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apache--tvm/python/tvm/s_tir/dlight/adreno/convolution.py
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chore: import upstream snapshot with attribution
2026-07-13 13:36:25 +08:00

100 lines
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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.
# pylint: disable=missing-docstring, invalid-name
"""A Conv2d schedule rule for Adreno GPU operators."""
from tvm import s_tir, tirx
from tvm.target import Target
from .. import analysis
from .base import AdrenoScheduleRule
from .utils import schedule_default, schedule_inline_blocks
class Conv2d(AdrenoScheduleRule):
"""The schedule rule for convolution computation"""
@staticmethod
def schedule_conv2d(sch: s_tir.Schedule, blk: s_tir.schedule.SBlockRV):
n, oc, oh, ow, ob, ic, kh, kw = sch.get_loops(blk)
bz, vz, tz = sch.split(oc, [None, 8, 1], preserve_unit_iters=True)
by, vy, ty = sch.split(oh, [None, 1, 16], preserve_unit_iters=True)
bx, vx, tx = sch.split(ow, [None, 1, 16], preserve_unit_iters=True)
bz = sch.fuse(n, bz, preserve_unit_iters=True)
sch.reorder(bz, by, bx, vz, vy, vx, tz, ty, tx, ob)
sch.bind(bz, "blockIdx.z")
sch.bind(by, "blockIdx.y")
sch.bind(bx, "blockIdx.x")
sch.bind(vz, "vthread.z")
sch.bind(vy, "vthread.y")
sch.bind(vx, "vthread.x")
sch.bind(tz, "threadIdx.z")
sch.bind(ty, "threadIdx.y")
sch.bind(tx, "threadIdx.x")
rblk = sch.cache_read(blk, 0, "local")
ico, icb = sch.split(ic, [None, 4], preserve_unit_iters=True)
sch.reorder(ico, kh, kw, icb, ob)
sch.compute_at(rblk, kw, preserve_unit_loops=True)
sch.vectorize(sch.get_loops(rblk)[-1])
wblk = sch.cache_write(blk, 0, "local")
sch.reverse_compute_at(wblk, tx, preserve_unit_loops=True)
sch.vectorize(sch.get_loops(wblk)[-1])
init_blk = sch.decompose_reduction(blk, tx)
sch.vectorize(sch.get_loops(init_blk)[-1])
def apply( # pylint: disable=too-many-locals,missing-docstring
self,
func: tirx.PrimFunc | s_tir.Schedule,
target: Target,
_: bool,
) -> s_tir.Schedule | None:
if not (isinstance(func, tirx.PrimFunc | s_tir.Schedule)) or not self.is_target_available(
target
):
return None
if isinstance(func, tirx.PrimFunc):
sch = s_tir.Schedule(func)
sch.work_on("main")
elif isinstance(func, s_tir.Schedule):
sch = func
root_block = analysis.get_root_block(sch, sch.func_working_on)
blocks = sch.get_child_blocks(root_block)
reduction_blocks = list(
filter(lambda block: analysis.get_sblock_info(sch, block).is_reduction(), blocks)
)
remaining_blocks = [blk for blk in blocks if blk not in reduction_blocks]
def is_convolution(blk):
block_info = analysis.get_sblock_info(sch, blk)
return "conv2d_NCHWc" in block_info.name
if len(reduction_blocks) != 1 or not is_convolution(reduction_blocks[0]):
return None
conv_blk = reduction_blocks[0]
Conv2d.schedule_conv2d(sch, conv_blk)
remaining_blocks = schedule_inline_blocks(sch, remaining_blocks)
schedule_default(sch, remaining_blocks)
return sch