Menu
Sign In Search Podcasts Charts People & Topics Add Podcast API Pricing
Podcast Image

CyberSecurity Summary

Data Science Projects with Python - Second Edition

26 Nov 2024

Description

The Book provide a comprehensive guide to data science with Python, focusing on machine learning techniques for building predictive models. The book covers data exploration, cleaning, and visualization, along with core functionalities of scikit-learn for training and evaluating models. It delves into the details of logistic regression, including its assumptions and limitations, and explores techniques for handling issues such as overfitting and multicollinearity. The text then introduces decision trees and random forests, highlighting their advantages and disadvantages, and provides guidance on hyperparameter tuning using techniques like GridSearchCV. The final chapter focuses on gradient boosting and XGBoost, showcasing its power and demonstrating how to interpret model predictions using SHAP values. The sources also include activities and exercises for hands-on learning and real-world applications using the case study data.You can listen and download our episodes for free on more than 10 different platforms:https://linktr.ee/cyber_security_summaryGet the Book now from Amazon:https://www.amazon.com/Data-Science-Projects-Python-approach/dp/1800564481?&linkCode=ll1&tag=cvthunderx-20&linkId=8e3421d8258f684e39134194d83c0eb8&language=en_US&ref_=as_li_ss_tlDiscover our free courses in tech and cybersecurity, Start learning today:https://linktr.ee/cybercode_academy

Audio
Featured in this Episode

No persons identified in this episode.

Transcription

This episode hasn't been transcribed yet

Help us prioritize this episode for transcription by upvoting it.

0 upvotes
🗳️ Sign in to Upvote

Popular episodes get transcribed faster

Comments

There are no comments yet.

Please log in to write the first comment.