[Triton-MLIR][BACKEND] insert_slice_async on GPUs < sm80 (#908)
`insert_slice_async` is decomposed into `load + insert_slice` in the backend. Not sure if V100 perf can match the master branch though in this way. Maybe the performance can be improved if instructions are arranged in the following form: ``` %0 = load %1 = load %2 = load ... insert_slice %0 insert_slice %1 insert_slice %2 ``` Tested on A100 when manually enabling this decomposition. Tests on V100 haven't been integrated yet, we can divide the tests into two phases: 1. Test only load, insert_slice, and insert_slice_async, given TritonGPU IRs in `test_backend.py`. 2. End to end gemm tests on V100.
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@@ -202,8 +202,7 @@ LogicalResult LoopPipeliner::initialize() {
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bufferShape.insert(bufferShape.begin(), numStages);
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auto sharedEnc = ttg::SharedEncodingAttr::get(
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ty.getContext(), dotOpEnc, ty.getShape(),
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triton::gpu::getOrder(ty.getEncoding()),
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ty.getElementType());
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triton::gpu::getOrder(ty.getEncoding()), ty.getElementType());
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loadsBufferType[loadOp] = RankedTensorType::get(
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bufferShape, ty.getElementType(), sharedEnc);
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}
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