polars_io/predicates.rs
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use polars_core::prelude::*;
#[cfg(feature = "serde")]
use serde::{Deserialize, Serialize};
pub trait PhysicalIoExpr: Send + Sync {
/// Take a [`DataFrame`] and produces a boolean [`Series`] that serves
/// as a predicate mask
fn evaluate_io(&self, df: &DataFrame) -> PolarsResult<Series>;
/// Get the variables that are used in the expression i.e. live variables.
/// This can contain duplicates.
fn live_variables(&self) -> Option<Vec<PlSmallStr>>;
/// Can take &dyn Statistics and determine of a file should be
/// read -> `true`
/// or not -> `false`
fn as_stats_evaluator(&self) -> Option<&dyn StatsEvaluator> {
None
}
}
pub trait StatsEvaluator {
fn should_read(&self, stats: &BatchStats) -> PolarsResult<bool>;
}
#[cfg(any(feature = "parquet", feature = "ipc"))]
pub fn apply_predicate(
df: &mut DataFrame,
predicate: Option<&dyn PhysicalIoExpr>,
parallel: bool,
) -> PolarsResult<()> {
if let (Some(predicate), false) = (&predicate, df.get_columns().is_empty()) {
let s = predicate.evaluate_io(df)?;
let mask = s.bool().expect("filter predicates was not of type boolean");
if parallel {
*df = df.filter(mask)?;
} else {
*df = df._filter_seq(mask)?;
}
}
Ok(())
}
/// Statistics of the values in a column.
///
/// The following statistics are tracked for each row group:
/// - Null count
/// - Minimum value
/// - Maximum value
#[derive(Debug, Clone)]
#[cfg_attr(feature = "serde", derive(Serialize, Deserialize))]
pub struct ColumnStats {
field: Field,
// Each Series contains the stats for each row group.
null_count: Option<Series>,
min_value: Option<Series>,
max_value: Option<Series>,
}
impl ColumnStats {
/// Constructs a new [`ColumnStats`].
pub fn new(
field: Field,
null_count: Option<Series>,
min_value: Option<Series>,
max_value: Option<Series>,
) -> Self {
Self {
field,
null_count,
min_value,
max_value,
}
}
/// Constructs a new [`ColumnStats`] with only the [`Field`] information and no statistics.
pub fn from_field(field: Field) -> Self {
Self {
field,
null_count: None,
min_value: None,
max_value: None,
}
}
/// Constructs a new [`ColumnStats`] from a single-value Series.
pub fn from_column_literal(s: Series) -> Self {
debug_assert_eq!(s.len(), 1);
Self {
field: s.field().into_owned(),
null_count: None,
min_value: Some(s.clone()),
max_value: Some(s),
}
}
pub fn field_name(&self) -> &PlSmallStr {
self.field.name()
}
/// Returns the [`DataType`] of the column.
pub fn dtype(&self) -> &DataType {
self.field.dtype()
}
/// Returns the null count of each row group of the column.
pub fn get_null_count_state(&self) -> Option<&Series> {
self.null_count.as_ref()
}
/// Returns the minimum value of each row group of the column.
pub fn get_min_state(&self) -> Option<&Series> {
self.min_value.as_ref()
}
/// Returns the maximum value of each row group of the column.
pub fn get_max_state(&self) -> Option<&Series> {
self.max_value.as_ref()
}
/// Returns the null count of the column.
pub fn null_count(&self) -> Option<usize> {
match self.dtype() {
#[cfg(feature = "dtype-struct")]
DataType::Struct(_) => None,
_ => {
let s = self.get_null_count_state()?;
// if all null, there are no statistics.
if s.null_count() != s.len() {
s.sum().ok()
} else {
None
}
},
}
}
/// Returns the minimum and maximum values of the column as a single [`Series`].
pub fn to_min_max(&self) -> Option<Series> {
let min_val = self.get_min_state()?;
let max_val = self.get_max_state()?;
let dtype = self.dtype();
if !use_min_max(dtype) {
return None;
}
let mut min_max_values = min_val.clone();
min_max_values.append(max_val).unwrap();
if min_max_values.null_count() > 0 {
None
} else {
Some(min_max_values)
}
}
/// Returns the minimum value of the column as a single-value [`Series`].
///
/// Returns `None` if no maximum value is available.
pub fn to_min(&self) -> Option<&Series> {
// @scalar-opt
let min_val = self.min_value.as_ref()?;
let dtype = min_val.dtype();
if !use_min_max(dtype) || min_val.len() != 1 {
return None;
}
if min_val.null_count() > 0 {
None
} else {
Some(min_val)
}
}
/// Returns the maximum value of the column as a single-value [`Series`].
///
/// Returns `None` if no maximum value is available.
pub fn to_max(&self) -> Option<&Series> {
// @scalar-opt
let max_val = self.max_value.as_ref()?;
let dtype = max_val.dtype();
if !use_min_max(dtype) || max_val.len() != 1 {
return None;
}
if max_val.null_count() > 0 {
None
} else {
Some(max_val)
}
}
}
/// Returns whether the [`DataType`] supports minimum/maximum operations.
fn use_min_max(dtype: &DataType) -> bool {
dtype.is_numeric()
|| dtype.is_temporal()
|| matches!(
dtype,
DataType::String | DataType::Binary | DataType::Boolean
)
}
/// A collection of column stats with a known schema.
#[cfg_attr(feature = "serde", derive(Serialize, Deserialize))]
#[derive(Debug, Clone)]
pub struct BatchStats {
schema: SchemaRef,
stats: Vec<ColumnStats>,
// This might not be available, as when pruning hive partitions.
num_rows: Option<usize>,
}
impl BatchStats {
/// Constructs a new [`BatchStats`].
///
/// The `stats` should match the order of the `schema`.
pub fn new(schema: SchemaRef, stats: Vec<ColumnStats>, num_rows: Option<usize>) -> Self {
Self {
schema,
stats,
num_rows,
}
}
/// Returns the [`Schema`] of the batch.
pub fn schema(&self) -> &SchemaRef {
&self.schema
}
/// Returns the [`ColumnStats`] of all columns in the batch, if known.
pub fn column_stats(&self) -> &[ColumnStats] {
self.stats.as_ref()
}
/// Returns the [`ColumnStats`] of a single column in the batch.
///
/// Returns an `Err` if no statistics are available for the given column.
pub fn get_stats(&self, column: &str) -> PolarsResult<&ColumnStats> {
self.schema.try_index_of(column).map(|i| &self.stats[i])
}
/// Returns the number of rows in the batch.
///
/// Returns `None` if the number of rows is unknown.
pub fn num_rows(&self) -> Option<usize> {
self.num_rows
}
pub fn with_schema(&mut self, schema: SchemaRef) {
self.schema = schema;
}
pub fn take_indices(&mut self, indices: &[usize]) {
self.stats = indices.iter().map(|&i| self.stats[i].clone()).collect();
}
}