| name | data-fetcher |
| description | Fetch economic data from FRED, World Bank, BLS, OECD, and Yahoo Finance |
Data-Fetcher
Purpose
This skill helps economists fetch data from major economic data APIs including FRED (Federal Reserve Economic Data), World Bank, BLS (Bureau of Labor Statistics), OECD, and Yahoo Finance. It generates clean, documented Python code with proper error handling.
When to Use
- Downloading macroeconomic indicators
- Building custom datasets from multiple sources
- Automating data updates for ongoing projects
- Fetching cross-country panel data
Instructions
Step 0: API Key Setup Check (Run Before Anything Else)
Before generating any code, Claude must check for required API keys.
- Read the file
[plugin_root]/.env (same directory as .mcp.json).
- Check for
FRED_API_KEY and BLS_API_KEY.
If FRED_API_KEY is missing or blank:
If BLS_API_KEY is missing:
- Inform the user it's optional but increases BLS rate limits, and they can get one free at https://www.bls.gov/developers/. If they want to add it later, just paste it and say "save my BLS key".
If .env exists and keys are already set: load them silently and inject them into all generated code via python-dotenv. Use load_dotenv() with no arguments so Python searches up from the current working directory automatically — never hardcode the plugin root path:
from dotenv import load_dotenv
load_dotenv()
The .env file stores keys locally and is never committed to version control. Generated scripts always read keys from environment variables — never hardcoded.
Step 1: Identify Data Requirements
Ask the user:
- What data do you need? (GDP, unemployment, inflation, etc.)
- What time period and frequency?
- What countries/regions?
- Preferred output format? (CSV, DataFrame, etc.)
Step 2: Select Appropriate API
| Data Type | Best Source | Package |
|---|
| US macro | FRED | fredapi |
| Global development | World Bank | wbdata |
| Labor statistics | BLS | requests (BLS API v2) |
| Cross-country OECD | OECD | requests (OECD SDMX API) |
| Cross-country macro/finance | IMF | imf-reader |
| Financial / asset prices | Yahoo Finance | yfinance |
Step 3: Generate Clean Code
Include:
- API key handling (environment variables)
- Error handling for API failures
- Data cleaning and formatting
- Documentation of series definitions
Example Output
"""
Economic Data Fetcher
=====================
Downloads macroeconomic data from FRED and World Bank APIs.
Requires: fredapi, wbdata, pandas
Setup: Set FRED_API_KEY environment variable
Get a free key from: https://fred.stlouisfed.org/docs/api/api_key.html
"""
import os
import pandas as pd
from datetime import datetime, timedelta
from typing import List, Optional, Dict
def fetch_fred_series(
series_ids: List[str],
start_date: str = "2000-01-01",
end_date: Optional[str] = None,
api_key: Optional[str] = None
) -> pd.DataFrame:
"""
Fetch time series data from FRED.
Parameters
----------
series_ids : list of str
FRED series IDs (e.g., ['GDP', 'UNRATE', 'CPIAUCSL'])
start_date : str
Start date in YYYY-MM-DD format
end_date : str, optional
End date (defaults to today)
api_key : str, optional
FRED API key (defaults to FRED_API_KEY env var)
Returns
-------
pd.DataFrame
DataFrame with date index and series as columns
Example
-------
>>> df = fetch_fred_series(['GDP', 'UNRATE'], '2010-01-01')
"""
try:
from fredapi import Fred
except ImportError:
raise ImportError("Install fredapi: pip install fredapi")
api_key = api_key or os.environ.get('FRED_API_KEY')
if not api_key:
raise ValueError(
"FRED API key required. Set FRED_API_KEY environment variable "
"or pass api_key parameter. Get a key at: "
"https://fred.stlouisfed.org/docs/api/api_key.html"
)
fred = Fred(api_key=api_key)
end_date = end_date or datetime.now().strftime('%Y-%m-%d')
data = {}
for series_id in series_ids:
try:
series = fred.get_series(
series_id,
observation_start=start_date,
observation_end=end_date
)
data[series_id] = series
print(f"✓ Downloaded {series_id}")
except Exception as e:
print(f"✗ Failed to download {series_id}: {e}")
df = pd.DataFrame(data)
df.index.name = 'date'
return df
FRED_SERIES = {
'GDP': 'Gross Domestic Product',
'GDPC1': 'Real GDP',
'GDPPOT': 'Real Potential GDP',
'UNRATE': 'Unemployment Rate',
'PAYEMS': 'Total Nonfarm Payrolls',
'CIVPART': 'Labor Force Participation Rate',
'CPIAUCSL': 'Consumer Price Index',
'PCEPI': 'PCE Price Index',
'CPILFESL': 'Core CPI',
'FEDFUNDS': 'Federal Funds Rate',
'DGS10': '10-Year Treasury Rate',
'T10Y2Y': '10Y-2Y Treasury Spread',
'M2SL': 'M2 Money Stock',
'TOTRESNS': 'Total Reserves',
}
def fetch_world_bank_data(
indicators: Dict[str, str],
countries: List[str] = ['USA', 'GBR', 'DEU', 'FRA', 'JPN'],
start_year: int = 2000,
end_year: Optional[int] = None
) -> pd.DataFrame:
"""
Fetch indicator data from World Bank.
Parameters
----------
indicators : dict
Dict mapping indicator codes to names
e.g., {'NY.GDP.PCAP.CD': 'gdp_per_capita'}
countries : list of str
ISO 3-letter country codes
start_year : int
Start year
end_year : int, optional
End year (defaults to current year)
Returns
-------
pd.DataFrame
Panel data with country and year
Example
-------
>>> indicators = {
... 'NY.GDP.PCAP.CD': 'gdp_per_capita',
... 'SP.POP.TOTL': 'population'
... }
>>> df = fetch_world_bank_data(indicators, ['USA', 'GBR'])
"""
try:
import wbdata
except ImportError:
raise ImportError("Install wbdata: pip install wbdata")
import datetime
end_year = end_year or datetime.datetime.now().year
date_range = (datetime.datetime(start_year, 1, 1), datetime.datetime(end_year, 12, 31))
all_data = []
for indicator_code, indicator_name in indicators.items():
try:
data = wbdata.get_dataframe(
{indicator_code: indicator_name},
country=countries,
date=date_range,
)
data = data.reset_index()
all_data.append(data)
print(f"✓ Downloaded {indicator_name}")
except Exception as e:
print(f"✗ Failed to download {indicator_name}: {e}")
if all_data:
df = all_data[0]
for other_df in all_data[1:]:
df = df.merge(other_df, on=['country', 'date'], how='outer')
return df
return pd.DataFrame()
WORLD_BANK_INDICATORS = {
'NY.GDP.PCAP.CD': 'GDP per capita (current US$)',
'NY.GDP.PCAP.KD.ZG': 'GDP per capita growth (%)',
'NY.GDP.MKTP.KD.ZG': 'GDP growth (%)',
'SP.POP.TOTL': 'Population, total',
'SP.URB.TOTL.IN.ZS': 'Urban population (%)',
'NE.TRD.GNFS.ZS': 'Trade (% of GDP)',
'BX.KLT.DINV.WD.GD.ZS': 'FDI, net inflows (% of GDP)',
'SE.XPD.TOTL.GD.ZS': 'Education expenditure (% of GDP)',
'SH.XPD.CHEX.GD.ZS': 'Health expenditure (% of GDP)',
'SI.POV.GINI': 'Gini index',
'SI.POV.DDAY': 'Poverty headcount ratio ($1.90/day)',
}
if __name__ == "__main__":
us_macro = fetch_fred_series(
series_ids=['GDP', 'UNRATE', 'CPIAUCSL', 'FEDFUNDS'],
start_date='2010-01-01'
)
print("\nUS Macro Data (FRED):")
print(us_macro.tail())
us_macro.to_csv('data/us_macro_fred.csv')
print("\nSaved to data/us_macro_fred.csv")
indicators = {
'NY.GDP.PCAP.CD': 'gdp_per_capita',
'SP.POP.TOTL': 'population',
'NY.GDP.MKTP.KD.ZG': 'gdp_growth'
}
cross_country = fetch_world_bank_data(
indicators=indicators,
countries=['USA', 'GBR', 'DEU', 'FRA', 'JPN', 'CHN', 'IND', 'BRA'],
start_year=2000
)
print("\nCross-Country Data (World Bank):")
print(cross_country.head(10))
cross_country.to_csv('data/cross_country_wb.csv', index=False)
print("\nSaved to data/cross_country_wb.csv")
BLS Data Fetcher
"""
BLS (Bureau of Labor Statistics) Data Fetcher
==============================================
Fetches labor market data from BLS Public Data API v2.
Requires: requests, pandas
API key (free): https://www.bls.gov/developers/
Note: BLS API v2 limits each request to a 20-year window.
This fetcher automatically chunks longer ranges into 20-year batches.
"""
import os
import math
import requests
import pandas as pd
from typing import List, Optional
def fetch_bls_series(
series_ids: List[str],
start_year: str = "2010",
end_year: Optional[str] = None,
api_key: Optional[str] = None
) -> pd.DataFrame:
"""
Fetch time series data from BLS API v2.
Automatically splits requests exceeding the 20-year API limit.
Parameters
----------
series_ids : list of str
BLS series IDs (e.g., ['LNS14000000'] for unemployment rate)
start_year : str
Start year (YYYY)
end_year : str, optional
End year (defaults to current year)
api_key : str, optional
BLS API key (defaults to BLS_API_KEY env var)
Example
-------
>>> df = fetch_bls_series(['LNS14000000', 'CES0000000001'], '2000')
"""
import datetime
api_key = api_key or os.environ.get('BLS_API_KEY')
end_yr = int(end_year or datetime.datetime.now().year)
start_yr = int(start_year)
MAX_YEARS = 20
chunks = []
chunk_start = start_yr
while chunk_start <= end_yr:
chunk_end = min(chunk_start + MAX_YEARS - 1, end_yr)
chunks.append((str(chunk_start), str(chunk_end)))
chunk_start = chunk_end + 1
url = "https://api.bls.gov/publicAPI/v2/timeseries/data/"
all_records = []
for s_yr, e_yr in chunks:
payload = {
"seriesid": series_ids,
"startyear": s_yr,
"endyear": e_yr,
}
if api_key:
payload["registrationkey"] = api_key
response = requests.post(url, json=payload)
response.raise_for_status()
data = response.json()
if data["status"] != "REQUEST_SUCCEEDED":
raise ValueError(f"BLS API error: {data.get('message', 'Unknown error')}")
for series in data["Results"]["series"]:
sid = series["seriesID"]
for obs in series["data"]:
all_records.append({
"series_id": sid,
"year": int(obs["year"]),
"period": obs["period"],
"value": float(obs["value"]) if obs["value"] != "-" else None,
})
df = pd.DataFrame(all_records)
df = df[df["period"].str.match(r"M(0[1-9]|1[0-2])")]
df["date"] = pd.to_datetime(
df["year"].astype(str) + df["period"].str.replace("M", "-"), format="%Y-%m"
)
return (
df.pivot(index="date", columns="series_id", values="value")
.sort_index()
.dropna(how="all")
)
BLS_SERIES = {
"LNS14000000": "Unemployment Rate (seasonally adjusted)",
"CES0000000001": "Total Nonfarm Employment (thousands)",
"LNS11300000": "Labor Force Participation Rate",
"CES0500000003": "Average Hourly Earnings, Private Sector",
"CUUR0000SA0": "CPI-U, All Urban Consumers",
"PCU0000000000": "Producer Price Index, All Commodities (not seasonally adjusted)",
}
IMF Data Fetcher
"""
IMF Data Fetcher
================
Fetches cross-country macro/financial data from the IMF Data Services API.
Requires: imf-reader, pandas
No API key required.
Install: pip install imf-reader
Key databases:
IFS — International Financial Statistics (exchange rates, reserves, money)
WEO — World Economic Outlook (GDP, inflation, current account, debt)
BOP — Balance of Payments Statistics
GFSR — Global Financial Stability Report data
DOT — Direction of Trade Statistics
Browse all databases and series codes at:
https://dataservices.imf.org/REST/SDMX_JSON.svc/Dataflow
"""
import pandas as pd
from typing import List, Optional
def fetch_imf_data(
database: str,
indicators: List[str],
countries: List[str],
start_year: Optional[int] = None,
end_year: Optional[int] = None,
) -> pd.DataFrame:
"""
Fetch data from IMF via imf-reader.
Parameters
----------
database : str
IMF database code, e.g. 'IFS', 'WEO', 'BOP', 'DOT'
indicators : list of str
IMF series/indicator codes within the database
e.g. ['PCPI_IX'] for CPI in IFS
countries : list of str
ISO 2-letter country codes, e.g. ['US', 'GB', 'DE']
start_year : int, optional
Start year
end_year : int, optional
End year
Returns
-------
pd.DataFrame
Long-format panel: columns include country, indicator, date, value
Examples
--------
# CPI and exchange rate for US, UK, Germany from IFS
>>> df = fetch_imf_data(
... database='IFS',
... indicators=['PCPI_IX', 'ENDE_XDC_USD_RATE'],
... countries=['US', 'GB', 'DE'],
... start_year=2000,
... end_year=2023,
... )
"""
try:
import imf_reader
except ImportError:
raise ImportError("Install imf-reader: pip install imf-reader")
frames = []
for indicator in indicators:
try:
raw = imf_reader.get_data(database, indicator, countries)
df = raw.copy()
df["indicator"] = indicator
frames.append(df)
print(f"✓ Downloaded {database}/{indicator}")
except Exception as e:
print(f"✗ Failed {database}/{indicator}: {e}")
if not frames:
return pd.DataFrame()
result = pd.concat(frames, ignore_index=True)
if "date" in result.columns:
result["year"] = pd.to_datetime(result["date"], errors="coerce").dt.year
if start_year:
result = result[result["year"] >= start_year]
if end_year:
result = result[result["year"] <= end_year]
return result
IMF_INDICATORS = {
"IFS": {
"PCPI_IX": "Consumer Price Index",
"ENDE_XDC_USD_RATE": "Exchange Rate (LCU per USD, period average)",
"RAFA_USD": "Foreign Reserves (USD)",
"FMB_XDC": "Broad Money (M2, LCU)",
"FITB_3M_PA": "3-Month Treasury Bill Rate (%)",
},
"WEO": {
"NGDP_RPCH": "Real GDP growth (%)",
"PCPIPCH": "Inflation, avg consumer prices (%)",
"BCA_NGDPD": "Current Account Balance (% of GDP)",
"GGXWDG_NGDP": "General Gov. Gross Debt (% of GDP)",
"LUR": "Unemployment Rate (%)",
},
"DOT": {
"TXG_FOB_USD": "Exports of Goods (USD)",
"TMG_CIF_USD": "Imports of Goods (USD)",
},
}
OECD Data Fetcher
"""
OECD Data Fetcher
=================
Fetches cross-country data from the OECD SDMX REST API (v2).
Requires: requests, pandas
No API key required.
Note: The old stats.oecd.org endpoint is deprecated.
This implementation uses the new sdmx.oecd.org endpoint.
Find dataset/dataflow IDs at: https://data-explorer.oecd.org
"""
import requests
import pandas as pd
from io import StringIO
from typing import List, Optional
def fetch_oecd_data(
dataflow: str,
key: str = "all",
start_period: Optional[str] = None,
end_period: Optional[str] = None,
) -> pd.DataFrame:
"""
Fetch data from OECD SDMX REST API v2.
Parameters
----------
dataflow : str
Full dataflow reference, format: 'AGENCY,DATAFLOW_ID'
e.g. 'OECD.SDD.NAD,DSD_NAMAIN10@DF_TABLE1_EXPENDITURE_T10'
Find IDs at: https://data-explorer.oecd.org
key : str
Filter key in SDMX key notation (default 'all' for all data)
e.g. 'A.AUS+USA..' for annual data for Australia and US
start_period : str, optional
Start period, e.g. '2010' or '2010-Q1'
end_period : str, optional
End period, e.g. '2023' or '2023-Q4'
Returns
-------
pd.DataFrame
Long-format panel with country, time, value columns
Examples
--------
# Annual GDP (expenditure approach) for USA and GBR, 2010-2023
>>> df = fetch_oecd_data(
... dataflow='OECD.SDD.NAD,DSD_NAMAIN10@DF_TABLE1_EXPENDITURE_T10',
... key='A.USA+GBR...',
... start_period='2010',
... end_period='2023'
... )
"""
base = "https://sdmx.oecd.org/public/rest/data"
url = f"{base}/{dataflow}/{key}?format=csvfilewithlabels"
if start_period:
url += f"&startPeriod={start_period}"
if end_period:
url += f"&endPeriod={end_period}"
resp = requests.get(url, timeout=120)
resp.raise_for_status()
df = pd.read_csv(StringIO(resp.text))
df.columns = df.columns.str.lower().str.strip()
return df
OECD_DATAFLOWS = {
"National Accounts (GDP, components)":
"OECD.SDD.NAD,DSD_NAMAIN10@DF_TABLE1_EXPENDITURE_T10",
"Labour Force Statistics":
"OECD.ELS.SAE,DSD_LFS@DF_IALFS_UNE_M",
"Main Economic Indicators":
"OECD.SDD.STES,DSD_KEI@DF_KEI",
"Health Statistics":
"OECD.ELS.HD,DSD_HEALTH_STAT@DF_HEALTH_STATUS",
"Revenue Statistics (tax-to-GDP)":
"OECD.CTF,DSD_REV@DF_REV",
}
Yahoo Finance Data Fetcher
"""
Yahoo Finance Data Fetcher
==========================
Fetches financial and commodity price data.
Requires: yfinance, pandas
No API key required.
"""
import pandas as pd
from typing import List, Optional
def fetch_yahoo_finance(
tickers: List[str],
start_date: str = "2010-01-01",
end_date: Optional[str] = None,
price_col: str = "Adj Close",
) -> pd.DataFrame:
"""
Fetch price data from Yahoo Finance.
Parameters
----------
tickers : list of str
Yahoo Finance ticker symbols (e.g., ['^GSPC', 'AAPL', 'GC=F'])
start_date : str
Start date in YYYY-MM-DD format
end_date : str, optional
End date (defaults to today)
price_col : str
Which price column to return.
Use 'Adj Close' (default) for dividend/split-adjusted prices,
or 'Close', 'Open', 'High', 'Low', 'Volume'.
Note: 'Adj Close' requires auto_adjust=False (the default here).
Returns
-------
pd.DataFrame
Wide-format DataFrame with tickers as columns
Example
-------
>>> df = fetch_yahoo_finance(['^GSPC', '^VIX', 'GC=F'], '2015-01-01')
"""
try:
import yfinance as yf
except ImportError:
raise ImportError("Install yfinance: pip install yfinance")
import datetime
end_date = end_date or datetime.date.today().isoformat()
raw = yf.download(tickers, start=start_date, end=end_date, auto_adjust=False)
if isinstance(raw.columns, pd.MultiIndex):
df = raw[price_col]
if isinstance(df, pd.Series):
df = df.to_frame(name=tickers[0])
else:
df = raw[[price_col]].rename(columns={price_col: tickers[0]})
return df.dropna(how="all")
YAHOO_TICKERS = {
"^GSPC": "S&P 500",
"^DJI": "Dow Jones Industrial Average",
"^IXIC": "NASDAQ Composite",
"^VIX": "CBOE Volatility Index (VIX)",
"GC=F": "Gold Futures",
"CL=F": "Crude Oil (WTI) Futures",
"EURUSD=X": "EUR/USD Exchange Rate",
"GBPUSD=X": "GBP/USD Exchange Rate",
"^TNX": "10-Year Treasury Yield",
"^TYX": "30-Year Treasury Yield",
}
Requirements
Python Packages
pip install fredapi wbdata pandas requests yfinance imf-reader python-dotenv
API Keys
Keys are stored in [plugin_root]/.env and loaded automatically via Step 0. Never hardcode them in scripts.
Best Practices
- Use Step 0 — always run the API key check before generating code; inject keys via
python-dotenv, never hardcode
- Cache data locally — save raw downloads to
data/raw/ and load from cache on subsequent runs to avoid hitting rate limits
- Document series IDs — always include the human-readable name next to every series ID (e.g.,
UNRATE # Unemployment Rate)
- Mind data vintages — FRED, BLS, and IMF data are revised; note the download date and consider using vintage/real-time APIs for forecasting research
- Match frequencies explicitly — don't silently merge monthly and quarterly series; resample to a common frequency with a deliberate aggregation method (mean, end-of-period, sum)
- Chunk long BLS requests — BLS API v2 hard-limits to 20 years per call; use the chunked
fetch_bls_series function which handles this automatically
Common Pitfalls
- ❌ Hardcoding API keys in scripts — always use environment variables
- ❌ Assuming
auto_adjust=True preserves 'Adj Close' in yfinance — it doesn't; use auto_adjust=False to keep the 'Adj Close' column
- ❌ Using the deprecated OECD
stats.oecd.org endpoint — use sdmx.oecd.org/public/rest/ instead
- ❌ Ignoring the BLS 20-year per-request limit — requests spanning >20 years will be silently truncated
- ❌ Mixing data frequencies without explicit resampling
- ❌ Ignoring data revisions when doing real-time or forecast evaluation research
Related Skills & Commands
- data-cleaning: Clean and transform the fetched data for analysis
- stats: Generate summary statistics of downloaded data
- /analyze: Start a full analysis workflow with your dataset
- panel-data: If you fetched cross-country panel data
- time-series: If you fetched time series macro data