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Add dispatch-level config file generator for manual annotation #1566

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Jun 22, 2023
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77 changes: 72 additions & 5 deletions shark/shark_generate_model_config.py
Original file line number Diff line number Diff line change
@@ -1,22 +1,86 @@
import re
import json
from collections import OrderedDict
import torch_mlir
from iree.compiler import compile_str
from shark.shark_importer import import_with_fx, get_f16_inputs


class GenerateConfigFile:
def __init__(
self,
model,
num_sharding_stages: int,
sharding_stages_id: list[str] = None,
sharding_stages_id: list[str],
model_input=None,
config_file_path="model_config.json",
):
self.model = model
self.num_sharding_stages = num_sharding_stages
self.sharding_stages_id = sharding_stages_id
assert self.num_sharding_stages == len(
self.sharding_stages_id
), "Number of sharding stages should be equal to the list of their ID"
self.model_input = model_input
self.config_file_path = config_file_path

def generate_json(self):
def split_into_dispatches(
self,
backend,
fx_tracing_required=True,
f16_model=False,
torch_mlir_tracing=False,
):
graph_for_compilation = self.model
if fx_tracing_required:
graph_for_compilation = import_with_fx(
self.model,
self.model_input,
is_f16=f16_model,
f16_input_mask=[False, False],
mlir_type="torchscript",
)

module = torch_mlir.compile(
graph_for_compilation,
(self.model_input),
torch_mlir.OutputType.LINALG_ON_TENSORS,
use_tracing=torch_mlir_tracing,
verbose=False,
)
module = module.operation.get_asm(large_elements_limit=4)
compiled_module_str = str(
compile_str(
str(module),
target_backends=[backend],
extra_args=[
"--compile-to=flow",
"--mlir-elide-elementsattrs-if-larger=4",
],
)
)

substring_start_idx = [
m.start()
for m in re.finditer("flow.dispatch @", compiled_module_str)
]
dispatch_list = dict()

# dispatch_no is the 'i'th index of a dispatch out of n total dispatches of a model
# dispatch_id is the unique id of a dispatch, multiple instances of the same dispatch
# can occur in a model
for dispatch_no, substring_idx in enumerate(substring_start_idx):
dispatch_idx = (
compiled_module_str[substring_idx:]
.split(":")[0]
.split("@")[-1]
)
key = "dispatch_no_" + str(dispatch_no)
dispatch_list[key] = {n: "None" for n in self.sharding_stages_id}
dispatch_list[key]["dispatch_id"] = dispatch_idx

self.generate_json(dispatch_list)

def split_into_layers(self):
model_dictionary = dict()

for name, m in self.model.named_modules():
Expand All @@ -34,5 +98,8 @@ def generate_json(self):
layer_dict = {n: "None" for n in self.sharding_stages_id}
model_dictionary[name] = layer_dict

with open("model_config.json", "w") as outfile:
json.dump(model_dictionary, outfile)
self.generate_json(model_dictionary)

def generate_json(self, artifacts):
with open(self.config_file_path, "w") as outfile:
json.dump(artifacts, outfile)