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  1. big-data-analytics-kimia-farma big-data-analytics-kimia-farma Public

    The objective of the project is to evaluate the business performance of Kimia Farma from 2020 to 2023. Required to complete a series of challenges that involve importing data sets into BigQuery, cr…

    2

  2. eda-using-r-studio eda-using-r-studio Public

    This case study demonstrates the power of R for analyzing customer satisfaction data. R can be used to perform various analyses, from EDA to hypothesis testing, and can help businesses gain valuabl…

    R 1

  3. global-vaccine-tracker-dashboard global-vaccine-tracker-dashboard Public

    Explore global vaccination trends with my COVID-19 Tracker. Real-time data, interactive maps, and country-specific insights offer a holistic view. Navigate the dashboard here as we chart a data-dri…

    1

  4. hypothesis-testing-in-healthcare hypothesis-testing-in-healthcare Public

    A pharmaceutical company GlobalXYZ has just completed a randomized controlled drug trial. To promote transparency and reproducibility of the drug's outcome, they (GlobalXYZ) have presented the data…

    Jupyter Notebook 1

  5. eda-apple-store-dataset eda-apple-store-dataset Public

    This repository contains an exploratory data analysis (EDA) on Apple Store Apps data using SQL. The analysis includes various SQL queries to gain insights into the dataset, such as checking missing…

    2

  6. data-scientist-id-x-partners data-scientist-id-x-partners Public

    The objective of this project is to develop a machine learning model which can predict credit risk based on dataset provided, which includes loan data approved and rejected.

    Jupyter Notebook 1