# `mean` -- Replace missing cells with the per-series rolling mean. [Back to `imputation_policy` axis](../axes/imputation_policy.md) | [Back to L2](../index.md) | [Browse all options](../../browse_by_option.md) > Operational op under axis `imputation_policy`, sub-layer `l2_d`, layer `l2`. > Standalone callable: `mf.functions.mean_impute_clean`. ## Function signature ```python mf.functions.mean_impute_clean( panel: pd.DataFrame, ) -> pd.DataFrame ``` ## Parameters | name | type | default | constraint | description | |---|---|---|---|---| | `panel` | `pd.DataFrame` | — | — | Input panel. Each column is a variable; rows are time periods. Series is promoted to a single-column DataFrame internally. | ## Returns `pd.DataFrame` — scalar result. ## Behavior Simple, fast, deterministic. No iteration. Useful when the missing pattern is sparse. **When to use** Sparse missingness; quick smoke tests. ## In recipe context Set ``params.imputation_policy = "mean"`` in the relevant layer to activate this op within a recipe: ```yaml # Layer L2 recipe fragment params: imputation_policy: mean ``` ## References * macroforecast design Part 2, L2: 'preprocessing is the only layer with a strict A→B→C→D→E execution order; every cell follows the same pipeline.' ## Related ops See also: `em_factor`, `forward_fill` (on the same axis). _Last reviewed 2026-05-04 by macroforecast author._