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9 Commits

Author SHA1 Message Date
9c0f66817a Add show_version_updates CLI feature flag
Registers a show_version_updates bool flag (default true) in CLI_FEATURE_FLAG_REGISTRY so launchers can override the frontend default for new-release/version-update notifications via --feature-flag.

Amp-Thread-ID: https://ampcode.com/threads/T-019f0347-dc00-723a-a4d2-558539329035
Co-authored-by: Amp <amp@ampcode.com>
2026-06-26 02:46:35 -07:00
7cb784e0f4 Faster int8. (#14641) 2026-06-25 15:25:47 -07:00
1a510f0423 Support int8 models. (#14636) 2026-06-25 11:23:58 -07:00
639c8fa788 chore: update workflow templates to v0.10.7 (#14632) 2026-06-25 23:05:34 +08:00
e22f1500f9 [Partner Nodes] feat(ByteDance): add support for SeeDance-2.0-Mini video model (#14626)
Signed-off-by: bigcat88 <bigcat88@icloud.com>
2026-06-25 17:57:04 +03:00
dac4ea3a80 feat: Bounding boxes canvas and Ideogram JSON prompt (#14537) 2026-06-25 22:34:09 +08:00
b0ec19804f chore(openapi): sync shared API contract from cloud@4118910 (#14619) 2026-06-25 13:54:53 +08:00
64e1d740b8 Add advanced krea 2 model merging node. (#14621) 2026-06-24 20:37:30 -07:00
b22d0fb9c0 feat: Add Support For Simple Seed (CORE-295) (#14616) 2026-06-25 09:39:10 +08:00
21 changed files with 701 additions and 174 deletions

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@ -1274,148 +1274,13 @@ def force_channels_last():
return False
_INTEL_XPU_DISCRETE = None
def is_intel_xpu_discrete():
# Returns True only if the active Intel XPU is a discrete GPU. torch.xpu does
# not expose the integrated-vs-discrete distinction, so we query Level Zero
# directly via ctypes. Works on Windows (ze_loader.dll) and Linux
# (libze_loader.so.1). Any failure or ambiguity returns False so a
# discrete-only fast path is never enabled by mistake.
global _INTEL_XPU_DISCRETE
if _INTEL_XPU_DISCRETE is not None:
return _INTEL_XPU_DISCRETE
_INTEL_XPU_DISCRETE = False
if not is_intel_xpu():
return False
try:
import ctypes
import ctypes.util
ZE_RESULT_SUCCESS = 0
ZE_STRUCTURE_TYPE_DEVICE_PROPERTIES = 0x3
ZE_DEVICE_TYPE_GPU = 1
ZE_DEVICE_PROPERTY_FLAG_INTEGRATED = 1 << 0
ZE_MAX_DEVICE_NAME = 256
class ze_device_uuid_t(ctypes.Structure):
_fields_ = [("id", ctypes.c_ubyte * 16)]
class ze_device_properties_t(ctypes.Structure):
_fields_ = [
("stype", ctypes.c_uint32),
("pNext", ctypes.c_void_p),
("type", ctypes.c_uint32),
("vendorId", ctypes.c_uint32),
("deviceId", ctypes.c_uint32),
("flags", ctypes.c_uint32),
("subdeviceId", ctypes.c_uint32),
("coreClockRate", ctypes.c_uint32),
("maxMemAllocSize", ctypes.c_uint64),
("maxHardwareContexts", ctypes.c_uint32),
("maxCommandQueuePriority", ctypes.c_uint32),
("numThreadsPerEU", ctypes.c_uint32),
("physicalEUSimdWidth", ctypes.c_uint32),
("numEUsPerSubslice", ctypes.c_uint32),
("numSubslicesPerSlice", ctypes.c_uint32),
("numSlices", ctypes.c_uint32),
("timerResolution", ctypes.c_uint64),
("timestampValidBits", ctypes.c_uint32),
("kernelTimestampValidBits", ctypes.c_uint32),
("uuid", ze_device_uuid_t),
("name", ctypes.c_char * ZE_MAX_DEVICE_NAME),
]
if sys.platform == "win32":
loader_names = ["ze_loader.dll"]
else:
loader_names = [ctypes.util.find_library("ze_loader"), "libze_loader.so.1", "libze_loader.so"]
ze = None
for name in loader_names:
if not name:
continue
try:
ze = ctypes.CDLL(name)
break
except OSError:
pass
if ze is None:
return False
ze.zeInit.argtypes = [ctypes.c_uint32]
ze.zeInit.restype = ctypes.c_uint32
ze.zeDriverGet.argtypes = [ctypes.POINTER(ctypes.c_uint32), ctypes.POINTER(ctypes.c_void_p)]
ze.zeDriverGet.restype = ctypes.c_uint32
ze.zeDeviceGet.argtypes = [ctypes.c_void_p, ctypes.POINTER(ctypes.c_uint32), ctypes.POINTER(ctypes.c_void_p)]
ze.zeDeviceGet.restype = ctypes.c_uint32
ze.zeDeviceGetProperties.argtypes = [ctypes.c_void_p, ctypes.POINTER(ze_device_properties_t)]
ze.zeDeviceGetProperties.restype = ctypes.c_uint32
if ze.zeInit(0) != ZE_RESULT_SUCCESS:
return False
try:
torch_device_id = int(torch.xpu.get_device_properties(torch.xpu.current_device()).device_id)
except Exception:
torch_device_id = None
driver_count = ctypes.c_uint32(0)
if ze.zeDriverGet(ctypes.byref(driver_count), None) != ZE_RESULT_SUCCESS or driver_count.value == 0:
return False
allocated_drivers = driver_count.value
drivers = (ctypes.c_void_p * allocated_drivers)()
if ze.zeDriverGet(ctypes.byref(driver_count), drivers) != ZE_RESULT_SUCCESS:
return False
gpu_devices = [] # (deviceId, is_integrated)
for i in range(min(driver_count.value, allocated_drivers)):
device_count = ctypes.c_uint32(0)
if ze.zeDeviceGet(drivers[i], ctypes.byref(device_count), None) != ZE_RESULT_SUCCESS:
return False
if device_count.value == 0:
continue
allocated_devices = device_count.value
devices = (ctypes.c_void_p * allocated_devices)()
if ze.zeDeviceGet(drivers[i], ctypes.byref(device_count), devices) != ZE_RESULT_SUCCESS:
return False
for j in range(min(device_count.value, allocated_devices)):
props = ze_device_properties_t()
props.stype = ZE_STRUCTURE_TYPE_DEVICE_PROPERTIES
props.pNext = None
if ze.zeDeviceGetProperties(devices[j], ctypes.byref(props)) != ZE_RESULT_SUCCESS:
return False
if props.type != ZE_DEVICE_TYPE_GPU:
continue
gpu_devices.append((int(props.deviceId), bool(props.flags & ZE_DEVICE_PROPERTY_FLAG_INTEGRATED)))
if not gpu_devices:
return False
if torch_device_id is not None:
matches = [integrated for device_id, integrated in gpu_devices if device_id == torch_device_id]
if matches:
# Fail closed if a duplicate PCI device id somehow mixes flags.
_INTEL_XPU_DISCRETE = not any(matches)
return _INTEL_XPU_DISCRETE
# No reliable match: only enable when every visible GPU is discrete so a
# mixed iGPU+dGPU system never enables streams while running on the iGPU.
_INTEL_XPU_DISCRETE = all(not integrated for _, integrated in gpu_devices)
return _INTEL_XPU_DISCRETE
except Exception as e:
logging.info("Could not determine Intel XPU type via Level Zero: {}".format(e))
_INTEL_XPU_DISCRETE = False
return False
STREAMS = {}
NUM_STREAMS = 0
if args.async_offload is not None:
NUM_STREAMS = args.async_offload
else:
# Enable by default on Nvidia, AMD, and discrete Intel XPU
if not args.disable_async_offload and (is_nvidia() or is_amd() or is_intel_xpu_discrete()):
# Enable by default on Nvidia and AMD
if is_nvidia() or is_amd():
NUM_STREAMS = 2
if args.disable_async_offload:
@ -1622,7 +1487,7 @@ PINNED_MEMORY = {}
TOTAL_PINNED_MEMORY = 0
MAX_PINNED_MEMORY = -1
if not args.disable_pinned_memory:
if is_nvidia() or is_amd() or is_intel_xpu():
if is_nvidia() or is_amd():
ram = get_total_memory(torch.device("cpu"))
if WINDOWS:
MAX_PINNED_MEMORY = ram * 0.40 # Windows limit is apparently 50%
@ -1647,20 +1512,6 @@ def discard_cuda_async_error():
#Dump it! We already know about it from the synchronous return
pass
def host_register(ptr, size):
# Intel XPU has no CUDA host-registration API. The pinnable buffers used by
# the DynamicVRAM path are already Level Zero host USM (allocated through the
# aimdo hostbuf / zeMemAllocHost), and pageable host memory is still usable
# for transfers, so registration is a no-op success on XPU.
if is_intel_xpu():
return 0
return torch.cuda.cudart().cudaHostRegister(ptr, size, 1)
def host_unregister(ptr):
if is_intel_xpu():
return 0
return torch.cuda.cudart().cudaHostUnregister(ptr)
def pin_memory(tensor):
global TOTAL_PINNED_MEMORY
if MAX_PINNED_MEMORY <= 0:
@ -1689,7 +1540,7 @@ def pin_memory(tensor):
if ptr == 0:
return False
if host_register(ptr, size) == 0:
if torch.cuda.cudart().cudaHostRegister(ptr, size, 1) == 0:
PINNED_MEMORY[ptr] = size
TOTAL_PINNED_MEMORY += size
return True
@ -1719,7 +1570,7 @@ def unpin_memory(tensor):
logging.warning("Size of pinned tensor changed")
return False
if host_unregister(ptr) == 0:
if torch.cuda.cudart().cudaHostUnregister(ptr) == 0:
size = PINNED_MEMORY.pop(ptr)
TOTAL_PINNED_MEMORY -= size
return True

View File

@ -1961,7 +1961,7 @@ class ModelPatcherDynamic(ModelPatcher):
if not module._pin_registered:
continue
size = module._pin.numel() * module._pin.element_size()
if comfy.model_management.host_unregister(module._pin.data_ptr()) != 0:
if torch.cuda.cudart().cudaHostUnregister(module._pin.data_ptr()) != 0:
comfy.model_management.discard_cuda_async_error()
continue
module._pin_registered = False

View File

@ -1089,6 +1089,19 @@ def _load_quantized_module(module, super_load, state_dict, prefix, local_metadat
if ts is None or bs is None:
raise ValueError(f"Missing NVFP4 scales for layer {layer_name}")
scales = {"scale": ts, "block_scale": bs}
elif module.quant_format == "int8_tensorwise":
scale = pop_scale("weight_scale")
if scale is None:
raise ValueError(f"Missing INT8 weight scale for layer {layer_name}")
scales = {"scale": scale}
params_conf = layer_conf.get("params", {})
if not isinstance(params_conf, dict):
params_conf = {}
if layer_conf.get("convrot", params_conf.get("convrot", False)):
scales["convrot"] = True
scales["convrot_groupsize"] = int(
layer_conf.get("convrot_groupsize", params_conf.get("convrot_groupsize", 256))
)
else:
raise ValueError(f"Unsupported quantization format: {module.quant_format}")
@ -1131,6 +1144,10 @@ def _quantized_weight_state_dict(module, sd, prefix, extra_quant_conf=None, extr
quant_conf = {"format": module.quant_format}
if getattr(module, '_full_precision_mm_config', False):
quant_conf["full_precision_matrix_mult"] = True
params = getattr(module.weight, "_params", None)
if module.quant_format == "int8_tensorwise" and getattr(params, "convrot", False):
quant_conf["convrot"] = True
quant_conf["convrot_groupsize"] = getattr(params, "convrot_groupsize", 256)
if extra_quant_conf:
quant_conf.update(extra_quant_conf)
sd[f"{prefix}comfy_quant"] = torch.tensor(list(json.dumps(quant_conf).encode("utf-8")), dtype=torch.uint8)
@ -1183,8 +1200,33 @@ def mixed_precision_ops(quant_config={}, compute_dtype=torch.bfloat16, full_prec
def _forward(self, input, weight, bias):
return torch.nn.functional.linear(input, weight, bias)
def forward_comfy_cast_weights(self, input, compute_dtype=None, want_requant=False):
weight, bias, offload_stream = cast_bias_weight(self, input, offloadable=True, compute_dtype=compute_dtype, want_requant=want_requant)
def forward_comfy_cast_weights(
self,
input,
compute_dtype=None,
want_requant=False,
weight_only_quant=False,
):
if weight_only_quant:
weight, bias, offload_stream = cast_bias_weight(
self,
input=None,
dtype=self.weight.dtype,
device=input.device,
bias_dtype=input.dtype,
offloadable=True,
compute_dtype=compute_dtype,
want_requant=want_requant,
)
weight = weight.to(dtype=input.dtype)
else:
weight, bias, offload_stream = cast_bias_weight(
self,
input,
offloadable=True,
compute_dtype=compute_dtype,
want_requant=want_requant,
)
x = self._forward(input, weight, bias)
uncast_bias_weight(self, weight, bias, offload_stream)
return x
@ -1203,9 +1245,10 @@ def mixed_precision_ops(quant_config={}, compute_dtype=torch.bfloat16, full_prec
not getattr(self, 'comfy_force_cast_weights', False) and
len(self.weight_function) == 0 and len(self.bias_function) == 0
)
quantize_input = QUANT_ALGOS.get(getattr(self, 'quant_format', None), {}).get("quantize_input", True)
# Training path: quantized forward with compute_dtype backward via autograd function
if (input.requires_grad and _use_quantized):
if (input.requires_grad and _use_quantized and quantize_input):
weight, bias, offload_stream = cast_bias_weight(
self,
@ -1227,7 +1270,7 @@ def mixed_precision_ops(quant_config={}, compute_dtype=torch.bfloat16, full_prec
return output
# Inference path (unchanged)
if _use_quantized:
if _use_quantized and quantize_input:
# Reshape 3D tensors to 2D for quantization (needed for NVFP4 and others)
input_reshaped = input.reshape(-1, input_shape[2]) if input.ndim == 3 else input
@ -1241,7 +1284,13 @@ def mixed_precision_ops(quant_config={}, compute_dtype=torch.bfloat16, full_prec
scale = comfy.model_management.cast_to_device(scale, input.device, None)
input = QuantizedTensor.from_float(input_reshaped, self.layout_type, scale=scale)
output = self.forward_comfy_cast_weights(input, compute_dtype, want_requant=isinstance(input, QuantizedTensor))
weight_only_quant = _use_quantized and not quantize_input and isinstance(self.weight, QuantizedTensor)
output = self.forward_comfy_cast_weights(
input,
compute_dtype,
want_requant=isinstance(input, QuantizedTensor),
weight_only_quant=weight_only_quant,
)
# Reshape output back to 3D if input was 3D
if reshaped_3d:

View File

@ -53,7 +53,7 @@ def get_pin(module, subset="weights"):
size = pin.nbytes
comfy.model_management.ensure_pin_registerable(size)
if comfy.model_management.host_register(pin.data_ptr(), size) != 0:
if torch.cuda.cudart().cudaHostRegister(pin.data_ptr(), size, 1) != 0:
comfy.model_management.discard_cuda_async_error()
return pin
@ -95,10 +95,10 @@ def pin_memory(module, subset="weights", size=None):
extended = True
pin = comfy_aimdo.torch.hostbuf_to_tensor(hostbuf)[offset:offset + size]
pin.untyped_storage()._comfy_hostbuf = hostbuf
if comfy.model_management.host_register(pin.data_ptr(), size) != 0:
if torch.cuda.cudart().cudaHostRegister(pin.data_ptr(), size, 1) != 0:
comfy.model_management.discard_cuda_async_error()
comfy.model_management.free_registrations(size)
if comfy.model_management.host_register(pin.data_ptr(), size) != 0:
if torch.cuda.cudart().cudaHostRegister(pin.data_ptr(), size, 1) != 0:
comfy.model_management.discard_cuda_async_error()
del pin
hostbuf.truncate(offset, do_unregister=False)

View File

@ -10,6 +10,7 @@ try:
QuantizedLayout,
TensorCoreFP8Layout as _CKFp8Layout,
TensorCoreNVFP4Layout as _CKNvfp4Layout,
TensorWiseINT8Layout as _CKTensorWiseINT8Layout,
register_layout_op,
register_layout_class,
get_layout_class,
@ -47,6 +48,9 @@ except ImportError as e:
class _CKNvfp4Layout:
pass
class _CKTensorWiseINT8Layout:
pass
def register_layout_class(name, cls):
pass
@ -174,6 +178,7 @@ class TensorCoreFP8E5M2Layout(_TensorCoreFP8LayoutBase):
# Backward compatibility alias - default to E4M3
TensorCoreFP8Layout = TensorCoreFP8E4M3Layout
TensorWiseINT8Layout = _CKTensorWiseINT8Layout
# ==============================================================================
@ -184,6 +189,7 @@ register_layout_class("TensorCoreFP8Layout", TensorCoreFP8Layout)
register_layout_class("TensorCoreFP8E4M3Layout", TensorCoreFP8E4M3Layout)
register_layout_class("TensorCoreFP8E5M2Layout", TensorCoreFP8E5M2Layout)
register_layout_class("TensorCoreNVFP4Layout", TensorCoreNVFP4Layout)
register_layout_class("TensorWiseINT8Layout", _CKTensorWiseINT8Layout)
if _CK_MXFP8_AVAILABLE:
register_layout_class("TensorCoreMXFP8Layout", TensorCoreMXFP8Layout)
@ -214,6 +220,13 @@ if _CK_MXFP8_AVAILABLE:
"group_size": 32,
}
QUANT_ALGOS["int8_tensorwise"] = {
"storage_t": torch.int8,
"parameters": {"weight_scale"},
"comfy_tensor_layout": "TensorWiseINT8Layout",
"quantize_input": False,
}
# ==============================================================================
# Re-exports for backward compatibility
@ -226,6 +239,7 @@ __all__ = [
"TensorCoreFP8E4M3Layout",
"TensorCoreFP8E5M2Layout",
"TensorCoreNVFP4Layout",
"TensorWiseINT8Layout",
"QUANT_ALGOS",
"register_layout_op",
]

View File

@ -30,6 +30,11 @@ CLI_FEATURE_FLAG_REGISTRY: dict[str, FeatureFlagInfo] = {
"default": False,
"description": "Signal the frontend that telemetry collection is enabled",
},
"show_version_updates": {
"type": "bool",
"default": True,
"description": "Default for whether the frontend shows new-release/version-update notifications (the user setting can still override it)",
},
}

View File

@ -891,6 +891,14 @@ class Tracks(ComfyTypeIO):
track_visibility: torch.Tensor
Type = TrackDict
@comfytype(io_type="DICT")
class Dict(ComfyTypeIO):
Type = dict
@comfytype(io_type="ARRAY")
class Array(ComfyTypeIO):
Type = list
@comfytype(io_type="COMFY_MULTITYPED_V3")
class MultiType:
Type = Any
@ -1279,6 +1287,19 @@ class Color(ComfyTypeIO):
def as_dict(self):
return super().as_dict()
@comfytype(io_type="COLORS")
class Colors(ComfyTypeIO):
Type = list[Color.Type]
class Input(WidgetInput):
def __init__(self, id: str, display_name: str=None, optional=False, tooltip: str=None,
socketless: bool=True, default: list[str]=None, advanced: bool=None):
super().__init__(id, display_name, optional, tooltip, None, default, socketless, None, None, None, None, advanced)
if default is None:
self.default = []
@comfytype(io_type="BOUNDING_BOX")
class BoundingBox(ComfyTypeIO):
class BoundingBoxDict(TypedDict):
@ -1326,6 +1347,20 @@ class Curve(ComfyTypeIO):
return d
@comfytype(io_type="BOUNDING_BOXES")
class BoundingBoxes(ComfyTypeIO):
class BoundingBoxWithMetadata(BoundingBox.BoundingBoxDict):
metadata: dict
Type = list[BoundingBoxWithMetadata]
class Input(WidgetInput):
def __init__(self, id: str, display_name: str=None, optional=False, tooltip: str=None,
socketless: bool=True, default: list[dict]=None, advanced: bool=None):
super().__init__(id, display_name, optional, tooltip, None, default, socketless, None, None, None, None, advanced)
if default is None:
self.default = []
@comfytype(io_type="HISTOGRAM")
class Histogram(ComfyTypeIO):
"""A histogram represented as a list of bin counts."""
@ -2376,6 +2411,8 @@ __all__ = [
"AnyType",
"MultiType",
"Tracks",
"Dict",
"Array",
"Color",
# Dynamic Types
"MatchType",
@ -2394,6 +2431,8 @@ __all__ = [
"PriceBadgeDepends",
"PriceBadge",
"BoundingBox",
"BoundingBoxes",
"Colors",
"Curve",
"Histogram",
"Range",

View File

@ -177,6 +177,10 @@ SEEDANCE2_PRICE_PER_1K_TOKENS = {
("dreamina-seedance-2-0-fast-260128", True, "480p"): 0.0033,
("dreamina-seedance-2-0-fast-260128", False, "720p"): 0.0056,
("dreamina-seedance-2-0-fast-260128", True, "720p"): 0.0033,
("dreamina-seedance-2-0-mini", False, "480p"): 0.0035,
("dreamina-seedance-2-0-mini", True, "480p"): 0.0021,
("dreamina-seedance-2-0-mini", False, "720p"): 0.0035,
("dreamina-seedance-2-0-mini", True, "720p"): 0.0021,
}
@ -278,6 +282,10 @@ SEEDANCE2_REF_VIDEO_PIXEL_LIMITS = {
"480p": {"min": 409_600, "max": 927_408},
"720p": {"min": 409_600, "max": 927_408},
},
"dreamina-seedance-2-0-mini": {
"480p": {"min": 409_600, "max": 927_408},
"720p": {"min": 409_600, "max": 927_408},
},
}
# The time in this dictionary are given for 10 seconds duration.

View File

@ -89,6 +89,7 @@ BYTEPLUS_SEEDANCE2_TASK_STATUS_ENDPOINT = "/proxy/byteplus-seedance2/api/v3/cont
SEEDANCE_MODELS = {
"Seedance 2.0": "dreamina-seedance-2-0-260128",
"Seedance 2.0 Fast": "dreamina-seedance-2-0-fast-260128",
"Seedance 2.0 Mini": "dreamina-seedance-2-0-mini",
}
DEPRECATED_MODELS = {"seedance-1-0-lite-t2v-250428", "seedance-1-0-lite-i2v-250428"}
@ -1623,8 +1624,10 @@ class ByteDance2TextToVideoNode(IO.ComfyNode):
options=[
IO.DynamicCombo.Option("Seedance 2.0", _seedance2_text_inputs(["480p", "720p", "1080p", "4k"])),
IO.DynamicCombo.Option("Seedance 2.0 Fast", _seedance2_text_inputs(["480p", "720p"])),
IO.DynamicCombo.Option("Seedance 2.0 Mini", _seedance2_text_inputs(["480p", "720p"])),
],
tooltip="Seedance 2.0 for maximum quality; Seedance 2.0 Fast for speed optimization.",
tooltip="Seedance 2.0 for maximum quality; Fast for speed optimization; "
"Mini for the fastest, lowest-cost generation.",
),
IO.Int.Input(
"seed",
@ -1666,6 +1669,7 @@ class ByteDance2TextToVideoNode(IO.ComfyNode):
$dur := $lookup(widgets, "model.duration");
$pricePer1K := $res = "4k" ? 0.00572 :
$res = "1080p" ? 0.011011 :
$contains($m, "mini") ? 0.005005 :
$contains($m, "fast") ? 0.008008 : 0.01001;
$rate := $res = "4k" ? $rate4k :
$res = "1080p" ? $rate1080 :
@ -1734,8 +1738,13 @@ class ByteDance2FirstLastFrameNode(IO.ComfyNode):
"Seedance 2.0 Fast",
_seedance2_text_inputs(["480p", "720p"], default_ratio="adaptive"),
),
IO.DynamicCombo.Option(
"Seedance 2.0 Mini",
_seedance2_text_inputs(["480p", "720p"], default_ratio="adaptive"),
),
],
tooltip="Seedance 2.0 for maximum quality; Seedance 2.0 Fast for speed optimization.",
tooltip="Seedance 2.0 for maximum quality; Fast for speed optimization; "
"Mini for the fastest, lowest-cost generation.",
),
IO.Image.Input(
"first_frame",
@ -1801,6 +1810,7 @@ class ByteDance2FirstLastFrameNode(IO.ComfyNode):
$dur := $lookup(widgets, "model.duration");
$pricePer1K := $res = "4k" ? 0.00572 :
$res = "1080p" ? 0.011011 :
$contains($m, "mini") ? 0.005005 :
$contains($m, "fast") ? 0.008008 : 0.01001;
$rate := $res = "4k" ? $rate4k :
$res = "1080p" ? $rate1080 :
@ -2024,8 +2034,13 @@ class ByteDance2ReferenceNode(IO.ComfyNode):
"Seedance 2.0 Fast",
_seedance2_reference_inputs(["480p", "720p"], default_ratio="adaptive"),
),
IO.DynamicCombo.Option(
"Seedance 2.0 Mini",
_seedance2_reference_inputs(["480p", "720p"], default_ratio="adaptive"),
),
],
tooltip="Seedance 2.0 for maximum quality; Seedance 2.0 Fast for speed optimization.",
tooltip="Seedance 2.0 for maximum quality; Fast for speed optimization; "
"Mini for the fastest, lowest-cost generation.",
),
IO.Int.Input(
"seed",
@ -2071,9 +2086,11 @@ class ByteDance2ReferenceNode(IO.ComfyNode):
$dur := $lookup(widgets, "model.duration");
$noVideoPricePer1K := $res = "4k" ? 0.00572 :
$res = "1080p" ? 0.011011 :
$contains($m, "mini") ? 0.005005 :
$contains($m, "fast") ? 0.008008 : 0.01001;
$videoPricePer1K := $res = "4k" ? 0.003432 :
$res = "1080p" ? 0.006721 :
$contains($m, "mini") ? 0.003003 :
$contains($m, "fast") ? 0.004719 : 0.006149;
$rate := $res = "4k" ? $rate4k :
$res = "1080p" ? $rate1080 :

View File

@ -0,0 +1,23 @@
def hex_to_rgb(value: str) -> tuple[int, int, int]:
h = value.lstrip("#")
if len(h) != 6:
return (255, 255, 255)
try:
return (int(h[0:2], 16), int(h[2:4], 16), int(h[4:6], 16))
except ValueError:
return (255, 255, 255)
def readable_color(rgb: tuple[int, int, int]) -> tuple[int, int, int]:
r, g, b = rgb
lum = 0.299 * r + 0.587 * g + 0.114 * b
if lum >= 130:
return (r, g, b)
t = (130 - lum) / (255 - lum)
return (round(r + (255 - r) * t), round(g + (255 - g) * t), round(b + (255 - b) * t))
def normalize_palette(colors) -> list[str]:
if isinstance(colors, dict):
colors = colors.values()
return [c.upper() for c in colors if isinstance(c, str) and c]

View File

@ -0,0 +1,253 @@
import numpy as np
import torch
from PIL import Image, ImageDraw, ImageEnhance, ImageFont
from typing_extensions import override
from comfy_api.latest import ComfyExtension, io
from comfy_extras.color_util import hex_to_rgb, normalize_palette, readable_color
_PREVIEW_LONG_EDGE = 1024
_PREVIEW_DIM = 0.25
def pixels_to_fractions(box: dict, width: int, height: int) -> dict:
w = width or 1
h = height or 1
return {
"x": box.get("x", 0) / w,
"y": box.get("y", 0) / h,
"w": box.get("width", 0) / w,
"h": box.get("height", 0) / h,
}
def fractions_to_pixels(box: dict, width: int, height: int) -> dict:
x, y = box.get("x", 0.0), box.get("y", 0.0)
w, h = box.get("w", 0.0), box.get("h", 0.0)
if w < 0:
x, w = x + w, -w
if h < 0:
y, h = y + h, -h
return {
"x": round(x * width),
"y": round(y * height),
"width": round(w * width),
"height": round(h * height),
}
def fractions_to_bbox_frame(boxes: list, width: int, height: int) -> list:
pixels = [
fractions_to_pixels(box, width, height)
for box in boxes
if isinstance(box, dict)
]
return [pixels] if pixels else []
def _font(size: int):
try:
return ImageFont.load_default(size)
except Exception:
return ImageFont.load_default()
def _wrap(draw, text: str, font, max_w: float) -> list[str]:
lines = []
for para in text.split("\n"):
line = ""
for word in para.split():
test = word if not line else line + " " + word
if line and draw.textlength(test, font=font) > max_w:
lines.append(line)
line = word
else:
line = test
lines.append(line)
return lines
def _bg_from_image(image) -> Image.Image | None:
if image is None:
return None
try:
arr = (image[0].detach().cpu().numpy() * 255).clip(0, 255).astype(np.uint8)
return Image.fromarray(arr)
except Exception:
return None
def render_preview(regions, width, height, bg=None):
if bg is not None:
iw, ih = bg.size
long_edge = max(iw, ih) or 1
scale = min(1.0, _PREVIEW_LONG_EDGE / long_edge)
rw, rh = max(1, round(iw * scale)), max(1, round(ih * scale))
base = bg.convert("RGB").resize((rw, rh), Image.LANCZOS)
base = ImageEnhance.Brightness(base).enhance(_PREVIEW_DIM)
img = base.convert("RGBA")
else:
long_edge = max(width, height) or 1
scale = min(1.0, _PREVIEW_LONG_EDGE / long_edge)
rw, rh = max(1, round(width * scale)), max(1, round(height * scale))
grey = round(_PREVIEW_DIM * 128)
img = Image.new("RGBA", (rw, rh), (grey, grey, grey, 255))
overlay = Image.new("RGBA", (rw, rh), (0, 0, 0, 0))
draw = ImageDraw.Draw(overlay)
fs = max(10, round(rh / 64))
font = _font(fs)
tag_font = _font(max(9, fs - 2))
line_h = fs + 2
for i, region in enumerate(regions):
if not isinstance(region, dict):
continue
palette = [c for c in (region.get("palette") or []) if c]
r, g, b = hex_to_rgb(palette[0]) if palette else (140, 140, 140)
x1 = max(0, min(rw, round(region.get("x", 0) * rw)))
y1 = max(0, min(rh, round(region.get("y", 0) * rh)))
x2 = max(0, min(rw, round((region.get("x", 0) + region.get("w", 0)) * rw)))
y2 = max(0, min(rh, round((region.get("y", 0) + region.get("h", 0)) * rh)))
if x2 < x1:
x1, x2 = x2, x1
if y2 < y1:
y1, y2 = y2, y1
draw.rectangle([x1, y1, x2, y2], outline=(r, g, b, 255), width=2)
swatches = palette[:5]
if swatches and (x2 - x1) > 2:
sh = max(5, fs // 2)
seg = (x2 - x1) / len(swatches)
for p, hexc in enumerate(swatches):
sx = x1 + round(p * seg)
draw.rectangle([sx, y1, x1 + round((p + 1) * seg), y1 + sh], fill=hex_to_rgb(hexc))
etype = "text" if region.get("type") == "text" else "obj"
tag = str(i + 1).zfill(2)
tw = draw.textlength(tag, font=tag_font)
draw.rectangle([x1, y1, x1 + tw + 6, y1 + fs + 2], fill=(r, g, b, 255))
tag_fill = (0, 0, 0, 255) if (0.299 * r + 0.587 * g + 0.114 * b) > 140 else (255, 255, 255, 255)
draw.text((x1 + 3, y1 + 1), tag, fill=tag_fill, font=tag_font)
body = region.get("desc", "") or ""
if etype == "text" and region.get("text"):
body = '"%s"%s' % (region["text"], "" + body if body else "")
if body and (x2 - x1) > 8:
ty = y1 + fs + 5
for line in _wrap(draw, body, font, x2 - x1 - 8):
if ty > y2:
break
draw.text((x1 + 4, ty), line, fill=readable_color((r, g, b)) + (255,), font=font)
ty += line_h
composed = Image.alpha_composite(img, overlay).convert("RGB")
arr = np.asarray(composed, dtype=np.float32) / 255.0
return torch.from_numpy(arr).unsqueeze(0)
def boxes_to_regions(boxes, width: int, height: int) -> list:
regions: list = []
if not isinstance(boxes, list):
return regions
for box in boxes:
if not isinstance(box, dict):
continue
meta = box.get("metadata")
meta = meta if isinstance(meta, dict) else {}
regions.append({
**pixels_to_fractions(box, width, height),
"type": meta.get("type", "obj"),
"text": meta.get("text", ""),
"desc": meta.get("desc", ""),
"palette": meta.get("palette", []),
})
return regions
def _norm_bbox(region: dict) -> list[int]:
def grid(value: float) -> int:
return max(0, min(1000, round(value * 1000)))
x, y = region.get("x", 0.0), region.get("y", 0.0)
w, h = region.get("w", 0.0), region.get("h", 0.0)
ymin, xmin, ymax, xmax = grid(y), grid(x), grid(y + h), grid(x + w)
if ymin > ymax:
ymin, ymax = ymax, ymin
if xmin > xmax:
xmin, xmax = xmax, xmin
return [ymin, xmin, ymax, xmax]
def build_elements(regions: list) -> list:
elements = []
for region in regions:
if not isinstance(region, dict):
continue
etype = "text" if region.get("type") == "text" else "obj"
element = {"type": etype}
element["bbox"] = _norm_bbox(region)
if etype == "text":
element["text"] = region.get("text", "")
element["desc"] = region.get("desc", "")
palette = normalize_palette(region.get("palette", []))
if palette:
element["color_palette"] = palette[:5]
elements.append(element)
return elements
class CreateBoundingBoxes(io.ComfyNode):
@classmethod
def define_schema(cls):
editor_state = io.BoundingBoxes.Input(
"editor_state",
socketless=False,
tooltip="Draw bounding boxes and set each box type, text, description, color palette. Start with background element first and foreground last.",
)
return io.Schema(
node_id="CreateBoundingBoxes",
display_name="Create Bounding Boxes",
category="utilities",
description="Draw bounding boxes in a canvas. Outputs Ideogram prompt elements, pixel-space bounding boxes, and a preview image.",
inputs=[
io.Image.Input(
"background",
optional=True,
tooltip="Optional image used as background in the canvas and preview.",
),
io.Int.Input("width", default=1024, min=64, max=16384, step=16,
tooltip="Width of the canvas and the pixel grid for the bounding boxes."),
io.Int.Input("height", default=1024, min=64, max=16384, step=16,
tooltip="Height of the canvas and the pixel grid for the bounding boxes."),
editor_state,
],
outputs=[
io.Image.Output(display_name="preview"),
io.BoundingBox.Output(display_name="bboxes"),
io.Array.Output(display_name="elements"),
],
is_experimental=True,
)
@classmethod
def execute(cls, width, height, editor_state=None, background=None) -> io.NodeOutput:
regions = boxes_to_regions(editor_state, width, height)
preview = render_preview(regions, width, height, _bg_from_image(background))
return io.NodeOutput(
preview,
fractions_to_bbox_frame(regions, width, height),
build_elements(regions),
ui={"dims": [width, height]},
)
class BoundingBoxesExtension(ComfyExtension):
@override
async def get_node_list(self) -> list[type[io.ComfyNode]]:
return [CreateBoundingBoxes]
async def comfy_entrypoint() -> BoundingBoxesExtension:
return BoundingBoxesExtension()

View File

@ -1,5 +1,6 @@
from typing_extensions import override
from comfy_api.latest import ComfyExtension, io
from comfy_extras.color_util import hex_to_rgb
class ColorToRGBInt(io.ComfyNode):
@ -24,9 +25,11 @@ class ColorToRGBInt(io.ComfyNode):
# expect format #RRGGBB
if len(color) != 7 or color[0] != "#":
raise ValueError("Color must be in format #RRGGBB")
r = int(color[1:3], 16)
g = int(color[3:5], 16)
b = int(color[5:7], 16)
try:
int(color[1:], 16)
except ValueError:
raise ValueError("Color must be in format #RRGGBB") from None
r, g, b = hex_to_rgb(color)
rgb_int = r * 256 * 256 + g * 256 + b
return io.NodeOutput(rgb_int, color)

View File

@ -0,0 +1,77 @@
from typing_extensions import override
from comfy_api.latest import ComfyExtension, io
from comfy_extras.color_util import normalize_palette
class BuildJsonPromptIdeogram(io.ComfyNode):
@classmethod
def define_schema(cls):
color_palette = io.Colors.Input(
"color_palette",
socketless=False,
tooltip="Hex color codes that steer the image's dominant colors. Up to 16 entries.",
)
return io.Schema(
node_id="BuildJsonPromptIdeogram",
display_name="Build JSON Prompt (Ideogram)",
category="text",
description="Build a JSON prompt for the Ideogram 4 model.",
inputs=[
io.Array.Input("element", tooltip="Prompt elements from the node Create Bounding Boxes."),
io.String.Input("high_level_description", multiline=True, default="",
tooltip="Optional description of the image in one or two sentences. Strongly recommended."),
io.String.Input("background", multiline=True, default="",
tooltip="Mandatory description of the image background or environment."),
io.DynamicCombo.Input("style", options=[
io.DynamicCombo.Option("none", []),
io.DynamicCombo.Option("photo", [io.String.Input("photo", default="", tooltip="Camera or lens details for photographic outputs (e.g. 35mm, f/1.4, bokeh).")]),
io.DynamicCombo.Option("art_style", [io.String.Input("art_style", default="", tooltip="Art style description (e.g. flat vector illustration, bold outlines).")]),
]),
io.String.Input("aesthetics", default="", tooltip="Mandatory aesthetic keywords (e.g. moody, cinematic, desaturated)."),
io.String.Input("lighting", default="", tooltip="Mandatory lighting description (e.g. golden hour, rim light, dramatic shadows)."),
io.String.Input("medium", default="", tooltip="Mandatory medium type (e.g. photograph, illustration, 3d_render, painting, graphic_design). When style = photo, set to photograph."),
color_palette,
],
outputs=[io.Dict.Output(display_name="prompt")],
is_experimental=True,
)
@classmethod
def execute(cls, element, style, high_level_description="", background="",
aesthetics="", lighting="", medium="", color_palette=None) -> io.NodeOutput:
elements = element if isinstance(element, list) else []
kind = style.get("style", "none") if isinstance(style, dict) else "none"
photo = style.get("photo", "") if isinstance(style, dict) else ""
art_style = style.get("art_style", "") if isinstance(style, dict) else ""
palette = normalize_palette(color_palette or [])
caption: dict = {}
if high_level_description.strip():
caption["high_level_description"] = high_level_description
if kind != "none":
style_desc: dict = {"aesthetics": aesthetics, "lighting": lighting}
if kind == "photo":
style_desc["photo"] = photo
style_desc["medium"] = medium
else:
style_desc["medium"] = medium
style_desc["art_style"] = art_style
if palette:
style_desc["color_palette"] = palette
caption["style_description"] = style_desc
caption["compositional_deconstruction"] = {
"background": background,
"elements": elements,
}
return io.NodeOutput(caption)
class JsonPromptExtension(ComfyExtension):
@override
async def get_node_list(self) -> list[type[io.ComfyNode]]:
return [BuildJsonPromptIdeogram]
async def comfy_entrypoint() -> JsonPromptExtension:
return JsonPromptExtension()

View File

@ -337,6 +337,36 @@ class ModelMergeQwenImage(comfy_extras.nodes_model_merging.ModelMergeBlocks):
return {"required": arg_dict}
class ModelMergeKrea2(comfy_extras.nodes_model_merging.ModelMergeBlocks):
CATEGORY = "model/merging/model specific"
@classmethod
def INPUT_TYPES(s):
arg_dict = { "model1": ("MODEL",),
"model2": ("MODEL",)}
argument = ("FLOAT", {"default": 1.0, "min": 0.0, "max": 1.0, "step": 0.01})
arg_dict["first."] = argument
arg_dict["tmlp."] = argument
arg_dict["txtmlp."] = argument
arg_dict["tproj."] = argument
for i in range(2):
arg_dict["txtfusion.layerwise_blocks.{}.".format(i)] = argument
arg_dict["txtfusion.projector."] = argument
for i in range(2):
arg_dict["txtfusion.refiner_blocks.{}.".format(i)] = argument
for i in range(28):
arg_dict["blocks.{}.".format(i)] = argument
arg_dict["last."] = argument
return {"required": arg_dict}
NODE_CLASS_MAPPINGS = {
"ModelMergeSD1": ModelMergeSD1,
"ModelMergeSD2": ModelMergeSD1, #SD1 and SD2 have the same blocks
@ -353,4 +383,5 @@ NODE_CLASS_MAPPINGS = {
"ModelMergeCosmosPredict2_2B": ModelMergeCosmosPredict2_2B,
"ModelMergeCosmosPredict2_14B": ModelMergeCosmosPredict2_14B,
"ModelMergeQwenImage": ModelMergeQwenImage,
"ModelMergeKrea2": ModelMergeKrea2,
}

View File

@ -0,0 +1,33 @@
import sys
from typing_extensions import override
from comfy_api.latest import ComfyExtension, io
class SeedNode(io.ComfyNode):
@classmethod
def define_schema(cls):
return io.Schema(
node_id="SeedNode",
display_name="Seed",
search_aliases=["seed", "random"],
category="utilities",
inputs=[
io.Int.Input("seed", min=0, max=sys.maxsize, control_after_generate=io.ControlAfterGenerate.fixed),
],
outputs=[io.Int.Output(display_name="seed")],
)
@classmethod
def execute(cls, seed: int) -> io.NodeOutput:
return io.NodeOutput(seed)
class SeedExtension(ComfyExtension):
@override
async def get_node_list(self) -> list[type[io.ComfyNode]]:
return [SeedNode]
async def comfy_entrypoint() -> SeedExtension:
return SeedExtension()

View File

@ -440,6 +440,57 @@ class JsonExtractString(io.ComfyNode):
except (json.JSONDecodeError, TypeError):
return io.NodeOutput("")
def _dump_json(value, indent):
return json.dumps(value, ensure_ascii=False, indent=indent or None)
class ConvertDictionaryToString(io.ComfyNode):
@classmethod
def define_schema(cls):
return io.Schema(
node_id="ConvertDictionaryToString",
display_name="Convert Dictionary to String",
category="text",
search_aliases=["json", "dict to json", "stringify", "serialize", "dict to string"],
inputs=[
io.Dict.Input("dictionary"),
io.Int.Input("indent", default=2, min=0, max=8,
tooltip="Spaces per indent level. 0 produces compact single-line string."),
],
outputs=[
io.String.Output(),
],
)
@classmethod
def execute(cls, dictionary, indent=2):
return io.NodeOutput(_dump_json(dictionary, indent))
class ConvertArrayToString(io.ComfyNode):
@classmethod
def define_schema(cls):
return io.Schema(
node_id="ConvertArrayToString",
display_name="Convert Array to String",
category="text",
search_aliases=["json", "list to json", "stringify", "serialize", "list to string", "array to json"],
inputs=[
io.Array.Input("array"),
io.Int.Input("indent", default=2, min=0, max=8,
tooltip="Spaces per indent level. 0 produces compact single-line string."),
],
outputs=[
io.String.Output(),
],
)
@classmethod
def execute(cls, array, indent=2):
return io.NodeOutput(_dump_json(array, indent))
class StringExtension(ComfyExtension):
@override
async def get_node_list(self) -> list[type[io.ComfyNode]]:
@ -457,6 +508,8 @@ class StringExtension(ComfyExtension):
RegexExtract,
RegexReplace,
JsonExtractString,
ConvertDictionaryToString,
ConvertArrayToString,
]
async def comfy_entrypoint() -> StringExtension:

View File

@ -236,7 +236,7 @@ import hook_breaker_ac10a0
import comfy.memory_management
import comfy.model_patcher
if args.enable_dynamic_vram or (enables_dynamic_vram() and (comfy.model_management.is_nvidia() or comfy.model_management.is_intel_xpu()) and not comfy.model_management.is_wsl()):
if args.enable_dynamic_vram or (enables_dynamic_vram() and comfy.model_management.is_nvidia() and not comfy.model_management.is_wsl()):
if (not args.enable_dynamic_vram) and (comfy.model_management.torch_version_numeric < (2, 8)):
logging.warning("Unsupported Pytorch detected. DynamicVRAM support requires Pytorch version 2.8 or later. Falling back to legacy ModelPatcher. VRAM estimates may be unreliable especially on Windows")
else:

View File

@ -2374,6 +2374,8 @@ async def init_builtin_extra_nodes():
"nodes_images.py",
"nodes_video_model.py",
"nodes_ideogram4.py",
"nodes_bounding_boxes.py",
"nodes_json_prompt.py",
"nodes_train.py",
"nodes_dataset.py",
"nodes_sag.py",
@ -2473,6 +2475,7 @@ async def init_builtin_extra_nodes():
"nodes_gaussian_splat.py",
"nodes_triposplat.py",
"nodes_depth_anything_3.py",
"nodes_seed.py",
]
import_failed = []

View File

@ -1692,6 +1692,12 @@ paths:
schema:
$ref: '#/components/schemas/ErrorResponse'
description: Unsupported media type
"422":
content:
application/json:
schema:
$ref: '#/components/schemas/ErrorResponse'
description: Validation error (e.g., disallowed model_type tag)
"500":
content:
application/json:
@ -2137,6 +2143,12 @@ paths:
schema:
$ref: '#/components/schemas/ErrorResponse'
description: Source asset with given hash not found
"422":
content:
application/json:
schema:
$ref: '#/components/schemas/ErrorResponse'
description: Validation error (e.g., disallowed model_type tag)
"500":
content:
application/json:
@ -2992,7 +3004,7 @@ paths:
format: uuid
type: string
- description: |
When present, each output item in the response receives a `short_url` field containing an owner-gated durable link for that asset. Omit this parameter (the default) to receive a response identical to the no-param baseline. The value selects the link's lifetime: use `ephemeral_tool_chain` for short-lived machine-to-machine handoffs (~15 minutes); use `default` for durable human-revisitable links (30 days). Links are minted only for the authenticated request owner and are not resolvable by other users.
When present, each output item in the response receives a `short_url` field containing a short link for that asset. Omit this parameter (the default) to receive a response identical to the no-param baseline. The value selects the link's lifetime and auth model: use `ephemeral_tool_chain` for short-lived (≤5 minute) machine-to-machine handoffs — these are public bearer links where the link ID itself is the credential, so anyone holding the link can resolve it (intended for pasting into an agent/MCP tool chain); use `default` for durable (30 day) human-revisitable links, which are owner-gated and resolvable only by the authenticated owner. Links are always minted under the authenticated request owner's identity; the auth model is selected by the server and is never settable by the caller.
in: query
name: short_link
schema:

View File

@ -1,5 +1,5 @@
comfyui-frontend-package==1.45.19
comfyui-workflow-templates==0.10.2
comfyui-workflow-templates==0.10.7
comfyui-embedded-docs==0.5.5
torch
torchsde
@ -22,7 +22,7 @@ alembic
SQLAlchemy>=2.0.0
filelock
av>=16.0.0
comfy-kitchen==0.2.10
comfy-kitchen==0.2.12
comfy-aimdo==0.4.10
requests
simpleeval>=1.0.0

View File

@ -228,6 +228,62 @@ class TestMixedPrecisionOps(unittest.TestCase):
with self.assertRaises(KeyError):
model.load_state_dict(state_dict, strict=False)
def test_int8_convrot_metadata_loads_into_params(self):
"""ConvRot metadata must reach TensorWiseINT8Layout params."""
torch.manual_seed(123)
layer_quant_config = {
"layer": {
"format": "int8_tensorwise",
"convrot": True,
"convrot_groupsize": 256,
}
}
weight = torch.randn(16, 256, dtype=torch.bfloat16)
bias = torch.randn(16, dtype=torch.bfloat16)
q_weight = QuantizedTensor.from_float(
weight,
"TensorWiseINT8Layout",
per_channel=True,
convrot=True,
convrot_groupsize=256,
)
state_dict = {
"layer.weight": q_weight._qdata,
"layer.bias": bias,
"layer.weight_scale": q_weight._params.scale,
}
state_dict, _ = comfy.utils.convert_old_quants(
state_dict,
metadata={"_quantization_metadata": json.dumps({"layers": layer_quant_config})},
)
model = torch.nn.Module()
model.layer = ops.mixed_precision_ops({}).Linear(256, 16, device="cpu", dtype=torch.bfloat16)
model.load_state_dict(state_dict, strict=False)
self.assertIsInstance(model.layer.weight, QuantizedTensor)
self.assertEqual(model.layer.weight._layout_cls, "TensorWiseINT8Layout")
self.assertTrue(model.layer.weight._params.convrot)
self.assertEqual(model.layer.weight._params.convrot_groupsize, 256)
input_tensor = torch.randn(4, 256, dtype=torch.bfloat16)
loaded_out = model.layer(input_tensor)
ref_out = torch.nn.functional.linear(input_tensor, q_weight, bias)
self.assertTrue(torch.equal(loaded_out, ref_out))
fp16_input = input_tensor.to(torch.float16)
loaded_fp16_out = model.layer(fp16_input)
ref_fp16_out = torch.nn.functional.linear(
fp16_input,
q_weight.to(dtype=torch.float16),
bias.to(dtype=torch.float16),
)
self.assertTrue(torch.equal(loaded_fp16_out, ref_fp16_out))
saved = model.state_dict()
saved_conf = json.loads(saved["layer.comfy_quant"].numpy().tobytes())
self.assertTrue(saved_conf["convrot"])
self.assertEqual(saved_conf["convrot_groupsize"], 256)
if __name__ == "__main__":
unittest.main()