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"""Tuning a single conv2d transpose operator"""
from collections import namedtuple
import logging
import os
import tvm
from tvm import autotvm
import topi
import vta
import vta.testing
# Get batch info from env
env = vta.get_env()
Workload = namedtuple("Conv2DTransposeWorkload",
['batch', 'height', 'width', 'in_filter', 'out_filter',
'hkernel', 'wkernel', 'hpad', 'wpad', 'hstride', 'wstride'])
dcgan_wkls = [
# dcgan
('DCGAN.CT1', Workload(env.BATCH, 4, 4, 1024, 512, 4, 4, 1, 1, 2, 2)),
('DCGAN.CT2', Workload(env.BATCH, 8, 8, 512, 256, 4, 4, 1, 1, 2, 2)),
('DCGAN.CT3', Workload(env.BATCH, 16, 16, 256, 128, 4, 4, 1, 1, 2, 2)),
]
@tvm.tag_scope(tag=topi.tag.ELEMWISE)
def my_clip(x, a_min, a_max):
"""Unlike topi's current clip, put min and max into two stages."""
const_min = tvm.const(a_min, x.dtype)
const_max = tvm.const(a_max, x.dtype)
x = tvm.compute(x.shape, lambda *i: tvm.min(x(*i), const_max), name="clipA")
x = tvm.compute(x.shape, lambda *i: tvm.max(x(*i), const_min), name="clipB")
return x
def conv2d_transpose(N, CI, H, W, CO, KH, KW, strides, padding):
data_shape = (N//env.BATCH, CI//env.BLOCK_IN, H, W, env.BATCH, env.BLOCK_IN)
kernel_shape = (CO//env.BLOCK_OUT, CI//env.BLOCK_IN, KH, KW, env.BLOCK_OUT, env.BLOCK_IN)
data = tvm.placeholder(data_shape, name="data", dtype=env.inp_dtype)
kernel = tvm.placeholder(kernel_shape, name="kernel", dtype=env.wgt_dtype)
with tvm.target.vta():
res = topi.nn.conv2d_transpose_nchw(
Input=data,
Filter=kernel,
strides=strides,
padding=padding,
out_dtype=env.acc_dtype)
res = topi.right_shift(res, env.WGT_WIDTH)
res = my_clip(res, 0, (1 << env.OUT_WIDTH - 1) - 1)
res = topi.cast(res, env.out_dtype)
if tvm.target.current_target().device_name == 'vta':
s = topi.generic.schedule_conv2d_transpose_nchw([res])
else:
s = tvm.create_schedule([res.op])
return s, [data, kernel, res]
if __name__ == '__main__':
# Logging config (for printing tuning log to the screen)
logging.basicConfig()
# logging.getLogger('autotvm').setLevel(logging.DEBUG)
# Tuning log files
log_file = "%s.conv2d_transpose.log" % (env.TARGET)
# create tmp log file
tmp_log_file = log_file + ".tmp"
if os.path.exists(log_file):
os.remove(log_file)
# Get tracker info from env
tracker_host = os.environ.get("TVM_TRACKER_HOST", None)
tracker_port = os.environ.get("TVM_TRACKER_PORT", None)
if not tracker_host or not tracker_port:
print("Set your AutoTVM tracker node host and port variables to run the autotuner")
exit()
for idx, (wl_name, wl) in enumerate(dcgan_wkls):
prefix = "[Task %2d/%2d] " % (idx, len(dcgan_wkls))
# Read in workload parameters
N = wl.batch
H = wl.height
W = wl.width
CI = wl.in_filter
CO = wl.out_filter
KH = wl.hkernel
KW = wl.wkernel
strides = (wl.hstride, wl.wstride)
padding = (wl.hpad, wl.wpad)
# Create task
task = autotvm.task.create(
conv2d_transpose,
args=(N, CI, H, W, CO, KH, KW, strides, padding),
target=tvm.target.vta(),
target_host=env.target_host,
template_key='direct')
print(task.config_space)
# Tune
measure_option = autotvm.measure_option(
builder=autotvm.LocalBuilder(),
runner=autotvm.RPCRunner(
env.TARGET, host=tracker_host, port=int(tracker_port),
number=5, timeout=60,
check_correctness=True))
# Run Tuner
tuner = autotvm.tuner.RandomTuner(task)
tuner.tune(
n_trial=len(task.config_space),
early_stopping=None,
measure_option=measure_option,
callbacks=[
autotvm.callback.progress_bar(len(task.config_space), prefix=prefix),
autotvm.callback.log_to_file(tmp_log_file)])
# Pick best records to a cache file
autotvm.record.pick_best(tmp_log_file, log_file)
os.remove(tmp_log_file)