Zion Leonahenahe Basque (Arizona State University), Samuele Doria (University of Padua), Ananta Soneji (Arizona State University), Wil Gibbs (Arizona State University), Adam Doupe (Arizona State University), Yan Shoshitaishvili (Arizona State University), Eleonora Losiouk (University of Padua), Ruoyu “Fish” Wang (Arizona State University), Simone Aonzo (EURECOM)

Large Language Models (LLMs) are revolutionizing fields previously dominated by human effort. This work presents the first systematic investigation of how LLMs can team with analysts during software reverse engineering (SRE). To accomplish this, we first document the state of LLMs in SRE with an online survey of 153 practitioners, and then we design a fine-grained human study on two Capture-The-Flag-style binaries representative of real-world software.

In our human study, we instrumented the SRE workflow of 48 participants (split between 24 novices and 24 experts), observing over 109 hours of SRE. Through 18 findings, we found various benefits and harms of LLMs in SRE. Remarkably, we found that LLM assistance narrows the expertise gap: novices' comprehension rate rises by approximately 98%, matching that of experts, whereas experts gain little; however, they also had harmful hallucinations, unhelpful suggestions, and ineffective results. Known-algorithm functions are triaged up to 2.4x faster, and artifact recovery (names, comments, types) increases by at least 66%. Overall, our findings identify powerful synergies of humans and LLMs in SRE, but also emphasize the significant shortcomings of LLMs in their current integration.

View More Papers

An Analysis of Matter IoT Security Against International Standards...

Andrew Losty (University College London), Anna Maria Mandalari (University College London)

Read More

Assessing Supply Chain Risks in 5G O-RAN Components Using...

Himashveta Kumar (The Pennsylvania State University), Tianchang Yang (The Pennsylvania State University), Arupjyoti Bhuyan (Idaho National Laboratory), Syed Rafiul Hussain (The Pennsylvania State University)

Read More

Improving Adoption of Home IoT Beyond Single-Family Homes: Delineating...

Tushar M. Jois (City College of New York), Susan Landau (Tufts University)

Read More