Files
data_pipeline_for_YNAB/visuals/components.py
T
Jake c0b5e95d98 .
2025-04-08 19:43:50 +01:00

124 lines
4.2 KiB
Python

import polars as pl
import plotly.express as px
import pandas as pd
import logging
import sys
import config.exit_codes as ec
import datetime
try:
accounts = pl.read_parquet('data/warehouse/accounts.parquet')
categories = pl.read_parquet('data/warehouse/categories.parquet')
dates = pl.read_parquet('data/warehouse/dates.parquet')
payees = pl.read_parquet('data/warehouse/payees.parquet')
scheduled_transactions = pl.read_parquet('data/warehouse/scheduled_transactions.parquet')
transactions = pl.read_parquet('data/warehouse/transactions.parquet')
except FileNotFoundError:
logging.error('Data warehouse files not found. Run the data pipeline to create them.')
sys.exit(ec.MISSING_DATA_FILES)
try:
# Join transactions with accounts, categories, and payees to create a master DataFrame
master_transactions = transactions.join(categories, left_on='category_id', right_on='category_id', suffix='_category')\
.join(accounts, left_on='account_id', right_on='account_id', suffix='_account')\
.join(payees, left_on='payee_id', right_on='payee_id', suffix='_payee')\
.join(dates, left_on='transaction_date', right_on='date_id', suffix='_date')
except Exception as e:
logging.error(f'Error joining DataFrames: {e}')
sys.exit(ec.BAD_JOIN)
def update_dates(start_date, end_date):
master_data = master_transactions.filter(
(pl.col('year') >= start_date.year ) & (pl.col('year') <= end_date.year) &
(pl.col('month') >= start_date.month ) & (pl.col('month') <= end_date.month) &
(pl.col('day') >= start_date.day ) & (pl.col('day') <= end_date.day)
)
return master_data
def update_data(master_data):
# Create aggregations
spend_per_day = master_data.sql('''
SELECT
date,
year,
month,
day,
ABS(SUM(transaction_amount)) as total
FROM self
WHERE category_name != 'Inflow: Ready to Assign'
GROUP BY date, year, month, day
ORDER BY date DESC
'''
)
spend_per_category = master_data.sql('''
SELECT
category_name,
ABS(SUM(transaction_amount)) as total
FROM self
WHERE category_name != 'Inflow: Ready to Assign'
GROUP BY category_name
ORDER BY total DESC
'''
)
spend_per_payee = master_data.sql('''
SELECT
payee_name,
ABS(SUM(transaction_amount)) as total
FROM self
WHERE payee_name != 'Starting Balance'
AND transaction_amount < 0
GROUP BY payee_name
ORDER BY total DESC
'''
)
total_spend = master_data.sql('''
SELECT ABS(SUM(transaction_amount)) AS total
FROM self
WHERE payee_name != 'Starting Balance'
AND transaction_amount < 0
''').item()
# Convert DataFrame to list of dictionaries
spend_per_day_data = spend_per_day.to_dicts()
spend_per_category_data = spend_per_category.to_dicts()
spend_per_payee_data = spend_per_payee.to_dicts()
# Convert list of dictionaries to Pandas DataFrame
spend_per_day_df = pd.DataFrame(spend_per_day_data)
spend_per_category_df = pd.DataFrame(spend_per_category_data)
spend_per_payee_df = pd.DataFrame(spend_per_payee_data)
spend_per_day_line = px.line(spend_per_day_df, x="date", y="total")
spend_per_day_line.update_layout(
plot_bgcolor='black',
paper_bgcolor='black',
font_color='white'
)
spend_per_category_bar = px.bar(spend_per_category_df, x="category_name", y="total")
spend_per_category_bar.update_layout(
plot_bgcolor='black',
paper_bgcolor='black',
font_color='white'
)
spend_per_payee_bar = px.bar(spend_per_payee_df, x="payee_name", y="total")
spend_per_payee_bar.update_layout(
plot_bgcolor='black',
paper_bgcolor='black',
font_color='white'
)
data = {"spend_per_day_line": spend_per_day_line,
"spend_per_category_bar": spend_per_category_bar,
"spend_per_payee_bar": spend_per_payee_bar,
"total_spend": total_spend}
print(data)
return data