| --- |
| license: other |
| license_name: nvidia-cuda-cudnn-redistributable |
| license_link: https://docs.nvidia.com/cuda/eula/index.html |
| pretty_name: MBFS CUDA + TensorRT Runtime Bundle (cuda_v12 + cuda_v11 + trt_v12) |
| tags: |
| - cuda |
| - cudnn |
| - tensorrt |
| - onnxruntime |
| - runtime-libraries |
| - windows |
| --- |
| |
| # MBFS CUDA Runtime Bundle |
|
|
| Self-contained, **ABI-matched** CUDA execution stacks for running |
| [ONNX Runtime](https://onnxruntime.ai/) on Windows with the CUDA / TensorRT |
| execution providers. One folder per CUDA major version: |
|
|
| | Stack | Folder | CUDA | cuDNN | ONNX Runtime EP | When to use | |
| |---|---|---|---|---|---| |
| | **cu12** | [`cuda_v12/`](./cuda_v12) | 12.x | 9 | CUDA + TensorRT 10 | sm_75+ GPU on driver **R527+** (CUDA 12) | |
| | **cu11** | [`cuda_v11/`](./cuda_v11) | 11.x | 8 | CUDA + TensorRT 8.6 | Pascal/Volta (sm_60–sm_70), or any GPU on a driver capped at CUDA 11.x | |
| |
| Pick the stack matching your GPU **and** driver: a newer GPU on an older driver |
| must still use `cu11` (loading `cu12` binaries fails with |
| `cudaErrorNoKernelImageForDevice`). The MBFS Sentinel build auto-detects this — |
| `scripts/build_windows.py` clamps the stack to the lower of the GPU and driver |
| ceilings (override with `--gpu-stack`). |
|
|
| **TensorRT engine-build libraries** live in a *companion* folder, |
| [`trt_v12/`](./trt_v12) (for the `cu12` stack). These are the TensorRT 10 |
| runtime + parser (`nvinfer*`, `nvonnxparser`) and the per-SM **builder |
| resources** used when TensorRT compiles an engine. It is **not** a standalone |
| CUDA stack — pair it with `cuda_v12/` (whose `onnxruntime_providers_tensorrt.dll` |
| is only the small ONNX Runtime ↔ TensorRT bridge). Unlike the CUDA folders, |
| `trt_v12/` is fetched **selectively**: a build downloads only the one builder |
| resource matching the target GPU's compute capability (plus the always-included |
| PTX fallback), not the whole ~2.8 GiB set. See |
| **[Contents (`trt_v12/`)](#contents-trt_v12)**. |
|
|
| > ⚠️ These are **runtime redistributable libraries**, not source. The CUDA, |
| > cuDNN, and TensorRT DLLs are © NVIDIA Corporation and remain under NVIDIA's |
| > licenses — see **[License & redistribution](#license--redistribution)** below. |
|
|
| ## Contents (`cuda_v12/`) |
| |
| | File | Component | Approx. size | |
| |---|---|---| |
| | `onnxruntime.dll` | ONNX Runtime 1.23.2 (combined CUDA + DirectML + TensorRT + CPU build) | 15 MB | |
| | `onnxruntime_providers_cuda.dll` | ONNX Runtime CUDA execution provider | 361 MB | |
| | `onnxruntime_providers_tensorrt.dll` | ONNX Runtime TensorRT execution provider | <1 MB | |
| | `onnxruntime_providers_shared.dll` | ONNX Runtime shared provider interface | <1 MB | |
| | `cublas64_12.dll`, `cublasLt64_12.dll` | CUDA 12 cuBLAS | 96 / 451 MB | |
| | `cudart64_12.dll` | CUDA 12 runtime | <1 MB | |
| | `cufft64_11.dll` | CUDA 12 cuFFT | 279 MB | |
| | `curand64_10.dll`, `cusparse64_12.dll` | CUDA 12 cuRAND / cuSPARSE | 62 / 264 MB | |
| | `cudnn64_9.dll` + `cudnn_*64_9.dll` (7 files) | cuDNN 9 | ~1.4 GB | |
|
|
| **Total ≈ 2.3 GiB.** |
|
|
| ## Contents (`cuda_v11/`) |
| |
| | File | Component | Approx. size | |
| |---|---|---| |
| | `onnxruntime.dll` | ONNX Runtime (CUDA + TensorRT + CPU build) | 13 MB | |
| | `onnxruntime_providers_cuda.dll` | ONNX Runtime CUDA execution provider | 223 MB | |
| | `onnxruntime_providers_tensorrt.dll` | ONNX Runtime TensorRT execution provider | <1 MB | |
| | `onnxruntime_providers_shared.dll` | ONNX Runtime shared provider interface | <1 MB | |
| | `cublas64_11.dll`, `cublasLt64_11.dll` | CUDA 11 cuBLAS | 85 / 519 MB | |
| | `cudart64_110.dll` | CUDA 11 runtime | <1 MB | |
| | `cufft64_10.dll` | CUDA 11 cuFFT | 267 MB | |
| | `curand64_10.dll`, `cusparse64_11.dll` | CUDA 11 cuRAND / cuSPARSE | 62 / 265 MB | |
| | `cudnn64_8.dll` + `cudnn_{adv,cnn,ops}_{infer,train}64_8.dll` (6 files) | cuDNN 8 | ~1.0 GB | |
|
|
| **Total ≈ 2.4 GiB.** cuDNN 8 keeps inference and training libraries split |
| (`*_infer` / `*_train`), unlike cuDNN 9. |
|
|
| > All DLLs in a folder come from a single matched build — the ONNX Runtime |
| > provider DLLs are ABI-locked to that folder's `onnxruntime.dll`, so each set |
| > must be used together (never mix DLLs across folders or with another ONNX |
| > Runtime release, or the CUDA EP fails to load). |
|
|
| ## Contents (`trt_v12/`) |
| |
| TensorRT 10 for the `cu12` stack, split into **core** (always needed) and |
| **per-SM builder resources** (one per GPU architecture). A build pulls the core |
| plus **only** the resource matching the target GPU's compute capability, plus |
| the PTX fallback — typically ≈ 1.0–1.7 GiB instead of the full ≈ 2.8 GiB. |
| |
| **Core — always downloaded:** |
| |
| | File | Component | Approx. size | |
| |---|---|---| |
| | `nvinfer_10.dll` | TensorRT 10 core inference runtime + builder | 432 MB | |
| | `nvinfer_plugin_10.dll` | TensorRT 10 standard plugins | 53 MB | |
| | `nvonnxparser_10.dll` | ONNX → TensorRT network parser | 3 MB | |
| | `nvrtc64_120_0.dll` | NVRTC runtime compiler (CUDA 12) | 44 MB | |
|
|
| **Per-SM builder resources — download only the one matching your GPU:** |
|
|
| | File | Architecture | Example GPUs | Approx. size | |
| |---|---|---|---| |
| | `nvinfer_builder_resource_ptx_10.dll` | **PTX JIT fallback — always included** | (any, forward-compat) | 488 MB | |
| | `nvinfer_builder_resource_sm75_10.dll` | Turing | T4, RTX 20xx | 157 MB | |
| | `nvinfer_builder_resource_sm80_10.dll` | Ampere | A100, A30 | 256 MB | |
| | `nvinfer_builder_resource_sm86_10.dll` | Ampere | A40, RTX 30xx | 241 MB | |
| | `nvinfer_builder_resource_sm89_10.dll` | Ada | L4, L40, RTX 40xx | 254 MB | |
| | `nvinfer_builder_resource_sm90_10.dll` | Hopper | H100, H200 | 661 MB | |
| | `nvinfer_builder_resource_sm120_10.dll` | Blackwell | B100/B200, RTX 50xx | 377 MB | |
|
|
| **Full set ≈ 2.8 GiB** (4 core + 7 resources). Example single-SM footprint — |
| Ampere A30 (sm80): core (532 MB) + PTX (488 MB) + `sm80` (256 MB) ≈ **1.2 GiB**. |
|
|
| > The builder resources are only needed when TensorRT **compiles** an engine |
| > (the first run for a given model/GPU). `nvinfer_10.dll` loads the matching |
| > `nvinfer_builder_resource_sm<cc>_10.dll` from the DLL search path at |
| > engine-build time; the MBFS Sentinel build stages them under |
| > `dist/lib/trt_v12/` and adds that directory to the process `PATH`. Once an |
| > engine cache (`.engine`/`.trt`) exists, the resource for that SM is no longer |
| > read. |
|
|
| ## Requirements |
|
|
| - **OS:** Windows x64 |
| - **NVIDIA driver:** `cu12` needs **R527+** (CUDA 12.x); `cu11` needs **R452+** |
| (CUDA 11.x). The CUDA *Toolkit* does **not** need to be installed — these |
| bundles ship the runtime. |
| - **GPU:** see the support notes below. |
|
|
| ## GPU support |
|
|
| ### `cu12` |
|
|
| `cuda_v12/onnxruntime_providers_cuda.dll` is compiled with cubins for the |
| following architectures (no PTX is embedded, so there is **no JIT |
| forward-compatibility** to newer archs): |
|
|
| | Compute capability | Architecture | Example GPUs | Native CUDA | |
| |---|---|---|---| |
| | 5.2 | Maxwell | GTX 9xx | ✅ | |
| | 6.0 | Pascal | Tesla P100 | ✅ | |
| | 7.0 | Volta | V100 | ✅ | |
| | 7.5 | Turing | T4, RTX 20xx | ✅ | |
| | 8.0 | Ampere | A100, A30 | ✅ | |
| | 8.6 | Ampere | A40, RTX 30xx | ✅ | |
| | 8.9 | Ada | L4, L40, RTX 40xx | ✅ | |
| | 9.0a | Hopper | H100, H200 | ✅ | |
| | 10.x / 12.x | **Blackwell** | B100/B200, RTX 50xx | ❌ not native | |
|
|
| For the **TensorRT** path the per-SM builder resources in `trt_v12/` cover |
| `sm75 / sm80 / sm86 / sm89 / sm90 / sm120`; older archs (sm_52/60/70) fall back |
| to the PTX builder resource (JIT). Pick the resource by compute capability: |
| `sm = major*10 + minor` (e.g. 8.0 → `sm80`, 12.0 → `sm120`). |
| |
| ### `cu11` |
| |
| The `cu11` stack is the fallback for machines that predate CUDA 12: NVIDIA |
| **Pascal (sm_60) → Volta (sm_70)**, and any otherwise-cu12-capable GPU running |
| on a driver that only supports CUDA 11.x. Use it when `nvidia-smi` reports a |
| CUDA version below 12.0, or for Pascal/Volta silicon. For newer GPUs on a |
| current driver, prefer `cu12`. |
| |
| On a GPU outside the supported range, or with a too-old driver, the host |
| application should fall back to DirectML (`DmlExecutionProvider`, requires |
| `DirectML.dll` — **not** included here) or CPU. These bundles cover the native |
| CUDA path only. |
| |
| ## Usage |
| |
| The MBFS Sentinel build pulls the right stack automatically |
| (`build_windows.py --gpu-stack {cu12|cu11} --cuda-source hf`), including the |
| matching TensorRT builder resource (`--tensorrt-source hf`, default). To fetch a |
| stack manually: |
|
|
| ```bash |
| # cu12 into ./dist/lib (lands at ./dist/lib/cuda_v12/) |
| hf download MBFSAITeam/cuda-runtime-bundle --repo-type dataset \ |
| --include "cuda_v12/*" --local-dir ./dist/lib |
| |
| # cu11 into ./dist/lib (lands at ./dist/lib/cuda_v11/) |
| hf download MBFSAITeam/cuda-runtime-bundle --repo-type dataset \ |
| --include "cuda_v11/*" --local-dir ./dist/lib |
| ``` |
|
|
| For TensorRT, fetch the **core + PTX + only your GPU's SM** instead of the whole |
| folder (example for an Ampere A30, sm80): |
|
|
| ```bash |
| hf download MBFSAITeam/cuda-runtime-bundle --repo-type dataset \ |
| --include "trt_v12/nvinfer_10.dll" \ |
| --include "trt_v12/nvinfer_plugin_10.dll" \ |
| --include "trt_v12/nvonnxparser_10.dll" \ |
| --include "trt_v12/nvrtc64_120_0.dll" \ |
| --include "trt_v12/nvinfer_builder_resource_ptx_10.dll" \ |
| --include "trt_v12/nvinfer_builder_resource_sm80_10.dll" \ |
| --local-dir ./dist/lib |
| ``` |
|
|
| For reproducible builds, pin a commit revision with `--revision <sha>` instead of |
| `main`. |
|
|
| ## License & redistribution |
|
|
| This repository bundles components under **different licenses**: |
|
|
| - **ONNX Runtime** (`onnxruntime*.dll`) — MIT License, © Microsoft. |
| - **CUDA runtime** (`cudart`, `cublas`, `cublasLt`, `cufft`, `curand`, `cusparse`, |
| `nvrtc`) — © NVIDIA Corporation, redistributed under the |
| [NVIDIA CUDA Toolkit EULA](https://docs.nvidia.com/cuda/eula/index.html). |
| - **cuDNN** (`cudnn*.dll`, both v8 and v9) — © NVIDIA Corporation, redistributed |
| under the [NVIDIA cuDNN Software License Agreement](https://docs.nvidia.com/deeplearning/cudnn/sla/index.html). |
| - **TensorRT** (`nvinfer*.dll`, `nvonnxparser*.dll`, and the |
| `nvinfer_builder_resource_*` builder resources) — © NVIDIA Corporation, |
| redistributed under the |
| [NVIDIA TensorRT Software License Agreement](https://docs.nvidia.com/deeplearning/tensorrt/sla/index.html). |
|
|
| The NVIDIA libraries are redistributed **unmodified** as runtime dependencies, as |
| permitted by the above agreements. NVIDIA, CUDA, cuDNN, and TensorRT are trademarks |
| of NVIDIA Corporation. This repository is not affiliated with or endorsed by NVIDIA. |
| By using these files you agree to the respective NVIDIA license terms. |
|
|