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PRIME (AI/ML Batch)
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AI Job Preparation in 4.5 Months
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For AI Engineer & Data Science jobs
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Dedicated TA team for 1:1 doubt support
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Multiple Industry grade Projects
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Certificate of Completion
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Duration - 4.5 months
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Start Date - 21st Mar, 2026
Classes started from 5th April
Python (programming language)
Variables & Operators
Conditional Statements & Loops (Flow Control)
Functions & lambda functions
List & List comprehensions, Tuple, Dictionary, & Set
File Handling & JSON Module
Object Oriented Programming (OOPs) - in Detail
Data collection, preprocessing & visualization
Numpy, Pandas, Matplotlib, Seaborn etc.
SQL & OpenAI APIs
Mathematics for AI
Statistics, Probability, Linear Algebra, Calculus etc.
Supervised Learning in ML (classification & regression)
Algorithms - Linear regression, Logistic regression, Naive Bayes, KNN, Decision Trees etc.
Unsupervised Learning in ML (clustering & association)
Algorithms - K-means, DBSCAN, PCA for dimensionality reduction etc.
Reinforcement Learning in ML
Additional concepts: precision, recall, F1 score, bias/variance tradeoff etc.
Scikit-learn & Kaggle
+ Multiple projects
Neural Networks & Terminologies
Forward & Backward Propagation
Perceptron
FNN Architecture (Feed forward neural network)
RNN Architecture (Recurrent neural network)
CNN Architecture (Convolutional neural network)
PyTorch
PyTorch vs TensorFlow vs Keras
+ Multiple Projects
Multiple minor & major projects
Industry grade domain specific projects
Finance, Medical, E-commerce (Clustering), Media (Sentiment Analysis) etc.
GenAI assistant
+ additional assignment projects
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Python (Programming language)
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Math Foundation for AI
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Data collection & preprocessing (NumPy & Pandas)
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Data Visualization (Matplotlib & Seaborn)
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SQL
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OpenAI APIs
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Supervised Machine Learning
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Unsupervised ML
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Classification & Regression
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Clustering Algorithms
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scikit-learn
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Additional concepts: precision, recall, F1 score, bias/variance etc.
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Perceptron
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FNN architecture
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RNN architecture
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CNN architecture
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Reinforcement Learning
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PyTorch
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Multiple projects
We'll use AI/ML concepts & knowledge to build our own chatbot system as a major project.
A machine learning based e-commerce segmentation system for users - E-commerce (user case)
One of the most well-known applications of AI/ML in the medical & fitness field.
A deep learning based RNN implementation for sentiment analysis - Media & Entertainment (use case).
A machine learning based system that automates the loan approval process - FinTech (use case).
These will be additional major projects using advance concepts covered by AI professions working in industry.
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You are just months away from cracking your dream company.
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AI is simple. You just need the right guidance. Consistency & hard work will help you be Internship/Placement ready for Tech companies.
Frequently asked questions
If you are someone who wants to upskill yourself with AI skills and build AI/ML projects to enhance your profile then this batch is for YOU.
Yes, this course will cover all important concepts from basic till advanced. So, there is no need to know anything about coding beforehand.
Anyone, from any background or field of study, can take up this batch and learn AI/ML.
There will be a dedicated team of TAs in your Discord community that will resolve your individual doubts.
The batch duration will be around 3 months. Additional projects will be provided for more hands-on practice after all lecture/concepts completion.
The batch is taught in Hinglish (a mix of Hindi & English), very similar to our other sessions.
The batch is accessible for the duration of 15 months from the date of enrolment.
For consistency a deadline is important and i.e. why we don't believe in lifetime access as it may lead to lifetime procrastination.
For consistency a deadline is important and i.e. why we don't believe in lifetime access as it may lead to lifetime procrastination.
Yes, you will get a certificate of completion after finishing all the lectures.
Yes, the schedule will be Alternate Day Schedule for lectures i.e. lecture1 on day1, break on day2, lecture2 on day3 & so on.
Lectures will be uploaded at 7PM in the batch (on the website). Other details about batch will be conveyed in the orientation of batch when batch starts on 5th April.
Lectures will be uploaded at 7PM in the batch (on the website). Other details about batch will be conveyed in the orientation of batch when batch starts on 5th April.
Yes, there will be programming assignments & solutions with Python programming language to practice coding. AI/ML practice will be done via minor projects & some assignment projects.
Yes, an exclusive Prime community will be there for all enrolled students.
Please note that the lectures will be available via alternate day schedule & are to be completed in a self-paced manner. There will be some extra live mentorship sessions in the batch will be conducted in Live mode on Zoom. Information about this sessions will be conveyed beforehand to the Telegram channel.
Lecture timing will be 7PM in the evenings but you can complete them any time according to your schedule.
The timings for mentorships session may vary but will be held in the evenings.
The timings for mentorships session may vary but will be held in the evenings.
You will find your batch in the My Batch section on the website. Please note, the lectures will be visible after the batch starts on 5th April, 2026.
In most of the cases this is because you filled a different email address or wrongly typed your email address while payment. In such a case please send us an email at prime@apnacollege.in with the subject "ENROLMENT ISSUE AI ARMY Batch" along with your full name, phone number, payment id from Cashfree and a screenshot of your payment.
(Support team may take 24 hours to address your issue due to heavy load.)
Please refer to this video for help: https://www.youtube.com/watch?v=E4xgahYaHH0
(Support team may take 24 hours to address your issue due to heavy load.)
Please refer to this video for help: https://www.youtube.com/watch?v=E4xgahYaHH0
