Пример #1
0
    def apply(self, sdfg):
        graph = sdfg.nodes()[self.state_id]
        if self.expr_index == 0:
            map_entry = graph.nodes()[self.subgraph[GPUTransformMap._map_entry]]
            nsdfg_node = helpers.nest_state_subgraph(
                sdfg,
                graph,
                graph.scope_subgraph(map_entry),
                full_data=self.fullcopy)
        else:
            cnode = graph.nodes()[self.subgraph[GPUTransformMap._reduce]]
            nsdfg_node = helpers.nest_state_subgraph(sdfg,
                                                     graph,
                                                     SubgraphView(
                                                         graph, [cnode]),
                                                     full_data=self.fullcopy)

        # Avoiding import loops
        from dace.transformation.interstate import GPUTransformSDFG
        transformation = GPUTransformSDFG(0, 0, {}, 0)
        transformation.register_trans = self.register_trans
        transformation.sequential_innermaps = self.sequential_innermaps
        transformation.toplevel_trans = self.toplevel_trans
        transformation.gpu_id = self.gpu_id

        transformation.apply(nsdfg_node.sdfg)

        # Inline back as necessary
        sdfg.apply_strict_transformations()
Пример #2
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    def apply(self, graph: SDFGState, sdfg: SDFG):
        if self.expr_index == 0:
            map_entry = self.map_entry
            nsdfg_node = helpers.nest_state_subgraph(
                sdfg,
                graph,
                graph.scope_subgraph(map_entry),
                full_data=self.fullcopy)
        else:
            cnode = self.reduce
            nsdfg_node = helpers.nest_state_subgraph(sdfg,
                                                     graph,
                                                     SubgraphView(
                                                         graph, [cnode]),
                                                     full_data=self.fullcopy)

        # Avoiding import loops
        from dace.transformation.interstate import GPUTransformSDFG
        transformation = GPUTransformSDFG(sdfg, 0, -1, {}, 0)
        transformation.register_trans = self.register_trans
        transformation.sequential_innermaps = self.sequential_innermaps
        transformation.toplevel_trans = self.toplevel_trans

        transformation.apply(nsdfg_node.sdfg, nsdfg_node.sdfg)

        # Inline back as necessary
        sdfg.simplify()
Пример #3
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    def apply(self, _, sdfg: sd.SDFG):
        # Obtain loop information
        guard: sd.SDFGState = self.loop_guard
        body: sd.SDFGState = self.loop_begin

        # Obtain iteration variable, range, and stride
        itervar, (start, end, step), _ = find_for_loop(sdfg, guard, body)

        forward_loop = step > 0

        for node in body.nodes():
            if isinstance(node, nodes.MapEntry):
                map_entry = node
            if isinstance(node, nodes.MapExit):
                map_exit = node

        # nest map's content in sdfg
        map_subgraph = body.scope_subgraph(map_entry, include_entry=False, include_exit=False)
        nsdfg = helpers.nest_state_subgraph(sdfg, body, map_subgraph, full_data=True)

        # replicate loop in nested sdfg
        new_before, new_guard, new_after = nsdfg.sdfg.add_loop(
            before_state=None,
            loop_state=nsdfg.sdfg.nodes()[0],
            loop_end_state=None,
            after_state=None,
            loop_var=itervar,
            initialize_expr=f'{start}',
            condition_expr=f'{itervar} <= {end}' if forward_loop else f'{itervar} >= {end}',
            increment_expr=f'{itervar} + {step}' if forward_loop else f'{itervar} - {abs(step)}')

        # remove outer loop
        before_guard_edge = nsdfg.sdfg.edges_between(new_before, new_guard)[0]
        for e in nsdfg.sdfg.out_edges(new_guard):
            if e.dst is new_after:
                guard_after_edge = e
            else:
                guard_body_edge = e

        for body_inedge in sdfg.in_edges(body):
            if body_inedge.src is guard:
                guard_body_edge.data.assignments.update(body_inedge.data.assignments)
            sdfg.remove_edge(body_inedge)
        for body_outedge in sdfg.out_edges(body):
            sdfg.remove_edge(body_outedge)
        for guard_inedge in sdfg.in_edges(guard):
            before_guard_edge.data.assignments.update(guard_inedge.data.assignments)
            guard_inedge.data.assignments = {}
            sdfg.add_edge(guard_inedge.src, body, guard_inedge.data)
            sdfg.remove_edge(guard_inedge)
        for guard_outedge in sdfg.out_edges(guard):
            if guard_outedge.dst is body:
                guard_body_edge.data.assignments.update(guard_outedge.data.assignments)
            else:
                guard_after_edge.data.assignments.update(guard_outedge.data.assignments)
            guard_outedge.data.condition = CodeBlock("1")
            sdfg.add_edge(body, guard_outedge.dst, guard_outedge.data)
            sdfg.remove_edge(guard_outedge)
        sdfg.remove_node(guard)
        if itervar in nsdfg.symbol_mapping:
            del nsdfg.symbol_mapping[itervar]
        if itervar in sdfg.symbols:
            del sdfg.symbols[itervar]

        # Add missing data/symbols
        for s in nsdfg.sdfg.free_symbols:
            if s in nsdfg.symbol_mapping:
                continue
            if s in sdfg.symbols:
                nsdfg.symbol_mapping[s] = s
            elif s in sdfg.arrays:
                desc = sdfg.arrays[s]
                access = body.add_access(s)
                conn = nsdfg.sdfg.add_datadesc(s, copy.deepcopy(desc))
                nsdfg.sdfg.arrays[s].transient = False
                nsdfg.add_in_connector(conn)
                body.add_memlet_path(access, map_entry, nsdfg, memlet=Memlet.from_array(s, desc), dst_conn=conn)
            else:
                raise NotImplementedError(f"Free symbol {s} is neither a symbol nor data.")
        to_delete = set()
        for s in nsdfg.symbol_mapping:
            if s not in nsdfg.sdfg.free_symbols:
                to_delete.add(s)
        for s in to_delete:
            del nsdfg.symbol_mapping[s]

        # propagate scope for correct volumes
        scope_tree = ScopeTree(map_entry, map_exit)
        scope_tree.parent = ScopeTree(None, None)
        # The first execution helps remove apperances of symbols
        # that are now defined only in the nested SDFG in memlets.
        propagation.propagate_memlets_scope(sdfg, body, scope_tree)

        for s in to_delete:
            if helpers.is_symbol_unused(sdfg, s):
                sdfg.remove_symbol(s)

        from dace.transformation.interstate import RefineNestedAccess
        transformation = RefineNestedAccess()
        transformation.setup_match(sdfg, 0, sdfg.node_id(body), {RefineNestedAccess.nsdfg: body.node_id(nsdfg)}, 0)
        transformation.apply(body, sdfg)

        # Second propagation for refined accesses.
        propagation.propagate_memlets_scope(sdfg, body, scope_tree)
Пример #4
0
    def apply(self, sdfg):
        graph = sdfg.nodes()[self.state_id]
        subgraph = self.subgraph_view(sdfg)
        map_entries = helpers.get_outermost_scope_maps(sdfg, graph, subgraph)

        result = StencilTiling.topology(sdfg, graph, map_entries)
        (children_dict, parent_dict, sink_maps) = result

        # next up, calculate inferred ranges for each map
        # for each map entry, this contains a tuple of dicts:
        # each of those maps from data_name of the array to
        # inferred outer ranges. An inferred outer range is created
        # by taking the union of ranges of inner subsets corresponding
        # to that data and substituting this subset by the min / max of the
        # parametrized map boundaries
        # finally, from these outer ranges we can easily calculate
        # strides and tile sizes required for every map
        inferred_ranges = defaultdict(dict)

        # create array of reverse topologically sorted map entries
        # to iterate over
        topo_reversed = []
        queue = set(sink_maps.copy())
        while len(queue) > 0:
            element = next(e for e in queue
                           if not children_dict[e] - set(topo_reversed))
            topo_reversed.append(element)
            queue.remove(element)
            for parent in parent_dict[element]:
                queue.add(parent)

        # main loop
        # first get coverage dicts for each map entry
        # for each map, contains a tuple of two dicts
        # each of those two maps from data name to outer range
        coverage = {}
        for map_entry in map_entries:
            coverage[map_entry] = StencilTiling.coverage_dicts(
                sdfg, graph, map_entry, outer_range=True)

        # we have a mapping from data name to outer range
        # however we want a mapping from map parameters to outer ranges
        # for this we need to find out how all array dimensions map to
        # outer ranges

        variable_mapping = defaultdict(list)
        for map_entry in topo_reversed:
            map = map_entry.map

            # first find out variable mapping
            for e in itertools.chain(
                    graph.out_edges(map_entry),
                    graph.in_edges(graph.exit_node(map_entry))):
                mapping = []
                for dim in e.data.subset:
                    syms = set()
                    for d in dim:
                        syms |= symbolic.symlist(d).keys()
                    if len(syms) > 1:
                        raise NotImplementedError(
                            "One incoming or outgoing stencil subset is indexed "
                            "by multiple map parameters. "
                            "This is not supported yet.")
                    try:
                        mapping.append(syms.pop())
                    except KeyError:
                        # just append None if there is no map symbol in it.
                        # we don't care for now.
                        mapping.append(None)

                if e.data in variable_mapping:
                    # assert that this is the same everywhere.
                    # else we might run into problems
                    assert variable_mapping[e.data.data] == mapping
                else:
                    variable_mapping[e.data.data] = mapping

            # now do mapping data name -> outer range
            # and from that infer mapping variable -> outer range
            local_ranges = {dn: None for dn in coverage[map_entry][1].keys()}
            for data_name, cov in coverage[map_entry][1].items():
                local_ranges[data_name] = subsets.union(
                    local_ranges[data_name], cov)
                # now look at proceeding maps
                # and union those subsets -> could be larger with stencil indent
                for child_map in children_dict[map_entry]:
                    if data_name in coverage[child_map][0]:
                        local_ranges[data_name] = subsets.union(
                            local_ranges[data_name],
                            coverage[child_map][0][data_name])

            # final assignent: combine local_ranges and variable_mapping
            # together into inferred_ranges
            inferred_ranges[map_entry] = {p: None for p in map.params}
            for data_name, ranges in local_ranges.items():
                for param, r in zip(variable_mapping[data_name], ranges):
                    # create new range from this subset and assign
                    rng = subsets.Range((r, ))
                    if param:
                        inferred_ranges[map_entry][param] = subsets.union(
                            inferred_ranges[map_entry][param], rng)

        # get parameters -- should all be the same
        params = next(iter(map_entries)).map.params.copy()
        # define reference range as inferred range of one of the sink maps
        self.reference_range = inferred_ranges[next(iter(sink_maps))]
        if self.debug:
            print("StencilTiling::Reference Range", self.reference_range)
        # next up, search for the ranges that don't change
        invariant_dims = []
        for idx, p in enumerate(params):
            different = False
            if self.reference_range[p] is None:
                invariant_dims.append(idx)
                warnings.warn(
                    f"StencilTiling::No Stencil pattern detected for parameter {p}"
                )
                continue
            for m in map_entries:
                if inferred_ranges[m][p] != self.reference_range[p]:
                    different = True
                    break
            if not different:
                invariant_dims.append(idx)
                warnings.warn(
                    f"StencilTiling::No Stencil pattern detected for parameter {p}"
                )

        # during stripmining, we will create new outer map entries
        # for easy access
        self._outer_entries = set()
        # with inferred_ranges constructed, we can begin to strip mine
        for map_entry in map_entries:
            # Retrieve map entry and exit nodes.
            map = map_entry.map

            stripmine_subgraph = {
                StripMining._map_entry: graph.nodes().index(map_entry)
            }

            sdfg_id = sdfg.sdfg_id
            last_map_entry = None
            original_schedule = map_entry.schedule
            self.tile_sizes = []
            self.tile_offset_lower = []
            self.tile_offset_upper = []

            # strip mining each dimension where necessary
            removed_maps = 0
            for dim_idx, param in enumerate(map_entry.map.params):
                # get current_node tile size
                if dim_idx >= len(self.strides):
                    tile_stride = symbolic.pystr_to_symbolic(self.strides[-1])
                else:
                    tile_stride = symbolic.pystr_to_symbolic(
                        self.strides[dim_idx])

                trivial = False

                if dim_idx in invariant_dims:
                    self.tile_sizes.append(tile_stride)
                    self.tile_offset_lower.append(0)
                    self.tile_offset_upper.append(0)
                else:
                    target_range_current = inferred_ranges[map_entry][param]
                    reference_range_current = self.reference_range[param]

                    min_diff = symbolic.SymExpr(reference_range_current.min_element()[0] \
                                    - target_range_current.min_element()[0])
                    max_diff = symbolic.SymExpr(target_range_current.max_element()[0] \
                                    - reference_range_current.max_element()[0])

                    try:
                        min_diff = symbolic.evaluate(min_diff, {})
                        max_diff = symbolic.evaluate(max_diff, {})
                    except TypeError:
                        raise RuntimeError("Symbolic evaluation of map "
                                           "ranges failed. Please check "
                                           "your parameters and match.")

                    self.tile_sizes.append(tile_stride + max_diff + min_diff)
                    self.tile_offset_lower.append(
                        symbolic.pystr_to_symbolic(str(min_diff)))
                    self.tile_offset_upper.append(
                        symbolic.pystr_to_symbolic(str(max_diff)))

                # get calculated parameters
                tile_size = self.tile_sizes[-1]

                dim_idx -= removed_maps
                # If map or tile sizes are trivial, skip strip-mining map dimension
                # special cases:
                # if tile size is trivial AND we have an invariant dimension, skip
                if tile_size == map.range.size()[dim_idx] and (
                        dim_idx + removed_maps) in invariant_dims:
                    continue

                # trivial map: we just continue
                if map.range.size()[dim_idx] in [0, 1]:
                    continue

                if tile_size == 1 and tile_stride == 1 and (
                        dim_idx + removed_maps) in invariant_dims:
                    trivial = True
                    removed_maps += 1

                # indent all map ranges accordingly and then perform
                # strip mining on these. Offset inner maps accordingly afterwards

                range_tuple = (map.range[dim_idx][0] +
                               self.tile_offset_lower[-1],
                               map.range[dim_idx][1] -
                               self.tile_offset_upper[-1],
                               map.range[dim_idx][2])
                map.range[dim_idx] = range_tuple
                stripmine = StripMining(sdfg_id, self.state_id,
                                        stripmine_subgraph, 0)

                stripmine.tiling_type = 'ceilrange'
                stripmine.dim_idx = dim_idx
                stripmine.new_dim_prefix = self.prefix if not trivial else ''
                # use tile_stride for both -- we will extend
                # the inner tiles later
                stripmine.tile_size = str(tile_stride)
                stripmine.tile_stride = str(tile_stride)
                outer_map = stripmine.apply(sdfg)
                outer_map.schedule = original_schedule

                # apply to the new map the schedule of the original one
                map_entry.schedule = self.schedule

                # if tile stride is 1, we can make a nice simplification by just
                # taking the overapproximated inner range as inner range
                # this eliminates the min/max in the range which
                # enables loop unrolling
                if tile_stride == 1:
                    map_entry.range[dim_idx] = tuple(
                        symbolic.SymExpr(el._approx_expr) if isinstance(
                            el, symbolic.SymExpr) else el
                        for el in map_entry.range[dim_idx])

                # in map_entry: enlarge tiles by upper and lower offset
                # doing it this way and not via stripmine strides ensures
                # that the max gets changed as well
                old_range = map_entry.range[dim_idx]
                map_entry.range[dim_idx] = ((old_range[0] -
                                             self.tile_offset_lower[-1]),
                                            (old_range[1] +
                                             self.tile_offset_upper[-1]),
                                            old_range[2])

                # We have to propagate here for correct outer volume and subset sizes
                _propagate_node(graph, map_entry)
                _propagate_node(graph, graph.exit_node(map_entry))

                # usual tiling pipeline
                if last_map_entry:
                    new_map_entry = graph.in_edges(map_entry)[0].src
                    mapcollapse_subgraph = {
                        MapCollapse._outer_map_entry:
                        graph.node_id(last_map_entry),
                        MapCollapse._inner_map_entry:
                        graph.node_id(new_map_entry)
                    }
                    mapcollapse = MapCollapse(sdfg_id, self.state_id,
                                              mapcollapse_subgraph, 0)
                    mapcollapse.apply(sdfg)
                last_map_entry = graph.in_edges(map_entry)[0].src
            # add last instance of map entries to _outer_entries
            if last_map_entry:
                self._outer_entries.add(last_map_entry)

            # Map Unroll Feature: only unroll if conditions are met:
            # Only unroll if at least one of the inner map ranges is strictly larger than 1
            # Only unroll if strides all are one
            if self.unroll_loops and all(s == 1 for s in self.strides) and any(
                    s not in [0, 1] for s in map_entry.range.size()):
                l = len(map_entry.params)
                if l > 1:
                    subgraph = {
                        MapExpansion.map_entry: graph.nodes().index(map_entry)
                    }
                    trafo_expansion = MapExpansion(sdfg.sdfg_id,
                                                   sdfg.nodes().index(graph),
                                                   subgraph, 0)
                    trafo_expansion.apply(sdfg)
                maps = [map_entry]
                for _ in range(l - 1):
                    map_entry = graph.out_edges(map_entry)[0].dst
                    maps.append(map_entry)

                for map in reversed(maps):
                    # MapToForLoop
                    subgraph = {
                        MapToForLoop._map_entry: graph.nodes().index(map)
                    }
                    trafo_for_loop = MapToForLoop(sdfg.sdfg_id,
                                                  sdfg.nodes().index(graph),
                                                  subgraph, 0)
                    trafo_for_loop.apply(sdfg)
                    nsdfg = trafo_for_loop.nsdfg

                    # LoopUnroll

                    guard = trafo_for_loop.guard
                    end = trafo_for_loop.after_state
                    begin = next(e.dst for e in nsdfg.out_edges(guard)
                                 if e.dst != end)

                    subgraph = {
                        DetectLoop._loop_guard: nsdfg.nodes().index(guard),
                        DetectLoop._loop_begin: nsdfg.nodes().index(begin),
                        DetectLoop._exit_state: nsdfg.nodes().index(end)
                    }
                    transformation = LoopUnroll(0, 0, subgraph, 0)
                    transformation.apply(nsdfg)
            elif self.unroll_loops:
                warnings.warn(
                    "Did not unroll loops. Either all ranges are equal to "
                    "one or range difference is symbolic.")

        self._outer_entries = list(self._outer_entries)