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Create data/synthetic_data.py
Browse files- data/synthetic_data.py +89 -0
data/synthetic_data.py
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import pandas as pd
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import numpy as np
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from faker import Faker
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from datetime import datetime, timedelta
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import random
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fake = Faker()
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class SAPDataGenerator:
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def __init__(self):
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self.suppliers = [
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"Acme Corp", "Global Supplies Inc", "Tech Solutions Ltd",
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"Industrial Partners", "Premium Materials Co", "Swift Logistics",
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"Quality Components", "Reliable Vendors", "Innovative Systems",
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"Professional Services"
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]
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self.categories = [
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"Raw Materials", "IT Equipment", "Office Supplies",
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"Professional Services", "Maintenance", "Transportation",
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"Marketing", "Facilities", "Security", "Consulting"
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]
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self.plant_codes = ["1000", "2000", "3000", "4000", "5000"]
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self.company_codes = ["US01", "DE02", "IN03", "UK04", "SG05"]
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def generate_purchase_orders(self, n=1000):
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data = []
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for i in range(n):
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po_date = fake.date_between(start_date='-2y', end_date='today')
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delivery_date = po_date + timedelta(days=random.randint(7, 90))
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unit_price = round(random.uniform(10, 10000), 2)
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quantity = random.randint(1, 1000)
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total_value = round(unit_price * quantity, 2)
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data.append({
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'PO_Number': f"PO{str(i+1).zfill(8)}",
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'Supplier': random.choice(self.suppliers),
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'Category': random.choice(self.categories),
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'Plant': random.choice(self.plant_codes),
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'Company_Code': random.choice(self.company_codes),
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'PO_Date': po_date,
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'Delivery_Date': delivery_date,
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'Material': fake.catch_phrase(),
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'Quantity': quantity,
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'Unit_Price': unit_price,
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'Total_Value': total_value,
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'Currency': 'USD',
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'Status': random.choice(['Open', 'Delivered', 'Partially Delivered', 'Cancelled']),
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'Buyer': fake.name(),
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'Payment_Terms': random.choice(['Net 30', 'Net 60', '2/10 Net 30', 'Immediate']),
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'Delivery_Performance': round(random.uniform(85, 99), 1)
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})
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return pd.DataFrame(data)
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def generate_supplier_performance(self):
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data = []
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for supplier in self.suppliers:
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data.append({
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'Supplier': supplier,
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'On_Time_Delivery': round(random.uniform(85, 98), 1),
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'Quality_Score': round(random.uniform(80, 99), 1),
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'Cost_Performance': round(random.uniform(90, 99), 1),
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'Total_Spend_YTD': round(random.uniform(100000, 5000000), 2),
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'Active_Contracts': random.randint(5, 50),
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'Risk_Score': random.choice(['Low', 'Medium', 'High']),
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'Certification_Status': random.choice(['ISO 9001', 'ISO 14001', 'Multiple', 'None'])
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})
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return pd.DataFrame(data)
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def generate_spend_analysis(self):
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months = ['Jan', 'Feb', 'Mar', 'Apr', 'May', 'Jun',
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'Jul', 'Aug', 'Sep', 'Oct', 'Nov', 'Dec']
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data = []
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for month in months:
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for category in self.categories:
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data.append({
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'Month': month,
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'Category': category,
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'Spend': round(random.uniform(50000, 500000), 2),
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'Budget': round(random.uniform(60000, 550000), 2),
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'Variance': round(random.uniform(-10, 15), 1)
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})
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return pd.DataFrame(data)
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