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About

Hi 👋, I'm Mrityunjay Pathak

I'm a Data Scientist with a knack for uncovering patterns and trends that drive smarter decisions.

🎯 Tools and Technologies

• Programming Language : I'm familiar with Python, a powerful language for data science and machine learning.

• Libraries : I'm also familiar with essential data science libraries like NumPy, Pandas, Matplotlib, Seaborn and Plotly.

• Machine Learning : I have experience with Sklearn, a famous machine learning library used widely across industries.

• Database : I can work with MySQL, a popular database management system to handle and retrieve data effectively.

• BI Tools : I'm familiar with Power BI and Excel to perform data analysis, create dynamic dashboards and extract meaningful insights.

• Version Control : I'm familiar with Git, which helps in keeping track of changes in code and collaborating effectively with a team.

📫 Connect with Me

Kaggle  |  LinkedIn  |  GitHub  |  Medium  |  Portfolio

Skills



Projects

Movie Recommender System

➔ Problem

  • With the rise of streaming services, viewers now have access to thousands of movies across platforms.
  • As a result, many viewers spend more time browsing than actually watching.
  • This problem can lead to frustration, lower satisfaction and less time spent on the platform.
  • Which can impact both the user experience and business performance.

➔ Solution

  • A content-based movie recommender system built with clean and modular code with proper version control.
  • It analyzes metadata of 5000+ movies to recommend top 5 similar titles based on a user selected input.
  • The system uses techniques like CountVectorizer and CosineSimilarity to recommend similar movies.
  • The project not only focuses on functionality but on building a clean and scalable solution.

➔ Impact

If this system gets scaled and integrated with a streaming service, this could :

  • Reduce the time users spend choosing what to watch.
  • Increase user engagement, watch time and customer satisfaction.
  • Help streaming platforms retain users by offering better personalized content.

Link  :  GitHub  |  Application


Netflix Data Analysis

➔ Objective

  • To analyze netflix content data, uncovering valuable insights into how the platform evolve its offerings over time.

➔ Some Key Findings

  • Cleaned and analyzed dataset of 8000+ netflix movies and tv shows.
  • More than 60% of the content on netflix is rated for mature audience only.
  • More than 20% of the movies and tv shows are uploaded on 1st day of the month.
  • More than 30% of the content is exclusive for united states.

Link  :  GitHub  |  Notebook


Supermarket Sales Analysis

➔ Objective

  • To analyze supermarket sales data, identifying key factors for improving profitability and operational efficiency.

➔ Some Key Findings

  • Analyzed purchasing pattern of 9000+ customers of supermarket.
  • More than 15% of the products sold were snacks.
  • More than 32% of the sales were occurred in west region of the supermarket.
  • Health and Soft drinks are the most profitable category in beverages.
  • November was the most profitable month contributing about 15% of the total annual profits.

Link  :  GitHub  |  Notebook

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