def inline_functions(dsk, output, fast_functions=None, inline_constants=False, dependencies=None): """Inline cheap functions into larger operations Examples -------- >>> double = lambda x: x*2 # doctest: +SKIP >>> dsk = {'out': (add, 'i', 'd'), # doctest: +SKIP ... 'i': (inc, 'x'), ... 'd': (double, 'y'), ... 'x': 1, 'y': 1} >>> inline_functions(dsk, [], [inc]) # doctest: +SKIP {'out': (add, (inc, 'x'), 'd'), 'd': (double, 'y'), 'x': 1, 'y': 1} Protect output keys. In the example below ``i`` is not inlined because it is marked as an output key. >>> inline_functions(dsk, ['i', 'out'], [inc, double]) # doctest: +SKIP {'out': (add, 'i', (double, 'y')), 'i': (inc, 'x'), 'x': 1, 'y': 1} """ if not fast_functions: return dsk output = set(output) fast_functions = set(fast_functions) if dependencies is None: dependencies = {k: get_dependencies(dsk, k) for k in dsk} dependents = reverse_dict(dependencies) def inlinable(v): try: return functions_of(v).issubset(fast_functions) except TypeError: return False keys = [ k for k, v in dsk.items() if istask(v) and dependents[k] and k not in output and inlinable(v) ] if keys: dsk = inline(dsk, keys, inline_constants=inline_constants, dependencies=dependencies) for k in keys: del dsk[k] return dsk
def test_get_dependencies_many(): dsk = { "a": [1, 2, 3], "b": "a", "c": [1, (inc, 1)], "d": [(sum, "c")], "e": ["a", "b", "zzz"], "f": [["a", "b"], 2, 3], } tasks = [dsk[k] for k in ("d", "f")] s = get_dependencies(dsk, task=tasks) assert s == {"a", "b", "c"} s = get_dependencies(dsk, task=tasks, as_list=True) assert sorted(s) == ["a", "b", "c"] s = get_dependencies(dsk, task=[]) assert s == set() s = get_dependencies(dsk, task=[], as_list=True) assert s == []
def inline(dsk, keys=None, inline_constants=True, dependencies=None): """Return new dask with the given keys inlined with their values. Inlines all constants if ``inline_constants`` keyword is True. Note that the constant keys will remain in the graph, to remove them follow ``inline`` with ``cull``. Examples -------- >>> d = {'x': 1, 'y': (inc, 'x'), 'z': (add, 'x', 'y')} >>> inline(d) # doctest: +SKIP {'x': 1, 'y': (inc, 1), 'z': (add, 1, 'y')} >>> inline(d, keys='y') # doctest: +SKIP {'x': 1, 'y': (inc, 1), 'z': (add, 1, (inc, 1))} >>> inline(d, keys='y', inline_constants=False) # doctest: +SKIP {'x': 1, 'y': (inc, 1), 'z': (add, 'x', (inc, 'x'))} """ if dependencies and isinstance(next(iter(dependencies.values())), list): dependencies = {k: set(v) for k, v in dependencies.items()} keys = _flat_set(keys) if dependencies is None: dependencies = {k: get_dependencies(dsk, k) for k in dsk} if inline_constants: keys.update(k for k, v in dsk.items() if (ishashable(v) and v in dsk) or ( not dependencies[k] and not istask(v))) # Keys may depend on other keys, so determine replace order with toposort. # The values stored in `keysubs` do not include other keys. replaceorder = toposort(dict((k, dsk[k]) for k in keys if k in dsk), dependencies=dependencies) keysubs = {} for key in replaceorder: val = dsk[key] for dep in keys & dependencies[key]: if dep in keysubs: replace = keysubs[dep] else: replace = dsk[dep] val = subs(val, dep, replace) keysubs[key] = val # Make new dask with substitutions dsk2 = keysubs.copy() for key, val in dsk.items(): if key not in dsk2: for item in keys & dependencies[key]: val = subs(val, item, keysubs[item]) dsk2[key] = val return dsk2
def cull(dsk, keys): """Return new task graph with only the tasks required to calculate keys. In other words, remove unnecessary tasks from task graph. ``keys`` may be a single key or list of keys. Examples -------- >>> d = {'x': 1, 'y': (inc, 'x'), 'out': (add, 'x', 10)} >>> dsk, dependencies = cull(d, 'out') # doctest: +SKIP >>> dsk # doctest: +SKIP {'x': 1, 'out': (add, 'x', 10)} >>> dependencies # doctest: +SKIP {'x': set(), 'out': set(['x'])} Returns ------- dsk: culled graph dependencies: Dict mapping {key: [deps]}. Useful side effect to accelerate other optimizations, notably fuse. """ if not isinstance(keys, (list, set)): keys = [keys] seen = set() dependencies = dict() out = {} work = list(set(flatten(keys))) while work: new_work = [] for k in work: dependencies_k = get_dependencies(dsk, k, as_list=True) # fuse needs lists out[k] = dsk[k] dependencies[k] = dependencies_k for d in dependencies_k: if d not in seen: seen.add(d) new_work.append(d) work = new_work return out, dependencies
def test_get_dependencies_task_none(): # Regression test for https://github.com/dask/distributed/issues/2756 dsk = {"foo": None} assert get_dependencies(dsk, task=dsk["foo"]) == set()
def test_get_dependencies_nothing(): with pytest.raises(ValueError): get_dependencies({})
def test_get_dependencies_task(): dsk = {"x": 1, "y": 2, "z": ["x", [(inc, "y")]]} assert get_dependencies(dsk, task=(inc, "x")) == set(["x"]) assert get_dependencies(dsk, task=(inc, "x"), as_list=True) == ["x"]
def test_get_dependencies_list(): dsk = {"x": 1, "y": 2, "z": ["x", [(inc, "y")]]} assert get_dependencies(dsk, "z") == set(["x", "y"]) assert sorted(get_dependencies(dsk, "z", as_list=True)) == ["x", "y"]
def test_get_dependencies_empty(): dsk = {"x": (inc, )} assert get_dependencies(dsk, "x") == set() assert get_dependencies(dsk, "x", as_list=True) == []
def test_get_dependencies_nested(): dsk = {"x": 1, "y": 2, "z": (add, (inc, [["x"]]), "y")} assert get_dependencies(dsk, "z") == set(["x", "y"]) assert sorted(get_dependencies(dsk, "z", as_list=True)) == ["x", "y"]
def order(dsk, dependencies=None): """Order nodes in the task graph This produces an ordering over our tasks that we use to break ties when executing. We do this ahead of time to reduce a bit of stress on the scheduler and also to assist in static analysis. This currently traverses the graph as a single-threaded scheduler would traverse it. It breaks ties in the following ways: 1. Begin at a leaf node that is a dependency of a root node that has the largest subgraph (start hard things first) 2. Prefer tall branches with few dependents (start hard things first and try to avoid memory usage) 3. Prefer dependents that are dependencies of root nodes that have the smallest subgraph (do small goals that can terminate quickly) Examples -------- >>> dsk = {'a': 1, 'b': 2, 'c': (inc, 'a'), 'd': (add, 'b', 'c')} >>> order(dsk) {'a': 0, 'c': 1, 'b': 2, 'd': 3} """ if not dsk: return {} if dependencies is None: dependencies = {k: get_dependencies(dsk, k) for k in dsk} dependents = reverse_dict(dependencies) num_needed, total_dependencies = ndependencies(dependencies, dependents) metrics = graph_metrics(dependencies, dependents, total_dependencies) if len(metrics) != len(dsk): cycle = getcycle(dsk, None) raise RuntimeError( "Cycle detected between the following keys:\n -> %s" % "\n -> ".join(str(x) for x in cycle) ) # Leaf nodes. We choose one--the initial node--for each weakly connected subgraph. # Let's calculate the `initial_stack_key` as we determine `init_stack` set. init_stack = { # First prioritize large, tall groups, then prioritize the same as ``dependents_key``. key: ( # at a high-level, work towards a large goal (and prefer tall and narrow) -max_dependencies, num_dependents - max_heights, # tactically, finish small connected jobs first min_dependencies, num_dependents - min_heights, # prefer tall and narrow -total_dependents, # take a big step # try to be memory efficient num_dependents, # tie-breaker StrComparable(key), ) for key, num_dependents, ( total_dependents, min_dependencies, max_dependencies, min_heights, max_heights, ) in ((key, len(dependents[key]), metrics[key]) for key, val in dependencies.items() if not val) } # `initial_stack_key` chooses which task to run at the very beginning. # This value is static, so we pre-compute as the value of this dict. initial_stack_key = init_stack.__getitem__ def dependents_key(x): """Choose a path from our starting task to our tactical goal This path is connected to a large goal, but focuses on completing a small goal and being memory efficient. """ return ( # Focus on being memory-efficient len(dependents[x]) - len(dependencies[x]) + num_needed[x], -metrics[x][3], # min_heights # tie-breaker StrComparable(x), ) def dependencies_key(x): """Choose which dependency to run as part of a reverse DFS This is very similar to both ``initial_stack_key``. """ num_dependents = len(dependents[x]) ( total_dependents, min_dependencies, max_dependencies, min_heights, max_heights, ) = metrics[x] # Prefer short and narrow instead of tall in narrow, because we're going in # reverse along dependencies. return ( # at a high-level, work towards a large goal (and prefer short and narrow) -max_dependencies, num_dependents + max_heights, # tactically, finish small connected jobs first min_dependencies, num_dependents + min_heights, # prefer short and narrow -total_dependencies[x], # go where the work is # try to be memory efficient num_dependents - len(dependencies[x]) + num_needed[x], num_dependents, total_dependents, # already found work, so don't add more # tie-breaker StrComparable(x), ) def finish_now_key(x): """ Determine the order of dependents that are ready to run and be released""" return (-len(dependencies[x]), StrComparable(x)) # Computing this for all keys can sometimes be relatively expensive :( partition_keys = { key: ((min_dependencies - total_dependencies[key] + 1) * (total_dependents - min_heights)) for key, ( total_dependents, min_dependencies, _, min_heights, _, ) in metrics.items() } result = {} i = 0 # `inner_stask` is used to perform a DFS along dependencies. Once emptied # (when traversing dependencies), this continue down a path along dependents # until a root node is reached. # # Sometimes, a better path along a dependent is discovered (i.e., something # that is easier to compute and doesn't requiring holding too much in memory). # In this case, the current `inner_stack` is appended to `inner_stacks` and # we begin a new DFS from the better node. # # A "better path" is determined by comparing `partition_keys`. inner_stacks = [[min(init_stack, key=initial_stack_key)]] inner_stacks_append = inner_stacks.append inner_stacks_extend = inner_stacks.extend inner_stacks_pop = inner_stacks.pop # Okay, now we get to the data structures used for fancy behavior. # # As we traverse nodes in the DFS along dependencies, we partition the dependents # via `partition_key`. A dependent goes to: # 1) `inner_stack` if it's better than our current target, # 2) `next_nodes` if the partition key is lower than it's parent, # 3) `later_nodes` otherwise. # When the inner stacks are depleted, we process `next_nodes`. If `next_nodes` is # empty (and `outer_stacks` is empty`), then we process `later_nodes` the same way. # These dicts use `partition_keys` as keys. We process them by placing the values # in `outer_stack` so that the smallest keys will be processed first. next_nodes = defaultdict(list) later_nodes = defaultdict(list) # `outer_stack` is used to populate `inner_stacks`. From the time we partition the # dependents of a node, we group them: one list per partition key per parent node. # This likely results in many small lists. We do this to avoid sorting many larger # lists (i.e., to avoid n*log(n) behavior). So, we have many small lists that we # partitioned, and we keep them in the order that we saw them (we will process them # in a FIFO manner). By delaying sorting for as long as we can, we can first filter # out nodes that have already been computed. All this complexity is worth it! outer_stack = [] outer_stack_extend = outer_stack.extend outer_stack_pop = outer_stack.pop # Keep track of nodes that are in `inner_stack` or `inner_stacks` so we don't # process them again. seen = set() # seen in an inner_stack (and has dependencies) seen_update = seen.update seen_add = seen.add # alias for speed set_difference = set.difference is_init_sorted = False while True: while inner_stacks: inner_stack = inner_stacks_pop() inner_stack_pop = inner_stack.pop while inner_stack: # Perform a DFS along dependencies until we complete our tactical goal item = inner_stack_pop() if item in result: continue if num_needed[item]: inner_stack.append(item) deps = set_difference(dependencies[item], result) if 1 < len(deps) < 1000: inner_stack.extend(sorted(deps, key=dependencies_key, reverse=True)) else: inner_stack.extend(deps) seen_update(deps) continue result[item] = i i += 1 deps = dependents[item] # If inner_stack is empty, then we typically add the best dependent to it. # However, we don't add to it if we complete a node early via "finish_now" below # or if a dependent is already on an inner_stack. In this case, we add the # dependents (not in an inner_stack) to next_nodes or later_nodes to handle later. # This serves three purposes: # 1. shrink `deps` so that it can be processed faster, # 2. make sure we don't process the same dependency repeatedly, and # 3. make sure we don't accidentally continue down an expensive-to-compute path. add_to_inner_stack = True if metrics[item][3] == 1: # min_height # Don't leave any dangling single nodes! Finish all dependents that are # ready and are also root nodes. finish_now = {dep for dep in deps if not dependents[dep] and num_needed[dep] == 1} if finish_now: deps -= finish_now # Safe to mutate if len(finish_now) > 1: finish_now = sorted(finish_now, key=finish_now_key) for dep in finish_now: result[dep] = i i += 1 add_to_inner_stack = False if deps: for dep in deps: num_needed[dep] -= 1 already_seen = deps & seen if already_seen: if len(deps) == len(already_seen): continue add_to_inner_stack = False deps -= already_seen if len(deps) == 1: # Fast path! We trim down `deps` above hoping to reach here. (dep, ) = deps if not inner_stack: if add_to_inner_stack: inner_stack = [dep] inner_stack_pop = inner_stack.pop seen_add(dep) continue key = partition_keys[dep] else: key = partition_keys[dep] if key < partition_keys[inner_stack[0]]: # Run before `inner_stack` (change tactical goal!) inner_stacks_append(inner_stack) inner_stack = [dep] inner_stack_pop = inner_stack.pop seen_add(dep) continue if key < partition_keys[item]: next_nodes[key].append(deps) else: later_nodes[key].append(deps) else: # Slow path :(. This requires grouping by partition_key. dep_pools = defaultdict(list) for dep in deps: dep_pools[partition_keys[dep]].append(dep) item_key = partition_keys[item] if inner_stack: # If we have an inner_stack, we need to look for a "better" path prev_key = partition_keys[inner_stack[0]] now_keys = [] # < inner_stack[0] for key, vals in dep_pools.items(): if key < prev_key: now_keys.append(key) elif key < item_key: next_nodes[key].append(vals) else: later_nodes[key].append(vals) if now_keys: # Run before `inner_stack` (change tactical goal!) inner_stacks_append(inner_stack) if 1 < len(now_keys): now_keys.sort(reverse=True) for key in now_keys: pool = dep_pools[key] if 1 < len(pool) < 100: pool.sort(key=dependents_key, reverse=True) inner_stacks_extend([dep] for dep in pool) seen_update(pool) inner_stack = inner_stacks_pop() inner_stack_pop = inner_stack.pop else: # If we don't have an inner_stack, then we don't need to look # for a "better" path, but we do need traverse along dependents. if add_to_inner_stack: min_key = min(dep_pools) min_pool = dep_pools.pop(min_key) if len(min_pool) == 1: inner_stack = min_pool seen_update(inner_stack) elif (10 * item_key > 11 * len(min_pool) * len(min_pool) * min_key): # Put all items in min_pool onto inner_stacks. # I know this is a weird comparison. Hear me out. # Although it is often beneficial to put all of the items in `min_pool` # onto `inner_stacks` to process next, it is very easy to be overzealous. # Sometimes it is actually better to defer until `next_nodes` is handled. # We should only put items onto `inner_stacks` that we're reasonably # confident about. The above formula is a best effort heuristic given # what we have easily available. It is obviously very specific to our # choice of partition_key. Dask tests take this route about 40%. if len(min_pool) < 100: min_pool.sort(key=dependents_key, reverse=True) inner_stacks_extend([dep] for dep in min_pool) inner_stack = inner_stacks_pop() seen_update(min_pool) else: # Put one item in min_pool onto inner_stack and the rest into next_nodes. if len(min_pool) < 100: inner_stack = [min(min_pool, key=dependents_key)] else: inner_stack = [min_pool.pop()] next_nodes[min_key].append(min_pool) seen_update(inner_stack) inner_stack_pop = inner_stack.pop for key, vals in dep_pools.items(): if key < item_key: next_nodes[key].append(vals) else: later_nodes[key].append(vals) if len(dependencies) == len(result): break # all done! if next_nodes: for key in sorted(next_nodes, reverse=True): # `outer_stacks` may not be empty here--it has data from previous `next_nodes`. # Since we pop things off of it (onto `inner_nodes`), this means we handle # multiple `next_nodes` in a LIFO manner. outer_stack_extend(reversed(next_nodes[key])) next_nodes = defaultdict(list) while outer_stack: # Try to add a few items to `inner_stacks` deps = [x for x in outer_stack_pop() if x not in result] if deps: if 1 < len(deps) < 100: deps.sort(key=dependents_key, reverse=True) inner_stacks_extend([dep] for dep in deps) seen_update(deps) break if inner_stacks: continue if later_nodes: # You know all those dependents with large keys we've been hanging onto to run "later"? # Well, "later" has finally come. next_nodes, later_nodes = later_nodes, next_nodes continue # We just finished computing a connected group. # Let's choose the first `item` in the next group to compute. # If we have few large groups left, then it's best to find `item` by taking a minimum. # If we have many small groups left, then it's best to sort. # If we have many tiny groups left, then it's best to simply iterate. if not is_init_sorted: prev_len = len(init_stack) if type(init_stack) is dict: init_stack = set(init_stack) init_stack = set_difference(init_stack, result) N = len(init_stack) m = prev_len - N # is `min` likely better than `sort`? if m >= N or N + (N - m) * log(N - m) < N * log(N): item = min(init_stack, key=initial_stack_key) continue if len(init_stack) < 10000: init_stack = sorted(init_stack, key=initial_stack_key, reverse=True) else: init_stack = list(init_stack) init_stack_pop = init_stack.pop is_init_sorted = True item = init_stack_pop() while item in result: item = init_stack_pop() inner_stacks_append([item]) return result
def with_deps(dsk): return dsk, {k: get_dependencies(dsk, k) for k in dsk}
def fuse_linear(dsk, keys=None, dependencies=None, rename_keys=True): """Return new dask graph with linear sequence of tasks fused together. If specified, the keys in ``keys`` keyword argument are *not* fused. Supply ``dependencies`` from output of ``cull`` if available to avoid recomputing dependencies. **This function is mostly superseded by ``fuse``** Parameters ---------- dsk: dict keys: list dependencies: dict, optional {key: [list-of-keys]}. Must be a list to provide count of each key This optional input often comes from ``cull`` rename_keys: bool or func, optional Whether to rename fused keys with ``default_fused_linear_keys_renamer`` or not. Renaming fused keys can keep the graph more understandable and comprehensive, but it comes at the cost of additional processing. If False, then the top-most key will be used. For advanced usage, a func is also accepted, ``new_key = rename_keys(fused_key_list)``. Examples -------- >>> d = {'a': 1, 'b': (inc, 'a'), 'c': (inc, 'b')} >>> dsk, dependencies = fuse(d) >>> dsk # doctest: +SKIP {'a-b-c': (inc, (inc, 1)), 'c': 'a-b-c'} >>> dsk, dependencies = fuse(d, rename_keys=False) >>> dsk # doctest: +SKIP {'c': (inc, (inc, 1))} >>> dsk, dependencies = fuse(d, keys=['b'], rename_keys=False) >>> dsk # doctest: +SKIP {'b': (inc, 1), 'c': (inc, 'b')} Returns ------- dsk: output graph with keys fused dependencies: dict mapping dependencies after fusion. Useful side effect to accelerate other downstream optimizations. """ if keys is not None and not isinstance(keys, set): if not isinstance(keys, list): keys = [keys] keys = set(flatten(keys)) if dependencies is None: dependencies = {k: get_dependencies(dsk, k, as_list=True) for k in dsk} # locate all members of linear chains child2parent = {} unfusible = set() for parent in dsk: deps = dependencies[parent] has_many_children = len(deps) > 1 for child in deps: if keys is not None and child in keys: unfusible.add(child) elif child in child2parent: del child2parent[child] unfusible.add(child) elif has_many_children: unfusible.add(child) elif child not in unfusible: child2parent[child] = parent # construct the chains from ancestor to descendant chains = [] parent2child = dict(map(reversed, child2parent.items())) while child2parent: child, parent = child2parent.popitem() chain = [child, parent] while parent in child2parent: parent = child2parent.pop(parent) del parent2child[parent] chain.append(parent) chain.reverse() while child in parent2child: child = parent2child.pop(child) del child2parent[child] chain.append(child) chains.append(chain) dependencies = {k: set(v) for k, v in dependencies.items()} if rename_keys is True: key_renamer = default_fused_linear_keys_renamer elif rename_keys is False: key_renamer = None else: key_renamer = rename_keys # create a new dask with fused chains rv = {} fused = set() aliases = set() is_renamed = False for chain in chains: if key_renamer is not None: new_key = key_renamer(chain) is_renamed = new_key is not None and new_key not in dsk and new_key not in rv child = chain.pop() val = dsk[child] while chain: parent = chain.pop() dependencies[parent].update(dependencies.pop(child)) dependencies[parent].remove(child) val = subs(dsk[parent], child, val) fused.add(child) child = parent fused.add(child) if is_renamed: rv[new_key] = val rv[child] = new_key dependencies[new_key] = dependencies[child] dependencies[child] = {new_key} aliases.add(child) else: rv[child] = val for key, val in dsk.items(): if key not in fused: rv[key] = val if aliases: for key, deps in dependencies.items(): for old_key in deps & aliases: new_key = rv[old_key] deps.remove(old_key) deps.add(new_key) rv[key] = subs(rv[key], old_key, new_key) if keys is not None: for key in aliases - keys: del rv[key] del dependencies[key] return rv, dependencies
def fuse( dsk, keys=None, dependencies=None, ave_width=None, max_width=None, max_height=None, max_depth_new_edges=None, rename_keys=True, fuse_subgraphs=False, ): """Fuse tasks that form reductions; more advanced than ``fuse_linear`` This trades parallelism opportunities for faster scheduling by making tasks less granular. It can replace ``fuse_linear`` in optimization passes. This optimization applies to all reductions--tasks that have at most one dependent--so it may be viewed as fusing "multiple input, single output" groups of tasks into a single task. There are many parameters to fine tune the behavior, which are described below. ``ave_width`` is the natural parameter with which to compare parallelism to granularity, so it should always be specified. Reasonable values for other parameters will be determined using ``ave_width`` if necessary. Parameters ---------- dsk: dict dask graph keys: list or set, optional Keys that must remain in the returned dask graph dependencies: dict, optional {key: [list-of-keys]}. Must be a list to provide count of each key This optional input often comes from ``cull`` ave_width: float (default 1) Upper limit for ``width = num_nodes / height``, a good measure of parallelizability. max_width: int (default infinite) Don't fuse if total width is greater than this. Set to ``None`` to dynamically adjust to ``1.5 + ave_width * log(ave_width + 1)`` max_height: int or None (default None) Don't fuse more than this many levels. Set to None to dynamically adjust to ``1.5 + ave_width * log(ave_width + 1)``. max_depth_new_edges: int or None (default None) Don't fuse if new dependencies are added after this many levels. Set to None to dynamically adjust to ``ave_width * 1.5`` rename_keys: bool or func, optional (default True) Whether to rename the fused keys with ``default_fused_keys_renamer`` or not. Renaming fused keys can keep the graph more understandable and comprehensive, but it comes at the cost of additional processing. If False, then the top-most key will be used. For advanced usage, a function to create the new name is also accepted. fuse_subgraphs : bool, optional (default False) Whether to fuse multiple tasks into ``SubgraphCallable`` objects. Set to None to let the default optimizer of individual dask collections decide. If no collection-specific default exists, defaults to False. Returns ------- dsk output graph with keys fused dependencies dict mapping dependencies after fusion. Useful side effect to accelerate other downstream optimizations. """ if keys is not None and not isinstance(keys, set): if not isinstance(keys, list): keys = [keys] keys = set(flatten(keys)) if ave_width is None: ave_width = 1 if max_height is None: max_height = 1.5 + (ave_width * math.log(ave_width + 1)) if max_depth_new_edges is None: max_depth_new_edges = ave_width * 1.5 if max_width is None: max_width = 1.5 + ave_width * math.log(ave_width + 1) if not ave_width or not max_height: return dsk, dependencies if rename_keys is True: key_renamer = default_fused_keys_renamer elif rename_keys is False: key_renamer = None elif not callable(rename_keys): raise TypeError("rename_keys must be a boolean or callable") else: key_renamer = rename_keys rename_keys = key_renamer is not None if dependencies is None: deps = {k: get_dependencies(dsk, k, as_list=True) for k in dsk} else: deps = dict(dependencies) rdeps = {} for k, vals in deps.items(): for v in vals: if v not in rdeps: rdeps[v] = [k] else: rdeps[v].append(k) deps[k] = set(vals) reducible = {k for k, vals in rdeps.items() if len(vals) == 1} if keys: reducible -= keys for k, v in dsk.items(): if type(v) is not tuple and not isinstance(v, (numbers.Number, str)): reducible.discard(k) if not reducible and (not fuse_subgraphs or all(len(set(v)) != 1 for v in rdeps.values())): # Quick return if there's nothing to do. Only progress if there's tasks # fusible by the main `fuse`, or by `fuse_subgraphs` if enabled. return dsk, deps rv = dsk.copy() fused_trees = {} # These are the stacks we use to store data as we traverse the graph info_stack = [] children_stack = [] # For speed deps_pop = deps.pop reducible_add = reducible.add reducible_pop = reducible.pop reducible_remove = reducible.remove fused_trees_pop = fused_trees.pop info_stack_append = info_stack.append info_stack_pop = info_stack.pop children_stack_append = children_stack.append children_stack_extend = children_stack.extend children_stack_pop = children_stack.pop while reducible: parent = reducible_pop() reducible_add(parent) while parent in reducible: # Go to the top parent = rdeps[parent][0] children_stack_append(parent) children_stack_extend(reducible & deps[parent]) while True: child = children_stack[-1] if child != parent: children = reducible & deps[child] while children: # Depth-first search children_stack_extend(children) parent = child child = children_stack[-1] children = reducible & deps[child] children_stack_pop() # This is a leaf node in the reduction region # key, task, fused_keys, height, width, number of nodes, fudge, set of edges info_stack_append(( child, rv[child], [child] if rename_keys else None, 1, 1, 1, 0, deps[child] - reducible, )) else: children_stack_pop() # Calculate metrics and fuse as appropriate deps_parent = deps[parent] edges = deps_parent - reducible children = deps_parent - edges num_children = len(children) if num_children == 1: ( child_key, child_task, child_keys, height, width, num_nodes, fudge, children_edges, ) = info_stack_pop() num_children_edges = len(children_edges) if fudge > num_children_edges - 1 >= 0: fudge = num_children_edges - 1 edges |= children_edges no_new_edges = len(edges) == num_children_edges if not no_new_edges: fudge += 1 # Sanity check; don't go too deep if new levels introduce new edge dependencies if ((num_nodes + fudge) / height <= ave_width and (no_new_edges or height < max_depth_new_edges)): # Perform substitutions as we go val = subs(dsk[parent], child_key, child_task) deps_parent.remove(child_key) deps_parent |= deps_pop(child_key) del rv[child_key] reducible_remove(child_key) if rename_keys: child_keys.append(parent) fused_trees[parent] = child_keys fused_trees_pop(child_key, None) if children_stack: if no_new_edges: # Linear fuse info_stack_append(( parent, val, child_keys, height, width, num_nodes, fudge, edges, )) else: info_stack_append(( parent, val, child_keys, height + 1, width, num_nodes + 1, fudge, edges, )) else: rv[parent] = val break else: rv[child_key] = child_task reducible_remove(child_key) if children_stack: # Allow the parent to be fused, but only under strict circumstances. # Ensure that linear chains may still be fused. if fudge > int(ave_width - 1): fudge = int(ave_width - 1) # This task *implicitly* depends on `edges` info_stack_append(( parent, rv[parent], [parent] if rename_keys else None, 1, width, 1, fudge, edges, )) else: break else: child_keys = [] height = 1 width = 0 num_single_nodes = 0 num_nodes = 0 fudge = 0 children_edges = set() max_num_edges = 0 children_info = info_stack[-num_children:] del info_stack[-num_children:] for ( cur_key, cur_task, cur_keys, cur_height, cur_width, cur_num_nodes, cur_fudge, cur_edges, ) in children_info: if cur_height == 1: num_single_nodes += 1 elif cur_height > height: height = cur_height width += cur_width num_nodes += cur_num_nodes fudge += cur_fudge if len(cur_edges) > max_num_edges: max_num_edges = len(cur_edges) children_edges |= cur_edges # Fudge factor to account for possible parallelism with the boundaries num_children_edges = len(children_edges) fudge += min(num_children - 1, max(0, num_children_edges - max_num_edges)) if fudge > num_children_edges - 1 >= 0: fudge = num_children_edges - 1 edges |= children_edges no_new_edges = len(edges) == num_children_edges if not no_new_edges: fudge += 1 # Sanity check; don't go too deep if new levels introduce new edge dependencies if ((num_nodes + fudge) / height <= ave_width and num_single_nodes <= ave_width and width <= max_width and height <= max_height # noqa E129 and (no_new_edges or height < max_depth_new_edges)): # noqa E129 # Perform substitutions as we go val = dsk[parent] children_deps = set() for child_info in children_info: cur_child = child_info[0] val = subs(val, cur_child, child_info[1]) del rv[cur_child] children_deps |= deps_pop(cur_child) reducible_remove(cur_child) if rename_keys: fused_trees_pop(cur_child, None) child_keys.extend(child_info[2]) deps_parent -= children deps_parent |= children_deps if rename_keys: child_keys.append(parent) fused_trees[parent] = child_keys if children_stack: info_stack_append(( parent, val, child_keys, height + 1, width, num_nodes + 1, fudge, edges, )) else: rv[parent] = val break else: for child_info in children_info: rv[child_info[0]] = child_info[1] reducible_remove(child_info[0]) if children_stack: # Allow the parent to be fused, but only under strict circumstances. # Ensure that linear chains may still be fused. if width > max_width: width = max_width if fudge > int(ave_width - 1): fudge = int(ave_width - 1) # key, task, height, width, number of nodes, fudge, set of edges # This task *implicitly* depends on `edges` info_stack_append(( parent, rv[parent], [parent] if rename_keys else None, 1, width, 1, fudge, edges, )) else: break # Traverse upwards parent = rdeps[parent][0] if fuse_subgraphs: _inplace_fuse_subgraphs(rv, keys, deps, fused_trees, rename_keys) if key_renamer: for root_key, fused_keys in fused_trees.items(): alias = key_renamer(fused_keys) if alias is not None and alias not in rv: rv[alias] = rv[root_key] rv[root_key] = alias deps[alias] = deps[root_key] deps[root_key] = {alias} return rv, deps