Files
dify/api/services/workflow_generator_service.py
Crazywoola 8809cc036d feat(workflow-generator): enhance the AI auto-creation flow end-to-end (#38175)
Co-authored-by: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
Co-authored-by: autofix-ci[bot] <114827586+autofix-ci[bot]@users.noreply.github.com>
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2026-07-01 02:28:58 +00:00

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7.6 KiB
Python

"""
Workflow generator service.
Thin facade over ``core.workflow.generator.WorkflowGenerator`` that owns the
model-manager / model-instance plumbing. Controllers call this; the pure
domain class never touches the model registry directly.
Pattern mirrors ``LLMGenerator.generate_rule_config`` — see
``core/llm_generator/llm_generator.py`` — but lives in ``services/`` because
the generator output is consumed at the application layer (sync_draft_workflow,
createApp) rather than from inside another workflow.
"""
import logging
from collections.abc import Iterator
from typing import Any
from core.app.app_config.entities import ModelConfig
from core.llm_generator.llm_generator import LLMGenerator
from core.model_manager import ModelInstance, ModelManager
from core.workflow.generator import WorkflowGenerator
from core.workflow.generator.tool_catalogue import build_tool_catalogue, format_tool_catalogue, installed_tool_keys
from core.workflow.generator.types import (
WorkflowGenerateResultDict,
WorkflowGenerationMode,
WorkflowGenerationModeRequest,
)
from graphon.model_runtime.entities.model_entities import ModelType
logger = logging.getLogger(__name__)
class WorkflowGeneratorService:
"""
Coordinates model resolution with the workflow generator domain logic.
Single public method (``generate_workflow_graph``) keeps the surface area
minimal — the cmd+k `/create` flow is the only caller today.
"""
@classmethod
def generate_workflow_graph(
cls,
*,
tenant_id: str,
mode: WorkflowGenerationModeRequest,
instruction: str,
model_config: ModelConfig,
ideal_output: str = "",
current_graph: dict[str, Any] | None = None,
) -> WorkflowGenerateResultDict:
"""
Resolve a model instance for the tenant and run the generator.
``mode`` accepts the ``"auto"`` sentinel — when set, the instruction is
classified into a concrete ``workflow`` / ``advanced-chat`` mode (one
tiny LLM call) before planning so the rest of the pipeline runs against
a concrete mode. The resolved mode is echoed back under the result's
``mode`` key.
``current_graph`` is the existing draft graph for the cmd+k `/refine`
flow — when present the generator refines it instead of creating a new
graph from scratch. ``None`` is the `/create` path.
Errors from the LLM call (auth, quota, invoke) propagate so the
controller can map them to existing HTTP error envelopes (same
envelope as ``/rule-generate``).
"""
resolved_mode = cls._resolve_mode(
tenant_id=tenant_id, mode=mode, instruction=instruction, model_config=model_config
)
model_instance, model_parameters, tool_catalogue_text, installed_tools = cls._resolve_generation_context(
tenant_id=tenant_id, model_config=model_config
)
return WorkflowGenerator.generate_workflow_graph(
model_instance=model_instance,
model_parameters=model_parameters,
provider=model_config.provider,
model_name=model_config.name,
model_mode=model_config.mode.value,
mode=resolved_mode,
instruction=instruction,
ideal_output=ideal_output,
tool_catalogue_text=tool_catalogue_text,
installed_tools=installed_tools,
current_graph=current_graph,
)
@classmethod
def generate_workflow_graph_stream(
cls,
*,
tenant_id: str,
mode: WorkflowGenerationModeRequest,
instruction: str,
model_config: ModelConfig,
ideal_output: str = "",
current_graph: dict[str, Any] | None = None,
) -> Iterator[tuple[str, dict[str, Any]]]:
"""
Streaming sibling of ``generate_workflow_graph``.
Resolves the same model instance / tool catalogue / concrete mode, then
delegates to ``WorkflowGenerator.generate_workflow_graph_stream`` and
yields its ``(event_name, payload)`` tuples through to the controller's
SSE writer. Provider-init / invoke errors raised while resolving the
model instance propagate to the caller (the controller emits them as a
single ``result`` SSE event).
"""
resolved_mode = cls._resolve_mode(
tenant_id=tenant_id, mode=mode, instruction=instruction, model_config=model_config
)
model_instance, model_parameters, tool_catalogue_text, installed_tools = cls._resolve_generation_context(
tenant_id=tenant_id, model_config=model_config
)
yield from WorkflowGenerator.generate_workflow_graph_stream(
model_instance=model_instance,
model_parameters=model_parameters,
provider=model_config.provider,
model_name=model_config.name,
model_mode=model_config.mode.value,
mode=resolved_mode,
instruction=instruction,
ideal_output=ideal_output,
tool_catalogue_text=tool_catalogue_text,
installed_tools=installed_tools,
current_graph=current_graph,
)
@classmethod
def _resolve_mode(
cls,
*,
tenant_id: str,
mode: WorkflowGenerationModeRequest,
instruction: str,
model_config: ModelConfig,
) -> WorkflowGenerationMode:
"""Resolve the request mode into a concrete generation mode.
``"auto"`` triggers a one-word LLM classification using the model the
user already picked; everything else passes through unchanged. The
classifier never raises (defaults to ``advanced-chat``), so ``auto``
never blocks generation.
"""
if mode == "auto":
return LLMGenerator.classify_workflow_mode(
tenant_id=tenant_id, instruction=instruction, model_config=model_config
)
return mode
@classmethod
def _resolve_generation_context(
cls,
*,
tenant_id: str,
model_config: ModelConfig,
) -> tuple[ModelInstance, dict[str, Any], str, set[tuple[str, str]] | None]:
"""Resolve the model instance, completion params, and tool catalogue.
Build the installed-tool catalogue for this tenant so the planner /
builder can pick concrete tools instead of inventing names, AND so the
runner's validator can reject hallucinated tool names BEFORE the user
clicks Apply. A failure here (plugin daemon unreachable, etc.) must not
block generation — log and fall back to the no-tool path, which also
disables tool validation in the runner (``None`` sentinel rather than
empty set, so we don't reject every tool node just because we couldn't
enumerate the catalogue).
"""
model_manager = ModelManager.for_tenant(tenant_id=tenant_id)
model_instance = model_manager.get_model_instance(
tenant_id=tenant_id,
model_type=ModelType.LLM,
provider=model_config.provider,
model=model_config.name,
)
model_parameters: dict[str, Any] = dict(model_config.completion_params or {})
tool_catalogue_text = ""
installed_tools: set[tuple[str, str]] | None = None
try:
entries = build_tool_catalogue(tenant_id)
tool_catalogue_text = format_tool_catalogue(entries)
installed_tools = installed_tool_keys(entries)
except Exception:
logger.exception("Workflow generator: failed to build tool catalogue for tenant %s", tenant_id)
return model_instance, model_parameters, tool_catalogue_text, installed_tools