| name | data-cleaning |
| description | Cleans and preprocesses financial time series data. Handles missing values, outliers, corporate actions (splits, dividends), date alignment, and data quality checks. Trigger when the user has messy financial data or needs to prepare data for analysis. |
| metadata | {"hermes":{"tags":["data-cleaning","preprocessing","quality","financial-data"],"category":"data"}} |
Data Cleaning
Prepares financial time series data for analysis by handling common data quality issues.
Real Code Reference
tradinglearn/utils/data_fetcher.py — fetch_stock_data() normalizes TDX raw data to clean DataFrame
tradinglearn/utils/simple_pytdx2.py — mock data generator with controllable noise
tradinglearn/pytdx2/client/quotationClient.py — raw data source (prices need scaling adjustments)
Capabilities
- Missing values: forward fill (ffill), linear interpolation, drop, or flag
- Outlier detection: z-score, IQR, moving average deviation
- Corporate actions: adjust prices for splits and dividends using adjustment factors
- Date alignment: merge multiple series on common trading dates (not calendar dates)
- Data quality: volume anomalies, price gaps > N%, stale data, duplicate rows
Typical Workflow
- Load raw data →
pd.DataFrame with columns: date, open, high, low, close, volume
- Check nulls →
df.isnull().sum(), decide fill strategy
- Detect outliers → flag bars where
abs(zscore(returns)) > 3
- Adjust for splits → apply adjustment factor series
- Align dates → reindex to intersection of all trading calendars
- Validate → no NaNs, no suspicious jumps, no future dates
Edge Cases
- Non-trading days: use trading calendar, not calendar days
- IPO dates: trim to actual listing date (data before is invalid)
- Suspended stocks: forward-fill last price or mark as NaN
- Pre/after-hours: decide whether to include or filter