import json import boto3 import re import io from io import StringIO import pandas as pd ##add trigger window from extract bucket (on console?) ##suffix: must .csv --> reads only this file type that is uploaded to extract ##In-order to use PANDAS module in lambda function, a Lambda Layer needs to be attached to the AWS Lambda Function. ##need a function that normalises the data s3_resource = boto3.resource('s3') ##need this for a way of reuploading data after transformation def lambda_handler(event, context): s3_client = boto3.client('s3') # tables = ['sales_order', # 'transaction', # 'payment', # 'counterparty', # 'address', # 'staff', # 'purchase_order', # 'department', # 'currency', # 'design', # 'payment_type'] try: s3_bucket_name = event["Records"][0]["s3"]["bucket"]["name"] s3_file_name = event["Records"][0]["s3"]["object"]["key"] ## concatanating the file per table - most recent ## iterate through the subfolders ## table name prefix to iterate through the files written to that table object = s3_client.get_object(Bucket=s3_bucket_name, Key=s3_file_name) body = object['Body'] csv_string = body.read().decode('utf-8') dataframe = pd.read_csv(StringIO(csv_string)) ##this is the streaming body