Skip to content

Commit

Permalink
[OPT] Low-bit Quantization (apache#2116)
Browse files Browse the repository at this point in the history
* [QUANTIZE] Quantization implementation.

* Update.

* Update.

* Update.

* Update.
  • Loading branch information
ZihengJiang authored and libing4752 committed Feb 18, 2019
1 parent c2f7eca commit acbb919
Show file tree
Hide file tree
Showing 16 changed files with 1,496 additions and 14 deletions.
11 changes: 5 additions & 6 deletions include/tvm/relay/attrs/transform.h
Original file line number Diff line number Diff line change
Expand Up @@ -139,7 +139,6 @@ struct StridedSliceAttrs : public tvm::AttrsNode<StridedSliceAttrs> {
}
};


struct SliceLikeAttrs : public tvm::AttrsNode<SliceLikeAttrs> {
Array<Integer> axes;

Expand All @@ -151,16 +150,16 @@ struct SliceLikeAttrs : public tvm::AttrsNode<SliceLikeAttrs> {
}
};

// Clip
/*! \brief Attributes for Clip operator */
struct ClipAttrs : public tvm::AttrsNode<ClipAttrs> {
double a_min;
double a_max;

TVM_DECLARE_ATTRS(ClipAttrs, "relay.attrs.ClipAttrs") {
TVM_ATTR_FIELD(a_min)
.describe("The minimum clip value.");
TVM_ATTR_FIELD(a_max)
.describe("The maximum clip value.");
TVM_ATTR_FIELD(a_min)
.describe("The minimum clip value.");
TVM_ATTR_FIELD(a_max)
.describe("The maximum clip value.");
}
};

Expand Down
1 change: 1 addition & 0 deletions include/tvm/relay/op.h
Original file line number Diff line number Diff line change
Expand Up @@ -551,6 +551,7 @@ inline ValueType OpMap<ValueType>::get(const Expr& expr,
return map_.get<ValueType>(expr, def_value);
}


/*!
* \brief Check that an expression is a "primtive operator".
*
Expand Down
3 changes: 2 additions & 1 deletion python/tvm/relay/__init__.py
Original file line number Diff line number Diff line change
Expand Up @@ -8,7 +8,7 @@
from . import expr_functor
from . import module
from . import ir_pass
from .build_module import build, build_config, create_executor
from .build_module import build, build_config, create_executor, optimize
from . import parser
from . import debug

Expand All @@ -23,6 +23,7 @@
from . import image
from . import frontend
from . import backend
from . import quantize

from .scope_builder import ScopeBuilder

Expand Down
4 changes: 2 additions & 2 deletions python/tvm/relay/build_module.py
Original file line number Diff line number Diff line change
Expand Up @@ -129,7 +129,7 @@ def _bind_params_by_name(func, params):
return expr.bind(func, bind_dict)


def optimize(func, target, params=None):
def optimize(func, target=None, params=None):
"""Perform target invariant optimizations.
Parameters
Expand Down Expand Up @@ -400,7 +400,7 @@ def _make_executor(self, func):
graph_json, mod, params = build(func, target=self.target)
gmodule = _graph_rt.create(graph_json, mod, self.ctx)
if params:
gmodule.set_input(*params)
gmodule.set_input(**params)

def _graph_wrapper(*args, **kwargs):
args = self._convert_args(func, args, kwargs)
Expand Down
6 changes: 6 additions & 0 deletions python/tvm/relay/quantize/__init__.py
Original file line number Diff line number Diff line change
@@ -0,0 +1,6 @@
#pylint: disable=wildcard-import, redefined-builtin
"""Automatic quantization utilities."""
from __future__ import absolute_import as _abs

from .quantize import *
from ._annotate import register_annotate_function
246 changes: 246 additions & 0 deletions python/tvm/relay/quantize/_annotate.py
Original file line number Diff line number Diff line change
@@ -0,0 +1,246 @@
#pylint: disable=unused-argument
"""Internal module for registering attribute for annotation."""
from __future__ import absolute_import

import topi
from . import _quantize
from .quantize import QAnnotateKind, current_qconfig
from .quantize import _conv_counter, _set_conv_counter
from .. import expr as _expr
from .. import op as _op
from ..op import op as _reg
from ..base import register_relay_node
from ..._ffi.function import register_func


@_reg.register_compute("relay.op.annotation.simulated_quantize")
def simulated_quantize_compute(attrs, inputs, out_type, target):
"""Compiler for simulated_quantize."""
assert len(inputs) == 4
assert attrs.sign
assert attrs.rounding == "round"

data, scale, clip_min, clip_max = inputs

# simulate rounding error
scaled_data = topi.divide(data, scale)
clipped_data = topi.maximum(topi.minimum(scaled_data, clip_max), clip_min)
round_data = topi.round(clipped_data)

# recover data
rdata = topi.multiply(round_data, scale)
return [rdata]


_reg.register_schedule("relay.op.annotation.simulated_quantize",
_reg.schedule_injective)
_reg.register_pattern("relay.op.annotation.simulated_quantize",
_reg.OpPattern.OPAQUE)


@register_relay_node
class QAnnotateExpr(_expr.TempExpr):
"""A special kind of Expr for Annotating.
Parameters
---------
expr: Expr
the original relay ir expr.
kind: QAnnotateKind
the kind of annotation field.
"""
def __init__(self, expr, kind):
self.__init_handle_by_constructor__(
_quantize.make_annotate_expr, expr, kind)


def _forward_op(ref_call, args):
"""forward the operator of ref_call with provided arguments"""
return _expr.Call(
ref_call.op, args, ref_call.attrs, ref_call.type_args)


def _get_expr_kind(anno):
"""Get the expression and QAnnotateKind from QAnnotateExpr or Expr"""
if isinstance(anno, QAnnotateExpr):
return anno.expr, anno.kind
return anno, None


def register_annotate_function(op_name, frewrite=None, level=10):
"""register a rewrite function for operator, used by annotation.
Parameters
---------
op_name: str
The name of operation
frewrite : function, optional
The function to be registered.
level : int, optional
The priority level
"""
def default_rewrite(ref_call, new_args, ctx):
# recover from QAnnotateExpr
args = [_get_expr_kind(x)[0] for x in new_args]
return _forward_op(ref_call, args)

def _register(func):
"""internal register function"""
def frewrite_with_guard(ref_call, new_args, ctx):
if not current_qconfig().guard(ref_call):
return default_rewrite(ref_call, new_args, ctx)
return func(ref_call, new_args, ctx)
_op.op._Register(op_name, "FQAnnotateRewrite", frewrite_with_guard, level)
return frewrite_with_guard

return _register(frewrite) if frewrite is not None else _register


@register_func("relay.quantize.attach_simulated_quantize")
def attach_simulated_quantize(data, kind, sign=True, rounding="round"):
"""Attach a simulated quantize operation after input data expr.
Parameters
---------
data: Expr
the original data expr.
kind: QAnnotateKind
the kind of annotation field.
"""
dom_scale = _expr.var("dom_scale")
clip_min = _expr.var("clip_min")
clip_max = _expr.var("clip_max")
return _quantize.simulated_quantize(
data, dom_scale, clip_min, clip_max, kind, sign, rounding)


@register_annotate_function("nn.conv2d")
def conv2d_rewrite(ref_call, new_args, ctx):
"""Rewrite function for conv2d. Lhs of conv will be quantized to
input field, and rhs of conv will be quantized to weight field.
Output would be in activation field"""
cnt = _conv_counter()
if cnt < current_qconfig().skip_k_conv:
_set_conv_counter(cnt + 1)
return None
_set_conv_counter(cnt + 1)

lhs_expr, lhs_kind = _get_expr_kind(new_args[0])
rhs_expr, rhs_kind = _get_expr_kind(new_args[1])

if lhs_kind is None or lhs_kind != QAnnotateKind.INPUT:
lhs_expr = attach_simulated_quantize(lhs_expr, QAnnotateKind.INPUT)

assert rhs_kind is None
rhs_expr = attach_simulated_quantize(rhs_expr, QAnnotateKind.WEIGHT)

expr = _forward_op(ref_call, [lhs_expr, rhs_expr])
return QAnnotateExpr(expr, QAnnotateKind.ACTIVATION)


@register_annotate_function("multiply")
def multiply_rewrite(ref_call, new_args, ctx):
"""Rewrite function for multiply."""
if _conv_counter() <= current_qconfig().skip_k_conv:
return None

lhs_expr, lhs_kind = _get_expr_kind(new_args[0])
rhs_expr, rhs_kind = _get_expr_kind(new_args[1])

if lhs_kind is None and rhs_kind is None:
return None
if lhs_kind == QAnnotateKind.ACTIVATION and rhs_kind is None:
# quantize lhs to INPUT field
lhs_expr = attach_simulated_quantize(lhs_expr, QAnnotateKind.INPUT)
# quantize rhs to WEIGHT field
rhs_expr = attach_simulated_quantize(rhs_expr, QAnnotateKind.WEIGHT)
expr = _forward_op(ref_call, [lhs_expr, rhs_expr])
return QAnnotateExpr(expr, QAnnotateKind.ACTIVATION)
raise ValueError


@register_annotate_function("add")
def add_rewrite(ref_call, new_args, ctx):
"""Rewrite function for add."""
if _conv_counter() <= current_qconfig().skip_k_conv:
return None

lhs_expr, lhs_kind = _get_expr_kind(new_args[0])
rhs_expr, rhs_kind = _get_expr_kind(new_args[1])

if lhs_kind is None and rhs_kind is None:
return None
if lhs_kind is None and rhs_kind is not None:
# quantize lhs to INPUT field if it is normal expression
lhs_expr = attach_simulated_quantize(lhs_expr, QAnnotateKind.INPUT)
if lhs_kind is not None and rhs_kind is None:
if isinstance(rhs_expr, _expr.Constant):
# quantize rhs to WEIGHT field if it is Constant
rhs_expr = attach_simulated_quantize(rhs_expr, QAnnotateKind.WEIGHT)
else:
# quantize rhs to INPUT field if it is not Constant
rhs_expr = attach_simulated_quantize(rhs_expr, QAnnotateKind.INPUT)

expr = _forward_op(ref_call, [lhs_expr, rhs_expr])
return QAnnotateExpr(expr, QAnnotateKind.ACTIVATION)


def identity_rewrite(ref_call, new_args, ctx):
"""Simply forward the original operation"""
if _conv_counter() <= current_qconfig().skip_k_conv:
return None

x_expr, x_kind = _get_expr_kind(new_args[0])
if x_kind is None:
return None

ret_expr = _forward_op(ref_call, [x_expr])
return QAnnotateExpr(ret_expr, x_kind)


register_annotate_function("nn.relu", identity_rewrite)
register_annotate_function("strided_slice", identity_rewrite)
register_annotate_function("nn.avg_pool2d", identity_rewrite)


def pool2d_rewrite(ref_call, new_args, ctx):
"""Rewrite function for max pool2d"""
if _conv_counter() <= current_qconfig().skip_k_conv:
return None
expr, x_kind = _get_expr_kind(new_args[0])

if x_kind is None:
return None
if x_kind == QAnnotateKind.ACTIVATION:
expr = attach_simulated_quantize(expr, QAnnotateKind.INPUT)
expr = _forward_op(ref_call, [expr])
return QAnnotateExpr(expr, QAnnotateKind.INPUT)


register_annotate_function("nn.max_pool2d", pool2d_rewrite)


@register_annotate_function("concatenate")
def concatenate_rewrite(ref_call, new_args, ctx):
"""Rewrite function for concatenate"""
if _conv_counter() <= current_qconfig().skip_k_conv:
return None

input_tuple = new_args[0]
expr_list = [_get_expr_kind(x)[0] for x in input_tuple]
kind_list = [_get_expr_kind(x)[1] for x in input_tuple]

# make sure the inputs of concatenate are all normal
# expression or annotate expression
if kind_list[0] is None:
for k in kind_list:
assert k is None
return None
for k in kind_list:
assert k is not None
expr = _forward_op(ref_call, [_expr.Tuple(expr_list)])
return QAnnotateExpr(expr, QAnnotateKind.ACTIVATION)
6 changes: 6 additions & 0 deletions python/tvm/relay/quantize/_quantize.py
Original file line number Diff line number Diff line change
@@ -0,0 +1,6 @@
#pylint: disable=unused-argument
"""Internal module for quantization."""
from __future__ import absolute_import
from tvm._ffi.function import _init_api

_init_api("relay._quantize", __name__)
Loading

0 comments on commit acbb919

Please sign in to comment.