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Mammoth Club All levels 39 sections 149 lectures

Machine Learning with Python 5+ Hour Video Bundle

Go from a beginner to a high-level engineer with a curriculum that covers every major branch of modern machine learning. This massive bundle guides you through supervised, unsupervised, and deep learning, while also providing the MLOps skills needed for professional deployment.

01
Skill level
All levels
02
Sections
39
03
Lectures
149
04
Instructor
Team Mammoth
What's inside

This course includes.

39
Sections
20
Quizzes
Certificate of completion
Included
Mobile and desktop access
Included
AI learning assistance
Included
Unlock all courses with our Subscription Bundle! Get unlimited access to entire course library, books and assets. Learn more and subscribe today!
Course content

Curriculum & lectures.

39 sections · 149 lectures
+ Welcome! 1 lecture Preview
Submit a Question/Feedback Locked
+ Let's Build It! Data Transformation ▶️ 2 lectures
Overview Locked
Complete Full Course Source Files Locked
+ Label Studio for Data Labeling đź“– 2 lectures
What is Label Studio Locked
Label Studio: advanced use cases (multi-modal, collaborative reviews) Locked
+ Tooling Mastery for Manual Labeling đź“– 2 lectures
Prodigy: integrating model-in-the-loop corrections Locked
Doccano: custom schema design for NLP annotation Locked
+ Human-Led Annotation Task Design đź“– 3 lectures
Decision tree construction for labeling consistency Locked
Multilabel, multi-task, and nested entity annotation schema Locked
Annotation schema AB testing for clarity and reproducibility Locked
+ Assisted Labeling Techniques đź“– 3 lectures
Rule-based pre-labeling + human correction Locked
Bootstrapping with weak supervision (Snorkel, skweak, etc.) Locked
Confidence-based filtering for human-in-the-loop escalation Locked
+ Inter-Annotator Agreement (IAA) as a Feedback Signal đź“– 2 lectures
Metrics: Cohen’s Kappa, Krippendorff’s Alpha, Fleiss’ Kappa Locked
Conflict resolution workflows and disagreement dashboards Locked
+ Metrics for Label Quality Monitoring đź“– 2 lectures
Label drift over time: visualizing consistency decay Locked
Annotator performance analytics (speed, accuracy, disagreement rate) Locked
+ Uncertainty Detection and Annotation Management đź“– 2 lectures
Integrate active learning loop with a model to flag uncertain samples Locked
Create review queues, consensus logic, and annotator feedback capture Locked
+ Human-Centric Data Curation at Scale đź“– 2 lectures
Strategic search for underrepresented edge cases Locked
Hybrid pipelines: scraping + expert review + augmentation Locked
+ Model Disagreement and Consensus đź“– 2 lectures
Leveraging model disagreement (disagreement-as-signal heuristic) Locked
Redundant labeling & consensus modeling Locked
+ Load, clean and encode data ▶️ 4 lectures
01A Load And Clean A Public Dataset Locked
01B What Is One-Hot Encoding Locked
02 Build X And Y Data With One Hot Encoding Locked
03 Logistic Regression With One Hot Encoding Locked
+ Data engineering for machine learning ▶️ 3 lectures
01 Scale And Encode Data With Scikit-Learn Locked
02 What Is Scaling Data Locked
03 Build, Train And Test A Machine Learning Model Locked
+ Build regression and discretizer models ▶️ 6 lectures
01 Compare Decision Tree And Linear Regression Models Locked
02 What Is The Kbins Discretizer Locked
03 Bin Data With Kbins Discretizer Locked
04 Build A Linear Regression Model On Stacked Data Locked
05 What Is K Means Clustering Locked
06 Compare Binned Regression Models Locked
+ Data transformation and feature selection for ridge regression ▶️ 6 lectures
01 Build Univariate Nonlinear Transformatio Locked
02 What Is Gaussian Probability Distribution- Locked
03 What Is Poisson Distribution Locked
04 Build X Y Data With Poisson Distribution In Numpy Locked
05 What Is Logarithmic Data Transformation Locked
06 Build A Ridge Regression Model Locked
+ 00a Foundations of AI App Empires 3 lectures
How billion-dollar apps apply ML to core features Locked
Understanding the data-to-insight lifecycle in ML Locked
Business models that scale with ML Locked
+ 00b AI-Powered Product Patterns 4 lectures
AI-Powered Product Patterns Locked
ML-powered feed ranking (TikTok, Instagram) Locked
Smart assistants & chat Locked
Submit a Question/Feedback Locked
+ 00c Machine Learning Theory Crash Course 12 lectures
Intro to Machine Learning Slides Locked
01 Course Intro Locked
02 Quick Intro To Machine Learning Locked
03 Deep Dive Into Machine Learning Locked
04 Problems Solved With Machine Learning Part 1 Locked
05 Problems Solved With Machine Learning Part 2 Locked
06 Types Of Machine Learning Locked
07 How Machine Learning Works Locked
08 Common Machine Learning Structures Locked
09 Steps To Build A Machine Learning Program Locked
10 Summary And Outro Locked
Fill in the Blank Quiz - Machine Learning Intro Locked
+ 01 Introduction to Machine Learning 12 lectures
01 What Is Machine Learning Locked
02 Types Of Machine Learning Models Locked
03 What Is Supervised Learning Locked
04 What Is Unsupervised Learning Locked
05 How Does A Machine Learning Agent Learn Locked
06 What Is Inductive Learning Locked
07a Performance Of A Machine Learning Algorithm Locked
07b Calculate Error Of Machine Learning Model Locked
08 Handle Noise In Data Locked
09 Powerful Tools With Machine Learning Libraries Locked
10 Gradient Descent Locked
11 Linear Algebra for Machine Learning Locked
+ 01a Regression Models 9 lectures
01 What Is Linear Regression Locked
02 What Is Logistic Regression Locked
03 Prepare Data For Logistic Regression Locked
04a How To Prepare Data Locked
04b How To Build A Logistic Regression Model Locked
04c What Is Optimization Locked
05 How To Optimize A Logistic Regression Model Locked
Quiz - Regression Locked
Source Files Locked
+ 01b Gradient Boosted Classification 5 lectures
01 What Is Gradient Boosting Locked
02 How To Shape Data For Classification Locked
03 How To Build A Boosted Trees Classifier Locked
Source Files Locked
Quiz - Gradient Boosted Classification Locked
+ 02a Deep Learning 3 lectures
01 What Is Deep Learning Locked
02 What Is A Neural Network Locked
Source Files Locked
+ 02b Convolutional Neural Network 5 lectures
01 What is a Convolutional Neural Network Locked
02a What Are Wrappers Locked
03 What is the Adam Optimizer Locked
Mindmap - Structure of a CNN Locked
02bSource Files Locked
+ 02c Layers of a CIFAR-Image Classification Neural Network 5 lectures
01 2D Convolution Layer Locked
02 Relu Activation Function Locked
03 2D Max Pooling Layer Locked
04 Flatten And Dense Layers Locked
Source Files Locked
+ 02d Optimizer and Loss for CIFAR-Image Classification Neural Network 3 lectures
01 How Do You Build An Optimizer For CIFAR-image Classification Locked
02 How Do You Calculate Loss For CIFAR-image Classification Locked
Source Files Locked
+ 03 Generative Neural Network Fundamentals 5 lectures
01 What Is A Generative Neural Network Locked
02 What Is A Convolutional Neural Network Locked
03 How To Build A Convolutional Neural Network Locked
04 How Do You Build A Generator Locked
Flashcards - Generative Neural Network Locked
+ 04 Discriminator Neural Network Fundamentals 1 lecture
01 How Do You Build A Discriminator Locked
+ 05 Other Types of Neural Networks 4 lectures
01 How Do You Build A Neural Network For Image Segmentation Locked
02 What Is A Recurrent Neural Network Locked
03 What Is A Dynamic Neural Network Locked
04 What Is A Bi-directional Neural Network Locked
+ 06 Word2Vec Sentiment Classification of Words 5 lectures
01 How Do You Build An Embedding Layer Locked
02 What Is Word2vec Locked
03 How Do You Vectorize Text Locked
04 How Do You Build A Word2vec Sequential Layer Locked
Source Files Locked
+ 07 Learn Image Generation Machine Learning Through Interview Questions 3 lectures
01 What Is Discriminative Modeling Locked
02 What Is Generative Modeling Locked
Interview Source Files Locked
+ 08a Diffusion Deep Learning Interview Questions 4 lectures
01 What Are Diffusion Models Locked
02 How Diffusion Works In Deep Learning Locked
03 Forward And Backward Diffusion In Ml Locked
04 What Is A U-Net Ml Model Locked
+ 08b Stable Diffusion Interview Questions 3 lectures
01 Steps Of Latent Reverse Diffusion In Stable Diffusion Locked
02 What Is Latent Space Locked
03 What Is The Manifold Hypothesis In Ml Locked
+ 09 Dimensionality Reduction Data Science Interview Questions 2 lectures
01 What Is Dimensionality Reduction Locked
02 What Is Principal Component Analysis Locked
+ 10 Autoencoder Machine Learning Interview Questions 5 lectures
01 What Are Autoencoders Locked
02 What Are Encoders And Decoders In Ml Locked
03 How Do Autoencoders Work Locked
04 What Are Variational Autoencoders Locked
05 What Is A Vector Quantized Variational Autoencoder Locked
+ 11 GAN Neural Network Interview Questions 3 lectures
01 What Is The Structure Of A Generative Adversarial Network Locked
02 What Are Discriminators And Generators Locked
03 What Is Zero-Shot Learning Locked
+ 12 Scoring Interview Questions 4 lectures
01 What Is Inception Score Locked
02 What Is Frechet Inception Distance Locked
03 How Fid Works In Ml Locked
04 What Is Kernel Inception Distance Locked
+ 13 Signal Processing Interview Questions 4 lectures
01 What Is Time-Series Data Locked
02 What Is Signal Data Locked
03 Continuous Signals Vs Discrete Signals Locked
04 What Is Nyquist Rate Locked
+ 14 Fourier Analysis Interview Questions 2 lectures
01 What Are Periodic Signals Locked
02 What Is Fourier Transform Locked
+ Where to go from here! Extra Bundled Courses 1 lecture
Extra Courses Locked
Description

About this course.

You will learn to automate ML with ChatGPT, build models in Cursor AI, and master the "9-figure" app journey.

► Sentiment Analysis with Python: Beginner’s Data Science & Machine Learning

â–ş ChatGPT-Powered Python Machine Learning Automation

â–ş Machine Learning Fundamentals: Starting Your 9-Figure AI App Journey

â–ş Supervised, Unsupervised, and Deep Learning Mastery

â–ş MLOps and Model Deployment: Machine Learning Engineering Skills

â–ş Build Machine Learning with Python and Cursor AI

â–ş Data Training Masterclass: Human Supervision in Machine Learning

✔️ Lifetime access

✔️ Practice exams with unlimited attempts

This bundle is for anyone ready to master the full lifecycle of a machine learning project from research to production. You will finish this track with a professional portfolio and the engineering depth required to build and deploy intelligent systems at scale.

Start your machine learning career today.

Ready to start building?

Go from a beginner to a high-level engineer with a curriculum that covers every major branch of modern machine learning. This massive bundle guides you through supervised, unsupervised, and deep learning, while also providing the MLOps skills needed for professional deployment.

Buy lifetime access →