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Are Time-Series Foundation Models Deployment-Ready? A Systematic Study of Adversarial Robustness Across Domains

Are Time-Series Foundation Models Deployment-Ready? A Systematic Study of Adversarial Robustness Across Domains

26 May 2025
Jiawen Zhang
Zhenwei Zhang
Shun Zheng
Xumeng Wen
Jia Li
Jiang Bian
    AI4TS
    AAML
ArXivPDFHTML

Papers citing "Are Time-Series Foundation Models Deployment-Ready? A Systematic Study of Adversarial Robustness Across Domains"

11 / 11 papers shown
Title
TimesBERT: A BERT-Style Foundation Model for Time Series Understanding
TimesBERT: A BERT-Style Foundation Model for Time Series Understanding
Haoran Zhang
Yong Liu
Yunzhong Qiu
Haixuan Liu
Zhongyi Pei
Jianmin Wang
Mingsheng Long
AI4TS
55
1
0
28 Feb 2025
Large Pre-trained time series models for cross-domain Time series
  analysis tasks
Large Pre-trained time series models for cross-domain Time series analysis tasks
Harshavardhan Kamarthi
B. A. Prakash
VLM
AI4TS
73
12
0
19 Nov 2023
Large Language Models for Code: Security Hardening and Adversarial
  Testing
Large Language Models for Code: Security Hardening and Adversarial Testing
Jingxuan He
Martin Vechev
ELM
AAML
47
113
0
10 Feb 2023
Red Teaming Language Models with Language Models
Red Teaming Language Models with Language Models
Ethan Perez
Saffron Huang
Francis Song
Trevor Cai
Roman Ring
John Aslanides
Amelia Glaese
Nat McAleese
G. Irving
AAML
46
627
0
07 Feb 2022
Untargeted, Targeted and Universal Adversarial Attacks and Defenses on
  Time Series
Untargeted, Targeted and Universal Adversarial Attacks and Defenses on Time Series
Pradeep Rathore
Arghya Basak
S. Nistala
Venkataramana Runkana
AAML
46
42
0
13 Jan 2021
RobustBench: a standardized adversarial robustness benchmark
RobustBench: a standardized adversarial robustness benchmark
Francesco Croce
Maksym Andriushchenko
Vikash Sehwag
Edoardo Debenedetti
Nicolas Flammarion
M. Chiang
Prateek Mittal
Matthias Hein
VLM
280
689
0
19 Oct 2020
Language Models are Few-Shot Learners
Language Models are Few-Shot Learners
Tom B. Brown
Benjamin Mann
Nick Ryder
Melanie Subbiah
Jared Kaplan
...
Christopher Berner
Sam McCandlish
Alec Radford
Ilya Sutskever
Dario Amodei
BDL
500
41,106
0
28 May 2020
Adversarial Examples Are Not Bugs, They Are Features
Adversarial Examples Are Not Bugs, They Are Features
Andrew Ilyas
Shibani Santurkar
Dimitris Tsipras
Logan Engstrom
Brandon Tran
Aleksander Madry
SILM
80
1,825
0
06 May 2019
Adversarial Attacks on Deep Neural Networks for Time Series
  Classification
Adversarial Attacks on Deep Neural Networks for Time Series Classification
Hassan Ismail Fawaz
Germain Forestier
J. Weber
L. Idoumghar
Pierre-Alain Muller
AAML
47
134
0
17 Mar 2019
On Evaluating Adversarial Robustness
On Evaluating Adversarial Robustness
Nicholas Carlini
Anish Athalye
Nicolas Papernot
Wieland Brendel
Jonas Rauber
Dimitris Tsipras
Ian Goodfellow
Aleksander Madry
Alexey Kurakin
ELM
AAML
65
899
0
18 Feb 2019
Intriguing properties of neural networks
Intriguing properties of neural networks
Christian Szegedy
Wojciech Zaremba
Ilya Sutskever
Joan Bruna
D. Erhan
Ian Goodfellow
Rob Fergus
AAML
185
14,831
1
21 Dec 2013
1