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Data pipeline implementation to predict the average mark of a film from its features, using ML techniques

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Classification of MovieLens Tabular Data

Project for the course "Data Analytics" of the University of Bologna, A.Y. 2021/2022. In this project a data pipeline was implemented to predict the average mark of a film from its features, using Machine Learning techniques.

Developers

Setup

To execute the script, Python must be installed, and some external libraries must be downloaded and installed using the pip (or pip3) package manager:

pip install -r requirements.txt

We recommend the use of a virtual environment such as conda, for example, for package installation and project execution.

Environment variable

The file .env.example must be renamed to .env and the single variable TMDB_API_KEY must be set to the respective key of TMDB. You only need to specify it if you want to download the TMDB dataset via api calls.

Usage

python main.py -h

usage: main.py model [--random | --best]

Data Analytics project using MovieLens dataset.

positional arguments:
  {mlp,tree_based,svm,naive_bayes}
                        the name of the model

options:
  -h, --help            show this help message and exit
  -r, --random          demo purpose, use only one random configuration for hyperparams
  -b, --best            use the best training configuration

Notebooks

The notebooks contain fundamental project parts that have been implemented for greater understanding. In order to avoid errors, we recommend running the notebooks in alphabetical order.

Report

The report describing the various parts of the project from both an implementation and conceptual point of view is the following: main.pdf

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Data pipeline implementation to predict the average mark of a film from its features, using ML techniques

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