Orkhan Bakir (@Orkhan-Bakir)
  • Stars
    star
    2
  • Global Rank 2,219,069 (Top 77 %)
  • Followers 1
  • Following 2
  • Registered over 3 years ago
  • Most used languages
  • Location πŸ‡¦πŸ‡Ώ Azerbaijan
  • Country Total Rank 674
  • Country Ranking

Top repositories

1

Movie-Recommendation-with-ML

In this Data Science project, you will see how to build a basic model of simple as well as content-based recommendation systems.
Jupyter Notebook
2
star
2

Pfizer-Analysis

The dataset that I am using for the task of Pfizer vaccine sentiment analysis is downloaded from Kaggle, which was initially collected from Twitter when people were sharing their opinions about the Pfizer vaccine. Let’s start the task of Pfizer vaccine sentiment analysis by importing the necessary Python libraries and the dataset:
Jupyter Notebook
2
star
3

Employee-Attrition

Predicting Employee Attrition in Python.
Jupyter Notebook
1
star
4

Fifa-Analysis

The Federation Internationale de Football Association (FIFA)
Jupyter Notebook
1
star
5

Ecommerce_and_customers-ML-using-Sklearn-

Analysis and prediction using ML (Sklearn)
Jupyter Notebook
1
star
6

Heart-Disease-Prediction-with-ML.

Heart disease is one of the biggest causes of morbidity and mortality among the population of the world. Prediction of cardiovascular disease is regarded as one of the most important subjects in the section of clinical data science.
Jupyter Notebook
1
star
7

Using-PyCaret-for-ML-models-

Compare different models, fixing the imbalance problem, building the best model according to best metric and perform hyperparameter tuning for accuracy, using Logistic Regression, CatBoost Classifier and LightGBM algorithms.
Jupyter Notebook
1
star
8

USA_Housing-Linear-Regression-ML-

Here we have data "USA Housing" , which I took from Kaggle.com. I statistically analyzed and also used Linear Regression analysis using Machine Learning and made predictions.
Jupyter Notebook
1
star