Monte Carlo Simulations of Ionised Nebulae

Mocassin is the Monte Carlo Simulations of Ionised Nebulae. MOCASSIN is a fully 3D or 2D photoionisation and dust radiative transfer code which employs a Monte Carlo approach to the transfer of radiation through media of arbitrary geometry and density distribution.

To run this test with the Phoronix Test Suite, the basic command is: phoronix-test-suite benchmark mocassin.

Source Repository

Test Created

18 September 2020

Last Updated

18 June 2023

Test Maintainer

Michael Larabel 

Test Type


Average Install Time

19 Seconds

Average Run Time

4 Minutes, 3 Seconds

Test Dependencies

Fortran + OpenMPI + C/C++ Compiler Toolchain


20k+ Downloads

Supported Platforms

Public Result Uploads *Reported Installs **Reported Test Completions **Test Profile Page Views ***OpenBenchmarking.orgEventsMonte Carlo Simulations of Ionised Nebulae Popularity Statisticspts/mocassin2020.092020.102020.112020.122021.012021.022021.032021.042021.052021.062021.072021.082021.092021.102021.112021.122022.012022.022022.032022.042022.052022.062022.072022.082022.092022.102022.112022.122023.012023.022023.032023.042023.052023.062023.072023.082023.092023.102023.112023.122024.012024.022024.032024.049001800270036004500
* Uploading of benchmark result data to is always optional (opt-in) via the Phoronix Test Suite for users wishing to share their results publicly.
** Data based on those opting to upload their test results to and users enabling the opt-in anonymous statistics reporting while running benchmarks from an Internet-connected platform.
*** Test profile page view reporting began March 2021.
Data updated weekly as of 13 April 2024.
Gas HII4048.7%Dust 2D tau100.051.3%Input Option

Revision History

pts/mocassin-1.1.0   [View Source]   Sun, 18 Jun 2023 10:59:22 GMT
Update against latest upstream.

pts/mocassin-1.0.0   [View Source]   Fri, 18 Sep 2020 17:47:28 GMT
Initial commit of Mocassin - Monte Carlo Simulations of Ionised Nebulae

Suites Using This Test

HPC - High Performance Computing

Scientific Computing

MPI Benchmarks

Performance Metrics

Analyze Test Configuration:

Monte Carlo Simulations of Ionised Nebulae

Input: Dust 2D tau100.0 metrics for this test profile configuration based on 140 public results since 18 June 2023 with the latest data as of 10 December 2023.

Below is an overview of the generalized performance for components where there is sufficient statistically significant data based upon user-uploaded results. It is important to keep in mind particularly in the Linux/open-source space there can be vastly different OS configurations, with this overview intended to offer just general guidance as to the performance expectations.

Percentile Rank
# Compatible Public Results
Seconds (Average)
> 95
119 +/- 2
199 +/- 5
> 203
216 +/- 8
346 +/- 2
OpenBenchmarking.orgDistribution Of Public Results - Input: Dust 2D tau100.0140 Results Range From 63 To 885 Seconds6392121150179208237266295324353382411440469498527556585614643672701730759788817846875904714212835

Based on data, the selected test / test configuration (Monte Carlo Simulations of Ionised Nebulae - Input: Dust 2D tau100.0) has an average run-time of 13 minutes. By default this test profile is set to run at least 3 times but may increase if the standard deviation exceeds pre-defined defaults or other calculations deem additional runs necessary for greater statistical accuracy of the result.

OpenBenchmarking.orgMinutesTime Required To Complete BenchmarkInput: Dust 2D tau100.0Run-Time816243240Min: 3 / Avg: 12.11 / Max: 37

Based on public results, the selected test / test configuration has an average standard deviation of 0.3%.

OpenBenchmarking.orgPercent, Fewer Is BetterAverage Deviation Between RunsInput: Dust 2D tau100.0Deviation246810Min: 0 / Avg: 0.34 / Max: 4

Tested CPU Architectures

This benchmark has been successfully tested on the below mentioned architectures. The CPU architectures listed is where successful result uploads occurred, namely for helping to determine if a given test is compatible with various alternative CPU architectures.

CPU Architecture
Kernel Identifier
Verified On
Intel / AMD x86 64-bit
(Many Processors)
Loongson LoongArch 64-bit
ARMv8 64-bit
ARMv8 Cortex-A72 4-Core, ARMv8 Neoverse-N1, ARMv8 Neoverse-V1, Apple M2

Recent Test Results Results Compare

1 System - 494 Benchmark Results

1 System - 486 Benchmark Results

Intel Core i3-12100 - MSI MAG B660M MORTAR DDR4 - Intel Alder Lake-S PCH

Arch Linux - 6.1.66-1-lts - GCC 13.2.1 20230801 + Clang 16.0.6

1 System - 486 Benchmark Results

1 System - 566 Benchmark Results

ARMv8 Cortex-A72 - BCM2835 Raspberry Pi 4 Model B Rev 1.5 - Broadcom BCM2711

Arch Linux ARM - 6.1.58-2-rpi-ARCH - GCC 12.1.0 + Clang 16.0.6

1 System - 7 Benchmark Results

Loongson-3A6000 - Loongson Loongson-LS3A6000-7A2000-1w-EVB-V1.21 - Loongson LLC Hyper Transport Bridge

Loongnix 20 - 4.19.0-19-loongson-3 - X Server 1.20.4

1 System - 2 Benchmark Results

AMD EPYC 7R13 48-Core - Supermicro H12SSL-I v1.02 - AMD Starship

EndeavourOS rolling - 6.6.1-zen1-1-zen - Xfce 4.18

2 Systems - 428 Benchmark Results

1 System - 621 Benchmark Results

AMD Ryzen 7 PRO 4750G - LENOVO 318E - AMD Renoir

Arch Linux - 6.1.59-1-lts - GCC 13.2.1 20230801 + Clang 16.0.6

1 System - 591 Benchmark Results

Intel Core i7-4790 - ASUS H97M-PLUS - Intel 4th Gen Core DRAM

Arch Linux - 6.1.57-1-lts - GCC 13.2.1 20230801 + Clang 16.0.6

1 System - 598 Benchmark Results

Intel Core i7-4770 - Mouse H87M-S01 v1.0 - Intel 4th Gen Core DRAM

Arch Linux - 6.1.55-1-lts - GCC 13.2.1 20230801 + Clang 16.0.6

Find More Test Results