- cross-posted to:
- [email protected]
- cross-posted to:
- [email protected]
Introduction:
Back in August, Murat Derimbas published a blog post about the paper by Herlihy and Wing that first introduced the concept of linearizability. When we move from sequential programs to concurrent ones, we need to extend our concept of what “correct” means to account for the fact that operations from different threads can overlap in time. Linearizability is the strongest consistency model for single-object systems, which means that it’s the one that aligns closest to our intuitions. Other models are weaker and, hence, will permit anomalies that violate human intuition about how systems should behave.
Beyond introducing linearizability, one of the things that Herlihy and Wing do in this paper is provide an implementation of a linearizable queue whose correctness cannot be demonstrated using an approach known as refinement mapping. At the time the paper was published, it was believed that it was always possible to use refinement mapping to prove that one specification implemented another, and this paper motivated Leslie Lamport and Martín Abadi to propose the concept of prophecy variables.
I have long been fascinated by the concept of prophecy variables, but when I learned about them, I still couldn’t figure out how to use them to prove that the queue implementation in the Herlihy and Wing paper is linearizable. (I even asked Leslie Lamport about it at the 2021 TLA+ conference).
Recently, Lamport published a book called The Science of Concurrent Programs that describes in detail how to use prophecy variables to do the refinement mapping for the queue in the Herlihy and Wing paper. Because the best way to learn something is to explain it, I wanted to write a blog post about this.
In this post, I’m going to assume that readers have no prior knowledge about TLA+ or linearizability. What I want to do here is provide the reader with some intuition about the important concepts, enough to interest people to read further. There’s a lot of conceptual ground to cover: to understand prophecy variables and why they’re needed for the queue implementation in the Herlihy and Wing paper requires an understanding of refinement mapping. Understanding refinement mapping requires understanding the state-machine model that TLA+ uses for modeling programs and systems. We’ll also need to cover what linearizability actually is.
We’ll going to start all of the way at the beginning: describing what it is that a program should do.