LTL Tutor
We have been engaged in a multi-year project to improve education in Linear Temporal Logic (LTL) [Blog Post 1, Blog Post 2]. In particular, we have arrived at a detailed understanding of typical misconceptions that learners and even experts have. Our useful outcome from our studies is a set of instruments (think “quizzes”) that instructors can deploy in their classes to understand how well their students understand the logic and what weaknesses they have.
Read more…Misconceptions In Finite-Trace and Infinite-Trace Linear Temporal Logic
Over the past three years and with a multi-national group of collaborators, we have been digging deeper into misconceptions in LTL (Linear Temporal Logic) and studying misconceptions in LTLf, a promising variant of LTL restricted to finite traces. Why LTL and LTLf? Because beyond their traditional uses in verification and now robot synthesis, they support even more applications, from image processing to web-page testing to process-rule mining. Why study misconceptions? Because ultimately, human users need to fully understand what a formula says before they can safely apply synthesis tools and the like.
Read more…Iterative Student Program Planning using Transformer-Driven Feedback
We’ve had a few projects now that address this idea of teaching students to plan out solutions to programming problems. A thus-far missing but critical piece is feedback on this planning process. Ideally we want to give students feedback on their plans before they commit to any code details. Our early studies had students express their plans in a semi-formalized way which would’ve allowed us to automatically generate feedback based on formal structure. However, our most recent project highlighted a strong preference towards more freedom in notation, with plans expressed in far less structured language. This presents a challenge when designing automated feedback.
Read more…Differential Analysis: A Summary
For multiple decades we have worked on a the problem of differential analysis. This post explains where it comes from, what it means, and what its consequences are.
Read more…Forge: A Tool to Teach Formal Methods
For the past decade we have been studying how best to get students into formal methods (FM). Our focus is not on the 10% or so of students who will automatically gravitate towards it, but on the “other 90%” who don’t view it as a fundamental part of their existence (or of the universe). In particular, we decided to infuse FM thinking into the students who go off to build systems. Hence the course, Logic for Systems.
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