A Recommender system that predicts your next order based on your previous purchases. Also, it discuss the association between product purchases.
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Updated
Jun 6, 2022 - Jupyter Notebook
A Recommender system that predicts your next order based on your previous purchases. Also, it discuss the association between product purchases.
Basics of ML libraries Explained through Jupyter Notebooks
Divar's 2021 Data Analyst summer camp entrance task.
A Comprehensive exploratory data analysis (EDA) on a loan dataset to uncover key trends, patterns, and relationships among various loan attributes. By visualizing and analyzing the data, we aim to gain insights into loan performance, borrower characteristics, and market dynamics. 🪙🏦
This repository contains my learning path of python for data-science essential training(part-2). Here, I have included chapter-wise topics and my practice problems. Also, feel free to checkout for better understanding.
This repository contains 3 projects that were carried out and submitted for my ALX Udacity Data Analyst Course
What attributes influence the selection of a romantic partner?
🏘 Ames house dataset modelled and explained
Crawl data, process data, visualize, and create ML model for laptop price prediction
Predict house price using linear regression model
University of California Davis Specialization Certificate in Data Visualization with Tableau
🍷 Quality analysis of red and white variants of the Portuguese "Vinho Verde" wine
The objective of this work is to investigate factors affecting borrower rate and loan amount.
This repository was just for my practice. Here, I have performed explanatory data analysis on the famous titanic dataset from kaggle.
# PISA 2012 Data ## by Nadine Amin ## Dataset > PISA is a survey of students' skills and knowledge as they approach the end of compulsory education. It focuses on examining how well prepared the students are for life beyond school. > Around 510,000 students in 65 economies took part in the PISA 2012 assessment of reading, mathematics and science…
This is the 6th project in my data analysis nanodegree and it focuses on prforming exploratory data analysis ( or EDA for short ) in R
Stock Price Prediction of APPLE Using Python
The analysis and prediction of TMDB dataset
This is a part of the exercise project provided by Dicoding in "Learn Data Analytics with Python" course.
Cleaned FordGoBike data for 2019 was analyzed using different pots (univariate and multivariate) to draw conclusion over the distribution relation between different categorical and numerical variables
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