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Author SHA1 Message Date
465d1a95da Merge branch 'master' into fix/validate-node-executable 2026-07-03 09:28:39 +08:00
35c1470935 Update AGENTS.md (#14726) 2026-07-02 15:05:55 -04:00
694815f498 [Partner Nodes] chore(Ideogram): remove IdeogramV1 and IdeogramV2 nodes (#14712)
Signed-off-by: bigcat88 <bigcat88@icloud.com>
Co-authored-by: Alexis Rolland <alexisrolland@hotmail.com>
2026-07-02 08:35:11 +03:00
92594ca84c Update AGENTS.md with more stuff. (#14725) 2026-07-01 21:55:13 -04:00
2c935de1b1 Fix Qwen3-VL tokenizer crash with custom embeddings (#14713) 2026-07-01 21:15:07 +03:00
dd17debce5 Add some more stuff to AGENTS.md (#14704) 2026-07-01 01:51:51 -04:00
50e5270b86 Add AGENTS.md (#14696) 2026-06-30 17:40:33 -04:00
bb131be9e8 ComfyUI v0.27.0 2026-06-30 17:36:02 -04:00
6fca64780c chore: update workflow templates to v0.11.1 (#14698) 2026-06-30 14:28:09 -07:00
6e11828d10 chore: Update nodes categories (#14674) 2026-07-01 05:20:20 +08:00
b70944e710 [Partner Nodes] feat(Google): add Gemini Video Omni node (#14695) 2026-06-30 17:17:53 -04:00
1c59659a2f feat: make asset hashing opt-in via --enable-asset-hashing, off by default (#14663)
Add a --enable-asset-hashing CLI flag (action=store_true, default False)
and plumb it into the two asset-seeder call sites in main.py that
previously hardcoded compute_hashes=True (the startup scan and the
post-job output enqueue). Local runs now skip blake3 hashing unless the
user opts in, avoiding the startup/per-output cost on large models
directories while keeping hashing available for asset-portability
features.

Co-authored-by: Alexis Rolland <alexisrolland@hotmail.com>
2026-06-30 14:13:20 -07:00
d395813bcd Fix memory leak related to int8. (#14697) 2026-06-30 14:08:59 -07:00
8fe0243d97 [Partner Nodes] feat(Google): add Nano Banana 2 Lite model (#14693)
Signed-off-by: bigcat88 <bigcat88@icloud.com>
2026-06-30 11:17:23 -07:00
bf00c39705 Don't instantiate nodes during validation
Addresses review feedback: the V1 executability check fell back to
constructing the node (class_def()) when the FUNCTION method wasn't found on
the class. That runs __init__ during validation, so a constructor's side
effects or failure could be misreported as invalid_node_definition for an
otherwise valid node.

Inspect only the class. No core/extra node defines its FUNCTION method on the
instance, so this loses no real coverage while removing the side-effect risk.

Replace the instance-fallback test with one asserting a node with a raising
__init__ but a valid class-level method still passes validation (i.e. it is
never instantiated).
2026-06-26 16:04:29 -07:00
82c954bd2a Validate that a node is executable before running the prompt
A node whose FUNCTION points at a method that does not exist (e.g. a typo in
a custom node), or a V3 node missing its execute override, was only detected
once that node ran -- after every upstream node had already executed. In a
multi-node workflow the user waited for the whole graph to run up to the
broken node before seeing the error.

validate_prompt already walks every node before execution; add an
executability check there so the error is reported up front and attributed
to the offending node (returned in node_errors), and nothing runs.

The check resolves the V1 FUNCTION method on the class (the common case) and
falls back to an instance, since the runtime invokes it on an instance and a
node may define FUNCTION or its method in __init__. V3 nodes are checked via
their existing VALIDATE_CLASS.

Add tests for V1 typo, V3 typo, good nodes, and a node whose method is
defined in __init__ (must not be falsely rejected).
2026-06-26 15:53:34 -07:00
20 changed files with 693 additions and 643 deletions

272
AGENTS.md Normal file
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@ -0,0 +1,272 @@
## Engineering Style
- Keep changes small and direct. Most fixes should touch the narrowest code path
that explains the bug, performance issue, dtype issue, model-format issue, or
user-facing behavior.
- Change the least amount of files possible. A change that touches many files is
more likely to be a bad change than a good one unless the broader scope is
directly required.
- Prefer practical fixes over broad architecture work. Add abstractions only
when they remove real repeated logic or match an existing ComfyUI pattern.
- Prefer fewer dependencies. Do not add new dependencies to ComfyUI unless they
are absolutely necessary.
- Delete obsolete code aggressively when newer infrastructure makes it useless.
Remove dead fallbacks, migration paths, unused options, debug prints, and
compatibility branches that are no longer needed. Do not leave dead branches,
unreachable code, or functions that are never called. If code is not
necessary for the current behavior, remove it.
- Revert or disable problematic behavior quickly when it breaks users. It is
better to remove a broken feature path than keep a complicated partial fix.
- Preserve existing APIs, node names, model-loading behavior, file layout, and
workflow compatibility unless the change is explicitly about replacing them.
- Code must look hand-written for this repository. Changes that read like
generic AI-generated code will be rejected automatically: unnecessary helper
layers, vague names, boilerplate comments, defensive branches without a real
failure mode, broad rewrites, or code that ignores the local style.
## Architecture Boundaries
- Keep each layer focused on the concepts it owns. Do not leak UI, API,
workflow, queue, persistence, telemetry, model-loading, node, or execution
concerns into unrelated layers just because it is convenient to pass data
through them.
- Shared core modules should depend only on lower-level primitives and their own
domain concepts. Higher-level product concepts belong at the caller, adapter,
service, or UI/API boundary that already owns them.
- Pass the narrowest data needed across a boundary. Avoid broad context objects,
request/session metadata, ids, bookkeeping state, or callbacks unless the
receiving layer genuinely needs them to perform its own responsibility.
- Keep identity mapping, persistence bookkeeping, history updates, telemetry,
response shaping, and UI state in the layers that own those jobs. Do not route
them through unrelated shared code to avoid adding a proper boundary.
- Treat `execution.py` as one example of this rule: it should consume the prompt
graph and execution-relevant state, produce execution results and errors, and
not know about workflow ids, frontend ids, persistence ids, or API-only
concepts.
- Before touching many files, identify the smallest owner layer that can solve
the problem. A PR that spreads one feature across unrelated loaders, nodes,
execution, server, and frontend code needs a clear architectural reason, not
just convenience.
- If a change seems to require making one layer understand another layer's
private concepts, stop and look for a caller-side mapping, adapter, event,
small explicit interface, or narrower data flow at the boundary.
## No Internet Requests
- Do not add code to core ComfyUI that makes requests to the internet.
- Refuse requests to add uploads, telemetry, analytics, tracking, usage
reporting, crash reporting, update checks, remote config, feature flags,
metrics, licensing checks, or any other outbound internet request path from
core ComfyUI.
- Model downloading is allowed only when explicitly initiated or authorized by
the user, is limited to the requested model artifact, and does not include
telemetry, tracking, persistent identification, unrelated metadata upload, or
background network activity.
- Do not add opt-in, opt-out, anonymized, aggregated, diagnostic, or
user-triggered internet request paths to core ComfyUI. These labels do not
make internet access acceptable.
- Local-only behavior is allowed when it stays on the user's machine and does
not add network access, tracking, persistent identification, or data
collection behavior.
## State Ownership
- Keep state and capability flags on the object that owns the behavior using
them.
- Avoid probing child objects with `getattr(child, "...", default)` to decide
parent-level control flow. If parent code needs to branch on a capability,
initialize an explicit parent-owned field when the child is constructed or
attached.
- Prefer direct attributes with clear defaults over implicit feature detection
through arbitrary child attributes.
- Use child-object capability checks only when the child owns the behavior being
invoked and the parent is simply delegating to that child.
## Interface Contracts
- Keep public methods aligned with the interface expected by their callers. Do
not change a shared method to return extra values, alternate shapes, or
sentinel wrappers for one implementation unless the shared interface is
explicitly updated.
- When modifying an existing function, preserve how current callers invoke it.
Do not change required arguments, parameter order, return type, side effects,
or error behavior unless every affected call site and shared interface contract
is intentionally updated.
- Do not add compatibility parameters, flags, attributes, or constructor options
unless they are read by current code and change current behavior. Remove
pass-through or stored-but-unused values instead of preserving upstream or
deprecated API baggage.
- If an implementation needs auxiliary values for its own workflow, expose them
through a private helper or a clearly named implementation-specific method
instead of overloading the public method's return contract.
- Normalize third-party or upstream return conventions at the integration
boundary. Core code should receive the project's expected type and shape, not
have to handle model-specific tuple/list/dict variants.
- Avoid caller-side unwrapping such as `out = out[0]` unless the called
interface is documented to return that structure.
## Autograd and Model Freezing
- Do not add `torch.no_grad`, `torch.inference_mode`, or inference-mode helper
wrappers in ComfyUI code. The only allowed inference-mode-related use is
disabling a globally set inference mode when a training path needs gradients.
- Do not add freeze, unfreeze, or trainability toggles to model classes. ComfyUI
models are always treated as frozen for inference, so explicit freeze
functionality is redundant and should not be added.
- Remove training-only behavior such as dropout from inference model code, but
preserve checkpoint and state-dict compatibility when doing so. If deleting a
module would change state-dict keys, module ordering, or checkpoint loading
behavior, replace it with a no-op such as `nn.Identity` instead of removing the
slot outright.
## Python Style
- Keep imports at module scope. Avoid inline imports unless they are already part
of an established optional-backend probe or are needed to avoid an import
cycle.
- Do not add unnecessary `try`/`except` blocks. Use them for optional dependency,
platform, or backend capability detection only when the program has a useful
fallback. Prefer specific exception types when changing new code.
- Remove any workarounds for PyTorch versions that ComfyUI no longer officially
supports. Deprecated workarounds include catching an exception and rerunning
the same op with the input cast to float. If a workaround does not have a
comment naming the exact PyTorch version or versions that still need it,
remove it.
- Let unsupported model formats, invalid quantization metadata, and bad states
fail with clear errors instead of silently producing lower quality output.
- Match the existing local style in the file you edit. This codebase tolerates
long lines, simple helper functions, module-level state, and direct tensor
operations when they make the code easier to follow.
- Keep comments sparse and useful. Strip useless comments that restate the code
or describe obvious behavior. Short TODOs are fine when they name the concrete
missing follow-up.
## Model, Device, and Memory Behavior
- Treat dtype, device placement, VRAM usage, and offloading behavior as core
correctness concerns. Check CPU, CUDA, ROCm, MPS, DirectML, XPU, NPU, and low
VRAM implications when touching shared execution or loading code.
- Prefer native ComfyUI formats and existing quantization/offload helpers over
adding parallel code paths. Use `comfy.quant_ops`, `comfy.model_management`,
`comfy.memory_management`, `comfy.pinned_memory`, `comfy_aimdo`, and
`comfy-kitchen` helpers where they already solve the problem.
- Use optimized comfy-kitchen ops in places where they improve performance
without changing the expected dtype, device, memory, or interface behavior.
- All models should use the optimized attention function selected by ComfyUI.
Treat optimized backend functions, dispatch helpers, and capability-selected
callables as opaque. Higher-level code must not inspect function identity,
names, modules, or implementation details to decide behavior.
- Apply the same opacity rule to similar patterns beyond attention: callers
should depend on the documented interface and result contract, not on which
backend implementation was selected underneath.
- Do not use custom inference ops that only duplicate an existing op while
upcasting to float32, such as custom RMSNorm variants. Use the generic ComfyUI
ops and/or native torch ops instead.
- If a model class `__init__` has an `operations` parameter, assume
`operations` is never `None`. Do not add fallback branches or default torch
ops for a missing `operations` object.
- Do not add unnecessary parameters to model, model block, or model ops related
classes. Constructor and forward signatures should carry only values that are
actually needed by that object for inference.
- Reuse existing model classes, blocks, ops, and helper modules when appropriate.
Before implementing a new version of a model component, search the existing
model code for a class or helper that already provides the behavior.
- Avoid adding `einops` usage in core inference code. Use native torch tensor
ops such as `reshape`, `view`, `permute`, `transpose`, `flatten`, `unflatten`,
`unsqueeze`, and `squeeze` instead.
- Do not use tensors as general-purpose Python data structures. Keep metadata,
bookkeeping, counters, flags, shape math, padding math, index planning, memory
estimates, and control-flow decisions in plain Python values unless the data
must participate directly in tensor computation. Avoid creating temporary
tensors just to use tensor methods for scalar or structural calculations.
- Avoid unnecessary casts and transfers. Preserve the intended compute dtype,
storage dtype, bias dtype, and original tensor shape metadata.
- Assume inputs to the main model forward are already in the compute dtype by
default, except integer inputs such as some model timestep tensors. Do not add
defensive or convenience casts in model code; it is better for invalid dtype
plumbing to error clearly than to hide it with unnecessary casts.
- Raw model parameters that are not owned by an op and may be initialized in a
dtype different from the compute dtype should be cast at use in forward or
inference code with `comfy.ops.cast_to_input` or
`comfy.model_management.cast_to` to avoid dtype mismatches.
- Model code should not care what dtype it is initialized in, and model
`__init__` methods should not contain workarounds for specific dtypes. Dtype
workaround code, such as making a model work with fp16 compute, belongs in the
execution or model-management layer that owns compute policy.
- Model code should not perform unnecessary device-to-CPU or CPU-to-device
transfers. New allocations must be created on the correct device and dtype;
never allocate on CPU and then move to GPU, or allocate in one dtype and then
convert to another.
- Model code itself should not perform memory management. Loading, unloading,
offloading, device movement, VRAM policy, cache lifetime, and cleanup belong
in the relevant model-management and execution layers, not inside model
implementations.
- Do not add global, module-level, class-level, singleton, or model-owned stores
for tensors or other large memory that persist across executions. Temporary
caches must be scoped to a single execution or forward/encode/decode call:
allocate them in the owning top-level call, pass them explicitly through the
call stack, and let them be discarded when that call returns.
- Follow the Wan VAE temporal cache pattern for temporary caches: create a local
cache such as `feat_map` for the encode/decode operation, pass it into the
blocks that need it, and do not retain it on the model or in global state.
- In model init code, prefer `torch.empty` for parameter/buffer placeholders
that are populated from the model state dict instead of zero-initializing with
`torch.zeros` or similar. If an allocation is not loaded from the state dict
and is useless for inference, do not include it.
- `nn.Parameter` tensors that are stored in and populated from the model state
dict should be initialized with `torch.empty`, not with zero, random, or
otherwise meaningful initialization.
- Model initialization should describe module structure, not fabricate
checkpoint-owned tensor contents. Parameters and buffers that are loaded from
the state dict must not be manually initialized, reassigned, or filled with
fallback values unless that value is actually used when no checkpoint key
exists.
- When slicing large tensors, copy the slice if the sliced tensor's lifetime
exceeds the current function scope. Do not keep a long-lived view into a large
backing tensor when a smaller copy would release memory sooner.
- Use fused or compound torch operations such as `addcmul` when they naturally
match the math. Reducing Python and torch dispatch overhead is a valid
optimization when it does not obscure the code or change dtype/device
behavior.
- Avoid caches that persist across different executions as much as possible.
Persistent caches are acceptable only when they use a very minimal amount of
memory and have a clear ownership and invalidation story.
- When optimizing, favor small measurable changes: fewer allocations, fewer
device transfers, less peak memory, better batching, or use of a faster
existing backend op.
## Nodes and User-Facing Behavior
- Follow existing node conventions: `INPUT_TYPES`, `RETURN_TYPES`, `FUNCTION`,
`CATEGORY`, and registration through the local mapping used by that file.
- Keep node changes backward compatible by default. Add inputs with sensible
defaults and avoid changing output types unless the request requires it.
- Model implementations should add the minimal number of ComfyUI nodes required
to run the model. Reuse existing nodes as much as possible; adapting the model
to work with existing nodes is strongly preferred over creating new nodes.
- Node-level code must not patch model code directly. Any node behavior that
modifies, wraps, hooks, or changes model behavior must go through the model
patcher class instead of reaching into model internals.
- The official mascot of ComfyUI is a very cute anime girl with massive fennec
ears, a big fluffy tail, long blonde wavy hair, and blue eyes. Feel free to
use her in ComfyUI materials, UI text, examples, tests, generated assets, or
comments, but do not disrespect her.
- Warning and info messages should be short and actionable. Remove noisy or
misleading messages rather than adding more logging.
- Documentation and README edits should be concise, factual, and tied to the
changed behavior.
## Commit and Review Habits
- If asked to write commit messages, use short direct subjects like the existing
history: `Fix ...`, `Add ...`, `Support ...`, `Remove ...`, `Update ...`,
`Make ...`, `Use ...`, `Disable ...`, `Bump ...`, or `Revert ...`.
- Keep PR descriptions short and reviewable. State the problem, the behavioral
change, and the tests run; avoid long narrative explanations, implementation
diaries, or exhaustive file-by-file summaries unless the reviewer explicitly
needs that context.
- Prefer one coherent behavioral change per commit. Dependency pins, tests, and
the code that needs them may be in the same commit when they are inseparable.
- In reviews, prioritize real user impact: crashes, wrong dtype/device behavior,
memory regressions, broken model loading, workflow incompatibility, and noisy
or misleading user-facing output.

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@ -240,6 +240,7 @@ database_default_path = os.path.abspath(
)
parser.add_argument("--database-url", type=str, default=f"sqlite:///{database_default_path}", help="Specify the database URL, e.g. for an in-memory database you can use 'sqlite:///:memory:'.")
parser.add_argument("--enable-assets", action="store_true", help="Enable the assets system (API routes, database synchronization, and background scanning).")
parser.add_argument("--enable-asset-hashing", action="store_true", help="Compute blake3 content hashes when scanning assets. Hashing enables future asset-portability features (deduplication, cross-machine model resolution) but adds startup cost and per-output cost on large models directories. Off by default; enable to opt in.")
parser.add_argument("--feature-flag", type=str, action='append', default=[], metavar="KEY[=VALUE]", help="Set a server feature flag. Use KEY=VALUE to set an explicit value, or bare KEY to set it to true. Can be specified multiple times. Boolean values (true/false) and numbers are auto-converted. Examples: --feature-flag show_signin_button=true or --feature-flag show_signin_button")
parser.add_argument("--list-feature-flags", action="store_true", help="Print the registry of known CLI-settable feature flags as JSON and exit.")

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@ -167,7 +167,7 @@ class Qwen3VLTokenizer(sd1_clip.SD1Tokenizer):
embed_count = 0
for r in tokens[key_name]:
for i in range(len(r)):
if r[i][0] == 151655: # <|image_pad|>
if isinstance(r[i][0], (int, float)) and r[i][0] == 151655: # <|image_pad|>
if len(images) > embed_count:
r[i] = ({"type": "image", "data": images[embed_count], "original_type": "image"},) + r[i][1:]
embed_count += 1

View File

@ -121,6 +121,7 @@ class GeminiGenerationConfig(BaseModel):
topK: int | None = Field(None, ge=1)
topP: float | None = Field(None, ge=0.0, le=1.0)
thinkingConfig: GeminiThinkingConfig | None = Field(None)
responseModalities: list[str] | None = Field(None)
class GeminiImageOutputOptions(BaseModel):

View File

@ -33,53 +33,6 @@ class IdeogramColorPalette(
)
class ImageRequest(BaseModel):
aspect_ratio: Optional[str] = Field(
None,
description="Optional. The aspect ratio (e.g., 'ASPECT_16_9', 'ASPECT_1_1'). Cannot be used with resolution. Defaults to 'ASPECT_1_1' if unspecified.",
)
color_palette: Optional[Dict[str, Any]] = Field(
None, description='Optional. Color palette object. Only for V_2, V_2_TURBO.'
)
magic_prompt_option: Optional[str] = Field(
None, description="Optional. MagicPrompt usage ('AUTO', 'ON', 'OFF')."
)
model: str = Field(..., description="The model used (e.g., 'V_2', 'V_2A_TURBO')")
negative_prompt: Optional[str] = Field(
None,
description='Optional. Description of what to exclude. Only for V_1, V_1_TURBO, V_2, V_2_TURBO.',
)
num_images: Optional[int] = Field(
1,
description='Optional. Number of images to generate (1-8). Defaults to 1.',
ge=1,
le=8,
)
prompt: str = Field(
..., description='Required. The prompt to use to generate the image.'
)
resolution: Optional[str] = Field(
None,
description="Optional. Resolution (e.g., 'RESOLUTION_1024_1024'). Only for model V_2. Cannot be used with aspect_ratio.",
)
seed: Optional[int] = Field(
None,
description='Optional. A number between 0 and 2147483647.',
ge=0,
le=2147483647,
)
style_type: Optional[str] = Field(
None,
description="Optional. Style type ('AUTO', 'GENERAL', 'REALISTIC', 'DESIGN', 'RENDER_3D', 'ANIME'). Only for models V_2 and above.",
)
class IdeogramGenerateRequest(BaseModel):
image_request: ImageRequest = Field(
..., description='The image generation request parameters.'
)
class Datum(BaseModel):
is_image_safe: Optional[bool] = Field(
None, description='Indicates whether the image is considered safe.'
@ -113,20 +66,6 @@ class StyleCode(RootModel[str]):
root: str = Field(..., pattern='^[0-9A-Fa-f]{8}$')
class Datum1(BaseModel):
is_image_safe: Optional[bool] = None
prompt: Optional[str] = None
resolution: Optional[str] = None
seed: Optional[int] = None
style_type: Optional[str] = None
url: Optional[str] = None
class IdeogramV3IdeogramResponse(BaseModel):
created: Optional[datetime] = None
data: Optional[List[Datum1]] = None
class RenderingSpeed1(str, Enum):
TURBO = 'TURBO'
DEFAULT = 'DEFAULT'

View File

@ -13,7 +13,7 @@ import torch
from typing_extensions import override
import folder_paths
from comfy_api.latest import IO, ComfyExtension, Input, Types
from comfy_api.latest import IO, ComfyExtension, Input, InputImpl, Types
from comfy_api_nodes.apis.gemini import (
GeminiContent,
GeminiFileData,
@ -37,6 +37,7 @@ from comfy_api_nodes.util import (
audio_to_base64_string,
bytesio_to_image_tensor,
download_url_to_image_tensor,
download_url_to_video_output,
get_number_of_images,
sync_op,
tensor_to_base64_string,
@ -45,6 +46,7 @@ from comfy_api_nodes.util import (
upload_images_to_comfyapi,
upload_video_to_comfyapi,
validate_string,
validate_video_duration,
video_to_base64_string,
)
@ -229,10 +231,29 @@ async def get_image_from_response(response: GeminiGenerateContentResponse, thoug
return torch.cat(image_tensors, dim=0)
async def get_video_from_response(
response: GeminiGenerateContentResponse, cls: type[IO.ComfyNode] | None = None
) -> InputImpl.VideoFromFile:
parts = get_parts_by_type(response, "video/*")
for part in parts:
if part.inlineData and part.inlineData.data:
return InputImpl.VideoFromFile(BytesIO(base64.b64decode(part.inlineData.data)))
if part.fileData and part.fileData.fileUri:
return await download_url_to_video_output(part.fileData.fileUri, cls=cls)
model_message = get_text_from_response(response).strip()
if model_message:
raise ValueError(f"Gemini did not generate a video. Model response: {model_message}")
raise ValueError(
"Gemini did not generate a video. Try rephrasing your prompt, "
"shortening the requested duration, or reducing the number of input images/videos."
)
def calculate_tokens_price(response: GeminiGenerateContentResponse) -> float | None:
if not response.modelVersion:
return None
# Define prices (Cost per 1,000,000 tokens), see https://cloud.google.com/vertex-ai/generative-ai/pricing
output_video_tokens_price = 0.0
if response.modelVersion == "gemini-2.5-pro":
input_tokens_price = 1.25
output_text_tokens_price = 10.0
@ -249,18 +270,27 @@ def calculate_tokens_price(response: GeminiGenerateContentResponse) -> float | N
input_tokens_price = 2
output_text_tokens_price = 12.0
output_image_tokens_price = 0.0
elif response.modelVersion == "gemini-3.1-flash-lite-preview":
elif response.modelVersion in ("gemini-3.1-flash-lite-preview", "gemini-3.1-flash-lite"):
input_tokens_price = 0.25
output_text_tokens_price = 1.50
output_image_tokens_price = 0.0
elif response.modelVersion == "gemini-3-pro-image-preview":
elif response.modelVersion in ("gemini-3-pro-image-preview", "gemini-3-pro-image"):
input_tokens_price = 2
output_text_tokens_price = 12.0
output_image_tokens_price = 120.0
elif response.modelVersion == "gemini-3.1-flash-image-preview":
elif response.modelVersion in ("gemini-3.1-flash-image-preview", "gemini-3.1-flash-image"):
input_tokens_price = 0.5
output_text_tokens_price = 3.0
output_image_tokens_price = 60.0
elif response.modelVersion == "gemini-3.1-flash-lite-image":
input_tokens_price = 0.25
output_text_tokens_price = 1.50
output_image_tokens_price = 30.0
elif response.modelVersion == "gemini-omni-flash-preview":
input_tokens_price = 2.145
output_text_tokens_price = 12.87
output_image_tokens_price = 0.0
output_video_tokens_price = 25.025
else:
return None
final_price = response.usageMetadata.promptTokenCount * input_tokens_price
@ -268,6 +298,8 @@ def calculate_tokens_price(response: GeminiGenerateContentResponse) -> float | N
for i in response.usageMetadata.candidatesTokensDetails:
if i.modality == Modality.IMAGE:
final_price += output_image_tokens_price * i.tokenCount # for Nano Banana models
elif i.modality == Modality.VIDEO:
final_price += output_video_tokens_price * i.tokenCount # for Omni Flash
else:
final_price += output_text_tokens_price * i.tokenCount
if response.usageMetadata.thoughtsTokenCount:
@ -1302,7 +1334,7 @@ class GeminiNanoBanana2(IO.ComfyNode):
)
def _nano_banana_2_v2_model_inputs():
def _nano_banana_2_v2_model_inputs(resolutions: list[str]):
return [
IO.Combo.Input(
"aspect_ratio",
@ -1329,8 +1361,8 @@ def _nano_banana_2_v2_model_inputs():
),
IO.Combo.Input(
"resolution",
options=["1K", "2K", "4K"],
tooltip="Target output resolution. For 2K/4K the native Gemini upscaler is used.",
options=resolutions,
tooltip="Target output resolution.",
),
IO.Combo.Input(
"thinking_level",
@ -1376,7 +1408,11 @@ class GeminiNanoBanana2V2(IO.ComfyNode):
options=[
IO.DynamicCombo.Option(
"Nano Banana 2 (Gemini 3.1 Flash Image)",
_nano_banana_2_v2_model_inputs(),
_nano_banana_2_v2_model_inputs(resolutions=["1K", "2K", "4K"]),
),
IO.DynamicCombo.Option(
"Nano Banana 2 Lite",
_nano_banana_2_v2_model_inputs(resolutions=["1K"]),
),
],
),
@ -1445,9 +1481,13 @@ class GeminiNanoBanana2V2(IO.ComfyNode):
depends_on=IO.PriceBadgeDepends(widgets=["model", "model.resolution"]),
expr="""
(
$r := $lookup(widgets, "model.resolution");
$prices := {"1k": 0.0696, "2k": 0.1014, "4k": 0.154};
{"type":"usd","usd": $lookup($prices, $r), "format":{"suffix":"/Image","approximate":true}}
$contains(widgets.model, "lite")
? {"type":"usd","usd": 0.034, "format":{"suffix":"/Image","approximate":true}}
: (
$r := $lookup(widgets, "model.resolution");
$prices := {"1k": 0.0696, "2k": 0.1014, "4k": 0.154};
{"type":"usd","usd": $lookup($prices, $r), "format":{"suffix":"/Image","approximate":true}}
)
)
""",
),
@ -1468,6 +1508,8 @@ class GeminiNanoBanana2V2(IO.ComfyNode):
model_choice = model["model"]
if model_choice == "Nano Banana 2 (Gemini 3.1 Flash Image)":
model_id = "gemini-3.1-flash-image-preview"
elif model_choice == "Nano Banana 2 Lite":
model_id = "gemini-3.1-flash-lite-image"
else:
model_id = model_choice
@ -1517,6 +1559,149 @@ class GeminiNanoBanana2V2(IO.ComfyNode):
)
OMNI_MAX_IMAGES = 14
OMNI_MAX_VIDEOS = 3
OMNI_MODELS: dict[str, str] = {
"Omni Flash": "gemini-omni-flash-preview",
}
def _omni_flash_inputs() -> list[Input]:
"""Per-model inputs for the Omni video DynamicCombo (prompt + reference media + sampling)."""
return [
IO.String.Input(
"prompt",
multiline=True,
default="",
tooltip="Describe the video to generate. Specify the length and aspect ratio directly in the "
'prompt, e.g. "a 6-second clip in 16:9". Length may be 3-10 seconds; the aspect ratio must be '
"16:9 (landscape) or 9:16 (portrait). The output is 720p, 24 FPS, with audio.",
),
IO.Autogrow.Input(
"images",
template=IO.Autogrow.TemplateNames(
IO.Image.Input("image"),
names=[f"image_{i}" for i in range(1, OMNI_MAX_IMAGES + 1)],
min=0,
),
tooltip=f"Optional reference image(s) to guide or animate the video. Up to {OMNI_MAX_IMAGES} images.",
),
IO.Autogrow.Input(
"videos",
template=IO.Autogrow.TemplateNames(
IO.Video.Input("video"),
names=[f"video_{i}" for i in range(1, OMNI_MAX_VIDEOS + 1)],
min=0,
),
tooltip=f"Optional reference video(s) to guide or edit. Up to {OMNI_MAX_VIDEOS} videos, "
f"each up to 10 seconds long.",
),
IO.Float.Input(
"temperature",
default=1.0,
min=0.0,
max=2.0,
step=0.01,
tooltip="Controls randomness. Lower is more focused/deterministic, higher is more varied.",
advanced=True,
),
IO.Float.Input(
"top_p",
default=0.95,
min=0.0,
max=1.0,
step=0.01,
tooltip="Nucleus sampling: sample from the smallest token set whose cumulative probability reaches top_p.",
advanced=True,
),
]
class GeminiVideoOmni(IO.ComfyNode):
@classmethod
def define_schema(cls):
return IO.Schema(
node_id="GeminiVideoOmni",
display_name="Google Gemini Omni (Video)",
category="partner/video/Gemini",
essentials_category="Video Generation",
description="Generate a video with audio from a text prompt using Google's Gemini Omni Flash model. "
"Optionally provide reference images and/or videos to guide or edit the result. Describe the desired "
"length (3-10s) and aspect ratio (16:9 or 9:16) directly in the prompt.",
inputs=[
IO.DynamicCombo.Input(
"model",
options=[
IO.DynamicCombo.Option("Omni Flash", _omni_flash_inputs()),
],
tooltip="The Gemini video model used to generate the video.",
),
IO.Int.Input(
"seed",
default=42,
min=0,
max=2147483647,
control_after_generate=True,
tooltip="Seed controls whether the node should re-run; "
"results are non-deterministic regardless of seed.",
),
],
outputs=[
IO.Video.Output(),
IO.String.Output(),
],
hidden=[
IO.Hidden.auth_token_comfy_org,
IO.Hidden.api_key_comfy_org,
IO.Hidden.unique_id,
],
is_api_node=True,
price_badge=IO.PriceBadge(
expr='{"type":"usd","usd":0.146,"format":{"suffix":"/second","approximate":true}}'
),
)
@classmethod
async def execute(cls, model: dict, seed: int) -> IO.NodeOutput:
prompt = model.get("prompt") or ""
validate_string(prompt, strip_whitespace=True, min_length=1)
model_id = OMNI_MODELS[model["model"]]
images = [t for t in (model.get("images") or {}).values() if t is not None]
videos = [v for v in (model.get("videos") or {}).values() if v is not None]
if sum(get_number_of_images(t) for t in images) > OMNI_MAX_IMAGES:
raise ValueError(f"The current maximum number of supported images is {OMNI_MAX_IMAGES}.")
if len(videos) > OMNI_MAX_VIDEOS:
raise ValueError(f"The current maximum number of supported videos is {OMNI_MAX_VIDEOS}.")
for video in videos:
validate_video_duration(video, max_duration=10)
parts: list[GeminiPart] = []
if images or videos:
parts.extend(await build_gemini_media_parts(cls, images, [], videos))
parts.append(GeminiPart(text=prompt))
response = await sync_op(
cls,
ApiEndpoint(path=f"{GEMINI_BASE_ENDPOINT}/{model_id}", method="POST"),
data=GeminiGenerateContentRequest(
contents=[GeminiContent(role=GeminiRole.user, parts=parts)],
generationConfig=GeminiGenerationConfig(
responseModalities=["TEXT", "VIDEO"],
temperature=model.get("temperature", 1.0),
topP=model.get("top_p", 0.95),
),
),
response_model=GeminiGenerateContentResponse,
price_extractor=calculate_tokens_price,
)
return IO.NodeOutput(
await get_video_from_response(response, cls=cls),
get_text_from_response(response),
)
class GeminiExtension(ComfyExtension):
@override
async def get_node_list(self) -> list[type[IO.ComfyNode]]:
@ -1527,6 +1712,7 @@ class GeminiExtension(ComfyExtension):
GeminiImage2,
GeminiNanoBanana2,
GeminiNanoBanana2V2,
GeminiVideoOmni,
GeminiInputFiles,
]

View File

@ -5,9 +5,7 @@ from PIL import Image
import numpy as np
import torch
from comfy_api_nodes.apis.ideogram import (
IdeogramGenerateRequest,
IdeogramGenerateResponse,
ImageRequest,
IdeogramV3Request,
IdeogramV3EditRequest,
IdeogramV4Request,
@ -21,101 +19,6 @@ from comfy_api_nodes.util import (
validate_string,
)
V1_V1_RES_MAP = {
"Auto":"AUTO",
"512 x 1536":"RESOLUTION_512_1536",
"576 x 1408":"RESOLUTION_576_1408",
"576 x 1472":"RESOLUTION_576_1472",
"576 x 1536":"RESOLUTION_576_1536",
"640 x 1024":"RESOLUTION_640_1024",
"640 x 1344":"RESOLUTION_640_1344",
"640 x 1408":"RESOLUTION_640_1408",
"640 x 1472":"RESOLUTION_640_1472",
"640 x 1536":"RESOLUTION_640_1536",
"704 x 1152":"RESOLUTION_704_1152",
"704 x 1216":"RESOLUTION_704_1216",
"704 x 1280":"RESOLUTION_704_1280",
"704 x 1344":"RESOLUTION_704_1344",
"704 x 1408":"RESOLUTION_704_1408",
"704 x 1472":"RESOLUTION_704_1472",
"720 x 1280":"RESOLUTION_720_1280",
"736 x 1312":"RESOLUTION_736_1312",
"768 x 1024":"RESOLUTION_768_1024",
"768 x 1088":"RESOLUTION_768_1088",
"768 x 1152":"RESOLUTION_768_1152",
"768 x 1216":"RESOLUTION_768_1216",
"768 x 1232":"RESOLUTION_768_1232",
"768 x 1280":"RESOLUTION_768_1280",
"768 x 1344":"RESOLUTION_768_1344",
"832 x 960":"RESOLUTION_832_960",
"832 x 1024":"RESOLUTION_832_1024",
"832 x 1088":"RESOLUTION_832_1088",
"832 x 1152":"RESOLUTION_832_1152",
"832 x 1216":"RESOLUTION_832_1216",
"832 x 1248":"RESOLUTION_832_1248",
"864 x 1152":"RESOLUTION_864_1152",
"896 x 960":"RESOLUTION_896_960",
"896 x 1024":"RESOLUTION_896_1024",
"896 x 1088":"RESOLUTION_896_1088",
"896 x 1120":"RESOLUTION_896_1120",
"896 x 1152":"RESOLUTION_896_1152",
"960 x 832":"RESOLUTION_960_832",
"960 x 896":"RESOLUTION_960_896",
"960 x 1024":"RESOLUTION_960_1024",
"960 x 1088":"RESOLUTION_960_1088",
"1024 x 640":"RESOLUTION_1024_640",
"1024 x 768":"RESOLUTION_1024_768",
"1024 x 832":"RESOLUTION_1024_832",
"1024 x 896":"RESOLUTION_1024_896",
"1024 x 960":"RESOLUTION_1024_960",
"1024 x 1024":"RESOLUTION_1024_1024",
"1088 x 768":"RESOLUTION_1088_768",
"1088 x 832":"RESOLUTION_1088_832",
"1088 x 896":"RESOLUTION_1088_896",
"1088 x 960":"RESOLUTION_1088_960",
"1120 x 896":"RESOLUTION_1120_896",
"1152 x 704":"RESOLUTION_1152_704",
"1152 x 768":"RESOLUTION_1152_768",
"1152 x 832":"RESOLUTION_1152_832",
"1152 x 864":"RESOLUTION_1152_864",
"1152 x 896":"RESOLUTION_1152_896",
"1216 x 704":"RESOLUTION_1216_704",
"1216 x 768":"RESOLUTION_1216_768",
"1216 x 832":"RESOLUTION_1216_832",
"1232 x 768":"RESOLUTION_1232_768",
"1248 x 832":"RESOLUTION_1248_832",
"1280 x 704":"RESOLUTION_1280_704",
"1280 x 720":"RESOLUTION_1280_720",
"1280 x 768":"RESOLUTION_1280_768",
"1280 x 800":"RESOLUTION_1280_800",
"1312 x 736":"RESOLUTION_1312_736",
"1344 x 640":"RESOLUTION_1344_640",
"1344 x 704":"RESOLUTION_1344_704",
"1344 x 768":"RESOLUTION_1344_768",
"1408 x 576":"RESOLUTION_1408_576",
"1408 x 640":"RESOLUTION_1408_640",
"1408 x 704":"RESOLUTION_1408_704",
"1472 x 576":"RESOLUTION_1472_576",
"1472 x 640":"RESOLUTION_1472_640",
"1472 x 704":"RESOLUTION_1472_704",
"1536 x 512":"RESOLUTION_1536_512",
"1536 x 576":"RESOLUTION_1536_576",
"1536 x 640":"RESOLUTION_1536_640",
}
V1_V2_RATIO_MAP = {
"1:1":"ASPECT_1_1",
"4:3":"ASPECT_4_3",
"3:4":"ASPECT_3_4",
"16:9":"ASPECT_16_9",
"9:16":"ASPECT_9_16",
"2:1":"ASPECT_2_1",
"1:2":"ASPECT_1_2",
"3:2":"ASPECT_3_2",
"2:3":"ASPECT_2_3",
"4:5":"ASPECT_4_5",
"5:4":"ASPECT_5_4",
}
V3_RATIO_MAP = {
"1:3":"1x3",
@ -229,298 +132,6 @@ async def download_and_process_images(image_urls):
return stacked_tensors
class IdeogramV1(IO.ComfyNode):
@classmethod
def define_schema(cls):
return IO.Schema(
node_id="IdeogramV1",
display_name="Ideogram V1",
category="partner/image/Ideogram",
description="Generates images using the Ideogram V1 model.",
inputs=[
IO.String.Input(
"prompt",
multiline=True,
default="",
tooltip="Prompt for the image generation",
),
IO.Boolean.Input(
"turbo",
default=False,
tooltip="Whether to use turbo mode (faster generation, potentially lower quality)",
),
IO.Combo.Input(
"aspect_ratio",
options=list(V1_V2_RATIO_MAP.keys()),
default="1:1",
tooltip="The aspect ratio for image generation.",
optional=True,
),
IO.Combo.Input(
"magic_prompt_option",
options=["AUTO", "ON", "OFF"],
default="AUTO",
tooltip="Determine if MagicPrompt should be used in generation",
optional=True,
advanced=True,
),
IO.Int.Input(
"seed",
default=0,
min=0,
max=2147483647,
step=1,
control_after_generate=True,
display_mode=IO.NumberDisplay.number,
optional=True,
),
IO.String.Input(
"negative_prompt",
multiline=True,
default="",
tooltip="Description of what to exclude from the image",
optional=True,
),
IO.Int.Input(
"num_images",
default=1,
min=1,
max=8,
step=1,
display_mode=IO.NumberDisplay.number,
optional=True,
),
],
outputs=[
IO.Image.Output(),
],
hidden=[
IO.Hidden.auth_token_comfy_org,
IO.Hidden.api_key_comfy_org,
IO.Hidden.unique_id,
],
is_api_node=True,
price_badge=IO.PriceBadge(
depends_on=IO.PriceBadgeDepends(widgets=["num_images", "turbo"]),
expr="""
(
$n := widgets.num_images;
$base := (widgets.turbo = true) ? 0.0286 : 0.0858;
{"type":"usd","usd": $round($base * $n, 2)}
)
""",
),
)
@classmethod
async def execute(
cls,
prompt,
turbo=False,
aspect_ratio="1:1",
magic_prompt_option="AUTO",
seed=0,
negative_prompt="",
num_images=1,
):
# Determine the model based on turbo setting
aspect_ratio = V1_V2_RATIO_MAP.get(aspect_ratio, None)
model = "V_1_TURBO" if turbo else "V_1"
response = await sync_op(
cls,
ApiEndpoint(path="/proxy/ideogram/generate", method="POST"),
response_model=IdeogramGenerateResponse,
data=IdeogramGenerateRequest(
image_request=ImageRequest(
prompt=prompt,
model=model,
num_images=num_images,
seed=seed,
aspect_ratio=aspect_ratio if aspect_ratio != "ASPECT_1_1" else None,
magic_prompt_option=(magic_prompt_option if magic_prompt_option != "AUTO" else None),
negative_prompt=negative_prompt if negative_prompt else None,
)
),
max_retries=1,
)
if not response.data or len(response.data) == 0:
raise Exception("No images were generated in the response")
image_urls = [image_data.url for image_data in response.data if image_data.url]
if not image_urls:
raise Exception("No image URLs were generated in the response")
return IO.NodeOutput(await download_and_process_images(image_urls))
class IdeogramV2(IO.ComfyNode):
@classmethod
def define_schema(cls):
return IO.Schema(
node_id="IdeogramV2",
display_name="Ideogram V2",
category="partner/image/Ideogram",
description="Generates images using the Ideogram V2 model.",
inputs=[
IO.String.Input(
"prompt",
multiline=True,
default="",
tooltip="Prompt for the image generation",
),
IO.Boolean.Input(
"turbo",
default=False,
tooltip="Whether to use turbo mode (faster generation, potentially lower quality)",
),
IO.Combo.Input(
"aspect_ratio",
options=list(V1_V2_RATIO_MAP.keys()),
default="1:1",
tooltip="The aspect ratio for image generation. Ignored if resolution is not set to AUTO.",
optional=True,
),
IO.Combo.Input(
"resolution",
options=list(V1_V1_RES_MAP.keys()),
default="Auto",
tooltip="The resolution for image generation. "
"If not set to AUTO, this overrides the aspect_ratio setting.",
optional=True,
),
IO.Combo.Input(
"magic_prompt_option",
options=["AUTO", "ON", "OFF"],
default="AUTO",
tooltip="Determine if MagicPrompt should be used in generation",
optional=True,
advanced=True,
),
IO.Int.Input(
"seed",
default=0,
min=0,
max=2147483647,
step=1,
control_after_generate=True,
display_mode=IO.NumberDisplay.number,
optional=True,
),
IO.Combo.Input(
"style_type",
options=["AUTO", "GENERAL", "REALISTIC", "DESIGN", "RENDER_3D", "ANIME"],
default="NONE",
tooltip="Style type for generation (V2 only)",
optional=True,
advanced=True,
),
IO.String.Input(
"negative_prompt",
multiline=True,
default="",
tooltip="Description of what to exclude from the image",
optional=True,
),
IO.Int.Input(
"num_images",
default=1,
min=1,
max=8,
step=1,
display_mode=IO.NumberDisplay.number,
optional=True,
),
#"color_palette": (
# IO.STRING,
# {
# "multiline": False,
# "default": "",
# "tooltip": "Color palette preset name or hex colors with weights",
# },
#),
],
outputs=[
IO.Image.Output(),
],
hidden=[
IO.Hidden.auth_token_comfy_org,
IO.Hidden.api_key_comfy_org,
IO.Hidden.unique_id,
],
is_api_node=True,
price_badge=IO.PriceBadge(
depends_on=IO.PriceBadgeDepends(widgets=["num_images", "turbo"]),
expr="""
(
$n := widgets.num_images;
$base := (widgets.turbo = true) ? 0.0715 : 0.1144;
{"type":"usd","usd": $round($base * $n, 2)}
)
""",
),
)
@classmethod
async def execute(
cls,
prompt,
turbo=False,
aspect_ratio="1:1",
resolution="Auto",
magic_prompt_option="AUTO",
seed=0,
style_type="NONE",
negative_prompt="",
num_images=1,
color_palette="",
):
aspect_ratio = V1_V2_RATIO_MAP.get(aspect_ratio, None)
resolution = V1_V1_RES_MAP.get(resolution, None)
# Determine the model based on turbo setting
model = "V_2_TURBO" if turbo else "V_2"
# Handle resolution vs aspect_ratio logic
# If resolution is not AUTO, it overrides aspect_ratio
final_resolution = None
final_aspect_ratio = None
if resolution != "AUTO":
final_resolution = resolution
else:
final_aspect_ratio = aspect_ratio if aspect_ratio != "ASPECT_1_1" else None
response = await sync_op(
cls,
endpoint=ApiEndpoint(path="/proxy/ideogram/generate", method="POST"),
response_model=IdeogramGenerateResponse,
data=IdeogramGenerateRequest(
image_request=ImageRequest(
prompt=prompt,
model=model,
num_images=num_images,
seed=seed,
aspect_ratio=final_aspect_ratio,
resolution=final_resolution,
magic_prompt_option=(magic_prompt_option if magic_prompt_option != "AUTO" else None),
style_type=style_type if style_type != "NONE" else None,
negative_prompt=negative_prompt if negative_prompt else None,
color_palette=color_palette if color_palette else None,
)
),
max_retries=1,
)
if not response.data or len(response.data) == 0:
raise Exception("No images were generated in the response")
image_urls = [image_data.url for image_data in response.data if image_data.url]
if not image_urls:
raise Exception("No image URLs were generated in the response")
return IO.NodeOutput(await download_and_process_images(image_urls))
class IdeogramV3(IO.ComfyNode):
@classmethod
@ -917,8 +528,6 @@ class IdeogramExtension(ComfyExtension):
@override
async def get_node_list(self) -> list[type[IO.ComfyNode]]:
return [
IdeogramV1,
IdeogramV2,
IdeogramV3,
IdeogramV4,
]

View File

@ -8,7 +8,8 @@ class CLIPTextEncodeControlnet(io.ComfyNode):
def define_schema(cls) -> io.Schema:
return io.Schema(
node_id="CLIPTextEncodeControlnet",
category="experimental/conditioning",
display_name="CLIP Text Encode (Controlnet)",
category="model/conditioning",
inputs=[
io.Clip.Input("clip"),
io.Conditioning.Input("conditioning"),
@ -35,11 +36,12 @@ class T5TokenizerOptions(io.ComfyNode):
def define_schema(cls) -> io.Schema:
return io.Schema(
node_id="T5TokenizerOptions",
category="experimental/conditioning",
display_name="T5 Tokenizer Options",
category="model/conditioning",
inputs=[
io.Clip.Input("clip"),
io.Int.Input("min_padding", default=0, min=0, max=10000, step=1, advanced=True),
io.Int.Input("min_length", default=0, min=0, max=10000, step=1, advanced=True),
io.Int.Input("min_padding", default=0, min=0, max=10000, step=1),
io.Int.Input("min_length", default=0, min=0, max=10000, step=1),
],
outputs=[io.Clip.Output()],
is_experimental=True,

View File

@ -1070,7 +1070,7 @@ class AddNoise(io.ComfyNode):
def define_schema(cls):
return io.Schema(
node_id="AddNoise",
category="experimental/custom_sampling/noise",
category="model/sampling/noise",
is_experimental=True,
inputs=[
io.Model.Input("model"),
@ -1120,7 +1120,7 @@ class ManualSigmas(io.ComfyNode):
return io.Schema(
node_id="ManualSigmas",
search_aliases=["custom noise schedule", "define sigmas"],
category="experimental/custom_sampling",
category="model/sampling/sigmas",
is_experimental=True,
inputs=[
io.String.Input("sigmas", default="1, 0.5", multiline=False)

View File

@ -123,7 +123,8 @@ class PhotoMakerLoader(io.ComfyNode):
def define_schema(cls):
return io.Schema(
node_id="PhotoMakerLoader",
category="experimental/photomaker",
display_name="Load PhotoMaker Model",
category="model/loaders",
inputs=[
io.Combo.Input("photomaker_model_name", options=folder_paths.get_filename_list("photomaker")),
],
@ -149,7 +150,8 @@ class PhotoMakerEncode(io.ComfyNode):
def define_schema(cls):
return io.Schema(
node_id="PhotoMakerEncode",
category="experimental/photomaker",
display_name="PhotoMaker Encode",
category="model/conditioning/photomaker",
inputs=[
io.Photomaker.Input("photomaker"),
io.Image.Input("image"),

View File

@ -13,7 +13,7 @@ from typing_extensions import override
import folder_paths
from comfy.cli_args import args
from comfy_api.latest import ComfyExtension, IO, Types, UI
from comfy_api.latest import ComfyExtension, IO, Types
def pack_variable_mesh_batch(vertices, faces, colors=None, uvs=None, texture=None, unlit=False):
@ -406,165 +406,10 @@ class SaveGLB(IO.ComfyNode):
return IO.NodeOutput(ui={"3d": results})
def _save_file3d_to_output(model_3d: Types.File3D, filename_prefix: str) -> str:
full_output_folder, filename, counter, subfolder, filename_prefix = folder_paths.get_save_image_path(
filename_prefix, folder_paths.get_output_directory()
)
ext = model_3d.format or "glb"
saved_filename = f"{filename}_{counter:05}.{ext}"
model_3d.save_to(os.path.join(full_output_folder, saved_filename))
return f"{subfolder}/{saved_filename}" if subfolder else saved_filename
def execute_save_3d_advanced(model_3d, viewport_state, width, height, filename_prefix, kwargs) -> IO.NodeOutput:
model_file = _save_file3d_to_output(model_3d, filename_prefix)
camera_info_input = kwargs.get("camera_info", None)
camera_info = camera_info_input if camera_info_input is not None else viewport_state['camera_info']
model_3d_info_input = kwargs.get("model_3d_info", None)
model_3d_info = model_3d_info_input if model_3d_info_input is not None else viewport_state.get('model_3d_info', [])
return IO.NodeOutput(
model_3d,
model_3d_info,
camera_info,
width,
height,
ui=UI.PreviewUI3DAdvanced(model_file, camera_info, model_3d_info),
)
class Save3DAdvanced(IO.ComfyNode):
@classmethod
def define_schema(cls):
return IO.Schema(
node_id="Save3DAdvanced",
display_name="Save 3D (Advanced)",
search_aliases=["save 3d", "export 3d model", "save mesh advanced"],
category="3d",
is_experimental=True,
is_output_node=True,
inputs=[
IO.MultiType.Input(
"model_3d",
types=[
IO.File3DGLB,
IO.File3DGLTF,
IO.File3DFBX,
IO.File3DOBJ,
IO.File3DSTL,
IO.File3DUSDZ,
IO.File3DAny,
],
tooltip="3D model file from an upstream 3D node.",
),
IO.String.Input("filename_prefix", default="3d/ComfyUI"),
IO.Load3D.Input("viewport_state"),
IO.Load3DModelInfo.Input("model_3d_info", optional=True, advanced=True),
IO.Load3DCamera.Input("camera_info", optional=True, advanced=True),
IO.Int.Input("width", default=1024, min=1, max=4096, step=1),
IO.Int.Input("height", default=1024, min=1, max=4096, step=1),
],
outputs=[
IO.File3DAny.Output(display_name="model_3d"),
IO.Load3DModelInfo.Output(display_name="model_3d_info"),
IO.Load3DCamera.Output(display_name="camera_info"),
IO.Int.Output(display_name="width"),
IO.Int.Output(display_name="height"),
],
)
@classmethod
def execute(cls, model_3d: Types.File3D, viewport_state, width: int, height: int, filename_prefix: str, **kwargs) -> IO.NodeOutput:
return execute_save_3d_advanced(model_3d, viewport_state, width, height, filename_prefix, kwargs)
class SaveGaussianSplat(IO.ComfyNode):
@classmethod
def define_schema(cls):
return IO.Schema(
node_id="SaveGaussianSplat",
display_name="Save Splat",
search_aliases=["save splat", "save gaussian splat", "export gaussian", "export splat"],
category="3d",
is_experimental=True,
is_output_node=True,
inputs=[
IO.MultiType.Input(
"model_3d",
types=[
IO.File3DSplatAny,
IO.File3DPLY,
IO.File3DSPLAT,
IO.File3DSPZ,
IO.File3DKSPLAT,
],
tooltip="A gaussian splat 3D file.",
),
IO.String.Input("filename_prefix", default="3d/ComfyUI"),
IO.Load3D.Input("viewport_state"),
IO.Load3DModelInfo.Input("model_3d_info", optional=True, advanced=True),
IO.Load3DCamera.Input("camera_info", optional=True, advanced=True),
IO.Int.Input("width", default=1024, min=1, max=4096, step=1),
IO.Int.Input("height", default=1024, min=1, max=4096, step=1),
],
outputs=[
IO.File3DSplatAny.Output(display_name="model_3d"),
IO.Load3DModelInfo.Output(display_name="model_3d_info"),
IO.Load3DCamera.Output(display_name="camera_info"),
IO.Int.Output(display_name="width"),
IO.Int.Output(display_name="height"),
],
)
@classmethod
def execute(cls, model_3d: Types.File3D, viewport_state, width: int, height: int, filename_prefix: str, **kwargs) -> IO.NodeOutput:
return execute_save_3d_advanced(model_3d, viewport_state, width, height, filename_prefix, kwargs)
class SavePointCloud(IO.ComfyNode):
@classmethod
def define_schema(cls):
return IO.Schema(
node_id="SavePointCloud",
display_name="Save Point Cloud",
search_aliases=["save point cloud", "save pointcloud", "export point cloud"],
category="3d",
is_experimental=True,
is_output_node=True,
inputs=[
IO.MultiType.Input(
"model_3d",
types=[
IO.File3DPointCloudAny,
IO.File3DPLY,
],
tooltip="Point cloud file (.ply)",
),
IO.String.Input("filename_prefix", default="3d/ComfyUI"),
IO.Load3D.Input("viewport_state"),
IO.Load3DModelInfo.Input("model_3d_info", optional=True, advanced=True),
IO.Load3DCamera.Input("camera_info", optional=True, advanced=True),
IO.Int.Input("width", default=1024, min=1, max=4096, step=1),
IO.Int.Input("height", default=1024, min=1, max=4096, step=1),
],
outputs=[
IO.File3DPointCloudAny.Output(display_name="model_3d"),
IO.Load3DModelInfo.Output(display_name="model_3d_info"),
IO.Load3DCamera.Output(display_name="camera_info"),
IO.Int.Output(display_name="width"),
IO.Int.Output(display_name="height"),
],
)
@classmethod
def execute(cls, model_3d: Types.File3D, viewport_state, width: int, height: int, filename_prefix: str, **kwargs) -> IO.NodeOutput:
return execute_save_3d_advanced(model_3d, viewport_state, width, height, filename_prefix, kwargs)
class Save3DExtension(ComfyExtension):
@override
async def get_node_list(self) -> list[type[IO.ComfyNode]]:
return [SaveGLB, Save3DAdvanced, SaveGaussianSplat, SavePointCloud]
return [SaveGLB]
async def comfy_entrypoint() -> Save3DExtension:

View File

@ -119,7 +119,7 @@ class StableCascade_SuperResolutionControlnet(io.ComfyNode):
def define_schema(cls):
return io.Schema(
node_id="StableCascade_SuperResolutionControlnet",
category="experimental/stable_cascade",
category="experimental/stable cascade",
is_experimental=True,
inputs=[
io.Image.Input("image"),

View File

@ -143,7 +143,7 @@ class VAEDecodeTripoSplat(IO.ComfyNode):
return IO.Schema(
node_id="VAEDecodeTripoSplat",
display_name="TripoSplat Decode",
category="3d/latent",
category="model/latent/triposplat",
description="Decode the sampled TripoSplat latent into a 3D gaussian splat. "
"Modify the number of gaussians to vary the density.",
inputs=[
@ -188,7 +188,7 @@ class TripoSplatSamplingPreview(IO.ComfyNode):
return IO.Schema(
node_id="TripoSplatSamplingPreview",
display_name="TripoSplat Sampling Preview",
category="3d/latent",
category="model/latent/triposplat",
description="Patch the TripoSplat model for the standard Ksampler node to show a live decoded "
"gaussian splat preview at each step.",
inputs=[

View File

@ -1,3 +1,3 @@
# This file is automatically generated by the build process when version is
# updated in pyproject.toml.
__version__ = "0.26.0"
__version__ = "0.27.0"

View File

@ -1113,6 +1113,32 @@ def full_type_name(klass):
return klass.__qualname__
return module + '.' + klass.__qualname__
def node_not_executable_reason(class_def, class_type):
"""Return a human-readable reason the node cannot be executed, or None if it's fine.
Catches a node whose declared entry point doesn't resolve to a real method
(e.g. a V1 ``FUNCTION = "invert"`` where the method is misspelled, or a V3 node
missing its ``execute`` override). Running this during validation surfaces the
problem before execution starts, instead of after upstream nodes have run.
Only the class is inspected; the node is never instantiated here, so a node's
``__init__`` side effects cannot run (or fail) during validation.
"""
try:
if issubclass(class_def, _ComfyNodeInternal):
# V3: validates that execute()/define_schema() overrides exist.
class_def.VALIDATE_CLASS()
return None
# V1: FUNCTION names the method to call; it must exist on the class.
function_name = getattr(class_def, "FUNCTION", None)
if function_name is None:
return f"'{class_type}' does not define FUNCTION"
if not callable(getattr(class_def, function_name, None)):
return f"'{class_type}' has no method '{function_name}' (declared in FUNCTION)"
return None
except Exception as ex:
return str(ex)
async def validate_prompt(prompt_id, prompt, partial_execution_list: Union[list[str], None]):
outputs = set()
for x in prompt:
@ -1148,6 +1174,35 @@ async def validate_prompt(prompt_id, prompt, partial_execution_list: Union[list[
}
return (False, error, [], {})
# Make sure the node is actually executable (its FUNCTION/execute entry
# point resolves to a real method) before we touch any schema-derived
# attributes below or start execution. Catches code typos up front and
# attributes the error to the offending node.
not_executable = node_not_executable_reason(class_, class_type)
if not_executable is not None:
node_title = prompt[x].get('_meta', {}).get('title', class_type)
error = {
"type": "invalid_node_definition",
"message": "Node is not executable",
"details": f"{not_executable} (Node ID '#{x}')",
"extra_info": {
"node_id": x,
"class_type": class_type,
"node_title": node_title,
}
}
node_errors = {x: {
"errors": [{
"type": "invalid_node_definition",
"message": "Node is not executable",
"details": not_executable,
"extra_info": {},
}],
"dependent_outputs": [],
"class_type": class_type,
}}
return (False, error, [], node_errors)
if hasattr(class_, 'OUTPUT_NODE') and class_.OUTPUT_NODE is True:
if partial_execution_list is None or x in partial_execution_list:
outputs.add(x)

View File

@ -403,7 +403,7 @@ def prompt_worker(q, server_instance):
hook_breaker_ac10a0.restore_functions()
if not asset_seeder.is_disabled():
asset_seeder.enqueue_enrich(roots=("output",), compute_hashes=True)
asset_seeder.enqueue_enrich(roots=("output",), compute_hashes=args.enable_asset_hashing)
asset_seeder.resume()
@ -458,7 +458,7 @@ def setup_database():
if dependencies_available():
init_db()
if args.enable_assets:
if asset_seeder.start(roots=("models", "input", "output"), prune_first=True, compute_hashes=True):
if asset_seeder.start(roots=("models", "input", "output"), prune_first=True, compute_hashes=args.enable_asset_hashing):
logging.info("Background asset scan initiated for models, input, output")
except Exception as e:
if "database is locked" in str(e):

View File

@ -349,7 +349,7 @@ class VAEDecodeTiled:
RETURN_TYPES = ("IMAGE",)
FUNCTION = "decode"
CATEGORY = "experimental"
CATEGORY = "model/latent"
def decode(self, vae, samples, tile_size, overlap=64, temporal_size=64, temporal_overlap=8):
if tile_size < overlap * 4:
@ -396,7 +396,7 @@ class VAEEncodeTiled:
RETURN_TYPES = ("LATENT",)
FUNCTION = "encode"
CATEGORY = "experimental"
CATEGORY = "model/latent"
def encode(self, vae, pixels, tile_size, overlap, temporal_size=64, temporal_overlap=8):
t = vae.encode_tiled(pixels, tile_x=tile_size, tile_y=tile_size, overlap=overlap, tile_t=temporal_size, overlap_t=temporal_overlap)
@ -514,7 +514,7 @@ class SaveLatent:
OUTPUT_NODE = True
CATEGORY = "experimental"
CATEGORY = "model/latent"
def save(self, samples, filename_prefix="ComfyUI", prompt=None, extra_pnginfo=None):
full_output_folder, filename, counter, subfolder, filename_prefix = folder_paths.get_save_image_path(filename_prefix, self.output_dir)
@ -559,7 +559,7 @@ class LoadLatent:
files = [f for f in os.listdir(input_dir) if os.path.isfile(os.path.join(input_dir, f)) and f.endswith(".latent")]
return {"required": {"latent": [sorted(files), ]}, }
CATEGORY = "experimental"
CATEGORY = "model/latent"
RETURN_TYPES = ("LATENT", )
FUNCTION = "load"
@ -2155,6 +2155,8 @@ NODE_DISPLAY_NAME_MAPPINGS = {
"GLIGENTextBoxApply": "Apply GLIGEN Text Box",
"ConditioningZeroOut": "Conditioning Zero Out",
# Latent
"LoadLatent": "Load Latent",
"SaveLatent": "Save Latent",
"VAEEncodeForInpaint": "VAE Encode (for Inpainting)",
"SetLatentNoiseMask": "Set Latent Noise Mask",
"VAEDecode": "VAE Decode",
@ -2189,7 +2191,6 @@ NODE_DISPLAY_NAME_MAPPINGS = {
"ImageSharpen": "Sharpen Image",
"ImageScaleToTotalPixels": "Scale Image to Total Pixels",
"GetImageSize": "Get Image Size",
# experimental
"VAEDecodeTiled": "VAE Decode (Tiled)",
"VAEEncodeTiled": "VAE Encode (Tiled)",
}

View File

@ -1,6 +1,6 @@
[project]
name = "ComfyUI"
version = "0.26.0"
version = "0.27.0"
readme = "README.md"
license = { file = "LICENSE" }
requires-python = ">=3.10"

View File

@ -1,5 +1,5 @@
comfyui-frontend-package==1.45.20
comfyui-workflow-templates==0.10.7
comfyui-workflow-templates==0.11.1
comfyui-embedded-docs==0.5.6
torch
torchsde
@ -22,7 +22,7 @@ alembic
SQLAlchemy>=2.0.0
filelock
av>=16.0.0
comfy-kitchen==0.2.15
comfy-kitchen==0.2.16
comfy-aimdo==0.4.10
requests
simpleeval>=1.0.0

View File

@ -0,0 +1,137 @@
"""Tests for pre-execution validation that a node is actually executable.
validate_prompt rejects a node whose declared entry point does not resolve to a
real method (a V1 FUNCTION typo, or a V3 node missing its execute override) before
any node runs, attributing the error to the offending node.
"""
import asyncio
import nodes
from comfy_api.latest import io
from execution import node_not_executable_reason, validate_prompt
class _GoodV1Node:
@classmethod
def INPUT_TYPES(cls):
return {"required": {}}
RETURN_TYPES = ("IMAGE",)
FUNCTION = "run"
OUTPUT_NODE = True
CATEGORY = "Test"
def run(self):
return (None,)
class _TypoV1Node:
@classmethod
def INPUT_TYPES(cls):
return {"required": {}}
RETURN_TYPES = ("IMAGE",)
FUNCTION = "invert" # method below is misspelled
OUTPUT_NODE = True
CATEGORY = "Test"
def invvert(self):
return (None,)
class _SideEffectInitV1Node:
"""Valid class-level method, but a constructor that must never run in validation."""
@classmethod
def INPUT_TYPES(cls):
return {"required": {}}
RETURN_TYPES = ("IMAGE",)
FUNCTION = "run"
OUTPUT_NODE = True
CATEGORY = "Test"
def __init__(self):
raise RuntimeError("__init__ must not run during validation")
def run(self):
return (None,)
def _v3_schema(node_id):
return io.Schema(
node_id=node_id,
display_name=node_id,
category="Test",
inputs=[],
outputs=[io.Image.Output()],
is_output_node=True,
)
class _GoodV3Node(io.ComfyNode):
@classmethod
def define_schema(cls):
return _v3_schema("GoodV3Node")
@classmethod
def execute(cls):
return io.NodeOutput(None)
class _TypoV3Node(io.ComfyNode):
@classmethod
def define_schema(cls):
return _v3_schema("TypoV3Node")
@classmethod
def exicute(cls): # typo: should be "execute"
return io.NodeOutput(None)
def _register(class_type, class_def):
nodes.NODE_CLASS_MAPPINGS[class_type] = class_def
def _validate(class_type):
prompt = {"1": {"class_type": class_type, "inputs": {}}}
return asyncio.run(validate_prompt("pid", prompt, None))
def test_good_node_passes():
_register("GoodV1Node", _GoodV1Node)
assert node_not_executable_reason(_GoodV1Node, "GoodV1Node") is None
valid, _, _, _ = _validate("GoodV1Node")
assert valid is True
def test_typo_node_rejected_with_node_error():
_register("TypoV1Node", _TypoV1Node)
valid, error, _, node_errors = _validate("TypoV1Node")
assert valid is False
assert error["type"] == "invalid_node_definition"
assert node_errors["1"]["class_type"] == "TypoV1Node"
assert node_errors["1"]["errors"][0]["type"] == "invalid_node_definition"
assert "invert" in node_errors["1"]["errors"][0]["details"]
def test_validation_does_not_instantiate_node():
"""A valid node is not constructed during validation, so __init__ never runs."""
_register("SideEffectInitV1Node", _SideEffectInitV1Node)
assert node_not_executable_reason(_SideEffectInitV1Node, "SideEffectInitV1Node") is None
valid, _, _, _ = _validate("SideEffectInitV1Node")
assert valid is True
def test_good_v3_node_passes():
_register("GoodV3Node", _GoodV3Node)
assert node_not_executable_reason(_GoodV3Node, "GoodV3Node") is None
valid, _, _, _ = _validate("GoodV3Node")
assert valid is True
def test_typo_v3_node_rejected_with_node_error():
_register("TypoV3Node", _TypoV3Node)
valid, error, _, node_errors = _validate("TypoV3Node")
assert valid is False
assert error["type"] == "invalid_node_definition"
assert node_errors["1"]["errors"][0]["type"] == "invalid_node_definition"