MYCSS

24 липня 2024 р.

Codefinity. Mastered all the "Foundations of Machine Learning" specialization courses.

The track provides an introduction to the essential concepts and techniques in the field of machine learning. 

This comprehensive learning journey covers various crucial topics, including the utilization of scikit-learn library for machine learning initiation, the application of Linear Regression for predictive modeling, exploration of Classification methods for categorizing data, and the study of Clustering algorithms to discover inherent patterns within datasets. 

By engaging with this track, learners will acquire a solid understanding of fundamental machine learning principles, enabling them to build predictive and analytical models across diverse domains.

8 courses

Syllabus

Codefinity. Project - Logistic Regression Mastering

Project Logistic Regression Mastering to track Foundations of Machine Learning.

In this project, we are going to understand the career tracks of Data Scientists.

Author: Edoardo Cantagallo

Logistic Regression Mastering

23 липня 2024 р.

Codefinity. Course Ensemble Learning

Ensemble Learning is an advanced machine learning technique that combines multiple models to improve overall predictive performance and decision-making when solving real-life tasks. 

Author: Ruslan Shudra

Let's summarize and highlight the main information covered in the course.

Ensemble learning in machine learning is a technique that combines the predictions of multiple individual models (learners) to produce a more robust and accurate prediction or classification. It leverages the principle that by aggregating the opinions of multiple models, you can often achieve better results than relying on a single model.
There are three commonly used techniques for creating ensembles: bagging, boosting, and stacking.

Ensemble Learning

 

14 липня 2024 р.

Codefinity. Course Linear Regression with Python.

Course Linear Regression with Python of track Foundations of Machine Learning.

Linear Regression is a crucial concept in predictive analytics. It is widely used by data scientists, data analytics, and statisticians as it is easy to build and interpret but powerful enough for many tasks.

Author: Volodymyr Romanovych

  • Simple Linear Regression 
  • Multiple Linear Regression
  • Polynomial Regression
  • Choosing The Best Model
Linear Regression with Python

13 липня 2024 р.

Codefinity. Mastered all the "Python Data Analysis and Visualization" specialization courses.

Track curriculum encompasses a collection of pivotal courses that provide foundational knowledge and skills essential for a successful journey in the field of data science. 

These courses encompass the comprehensive study of key concepts, tools, and methodologies integral to the realm of data analysis and modeling. 

By delving into courses centered around numpy, pandas, statistics, probability theory, as well as mathematics tailored for data analysis and modeling, learners are equipped with a well-rounded toolkit to seamlessly navigate the intricacies of data-driven exploration, manipulation, and inference.

6 courses 

Syllabus

  1. Ultimate NumPy
  2. Pandas First Steps
  3. Advanced Techniques in pandas
  4. Mathematics for Data Analysis and Modeling
  5. Probability Theory Basics
  6. Ultimate Visualization with Python

Python Data Analysis and Visualization

Codefinity. Ultimate Visualization with Python

Course Ultimate Visualization with Python of track Python Data Analysis and Visualization.

Data is everywhere around us, and making sense of it is extremely important. 

Visualization helps us deal with data by finding certain patterns and insights in it. 

We will develop a solid foundation of data visualization using Python and its libraries, such as matplotlib and seaborn, to get as much information from data as possible in a neat and concise way. Without further ado, let's dive in!

Author: Kyryl Sidak

 

Ultimate Visualization with Python

 


10 липня 2024 р.

Codefinity. Ultimate NumPy.

Course Ultimate NumPy of track Python Data Analysis and Visualization.

Unlock the full potential of Python's most essential library for numerical computing, NumPy. 

This comprehensive course is designed to take you from a beginner's understanding to an advanced level of proficiency in NumPy. 

Whether you're a data scientist, engineer, researcher, or developer, mastering NumPy is essential for efficient data manipulation, scientific computing, and machine learning.

Author: Kyryl Sidak

Ultimate NumPy

 

9 липня 2024 р.

"Kaggle" від Google "ml-competition-2024-for-ukrainian"

☀️ Перше моє змагання 📈 на "Kaggle" від Google "ml-competition-2024-for-ukrainian".

Приємно затягнуло 👨‍🎓, хоч і не потрапляю до 🏆призових місць top 50, і не претендую навіть на ґуґл ☕ чашку, хоча я вже отримав її за інше завдання 😃

Зареєстровані учасники, які увійдуть до ТОП-50 переможців у Kaggle-змаганні, отримають нагороди.

На сьогодні (за 4 доби до фінішу) 🔝зайняв 62 місце (піднявся з 87), і напевно вже вище не зможу стати, а тільки нище 😃. Але відновив деякі знання використовуючи записи з домашніх завдань курсів Data science в GoIT - start your career in IT : https://github.com/lexxai/goit_python_data_sciense_homework .

8 липня 2024 р.

Codefinity. ML Introduction with scikit-learn.

Course. ML Introduction with scikit-learn of track Foundations of Machine Learning.

Machine Learning is now used everywhere. Want to learn it yourself? 

This course is an introduction to the world of Machine learning for you to learn basic concepts, work with Scikit-learn – the most popular library for ML and build your first Machine Learning project. 

This course is intended for students with a basic knowledge of Python, Pandas, and NumPy.

Author: Volodymyr Romanovych

 

ML Introduction with scikit-learn.

7 липня 2024 р.

Codefinty. Project - Recognizing Handwritten Digits.

Postgraduate of completed track - Python. Preparation for Data Science. Consists of 9 courses.

  • Recognizing Handwritten Digits.
    In this project, our primary objective will be to delve into the identification of handwritten digits through the application of machine learning algorithms. This endeavor aims to harness the power of machine learning to effectively interpret and understand handwritten digits, showcasing the potential of these algorithms in processing and analyzing complex visual information.

Recognizing Handwritten Digits
Коли забув ти рідну мову, біднієш духом ти щодня...
When you forgot your native language you would become a poor at spirit every day ...

Д.Білоус / D.Bilous
Рабів до раю не пускають. Будь вільним!

ipv6 ready