Decision Tree Regression Introduction and Intuition
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Complete End to End Python code for Decision Tree Regression
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Random Forest Regression Introduction and Intuition
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Complete End to End Python code for Random Forest Regression
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Fantastic Explanation of Logistic Regression in Machine Learning - Part 1
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Fantastic Explanation of Logistic Regression Model - Part 2
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How to Develop and Train Logistic Regression model on Titanic Dataset | Python Code Part 1
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How to Develop and Train Logistic Regression model on Titanic Dataset | Python Code Part 2
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Best Explanation of Confusion Matrix False Positive False Negative so far
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Precision Recall and F1-Score Explanation in Easy way
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How to use CAP curve for Classification Model Evaluation? | What is CAP Curve?
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Best Explanation of Evaluating Classification Model using AUC-ROC Curve
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How to Generate AUC-ROC curve for Evaluating Logistic Regression Model?
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Fantastic Explanation of Support Vector Machine algorithm | Support Vector Machine Intuition
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Build Train and Evaluate Support Vector Machine Model | Train & Evaluate SVM model using python
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Fantastic Explanation of K-Nearest Neighbor | K-Nearest Neighbor Introduction and Intuition
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Build Train & Evaluate K-Nearest Neighbor (KNN) Model | Using Python & Scikit Learn
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Decision Tree Classification Introduction and Intuition
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What are the 4 Key Steps to Create a Decision Tree? | How to Create Decision tree?
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How to Measure the Purity of Decision Tree split using GINI INDEX | How to calculate Gini Index?
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How to Measure the Purity of Decision Tree split using Information Gain
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Build, Train & Evaluation Decision Tree Model | Decision Tree using Scikit Learn
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How to Train Random Forest Classifier using Python? | How does Random Forest work?
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How to AUTOMATE Data Science Lifecycle | How to AUTOMATE Machine Learning Pipeline
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डेटा Science Lifecycle को स्वचालित कैसे करें | How to AUTOMATE Data Science Lifecycle in Hindi
Description:
Embark on an extensive 18-hour Machine Learning and Deep Learning Bootcamp Series offered by The AI University. Dive deep into the OSEMN framework for data science, covering crucial topics such as data extraction, cleaning, and analysis. Learn to work with various data sources including MongoDB, MySQL, and APIs. Master essential techniques like web scraping, data simulation, and handling missing values. Explore feature engineering concepts including one-hot encoding, feature scaling, and outlier detection. Gain proficiency in data transformation methods and pandas operations. Delve into exploratory data analysis, covering univariate and bivariate analysis techniques. Understand the differences between AI, ML, and Deep Learning. Acquire hands-on experience with regression techniques, including simple and multiple linear regression, polynomial regression, and decision trees. Explore classification algorithms such as logistic regression, support vector machines, k-nearest neighbors, and random forests. Learn to evaluate model performance using confusion matrices, precision-recall, CAP curves, and ROC curves. Conclude with insights on automating the data science lifecycle and machine learning pipeline.
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Machine Learning and Deep Learning Bootcamp Series