Files
neon/test_runner/performance
Alex Chi Z 3e63d0f9e0 test(pageserver): quantify compaction outcome (#7867)
A simple API to collect some statistics after compaction to easily
understand the result.

The tool reads the layer map, and analyze range by range instead of
doing single-key operations, which is more efficient than doing a
benchmark to collect the result. It currently computes two key metrics:

* Latest data access efficiency, which finds how many delta layers /
image layers the system needs to iterate before returning any key in a
key range.
* (Approximate) PiTR efficiency, as in
https://github.com/neondatabase/neon/issues/7770, which is simply the
number of delta files in the range. The reason behind that is, assume no
image layer is created, PiTR efficiency is simply the cost of collect
records from the delta layers, and the replay time. Number of delta
files (or in the future, estimated size of reads) is a simple yet
efficient way of estimating how much effort the page server needs to
reconstruct a page.

Signed-off-by: Alex Chi Z <chi@neon.tech>
2024-06-10 10:42:13 +02:00
..
2023-11-28 17:31:42 +00:00
2023-07-18 12:56:40 +03:00
2023-07-18 12:56:40 +03:00

Running locally

First make a release build. The -s flag silences a lot of output, and makes it easier to see if you have compile errors without scrolling up. BUILD_TYPE=release CARGO_BUILD_FLAGS="--features=testing" make -s -j8

You may also need to run ./scripts/pysync.

Then run the tests DEFAULT_PG_VERSION=15 NEON_BIN=./target/release poetry run pytest test_runner/performance

Some handy pytest flags for local development:

  • -x tells pytest to stop on first error
  • -s shows test output
  • -k selects a test to run
  • --timeout=0 disables our default timeout of 300s (see setup.cfg)
  • --preserve-database-files to skip cleanup

What performance tests do we have and how we run them

Performance tests are built using the same infrastructure as our usual python integration tests. There are some extra fixtures that help to collect performance metrics, and to run tests against both vanilla PostgreSQL and Neon for comparison.

Tests that are run against local installation

Most of the performance tests run against a local installation. This is not very representative of a production environment. Firstly, Postgres, safekeeper(s) and the pageserver have to share CPU and I/O resources, which can add noise to the results. Secondly, network overhead is eliminated.

In the CI, the performance tests are run in the same environment as the other integration tests. We don't have control over the host that the CI runs on, so the environment may vary widely from one run to another, which makes the results across different runs noisy to compare.

Remote tests

There are a few tests that marked with pytest.mark.remote_cluster. These tests do not set up a local environment, and instead require a libpq connection string to connect to. So they can be run on any Postgres compatible database. Currently, the CI runs these tests on our staging and captest environments daily. Those are not an isolated environments, so there can be noise in the results due to activity of other clusters.

Noise

All tests run only once. Usually to obtain more consistent performance numbers, a test should be repeated multiple times and the results be aggregated, for example by taking min, max, avg, or median.

Results collection

Local test results for main branch, and results of daily performance tests, are stored in a neon project deployed in production environment. There is a Grafana dashboard that visualizes the results. Here is the dashboard. The main problem with it is the unavailability to point at particular commit, though the data for that is available in the database. Needs some tweaking from someone who knows Grafana tricks.

There is also an inconsistency in test naming. Test name should be the same across platforms, and results can be differentiated by the platform field. But currently, platform is sometimes included in test name because of the way how parametrization works in pytest. I.e. there is a platform switch in the dashboard with neon-local-ci and neon-staging variants. I.e. some tests under neon-local-ci value for a platform switch are displayed as Test test_runner/performance/test_bulk_insert.py::test_bulk_insert[vanilla] and Test test_runner/performance/test_bulk_insert.py::test_bulk_insert[neon] which is highly confusing.