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nanoBench Cache Analyzer

This folder contains several tools for analyzing caches using hardware performance counters.

Results for recent Intel CPUs that were obtained using these tools are available on uops.info/cache.html.

Make sure to read the Prerequisites section before trying any of the tools.

Tools

cacheSeq.py

This tool can be used to measure how many cache hits and misses executing an access sequence generates. As an example, consider the following call:

sudo ./cacheSeq.py -level 2 -sets 10-14,20,35 -seq "A B C D A? C! B?" 

The tool will make memory accesses to four different blocks in all of the specified sets of the second-level cache. Elements of the sequence that end with a ? will be included in the performance counter measurements; the other elements will be accessed, but the number of hits/misses they generate will not be recorded. Elements that end with a ! will be flushed (using the CLFLUSH instruction) instead of being accessed. The order of the accesses is as follows: First, block A will be accessed in all of the specified sets, then block B will be accessed in all of the specified sets, and so on.

Between every two accesses to the same set in a lower-level cache, the tool automatically adds enough accesses to the higher-level caches (that map to different sets and/or slices in the lower-level cache) to make sure that the corresponding lines are evicted from the higher-level cache and the access actually reaches the lower-level cache. These additional accesses are excluded from the performance counter measurements.

By default, the wbinvd instruction is called before executing the access sequence. This can be disabled with the -noWbinvd option. It is also possible to execute the wbinvd instruction between specific elements of an access sequence by inserting <wbinvd> at the corresponding location in the access sequence.

The tool has the following command-line options:

Option Description
-seq <sequence> Main access sequence.
-loop <n> Number of times the main access sequence is executed. [Default: n=1]
-seq_init <sequence> Access sequence that is executed once in the beginning before the main sequence.
-level <n> Cache level. [Default: n=1]
-sets <sets> Cache sets in which the access sequence will be executed. By default all cache sets are used, except number of sets of the higher level cache, which are needed for clearing the higher level cache.
-cBox <n> CBox in which the access sequence will be executed. [Default: n=1]
-noClearHL Do not clear higher level caches between accesses to the same set in a lower level cache.
-noWbinvd Do not call WBINVD before each run.
-sim <policy> Simulate the given policy instead of running the experiment on the hardware. For a list of available policies, see cacheSim.py.
-simAssoc <n> Associativity of the simulated cache. [Default: n=8]

hitMiss.py

Similar to cacheSeq.py, but only outputs whether the last access of a sequence is a hit or a miss.

cacheGraph.py

Generates an HTML file with a graph that shows the ages of all cache blocks after executing an access sequence. The age of a block B is the number of fresh blocks that need to be accessed before B is evicted.

The tool supports all of the command-line options of cacheSeq.py, except the -loop option. In addition to that, the following options are supported:

Option Description
-blocks <blocks> Only determine the ages of the blocks in the given list. [Default: consider all blocks in the access sequence]
-maxAge <n> The maximum age to consider. [Default: 2*associativity]
-output <file> File name of the HTML file. [Default: graph.html]

replPolicy.py

Determines the replacement policy by generating random access sequences and comparing the number of hits on the actual hardware to the number of hits in simulations of different policies. By default, a number of commonly used policies are simulated. With the -allQLRUVariants option, a more comprehensive list of more than 300 QLRU variants is tested.

The tool outputs all results in the form of an HTML table.

If the -findCtrEx option is used, it will try to find a small counterexample for each policy.

It supports the following additional command-line parameters:

Option Description
-level <n> Cache level. [Default: n=1]
-sets <sets> Cache sets for which the replacement policy will be tested.
-cBox <n> CBox for which the replacement policy will be tested. [Default: n=0]
-policies <policies> Only consider the policies in the given comma-separated list
-useInitSeq <seq> Adds a fixed prefix to each randomly generated sequence. This can be used to initialize the cache to a specific state.
-nRandSeq <n> Number of random sequences. [Default: n=100]
-lRandSeq <n> Length of random sequences. [Default: n=50]
-output <file> File name of the HTML file. [Default: replPolicy.html]

permPolicy.py

If the replacement policy is a permutation policy (see Measurement-based Modeling of the Cache Replacement Policy), this tool determines the permutation vectors. In addition to that, it outputs a set of age graphs for the access sequences generated by the permutation policy inference algorithm. These graphs can be a useful starting point for analyzing policies that are not permutation policies.

strideGraph.py

Generates graphs that show the number of core cycles and the number of hits/misses (per access) when accessing memory areas of different sizes repeatedly using a given stride (which can be specified with the -stride option). An example can be seen here.

cacheInfo.py

Combines information obtained by executing the CPUID instruction with information on the number of slices of the L3 cache that is obtained through measurements.

setDueling.py

For caches that use set dueling to choose between two different policies, this tool can generate a graph that shows the sets that use a fixed policy.

cacheLib.py

Library containing helper functions used by the other tools.

cacheSim.py

This file contains the implementations of the simulated policies used by some of the other tools.

Prerequisites

To use the tools in this folder, the nanoBench kernel module needs to be loaded. Instructions on how to do this can be found in the main README on https://github.com/andreas-abel/nanoBench.

nanoBench needs to be configured to use a physically-contiguous memory area that is large enough for the access sequences that you want to test. This can be achieved with the set-R14-size.sh script in the main NanoBench folder. You can, e.g., call it as follows

sudo ./set-R14-size.sh 1G

to reserve a memory area of 1 GB. If your system has enough memory, but the above call is unable to reserve a memory area of the requested size, a reboot often helps.

For analyzing shared caches, it can make sense to disable other cores using the same cache. The single-core-mode.sh script in the main nanoBench folder can be used to disable all but one core.

Furthermore, it can also be helpful to disable cache prefetching. On recent Intel CPUs, this can be done by executing

sudo modprobe msr; sudo wrmsr -a 0x1a4 15

On some not so recent Intel CPUs (e.g., Core 2 Duo), you can use

sudo modprobe msr; sudo wrmsr -a 0x1a0 0xE0668D2689‬

instead.

I'm not aware of a way to disable cache prefetching on recent AMD CPUs. If you know how to do this, please consider posting an answer to this question.

The tools that generate graphs need Plotly to be installed. This can be achieved via

sudo apt install python-pip; pip install plotly