What's new
Warez.Ge

This is a sample guest message. Register a free account today to become a member! Once signed in, you'll be able to participate on this site by adding your own topics and posts, as well as connect with other members through your own private inbox!

ML & AI Foundations From Intuition to Implementation

voska89

Moderator
Staff member
6fa3daff3711d8dd01846c6a5f96dea9.webp

Free Download ML & AI Foundations From Intuition to Implementation
Published 1/2026
Created by Swapnil Daga
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Beginner | Genre: eLearning | Language: English + subtitle | Duration: 62 Lectures ( 4h 7m ) | Size: 5.3 GB​

Learn fundamentals of ML & AI in a practical manner by building hands-on projects that can be added in your resume.
What you'll learn
✓ Understand the basic maths & programming used to build projects in AI & ML
✓ Get practical idea of basic and advanced ML Concepts
✓ Learn to build hands-on AI & ML Projects from Scratch
✓ Complete your interview preparation for AI Based Roles by showcasing the projects effectively in your resume & being prepared for FAQ's on the built projects
✓ Confidently explain ML Concepts in Interviews
✓ Build & Debug Models on your own
✓ Think beyond black-box ML
✓ Choose the right model for the right problem
Requirements
● Basic Knowledge of Python or willingness to learn basic python on the go.
● Basic high school maths like matrix multiplication and vector operations.
Description
This course builds strong ML foundations by combining clear intuition, solid math, and hands-on implementation.
You won't just use ML libraries - you'll understand how models work internally, why they work, and when they fail.
After completing this course, you will
• Think beyond black-box ML
• Confidently explain ML concepts in interviews
• Build and debug models on your own
• Choose the right model for the right problem
In short: from following tutorials → to real ML understanding.
This course is ideal for
• Students & freshers aiming for ML/Data roles
• Software professionals transitioning into ML
• Anyone who knows "some ML" but lacks confidence
This course helps you upgrade your career by building real ML depth, not just surface knowledge.
What is covered?
• Math foundations for ML (basic → advanced)
• Core models: Linear & Logistic Regression, Decision Trees, Neural Networks
• Ensemble methods: Bagging, Boosting, Random Forest
• Optimizers, regularization, overfitting & bias-variance tradeoff
• Hands-On Learning
• Movie rating classification (Kaggle + GPUs)
• Neural Network implementation from scratch
• Music genre classification using MFCC + Neural Networks
• Interview preparation session for all covered topics
In one line
A practical, concept-driven ML course that turns learners into confident ML engineers
Detailed Course Breakdown
• Section 1 : Overview
- Introduction to the Instructor & Course
- Why knowledge of basic maths is crucial for intuition in AI & ML
- Things we will be learning during the course
• Section 2: Probability & Statistics
- Probability & Stats
- Mean, Median & Mode
- Calculation Expected Value
- Variance & Covariance
- Normal Distribution
- Central Limit Theorem
- Conditional Probability
- Baye's Theorem
- Maximum Likelihood Estimation
• Section 3: Linear Algebra
- Overview of Linear Algebra
- Scalar, Vectors, Matrix & Tensors
- Matrix Operations
- Rank & Linear Dependence
- Eigen Vectors & Eigen Values
- Principle Component Analysis
• Section 4: Calculus
- Overview of Calculus
- Derivatives & Gradients
- Gradient Descent Algorithm
- Chain Rule
- Fundamentals of Optimisation
- Local vs Global Maxima
- Convexity
• Section 5: Basics of Python
- Practical Python for ML & AI
• Section 6: Introduction to ML
- Overview & Introduction to ML
- Basics of ML
- Classification of ML
- Regression vs Classification
- Trainset / Validation Set / Testset
- Overfitting (Learning vs Memories)
• Section 7: Training of Models
- One-Hot Encoding
• Section 8: Regression Methods
- Linear Regression
- Parameters to tests models
• Section 9: Decision Trees
- Introduction to Decision Trees
- Training & Testing Process
- I.G in Decision Trees
- G.I in Decision Trees
• Section 10: Ensembles
- Introduction to Ensembles
- Bagging
- Boosting
• Section 11: Training of Models
- Practical Training Methodology
• Section 12: Advanced Machine Learning
- Overview in Advanced Machine Learning
• Section 13: Logistic Regression
- What is Logisitic Regression ?
- Why Logistic Regression ?
- Maths behind Logisitic Regression?
- Do I always need Binary Classification?
• Section 14: Neural Networks
- Architecture & Overview
- Dive into Neural Network
- Generalization
- Batch Processing
- Optimizer
• Section 15: Demo
- Kaggle Tutorial
- Demo for Projects & Model Training
• Section 16: Hands-On Practical Implementation of Projects
- Hands-on Logistic Regression Coding
- Hands-on Decision Trees Coding
- Hands-on Neural Network Coding
- Neural Network Coding for Multi Category Classification
• Section 17: Interview Preparation for Prepared Projects
- FAQ in Interviews on projects discussed in the course
Who this course is for
■ Students & freshers aiming for ML/Data roles
■ Software professionals transitioning into ML
■ Anyone who knows "some ML" but lacks confidence
Homepage
Code:
https://www.udemy.com/course/ml-foundations/

Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live

DDownload
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part1.rar
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part2.rar
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part3.rar
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part4.rar
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part5.rar
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part6.rar
Rapidgator
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part1.rar.html
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part2.rar.html
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part3.rar.html
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part4.rar.html
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part5.rar.html
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part6.rar.html
AlfaFile
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part1.rar
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part2.rar
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part3.rar
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part4.rar
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part5.rar
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part6.rar

FreeDL
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part1.rar.html
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part2.rar.html
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part3.rar.html
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part4.rar.html
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part5.rar.html
aqkex.ML..AI.Foundations.From.Intuition.to.Implementation.part6.rar.html
No Password - Links are Interchangeable
 

Users who are viewing this thread

Back
Top