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tracer.cpp
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tracer.cpp
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#include <torch/csrc/jit/tracer.h>
#include <torch/csrc/utils/variadic.h>
#include <torch/csrc/jit/constants.h>
#include <ATen/core/functional.h>
#include <ATen/Backtrace.h>
#include <c10/util/Exception.h>
#include <torch/csrc/autograd/engine.h>
#include <torch/csrc/autograd/function.h>
#include <torch/csrc/autograd/variable.h>
#include <torch/csrc/jit/passes/dead_code_elimination.h>
#include <torch/csrc/jit/passes/remove_expands.h>
#include <torch/csrc/jit/script/module.h>
#include <ATen/core/Dict.h>
#include <memory>
#include <sstream>
#include <string>
namespace torch {
namespace jit {
namespace tracer {
////////////////////////////////////////////////////////////////////////////////
// Recording the traces
////////////////////////////////////////////////////////////////////////////////
namespace detail {
template <typename T>
void genericAddInput(Node* n, T value) {
Value* v = n->owningGraph()->insertConstant(value);
recordSourceLocation(v->node());
n->addInput(v);
}
template <typename T>
void badArgType(const T& v) {
AT_ERROR(
"Found an unsupported argument type in the JIT tracer: ",
c10::demangle_type<T>(),
". File a bug report.");
}
thread_local std::shared_ptr<TracingState> tracing_state;
} // namespace detail
std::function<void()> pauseTracing() {
// NOLINTNEXTLINE
std::shared_ptr<tracer::TracingState> state = getTracingState();
tracer::setTracingState(nullptr);
return [state]() { tracer::setTracingState(state); };
}
void delValueTrace(const IValue& var) {
getTracingState()->delValue(var);
}
void TracingState::delValue(const IValue& var) {
for (size_t i = 0; i < env_stack.size(); ++i) {
auto& value_map = env_stack.at(env_stack.size() - 1 - i);
auto it = value_map.find(var);
if (it == value_map.end()) {
continue;
}
value_map.erase(it);
}
}
// Given a IValue 'var', return the 'node' which represents the instruction
// which computes the value of this variable in the IR.
// Here, we interpret untraced variables as constants that are just embedded
// in the graph. This is useful to handle code which does things like this
// (from torch.autograd.variable, now moved to C++):
//
// def mm(self, matrix):
// output = Variable(self.data.new(self.data.size(0), matrix.data.size(1)))
// return Addmm.apply(output, self, matrix, 0, 1, True)
//
// Here, mm fakes up a dummy variable with uninitialized data to do an inplace
// update on, but subsequently ignores it because the alpha scaling factor is
// zero. This is one of the cases where a Variable can be created inside of a
// trace, and if we treat it as a constant, everything will work out.
Value* getValueTrace(const IValue& var) {
return getTracingState()->getValue(var);
}
Value* TracingState::getValue(const IValue& var) {
// allow tracing of tuples passed to List[Tensor] or Tuple[Tensor...] arguments
if (var.isTensorList()) {
return graph
->insertNode(graph->createList(
TensorType::get(),
fmap(
var.toTensorListRef(),
[&](const IValue& val) { return getValue(val); })))
->output();
} else if (var.isTuple()) {
return graph
->insertNode(graph->createTuple(fmap(
var.toTuple()->elements(),
[&](const IValue& val) { return getValue(val); })))
->output();
} if (var.isTensor()) {
auto ten = var.toTensor();
if (!ten.defined()) {
Node* n = graph->createNone();
return graph->insertNode(n)->output();
}
for (size_t i = 0; i < env_stack.size(); ++i) {
auto& value_map = env_stack.at(env_stack.size() - 1 - i);
auto it = value_map.find(var);
if (it == value_map.end()) {
continue;
}
if (!it->second->hasDebugName()) {
auto unique_name = getTracingState()->lookup_var_name_fn(ten);
if (!unique_name.empty()) {
it->second->setDebugName(unique_name);
}
}
return it->second;
}
// Didn't find it. Bake in a constant
if (ten.is_variable() && ten.requires_grad()) {
pauseTracing();
std::ostringstream oss;
oss << "Cannot insert a Tensor that requires grad as a constant. "
<< "Consider making it a parameter or input, or detaching the gradient\n"
<< "Tensor:\n"
<< ten;
throw std::runtime_error(oss.str());
}
Value* constant = graph->insertConstant(ten);
recordSourceLocation(constant->node());
constant->inferTypeFrom(ten);
auto it = env_stack.back().emplace(var, constant);
return it.first->second;
} else if (var.isFuture() || var.isObject()) {
for (size_t i = 0; i < env_stack.size(); ++i) {
auto& future_map = env_stack.at(env_stack.size() - 1 - i);
auto it = future_map.find(var);
if (it == future_map.end()) {
continue;
}
return it->second;
}
std::ostringstream oss;
if (var.isFuture()) {
oss << "Tried to trace Future or Object that the tracer was not aware of.";
} else {
oss << "Tried to trace " << var << " but it is not part of the active trace. Modules that are called during a trace"
<< " must be registered as submodules of the thing being traced.";
}
throw std::runtime_error(oss.str());
} else {
// If the values are non-tensors, we try to create constants
// and bake those constants into the traced graph
auto constant = tryInsertConstant(*graph, var);
if (constant) {
recordSourceLocation(constant.value()->node());
return *constant;
}
std::ostringstream os;
os << "Tracer cannot get value trace for type " << var.tagKind() << ". "
<< "The below value could not be materialized as a constant:\n"
<< var;
throw std::runtime_error(os.str());
}
}
bool TracingState::hasValue(const IValue& var) const {
for(const auto & frame : env_stack) {
if (frame.count(var)) {
return true;
}
}
return false;
}
Value* TracingState::getOutput(const IValue& iv) {
if (iv.isTensor()) {
at::Tensor var = iv.toTensor();
if (!var.defined()) {
Node* n = graph->createNone();
return graph->insertNode(n)->output();
}
auto &value_map = getTracingState()->env_stack.back();
auto it = value_map.find(iv);
if (it == value_map.end()) {
std::ostringstream os;
os << "output of traced region did not have observable "
<< "data dependence with trace inputs; this probably indicates your "
"program "
<< "cannot be understood by the tracer.";
throw std::runtime_error(os.str());
}
return it->second;
} else if (iv.isTuple()) {
auto tuple = iv.toTuple()->elements();
auto tuple_node = graph->createTuple(
fmap(tuple, [&](const IValue& ival) { return getOutput(ival); }));
graph->insertNode(tuple_node);
return tuple_node->output();
} else {
AT_ERROR(
"Only tensors or tuples of tensors can be output from traced functions");
}
}
// XXX: this function mutates input
static IValue addInput(const std::shared_ptr<TracingState> & state, const IValue& input, const TypePtr& type, Value* value) {
value->setType(type);
if (type->isSubtypeOf(TensorType::get())) {
auto input_tensor = input.toTensor();
auto name = Variable(input_tensor).name();
if (state->hasValue(input)) {
input_tensor = input_tensor.view(input_tensor.sizes());
}
value->setDebugName(name);
state->setValue(input_tensor, value);
return input_tensor;
} else if (auto tuple_type = type->cast<TupleType>()) {
auto unpack_node =
state->graph->insertNode(state->graph->createTupleUnpack(value));
auto elem_values = unpack_node->outputs();
auto elem_types = tuple_type->elements();
auto tuple = input.toTuple();
auto elems = tuple->elements();
size_t num_elems = elems.size();
AT_ASSERT(
elem_values.size() == num_elems && elem_types.size() == num_elems);
for (size_t i = 0; i < num_elems; ++i) {
elems[i] = addInput(state, elems.at(i), elem_types[i], elem_values[i]);
}
return std::move(tuple);
} else if (auto dict_type = type->cast<DictType>()) {
auto dict = input.toGenericDict();
auto dict_size = dict.size();
auto unpack_to_list = state->graph->insert(aten::values, {value});
auto list_unpack = state->graph->createListUnpack(unpack_to_list, dict_size);
auto unpack_node = state->graph->insertNode(list_unpack);
auto elem_values = unpack_node->outputs();
const auto order = iterationOrder(dict);
AT_ASSERT(order.size() == elem_values.size());
size_t i = 0;
for (const auto &pair : order) {
dict.insert_or_assign(pair.first, addInput(state, pair.second, dict_type->getValueType(), elem_values[i++]));
}
return std::move(dict);
} else if (auto list_type = type->cast<ListType>()) {
size_t num_elems = input.isGenericList() ? input.toGenericListRef().size()
: input.toTensorListRef().size();
auto list_unpack = state->graph->insertNode(state->graph->createListUnpack(value, num_elems));
auto unpack_outputs = list_unpack->outputs();
if (input.isTensorList()) {
auto elems = input.toTensorList();
for (size_t i = 0; i < num_elems; i++) {
elems[i] = addInput(state, elems.get(i), list_type->getElementType(), unpack_outputs[i]).toTensor();
}
return elems;
} else {
auto elems = input.toGenericList();
for (size_t i = 0; i < num_elems; i++) {
elems[i] = addInput(state, elems.get(i), list_type->getElementType(), unpack_outputs[i]);
}
return elems;
}
} else {
AT_ERROR(
"Only tensors or (possibly nested) dict or tuples of tensors can be "
"inputs to traced functions. Got ", type->python_str());
}
}
static void gatherParametersAndBuffers(
const std::shared_ptr<TracingState>& state,
Value* self_value,
const script::Module& self) {
Graph& g = *self_value->owningGraph();
state->setValue(self.module_object(), self_value);
for (script::Slot s : self.get_slots()) {
if (s.type()->isSubtypeOf(TensorType::get())) {
addInput(
state, s.value(), s.type(), g.insertGetAttr(self_value, s.name()));
} else if (s.entity_type() == script::EntityType::MODULE) {
gatherParametersAndBuffers(
state, g.insertGetAttr(self_value, s.name()), s.to_module());
}
}
}
// Start tracing, treating 'inputs' as inputs to the trace, which can be
// varied on subsequent invocations of the trace. Any other variables
// will be treated as constants.
std::pair<std::shared_ptr<TracingState>, Stack> enter(
TypedStack inputs,
script::Module* self) {
if (isTracing()) {
AT_ERROR("Tracing can't be nested");
}
auto state = std::make_shared<TracingState>();
setTracingState(state);
// if we are a module, then make sure the modules parameters are in the map
// and mapped to accesses to the self object
if (self) {
Value* self_value =
state->graph->insertInput(0, "self")->setType(self->module_object()->type());
gatherParametersAndBuffers(state, self_value, *self);
}
size_t i = 0;
auto input_types = inputs.types()->elements();
for (IValue& input : inputs.stack()) {
input = addInput(state,
input, input_types[i++], state->graph->addInput());
}
return std::make_pair(state, inputs.stack());
}
// Exit a trace, treating 'outputs' as the outputs of the trace. These
// are the variables whose values will be computed upon subsequent
// invocations of the trace.
void exit(const Stack& outputs) {
auto& state = getTracingState();
size_t i = 0;
for (auto& output : outputs) {
state->graph->registerOutput(state->getOutput(output));
i++;
}
setTracingState(nullptr);
}
// Abort tracing. Used to reset the state in case of errors.
void abandon() {
setTracingState(nullptr);
}
void setValueTrace(const IValue& v, Value* value) {
return getTracingState()->setValue(v, value);
}
void TracingState::setValue(const IValue& v, Value* value) {
if (v.isTensor()) {
auto var = v.toTensor();
AT_ASSERT(var.defined());
env_stack.back()[v] = value;
} else if (v.isTensorList()) {
auto outputs = v.toTensorList();
Node* unpack_node =
graph->insertNode(graph->createListUnpack(value, outputs.size()));
for (size_t i = 0; i < outputs.size(); ++i) {
setValue(outputs.get(i), unpack_node->outputs()[i]);
}
} else if (v.isTuple()) {
auto outputs = v.toTuple()->elements();
Node* unpack_node = graph->insertNode(graph->createTupleUnpack(value));
for (size_t i = 0; i < outputs.size(); ++i) {
setValue(outputs[i], unpack_node->outputs()[i]);
}
} else if (v.isGenericList()) {
auto elements = v.toGenericListRef();
Node* unpack_node =
graph->insertNode(graph->createListUnpack(value, elements.size()));
for (size_t i = 0; i < elements.size(); ++i) {
setValue(elements[i], unpack_node->outputs()[i]);
}
} else if (v.isFuture() || v.isObject()) {
env_stack.back()[v] = value;
} else {
std::ostringstream os;
os << "Tracer cannot set value trace for type " << v.tagKind() << ". "
<< "Supported types are tensor, tensor list, and tuple of tensors.";
throw std::runtime_error(os.str());
}
}
void addInputs(Node* n, const char* name, int64_t value) {
using ArgumentStash = jit::tracer::ArgumentStash;
if (ArgumentStash::hasValue(name)) {
Value* v = ArgumentStash::popValue(name);
n->addInput(v);
} else {
detail::genericAddInput(n, value);
}
}
void addInputs(Node* n, const char* name, c10::optional<int64_t> value) {
if (value) {
detail::genericAddInput(n, *value);
} else {
Graph* g = n->owningGraph();
Value* none = g->insertNode(g->createNone())->output();
n->addInput(none);
}
}
void addInputs(Node* n, const char* name, bool value) {
detail::genericAddInput(n, value);
}
void addInputs(Node* n, const char* name /* unused */, const c10::optional<bool>& value) {
if (value) {
detail::genericAddInput(n, *value);
} else {
Graph* g = n->owningGraph();
Value* none = g->insertNode(g->createNone())->output();
n->addInput(none);
}
}
void addInputs(Node* n, const char* name, double value) {
detail::genericAddInput(n, value);
}
void addInputs(Node* n, const char* name, const at::Scalar& value) {
using ArgumentStash = jit::tracer::ArgumentStash;
if (ArgumentStash::hasValue(name)) {
Value* v = ArgumentStash::popValue(name);
n->addInput(v);
} else {
detail::genericAddInput(n, value);
}
}
void addInputs(
Node* n,
const char* name,
const c10::optional<at::Scalar>& value) {
if (value) {
detail::genericAddInput(n, *value);
} else {
Graph* g = n->owningGraph();
Value* none = g->insertNode(g->createNone())->output();
n->addInput(none);
}
}
void addInputs(Node* n, const char* name, const std::string& value) {
detail::genericAddInput(n, value);
}
void addInputs(Node* n, const char* name, const at::Tensor& value) {
n->addInput(getValueTrace(value));
}
void addInputs(Node* n, const char* name, at::Generator* value) {
if (value) {
detail::badArgType(value);
}
Graph* g = n->owningGraph();
Value* undef_gen = g->insertNode(g->createNone())->output();
n->addInput(undef_gen);
}
void addInputs(Node* n, const char* name, at::Device value) {
detail::genericAddInput(n, value);
}
void addInputs(Node* n, const char* name, at::Layout value) {
detail::genericAddInput(n, static_cast<int64_t>(value));
}
void addInputs(Node* n, const char* name, at::ScalarType value) {
detail::genericAddInput(n, static_cast<int64_t>(value));
}
void addInputs(Node* n, const char* name, at::MemoryFormat value) {
detail::genericAddInput(n, static_cast<int64_t>(value));
}
void addInputs(
Node* n,
const char* name,
const c10::optional<at::MemoryFormat>& value) {
if (value) {
detail::genericAddInput(n, static_cast<int64_t>(*value));
} else {
Graph* g = n->owningGraph();
Value* none = g->insertNode(g->createNone())->output();
n->addInput(none);
}
}
void addInputs(
Node* n,
const char* name,
const c10::optional<at::ScalarType>& value) {
if (value.has_value()) {
detail::genericAddInput(n, static_cast<int64_t>(*value));
} else {
Graph* g = n->owningGraph();
Value* none = g->insertNode(g->createNone())->output();
n->addInput(none);
}
}
void addInputs(
Node* n,
const char* name,
at::TensorList value,
bool allow_undefined) {
Graph* g = n->owningGraph();
Node* list_node = nullptr;
if (allow_undefined) {
// if allow undefined, we create a list of optional tensors
list_node = g->insertNode(
g->createList(OptionalType::ofTensor(), fmap(value, getValueTrace)));
} else {
list_node = g->insertNode(
g->createList(TensorType::get(), fmap(value, getValueTrace)));
}
n->addInput(list_node->output());
}
void addInputs(Node* n, const char* name, const at::TensorOptions& options) {
// [TensorOptions in script] - update this when you change how we schematize
// TensorOptions
addInputs(n, name, at::typeMetaToScalarType(options.dtype()));
addInputs(n, name, options.layout());
addInputs(n, name, options.device());
addInputs(n, name, options.pinned_memory());
}
void addInputs(Node* n, const char* name, at::IntArrayRef value) {
using ArgumentStash = jit::tracer::ArgumentStash;
std::vector<Value*> info = ArgumentStash::hasIntArrayRef(name)
? ArgumentStash::popIntArrayRef(name)
: ArgumentStash::IntArrayRefTrace(value.size());
auto& g = getTracingState()->graph;
for (size_t i = 0; i < info.size(); ++i) {
if (info[i] != nullptr)
continue;
info[i] = g->insertConstant(value[i]);
recordSourceLocation(info[i]->node());
}
for (jit::Value* v : info) {
if (*v->type() != *jit::IntType::get()) {
throw std::runtime_error(
"Type mismatch in setposattr for IntArrayRef. Check that your program "
"is valid without tracing, and please file a bug report if it is.");
}
}
n->addInput(
g->insertNode(g->createList(jit::IntType::get(), info))->output());
}
void addInputs(Node* n, const char* name, const ArrayRef<double>& value) {
AT_ERROR("Tracing float lists currently not supported!");
}
void addInputs(Node* n, const char* name, const std::vector<double>& value) {
AT_ERROR("Tracing float lists currently not supported!");
}
void addOutput(Node* node, const at::Tensor& output) {
setOutput(node->addOutput(), output);
}
void setOutput(Value* value, const at::Tensor& output) {
if (output.defined()) {
value->inferTypeFrom(output);
setValueTrace(autograd::as_variable_ref(output), value);
}
}
void addOutput(Node* node, const std::vector<at::Tensor>& outputs) {
Value* value = node->addOutput()->setType(ListType::ofTensors());
Graph* graph = node->owningGraph();
Node* unpack_node = graph->insertNode(
graph->create(prim::ListUnpack, {value}, outputs.size()));
for (size_t i = 0; i < outputs.size(); ++i) {
Value* output_val = unpack_node->outputs()[i];
output_val->inferTypeFrom(outputs[i]);
setValueTrace(outputs[i], output_val);
}
}
const std::shared_ptr<TracingState>& getTracingState() {
return detail::tracing_state;
}
void setTracingState(std::shared_ptr<TracingState> state) {
detail::tracing_state = std::move(state);
}
TracingState::TracingState()
: graph(new Graph()), env_stack{Frame()} {}
TracingState::~TracingState() = default;
autograd::Variable getSizeOf(const autograd::Variable& var, int64_t dim) {
auto& tracing_state = getTracingState();
auto& graph = tracing_state->graph;
auto size_var =
autograd::make_variable(scalar_to_tensor(at::Scalar(var.size(dim))));
auto* value = getValueTrace(var);
auto dim_val = graph->insertConstant(dim);
recordSourceLocation(dim_val->node());
auto* node = graph->insertNode(graph->create(aten::size, {value, dim_val}));
recordSourceLocation(node);
node->output()->setType(jit::IntType::get());
auto ten =
graph->insertNode(graph->createNumToTensor(node->output()))->output();
setValueTrace(size_var, ten);
return size_var;
}
void ensureUniqueIfOutOfPlaced(const char* name, const at::Tensor& tensor) {
auto& state = getTracingState();
if (state && state->force_outplace == false) {
// If we're not converting in-place ops to out-of-place, this check is
// unnecessary
return;
}
auto aliases = tensor.storage().use_count();
if (isTracing() && aliases > 1) {
std::stringstream ss;
ss << "There are " << aliases
<< " live references to the data region being modified when tracing in-place operator "
<< name
<< ". This might cause the trace to be incorrect, because all other views "
<< "that also reference this data will not reflect this change in the trace! "
<< "On the other hand, if all other views use the same memory chunk, but are disjoint (e.g. "
<< "are outputs of torch.split), this might still be safe.";
warn(ss.str().c_str());
}
}
////////////////////////////////////////////////////////////////////////////////
// Argument stash
////////////////////////////////////////////////////////////////////////////////
thread_local ArgumentStash ArgumentStash::stash;
void ArgumentStash::stashIntArrayRefElem(
const std::string& arg_name,
size_t size,
size_t idx,
const Variable& var) {
// TODO: check type?
if (!isTracing())
return;
auto& list_trace = stash.intlists.emplace(arg_name, size).first->second;
AT_ASSERT(size == list_trace.size());
AT_ASSERT(idx < list_trace.size());
AT_ASSERT(list_trace[idx] == nullptr);
Value* ten = getValueTrace(var);
auto& g = *ten->owningGraph();
WithInsertPoint guard(ten->node()->next());
auto prim = g.insert(aten::Int, {ten});
list_trace[idx] = prim;
}
void ArgumentStash::stashValue(
const std::string& arg_name,
size_t idx,
const Variable& var,
const TypePtr& type) {
if (!isTracing())
return;
Value* ten = getValueTrace(var);
WithInsertPoint guard(ten->node()->next());
auto& g = *ten->owningGraph();
if (type == IntType::get()) {
ten = g.insert(aten::Int, {ten});
} else if (type == FloatType::get()) {
ten = g.insert(aten::Float, {ten});
} else if (type == NumberType::get()) {
ten = g.insert(prim::ImplicitTensorToNum, {ten});
}
stash.values.emplace(arg_name, ten);
}
////////////////////////////////////////////////////////////////////////////////
// Stack trace recording
////////////////////////////////////////////////////////////////////////////////
// no python present so we just do not record source information
void defaultRecordSourceLocation(Node* n) {}
std::atomic<decltype(&defaultRecordSourceLocation)> record_source_location(
defaultRecordSourceLocation);
void recordSourceLocation(Node* n) {
return record_source_location.load()(n);
}
void setRecordSourceLocation(void (*v)(Node*)) {
record_source_location.store(v);
}
void defaultWarn(const std::string& str) {
AT_WARN(str);
}
std::atomic<warn_fn_type> warn_callback{defaultWarn};
const char* WARN_PYTHON_DATAFLOW =
" might cause the trace to be incorrect. We can't record the data flow of "
"Python values, so this value will be treated as a constant in the future. "
"This means that the trace might not generalize to other inputs!";
const char* WARN_CONSTRUCTOR =
" results are registered as constants in the trace. You can safely ignore this "
"warning if you use this function to create tensors out of constant variables "
"that would be the same every time you call this function. In any other case, "
"this might cause the trace to be incorrect.";
const char* WARN_RESIZE =
" can't be represented in the JIT at the moment, so we won't connect any uses of "
"this value with its current trace. If you happen to use it again, it will show "
"up as a constant in the graph.";
// XXX: _kind can be a nullptr
void _do_warn(const char* _reason, const char* _kind) {
std::string reason{_reason};
std::string kind{_kind ? _kind : ""};
std::ostringstream s;
s << reason << kind;
warn_callback.load()(s.str());
}
void setWarn(warn_fn_type fn) {
warn_callback.store(fn);
}
} // namespace tracer
} // namespace jit
} // namespace torch