Welcome to our comprehensive guide on hyperparameter tuning with Scikit-Learn! 🚀
In this tutorial, we'll dive deep into the world of machine learning model optimization. If you're looking to take your data science skills to the next level and boost your model's performance, you're in the right place.
Interested in discussing a Data or AI project? Feel free to reach out via email or simply complete the contact form on my website.
📧 Email: ryannolandata@gmail.com
🌐 Website & Blog: [ Ссылка ]
🍿 WATCH NEXT
Scikit-Learn and Machine Learning Playlist: [ Ссылка ]
Optuna Hyperparameter Tuning: [ Ссылка ]
Principal Component Analysis: [ Ссылка ]
Titanic Data Science Project: [ Ссылка ]
MY OTHER SOCIALS:
👨💻 LinkedIn: [ Ссылка ]
🐦 Twitter: [ Ссылка ]_
⚙️ GitHub: [ Ссылка ]
🖥️ Discord: [ Ссылка ]
📚 *Data and AI Courses: [ Ссылка ]
📚 *Practice SQL & Python Interview Questions: [ Ссылка ]
WHO AM I?
As a full-time data analyst/scientist at a fintech company specializing in combating fraud within underwriting and risk, I've transitioned from my background in Electrical Engineering to pursue my true passion: data. In this dynamic field, I've discovered a profound interest in leveraging data analytics to address complex challenges in the financial sector.
This YouTube channel serves as both a platform for sharing knowledge and a personal journey of continuous learning. With a commitment to growth, I aim to expand my skill set by publishing 2 to 3 new videos each week, delving into various aspects of data analytics/science and Artificial Intelligence. Join me on this exciting journey as we explore the endless possibilities of data together.
*This is an affiliate program. I may receive a small portion of the final sale at no extra cost to you.
Hands-On Hyperparameter Tuning with Scikit-Learn: Tips and Tricks
Теги
Data ScientistHyperparameter tuningScikit-LearnMachine learningData scienceModel optimization Scikit-Learn tutorialHyperparameter optimizationPythonGrid searchRandom search Model performanceCross-validationFeature engineering Python programmingMachine learning algorithmsParameter tuning Data analyticsSupport vector machines ClassificationHyperparameter rangesModel comparison Model hyperparametersHyperparameter searchGrid search vs. Random search