Python Scikit Learn Programming With Coding Exercises





Published 9/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 299.09 MB | Duration: 2h 0m

Master Machine Learning with Scikit-learn Through Practical Coding Challenges


What you'll learn
How to preprocess data and perform feature engineering for machine learning models.
Techniques for implementing both supervised and unsupervised learning algorithms using Scikit-learn.
Methods for evaluating, fine-tuning, and deploying machine learning models.
Practical skills in building machine learning pipelines and using cross-validation techniques.
Requirements
Basic knowledge of Python programming.
Familiarity with basic statistical concepts and linear algebra.
Description
Welcome to Python Scikit-learn Programming with Coding Exercises, a course designed to take you from a beginner to an advanced level in machine learning using Scikit-learn, the go-to library for machine learning in Python. Scikit-learn is a powerful and easy-to-use library that provides simple and efficient tools for data analysis and machine learning. Whether you are a data enthusiast, a Python developer, or a professional looking to break into the field of machine learning, this course will equip you with the necessary skills to excel in building predictive models.Why is learning Scikit-learn necessary? As the demand for data-driven decision-making continues to grow, the ability to build and deploy machine learning models is becoming increasingly essential. Scikit-learn offers a wide range of algorithms and tools that are crucial for implementing machine learning solutions in various domains, such as finance, healthcare, marketing, and more. This course is structured to help you gain hands-on experience with Scikit-learn, enabling you to apply machine learning techniques to solve real-world problems.Throughout this course, you will engage in a series of coding exercises that cover a wide array of topics, including:Introduction to Scikit-learn and its ecosystemData preprocessing and feature engineeringSupervised learning algorithms such as linear regression, decision trees, and support vector machinesUnsupervised learning algorithms like k-means clustering and principal component analysis (PCA)Model evaluation and hyperparameter tuningImplementing cross-validation techniquesBuilding and deploying machine learning pipelinesEach exercise is designed to reinforce your understanding of the concepts and techniques, ensuring that you gain practical experience in implementing machine learning models with Scikit-learn.Instructor Introduction: Your instructor, Faisal Zamir, is an experienced Python developer and educator with over 7 years of experience in teaching and software development. Faisal's deep understanding of machine learning and Python programming, combined with his practical teaching style, will guide you through the complexities of Scikit-learn with ease.30 Days Money-Back Guarantee: We are confident that this course will provide you with valuable skills, which is why we offer a 30-day money-back guarantee. If you are not completely satisfied, you can request a full refund, no questions asked.Certificate at the End of the Course: Upon successfully completing the course, you will receive a certificate that acknowledges your expertise in machine learning with Scikit-learn. This certificate can be a valuable addition to your professional portfolio.
Overview
Section 1: Introduction to Scikit-learn
Lecture 1 Introduction to Scikit-learn
Lecture 2 Lesson 01
Lecture 3 Coding Exercises
Section 2: Data Preprocessing
Lecture 4 Data Preprocessing
Lecture 5 Lesson 02
Lecture 6 Coding Exercises
Section 3: Supervised Learning - Regression
Lecture 7 Supervised Learning - Regression
Lecture 8 Lesson 03
Lecture 9 Coding Exercises
Section 4: Supervised Learning - Classification
Lecture 10 Supervised Learning - Classification
Lecture 11 Lesson 04
Lecture 12 Coding Exercises
Section 5: Model Evaluation and Selection
Lecture 13 Model Evaluation and Selection
Lecture 14 Lesson 05
Lecture 15 Coding Exercises
Section 6: Unsupervised Learning - Clustering
Lecture 16 Unsupervised Learning - Clustering
Lecture 17 Lesson 06
Lecture 18 Coding Exercises
Section 7: Dimensionality Reduction
Lecture 19 Dimensionality Reduction
Lecture 20 Lesson 07
Lecture 21 Coding Exercises
Section 8: Ensemble Learning
Lecture 22 Ensemble Learning
Lecture 23 Lesson 08
Lecture 24 Coding Exercises
Section 9: Advanced Topics - Model Interpretation
Lecture 25 Advanced Topics - Model Interpretation
Lecture 26 Lesson 09
Lecture 27 Coding Exercises
Section 10: Final Project - End-to-End Machine Learning Pipeline
Lecture 28 Final Project - End-to-End Machine Learning Pipeline
Lecture 29 Lesson 10
Lecture 30 Coding Exercises
Aspiring data scientists and machine learning enthusiasts looking to learn Scikit-learn.,Python developers who want to expand their skills into machine learning.,Professionals in various industries who want to apply machine learning techniques to real-world problems.

Screenshots


rapidgator.net:
Kod:
https://rapidgator.net/file/dd0b1120ab6a300f9ab5d24556610934/pixwf.Python.Scikit.Learn.Programming.With.Coding.Exercises.rar.html
nitroflare.com:
Kod:
https://nitroflare.com/view/FFC12DD443AB0AB/pixwf.Python.Scikit.Learn.Programming.With.Coding.Exercises.rar