pypy-postgresql / pypy / jit / metainterp / optimizeopt / unroll.py

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from pypy.jit.codewriter.effectinfo import EffectInfo
from pypy.jit.metainterp.optimizeopt.virtualstate import VirtualStateAdder, ShortBoxes, BadVirtualState
from pypy.jit.metainterp.compile import ResumeGuardDescr
from pypy.jit.metainterp.history import TreeLoop, TargetToken, JitCellToken
from pypy.jit.metainterp.jitexc import JitException
from pypy.jit.metainterp.optimize import InvalidLoop
from pypy.jit.metainterp.optimizeopt.optimizer import *
from pypy.jit.metainterp.optimizeopt.generalize import KillHugeIntBounds
from pypy.jit.metainterp.inliner import Inliner
from pypy.jit.metainterp.resoperation import rop, ResOperation
from pypy.jit.metainterp.resume import Snapshot
import sys, os

# FIXME: Introduce some VirtualOptimizer super class instead

def optimize_unroll(metainterp_sd, loop, optimizations, inline_short_preamble=True):
    opt = UnrollOptimizer(metainterp_sd, loop, optimizations)
    opt.inline_short_preamble = inline_short_preamble
    opt.propagate_all_forward()

class UnrollableOptimizer(Optimizer):
    def setup(self):
        self.importable_values = {}
        self.emitting_dissabled = False
        self.emitted_guards = 0

    def ensure_imported(self, value):
        if not self.emitting_dissabled and value in self.importable_values:
            imp = self.importable_values[value]
            del self.importable_values[value]
            imp.import_value(value)

    def emit_operation(self, op):
        if op.returns_bool_result():
            self.bool_boxes[self.getvalue(op.result)] = None
        if self.emitting_dissabled:
            return
        if op.is_guard():
            self.emitted_guards += 1 # FIXME: can we use counter in self._emit_operation?
        self._emit_operation(op)

    def new(self):
        new = UnrollableOptimizer(self.metainterp_sd, self.loop)
        return self._new(new)


class UnrollOptimizer(Optimization):
    """Unroll the loop into two iterations. The first one will
    become the preamble or entry bridge (don't think there is a
    distinction anymore)"""

    inline_short_preamble = True
    
    def __init__(self, metainterp_sd, loop, optimizations):
        self.optimizer = UnrollableOptimizer(metainterp_sd, loop, optimizations)
        self.boxes_created_this_iteration = None

    def fix_snapshot(self, jump_args, snapshot):
        if snapshot is None:
            return None
        snapshot_args = snapshot.boxes 
        new_snapshot_args = []
        for a in snapshot_args:
            a = self.getvalue(a).get_key_box()
            new_snapshot_args.append(a)
        prev = self.fix_snapshot(jump_args, snapshot.prev)
        return Snapshot(prev, new_snapshot_args)
            
    def propagate_all_forward(self):
        loop = self.optimizer.loop
        self.optimizer.clear_newoperations()

        start_label = loop.operations[0]
        if start_label.getopnum() == rop.LABEL:
            loop.operations = loop.operations[1:]
            # We need to emit the label op before import_state() as emitting it
            # will clear heap caches
            self.optimizer.send_extra_operation(start_label)
        else:
            start_label = None            

        jumpop = loop.operations[-1]
        if jumpop.getopnum() == rop.JUMP or jumpop.getopnum() == rop.LABEL:
            loop.operations = loop.operations[:-1]
        else:
            jumpop = None

        self.import_state(start_label)
        self.optimizer.propagate_all_forward(clear=False)

        if not jumpop:
            return

        cell_token = jumpop.getdescr()
        assert isinstance(cell_token, JitCellToken)
        stop_label = ResOperation(rop.LABEL, jumpop.getarglist(), None, TargetToken(cell_token))

        
        if jumpop.getopnum() == rop.JUMP:
            if self.jump_to_already_compiled_trace(jumpop):
                # Found a compiled trace to jump to
                if self.short:
                    # Construct our short preamble
                    assert start_label
                    self.close_bridge(start_label)
                return

            if start_label and self.jump_to_start_label(start_label, stop_label):
                # Initial label matches, jump to it
                jumpop = ResOperation(rop.JUMP, stop_label.getarglist(), None,
                                      descr=start_label.getdescr())
                if self.short:
                    # Construct our short preamble
                    self.close_loop(start_label, jumpop)
                else:
                    self.optimizer.send_extra_operation(jumpop)
                return

            if cell_token.target_tokens:
                limit = self.optimizer.metainterp_sd.warmrunnerdesc.memory_manager.retrace_limit
                if cell_token.retraced_count < limit:
                    cell_token.retraced_count += 1
                    #debug_print('Retracing (%d/%d)' % (cell_token.retraced_count, limit))
                else:
                    #debug_print("Retrace count reached, jumping to preamble")
                    assert cell_token.target_tokens[0].virtual_state is None
                    jumpop.setdescr(cell_token.target_tokens[0])
                    self.optimizer.send_extra_operation(jumpop)
                    return

        # Found nothing to jump to, emit a label instead
        
        if self.short:
            # Construct our short preamble
            assert start_label
            self.close_bridge(start_label)

        self.optimizer.flush()
        KillHugeIntBounds(self.optimizer).apply()

        loop.operations = self.optimizer.get_newoperations()
        self.export_state(stop_label)
        loop.operations.append(stop_label)

    def jump_to_start_label(self, start_label, stop_label):
        if not start_label or not stop_label:
            return False
        
        stop_target = stop_label.getdescr()
        start_target = start_label.getdescr()
        assert isinstance(stop_target, TargetToken)
        assert isinstance(start_target, TargetToken)
        if stop_target.targeting_jitcell_token is not start_target.targeting_jitcell_token:
            return False

        return True

        #args = stop_label.getarglist()
        #modifier = VirtualStateAdder(self.optimizer)
        #virtual_state = modifier.get_virtual_state(args)
        #if self.initial_virtual_state.generalization_of(virtual_state):
        #    return True
        

    def export_state(self, targetop):
        original_jump_args = targetop.getarglist()
        jump_args = [self.getvalue(a).get_key_box() for a in original_jump_args]

        assert self.optimizer.loop.resume_at_jump_descr
        resume_at_jump_descr = self.optimizer.loop.resume_at_jump_descr.clone_if_mutable()
        assert isinstance(resume_at_jump_descr, ResumeGuardDescr)
        resume_at_jump_descr.rd_snapshot = self.fix_snapshot(jump_args, resume_at_jump_descr.rd_snapshot)

        modifier = VirtualStateAdder(self.optimizer)
        virtual_state = modifier.get_virtual_state(jump_args)
            
        values = [self.getvalue(arg) for arg in jump_args]
        inputargs = virtual_state.make_inputargs(values, self.optimizer)
        short_inputargs = virtual_state.make_inputargs(values, self.optimizer, keyboxes=True)


        if self.boxes_created_this_iteration is not None:
            for box in self.inputargs:
                self.boxes_created_this_iteration[box] = True

        short_boxes = ShortBoxes(self.optimizer, inputargs,
                                 self.boxes_created_this_iteration)

        self.optimizer.clear_newoperations()
        for i in range(len(original_jump_args)):
            if values[i].is_virtual():
                values[i].force_box(self.optimizer)
            if original_jump_args[i] is not jump_args[i]:
                op = ResOperation(rop.SAME_AS, [jump_args[i]], original_jump_args[i])
                self.optimizer.emit_operation(op)
        inputarg_setup_ops = self.optimizer.get_newoperations()

        target_token = targetop.getdescr()
        assert isinstance(target_token, TargetToken)
        targetop.initarglist(inputargs)
        target_token.virtual_state = virtual_state
        target_token.short_preamble = [ResOperation(rop.LABEL, short_inputargs, None)]
        target_token.resume_at_jump_descr = resume_at_jump_descr

        exported_values = {}
        for box in inputargs:
            exported_values[box] = self.optimizer.getvalue(box)
        for op in short_boxes.operations():
            if op and op.result:
                box = op.result
                exported_values[box] = self.optimizer.getvalue(box)
            
        target_token.exported_state = ExportedState(short_boxes, inputarg_setup_ops,
                                                    exported_values)

    def import_state(self, targetop):
        if not targetop: # Trace did not start with a label
            self.inputargs = self.optimizer.loop.inputargs
            self.short = None
            self.initial_virtual_state = None
            return

        self.inputargs = targetop.getarglist()
        target_token = targetop.getdescr()
        assert isinstance(target_token, TargetToken)
        exported_state = target_token.exported_state
        if not exported_state:
            # No state exported, construct one without virtuals
            self.short = None
            modifier = VirtualStateAdder(self.optimizer)
            virtual_state = modifier.get_virtual_state(self.inputargs)
            self.initial_virtual_state = virtual_state
            return
        
        self.short = target_token.short_preamble[:]
        self.short_seen = {}
        self.short_boxes = exported_state.short_boxes
        self.short_resume_at_jump_descr = target_token.resume_at_jump_descr
        self.initial_virtual_state = target_token.virtual_state

        seen = {}
        for box in self.inputargs:
            if box in seen:
                continue
            seen[box] = True
            preamble_value = exported_state.exported_values[box]
            value = self.optimizer.getvalue(box)
            value.import_from(preamble_value, self.optimizer)

        # Setup the state of the new optimizer by emiting the
        # short operations and discarding the result
        self.optimizer.emitting_dissabled = True
        for op in exported_state.inputarg_setup_ops:
            self.optimizer.send_extra_operation(op)

        seen = {}
        for op in self.short_boxes.operations():
            self.ensure_short_op_emitted(op, self.optimizer, seen)
            if op and op.result:
                preamble_value = exported_state.exported_values[op.result]
                value = self.optimizer.getvalue(op.result)
                if not value.is_virtual() and not value.is_constant():
                    imp = ValueImporter(self, preamble_value, op)
                    self.optimizer.importable_values[value] = imp
                newvalue = self.optimizer.getvalue(op.result)
                newresult = newvalue.get_key_box()
                # note that emitting here SAME_AS should not happen, but
                # in case it does, we would prefer to be suboptimal in asm
                # to a fatal RPython exception.
                if newresult is not op.result and \
                   not self.short_boxes.has_producer(newresult) and \
                   not newvalue.is_constant():
                    op = ResOperation(rop.SAME_AS, [op.result], newresult)
                    self.optimizer._newoperations.append(op)
                    #if self.optimizer.loop.logops:
                    #    debug_print('  Falling back to add extra: ' +
                    #                self.optimizer.loop.logops.repr_of_resop(op))
                    
        self.optimizer.flush()
        self.optimizer.emitting_dissabled = False

    def close_bridge(self, start_label):
        inputargs = self.inputargs
        short_jumpargs = inputargs[:]

        # We dont need to inline the short preamble we are creating as we are conneting
        # the bridge to a different trace with a different short preamble
        self.short_inliner = None
        
        newoperations = self.optimizer.get_newoperations()
        self.boxes_created_this_iteration = {}
        i = 0
        while i < len(newoperations):
            op = newoperations[i]
            self.boxes_created_this_iteration[op.result] = True
            args = op.getarglist()
            if op.is_guard():
                args = args + op.getfailargs()
            for a in args:
                self.import_box(a, inputargs, short_jumpargs, [])
            i += 1
            newoperations = self.optimizer.get_newoperations()
        self.short.append(ResOperation(rop.JUMP, short_jumpargs, None, descr=start_label.getdescr()))
        self.finilize_short_preamble(start_label)

    def close_loop(self, start_label, jumpop):
        virtual_state = self.initial_virtual_state
        short_inputargs = self.short[0].getarglist()
        inputargs = self.inputargs
        short_jumpargs = inputargs[:]

        # Construct jumpargs from the virtual state
        original_jumpargs = jumpop.getarglist()[:]
        values = [self.getvalue(arg) for arg in jumpop.getarglist()]
        try:
            jumpargs = virtual_state.make_inputargs(values, self.optimizer)
        except BadVirtualState:
            raise InvalidLoop('The state of the optimizer at the end of ' +
                              'peeled loop is inconsistent with the ' +
                              'VirtualState at the begining of the peeled ' +
                              'loop')
        jumpop.initarglist(jumpargs)

        # Inline the short preamble at the end of the loop
        jmp_to_short_args = virtual_state.make_inputargs(values, self.optimizer, keyboxes=True)
        assert len(short_inputargs) == len(jmp_to_short_args)
        args = {}
        for i in range(len(short_inputargs)):
            if short_inputargs[i] in args:
                if args[short_inputargs[i]] != jmp_to_short_args[i]:
                    raise InvalidLoop('The short preamble wants the ' +
                                      'same box passed to multiple of its ' +
                                      'inputargs, but the jump at the ' +
                                      'end of this bridge does not do that.')
                                      
            args[short_inputargs[i]] = jmp_to_short_args[i]
        self.short_inliner = Inliner(short_inputargs, jmp_to_short_args)
        i = 1
        while i < len(self.short):
            # Note that self.short might be extended during this loop
            op = self.short[i]
            newop = self.short_inliner.inline_op(op)
            self.optimizer.send_extra_operation(newop)
            i += 1

        # Import boxes produced in the preamble but used in the loop
        newoperations = self.optimizer.get_newoperations()
        self.boxes_created_this_iteration = {}
        i = j = 0
        while i < len(newoperations) or j < len(jumpargs):
            if i == len(newoperations):
                while j < len(jumpargs):
                    a = jumpargs[j]
                    #if self.optimizer.loop.logops:
                    #    debug_print('J:  ' + self.optimizer.loop.logops.repr_of_arg(a))
                    self.import_box(a, inputargs, short_jumpargs, jumpargs)
                    j += 1
            else:
                op = newoperations[i]

                self.boxes_created_this_iteration[op.result] = True
                args = op.getarglist()
                if op.is_guard():
                    args = args + op.getfailargs()

                #if self.optimizer.loop.logops:
                #    debug_print('OP: ' + self.optimizer.loop.logops.repr_of_resop(op))
                for a in args:
                    #if self.optimizer.loop.logops:
                    #    debug_print('A:  ' + self.optimizer.loop.logops.repr_of_arg(a))
                    self.import_box(a, inputargs, short_jumpargs, jumpargs)
                i += 1
            newoperations = self.optimizer.get_newoperations()

        jumpop.initarglist(jumpargs)
        self.optimizer.send_extra_operation(jumpop)
        self.short.append(ResOperation(rop.JUMP, short_jumpargs, None, descr=jumpop.getdescr()))

        # Verify that the virtual state at the end of the loop is one
        # that is compatible with the virtual state at the start of the loop
        modifier = VirtualStateAdder(self.optimizer)
        final_virtual_state = modifier.get_virtual_state(original_jumpargs)
        #debug_start('jit-log-virtualstate')
        #virtual_state.debug_print('Closed loop with ')
        bad = {}
        if not virtual_state.generalization_of(final_virtual_state, bad):
            # We ended up with a virtual state that is not compatible
            # and we are thus unable to jump to the start of the loop
            #final_virtual_state.debug_print("Bad virtual state at end of loop, ",
            #                                bad)
            #debug_stop('jit-log-virtualstate')
            raise InvalidLoop('The virtual state at the end of the peeled ' +
                              'loop is not compatible with the virtual ' +
                              'state at the start of the loop which makes ' +
                              'it impossible to close the loop')
            
        #debug_stop('jit-log-virtualstate')

        maxguards = self.optimizer.metainterp_sd.warmrunnerdesc.memory_manager.max_retrace_guards
        if self.optimizer.emitted_guards > maxguards:
            target_token = jumpop.getdescr()
            assert isinstance(target_token, TargetToken)
            target_token.targeting_jitcell_token.retraced_count = sys.maxint
            
        self.finilize_short_preamble(start_label)
            
    def finilize_short_preamble(self, start_label):
        short = self.short
        assert short[-1].getopnum() == rop.JUMP
        target_token = start_label.getdescr()
        assert isinstance(target_token, TargetToken)

        # Turn guards into conditional jumps to the preamble
        for i in range(len(short)):
            op = short[i]
            if op.is_guard():
                op = op.clone()
                op.setfailargs(None)
                descr = target_token.resume_at_jump_descr.clone_if_mutable()
                op.setdescr(descr)
                short[i] = op

        # Clone ops and boxes to get private versions and
        short_inputargs = short[0].getarglist()
        boxmap = {}
        newargs = [None] * len(short_inputargs)
        for i in range(len(short_inputargs)):
            a = short_inputargs[i]
            if a in boxmap:
                newargs[i] = boxmap[a]
            else:
                newargs[i] = a.clonebox()
                boxmap[a] = newargs[i]
        inliner = Inliner(short_inputargs, newargs)
        for i in range(len(short)):
            short[i] = inliner.inline_op(short[i])

        target_token.resume_at_jump_descr = target_token.resume_at_jump_descr.clone_if_mutable()
        inliner.inline_descr_inplace(target_token.resume_at_jump_descr)

        # Forget the values to allow them to be freed
        for box in short[0].getarglist():
            box.forget_value()
        for op in short:
            if op.result:
                op.result.forget_value()
        target_token.short_preamble = self.short
        target_token.exported_state = None

    def ensure_short_op_emitted(self, op, optimizer, seen):
        if op is None:
            return
        if op.result is not None and op.result in seen:
            return
        for a in op.getarglist():
            if not isinstance(a, Const) and a not in seen:
                self.ensure_short_op_emitted(self.short_boxes.producer(a), optimizer,
                                             seen)

        #if self.optimizer.loop.logops:
        #    debug_print('  Emitting short op: ' +
        #                self.optimizer.loop.logops.repr_of_resop(op))

        optimizer.send_extra_operation(op)
        seen[op.result] = True
        if op.is_ovf():
            guard = ResOperation(rop.GUARD_NO_OVERFLOW, [], None)
            optimizer.send_extra_operation(guard)

    def add_op_to_short(self, op, emit=True, guards_needed=False):
        if op is None:
            return None
        if op.result is not None and op.result in self.short_seen:
            if emit and self.short_inliner:                
                return self.short_inliner.inline_arg(op.result)
            else:
                return None
        
        for a in op.getarglist():
            if not isinstance(a, Const) and a not in self.short_seen:
                self.add_op_to_short(self.short_boxes.producer(a), emit, guards_needed)
        if op.is_guard():
            descr = self.short_resume_at_jump_descr.clone_if_mutable()
            op.setdescr(descr)

        if guards_needed and self.short_boxes.has_producer(op.result):
            value_guards = self.getvalue(op.result).make_guards(op.result)
        else:
            value_guards = []            

        self.short.append(op)
        self.short_seen[op.result] = True
        if emit and self.short_inliner:
            newop = self.short_inliner.inline_op(op)
            self.optimizer.send_extra_operation(newop)
        else:
            newop = None

        if op.is_ovf():
            # FIXME: ensure that GUARD_OVERFLOW:ed ops not end up here
            guard = ResOperation(rop.GUARD_NO_OVERFLOW, [], None)
            self.add_op_to_short(guard, emit, guards_needed)
        for guard in value_guards:
            self.add_op_to_short(guard, emit, guards_needed)

        if newop:
            return newop.result
        return None
        
    def import_box(self, box, inputargs, short_jumpargs, jumpargs):
        if isinstance(box, Const) or box in inputargs:
            return
        if box in self.boxes_created_this_iteration:
            return

        short_op = self.short_boxes.producer(box)
        newresult = self.add_op_to_short(short_op)

        short_jumpargs.append(short_op.result)
        inputargs.append(box)
        box = newresult
        if box in self.optimizer.values:
            box = self.optimizer.values[box].force_box(self.optimizer)
        jumpargs.append(box)

    def jump_to_already_compiled_trace(self, jumpop):
        assert jumpop.getopnum() == rop.JUMP
        cell_token = jumpop.getdescr()

        assert isinstance(cell_token, JitCellToken)
        if not cell_token.target_tokens:
            return False

        if not self.inline_short_preamble:
            assert cell_token.target_tokens[0].virtual_state is None
            jumpop.setdescr(cell_token.target_tokens[0])
            self.optimizer.send_extra_operation(jumpop)
            return True

        args = jumpop.getarglist()
        modifier = VirtualStateAdder(self.optimizer)
        virtual_state = modifier.get_virtual_state(args)
        debug_start('jit-log-virtualstate')
        virtual_state.debug_print("Looking for ")

        for target in cell_token.target_tokens:
            if not target.virtual_state:
                continue
            ok = False
            extra_guards = []

            bad = {}
            debugmsg = 'Did not match '
            if target.virtual_state.generalization_of(virtual_state, bad):
                ok = True
                debugmsg = 'Matched '
            else:
                try:
                    cpu = self.optimizer.cpu
                    target.virtual_state.generate_guards(virtual_state,
                                                         args, cpu,
                                                         extra_guards)

                    ok = True
                    debugmsg = 'Guarded to match '
                except InvalidLoop:
                    pass
            target.virtual_state.debug_print(debugmsg, bad)

            if ok:
                debug_stop('jit-log-virtualstate')

                values = [self.getvalue(arg)
                          for arg in jumpop.getarglist()]
                args = target.virtual_state.make_inputargs(values, self.optimizer,
                                                           keyboxes=True)
                short_inputargs = target.short_preamble[0].getarglist()
                inliner = Inliner(short_inputargs, args)

                for guard in extra_guards:
                    if guard.is_guard():
                        descr = target.resume_at_jump_descr.clone_if_mutable()
                        inliner.inline_descr_inplace(descr)
                        guard.setdescr(descr)
                    self.optimizer.send_extra_operation(guard)

                try:
                    for shop in target.short_preamble[1:]:
                        newop = inliner.inline_op(shop)
                        self.optimizer.send_extra_operation(newop)
                except InvalidLoop:
                    #debug_print("Inlining failed unexpectedly",
                    #            "jumping to preamble instead")
                    assert cell_token.target_tokens[0].virtual_state is None
                    jumpop.setdescr(cell_token.target_tokens[0])
                    self.optimizer.send_extra_operation(jumpop)
                return True
        debug_stop('jit-log-virtualstate')
        return False

class ValueImporter(object):
    def __init__(self, unroll, value, op):
        self.unroll = unroll
        self.preamble_value = value
        self.op = op

    def import_value(self, value):
        value.import_from(self.preamble_value, self.unroll.optimizer)
        self.unroll.add_op_to_short(self.op, False, True)        

class ExportedState(object):
    def __init__(self, short_boxes, inputarg_setup_ops, exported_values):
        self.short_boxes = short_boxes
        self.inputarg_setup_ops = inputarg_setup_ops
        self.exported_values = exported_values
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