bhupeshmahara / finance-complaint

In Progress

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Finance-Complaint

Sensor-Fault-Detection

Problem Statement

Complaints can give us insights into problems people are experiencing in the marketplace and help us to undestand the reason and do necessary modification in exisiting financial product if required.

Solution Proposed

By understanding existing complaints registered against financial products we can create an ML model that can help us to identify newly registered complaints whether they are problematic or not and accordingly company can take quick action to resolve the issue, and satisfy the customer's need.

The problem is to identify registered complaint will be disputed by customer or not.

Tech Stack Used

  1. Python
  2. PySpark
  3. PySpark ML
  4. Airflow as Scheduler
  5. MongoDB

Infrastructure Required.

  1. GCP Compute Engine
  2. S3 Bucket
  3. Artifact Registry

Dashboarding

  1. Grafana
  2. Prometheus
  3. Node Exporter
  4. Promtail
  5. Loki

How to run?

WorkFLow setup

Create .env file

AWS_ACCESS_KEY_ID=
AWS_SECRET_ACCESS_KEY=
MONGO_DB_URL=
TRAINING=1
PREDICTION=1

1- Trigger 0- Bypass

Build docker image

docker build -t tc:lts .

Lauch docker image

docker run -it -v $(pwd)/finance_artifact:/app/finance_artifact  --env-file=$(pwd)/.env fc:lts

Steps to run project in local system

  1. Build docker image
    docker build -t fc:lts .
    
  2. Set envment variable
export AWS_ACCESS_KEY_ID=
export AWS_SECRET_ACCESS_KEY=
export MONGO_DB_URL=
export AWS_DEFAULT_REGION="ap-south-1"
export IMAGE_NAME=fc:lts
  1. To start your application
docker-compose up
  1. To stop your application
docker-compose down

In your local system to setup airflow

AIRFLOW SETUP

How to setup airflow

Set airflow directory

export AIRFLOW_HOME="/home/avnish/census_consumer_project/census_consumer_complaint/airflow"

To install airflow

pip install apache-airflow

To configure databse

airflow db init

To create login user for airflow

airflow users create  -e avnish@ineuron.ai -f Avnish -l Yadav -p admin -r Admin  -u admin

To start scheduler

airflow scheduler

To launch airflow server

airflow webserver -p <port_number>

Update in airflow.cfg

enable_xcom_pickling = True

About

In Progress

License:Apache License 2.0


Languages

Language:Jupyter Notebook 72.7%Language:Python 25.7%Language:HCL 1.4%Language:Dockerfile 0.2%Language:Shell 0.0%