Kimia Noorbakhsh’s research while affiliated with Massachusetts Institute of Technology and other places

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Publications (2)


Savaal: Scalable Concept-Driven Question Generation to Enhance Human Learning
  • Preprint

February 2025

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1 Read

Kimia Noorbakhsh

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Joseph Chandler

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Hari Balakrishnan

Assessing and enhancing human learning through question-answering is vital, yet automating this process remains challenging. While large language models (LLMs) excel at summarization and query responses, their ability to generate meaningful questions for learners is underexplored. We propose Savaal, a scalable question-generation system with three objectives: (i) scalability, enabling question generation from hundreds of pages of text (ii) depth of understanding, producing questions beyond factual recall to test conceptual reasoning, and (iii) domain-independence, automatically generating questions across diverse knowledge areas. Instead of providing an LLM with large documents as context, Savaal improves results with a three-stage processing pipeline. Our evaluation with 76 human experts on 71 papers and PhD dissertations shows that Savaal generates questions that better test depth of understanding by 6.5X for dissertations and 1.5X for papers compared to a direct-prompting LLM baseline. Notably, as document length increases, Savaal's advantages in higher question quality and lower cost become more pronounced.


Citations (1)


... Packet-level simulators [35,63,71] are popular in networking research, but face significant scalability challenges for modeling large-scale data center networks. Recent work improves the scalability of packet-level simulation using machine learning [43,74,75], approximation techniques [76], and better parallelization [27]. However, these approaches have some key limitations. ...

Reference:

m4: A Learned Flow-level Network Simulator
m3: Accurate Flow-Level Performance Estimation using Machine Learning
  • Citing Conference Paper
  • August 2024