ComfyUI/comfy_api_nodes/nodes_luma.py
Jedrzej Kosinski 1271c4ef9d
More API Nodes (#7956)
* Add Ideogram generate node.

* Add staging api.

* Add API_NODE and common error for missing auth token (#5)

* Add Minimax Video Generation + Async Task queue polling example (#6)

* [Minimax] Show video preview and embed workflow in ouput (#7)

* Remove uv.lock

* Remove polling operations.

* Revert "Remove polling operations."

* Update stubs.

* Added Ideogram and Minimax back in.

* Added initial BFL Flux 1.1 [pro] Ultra node (#11)

* Add --comfy-api-base launch arg (#13)

* Add instructions for staging development. (#14)

* remove validation to make it easier to run against LAN copies of the API

* Manually add BFL polling status response schema (#15)

* Add function for uploading files. (#18)

* Add Luma nodes (#16)

* Refactor util functions (#20)

* Add VIDEO type (#21)

* Add rest of Luma node functionality (#19)

* Fix image_luma_ref not working (#28)

* [Bug] Remove duplicated option T2V-01 in MinimaxTextToVideoNode (#31)

* Add utils to map from pydantic model fields to comfy node inputs (#30)

* add veo2, bump av req (#32)

* Add Recraft nodes (#29)

* Add Kling Nodes (#12)

* Add Camera Concepts (luma_concepts) to Luma Video nodes (#33)

* Add Runway nodes (#17)

* Convert Minimax node to use VIDEO output type (#34)

* Standard `CATEGORY` system for api nodes (#35)

* Set `Content-Type` header when uploading files (#36)

* add better error propagation to veo2 (#37)

* Add Realistic Image and Logo Raster styles for Recraft v3 (#38)

* Fix runway image upload and progress polling (#39)

* Fix image upload for Luma: only include `Content-Type` header field if it's set explicitly (#40)

* Moved Luma nodes to nodes_luma.py (#47)

* Moved Recraft nodes to nodes_recraft.py (#48)

* Add Pixverse nodes (#46)

* Move and fix BFL nodes to node_bfl.py (#49)

* Move and edit Minimax node to nodes_minimax.py (#50)

* Add Minimax Image to Video node + Cleanup (#51)

* Add Recraft Text to Vector node, add Save SVG node to handle its output (#53)

* Added pixverse_template support to Pixverse Text to Video node (#54)

* Added Recraft Controls + Recraft Color RGB nodes (#57)

* split remaining nodes out of nodes_api, make utility lib, refactor ideogram (#61)

* Add types and doctstrings to utils file (#64)

* Fix: `PollingOperation` progress bar update progress by absolute value (#65)

* Use common download function in kling nodes module (#67)

* Fix: Luma video nodes in `api nodes/image` category (#68)

* Set request type explicitly (#66)

* Add `control_after_generate` to all seed inputs (#69)

* Fix bug: deleting `Content-Type` when property does not exist (#73)

* Add preview to Save SVG node (#74)

* change default poll interval (#76), rework veo2

* Add Pixverse and updated Kling types (#75)

* Added Pixverse Image to VIdeo node (#77)

* Add Pixverse Transition Video node (#79)

* Proper ray-1-6 support as fix has been applied in backend (#80)

* Added Recraft Style - Infinite Style Library node (#82)

* add ideogram v3 (#83)

* [Kling] Split Camera Control config to its own node (#81)

* Add Pika i2v and t2v nodes (#52)

* Temporary Fix for Runway (#87)

* Added Stability Stable Image Ultra node (#86)

* Remove Runway nodes (#88)

* Fix: Prompt text can't be validated in Kling nodes when using primitive nodes (#90)

* Fix: typo in node name "Stabiliy" => "Stability" (#91)

* Add String (Multiline) node (#93)

* Update Pika Duration and Resolution options (#94)

* Change base branch to master. Not main. (#95)

* Fix UploadRequest file_name param (#98)

* Removed Infinite Style Library until later (#99)

* fix ideogram style types (#100)

* fix multi image return (#101)

* add metadata saving to SVG (#102)

* Bump templates version to include API node template workflows (#104)

* Fix: `download_url_to_video_output` return type (#103)

* fix 4o generation bug (#106)

* Serve SVG files directly (#107)

* Add a bunch of nodes, 3 ready to use, the rest waiting for endpoint support (#108)

* Revert "Serve SVG files directly" (#111)

* Expose 4 remaining Recraft nodes (#112)

* [Kling] Add `Duration` and `Video ID` outputs (#105)

* Fix: datamodel-codegen sets string#binary type to non-existent `bytes_aliased` variable  (#114)

* Fix: Dall-e 2 not setting request content-type dynamically (#113)

* Default request timeout: one hour. (#116)

* Add Kling nodes: camera control, start-end frame, lip-sync, video extend (#115)

* Add 8 nodes - 4 BFL, 4 Stability (#117)

* Fix error for Recraft ImageToImage error for nonexistent random_seed param (#118)

* Add remaining Pika nodes (#119)

* Make controls input work for Recraft Image to Image node (#120)

* Use upstream PR: Support saving Comfy VIDEO type to buffer (#123)

* Use Upstream PR: "Fix: Error creating video when sliced audio tensor chunks are non-c-contiguous" (#127)

* Improve audio upload utils (#128)

* Fix: Nested `AnyUrl` in request model cannot be serialized (Kling, Runway) (#129)

* Show errors and API output URLs to the user (change log levels) (#131)

* Fix: Luma I2I fails when weight is <=0.01 (#132)

* Change category of `LumaConcepts` node from image to video (#133)

* Fix: `image.shape` accessed before `image` is null-checked (#134)

* Apply small fixes and most prompt validation (if needed to avoid API error) (#135)

* Node name/category modifications (#140)

* Add back Recraft Style - Infinite Style Library node (#141)

* Fixed Kling: Check attributes of pydantic types. (#144)

* Bump `comfyui-workflow-templates` version (#142)

* [Kling] Print response data when error validating response (#146)

* Fix: error validating Kling image response, trying to use `"key" in` on Pydantic class instance (#147)

* [Kling] Fix: Correct/verify supported subset of input combos in Kling nodes (#149)

* [Kling] Fix typo in node description (#150)

* [Kling] Fix: CFG min/max not being enforced (#151)

* Rebase launch-rebase (private) on prep-branch (public copy of master) (#153)

* Bump templates version (#154)

* Fix: Kling image gen nodes don't return entire batch when `n` > 1 (#152)

* Remove pixverse_template from PixVerse Transition Video node (#155)

* Invert image_weight value on Luma Image to Image node (#156)

* Invert and resize mask for Ideogram V3 node to match masking conventions (#158)

* [Kling] Fix: image generation nodes not returning Tuple (#159)

* [Bug] [Kling] Fix Kling camera control (#161)

* Kling Image Gen v2 + improve node descriptions for Flux/OpenAI (#160)

* [Kling] Don't return video_id from dual effect video (#162)

* Bump frontend to 1.18.8 (#163)

* Use 3.9 compat syntax (#164)

* Use Python 3.10

* add example env var

* Update templates to 0.1.11

* Bump frontend to 1.18.9

---------

Co-authored-by: Robin Huang <robin.j.huang@gmail.com>
Co-authored-by: Christian Byrne <cbyrne@comfy.org>
Co-authored-by: thot experiment <94414189+thot-experiment@users.noreply.github.com>
2025-05-06 04:23:00 -04:00

703 lines
24 KiB
Python

from inspect import cleandoc
from comfy.comfy_types.node_typing import IO, ComfyNodeABC
from comfy_api.input_impl.video_types import VideoFromFile
from comfy_api_nodes.apis.luma_api import (
LumaImageModel,
LumaVideoModel,
LumaVideoOutputResolution,
LumaVideoModelOutputDuration,
LumaAspectRatio,
LumaState,
LumaImageGenerationRequest,
LumaGenerationRequest,
LumaGeneration,
LumaCharacterRef,
LumaModifyImageRef,
LumaImageIdentity,
LumaReference,
LumaReferenceChain,
LumaImageReference,
LumaKeyframes,
LumaConceptChain,
LumaIO,
get_luma_concepts,
)
from comfy_api_nodes.apis.client import (
ApiEndpoint,
HttpMethod,
SynchronousOperation,
PollingOperation,
EmptyRequest,
)
from comfy_api_nodes.apinode_utils import (
upload_images_to_comfyapi,
process_image_response,
validate_string,
)
import requests
import torch
from io import BytesIO
class LumaReferenceNode(ComfyNodeABC):
"""
Holds an image and weight for use with Luma Generate Image node.
"""
RETURN_TYPES = (LumaIO.LUMA_REF,)
RETURN_NAMES = ("luma_ref",)
DESCRIPTION = cleandoc(__doc__ or "") # Handle potential None value
FUNCTION = "create_luma_reference"
CATEGORY = "api node/image/Luma"
@classmethod
def INPUT_TYPES(s):
return {
"required": {
"image": (
IO.IMAGE,
{
"tooltip": "Image to use as reference.",
},
),
"weight": (
IO.FLOAT,
{
"default": 1.0,
"min": 0.0,
"max": 1.0,
"step": 0.01,
"tooltip": "Weight of image reference.",
},
),
},
"optional": {"luma_ref": (LumaIO.LUMA_REF,)},
}
def create_luma_reference(
self, image: torch.Tensor, weight: float, luma_ref: LumaReferenceChain = None
):
if luma_ref is not None:
luma_ref = luma_ref.clone()
else:
luma_ref = LumaReferenceChain()
luma_ref.add(LumaReference(image=image, weight=round(weight, 2)))
return (luma_ref,)
class LumaConceptsNode(ComfyNodeABC):
"""
Holds one or more Camera Concepts for use with Luma Text to Video and Luma Image to Video nodes.
"""
RETURN_TYPES = (LumaIO.LUMA_CONCEPTS,)
RETURN_NAMES = ("luma_concepts",)
DESCRIPTION = cleandoc(__doc__ or "") # Handle potential None value
FUNCTION = "create_concepts"
CATEGORY = "api node/video/Luma"
@classmethod
def INPUT_TYPES(s):
return {
"required": {
"concept1": (get_luma_concepts(include_none=True),),
"concept2": (get_luma_concepts(include_none=True),),
"concept3": (get_luma_concepts(include_none=True),),
"concept4": (get_luma_concepts(include_none=True),),
},
"optional": {
"luma_concepts": (
LumaIO.LUMA_CONCEPTS,
{
"tooltip": "Optional Camera Concepts to add to the ones chosen here."
},
),
},
}
def create_concepts(
self,
concept1: str,
concept2: str,
concept3: str,
concept4: str,
luma_concepts: LumaConceptChain = None,
):
chain = LumaConceptChain(str_list=[concept1, concept2, concept3, concept4])
if luma_concepts is not None:
chain = luma_concepts.clone_and_merge(chain)
return (chain,)
class LumaImageGenerationNode(ComfyNodeABC):
"""
Generates images synchronously based on prompt and aspect ratio.
"""
RETURN_TYPES = (IO.IMAGE,)
DESCRIPTION = cleandoc(__doc__ or "") # Handle potential None value
FUNCTION = "api_call"
API_NODE = True
CATEGORY = "api node/image/Luma"
@classmethod
def INPUT_TYPES(s):
return {
"required": {
"prompt": (
IO.STRING,
{
"multiline": True,
"default": "",
"tooltip": "Prompt for the image generation",
},
),
"model": ([model.value for model in LumaImageModel],),
"aspect_ratio": (
[ratio.value for ratio in LumaAspectRatio],
{
"default": LumaAspectRatio.ratio_16_9,
},
),
"seed": (
IO.INT,
{
"default": 0,
"min": 0,
"max": 0xFFFFFFFFFFFFFFFF,
"control_after_generate": True,
"tooltip": "Seed to determine if node should re-run; actual results are nondeterministic regardless of seed.",
},
),
"style_image_weight": (
IO.FLOAT,
{
"default": 1.0,
"min": 0.0,
"max": 1.0,
"step": 0.01,
"tooltip": "Weight of style image. Ignored if no style_image provided.",
},
),
},
"optional": {
"image_luma_ref": (
LumaIO.LUMA_REF,
{
"tooltip": "Luma Reference node connection to influence generation with input images; up to 4 images can be considered."
},
),
"style_image": (
IO.IMAGE,
{"tooltip": "Style reference image; only 1 image will be used."},
),
"character_image": (
IO.IMAGE,
{
"tooltip": "Character reference images; can be a batch of multiple, up to 4 images can be considered."
},
),
},
"hidden": {
"auth_token": "AUTH_TOKEN_COMFY_ORG",
},
}
def api_call(
self,
prompt: str,
model: str,
aspect_ratio: str,
seed,
style_image_weight: float,
image_luma_ref: LumaReferenceChain = None,
style_image: torch.Tensor = None,
character_image: torch.Tensor = None,
auth_token=None,
**kwargs,
):
validate_string(prompt, strip_whitespace=True, min_length=3)
# handle image_luma_ref
api_image_ref = None
if image_luma_ref is not None:
api_image_ref = self._convert_luma_refs(
image_luma_ref, max_refs=4, auth_token=auth_token
)
# handle style_luma_ref
api_style_ref = None
if style_image is not None:
api_style_ref = self._convert_style_image(
style_image, weight=style_image_weight, auth_token=auth_token
)
# handle character_ref images
character_ref = None
if character_image is not None:
download_urls = upload_images_to_comfyapi(
character_image, max_images=4, auth_token=auth_token
)
character_ref = LumaCharacterRef(
identity0=LumaImageIdentity(images=download_urls)
)
operation = SynchronousOperation(
endpoint=ApiEndpoint(
path="/proxy/luma/generations/image",
method=HttpMethod.POST,
request_model=LumaImageGenerationRequest,
response_model=LumaGeneration,
),
request=LumaImageGenerationRequest(
prompt=prompt,
model=model,
aspect_ratio=aspect_ratio,
image_ref=api_image_ref,
style_ref=api_style_ref,
character_ref=character_ref,
),
auth_token=auth_token,
)
response_api: LumaGeneration = operation.execute()
operation = PollingOperation(
poll_endpoint=ApiEndpoint(
path=f"/proxy/luma/generations/{response_api.id}",
method=HttpMethod.GET,
request_model=EmptyRequest,
response_model=LumaGeneration,
),
completed_statuses=[LumaState.completed],
failed_statuses=[LumaState.failed],
status_extractor=lambda x: x.state,
auth_token=auth_token,
)
response_poll = operation.execute()
img_response = requests.get(response_poll.assets.image)
img = process_image_response(img_response)
return (img,)
def _convert_luma_refs(
self, luma_ref: LumaReferenceChain, max_refs: int, auth_token=None
):
luma_urls = []
ref_count = 0
for ref in luma_ref.refs:
download_urls = upload_images_to_comfyapi(
ref.image, max_images=1, auth_token=auth_token
)
luma_urls.append(download_urls[0])
ref_count += 1
if ref_count >= max_refs:
break
return luma_ref.create_api_model(download_urls=luma_urls, max_refs=max_refs)
def _convert_style_image(
self, style_image: torch.Tensor, weight: float, auth_token=None
):
chain = LumaReferenceChain(
first_ref=LumaReference(image=style_image, weight=weight)
)
return self._convert_luma_refs(chain, max_refs=1, auth_token=auth_token)
class LumaImageModifyNode(ComfyNodeABC):
"""
Modifies images synchronously based on prompt and aspect ratio.
"""
RETURN_TYPES = (IO.IMAGE,)
DESCRIPTION = cleandoc(__doc__ or "") # Handle potential None value
FUNCTION = "api_call"
API_NODE = True
CATEGORY = "api node/image/Luma"
@classmethod
def INPUT_TYPES(s):
return {
"required": {
"image": (IO.IMAGE,),
"prompt": (
IO.STRING,
{
"multiline": True,
"default": "",
"tooltip": "Prompt for the image generation",
},
),
"image_weight": (
IO.FLOAT,
{
"default": 0.1,
"min": 0.0,
"max": 0.98,
"step": 0.01,
"tooltip": "Weight of the image; the closer to 1.0, the less the image will be modified.",
},
),
"model": ([model.value for model in LumaImageModel],),
"seed": (
IO.INT,
{
"default": 0,
"min": 0,
"max": 0xFFFFFFFFFFFFFFFF,
"control_after_generate": True,
"tooltip": "Seed to determine if node should re-run; actual results are nondeterministic regardless of seed.",
},
),
},
"optional": {},
"hidden": {
"auth_token": "AUTH_TOKEN_COMFY_ORG",
},
}
def api_call(
self,
prompt: str,
model: str,
image: torch.Tensor,
image_weight: float,
seed,
auth_token=None,
**kwargs,
):
# first, upload image
download_urls = upload_images_to_comfyapi(
image, max_images=1, auth_token=auth_token
)
image_url = download_urls[0]
# next, make Luma call with download url provided
operation = SynchronousOperation(
endpoint=ApiEndpoint(
path="/proxy/luma/generations/image",
method=HttpMethod.POST,
request_model=LumaImageGenerationRequest,
response_model=LumaGeneration,
),
request=LumaImageGenerationRequest(
prompt=prompt,
model=model,
modify_image_ref=LumaModifyImageRef(
url=image_url, weight=round(max(min(1.0-image_weight, 0.98), 0.0), 2)
),
),
auth_token=auth_token,
)
response_api: LumaGeneration = operation.execute()
operation = PollingOperation(
poll_endpoint=ApiEndpoint(
path=f"/proxy/luma/generations/{response_api.id}",
method=HttpMethod.GET,
request_model=EmptyRequest,
response_model=LumaGeneration,
),
completed_statuses=[LumaState.completed],
failed_statuses=[LumaState.failed],
status_extractor=lambda x: x.state,
auth_token=auth_token,
)
response_poll = operation.execute()
img_response = requests.get(response_poll.assets.image)
img = process_image_response(img_response)
return (img,)
class LumaTextToVideoGenerationNode(ComfyNodeABC):
"""
Generates videos synchronously based on prompt and output_size.
"""
RETURN_TYPES = (IO.VIDEO,)
DESCRIPTION = cleandoc(__doc__ or "") # Handle potential None value
FUNCTION = "api_call"
API_NODE = True
CATEGORY = "api node/video/Luma"
@classmethod
def INPUT_TYPES(s):
return {
"required": {
"prompt": (
IO.STRING,
{
"multiline": True,
"default": "",
"tooltip": "Prompt for the video generation",
},
),
"model": ([model.value for model in LumaVideoModel],),
"aspect_ratio": (
[ratio.value for ratio in LumaAspectRatio],
{
"default": LumaAspectRatio.ratio_16_9,
},
),
"resolution": (
[resolution.value for resolution in LumaVideoOutputResolution],
{
"default": LumaVideoOutputResolution.res_540p,
},
),
"duration": ([dur.value for dur in LumaVideoModelOutputDuration],),
"loop": (
IO.BOOLEAN,
{
"default": False,
},
),
"seed": (
IO.INT,
{
"default": 0,
"min": 0,
"max": 0xFFFFFFFFFFFFFFFF,
"control_after_generate": True,
"tooltip": "Seed to determine if node should re-run; actual results are nondeterministic regardless of seed.",
},
),
},
"optional": {
"luma_concepts": (
LumaIO.LUMA_CONCEPTS,
{
"tooltip": "Optional Camera Concepts to dictate camera motion via the Luma Concepts node."
},
),
},
"hidden": {
"auth_token": "AUTH_TOKEN_COMFY_ORG",
},
}
def api_call(
self,
prompt: str,
model: str,
aspect_ratio: str,
resolution: str,
duration: str,
loop: bool,
seed,
luma_concepts: LumaConceptChain = None,
auth_token=None,
**kwargs,
):
validate_string(prompt, strip_whitespace=False, min_length=3)
duration = duration if model != LumaVideoModel.ray_1_6 else None
resolution = resolution if model != LumaVideoModel.ray_1_6 else None
operation = SynchronousOperation(
endpoint=ApiEndpoint(
path="/proxy/luma/generations",
method=HttpMethod.POST,
request_model=LumaGenerationRequest,
response_model=LumaGeneration,
),
request=LumaGenerationRequest(
prompt=prompt,
model=model,
resolution=resolution,
aspect_ratio=aspect_ratio,
duration=duration,
loop=loop,
concepts=luma_concepts.create_api_model() if luma_concepts else None,
),
auth_token=auth_token,
)
response_api: LumaGeneration = operation.execute()
operation = PollingOperation(
poll_endpoint=ApiEndpoint(
path=f"/proxy/luma/generations/{response_api.id}",
method=HttpMethod.GET,
request_model=EmptyRequest,
response_model=LumaGeneration,
),
completed_statuses=[LumaState.completed],
failed_statuses=[LumaState.failed],
status_extractor=lambda x: x.state,
auth_token=auth_token,
)
response_poll = operation.execute()
vid_response = requests.get(response_poll.assets.video)
return (VideoFromFile(BytesIO(vid_response.content)),)
class LumaImageToVideoGenerationNode(ComfyNodeABC):
"""
Generates videos synchronously based on prompt, input images, and output_size.
"""
RETURN_TYPES = (IO.VIDEO,)
DESCRIPTION = cleandoc(__doc__ or "") # Handle potential None value
FUNCTION = "api_call"
API_NODE = True
CATEGORY = "api node/video/Luma"
@classmethod
def INPUT_TYPES(s):
return {
"required": {
"prompt": (
IO.STRING,
{
"multiline": True,
"default": "",
"tooltip": "Prompt for the video generation",
},
),
"model": ([model.value for model in LumaVideoModel],),
# "aspect_ratio": ([ratio.value for ratio in LumaAspectRatio], {
# "default": LumaAspectRatio.ratio_16_9,
# }),
"resolution": (
[resolution.value for resolution in LumaVideoOutputResolution],
{
"default": LumaVideoOutputResolution.res_540p,
},
),
"duration": ([dur.value for dur in LumaVideoModelOutputDuration],),
"loop": (
IO.BOOLEAN,
{
"default": False,
},
),
"seed": (
IO.INT,
{
"default": 0,
"min": 0,
"max": 0xFFFFFFFFFFFFFFFF,
"control_after_generate": True,
"tooltip": "Seed to determine if node should re-run; actual results are nondeterministic regardless of seed.",
},
),
},
"optional": {
"first_image": (
IO.IMAGE,
{"tooltip": "First frame of generated video."},
),
"last_image": (IO.IMAGE, {"tooltip": "Last frame of generated video."}),
"luma_concepts": (
LumaIO.LUMA_CONCEPTS,
{
"tooltip": "Optional Camera Concepts to dictate camera motion via the Luma Concepts node."
},
),
},
"hidden": {
"auth_token": "AUTH_TOKEN_COMFY_ORG",
},
}
def api_call(
self,
prompt: str,
model: str,
resolution: str,
duration: str,
loop: bool,
seed,
first_image: torch.Tensor = None,
last_image: torch.Tensor = None,
luma_concepts: LumaConceptChain = None,
auth_token=None,
**kwargs,
):
if first_image is None and last_image is None:
raise Exception(
"At least one of first_image and last_image requires an input."
)
keyframes = self._convert_to_keyframes(first_image, last_image, auth_token)
duration = duration if model != LumaVideoModel.ray_1_6 else None
resolution = resolution if model != LumaVideoModel.ray_1_6 else None
operation = SynchronousOperation(
endpoint=ApiEndpoint(
path="/proxy/luma/generations",
method=HttpMethod.POST,
request_model=LumaGenerationRequest,
response_model=LumaGeneration,
),
request=LumaGenerationRequest(
prompt=prompt,
model=model,
aspect_ratio=LumaAspectRatio.ratio_16_9, # ignored, but still needed by the API for some reason
resolution=resolution,
duration=duration,
loop=loop,
keyframes=keyframes,
concepts=luma_concepts.create_api_model() if luma_concepts else None,
),
auth_token=auth_token,
)
response_api: LumaGeneration = operation.execute()
operation = PollingOperation(
poll_endpoint=ApiEndpoint(
path=f"/proxy/luma/generations/{response_api.id}",
method=HttpMethod.GET,
request_model=EmptyRequest,
response_model=LumaGeneration,
),
completed_statuses=[LumaState.completed],
failed_statuses=[LumaState.failed],
status_extractor=lambda x: x.state,
auth_token=auth_token,
)
response_poll = operation.execute()
vid_response = requests.get(response_poll.assets.video)
return (VideoFromFile(BytesIO(vid_response.content)),)
def _convert_to_keyframes(
self,
first_image: torch.Tensor = None,
last_image: torch.Tensor = None,
auth_token=None,
):
if first_image is None and last_image is None:
return None
frame0 = None
frame1 = None
if first_image is not None:
download_urls = upload_images_to_comfyapi(
first_image, max_images=1, auth_token=auth_token
)
frame0 = LumaImageReference(type="image", url=download_urls[0])
if last_image is not None:
download_urls = upload_images_to_comfyapi(
last_image, max_images=1, auth_token=auth_token
)
frame1 = LumaImageReference(type="image", url=download_urls[0])
return LumaKeyframes(frame0=frame0, frame1=frame1)
# A dictionary that contains all nodes you want to export with their names
# NOTE: names should be globally unique
NODE_CLASS_MAPPINGS = {
"LumaImageNode": LumaImageGenerationNode,
"LumaImageModifyNode": LumaImageModifyNode,
"LumaVideoNode": LumaTextToVideoGenerationNode,
"LumaImageToVideoNode": LumaImageToVideoGenerationNode,
"LumaReferenceNode": LumaReferenceNode,
"LumaConceptsNode": LumaConceptsNode,
}
# A dictionary that contains the friendly/humanly readable titles for the nodes
NODE_DISPLAY_NAME_MAPPINGS = {
"LumaImageNode": "Luma Text to Image",
"LumaImageModifyNode": "Luma Image to Image",
"LumaVideoNode": "Luma Text to Video",
"LumaImageToVideoNode": "Luma Image to Video",
"LumaReferenceNode": "Luma Reference",
"LumaConceptsNode": "Luma Concepts",
}