Files
wehub-resource-sync 26446540fa
Lint / lint (push) Waiting to run
CI / MacOS (push) Waiting to run
CI / Windows (push) Waiting to run
chore: import upstream snapshot with attribution
2026-07-13 13:36:25 +08:00

219 lines
6.9 KiB
Python

# Licensed to the Apache Software Foundation (ASF) under one
# or more contributor license agreements. See the NOTICE file
# distributed with this work for additional information
# regarding copyright ownership. The ASF licenses this file
# to you under the Apache License, Version 2.0 (the
# "License"); you may not use this file except in compliance
# with the License. You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing,
# software distributed under the License is distributed on an
# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
# KIND, either express or implied. See the License for the
# specific language governing permissions and limitations
# under the License.
import os
import tempfile
import numpy as np
import pytest
import tvm
import tvm.testing
from tvm import relax
from tvm.support import ndk
# Test Infra
class run_time_check:
def __init__(self, device):
self.device = device
def check(self):
# Ensure adreno specific tests
if self.device == "real":
return "ADRENO_TARGET" in os.environ
# Adreno CI
if "ADRENO_TARGET" in os.environ:
return True
# Tests that can run on generic targets too
elif self.device == "opencl":
return tvm.opencl().exist
elif self.device == "vulkan":
return tvm.vulkan().exist
elif self.device == "any":
return tvm.opencl().exist or tvm.vulkan().exist
else:
return False
def __call__(self):
return self.check
# Eager skips for Adreno GPU tests, resolved at import time. Pair each with
# ``@pytest.mark.gpu`` at the test site so CI's ``-m gpu`` filter selects it.
# OpenCL or Vulkan
skip_unless_adreno_opencl_vulkan = pytest.mark.skipif(
not run_time_check("any").check(),
reason="need adreno opencl or vulkan",
)
# CLML Codegen
skip_unless_adreno_clml = pytest.mark.skipif(
tvm.get_global_func("relax.is_openclml_runtime_enabled", allow_missing=True) is None,
reason="need adreno openclml",
)
def is_target_available(target):
if "clml" in target.attrs.get("keys", []) and "ADRENO_TARGET" not in os.environ:
return False
return True
class SessionManager:
def __init__(self):
self.is_remote = SessionManager.is_target_rpc()
def __enter__(self):
if self.is_remote:
self.RPC_TRACKER_HOST = os.getenv("TVM_TRACKER_HOST", "localhost")
self.RPC_TRACKER_PORT = int(os.getenv("TVM_TRACKER_PORT", 7979))
self.RPC_DEVICE_KEY = os.getenv("RPC_DEVICE_KEY", "android")
self.tracker = tvm.rpc.connect_tracker(self.RPC_TRACKER_HOST, self.RPC_TRACKER_PORT)
self.rpc = self.tracker.request(self.RPC_DEVICE_KEY, priority=0, session_timeout=600)
else:
self.rpc = tvm.rpc.LocalSession()
return self
def __exit__(self, exc_type, exc_value, traceback):
self.rpc.get_function("CloseRPCConnection")()
def load_module(self, ex: relax.VMExecutable):
with tempfile.TemporaryDirectory() as tempdir:
file_name = "vm_library.so"
file_path = os.path.join(tempdir, file_name)
if self.is_remote:
ex.export_library(
file_path, fcompile=ndk.create_shared, options=["-shared", "-fPIC", "-lm"]
)
else:
ex.export_library(file_path)
self.rpc.upload(file_path)
rexec = self.rpc.load_module(file_name)
return rexec
def device(self, device: str):
return self.rpc.device(device)
@staticmethod
def is_target_rpc():
"""
Checks if the target is a remote device.
Returns
-------
bool: True if RPC_TARGET is set, False otherwise
"""
return os.environ.get("ADRENO_TARGET") == "adreno"
def run_local(mod, inputs, target):
"""
Run the Relax module on the local CPU for verification.
Parameters
----------
mod : tvm.IRModule
The Relax IRModule to execute.
inputs : list of numpy.ndarray
The input data for the module.
save_lib : bool, optional
Whether to save the compiled library. Default is False.
Returns
-------
tvm.runtime.NDArray or tuple of tvm.runtime.NDArray
The output from the module execution.
"""
ex = relax.build(mod, target)
dev = tvm.cpu()
vm = relax.VirtualMachine(ex, dev)
inputs = [tvm.runtime.tensor(inp, dev) for inp in inputs]
vm.set_input("main", *inputs)
vm.invoke_stateful("main")
tvm_output = vm.get_outputs("main")
if isinstance(tvm_output, tuple):
tvm_output = tuple(out.numpy() for out in tvm_output)
else:
tvm_output = (tvm_output.numpy(),)
return tvm_output
def build_and_run(mod, inputs, tgt):
if SessionManager.is_target_rpc():
tgt = tvm.target.Target(tgt, host={"kind": "llvm", "mtriple": "aarch64-linux-gnu"})
else:
tgt = tvm.target.Target(tgt, host={"kind": "llvm"})
relax_pipeline = relax.pipeline.get_default_pipeline(tgt)
tir_pipeline = tvm.tirx.get_default_tir_pipeline(tgt)
mod = relax_pipeline(mod)
ex = tvm.compile(mod, tgt, tir_pipeline=tir_pipeline)
def run_and_check():
with SessionManager() as sess:
rexec = sess.load_module(ex)
dev = sess.device(tgt.kind.name)
if "vdevice" in mod.global_infos:
device_arr = [dev for _ in range(len(mod.global_infos["vdevice"]))]
else:
device_arr = [dev]
vm = relax.VirtualMachine(rexec, device_arr)
device_inputs = [tvm.runtime.tensor(ip, dev) for ip in inputs]
vm.set_input("main", *device_inputs)
vm.invoke_stateful("main")
tvm_output = vm.get_outputs("main")
if isinstance(tvm_output, tuple):
return tuple(out.numpy() for out in tvm_output)
return (tvm_output.numpy(),)
if SessionManager.is_target_rpc():
return run_and_check()
return tvm.testing.run_with_gpu_lock(run_and_check)
def verify_results(mod, target, ref_target):
if not is_target_available(target):
print("Skipping Eval Tests", flush=True)
return
inputs = []
for arg in mod["main"].params:
shape = tuple(shape_val.value for shape_val in arg.ty.shape.values)
inputs.append(np.random.uniform(0, 1, size=shape).astype(arg.ty.dtype))
mod_org, mod_ref = mod, mod.clone()
mod_ref = tvm.relax.transform.DecomposeOpsForInference()(mod_ref)
if ref_target.kind.name == "llvm":
rs_ref = run_local(mod_ref, inputs, ref_target)
else:
rs_ref = build_and_run(mod_ref, inputs, ref_target)
rs_org = build_and_run(mod_org, inputs, target)
for vl_org, vl_ref in zip(rs_org, rs_ref):
tvm.testing.assert_allclose(vl_org, vl_ref, rtol=1e-3, atol=1e-3)