同步操作将从 MindSpore/models 强制同步,此操作会覆盖自 Fork 仓库以来所做的任何修改,且无法恢复!!!
确定后同步将在后台操作,完成时将刷新页面,请耐心等待。
In order to facilitate developers to enjoy the benefits of MindSpore framework, we will continue to add typical networks and some of the related pre-trained models. If you have needs for the model zoo, you can file an issue on gitee or MindSpore, We will consider it in time.
SOTA models using the latest MindSpore APIs
The best benefits from MindSpore
Officially maintained and supported
Domain | Sub Domain | Network | Ascend | GPU | CPU |
---|---|---|---|---|---|
Audio | Speech Synthesis | LPCNet | ✅ | ||
Audio | Speech Synthesis | MelGAN | ✅ | ||
Audio | Speech Synthesis | Tacotron2 | ✅ | ||
Computer Vision (CV) | Point Cloud Model | OctSqueeze | ✅ | ||
Computer Vision (CV) | Optical Flow Estimation | PWCNet | ✅ | ||
Computer Vision (CV) | Object Tracking | Deepsort | ✅ | ||
Computer Vision (CV) | Object Tracking | ADNet | ✅ | ||
Computer Vision (CV) | Image Classification | AlexNet | ✅ | ✅ | |
Computer Vision (CV) | Image Classification | CNN | ✅ | ||
Computer Vision (CV) | Image Classification | DenseNet100 | ✅ | ||
Computer Vision (CV) | Image Classification | DenseNet121 | ✅ | ||
Computer Vision (CV) | Image Classification | DPN | ✅ | ||
Computer Vision (CV) | Image Classification | EfficientNet-B0 | ✅ | ||
Computer Vision (CV) | Image Classification | GoogLeNet | ✅ | ✅ | |
Computer Vision (CV) | Image Classification | InceptionV3 | ✅ | ||
Computer Vision (CV) | Image Classification | InceptionV4 | ✅ | ||
Computer Vision (CV) | Image Classification | LeNet | ✅ | ✅ | ✅ |
Computer Vision (CV) | Image Classification | MobileNetV1 | ✅ | ||
Computer Vision (CV) | Image Classification | MobileNetV2 | ✅ | ✅ | ✅ |
Computer Vision (CV) | Image Classification | MobileNetV3 | ✅ | ||
Computer Vision (CV) | Image Classification | NASNet | ✅ | ✅ | |
Computer Vision (CV) | Image Classification | ResNet-18 | ✅ | ||
Computer Vision (CV) | Image Classification | ResNet-34 | ✅ | ||
Computer Vision (CV) | Image Classification | ResNet-50 | ✅ | ✅ | ✅ |
Computer Vision (CV) | Image Classification | ResNet-101 | ✅ | ✅ | |
Computer Vision (CV) | Image Classification | ResNet-152 | ✅ | ||
Computer Vision (CV) | Image Classification | ResNeXt50 | ✅ | ✅ | |
Computer Vision (CV) | Image Classification | ResNeXt101 | ✅ | ||
Computer Vision (CV) | Image Classification | SE-ResNet50 | ✅ | ||
Computer Vision(CV) | Image Classification | SE-ResNext50 | ✅ | ||
Computer Vision (CV) | Image Classification | ShuffleNetV1 | ✅ | ||
Computer Vision (CV) | Image Classification | ShuffleNetV2 | ✅ | ||
Computer Vision (CV) | Image Classification | SqueezeNet | ✅ | ||
Computer Vision (CV) | Image Classification | Tiny-DarkNet | ✅ | ||
Computer Vision (CV) | Image Classification | VGG16 | ✅ | ✅ | |
Computer Vision (CV) | Image Classification | Xception | ✅ | ||
Computer Vision (CV) | Image Classification | CspDarkNet53 | ✅ | ||
Computer Vision (CV) | Image Classification | ErfNet | ✅ | ||
Computer Vision (CV) | Image Classification | SimCLR | ✅ | ||
Computer Vision (CV) | Image Classification | Vit | ✅ | ||
Computer Vision (CV) | Object Detection | CenterFace | ✅ | ||
Computer Vision (CV) | Object Detection | CTPN | ✅ | ||
Computer Vision (CV) | Object Detection | Faster R-CNN | ✅ | ✅ | |
Computer Vision (CV) | Object Detection | Mask R-CNN | ✅ | ||
Computer Vision (CV) | Object Detection | Mask R-CNN (MobileNetV1) | ✅ | ||
Computer Vision (CV) | Object Detection | SSD | ✅ | ✅ | ✅ |
Computer Vision (CV) | Object Detection | SSD-MobileNetV1-FPN | ✅ | ||
Computer Vision (CV) | Object Detection | SSD-Resnet50-FPN | ✅ | ||
Computer Vision (CV) | Object Detection | SSD-VGG16 | ✅ | ||
Computer Vision (CV) | Object Detection | WarpCTC | ✅ | ✅ | |
Computer Vision (CV) | Object Detection | YOLOv3-ResNet18 | ✅ | ||
Computer Vision (CV) | Object Detection | YOLOv3-DarkNet53 | ✅ | ✅ | |
Computer Vision (CV) | Object Detection | YOLOv4 | ✅ | ||
Computer Vision (CV) | Object Detection | YOLOv5 | ✅ | ||
Computer Vision (CV) | Object Detection | RetinaNet | ✅ | ||
Computer Vision (CV) | Text Detection | DeepText | ✅ | ||
Computer Vision (CV) | Text Detection | PSENet | ✅ | ||
Computer Vision (CV) | Text Recognition | CNN+CTC | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | DeepLabV3 | ✅ | ✅ | |
Computer Vision (CV) | Semantic Segmentation | DeepLabV3+ | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | U-Net2D (Medical) | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | U-Net3D (Medical) | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | U-Net++ | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | Fast-SCNN | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | FCN8s | ✅ | ||
Computer Vision (CV) | 6DoF Pose Estimation | PVNet | ✅ | ||
Computer Vision (CV) | Keypoint Detection | OpenPose | ✅ | ||
Computer Vision (CV) | Keypoint Detection | SimplePoseNet | ✅ | ||
Computer Vision (CV) | Scene Text Detection | East | ✅ | ||
Computer Vision (CV) | Scene Text Detection | PSENet | ✅ | ||
Computer Vision (CV) | Scene Text Recognition | CRNN | ✅ | ||
Computer Vision (CV) | Scene Text Recognition | CNN+CTC | ✅ | ||
Computer Vision (CV) | Scene Text Recognition | CRNN-Seq2Seq-OCR | ✅ | ||
Computer Vision (CV) | Scene Text Recognition | WarpCTC | ✅ | ||
Computer Vision (CV) | Defect Detection | ssim-ae | ✅ | ||
Computer Vision (CV) | Defect Detection | PatchCore | ✅ | ||
Computer Vision (CV) | Face Detection | RetinaFace-ResNet50 | ✅ | ✅ | |
Computer Vision (CV) | Face Detection | CenterFace | ✅ | ||
Computer Vision (CV) | Face Detection | SphereFace | ✅ | ||
Computer Vision (CV) | Crowd Counting | MCNN | ✅ | ||
Computer Vision (CV) | Depth Estimation | DepthNet | ✅ | ||
Computer Vision (CV) | Camera Relocalization | PoseNet | ✅ | ||
Computer Vision (CV) | Image Matting | Semantic Human Matting | ✅ | ||
Computer Vision (CV) | Video Classification | C3D | ✅ | ||
Computer Vision (CV) | Image Super-Resolution | SRCNN | ✅ | ||
Computer Vision (CV) | Image Super-Resolution | RDN | ✅ | ✅ | |
Computer Vision (CV) | Image Denoising | BRDNet | ✅ | ||
Computer Vision (CV) | Image Denoising | DnCNN | ✅ | ||
Computer Vision (CV) | Image Denoising | Learning-to-See-in-the-Dark | ✅ | ||
Computer Vision (CV) | Image Quality Assessment | NIMA | ✅ | ||
Natural Language Processing (NLP) | Natural Language Understanding | BERT | ✅ | ✅ | |
Natural Language Processing (NLP) | Natural Language Understanding | FastText | ✅ | ||
Natural Language Processing (NLP) | Natural Language Understanding | GNMT v2 | ✅ | ||
Natural Language Processing (NLP) | Natural Language Understanding | GRU | ✅ | ||
Natural Language Processing (NLP) | Natural Language Understanding | MASS | ✅ | ✅ | |
Natural Language Processing (NLP) | Natural Language Understanding | SentimentNet | ✅ | ✅ | ✅ |
Natural Language Processing (NLP) | Natural Language Understanding | Transformer | ✅ | ✅ | |
Natural Language Processing (NLP) | Natural Language Understanding | TinyBERT | ✅ | ✅ | |
Natural Language Processing (NLP) | Natural Language Understanding | TextCNN | ✅ | ||
Natural Language Processing (NLP) | Natural Language Understanding | CPM | ✅ | ||
Natural Language Processing (NLP) | Natural Language Understanding | ERNIE | ✅ | ||
Natural Language Processing (NLP) | Natural Language Understanding | GPT-3 | ✅ | ||
Natural Language Processing (NLP) | Emotion Classification | EmoTect | ✅ | ||
Natural Language Processing (NLP) | Emotion Classification | LSTM | ✅ | ||
Natural Language Processing (NLP) | Dialogue Generation | DGU | ✅ | ||
Natural Language Processing (NLP) | Dialogue Generation | DuConv | ✅ | ||
Recommender | Recommender System, CTR prediction | DeepFM | ✅ | ✅ | ✅ |
Recommender | Recommender System, Search, Ranking | Wide&Deep | ✅ | ✅ | |
Recommender | Recommender System | NAML | ✅ | ||
Recommender | Recommender System | NCF | ✅ | ||
Graph Neural Networks (GNN) | Text Classification | GCN | ✅ | ||
Graph Neural Networks (GNN) | Text Classification | GAT | ✅ | ||
Graph Neural Networks (GNN) | Recommender System | BGCF | ✅ |
Domain | Sub Domain | Network | Ascend | GPU | CPU |
---|---|---|---|---|---|
Computer Vision (CV) | Image Classification | 3D Densenet | ✅ | ||
Computer Vision (CV) | Image Classification | Auto Augment | ✅ | ||
Computer Vision (CV) | Image Classification | AVA | ✅ | ||
Computer Vision (CV) | Image Classification | CCT | ✅ | ||
Computer Vision (CV) | Image Classification | dnet-nas | ✅ | ||
Computer Vision (CV) | Image Classification | Efficientnet-b0 | ✅ | ||
Computer Vision (CV) | Image Classification | Efficientnet-b1 | ✅ | ||
Computer Vision (CV) | Image Classification | Efficientnet-b2 | ✅ | ||
Computer Vision (CV) | Image Classification | Efficientnet-b3 | ✅ | ||
Computer Vision (CV) | Image Classification | FDA-BNN | ✅ | ||
Computer Vision (CV) | Image Classification | fishnet99 | ✅ | ||
Computer Vision (CV) | Image Classification | GENET | ✅ | ||
Computer Vision (CV) | Image Classification | GhostNet | ✅ | ||
Computer Vision (CV) | Image Classification | Glore_res200 | ✅ | ||
Computer Vision (CV) | Image Classification | Glore_res50 | ✅ | ||
Computer Vision (CV) | Image Classification | HarDNet | ✅ | ||
Computer Vision (CV) | Image Classification | HourNAS | ✅ | ||
Computer Vision (CV) | Image Classification | HRNetW48-cls | ✅ | ||
Computer Vision (CV) | Image Classification | ibn-net | ✅ | ||
Computer Vision (CV) | Image Classification | Inception ResNet V2 | ✅ | ||
Computer Vision (CV) | Image Classification | Resnetv2_50_frn | ✅ | ||
Computer Vision (CV) | Image Classification | META-Baseline | ✅ | ||
Computer Vision (CV) | Image Classification | MNasNet | ✅ | ||
Computer Vision (CV) | Image Classification | MobilenetV3-Large | ✅ | ||
Computer Vision (CV) | Image Classification | MobilenetV3-Small | ✅ | ||
Computer Vision (CV) | Image Classification | NFNet-F0 | ✅ | ||
Computer Vision (CV) | Image Classification | ntsnet | ✅ | ||
Computer Vision (CV) | Image Classification | Pdarts | ✅ | ||
Computer Vision (CV) | Image Classification | PNASNet-5 | ✅ | ||
Computer Vision (CV) | Image Classification | ProtoNet | ✅ | ||
Computer Vision (CV) | Image Classification | Proxylessnas | ✅ | ||
Computer Vision (CV) | Image Classification | RelationNet | ✅ | ||
Computer Vision (CV) | Image Classification | renas | ✅ | ||
Computer Vision (CV) | Image Classification | Res2net | ✅ | ||
Computer Vision (CV) | Image Classification | ResNeSt-50 | ✅ | ||
Computer Vision (CV) | Image Classification | ResNet50-BAM | ✅ | ||
Computer Vision (CV) | Image Classification | ResNet50-quadruplet | ✅ | ||
Computer Vision (CV) | Image Classification | ResNet50-triplet | ✅ | ||
Computer Vision (CV) | Image Classification | ResNetV2 | ✅ | ||
Computer Vision (CV) | Image Classification | ResNeXt152_vd_64x4d | ✅ | ||
Computer Vision (CV) | Image Classification | SE-Net | ✅ | ||
Computer Vision (CV) | Image Classification | SERes2Net50 | ✅ | ||
Computer Vision (CV) | Image Classification | SinglePathNas | ✅ | ||
Computer Vision (CV) | Image Classification | SKNet-50 | ✅ | ||
Computer Vision (CV) | Image Classification | SPPNet | ✅ | ||
Computer Vision (CV) | Image Classification | SqueezeNet | ✅ | ||
Computer Vision (CV) | Image Classification | SqueezeNet1_1 | ✅ | ||
Computer Vision (CV) | Image Classification | Swin Transformer | ✅ | ||
Computer Vision (CV) | Image Classification | TNT | ✅ | ||
Computer Vision (CV) | Image Classification | VGG19 | ✅ | ||
Computer Vision (CV) | Image Classification | Vit-Base | ✅ | ||
Computer Vision (CV) | Image Classification | Wide ResNet | ✅ | ||
Computer Vision (CV) | Image Classification | FaceAttributes | ✅ | ||
Computer Vision (CV) | Image Classification | FaceQualityAssessment | ✅ | ||
Computer Vision (CV) | Re-Identification | Aligned-ReID | ✅ | ||
Computer Vision (CV) | Re-Identification | DDAG | ✅ | ||
Computer Vision (CV) | Re-Identification | MVD | ✅ | ||
Computer Vision (CV) | Re-Identification | OSNet | ✅ | ||
Computer Vision (CV) | Re-Identification | PAMTRI | ✅ | ||
Computer Vision (CV) | Re-Identification | VehicleNet | ✅ | ||
Computer Vision (CV) | Face Detection | FaceDetection | ✅ | ||
Computer Vision (CV) | Face Detection | FaceBoxes | ✅ | ||
Computer Vision (CV) | Face Detection | RetinaFace | ✅ | ||
Computer Vision (CV) | Face Recognition | Arcface | ✅ | ||
Computer Vision (CV) | Face Recognition | DeepID | ✅ | ||
Computer Vision (CV) | Face Recognition | FaceRecognition | ✅ | ||
Computer Vision (CV) | Face Recognition | FaceRecognitionForTracking | ✅ | ||
Computer Vision (CV) | Face Recognition | LightCNN | ✅ | ||
Computer Vision (CV) | Object Detection | Spnas | ✅ | ||
Computer Vision (CV) | Object Detection | SSD-GhostNet | ✅ | ||
Computer Vision (CV) | Object Detection | EGNet | ✅ | ||
Computer Vision (CV) | Object Detection | FasterRCNN-FPN-DCN | ✅ | ||
Computer Vision (CV) | Object Detection | NAS-FPN | ✅ | ||
Computer Vision (CV) | Object Detection | RAS | ✅ | ||
Computer Vision (CV) | Object Detection | r-cnn | ✅ | ||
Computer Vision (CV) | Object Detection | RefineDet | ✅ | ||
Computer Vision (CV) | Object Detection | Res2net_fasterrcnn | ✅ | ||
Computer Vision (CV) | Object Detection | Res2net_yolov3 | ✅ | ||
Computer Vision (CV) | Object Detection | Retinanet_resnet101 | ✅ | ||
Computer Vision (CV) | Object Detection | SSD_MobilenetV2_fpnlite | ✅ | ||
Computer Vision (CV) | Object Detection | ssd_mobilenet_v2 | ✅ | ||
Computer Vision (CV) | Object Detection | ssd_resnet50 | ✅ | ||
Computer Vision (CV) | Object Detection | ssd_inceptionv2 | ✅ | ||
Computer Vision (CV) | Object Detection | ssd_resnet34 | ✅ | ||
Computer Vision (CV) | Object Detection | U-2-Net | ✅ | ||
Computer Vision (CV) | Object Detection | YOLOV3-tiny | ✅ | ||
Computer Vision (CV) | Object Tracking | SiamFC | ✅ | ||
Computer Vision (CV) | Object Tracking | SiamRPN | ✅ | ||
Computer Vision (CV) | Object Tracking | FairMOT | ✅ | ||
Computer Vision (CV) | Key Point Detection | CenterNet | ✅ | ✅ | |
Computer Vision (CV) | Key Point Detection | CenterNet-hourglass | ✅ | ||
Computer Vision (CV) | Key Point Detection | CenterNet-resnet101 | ✅ | ||
Computer Vision (CV) | Key Point Detection | CenterNet-resnet50 | ✅ | ||
Computer Vision (CV) | Point Cloud Model | PointNet | ✅ | ||
Computer Vision (CV) | Point Cloud Model | PointNet++ | ✅ | ||
Computer Vision (CV) | Depth Estimation | midas | ✅ | ||
Computer Vision (CV) | Sequential Image Classification | TCN | ✅ | ||
Computer Vision (CV) | Temporal Localization | TALL | ✅ | ||
Computer Vision (CV) | Image Matting | FCA-net | ✅ | ||
Computer Vision (CV) | Video Classification | Attention Cluster | ✅ | ||
Computer Vision (CV) | Video Classification | ECO-lite | ✅ | ||
Computer Vision (CV) | Video Classification | R(2+1)D | ✅ | ||
Computer Vision (CV) | Video Classification | Resnet-3D | ✅ | ||
Computer Vision (CV) | Video Classification | StNet | ✅ | ||
Computer Vision (CV) | Video Classification | TSM | ✅ | ||
Computer Vision (CV) | Video Classification | TSN | ✅ | ||
Computer Vision (CV) | Zero-Shot Learnning | DEM | ✅ | ||
Computer Vision (CV) | Style Transfer | AECRNET | ✅ | ||
Computer Vision (CV) | Style Transfer | APDrawingGAN | ✅ | ||
Computer Vision (CV) | Style Transfer | Arbitrary-image-stylization | ✅ | ||
Computer Vision (CV) | Style Transfer | AttGAN | ✅ | ||
Computer Vision (CV) | Style Transfer | CycleGAN | ✅ | ||
Computer Vision (CV) | Image Super-Resolution | CSD | ✅ | ||
Computer Vision (CV) | Image Super-Resolution | DBPN | ✅ | ||
Computer Vision (CV) | Image Super-Resolution | EDSR | ✅ | ||
Computer Vision (CV) | Image Super-Resolution | esr-ea | ✅ | ||
Computer Vision (CV) | Image Super-Resolution | ESRGAN | ✅ | ||
Computer Vision (CV) | Image Super-Resolution | IRN | ✅ | ||
Computer Vision (CV) | Image Super-Resolution | RCAN | ✅ | ||
Computer Vision (CV) | Image Super-Resolution | sr-ea | ✅ | ||
Computer Vision (CV) | Image Super-Resolution | SRGAN | ✅ | ||
Computer Vision (CV) | Image Super-Resolution | wdsr | ✅ | ||
Computer Vision (CV) | Image Denoising | Neighbor2Neighbor | ✅ | ||
Computer Vision (CV) | Image Generation | CGAN | ✅ | ||
Computer Vision (CV) | Image Generation | DCGAN | ✅ | ||
Computer Vision (CV) | Image Generation | GAN | ✅ | ||
Computer Vision (CV) | Image Generation | IPT | ✅ | ||
Computer Vision (CV) | Image Generation | pgan | ✅ | ||
Computer Vision (CV) | Image Generation | Photo2Cartoon | ✅ | ||
Computer Vision (CV) | Image Generation | Pix2Pix | ✅ | ||
Computer Vision (CV) | Image Generation | SinGAN | ✅ | ||
Computer Vision (CV) | Image Generation | StarGAN | ✅ | ||
Computer Vision (CV) | Image Generation | STGAN | ✅ | ||
Computer Vision (CV) | Image Generation | WGAN | ✅ | ||
Computer Vision (CV) | Scene Text Detection | AdvancedEast | ✅ | ||
Computer Vision (CV) | Scene Text Detection | TextFuseNet | ✅ | ||
Computer Vision (CV) | Scene Text Recognition | ManiDP | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | 3d-cnn | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | adelaide_ea | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | DDRNet | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | E-Net | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | Hrnet | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | ICNet | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | PSPnet | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | RefineNet | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | Res2net_deeplabv3 | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | UNet 3+ | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | V-net | ✅ | ||
Computer Vision (CV) | Semantic Segmentation | Autodeeplab | ✅ | ||
Computer Vision (CV) | Pose Estimation | AlphaPose | ✅ | ||
Computer Vision (CV) | Pose Estimation | Hourglass | ✅ | ||
Computer Vision (CV) | Pose Estimation | Simple Baseline | ✅ | ||
Computer Vision (CV) | Image Retrieval | Delf | ✅ | ||
Natural Language Processing (NLP) | Word Embedding | Word2Vec Skip-Gram | ✅ | ||
Natural Language Processing (NLP) | Dialogue Generation | DAM | ✅ | ||
Natural Language Processing (NLP) | Machine Translation | Seq2Seq | ✅ | ||
Natural Language Processing (NLP) | Emotion Classification | Senta | ✅ | ||
Natural Language Processing (NLP) | Emotion Classification | Attention LSTM | ✅ | ||
Natural Language Processing (NLP) | Named Entity Recognition | LSTM_CRF | ✅ | ||
Natural Language Processing (NLP) | Text Classification | HyperText | ✅ | ||
Natural Language Processing (NLP) | Text Classification | TextRCNN | ✅ | ||
Natural Language Processing (NLP) | Natural Language Understanding | ALBert | ✅ | ||
Natural Language Processing (NLP) | Natural Language Understanding | KT-Net | ✅ | ||
Natural Language Processing (NLP) | Natural Language Understanding | LUKE | ✅ | ||
Natural Language Processing (NLP) | Natural Language Understanding | TPRR | ✅ | ||
Natural Language Processing (NLP) | Knowledge Graph Embedding | RotatE | ✅ | ||
Recommender | Recommender System, CTR prediction | AutoDis | ✅ | ||
Recommender | Recommender System, CTR prediction | DeepFFM | ✅ | ||
Recommender | Recommender System, CTR prediction | DIEN | ✅ | ||
Recommender | Recommender System, CTR prediction | DLRM | ✅ | ||
Recommender | Recommender System, CTR prediction | EDCN | ✅ | ||
Recommender | Recommender System, CTR prediction | MMOE | ✅ | ||
Audio | Audio Tagging | FCN-4 | ✅ | ||
Audio | Keyword Spotting | DS-CNN | ✅ | ||
Audio | Speech Recognition | CTCModel | ✅ | ||
Audio | Speech Synthesis | Wavenet | ✅ | ||
GNN | Traffic Prediction | STGCN | ✅ | ||
GNN | Traffic Prediction | TGCN | ✅ | ||
GNN | Social and Information Networks | SGCN | ✅ | ||
GNN | Graph Classification | DGCN | ✅ | ||
GNN | Graph Classification | SDNE | ✅ | ||
High Performance Computing | Molecular Dynamics | DeepPotentialH2O | ✅ | ||
High Performance Computing | Ocean Model | GOMO | ✅ | ||
Reinforcement Learning | Recommender System, CTR prediction | MMOE | ✅ |
models
models
comes from the directory model_zoo
of repository mindspore. This new repository doesn't contain any history of commits about the directory model_zoo
in mindspore
, you could refer to the repository mindspore
for the past commits.
Here is the ModelZoo for MindSpore which support different devices including Ascend, GPU, CPU and mobile.
If you are looking for exclusive models only for Ascend using different ML platform, you could refer to Ascend ModelZoo and corresponding gitee repository
If you are looking for some pretrained checkpoint of mindspore, you could refer to MindSpore Hub or Download Website.
Mindspore only provides scripts that downloads and preprocesses public datasets. We do not own these datasets and are not responsible for their quality or maintenance. Please make sure you have permission to use the dataset under the dataset’s license. The models trained on these dataset are for non-commercial research and educational purpose only.
To dataset owners: we will remove or update all public content upon request if you don’t want your dataset included on Mindspore, or wish to update it in any way. Please contact us through a Github/Gitee issue. Your understanding and contribution to this community is greatly appreciated.
MindSpore is Apache 2.0 licensed. Please see the LICENSE file.
For more information about MindSpore
framework, please refer to FAQ
Q: How to resolve the lack of memory while using the model directly under "models" with errors such as Failed to alloc memory pool memory?
A: The typical reason for insufficient memory when directly using models under "models" is due to differences in operating mode (PYNATIVE_MODE
), operating environment configuration, and license control (AI-TOKEN).
PYNATIVE_MODE
usually uses more memory than GRAPH_MODE
, especially in the training graph that needs back propagation calculation, there are two ways to try to solve this problem.
Method 1: You can try to use some smaller batch size;
Method 2: Add context.set_context(mempool_block_size="XXGB"), where the current maximum effective value of "XX" can be set to "31".
If method 1 and method 2 are used in combination, the effect will be better.Q: How to resolve the error about the interface are not supported in some network operations, such as cann not import
?
A: Please check the version of MindSpore and the branch you fetch the modelzoo scripts. Some model scripits in latest branch will use new interface in the latest version of MindSpore.
Q: What is Some RANK_TBAL_FILE which mentioned in many models?
A: RANK_TABLE_FILE is the config file of cluster on Ascend while running distributed training. For more information, you could refer to the generator hccl_tools and Parallel Distributed Training Example
Q: How to run the scripts on Windows system?
A: Most the start-up scripts are written in bash
, but we usually can't run bash directly on Windows. You can try start python directly without bash scripts. If you really need the start-up bash scripts, we suggest you the following method to get a bash environment on Windows:
Windows Subsystem for Linux
on Windows to obtain an linux system which could run the bash scripts.Q: How to resolve the compile error point to gflags when infer on ascend310 with errors such as undefined reference to 'google::FlagRegisterer::FlagRegisterer'?
A: Please check the version of GCC and gflags. You can refer to GCC and gflags to install GCC and gflags. You need to ensure that the components used are ABI compatible, for more information, please refer to _GLIBCXX_USE_CXX11_ABI.
Q: How to solve the error when loading dataset in mindrecord format on Mac system, such as Invalid file, failed to open files for reading mindrecord files.?
A: Please check the system limit with ulimit -a, if the number of file descriptors is 256 (default), you need to use ulimit -n 1024 to set it to 1024 (or larger). Then check whether the file is damaged or modified.
Q: What should I do if I can't reach the accuracy while training with several servers instead of a single server?
A: Most of the models has only been trained on single server with at most 8 pcs. Because the batch_size
used in MindSpore only represent the batch size of single GPU/NPU, the global_batch_size
will increase while training with multi-server. Different gloabl_batch_size
requires different hyper parameter including learning_rate, etc. So you have to optimize these hyperparameters will training with multi-servers.
此处可能存在不合适展示的内容,页面不予展示。您可通过相关编辑功能自查并修改。
如您确认内容无涉及 不当用语 / 纯广告导流 / 暴力 / 低俗色情 / 侵权 / 盗版 / 虚假 / 无价值内容或违法国家有关法律法规的内容,可点击提交进行申诉,我们将尽快为您处理。