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Mastering Pipelines, XGBoost & Data Leakage | Intermediate Machine Learning

M
Mustak Aalam

0 Views • Jul 02, 2026

Description

In this video, I explain the Kaggle “Intermediate Machine Learning” course in a simple and practical way.

00:00 Introduction
01:59 Missing Values
13:06 Categorical Variables
21:15 Pipelines
25:30 Cross-Validation
30:18 XGBoost
38:26 Data Leakage

Topics covered in this video:

Handling Missing Values

Encoding Categorical Variables

Building Pipelines

Cross-Validation explained

XGBoost intuition

Most important concept: Data Leakage

This video will help you:

Build industry-ready ML models

Avoid common ML mistakes

Understand how real Kaggle solutions work

📌 Must-watch for anyone serious about Machine Learning & Kaggle competitions

I Built an AI Algo Trading System | Hybrid Machine Learning + Reinforcement Learning Explained :- https://youtu.be/fkgXOMCJARg?si=3c9gqVKrixuBY5lF

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