistency, daily learning, I think weekday is one of the best option. Even we see a good progress from our learners who join with zero knowledge, they are able to do a lot of stuff on Python and SQL. Very good. We are able to see a very good progress in lines of weekday classes when compared to weekend. In case if you are really interested, the links are in the description. The new batch is about to start from 2nd April. And you can go through the website link. You will be having a detailed understanding about the agenda walk-through, project walk-through, and you will be having various other stuff. You will be getting a There are types of certificate you will be getting a regular course completion certificate, internship, or a freelancing, or an experience certificate that you are able to achieve it. So now you are able to go through the link and you are able to get detailed understanding about what we are offering. In case if you are interested, the new batch is about to start from 2nd April 2026. The links are in the description. Please for the more details you can reach out to us. We are happy to connect you over a one-on-one call.
Original Description
✅ Zero To Job-Switch in 180 Days to AI & Gen AI:
https://bepec.in/courses/artificial-intelligence-course-bangalore/
✅ Generative AI Training Program with Internship: https://bepec.in/courses/generative-ai/
✅ Zero To Job-Switch in 90 to Data Analytics: https://bepec.in/courses/data-analyst-course-2026/
✅ Zero To Job-Switch in 180 Days to Data Science: https://bepec.in/courses/data-science-course-placements/
✅ Zero To Job-Switch in 90 Days to Gen AI & Agents for Managers: https://bepec.in/courses/ai-course-managers/
✅ Data Engineer Training Program with Internship: https://bepec.in/courses/dataengineer-program/
Connect with Kanth on Instagram: www.instagram.com/meet_kanth/
Connect with Kanth on Twitter: https://twitter.com/meet_kanth
Connect with Kanth on LinkedIn: https://www.linkedin.com/in/rajeev-kanth-6222a618a
Watch on YouTube ↗
(saves to browser)
Sign in to unlock AI tutor explanation · ⚡30
More on: LLM Foundations
View skill →Related Reads
📰
📰
📰
📰
Tracking Macroeconomic Indicators with the Finance Toolkit
Dev.to · Jeroen Bouma
Pydantic for Data Engineering: Schema Validation in ETL & Pipeline Contracts
Dev.to · Gowtham Potureddi
Half of Data Engineering Jobs on LinkedIn Aren't Real
Dev.to · DataDriven
Evolutionary Data Through Schemaboi: Achieving Forward, Backwards, and Sideways Compatibility
InfoQ AI/ML
🎓
Tutor Explanation
DeepCamp AI