This tutorial is built from the original feast-aws-credit-scoring-tutorial.
This tutorial demonstrates the use of Feast as part of a real-time credit scoring application.
- The primary training dataset is a loan table. This table contains historic loan data with accompanying features. The dataset also contains a target variable, namely whether a user has defaulted on their loan.
- Feast is used during training to enrich the loan table with zipcode and credit history features from the data folder.
- Feast is also used to serve the latest zipcode and credit history features for online credit scoring using Redis
- Python 3.11
- Registry: Postgresql
- Offline Storage: duckdb
- Online Storage: Redis
You can setup the storages with Podman or Docker:
- Setup Postgresql and Redis by Podman:
podman pull docker://bitnami/postgresql
podman run -d -p 5432:5432 --name postgresql -e "ALLOW_EMPTY_PASSWORD=yes" docker.io/bitnami/postgresql:latest
podman pull docker://bitnami/redis:latest
podman run -d -p 6379:6379 --name redis docker.io/bitnami/redis:latest
- Setup Postgresql and Redis by Docker:
docker pull bitnami/postgresql:latest
docker run -d -p 5432:5432 --name postgresql -e "ALLOW_EMPTY_PASSWORD=yes" bitnami/postgresql:latest
docker pull bitnami/redis:latest
docker run -d -p 6379:6379 --name redis -e "ALLOW_EMPTY_PASSWORD=yes" bitnami/redis:latest
Please create a database named "feast" for Feast's SQL Registry service. It is required by the Registry setting in the feature_store.yaml. Feel free to use other names, but to make sure that they are the same and consistent.
This can be done via:
% psql postgresql://postgres@localhost:5432
psql (13.4, server 16.3)
WARNING: psql major version 13, server major version 16.
Some psql features might not work.
Type "help" for help.
postgres=# create database feast
postgres-# ;
CREATE DATABASE
Install Feast using pip
pip install -r requirements.txt
We have already set up a feature repository in feature_repo/. As a result, all we have to do is configure the feature_store.yaml/ in the feature repository. Please set the connection string of the Postgresql and Redis according to your local infra setup.
Deploy the feature store by running apply
from within the feature_repo/
folder
cd feature_repo/
feast apply
Deploying infrastructure for credit_history
Deploying infrastructure for zipcode_features
Next we load features into the online store using the materialize-incremental
command. This command will load the
latest feature values from a data source into the online store.
CURRENT_TIME=$(date -u +"%Y-%m-%dT%H:%M:%S")
feast materialize-incremental $CURRENT_TIME
Return to the root of the repository
cd ..
Finally, we train the model using a combination of loan data from the parque file under the ./data
folder and our zipcode and credit history features from duckdb (with Filesource). And then we test online inference by reading those same features from Redis.
python run.py
The script should then output the result of a single loan application
loan rejected!
Once the credit scoring model has been trained it can be used for interactive loan applications using Streamlit:
Simply start the Streamlit application
streamlit run streamlit_app.py
Then navigate to the URL on which Streamlit is being served. You should see a user interface through which loan applications can be made:
You can run
python app.py
And you'll be able to see the endpoints by going to http://127.0.0.1:8888/docs#/.