PEP: 267 Title: Optimized Access to Module Namespaces Version: $Revision: 984 $ Last-Modified: $Date: 2001-08-20 17:02:26 -0700 (Mon, 20 Aug 2001) $ Author: jeremy@zope.com (Jeremy Hylton) Status: Draft Type: Standards Track Created: 23-May-2001 Python-Version: 2.2 Post-History: Abstract This PEP proposes a new implementation of global module namespaces and the builtin namespace that speeds name resolution. The implementation would use an array of object pointers for most operations in these namespaces. The compiler would assign indices for global variables and module attributes at compile time. The current implementation represents these namespaces as dictionaries. A global name incurs a dictionary lookup each time it is used; a builtin name incurs two dictionary lookups, a failed lookup in the global namespace and a second lookup in the builtin namespace. This implementation should speed Python code that uses module-level functions and variables. It should also eliminate awkward coding styles that have evolved to speed access to these names. The implementation is complicated because the global and builtin namespaces can be modified dynamically in ways that are impossible for the compiler to detect. (Example: A module's namespace is modified by a script after the module is imported.) As a result, the implementation must maintain several auxiliary data structures to preserve these dynamic features. Introduction This PEP proposes a new implementation of attribute access for module objects that optimizes access to module variables known at compile time. The module will store these variables in an array and provide an interface to lookup attributes using array offsets. For globals, builtins, and attributes of imported modules, the compiler will generate code that uses the array offsets for fast access. [describe the key parts of the design: dlict, compiler support, stupid name trick workarounds, optimization of other module's globals] The implementation will preserve existing semantics for module namespaces, including the ability to modify module namespaces at runtime in ways that affect the visibility of builtin names. DLict design The namespaces are implemented using a data structure that has sometimes gone under the name dlict. It is a dictionary that has numbered slots for some dictionary entries. The type must be implemented in C to achieve acceptable performance. The new type-class unification work should make this fairly easy. The DLict will presumably be a subclass of dictionary with an alternate storage module for some keys. A Python implementation is included here to illustrate the basic design: """A dictionary-list hybrid""" import types class DLict: def __init__(self, names): assert isinstance(names, types.DictType) self.names = {} self.list = [None] * size self.empty = [1] * size self.dict = {} self.size = 0 def __getitem__(self, name): i = self.names.get(name) if i is None: return self.dict[name] if self.empty[i] is not None: raise KeyError, name return self.list[i] def __setitem__(self, name, val): i = self.names.get(name) if i is None: self.dict[name] = val else: self.empty[i] = None self.list[i] = val self.size += 1 def __delitem__(self, name): i = self.names.get(name) if i is None: del self.dict[name] else: if self.empty[i] is not None: raise KeyError, name self.empty[i] = 1 self.list[i] = None self.size -= 1 def keys(self): if self.dict: return self.names.keys() + self.dict.keys() else: return self.names.keys() def values(self): if self.dict: return self.names.values() + self.dict.values() else: return self.names.values() def items(self): if self.dict: return self.names.items() else: return self.names.items() + self.dict.items() def __len__(self): return self.size + len(self.dict) def __cmp__(self, dlict): c = cmp(self.names, dlict.names) if c != 0: return c c = cmp(self.size, dlict.size) if c != 0: return c for i in range(len(self.names)): c = cmp(self.empty[i], dlict.empty[i]) if c != 0: return c if self.empty[i] is None: c = cmp(self.list[i], dlict.empty[i]) if c != 0: return c return cmp(self.dict, dlict.dict) def clear(self): self.dict.clear() for i in range(len(self.names)): if self.empty[i] is None: self.empty[i] = 1 self.list[i] = None def update(self): pass def load(self, index): """dlict-special method to support indexed access""" if self.empty[index] is None: return self.list[index] else: raise KeyError, index # XXX might want reverse mapping def store(self, index, val): """dlict-special method to support indexed access""" self.empty[index] = None self.list[index] = val def delete(self, index): """dlict-special method to support indexed access""" self.empty[index] = 1 self.list[index] = None Compiler issues The compiler currently collects the names of all global variables in a module. These are names bound at the module level or bound in a class or function body that declares them to be global. The compiler would assign indices for each global name and add the names and indices of the globals to the module's code object. Each code object would then be bound irrevocably to the module it was defined in. (Not sure if there are some subtle problems with this.) For attributes of imported modules, the module will store an indirection record. Internally, the module will store a pointer to the defining module and the offset of the attribute in the defining module's global variable array. The offset would be initialized the first time the name is looked up. Runtime model The PythonVM will be extended with new opcodes to access globals and module attributes via a module-level array. A function object would need to point to the module that defined it in order to provide access to the module-level global array. For module attributes stored in the dlict (call them static attributes), the get/delattr implementation would need to track access to these attributes using the old by-name interface. If a static attribute is updated dynamically, e.g. mod.__dict__["foo"] = 2 The implementation would need to update the array slot instead of the backup dict. Backwards compatibility The dlict will need to maintain meta-information about whether a slot is currently used or not. It will also need to maintain a pointer to the builtin namespace. When a name is not currently used in the global namespace, the lookup will have to fail over to the builtin namespace. In the reverse case, each module may need a special accessor function for the builtin namespace that checks to see if a global shadowing the builtin has been added dynamically. This check would only occur if there was a dynamic change to the module's dlict, i.e. when a name is bound that wasn't discovered at compile-time. These mechanisms would have little if any cost for the common case whether a module's global namespace is not modified in strange ways at runtime. They would add overhead for modules that did unusual things with global names, but this is an uncommon practice and probably one worth discouraging. It may be desirable to disable dynamic additions to the global namespace in some future version of Python. If so, the new implementation could provide warnings. Related PEPs PEP 266, Optimizing Global Variable/Attribute Access, proposes a different mechanism for optimizing access to global variables as well as attributes of objects. The mechanism uses two new opcodes TRACK_OBJECT and UNTRACK_OBJECT to create a slot in the local variables array that aliases the global or object attribute. If the object being aliases is rebound, the rebind operation is responsible for updating the aliases. The objecting tracking approach applies to a wider range of objects than just module. It may also have a higher runtime cost, because each function that uses a global or object attribute must execute extra opcodes to register its interest in an object and unregister on exit; the cost of registration is unclear, but presumably involves a dynamically resizable data structure to hold a list of callbacks. The implementation proposed here avoids the need for registration, because it does not create aliases. Instead it allows functions that reference a global variable or module attribute to retain a pointer to the location where the original binding is stored. A second advantage is that the initial lookup is performed once per module rather than once per function call. Copyright This document has been placed in the public domain. Local Variables: mode: indented-text indent-tabs-mode: nil End: