Benchmarking Language Implementations: Am I doing it right? Get Early Feedback!

Modern CPUs, operating systems, and software in general do lots of smart and hard-to-track optimizations, leading to warmup behavior, cache effects, profile pollution and other unexpected interactions. For us engineers and scientists, whether in industry or academia, this unfortunately means that we may not fully understand the system on top of which we are trying to measure the performance impact of, for instance, an optimization, a new feature, a data structure, or even a bug fix.

Many of us even treat the hardware and software we run on top of as black boxes, relying on the scientific method to give us a good degree of confidence in the understanding of the performance results we are seeing.

Unfortunately, with the complexity of today’s systems, we can easily miss important confounding variables. Did we account, e.g., for CPU frequency scaling, garbage collection, JIT compilation, and network latency correctly? If not, this can lead us down the wrong, and possibly time-consuming path of implementing experiments that do not yield the results we are hoping for, or our experiments are too specific to allow us to draw general conclusions.

So, what’s the solution? What could a PhD student or industrial researcher do when planning for the next large project?

How about getting early feedback?

Get Early Feedback at a Language Implementation Workshop!

At the MoreVMs and VMIL workshop series, we introduced a new category of submissions last year: Experimental Setups.

We solicited extended abstracts that focus on the experiments themselves before an implementation is completed. This way, the experimental setup can receive feedback and guidance to improve the chances that the experiments lead to the desired outcomes. With early feedback, we can avoid common traps and pitfalls, share best practices, and deeper understanding of the systems we are using.

With the complexity of today’s systems, one person, or even one group, is not likely to think of all the issues that may be relevant. Instead of encountering these issues only in the review process after all experiments are done, we can share knowledge and ideas ahead of time, and hopefully improve the science!

So, if you think you may benefit from such feedback, please consider submitting an extended abstract describing your experimental goals and methodology. No results needed!

The next submission deadlines for the MoreVMs’26 workshop are:

  • December 17th, 2025
  • January 12th, 2026

For questions and suggestions, find me on Mastodon, BlueSky, or Twitter, or send me an email!

Can We Know Whether a Profiler is Accurate?

If you have been following the adventures of our hero over the last couple of years, you might remember that we can’t really trust sampling profilers for Java, and it’s even worse for Java’s instrumentation-based profilers.

For sampling profilers, the so-called observer effect gets in the way: when we profile a program, the profiling itself can change the program’s performance behavior. This means we can’t simply increase the sampling frequency to get a more accurate profile, because the sampling causes inaccuracies. So, how could we possibly know whether a profile correctly reflects an execution?

We could try to look at the code and estimate how long each bit takes, and then painstakingly compute what an accurate profile would be. Unfortunately, with the complexity of today’s processors and language runtimes, this would require a cycle-accurate simulator that needs to model everything, from the processor’s pipeline, over the cache hierarchy, to memory and storage. While there are simulators that do this kind of thing, they are generally too slow to simulate a full JVM with JIT compilation for any interesting program within a practical amount of time. This means that simulation is currently impractical, and it is impractical to determine what a ground truth would be.

So, what other approaches might there be to determine whether a profile is accurate?

In 2010, Mytkowicz et al. already checked whether Java profilers were actionable by inserting computations at the Java bytecode level. On today’s VMs, that’s unfortunately an approach that changes performance in fairly unpredictable ways, because it interacts with the compiler optimizations. However, the idea to check whether a profiler accurately reflects the slowdown of a program is sound. For example, an inaccurate profiler is less likely to correctly identify a change in the distribution of where a program spends its time. Similarly, if we change the overall amount of time a program takes, without changing the distribution of where time is spent, it may attribute run time to the wrong parts of a program.

We can detect both of these issues by accurately slowing down a program. And, as you might know from the previous post, we are able to slow down programs fairly accurately. Figure 1 illustrates the idea with a stacked bar chart for a hypothetical distribution of run-time over three methods. This distribution should remain identical, independent of a slowdown observed by the program. So, there’s a linear relation between the absolute time measured and a constant relation between the percentage of time per method, depending on the slowdown.

Figure 1: A stacked bar chart for a hypothetical program execution, showing the absolute time per method. A profiler should see the linear increase in run time taken by each method, but still report the same percentage of run time taken. If a profiler reports something else, we have found an inaccuracy.

With this slowdown approach, we can detect whether the profiler is accurate with respect to the predicted time increase. I’ll leave all the technical details to the paper. We can also slow down individual basic blocks accurately to make a particular method take more time. As it turns out, this is a good litmus test for the accuracy of profilers, and we find a number of examples where they fail to attribute the run time correctly. Figure 2 shows an example for the Havlak benchmark. The bar charts show how much change the four profilers detect after we slowed down Vector.hasSome to the level indicated by the red dashed line. In this particular example, async-profiler detects the change accurately. JFR is probably within the margin of error. However, JProfiler and YourKit are completely off. JProfiler likely can’t deal with inlining and attributes the change to the forEach method that calls hasSome. YourKit does not seem to see the change at all.

Figure 2: Bar chart with the change in run time between the baseline and slowed-down version, for the top 5 methods of the Havlak benchmark. The red dashed line indicates the expected change for the Vector.hasSome method. Only async-profiler and JFR come close to the expectation.

With this slowdown-based approach, we finally have a way to see how accurate sampling profilers are by approximating the ground truth profile. Since we can’t measure the ground truth directly, we found a way to sidestep a fundamental problem and found a reasonably practical solution.

The paper details how we implement our divining approach, i.e., how we slow down programs accurately. It also has all the methodological details, research questions, benchmarking setup, and lots more numbers, especially in the appendix. So, please give it a read, and let us know what you think.

If you happen to attend the SPLASH conference, Humphrey is presenting our work today and on Saturday.

Questions, pointers, and suggestions are always welcome, for instance, on Mastodon, BlueSky, or Twitter.

Thanks to Octave for feedback on this post.

Abstract

Optimizing performance on top of modern runtime systems with just-in-time (JIT) compilation is a challenge for a wide range of applications from browser-based applications on mobile devices to large-scale server applications. Developers often rely on sampling-based profilers to understand where their code spends its time. Unfortunately, sampling of JIT-compiled programs can give inaccurate and sometimes unreliable results.

To assess accuracy of such profilers, we would ideally want to compare their results to a known ground truth. With the complexity of today’s software and hardware stacks, such ground truth is unfortunately not available. Instead, we propose a novel technique to approximate a ground truth by accurately slowing down a Java program at the machine-code level, preserving its optimization and compilation decisions as well as its execution behavior on modern CPUs.

Our experiments demonstrate that we can slow down benchmarks by a specific amount, which is a challenge because of the optimizations in modern CPUs, and we verified with hardware profiling that on a basic-block level, the slowdown is accurate for blocks that dominate the execution. With the benchmarks slowed down to specific speeds, we confirmed that async-profiler, JFR, JProfiler, and YourKit maintain original performance behavior and assign the same percentage of run time to methods. Additionally, we identify cases of inaccuracy caused by missing debug information, which prevents the correct identification of the relevant source code. Finally, we tested the accuracy of sampling profilers by approximating the ground truth by the slowing down of specific basic blocks and found large differences in accuracy between the profilers.

We believe, our slowdown-based approach is the first practical methodology to assess the accuracy of sampling profilers for JIT-compiling systems and will enable further work to improve the accuracy of profilers.

  • Divining Profiler Accuracy: An Approach to Approximate Profiler Accuracy Through Machine Code-Level Slowdown
    H. Burchell, S. Marr; Proceedings of the ACM on Programming Languages, OOPSLA'25, ACM, 2025.
  • Paper: PDF
  • DOI: 10.1145/3763180
  • Appendix: online appendix
  • BibTex: bibtex
    @article{Burchell:2025:Divining,
      abstract = {Optimizing performance on top of modern runtime systems with just-in-time (JIT) compilation is a challenge for a wide range of applications from browser-based applications on mobile devices to large-scale server applications. Developers often rely on sampling-based profilers to understand where their code spends its time. Unfortunately, sampling of JIT-compiled programs can give inaccurate and sometimes unreliable results.
      
      To assess accuracy of such profilers, we would ideally want to compare their results to a known ground truth. With the complexity of today's software and hardware stacks, such ground truth is unfortunately not available. Instead, we propose a novel technique to approximate a ground truth by accurately slowing down a Java program at the machine-code level, preserving its optimization and compilation decisions as well as its execution behavior on modern CPUs.
      
      Our experiments demonstrate that we can slow down benchmarks by a specific amount, which is a challenge because of the optimizations in modern CPUs, and we verified with hardware profiling that on a basic-block level, the slowdown is accurate for blocks that dominate the execution. With the benchmarks slowed down to specific speeds, we confirmed that async-profiler, JFR, JProfiler, and YourKit maintain original performance behavior and assign the same percentage of run time to methods. Additionally, we identify cases of inaccuracy caused by missing debug information, which prevents the correct identification of the relevant source code. Finally, we tested the accuracy of sampling profilers by approximating the ground truth by the slowing down of specific basic blocks and found large differences in accuracy between the profilers.
      
      We believe, our slowdown-based approach is the first practical methodology to assess the accuracy of sampling profilers for JIT-compiling systems and will enable further work to improve the accuracy of profilers.},
      acceptancerate = {0.356},
      appendix = {https://doi.org/10.5281/zenodo.16911348},
      articleno = {402},
      author = {Burchell, Humphrey and Marr, Stefan},
      blog = {https://stefan-marr.de/2025/10/can-we-know-whether-a-profiler-is-accurate/},
      doi = {10.1145/3763180},
      issn = {2475-1421},
      journal = {Proceedings of the ACM on Programming Languages},
      keywords = {Accuracy GroundTruth Java MeMyPublication Profiling Sampling myown},
      month = oct,
      number = {OOPSLAB25},
      numpages = {32},
      pdf = {https://stefan-marr.de/downloads/oopsla25-burchell-marr-divining-profiler-accuracy.pdf},
      publisher = {{ACM}},
      series = {OOPSLA'25},
      title = {{Divining Profiler Accuracy: An Approach to Approximate Profiler Accuracy Through Machine Code-Level Slowdown}},
      year = {2025},
      month_numeric = {10}
    }
    

First Day: A New Chapter at the JKU

It’s Wednesday. Is this important? It’s my first day in a new position. So, perhaps the real question is: what’s going to be important to me from now on?

Let’s get the titles out of the way first: Today is my first day as Universitäts­professor. That’s a full professor, chair, W3 Professor, gewoon hoogleraar, or similar. Yeah, there are lots of different names in different countries. It’s also my first day as the head of the Institute for System Software. The term institute is used here for something that’s a research group in many other places. This means I have the opportunity to work with a number of very smart people to offer university courses in the field of programming languages, compilers, and more broadly system software. It also means I am asked to advise, mentor, and support others in their research journey, from taking their very first steps, up to becoming their own independent academics, and professors in their own right. To me, this sounds fun. I am asked to help people learn, pursue knowledge, and develop their skills. Something I not only enjoy, but also find important to prepare the next generation to tackle the problems of our time. However, this also means I reached the end of a journey. That’s it. I am a full professor now, and I have convinced enough people that I am not entirely terrible at this job. Or so we all hope…

At this point, I already have to thank all the people at the JKU for the very warm welcome I received over the last few weeks. Particularly, thank you Peter, Herbert, Markus, and Karin, for all the support to get me started here! Similarly, I wouldn’t be here without my dear colleagues and mentors at Kent and in the wider programming language research community. You know who you are, I hope.

What Now?

With the new job and responsibilities, I need to think about what’s now important to me. What follows isn’t a detailed plan. I had already been asked to formulate one of those, and I’ll continue to work on realizing it. Instead, I wanted to think here a bit broader.

Teaching: Advocate for Fundamentals

Let’s start with teaching, since my first lectures will already be next week.

Our institute teaches various courses, including software development, compiler construction, advanced compiler construction, system software, dynamic compilation and run-time optimization, and principles of programming languages.

My impression from early discussions with colleagues is that I will need to work on making sure that we can keep teaching these fundamental topics in the future. While there seems to be a very strong push for AI everything, I remain to be convinced that this means that the fundamentals are any less important. On the contrary, it feels that we need to keep reminding people of classic techniques that are guaranteed to work, are correct, and efficient. So, when it comes to teaching, I think an important part of my job will be advocating for the fundamentals.

Of course, looking at the material I’ll teach this term on compiler construction and system software, perhaps I can adapt it in future years. Currently, 6 out of 13 compiler construction lectures are on parsing. This makes me want to work out what the most useful learning outcomes for such a course should be today.

Research: Take Risks and Pursue Problems Too Hard for Industry

Some people seem to advocate for exploring new things and expanding one’s horizon when reaching this career level. Indeed, I have the chance to take risks, explore new research topics and communities, and ways of working.

If there’s a single tag line for the work I have in mind, it might be: improve language implementations to better enable old and new kinds of applications. After all, I like to explore ideas that enable developers to make better use of computing systems.

This will take new ways of looking at problems. For instance, with few exceptions, I have been shying away from very formal work in the past. Though, a while ago I started dreaming of defining a new kind of high-level memory model, for which we may need a more formal approach in addition to building working prototypes. Looking at today’s memory models, they seem too low-level for dynamic languages such as Python and Ruby. I already gave a few talks about the background of this work and will also give one at SPLASH. This will be a huge project, and a risky one. Not least because it’s unclear whether the language communities care enough about the issue until they start suffering from not having a memory model more notably.

And then there is interpreter performance, a topic I have been working on for a long time already. Since I am now in a group with a long history in the area of compilers, I would like to double down on generating fast interpreters. Interpreters, the way we build them today, have a lot of headroom in terms of performance. The classic ones, implemented in C/C++, and even more so, the ones on top of meta-compilation systems. The work of Haoran Xu suggests that we can do much better. Unfortunately, it’s a really hard problem, for various reasons. Something that doesn’t fit into the short and mid-term priorities of most companies. But we can chip away at it slowly and steadily, benefiting lots of programming languages in the process.

I’ll also continue to work with my colleagues at Oracle on compiler topics and with colleagues from PLAS. We’ll keep doing fun stuff, some of which we’ll present at SPLASH in two weeks, including work on making programs slower (yes, slower!) and approximating the ground truth profile for sampling profilers.

I’ll stop here for now. Seems like I do need to get on with the actual job… somewhere in Science Park 3. I am looking forward to starting to work with all my new colleagues at the JKU and seeing which new collaborations and cooperations we can begin. If you’re a student and interested in a project, please see the Open Project’s page, where I will post more concrete project ideas in the future.

I suppose I’ll also occasionally still be on Mastodon, BlueSky, and Twitter.

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