# Benchmark tools These scripts are tools for collecting performance data for Docker-based tests. ## Setup The scripts assume the following: * You have a local machine with bazel installed. * You have some machine(s) with docker installed. These machines will be refered to as the "Environment". * Environment machines have the runtime(s) under test installed, such that you can run docker with a command like: `docker run --runtime=$RUNTIME your/image`. * You are able to login to machines in the environment with the local machine via ssh and the user for ssh can run docker commands without using `sudo`. * The docker daemon on each of your environment machines is listening on `unix:///var/run/docker.sock` (docker's default). For configuring the environment manually, consult the [dockerd documentation][dockerd]. ## Environment All benchmarks require a user defined yaml file describe the environment. These files are of the form: ```yaml machine1: local machine2: hostname: 100.100.100.100 username: username key_path: ~/private_keyfile key_password: passphrase machine3: hostname: 100.100.100.101 username: username key_path: ~/private_keyfile key_password: passphrase ``` The yaml file defines an environment with three machines named `machine1`, `machine2` and `machine3`. `machine1` is the local machine, `machine2` and `machine3` are remote machines. Both `machine2` and `machine3` should be reachable by `ssh`. For example, the command `ssh -i ~/private_keyfile username@100.100.100.100` (using the passphrase `passphrase`) should connect to `machine2`. The above is an example only. Machines should be uniform, since they are treated as such by the tests. Machines must also be accessible to each other via their default routes. Furthermore, some benchmarks will meaningless if running on the local machine, such as density. For remote machines, `hostname`, `key_path`, and `username` are required and others are optional. In addition key files must be generated [using the instrcutions below](#generating-ssh-keys). The above yaml file can be checked for correctness with the `validate` command in the top level perf.py script: `bazel run :benchmarks -- validate $PWD/examples/localhost.yaml` ## Running benchmarks To list available benchmarks, use the `list` commmand: ```bash bazel run :benchmarks -- list ... Benchmark: sysbench.cpu Metrics: events_per_second Run sysbench CPU test. Additional arguments can be provided for sysbench. :param max_prime: The maximum prime number to search. ``` To run benchmarks, use the `run` command. For example, to run the sysbench benchmark above: ```bash bazel run :benchmarks -- run --env $PWD/examples/localhost.yaml sysbench.cpu ``` You can run parameterized benchmarks, for example to run with different runtimes: ```bash bazel run :benchmarks -- run --env $PWD/examples/localhost.yaml --runtime=runc --runtime=runsc sysbench.cpu ``` Or with different parameters: ```bash bazel run :benchmarks -- run --env $PWD/examples/localhost.yaml --max_prime=10 --max_prime=100 sysbench.cpu ``` ## Writing benchmarks To write new benchmarks, you should familiarize yourself with the structure of the repository. There are three key components. ## Harness The harness makes use of the [docker py SDK][docker-py]. It is advisable that you familiarize yourself with that API when making changes, specifically: * clients * containers * images In general, benchmarks need only interact with the `Machine` objects provided to the benchmark function, which are the machines defined in the environment. These objects allow the benchmark to define the relationships between different containers, and parse the output. ## Workloads The harness requires workloads to run. These are all available in the `workloads` directory. In general, a workload consists of a Dockerfile to build it (while these are not hermetic, in general they should be as fixed and isolated as possible), some parses for output if required, parser tests and sample data. Provided the test is named after the workload package and contains a function named `sample`, this variable will be used to automatically mock workload output when the `--mock` flag is provided to the main tool. ## Writing benchmarks Benchmarks define the tests themselves. All benchmarks have the following function signature: ```python def my_func(output) -> float: return float(output) @benchmark(metrics = my_func, machines = 1) def my_benchmark(machine: machine.Machine, arg: str): return "3.4432" ``` Each benchmark takes a variable amount of position arguments as `harness.Machine` objects and some set of keyword arguments. It is recommended that you accept arbitrary keyword arguments and pass them through when constructing the container under test. To write a new benchmark, open a module in the `suites` directory and use the above signature. You should add a descriptive doc string to describe what your benchmark is and any test centric arguments. ## Generating SSH Keys The scripts only support RSA Keys, and ssh library used in paramiko. Paramiko only supports RSA keys that look like the following (PEM format): ```bash $ cat /path/to/ssh/key -----BEGIN RSA PRIVATE KEY----- ...private key text... -----END RSA PRIVATE KEY----- ``` To generate ssh keys in PEM format, use the [`-t rsa -m PEM -b 4096`][RSA-keys]. option. [dockerd]: https://docs.docker.com/engine/reference/commandline/dockerd/ [docker-py]: https://docker-py.readthedocs.io/en/stable/ [paramiko]: http://docs.paramiko.org/en/2.4/api/client.html [RSA-keys]: https://serverfault.com/questions/939909/ssh-keygen-does-not-create-rsa-private-key