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python_print.cpp
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python_print.cpp
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#include <torch/csrc/jit/serialization/python_print.h>
#include <ATen/core/qualified_name.h>
#include <c10/util/Exception.h>
#include <c10/util/StringUtil.h>
#include <c10/util/irange.h>
#include <torch/csrc/jit/api/module.h>
#include <torch/csrc/jit/frontend/error_report.h>
#include <torch/csrc/jit/frontend/versioned_symbols.h>
#include <torch/csrc/jit/ir/attributes.h>
#include <torch/csrc/jit/ir/ir.h>
#include <torch/csrc/jit/ir/ir_views.h>
#include <torch/csrc/jit/resource_guard.h>
#include <torch/csrc/jit/runtime/calculate_necessary_args.h>
#include <algorithm>
using c10::QualifiedName;
namespace torch {
namespace jit {
static bool isValidIdentifierChar(char c, size_t pos) {
return islower(c) || isupper(c) || c == '_' || (pos > 0 && isdigit(c));
}
static bool isValidIdentifier(const std::string& name) {
if (name.size() == 0)
return false;
for (size_t i = 0; i < name.size(); ++i) {
if (!isValidIdentifierChar(name[i], i))
return false;
}
return true;
}
// some names are valid identifiers but off limits because
// they are keywords or namespaces used in the output
const static std::unordered_set<std::string> reserved_names = {
// identifiers in the environment while parsing
"_", // avoid the confusing unnamed _
"as",
"aten",
"attribute",
"CONSTANTS",
"fork",
"getattr",
"inf",
"nan",
"infj",
"nanj",
"ops",
"__torch__",
// the python keywords
"and",
"as",
"assert",
"async",
"await",
"break",
"class",
"continue",
"def",
"del",
"elif",
"else",
"except",
"False",
"finally",
"for",
"from",
"global",
"if",
"import",
"in",
"is",
"lambda",
"None",
"nonlocal",
"not",
"or",
"pass",
"raise",
"return",
"True",
"try",
"with",
"while",
"with",
"yield",
"uninitialized",
"unchecked_cast",
};
// Helper to avoid duplicating class types
void PrintDepsTable::add(const c10::NamedTypePtr& type) {
// Despite doing the linear search below, we don't want to do
// wasteful work and only try to insert each instance once.
if (!non_unique_.insert(type).second) {
return;
}
// Need to do actual equality comparison, not a pointer equality. This is
// because for some types (e.g. FunctionType), we may have multiple
// TypePtr's that represent the same underlying thing.
// TODO: this should be really swapped for something more efficient
auto it = std::find_if(
table_.cbegin(), table_.cend(), [&](const c10::NamedTypePtr& dep) {
return *dep == *type;
});
if (it == table_.cend()) {
table_.push_back(type);
}
}
struct PythonPrintImpl {
using SourceRangeStack = std::vector<SourceRange>;
SourceRangeStack source_range_stack_ = {SourceRange()};
struct WithSourceRange {
explicit WithSourceRange(SourceRangeStack* stack, Node* n) : stack(stack) {
TORCH_INTERNAL_ASSERT(stack);
if (auto gen_source = n->sourceRange().findSourceRangeThatGenerated()) {
stack->push_back(std::move(gen_source.value()));
} else {
stack->push_back(n->sourceRange());
}
}
~WithSourceRange() {
stack->pop_back();
}
SourceRangeStack* stack;
};
class TaggedStringStream {
public:
TaggedStringStream(const SourceRangeStack* srs) : srs_(srs) {}
TaggedStringStream& operator<<(const std::string& s) {
// This prevents having redundant entries at the same offset,
// which can happen for example in printValueList when begin
// and end are the empty string.
if (s.size() == 0) {
return *this;
}
if (!ranges_.size() || ranges_.back().range != srs_->back()) {
ranges_.emplace_back((size_t)oss_.tellp(), srs_->back());
}
oss_ << s;
return *this;
}
TaggedStringStream& operator<<(const TaggedStringStream& rhs) {
for (const auto& range : rhs.ranges_) {
if (!ranges_.size() || ranges_.back().range != range.range) {
ranges_.emplace_back((size_t)oss_.tellp() + range.bytes, range.range);
}
}
oss_ << rhs.oss_.str();
return *this;
}
// This overload is here to prevent people from shooting themselves in the
// foot. I would be highly surprised if someone actually wanted to write out
// the address of a TaggedStringStream in the pretty print.
TaggedStringStream& operator<<(
const std::shared_ptr<TaggedStringStream>& rhs) {
(*this) << *rhs;
return *this;
}
template <typename T>
TaggedStringStream& operator<<(const T& t) {
if (!ranges_.size() || ranges_.back().range != srs_->back()) {
ranges_.emplace_back((size_t)oss_.tellp(), srs_->back());
}
oss_ << t;
return *this;
}
std::string str() const {
return oss_.str();
}
const std::vector<TaggedRange>& ranges() const {
return ranges_;
}
private:
std::ostringstream oss_;
std::vector<TaggedRange> ranges_;
const SourceRangeStack* srs_;
};
// scanValue, scanNode, scanBlock:
// decide if it is safe to omit the output of a temporary variable,
// and inline the expression into its use
// we only do this if
// (1) it is a constant, or
// (2) the temporary is unnamed, is single output, is used once,
// and would appear in the same order when the expression tree is
// reparsed.
// The last case can be checked
// because when we emit a expresion tree in the parser,
// we do a left-to-right postorder traversal of the expression tree (emit
// children, then emit op). The reverse of this is a right-to-left preorder
// traversal of the tree. By doing a right-to-left preorder traversal of the
// inputs of a node, while also scanning the list of emitted nodes backward,
// we can see if they line up with what would happen when parsed the node as
// an expression. While they line up we collapse them into an inline
// expression.
// The inductive step is that the right-most input should be produced by the
// node immediatly before the current node if it is in tree order.
bool canInline(Value* v) {
Node* n = v->node();
// there must be only 1 values, otherwise we need an assignment to handle
// the multiple outout values
if (n->outputs().size() != 1)
return false;
// if it is used more than once, then we need a variable
if (v->uses().size() != 1)
return false;
auto use = v->uses().at(0);
// if it has a name set, then it was written as a variable so preserve that
// unless it is being fed directly to the end of the block.
// in which case it is not as useful to give it a name just to return it
if (v->hasDebugName() && use.user->kind() != prim::Return)
return false;
// don't try to inline control blocks
if (n->blocks().size() != 0)
return false;
// if it is a loop-carried input, we need a variable
// otherwise the condition or trip count may be emitted in the wrong order
// w.r.t. to it
if (use.user->kind() == prim::Loop && use.offset >= 2)
return false;
// subgraph may use this more than once, so disable inlining
if (use.user->kind() == prim::fork || use.user->kind() == prim::rpc_async ||
use.user->kind() == prim::rpc_sync ||
use.user->kind() == prim::rpc_remote)
return false;
// isinstance appearing in an if expression
// causes type refinement to occur, but we have
// already handled the refinement and inserted cast
// expressions. By not inlining it into the if condition,
// we prevent it from happening again.
if (v->node()->kind() == prim::isinstance) {
return false;
}
return true;
}
// block_point is the current node in the reverse linear scan of the emitted
// nodes v is the current value in the tree traversal that may match with
// block_point's output.
Node* scanValue(Node* block_point, Value* v) {
Node* n = v->node();
AT_ASSERT(n->kind() == prim::Constant || output_inline_.count(n) == 0);
if (n == block_point &&
canInline(v)) { // the node must be at the expected point of the typical
// tree traversal
// recursively see if we can inline the inputs to this input
block_point = scanNode(block_point);
output_inline_.insert(n);
} else if (n->kind() == prim::Constant) {
// constant nodes can always be inlined, we will de-dup them on parsing
// and put them at the top of the function regardless
output_inline_.insert(n);
}
return block_point;
}
Node* previousNonConstant(Node* n) {
do {
n = n->prev();
} while (n->kind() == prim::Constant);
return n;
}
Node* scanNode(Node* n) {
// don't bother to scan nodes we have already determined to be inline
if (output_inline_.count(n)) {
return n;
}
for (auto b : n->blocks()) {
scanBlock(b);
}
Node* block_point = previousNonConstant(n);
for (auto it = n->inputs().rbegin(), end = n->inputs().rend(); it != end;
++it) {
block_point = scanValue(block_point, *it);
}
return block_point;
}
void scanBlock(Block* b) {
scanNode(b->return_node());
for (auto node : b->nodes().reverse()) {
scanNode(node);
}
}
size_t getOrAddConstant(at::IValue val) {
// XXX - N^2 warning. This code does the exact same thing as
// ConstantPool, which is also N^2 in the size of the constants,
// because it doesn't hash any information about the tensors.
// We will probably need to optimize this at some point using hashing.
if (val.isTensor()) {
auto& t = val.toTensor();
for (size_t i = 0; i < constant_table_.size(); ++i) {
if (!constant_table_[i].isTensor()) {
continue;
}
auto& t2 = constant_table_[i].toTensor();
if (t.options().type_equal(t2.options()) && t.equal(t2)) {
return i;
}
}
}
constant_table_.emplace_back(std::move(val));
return constant_table_.size() - 1;
}
std::unordered_set<Node*> seen_constants;
void buildConstantList(Node* n, std::vector<Node*>& constants) {
for (auto input : n->inputs()) {
if (input->node()->kind() == prim::Constant &&
seen_constants.count(input->node()) == 0) {
constants.push_back(input->node());
seen_constants.insert(input->node());
}
}
for (auto b : n->blocks()) {
buildConstantList(b, constants);
}
}
void buildConstantList(Block* b, std::vector<Node*>& constants) {
for (auto n : b->nodes())
buildConstantList(n, constants);
buildConstantList(b->return_node(), constants);
}
// get a new name unique across calls to debugName() and
// anything we have used.
std::unordered_map<std::string, size_t> next_id;
std::string genNameImpl(
const std::string& candidate,
std::unordered_set<std::string>& used) {
std::string name = candidate;
while (used.count(name) || reserved_names.count(name)) {
// NOLINTNEXTLINE(performance-inefficient-string-concatenation)
name = candidate + c10::to_string(next_id[name]++);
}
used.insert(name);
return name;
}
std::string genName(const std::string& candidate) {
return genNameImpl(candidate, used_names_);
}
// unique names might not be valid identifiers,
// force them to be by rewriting them
static std::string makeValidIdentifier(const std::string& candidate) {
std::stringstream ss;
if (candidate.size() == 0 || isdigit(candidate[0]))
ss << "_";
for (char c : candidate) {
if (isupper(c) || islower(c) || isdigit(c) || c == '_')
ss << c;
else
ss << '_';
}
return ss.str();
}
// if we have to assign 'v' a name, what should it be?
// use the debugName if it was set, otherwise generate a name.
std::string genUniqueNameFor(Value* v) {
return genName(
v->hasDebugName() ? makeValidIdentifier(v->debugNameBase()) : "_");
}
// map from Value to how it should be printed at each use
std::unordered_map<Value*, std::shared_ptr<TaggedStringStream>> expr_table_;
std::unordered_map<Value*, std::string> ident_refs_;
// NB: we MUST pass around the shared pointers to these streams by value.
// There is an interaction in splitLongInlines where the string value for
// both the RHS and the LHS of an expression are live at the same time,
// however the value for the RHS is overwritten in the table.
std::shared_ptr<TaggedStringStream> useOf(Value* v) const {
// Ident refs take precedent over expression refs, since presence in
// the ident ref table indicates we have already emitted a statement
// assigning the given value.
if (ident_refs_.count(v)) {
auto rv = std::make_shared<TaggedStringStream>(&source_range_stack_);
(*rv) << ident_refs_.at(v);
return rv;
}
if (expr_table_.count(v)) {
return expr_table_.at(v);
}
TORCH_INTERNAL_ASSERT(
false,
"Value was not present in either expressions"
" table or ident refs table");
}
void assignValue(Value* v, const std::string& s) {
ident_refs_[v] = s;
}
void assignValue(Value* v, std::shared_ptr<TaggedStringStream> s) {
expr_table_[v] = std::move(s);
}
void assignValue(Value* v, Value* w) {
assignValue(v, useOf(w));
}
void assignValuesToTheirUniqueNames(at::ArrayRef<Value*> values) {
for (auto v : values) {
assignValue(v, genUniqueNameFor(v));
}
}
size_t level = 0;
// indent to the current indent level
TaggedStringStream& indent() {
for (size_t i = 0; i < level; ++i) {
body_ << " ";
}
return body_;
}
ResourceGuard WithIndented() {
level++;
return ResourceGuard([this] { level--; });
}
template <class T0, class T1, class F>
void zipWith(at::ArrayRef<T0> list_a, at::ArrayRef<T1> list_b, F action)
const {
auto it_a = list_a.begin();
auto it_b = list_b.begin();
if (list_a.size() != list_b.size()) {
AT_ERROR("Python printer expected 2 lists of same size");
}
for (; it_a != list_a.end(); ++it_a, ++it_b) {
action(*it_a, *it_b);
}
}
void printValueList(
TaggedStringStream& stmt,
at::ArrayRef<Value*> list,
const char* begin = "",
const char* end = "") {
stmt << begin;
auto delimiter = "";
for (auto* value : list) {
stmt << delimiter;
stmt << useOf(value);
delimiter = ", ";
}
stmt << end;
}
void printValueIndex(TaggedStringStream& stmt, at::ArrayRef<Value*> inputs) {
const std::string val_name = useOf(inputs[0])->str();
if (isValidIdentifier(val_name)) {
stmt << val_name;
} else {
stmt << "(" << val_name << ")";
}
stmt << "[";
stmt << useOf(inputs[1]);
stmt << "]";
}
void printDict(
TaggedStringStream& stmt,
at::ArrayRef<Value*> key_value_pairs,
const char* begin = "{",
const char* end = "}") {
stmt << begin;
auto delimiter = "";
for (size_t i = 0; i < key_value_pairs.size(); i += 2) {
stmt << delimiter;
auto key = key_value_pairs[i];
auto value = key_value_pairs[i + 1];
stmt << useOf(key) << ": " << useOf(value);
delimiter = ", ";
}
stmt << end;
}
void printAssignment(at::ArrayRef<Value*> lhs, at::ArrayRef<Value*> rhs) {
if (lhs.size() == 0) {
return;
}
indent();
printValueList(body_, lhs);
body_ << " = ";
printValueList(body_, rhs);
body_ << "\n";
}
bool requiresAnnotation(Value* lhs, Value* rhs) {
return *lhs->type() != *rhs->type();
}
void printAnnotatedAssignment(
at::ArrayRef<Value*> lhs,
at::ArrayRef<Value*> rhs) {
for (size_t i = 0; i < lhs.size(); ++i) {
indent();
body_ << useOf(lhs[i]);
if (requiresAnnotation(lhs[i], rhs[i])) {
body_ << ": " << lhs[i]->type()->annotation_str(type_printer_);
}
body_ << " = " << useOf(rhs[i]) << "\n";
}
}
void printIf(IfView stmt) {
assignValuesToTheirUniqueNames(stmt.outputs());
indent() << "if " << useOf(stmt.cond()) << ":\n";
{
auto guard = WithIndented();
// Print node contents
printBlock(stmt.thenBlock(), stmt.outputs().size() > 0);
printAssignment(stmt.outputs(), stmt.thenOutputs());
}
indent() << "else:\n";
{
auto guard = WithIndented();
printBlock(stmt.elseBlock(), stmt.outputs().size() > 0);
printAssignment(stmt.outputs(), stmt.elseOutputs());
}
}
void printLoop(LoopView stmt) {
// Loop carried dependencies are handled by assigning their initial
// values to the node->outputs() before the loop,
// and assign node->outputs() to the new values at the end of each trip.
auto loop_type = stmt.loopType();
if (loop_type == LoopView::ModifiedLoop) {
throw ErrorReport(stmt.node()->sourceRange())
<< "loop cannot be printed as python "
<< "because it has gone through an optimization "
<< "that combined while and for loops. File a bug";
}
bool emit_as_for_loop = loop_type == LoopView::For;
assignValuesToTheirUniqueNames(stmt.carriedOutputs());
// Add aliases for loop-carried dependencies
zipWith(
stmt.bodyCarriedInputs(), // Start at 1 to ignore trip count
stmt.carriedOutputs(),
[&](Value* block_input, Value* node_output) {
assignValue(block_input, node_output);
});
// Print initial assignments of loop node outputs = loop node inputs
printAnnotatedAssignment(stmt.carriedOutputs(), stmt.carriedInputs());
assignValuesToTheirUniqueNames(stmt.currentTripCount());
// Loop header
if (emit_as_for_loop) {
indent();
body_ << "for " << useOf(stmt.currentTripCount()) << " in range("
<< useOf(stmt.maxTripCount()) << "):\n";
} else {
// note: trip_count_in_block is unused because this is a while loop,
// so we reuse the Value* as a stand-in for the loop condition
printAssignment(stmt.currentTripCount(), stmt.inputCond());
indent();
body_ << "while " << useOf(stmt.currentTripCount()) << ":\n";
}
// Loop body
{
ResourceGuard indent = WithIndented();
// Update block outputs to block inputs for next loop iteration
// skip the assignment to the new condition in for loops because
// the condition is always True
size_t offset = emit_as_for_loop ? 1 : 0;
auto body_block = stmt.bodyBlock();
ArrayRef<Value*> loop_carried_block_inputs =
body_block->inputs().slice(offset);
printBlock(body_block, loop_carried_block_inputs.size() > 0);
printAssignment(
loop_carried_block_inputs, body_block->outputs().slice(offset));
}
}
bool isLongLine(const std::string& str) {
// NOLINTNEXTLINE(cppcoreguidelines-avoid-magic-numbers)
return str.size() + level * 2 >= 40;
}
bool isLongInline(Node* node) {
return output_inline_.count(node) &&
isLongLine(useOf(node->output())->str());
}
bool isNonConstantInline(Value* input) {
return input->node()->kind() != prim::Constant &&
output_inline_.count(input->node());
}
// [reordering of inlines]
// We inline anything that is semantically legal to inline, but sometimes
// we find that these lines get too long. In that case we break the lines
/// and it is important that we un-inline all the inputs preceeding the long
/// input:
// r = foo(x.add_(b), some_long + expression)
// wrong!
// _0 = some_long + expression
// r = foo(x.add_(b), _0) # wrong! _0 runs before mutating add_
// legal!
// _0 = x.add_(b)
// _1 = some_long + expression
// r = foo(_0, _1)
void splitLongInlines(Value* v) {
std::vector<Value*> to_split_reversed;
Use u = v->uses().at(0);
scanLongInlines(u.user, u.offset, to_split_reversed);
for (auto it = to_split_reversed.rbegin(), end = to_split_reversed.rend();
it != end;
++it) {
printOutputDefinition((*it)->node(), *useOf(*it));
}
}
void scanLongInlines(
Node* user,
int64_t offset,
std::vector<Value*>& to_split_reversed) {
auto it = visited_split_inline_uses_.find(user);
bool present = it != visited_split_inline_uses_.end();
for (int64_t i = offset; i >= (present ? it->second + 1 : 0); --i) {
Value* prev_arg = user->input(i);
if (isNonConstantInline(prev_arg)) {
to_split_reversed.push_back(prev_arg);
}
}
visited_split_inline_uses_[user] = offset;
if (!present && output_inline_.count(user)) {
Use u = user->output()->uses().at(0);
scanLongInlines(u.user, int64_t(u.offset) - 1, to_split_reversed);
// -1 because the actual use is still being
// emitted so it cannot be split
}
}
template <typename T>
void printOutputDefinition(Node* node, const T& expr) {
assignValuesToTheirUniqueNames(node->outputs());
indent();
// Print outputs
if (node->outputs().size() > 0) {
printValueList(body_, node->outputs());
body_ << " = ";
}
body_ << expr << "\n";
}
// Recursively check contained types for any class dependencies
void registerClassDependencies(const TypePtr& type) {
if (const auto classType = type->cast<ClassType>()) {
deps_table_.add(classType);
} else if (const auto tupleType = type->cast<TupleType>()) {
if (tupleType->name()) {
deps_table_.add(tupleType);
}
} else if (const auto interfaceType = type->cast<InterfaceType>()) {
deps_table_.add(interfaceType);
} else if (const auto enumType = type->cast<EnumType>()) {
deps_table_.add(enumType);
}
for (const auto& containedType : type->containedTypes()) {
registerClassDependencies(containedType);
}
}
void scanTypeDependencies(Node* node) {
// Check for class dependencies. If this node inputs or outputs a class
// type, we need to add it to our table of dependencies.
for (const auto input : node->inputs()) {
registerClassDependencies(input->type());
}
for (const auto output : node->outputs()) {
registerClassDependencies(output->type());
}
for (const auto& name : node->attributeNames()) {
switch (node->kindOf(name)) {
case AttributeKind::ty:
registerClassDependencies(node->ty(name));
break;
case AttributeKind::tys:
for (const TypePtr& t : node->tys(name)) {
registerClassDependencies(t);
}
break;
default:
// noop
break;
}
}
}
void checkVersion(const Node* const node) {
min_version_ =
std::max(min_version_, get_min_version_for_kind(node->kind()));
}
void printNode(Node* node, bool print_const) {
WithSourceRange guard(&source_range_stack_, node);
scanTypeDependencies(node);
checkVersion(node);
if (!print_const && node->kind() == prim::Constant)
return;
switch (node->kind()) {
case prim::Return:
if (enforce_importable_ && node->inputs().size() != 1) {
throw ErrorReport(node->sourceRange())
<< "Exportable methods must have a single return value. "
<< "Normal use of ScriptMethods should enforce this";
}
if (node->inputs().size() > 0) {
indent();
body_ << "return ";
printValueList(body_, node->inputs());
body_ << "\n";
}
break;
case prim::Loop:
printLoop(LoopView(node));
break;
case prim::If:
printIf(IfView(node));
break;
case prim::TupleUnpack:
case prim::ListUnpack:
assignValuesToTheirUniqueNames(node->outputs());
indent();
// TupleUnpack(unpacked) turns into an assignment op that forces
// the unpack to be inserted when parsed back in:
// a, b, = unpacked
// a, = unpacked # trailing comma forces an unpack to happen
if (node->outputs().size() > 0) {
printValueList(body_, node->outputs(), "", ", = ");
}
body_ << useOf(node->input()) << "\n";
break;
case prim::SetAttr: {
const auto obj = node->inputs().at(0);
const auto newVal = node->inputs().at(1);
const auto type = obj->type()->expect<ClassType>();
const auto& attrname = node->s(attr::name);
indent();
body_ << useOf(obj) << "." << attrname << " = " << useOf(newVal)
<< "\n";
} break;
case prim::fork: {
// the subgraph gets emitted as another function
auto name = genName("__forked_function");
std::shared_ptr<Graph> graph = node->g(attr::Subgraph);
indent();
body_ << "def " << name << "():\n";
for (size_t i = 0; i < node->inputs().size(); ++i) {
assignValue(graph->inputs().at(i), node->inputs().at(i));
}
printBody(graph->block());
std::stringstream ss;
ss << "fork(" << name << ")";
printOutputDefinition(node, ss.str());
} break;
case prim::Enter: {
const auto in = node->inputs().at(0);
const auto out = node->outputs().at(0);
indent();
body_ << "with " << useOf(in);
if (out->uses().size() > 0) {
assignValue(out, genUniqueNameFor(out));
body_ << " as " << useOf(out);
}
body_ << ":\n";
level++;
} break;
case prim::Exit: {
// If the previous node is a prim::Enter, the with block the generated
// this Enter/Exit pair must have been empty.
if (node->prev()->kind() == prim::Enter) {
indent();
body_ << "pass\n";
}
level--;
} break;
case prim::Closure: {
if (enforce_importable_) {
throw ErrorReport(node->sourceRange())
<< "closures are not exportable";
}
assignValuesToTheirUniqueNames(node->outputs());
auto name = useOf(node->output())->str();
std::shared_ptr<Graph> graph = node->g(attr::Subgraph);
indent();
body_ << "def " << name << "(";
assignValuesToTheirUniqueNames(graph->inputs());
for (size_t i = 0; i < graph->inputs().size(); ++i) {
Value* v = graph->inputs().at(i);
if (i > 0) {
body_ << ", ";
}
body_ << useOf(v) << ": " << v->type()->annotation_str(type_printer_);
}
body_ << "):\n";
printBody(graph->block());
} break;
case prim::ModuleContainerIndex: {
const auto container = node->inputs().at(0);
const auto key = node->inputs().at(1);
const auto out = node->outputs().at(0);
assignValuesToTheirUniqueNames(out);
indent();
body_ << useOf(out) << " : " << out->type()->annotation_str() << " = "
<< useOf(container) << "[" << useOf(key) << "]\n";
} break;
default:
auto ss = std::make_shared<TaggedStringStream>(&source_range_stack_);
printRHS(*ss, node);
// we prevent long constants from inlining here.
// it is not safe to do the same thing for non-constants here
// because of [reordering of inlines]
if (output_inline_.count(node) == 0 ||
(node->kind() == prim::Constant && isLongLine(ss->str()))) {
printOutputDefinition(node, *ss);
} else {
// this node is safe to inline, so assign the output value
// to that expression directly
assignValue(node->output(), ss);
if (isLongLine(ss->str())) {
splitLongInlines(node->output());
}
}
}
}
static bool containsNonASCIIString(const IValue& val) {
bool hasNonASCII = false;
auto checkSubvalue = [&hasNonASCII](const IValue& val) {
if (val.isString()) {
const auto maxASCII = 0x7fu;
for (auto& c : val.toStringRef()) {
// NOLINTNEXTLINE(clang-diagnostic-sign-compare)
if (c > maxASCII) {
hasNonASCII = true;
return true;
}
}
}
return false;
};
val.visit(checkSubvalue);
return hasNonASCII;
}
void printConstant(TaggedStringStream& stmt, const IValue& v) {
const auto customFormatter = [&](std::ostream& ss, const IValue& v) {
if (v.isTensor() || containsNonASCIIString(v) || v.isObject()) {
TORCH_INTERNAL_ASSERT(!v.type()->is_module());
ss << "CONSTANTS.c" << getOrAddConstant(v);
return true;
}
if (v.isTuple() && v.type()->expectRef<TupleType>().schema()) {
// print the namedtuple constructor and let rest of tuple printing
// continue
ss << v.type()->expectRef<TupleType>().annotation_str(type_printer_);
}
return false;
};
std::stringstream ss;
v.repr(ss, customFormatter);
stmt << ss.str();
}
void printOpName(TaggedStringStream& stmt, Symbol kind) {
// Special overriding ops set that requires serializing differently to
// preserve the original code semantics.
// This will be more properly handled when we have namespace semantics
// for serializing the ops, and it right now hard coded these ops to
// ensure consistency and not breaking BC in the future.
const static std::unordered_map<Symbol, std::string> override_symbols = {
{aten::backward, "torch.autograd.backward"},
{aten::grad, "torch.autograd.grad"},
};
if (override_symbols.find(kind) != override_symbols.end()) {
stmt << override_symbols.at(kind);
} else if (kind.is_aten()) {
// special case aten -> torch because we want to rename
// the aten namespace, but this change will take more time
// doing it here ensures we do not have fix up archives later
stmt << "torch." << kind.toUnqualString();
} else {
stmt << "ops." << kind.ns().toUnqualString() << "."
<< kind.toUnqualString();
}
}
// Prints the RHS value of a Node, e.g. `aten.add(x, y)`
void printRHS(TaggedStringStream& stmt, Node* node) {
switch (node->kind()) {
case prim::PythonOp: {
auto value = static_cast<const PythonOp*>(node);
if (enforce_importable_) {
throw ErrorReport(node->sourceRange())
<< "Could not export Python function call '" << value->name()
<< "'. Remove calls to Python functions before export. "
<< "Did you forget to add @script or @script_method annotation? "
<< "If this is a nn.ModuleList, add it to __constants__";
}
std::stringstream scalars_stream;
stmt << "^" << value->name();
value->writeScalars(scalars_stream);
stmt << scalars_stream.str();
printValueList(stmt, node->inputs(), "(", ")");
} break;
case prim::Uninitialized: {
stmt << "uninitialized("
<< node->output()->type()->annotation_str(type_printer_) << ")";
} break;
case prim::Constant: {
if (node->outputs().size() == 1 &&
node->output()->type()->kind() == TypeKind::FunctionType) {
auto fn = node->output()->type()->expect<FunctionType>();
deps_table_.add(fn);
stmt << fn->annotation_str(type_printer_);
} else if (!node->mustBeNone()) {
IValue v = toIValue(node->output()).value();
printConstant(stmt, v);
} else {
stmt << "None";
}
} break;
case aten::ScalarImplicit:
case aten::FloatImplicit:
case aten::IntImplicit: {
stmt << "annotate("
<< node->output()->type()->annotation_str(type_printer_) << ", "
<< useOf(node->input()) << ")";
} break;
case aten::Int: {
printValueList(stmt, node->inputs(), "int(", ")");
} break;
case aten::Float: {
printValueList(stmt, node->inputs(), "float(", ")");
} break;
case aten::Bool: {
printValueList(stmt, node->inputs(), "bool(", ")");
} break;
case aten::str: {
printValueList(stmt, node->inputs(), "str(", ")");
} break;
case aten::__getitem__: {
printValueIndex(stmt, node->inputs());
} break;
case prim::Print: {
printValueList(stmt, node->inputs(), "print(", ")");
} break;
case aten::sorted: {
printValueList(stmt, node->inputs(), "sorted(", ")");
} break;
case prim::TupleConstruct: {
if (auto qualname =
node->output()->type()->expectRef<TupleType>().name()) {
stmt << node->output()->type()->annotation_str(type_printer_);
}
printValueList(
stmt, node->inputs(), "(", node->inputs().size() == 1 ? ",)" : ")");
} break;
case prim::TupleIndex: {
stmt << "(" << useOf(node->inputs().at(0)) << ")["
<< useOf(node->inputs().at(1)) << "]";
} break;