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# Copyright (c) 2022 Kyle Schouviller (https://github.com/kyle0654)
import copy
import itertools
import uuid
feat(nodes): move all invocation metadata (type, title, tags, category) to decorator
All invocation metadata (type, title, tags and category) are now defined in decorators.
The decorators add the `type: Literal["invocation_type"]: "invocation_type"` field to the invocation.
Category is a new invocation metadata, but it is not used by the frontend just yet.
- `@invocation()` decorator for invocations
```py
@invocation(
"sdxl_compel_prompt",
title="SDXL Prompt",
tags=["sdxl", "compel", "prompt"],
category="conditioning",
)
class SDXLCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
...
```
- `@invocation_output()` decorator for invocation outputs
```py
@invocation_output("clip_skip_output")
class ClipSkipInvocationOutput(BaseInvocationOutput):
...
```
- update invocation docs
- add category to decorator
- regen frontend types
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from typing import Annotated , Any , Optional , Union , get_args , get_origin , get_type_hints
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import networkx as nx
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from pydantic import BaseModel , root_validator , validator
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from pydantic . fields import Field
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# Importing * is bad karma but needed here for node detection
from . . invocations import * # noqa: F401 F403
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from . . invocations . baseinvocation import (
BaseInvocation ,
BaseInvocationOutput ,
feat(nodes): move all invocation metadata (type, title, tags, category) to decorator
All invocation metadata (type, title, tags and category) are now defined in decorators.
The decorators add the `type: Literal["invocation_type"]: "invocation_type"` field to the invocation.
Category is a new invocation metadata, but it is not used by the frontend just yet.
- `@invocation()` decorator for invocations
```py
@invocation(
"sdxl_compel_prompt",
title="SDXL Prompt",
tags=["sdxl", "compel", "prompt"],
category="conditioning",
)
class SDXLCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
...
```
- `@invocation_output()` decorator for invocation outputs
```py
@invocation_output("clip_skip_output")
class ClipSkipInvocationOutput(BaseInvocationOutput):
...
```
- update invocation docs
- add category to decorator
- regen frontend types
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invocation ,
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Input ,
InputField ,
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InvocationContext ,
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OutputField ,
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UIType ,
feat(nodes): move all invocation metadata (type, title, tags, category) to decorator
All invocation metadata (type, title, tags and category) are now defined in decorators.
The decorators add the `type: Literal["invocation_type"]: "invocation_type"` field to the invocation.
Category is a new invocation metadata, but it is not used by the frontend just yet.
- `@invocation()` decorator for invocations
```py
@invocation(
"sdxl_compel_prompt",
title="SDXL Prompt",
tags=["sdxl", "compel", "prompt"],
category="conditioning",
)
class SDXLCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
...
```
- `@invocation_output()` decorator for invocation outputs
```py
@invocation_output("clip_skip_output")
class ClipSkipInvocationOutput(BaseInvocationOutput):
...
```
- update invocation docs
- add category to decorator
- regen frontend types
2023-08-30 08:35:12 +00:00
invocation_output ,
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)
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# in 3.10 this would be "from types import NoneType"
NoneType = type ( None )
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class EdgeConnection ( BaseModel ) :
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node_id : str = Field ( description = " The id of the node for this edge connection " )
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field : str = Field ( description = " The field for this connection " )
def __eq__ ( self , other ) :
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return (
isinstance ( other , self . __class__ )
and getattr ( other , " node_id " , None ) == self . node_id
and getattr ( other , " field " , None ) == self . field
)
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def __hash__ ( self ) :
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return hash ( f " { self . node_id } . { self . field } " )
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class Edge ( BaseModel ) :
source : EdgeConnection = Field ( description = " The connection for the edge ' s from node and field " )
destination : EdgeConnection = Field ( description = " The connection for the edge ' s to node and field " )
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def get_output_field ( node : BaseInvocation , field : str ) - > Any :
node_type = type ( node )
node_outputs = get_type_hints ( node_type . get_output_type ( ) )
node_output_field = node_outputs . get ( field ) or None
return node_output_field
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def get_input_field ( node : BaseInvocation , field : str ) - > Any :
node_type = type ( node )
node_inputs = get_type_hints ( node_type )
node_input_field = node_inputs . get ( field ) or None
return node_input_field
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def is_union_subtype ( t1 , t2 ) :
t1_args = get_args ( t1 )
t2_args = get_args ( t2 )
if not t1_args :
# t1 is a single type
return t1 in t2_args
else :
# t1 is a Union, check that all of its types are in t2_args
return all ( arg in t2_args for arg in t1_args )
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def is_list_or_contains_list ( t ) :
t_args = get_args ( t )
# If the type is a List
if get_origin ( t ) is list :
return True
# If the type is a Union
elif t_args :
# Check if any of the types in the Union is a List
for arg in t_args :
if get_origin ( arg ) is list :
return True
return False
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def are_connection_types_compatible ( from_type : Any , to_type : Any ) - > bool :
if not from_type :
return False
if not to_type :
return False
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# TODO: this is pretty forgiving on generic types. Clean that up (need to handle optionals and such)
if from_type and to_type :
# Ports are compatible
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if (
from_type == to_type
or from_type == Any
or to_type == Any
or Any in get_args ( from_type )
or Any in get_args ( to_type )
) :
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return True
if from_type in get_args ( to_type ) :
return True
if to_type in get_args ( from_type ) :
return True
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# if not issubclass(from_type, to_type):
if not is_union_subtype ( from_type , to_type ) :
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return False
else :
return False
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return True
def are_connections_compatible (
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from_node : BaseInvocation , from_field : str , to_node : BaseInvocation , to_field : str
) - > bool :
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""" Determines if a connection between fields of two nodes is compatible. """
# TODO: handle iterators and collectors
from_node_field = get_output_field ( from_node , from_field )
to_node_field = get_input_field ( to_node , to_field )
return are_connection_types_compatible ( from_node_field , to_node_field )
class NodeAlreadyInGraphError ( Exception ) :
pass
class InvalidEdgeError ( Exception ) :
pass
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class NodeNotFoundError ( Exception ) :
pass
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class NodeAlreadyExecutedError ( Exception ) :
pass
# TODO: Create and use an Empty output?
feat(nodes): move all invocation metadata (type, title, tags, category) to decorator
All invocation metadata (type, title, tags and category) are now defined in decorators.
The decorators add the `type: Literal["invocation_type"]: "invocation_type"` field to the invocation.
Category is a new invocation metadata, but it is not used by the frontend just yet.
- `@invocation()` decorator for invocations
```py
@invocation(
"sdxl_compel_prompt",
title="SDXL Prompt",
tags=["sdxl", "compel", "prompt"],
category="conditioning",
)
class SDXLCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
...
```
- `@invocation_output()` decorator for invocation outputs
```py
@invocation_output("clip_skip_output")
class ClipSkipInvocationOutput(BaseInvocationOutput):
...
```
- update invocation docs
- add category to decorator
- regen frontend types
2023-08-30 08:35:12 +00:00
@invocation_output ( " graph_output " )
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class GraphInvocationOutput ( BaseInvocationOutput ) :
feat(nodes): move all invocation metadata (type, title, tags, category) to decorator
All invocation metadata (type, title, tags and category) are now defined in decorators.
The decorators add the `type: Literal["invocation_type"]: "invocation_type"` field to the invocation.
Category is a new invocation metadata, but it is not used by the frontend just yet.
- `@invocation()` decorator for invocations
```py
@invocation(
"sdxl_compel_prompt",
title="SDXL Prompt",
tags=["sdxl", "compel", "prompt"],
category="conditioning",
)
class SDXLCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
...
```
- `@invocation_output()` decorator for invocation outputs
```py
@invocation_output("clip_skip_output")
class ClipSkipInvocationOutput(BaseInvocationOutput):
...
```
- update invocation docs
- add category to decorator
- regen frontend types
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pass
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# TODO: Fill this out and move to invocations
feat(nodes): move all invocation metadata (type, title, tags, category) to decorator
All invocation metadata (type, title, tags and category) are now defined in decorators.
The decorators add the `type: Literal["invocation_type"]: "invocation_type"` field to the invocation.
Category is a new invocation metadata, but it is not used by the frontend just yet.
- `@invocation()` decorator for invocations
```py
@invocation(
"sdxl_compel_prompt",
title="SDXL Prompt",
tags=["sdxl", "compel", "prompt"],
category="conditioning",
)
class SDXLCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
...
```
- `@invocation_output()` decorator for invocation outputs
```py
@invocation_output("clip_skip_output")
class ClipSkipInvocationOutput(BaseInvocationOutput):
...
```
- update invocation docs
- add category to decorator
- regen frontend types
2023-08-30 08:35:12 +00:00
@invocation ( " graph " )
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class GraphInvocation ( BaseInvocation ) :
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""" Execute a graph """
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# TODO: figure out how to create a default here
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graph : " Graph " = Field ( description = " The graph to run " , default = None )
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def invoke ( self , context : InvocationContext ) - > GraphInvocationOutput :
""" Invoke with provided services and return outputs. """
return GraphInvocationOutput ( )
feat(nodes): move all invocation metadata (type, title, tags, category) to decorator
All invocation metadata (type, title, tags and category) are now defined in decorators.
The decorators add the `type: Literal["invocation_type"]: "invocation_type"` field to the invocation.
Category is a new invocation metadata, but it is not used by the frontend just yet.
- `@invocation()` decorator for invocations
```py
@invocation(
"sdxl_compel_prompt",
title="SDXL Prompt",
tags=["sdxl", "compel", "prompt"],
category="conditioning",
)
class SDXLCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
...
```
- `@invocation_output()` decorator for invocation outputs
```py
@invocation_output("clip_skip_output")
class ClipSkipInvocationOutput(BaseInvocationOutput):
...
```
- update invocation docs
- add category to decorator
- regen frontend types
2023-08-30 08:35:12 +00:00
@invocation_output ( " iterate_output " )
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class IterateInvocationOutput ( BaseInvocationOutput ) :
""" Used to connect iteration outputs. Will be expanded to a specific output. """
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item : Any = OutputField (
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description = " The item being iterated over " , title = " Collection Item " , ui_type = UIType . CollectionItem
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)
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# TODO: Fill this out and move to invocations
feat(nodes): move all invocation metadata (type, title, tags, category) to decorator
All invocation metadata (type, title, tags and category) are now defined in decorators.
The decorators add the `type: Literal["invocation_type"]: "invocation_type"` field to the invocation.
Category is a new invocation metadata, but it is not used by the frontend just yet.
- `@invocation()` decorator for invocations
```py
@invocation(
"sdxl_compel_prompt",
title="SDXL Prompt",
tags=["sdxl", "compel", "prompt"],
category="conditioning",
)
class SDXLCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
...
```
- `@invocation_output()` decorator for invocation outputs
```py
@invocation_output("clip_skip_output")
class ClipSkipInvocationOutput(BaseInvocationOutput):
...
```
- update invocation docs
- add category to decorator
- regen frontend types
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@invocation ( " iterate " )
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class IterateInvocation ( BaseInvocation ) :
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""" Iterates over a list of items """
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collection : list [ Any ] = InputField (
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description = " The list of items to iterate over " , default_factory = list , ui_type = UIType . Collection
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)
index : int = InputField ( description = " The index, will be provided on executed iterators " , default = 0 , ui_hidden = True )
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def invoke ( self , context : InvocationContext ) - > IterateInvocationOutput :
""" Produces the outputs as values """
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return IterateInvocationOutput ( item = self . collection [ self . index ] )
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feat(nodes): move all invocation metadata (type, title, tags, category) to decorator
All invocation metadata (type, title, tags and category) are now defined in decorators.
The decorators add the `type: Literal["invocation_type"]: "invocation_type"` field to the invocation.
Category is a new invocation metadata, but it is not used by the frontend just yet.
- `@invocation()` decorator for invocations
```py
@invocation(
"sdxl_compel_prompt",
title="SDXL Prompt",
tags=["sdxl", "compel", "prompt"],
category="conditioning",
)
class SDXLCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
...
```
- `@invocation_output()` decorator for invocation outputs
```py
@invocation_output("clip_skip_output")
class ClipSkipInvocationOutput(BaseInvocationOutput):
...
```
- update invocation docs
- add category to decorator
- regen frontend types
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@invocation_output ( " collect_output " )
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class CollectInvocationOutput ( BaseInvocationOutput ) :
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collection : list [ Any ] = OutputField (
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description = " The collection of input items " , title = " Collection " , ui_type = UIType . Collection
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)
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feat(nodes): move all invocation metadata (type, title, tags, category) to decorator
All invocation metadata (type, title, tags and category) are now defined in decorators.
The decorators add the `type: Literal["invocation_type"]: "invocation_type"` field to the invocation.
Category is a new invocation metadata, but it is not used by the frontend just yet.
- `@invocation()` decorator for invocations
```py
@invocation(
"sdxl_compel_prompt",
title="SDXL Prompt",
tags=["sdxl", "compel", "prompt"],
category="conditioning",
)
class SDXLCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
...
```
- `@invocation_output()` decorator for invocation outputs
```py
@invocation_output("clip_skip_output")
class ClipSkipInvocationOutput(BaseInvocationOutput):
...
```
- update invocation docs
- add category to decorator
- regen frontend types
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@invocation ( " collect " )
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class CollectInvocation ( BaseInvocation ) :
""" Collects values into a collection """
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item : Any = InputField (
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description = " The item to collect (all inputs must be of the same type) " ,
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ui_type = UIType . CollectionItem ,
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title = " Collection Item " ,
input = Input . Connection ,
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)
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collection : list [ Any ] = InputField (
description = " The collection, will be provided on execution " , default_factory = list , ui_hidden = True
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)
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def invoke ( self , context : InvocationContext ) - > CollectInvocationOutput :
""" Invoke with provided services and return outputs. """
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return CollectInvocationOutput ( collection = copy . copy ( self . collection ) )
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InvocationsUnion = Union [ BaseInvocation . get_invocations ( ) ] # type: ignore
InvocationOutputsUnion = Union [ BaseInvocationOutput . get_all_subclasses_tuple ( ) ] # type: ignore
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class Graph ( BaseModel ) :
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id : str = Field ( description = " The id of this graph " , default_factory = lambda : uuid . uuid4 ( ) . __str__ ( ) )
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# TODO: use a list (and never use dict in a BaseModel) because pydantic/fastapi hates me
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nodes : dict [ str , Annotated [ InvocationsUnion , Field ( discriminator = " type " ) ] ] = Field (
description = " The nodes in this graph " , default_factory = dict
)
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edges : list [ Edge ] = Field (
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description = " The connections between nodes and their fields in this graph " ,
default_factory = list ,
)
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def add_node ( self , node : BaseInvocation ) - > None :
""" Adds a node to a graph
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: raises NodeAlreadyInGraphError : the node is already present in the graph .
"""
if node . id in self . nodes :
raise NodeAlreadyInGraphError ( )
self . nodes [ node . id ] = node
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def _get_graph_and_node ( self , node_path : str ) - > tuple [ " Graph " , str ] :
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""" Returns the graph and node id for a node path. """
# Materialized graphs may have nodes at the top level
if node_path in self . nodes :
return ( self , node_path )
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node_id = node_path if " . " not in node_path else node_path [ : node_path . index ( " . " ) ]
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if node_id not in self . nodes :
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raise NodeNotFoundError ( f " Node { node_path } not found in graph " )
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node = self . nodes [ node_id ]
if not isinstance ( node , GraphInvocation ) :
# There's more node path left but this isn't a graph - failure
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raise NodeNotFoundError ( " Node path terminated early at a non-graph node " )
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return node . graph . _get_graph_and_node ( node_path [ node_path . index ( " . " ) + 1 : ] )
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def delete_node ( self , node_path : str ) - > None :
""" Deletes a node from a graph """
try :
graph , node_id = self . _get_graph_and_node ( node_path )
# Delete edges for this node
input_edges = self . _get_input_edges_and_graphs ( node_path )
output_edges = self . _get_output_edges_and_graphs ( node_path )
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for edge_graph , _ , edge in input_edges :
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edge_graph . delete_edge ( edge )
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for edge_graph , _ , edge in output_edges :
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edge_graph . delete_edge ( edge )
del graph . nodes [ node_id ]
except NodeNotFoundError :
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pass # Ignore, not doesn't exist (should this throw?)
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def add_edge ( self , edge : Edge ) - > None :
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""" Adds an edge to a graph
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: raises InvalidEdgeError : the provided edge is invalid .
"""
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self . _validate_edge ( edge )
if edge not in self . edges :
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self . edges . append ( edge )
else :
raise InvalidEdgeError ( )
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def delete_edge ( self , edge : Edge ) - > None :
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""" Deletes an edge from a graph """
try :
self . edges . remove ( edge )
except KeyError :
pass
def is_valid ( self ) - > bool :
""" Validates the graph. """
# Validate all subgraphs
for gn in ( n for n in self . nodes . values ( ) if isinstance ( n , GraphInvocation ) ) :
if not gn . graph . is_valid ( ) :
return False
# Validate all edges reference nodes in the graph
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node_ids = set ( [ e . source . node_id for e in self . edges ] + [ e . destination . node_id for e in self . edges ] )
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if not all ( ( self . has_node ( node_id ) for node_id in node_ids ) ) :
return False
# Validate there are no cycles
g = self . nx_graph_flat ( )
if not nx . is_directed_acyclic_graph ( g ) :
return False
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# Validate all edge connections are valid
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if not all (
(
are_connections_compatible (
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self . get_node ( e . source . node_id ) ,
e . source . field ,
self . get_node ( e . destination . node_id ) ,
e . destination . field ,
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)
for e in self . edges
)
) :
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return False
2023-03-03 06:02:00 +00:00
2022-12-01 05:33:20 +00:00
# Validate all iterators
# TODO: may need to validate all iterators in subgraphs so edge connections in parent graphs will be available
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if not all (
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( self . _is_iterator_connection_valid ( n . id ) for n in self . nodes . values ( ) if isinstance ( n , IterateInvocation ) )
2023-03-03 06:02:00 +00:00
) :
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return False
# Validate all collectors
# TODO: may need to validate all collectors in subgraphs so edge connections in parent graphs will be available
2023-03-03 06:02:00 +00:00
if not all (
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( self . _is_collector_connection_valid ( n . id ) for n in self . nodes . values ( ) if isinstance ( n , CollectInvocation ) )
2023-03-03 06:02:00 +00:00
) :
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return False
2023-03-03 06:02:00 +00:00
2022-12-01 05:33:20 +00:00
return True
2023-03-03 06:02:00 +00:00
2023-04-14 06:41:06 +00:00
def _validate_edge ( self , edge : Edge ) :
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""" Validates that a new edge doesn ' t create a cycle in the graph """
# Validate that the nodes exist (edges may contain node paths, so we can't just check for nodes directly)
try :
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from_node = self . get_node ( edge . source . node_id )
to_node = self . get_node ( edge . destination . node_id )
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except NodeNotFoundError :
Feat/easy param (#3504)
* Testing change to LatentsToText to allow setting different cfg_scale values per diffusion step.
* Adding first attempt at float param easing node, using Penner easing functions.
* Core implementation of ControlNet and MultiControlNet.
* Added support for ControlNet and MultiControlNet to legacy non-nodal Txt2Img in backend/generator. Although backend/generator will likely disappear by v3.x, right now they are very useful for testing core ControlNet and MultiControlNet functionality while node codebase is rapidly evolving.
* Added example of using ControlNet with legacy Txt2Img generator
* Resolving rebase conflict
* Added first controlnet preprocessor node for canny edge detection.
* Initial port of controlnet node support from generator-based TextToImageInvocation node to latent-based TextToLatentsInvocation node
* Switching to ControlField for output from controlnet nodes.
* Resolving conflicts in rebase to origin/main
* Refactored ControlNet nodes so they subclass from PreprocessedControlInvocation, and only need to override run_processor(image) (instead of reimplementing invoke())
* changes to base class for controlnet nodes
* Added HED, LineArt, and OpenPose ControlNet nodes
* Added an additional "raw_processed_image" output port to controlnets, mainly so could route ImageField to a ShowImage node
* Added more preprocessor nodes for:
MidasDepth
ZoeDepth
MLSD
NormalBae
Pidi
LineartAnime
ContentShuffle
Removed pil_output options, ControlNet preprocessors should always output as PIL. Removed diagnostics and other general cleanup.
* Prep for splitting pre-processor and controlnet nodes
* Refactored controlnet nodes: split out controlnet stuff into separate node, stripped controlnet stuff form image processing/analysis nodes.
* Added resizing of controlnet image based on noise latent. Fixes a tensor mismatch issue.
* More rebase repair.
* Added support for using multiple control nets. Unfortunately this breaks direct usage of Control node output port ==> TextToLatent control input port -- passing through a Collect node is now required. Working on fixing this...
* Fixed use of ControlNet control_weight parameter
* Fixed lint-ish formatting error
* Core implementation of ControlNet and MultiControlNet.
* Added first controlnet preprocessor node for canny edge detection.
* Initial port of controlnet node support from generator-based TextToImageInvocation node to latent-based TextToLatentsInvocation node
* Switching to ControlField for output from controlnet nodes.
* Refactored controlnet node to output ControlField that bundles control info.
* changes to base class for controlnet nodes
* Added more preprocessor nodes for:
MidasDepth
ZoeDepth
MLSD
NormalBae
Pidi
LineartAnime
ContentShuffle
Removed pil_output options, ControlNet preprocessors should always output as PIL. Removed diagnostics and other general cleanup.
* Prep for splitting pre-processor and controlnet nodes
* Refactored controlnet nodes: split out controlnet stuff into separate node, stripped controlnet stuff form image processing/analysis nodes.
* Added resizing of controlnet image based on noise latent. Fixes a tensor mismatch issue.
* Cleaning up TextToLatent arg testing
* Cleaning up mistakes after rebase.
* Removed last bits of dtype and and device hardwiring from controlnet section
* Refactored ControNet support to consolidate multiple parameters into data struct. Also redid how multiple controlnets are handled.
* Added support for specifying which step iteration to start using
each ControlNet, and which step to end using each controlnet (specified as fraction of total steps)
* Cleaning up prior to submitting ControlNet PR. Mostly turning off diagnostic printing. Also fixed error when there is no controlnet input.
* Added dependency on controlnet-aux v0.0.3
* Commented out ZoeDetector. Will re-instate once there's a controlnet-aux release that supports it.
* Switched CotrolNet node modelname input from free text to default list of popular ControlNet model names.
* Fix to work with current stable release of controlnet_aux (v0.0.3). Turned of pre-processor params that were added post v0.0.3. Also change defaults for shuffle.
* Refactored most of controlnet code into its own method to declutter TextToLatents.invoke(), and make upcoming integration with LatentsToLatents easier.
* Cleaning up after ControlNet refactor in TextToLatentsInvocation
* Extended node-based ControlNet support to LatentsToLatentsInvocation.
* chore(ui): regen api client
* fix(ui): add value to conditioning field
* fix(ui): add control field type
* fix(ui): fix node ui type hints
* fix(nodes): controlnet input accepts list or single controlnet
* Moved to controlnet_aux v0.0.4, reinstated Zoe controlnet preprocessor. Also in pyproject.toml had to specify downgrade of timm to 0.6.13 _after_ controlnet-aux installs timm >= 0.9.2, because timm >0.6.13 breaks Zoe preprocessor.
* Core implementation of ControlNet and MultiControlNet.
* Added first controlnet preprocessor node for canny edge detection.
* Switching to ControlField for output from controlnet nodes.
* Resolving conflicts in rebase to origin/main
* Refactored ControlNet nodes so they subclass from PreprocessedControlInvocation, and only need to override run_processor(image) (instead of reimplementing invoke())
* changes to base class for controlnet nodes
* Added HED, LineArt, and OpenPose ControlNet nodes
* Added more preprocessor nodes for:
MidasDepth
ZoeDepth
MLSD
NormalBae
Pidi
LineartAnime
ContentShuffle
Removed pil_output options, ControlNet preprocessors should always output as PIL. Removed diagnostics and other general cleanup.
* Prep for splitting pre-processor and controlnet nodes
* Refactored controlnet nodes: split out controlnet stuff into separate node, stripped controlnet stuff form image processing/analysis nodes.
* Added resizing of controlnet image based on noise latent. Fixes a tensor mismatch issue.
* Added support for using multiple control nets. Unfortunately this breaks direct usage of Control node output port ==> TextToLatent control input port -- passing through a Collect node is now required. Working on fixing this...
* Fixed use of ControlNet control_weight parameter
* Core implementation of ControlNet and MultiControlNet.
* Added first controlnet preprocessor node for canny edge detection.
* Initial port of controlnet node support from generator-based TextToImageInvocation node to latent-based TextToLatentsInvocation node
* Switching to ControlField for output from controlnet nodes.
* Refactored controlnet node to output ControlField that bundles control info.
* changes to base class for controlnet nodes
* Added more preprocessor nodes for:
MidasDepth
ZoeDepth
MLSD
NormalBae
Pidi
LineartAnime
ContentShuffle
Removed pil_output options, ControlNet preprocessors should always output as PIL. Removed diagnostics and other general cleanup.
* Prep for splitting pre-processor and controlnet nodes
* Refactored controlnet nodes: split out controlnet stuff into separate node, stripped controlnet stuff form image processing/analysis nodes.
* Added resizing of controlnet image based on noise latent. Fixes a tensor mismatch issue.
* Cleaning up TextToLatent arg testing
* Cleaning up mistakes after rebase.
* Removed last bits of dtype and and device hardwiring from controlnet section
* Refactored ControNet support to consolidate multiple parameters into data struct. Also redid how multiple controlnets are handled.
* Added support for specifying which step iteration to start using
each ControlNet, and which step to end using each controlnet (specified as fraction of total steps)
* Cleaning up prior to submitting ControlNet PR. Mostly turning off diagnostic printing. Also fixed error when there is no controlnet input.
* Commented out ZoeDetector. Will re-instate once there's a controlnet-aux release that supports it.
* Switched CotrolNet node modelname input from free text to default list of popular ControlNet model names.
* Fix to work with current stable release of controlnet_aux (v0.0.3). Turned of pre-processor params that were added post v0.0.3. Also change defaults for shuffle.
* Refactored most of controlnet code into its own method to declutter TextToLatents.invoke(), and make upcoming integration with LatentsToLatents easier.
* Cleaning up after ControlNet refactor in TextToLatentsInvocation
* Extended node-based ControlNet support to LatentsToLatentsInvocation.
* chore(ui): regen api client
* fix(ui): fix node ui type hints
* fix(nodes): controlnet input accepts list or single controlnet
* Added Mediapipe image processor for use as ControlNet preprocessor.
Also hacked in ability to specify HF subfolder when loading ControlNet models from string.
* Fixed bug where MediapipFaceProcessorInvocation was ignoring max_faces and min_confidence params.
* Added nodes for float params: ParamFloatInvocation and FloatCollectionOutput. Also added FloatOutput.
* Added mediapipe install requirement. Should be able to remove once controlnet_aux package adds mediapipe to its requirements.
* Added float to FIELD_TYPE_MAP ins constants.ts
* Progress toward improvement in fieldTemplateBuilder.ts getFieldType()
* Fixed controlnet preprocessors and controlnet handling in TextToLatents to work with revised Image services.
* Cleaning up from merge, re-adding cfg_scale to FIELD_TYPE_MAP
* Making sure cfg_scale of type list[float] can be used in image metadata, to support param easing for cfg_scale
* Fixed math for per-step param easing.
* Added option to show plot of param value at each step
* Just cleaning up after adding param easing plot option, removing vestigial code.
* Modified control_weight ControlNet param to be polistmorphic --
can now be either a single float weight applied for all steps, or a list of floats of size total_steps, that specifies weight for each step.
* Added more informative error message when _validat_edge() throws an error.
* Just improving parm easing bar chart title to include easing type.
* Added requirement for easing-functions package
* Taking out some diagnostic prints.
* Added option to use both easing function and mirror of easing function together.
* Fixed recently introduced problem (when pulled in main), triggered by num_steps in StepParamEasingInvocation not having a default value -- just added default.
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
2023-06-11 06:27:44 +00:00
raise InvalidEdgeError ( " One or both nodes don ' t exist: {edge.source.node_id} -> {edge.destination.node_id} " )
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# Validate that an edge to this node+field doesn't already exist
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input_edges = self . _get_input_edges ( edge . destination . node_id , edge . destination . field )
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if len ( input_edges ) > 0 and not isinstance ( to_node , CollectInvocation ) :
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raise InvalidEdgeError (
f " Edge to node { edge . destination . node_id } field { edge . destination . field } already exists "
)
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# Validate that no cycles would be created
g = self . nx_graph_flat ( )
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g . add_edge ( edge . source . node_id , edge . destination . node_id )
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if not nx . is_directed_acyclic_graph ( g ) :
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raise InvalidEdgeError (
f " Edge creates a cycle in the graph: { edge . source . node_id } -> { edge . destination . node_id } "
)
2023-03-03 06:02:00 +00:00
2022-12-01 05:33:20 +00:00
# Validate that the field types are compatible
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if not are_connections_compatible ( from_node , edge . source . field , to_node , edge . destination . field ) :
raise InvalidEdgeError (
f " Fields are incompatible: cannot connect { edge . source . node_id } . { edge . source . field } to { edge . destination . node_id } . { edge . destination . field } "
)
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# Validate if iterator output type matches iterator input type (if this edge results in both being set)
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if isinstance ( to_node , IterateInvocation ) and edge . destination . field == " collection " :
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if not self . _is_iterator_connection_valid ( edge . destination . node_id , new_input = edge . source ) :
raise InvalidEdgeError (
f " Iterator input type does not match iterator output type: { edge . source . node_id } . { edge . source . field } to { edge . destination . node_id } . { edge . destination . field } "
)
2022-12-01 05:33:20 +00:00
# Validate if iterator input type matches output type (if this edge results in both being set)
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if isinstance ( from_node , IterateInvocation ) and edge . source . field == " item " :
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if not self . _is_iterator_connection_valid ( edge . source . node_id , new_output = edge . destination ) :
raise InvalidEdgeError (
f " Iterator output type does not match iterator input type:, { edge . source . node_id } . { edge . source . field } to { edge . destination . node_id } . { edge . destination . field } "
)
2022-12-01 05:33:20 +00:00
# Validate if collector input type matches output type (if this edge results in both being set)
2023-03-15 06:09:30 +00:00
if isinstance ( to_node , CollectInvocation ) and edge . destination . field == " item " :
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if not self . _is_collector_connection_valid ( edge . destination . node_id , new_input = edge . source ) :
raise InvalidEdgeError (
f " Collector output type does not match collector input type: { edge . source . node_id } . { edge . source . field } to { edge . destination . node_id } . { edge . destination . field } "
)
2022-12-01 05:33:20 +00:00
# Validate if collector output type matches input type (if this edge results in both being set)
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if isinstance ( from_node , CollectInvocation ) and edge . source . field == " collection " :
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if not self . _is_collector_connection_valid ( edge . source . node_id , new_output = edge . destination ) :
raise InvalidEdgeError (
f " Collector input type does not match collector output type: { edge . source . node_id } . { edge . source . field } to { edge . destination . node_id } . { edge . destination . field } "
)
2022-12-01 05:33:20 +00:00
def has_node ( self , node_path : str ) - > bool :
""" Determines whether or not a node exists in the graph. """
try :
n = self . get_node ( node_path )
if n is not None :
return True
else :
return False
except NodeNotFoundError :
return False
def get_node ( self , node_path : str ) - > InvocationsUnion :
""" Gets a node from the graph using a node path. """
# Materialized graphs may have nodes at the top level
graph , node_id = self . _get_graph_and_node ( node_path )
return graph . nodes [ node_id ]
def _get_node_path ( self , node_id : str , prefix : Optional [ str ] = None ) - > str :
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return node_id if prefix is None or prefix == " " else f " { prefix } . { node_id } "
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def update_node ( self , node_path : str , new_node : BaseInvocation ) - > None :
""" Updates a node in the graph. """
graph , node_id = self . _get_graph_and_node ( node_path )
node = graph . nodes [ node_id ]
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# Ensure the node type matches the new node
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if type ( node ) is not type ( new_node ) :
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raise TypeError ( f " Node { node_path } is type { type ( node ) } but new node is type { type ( new_node ) } " )
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# Ensure the new id is either the same or is not in the graph
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prefix = None if " . " not in node_path else node_path [ : node_path . rindex ( " . " ) ]
new_path = self . _get_node_path ( new_node . id , prefix = prefix )
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if new_node . id != node . id and self . has_node ( new_path ) :
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raise NodeAlreadyInGraphError ( " Node with id {new_node.id} already exists in graph " )
2022-12-01 05:33:20 +00:00
# Set the new node in the graph
graph . nodes [ new_node . id ] = new_node
if new_node . id != node . id :
input_edges = self . _get_input_edges_and_graphs ( node_path )
output_edges = self . _get_output_edges_and_graphs ( node_path )
# Delete node and all edges
graph . delete_node ( node_path )
# Create new edges for each input and output
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for graph , _ , edge in input_edges :
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# Remove the graph prefix from the node path
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new_graph_node_path = (
new_node . id
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if " . " not in edge . destination . node_id
else f ' { edge . destination . node_id [ edge . destination . node_id . rindex ( " . " ) : ] } . { new_node . id } '
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)
graph . add_edge (
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Edge (
source = edge . source ,
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destination = EdgeConnection ( node_id = new_graph_node_path , field = edge . destination . field ) ,
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)
)
for graph , _ , edge in output_edges :
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# Remove the graph prefix from the node path
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new_graph_node_path = (
new_node . id
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if " . " not in edge . source . node_id
else f ' { edge . source . node_id [ edge . source . node_id . rindex ( " . " ) : ] } . { new_node . id } '
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)
graph . add_edge (
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Edge (
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source = EdgeConnection ( node_id = new_graph_node_path , field = edge . source . field ) ,
destination = edge . destination ,
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)
)
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def _get_input_edges ( self , node_path : str , field : Optional [ str ] = None ) - > list [ Edge ] :
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""" Gets all input edges for a node """
edges = self . _get_input_edges_and_graphs ( node_path )
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# Filter to edges that match the field
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filtered_edges = ( e for e in edges if field is None or e [ 2 ] . destination . field == field )
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# Create full node paths for each edge
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return [
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Edge (
source = EdgeConnection (
node_id = self . _get_node_path ( e . source . node_id , prefix = prefix ) ,
field = e . source . field ,
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) ,
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destination = EdgeConnection (
node_id = self . _get_node_path ( e . destination . node_id , prefix = prefix ) ,
field = e . destination . field ,
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) ,
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)
for _ , prefix , e in filtered_edges
]
def _get_input_edges_and_graphs (
self , node_path : str , prefix : Optional [ str ] = None
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) - > list [ tuple [ " Graph " , str , Edge ] ] :
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""" Gets all input edges for a node along with the graph they are in and the graph ' s path """
edges = list ( )
# Return any input edges that appear in this graph
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edges . extend ( [ ( self , prefix , e ) for e in self . edges if e . destination . node_id == node_path ] )
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node_id = node_path if " . " not in node_path else node_path [ : node_path . index ( " . " ) ]
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node = self . nodes [ node_id ]
if isinstance ( node , GraphInvocation ) :
graph = node . graph
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graph_path = node . id if prefix is None or prefix == " " else self . _get_node_path ( node . id , prefix = prefix )
graph_edges = graph . _get_input_edges_and_graphs ( node_path [ ( len ( node_id ) + 1 ) : ] , prefix = graph_path )
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edges . extend ( graph_edges )
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return edges
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def _get_output_edges ( self , node_path : str , field : str ) - > list [ Edge ] :
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""" Gets all output edges for a node """
edges = self . _get_output_edges_and_graphs ( node_path )
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# Filter to edges that match the field
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filtered_edges = ( e for e in edges if e [ 2 ] . source . field == field )
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# Create full node paths for each edge
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return [
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Edge (
source = EdgeConnection (
node_id = self . _get_node_path ( e . source . node_id , prefix = prefix ) ,
field = e . source . field ,
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) ,
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destination = EdgeConnection (
node_id = self . _get_node_path ( e . destination . node_id , prefix = prefix ) ,
field = e . destination . field ,
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) ,
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)
for _ , prefix , e in filtered_edges
]
def _get_output_edges_and_graphs (
self , node_path : str , prefix : Optional [ str ] = None
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) - > list [ tuple [ " Graph " , str , Edge ] ] :
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""" Gets all output edges for a node along with the graph they are in and the graph ' s path """
edges = list ( )
# Return any input edges that appear in this graph
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edges . extend ( [ ( self , prefix , e ) for e in self . edges if e . source . node_id == node_path ] )
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node_id = node_path if " . " not in node_path else node_path [ : node_path . index ( " . " ) ]
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node = self . nodes [ node_id ]
if isinstance ( node , GraphInvocation ) :
graph = node . graph
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graph_path = node . id if prefix is None or prefix == " " else self . _get_node_path ( node . id , prefix = prefix )
graph_edges = graph . _get_output_edges_and_graphs ( node_path [ ( len ( node_id ) + 1 ) : ] , prefix = graph_path )
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edges . extend ( graph_edges )
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return edges
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def _is_iterator_connection_valid (
self ,
node_path : str ,
new_input : Optional [ EdgeConnection ] = None ,
new_output : Optional [ EdgeConnection ] = None ,
) - > bool :
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inputs = list ( [ e . source for e in self . _get_input_edges ( node_path , " collection " ) ] )
outputs = list ( [ e . destination for e in self . _get_output_edges ( node_path , " item " ) ] )
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if new_input is not None :
inputs . append ( new_input )
if new_output is not None :
outputs . append ( new_output )
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# Only one input is allowed for iterators
if len ( inputs ) > 1 :
return False
# Get input and output fields (the fields linked to the iterator's input/output)
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input_field = get_output_field ( self . get_node ( inputs [ 0 ] . node_id ) , inputs [ 0 ] . field )
output_fields = list ( [ get_input_field ( self . get_node ( e . node_id ) , e . field ) for e in outputs ] )
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# Input type must be a list
if get_origin ( input_field ) != list :
return False
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# Validate that all outputs match the input type
input_field_item_type = get_args ( input_field ) [ 0 ]
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if not all ( ( are_connection_types_compatible ( input_field_item_type , f ) for f in output_fields ) ) :
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return False
return True
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def _is_collector_connection_valid (
self ,
node_path : str ,
new_input : Optional [ EdgeConnection ] = None ,
new_output : Optional [ EdgeConnection ] = None ,
) - > bool :
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inputs = list ( [ e . source for e in self . _get_input_edges ( node_path , " item " ) ] )
outputs = list ( [ e . destination for e in self . _get_output_edges ( node_path , " collection " ) ] )
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if new_input is not None :
inputs . append ( new_input )
if new_output is not None :
outputs . append ( new_output )
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# Get input and output fields (the fields linked to the iterator's input/output)
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input_fields = list ( [ get_output_field ( self . get_node ( e . node_id ) , e . field ) for e in inputs ] )
output_fields = list ( [ get_input_field ( self . get_node ( e . node_id ) , e . field ) for e in outputs ] )
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# Validate that all inputs are derived from or match a single type
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input_field_types = set (
[
t
for input_field in input_fields
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for t in ( [ input_field ] if get_origin ( input_field ) is None else get_args ( input_field ) )
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if t != NoneType
]
) # Get unique types
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type_tree = nx . DiGraph ( )
type_tree . add_nodes_from ( input_field_types )
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type_tree . add_edges_from ( [ e for e in itertools . permutations ( input_field_types , 2 ) if issubclass ( e [ 1 ] , e [ 0 ] ) ] )
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type_degrees = type_tree . in_degree ( type_tree . nodes )
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if sum ( ( t [ 1 ] == 0 for t in type_degrees ) ) != 1 : # type: ignore
return False # There is more than one root type
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# Get the input root type
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input_root_type = next ( t [ 0 ] for t in type_degrees if t [ 1 ] == 0 ) # type: ignore
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# Verify that all outputs are lists
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# if not all((get_origin(f) == list for f in output_fields)):
# return False
# Verify that all outputs are lists
if not all ( is_list_or_contains_list ( f ) for f in output_fields ) :
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return False
# Verify that all outputs match the input type (are a base class or the same class)
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if not all ( ( issubclass ( input_root_type , get_args ( f ) [ 0 ] ) for f in output_fields ) ) :
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return False
return True
def nx_graph ( self ) - > nx . DiGraph :
""" Returns a NetworkX DiGraph representing the layout of this graph """
# TODO: Cache this?
g = nx . DiGraph ( )
g . add_nodes_from ( [ n for n in self . nodes . keys ( ) ] )
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g . add_edges_from ( set ( [ ( e . source . node_id , e . destination . node_id ) for e in self . edges ] ) )
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return g
def nx_graph_with_data ( self ) - > nx . DiGraph :
""" Returns a NetworkX DiGraph representing the data and layout of this graph """
g = nx . DiGraph ( )
g . add_nodes_from ( [ n for n in self . nodes . items ( ) ] )
g . add_edges_from ( set ( [ ( e . source . node_id , e . destination . node_id ) for e in self . edges ] ) )
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return g
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def nx_graph_flat ( self , nx_graph : Optional [ nx . DiGraph ] = None , prefix : Optional [ str ] = None ) - > nx . DiGraph :
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""" Returns a flattened NetworkX DiGraph, including all subgraphs (but not with iterations expanded) """
g = nx_graph or nx . DiGraph ( )
# Add all nodes from this graph except graph/iteration nodes
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g . add_nodes_from (
[
self . _get_node_path ( n . id , prefix )
for n in self . nodes . values ( )
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if not isinstance ( n , GraphInvocation ) and not isinstance ( n , IterateInvocation )
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]
)
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# Expand graph nodes
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for sgn in ( gn for gn in self . nodes . values ( ) if isinstance ( gn , GraphInvocation ) ) :
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g = sgn . graph . nx_graph_flat ( g , self . _get_node_path ( sgn . id , prefix ) )
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# TODO: figure out if iteration nodes need to be expanded
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unique_edges = set ( [ ( e . source . node_id , e . destination . node_id ) for e in self . edges ] )
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g . add_edges_from ( [ ( self . _get_node_path ( e [ 0 ] , prefix ) , self . _get_node_path ( e [ 1 ] , prefix ) ) for e in unique_edges ] )
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return g
class GraphExecutionState ( BaseModel ) :
""" Tracks the state of a graph execution """
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id : str = Field ( description = " The id of the execution state " , default_factory = lambda : uuid . uuid4 ( ) . __str__ ( ) )
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# TODO: Store a reference to the graph instead of the actual graph?
graph : Graph = Field ( description = " The graph being executed " )
# The graph of materialized nodes
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execution_graph : Graph = Field (
description = " The expanded graph of activated and executed nodes " ,
default_factory = Graph ,
)
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# Nodes that have been executed
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executed : set [ str ] = Field ( description = " The set of node ids that have been executed " , default_factory = set )
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executed_history : list [ str ] = Field (
description = " The list of node ids that have been executed, in order of execution " ,
default_factory = list ,
)
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# The results of executed nodes
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results : dict [ str , Annotated [ InvocationOutputsUnion , Field ( discriminator = " type " ) ] ] = Field (
description = " The results of node executions " , default_factory = dict
)
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# Errors raised when executing nodes
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errors : dict [ str , str ] = Field ( description = " Errors raised when executing nodes " , default_factory = dict )
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# Map of prepared/executed nodes to their original nodes
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prepared_source_mapping : dict [ str , str ] = Field (
description = " The map of prepared nodes to original graph nodes " ,
default_factory = dict ,
)
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# Map of original nodes to prepared nodes
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source_prepared_mapping : dict [ str , set [ str ] ] = Field (
description = " The map of original graph nodes to prepared nodes " ,
default_factory = dict ,
)
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class Config :
schema_extra = {
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" required " : [
" id " ,
" graph " ,
" execution_graph " ,
" executed " ,
" executed_history " ,
" results " ,
" errors " ,
" prepared_source_mapping " ,
" source_prepared_mapping " ,
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]
}
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def next ( self ) - > Optional [ BaseInvocation ] :
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""" Gets the next node ready to execute. """
# TODO: enable multiple nodes to execute simultaneously by tracking currently executing nodes
# possibly with a timeout?
# If there are no prepared nodes, prepare some nodes
next_node = self . _get_next_node ( )
if next_node is None :
prepared_id = self . _prepare ( )
feat(nodes): depth-first execution
There was an issue where for graphs w/ iterations, your images were output all at once, at the very end of processing. So if you canceled halfway through an execution of 10 nodes, you wouldn't get any images - even though you'd completed 5 images' worth of inference.
## Cause
Because graphs executed breadth-first (i.e. depth-by-depth), leaf nodes were necessarily processed last. For image generation graphs, your `LatentsToImage` will be leaf nodes, and be the last depth to be executed.
For example, a `TextToLatents` graph w/ 3 iterations would execute all 3 `TextToLatents` nodes fully before moving to the next depth, where the `LatentsToImage` nodes produce output images, resulting in a node execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
## Solution
This PR makes a two changes to graph execution to execute as deeply as it can along each branch of the graph.
### Eager node preparation
We now prepare as many nodes as possible, instead of just a single node at a time.
We also need to change the conditions in which nodes are prepared. Previously, nodes were prepared only when all of their direct ancestors were executed.
The updated logic prepares nodes that:
- are *not* `Iterate` nodes whose inputs have *not* been executed
- do *not* have any unexecuted `Iterate` ancestor nodes
This results in graphs always being maximally prepared.
### Always execute the deepest prepared node
We now choose the next node to execute by traversing from the bottom of the graph instead of the top, choosing the first node whose inputs are all executed.
This means we always execute the deepest node possible.
## Result
Graphs now execute depth-first, so instead of an execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
... we get an execution order like this:
1. TextToLatents
2. LatentsToImage
3. TextToLatents
4. LatentsToImage
5. TextToLatents
6. LatentsToImage
Immediately after inference, the image is decoded and sent to the gallery.
fixes #3400
2023-06-08 09:51:38 +00:00
# Prepare as many nodes as we can
while prepared_id is not None :
prepared_id = self . _prepare ( )
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next_node = self . _get_next_node ( )
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# Get values from edges
if next_node is not None :
self . _prepare_inputs ( next_node )
# If next is still none, there's no next node, return None
return next_node
def complete ( self , node_id : str , output : InvocationOutputsUnion ) :
""" Marks a node as complete """
if node_id not in self . execution_graph . nodes :
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return # TODO: log error?
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# Mark node as executed
self . executed . add ( node_id )
self . results [ node_id ] = output
# Check if source node is complete (all prepared nodes are complete)
source_node = self . prepared_source_mapping [ node_id ]
prepared_nodes = self . source_prepared_mapping [ source_node ]
if all ( [ n in self . executed for n in prepared_nodes ] ) :
self . executed . add ( source_node )
self . executed_history . append ( source_node )
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def set_node_error ( self , node_id : str , error : str ) :
""" Marks a node as errored """
self . errors [ node_id ] = error
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def is_complete ( self ) - > bool :
""" Returns true if the graph is complete """
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node_ids = set ( self . graph . nx_graph_flat ( ) . nodes )
return self . has_error ( ) or all ( ( k in self . executed for k in node_ids ) )
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def has_error ( self ) - > bool :
""" Returns true if the graph has any errors """
return len ( self . errors ) > 0
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def _create_execution_node ( self , node_path : str , iteration_node_map : list [ tuple [ str , str ] ] ) - > list [ str ] :
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""" Prepares an iteration node and connects all edges, returning the new node id """
node = self . graph . get_node ( node_path )
self_iteration_count = - 1
# If this is an iterator node, we must create a copy for each iteration
if isinstance ( node , IterateInvocation ) :
# Get input collection edge (should error if there are no inputs)
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input_collection_edge = next ( iter ( self . graph . _get_input_edges ( node_path , " collection " ) ) )
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input_collection_prepared_node_id = next (
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n [ 1 ] for n in iteration_node_map if n [ 0 ] == input_collection_edge . source . node_id
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)
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input_collection_prepared_node_output = self . results [ input_collection_prepared_node_id ]
input_collection = getattr ( input_collection_prepared_node_output , input_collection_edge . source . field )
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self_iteration_count = len ( input_collection )
new_nodes = list ( )
if self_iteration_count == 0 :
# TODO: should this raise a warning? It might just happen if an empty collection is input, and should be valid.
return new_nodes
# Get all input edges
input_edges = self . graph . _get_input_edges ( node_path )
# Create new edges for this iteration
# For collect nodes, this may contain multiple inputs to the same field
new_edges = list ( )
for edge in input_edges :
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for input_node_id in ( n [ 1 ] for n in iteration_node_map if n [ 0 ] == edge . source . node_id ) :
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new_edge = Edge (
source = EdgeConnection ( node_id = input_node_id , field = edge . source . field ) ,
destination = EdgeConnection ( node_id = " " , field = edge . destination . field ) ,
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)
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new_edges . append ( new_edge )
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# Create a new node (or one for each iteration of this iterator)
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for i in range ( self_iteration_count ) if self_iteration_count > 0 else [ - 1 ] :
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# Create a new node
new_node = copy . deepcopy ( node )
# Create the node id (use a random uuid)
new_node . id = str ( uuid . uuid4 ( ) )
# Set the iteration index for iteration invocations
if isinstance ( new_node , IterateInvocation ) :
new_node . index = i
# Add to execution graph
self . execution_graph . add_node ( new_node )
self . prepared_source_mapping [ new_node . id ] = node_path
if node_path not in self . source_prepared_mapping :
self . source_prepared_mapping [ node_path ] = set ( )
self . source_prepared_mapping [ node_path ] . add ( new_node . id )
# Add new edges to execution graph
for edge in new_edges :
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new_edge = Edge (
source = edge . source ,
destination = EdgeConnection ( node_id = new_node . id , field = edge . destination . field ) ,
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)
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self . execution_graph . add_edge ( new_edge )
new_nodes . append ( new_node . id )
return new_nodes
def _iterator_graph ( self ) - > nx . DiGraph :
""" Gets a DiGraph with edges to collectors removed so an ancestor search produces all active iterators for any node """
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g = self . graph . nx_graph_flat ( )
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collectors = ( n for n in self . graph . nodes if isinstance ( self . graph . get_node ( n ) , CollectInvocation ) )
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for c in collectors :
g . remove_edges_from ( list ( g . in_edges ( c ) ) )
return g
def _get_node_iterators ( self , node_id : str ) - > list [ str ] :
""" Gets iterators for a node """
g = self . _iterator_graph ( )
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iterators = [ n for n in nx . ancestors ( g , node_id ) if isinstance ( self . graph . get_node ( n ) , IterateInvocation ) ]
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return iterators
def _prepare ( self ) - > Optional [ str ] :
# Get flattened source graph
g = self . graph . nx_graph_flat ( )
feat(nodes): depth-first execution
There was an issue where for graphs w/ iterations, your images were output all at once, at the very end of processing. So if you canceled halfway through an execution of 10 nodes, you wouldn't get any images - even though you'd completed 5 images' worth of inference.
## Cause
Because graphs executed breadth-first (i.e. depth-by-depth), leaf nodes were necessarily processed last. For image generation graphs, your `LatentsToImage` will be leaf nodes, and be the last depth to be executed.
For example, a `TextToLatents` graph w/ 3 iterations would execute all 3 `TextToLatents` nodes fully before moving to the next depth, where the `LatentsToImage` nodes produce output images, resulting in a node execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
## Solution
This PR makes a two changes to graph execution to execute as deeply as it can along each branch of the graph.
### Eager node preparation
We now prepare as many nodes as possible, instead of just a single node at a time.
We also need to change the conditions in which nodes are prepared. Previously, nodes were prepared only when all of their direct ancestors were executed.
The updated logic prepares nodes that:
- are *not* `Iterate` nodes whose inputs have *not* been executed
- do *not* have any unexecuted `Iterate` ancestor nodes
This results in graphs always being maximally prepared.
### Always execute the deepest prepared node
We now choose the next node to execute by traversing from the bottom of the graph instead of the top, choosing the first node whose inputs are all executed.
This means we always execute the deepest node possible.
## Result
Graphs now execute depth-first, so instead of an execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
... we get an execution order like this:
1. TextToLatents
2. LatentsToImage
3. TextToLatents
4. LatentsToImage
5. TextToLatents
6. LatentsToImage
Immediately after inference, the image is decoded and sent to the gallery.
fixes #3400
2023-06-08 09:51:38 +00:00
# Find next node that:
# - was not already prepared
# - is not an iterate node whose inputs have not been executed
# - does not have an unexecuted iterate ancestor
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sorted_nodes = nx . topological_sort ( g )
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next_node_id = next (
(
n
for n in sorted_nodes
feat(nodes): depth-first execution
There was an issue where for graphs w/ iterations, your images were output all at once, at the very end of processing. So if you canceled halfway through an execution of 10 nodes, you wouldn't get any images - even though you'd completed 5 images' worth of inference.
## Cause
Because graphs executed breadth-first (i.e. depth-by-depth), leaf nodes were necessarily processed last. For image generation graphs, your `LatentsToImage` will be leaf nodes, and be the last depth to be executed.
For example, a `TextToLatents` graph w/ 3 iterations would execute all 3 `TextToLatents` nodes fully before moving to the next depth, where the `LatentsToImage` nodes produce output images, resulting in a node execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
## Solution
This PR makes a two changes to graph execution to execute as deeply as it can along each branch of the graph.
### Eager node preparation
We now prepare as many nodes as possible, instead of just a single node at a time.
We also need to change the conditions in which nodes are prepared. Previously, nodes were prepared only when all of their direct ancestors were executed.
The updated logic prepares nodes that:
- are *not* `Iterate` nodes whose inputs have *not* been executed
- do *not* have any unexecuted `Iterate` ancestor nodes
This results in graphs always being maximally prepared.
### Always execute the deepest prepared node
We now choose the next node to execute by traversing from the bottom of the graph instead of the top, choosing the first node whose inputs are all executed.
This means we always execute the deepest node possible.
## Result
Graphs now execute depth-first, so instead of an execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
... we get an execution order like this:
1. TextToLatents
2. LatentsToImage
3. TextToLatents
4. LatentsToImage
5. TextToLatents
6. LatentsToImage
Immediately after inference, the image is decoded and sent to the gallery.
fixes #3400
2023-06-08 09:51:38 +00:00
# exclude nodes that have already been prepared
2023-03-03 06:02:00 +00:00
if n not in self . source_prepared_mapping
feat(nodes): depth-first execution
There was an issue where for graphs w/ iterations, your images were output all at once, at the very end of processing. So if you canceled halfway through an execution of 10 nodes, you wouldn't get any images - even though you'd completed 5 images' worth of inference.
## Cause
Because graphs executed breadth-first (i.e. depth-by-depth), leaf nodes were necessarily processed last. For image generation graphs, your `LatentsToImage` will be leaf nodes, and be the last depth to be executed.
For example, a `TextToLatents` graph w/ 3 iterations would execute all 3 `TextToLatents` nodes fully before moving to the next depth, where the `LatentsToImage` nodes produce output images, resulting in a node execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
## Solution
This PR makes a two changes to graph execution to execute as deeply as it can along each branch of the graph.
### Eager node preparation
We now prepare as many nodes as possible, instead of just a single node at a time.
We also need to change the conditions in which nodes are prepared. Previously, nodes were prepared only when all of their direct ancestors were executed.
The updated logic prepares nodes that:
- are *not* `Iterate` nodes whose inputs have *not* been executed
- do *not* have any unexecuted `Iterate` ancestor nodes
This results in graphs always being maximally prepared.
### Always execute the deepest prepared node
We now choose the next node to execute by traversing from the bottom of the graph instead of the top, choosing the first node whose inputs are all executed.
This means we always execute the deepest node possible.
## Result
Graphs now execute depth-first, so instead of an execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
... we get an execution order like this:
1. TextToLatents
2. LatentsToImage
3. TextToLatents
4. LatentsToImage
5. TextToLatents
6. LatentsToImage
Immediately after inference, the image is decoded and sent to the gallery.
fixes #3400
2023-06-08 09:51:38 +00:00
# exclude iterate nodes whose inputs have not been executed
and not (
isinstance ( self . graph . get_node ( n ) , IterateInvocation ) # `n` is an iterate node...
and not all ( ( e [ 0 ] in self . executed for e in g . in_edges ( n ) ) ) # ...that has unexecuted inputs
)
# exclude nodes who have unexecuted iterate ancestors
and not any (
(
isinstance ( self . graph . get_node ( a ) , IterateInvocation ) # `a` is an iterate ancestor of `n`...
and a not in self . executed # ...that is not executed
for a in nx . ancestors ( g , n ) # for all ancestors `a` of node `n`
)
)
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) ,
None ,
)
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if next_node_id is None :
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return None
# Get all parents of the next node
next_node_parents = [ e [ 0 ] for e in g . in_edges ( next_node_id ) ]
# Create execution nodes
next_node = self . graph . get_node ( next_node_id )
new_node_ids = list ( )
if isinstance ( next_node , CollectInvocation ) :
# Collapse all iterator input mappings and create a single execution node for the collect invocation
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all_iteration_mappings = list (
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itertools . chain ( * ( ( ( s , p ) for p in self . source_prepared_mapping [ s ] ) for s in next_node_parents ) )
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)
# all_iteration_mappings = list(set(itertools.chain(*prepared_parent_mappings)))
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create_results = self . _create_execution_node ( next_node_id , all_iteration_mappings )
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if create_results is not None :
new_node_ids . extend ( create_results )
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else : # Iterators or normal nodes
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# Get all iterator combinations for this node
# Will produce a list of lists of prepared iterator nodes, from which results can be iterated
iterator_nodes = self . _get_node_iterators ( next_node_id )
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iterator_nodes_prepared = [ list ( self . source_prepared_mapping [ n ] ) for n in iterator_nodes ]
iterator_node_prepared_combinations = list ( itertools . product ( * iterator_nodes_prepared ) )
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# Select the correct prepared parents for each iteration
# For every iterator, the parent must either not be a child of that iterator, or must match the prepared iteration for that iterator
# TODO: Handle a node mapping to none
eg = self . execution_graph . nx_graph_flat ( )
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prepared_parent_mappings = [ [ ( n , self . _get_iteration_node ( n , g , eg , it ) ) for n in next_node_parents ] for it in iterator_node_prepared_combinations ] # type: ignore
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# Create execution node for each iteration
for iteration_mappings in prepared_parent_mappings :
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create_results = self . _create_execution_node ( next_node_id , iteration_mappings ) # type: ignore
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if create_results is not None :
new_node_ids . extend ( create_results )
return next ( iter ( new_node_ids ) , None )
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def _get_iteration_node (
self ,
source_node_path : str ,
graph : nx . DiGraph ,
execution_graph : nx . DiGraph ,
prepared_iterator_nodes : list [ str ] ,
) - > Optional [ str ] :
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""" Gets the prepared version of the specified source node that matches every iteration specified """
prepared_nodes = self . source_prepared_mapping [ source_node_path ]
if len ( prepared_nodes ) == 1 :
return next ( iter ( prepared_nodes ) )
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# Check if the requested node is an iterator
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prepared_iterator = next ( ( n for n in prepared_nodes if n in prepared_iterator_nodes ) , None )
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if prepared_iterator is not None :
return prepared_iterator
# Filter to only iterator nodes that are a parent of the specified node, in tuple format (prepared, source)
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iterator_source_node_mapping = [ ( n , self . prepared_source_mapping [ n ] ) for n in prepared_iterator_nodes ]
parent_iterators = [ itn for itn in iterator_source_node_mapping if nx . has_path ( graph , itn [ 1 ] , source_node_path ) ]
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return next (
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( n for n in prepared_nodes if all ( nx . has_path ( execution_graph , pit [ 0 ] , n ) for pit in parent_iterators ) ) ,
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None ,
)
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def _get_next_node ( self ) - > Optional [ BaseInvocation ] :
feat(nodes): depth-first execution
There was an issue where for graphs w/ iterations, your images were output all at once, at the very end of processing. So if you canceled halfway through an execution of 10 nodes, you wouldn't get any images - even though you'd completed 5 images' worth of inference.
## Cause
Because graphs executed breadth-first (i.e. depth-by-depth), leaf nodes were necessarily processed last. For image generation graphs, your `LatentsToImage` will be leaf nodes, and be the last depth to be executed.
For example, a `TextToLatents` graph w/ 3 iterations would execute all 3 `TextToLatents` nodes fully before moving to the next depth, where the `LatentsToImage` nodes produce output images, resulting in a node execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
## Solution
This PR makes a two changes to graph execution to execute as deeply as it can along each branch of the graph.
### Eager node preparation
We now prepare as many nodes as possible, instead of just a single node at a time.
We also need to change the conditions in which nodes are prepared. Previously, nodes were prepared only when all of their direct ancestors were executed.
The updated logic prepares nodes that:
- are *not* `Iterate` nodes whose inputs have *not* been executed
- do *not* have any unexecuted `Iterate` ancestor nodes
This results in graphs always being maximally prepared.
### Always execute the deepest prepared node
We now choose the next node to execute by traversing from the bottom of the graph instead of the top, choosing the first node whose inputs are all executed.
This means we always execute the deepest node possible.
## Result
Graphs now execute depth-first, so instead of an execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
... we get an execution order like this:
1. TextToLatents
2. LatentsToImage
3. TextToLatents
4. LatentsToImage
5. TextToLatents
6. LatentsToImage
Immediately after inference, the image is decoded and sent to the gallery.
fixes #3400
2023-06-08 09:51:38 +00:00
""" Gets the deepest node that is ready to be executed """
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g = self . execution_graph . nx_graph ( )
feat(nodes): depth-first execution
There was an issue where for graphs w/ iterations, your images were output all at once, at the very end of processing. So if you canceled halfway through an execution of 10 nodes, you wouldn't get any images - even though you'd completed 5 images' worth of inference.
## Cause
Because graphs executed breadth-first (i.e. depth-by-depth), leaf nodes were necessarily processed last. For image generation graphs, your `LatentsToImage` will be leaf nodes, and be the last depth to be executed.
For example, a `TextToLatents` graph w/ 3 iterations would execute all 3 `TextToLatents` nodes fully before moving to the next depth, where the `LatentsToImage` nodes produce output images, resulting in a node execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
## Solution
This PR makes a two changes to graph execution to execute as deeply as it can along each branch of the graph.
### Eager node preparation
We now prepare as many nodes as possible, instead of just a single node at a time.
We also need to change the conditions in which nodes are prepared. Previously, nodes were prepared only when all of their direct ancestors were executed.
The updated logic prepares nodes that:
- are *not* `Iterate` nodes whose inputs have *not* been executed
- do *not* have any unexecuted `Iterate` ancestor nodes
This results in graphs always being maximally prepared.
### Always execute the deepest prepared node
We now choose the next node to execute by traversing from the bottom of the graph instead of the top, choosing the first node whose inputs are all executed.
This means we always execute the deepest node possible.
## Result
Graphs now execute depth-first, so instead of an execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
... we get an execution order like this:
1. TextToLatents
2. LatentsToImage
3. TextToLatents
4. LatentsToImage
5. TextToLatents
6. LatentsToImage
Immediately after inference, the image is decoded and sent to the gallery.
fixes #3400
2023-06-08 09:51:38 +00:00
2023-06-09 02:09:52 +00:00
# Depth-first search with pre-order traversal is a depth-first topological sort
sorted_nodes = nx . dfs_preorder_nodes ( g )
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feat(nodes): depth-first execution
There was an issue where for graphs w/ iterations, your images were output all at once, at the very end of processing. So if you canceled halfway through an execution of 10 nodes, you wouldn't get any images - even though you'd completed 5 images' worth of inference.
## Cause
Because graphs executed breadth-first (i.e. depth-by-depth), leaf nodes were necessarily processed last. For image generation graphs, your `LatentsToImage` will be leaf nodes, and be the last depth to be executed.
For example, a `TextToLatents` graph w/ 3 iterations would execute all 3 `TextToLatents` nodes fully before moving to the next depth, where the `LatentsToImage` nodes produce output images, resulting in a node execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
## Solution
This PR makes a two changes to graph execution to execute as deeply as it can along each branch of the graph.
### Eager node preparation
We now prepare as many nodes as possible, instead of just a single node at a time.
We also need to change the conditions in which nodes are prepared. Previously, nodes were prepared only when all of their direct ancestors were executed.
The updated logic prepares nodes that:
- are *not* `Iterate` nodes whose inputs have *not* been executed
- do *not* have any unexecuted `Iterate` ancestor nodes
This results in graphs always being maximally prepared.
### Always execute the deepest prepared node
We now choose the next node to execute by traversing from the bottom of the graph instead of the top, choosing the first node whose inputs are all executed.
This means we always execute the deepest node possible.
## Result
Graphs now execute depth-first, so instead of an execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
... we get an execution order like this:
1. TextToLatents
2. LatentsToImage
3. TextToLatents
4. LatentsToImage
5. TextToLatents
6. LatentsToImage
Immediately after inference, the image is decoded and sent to the gallery.
fixes #3400
2023-06-08 09:51:38 +00:00
next_node = next (
(
n
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for n in sorted_nodes
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if n not in self . executed # the node must not already be executed...
and all ( ( e [ 0 ] in self . executed for e in g . in_edges ( n ) ) ) # ...and all its inputs must be executed
feat(nodes): depth-first execution
There was an issue where for graphs w/ iterations, your images were output all at once, at the very end of processing. So if you canceled halfway through an execution of 10 nodes, you wouldn't get any images - even though you'd completed 5 images' worth of inference.
## Cause
Because graphs executed breadth-first (i.e. depth-by-depth), leaf nodes were necessarily processed last. For image generation graphs, your `LatentsToImage` will be leaf nodes, and be the last depth to be executed.
For example, a `TextToLatents` graph w/ 3 iterations would execute all 3 `TextToLatents` nodes fully before moving to the next depth, where the `LatentsToImage` nodes produce output images, resulting in a node execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
## Solution
This PR makes a two changes to graph execution to execute as deeply as it can along each branch of the graph.
### Eager node preparation
We now prepare as many nodes as possible, instead of just a single node at a time.
We also need to change the conditions in which nodes are prepared. Previously, nodes were prepared only when all of their direct ancestors were executed.
The updated logic prepares nodes that:
- are *not* `Iterate` nodes whose inputs have *not* been executed
- do *not* have any unexecuted `Iterate` ancestor nodes
This results in graphs always being maximally prepared.
### Always execute the deepest prepared node
We now choose the next node to execute by traversing from the bottom of the graph instead of the top, choosing the first node whose inputs are all executed.
This means we always execute the deepest node possible.
## Result
Graphs now execute depth-first, so instead of an execution order like this:
1. TextToLatents
2. TextToLatents
3. TextToLatents
4. LatentsToImage
5. LatentsToImage
6. LatentsToImage
... we get an execution order like this:
1. TextToLatents
2. LatentsToImage
3. TextToLatents
4. LatentsToImage
5. TextToLatents
6. LatentsToImage
Immediately after inference, the image is decoded and sent to the gallery.
fixes #3400
2023-06-08 09:51:38 +00:00
) ,
None ,
)
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if next_node is None :
return None
return self . execution_graph . nodes [ next_node ]
def _prepare_inputs ( self , node : BaseInvocation ) :
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input_edges = [ e for e in self . execution_graph . edges if e . destination . node_id == node . id ]
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if isinstance ( node , CollectInvocation ) :
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output_collection = [
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getattr ( self . results [ edge . source . node_id ] , edge . source . field )
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for edge in input_edges
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if edge . destination . field == " item "
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]
setattr ( node , " collection " , output_collection )
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else :
for edge in input_edges :
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output_value = getattr ( self . results [ edge . source . node_id ] , edge . source . field )
setattr ( node , edge . destination . field , output_value )
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# TODO: Add API for modifying underlying graph that checks if the change will be valid given the current execution state
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def _is_edge_valid ( self , edge : Edge ) - > bool :
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try :
self . graph . _validate_edge ( edge )
except InvalidEdgeError :
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return False
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# Invalid if destination has already been prepared or executed
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if edge . destination . node_id in self . source_prepared_mapping :
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return False
# Otherwise, the edge is valid
return True
def _is_node_updatable ( self , node_id : str ) - > bool :
# The node is updatable as long as it hasn't been prepared or executed
return node_id not in self . source_prepared_mapping
def add_node ( self , node : BaseInvocation ) - > None :
self . graph . add_node ( node )
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def update_node ( self , node_path : str , new_node : BaseInvocation ) - > None :
if not self . _is_node_updatable ( node_path ) :
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raise NodeAlreadyExecutedError (
f " Node { node_path } has already been prepared or executed and cannot be updated "
)
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self . graph . update_node ( node_path , new_node )
def delete_node ( self , node_path : str ) - > None :
if not self . _is_node_updatable ( node_path ) :
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raise NodeAlreadyExecutedError (
f " Node { node_path } has already been prepared or executed and cannot be deleted "
)
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self . graph . delete_node ( node_path )
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def add_edge ( self , edge : Edge ) - > None :
if not self . _is_node_updatable ( edge . destination . node_id ) :
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raise NodeAlreadyExecutedError (
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f " Destination node { edge . destination . node_id } has already been prepared or executed and cannot be linked to "
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)
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self . graph . add_edge ( edge )
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def delete_edge ( self , edge : Edge ) - > None :
if not self . _is_node_updatable ( edge . destination . node_id ) :
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raise NodeAlreadyExecutedError (
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f " Destination node { edge . destination . node_id } has already been prepared or executed and cannot have a source edge deleted "
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)
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self . graph . delete_edge ( edge )
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class ExposedNodeInput ( BaseModel ) :
node_path : str = Field ( description = " The node path to the node with the input " )
field : str = Field ( description = " The field name of the input " )
alias : str = Field ( description = " The alias of the input " )
class ExposedNodeOutput ( BaseModel ) :
node_path : str = Field ( description = " The node path to the node with the output " )
field : str = Field ( description = " The field name of the output " )
alias : str = Field ( description = " The alias of the output " )
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class LibraryGraph ( BaseModel ) :
id : str = Field ( description = " The unique identifier for this library graph " , default_factory = uuid . uuid4 )
graph : Graph = Field ( description = " The graph " )
name : str = Field ( description = " The name of the graph " )
description : str = Field ( description = " The description of the graph " )
exposed_inputs : list [ ExposedNodeInput ] = Field ( description = " The inputs exposed by this graph " , default_factory = list )
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exposed_outputs : list [ ExposedNodeOutput ] = Field (
description = " The outputs exposed by this graph " , default_factory = list
)
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@validator ( " exposed_inputs " , " exposed_outputs " )
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def validate_exposed_aliases ( cls , v ) :
if len ( v ) != len ( set ( i . alias for i in v ) ) :
raise ValueError ( " Duplicate exposed alias " )
return v
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@root_validator
def validate_exposed_nodes ( cls , values ) :
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graph = values [ " graph " ]
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# Validate exposed inputs
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for exposed_input in values [ " exposed_inputs " ] :
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if not graph . has_node ( exposed_input . node_path ) :
raise ValueError ( f " Exposed input node { exposed_input . node_path } does not exist " )
node = graph . get_node ( exposed_input . node_path )
if get_input_field ( node , exposed_input . field ) is None :
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raise ValueError (
f " Exposed input field { exposed_input . field } does not exist on node { exposed_input . node_path } "
)
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# Validate exposed outputs
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for exposed_output in values [ " exposed_outputs " ] :
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if not graph . has_node ( exposed_output . node_path ) :
raise ValueError ( f " Exposed output node { exposed_output . node_path } does not exist " )
node = graph . get_node ( exposed_output . node_path )
if get_output_field ( node , exposed_output . field ) is None :
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raise ValueError (
f " Exposed output field { exposed_output . field } does not exist on node { exposed_output . node_path } "
)
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return values
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GraphInvocation . update_forward_refs ( )