"The Most Important Things Seem Invisible to Eyes." - Suisei Hoshimachi
This repository is used to storing and showcasing on How i would do Data Analytical 😄
data_fork
is used to download or get the dataset specifically from kaggle. Keep in mind, if we wanted to fork datasets from kaggle, we need a token (usually named kaggle.json)
- For SQL Approach you can look up on World University Rankings 2023
- For Analytical Approach by Pandas you can look up on 100-most-popular-english-movies-2023
- Thus for Publicity Dashboard, for example you can look up on automobile-dataset
- Each folder contains a dataset and a python notebook on how i basically do the analytics (Not all cases i apply the same approach)
- Followed by documentation or dashboard for example
- On 100-most-popular-english-movies-2023 i've added whole readme. inside that documentation are explained on what, how approach i use, insights and some to dos
- On automobile-dataset i've added dashboard as substitute for insight i've got
- On World University Rankings 2023, i peformed some SQL queries to Clean and Transform data
Therefore i RECOMEND to look out on those each cases as mentioned before since every case is likely handled differently.
- English Movies
- World University Rankings 2023
- Sales
- Automobiles
- Salary Dataset
- Groceries
- Shopping Cart
- Walmart
- Netflix
- Need to add Dashboard or conclusion of analysis that has been done (Cardio,Salary,Walmart)