The Kaggle Workbook Self–learning exercises and valuable insights for Kaggle data science competitions
Free Download The Kaggle Workbook: Self-learning exercises and valuable insights for Kaggle data science competitions by Konrad Banachewicz, Luca Massaron
English | February 24, 2023 | ISBN: 1804611212 | 172 pages | MOBI | 1.29 Mb
Move up the Kaggle leaderboards and supercharge your data science and machine learning career by analyzing famous competitions and working through exercises.


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Data analysis with Tableau using Kaggle
Free Download Data analysis with Tableau using Kaggle
Published 6/2023
Created by Ammar Akhter Khan
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 6 Lectures ( 49m ) | Size: 493 MB


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The Kaggle Workbook Self-learning exercises and valuable insights for Kaggle data science competitions
Free Download The Kaggle Workbook: Self-learning exercises and valuable insights for Kaggle data science competitions
English | 2023 | ISBN: 1804611212 | 172 Pages | PDF EPUB (True) | 36 MB
In this book, you'll get up close and personal with four extensive case studies based on past Kaggle competitions. You'll learn how bright minds predicted which drivers would likely avoid filing insurance claims in Brazil and see how expert Kagglers used gradient-boosting methods to model Walmart unit sales time-series data. Get into computer vision by discovering different solutions for identifying the type of disease present on cassava leaves. And see how the Kaggle community created predictive algorithms to solve the natural language processing problem of subjective question-answering.


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The Kaggle Workbook Self-learning exercises and valuable insights for Kaggle data science
The Kaggle Workbook
by Konrad Banachewicz, Luca Massaron

English | 2023 | ISBN: 1804611212 | 172 pages | True PDF EPUB | 29.7 MB


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The Kaggle Workbook  Self-Learning Exercises and Valuable Insights for Kaggle Data Science Competitions
The Kaggle Workbook
by Banachewicz, Konrad;Massaron, Luca;

English | 2023 | ISBN: 1804611212| 173 pages | True PDF | 7.43 MB


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Enter Kaggle's Tabular Competition 2022
Description
This course is designed to take the learner through all eleven Kaggle monthly tabular comprtitions in 2022. The course is composed of three sections, being:-1. Introduction2. Kaggle competitions3. SummaryIn the introductory section of the course, I cover an introduction to Kaggle, a machine learning website, and an introduction to how to enter a competition using a motorcycle prediction competition question.In the Kaggle competitions, I cover the eleven monthly tabulat competitions for the year 2022. These competitions include classification problems, regression problems, clustering problems, and multi-target problems. It is important to note that each competition question is more difficult than the last. It would be wise, therefore, for the learner to take the two prerequisite courses before endeavouring to take this course. The two prerequisite courses, created by myself, are How to Enter a Kaggle competition and Enter Kaggle's Tabular Competition 2022.In the Summary part of the course, I cover the code in the motorcycle prediction competition question to give the learner insight into how to improve his score.It is important to know machine learning techniques as a precurser to this course. The basic principles of the logic to follow to undertake a machine learning project are:-1. Import libraries2. Load datasets into program3. Read the datasets and convert them to dataframes4. Clean the data by imputing and null values in the data5. Analyse the target6. Analyse the independent variables and how they relate to the dependent variables7. Remove any outliers if necessary8. Encode the data if necessary9. Employ feature selection techniques if necessary10. Define the dependent and independent variables11. Normal and standardise the independent variables if necessary12. Split the dataset into training and validation sets13. Define the model, training and fitting the data into it12. Make the predictions on the validation set and test set13. Prepare the submission to be submitted to Kaggle14. Submit the predictions to Kaggle for scoring
Last updated 12/2022
Created by Tracy Renee


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