use crate::var_provider::is_system_variables;
use crate::{
execution_props::ExecutionProps,
expressions::{
self, binary, like, Column, DateTimeIntervalExpr, GetIndexedFieldExpr, Literal,
},
functions, udf,
var_provider::VarType,
PhysicalExpr,
};
use arrow::datatypes::{DataType, Schema};
use datafusion_common::{DFSchema, DataFusionError, Result, ScalarValue};
use datafusion_expr::expr::Cast;
use datafusion_expr::{
binary_expr, Between, BinaryExpr, Expr, GetIndexedField, Like, Operator, TryCast,
};
use std::sync::Arc;
pub fn create_physical_expr(
e: &Expr,
input_dfschema: &DFSchema,
input_schema: &Schema,
execution_props: &ExecutionProps,
) -> Result<Arc<dyn PhysicalExpr>> {
if input_schema.fields.len() != input_dfschema.fields().len() {
return Err(DataFusionError::Internal(format!(
"create_physical_expr expected same number of fields, got \
got Arrow schema with {} and DataFusion schema with {}",
input_schema.fields.len(),
input_dfschema.fields().len()
)));
}
match e {
Expr::Alias(expr, ..) => Ok(create_physical_expr(
expr,
input_dfschema,
input_schema,
execution_props,
)?),
Expr::Column(c) => {
let idx = input_dfschema.index_of_column(c)?;
Ok(Arc::new(Column::new(&c.name, idx)))
}
Expr::Literal(value) => Ok(Arc::new(Literal::new(value.clone()))),
Expr::ScalarVariable(_, variable_names) => {
if is_system_variables(variable_names) {
match execution_props.get_var_provider(VarType::System) {
Some(provider) => {
let scalar_value = provider.get_value(variable_names.clone())?;
Ok(Arc::new(Literal::new(scalar_value)))
}
_ => Err(DataFusionError::Plan(
"No system variable provider found".to_string(),
)),
}
} else {
match execution_props.get_var_provider(VarType::UserDefined) {
Some(provider) => {
let scalar_value = provider.get_value(variable_names.clone())?;
Ok(Arc::new(Literal::new(scalar_value)))
}
_ => Err(DataFusionError::Plan(
"No user defined variable provider found".to_string(),
)),
}
}
}
Expr::IsTrue(expr) => {
let binary_op = binary_expr(
expr.as_ref().clone(),
Operator::IsNotDistinctFrom,
Expr::Literal(ScalarValue::Boolean(Some(true))),
);
create_physical_expr(
&binary_op,
input_dfschema,
input_schema,
execution_props,
)
}
Expr::IsNotTrue(expr) => {
let binary_op = binary_expr(
expr.as_ref().clone(),
Operator::IsDistinctFrom,
Expr::Literal(ScalarValue::Boolean(Some(true))),
);
create_physical_expr(
&binary_op,
input_dfschema,
input_schema,
execution_props,
)
}
Expr::IsFalse(expr) => {
let binary_op = binary_expr(
expr.as_ref().clone(),
Operator::IsNotDistinctFrom,
Expr::Literal(ScalarValue::Boolean(Some(false))),
);
create_physical_expr(
&binary_op,
input_dfschema,
input_schema,
execution_props,
)
}
Expr::IsNotFalse(expr) => {
let binary_op = binary_expr(
expr.as_ref().clone(),
Operator::IsDistinctFrom,
Expr::Literal(ScalarValue::Boolean(Some(false))),
);
create_physical_expr(
&binary_op,
input_dfschema,
input_schema,
execution_props,
)
}
Expr::IsUnknown(expr) => {
let binary_op = binary_expr(
expr.as_ref().clone(),
Operator::IsNotDistinctFrom,
Expr::Literal(ScalarValue::Boolean(None)),
);
create_physical_expr(
&binary_op,
input_dfschema,
input_schema,
execution_props,
)
}
Expr::IsNotUnknown(expr) => {
let binary_op = binary_expr(
expr.as_ref().clone(),
Operator::IsDistinctFrom,
Expr::Literal(ScalarValue::Boolean(None)),
);
create_physical_expr(
&binary_op,
input_dfschema,
input_schema,
execution_props,
)
}
Expr::BinaryExpr(BinaryExpr { left, op, right }) => {
let lhs = create_physical_expr(
left,
input_dfschema,
input_schema,
execution_props,
)?;
let rhs = create_physical_expr(
right,
input_dfschema,
input_schema,
execution_props,
)?;
match (
lhs.data_type(input_schema)?,
op,
rhs.data_type(input_schema)?,
) {
(
DataType::Date32 | DataType::Date64 | DataType::Timestamp(_, _),
Operator::Plus | Operator::Minus,
DataType::Interval(_),
) => Ok(Arc::new(DateTimeIntervalExpr::try_new(
lhs,
*op,
rhs,
input_schema,
)?)),
_ => {
binary(lhs, *op, rhs, input_schema)
}
}
}
Expr::Like(Like {
negated,
expr,
pattern,
escape_char,
}) => {
if escape_char.is_some() {
return Err(DataFusionError::Execution(
"LIKE does not support escape_char".to_string(),
));
}
let physical_expr = create_physical_expr(
expr,
input_dfschema,
input_schema,
execution_props,
)?;
let physical_pattern = create_physical_expr(
pattern,
input_dfschema,
input_schema,
execution_props,
)?;
like(
*negated,
false,
physical_expr,
physical_pattern,
input_schema,
)
}
Expr::ILike(Like {
negated,
expr,
pattern,
escape_char,
}) => {
if escape_char.is_some() {
return Err(DataFusionError::Execution(
"ILIKE does not support escape_char".to_string(),
));
}
let physical_expr = create_physical_expr(
expr,
input_dfschema,
input_schema,
execution_props,
)?;
let physical_pattern = create_physical_expr(
pattern,
input_dfschema,
input_schema,
execution_props,
)?;
like(
*negated,
true,
physical_expr,
physical_pattern,
input_schema,
)
}
Expr::Case(case) => {
let expr: Option<Arc<dyn PhysicalExpr>> = if let Some(e) = &case.expr {
Some(create_physical_expr(
e.as_ref(),
input_dfschema,
input_schema,
execution_props,
)?)
} else {
None
};
let when_expr = case
.when_then_expr
.iter()
.map(|(w, _)| {
create_physical_expr(
w.as_ref(),
input_dfschema,
input_schema,
execution_props,
)
})
.collect::<Result<Vec<_>>>()?;
let then_expr = case
.when_then_expr
.iter()
.map(|(_, t)| {
create_physical_expr(
t.as_ref(),
input_dfschema,
input_schema,
execution_props,
)
})
.collect::<Result<Vec<_>>>()?;
let when_then_expr: Vec<(Arc<dyn PhysicalExpr>, Arc<dyn PhysicalExpr>)> =
when_expr
.iter()
.zip(then_expr.iter())
.map(|(w, t)| (w.clone(), t.clone()))
.collect();
let else_expr: Option<Arc<dyn PhysicalExpr>> =
if let Some(e) = &case.else_expr {
Some(create_physical_expr(
e.as_ref(),
input_dfschema,
input_schema,
execution_props,
)?)
} else {
None
};
Ok(expressions::case(expr, when_then_expr, else_expr)?)
}
Expr::Cast(Cast { expr, data_type }) => expressions::cast(
create_physical_expr(expr, input_dfschema, input_schema, execution_props)?,
input_schema,
data_type.clone(),
),
Expr::TryCast(TryCast { expr, data_type }) => expressions::try_cast(
create_physical_expr(expr, input_dfschema, input_schema, execution_props)?,
input_schema,
data_type.clone(),
),
Expr::Not(expr) => expressions::not(create_physical_expr(
expr,
input_dfschema,
input_schema,
execution_props,
)?),
Expr::Negative(expr) => expressions::negative(
create_physical_expr(expr, input_dfschema, input_schema, execution_props)?,
input_schema,
),
Expr::IsNull(expr) => expressions::is_null(create_physical_expr(
expr,
input_dfschema,
input_schema,
execution_props,
)?),
Expr::IsNotNull(expr) => expressions::is_not_null(create_physical_expr(
expr,
input_dfschema,
input_schema,
execution_props,
)?),
Expr::GetIndexedField(GetIndexedField { key, expr }) => {
Ok(Arc::new(GetIndexedFieldExpr::new(
create_physical_expr(
expr,
input_dfschema,
input_schema,
execution_props,
)?,
key.clone(),
)))
}
Expr::ScalarFunction { fun, args } => {
let physical_args = args
.iter()
.map(|e| {
create_physical_expr(e, input_dfschema, input_schema, execution_props)
})
.collect::<Result<Vec<_>>>()?;
functions::create_physical_expr(
fun,
&physical_args,
input_schema,
execution_props,
)
}
Expr::ScalarUDF { fun, args } => {
let mut physical_args = vec![];
for e in args {
physical_args.push(create_physical_expr(
e,
input_dfschema,
input_schema,
execution_props,
)?);
}
udf::create_physical_expr(fun.clone().as_ref(), &physical_args, input_schema)
}
Expr::Between(Between {
expr,
negated,
low,
high,
}) => {
let value_expr = create_physical_expr(
expr,
input_dfschema,
input_schema,
execution_props,
)?;
let low_expr =
create_physical_expr(low, input_dfschema, input_schema, execution_props)?;
let high_expr = create_physical_expr(
high,
input_dfschema,
input_schema,
execution_props,
)?;
let binary_expr = binary(
binary(value_expr.clone(), Operator::GtEq, low_expr, input_schema)?,
Operator::And,
binary(value_expr.clone(), Operator::LtEq, high_expr, input_schema)?,
input_schema,
);
if *negated {
expressions::not(binary_expr?)
} else {
binary_expr
}
}
Expr::InList {
expr,
list,
negated,
} => match expr.as_ref() {
Expr::Literal(ScalarValue::Utf8(None)) => {
Ok(expressions::lit(ScalarValue::Boolean(None)))
}
_ => {
let value_expr = create_physical_expr(
expr,
input_dfschema,
input_schema,
execution_props,
)?;
let list_exprs = list
.iter()
.map(|expr| {
create_physical_expr(
expr,
input_dfschema,
input_schema,
execution_props,
)
})
.collect::<Result<Vec<_>>>()?;
expressions::in_list(value_expr, list_exprs, negated, input_schema)
}
},
other => Err(DataFusionError::NotImplemented(format!(
"Physical plan does not support logical expression {other:?}"
))),
}
}