南京大学计算机科学与技术系
软件新技术与产业化协同创新中心
摘 要:
Modern
computing systems are complex and opaque, which is the root cause of many
security and software engineering problems. In enterprise level system
operations, this leads to inaccurate and hard-to-understand attack forensics
results. In deep learning systems, such opaqueness prevents us from
understanding the misclassifications and improving the model accuracy. Hence,
there is a pressing need for improving the transparency of these systems to
help us solve the corresponding security and software engineering problems.
In
this talk, I will focus on my research efforts of developing novel program
analysis techniques to improve the transparency of such systems and their
applications in attack forensics and deep learning systems. For attack
forensics, I will first describe a compiler-based execution partitioning
technique MPI which helps accomplish accurate, semantics-rich and
multi-perspective attack forensics. For deep learning systems, I will introduce
novel state differential analysis and input selection techniques to analyze
deep learning model internals for addressing the misclassification problem.
Finally, I will briefly present my ongoing and future work on intelligent
systems (i.e., systems that combine traditional computing components and
artificial intelligent components).
报告人简介:
Shiqing Ma
received his PhD in Computer Science from Purdue University under supervision
of Professors Xiangyu Zhang and Prof Dongyan Xu.
He is joining the faculty of a top university in US as a tenure-track Assistant
Professor. His research interests lie in solving security and software
engineering problems via program analysis techniques with a focus on improving
the transparency of modern computing systems. He is the recipient of two
Distinguished Paper Awards at ISOC NDSS 2016 and USENIX Security 2017.
时间:5月7日(星期二)10:00
地点:计算机科学技术楼229室
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