'''"Executable documentation" for the pickle module. Extensive comments about the pickle protocols and pickle-machine opcodes can be found here. Some functions meant for external use: genops(pickle) Generate all the opcodes in a pickle, as (opcode, arg, position) triples. dis(pickle, out=None, memo=None, indentlevel=4) Print a symbolic disassembly of a pickle. ''' __all__ = ['dis', 'genops', ] # Other ideas: # # - A pickle verifier: read a pickle and check it exhaustively for # well-formedness. dis() does a lot of this already. # # - A protocol identifier: examine a pickle and return its protocol number # (== the highest .proto attr value among all the opcodes in the pickle). # dis() already prints this info at the end. # # - A pickle optimizer: for example, tuple-building code is sometimes more # elaborate than necessary, catering for the possibility that the tuple # is recursive. Or lots of times a PUT is generated that's never accessed # by a later GET. """ "A pickle" is a program for a virtual pickle machine (PM, but more accurately called an unpickling machine). It's a sequence of opcodes, interpreted by the PM, building an arbitrarily complex Python object. For the most part, the PM is very simple: there are no looping, testing, or conditional instructions, no arithmetic and no function calls. Opcodes are executed once each, from first to last, until a STOP opcode is reached. The PM has two data areas, "the stack" and "the memo". Many opcodes push Python objects onto the stack; e.g., INT pushes a Python integer object on the stack, whose value is gotten from a decimal string literal immediately following the INT opcode in the pickle bytestream. Other opcodes take Python objects off the stack. The result of unpickling is whatever object is left on the stack when the final STOP opcode is executed. The memo is simply an array of objects, or it can be implemented as a dict mapping little integers to objects. The memo serves as the PM's "long term memory", and the little integers indexing the memo are akin to variable names. Some opcodes pop a stack object into the memo at a given index, and others push a memo object at a given index onto the stack again. At heart, that's all the PM has. Subtleties arise for these reasons: + Object identity. Objects can be arbitrarily complex, and subobjects may be shared (for example, the list [a, a] refers to the same object a twice). It can be vital that unpickling recreate an isomorphic object graph, faithfully reproducing sharing. + Recursive objects. For example, after "L = []; L.append(L)", L is a list, and L[0] is the same list. This is related to the object identity point, and some sequences of pickle opcodes are subtle in order to get the right result in all cases. + Things pickle doesn't know everything about. Examples of things pickle does know everything about are Python's builtin scalar and container types, like ints and tuples. They generally have opcodes dedicated to them. For things like module references and instances of user-defined classes, pickle's knowledge is limited. Historically, many enhancements have been made to the pickle protocol in order to do a better (faster, and/or more compact) job on those. + Backward compatibility and micro-optimization. As explained below, pickle opcodes never go away, not even when better ways to do a thing get invented. The repertoire of the PM just keeps growing over time. For example, protocol 0 had two opcodes for building Python integers (INT and LONG), protocol 1 added three more for more-efficient pickling of short integers, and protocol 2 added two more for more-efficient pickling of long integers (before protocol 2, the only ways to pickle a Python long took time quadratic in the number of digits, for both pickling and unpickling). "Opcode bloat" isn't so much a subtlety as a source of wearying complication. Pickle protocols: For compatibility, the meaning of a pickle opcode never changes. Instead new pickle opcodes get added, and each version's unpickler can handle all the pickle opcodes in all protocol versions to date. So old pickles continue to be readable forever. The pickler can generally be told to restrict itself to the subset of opcodes available under previous protocol versions too, so that users can create pickles under the current version readable by older versions. However, a pickle does not contain its version number embedded within it. If an older unpickler tries to read a pickle using a later protocol, the result is most likely an exception due to seeing an unknown (in the older unpickler) opcode. The original pickle used what's now called "protocol 0", and what was called "text mode" before Python 2.3. The entire pickle bytestream is made up of printable 7-bit ASCII characters, plus the newline character, in protocol 0. That's why it was called text mode. Protocol 0 is small and elegant, but sometimes painfully inefficient. The second major set of additions is now called "protocol 1", and was called "binary mode" before Python 2.3. This added many opcodes with arguments consisting of arbitrary bytes, including NUL bytes and unprintable "high bit" bytes. Binary mode pickles can be substantially smaller than equivalent text mode pickles, and sometimes faster too; e.g., BININT represents a 4-byte int as 4 bytes following the opcode, which is cheaper to unpickle than the (perhaps) 11-character decimal string attached to INT. Protocol 1 also added a number of opcodes that operate on many stack elements at once (like APPENDS and SETITEMS), and "shortcut" opcodes (like EMPTY_DICT and EMPTY_TUPLE). The third major set of additions came in Python 2.3, and is called "protocol 2". This added: - A better way to pickle instances of new-style classes (NEWOBJ). - A way for a pickle to identify its protocol (PROTO). - Time- and space- efficient pickling of long ints (LONG{1,4}). - Shortcuts for small tuples (TUPLE{1,2,3}}. - Dedicated opcodes for bools (NEWTRUE, NEWFALSE). - The "extension registry", a vector of popular objects that can be pushed efficiently by index (EXT{1,2,4}). This is akin to the memo and GET, but the registry contents are predefined (there's nothing akin to the memo's PUT). Another independent change with Python 2.3 is the abandonment of any pretense that it might be safe to load pickles received from untrusted parties -- no sufficient security analysis has been done to guarantee this and there isn't a use case that warrants the expense of such an analysis. To this end, all tests for __safe_for_unpickling__ or for copy_reg.safe_constructors are removed from the unpickling code. References to these variables in the descriptions below are to be seen as describing unpickling in Python 2.2 and before. """ # Meta-rule: Descriptions are stored in instances of descriptor objects, # with plain constructors. No meta-language is defined from which # descriptors could be constructed. If you want, e.g., XML, write a little # program to generate XML from the objects. ############################################################################## # Some pickle opcodes have an argument, following the opcode in the # bytestream. An argument is of a specific type, described by an instance # of ArgumentDescriptor. These are not to be confused with arguments taken # off the stack -- ArgumentDescriptor applies only to arguments embedded in # the opcode stream, immediately following an opcode. # Represents the number of bytes consumed by an argument delimited by the # next newline character. UP_TO_NEWLINE = -1 # Represents the number of bytes consumed by a two-argument opcode where # the first argument gives the number of bytes in the second argument. TAKEN_FROM_ARGUMENT1 = -2 # num bytes is 1-byte unsigned int TAKEN_FROM_ARGUMENT4 = -3 # num bytes is 4-byte signed little-endian int class ArgumentDescriptor(object): __slots__ = ( # name of descriptor record, also a module global name; a string 'name', # length of argument, in bytes; an int; UP_TO_NEWLINE and # TAKEN_FROM_ARGUMENT{1,4} are negative values for variable-length # cases 'n', # a function taking a file-like object, reading this kind of argument # from the object at the current position, advancing the current # position by n bytes, and returning the value of the argument 'reader', # human-readable docs for this arg descriptor; a string 'doc', ) def __init__(self, name, n, reader, doc): assert isinstance(name, str) self.name = name assert isinstance(n, int) and (n >= 0 or n in (UP_TO_NEWLINE, TAKEN_FROM_ARGUMENT1, TAKEN_FROM_ARGUMENT4)) self.n = n self.reader = reader assert isinstance(doc, str) self.doc = doc from struct import unpack as _unpack def read_uint1(f): r""" >>> import StringIO >>> read_uint1(StringIO.StringIO('\xff')) 255 """ data = f.read(1) if data: return ord(data) raise ValueError("not enough data in stream to read uint1") uint1 = ArgumentDescriptor( name='uint1', n=1, reader=read_uint1, doc="One-byte unsigned integer.") def read_uint2(f): r""" >>> import StringIO >>> read_uint2(StringIO.StringIO('\xff\x00')) 255 >>> read_uint2(StringIO.StringIO('\xff\xff')) 65535 """ data = f.read(2) if len(data) == 2: return _unpack(">> import StringIO >>> read_int4(StringIO.StringIO('\xff\x00\x00\x00')) 255 >>> read_int4(StringIO.StringIO('\x00\x00\x00\x80')) == -(2**31) True """ data = f.read(4) if len(data) == 4: return _unpack(">> import StringIO >>> read_stringnl(StringIO.StringIO("'abcd'\nefg\n")) 'abcd' >>> read_stringnl(StringIO.StringIO("\n")) Traceback (most recent call last): ... ValueError: no string quotes around '' >>> read_stringnl(StringIO.StringIO("\n"), stripquotes=False) '' >>> read_stringnl(StringIO.StringIO("''\n")) '' >>> read_stringnl(StringIO.StringIO('"abcd"')) Traceback (most recent call last): ... ValueError: no newline found when trying to read stringnl Embedded escapes are undone in the result. >>> read_stringnl(StringIO.StringIO(r"'a\n\\b\x00c\td'" + "\n'e'")) 'a\n\\b\x00c\td' """ data = f.readline() if not data.endswith('\n'): raise ValueError("no newline found when trying to read stringnl") data = data[:-1] # lose the newline if stripquotes: for q in "'\"": if data.startswith(q): if not data.endswith(q): raise ValueError("strinq quote %r not found at both " "ends of %r" % (q, data)) data = data[1:-1] break else: raise ValueError("no string quotes around %r" % data) # I'm not sure when 'string_escape' was added to the std codecs; it's # crazy not to use it if it's there. if decode: data = data.decode('string_escape') return data stringnl = ArgumentDescriptor( name='stringnl', n=UP_TO_NEWLINE, reader=read_stringnl, doc="""A newline-terminated string. This is a repr-style string, with embedded escapes, and bracketing quotes. """) def read_stringnl_noescape(f): return read_stringnl(f, decode=False, stripquotes=False) stringnl_noescape = ArgumentDescriptor( name='stringnl_noescape', n=UP_TO_NEWLINE, reader=read_stringnl_noescape, doc="""A newline-terminated string. This is a str-style string, without embedded escapes, or bracketing quotes. It should consist solely of printable ASCII characters. """) def read_stringnl_noescape_pair(f): r""" >>> import StringIO >>> read_stringnl_noescape_pair(StringIO.StringIO("Queue\nEmpty\njunk")) 'Queue Empty' """ return "%s %s" % (read_stringnl_noescape(f), read_stringnl_noescape(f)) stringnl_noescape_pair = ArgumentDescriptor( name='stringnl_noescape_pair', n=UP_TO_NEWLINE, reader=read_stringnl_noescape_pair, doc="""A pair of newline-terminated strings. These are str-style strings, without embedded escapes, or bracketing quotes. They should consist solely of printable ASCII characters. The pair is returned as a single string, with a single blank separating the two strings. """) def read_string4(f): r""" >>> import StringIO >>> read_string4(StringIO.StringIO("\x00\x00\x00\x00abc")) '' >>> read_string4(StringIO.StringIO("\x03\x00\x00\x00abcdef")) 'abc' >>> read_string4(StringIO.StringIO("\x00\x00\x00\x03abcdef")) Traceback (most recent call last): ... ValueError: expected 50331648 bytes in a string4, but only 6 remain """ n = read_int4(f) if n < 0: raise ValueError("string4 byte count < 0: %d" % n) data = f.read(n) if len(data) == n: return data raise ValueError("expected %d bytes in a string4, but only %d remain" % (n, len(data))) string4 = ArgumentDescriptor( name="string4", n=TAKEN_FROM_ARGUMENT4, reader=read_string4, doc="""A counted string. The first argument is a 4-byte little-endian signed int giving the number of bytes in the string, and the second argument is that many bytes. """) def read_string1(f): r""" >>> import StringIO >>> read_string1(StringIO.StringIO("\x00")) '' >>> read_string1(StringIO.StringIO("\x03abcdef")) 'abc' """ n = read_uint1(f) assert n >= 0 data = f.read(n) if len(data) == n: return data raise ValueError("expected %d bytes in a string1, but only %d remain" % (n, len(data))) string1 = ArgumentDescriptor( name="string1", n=TAKEN_FROM_ARGUMENT1, reader=read_string1, doc="""A counted string. The first argument is a 1-byte unsigned int giving the number of bytes in the string, and the second argument is that many bytes. """) def read_unicodestringnl(f): r""" >>> import StringIO >>> read_unicodestringnl(StringIO.StringIO("abc\uabcd\njunk")) u'abc\uabcd' """ data = f.readline() if not data.endswith('\n'): raise ValueError("no newline found when trying to read " "unicodestringnl") data = data[:-1] # lose the newline return unicode(data, 'raw-unicode-escape') unicodestringnl = ArgumentDescriptor( name='unicodestringnl', n=UP_TO_NEWLINE, reader=read_unicodestringnl, doc="""A newline-terminated Unicode string. This is raw-unicode-escape encoded, so consists of printable ASCII characters, and may contain embedded escape sequences. """) def read_unicodestring4(f): r""" >>> import StringIO >>> s = u'abcd\uabcd' >>> enc = s.encode('utf-8') >>> enc 'abcd\xea\xaf\x8d' >>> n = chr(len(enc)) + chr(0) * 3 # little-endian 4-byte length >>> t = read_unicodestring4(StringIO.StringIO(n + enc + 'junk')) >>> s == t True >>> read_unicodestring4(StringIO.StringIO(n + enc[:-1])) Traceback (most recent call last): ... ValueError: expected 7 bytes in a unicodestring4, but only 6 remain """ n = read_int4(f) if n < 0: raise ValueError("unicodestring4 byte count < 0: %d" % n) data = f.read(n) if len(data) == n: return unicode(data, 'utf-8') raise ValueError("expected %d bytes in a unicodestring4, but only %d " "remain" % (n, len(data))) unicodestring4 = ArgumentDescriptor( name="unicodestring4", n=TAKEN_FROM_ARGUMENT4, reader=read_unicodestring4, doc="""A counted Unicode string. The first argument is a 4-byte little-endian signed int giving the number of bytes in the string, and the second argument-- the UTF-8 encoding of the Unicode string -- contains that many bytes. """) def read_decimalnl_short(f): r""" >>> import StringIO >>> read_decimalnl_short(StringIO.StringIO("1234\n56")) 1234 >>> read_decimalnl_short(StringIO.StringIO("1234L\n56")) Traceback (most recent call last): ... ValueError: trailing 'L' not allowed in '1234L' """ s = read_stringnl(f, decode=False, stripquotes=False) if s.endswith("L"): raise ValueError("trailing 'L' not allowed in %r" % s) # It's not necessarily true that the result fits in a Python short int: # the pickle may have been written on a 64-bit box. There's also a hack # for True and False here. if s == "00": return False elif s == "01": return True try: return int(s) except OverflowError: return long(s) def read_decimalnl_long(f): r""" >>> import StringIO >>> read_decimalnl_long(StringIO.StringIO("1234L\n56")) 1234 >>> read_decimalnl_long(StringIO.StringIO("123456789012345678901234L\n6")) 123456789012345678901234 """ s = read_stringnl(f, decode=False, stripquotes=False) return long(s) decimalnl_short = ArgumentDescriptor( name='decimalnl_short', n=UP_TO_NEWLINE, reader=read_decimalnl_short, doc="""A newline-terminated decimal integer literal. This never has a trailing 'L', and the integer fit in a short Python int on the box where the pickle was written -- but there's no guarantee it will fit in a short Python int on the box where the pickle is read. """) decimalnl_long = ArgumentDescriptor( name='decimalnl_long', n=UP_TO_NEWLINE, reader=read_decimalnl_long, doc="""A newline-terminated decimal integer literal. This has a trailing 'L', and can represent integers of any size. """) def read_floatnl(f): r""" >>> import StringIO >>> read_floatnl(StringIO.StringIO("-1.25\n6")) -1.25 """ s = read_stringnl(f, decode=False, stripquotes=False) return float(s) floatnl = ArgumentDescriptor( name='floatnl', n=UP_TO_NEWLINE, reader=read_floatnl, doc="""A newline-terminated decimal floating literal. In general this requires 17 significant digits for roundtrip identity, and pickling then unpickling infinities, NaNs, and minus zero doesn't work across boxes, or on some boxes even on itself (e.g., Windows can't read the strings it produces for infinities or NaNs). """) def read_float8(f): r""" >>> import StringIO, struct >>> raw = struct.pack(">d", -1.25) >>> raw '\xbf\xf4\x00\x00\x00\x00\x00\x00' >>> read_float8(StringIO.StringIO(raw + "\n")) -1.25 """ data = f.read(8) if len(data) == 8: return _unpack(">d", data)[0] raise ValueError("not enough data in stream to read float8") float8 = ArgumentDescriptor( name='float8', n=8, reader=read_float8, doc="""An 8-byte binary representation of a float, big-endian. The format is unique to Python, and shared with the struct module (format string '>d') "in theory" (the struct and cPickle implementations don't share the code -- they should). It's strongly related to the IEEE-754 double format, and, in normal cases, is in fact identical to the big-endian 754 double format. On other boxes the dynamic range is limited to that of a 754 double, and "add a half and chop" rounding is used to reduce the precision to 53 bits. However, even on a 754 box, infinities, NaNs, and minus zero may not be handled correctly (may not survive roundtrip pickling intact). """) # Protocol 2 formats from pickle import decode_long def read_long1(f): r""" >>> import StringIO >>> read_long1(StringIO.StringIO("\x00")) 0 >>> read_long1(StringIO.StringIO("\x02\xff\x00")) 255 >>> read_long1(StringIO.StringIO("\x02\xff\x7f")) 32767 >>> read_long1(StringIO.StringIO("\x02\x00\xff")) -256 >>> read_long1(StringIO.StringIO("\x02\x00\x80")) -32768 """ n = read_uint1(f) data = f.read(n) if len(data) != n: raise ValueError("not enough data in stream to read long1") return decode_long(data) long1 = ArgumentDescriptor( name="long1", n=TAKEN_FROM_ARGUMENT1, reader=read_long1, doc="""A binary long, little-endian, using 1-byte size. This first reads one byte as an unsigned size, then reads that many bytes and interprets them as a little-endian 2's-complement long. If the size is 0, that's taken as a shortcut for the long 0L. """) def read_long4(f): r""" >>> import StringIO >>> read_long4(StringIO.StringIO("\x02\x00\x00\x00\xff\x00")) 255 >>> read_long4(StringIO.StringIO("\x02\x00\x00\x00\xff\x7f")) 32767 >>> read_long4(StringIO.StringIO("\x02\x00\x00\x00\x00\xff")) -256 >>> read_long4(StringIO.StringIO("\x02\x00\x00\x00\x00\x80")) -32768 >>> read_long1(StringIO.StringIO("\x00\x00\x00\x00")) 0 """ n = read_int4(f) if n < 0: raise ValueError("long4 byte count < 0: %d" % n) data = f.read(n) if len(data) != n: raise ValueError("not enough data in stream to read long4") return decode_long(data) long4 = ArgumentDescriptor( name="long4", n=TAKEN_FROM_ARGUMENT4, reader=read_long4, doc="""A binary representation of a long, little-endian. This first reads four bytes as a signed size (but requires the size to be >= 0), then reads that many bytes and interprets them as a little-endian 2's-complement long. If the size is 0, that's taken as a shortcut for the long 0L, although LONG1 should really be used then instead (and in any case where # of bytes < 256). """) ############################################################################## # Object descriptors. The stack used by the pickle machine holds objects, # and in the stack_before and stack_after attributes of OpcodeInfo # descriptors we need names to describe the various types of objects that can # appear on the stack. class StackObject(object): __slots__ = ( # name of descriptor record, for info only 'name', # type of object, or tuple of type objects (meaning the object can # be of any type in the tuple) 'obtype', # human-readable docs for this kind of stack object; a string 'doc', ) def __init__(self, name, obtype, doc): assert isinstance(name, str) self.name = name assert isinstance(obtype, type) or isinstance(obtype, tuple) if isinstance(obtype, tuple): for contained in obtype: assert isinstance(contained, type) self.obtype = obtype assert isinstance(doc, str) self.doc = doc def __repr__(self): return self.name pyint = StackObject( name='int', obtype=int, doc="A short (as opposed to long) Python integer object.") pylong = StackObject( name='long', obtype=long, doc="A long (as opposed to short) Python integer object.") pyinteger_or_bool = StackObject( name='int_or_bool', obtype=(int, long, bool), doc="A Python integer object (short or long), or " "a Python bool.") pybool = StackObject( name='bool', obtype=(bool,), doc="A Python bool object.") pyfloat = StackObject( name='float', obtype=float, doc="A Python float object.") pystring = StackObject( name='str', obtype=str, doc="A Python string object.") pyunicode = StackObject( name='unicode', obtype=unicode, doc="A Python Unicode string object.") pynone = StackObject( name="None", obtype=type(None), doc="The Python None object.") pytuple = StackObject( name="tuple", obtype=tuple, doc="A Python tuple object.") pylist = StackObject( name="list", obtype=list, doc="A Python list object.") pydict = StackObject( name="dict", obtype=dict, doc="A Python dict object.") anyobject = StackObject( name='any', obtype=object, doc="Any kind of object whatsoever.") markobject = StackObject( name="mark", obtype=StackObject, doc="""'The mark' is a unique object. Opcodes that operate on a variable number of objects generally don't embed the count of objects in the opcode, or pull it off the stack. Instead the MARK opcode is used to push a special marker object on the stack, and then some other opcodes grab all the objects from the top of the stack down to (but not including) the topmost marker object. """) stackslice = StackObject( name="stackslice", obtype=StackObject, doc="""An object representing a contiguous slice of the stack. This is used in conjuction with markobject, to represent all of the stack following the topmost markobject. For example, the POP_MARK opcode changes the stack from [..., markobject, stackslice] to [...] No matter how many object are on the stack after the topmost markobject, POP_MARK gets rid of all of them (including the topmost markobject too). """) ############################################################################## # Descriptors for pickle opcodes. class OpcodeInfo(object): __slots__ = ( # symbolic name of opcode; a string 'name', # the code used in a bytestream to represent the opcode; a # one-character string 'code', # If the opcode has an argument embedded in the byte string, an # instance of ArgumentDescriptor specifying its type. Note that # arg.reader(s) can be used to read and decode the argument from # the bytestream s, and arg.doc documents the format of the raw # argument bytes. If the opcode doesn't have an argument embedded # in the bytestream, arg should be None. 'arg', # what the stack looks like before this opcode runs; a list 'stack_before', # what the stack looks like after this opcode runs; a list 'stack_after', # the protocol number in which this opcode was introduced; an int 'proto', # human-readable docs for this opcode; a string 'doc', ) def __init__(self, name, code, arg, stack_before, stack_after, proto, doc): assert isinstance(name, str) self.name = name assert isinstance(code, str) assert len(code) == 1 self.code = code assert arg is None or isinstance(arg, ArgumentDescriptor) self.arg = arg assert isinstance(stack_before, list) for x in stack_before: assert isinstance(x, StackObject) self.stack_before = stack_before assert isinstance(stack_after, list) for x in stack_after: assert isinstance(x, StackObject) self.stack_after = stack_after assert isinstance(proto, int) and 0 <= proto <= 2 self.proto = proto assert isinstance(doc, str) self.doc = doc I = OpcodeInfo opcodes = [ # Ways to spell integers. I(name='INT', code='I', arg=decimalnl_short, stack_before=[], stack_after=[pyinteger_or_bool], proto=0, doc="""Push an integer or bool. The argument is a newline-terminated decimal literal string. The intent may have been that this always fit in a short Python int, but INT can be generated in pickles written on a 64-bit box that require a Python long on a 32-bit box. The difference between this and LONG then is that INT skips a trailing 'L', and produces a short int whenever possible. Another difference is due to that, when bool was introduced as a distinct type in 2.3, builtin names True and False were also added to 2.2.2, mapping to ints 1 and 0. For compatibility in both directions, True gets pickled as INT + "I01\\n", and False as INT + "I00\\n". Leading zeroes are never produced for a genuine integer. The 2.3 (and later) unpicklers special-case these and return bool instead; earlier unpicklers ignore the leading "0" and return the int. """), I(name='BININT', code='J', arg=int4, stack_before=[], stack_after=[pyint], proto=1, doc="""Push a four-byte signed integer. This handles the full range of Python (short) integers on a 32-bit box, directly as binary bytes (1 for the opcode and 4 for the integer). If the integer is non-negative and fits in 1 or 2 bytes, pickling via BININT1 or BININT2 saves space. """), I(name='BININT1', code='K', arg=uint1, stack_before=[], stack_after=[pyint], proto=1, doc="""Push a one-byte unsigned integer. This is a space optimization for pickling very small non-negative ints, in range(256). """), I(name='BININT2', code='M', arg=uint2, stack_before=[], stack_after=[pyint], proto=1, doc="""Push a two-byte unsigned integer. This is a space optimization for pickling small positive ints, in range(256, 2**16). Integers in range(256) can also be pickled via BININT2, but BININT1 instead saves a byte. """), I(name='LONG', code='L', arg=decimalnl_long, stack_before=[], stack_after=[pylong], proto=0, doc="""Push a long integer. The same as INT, except that the literal ends with 'L', and always unpickles to a Python long. There doesn't seem a real purpose to the trailing 'L'. Note that LONG takes time quadratic in the number of digits when unpickling (this is simply due to the nature of decimal->binary conversion). Proto 2 added linear-time (in C; still quadratic-time in Python) LONG1 and LONG4 opcodes. """), I(name="LONG1", code='\x8a', arg=long1, stack_before=[], stack_after=[pylong], proto=2, doc="""Long integer using one-byte length. A more efficient encoding of a Python long; the long1 encoding says it all."""), I(name="LONG4", code='\x8b', arg=long4, stack_before=[], stack_after=[pylong], proto=2, doc="""Long integer using found-byte length. A more efficient encoding of a Python long; the long4 encoding says it all."""), # Ways to spell strings (8-bit, not Unicode). I(name='STRING', code='S', arg=stringnl, stack_before=[], stack_after=[pystring], proto=0, doc="""Push a Python string object. The argument is a repr-style string, with bracketing quote characters, and perhaps embedded escapes. The argument extends until the next newline character. """), I(name='BINSTRING', code='T', arg=string4, stack_before=[], stack_after=[pystring], proto=1, doc="""Push a Python string object. There are two arguments: the first is a 4-byte little-endian signed int giving the number of bytes in the string, and the second is that many bytes, which are taken literally as the string content. """), I(name='SHORT_BINSTRING', code='U', arg=string1, stack_before=[], stack_after=[pystring], proto=1, doc="""Push a Python string object. There are two arguments: the first is a 1-byte unsigned int giving the number of bytes in the string, and the second is that many bytes, which are taken literally as the string content. """), # Ways to spell None. I(name='NONE', code='N', arg=None, stack_before=[], stack_after=[pynone], proto=0, doc="Push None on the stack."), # Ways to spell bools, starting with proto 2. See INT for how this was # done before proto 2. I(name='NEWTRUE', code='\x88', arg=None, stack_before=[], stack_after=[pybool], proto=2, doc="""True. Push True onto the stack."""), I(name='NEWFALSE', code='\x89', arg=None, stack_before=[], stack_after=[pybool], proto=2, doc="""True. Push False onto the stack."""), # Ways to spell Unicode strings. I(name='UNICODE', code='V', arg=unicodestringnl, stack_before=[], stack_after=[pyunicode], proto=0, # this may be pure-text, but it's a later addition doc="""Push a Python Unicode string object. The argument is a raw-unicode-escape encoding of a Unicode string, and so may contain embedded escape sequences. The argument extends until the next newline character. """), I(name='BINUNICODE', code='X', arg=unicodestring4, stack_before=[], stack_after=[pyunicode], proto=1, doc="""Push a Python Unicode string object. There are two arguments: the first is a 4-byte little-endian signed int giving the number of bytes in the string. The second is that many bytes, and is the UTF-8 encoding of the Unicode string. """), # Ways to spell floats. I(name='FLOAT', code='F', arg=floatnl, stack_before=[], stack_after=[pyfloat], proto=0, doc="""Newline-terminated decimal float literal. The argument is repr(a_float), and in general requires 17 significant digits for roundtrip conversion to be an identity (this is so for IEEE-754 double precision values, which is what Python float maps to on most boxes). In general, FLOAT cannot be used to transport infinities, NaNs, or minus zero across boxes (or even on a single box, if the platform C library can't read the strings it produces for such things -- Windows is like that), but may do less damage than BINFLOAT on boxes with greater precision or dynamic range than IEEE-754 double. """), I(name='BINFLOAT', code='G', arg=float8, stack_before=[], stack_after=[pyfloat], proto=1, doc="""Float stored in binary form, with 8 bytes of data. This generally requires less than half the space of FLOAT encoding. In general, BINFLOAT cannot be used to transport infinities, NaNs, or minus zero, raises an exception if the exponent exceeds the range of an IEEE-754 double, and retains no more than 53 bits of precision (if there are more than that, "add a half and chop" rounding is used to cut it back to 53 significant bits). """), # Ways to build lists. I(name='EMPTY_LIST', code=']', arg=None, stack_before=[], stack_after=[pylist], proto=1, doc="Push an empty list."), I(name='APPEND', code='a', arg=None, stack_before=[pylist, anyobject], stack_after=[pylist], proto=0, doc="""Append an object to a list. Stack before: ... pylist anyobject Stack after: ... pylist+[anyobject] although pylist is really extended in-place. """), I(name='APPENDS', code='e', arg=None, stack_before=[pylist, markobject, stackslice], stack_after=[pylist], proto=1, doc="""Extend a list by a slice of stack objects. Stack before: ... pylist markobject stackslice Stack after: ... pylist+stackslice although pylist is really extended in-place. """), I(name='LIST', code='l', arg=None, stack_before=[markobject, stackslice], stack_after=[pylist], proto=0, doc="""Build a list out of the topmost stack slice, after markobject. All the stack entries following the topmost markobject are placed into a single Python list, which single list object replaces all of the stack from the topmost markobject onward. For example, Stack before: ... markobject 1 2 3 'abc' Stack after: ... [1, 2, 3, 'abc'] """), # Ways to build tuples. I(name='EMPTY_TUPLE', code=')', arg=None, stack_before=[], stack_after=[pytuple], proto=1, doc="Push an empty tuple."), I(name='TUPLE', code='t', arg=None, stack_before=[markobject, stackslice], stack_after=[pytuple], proto=0, doc="""Build a tuple out of the topmost stack slice, after markobject. All the stack entries following the topmost markobject are placed into a single Python tuple, which single tuple object replaces all of the stack from the topmost markobject onward. For example, Stack before: ... markobject 1 2 3 'abc' Stack after: ... (1, 2, 3, 'abc') """), I(name='TUPLE1', code='\x85', arg=None, stack_before=[anyobject], stack_after=[pytuple], proto=2, doc="""One-tuple. This code pops one value off the stack and pushes a tuple of length 1 whose one item is that value back onto it. IOW: stack[-1] = tuple(stack[-1:]) """), I(name='TUPLE2', code='\x86', arg=None, stack_before=[anyobject, anyobject], stack_after=[pytuple], proto=2, doc="""One-tuple. This code pops two values off the stack and pushes a tuple of length 2 whose items are those values back onto it. IOW: stack[-2:] = [tuple(stack[-2:])] """), I(name='TUPLE3', code='\x87', arg=None, stack_before=[anyobject, anyobject, anyobject], stack_after=[pytuple], proto=2, doc="""One-tuple. This code pops three values off the stack and pushes a tuple of length 3 whose items are those values back onto it. IOW: stack[-3:] = [tuple(stack[-3:])] """), # Ways to build dicts. I(name='EMPTY_DICT', code='}', arg=None, stack_before=[], stack_after=[pydict], proto=1, doc="Push an empty dict."), I(name='DICT', code='d', arg=None, stack_before=[markobject, stackslice], stack_after=[pydict], proto=0, doc="""Build a dict out of the topmost stack slice, after markobject. All the stack entries following the topmost markobject are placed into a single Python dict, which single dict object replaces all of the stack from the topmost markobject onward. The stack slice alternates key, value, key, value, .... For example, Stack before: ... markobject 1 2 3 'abc' Stack after: ... {1: 2, 3: 'abc'} """), I(name='SETITEM', code='s', arg=None, stack_before=[pydict, anyobject, anyobject], stack_after=[pydict], proto=0, doc="""Add a key+value pair to an existing dict. Stack before: ... pydict key value Stack after: ... pydict where pydict has been modified via pydict[key] = value. """), I(name='SETITEMS', code='u', arg=None, stack_before=[pydict, markobject, stackslice], stack_after=[pydict], proto=1, doc="""Add an arbitrary number of key+value pairs to an existing dict. The slice of the stack following the topmost markobject is taken as an alternating sequence of keys and values, added to the dict immediately under the topmost markobject. Everything at and after the topmost markobject is popped, leaving the mutated dict at the top of the stack. Stack before: ... pydict markobject key_1 value_1 ... key_n value_n Stack after: ... pydict where pydict has been modified via pydict[key_i] = value_i for i in 1, 2, ..., n, and in that order. """), # Stack manipulation. I(name='POP', code='0', arg=None, stack_before=[anyobject], stack_after=[], proto=0, doc="Discard the top stack item, shrinking the stack by one item."), I(name='DUP', code='2', arg=None, stack_before=[anyobject], stack_after=[anyobject, anyobject], proto=0, doc="Push the top stack item onto the stack again, duplicating it."), I(name='MARK', code='(', arg=None, stack_before=[], stack_after=[markobject], proto=0, doc="""Push markobject onto the stack. markobject is a unique object, used by other opcodes to identify a region of the stack containing a variable number of objects for them to work on. See markobject.doc for more detail. """), I(name='POP_MARK', code='1', arg=None, stack_before=[markobject, stackslice], stack_after=[], proto=0, doc="""Pop all the stack objects at and above the topmost markobject. When an opcode using a variable number of stack objects is done, POP_MARK is used to remove those objects, and to remove the markobject that delimited their starting position on the stack. """), # Memo manipulation. There are really only two operations (get and put), # each in all-text, "short binary", and "long binary" flavors. I(name='GET', code='g', arg=decimalnl_short, stack_before=[], stack_after=[anyobject], proto=0, doc="""Read an object from the memo and push it on the stack. The index of the memo object to push is given by the newline-teriminated decimal string following. BINGET and LONG_BINGET are space-optimized versions. """), I(name='BINGET', code='h', arg=uint1, stack_before=[], stack_after=[anyobject], proto=1, doc="""Read an object from the memo and push it on the stack. The index of the memo object to push is given by the 1-byte unsigned integer following. """), I(name='LONG_BINGET', code='j', arg=int4, stack_before=[], stack_after=[anyobject], proto=1, doc="""Read an object from the memo and push it on the stack. The index of the memo object to push is given by the 4-byte signed little-endian integer following. """), I(name='PUT', code='p', arg=decimalnl_short, stack_before=[], stack_after=[], proto=0, doc="""Store the stack top into the memo. The stack is not popped. The index of the memo location to write into is given by the newline- terminated decimal string following. BINPUT and LONG_BINPUT are space-optimized versions. """), I(name='BINPUT', code='q', arg=uint1, stack_before=[], stack_after=[], proto=1, doc="""Store the stack top into the memo. The stack is not popped. The index of the memo location to write into is given by the 1-byte unsigned integer following. """), I(name='LONG_BINPUT', code='r', arg=int4, stack_before=[], stack_after=[], proto=1, doc="""Store the stack top into the memo. The stack is not popped. The index of the memo location to write into is given by the 4-byte signed little-endian integer following. """), # Access the extension registry (predefined objects). Akin to the GET # family. I(name='EXT1', code='\x82', arg=uint1, stack_before=[], stack_after=[anyobject], proto=2, doc="""Extension code. This code and the similar EXT2 and EXT4 allow using a registry of popular objects that are pickled by name, typically classes. It is envisioned that through a global negotiation and registration process, third parties can set up a mapping between ints and object names. In order to guarantee pickle interchangeability, the extension code registry ought to be global, although a range of codes may be reserved for private use. EXT1 has a 1-byte integer argument. This is used to index into the extension registry, and the object at that index is pushed on the stack. """), I(name='EXT2', code='\x83', arg=uint2, stack_before=[], stack_after=[anyobject], proto=2, doc="""Extension code. See EXT1. EXT2 has a two-byte integer argument. """), I(name='EXT4', code='\x84', arg=int4, stack_before=[], stack_after=[anyobject], proto=2, doc="""Extension code. See EXT1. EXT4 has a four-byte integer argument. """), # Push a class object, or module function, on the stack, via its module # and name. I(name='GLOBAL', code='c', arg=stringnl_noescape_pair, stack_before=[], stack_after=[anyobject], proto=0, doc="""Push a global object (module.attr) on the stack. Two newline-terminated strings follow the GLOBAL opcode. The first is taken as a module name, and the second as a class name. The class object module.class is pushed on the stack. More accurately, the object returned by self.find_class(module, class) is pushed on the stack, so unpickling subclasses can override this form of lookup. """), # Ways to build objects of classes pickle doesn't know about directly # (user-defined classes). I despair of documenting this accurately # and comprehensibly -- you really have to read the pickle code to # find all the special cases. I(name='REDUCE', code='R', arg=None, stack_before=[anyobject, anyobject], stack_after=[anyobject], proto=0, doc="""Push an object built from a callable and an argument tuple. The opcode is named to remind of the __reduce__() method. Stack before: ... callable pytuple Stack after: ... callable(*pytuple) The callable and the argument tuple are the first two items returned by a __reduce__ method. Applying the callable to the argtuple is supposed to reproduce the original object, or at least get it started. If the __reduce__ method returns a 3-tuple, the last component is an argument to be passed to the object's __setstate__, and then the REDUCE opcode is followed by code to create setstate's argument, and then a BUILD opcode to apply __setstate__ to that argument. If type(callable) is not ClassType, REDUCE complains unless the callable has been registered with the copy_reg module's safe_constructors dict, or the callable has a magic '__safe_for_unpickling__' attribute with a true value. I'm not sure why it does this, but I've sure seen this complaint often enough when I didn't want to . """), I(name='BUILD', code='b', arg=None, stack_before=[anyobject, anyobject], stack_after=[anyobject], proto=0, doc="""Finish building an object, via __setstate__ or dict update. Stack before: ... anyobject argument Stack after: ... anyobject where anyobject may have been mutated, as follows: If the object has a __setstate__ method, anyobject.__setstate__(argument) is called. Else the argument must be a dict, the object must have a __dict__, and the object is updated via anyobject.__dict__.update(argument) This may raise RuntimeError in restricted execution mode (which disallows access to __dict__ directly); in that case, the object is updated instead via for k, v in argument.items(): anyobject[k] = v """), I(name='INST', code='i', arg=stringnl_noescape_pair, stack_before=[markobject, stackslice], stack_after=[anyobject], proto=0, doc="""Build a class instance. This is the protocol 0 version of protocol 1's OBJ opcode. INST is followed by two newline-terminated strings, giving a module and class name, just as for the GLOBAL opcode (and see GLOBAL for more details about that). self.find_class(module, name) is used to get a class object. In addition, all the objects on the stack following the topmost markobject are gathered into a tuple and popped (along with the topmost markobject), just as for the TUPLE opcode. Now it gets complicated. If all of these are true: + The argtuple is empty (markobject was at the top of the stack at the start). + It's an old-style class object (the type of the class object is ClassType). + The class object does not have a __getinitargs__ attribute. then we want to create an old-style class instance without invoking its __init__() method (pickle has waffled on this over the years; not calling __init__() is current wisdom). In this case, an instance of an old-style dummy class is created, and then we try to rebind its __class__ attribute to the desired class object. If this succeeds, the new instance object is pushed on the stack, and we're done. In restricted execution mode it can fail (assignment to __class__ is disallowed), and I'm not really sure what happens then -- it looks like the code ends up calling the class object's __init__ anyway, via falling into the next case. Else (the argtuple is not empty, it's not an old-style class object, or the class object does have a __getinitargs__ attribute), the code first insists that the class object have a __safe_for_unpickling__ attribute. Unlike as for the __safe_for_unpickling__ check in REDUCE, it doesn't matter whether this attribute has a true or false value, it only matters whether it exists (XXX this is a bug; cPickle requires the attribute to be true). If __safe_for_unpickling__ doesn't exist, UnpicklingError is raised. Else (the class object does have a __safe_for_unpickling__ attr), the class object obtained from INST's arguments is applied to the argtuple obtained from the stack, and the resulting instance object is pushed on the stack. NOTE: checks for __safe_for_unpickling__ went away in Python 2.3. """), I(name='OBJ', code='o', arg=None, stack_before=[markobject, anyobject, stackslice], stack_after=[anyobject], proto=1, doc="""Build a class instance. This is the protocol 1 version of protocol 0's INST opcode, and is very much like it. The major difference is that the class object is taken off the stack, allowing it to be retrieved from the memo repeatedly if several instances of the same class are created. This can be much more efficient (in both time and space) than repeatedly embedding the module and class names in INST opcodes. Unlike INST, OBJ takes no arguments from the opcode stream. Instead the class object is taken off the stack, immediately above the topmost markobject: Stack before: ... markobject classobject stackslice Stack after: ... new_instance_object As for INST, the remainder of the stack above the markobject is gathered into an argument tuple, and then the logic seems identical, except that no __safe_for_unpickling__ check is done (XXX this is a bug; cPickle does test __safe_for_unpickling__). See INST for the gory details. NOTE: In Python 2.3, INST and OBJ are identical except for how they get the class object. That was always the intent; the implementations had diverged for accidental reasons. """), I(name='NEWOBJ', code='\x81', arg=None, stack_before=[anyobject, anyobject], stack_after=[anyobject], proto=2, doc="""Build an object instance. The stack before should be thought of as containing a class object followed by an argument tuple (the tuple being the stack top). Call these cls and args. They are popped off the stack, and the value returned by cls.__new__(cls, *args) is pushed back onto the stack. """), # Machine control. I(name='PROTO', code='\x80', arg=uint1, stack_before=[], stack_after=[], proto=2, doc="""Protocol version indicator. For protocol 2 and above, a pickle must start with this opcode. The argument is the protocol version, an int in range(2, 256). """), I(name='STOP', code='.', arg=None, stack_before=[anyobject], stack_after=[], proto=0, doc="""Stop the unpickling machine. Every pickle ends with this opcode. The object at the top of the stack is popped, and that's the result of unpickling. The stack should be empty then. """), # Ways to deal with persistent IDs. I(name='PERSID', code='P', arg=stringnl_noescape, stack_before=[], stack_after=[anyobject], proto=0, doc="""Push an object identified by a persistent ID. The pickle module doesn't define what a persistent ID means. PERSID's argument is a newline-terminated str-style (no embedded escapes, no bracketing quote characters) string, which *is* "the persistent ID". The unpickler passes this string to self.persistent_load(). Whatever object that returns is pushed on the stack. There is no implementation of persistent_load() in Python's unpickler: it must be supplied by an unpickler subclass. """), I(name='BINPERSID', code='Q', arg=None, stack_before=[anyobject], stack_after=[anyobject], proto=1, doc="""Push an object identified by a persistent ID. Like PERSID, except the persistent ID is popped off the stack (instead of being a string embedded in the opcode bytestream). The persistent ID is passed to self.persistent_load(), and whatever object that returns is pushed on the stack. See PERSID for more detail. """), ] del I # Verify uniqueness of .name and .code members. name2i = {} code2i = {} for i, d in enumerate(opcodes): if d.name in name2i: raise ValueError("repeated name %r at indices %d and %d" % (d.name, name2i[d.name], i)) if d.code in code2i: raise ValueError("repeated code %r at indices %d and %d" % (d.code, code2i[d.code], i)) name2i[d.name] = i code2i[d.code] = i del name2i, code2i, i, d ############################################################################## # Build a code2op dict, mapping opcode characters to OpcodeInfo records. # Also ensure we've got the same stuff as pickle.py, although the # introspection here is dicey. code2op = {} for d in opcodes: code2op[d.code] = d del d def assure_pickle_consistency(verbose=False): import pickle, re copy = code2op.copy() for name in pickle.__all__: if not re.match("[A-Z][A-Z0-9_]+$", name): if verbose: print "skipping %r: it doesn't look like an opcode name" % name continue picklecode = getattr(pickle, name) if not isinstance(picklecode, str) or len(picklecode) != 1: if verbose: print ("skipping %r: value %r doesn't look like a pickle " "code" % (name, picklecode)) continue if picklecode in copy: if verbose: print "checking name %r w/ code %r for consistency" % ( name, picklecode) d = copy[picklecode] if d.name != name: raise ValueError("for pickle code %r, pickle.py uses name %r " "but we're using name %r" % (picklecode, name, d.name)) # Forget this one. Any left over in copy at the end are a problem # of a different kind. del copy[picklecode] else: raise ValueError("pickle.py appears to have a pickle opcode with " "name %r and code %r, but we don't" % (name, picklecode)) if copy: msg = ["we appear to have pickle opcodes that pickle.py doesn't have:"] for code, d in copy.items(): msg.append(" name %r with code %r" % (d.name, code)) raise ValueError("\n".join(msg)) assure_pickle_consistency() del assure_pickle_consistency ############################################################################## # A pickle opcode generator. def genops(pickle): """Generate all the opcodes in a pickle. 'pickle' is a file-like object, or string, containing the pickle. Each opcode in the pickle is generated, from the current pickle position, stopping after a STOP opcode is delivered. A triple is generated for each opcode: opcode, arg, pos opcode is an OpcodeInfo record, describing the current opcode. If the opcode has an argument embedded in the pickle, arg is its decoded value, as a Python object. If the opcode doesn't have an argument, arg is None. If the pickle has a tell() method, pos was the value of pickle.tell() before reading the current opcode. If the pickle is a string object, it's wrapped in a StringIO object, and the latter's tell() result is used. Else (the pickle doesn't have a tell(), and it's not obvious how to query its current position) pos is None. """ import cStringIO as StringIO if isinstance(pickle, str): pickle = StringIO.StringIO(pickle) if hasattr(pickle, "tell"): getpos = pickle.tell else: getpos = lambda: None while True: pos = getpos() code = pickle.read(1) opcode = code2op.get(code) if opcode is None: if code == "": raise ValueError("pickle exhausted before seeing STOP") else: raise ValueError("at position %s, opcode %r unknown" % ( pos is None and "" or pos, code)) if opcode.arg is None: arg = None else: arg = opcode.arg.reader(pickle) yield opcode, arg, pos if code == '.': assert opcode.name == 'STOP' break ############################################################################## # A symbolic pickle disassembler. def dis(pickle, out=None, memo=None, indentlevel=4): """Produce a symbolic disassembly of a pickle. 'pickle' is a file-like object, or string, containing a (at least one) pickle. The pickle is disassembled from the current position, through the first STOP opcode encountered. Optional arg 'out' is a file-like object to which the disassembly is printed. It defaults to sys.stdout. Optional arg 'memo' is a Python dict, used as the pickle's memo. It may be mutated by dis(), if the pickle contains PUT or BINPUT opcodes. Passing the same memo object to another dis() call then allows disassembly to proceed across multiple pickles that were all created by the same pickler with the same memo. Ordinarily you don't need to worry about this. Optional arg indentlevel is the number of blanks by which to indent a new MARK level. It defaults to 4. In addition to printing the disassembly, some sanity checks are made: + All embedded opcode arguments "make sense". + Explicit and implicit pop operations have enough items on the stack. + When an opcode implicitly refers to a markobject, a markobject is actually on the stack. + A memo entry isn't referenced before it's defined. + The markobject isn't stored in the memo. + A memo entry isn't redefined. """ # Most of the hair here is for sanity checks, but most of it is needed # anyway to detect when a protocol 0 POP takes a MARK off the stack # (which in turn is needed to indent MARK blocks correctly). stack = [] # crude emulation of unpickler stack if memo is None: memo = {} # crude emulation of unpicker memo maxproto = -1 # max protocol number seen markstack = [] # bytecode positions of MARK opcodes indentchunk = ' ' * indentlevel errormsg = None for opcode, arg, pos in genops(pickle): if pos is not None: print >> out, "%5d:" % pos, line = "%-4s %s%s" % (repr(opcode.code)[1:-1], indentchunk * len(markstack), opcode.name) maxproto = max(maxproto, opcode.proto) before = opcode.stack_before # don't mutate after = opcode.stack_after # don't mutate numtopop = len(before) # See whether a MARK should be popped. markmsg = None if markobject in before or (opcode.name == "POP" and stack and stack[-1] is markobject): assert markobject not in after if __debug__: if markobject in before: assert before[-1] is stackslice if markstack: markpos = markstack.pop() if markpos is None: markmsg = "(MARK at unknown opcode offset)" else: markmsg = "(MARK at %d)" % markpos # Pop everything at and after the topmost markobject. while stack[-1] is not markobject: stack.pop() stack.pop() # Stop later code from popping too much. try: numtopop = before.index(markobject) except ValueError: assert opcode.name == "POP" numtopop = 0 else: errormsg = markmsg = "no MARK exists on stack" # Check for correct memo usage. if opcode.name in ("PUT", "BINPUT", "LONG_BINPUT"): assert arg is not None if arg in memo: errormsg = "memo key %r already defined" % arg elif not stack: errormsg = "stack is empty -- can't store into memo" elif stack[-1] is markobject: errormsg = "can't store markobject in the memo" else: memo[arg] = stack[-1] elif opcode.name in ("GET", "BINGET", "LONG_BINGET"): if arg in memo: assert len(after) == 1 after = [memo[arg]] # for better stack emulation else: errormsg = "memo key %r has never been stored into" % arg if arg is not None or markmsg: # make a mild effort to align arguments line += ' ' * (10 - len(opcode.name)) if arg is not None: line += ' ' + repr(arg) if markmsg: line += ' ' + markmsg print >> out, line if errormsg: # Note that we delayed complaining until the offending opcode # was printed. raise ValueError(errormsg) # Emulate the stack effects. if len(stack) < numtopop: raise ValueError("tries to pop %d items from stack with " "only %d items" % (numtopop, len(stack))) if numtopop: del stack[-numtopop:] if markobject in after: assert markobject not in before markstack.append(pos) stack.extend(after) print >> out, "highest protocol among opcodes =", maxproto if stack: raise ValueError("stack not empty after STOP: %r" % stack) # For use in the doctest, simply as an example of a class to pickle. class _Example: def __init__(self, value): self.value = value _dis_test = r""" >>> import pickle >>> x = [1, 2, (3, 4), {'abc': u"def"}] >>> pkl = pickle.dumps(x, 0) >>> dis(pkl) 0: ( MARK 1: l LIST (MARK at 0) 2: p PUT 0 5: L LONG 1 8: a APPEND 9: L LONG 2 12: a APPEND 13: ( MARK 14: L LONG 3 17: L LONG 4 20: t TUPLE (MARK at 13) 21: p PUT 1 24: a APPEND 25: ( MARK 26: d DICT (MARK at 25) 27: p PUT 2 30: S STRING 'abc' 37: p PUT 3 40: V UNICODE u'def' 45: p PUT 4 48: s SETITEM 49: a APPEND 50: . STOP highest protocol among opcodes = 0 Try again with a "binary" pickle. >>> pkl = pickle.dumps(x, 1) >>> dis(pkl) 0: ] EMPTY_LIST 1: q BINPUT 0 3: ( MARK 4: K BININT1 1 6: K BININT1 2 8: ( MARK 9: K BININT1 3 11: K BININT1 4 13: t TUPLE (MARK at 8) 14: q BINPUT 1 16: } EMPTY_DICT 17: q BINPUT 2 19: U SHORT_BINSTRING 'abc' 24: q BINPUT 3 26: X BINUNICODE u'def' 34: q BINPUT 4 36: s SETITEM 37: e APPENDS (MARK at 3) 38: . STOP highest protocol among opcodes = 1 Exercise the INST/OBJ/BUILD family. >>> import random >>> dis(pickle.dumps(random.random, 0)) 0: c GLOBAL 'random random' 15: p PUT 0 18: . STOP highest protocol among opcodes = 0 >>> from pickletools import _Example >>> x = [_Example(42)] * 2 >>> dis(pickle.dumps(x, 0)) 0: ( MARK 1: l LIST (MARK at 0) 2: p PUT 0 5: c GLOBAL 'copy_reg _reconstructor' 30: p PUT 1 33: ( MARK 34: c GLOBAL 'pickletools _Example' 56: p PUT 2 59: c GLOBAL '__builtin__ object' 79: p PUT 3 82: N NONE 83: t TUPLE (MARK at 33) 84: p PUT 4 87: R REDUCE 88: p PUT 5 91: ( MARK 92: d DICT (MARK at 91) 93: p PUT 6 96: S STRING 'value' 105: p PUT 7 108: L LONG 42 112: s SETITEM 113: b BUILD 114: a APPEND 115: g GET 5 118: a APPEND 119: . STOP highest protocol among opcodes = 0 >>> dis(pickle.dumps(x, 1)) 0: ] EMPTY_LIST 1: q BINPUT 0 3: ( MARK 4: c GLOBAL 'copy_reg _reconstructor' 29: q BINPUT 1 31: ( MARK 32: c GLOBAL 'pickletools _Example' 54: q BINPUT 2 56: c GLOBAL '__builtin__ object' 76: q BINPUT 3 78: N NONE 79: t TUPLE (MARK at 31) 80: q BINPUT 4 82: R REDUCE 83: q BINPUT 5 85: } EMPTY_DICT 86: q BINPUT 6 88: U SHORT_BINSTRING 'value' 95: q BINPUT 7 97: K BININT1 42 99: s SETITEM 100: b BUILD 101: h BINGET 5 103: e APPENDS (MARK at 3) 104: . STOP highest protocol among opcodes = 1 Try "the canonical" recursive-object test. >>> L = [] >>> T = L, >>> L.append(T) >>> L[0] is T True >>> T[0] is L True >>> L[0][0] is L True >>> T[0][0] is T True >>> dis(pickle.dumps(L, 0)) 0: ( MARK 1: l LIST (MARK at 0) 2: p PUT 0 5: ( MARK 6: g GET 0 9: t TUPLE (MARK at 5) 10: p PUT 1 13: a APPEND 14: . STOP highest protocol among opcodes = 0 >>> dis(pickle.dumps(L, 1)) 0: ] EMPTY_LIST 1: q BINPUT 0 3: ( MARK 4: h BINGET 0 6: t TUPLE (MARK at 3) 7: q BINPUT 1 9: a APPEND 10: . STOP highest protocol among opcodes = 1 Note that, in the protocol 0 pickle of the recursive tuple, the disassembler has to emulate the stack in order to realize that the POP opcode at 16 gets rid of the MARK at 0. >>> dis(pickle.dumps(T, 0)) 0: ( MARK 1: ( MARK 2: l LIST (MARK at 1) 3: p PUT 0 6: ( MARK 7: g GET 0 10: t TUPLE (MARK at 6) 11: p PUT 1 14: a APPEND 15: 0 POP 16: 0 POP (MARK at 0) 17: g GET 1 20: . STOP highest protocol among opcodes = 0 >>> dis(pickle.dumps(T, 1)) 0: ( MARK 1: ] EMPTY_LIST 2: q BINPUT 0 4: ( MARK 5: h BINGET 0 7: t TUPLE (MARK at 4) 8: q BINPUT 1 10: a APPEND 11: 1 POP_MARK (MARK at 0) 12: h BINGET 1 14: . STOP highest protocol among opcodes = 1 Try protocol 2. >>> dis(pickle.dumps(L, 2)) 0: \x80 PROTO 2 2: ] EMPTY_LIST 3: q BINPUT 0 5: h BINGET 0 7: \x85 TUPLE1 8: q BINPUT 1 10: a APPEND 11: . STOP highest protocol among opcodes = 2 >>> dis(pickle.dumps(T, 2)) 0: \x80 PROTO 2 2: ] EMPTY_LIST 3: q BINPUT 0 5: h BINGET 0 7: \x85 TUPLE1 8: q BINPUT 1 10: a APPEND 11: 0 POP 12: h BINGET 1 14: . STOP highest protocol among opcodes = 2 """ _memo_test = r""" >>> import pickle >>> from StringIO import StringIO >>> f = StringIO() >>> p = pickle.Pickler(f, 2) >>> x = [1, 2, 3] >>> p.dump(x) >>> p.dump(x) >>> f.seek(0) >>> memo = {} >>> dis(f, memo=memo) 0: \x80 PROTO 2 2: ] EMPTY_LIST 3: q BINPUT 0 5: ( MARK 6: K BININT1 1 8: K BININT1 2 10: K BININT1 3 12: e APPENDS (MARK at 5) 13: . STOP highest protocol among opcodes = 2 >>> dis(f, memo=memo) 14: \x80 PROTO 2 16: h BINGET 0 18: . STOP highest protocol among opcodes = 2 """ __test__ = {'disassembler_test': _dis_test, 'disassembler_memo_test': _memo_test, } def _test(): import doctest return doctest.testmod() if __name__ == "__main__": _test()