

The profile of Rishab and their contact details have been verified by our experts
Rishab
- Rate TSh 39,300
- Response 1h
-
Students7
Number of students Rishab has accompanied since arriving at Superprof
Number of students Rishab has accompanied since arriving at Superprof

TSh 39,300/hr
Unfortunately, this tutor is unavailable
- Machine learning
Explore Machine Learning and AI from basic Supervised & Unsupervised Learning, to advanced Neural Networks, and Data Science Concepts for Real-World Problem Solving!
- Machine learning
Lesson location
Recommended
Rishab is a respected member of our tutor community. He is highly recommended for his commitment and the quality of his lessons. An excellent choice to progress with confidence.
About Rishab
I'm a computer science undergrad. I started my coding career when I was 12! Age is not a barrier for gaining knowledge, that's what I believe. I learned AI-ML concepts in just 2 months! You too can do so, just join me!!
About the lesson
- Primary school
- Ordinary Level
- Form 5
- +12
levels :
Primary school
Ordinary Level
Form 5
Form 6
Ordinary Diploma
Tertiary Education
Adult Education
Master’s Degree
PhD / Doctorate
MBA
Nursery
Beginner
Intermediate
Advanced
Children
- English
All languages in which the lesson is available :
English
1. Introduction to Artificial Intelligence and Machine Learning
1.1. Overview of AI & ML
• What is AI? Types of AI: Narrow vs. General AI.
• The evolution of Machine Learning.
• Key concepts in AI: Intelligent agents, search, problem-solving.
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
1.2. Types of Machine Learning
• Supervised Learning: Definition, Use cases.
• Unsupervised Learning: Clustering and association.
• Reinforcement Learning: Introduction and use cases.
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
1.3. Setting up the Python Environment
• Installing libraries: NumPy, Pandas, Matplotlib, Scikit-learn.
• Introduction to Jupyter Notebooks & Google Colab.
______________________________________
2. Data Preprocessing and Feature Engineering
2.1. Data Cleaning & Transformation
• Handling missing data, data imputation techniques.
• Encoding categorical data, scaling features.
• Feature extraction and selection techniques.
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
2.2. Data Visualization
• Visualizing data using Matplotlib, Seaborn.
• Exploratory Data Analysis (EDA) best practices.
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
2.3. Case Study: EDA on a real-world dataset.
______________________________________
3. Supervised Learning Techniques
3.1. Regression Models
• Linear Regression: Theory, implementation, evaluation metrics.
• Polynomial Regression, Ridge, and Lasso Regression.
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
3.2. Classification Models
• Logistic Regression, K-Nearest Neighbors (KNN).
• Decision Trees, Random Forests, Support Vector Machines (SVM).
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
3.3. Model Evaluation
• Cross-validation, bias-variance tradeoff.
• Metrics: Accuracy, Precision, Recall, F1-score, ROC, and AUC.
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
3.4. Case Study: Building a classifier for real-world data
• Example: Loan approval, image classification.
______________________________________
4. Unsupervised Learning and Clustering
4.1. Clustering Algorithms
• K-means Clustering, DBSCAN, Hierarchical Clustering.
• Dimensionality Reduction: PCA (Principal Component Analysis), t-SNE.
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
4.2. Association Algorithms
• Apriori, Eclat for market basket analysis.
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
4.3. Case Study: Building a customer segmentation model.
______________________________________
5. Deep Learning and Neural Networks
5.1. Introduction to Neural Networks
• Neurons and layers, activation functions (Sigmoid, ReLU, Softmax).
• Forward and backward propagation.
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
5.2. Deep Learning Models
• Convolutional Neural Networks (CNN) for computer vision.
• Recurrent Neural Networks (RNN) for time series and NLP.
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
5.3. Deep Learning Frameworks: Keras
• Implementing a basic neural network with Keras.
• Model optimization: Adam, SGD, and learning rate tuning.
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
5.4. Case Study: Image classification with CNNs, time-series forecasting with RNNs.
______________________________________
6. Advanced Topics in Machine Learning
6.1. Reinforcement Learning
• Introduction to Q-Learning, policy gradients, and Markov Decision Processes (MDPs).
• Applications in game playing (e.g., AlphaGo).
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
6.2. Transfer Learning
• Using pre-trained models in deep learning (e.g., VGG, ResNet).
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
6.3. Natural Language Processing (NLP)
• Tokenization, Text preprocessing.
• Bag-of-Words, Word2Vec, and Transformers.
• Implementing a basic sentiment analysis model.
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
6.4. Generative Models
• GANs (Generative Adversarial Networks).
• Variational Autoencoders (VAEs).
°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°°
6.5. Case Study: Building an AI agent using reinforcement learning.
______________________________________
Recommendations
Recommendations come from relatives, friends and acquaintances of the teacher
Rishab was VERY helpful in teaching me how to edit code in a professional manner. I recommend him for any coding help you need! Thanks again Rishab!
He's unique in his way, as he finds different methods solve problems in the source code. His, this unique technique helped me in analysing problems, build algorithms to solve them on my own.
Yes, join with him. He's worth it!!Rishab is a like mould through which even a weak beginner will get moulded into a strong expert in computer languages. In my leisure time, I get to learn new programming concepts from him!
You too should have an experience of learning with RishabYou'll have the best experience of learning coding from Rishab. He's sharp at his method I'd say. I got to learn a tonne of things from him.
Thanks Rishab....To start with, he is a very good computer tutor. At a very young age, he has chosen a right path and started to work on it. Though he is young, but the way he explains and teaches the concepts is nevertheless similar to a professional teacher. Yes! you have searched the right person for you...
View more recommendations
Rates
Rate
- TSh 39,300
Pack prices
- 5h: TSh 195
- 10h: TSh 390
online
- TSh39,300/h
Similar Machine learning teachers in Charlotte
Yas
London, United Kingdom & Online
- TSh 192,052/hr
João
London, United Kingdom & Online
- TSh 104,756/hr
Jamshaid
Melbourne, Australia & Online
- TSh 64,057/hr
- 1st lesson free
Robert
London, United Kingdom & Online
- TSh 345,694/hr
- 1st lesson free
Arun
Melbourne, Australia & Online
- TSh 73,207/hr
- 1st lesson free
Arash
Toronto, Canada & Online
- TSh 149,535/hr
Andrei
Berlin, Germany & Online
- TSh 286,715/hr
- 1st lesson free
Denis
Paris 13e, France & Online
- TSh 181,083/hr
Alessio
Roma, Italy & Online
- TSh 120,722/hr
- 1st lesson free
Aniket
Bengaluru, India & Online
- TSh 82,040/hr
- 1st lesson free
Gokhan
London, United Kingdom & Online
- TSh 226,971/hr
Moe
Edmonton, Canada & Online
- TSh 74,768/hr
- 1st lesson free
Kapil
New Delhi, India & Online
- TSh 76,571/hr
- 1st lesson free
Ghita
Boulogne-Billancourt, France & Online
- TSh 211,264/hr
- 1st lesson free
Arron
Enfield, United Kingdom & Online
- TSh 139,674/hr
- 1st lesson free
Mehrdad
New York, United States & Online
- TSh 78,600/hr
- 1st lesson free
Dounya
Sceaux, France & Online
- TSh 90,542/hr
- 1st lesson free
Octavian
London, United Kingdom & Online
- TSh 590,124/hr
- 1st lesson free
Kirollos
, United Kingdom & Online
- TSh 104,756/hr
- 1st lesson free
Behdad
New York, United States & Online
- TSh 65,500/hr
- 1st lesson free
-
See Machine learning tutors
