-
Run the following commands in the project's root directory to set up your database and model.
- To run ETL pipeline that cleans data and stores in database
python data/process_data.py data/disaster_messages.csv data/disaster_categories.csv data/DisasterResponse.db
- To run ML pipeline that trains classifier and saves
python models/train_classifier.py data/DisasterResponse.db models/classifier.pkl
- To run ETL pipeline that cleans data and stores in database
-
Run the following command in the app's directory to run your web app.
python run.py
-
Go to http://0.0.0.0:3001/
The files structure is arranged as below:
- README.md: read me file
- ETL Pipeline Preparation.ipynb: contains ETL pipeline preparation code
- ML Pipeline Preparation.ipynb: contains ML pipeline preparation code
- workspace
- \app
- run.py: flask file to run the app
- \templates
- master.html: main page of the web application
- go.html: result web page
- \data
- disaster_categories.csv: categories dataset
- disaster_messages.csv: messages dataset
- DisasterResponse.db: disaster response database
- process_data.py: ETL process
- \models
- train_classifier.py: classification code