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sgl-project--sglang/python/sglang/multimodal_gen/runtime/entrypoints/diffusion_generator.py
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wehub-resource-sync 94057c3d3e
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chore: import upstream snapshot with attribution
2026-07-13 12:38:16 +08:00

714 lines
27 KiB
Python

# Copied and adapted from: https://github.com/hao-ai-lab/FastVideo
# SPDX-License-Identifier: Apache-2.0
"""
DiffGenerator module for sglang-diffusion.
This module provides a consolidated interface for generating images/videos using
diffusion models.
"""
import dataclasses
import multiprocessing as mp
import os
import time
from contextlib import ExitStack
from typing import Any, List, Union
from sglang.multimodal_gen.configs.sample.sampling_params import (
DataType,
SamplingParams,
)
from sglang.multimodal_gen.runtime.entrypoints.utils import (
GenerationResult,
ListLorasReq,
MergeLoraWeightsReq,
SetLoraReq,
ShutdownReq,
UnmergeLoraWeightsReq,
expand_request_outputs,
format_lora_message,
prepare_request,
save_outputs,
)
from sglang.multimodal_gen.runtime.launch_server import launch_server
from sglang.multimodal_gen.runtime.pipelines_core import Req
from sglang.multimodal_gen.runtime.pipelines_core.schedule_batch import OutputBatch
from sglang.multimodal_gen.runtime.scheduler_client import sync_scheduler_client
from sglang.multimodal_gen.runtime.server_args import PortArgs, ServerArgs
from sglang.multimodal_gen.runtime.server_warmup import (
run_sync_client_warmup,
should_run_explicit_client_warmup,
)
from sglang.multimodal_gen.runtime.utils.logging_utils import (
GREEN,
RESET,
init_logger,
log_batch_completion,
log_generation_timer,
)
from sglang.multimodal_gen.runtime.utils.trace_wrapper import (
init_diffusion_tracing,
trace_req,
)
logger = init_logger(__name__)
try:
# Set the start method to 'spawn' to avoid CUDA errors in forked processes.
# This must be done at the top level of the module, before any CUDA context
# or other processes are initialized.
mp.set_start_method("spawn", force=True)
except RuntimeError:
# The start method can only be set once per program execution.
pass
class DiffGenerator:
"""
A unified class for generating images/videos using diffusion models.
This class provides a simple interface for image/video generation with rich
customization options, similar to popular frameworks like HF Diffusers.
"""
def __init__(
self,
server_args: ServerArgs,
):
"""
Initialize the generator.
Args:
server_args: The inference arguments
"""
self.server_args = server_args
self.port_args = PortArgs.from_server_args(server_args)
# The executor is now a client to the Scheduler service
self.local_scheduler_process: list[mp.Process] | None = None
self.owns_scheduler_client: bool = False
@classmethod
def from_pretrained(
cls,
local_mode: bool = True,
**kwargs,
) -> "DiffGenerator":
"""
Create a DiffGenerator from a pretrained model.
Priority level: Default pipeline config < User's pipeline config < User's kwargs
"""
# If users also provide some kwargs, it will override the ServerArgs and PipelineConfig.
if (server_args := kwargs.get("server_args", None)) is not None:
if isinstance(server_args, ServerArgs):
pass
elif isinstance(server_args, dict):
server_args = ServerArgs.from_kwargs(**server_args)
else:
server_args = ServerArgs.from_kwargs(**kwargs)
return cls.from_server_args(server_args, local_mode=local_mode)
@classmethod
def from_server_args(
cls, server_args: ServerArgs, local_mode: bool = True
) -> "DiffGenerator":
"""
Create a DiffGenerator with the specified arguments.
Args:
server_args: The inference arguments
Returns:
The created DiffGenerator
"""
instance = cls(
server_args=server_args,
)
init_diffusion_tracing(server_args, "DiffGenerator")
logger.info(f"Local mode: {local_mode}")
if local_mode:
instance.local_scheduler_process = instance._start_local_server_if_needed()
instance.owns_scheduler_client = True
instance._run_client_warmup_if_needed()
else:
# In remote mode, we just need to connect and check.
sync_scheduler_client.initialize(server_args)
instance._check_remote_scheduler()
instance.owns_scheduler_client = True
return instance
def _start_local_server_if_needed(
self,
) -> list[mp.Process]:
"""Check if a local server is running; if not, start it and return the process handles."""
# First, we need a client to test the server. Initialize it temporarily.
sync_scheduler_client.initialize(self.server_args)
processes = launch_server(self.server_args, launch_http_server=False)
return processes
def _run_client_warmup_if_needed(self) -> None:
if not should_run_explicit_client_warmup(self.server_args):
return
run_sync_client_warmup(self.server_args, sync_scheduler_client.forward)
def _check_remote_scheduler(self):
"""Check if the remote scheduler is accessible."""
if not sync_scheduler_client.ping():
raise ConnectionError(
f"Could not connect to remote scheduler at "
f"{self.server_args.scheduler_endpoint} with `local mode` as False. "
"Please ensure the server is running."
)
logger.info(
f"Successfully connected to remote scheduler at "
f"{self.server_args.scheduler_endpoint}."
)
@staticmethod
def _resolve_image_paths_per_prompt(
prompts: list[str], image_paths: str | list[str] | None
) -> list[str | list[str] | None]:
if len(prompts) <= 1:
return [image_paths]
if not isinstance(image_paths, list) or len(image_paths) <= 1:
return [image_paths for _ in prompts]
if len(image_paths) != len(prompts):
raise ValueError(
"When using multiple prompts with multiple input images, "
"provide either one shared image or exactly one image per prompt."
)
return [[image_path] for image_path in image_paths]
def generate(
self,
sampling_params_kwargs: dict | None = None,
external_trace_header: dict[str, str] | None = None,
) -> GenerationResult | list[GenerationResult] | None:
"""Generate image(s)/video(s) based on the given prompt(s).
Returns a single GenerationResult for a single prompt, a list for
multiple prompts, or None when every request failed.
"""
# 1. prepare requests
prompts = self._resolve_prompts(
sampling_params_kwargs.get("prompt"),
sampling_params_kwargs.get("prompt_path"),
)
user_output_file_name = sampling_params_kwargs.get("output_file_name")
if len(prompts) > 1 and user_output_file_name is not None:
raise ValueError(
"Cannot use multiple prompts with a fixed output_file_name. "
"Either remove --output-file-name or use a single prompt."
)
sampling_params_orig = SamplingParams.from_user_sampling_params_args(
self.server_args.model_path,
server_args=self.server_args,
**sampling_params_kwargs,
)
request_groups: list[list[Req]] = []
image_paths_per_prompt = self._resolve_image_paths_per_prompt(
prompts, sampling_params_orig.image_path
)
for i, p in enumerate(prompts):
sampling_params = dataclasses.replace(
sampling_params_orig,
prompt=p,
output_file_name=user_output_file_name,
image_path=image_paths_per_prompt[i],
)
# `dataclasses.replace` drops non-field attrs; restore
# `_explicit_fields` so InputValidationStage honors user-supplied
# width/height, and mark the keys overridden above as explicit.
sampling_params._explicit_fields = getattr(
sampling_params_orig, "_explicit_fields", set()
) | {"prompt", "output_file_name", "image_path"}
sampling_params._set_output_file_name()
req = prepare_request(
server_args=self.server_args,
sampling_params=sampling_params,
external_trace_header=external_trace_header,
)
request_groups.append(
expand_request_outputs(
req,
num_prompts=len(prompts),
prompt_index=i,
)
)
results: list[GenerationResult] = []
total_start_time = time.perf_counter()
global_output_index = 0
for requests in request_groups:
try:
timer_prompt = [req.prompt for req in requests]
logger.info("Processing %d grouped request(s)", len(requests))
with ExitStack() as stack:
for req in requests:
stack.enter_context(trace_req(req.trace_ctx))
timer = stack.enter_context(
log_generation_timer(logger, timer_prompt)
)
output_batch = self._send_to_scheduler_and_wait_for_response(
requests
)
if output_batch.error:
raise Exception(f"{output_batch.error}")
if (
output_batch.output is None
and output_batch.output_file_paths is None
):
logger.error("Received empty output from scheduler")
continue
if requests[0].save_output and requests[0].return_file_paths_only:
output_file_paths = output_batch.output_file_paths or []
self._validate_output_count(
len(output_file_paths), len(requests)
)
for idx, path in enumerate(output_file_paths):
req = requests[idx]
results.append(
GenerationResult(
**self._result_common(
req, output_batch, timer.duration, idx
),
prompt_index=global_output_index + idx,
output_file_path=path,
)
)
elif requests[0].data_type == DataType.MESH:
output_file_paths = output_batch.output_file_paths or []
self._validate_output_count(
len(output_file_paths), len(requests)
)
for idx, sample in enumerate(output_file_paths):
req = requests[idx]
results.append(
GenerationResult(
**self._result_common(
req, output_batch, timer.duration, idx
),
prompt_index=global_output_index + idx,
output_file_path=sample,
)
)
else:
self._validate_output_count(
len(output_batch.output), len(requests)
)
samples_out: list[Any] = []
audios_out: list[Any] = []
frames_out: list[Any] = []
save_outputs(
output_batch.output,
requests[0].data_type,
requests[0].fps,
requests[0].save_output,
lambda idx: requests[idx].output_file_path(1, 0),
audio=output_batch.audio,
audio_sample_rate=output_batch.audio_sample_rate,
samples_out=samples_out,
audios_out=audios_out,
frames_out=frames_out,
output_compression=requests[0].output_compression,
enable_frame_interpolation=requests[
0
].enable_frame_interpolation,
frame_interpolation_exp=requests[0].frame_interpolation_exp,
frame_interpolation_scale=requests[
0
].frame_interpolation_scale,
frame_interpolation_model_path=requests[
0
].frame_interpolation_model_path,
enable_upscaling=requests[0].enable_upscaling,
upscaling_model_path=requests[0].upscaling_model_path,
upscaling_scale=requests[0].upscaling_scale,
)
for idx in range(len(samples_out)):
req = requests[idx]
results.append(
GenerationResult(
**self._result_common(
req, output_batch, timer.duration, idx
),
samples=samples_out[idx],
frames=frames_out[idx],
audio=audios_out[idx],
prompt_index=global_output_index + idx,
output_file_path=req.output_file_path(1, 0),
)
)
except Exception as e:
logger.error("Generation failed: %s", e, exc_info=True)
finally:
global_output_index += len(requests)
total_gen_time = time.perf_counter() - total_start_time
if self.server_args.batching_max_size > 1:
log_batch_completion(
logger,
len(results),
total_gen_time,
)
self._log_summary(results)
if not results:
return None
return results[0] if len(results) == 1 else results
def generate_action(
self,
sampling_params_kwargs: dict | None = None,
external_trace_header: dict[str, str] | None = None,
) -> dict[str, Any]:
sampling_params_kwargs = sampling_params_kwargs or {}
sampling_params = SamplingParams.from_user_sampling_params_args(
self.server_args.model_path,
server_args=self.server_args,
**sampling_params_kwargs,
)
if sampling_params.data_type != DataType.ACTION:
raise ValueError(
f"generate_action requires an ACTION pipeline, got {sampling_params.data_type}"
)
req = prepare_request(
server_args=self.server_args,
sampling_params=sampling_params,
external_trace_header=external_trace_header,
)
output_batch = self._send_to_scheduler_and_wait_for_response(req)
if output_batch.error:
raise RuntimeError(output_batch.error)
if output_batch.output is None:
raise RuntimeError("action policy returned no output")
return output_batch.output[0]
def _resolve_prompts(
self,
prompt: str | list[str] | None,
prompt_path: str | None = None,
) -> list[str]:
"""Collect prompts from the argument or from a prompt file."""
path = prompt_path or self.server_args.prompt_file_path
if path is not None:
if not os.path.exists(path):
raise FileNotFoundError(f"Prompt text file not found: {path}")
with open(path, encoding="utf-8") as f:
prompts = [line.strip() for line in f if line.strip()]
if not prompts:
raise ValueError(f"No prompts found in file: {path}")
logger.info("Found %d prompts in %s", len(prompts), path)
return prompts
if prompt is None:
return [" "]
if isinstance(prompt, str):
return [prompt]
return list(prompt)
def _log_summary(self, results: list[GenerationResult]) -> None:
if not results:
return
if self.server_args.warmup:
total_duration_ms = results[0].metrics.get("total_duration_ms", 0)
logger.info(
f"Warmed-up request processed in {GREEN}%.2f{RESET} seconds (with warmup excluded)",
total_duration_ms / 1000.0,
)
peak_memories = [r.peak_memory_mb for r in results if r.peak_memory_mb]
if peak_memories:
logger.info(
f"Memory usage - Max peak: {max(peak_memories):.2f} MB, "
f"Avg peak: {sum(peak_memories) / len(peak_memories):.2f} MB"
)
@staticmethod
def _result_common(
req: Req,
output_batch: OutputBatch,
generation_time: float,
output_index: int | None = None,
) -> dict[str, Any]:
metrics = output_batch.metrics
if (
output_index is not None
and output_batch.metrics_list is not None
and output_index < len(output_batch.metrics_list)
):
metrics = output_batch.metrics_list[output_index]
if req.data_type == DataType.ACTION:
size = ("action",)
else:
size = (req.height, req.width, req.num_frames)
return dict(
prompt=req.prompt,
size=size,
generation_time=generation_time,
peak_memory_mb=output_batch.peak_memory_mb,
metrics=metrics.to_dict() if metrics else {},
action=output_batch.action_pred,
trajectory_latents=output_batch.trajectory_latents,
trajectory_timesteps=output_batch.trajectory_timesteps,
rollout_trajectory_data=output_batch.rollout_trajectory_data,
trajectory_decoded=output_batch.trajectory_decoded,
)
@staticmethod
def _validate_output_count(output_count: int, request_count: int) -> None:
if output_count != request_count:
raise RuntimeError(
f"Expected {request_count} outputs, got {output_count} from scheduler"
)
def _send_to_scheduler_and_wait_for_response(self, batch: list[Req]) -> OutputBatch:
"""
Sends a request to the scheduler and waits for a response.
"""
return sync_scheduler_client.forward(batch)
# LoRA
def _send_lora_request(self, req: Any, success_msg: str, failure_msg: str):
response = sync_scheduler_client.forward(req)
if response.error is None:
logger.info(success_msg)
return response
else:
error_msg = response.error
raise RuntimeError(f"{failure_msg}: {error_msg}")
def set_lora(
self,
lora_nickname: Union[str, List[str]],
lora_path: Union[str, None, List[Union[str, None]]] = None,
target: Union[str, List[str]] = "all",
strength: Union[float, List[float]] = 1.0,
merge_mode: str | None = None,
) -> None:
"""
Set LoRA adapter(s) for the specified transformer(s).
Supports both single LoRA (backward compatible) and multiple LoRA adapters.
Args:
lora_nickname: The nickname(s) of the adapter(s). Can be a string or a list of strings.
lora_path: Path(s) to the LoRA adapter(s). Can be a string, None, or a list of strings/None.
target: Which transformer(s) to apply the LoRA to. Can be a string or a list of strings.
Valid values:
- "all": Apply to all transformers (default)
- "transformer": Apply only to the primary transformer (high noise for Wan2.2)
- "transformer_2": Apply only to transformer_2 (low noise for Wan2.2)
- "critic": Apply only to the critic model
strength: LoRA strength(s) for merge, default 1.0. Can be a float or a list of floats.
merge_mode: Optional LoRA merge mode: "auto", "merge", or "dynamic".
"""
req = SetLoraReq(
lora_nickname=lora_nickname,
lora_path=lora_path,
target=target,
strength=strength,
merge_mode=merge_mode,
)
nickname_str, target_str, strength_str = format_lora_message(
lora_nickname, target, strength
)
self._send_lora_request(
req,
f"Successfully set LoRA adapter(s): {nickname_str} (target: {target_str}, strength: {strength_str})",
"Failed to set LoRA adapter",
)
def unmerge_lora_weights(self, target: str = "all") -> None:
"""
Unmerge LoRA weights from the base model.
Args:
target: Which transformer(s) to unmerge.
"""
req = UnmergeLoraWeightsReq(target=target)
self._send_lora_request(
req,
f"Successfully unmerged LoRA weights (target: {target})",
"Failed to unmerge LoRA weights",
)
def merge_lora_weights(self, target: str = "all", strength: float = 1.0) -> None:
"""
Merge LoRA weights into the base model.
Args:
target: Which transformer(s) to merge.
strength: LoRA strength for merge, default 1.0.
"""
req = MergeLoraWeightsReq(target=target, strength=strength)
self._send_lora_request(
req,
f"Successfully merged LoRA weights (target: {target}, strength: {strength})",
"Failed to merge LoRA weights",
)
def list_loras(self) -> dict:
"""List loaded LoRA adapters and current application status per module."""
output = self._send_lora_request(
req=ListLorasReq(),
success_msg="Successfully listed LoRA adapters",
failure_msg="Failed to list LoRA adapters",
)
# _send_lora_request already raises on error, so output.error is always None here
return output.output or {}
def _ensure_lora_state(
self,
lora_path: str | None,
lora_nickname: str | None = None,
merge_lora: bool = True,
) -> None:
"""
Ensure the LoRA state matches the desired configuration.
Note: This method does not cache client-side state. The server handles
idempotent operations, so redundant calls are safe but may have minor overhead.
"""
if lora_path is None:
# Unmerge all LoRA weights when no lora_path is provided
self.unmerge_lora_weights()
return
lora_nickname = lora_nickname or self.server_args.lora_nickname
# Set the LoRA adapter (server handles idempotent logic)
self.set_lora(lora_nickname, lora_path)
# Merge or unmerge based on the merge_lora flag
if merge_lora:
self.merge_lora_weights()
else:
self.unmerge_lora_weights()
def generate_with_lora(
self,
prompt: str | list[str] | None = None,
sampling_params: SamplingParams | None = None,
*,
lora_path: str | None = None,
lora_nickname: str | None = None,
merge_lora: bool = True,
**kwargs,
):
self._ensure_lora_state(
lora_path=lora_path, lora_nickname=lora_nickname, merge_lora=merge_lora
)
return self.generate(
sampling_params_kwargs=dict(
prompt=prompt,
sampling_params=sampling_params,
**kwargs,
)
)
def shutdown(self):
"""
Shutdown the generator.
If in local mode, it also shuts down the scheduler server.
"""
# sends the shutdown command to the server
if self.local_scheduler_process and self.owns_scheduler_client:
try:
sync_scheduler_client.forward(ShutdownReq(), timeout_ms=5000)
except Exception:
pass
if self.local_scheduler_process:
for process in self.local_scheduler_process:
process.join(timeout=10)
if process.is_alive():
logger.warning(
f"Local worker {process.name} did not terminate gracefully, forcing."
)
process.terminate()
process.join(timeout=1)
if process.is_alive():
process.kill()
process.join(timeout=1)
self.local_scheduler_process = None
if self.owns_scheduler_client:
sync_scheduler_client.close()
self.owns_scheduler_client = False
def _force_shutdown_local_processes(self) -> None:
local_scheduler_process = getattr(self, "local_scheduler_process", None)
log = globals().get("logger")
if local_scheduler_process:
for process in local_scheduler_process:
if process.is_alive():
if log is not None:
log.warning(
f"Local worker {process.name} did not terminate gracefully, forcing."
)
process.terminate()
for process in local_scheduler_process:
process.join(timeout=1)
if process.is_alive():
if log is not None:
log.warning(
f"Local worker {process.name} did not terminate after terminate(), killing."
)
process.kill()
process.join(timeout=1)
self.local_scheduler_process = None
if getattr(self, "owns_scheduler_client", False):
try:
client = globals().get("sync_scheduler_client")
if client is not None:
client.close()
finally:
self.owns_scheduler_client = False
def __enter__(self):
return self
def __exit__(self, exc_type, exc_val, exc_tb):
self.shutdown()
def __del__(self):
owns_scheduler_client = bool(getattr(self, "owns_scheduler_client", False))
local_scheduler_process = getattr(self, "local_scheduler_process", None)
log = globals().get("logger")
if owns_scheduler_client:
if log is not None:
log.warning(
"Generator was garbage collected without being shut down. "
"Forcing local server and client cleanup."
)
self._force_shutdown_local_processes()
elif local_scheduler_process:
if log is not None:
log.warning(
"Generator was garbage collected without being shut down. "
"Forcing local server cleanup."
)
self._force_shutdown_local_processes()