Files
sgl-project--sglang/python/sglang/srt/utils/video_decoder.py
T
wehub-resource-sync 94057c3d3e
PR Test (NPU) / check-changes (push) Has been cancelled
PR Test (NPU) / pr-gate (push) Has been cancelled
PR Test (NPU) / set-image-config (push) Has been cancelled
PR Test (NPU) / stage-b-test-1-npu-a2 (0) (push) Has been cancelled
PR Test (NPU) / stage-b-test-1-npu-a2 (1) (push) Has been cancelled
PR Test (NPU) / stage-b-test-2-npu-a2 (0) (push) Has been cancelled
PR Test (NPU) / stage-b-test-2-npu-a2 (1) (push) Has been cancelled
PR Test (NPU) / stage-b-test-4-npu-a3 (push) Has been cancelled
PR Test (NPU) / stage-b-test-16-npu-a3 (push) Has been cancelled
PR Test (NPU) / multimodal-gen-test-1-npu-a3 (push) Has been cancelled
PR Test (NPU) / multimodal-gen-test-2-npu-a3 (push) Has been cancelled
PR Test (Arm64) / pr-gate (push) Has been cancelled
PR Test (Arm64) / check-changes (push) Has been cancelled
PR Test (Arm64) / build-test (push) Has been cancelled
PR Test (sgl-router) / gate (push) Has been cancelled
PR Test (sgl-router) / tier-1 — lint (push) Has been cancelled
PR Test (sgl-router) / tier-2 — build + test (push) Has been cancelled
PR Test (sgl-router) / tier-3 — docker (placeholder) (push) Has been cancelled
PR Test (sgl-router) / tier-3 — k8s integration (push) Has been cancelled
PR Test (sgl-router) / tier-3 — e2e (push) Has been cancelled
PR Test (sgl-router) / finish (push) Has been cancelled
PR Test (NPU) / single-node-poc (map[name:qwen3_6_27b_w8a8_1p_in64k_out1k_50ms runner:linux-aarch64-a3-2 test_case:test/registered/ascend/performance/qwen3_6_27b/test_npu_qwen3_6_27b_w8a8_1p_in64k_out1k_50ms.py test_type:perf]) (push) Has been cancelled
PR Test (NPU) / pr-test-npu-finish (push) Has been cancelled
PR Test (Xeon) / pr-gate (push) Has been cancelled
PR Test (Xeon) / check-changes (push) Has been cancelled
PR Test (Xeon) / build-test (, xeon-gnr, base-b-test-cpu) (push) Has been cancelled
PR Test (XPU) / check-changes (push) Has been cancelled
PR Test (XPU) / pr-gate (push) Has been cancelled
PR Test (XPU) / stage-a-test-1-gpu-xpu (push) Has been cancelled
PR Test (XPU) / wait-for-stage-a (push) Has been cancelled
PR Test (XPU) / stage-b-test-1-gpu-xpu (push) Has been cancelled
PR Test (XPU) / finish (push) Has been cancelled
CI Model Inventory / build-inventory (push) Has been cancelled
Lint / lint (push) Has been cancelled
PR Benchmark (SMG Components) / Benchmark Compilation Check (push) Has been cancelled
PR Benchmark (SMG Components) / Benchmark - Manual Policy (push) Has been cancelled
PR Benchmark (SMG Components) / Benchmark - Request Processing (push) Has been cancelled
PR Benchmark (SMG Components) / Benchmark Summary (push) Has been cancelled
PR Test (SMG) / build-wheel (push) Has been cancelled
Release SGLang Model Gateway to PyPI / build on windows (x86_64 - auto) (push) Has been cancelled
Release SGLang Model Gateway to PyPI / build on macos (x86_64 - auto) (push) Has been cancelled
PR Test (SMG) / python-unit-tests (push) Has been cancelled
PR Test (SMG) / unit-tests (push) Has been cancelled
PR Test (SMG) / benchmarks (push) Has been cancelled
PR Test (SMG) / chat-completions (push) Has been cancelled
PR Test (SMG) / chat-completions-4gpu (push) Has been cancelled
PR Test (SMG) / e2e (push) Has been cancelled
PR Test (SMG) / docker-build-test (push) Has been cancelled
PR Test (SMG) / k8s-integration (push) Has been cancelled
PR Test (SMG) / finish (push) Has been cancelled
PR Test (SMG) / summarize-benchmarks (push) Has been cancelled
Release SGLang Model Gateway Docker Image / publish (push) Has been cancelled
Release SGLang Model Gateway to PyPI / build on macos (aarch64 - auto) (push) Has been cancelled
Release SGLang Model Gateway to PyPI / build on linux (aarch64 - auto) (push) Has been cancelled
Release SGLang Model Gateway to PyPI / build on linux (x86_64 - auto) (push) Has been cancelled
Release SGLang Model Gateway to PyPI / build on linux (aarch64 - musllinux_1_1) (push) Has been cancelled
Release SGLang Model Gateway to PyPI / build on linux (x86_64 - musllinux_1_1) (push) Has been cancelled
Release SGLang Model Gateway to PyPI / Build SDist (push) Has been cancelled
Release SGLang Model Gateway to PyPI / Upload to PyPI (push) Has been cancelled
Release SGLang Kernels / build-cu129-matrix (aarch64, 12.9, 3.10, arm-kernel-build-node) (push) Has been cancelled
Release SGLang Kernels / build-cu129-matrix (x86_64, 12.9, 3.10, x64-kernel-build-node) (push) Has been cancelled
Release SGLang Kernels / release-cu129 (push) Has been cancelled
Release SGLang Kernels / build-cu130-matrix (aarch64, 13.0, 3.10, arm-kernel-build-node) (push) Has been cancelled
Release SGLang Kernels / build-cu130-matrix (x86_64, 13.0, 3.10, x64-kernel-build-node) (push) Has been cancelled
Release SGLang Kernels / release-cu130 (push) Has been cancelled
Release SGLang Kernels / build-rocm-matrix (3.10, 700) (push) Has been cancelled
Release SGLang Kernels / build-rocm-matrix (3.10, 720) (push) Has been cancelled
Release SGLang Kernels / release-rocm700 (push) Has been cancelled
Release SGLang Kernels / release-rocm720 (push) Has been cancelled
Release SGLang Kernels / build-musa43 (43, 3.10) (push) Has been cancelled
Release SGLang Kernels / release-musa43 (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 12:38:16 +08:00

188 lines
6.4 KiB
Python

"""Unified video decoder: torchcodec preferred, decord as fallback."""
import logging
import os
import numpy as np
logger = logging.getLogger(__name__)
try:
from torchcodec.decoders import VideoDecoder
_BACKEND = "torchcodec"
except (ImportError, RuntimeError):
_BACKEND = "decord"
_cuda_backend_enabled: bool | None = None
def _try_cuda_backend() -> bool:
"""Try to enable torchcodec CUDA backend. Caches result after first call."""
global _cuda_backend_enabled
if _cuda_backend_enabled is not None:
return _cuda_backend_enabled
try:
from torchcodec.decoders import set_cuda_backend
set_cuda_backend("beta")
_cuda_backend_enabled = True
except Exception:
_cuda_backend_enabled = False
return _cuda_backend_enabled
class VideoDecoderWrapper:
"""Unified video decoder that uses torchcodec when available, decord as fallback.
All frames are returned in NHWC uint8 numpy format for consistency.
"""
def __init__(self, source, device: str = "cpu", num_decode_threads: int = 0):
"""source: file path (str) or video bytes.
device: "cpu" or "cuda". GPU decoding only supported with torchcodec.
num_decode_threads: number of parallel decoder instances for frame
extraction (torchcodec only). 0 = auto (capped at 16),
1 = single decoder. Set > 1 to split frame indices across
multiple decoders in parallel threads.
"""
self._source = source
self._num_decode_threads = num_decode_threads
self._source_bytes = source if isinstance(source, bytes) else None
self._source_path = source if isinstance(source, str) else None
self._tmp_path = None
if _BACKEND == "torchcodec":
kwargs = {"dimension_order": "NHWC"}
if device == "cuda" and _try_cuda_backend():
kwargs["device"] = "cuda"
self._tc_kwargs = kwargs
try:
self._decoder = VideoDecoder(source, **kwargs)
except RuntimeError:
if "device" in kwargs:
logger.warning("CUDA video decoding failed, falling back to CPU.")
kwargs.pop("device")
self._tc_kwargs = kwargs
self._decoder = VideoDecoder(source, **kwargs)
else:
raise
else:
from decord import VideoReader, cpu
if isinstance(source, bytes):
import tempfile
fd, tmp_path = tempfile.mkstemp(suffix=".mp4")
try:
os.write(fd, source)
finally:
os.close(fd)
self._tmp_path = tmp_path
self._decoder = VideoReader(tmp_path, ctx=cpu(0))
else:
self._decoder = VideoReader(source, ctx=cpu(0))
def __len__(self):
return len(self._decoder)
def __getitem__(self, idx):
"""Return single frame as numpy NHWC uint8."""
if _BACKEND == "torchcodec":
return self._decoder[idx].numpy()
else:
frame = self._decoder[idx]
return frame.asnumpy() if hasattr(frame, "asnumpy") else np.array(frame)
@property
def avg_fps(self) -> float:
if _BACKEND == "torchcodec":
return self._decoder.metadata.average_fps
else:
return self._decoder.get_avg_fps()
def get_frames_at(self, indices: list) -> np.ndarray:
"""Return frames at given indices as numpy array with shape (N, H, W, C)."""
if _BACKEND == "torchcodec":
batch = self._decoder.get_frames_at(indices)
return batch.data.numpy()
else:
return self._decoder.get_batch(indices).asnumpy()
def get_frames_as_tensor(self, indices: list):
"""Return frames at given indices as a torch tensor (NHWC, uint8, pinned memory)."""
import torch
if (
_BACKEND == "torchcodec"
and self._num_decode_threads != 1
and len(indices) > 1
):
num_threads = self._num_decode_threads
if num_threads <= 0:
num_threads = min(os.cpu_count() or 8, 16)
num_threads = min(num_threads, len(indices))
if num_threads > 1:
return self._parallel_decode(indices, num_threads)
if _BACKEND == "torchcodec":
batch = self._decoder.get_frames_at(indices)
return batch.data.pin_memory()
else:
arr = self._decoder.get_batch(indices).asnumpy()
return torch.from_numpy(arr).pin_memory()
def _parallel_decode(self, indices, num_threads):
"""Decode frames using multiple VideoDecoder instances in parallel threads."""
from concurrent.futures import ThreadPoolExecutor, as_completed
import torch
chunks = [list(c) for c in np.array_split(indices, num_threads) if len(c) > 0]
source = self._source
kwargs = self._tc_kwargs
def _decode_chunk(chunk):
d = VideoDecoder(source, **kwargs)
return d.get_frames_at(chunk).data
with ThreadPoolExecutor(max_workers=len(chunks)) as executor:
future_to_idx = {
executor.submit(_decode_chunk, chunk): idx
for idx, chunk in enumerate(chunks)
}
results = [None] * len(chunks)
for future in as_completed(future_to_idx):
idx = future_to_idx[future]
results[idx] = future.result()
return torch.cat(results, dim=0).pin_memory()
@property
def source_bytes(self) -> bytes | None:
"""Return raw video bytes if available (needed for audio extraction)."""
if self._source_bytes is not None:
return self._source_bytes
path = self._tmp_path or self._source_path
if path is not None:
if os.path.isfile(path):
with open(path, "rb") as f:
return f.read()
return None
def close(self):
"""Explicitly clean up temporary files."""
if self._tmp_path is not None:
if os.path.exists(self._tmp_path):
os.unlink(self._tmp_path)
self._tmp_path = None
def __del__(self):
self.close()
def __enter__(self):
return self
def __exit__(self, *args):
self.close()