Pinned Repositories
AdaTime
Official implementation of AdaTime: A Benchmarking Suite for Domain Adaptation on Time Series Data
ADBench
Official Implement of "ADBench: Anomaly Detection Benchmark".
Adversarially-Learned-Anomaly-Detection
ALAD (Proceedings of IEEE ICDM 2018) official code
AIJack
reveal the vulnerabilities of machine learning models
ALDA
Code for "Adversarial-Learned Loss for Domain Adaptation"(AAAI2020) in PyTorch.
AMSGradP
Imporved AdamP called AMSGradP is suitable for intelligent fault diagnosis (故障诊断)
Anomaly_Detection
MD,LSTM-AE,VAE-MAD-GAN
attention-module
Official PyTorch code for "BAM: Bottleneck Attention Module (BMVC2018)" and "CBAM: Convolutional Block Attention Module (ECCV2018)"
AutoNL
Code for AutoNL on ImageNet (CVPR2020)
awesome-datascience
:memo: An awesome Data Science repository to learn and apply for real world problems.
fengkoushangdeZZX's Repositories
fengkoushangdeZZX/AdaTime
Official implementation of AdaTime: A Benchmarking Suite for Domain Adaptation on Time Series Data
fengkoushangdeZZX/ADBench
Official Implement of "ADBench: Anomaly Detection Benchmark".
fengkoushangdeZZX/AIJack
reveal the vulnerabilities of machine learning models
fengkoushangdeZZX/ALDA
Code for "Adversarial-Learned Loss for Domain Adaptation"(AAAI2020) in PyTorch.
fengkoushangdeZZX/AMSGradP
Imporved AdamP called AMSGradP is suitable for intelligent fault diagnosis (故障诊断)
fengkoushangdeZZX/Awesome-Dataset-Distillation
Awesome Dataset Distillation Papers
fengkoushangdeZZX/Awesome-time-series
A comprehensive survey on the time series domains
fengkoushangdeZZX/awesome-transformer-search
A curated list of awesome resources combining Transformers with Neural Architecture Search
fengkoushangdeZZX/bayesian-deep-rul
Bayesian Deep Learning for Remaining Useful Life Estimation of Machine Tool Components
fengkoushangdeZZX/Bearing-Fault-Diagnosis-CNNs-and-Vibration-Spectrogram
Vibrational Analysis for CWRU Bearing Dataset
fengkoushangdeZZX/calda
Contrastive Adversarial Learning for Multi-Source Time Series Domain Adaptation
fengkoushangdeZZX/Codes
fengkoushangdeZZX/Conditional-Adversarial-Domain-Generalization-with-Single-Discriminator
Pytorch implementation of the paper: "Conditional Adversarial Domain Generalization With a Single Discriminator for Bearing Fault Diagnosis"
fengkoushangdeZZX/DeepFD
The repository of "DeepFD: Automated Fault Diagnosis and Localization for Deep Learning Programs"
fengkoushangdeZZX/deeptime-notebooks
Notebooks which contain example code for deeptime, used to render the documentation.
fengkoushangdeZZX/EdgeKE
Code for paper "EdgeKE: An On-Demand Deep Learning IoT System for Cognitive Big Data on Industrial Edge Devices"
fengkoushangdeZZX/External-Attention-pytorch
🍀 Pytorch implementation of various Attention Mechanisms, MLP, Re-parameter, Convolution, which is helpful to further understand papers.⭐⭐⭐
fengkoushangdeZZX/GANF
Offical implementation of "Graph-Augmented Normalizing Flows for Anomaly Detection of Multiple Time Series" (ICLR 2022)
fengkoushangdeZZX/GNNApp-Papers
Listing the research works related to risk control based on GNN and it interpretability. 1. we can learn the application of GNN in risk control (including fraud detection). 2. For possible prediction, we can use the interpretability of GNN to explaine how can we get such results.
fengkoushangdeZZX/GRDA
fengkoushangdeZZX/industry-machine-learning
A curated list of applied machine learning and data science notebooks and libraries across different industries (by @firmai)
fengkoushangdeZZX/mtad-gat-pytorch
PyTorch implementation of MTAD-GAT (Multivariate Time-Series Anomaly Detection via Graph Attention Networks) by Zhao et. al (2020, https://arxiv.org/abs/2009.02040).
fengkoushangdeZZX/paper-reading
深度学习经典、新论文逐段精读
fengkoushangdeZZX/pyod
(JMLR' 19) A Python Toolbox for Scalable Outlier Detection (Anomaly Detection)
fengkoushangdeZZX/qlib
Qlib is an AI-oriented quantitative investment platform, which aims to realize the potential, empower the research, and create the value of AI technologies in quantitative investment. With Qlib, you can easily try your ideas to create better Quant investment strategies. An increasing number of SOTA Quant research works/papers are released in Qlib.
fengkoushangdeZZX/Structure-Learning-from-Time-series-Data-with-CausalNex
Time series data structure learning with NOTEARS and DYNOTEARS
fengkoushangdeZZX/T-GCN
Temporal Graph Convolutional Network for Urban Traffic Flow Prediction Method
fengkoushangdeZZX/time-series-autoencoder
:chart_with_upwards_trend: PyTorch dual-attention LSTM-autoencoder for multivariate Time Series :chart_with_upwards_trend:
fengkoushangdeZZX/tods
TODS: An Automated Time-series Outlier Detection System
fengkoushangdeZZX/TS-TCC
[IJCAI-21] "Time-Series Representation Learning via Temporal and Contextual Contrasting"