| import copy |
| import heapq |
| import inspect |
| import logging |
| import sys |
| import threading |
| import time |
| import traceback |
| from enum import Enum |
| from typing import List, Literal, NamedTuple, Optional, Union |
| import asyncio |
|
|
| import torch |
|
|
| import comfy.model_management |
| import nodes |
| from comfy_execution.caching import ( |
| BasicCache, |
| CacheKeySetID, |
| CacheKeySetInputSignature, |
| DependencyAwareCache, |
| HierarchicalCache, |
| LRUCache, |
| ) |
| from comfy_execution.graph import ( |
| DynamicPrompt, |
| ExecutionBlocker, |
| ExecutionList, |
| get_input_info, |
| ) |
| from comfy_execution.graph_utils import GraphBuilder, is_link |
| from comfy_execution.validation import validate_node_input |
| from comfy_execution.progress import get_progress_state, reset_progress_state, add_progress_handler, WebUIProgressHandler |
| from comfy_execution.utils import CurrentNodeContext |
| from comfy_api.internal import _ComfyNodeInternal, _NodeOutputInternal, first_real_override, is_class, make_locked_method_func |
| from comfy_api.latest import io |
|
|
|
|
| class ExecutionResult(Enum): |
| SUCCESS = 0 |
| FAILURE = 1 |
| PENDING = 2 |
|
|
| class DuplicateNodeError(Exception): |
| pass |
|
|
| class IsChangedCache: |
| def __init__(self, prompt_id: str, dynprompt: DynamicPrompt, outputs_cache: BasicCache): |
| self.prompt_id = prompt_id |
| self.dynprompt = dynprompt |
| self.outputs_cache = outputs_cache |
| self.is_changed = {} |
|
|
| async def get(self, node_id): |
| if node_id in self.is_changed: |
| return self.is_changed[node_id] |
|
|
| node = self.dynprompt.get_node(node_id) |
| class_type = node["class_type"] |
| class_def = nodes.NODE_CLASS_MAPPINGS[class_type] |
| has_is_changed = False |
| is_changed_name = None |
| if issubclass(class_def, _ComfyNodeInternal) and first_real_override(class_def, "fingerprint_inputs") is not None: |
| has_is_changed = True |
| is_changed_name = "fingerprint_inputs" |
| elif hasattr(class_def, "IS_CHANGED"): |
| has_is_changed = True |
| is_changed_name = "IS_CHANGED" |
| if not has_is_changed: |
| self.is_changed[node_id] = False |
| return self.is_changed[node_id] |
|
|
| if "is_changed" in node: |
| self.is_changed[node_id] = node["is_changed"] |
| return self.is_changed[node_id] |
|
|
| |
| input_data_all, _, hidden_inputs = get_input_data(node["inputs"], class_def, node_id, None) |
| try: |
| is_changed = await _async_map_node_over_list(self.prompt_id, node_id, class_def, input_data_all, is_changed_name) |
| is_changed = await resolve_map_node_over_list_results(is_changed) |
| node["is_changed"] = [None if isinstance(x, ExecutionBlocker) else x for x in is_changed] |
| except Exception as e: |
| logging.warning("WARNING: {}".format(e)) |
| node["is_changed"] = float("NaN") |
| finally: |
| self.is_changed[node_id] = node["is_changed"] |
| return self.is_changed[node_id] |
|
|
|
|
| class CacheType(Enum): |
| CLASSIC = 0 |
| LRU = 1 |
| DEPENDENCY_AWARE = 2 |
|
|
|
|
| class CacheSet: |
| def __init__(self, cache_type=None, cache_size=None): |
| if cache_type == CacheType.DEPENDENCY_AWARE: |
| self.init_dependency_aware_cache() |
| logging.info("Disabling intermediate node cache.") |
| elif cache_type == CacheType.LRU: |
| if cache_size is None: |
| cache_size = 0 |
| self.init_lru_cache(cache_size) |
| logging.info("Using LRU cache") |
| else: |
| self.init_classic_cache() |
|
|
| self.all = [self.outputs, self.ui, self.objects] |
|
|
| |
| def init_classic_cache(self): |
| self.outputs = HierarchicalCache(CacheKeySetInputSignature) |
| self.ui = HierarchicalCache(CacheKeySetInputSignature) |
| self.objects = HierarchicalCache(CacheKeySetID) |
|
|
| def init_lru_cache(self, cache_size): |
| self.outputs = LRUCache(CacheKeySetInputSignature, max_size=cache_size) |
| self.ui = LRUCache(CacheKeySetInputSignature, max_size=cache_size) |
| self.objects = HierarchicalCache(CacheKeySetID) |
|
|
| |
| def init_dependency_aware_cache(self): |
| self.outputs = DependencyAwareCache(CacheKeySetInputSignature) |
| self.ui = DependencyAwareCache(CacheKeySetInputSignature) |
| self.objects = DependencyAwareCache(CacheKeySetID) |
|
|
| def recursive_debug_dump(self): |
| result = { |
| "outputs": self.outputs.recursive_debug_dump(), |
| "ui": self.ui.recursive_debug_dump(), |
| } |
| return result |
|
|
| SENSITIVE_EXTRA_DATA_KEYS = ("auth_token_comfy_org", "api_key_comfy_org") |
|
|
| def get_input_data(inputs, class_def, unique_id, outputs=None, dynprompt=None, extra_data={}): |
| is_v3 = issubclass(class_def, _ComfyNodeInternal) |
| if is_v3: |
| valid_inputs, schema = class_def.INPUT_TYPES(include_hidden=False, return_schema=True) |
| else: |
| valid_inputs = class_def.INPUT_TYPES() |
| input_data_all = {} |
| missing_keys = {} |
| hidden_inputs_v3 = {} |
| for x in inputs: |
| input_data = inputs[x] |
| _, input_category, input_info = get_input_info(class_def, x, valid_inputs) |
| def mark_missing(): |
| missing_keys[x] = True |
| input_data_all[x] = (None,) |
| if is_link(input_data) and (not input_info or not input_info.get("rawLink", False)): |
| input_unique_id = input_data[0] |
| output_index = input_data[1] |
| if outputs is None: |
| mark_missing() |
| continue |
| cached_output = outputs.get(input_unique_id) |
| if cached_output is None: |
| mark_missing() |
| continue |
| if output_index >= len(cached_output): |
| mark_missing() |
| continue |
| obj = cached_output[output_index] |
| input_data_all[x] = obj |
| elif input_category is not None: |
| input_data_all[x] = [input_data] |
|
|
| if is_v3: |
| if schema.hidden: |
| if io.Hidden.prompt in schema.hidden: |
| hidden_inputs_v3[io.Hidden.prompt] = dynprompt.get_original_prompt() if dynprompt is not None else {} |
| if io.Hidden.dynprompt in schema.hidden: |
| hidden_inputs_v3[io.Hidden.dynprompt] = dynprompt |
| if io.Hidden.extra_pnginfo in schema.hidden: |
| hidden_inputs_v3[io.Hidden.extra_pnginfo] = extra_data.get('extra_pnginfo', None) |
| if io.Hidden.unique_id in schema.hidden: |
| hidden_inputs_v3[io.Hidden.unique_id] = unique_id |
| if io.Hidden.auth_token_comfy_org in schema.hidden: |
| hidden_inputs_v3[io.Hidden.auth_token_comfy_org] = extra_data.get("auth_token_comfy_org", None) |
| if io.Hidden.api_key_comfy_org in schema.hidden: |
| hidden_inputs_v3[io.Hidden.api_key_comfy_org] = extra_data.get("api_key_comfy_org", None) |
| else: |
| if "hidden" in valid_inputs: |
| h = valid_inputs["hidden"] |
| for x in h: |
| if h[x] == "PROMPT": |
| input_data_all[x] = [dynprompt.get_original_prompt() if dynprompt is not None else {}] |
| if h[x] == "DYNPROMPT": |
| input_data_all[x] = [dynprompt] |
| if h[x] == "EXTRA_PNGINFO": |
| input_data_all[x] = [extra_data.get('extra_pnginfo', None)] |
| if h[x] == "UNIQUE_ID": |
| input_data_all[x] = [unique_id] |
| if h[x] == "AUTH_TOKEN_COMFY_ORG": |
| input_data_all[x] = [extra_data.get("auth_token_comfy_org", None)] |
| if h[x] == "API_KEY_COMFY_ORG": |
| input_data_all[x] = [extra_data.get("api_key_comfy_org", None)] |
| return input_data_all, missing_keys, hidden_inputs_v3 |
|
|
| map_node_over_list = None |
|
|
| async def resolve_map_node_over_list_results(results): |
| remaining = [x for x in results if isinstance(x, asyncio.Task) and not x.done()] |
| if len(remaining) == 0: |
| return [x.result() if isinstance(x, asyncio.Task) else x for x in results] |
| else: |
| done, pending = await asyncio.wait(remaining) |
| for task in done: |
| exc = task.exception() |
| if exc is not None: |
| raise exc |
| return [x.result() if isinstance(x, asyncio.Task) else x for x in results] |
|
|
| async def _async_map_node_over_list(prompt_id, unique_id, obj, input_data_all, func, allow_interrupt=False, execution_block_cb=None, pre_execute_cb=None, hidden_inputs=None): |
| |
| input_is_list = getattr(obj, "INPUT_IS_LIST", False) |
|
|
| if len(input_data_all) == 0: |
| max_len_input = 0 |
| else: |
| max_len_input = max(len(x) for x in input_data_all.values()) |
|
|
| |
| def slice_dict(d, i): |
| return {k: v[i if len(v) > i else -1] for k, v in d.items()} |
|
|
| results = [] |
| async def process_inputs(inputs, index=None, input_is_list=False): |
| if allow_interrupt: |
| nodes.before_node_execution() |
| execution_block = None |
| for k, v in inputs.items(): |
| if input_is_list: |
| for e in v: |
| if isinstance(e, ExecutionBlocker): |
| v = e |
| break |
| if isinstance(v, ExecutionBlocker): |
| execution_block = execution_block_cb(v) if execution_block_cb else v |
| break |
| if execution_block is None: |
| if pre_execute_cb is not None and index is not None: |
| pre_execute_cb(index) |
| |
| if isinstance(obj, _ComfyNodeInternal) or (is_class(obj) and issubclass(obj, _ComfyNodeInternal)): |
| |
| if is_class(obj): |
| type_obj = obj |
| obj.VALIDATE_CLASS() |
| class_clone = obj.PREPARE_CLASS_CLONE(hidden_inputs) |
| |
| else: |
| type_obj = type(obj) |
| type_obj.VALIDATE_CLASS() |
| class_clone = type_obj.PREPARE_CLASS_CLONE(hidden_inputs) |
| f = make_locked_method_func(type_obj, func, class_clone) |
| |
| else: |
| f = getattr(obj, func) |
| if inspect.iscoroutinefunction(f): |
| async def async_wrapper(f, prompt_id, unique_id, list_index, args): |
| with CurrentNodeContext(prompt_id, unique_id, list_index): |
| return await f(**args) |
| task = asyncio.create_task(async_wrapper(f, prompt_id, unique_id, index, args=inputs)) |
| |
| await asyncio.sleep(0) |
| if task.done(): |
| result = task.result() |
| results.append(result) |
| else: |
| results.append(task) |
| else: |
| with CurrentNodeContext(prompt_id, unique_id, index): |
| result = f(**inputs) |
| results.append(result) |
| else: |
| results.append(execution_block) |
|
|
| if input_is_list: |
| await process_inputs(input_data_all, 0, input_is_list=input_is_list) |
| elif max_len_input == 0: |
| await process_inputs({}) |
| else: |
| for i in range(max_len_input): |
| input_dict = slice_dict(input_data_all, i) |
| await process_inputs(input_dict, i) |
| return results |
|
|
|
|
| def merge_result_data(results, obj): |
| |
| output = [] |
| output_is_list = [False] * len(results[0]) |
| if hasattr(obj, "OUTPUT_IS_LIST"): |
| output_is_list = obj.OUTPUT_IS_LIST |
|
|
| |
| for i, is_list in zip(range(len(results[0])), output_is_list): |
| if is_list: |
| value = [] |
| for o in results: |
| if isinstance(o[i], ExecutionBlocker): |
| value.append(o[i]) |
| else: |
| value.extend(o[i]) |
| output.append(value) |
| else: |
| output.append([o[i] for o in results]) |
| return output |
|
|
| async def get_output_data(prompt_id, unique_id, obj, input_data_all, execution_block_cb=None, pre_execute_cb=None, hidden_inputs=None): |
| return_values = await _async_map_node_over_list(prompt_id, unique_id, obj, input_data_all, obj.FUNCTION, allow_interrupt=True, execution_block_cb=execution_block_cb, pre_execute_cb=pre_execute_cb, hidden_inputs=hidden_inputs) |
| has_pending_task = any(isinstance(r, asyncio.Task) and not r.done() for r in return_values) |
| if has_pending_task: |
| return return_values, {}, False, has_pending_task |
| output, ui, has_subgraph = get_output_from_returns(return_values, obj) |
| return output, ui, has_subgraph, False |
|
|
| def get_output_from_returns(return_values, obj): |
| results = [] |
| uis = [] |
| subgraph_results = [] |
| has_subgraph = False |
| for i in range(len(return_values)): |
| r = return_values[i] |
| if isinstance(r, dict): |
| if 'ui' in r: |
| uis.append(r['ui']) |
| if 'expand' in r: |
| |
| has_subgraph = True |
| new_graph = r['expand'] |
| result = r.get("result", None) |
| if isinstance(result, ExecutionBlocker): |
| result = tuple([result] * len(obj.RETURN_TYPES)) |
| subgraph_results.append((new_graph, result)) |
| elif 'result' in r: |
| result = r.get("result", None) |
| if isinstance(result, ExecutionBlocker): |
| result = tuple([result] * len(obj.RETURN_TYPES)) |
| results.append(result) |
| subgraph_results.append((None, result)) |
| elif isinstance(r, _NodeOutputInternal): |
| |
| if r.ui is not None: |
| if isinstance(r.ui, dict): |
| uis.append(r.ui) |
| else: |
| uis.append(r.ui.as_dict()) |
| if r.expand is not None: |
| has_subgraph = True |
| new_graph = r.expand |
| result = r.result |
| if r.block_execution is not None: |
| result = tuple([ExecutionBlocker(r.block_execution)] * len(obj.RETURN_TYPES)) |
| subgraph_results.append((new_graph, result)) |
| elif r.result is not None: |
| result = r.result |
| if r.block_execution is not None: |
| result = tuple([ExecutionBlocker(r.block_execution)] * len(obj.RETURN_TYPES)) |
| results.append(result) |
| subgraph_results.append((None, result)) |
| else: |
| if isinstance(r, ExecutionBlocker): |
| r = tuple([r] * len(obj.RETURN_TYPES)) |
| results.append(r) |
| subgraph_results.append((None, r)) |
|
|
| if has_subgraph: |
| output = subgraph_results |
| elif len(results) > 0: |
| output = merge_result_data(results, obj) |
| else: |
| output = [] |
| ui = dict() |
| |
| |
| |
| |
| if len(uis) > 0: |
| ui = {k: [y for x in uis for y in x[k]] for k in uis[0].keys()} |
| return output, ui, has_subgraph |
|
|
| def format_value(x): |
| if x is None: |
| return None |
| elif isinstance(x, (int, float, bool, str)): |
| return x |
| else: |
| return str(x) |
|
|
| async def execute(server, dynprompt, caches, current_item, extra_data, executed, prompt_id, execution_list, pending_subgraph_results, pending_async_nodes): |
| unique_id = current_item |
| real_node_id = dynprompt.get_real_node_id(unique_id) |
| display_node_id = dynprompt.get_display_node_id(unique_id) |
| parent_node_id = dynprompt.get_parent_node_id(unique_id) |
| inputs = dynprompt.get_node(unique_id)['inputs'] |
| class_type = dynprompt.get_node(unique_id)['class_type'] |
| class_def = nodes.NODE_CLASS_MAPPINGS[class_type] |
| if caches.outputs.get(unique_id) is not None: |
| if server.client_id is not None: |
| cached_output = caches.ui.get(unique_id) or {} |
| server.send_sync("executed", { "node": unique_id, "display_node": display_node_id, "output": cached_output.get("output",None), "prompt_id": prompt_id }, server.client_id) |
| get_progress_state().finish_progress(unique_id) |
| return (ExecutionResult.SUCCESS, None, None) |
|
|
| input_data_all = None |
| try: |
| if unique_id in pending_async_nodes: |
| results = [] |
| for r in pending_async_nodes[unique_id]: |
| if isinstance(r, asyncio.Task): |
| try: |
| results.append(r.result()) |
| except Exception as ex: |
| |
| del pending_async_nodes[unique_id] |
| raise ex |
| else: |
| results.append(r) |
| del pending_async_nodes[unique_id] |
| output_data, output_ui, has_subgraph = get_output_from_returns(results, class_def) |
| elif unique_id in pending_subgraph_results: |
| cached_results = pending_subgraph_results[unique_id] |
| resolved_outputs = [] |
| for is_subgraph, result in cached_results: |
| if not is_subgraph: |
| resolved_outputs.append(result) |
| else: |
| resolved_output = [] |
| for r in result: |
| if is_link(r): |
| source_node, source_output = r[0], r[1] |
| node_output = caches.outputs.get(source_node)[source_output] |
| for o in node_output: |
| resolved_output.append(o) |
|
|
| else: |
| resolved_output.append(r) |
| resolved_outputs.append(tuple(resolved_output)) |
| output_data = merge_result_data(resolved_outputs, class_def) |
| output_ui = [] |
| has_subgraph = False |
| else: |
| get_progress_state().start_progress(unique_id) |
| input_data_all, missing_keys, hidden_inputs = get_input_data(inputs, class_def, unique_id, caches.outputs, dynprompt, extra_data) |
| if server.client_id is not None: |
| server.last_node_id = display_node_id |
| server.send_sync("executing", { "node": unique_id, "display_node": display_node_id, "prompt_id": prompt_id }, server.client_id) |
|
|
| obj = caches.objects.get(unique_id) |
| if obj is None: |
| obj = class_def() |
| caches.objects.set(unique_id, obj) |
|
|
| if issubclass(class_def, _ComfyNodeInternal): |
| lazy_status_present = first_real_override(class_def, "check_lazy_status") is not None |
| else: |
| lazy_status_present = getattr(obj, "check_lazy_status", None) is not None |
| if lazy_status_present: |
| required_inputs = await _async_map_node_over_list(prompt_id, unique_id, obj, input_data_all, "check_lazy_status", allow_interrupt=True, hidden_inputs=hidden_inputs) |
| required_inputs = await resolve_map_node_over_list_results(required_inputs) |
| required_inputs = set(sum([r for r in required_inputs if isinstance(r,list)], [])) |
| required_inputs = [x for x in required_inputs if isinstance(x,str) and ( |
| x not in input_data_all or x in missing_keys |
| )] |
| if len(required_inputs) > 0: |
| for i in required_inputs: |
| execution_list.make_input_strong_link(unique_id, i) |
| return (ExecutionResult.PENDING, None, None) |
|
|
| def execution_block_cb(block): |
| if block.message is not None: |
| mes = { |
| "prompt_id": prompt_id, |
| "node_id": unique_id, |
| "node_type": class_type, |
| "executed": list(executed), |
|
|
| "exception_message": f"Execution Blocked: {block.message}", |
| "exception_type": "ExecutionBlocked", |
| "traceback": [], |
| "current_inputs": [], |
| "current_outputs": [], |
| } |
| server.send_sync("execution_error", mes, server.client_id) |
| return ExecutionBlocker(None) |
| else: |
| return block |
| def pre_execute_cb(call_index): |
| |
| GraphBuilder.set_default_prefix(unique_id, call_index, 0) |
| output_data, output_ui, has_subgraph, has_pending_tasks = await get_output_data(prompt_id, unique_id, obj, input_data_all, execution_block_cb=execution_block_cb, pre_execute_cb=pre_execute_cb, hidden_inputs=hidden_inputs) |
| if has_pending_tasks: |
| pending_async_nodes[unique_id] = output_data |
| unblock = execution_list.add_external_block(unique_id) |
| async def await_completion(): |
| tasks = [x for x in output_data if isinstance(x, asyncio.Task)] |
| await asyncio.gather(*tasks, return_exceptions=True) |
| unblock() |
| asyncio.create_task(await_completion()) |
| return (ExecutionResult.PENDING, None, None) |
| if len(output_ui) > 0: |
| caches.ui.set(unique_id, { |
| "meta": { |
| "node_id": unique_id, |
| "display_node": display_node_id, |
| "parent_node": parent_node_id, |
| "real_node_id": real_node_id, |
| }, |
| "output": output_ui |
| }) |
| if server.client_id is not None: |
| server.send_sync("executed", { "node": unique_id, "display_node": display_node_id, "output": output_ui, "prompt_id": prompt_id }, server.client_id) |
| if has_subgraph: |
| cached_outputs = [] |
| new_node_ids = [] |
| new_output_ids = [] |
| new_output_links = [] |
| for i in range(len(output_data)): |
| new_graph, node_outputs = output_data[i] |
| if new_graph is None: |
| cached_outputs.append((False, node_outputs)) |
| else: |
| |
| for node_id in new_graph.keys(): |
| if dynprompt.has_node(node_id): |
| raise DuplicateNodeError(f"Attempt to add duplicate node {node_id}. Ensure node ids are unique and deterministic or use graph_utils.GraphBuilder.") |
| for node_id, node_info in new_graph.items(): |
| new_node_ids.append(node_id) |
| display_id = node_info.get("override_display_id", unique_id) |
| dynprompt.add_ephemeral_node(node_id, node_info, unique_id, display_id) |
| |
| class_type = node_info["class_type"] |
| class_def = nodes.NODE_CLASS_MAPPINGS[class_type] |
| if hasattr(class_def, 'OUTPUT_NODE') and class_def.OUTPUT_NODE == True: |
| new_output_ids.append(node_id) |
| for i in range(len(node_outputs)): |
| if is_link(node_outputs[i]): |
| from_node_id, from_socket = node_outputs[i][0], node_outputs[i][1] |
| new_output_links.append((from_node_id, from_socket)) |
| cached_outputs.append((True, node_outputs)) |
| new_node_ids = set(new_node_ids) |
| for cache in caches.all: |
| subcache = await cache.ensure_subcache_for(unique_id, new_node_ids) |
| subcache.clean_unused() |
| for node_id in new_output_ids: |
| execution_list.add_node(node_id) |
| for link in new_output_links: |
| execution_list.add_strong_link(link[0], link[1], unique_id) |
| pending_subgraph_results[unique_id] = cached_outputs |
| return (ExecutionResult.PENDING, None, None) |
| caches.outputs.set(unique_id, output_data) |
| except comfy.model_management.InterruptProcessingException as iex: |
| logging.info("Processing interrupted") |
|
|
| |
| error_details = { |
| "node_id": real_node_id, |
| } |
|
|
| return (ExecutionResult.FAILURE, error_details, iex) |
| except Exception as ex: |
| typ, _, tb = sys.exc_info() |
| exception_type = full_type_name(typ) |
| input_data_formatted = {} |
| if input_data_all is not None: |
| input_data_formatted = {} |
| for name, inputs in input_data_all.items(): |
| input_data_formatted[name] = [format_value(x) for x in inputs] |
|
|
| logging.error(f"!!! Exception during processing !!! {ex}") |
| logging.error(traceback.format_exc()) |
| tips = "" |
|
|
| if isinstance(ex, comfy.model_management.OOM_EXCEPTION): |
| tips = "This error means you ran out of memory on your GPU.\n\nTIPS: If the workflow worked before you might have accidentally set the batch_size to a large number." |
| logging.error("Got an OOM, unloading all loaded models.") |
| comfy.model_management.unload_all_models() |
|
|
| error_details = { |
| "node_id": real_node_id, |
| "exception_message": "{}\n{}".format(ex, tips), |
| "exception_type": exception_type, |
| "traceback": traceback.format_tb(tb), |
| "current_inputs": input_data_formatted |
| } |
|
|
| return (ExecutionResult.FAILURE, error_details, ex) |
|
|
| get_progress_state().finish_progress(unique_id) |
| executed.add(unique_id) |
|
|
| return (ExecutionResult.SUCCESS, None, None) |
|
|
| class PromptExecutor: |
| def __init__(self, server, cache_type=False, cache_size=None): |
| self.cache_size = cache_size |
| self.cache_type = cache_type |
| self.server = server |
| self.reset() |
|
|
| def reset(self): |
| self.caches = CacheSet(cache_type=self.cache_type, cache_size=self.cache_size) |
| self.status_messages = [] |
| self.success = True |
|
|
| def add_message(self, event, data: dict, broadcast: bool): |
| data = { |
| **data, |
| "timestamp": int(time.time() * 1000), |
| } |
| self.status_messages.append((event, data)) |
| if self.server.client_id is not None or broadcast: |
| self.server.send_sync(event, data, self.server.client_id) |
|
|
| def handle_execution_error(self, prompt_id, prompt, current_outputs, executed, error, ex): |
| node_id = error["node_id"] |
| class_type = prompt[node_id]["class_type"] |
|
|
| |
| |
| if isinstance(ex, comfy.model_management.InterruptProcessingException): |
| mes = { |
| "prompt_id": prompt_id, |
| "node_id": node_id, |
| "node_type": class_type, |
| "executed": list(executed), |
| } |
| self.add_message("execution_interrupted", mes, broadcast=True) |
| else: |
| mes = { |
| "prompt_id": prompt_id, |
| "node_id": node_id, |
| "node_type": class_type, |
| "executed": list(executed), |
| "exception_message": error["exception_message"], |
| "exception_type": error["exception_type"], |
| "traceback": error["traceback"], |
| "current_inputs": error["current_inputs"], |
| "current_outputs": list(current_outputs), |
| } |
| self.add_message("execution_error", mes, broadcast=False) |
|
|
| def execute(self, prompt, prompt_id, extra_data={}, execute_outputs=[]): |
| asyncio.run(self.execute_async(prompt, prompt_id, extra_data, execute_outputs)) |
|
|
| async def execute_async(self, prompt, prompt_id, extra_data={}, execute_outputs=[]): |
| nodes.interrupt_processing(False) |
|
|
| if "client_id" in extra_data: |
| self.server.client_id = extra_data["client_id"] |
| else: |
| self.server.client_id = None |
|
|
| self.status_messages = [] |
| self.add_message("execution_start", { "prompt_id": prompt_id}, broadcast=False) |
|
|
| with torch.inference_mode(): |
| dynamic_prompt = DynamicPrompt(prompt) |
| reset_progress_state(prompt_id, dynamic_prompt) |
| add_progress_handler(WebUIProgressHandler(self.server)) |
| is_changed_cache = IsChangedCache(prompt_id, dynamic_prompt, self.caches.outputs) |
| for cache in self.caches.all: |
| await cache.set_prompt(dynamic_prompt, prompt.keys(), is_changed_cache) |
| cache.clean_unused() |
|
|
| cached_nodes = [] |
| for node_id in prompt: |
| if self.caches.outputs.get(node_id) is not None: |
| cached_nodes.append(node_id) |
|
|
| comfy.model_management.cleanup_models_gc() |
| self.add_message("execution_cached", |
| { "nodes": cached_nodes, "prompt_id": prompt_id}, |
| broadcast=False) |
| pending_subgraph_results = {} |
| pending_async_nodes = {} |
| executed = set() |
| execution_list = ExecutionList(dynamic_prompt, self.caches.outputs) |
| current_outputs = self.caches.outputs.all_node_ids() |
| for node_id in list(execute_outputs): |
| execution_list.add_node(node_id) |
|
|
| while not execution_list.is_empty(): |
| node_id, error, ex = await execution_list.stage_node_execution() |
| if error is not None: |
| self.handle_execution_error(prompt_id, dynamic_prompt.original_prompt, current_outputs, executed, error, ex) |
| break |
|
|
| assert node_id is not None, "Node ID should not be None at this point" |
| result, error, ex = await execute(self.server, dynamic_prompt, self.caches, node_id, extra_data, executed, prompt_id, execution_list, pending_subgraph_results, pending_async_nodes) |
| self.success = result != ExecutionResult.FAILURE |
| if result == ExecutionResult.FAILURE: |
| self.handle_execution_error(prompt_id, dynamic_prompt.original_prompt, current_outputs, executed, error, ex) |
| break |
| elif result == ExecutionResult.PENDING: |
| execution_list.unstage_node_execution() |
| else: |
| execution_list.complete_node_execution() |
| else: |
| |
| self.add_message("execution_success", { "prompt_id": prompt_id }, broadcast=False) |
|
|
| ui_outputs = {} |
| meta_outputs = {} |
| all_node_ids = self.caches.ui.all_node_ids() |
| for node_id in all_node_ids: |
| ui_info = self.caches.ui.get(node_id) |
| if ui_info is not None: |
| ui_outputs[node_id] = ui_info["output"] |
| meta_outputs[node_id] = ui_info["meta"] |
| self.history_result = { |
| "outputs": ui_outputs, |
| "meta": meta_outputs, |
| } |
| self.server.last_node_id = None |
| if comfy.model_management.DISABLE_SMART_MEMORY: |
| comfy.model_management.unload_all_models() |
|
|
|
|
| async def validate_inputs(prompt_id, prompt, item, validated): |
| unique_id = item |
| if unique_id in validated: |
| return validated[unique_id] |
|
|
| inputs = prompt[unique_id]['inputs'] |
| class_type = prompt[unique_id]['class_type'] |
| obj_class = nodes.NODE_CLASS_MAPPINGS[class_type] |
|
|
| class_inputs = obj_class.INPUT_TYPES() |
| valid_inputs = set(class_inputs.get('required',{})).union(set(class_inputs.get('optional',{}))) |
|
|
| errors = [] |
| valid = True |
|
|
| validate_function_inputs = [] |
| validate_has_kwargs = False |
| if issubclass(obj_class, _ComfyNodeInternal): |
| validate_function_name = "validate_inputs" |
| validate_function = first_real_override(obj_class, validate_function_name) |
| else: |
| validate_function_name = "VALIDATE_INPUTS" |
| validate_function = getattr(obj_class, validate_function_name, None) |
| if validate_function is not None: |
| argspec = inspect.getfullargspec(validate_function) |
| validate_function_inputs = argspec.args |
| validate_has_kwargs = argspec.varkw is not None |
| received_types = {} |
|
|
| for x in valid_inputs: |
| input_type, input_category, extra_info = get_input_info(obj_class, x, class_inputs) |
| assert extra_info is not None |
| if x not in inputs: |
| if input_category == "required": |
| error = { |
| "type": "required_input_missing", |
| "message": "Required input is missing", |
| "details": f"{x}", |
| "extra_info": { |
| "input_name": x |
| } |
| } |
| errors.append(error) |
| continue |
|
|
| val = inputs[x] |
| info = (input_type, extra_info) |
| if isinstance(val, list): |
| if len(val) != 2: |
| error = { |
| "type": "bad_linked_input", |
| "message": "Bad linked input, must be a length-2 list of [node_id, slot_index]", |
| "details": f"{x}", |
| "extra_info": { |
| "input_name": x, |
| "input_config": info, |
| "received_value": val |
| } |
| } |
| errors.append(error) |
| continue |
|
|
| o_id = val[0] |
| o_class_type = prompt[o_id]['class_type'] |
| r = nodes.NODE_CLASS_MAPPINGS[o_class_type].RETURN_TYPES |
| received_type = r[val[1]] |
| received_types[x] = received_type |
| if 'input_types' not in validate_function_inputs and not validate_node_input(received_type, input_type): |
| details = f"{x}, received_type({received_type}) mismatch input_type({input_type})" |
| error = { |
| "type": "return_type_mismatch", |
| "message": "Return type mismatch between linked nodes", |
| "details": details, |
| "extra_info": { |
| "input_name": x, |
| "input_config": info, |
| "received_type": received_type, |
| "linked_node": val |
| } |
| } |
| errors.append(error) |
| continue |
| try: |
| r = await validate_inputs(prompt_id, prompt, o_id, validated) |
| if r[0] is False: |
| |
| valid = False |
| continue |
| except Exception as ex: |
| typ, _, tb = sys.exc_info() |
| valid = False |
| exception_type = full_type_name(typ) |
| reasons = [{ |
| "type": "exception_during_inner_validation", |
| "message": "Exception when validating inner node", |
| "details": str(ex), |
| "extra_info": { |
| "input_name": x, |
| "input_config": info, |
| "exception_message": str(ex), |
| "exception_type": exception_type, |
| "traceback": traceback.format_tb(tb), |
| "linked_node": val |
| } |
| }] |
| validated[o_id] = (False, reasons, o_id) |
| continue |
| else: |
| try: |
| |
| |
| |
| if isinstance(val, dict) and "__value__" in val: |
| val = val["__value__"] |
| inputs[x] = val |
|
|
| if input_type == "INT": |
| val = int(val) |
| inputs[x] = val |
| if input_type == "FLOAT": |
| val = float(val) |
| inputs[x] = val |
| if input_type == "STRING": |
| val = str(val) |
| inputs[x] = val |
| if input_type == "BOOLEAN": |
| val = bool(val) |
| inputs[x] = val |
| except Exception as ex: |
| error = { |
| "type": "invalid_input_type", |
| "message": f"Failed to convert an input value to a {input_type} value", |
| "details": f"{x}, {val}, {ex}", |
| "extra_info": { |
| "input_name": x, |
| "input_config": info, |
| "received_value": val, |
| "exception_message": str(ex) |
| } |
| } |
| errors.append(error) |
| continue |
|
|
| if x not in validate_function_inputs and not validate_has_kwargs: |
| if "min" in extra_info and val < extra_info["min"]: |
| error = { |
| "type": "value_smaller_than_min", |
| "message": "Value {} smaller than min of {}".format(val, extra_info["min"]), |
| "details": f"{x}", |
| "extra_info": { |
| "input_name": x, |
| "input_config": info, |
| "received_value": val, |
| } |
| } |
| errors.append(error) |
| continue |
| if "max" in extra_info and val > extra_info["max"]: |
| error = { |
| "type": "value_bigger_than_max", |
| "message": "Value {} bigger than max of {}".format(val, extra_info["max"]), |
| "details": f"{x}", |
| "extra_info": { |
| "input_name": x, |
| "input_config": info, |
| "received_value": val, |
| } |
| } |
| errors.append(error) |
| continue |
|
|
| if isinstance(input_type, list): |
| combo_options = input_type |
| if val not in combo_options: |
| input_config = info |
| list_info = "" |
|
|
| |
| |
| if len(combo_options) > 20: |
| list_info = f"(list of length {len(combo_options)})" |
| input_config = None |
| else: |
| list_info = str(combo_options) |
|
|
| error = { |
| "type": "value_not_in_list", |
| "message": "Value not in list", |
| "details": f"{x}: '{val}' not in {list_info}", |
| "extra_info": { |
| "input_name": x, |
| "input_config": input_config, |
| "received_value": val, |
| } |
| } |
| errors.append(error) |
| continue |
|
|
| if len(validate_function_inputs) > 0 or validate_has_kwargs: |
| input_data_all, _, hidden_inputs = get_input_data(inputs, obj_class, unique_id) |
| input_filtered = {} |
| for x in input_data_all: |
| if x in validate_function_inputs or validate_has_kwargs: |
| input_filtered[x] = input_data_all[x] |
| if 'input_types' in validate_function_inputs: |
| input_filtered['input_types'] = [received_types] |
|
|
| ret = await _async_map_node_over_list(prompt_id, unique_id, obj_class, input_filtered, validate_function_name, hidden_inputs=hidden_inputs) |
| ret = await resolve_map_node_over_list_results(ret) |
| for x in input_filtered: |
| for i, r in enumerate(ret): |
| if r is not True and not isinstance(r, ExecutionBlocker): |
| details = f"{x}" |
| if r is not False: |
| details += f" - {str(r)}" |
|
|
| error = { |
| "type": "custom_validation_failed", |
| "message": "Custom validation failed for node", |
| "details": details, |
| "extra_info": { |
| "input_name": x, |
| } |
| } |
| errors.append(error) |
| continue |
|
|
| if len(errors) > 0 or valid is not True: |
| ret = (False, errors, unique_id) |
| else: |
| ret = (True, [], unique_id) |
|
|
| validated[unique_id] = ret |
| return ret |
|
|
| def full_type_name(klass): |
| module = klass.__module__ |
| if module == 'builtins': |
| return klass.__qualname__ |
| return module + '.' + klass.__qualname__ |
|
|
| async def validate_prompt(prompt_id, prompt, partial_execution_list: Union[list[str], None]): |
| outputs = set() |
| for x in prompt: |
| if 'class_type' not in prompt[x]: |
| error = { |
| "type": "invalid_prompt", |
| "message": "Cannot execute because a node is missing the class_type property.", |
| "details": f"Node ID '#{x}'", |
| "extra_info": {} |
| } |
| return (False, error, [], {}) |
|
|
| class_type = prompt[x]['class_type'] |
| class_ = nodes.NODE_CLASS_MAPPINGS.get(class_type, None) |
| if class_ is None: |
| error = { |
| "type": "invalid_prompt", |
| "message": f"Cannot execute because node {class_type} does not exist.", |
| "details": f"Node ID '#{x}'", |
| "extra_info": {} |
| } |
| return (False, error, [], {}) |
|
|
| if hasattr(class_, 'OUTPUT_NODE') and class_.OUTPUT_NODE is True: |
| if partial_execution_list is None or x in partial_execution_list: |
| outputs.add(x) |
|
|
| if len(outputs) == 0: |
| error = { |
| "type": "prompt_no_outputs", |
| "message": "Prompt has no outputs", |
| "details": "", |
| "extra_info": {} |
| } |
| return (False, error, [], {}) |
|
|
| good_outputs = set() |
| errors = [] |
| node_errors = {} |
| validated = {} |
| for o in outputs: |
| valid = False |
| reasons = [] |
| try: |
| m = await validate_inputs(prompt_id, prompt, o, validated) |
| valid = m[0] |
| reasons = m[1] |
| except Exception as ex: |
| typ, _, tb = sys.exc_info() |
| valid = False |
| exception_type = full_type_name(typ) |
| reasons = [{ |
| "type": "exception_during_validation", |
| "message": "Exception when validating node", |
| "details": str(ex), |
| "extra_info": { |
| "exception_type": exception_type, |
| "traceback": traceback.format_tb(tb) |
| } |
| }] |
| validated[o] = (False, reasons, o) |
|
|
| if valid is True: |
| good_outputs.add(o) |
| else: |
| logging.error(f"Failed to validate prompt for output {o}:") |
| if len(reasons) > 0: |
| logging.error("* (prompt):") |
| for reason in reasons: |
| logging.error(f" - {reason['message']}: {reason['details']}") |
| errors += [(o, reasons)] |
| for node_id, result in validated.items(): |
| valid = result[0] |
| reasons = result[1] |
| |
| |
| |
| if valid is not True and len(reasons) > 0: |
| if node_id not in node_errors: |
| class_type = prompt[node_id]['class_type'] |
| node_errors[node_id] = { |
| "errors": reasons, |
| "dependent_outputs": [], |
| "class_type": class_type |
| } |
| logging.error(f"* {class_type} {node_id}:") |
| for reason in reasons: |
| logging.error(f" - {reason['message']}: {reason['details']}") |
| node_errors[node_id]["dependent_outputs"].append(o) |
| logging.error("Output will be ignored") |
|
|
| if len(good_outputs) == 0: |
| errors_list = [] |
| for o, errors in errors: |
| for error in errors: |
| errors_list.append(f"{error['message']}: {error['details']}") |
| errors_list = "\n".join(errors_list) |
|
|
| error = { |
| "type": "prompt_outputs_failed_validation", |
| "message": "Prompt outputs failed validation", |
| "details": errors_list, |
| "extra_info": {} |
| } |
|
|
| return (False, error, list(good_outputs), node_errors) |
|
|
| return (True, None, list(good_outputs), node_errors) |
|
|
| MAXIMUM_HISTORY_SIZE = 10000 |
|
|
| class PromptQueue: |
| def __init__(self, server): |
| self.server = server |
| self.mutex = threading.RLock() |
| self.not_empty = threading.Condition(self.mutex) |
| self.task_counter = 0 |
| self.queue = [] |
| self.currently_running = {} |
| self.history = {} |
| self.flags = {} |
|
|
| def put(self, item): |
| with self.mutex: |
| heapq.heappush(self.queue, item) |
| self.server.queue_updated() |
| self.not_empty.notify() |
|
|
| def get(self, timeout=None): |
| with self.not_empty: |
| while len(self.queue) == 0: |
| self.not_empty.wait(timeout=timeout) |
| if timeout is not None and len(self.queue) == 0: |
| return None |
| item = heapq.heappop(self.queue) |
| i = self.task_counter |
| self.currently_running[i] = copy.deepcopy(item) |
| self.task_counter += 1 |
| self.server.queue_updated() |
| return (item, i) |
|
|
| class ExecutionStatus(NamedTuple): |
| status_str: Literal['success', 'error'] |
| completed: bool |
| messages: List[str] |
|
|
| def task_done(self, item_id, history_result, |
| status: Optional['PromptQueue.ExecutionStatus']): |
| with self.mutex: |
| prompt = self.currently_running.pop(item_id) |
| if len(self.history) > MAXIMUM_HISTORY_SIZE: |
| self.history.pop(next(iter(self.history))) |
|
|
| status_dict: Optional[dict] = None |
| if status is not None: |
| status_dict = copy.deepcopy(status._asdict()) |
|
|
| |
| for sensitive_val in SENSITIVE_EXTRA_DATA_KEYS: |
| if sensitive_val in prompt[3]: |
| prompt[3].pop(sensitive_val) |
|
|
| self.history[prompt[1]] = { |
| "prompt": prompt, |
| "outputs": {}, |
| 'status': status_dict, |
| } |
| self.history[prompt[1]].update(history_result) |
| self.server.queue_updated() |
|
|
| |
| def get_current_queue(self): |
| with self.mutex: |
| out = [] |
| for x in self.currently_running.values(): |
| out += [x] |
| return (out, copy.deepcopy(self.queue)) |
|
|
| |
| def get_current_queue_volatile(self): |
| with self.mutex: |
| running = [x for x in self.currently_running.values()] |
| queued = copy.copy(self.queue) |
| return (running, queued) |
|
|
| def get_tasks_remaining(self): |
| with self.mutex: |
| return len(self.queue) + len(self.currently_running) |
|
|
| def wipe_queue(self): |
| with self.mutex: |
| self.queue = [] |
| self.server.queue_updated() |
|
|
| def delete_queue_item(self, function): |
| with self.mutex: |
| for x in range(len(self.queue)): |
| if function(self.queue[x]): |
| if len(self.queue) == 1: |
| self.wipe_queue() |
| else: |
| self.queue.pop(x) |
| heapq.heapify(self.queue) |
| self.server.queue_updated() |
| return True |
| return False |
|
|
| def get_history(self, prompt_id=None, max_items=None, offset=-1, map_function=None): |
| with self.mutex: |
| if prompt_id is None: |
| out = {} |
| i = 0 |
| if offset < 0 and max_items is not None: |
| offset = len(self.history) - max_items |
| for k in self.history: |
| if i >= offset: |
| p = self.history[k] |
| if map_function is not None: |
| p = map_function(p) |
| out[k] = p |
| if max_items is not None and len(out) >= max_items: |
| break |
| i += 1 |
| return out |
| elif prompt_id in self.history: |
| p = self.history[prompt_id] |
| if map_function is None: |
| p = copy.deepcopy(p) |
| else: |
| p = map_function(p) |
| return {prompt_id: p} |
| else: |
| return {} |
|
|
| def wipe_history(self): |
| with self.mutex: |
| self.history = {} |
|
|
| def delete_history_item(self, id_to_delete): |
| with self.mutex: |
| self.history.pop(id_to_delete, None) |
|
|
| def set_flag(self, name, data): |
| with self.mutex: |
| self.flags[name] = data |
| self.not_empty.notify() |
|
|
| def get_flags(self, reset=True): |
| with self.mutex: |
| if reset: |
| ret = self.flags |
| self.flags = {} |
| return ret |
| else: |
| return self.flags.copy() |
|
|