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[pytorch] fix buddy-mlir python module and add new demo
Signed-off-by: Avimitin <[email protected]>
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Original file line number | Diff line number | Diff line change |
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import torch | ||
import torch._dynamo as dynamo | ||
from torch._inductor.decomposition import decompositions as inductor_decomp | ||
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from buddy.compiler.frontend import DynamoCompiler | ||
from buddy.compiler.ops import tosa | ||
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# Define the target function or model. | ||
def foo(x, y): | ||
return x * y + x | ||
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# Define the input data. | ||
float32_in1 = torch.randn(10).to(torch.float32) | ||
float32_in2 = torch.randn(10).to(torch.float32) | ||
int32_in1 = torch.randint(0, 10, (10,)).to(torch.int32) | ||
int32_in2 = torch.randint(0, 10, (10,)).to(torch.int32) | ||
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# Initialize the dynamo compiler. | ||
dynamo_compiler = DynamoCompiler( | ||
primary_registry=tosa.ops_registry, | ||
aot_autograd_decomposition=inductor_decomp, | ||
) | ||
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# Pass the function and input data to the dynamo compiler's importer, the | ||
# importer will first build a graph. Then, lower the graph to top-level IR. | ||
# (tosa, linalg, etc.). Finally, accepts the generated module and weight parameters. | ||
graphs = dynamo_compiler.importer(foo, *(float32_in1, float32_in2)) | ||
graph = graphs[0] | ||
graph.lower_to_top_level_ir() | ||
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print(graph._imported_module) |