# data-science-tutorial **Repository Path**: email4reg/data-science-tutorial ## Basic Information - **Project Name**: data-science-tutorial - **Description**: For extensive instructor led learning - **Primary Language**: Unknown - **License**: Not specified - **Default Branch**: master - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 0 - **Created**: 2020-02-09 - **Last Updated**: 2020-12-18 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README In person training - https://www.edyoda.com/program/data-scientist-program # Machine Learning Git Codebook **Lesson 1 :** [Introduction to Numpy](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/1.%20NumPy.ipynb) [(Video)](https://www.edyoda.com/resources/videolisting/1263/) **Lesson 2 :** [Data Wrangling using Pandas](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/2.%20Pandas%20for%20Machine%20Learning.ipynb) **Lesson 3 :** [Plotting in Python](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/3.%20Plotting.ipynb) **Lesson 4 :** [Linear Models for Regression & Classification](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/4.%20Linear%20Models%20for%20Classification%20%26%20Regression.ipynb) **Lesson 5 :** [Preprocessing Data](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/5.%20PreProcessing.ipynb) **Lesson 6 :** [Decision Trees](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/6.%20Decision%20Tree.ipynb) **Lesson 7 :** [Naive Bayes](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/7.%20Naive%20Bayes.ipynb) **Lesson 8 :** [Composite Estimators](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/8.%20Composite%20Estimators%20using%20Pipelines%20%26%20FeatureUnions.ipynb) **Lesson 9 :** [Model Selection and Evaluation](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/9.%20Model%20Selection%20%26%20Evaluation.ipynb) **Lesson 10 :** [Feature Selection Techniques](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/10.%20Feature%20Selection%20Techniques.ipynb) **Lesson 11 :** [Nearest Neighbors](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/11.%20Nearest%20Neighbors.ipynb) **Lesson 12 :** [Clustering Techniques](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/12.%20Clustering%20Techniques.ipynb) **Lesson 13 :** [Anomaly Detection](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/13.%20Anomaly%20Detection.ipynb) **Lesson 14 :** [Support Vector Machines](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/14.%20Support%20Vector%20Machines.ipynb) **Lesson 15 :** [Dealing with Imbalanced Classes](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/15.%20Dealing%20with%20Imbalanced%20Classes.ipynb) **Lesson 16 :** [Ensemble Methods](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/16.%20Ensemble%20Methods.ipynb) ## Case Study of Classic ML Problems **Case 1 :** [Linear Regression](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/LR%20Example.ipynb) **Case 2 :** [Cancer Prediction](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/Cancer%20Prediction.ipynb) **Case 3 :** [Online Learning](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/Online%20Learning.ipynb) **Case 4 :** [Customer Churn Prediction](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/Project%20-%20Customer%20Churn%20Prediction.ipynb) **Case 5 :** [Income Prediction](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/Project%20-%20Income%20Prediction.ipynb) **Case 6 :** [Predicting Employee Exit](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/Project%20-%20Predicting%20Employee%20Exit.ipynb) **Case 7 :** [Face Generation](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/Project%20-%20Face%20Generation.ipynb) **Case 8 :** [Finding Similar Houses](https://github.com/zekelabs/data-science-complete-tutorial/blob/master/Project%20-%20Finding%20Similar%20Houses.ipynb) ## The Free courses available on EdYoda **Python** - https://www.edyoda.com/resources/videolisting/98/ **Angular** - https://www.edyoda.com/resources/videolisting/1227/ **Machine Learning** - https://www.edyoda.com/resources/videolisting/1416/ **Dog Breed Prediction Project** - https://www.edyoda.com/resources/videolisting/1336/ https://www.edyoda.com/resources/videolisting/1185/ **Numpy** - https://www.edyoda.com/resources/videolisting/1263/ **Tensorflow** - https://www.edyoda.com/resources/videolisting/99/ **Amazon Web Services** - https://www.edyoda.com/resources/videolisting/1410/ **DevOps** - https://www.edyoda.com/resources/videolisting/100/ **Android** - https://www.edyoda.com/resources/videolisting/101/ https://www.edyoda.com/resources/videolisting/1173/ **Implementing Java Api's work** - https://www.edyoda.com/resources/dashboard/nayak.chandra1/ **Introduction to Neural Nets** - https://www.edyoda.com/resources/dashboard/maniksoni653/ **Deep Reinforcement Learning** - https://www.edyoda.com/resources/videolisting/1421/ **Knowledge Graphs, Deep Learning, Reasoning** - https://www.edyoda.com/resources/videolisting/1420/ **Natural Language Processing** - https://www.edyoda.com/resources/videolisting/1419/ **GAN Miniseries** - https://www.edyoda.com/resources/videolisting/1418/ **Videos from deep cognition studio** - https://www.edyoda.com/resources/dashboard/deepcognition/ ## About Us We want to democratize education and create free quality course content.