[Mlir-commits] [compiler-rt] [clang] [llvm] [mlir] [clang-tools-extra] [mlir][tensor] Document `dest` operand (PR #71726)
Mehdi Amini
llvmlistbot at llvm.org
Mon Nov 13 04:52:26 PST 2023
================
@@ -18,31 +18,34 @@ def Tensor_Dialect : Dialect {
let description = [{
The `tensor` dialect is intended to hold core tensor creation and
manipulation ops, which are not strongly associated with any particular
- other dialect or domain abstraction. The primary smoke test of this is ops
- that make sense for any tensor element type.
-
- We leave it to other dialects to hold the vast swath of possible
- computations one might want to do on a tensor.
-
- The `tensor` type is (for better or for worse) used to represent all kinds
- of things, and supports an open-ended set of element types. Examples:
+ other dialect or domain abstraction. The aim for ops in this dialect is
+ that they make sense for any tensor element type. When this is not the
+ case, the op is left to live in other dialects. Examples of element types
+ that could be supported by the `tensor` dialect include:
- representing large, dense aggregations of primitive types, suitable for
high-performance numerical computing.
- - representing shapes in the `shape` dialect, which consist of small
- 1D tensors of `index` data type.
+ - representing shapes in the `shape` dialect, which consist of small 1D
+ tensors of `index` data type.
- representing aggregations of strings or “variant” types.
- - representing large, sparse aggregations of primitive types, suitable
- for high-performance numerical computing.
-
- Thus, for the `tensor` dialect, we prefer for now to constrain the
- scope as much as possible. The expectation is that at some point
- in the future, the `tensor` dialect’s scope may be broadened through a
- careful discussion of the tradeoffs.
-
- The `tensor` type is actually a builtin type (it lives in the builtin
- dialect), and does not live in this dialect.
+ - representing large, sparse aggregations of primitive types, suitable for
+ high-performance numerical computing.
+ Because of this broad element type support and because of the existence of
+ more dedicated dialects, such as the `sparse_tensor` and `linalg` dialects,
+ we prefer for now to keep the `tensor` dialect as small as possible. The
+ expectation is that at some point in the future, the `tensor` dialect’s
+ scope may be broadened through a careful discussion of the tradeoffs.
+
+ On the `tensor` type itself, note that it is actually a builtin type (it
+ lives in the builtin dialect), and does not live in this dialect.
+ Furthermore, a `tensor` is an immutable object. For example, this means
+ that a copy will always be made of the `tensor` object when it is passed to
+ the `dest` operand used by some ops in this dialect. The storage to which
+ the `tensor` object refers may be mutated, see the [Destination-Passing
+ Style](
----------------
joker-eph wrote:
```suggestion
the `dest` operand used by some ops in this dialect. As an optimization,
an implementation can eliminate these copies during lowering when they
are redundant and perform in-place mutation, see the [Destination-Passing
Style](
```
https://github.com/llvm/llvm-project/pull/71726
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