コード例 #1
0
def iet_lower_dimensions(iet):
    """
    Replace all DerivedDimensions within the ``iet``'s expressions with
    lower-level symbolic objects (other Dimensions or Symbols).

        * Array indices involving SteppingDimensions are turned into ModuloDimensions.
          Example: ``u[t+1, x] = u[t, x] + 1 >>> u[t1, x] = u[t0, x] + 1``
        * Array indices involving ConditionalDimensions used are turned into
          integer-division expressions.
          Example: ``u[t_sub, x] = u[time, x] >>> u[time / 4, x] = u[time, x]``
    """
    # Lower SteppingDimensions
    for i in FindNodes(Iteration).visit(iet):
        if not i.uindices:
            # Be quick: avoid uselessy reconstructing nodes
            continue
        # In an expression, there could be `u[t+1, ...]` and `v[t+1, ...]`, where
        # `u` and `v` are TimeFunction with circular time buffers (save=None) *but*
        # different modulo extent. The `t+1` indices above are therefore conceptually
        # different, so they will be replaced with the proper ModuloDimension through
        # two different calls to `xreplace`
        groups = as_mapper(i.uindices, lambda d: d.modulo)
        for k, v in groups.items():
            mapper = {d.origin: d for d in v}
            rule = lambda i: i.function.is_TimeFunction and i.function._time_size == k
            replacer = lambda i: xreplace_indices(i, mapper, rule)
            iet = XSubs(replacer=replacer).visit(iet)

    # Lower ConditionalDimensions
    cdims = [d for d in FindSymbols('free-symbols').visit(iet)
             if isinstance(d, ConditionalDimension)]
    mapper = {d: IntDiv(d.index, d.factor) for d in cdims}
    iet = XSubs(mapper).visit(iet)

    return iet
コード例 #2
0
def guard(clusters):
    """
    Return a new :class:`ClusterGroup` including new :class:`PartialCluster`s
    for each conditional expression encountered in ``clusters``.
    """
    processed = ClusterGroup()
    for c in clusters:
        # Find out what expressions in /c/ should be guarded
        mapper = {}
        for e in c.exprs:
            for k, v in e.ispace.sub_iterators.items():
                for i in v:
                    if i.dim.is_Conditional:
                        mapper.setdefault(i.dim, []).append(e)

        # Build conditional expressions to guard clusters
        conditions = {d: CondEq(d.parent % d.factor, 0) for d in mapper}
        negated = {d: CondNe(d.parent % d.factor, 0) for d in mapper}

        # Expand with guarded clusters
        combs = list(powerset(mapper))
        for dims, ndims in zip(combs, reversed(combs)):
            banned = flatten(v for k, v in mapper.items() if k not in dims)
            exprs = [
                e.xreplace({i: IntDiv(i.parent, i.factor)
                            for i in mapper}) for e in c.exprs
                if e not in banned
            ]
            guards = [(i.parent, conditions[i]) for i in dims]
            guards.extend([(i.parent, negated[i]) for i in ndims])
            cluster = PartialCluster(exprs, c.ispace, c.dspace, c.atomics,
                                     dict(guards))
            processed.append(cluster)

    return processed
コード例 #3
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 def test_issue_1592(self):
     grid = Grid(shape=(11, 11))
     time = grid.time_dim
     time_sub = ConditionalDimension('t_sub', parent=time, factor=2)
     v = TimeFunction(name="v", grid=grid, space_order=4, time_dim=time_sub, save=5)
     w = Function(name="w", grid=grid, space_order=4)
     Operator(Eq(w, v.dx))(time=6)
     op = Operator(Eq(v.forward, v.dx))
     op.apply(time=6)
     exprs = FindNodes(Expression).visit(op)
     assert exprs[-1].expr.lhs.indices[0] == IntDiv(time, 2) + 1
コード例 #4
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def test_symbolics():
    a = Symbol('a')

    id = IntDiv(a, 3)
    pkl_id = pickle.dumps(id)
    new_id = pickle.loads(pkl_id)
    assert id == new_id

    ffp = FunctionFromPointer('foo', a, ['b', 'c'])
    pkl_ffp = pickle.dumps(ffp)
    new_ffp = pickle.loads(pkl_ffp)
    assert ffp == new_ffp

    li = ListInitializer(['a', 'b'])
    pkl_li = pickle.dumps(li)
    new_li = pickle.loads(pkl_li)
    assert li == new_li
コード例 #5
0
def _lower_conditional_dims(iet):
    """
    Lower ConditionalDimensions: index functions involving ConditionalDimensions
    are turned into integer-division expressions.

    Examples
    --------
    u[t_sub, x] = u[time, x]

    becomes

    u[time / 4, x] = u[time, x]
    """
    cdims = [d for d in FindSymbols('free-symbols').visit(iet)
             if isinstance(d, ConditionalDimension)]
    mapper = {d: IntDiv(d.index, d.factor) for d in cdims}
    iet = XSubs(mapper).visit(iet)

    return iet
コード例 #6
0
ファイル: test_pickle.py プロジェクト: speglich/devito
def test_symbolics():
    a = Symbol('a')

    id = IntDiv(a, 3)
    pkl_id = pickle.dumps(id)
    new_id = pickle.loads(pkl_id)
    assert id == new_id

    ffp = CallFromPointer('foo', a, ['b', 'c'])
    pkl_ffp = pickle.dumps(ffp)
    new_ffp = pickle.loads(pkl_ffp)
    assert ffp == new_ffp

    li = ListInitializer(['a', 'b'])
    pkl_li = pickle.dumps(li)
    new_li = pickle.loads(pkl_li)
    assert li == new_li

    df = DefFunction('f', ['a', 1, 2])
    pkl_df = pickle.dumps(df)
    new_df = pickle.loads(pkl_df)
    assert df == new_df
    assert df.arguments == new_df.arguments
コード例 #7
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    def __new__(cls, *args, **kwargs):
        if len(args) == 1 and isinstance(args[0], LoweredEq):
            # origin: LoweredEq(devito.LoweredEq, **kwargs)
            input_expr = args[0]
            expr = sympy.Eq.__new__(cls, *input_expr.args, evaluate=False)
            for i in cls._state:
                setattr(expr, '_%s' % i,
                        kwargs.get(i) or getattr(input_expr, i))
            return expr
        elif len(args) == 1 and isinstance(args[0], Eq):
            # origin: LoweredEq(devito.Eq)
            input_expr = expr = args[0]
        elif len(args) == 2:
            expr = sympy.Eq.__new__(cls, *args, evaluate=False)
            for i in cls._state:
                setattr(expr, '_%s' % i, kwargs.pop(i))
            return expr
        else:
            raise ValueError("Cannot construct LoweredEq from args=%s "
                             "and kwargs=%s" % (str(args), str(kwargs)))

        # Well-defined dimension ordering
        ordering = dimension_sort(expr)

        # Analyze the expression
        accesses = detect_accesses(expr)
        dimensions = Stencil.union(*accesses.values())

        # Separate out the SubIterators from the main iteration Dimensions, that
        # is those which define an actual iteration space
        iterators = {}
        for d in dimensions:
            if d.is_SubIterator:
                iterators.setdefault(d.root, set()).add(d)
            elif d.is_Conditional:
                # Use `parent`, and `root`, because a ConditionalDimension may
                # have a SubDimension as parent
                iterators.setdefault(d.parent, set())
            else:
                iterators.setdefault(d, set())

        # Construct the IterationSpace
        intervals = IntervalGroup([Interval(d, 0, 0) for d in iterators],
                                  relations=ordering.relations)
        ispace = IterationSpace(intervals, iterators)

        # Construct the conditionals and replace the ConditionalDimensions in `expr`
        conditionals = {}
        for d in ordering:
            if not d.is_Conditional:
                continue
            if d.condition is None:
                conditionals[d] = GuardFactor(d)
            else:
                conditionals[d] = diff2sympy(lower_exprs(d.condition))
            if d.factor is not None:
                expr = uxreplace(expr, {d: IntDiv(d.index, d.factor)})
        conditionals = frozendict(conditionals)

        # Lower all Differentiable operations into SymPy operations
        rhs = diff2sympy(expr.rhs)

        # Finally create the LoweredEq with all metadata attached
        expr = super(LoweredEq, cls).__new__(cls,
                                             expr.lhs,
                                             rhs,
                                             evaluate=False)

        expr._ispace = ispace
        expr._conditionals = conditionals
        expr._reads, expr._writes = detect_io(expr)

        expr._is_Increment = input_expr.is_Increment
        expr._implicit_dims = input_expr.implicit_dims

        return expr
コード例 #8
0
    def __new__(cls, *args, **kwargs):
        if len(args) == 1 and isinstance(args[0], LoweredEq):
            # origin: LoweredEq(devito.LoweredEq, **kwargs)
            input_expr = args[0]
            expr = sympy.Eq.__new__(cls, *input_expr.args, evaluate=False)
            for i in cls._state:
                setattr(expr, '_%s' % i, kwargs.get(i) or getattr(input_expr, i))
            return expr
        elif len(args) == 1 and isinstance(args[0], Eq):
            # origin: LoweredEq(devito.Eq)
            input_expr = expr = args[0]
        elif len(args) == 2:
            expr = sympy.Eq.__new__(cls, *args, evaluate=False)
            for i in cls._state:
                setattr(expr, '_%s' % i, kwargs.pop(i))
            return expr
        else:
            raise ValueError("Cannot construct LoweredEq from args=%s "
                             "and kwargs=%s" % (str(args), str(kwargs)))

        # Well-defined dimension ordering
        ordering = dimension_sort(expr)

        # Analyze the expression
        mapper = detect_accesses(expr)
        oobs = detect_oobs(mapper)
        conditional_dimensions = [i for i in ordering if i.is_Conditional]

        # Construct Intervals for IterationSpace and DataSpace
        intervals = build_intervals(Stencil.union(*mapper.values()))
        iintervals = []  # iteration Intervals
        dintervals = []  # data Intervals
        for i in intervals:
            d = i.dim
            if d in oobs:
                iintervals.append(i.zero())
                dintervals.append(i)
            else:
                iintervals.append(i.zero())
                dintervals.append(i.zero())

        # Construct the IterationSpace
        iintervals = IntervalGroup(iintervals, relations=ordering.relations)
        iterators = build_iterators(mapper)
        ispace = IterationSpace(iintervals, iterators)

        # Construct the DataSpace
        dintervals.extend([Interval(i, 0, 0) for i in ordering
                           if i not in ispace.dimensions + conditional_dimensions])
        parts = {k: IntervalGroup(build_intervals(v)).add(iintervals)
                 for k, v in mapper.items() if k}
        dspace = DataSpace(dintervals, parts)

        # Construct the conditionals and replace the ConditionalDimensions in `expr`
        conditionals = {}
        for d in conditional_dimensions:
            if d.condition is None:
                conditionals[d] = CondEq(d.parent % d.factor, 0)
            else:
                conditionals[d] = diff2sympy(lower_exprs(d.condition))
            if d.factor is not None:
                expr = uxreplace(expr, {d: IntDiv(d.index, d.factor)})
        conditionals = frozendict(conditionals)

        # Lower all Differentiable operations into SymPy operations
        rhs = diff2sympy(expr.rhs)

        # Finally create the LoweredEq with all metadata attached
        expr = super(LoweredEq, cls).__new__(cls, expr.lhs, rhs, evaluate=False)

        expr._dspace = dspace
        expr._ispace = ispace
        expr._conditionals = conditionals
        expr._reads, expr._writes = detect_io(expr)

        expr._is_Increment = input_expr.is_Increment
        expr._implicit_dims = input_expr.implicit_dims

        return expr