2001-08-14 20:05:34 -04:00
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PEP: 266
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Title: Optimizing Global Variable/Attribute Access
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Version: $Revision$
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Author: skip@pobox.com (Skip Montanaro)
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Status: Draft
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Type: Standards Track
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Python-Version: 2.3
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Created: 13-Aug-2001
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Post-History:
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Abstract
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The bindings for most global variables and attributes of other
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modules typically never change during the execution of a Python
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program, but because of Python's dynamic nature, code which
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accesses such global objects must run through a full lookup each
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time the object is needed. This PEP proposes a mechanism that
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allows code that accesses most global objects to treat them as
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local objects and places the burden of updating references on the
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code that changes the name bindings of such objects.
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Introduction
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Consider the workhorse function sre_compile._compile. It is the
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internal compilation function for the sre module. It consists
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almost entirely of a loop over the elements of the pattern being
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compiled, comparing opcodes with known constant values and
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appending tokens to an output list. Most of the comparisons are
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with constants imported from the sre_constants module. This means
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there are lots of LOAD_GLOBAL bytecodes in the compiled output of
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this module. Just by reading the code it's apparent that the
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author intended LITERAL, NOT_LITERAL, OPCODES and many other
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symbols to be constants. Still, each time they are involved in an
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expression, they must be looked up anew.
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Most global accesses are actually to objects that are "almost
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constants". This includes global variables in the current module
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as well as the attributes of other imported modules. Since they
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rarely change, it seems reasonable to place the burden of updating
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references to such objects on the code that changes the name
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bindings. If sre_constants.LITERAL is changed to refer to another
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object, perhaps it would be worthwhile for the code that modifies
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the sre_constants module dict to correct any active references to
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that object. By doing so, in many cases global variables and the
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attributes of many objects could be cached as local variables. If
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the bindings between the names given to the objects and the
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objects themselves changes rarely, the cost of keeping track of
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such objects should be low and the potential payoff fairly large.
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2001-08-15 21:04:55 -04:00
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In an attempt to gauge the effect of this proposal, I modified the
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Pystone benchmark program included in the Python distribution to
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cache global functions. Its main function, Proc0, makes calls to
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ten different functions inside its for loop. In addition, Func2
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calls Func1 repeatedly inside a loop. If local copies of these 11
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global idenfiers are made before the functions' loops are entered,
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performance on this particular benchmark improves by about two per
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cent (from 5561 pystones to 5685 on my laptop). It gives some
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indication that performance would be improved by caching most
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global variable access. Note also that the pystone benchmark
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makes essentially no accesses of global module attributes, an
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anticipated area of improvement for this PEP.
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2001-08-14 20:05:34 -04:00
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Proposed Change
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I propose that the Python virtual machine be modified to include
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TRACK_OBJECT and UNTRACK_OBJECT opcodes. TRACK_OBJECT would
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associate a global name or attribute of a global name with a slot
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in the local variable array and perform an initial lookup of the
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associated object to fill in the slot with a valid value. The
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association it creates would be noted by the code responsible for
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changing the name-to-object binding to cause the associated local
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variable to be updated. The UNTRACK_OBJECT opcode would delete
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any association between the name and the local variable slot.
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2001-08-15 21:04:55 -04:00
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Threads
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Operation of this code in threaded programs will be no different
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than in unthreaded programs. If you need to lock an object to
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access it, you would have had to do that before TRACK_OBJECT would
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have been executed and retain that lock until after you stop using
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it.
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FIXME: I suspect I need more here.
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2001-08-14 20:05:34 -04:00
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Rationale
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Global variables and attributes rarely change. For example, once
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a function imports the math module, the binding between the name
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"math" and the module it refers to aren't likely to change.
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Similarly, if the function that uses the math module refers to its
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"sin" attribute, it's unlikely to change. Still, every time the
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module wants to call the math.sin function, it must first execute
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a pair of instructions:
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LOAD_GLOBAL math
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LOAD_ATTR sin
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If the client module always assumed that math.sin was a local
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constant and it was the responsibility of "external forces"
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outside the function to keep the reference correct, we might have
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code like this:
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TRACK_OBJECT math.sin
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...
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LOAD_FAST math.sin
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...
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UNTRACK_OBJECT math.sin
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If the LOAD_FAST was in a loop the payoff in reduced global loads
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and attribute lookups could be significant.
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This technique could, in theory, be applied to any global variable
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access or attribute lookup. Consider this code:
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l = []
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for i in range(10):
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l.append(math.sin(i))
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return l
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Even though l is a local variable, you still pay the cost of
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loading l.append ten times in the loop. The compiler (or an
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optimizer) could recognize that both math.sin and l.append are
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being called in the loop and decide to generate the tracked local
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code, avoiding it for the builtin range() function because it's
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2001-08-15 21:04:55 -04:00
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only called once during loop setup. Performance issues related to
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accessing local variables make tracking l.append less attractive
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than tracking globals such as math.sin.
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2001-08-14 20:05:34 -04:00
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According to a post to python-dev by Marc-Andre Lemburg [1],
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LOAD_GLOBAL opcodes account for over 7% of all instructions
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executed by the Python virtual machine. This can be a very
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expensive instruction, at least relative to a LOAD_FAST
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instruction, which is a simple array index and requires no extra
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function calls by the virtual machine. I believe many LOAD_GLOBAL
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2001-08-15 21:04:55 -04:00
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instructions and LOAD_GLOBAL/LOAD_ATTR pairs could be converted to
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LOAD_FAST instructions.
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2001-08-14 20:05:34 -04:00
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Code that uses global variables heavily often resorts to various
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tricks to avoid global variable and attribute lookup. The
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aforementioned sre_compile._compile function caches the append
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method of the growing output list. Many people commonly abuse
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functions' default argument feature to cache global variable
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lookups. Both of these schemes are hackish and rarely address all
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the available opportunities for optimization. (For example,
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sre_compile._compile does not cache the two globals that it uses
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most frequently: the builtin len function and the global OPCODES
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array that it imports from sre_constants.py.
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2001-08-15 21:04:55 -04:00
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Questions
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Q. What about threads? What if math.sin changes while in cache?
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A. I believe the global interpreter lock will protect values from
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being corrupted. In any case, the situation would be no worse
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than it is today. If one thread modified math.sin after another
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thread had already executed "LOAD_GLOBAL math", but before it
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executed "LOAD_ATTR sin", the client thread would see the old
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value of math.sin.
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The idea is this. I use a multi-attribute load below as an
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example, not because it would happen very often, but because by
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demonstrating the recursive nature with an extra call hopefully
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it will become clearer what I have in mind. Suppose a function
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defined in module foo wants to access spam.eggs.ham and that
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spam is a module imported at the module level in foo:
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import spam
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...
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def somefunc():
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...
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x = spam.eggs.ham
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Upon entry to somefunc, a TRACK_GLOBAL instruction will be
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executed:
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TRACK_GLOBAL spam.eggs.ham n
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"spam.eggs.ham" is a string literal stored in the function's
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constants array. "n" is a fastlocals index. "&fastlocals[n]"
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is a reference to slot "n" in the executing frame's fastlocals
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array, the location in which the spam.eggs.ham reference will
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be stored. Here's what I envision happening:
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1. The TRACK_GLOBAL instruction locates the object referred to
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by the name "spam" and finds it in its module scope. It
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then executes a C function like
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_PyObject_TrackName(m, "spam.eggs.ham", &fastlocals[n])
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where "m" is the module object with an attribute "spam".
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2. The module object strips the leading "spam." stores the
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necessary information ("eggs.ham" and &fastlocals[n]) in
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case its binding for the name "eggs" changes. It then
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locates the object referred to by the key "eggs" in its
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dict and recursively calls
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_PyObject_TrackName(eggs, "eggs.ham", &fastlocals[n])
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3. The eggs object strips the leading "eggs.", stores the
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("ham", &fastlocals[n]) info, locates the object in its
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namespace called "ham" and calls _PyObject_TrackName once
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again:
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_PyObject_TrackName(ham, "ham", &fastlocals[n])
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4. The "ham" object strips the leading string (no "." this
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time, but that's a minor point), sees that the result is
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empty, then uses its own value (self, probably) to update
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the location it was handed:
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Py_XDECREF(&fastlocals[n]);
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&fastlocals[n] = self;
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Py_INCREF(&fastlocals[n]);
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At this point, each object involved in resolving
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"spam.eggs.ham" knows which entry in its namespace needs to be
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tracked and what location to update if that name changes.
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Furthermore, if the one name it is tracking in its local
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storage changes, it can call _PyObject_TrackName using the new
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object once the change has been made. At the bottom end of
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the food chain, the last object will always strip a name, see
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the empty string and know that its value should be stuffed
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into the location it's been passed.
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When the object referred to by the dotted expression
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"spam.eggs.ham" is going to go out of scope, an
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"UNTRACK_GLOBAL spam.eggs.ham n" instruction is executed. It
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has the effect of deleting all the tracking information that
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TRACK_GLOBAL established.
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The tracking operation may seem expensive, but recall that the
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objects being tracked are assumed to be "almost constant", so
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the setup cost will be traded off against hopefully multiple
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local instead of global loads. For globals with attributes
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the tracking setup cost grows but is offset by avoiding the
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extra LOAD_ATTR cost. The TRACK_GLOBAL instruction needs to
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perform a PyDict_GetItemString for the first name in the chain
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to determine where the top-level object resides. Each object
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in the chain has to store a string and an address somewhere,
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probably in a dict that uses storage locations as keys
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(e.g. the &fastlocals[n]) and strings as values. (This dict
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could possibly be a central dict of dicts whose keys are
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object addresses instead of a per-object dict.) It shouldn't
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be the other way around because multiple active frames may
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want to track "spam.eggs.ham", but only one frame will want to
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associate that name with one of its fast locals slots.
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Unresolved Issues
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Threading -
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What about this (dumb) code?
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l = []
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lock = threading.Lock()
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...
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def fill_l():
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for i in range(1000):
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lock.acquire()
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l.append(math.sin(i))
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lock.release()
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...
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def consume_l():
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while 1:
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lock.acquire()
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if l:
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elt = l.pop()
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lock.release()
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fiddle(elt)
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It's not clear from a static analysis of the code what the lock is
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protecting. (You can't tell at compile-time that threads are even
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involved can you?) Would or should it affect attempts to track
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"l.append" or "math.sin" in the fill_l function?
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If we annotate the code with mythical track_object and untrack_object
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builtins (I'm not proposing this, just illustrating where stuff would
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go!), we get
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l = []
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lock = threading.Lock()
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...
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def fill_l():
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track_object("l.append", append)
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track_object("math.sin", sin)
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for i in range(1000):
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lock.acquire()
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append(sin(i))
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lock.release()
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untrack_object("math.sin", sin)
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untrack_object("l.append", append)
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...
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def consume_l():
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while 1:
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lock.acquire()
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if l:
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elt = l.pop()
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lock.release()
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fiddle(elt)
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Is that correct both with and without threads (or at least equally
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incorrect with and without threads)?
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Nested Scopes -
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The presence of nested scopes will affect where TRACK_GLOBAL finds
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a global variable, but shouldn't affect anything after that. (I
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think.)
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Missing Attributes -
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Suppose I am tracking the object referred to by "spam.eggs.ham"
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and "spam.eggs" is rebound to an object that does not have a "ham"
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attribute. It's clear this will be an AttributeError if the
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programmer attempts to resolve "spam.eggs.ham" in the current
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Python virtual machine, but suppose the programmer has anticipated
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this case:
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if hasattr(spam.eggs, "ham"):
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print spam.eggs.ham
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elif hasattr(spam.eggs, "bacon"):
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print spam.eggs.bacon
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else:
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print "what? no meat?"
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You can't raise an AttributeError when the tracking information is
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recalculated. If it does not raise AttributeError and instead
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lets the tracking stand, it may be setting the programmer up for a
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very subtle error.
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One solution to this problem would be to track the shortest
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possible root of each dotted expression the function refers to
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directly. In the above example, "spam.eggs" would be tracked, but
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"spam.eggs.ham" and "spam.eggs.bacon" would not.
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Who does the dirty work? -
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In the Questions section I postulated the existence of a
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_PyObject_TrackName function. While the API is fairly easy to
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specify, the implementation behind-the-scenes is not so obvious.
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A central dictionary could be used to track the name/location
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mappings, but it appears that all setattr functions might need to
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be modified to accommodate this new functionality.
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If all types used the PyObject_GenericSetAttr function to set
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attributes that would localize the update code somewhat. They
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don't however (which is not too surprising), so it seems that all
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getattrfunc and getattrofunc functions will have to be updated.
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In addition, this would place an absolute requirement on C
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extension module authors to call some function when an attribute
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changes value (PyObject_TrackUpdate?).
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Finally, it's quite possible that some attributes will be set by
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side effect and not by any direct call to a setattr method of some
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sort. Consider a device interface module that has an interrupt
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routine that copies the contents of a device register into a slot
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in the object's struct whenever it changes. In these situations,
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more extensive modifications would have to be made by the module
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author. To identify such situations at compile time would be
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impossible. I think an extra slot could be added to PyTypeObjects
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to indicate if an object's code is safe for global tracking. It
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would have a default value of 0 (Py_TRACKING_NOT_SAFE). If an
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extension module author has implemented the necessary tracking
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support, that field could be initialized to 1 (Py_TRACKING_SAFE).
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_PyObject_TrackName could check that field and issue a warning if
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it is asked to track an object that the author has not explicitly
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said was safe for tracking.
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|
2001-08-14 20:05:34 -04:00
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|
Discussion
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|
|
Jeremy Hylton has an alternate proposal on the table [2]. His
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|
proposal seeks to create a hybrid dictionary/list object for use
|
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|
|
in global name lookups that would make global variable access look
|
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|
|
more like local variable access. While there is no C code
|
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|
|
|
available to examine, the Python implementation given in his
|
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|
|
proposal still appears to require dictionary key lookup. It
|
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|
|
|
doesn't appear that his proposal could speed local variable
|
2001-08-15 21:04:55 -04:00
|
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|
|
attribute lookup, which might be worthwhile in some situations if
|
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|
|
potential performance burdens could be addressed.
|
2001-08-14 20:05:34 -04:00
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|
Backwards Compatibility
|
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|
|
I don't believe there will be any serious issues of backward
|
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|
|
compatibility. Obviously, Python bytecode that contains
|
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|
|
TRACK_OBJECT opcodes could not be executed by earlier versions of
|
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|
|
the interpreter, but breakage at the bytecode level is often
|
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|
|
|
assumed between versions.
|
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|
|
Implementation
|
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|
|
|
|
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|
|
TBD. This is where I need help. I believe there should be either
|
|
|
|
|
a central name/location registry or the code that modifies object
|
|
|
|
|
attributes should be modified, but I'm not sure the best way to go
|
|
|
|
|
about this. If you look at the code that implements the
|
|
|
|
|
STORE_GLOBAL and STORE_ATTR opcodes, it seems likely that some
|
|
|
|
|
changes will be required to PyDict_SetItem and PyObject_SetAttr or
|
|
|
|
|
their String variants. Ideally, there'd be a fairly central place
|
|
|
|
|
to localize these changes. If you begin considering tracking
|
|
|
|
|
attributes of local variables you get into issues of modifying
|
|
|
|
|
STORE_FAST as well, which could be a problem, since the name
|
|
|
|
|
bindings for local variables are changed much more frequently. (I
|
|
|
|
|
think an optimizer could avoid inserting the tracking code for the
|
|
|
|
|
attributes for any local variables where the variable's name
|
|
|
|
|
binding changes.)
|
|
|
|
|
|
|
|
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|
|
|
|
|
|
Performance
|
|
|
|
|
|
|
|
|
|
I believe (though I have no code to prove it at this point), that
|
|
|
|
|
implementing TRACK_OBJECT will generally not be much more
|
|
|
|
|
expensive than a single LOAD_GLOBAL instruction or a
|
|
|
|
|
LOAD_GLOBAL/LOAD_ATTR pair. An optimizer should be able to avoid
|
|
|
|
|
converting LOAD_GLOBAL and LOAD_GLOBAL/LOAD_ATTR to the new scheme
|
|
|
|
|
unless the object access occurred within a loop. Further down the
|
|
|
|
|
line, a register-oriented replacement for the current Python
|
|
|
|
|
virtual machine [3] could conceivably eliminate most of the
|
|
|
|
|
LOAD_FAST instructions as well.
|
|
|
|
|
|
|
|
|
|
The number of tracked objects should be relatively small. All
|
|
|
|
|
active frames of all active threads could conceivably be tracking
|
|
|
|
|
objects, but this seems small compared to the number of functions
|
|
|
|
|
defined in a given application.
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
References
|
|
|
|
|
|
|
|
|
|
[1] http://mail.python.org/pipermail/python-dev/2000-July/007609.html
|
|
|
|
|
|
|
|
|
|
[2] http://www.zope.org/Members/jeremy/CurrentAndFutureProjects/FastGlobalsPEP
|
|
|
|
|
|
|
|
|
|
[3] http://www.musi-cal.com/~skip/python/rattlesnake20010813.tar.gz
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
Copyright
|
|
|
|
|
|
|
|
|
|
This document has been placed in the public domain.
|
|
|
|
|
|
|
|
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|
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|
|
Local Variables:
|
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|
|
|
mode: indented-text
|
|
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|
|
indent-tabs-mode: nil
|
2001-08-15 21:04:55 -04:00
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|
fill-column: 70
|
2001-08-14 20:05:34 -04:00
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|
End:
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