DataframeStd / Aggregation Layer

Calculate standard deviation across specified columns, similar to pandas std() or numpy std().

Mathematical form: Where:

  • is the standard deviation
  • is the number of observations
  • is the mean
  • ddof adjusts degrees of freedom

Common applications:

  • Measuring data variability
  • Quality control monitoring
  • Risk assessment in finance
  • Scientific measurement uncertainty
  • Process control in manufacturing
  • Performance variation analysis

Provides multiple ddof configurations for detailed statistical analysis.

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Select

[column, ...]

Numeric columns to compute standard deviation for. If empty, processes all numeric columns. Non-numeric columns are ignored. Selected columns should contain data suitable for variance calculation.

DdofValues

[, ...]

Configuration for standard deviation calculation with specific degrees of freedom adjustment. Choice of ddof affects the bias in estimation:

  • ddof=1 (default): Sample standard deviation (unbiased)
  • ddof=0: Population standard deviation (biased)
1

Delta Degrees of Freedom (ddof) for standard deviation calculation. Common values:

  • 1: For sample statistics (n-1 denominator)
  • 0: For population statistics (n denominator) Higher values increase the estimated variance.