ΑΙhub 08月05日 16:17
Interview with Shaghayegh (Shirley) Shajarian: Applying generative AI to computer networks
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

本文介绍了北卡罗来纳州立大学计算机科学博士生Shaghayegh (Shirley) Shajarian的研究,她致力于将生成式人工智能应用于计算机网络管理。她的研究旨在开发AI驱动的智能代理,以自动化日志分析、故障排除和文档记录等任务,从而减轻网络团队的日常负担,并推动网络向更自主、自运行的方向发展。Shajarian强调了大型语言模型(LLMs)在理解网络复杂性、识别问题并与人类操作员进行类人对话方面的巨大潜力,这将加速实现半自主乃至全自主网络的愿景。她还分享了选择AI领域和攻读博士学位的经验,强调了灵活性、好奇心以及选择合适导师和研究主题的重要性。

🎯 **AI驱动的网络自主化**:研究的核心目标是利用生成式AI技术,如大型语言模型(LLMs),来自动化计算机网络中的关键管理任务,如日志分析、故障排除和文档记录,以实现更高级别的网络自主运行,减轻人为干预和负担。

💡 **LLMs在网络管理中的应用**:大型语言模型被视为智能网络代理的理想工具,能够处理日益复杂的网络系统。它们可以通过解读日志、识别问题并以自然语言沟通,极大地支持网络操作员,并为构建半自主网络奠定基础。

🚀 **迈向全自主网络愿景**:通过不断优化AI代理在真实网络环境中的部署和适应能力,研究旨在推动网络实现完全自主运行,使其能够自主地配置、优化、修复和保护自身,而无需人工干预。

🎓 **攻读AI与网络交叉领域博士的建议**:对于有志于此的学生,需要保持灵活性、好奇心并紧跟技术前沿。同时,选择一位优秀的导师和契合自身兴趣的研究课题至关重要,这有助于在研究过程中保持动力和专注。

🧑‍🍳 **研究之外的热情**:除了在AI和网络领域的学术追求,作者还是一位充满热情的厨师,将烹饪视为一种创意表达和与人连接的方式,这展示了她在专业领域之外的多元化兴趣。

In this interview series, we’re meeting some of the AAAI/SIGAI Doctoral Consortium participants to find out more about their research. This time, we hear from Shaghayegh (Shirley) Shajarian and learn about her research applying generative AI to computer networks.

Tell us a bit about your PhD – where are you studying, and what is the topic of your research?

I am a third-year PhD student in the Computer Science department at North Carolina A&T State University, working under Dr Sajad Khorsandroo and Dr Mahmoud Abdelsalam. I am part of the Autonomous Cybersecurity and Resilience Lab, where my research focuses on applying generative AI to computer networks. I am developing AI-driven agents that assist with some network operations, such as log analysis, troubleshooting, and documentation. The goal is to reduce the manual work that network teams deal with every day and move toward more autonomous, self-running networks.

Could you give us an overview of the research you’ve carried out so far during your PhD?

My research is driven by the vision of self-running networks, systems capable of autonomously configuring, optimizing, healing, and protecting themselves. This led me to research the application of generative AI to automate some key aspects of network management operations and reduce human intervention. In addition to my primary focus on autonomous network management, I am also interested in network cybersecurity and have published two studies exploring machine learning techniques in cybersecurity, with the result of two journal papers, one on classifying malicious domains using transfer learning and another surveying explainable AI (XAI) for malware analysis.

Is there an aspect of your research that has been particularly interesting?

What I find most fascinating is the potential of LLMs to act as intelligent network agents in the face of growing complexity in modern computer networks. Managing these systems manually is becoming costly and unsustainable. Leveraging LLMs to interpret logs, identify issues, and communicate their findings through human-like conversations offers a powerful way to support network operators. This also opens the door to semi-autonomous networks, where LLM-driven agents handle routine tasks while humans remain in the loop to verify, adjust, or override outputs. And ultimately, it brings us closer to the vision of fully autonomous networks that can operate, adapt, and respond without human intervention.

What are your plans for building on your research so far during the PhD – what aspects will you be investigating next?

I research how emerging techniques in Generative AI can enhance the autonomy in computer networks. Specifically, I am expanding my study by leveraging real-world telemetry and network logs to improve situational awareness and support more effective decision-making in dynamic network environments. Moving forward, I will explore the deployment of LLM-based agents in real-world environments, focusing on their reliability and ability to adapt to changing network conditions. I will also evaluate how these systems can autonomously identify, diagnose, and document network issues while ensuring human-in-the-loop oversight for critical decision-making.

What made you want to study AI, and the area of LLMs?

During my undergraduate and master’s studies in computer software engineering, I became interested in how machine learning models human reasoning. The rise of LLMs increased my curiosity about using them in complex domains like computer networks. I think their ability to support autonomy in systems is important for reducing the burden on operators and limiting the need for manual intervention.

What advice would you give to someone thinking of doing a PhD in the field?

I want to say that being flexible, curious, and up to date is essential. A PhD in a field that combines AI and computer networks requires depth in both areas, and balancing both fields takes discipline and focus, since you need to understand and apply ideas from different technical foundations. So, if you enjoy exploring problems and building solutions, this path brings value.

Also, I believe choosing the right advisor and a good research topic is key. The advisor sets the direction, pace, and standards of your work. I am so fortunate to have two amazing advisors to support me in this way. A topic that aligns with your interests helps you stay focused through the hard phases of research. Do not pursue a PhD for the degree itself; do it because you want to ask questions, find answers, and create something that adds to the field.

Could you tell us an interesting (non-AI related) fact about you?

Certainly. I am a very passionate cook, and if I were not a computer scientist, I would likely be pursuing a career as a chef, ideally working toward earning a Michelin star. Cooking is my creative outlet and one of my favorite ways to connect with others.

About Shirley

Shaghayegh (Shirley) Shajarian is a PhD Student in Computer Science at North Carolina A&T State University. Her research centers on autonomous network management using Generative AI. She holds a B.S. and M.S. in Computer Software Engineering, and her work has been presented at leading AI and computer networks conferences, including AAAI and CoNEXT. Beyond research, she is passionate about teaching, mentoring, and building AI systems that can operate effectively in complex, real-world environments.

Fish AI Reader

Fish AI Reader

AI辅助创作,多种专业模板,深度分析,高质量内容生成。从观点提取到深度思考,FishAI为您提供全方位的创作支持。新版本引入自定义参数,让您的创作更加个性化和精准。

FishAI

FishAI

鱼阅,AI 时代的下一个智能信息助手,助你摆脱信息焦虑

联系邮箱 441953276@qq.com

相关标签

生成式AI 计算机网络 网络管理 人工智能 自主网络
相关文章