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cash-flow-forecaster
Forecast project cash flow based on schedule and cost data. Generate S-curves and payment projections.
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
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Forecast project cash flow based on schedule and cost data. Generate S-curves and payment projections.
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
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| name | cash-flow-forecaster |
| description | Forecast project cash flow based on schedule and cost data. Generate S-curves and payment projections. |
| homepage | https://datadrivenconstruction.io |
| metadata | {"openclaw":{"emoji":"💰","os":["darwin","linux","win32"],"homepage":"https://datadrivenconstruction.io","requires":{"bins":["python3"]}}} |
Poor cash flow management causes issues:
Generate cash flow forecasts from schedule and cost data, including S-curve projections and payment timing analysis.
import pandas as pd
import numpy as np
from datetime import datetime, date, timedelta
from typing import Dict, Any, List, Optional, Tuple
from dataclasses import dataclass, field
from enum import Enum
class CashFlowType(Enum):
"""Cash flow types."""
INFLOW = "inflow"
OUTFLOW = "outflow"
class PaymentTerms(Enum):
"""Standard payment terms."""
NET_30 = 30
NET_45 = 45
NET_60 = 60
NET_90 = 90
MILESTONE = 0
PROGRESS = 0
@dataclass
class CostItem:
"""Cost item for cash flow."""
item_id: str
description: str
total_amount: float
start_date: date
end_date: date
payment_terms: PaymentTerms
distribution: str = "linear" # linear, front_loaded, back_loaded, s_curve
retention_percent: float = 0.10
category: str = ""
@dataclass
class PaymentSchedule:
"""Scheduled payment."""
payment_id: str
item_id: str
description: str
amount: float
due_date: date
payment_type: CashFlowType
is_retention: bool = False
paid: bool = False
paid_date: Optional[date] = None
@dataclass
class CashFlowPeriod:
"""Cash flow for a period."""
period_start: date
period_end: date
inflows: float
outflows: float
net_cash_flow: float
cumulative_cash_flow: float
opening_balance: float
closing_balance: float
class CashFlowForecaster:
"""Forecast project cash flow."""
def __init__(self, project_name: str, project_start: date, project_end: date,
initial_balance: float = 0, currency: str = "USD"):
self.project_name = project_name
self.project_start = project_start
self.project_end = project_end
self.initial_balance = initial_balance
self.currency = currency
self.cost_items: List[CostItem] = []
self.revenue_items: List[CostItem] = []
self.payments: List[PaymentSchedule] = []
self._payment_counter = 0
def add_cost_item(self, item_id: str, description: str, total_amount: float,
start_date: date, end_date: date,
payment_terms: PaymentTerms = PaymentTerms.NET_30,
distribution: str = "linear",
retention: float = 0.10,
category: str = "") -> CostItem:
"""Add cost item (outflow)."""
item = CostItem(
item_id=item_id,
description=description,
total_amount=total_amount,
start_date=start_date,
end_date=end_date,
payment_terms=payment_terms,
distribution=distribution,
retention_percent=retention,
category=category
)
self.cost_items.append(item)
return item
def add_revenue_item(self, item_id: str, description: str, total_amount: float,
start_date: date, end_date: date,
payment_terms: PaymentTerms = PaymentTerms.NET_30,
distribution: str = "linear",
retention: float = 0.10) -> CostItem:
"""Add revenue item (inflow)."""
item = CostItem(
item_id=item_id,
description=description,
total_amount=total_amount,
start_date=start_date,
end_date=end_date,
payment_terms=payment_terms,
distribution=distribution,
retention_percent=retention
)
self.revenue_items.append(item)
return item
def _distribute_amount(self, total: float, start: date, end: date,
distribution: str, periods: int) -> List[float]:
"""Distribute amount over periods based on distribution type."""
if periods <= 0:
return [total]
if distribution == "linear":
return [total / periods] * periods
elif distribution == "front_loaded":
# More at the beginning
weights = [periods - i for i in range(periods)]
total_weight = sum(weights)
return [total * w / total_weight for w in weights]
elif distribution == "back_loaded":
# More at the end
weights = [i + 1 for i in range(periods)]
total_weight = sum(weights)
return [total * w / total_weight for w in weights]
elif distribution == "s_curve":
# S-curve distribution
x = np.linspace(-3, 3, periods)
weights = 1 / (1 + np.exp(-x))
weights = weights / weights.sum()
return [total * w for w in weights]
else:
return [total / periods] * periods
def generate_payment_schedule(self, period_type: str = "monthly") -> List[PaymentSchedule]:
"""Generate payment schedule from cost items."""
self.payments = []
# Process cost items (outflows)
for item in self.cost_items:
self._generate_item_payments(item, CashFlowType.OUTFLOW, period_type)
# Process revenue items (inflows)
for item in self.revenue_items:
self._generate_item_payments(item, CashFlowType.INFLOW, period_type)
return sorted(self.payments, key=lambda x: x.due_date)
def _generate_item_payments(self, item: CostItem, flow_type: CashFlowType,
period_type: str):
"""Generate payments for a single item."""
# Calculate number of periods
if period_type == "monthly":
months = (item.end_date.year - item.start_date.year) * 12 + \
(item.end_date.month - item.start_date.month) + 1
periods = max(1, months)
else: # weekly
days = (item.end_date - item.start_date).days
periods = max(1, days // 7)
# Distribute amount
net_amount = item.total_amount * (1 - item.retention_percent)
amounts = self._distribute_amount(net_amount, item.start_date, item.end_date,
item.distribution, periods)
# Create payments
current_date = item.start_date
for i, amount in enumerate(amounts):
# Calculate payment due date based on terms
if item.payment_terms == PaymentTerms.MILESTONE:
due_date = current_date
else:
due_date = current_date + timedelta(days=item.payment_terms.value)
self._payment_counter += 1
payment = PaymentSchedule(
payment_id=f"PAY-{self._payment_counter:05d}",
item_id=item.item_id,
description=f"{item.description} - Period {i+1}",
amount=amount,
due_date=due_date,
payment_type=flow_type
)
self.payments.append(payment)
# Move to next period
if period_type == "monthly":
if current_date.month == 12:
current_date = date(current_date.year + 1, 1, current_date.day)
else:
try:
current_date = date(current_date.year, current_date.month + 1, current_date.day)
except ValueError:
# Handle months with fewer days
current_date = date(current_date.year, current_date.month + 1, 28)
else:
current_date += timedelta(days=7)
# Add retention release at project end
if item.retention_percent > 0:
retention_amount = item.total_amount * item.retention_percent
self._payment_counter += 1
retention_payment = PaymentSchedule(
payment_id=f"PAY-{self._payment_counter:05d}",
item_id=item.item_id,
description=f"{item.description} - Retention Release",
amount=retention_amount,
due_date=self.project_end + timedelta(days=60),
payment_type=flow_type,
is_retention=True
)
self.payments.append(retention_payment)
def generate_cash_flow_forecast(self, period_type: str = "monthly") -> List[CashFlowPeriod]:
"""Generate cash flow forecast."""
if not self.payments:
self.generate_payment_schedule(period_type)
# Group payments by period
periods = []
current_date = self.project_start
cumulative = 0
balance = self.initial_balance
while current_date <= self.project_end + timedelta(days=90):
# Calculate period end
if period_type == "monthly":
if current_date.month == 12:
period_end = date(current_date.year + 1, 1, 1) - timedelta(days=1)
else:
period_end = date(current_date.year, current_date.month + 1, 1) - timedelta(days=1)
else:
period_end = current_date + timedelta(days=6)
# Filter payments for this period
period_payments = [p for p in self.payments
if current_date <= p.due_date <= period_end]
inflows = sum(p.amount for p in period_payments
if p.payment_type == CashFlowType.INFLOW)
outflows = sum(p.amount for p in period_payments
if p.payment_type == CashFlowType.OUTFLOW)
net = inflows - outflows
cumulative += net
period = CashFlowPeriod(
period_start=current_date,
period_end=period_end,
inflows=inflows,
outflows=outflows,
net_cash_flow=net,
cumulative_cash_flow=cumulative,
opening_balance=balance,
closing_balance=balance + net
)
periods.append(period)
balance = period.closing_balance
# Move to next period
current_date = period_end + timedelta(days=1)
return periods
def generate_s_curve(self) -> pd.DataFrame:
"""Generate S-curve data (cumulative costs over time)."""
forecast = self.generate_cash_flow_forecast()
# Costs only (outflows)
data = []
cumulative_cost = 0
total_cost = sum(item.total_amount for item in self.cost_items)
for period in forecast:
cumulative_cost += period.outflows
percent_complete = (cumulative_cost / total_cost * 100) if total_cost > 0 else 0
data.append({
'date': period.period_end,
'period_cost': period.outflows,
'cumulative_cost': cumulative_cost,
'percent_complete': round(percent_complete, 1),
'total_budget': total_cost
})
return pd.DataFrame(data)
def get_funding_requirements(self, buffer_percent: float = 0.10) -> Dict[str, Any]:
"""Calculate funding requirements."""
forecast = self.generate_cash_flow_forecast()
# Find peak negative cash flow
min_balance = min(p.closing_balance for p in forecast)
peak_funding = abs(min(0, min_balance))
# Add buffer
required_funding = peak_funding * (1 + buffer_percent)
# Monthly funding needs
monthly_needs = []
for period in forecast:
if period.net_cash_flow < 0:
monthly_needs.append({
'month': period.period_start.strftime('%Y-%m'),
'funding_needed': abs(period.net_cash_flow)
})
return {
'peak_funding_required': round(required_funding, 2),
'peak_funding_month': min(forecast, key=lambda x: x.closing_balance).period_start.strftime('%Y-%m'),
'total_outflows': sum(p.outflows for p in forecast),
'total_inflows': sum(p.inflows for p in forecast),
'monthly_funding_needs': monthly_needs,
'buffer_percent': buffer_percent
}
def export_forecast(self, output_path: str):
"""Export cash flow forecast to Excel."""
forecast = self.generate_cash_flow_forecast()
s_curve = self.generate_s_curve()
with pd.ExcelWriter(output_path, engine='openpyxl') as writer:
# Cash flow forecast
forecast_df = pd.DataFrame([{
'Period Start': p.period_start,
'Period End': p.period_end,
'Inflows': p.inflows,
'Outflows': p.outflows,
'Net Cash Flow': p.net_cash_flow,
'Cumulative': p.cumulative_cash_flow,
'Opening Balance': p.opening_balance,
'Closing Balance': p.closing_balance
} for p in forecast])
forecast_df.to_excel(writer, sheet_name='Cash Flow', index=False)
# S-curve
s_curve.to_excel(writer, sheet_name='S-Curve', index=False)
# Payment schedule
payments_df = pd.DataFrame([{
'ID': p.payment_id,
'Item': p.item_id,
'Description': p.description,
'Amount': p.amount,
'Due Date': p.due_date,
'Type': p.payment_type.value,
'Retention': p.is_retention
} for p in self.payments])
payments_df.to_excel(writer, sheet_name='Payments', index=False)
return output_path
from datetime import date
# Initialize forecaster
forecaster = CashFlowForecaster(
project_name="Office Tower",
project_start=date(2024, 1, 1),
project_end=date(2025, 12, 31),
initial_balance=5000000
)
# Add costs
forecaster.add_cost_item("CONC", "Concrete Work", 8000000,
date(2024, 3, 1), date(2024, 9, 30),
distribution="s_curve")
# Add revenue
forecaster.add_revenue_item("DRAW", "Owner Draws", 50000000,
date(2024, 1, 1), date(2025, 12, 31),
distribution="s_curve")
# Generate forecast
forecast = forecaster.generate_cash_flow_forecast()
print(f"Peak cash requirement: ${min(p.closing_balance for p in forecast):,.0f}")
s_curve = forecaster.generate_s_curve()
# Plot cumulative cost over time
funding = forecaster.get_funding_requirements(buffer_percent=0.15)
print(f"Required funding: ${funding['peak_funding_required']:,.0f}")
forecaster.export_forecast("cash_flow_forecast.xlsx")