# 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 """A RMS norm schedule rule for GPU operators.""" import tvm from tvm import tirx from tvm.ir import Call from tvm.target import Target from tvm.tirx import BufferStore, SBlock from tvm.tirx.expr import BufferLoad, Cast from ..base import ScheduleRule def identify_cast_or_load_block(block: SBlock) -> bool: if len(block.reads) != 1 or len(block.writes) != 1: return False if not isinstance(block.body, BufferStore): return False store = block.body # check types if isinstance(store.value, BufferLoad): load = store.value elif isinstance(store.value, Cast): load = store.value.value if not isinstance(load, BufferLoad): return False else: return False # check indices if len(load.indices) != len(store.indices): return False for lhs, rhs in zip(load.indices, store.indices): if not lhs.same_as(rhs): return False return True def identify_rsqrt_block(block: SBlock) -> bool: if len(block.reads) != 1 or len(block.writes) != 1: return False if not isinstance(block.body, BufferStore): return False store = block.body if not isinstance(store.value, Call): return False call = store.value op = call.op return op == tvm.ir.op.Op.get("tirx.rsqrt") class RMSNorm(ScheduleRule): """A rule for RMS norm.""" def apply( # pylint: disable=too-many-locals,missing-docstring self, func: tirx.PrimFunc, target: Target, _: bool, ) -> "tvm.s_tir.Schedule": if target.kind.name == "cuda": num_tx = 512 elif target.kind.name == "opencl": num_tx = 256 else: num_tx = 64 sch = tvm.s_tir.Schedule(func) root = sch.get_sblock(name="root", func_name="main") blocks = sch.get_child_blocks(root) if not any([identify_rsqrt_block(sch.get(block)) for block in blocks]): return None read = sch.cache_read(block=blocks[0], read_buffer_index=0, storage_scope="local") write = sch.cache_write(block=blocks[-1], write_buffer_index=0, storage_scope="local") for block in blocks: if identify_cast_or_load_block(sch.get(block)): sch.compute_inline(block) blocks = sch.get_child_blocks(root) read, sqr, redsum, rsqrt, norm, write = blocks if not identify_rsqrt_block(sch.get(rsqrt)): return None for name in [read, sqr, redsum, rsqrt, norm, write]: loops = sch.get_loops(name) sch.fuse(*loops[:-1]) block_loop, loops = sch.get_loops(block=read) thread_loop, _, _ = sch.split( loop=loops, factors=[num_tx, None, 8], preserve_unit_iters=True ) sch.bind(block_loop, thread_axis="blockIdx.x") sch.bind(thread_loop, thread_axis="threadIdx.x") sch.vectorize(sch.get_loops(block=read)[-1]) sch.reverse_compute_at(block=sqr, loop=thread_loop) sch.reverse_compute_at(block=redsum, loop=thread_loop) sch.reverse_compute_at(block=rsqrt, loop=block_loop, index=-1) sch.reverse_compute_at(block=norm, loop=block_loop, index=-1) block_loop, loops = sch.get_loops(block=norm) thread_loop, _, _ = sch.split( loop=loops, factors=[num_tx, None, 8], preserve_unit_iters=True ) sch.bind(thread_loop, thread_axis="threadIdx.x") sch.reverse_compute_at(block=write, loop=thread_loop, index=-1) sch.vectorize(sch.get_loops(block=write)[-1]) sch.set_scope(block=sqr, buffer_index=0, storage_scope="local") sch.set_scope(block=redsum, buffer_index=0, storage_scope="local") sch.set_scope(block=rsqrt, buffer_index=0, storage_scope="shared") sch.set_scope(block=norm, buffer_index=0, storage_scope="local") return sch