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Tf module — pxr-usd-api 105.1 documentation
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Tf module
 
# Tf module
Summary: The Tf (Tools Foundations) module.
Tf – Tools Foundation
Exceptions:
CppException
ErrorException(*args)
Classes:
CallContext
Debug
DiagnosticType
Enum
Error
MallocTag
NamedTemporaryFile([suffix, prefix, dir, text])
A named temporary file which keeps the internal file handle closed.
Notice
PyModuleWasLoaded
A TfNotice that is sent when a script module is loaded.
RefPtrTracker
Provides tracking of TfRefPtr objects to particular objects.
ScopeDescription
This class is used to provide high-level descriptions about scopes of execution that could possibly block, or to provide relevant information about high-level action that would be useful in a crash report.
ScriptModuleLoader
Provides low-level facilities for shared modules with script bindings to register themselves with their dependences, and provides a mechanism whereby those script modules will be loaded when necessary.
Singleton
StatusObject
Stopwatch
TemplateString
Tf_PyEnumWrapper
Tf_TestAnnotatedBoolResult
Tf_TestPyContainerConversions
Tf_TestPyOptional
Type
TfType represents a dynamic runtime type.
Warning
Functions:
Fatal(msg)
Raise a fatal error to the Tf Diagnostic system.
GetCodeLocation(framesUp)
Returns a tuple (moduleName, functionName, fileName, lineNo).
PrepareModule(module, result)
PrepareModule(module, result) -- Prepare an extension module at import time.
PreparePythonModule([moduleName])
Prepare an extension module at import time.
RaiseCodingError(msg)
Raise a coding error to the Tf Diagnostic system.
RaiseRuntimeError(msg)
Raise a runtime error to the Tf Diagnostic system.
Status(msg[, verbose])
Issues a status update to the Tf diagnostic system.
Warn(msg[, template])
Issue a warning via the TfDiagnostic system.
WindowsImportWrapper()
exception pxr.Tf.CppException
exception pxr.Tf.ErrorException(*args)
class pxr.Tf.CallContext
Attributes:
file
char
function
char
line
int
prettyFunction
char
property file
char
Type
type
property function
char
Type
type
property line
int
Type
type
property prettyFunction
char
Type
type
class pxr.Tf.Debug
Methods:
GetDebugSymbolDescription
classmethod GetDebugSymbolDescription(name) -> str
GetDebugSymbolDescriptions
classmethod GetDebugSymbolDescriptions() -> str
GetDebugSymbolNames
classmethod GetDebugSymbolNames() -> list[str]
IsDebugSymbolNameEnabled
classmethod IsDebugSymbolNameEnabled(name) -> bool
SetDebugSymbolsByName
classmethod SetDebugSymbolsByName(pattern, value) -> list[str]
SetOutputFile
classmethod SetOutputFile(file) -> None
static GetDebugSymbolDescription()
classmethod GetDebugSymbolDescription(name) -> str
Get a description for the specified debug symbol.
A short description of the debug symbol is returned. This is the same
description string that is embedded in the return value of
GetDebugSymbolDescriptions.
Parameters
name (str) –
static GetDebugSymbolDescriptions()
classmethod GetDebugSymbolDescriptions() -> str
Get a description of all debug symbols and their purpose.
A single string describing all registered debug symbols along with
short descriptions is returned.
static GetDebugSymbolNames()
classmethod GetDebugSymbolNames() -> list[str]
Get a listing of all debug symbols.
static IsDebugSymbolNameEnabled()
classmethod IsDebugSymbolNameEnabled(name) -> bool
True if the specified debug symbol is set.
Parameters
name (str) –
static SetDebugSymbolsByName()
classmethod SetDebugSymbolsByName(pattern, value) -> list[str]
Set registered debug symbols matching pattern to value .
All registered debug symbols matching pattern are set to value
. The only matching is an exact match with pattern , or if
pattern ends with an’*’as is otherwise a prefix of a debug
symbols. The names of all debug symbols set by this call are returned
as a vector.
Parameters
pattern (str) –
value (bool) –
static SetOutputFile()
classmethod SetOutputFile(file) -> None
Direct debug output to either stdout or stderr.
Note that file MUST be either stdout or stderr. If not, issue an
error and do nothing. Debug output is issued to stdout by default. If
the environment variable TF_DEBUG_OUTPUT_FILE is set to’stderr’, then
output is issued to stderr by default.
Parameters
file (FILE) –
class pxr.Tf.DiagnosticType
Methods:
GetValueFromName
Attributes:
allValues
static GetValueFromName()
allValues = (Tf.TF_DIAGNOSTIC_CODING_ERROR_TYPE, Tf.TF_DIAGNOSTIC_FATAL_CODING_ERROR_TYPE, Tf.TF_DIAGNOSTIC_RUNTIME_ERROR_TYPE, Tf.TF_DIAGNOSTIC_FATAL_ERROR_TYPE, Tf.TF_DIAGNOSTIC_NONFATAL_ERROR_TYPE, Tf.TF_DIAGNOSTIC_WARNING_TYPE, Tf.TF_DIAGNOSTIC_STATUS_TYPE, Tf.TF_APPLICATION_EXIT_TYPE)
class pxr.Tf.Enum
Methods:
GetValueFromFullName
classmethod GetValueFromFullName(fullname, foundIt) -> Enum
static GetValueFromFullName()
classmethod GetValueFromFullName(fullname, foundIt) -> Enum
Returns the enumerated value for a fully-qualified name.
This takes a fully-qualified enumerated value name (e.g.,
"Season::WINTER" ) and returns the associated value. If there is
no such name, this returns -1. Since -1 can sometimes be a valid
value, the foundIt flag pointer, if not None , is set to
true if the name was found and false otherwise. Also, since
this is not a templated function, it has to return a generic value
type, so we use TfEnum .
Parameters
fullname (str) –
foundIt (bool) –
class pxr.Tf.Error
Classes:
Mark
Attributes:
errorCode
The error code posted for this error.
errorCodeString
The error code posted for this error, as a string.
class Mark
Methods:
Clear
GetErrors
A list of the errors held by this mark.
IsClean
SetMark
Clear()
GetErrors()
A list of the errors held by this mark.
IsClean()
SetMark()
property errorCode
The error code posted for this error.
property errorCodeString
The error code posted for this error, as a string.
class pxr.Tf.MallocTag
Classes:
CallTree
Methods:
GetCallStacks
GetCallTree
classmethod GetCallTree(tree, skipRepeated) -> bool
GetMaxTotalBytes
classmethod GetMaxTotalBytes() -> int
GetTotalBytes
classmethod GetTotalBytes() -> int
Initialize
classmethod Initialize(errMsg) -> bool
IsInitialized
classmethod IsInitialized() -> bool
SetCapturedMallocStacksMatchList
classmethod SetCapturedMallocStacksMatchList(matchList) -> None
SetDebugMatchList
classmethod SetDebugMatchList(matchList) -> None
class CallTree
Classes:
CallSite
PathNode
Methods:
GetCallSites
GetPrettyPrintString
GetRoot
LogReport
Report
class CallSite
Attributes:
nBytes
name
property nBytes
property name
class PathNode
Methods:
GetChildren
Attributes:
nAllocations
nBytes
nBytesDirect
siteName
GetChildren()
property nAllocations
property nBytes
property nBytesDirect
property siteName
GetCallSites()
GetPrettyPrintString()
GetRoot()
LogReport()
Report()
static GetCallStacks()
static GetCallTree()
classmethod GetCallTree(tree, skipRepeated) -> bool
Return a snapshot of memory usage.
Returns a snapshot by writing into \*tree . See the C *tree
structure for documentation. If Initialize() has not been called,
*tree is set to a rather blank structure (empty vectors, empty
strings, zero in all integral fields) and false is returned;
otherwise, \*tree is set with the contents of the current memory
snapshot and true is returned. It is fine to call this function on
the same \*tree instance; each call simply overwrites the data
from the last call. If /p skipRepeated is true , then any repeated
callsite is skipped. See the CallTree documentation for more
details.
Parameters
tree (CallTree) –
skipRepeated (bool) –
static GetMaxTotalBytes()
classmethod GetMaxTotalBytes() -> int
Return the maximum total number of bytes that have ever been allocated
at one time.
This is simply the maximum value of GetTotalBytes() since Initialize()
was called.
static GetTotalBytes()
classmethod GetTotalBytes() -> int
Return total number of allocated bytes.
The current total memory that has been allocated and not freed is
returned. Memory allocated before calling Initialize() is not
accounted for.
static Initialize()
classmethod Initialize(errMsg) -> bool
Initialize the memory tagging system.
This function returns true if the memory tagging system can be
successfully initialized or it has already been initialized.
Otherwise, \*errMsg is set with an explanation for the failure.
Until the system is initialized, the various memory reporting calls
will indicate that no memory has been allocated. Note also that memory
allocated prior to calling Initialize() is not tracked i.e. all
data refers to allocations that happen subsequent to calling
Initialize() .
Parameters
errMsg (str) –
static IsInitialized()
classmethod IsInitialized() -> bool
Return true if the tagging system is active.
If Initialize() has been successfully called, this function
returns true .
static SetCapturedMallocStacksMatchList()
classmethod SetCapturedMallocStacksMatchList(matchList) -> None
Sets the tags to trace.
When memory is allocated for any tag that matches matchList a
stack trace is recorded. When that memory is released the stack trace
is discarded. Clients can call GetCapturedMallocStacks() to get a
list of all recorded stack traces. This is useful for finding leaks.
Traces recorded for any tag that will no longer be matched are
discarded by this call. Traces recorded for tags that continue to be
matched are retained.
matchList is a comma, tab or newline separated list of malloc tag
names. The names can have internal spaces but leading and trailing
spaces are stripped. If a name ends in’*’then the suffix is
wildcarded. A name can have a leading’-‘or’+’to prevent or allow a
match. Each name is considered in order and later matches override
earlier matches. For example,’Csd*, -CsdScene::_Populate*,
+CsdScene::_PopulatePrimCacheLocal’matches any malloc tag starting
with’Csd’but nothing starting
with’CsdScene::_Populate’except’CsdScene::_PopulatePrimCacheLocal’.
Use the empty string to disable stack capturing.
Parameters
matchList (str) –
static SetDebugMatchList()
classmethod SetDebugMatchList(matchList) -> None
Sets the tags to trap in the debugger.
When memory is allocated or freed for any tag that matches
matchList the debugger trap is invoked. If a debugger is attached
the program will stop in the debugger, otherwise the program will
continue to run. See ArchDebuggerTrap() and ArchDebuggerWait()
.
matchList is a comma, tab or newline separated list of malloc tag
names. The names can have internal spaces but leading and trailing
spaces are stripped. If a name ends in’*’then the suffix is
wildcarded. A name can have a leading’-‘or’+’to prevent or allow a
match. Each name is considered in order and later matches override
earlier matches. For example,’Csd*, -CsdScene::_Populate*,
+CsdScene::_PopulatePrimCacheLocal’matches any malloc tag starting
with’Csd’but nothing starting
with’CsdScene::_Populate’except’CsdScene::_PopulatePrimCacheLocal’.
Use the empty string to disable debugging traps.
Parameters
matchList (str) –
class pxr.Tf.NamedTemporaryFile(suffix='', prefix='', dir=None, text=False)
A named temporary file which keeps the internal file handle closed.
A class which constructs a temporary file(that isn’t open) on __enter__,
provides its name as an attribute, and deletes it on __exit__.
Note: The constructor args for this object match those of
python’s tempfile.mkstemp() function, and will have the same effect on
the underlying file created.
Attributes:
name
The path for the temporary file created.
property name
The path for the temporary file created.
class pxr.Tf.Notice
Classes:
Listener
Represents the Notice connection between senders and receivers of notices.
Methods:
Register(noticeType, callback, sender)
noticeType : Tf.Notice callback : function sender : object
RegisterGlobally(noticeType, callback)
noticeType : Tf.Notice callback : function
Send
Send(sender)
SendGlobally
SendGlobally()
class Listener
Represents the Notice connection between senders and receivers of notices. When a Listener object expires the connection is broken. You can also use the Revoke() function to break the connection. A Listener object is returned from the Register() and RegisterGlobally() functions.
Methods:
Revoke
Revoke()
Revoke()
Revoke()
Revoke interest by a notice listener. This function revokes interest in the particular notice type and call-back method that its Listener object was registered for.
static Register(noticeType, callback, sender) → Listener
noticeType : Tf.Notice
callback : function
sender : object
Register a listener as being interested in a TfNotice type from a specific sender. Notice listener will get sender as an argument. Registration of interest in a notice class N automatically registers interest in all classes derived from N. When a notice of appropriate type is received, the listening object’s member-function method is called with the notice. To reverse the registration, call Revoke() on the Listener object returned by this call.
Register( noticeType, callback, sender ) -> Listener
noticeType : Tf.Notice
callback : function
sender : object
Register a listener as being interested in a TfNotice type from a specific sender. Notice listener will get sender as an argument. Registration of interest in a notice class N automatically registers interest in all classes derived from N. When a notice of appropriate type is received, the listening object’s member-function method is called with the notice. To reverse the registration, call Revoke() on the Listener object returned by this call.
static RegisterGlobally(noticeType, callback) → Listener
noticeType : Tf.Notice
callback : function
Register a listener as being interested in a TfNotice type from any sender. The notice listener does not get sender as an argument.
Send()
Send(sender)
sender : object
Deliver the notice to interested listeners, returning the number of interested listeners. This is the recommended form of Send. It takes the sender as an argument. Listeners that registered for the given sender AND listeners that registered globally will get the notice.
Send(sender)
sender : object
Deliver the notice to interested listeners, returning the number of interested listeners. This is the recommended form of Send. It takes the sender as an argument. Listeners that registered for the given sender AND listeners that registered globally will get the notice.
SendGlobally()
SendGlobally()
Deliver the notice to interested listeners. For most clients it is recommended to use the Send(sender) version of Send() rather than this one. Clients that use this form of Send will prevent listeners from being able to register to receive notices based on the sender of the notice. ONLY listeners that registered globally will get the notice.
class pxr.Tf.PyModuleWasLoaded
A TfNotice that is sent when a script module is loaded. Since many
modules may be loaded at once, listeners are encouraged to defer work
triggered by this notice to the end of an application iteration. This,
of course, is good practice in general.
Methods:
name()
Return the name of the module that was loaded.
name() → str
Return the name of the module that was loaded.
class pxr.Tf.RefPtrTracker
Provides tracking of TfRefPtr objects to particular objects.
Clients can enable, at compile time, tracking of TfRefPtr objects
that point to particular instances of classes derived from
TfRefBase . This is useful if you have a ref counted object with a
ref count that should’ve gone to zero but didn’t. This tracker can
tell you every TfRefPtr that’s holding the TfRefBase and a
stack trace where it was created or last assigned to.
Clients can get a report of all watched instances and how many
TfRefPtr objects are holding them using
ReportAllWatchedCounts() (in python use Tf.RefPtrTracker()
.GetAllWatchedCountsReport()). You can see all of the stack traces
using ReportAllTraces() (in python use Tf.RefPtrTracker()
.GetAllTracesReport()).
Clients will typically enable tracking using code like this:
#include "pxr/base/tf/refPtrTracker.h"
class MyRefBaseType;
typedef TfRefPtr<MyRefBaseType> MyRefBaseTypeRefPtr;
TF_DECLARE_REFPTR_TRACK(MyRefBaseType);
class MyRefBaseType {
\.\.\.
public:
static bool _ShouldWatch(const MyRefBaseType\*);
\.\.\.
};
TF_DEFINE_REFPTR_TRACK(MyRefBaseType, MyRefBaseType::_ShouldWatch);
Note that the TF_DECLARE_REFPTR_TRACK() macro must be invoked
before any use of the MyRefBaseTypeRefPtr type.
The MyRefBaseType::_ShouldWatch() function returns true if the
given instance of MyRefBaseType should be tracked. You can also
use TfRefPtrTracker::WatchAll() to watch every instance (but that
might use a lot of memory and time).
If you have a base type, B , and a derived type, D , and you
hold instances of D in a TfRefPtr < ``B>`` (i.e. a pointer to
the base) then you must track both type B and type D . But you
can use TfRefPtrTracker::WatchNone() when tracking B if you’re
not interested in instances of B .
Methods:
GetAllTracesReport
GetAllWatchedCountsReport
GetTracesReportForWatched
Attributes:
expired
True if this object has expired, False otherwise.
GetAllTracesReport()
GetAllWatchedCountsReport()
GetTracesReportForWatched()
property expired
True if this object has expired, False otherwise.
class pxr.Tf.ScopeDescription
This class is used to provide high-level descriptions about scopes of
execution that could possibly block, or to provide relevant
information about high-level action that would be useful in a crash
report.
This class is reasonably fast to use, especially if the message
strings are not dynamically created, however it should not be used in
very highly performance sensitive contexts. The cost to push & pop is
essentially a TLS lookup plus a couple of atomic operations.
Methods:
SetDescription(description)
Replace the description stack entry for this scope description.
SetDescription(description) → None
Replace the description stack entry for this scope description.
Caller guarantees that the string description lives at least as
long as this TfScopeDescription object.
Parameters
description (str) –
SetDescription(description) -> None
Replace the description stack entry for this scope description.
This object adopts ownership of the rvalue description .
Parameters
description (str) –
SetDescription(description) -> None
Replace the description stack entry for this scope description.
Caller guarantees that the string description lives at least as
long as this TfScopeDescription object.
Parameters
description (char) –
class pxr.Tf.ScriptModuleLoader
Provides low-level facilities for shared modules with script
bindings to register themselves with their dependences, and provides a
mechanism whereby those script modules will be loaded when necessary.
Currently, this is when one of our script modules is loaded, when
TfPyInitialize is called, and when Plug opens shared modules.
Generally, user code will not make use of this.
Methods:
GetModuleNames()
Return a list of all currently known modules in a valid dependency order.
GetModulesDict()
Return a python dict containing all currently known modules under their canonical names.
WriteDotFile(file)
Write a graphviz dot-file for the dependency graph of all.
Attributes:
expired
True if this object has expired, False otherwise.
GetModuleNames() → list[str]
Return a list of all currently known modules in a valid dependency
order.
GetModulesDict() → python.dict
Return a python dict containing all currently known modules under
their canonical names.
WriteDotFile(file) → None
Write a graphviz dot-file for the dependency graph of all.
currently known modules/modules to file.
Parameters
file (str) –
property expired
True if this object has expired, False otherwise.
class pxr.Tf.Singleton
class pxr.Tf.StatusObject
class pxr.Tf.Stopwatch
Methods:
AddFrom(t)
Adds the accumulated time and sample count from t into the TfStopwatch .
Reset()
Resets the accumulated time and the sample count to zero.
Start()
Record the current time for use by the next Stop() call.
Stop()
Increases the accumulated time stored in the TfStopwatch .
Attributes:
microseconds
int
milliseconds
int
nanoseconds
int
sampleCount
int
seconds
float
AddFrom(t) → None
Adds the accumulated time and sample count from t into the
TfStopwatch .
If you have several timers taking measurements, and you wish to
combine them together, you can add one timer’s results into another;
for example, t2.AddFrom(t1) will add t1 ‘s time and sample
count into t2 .
Parameters
t (Stopwatch) –
Reset() → None
Resets the accumulated time and the sample count to zero.
Start() → None
Record the current time for use by the next Stop() call.
The Start() function records the current time. A subsequent call
to Start() before a call to Stop() simply records a later
current time, but does not change the accumulated time of the
TfStopwatch .
Stop() → None
Increases the accumulated time stored in the TfStopwatch .
The Stop() function increases the accumulated time by the duration
between the current time and the last time recorded by a Start()
call. A subsequent call to Stop() before another call to
Start() will therefore double-count time and throw off the
results.
A TfStopwatch also counts the number of samples it has taken.
The”sample count”is simply the number of times that Stop() has
been called.
property microseconds
int
Return the accumulated time in microseconds.
Note that 45 minutes will overflow a 32-bit counter, so take care to
save the result in an int64_t , and not a regular int or
long .
Type
type
property milliseconds
int
Return the accumulated time in milliseconds.
Type
type
property nanoseconds
int
Return the accumulated time in nanoseconds.
Note that this number can easily overflow a 32-bit counter, so take
care to save the result in an int64_t , and not a regular int
or long .
Type
type
property sampleCount
int
Return the current sample count.
The sample count, which is simply the number of calls to Stop()
since creation or a call to Reset() , is useful for computing
average running times of a repeated task.
Type
type
property seconds
float
Return the accumulated time in seconds as a double .
Type
type
class pxr.Tf.TemplateString
Methods:
GetEmptyMapping()
Returns an empty mapping for the current template.
GetParseErrors()
Returns any error messages generated during template parsing.
SafeSubstitute(arg1)
Like Substitute() , except that if placeholders are missing from the mapping, instead of raising a coding error, the original placeholder will appear in the resulting string intact.
Substitute(arg1)
Performs the template substitution, returning a new string.
Attributes:
template
str
valid
bool
GetEmptyMapping() → Mapping
Returns an empty mapping for the current template.
This method first calls IsValid to ensure that the template is valid.
GetParseErrors() → list[str]
Returns any error messages generated during template parsing.
SafeSubstitute(arg1) → str
Like Substitute() , except that if placeholders are missing from the
mapping, instead of raising a coding error, the original placeholder
will appear in the resulting string intact.
Parameters
arg1 (Mapping) –
Substitute(arg1) → str
Performs the template substitution, returning a new string.
The mapping contains keys which match the placeholders in the
template. If a placeholder is found for which no mapping is present, a
coding error is raised.
Parameters
arg1 (Mapping) –
property template
str
Returns the template source string supplied to the constructor.
Type
type
property valid
bool
Returns true if the current template is well formed.
Empty templates are valid.
Type
type
class pxr.Tf.Tf_PyEnumWrapper
Attributes:
displayName
fullName
name
value
property displayName
property fullName
property name
property value
class pxr.Tf.Tf_TestAnnotatedBoolResult
Attributes:
annotation
property annotation
class pxr.Tf.Tf_TestPyContainerConversions
Methods:
GetPairTimesTwo
GetTokens
GetVectorTimesTwo
static GetPairTimesTwo()
static GetTokens()
static GetVectorTimesTwo()
class pxr.Tf.Tf_TestPyOptional
Methods:
TakesOptional
TestOptionalChar
TestOptionalDouble
TestOptionalFloat
TestOptionalInt
TestOptionalLong
TestOptionalShort
TestOptionalString
TestOptionalStringVector
TestOptionalUChar
TestOptionalUInt
TestOptionalULong
TestOptionalUShort
static TakesOptional()
static TestOptionalChar()
static TestOptionalDouble()
static TestOptionalFloat()
static TestOptionalInt()
static TestOptionalLong()
static TestOptionalShort()
static TestOptionalString()
static TestOptionalStringVector()
static TestOptionalUChar()
static TestOptionalUInt()
static TestOptionalULong()
static TestOptionalUShort()
class pxr.Tf.Type
TfType represents a dynamic runtime type.
TfTypes are created and discovered at runtime, rather than compile
time.
Features:
unique typename
safe across DSO boundaries
can represent C++ types, pure Python types, or Python subclasses
of wrapped C++ types
lightweight value semantics you can copy and default construct
TfType, unlike std::type_info .
totally ordered can use as a std::map key
Methods:
AddAlias
classmethod AddAlias(base, name) -> None
Define
classmethod Define() -> Type
Find
classmethod Find() -> Type
FindByName
classmethod FindByName(name) -> Type
FindDerivedByName
classmethod FindDerivedByName(name) -> Type
GetAliases(derivedType)
Returns a vector of the aliases registered for the derivedType under this, the base type.
GetAllAncestorTypes(result)
Build a vector of all ancestor types inherited by this type.
GetAllDerivedTypes(result)
Return the set of all types derived (directly or indirectly) from this type.
GetRoot
classmethod GetRoot() -> Type
IsA(queryType)
Return true if this type is the same as or derived from queryType
Attributes:
Unknown
baseTypes
list[Type]
derivedTypes
isEnumType
bool
isPlainOldDataType
bool
isUnknown
bool
pythonClass
TfPyObjWrapper
sizeof
int
typeName
str
AddAlias()
classmethod AddAlias(base, name) -> None
Add an alias name for this type under the given base type.
Aliases are similar to typedefs in C++: they provide an alternate name
for a type. The alias is defined with respect to the given base
type. Aliases must be unique with respect to both other aliases
beneath that base type and names of derived types of that base.
Parameters
base (Type) –
name (str) –
AddAlias(name) -> None
Add an alias for DERIVED beneath BASE.
This is a convenience method, that declares both DERIVED and BASE as
TfTypes before adding the alias.
Parameters
name (str) –
static Define()
classmethod Define() -> Type
Define a TfType with the given C++ type T and C++ base types B.
Each of the base types will be declared (but not defined) as TfTypes
if they have not already been.
The typeName of the created TfType will be the canonical demangled
RTTI type name, as defined by GetCanonicalTypeName() .
It is an error to attempt to define a type that has already been
defined.
Define() -> Type
Define a TfType with the given C++ type T and no bases.
See the other Define() template for more details.
C++ does not allow default template arguments for function templates,
so we provide this separate definition for the case of no bases.
static Find()
classmethod Find() -> Type
Retrieve the TfType corresponding to type T .
The type T must have been declared or defined in the type system
or the TfType corresponding to an unknown type is returned.
IsUnknown()
Find(obj) -> Type
Retrieve the TfType corresponding to obj .
The TfType corresponding to the actual object represented by
obj is returned; this may not be the object returned by
TfType::Find<T>() if T is a polymorphic type.
This works for Python subclasses of the C++ type T as well, as
long as T has been wrapped using TfPyPolymorphic.
Of course, the object’s type must have been declared or defined in the
type system or the TfType corresponding to an unknown type is
returned.
IsUnknown()
Parameters
obj (T) –
Find(t) -> Type
Retrieve the TfType corresponding to an obj with the given
type_info .
Parameters
t (type_info) –
static FindByName()
classmethod FindByName(name) -> Type
Retrieve the TfType corresponding to the given name .
Every type defined in the TfType system has a unique, implementation
independent name. In addition, aliases can be added to identify a type
underneath a specific base type; see TfType::AddAlias() . The given
name will first be tried as an alias under the root type, and
subsequently as a typename.
This method is equivalent to:
TfType::GetRoot().FindDerivedByName(name)
For any object obj ,
Find(obj) == FindByName( Find(obj).GetTypeName() )
Parameters
name (str) –
FindDerivedByName()
classmethod FindDerivedByName(name) -> Type
Retrieve the TfType that derives from this type and has the given
alias or typename.
AddAlias
Parameters
name (str) –
FindDerivedByName(name) -> Type
Retrieve the TfType that derives from BASE and has the given alias
or typename.
This is a convenience method, and is equivalent to:
TfType::Find<BASE>().FindDerivedByName(name)
Parameters
name (str) –
GetAliases(derivedType) → list[str]
Returns a vector of the aliases registered for the derivedType under
this, the base type.
AddAlias()
Parameters
derivedType (Type) –
GetAllAncestorTypes(result) → None
Build a vector of all ancestor types inherited by this type.
The starting type is itself included, as the first element of the
results vector.
Types are given in”C3”resolution order, as used for new-style classes
starting in Python 2.3. This algorithm is more complicated than a
simple depth-first traversal of base classes, in order to prevent some
subtle errors with multiple-inheritance. See the references below for
more background.
This can be expensive; consider caching the results. TfType does not
cache this itself since it is not needed internally.
Guido van Rossum.”Unifying types and classes in Python 2.2: Method
resolution order.”
http://www.python.org/download/releases/2.2.2/descrintro/#mro
Barrett, Cassels, Haahr, Moon, Playford, Withington.”A Monotonic
Superclass Linearization for Dylan.”OOPSLA 96.
http://www.webcom.com/haahr/dylan/linearization-oopsla96.html
Parameters
result (list[Type]) –
GetAllDerivedTypes(result) → None
Return the set of all types derived (directly or indirectly) from this
type.
Parameters
result (set[Type]) –
static GetRoot()
classmethod GetRoot() -> Type
Return the root type of the type hierarchy.
All known types derive (directly or indirectly) from the root. If a
type is specified with no bases, it is implicitly considered to derive
from the root type.
IsA(queryType) → bool
Return true if this type is the same as or derived from queryType
.
If queryType is unknown, this always returns false .
Parameters
queryType (Type) –
IsA() -> bool
Return true if this type is the same as or derived from T.
This is equivalent to:
IsA(Find<T>())
Unknown = Tf.Type.Unknown
property baseTypes
list[Type]
Return a vector of types from which this type was derived.
Type
type
property derivedTypes
property isEnumType
bool
Return true if this is an enum type.
Type
type
property isPlainOldDataType
bool
Return true if this is a plain old data type, as defined by C++.
Type
type
property isUnknown
bool
Return true if this is the unknown type, representing a type unknown
to the TfType system.
The unknown type does not derive from the root type, or any other
type.
Type
type
property pythonClass
TfPyObjWrapper
Return the Python class object for this type.
If this type is unknown or has not yet had a Python class defined,
this will return None , as an empty TfPyObjWrapper
DefinePythonClass()
Type
type
property sizeof
int
Return the size required to hold an instance of this type on the stack
(does not include any heap allocated memory the instance uses).
This is what the C++ sizeof operator returns for the type, so this
value is not very useful for Python types (it will always be
sizeof(boost::python::object)).
Type
type
property typeName
str
Return the machine-independent name for this type.
This name is specified when the TfType is declared.
Declare()
Type
type
class pxr.Tf.Warning
pxr.Tf.Fatal(msg)
Raise a fatal error to the Tf Diagnostic system.
pxr.Tf.GetCodeLocation(framesUp)
Returns a tuple (moduleName, functionName, fileName, lineNo).
To trace the current location of python execution, use GetCodeLocation().
By default, the information is returned at the current stack-frame; thus:
info = GetCodeLocation()
will return information about the line that GetCodeLocation() was called
from. One can write:
def genericDebugFacility():
info = GetCodeLocation(1)
# print out data
def someCode():
...
if bad:
genericDebugFacility()
and genericDebugFacility() will get information associated with its caller,
i.e. the function someCode().
pxr.Tf.PrepareModule(module, result)
PrepareModule(module, result) – Prepare an extension module at import
time. Generally, this should only be called by the __init__.py script for a
module upon loading a boost python module (generally ‘_libName.so’).
pxr.Tf.PreparePythonModule(moduleName=None)
Prepare an extension module at import time. This will import the
Python module associated with the caller’s module (e.g. ‘_tf’ for ‘pxr.Tf’)
or the module with the specified moduleName and copy its contents into
the caller’s local namespace.
Generally, this should only be called by the __init__.py script for a module
upon loading a boost python module (generally ‘_libName.so’).
pxr.Tf.RaiseCodingError(msg)
Raise a coding error to the Tf Diagnostic system.
pxr.Tf.RaiseRuntimeError(msg)
Raise a runtime error to the Tf Diagnostic system.
pxr.Tf.Status(msg, verbose=True)
Issues a status update to the Tf diagnostic system.
If verbose is True (the default) then information about where in the code
the status update was issued from is included.
pxr.Tf.Warn(msg, template='')
Issue a warning via the TfDiagnostic system.
At this time, template is ignored.
pxr.Tf.WindowsImportWrapper()
© Copyright 2019-2023, NVIDIA.
Last updated on Nov 14, 2023.