I'm using Prometheus 2.9.2 for monitoring a large environment of nodes. As part of testing the maximum scale of Prometheus in our environment, I simulated a large amount of metrics on our test environment.

My management server has 16GB ram and 100GB disk space.

During the scale testing, I've noticed that the Prometheus process consumes more and more memory until the process crashes.

I've noticed that the WAL directory is getting filled fast with a lot of data files while the memory usage of Prometheus rises.

The management server scrapes its nodes every 15 seconds and the storage parameters are all set to default.

I would like to know why this happens, and how/if it is possible to prevent the process from crashing.

Thank you!

  • 2
    You can monitor your prometheus by scraping the '/metrics' endpoint. I would give you useful metrics. May 14, 2019 at 19:24

4 Answers 4


This article explains why Prometheus may use big amounts of memory during data ingestion. If you need reducing memory usage for Prometheus, then the following actions can help:

  • Increasing scrape_interval in Prometheus configs.
  • Reducing the number of scrape targets and/or scraped metrics per target.

P.S. Take a look also at the project I work on - VictoriaMetrics. It can use lower amounts of memory compared to Prometheus. See this benchmark for details.

  • 3
    Please make it clear which of these links point to your own blog and projects.
    – ChrisF
    Jun 3, 2021 at 7:56

The out of memory crash is usually a result of an excessively heavy query. This may be set in one of your rules. (this rule may even be running on a grafana page instead of prometheus itself)

If you have a very large number of metrics, it is possible the rule is querying all of them. A quick fix is by exactly specifying which metrics to query on with specific labels instead of regex one.

  • 8
    Also, Prometheus has a bunch of pprof request handlers, that expose profiling information for CPU usage, memory usage, total memory allocations since startup etc. You can get an overview at http://your.prometheus.host:9090/debug/pprof. So if you have go installed you can simply use go pprof http://your.prometheus.host:9090/debug/pprof/heap and then enter web and hit Enter into the command line prompt that appears. Else you can get pprof from github.com/google/pprof (or by installing Golang). May 15, 2019 at 9:09

Because the combination of labels lies on your business, the combination and the blocks may be unlimited, there's no way to solve the memory problem for the current design of prometheus!!!! But i suggest you compact small blocks into big ones, that will reduce the quantity of blocks.

Huge memory consumption for TWO reasons:

  1. prometheus tsdb has a memory block which is named: "head", because head stores all the series in latest hours, it will eat a lot of memory.
  2. each block on disk also eats memory, because each block on disk has a index reader in memory, dismayingly, all labels, postings and symbols of a block are cached in index reader struct, the more blocks on disk, the more memory will be cupied.

in index/index.go, you will see:

type Reader struct {
    b ByteSlice

    // Close that releases the underlying resources of the byte slice.
    c io.Closer

    // Cached hashmaps of section offsets.
    labels map[string]uint64
    // LabelName to LabelValue to offset map.
    postings map[string]map[string]uint64
    // Cache of read symbols. Strings that are returned when reading from the
    // block are always backed by true strings held in here rather than
    // strings that are backed by byte slices from the mmap'd index file. This
    // prevents memory faults when applications work with read symbols after
    // the block has been unmapped. The older format has sparse indexes so a map
    // must be used, but the new format is not so we can use a slice.
    symbolsV1        map[uint32]string
    symbolsV2        []string
    symbolsTableSize uint64

    dec *Decoder

    version int

We used the prometheus version 2.19 and we had a significantly better memory performance. This Blog highlights how this release tackles memory problems. i will strongly recommend using it to improve your instance resource consumption.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.