usfiscaldata
$
npx mdskill add K-Dense-AI/scientific-agent-skills/usfiscaldataQuery U.S. Treasury fiscal data without an API key.
- Retrieve national debt, spending, revenue, and exchange rates instantly.
- Connects to the Treasury Fiscal Data API with 54 datasets available.
- Executes REST requests using Python requests and pandas libraries.
- Returns structured JSON responses ready for analysis or display.
SKILL.md
.github/skills/usfiscaldataView on GitHub ↗
---
name: usfiscaldata
description: Query the U.S. Treasury Fiscal Data API for federal financial data including national debt, government spending, revenue, interest rates, exchange rates, and savings bonds. Access 54 datasets and 182 data tables with no API key required. Use when working with U.S. federal fiscal data, national debt tracking (Debt to the Penny), Daily Treasury Statements, Monthly Treasury Statements, Treasury securities auctions, interest rates on Treasury securities, foreign exchange rates, savings bonds, or any U.S. government financial statistics.
license: MIT
metadata:
skill-author: K-Dense Inc.
---
# U.S. Treasury Fiscal Data API
Free, open REST API from the U.S. Department of the Treasury for federal financial data. No API key or registration required.
**Base URL:** `https://api.fiscaldata.treasury.gov/services/api/fiscal_service`
## Quick Start
```python
import requests
import pandas as pd
BASE_URL = "https://api.fiscaldata.treasury.gov/services/api/fiscal_service"
# Get the current national debt (Debt to the Penny)
resp = requests.get(f"{BASE_URL}/v2/accounting/od/debt_to_penny", params={
"sort": "-record_date",
"page[size]": 1
})
data = resp.json()["data"][0]
print(f"Total public debt as of {data['record_date']}: ${float(data['tot_pub_debt_out_amt']):,.0f}")
```
```python
# Get Treasury exchange rates for recent quarters
resp = requests.get(f"{BASE_URL}/v1/accounting/od/rates_of_exchange", params={
"fields": "country_currency_desc,exchange_rate,record_date",
"filter": "record_date:gte:2024-01-01",
"sort": "-record_date",
"page[size]": 100
})
df = pd.DataFrame(resp.json()["data"])
```
## Authentication
None required. The API is fully open and free.
## Core Parameters
| Parameter | Example | Description |
|-----------|---------|-------------|
| `fields=` | `fields=record_date,tot_pub_debt_out_amt` | Select specific columns |
| `filter=` | `filter=record_date:gte:2024-01-01` | Filter records |
| `sort=` | `sort=-record_date` | Sort (prefix `-` for descending) |
| `format=` | `format=json` | Output format: `json`, `csv`, `xml` |
| `page[size]=` | `page[size]=100` | Records per page (default 100) |
| `page[number]=` | `page[number]=2` | Page index (starts at 1) |
**Filter operators:** `lt`, `lte`, `gt`, `gte`, `eq`, `in`
```python
# Multiple filters separated by comma
"filter=country_currency_desc:in:(Canada-Dollar,Mexico-Peso),record_date:gte:2024-01-01"
```
## Key Datasets & Endpoints
### Debt
| Dataset | Endpoint | Frequency |
|---------|----------|-----------|
| Debt to the Penny | `/v2/accounting/od/debt_to_penny` | Daily |
| Historical Debt Outstanding | `/v2/accounting/od/historical_debt_outstanding` | Annual |
| Schedules of Federal Debt | `/v1/accounting/od/schedules_fed_debt` | Monthly |
### Daily & Monthly Statements
| Dataset | Endpoint | Frequency |
|---------|----------|-----------|
| DTS Operating Cash Balance | `/v1/accounting/dts/operating_cash_balance` | Daily |
| DTS Deposits & Withdrawals | `/v1/accounting/dts/deposits_withdrawals_operating_cash` | Daily |
| Monthly Treasury Statement (MTS) | `/v1/accounting/mts/mts_table_1` (16 tables) | Monthly |
### Interest Rates & Exchange
| Dataset | Endpoint | Frequency |
|---------|----------|-----------|
| Average Interest Rates on Treasury Securities | `/v2/accounting/od/avg_interest_rates` | Monthly |
| Treasury Reporting Rates of Exchange | `/v1/accounting/od/rates_of_exchange` | Quarterly |
| Interest Expense on Public Debt | `/v2/accounting/od/interest_expense` | Monthly |
### Securities & Auctions
| Dataset | Endpoint | Frequency |
|---------|----------|-----------|
| Treasury Securities Auctions Data | `/v1/accounting/od/auctions_query` | As Needed |
| Treasury Securities Upcoming Auctions | `/v1/accounting/od/upcoming_auctions` | As Needed |
| Average Interest Rates | `/v2/accounting/od/avg_interest_rates` | Monthly |
### Savings Bonds
| Dataset | Endpoint | Frequency |
|---------|----------|-----------|
| I Bonds Interest Rates | `/v2/accounting/od/i_bond_interest_rates` | Semi-Annual |
| U.S. Treasury Savings Bonds: Issues, Redemptions & Maturities | `/v1/accounting/od/sb_issues_redemptions` | Monthly |
## Response Structure
```json
{
"data": [...],
"meta": {
"count": 100,
"total-count": 3790,
"total-pages": 38,
"labels": {"field_name": "Human Readable Label"},
"dataTypes": {"field_name": "STRING|NUMBER|DATE|CURRENCY"},
"dataFormats": {"field_name": "String|10.2|YYYY-MM-DD"}
},
"links": {"self": "...", "first": "...", "prev": null, "next": "...", "last": "..."}
}
```
**Note:** All values are returned as strings. Convert as needed (e.g., `float()`, `pd.to_datetime()`). Null values appear as the string `"null"`.
## Common Patterns
### Load all pages into a DataFrame
```python
def fetch_all_pages(endpoint, params=None):
params = params or {}
params["page[size]"] = 10000 # max size to minimize requests
resp = requests.get(f"{BASE_URL}{endpoint}", params=params)
result = resp.json()
df = pd.DataFrame(result["data"])
return df
```
### Aggregation (automatic sum)
Omitting grouping fields triggers automatic aggregation:
```python
# Sum all deposits/withdrawals by record_date and transaction type
resp = requests.get(f"{BASE_URL}/v1/accounting/dts/deposits_withdrawals_operating_cash", params={
"fields": "record_date,transaction_type,transaction_today_amt"
})
```
## Reference Files
- **[api-basics.md](references/api-basics.md)** — URL structure, HTTP methods, versioning, data types
- **[parameters.md](references/parameters.md)** — All parameters with detailed examples and edge cases
- **[datasets-debt.md](references/datasets-debt.md)** — Debt datasets: Debt to the Penny, Historical Debt, Schedules of Federal Debt, TROR
- **[datasets-fiscal.md](references/datasets-fiscal.md)** — Daily Treasury Statement, Monthly Treasury Statement, revenue, spending
- **[datasets-interest-rates.md](references/datasets-interest-rates.md)** — Average interest rates, exchange rates, TIPS/CPI, certified interest rates
- **[datasets-securities.md](references/datasets-securities.md)** — Treasury auctions, savings bonds, SLGS, buybacks
- **[response-format.md](references/response-format.md)** — Response objects, error handling, pagination, response codes
- **[examples.md](references/examples.md)** — Python, R, and pandas code examples for common use cases
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