634 lines
20 KiB
Python
Executable File
634 lines
20 KiB
Python
Executable File
#! /usr/local/bin/python
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#
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# Class for profiling python code. rev 1.0 6/2/94
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#
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# Based on prior profile module by Sjoerd Mullender...
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# which was hacked somewhat by: Guido van Rossum
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#
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# See profile.doc for more information
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# Copyright 1994, by InfoSeek Corporation, all rights reserved.
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# Written by James Roskind
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#
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# Permission to use, copy, modify, and distribute this Python software
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# and its associated documentation for any purpose (subject to the
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# restriction in the following sentence) without fee is hereby granted,
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# provided that the above copyright notice appears in all copies, and
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# that both that copyright notice and this permission notice appear in
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# supporting documentation, and that the name of InfoSeek not be used in
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# advertising or publicity pertaining to distribution of the software
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# without specific, written prior permission. This permission is
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# explicitly restricted to the copying and modification of the software
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# to remain in Python, compiled Python, or other languages (such as C)
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# wherein the modified or derived code is exclusively imported into a
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# Python module.
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#
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# INFOSEEK CORPORATION DISCLAIMS ALL WARRANTIES WITH REGARD TO THIS
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# SOFTWARE, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY AND
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# FITNESS. IN NO EVENT SHALL INFOSEEK CORPORATION BE LIABLE FOR ANY
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# SPECIAL, INDIRECT OR CONSEQUENTIAL DAMAGES OR ANY DAMAGES WHATSOEVER
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# RESULTING FROM LOSS OF USE, DATA OR PROFITS, WHETHER IN AN ACTION OF
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# CONTRACT, NEGLIGENCE OR OTHER TORTIOUS ACTION, ARISING OUT OF OR IN
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# CONNECTION WITH THE USE OR PERFORMANCE OF THIS SOFTWARE.
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import sys
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import os
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import time
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import string
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import marshal
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# Global variables
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func_norm_dict = {}
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func_norm_counter = 0
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if hasattr(os, 'getpid'):
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pid_string = `os.getpid()`
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else:
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pid_string = ''
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# Sample timer for use with
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#i_count = 0
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#def integer_timer():
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# global i_count
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# i_count = i_count + 1
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# return i_count
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#itimes = integer_timer # replace with C coded timer returning integers
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#**************************************************************************
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# The following are the static member functions for the profiler class
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# Note that an instance of Profile() is *not* needed to call them.
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#**************************************************************************
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# simplified user interface
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def run(statement, *args):
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prof = Profile()
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try:
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prof = prof.run(statement)
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except SystemExit:
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pass
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if args:
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prof.dump_stats(args[0])
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else:
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return prof.print_stats()
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# print help
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def help():
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for dirname in sys.path:
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fullname = os.path.join(dirname, 'profile.doc')
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if os.path.exists(fullname):
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sts = os.system('${PAGER-more} '+fullname)
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if sts: print '*** Pager exit status:', sts
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break
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else:
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print 'Sorry, can\'t find the help file "profile.doc"',
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print 'along the Python search path'
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#**************************************************************************
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# class Profile documentation:
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#**************************************************************************
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# self.cur is always a tuple. Each such tuple corresponds to a stack
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# frame that is currently active (self.cur[-2]). The following are the
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# definitions of its members. We use this external "parallel stack" to
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# avoid contaminating the program that we are profiling. (old profiler
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# used to write into the frames local dictionary!!) Derived classes
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# can change the definition of some entries, as long as they leave
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# [-2:] intact.
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#
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# [ 0] = Time that needs to be charged to the parent frame's function. It is
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# used so that a function call will not have to access the timing data
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# for the parents frame.
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# [ 1] = Total time spent in this frame's function, excluding time in
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# subfunctions
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# [ 2] = Cumulative time spent in this frame's function, including time in
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# all subfunctions to this frame.
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# [-3] = Name of the function that corresonds to this frame.
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# [-2] = Actual frame that we correspond to (used to sync exception handling)
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# [-1] = Our parent 6-tuple (corresonds to frame.f_back)
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#**************************************************************************
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# Timing data for each function is stored as a 5-tuple in the dictionary
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# self.timings[]. The index is always the name stored in self.cur[4].
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# The following are the definitions of the members:
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#
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# [0] = The number of times this function was called, not counting direct
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# or indirect recursion,
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# [1] = Number of times this function appears on the stack, minus one
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# [2] = Total time spent internal to this function
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# [3] = Cumulative time that this function was present on the stack. In
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# non-recursive functions, this is the total execution time from start
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# to finish of each invocation of a function, including time spent in
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# all subfunctions.
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# [5] = A dictionary indicating for each function name, the number of times
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# it was called by us.
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#**************************************************************************
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# We produce function names via a repr() call on the f_code object during
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# profiling. This save a *lot* of CPU time. This results in a string that
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# always looks like:
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# <code object main at 87090, file "/a/lib/python-local/myfib.py", line 76>
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# After we "normalize it, it is a tuple of filename, line, function-name.
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# We wait till we are done profiling to do the normalization.
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# *IF* this repr format changes, then only the normalization routine should
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# need to be fixed.
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#**************************************************************************
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class Profile:
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def __init__(self, timer=None):
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self.timings = {}
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self.cur = None
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self.cmd = ""
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self.dispatch = { \
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'call' : self.trace_dispatch_call, \
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'return' : self.trace_dispatch_return, \
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'exception': self.trace_dispatch_exception, \
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}
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if not timer:
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if hasattr(os, 'times'):
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self.timer = os.times
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self.dispatcher = self.trace_dispatch
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else:
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self.timer = time.time
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self.dispatcher = self.trace_dispatch_i
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else:
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self.timer = timer
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t = self.timer() # test out timer function
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try:
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if len(t) == 2:
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self.dispatcher = self.trace_dispatch
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else:
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self.dispatcher = self.trace_dispatch_l
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except TypeError:
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self.dispatcher = self.trace_dispatch_i
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self.t = self.get_time()
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self.simulate_call('profiler')
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def get_time(self): # slow simulation of method to acquire time
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t = self.timer()
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if type(t) == type(()) or type(t) == type([]):
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t = reduce(lambda x,y: x+y, t, 0)
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return t
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# Heavily optimized dispatch routine for os.times() timer
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def trace_dispatch(self, frame, event, arg):
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t = self.timer()
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t = t[0] + t[1] - self.t # No Calibration constant
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# t = t[0] + t[1] - self.t - .00053 # Calibration constant
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if self.dispatch[event](frame,t):
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t = self.timer()
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self.t = t[0] + t[1]
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else:
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r = self.timer()
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self.t = r[0] + r[1] - t # put back unrecorded delta
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return
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# Dispatch routine for best timer program (return = scalar integer)
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def trace_dispatch_i(self, frame, event, arg):
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t = self.timer() - self.t # - 1 # Integer calibration constant
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if self.dispatch[event](frame,t):
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self.t = self.timer()
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else:
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self.t = self.timer() - t # put back unrecorded delta
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return
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# SLOW generic dispatch rountine for timer returning lists of numbers
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def trace_dispatch_l(self, frame, event, arg):
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t = self.get_time() - self.t
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if self.dispatch[event](frame,t):
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self.t = self.get_time()
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else:
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self.t = self.get_time()-t # put back unrecorded delta
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return
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def trace_dispatch_exception(self, frame, t):
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rt, rtt, rct, rfn, rframe, rcur = self.cur
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if (not rframe is frame) and rcur:
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return self.trace_dispatch_return(rframe, t)
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return 0
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def trace_dispatch_call(self, frame, t):
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fn = `frame.f_code`
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# The following should be about the best approach, but
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# we would need a function that maps from id() back to
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# the actual code object.
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# fn = id(frame.f_code)
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# Note we would really use our own function, which would
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# return the code address, *and* bump the ref count. We
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# would then fix up the normalize function to do the
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# actualy repr(fn) call.
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# The following is an interesting alternative
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# It doesn't do as good a job, and it doesn't run as
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# fast 'cause repr() is written in C, and this is Python.
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#fcode = frame.f_code
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#code = fcode.co_code
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#if ord(code[0]) == 127: # == SET_LINENO
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# # see "opcode.h" in the Python source
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# fn = (fcode.co_filename, ord(code[1]) | \
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# ord(code[2]) << 8, fcode.co_name)
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#else:
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# fn = (fcode.co_filename, 0, fcode.co_name)
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self.cur = (t, 0, 0, fn, frame, self.cur)
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if self.timings.has_key(fn):
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cc, ns, tt, ct, callers = self.timings[fn]
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self.timings[fn] = cc, ns + 1, tt, ct, callers
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else:
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self.timings[fn] = 0, 0, 0, 0, {}
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return 1
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def trace_dispatch_return(self, frame, t):
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# if not frame is self.cur[-2]: raise "Bad return", self.cur[3]
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# Prefix "r" means part of the Returning or exiting frame
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# Prefix "p" means part of the Previous or older frame
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rt, rtt, rct, rfn, frame, rcur = self.cur
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rtt = rtt + t
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sft = rtt + rct
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pt, ptt, pct, pfn, pframe, pcur = rcur
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self.cur = pt, ptt+rt, pct+sft, pfn, pframe, pcur
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cc, ns, tt, ct, callers = self.timings[rfn]
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if not ns:
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ct = ct + sft
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cc = cc + 1
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if callers.has_key(pfn):
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callers[pfn] = callers[pfn] + 1 # hack: gather more
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# stats such as the amount of time added to ct courtesy
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# of this specific call, and the contribution to cc
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# courtesy of this call.
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else:
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callers[pfn] = 1
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self.timings[rfn] = cc, ns - 1, tt+rtt, ct, callers
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return 1
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# The next few function play with self.cmd. By carefully preloading
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# our paralell stack, we can force the profiled result to include
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# an arbitrary string as the name of the calling function.
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# We use self.cmd as that string, and the resulting stats look
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# very nice :-).
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def set_cmd(self, cmd):
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if self.cur[-1]: return # already set
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self.cmd = cmd
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self.simulate_call(cmd)
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class fake_code:
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def __init__(self, filename, line, name):
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self.co_filename = filename
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self.co_line = line
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self.co_name = name
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self.co_code = '\0' # anything but 127
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def __repr__(self):
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return (self.co_filename, self.co_line, self.co_name)
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class fake_frame:
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def __init__(self, code, prior):
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self.f_code = code
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self.f_back = prior
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def simulate_call(self, name):
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code = self.fake_code('profile', 0, name)
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if self.cur:
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pframe = self.cur[-2]
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else:
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pframe = None
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frame = self.fake_frame(code, pframe)
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a = self.dispatch['call'](frame, 0)
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return
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# collect stats from pending stack, including getting final
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# timings for self.cmd frame.
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def simulate_cmd_complete(self):
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t = self.get_time() - self.t
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while self.cur[-1]:
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# We *can* cause assertion errors here if
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# dispatch_trace_return checks for a frame match!
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a = self.dispatch['return'](self.cur[-2], t)
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t = 0
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self.t = self.get_time() - t
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def print_stats(self):
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import pstats
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pstats.Stats(self).strip_dirs().sort_stats(-1). \
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print_stats()
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def dump_stats(self, file):
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f = open(file, 'w')
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self.create_stats()
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marshal.dump(self.stats, f)
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f.close()
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def create_stats(self):
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self.simulate_cmd_complete()
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self.snapshot_stats()
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def snapshot_stats(self):
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self.stats = {}
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for func in self.timings.keys():
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cc, ns, tt, ct, callers = self.timings[func]
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nor_func = self.func_normalize(func)
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nor_callers = {}
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nc = 0
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for func_caller in callers.keys():
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nor_callers[self.func_normalize(func_caller)]=\
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callers[func_caller]
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nc = nc + callers[func_caller]
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self.stats[nor_func] = cc, nc, tt, ct, nor_callers
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# Override the following function if you can figure out
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# a better name for the binary f_code entries. I just normalize
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# them sequentially in a dictionary. It would be nice if we could
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# *really* see the name of the underlying C code :-). Sometimes
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# you can figure out what-is-what by looking at caller and callee
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# lists (and knowing what your python code does).
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def func_normalize(self, func_name):
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global func_norm_dict
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global func_norm_counter
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global func_sequence_num
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if func_norm_dict.has_key(func_name):
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return func_norm_dict[func_name]
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if type(func_name) == type(""):
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long_name = string.split(func_name)
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file_name = long_name[-3][1:-2]
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func = long_name[2]
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lineno = long_name[-1][:-1]
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if '?' == func: # Until I find out how to may 'em...
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file_name = 'python'
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func_norm_counter = func_norm_counter + 1
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func = pid_string + ".C." + `func_norm_counter`
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result = file_name , string.atoi(lineno) , func
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else:
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result = func_name
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func_norm_dict[func_name] = result
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return result
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# The following two methods can be called by clients to use
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# a profiler to profile a statement, given as a string.
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def run(self, cmd):
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import __main__
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dict = __main__.__dict__
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return self.runctx(cmd, dict, dict)
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def runctx(self, cmd, globals, locals):
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self.set_cmd(cmd)
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sys.setprofile(self.dispatcher)
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try:
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exec cmd in globals, locals
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finally:
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sys.setprofile(None)
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return self
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# This method is more useful to profile a single function call.
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def runcall(self, func, *args):
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self.set_cmd(`func`)
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sys.setprofile(self.dispatcher)
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try:
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return apply(func, args)
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finally:
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sys.setprofile(None)
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#******************************************************************
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# The following calculates the overhead for using a profiler. The
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# problem is that it takes a fair amount of time for the profiler
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# to stop the stopwatch (from the time it recieves an event).
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# Similarly, there is a delay from the time that the profiler
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# re-starts the stopwatch before the user's code really gets to
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# continue. The following code tries to measure the difference on
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# a per-event basis. The result can the be placed in the
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# Profile.dispatch_event() routine for the given platform. Note
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# that this difference is only significant if there are a lot of
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# events, and relatively little user code per event. For example,
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# code with small functions will typically benefit from having the
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# profiler calibrated for the current platform. This *could* be
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# done on the fly during init() time, but it is not worth the
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# effort. Also note that if too large a value specified, then
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# execution time on some functions will actually appear as a
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# negative number. It is *normal* for some functions (with very
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# low call counts) to have such negative stats, even if the
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# calibration figure is "correct."
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#
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# One alternative to profile-time calibration adjustments (i.e.,
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# adding in the magic little delta during each event) is to track
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# more carefully the number of events (and cumulatively, the number
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# of events during sub functions) that are seen. If this were
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# done, then the arithmetic could be done after the fact (i.e., at
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# display time). Currintly, we track only call/return events.
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# These values can be deduced by examining the callees and callers
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# vectors for each functions. Hence we *can* almost correct the
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# internal time figure at print time (note that we currently don't
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# track exception event processing counts). Unfortunately, there
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# is currently no similar information for cumulative sub-function
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# time. It would not be hard to "get all this info" at profiler
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# time. Specifically, we would have to extend the tuples to keep
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# counts of this in each frame, and then extend the defs of timing
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# tuples to include the significant two figures. I'm a bit fearful
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# that this additional feature will slow the heavily optimized
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# event/time ratio (i.e., the profiler would run slower, fur a very
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# low "value added" feature.)
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#
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# Plugging in the calibration constant doesn't slow down the
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# profiler very much, and the accuracy goes way up.
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#**************************************************************
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def calibrate(self, m):
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n = m
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s = self.timer()
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while n:
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self.simple()
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n = n - 1
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f = self.timer()
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my_simple = f[0]+f[1]-s[0]-s[1]
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#print "Simple =", my_simple,
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n = m
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s = self.timer()
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while n:
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self.instrumented()
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n = n - 1
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f = self.timer()
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my_inst = f[0]+f[1]-s[0]-s[1]
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# print "Instrumented =", my_inst
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avg_cost = (my_inst - my_simple)/m
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#print "Delta/call =", avg_cost, "(profiler fixup constant)"
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return avg_cost
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# simulate a program with no profiler activity
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def simple(self):
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a = 1
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pass
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# simulate a program with call/return event processing
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def instrumented(self):
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a = 1
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self.profiler_simulation(a, a, a)
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# simulate an event processing activity (from user's perspective)
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def profiler_simulation(self, x, y, z):
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t = self.timer()
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t = t[0] + t[1]
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self.ut = t
|
|
|
|
|
|
|
|
#****************************************************************************
|
|
# OldProfile class documentation
|
|
#****************************************************************************
|
|
#
|
|
# The following derived profiler simulates the old style profile, providing
|
|
# errant results on recursive functions. The reason for the usefulnes of this
|
|
# profiler is that it runs faster (i.e., less overhead). It still creates
|
|
# all the caller stats, and is quite useful when there is *no* recursion
|
|
# in the user's code.
|
|
#
|
|
# This code also shows how easy it is to create a modified profiler.
|
|
#****************************************************************************
|
|
class OldProfile(Profile):
|
|
def trace_dispatch_exception(self, frame, t):
|
|
rt, rtt, rct, rfn, rframe, rcur = self.cur
|
|
if rcur and not rframe is frame:
|
|
return self.trace_dispatch_return(rframe, t)
|
|
return 0
|
|
|
|
def trace_dispatch_call(self, frame, t):
|
|
fn = `frame.f_code`
|
|
|
|
self.cur = (t, 0, 0, fn, frame, self.cur)
|
|
if self.timings.has_key(fn):
|
|
tt, ct, callers = self.timings[fn]
|
|
self.timings[fn] = tt, ct, callers
|
|
else:
|
|
self.timings[fn] = 0, 0, {}
|
|
return 1
|
|
|
|
def trace_dispatch_return(self, frame, t):
|
|
rt, rtt, rct, rfn, frame, rcur = self.cur
|
|
rtt = rtt + t
|
|
sft = rtt + rct
|
|
|
|
pt, ptt, pct, pfn, pframe, pcur = rcur
|
|
self.cur = pt, ptt+rt, pct+sft, pfn, pframe, pcur
|
|
|
|
tt, ct, callers = self.timings[rfn]
|
|
if callers.has_key(pfn):
|
|
callers[pfn] = callers[pfn] + 1
|
|
else:
|
|
callers[pfn] = 1
|
|
self.timings[rfn] = tt+rtt, ct + sft, callers
|
|
|
|
return 1
|
|
|
|
|
|
def snapshot_stats(self):
|
|
self.stats = {}
|
|
for func in self.timings.keys():
|
|
tt, ct, callers = self.timings[func]
|
|
nor_func = self.func_normalize(func)
|
|
nor_callers = {}
|
|
nc = 0
|
|
for func_caller in callers.keys():
|
|
nor_callers[self.func_normalize(func_caller)]=\
|
|
callers[func_caller]
|
|
nc = nc + callers[func_caller]
|
|
self.stats[nor_func] = nc, nc, tt, ct, nor_callers
|
|
|
|
|
|
|
|
#****************************************************************************
|
|
# HotProfile class documentation
|
|
#****************************************************************************
|
|
#
|
|
# This profiler is the fastest derived profile example. It does not
|
|
# calculate caller-callee relationships, and does not calculate cumulative
|
|
# time under a function. It only calculates time spent in a function, so
|
|
# it runs very quickly (re: very low overhead)
|
|
#****************************************************************************
|
|
class HotProfile(Profile):
|
|
def trace_dispatch_exception(self, frame, t):
|
|
rt, rtt, rfn, rframe, rcur = self.cur
|
|
if rcur and not rframe is frame:
|
|
return self.trace_dispatch_return(rframe, t)
|
|
return 0
|
|
|
|
def trace_dispatch_call(self, frame, t):
|
|
self.cur = (t, 0, frame, self.cur)
|
|
return 1
|
|
|
|
def trace_dispatch_return(self, frame, t):
|
|
rt, rtt, frame, rcur = self.cur
|
|
|
|
rfn = `frame.f_code`
|
|
|
|
pt, ptt, pframe, pcur = rcur
|
|
self.cur = pt, ptt+rt, pframe, pcur
|
|
|
|
if self.timings.has_key(rfn):
|
|
nc, tt = self.timings[rfn]
|
|
self.timings[rfn] = nc + 1, rt + rtt + tt
|
|
else:
|
|
self.timings[rfn] = 1, rt + rtt
|
|
|
|
return 1
|
|
|
|
|
|
def snapshot_stats(self):
|
|
self.stats = {}
|
|
for func in self.timings.keys():
|
|
nc, tt = self.timings[func]
|
|
nor_func = self.func_normalize(func)
|
|
self.stats[nor_func] = nc, nc, tt, 0, {}
|
|
|
|
|
|
|
|
#****************************************************************************
|
|
def Stats(*args):
|
|
print 'Report generating functions are in the "pstats" module\a'
|
|
|
|
|
|
# When invoked as main program, invoke the profiler on a script
|
|
if __name__ == '__main__':
|
|
import sys
|
|
import os
|
|
if not sys.argv[1:]:
|
|
print "usage: profile.py scriptfile [arg] ..."
|
|
sys.exit(2)
|
|
|
|
filename = sys.argv[1] # Get script filename
|
|
|
|
del sys.argv[0] # Hide "profile.py" from argument list
|
|
|
|
# Insert script directory in front of module search path
|
|
sys.path.insert(0, os.path.dirname(filename))
|
|
|
|
run('execfile(' + `filename` + ')')
|