'Cloud Functions for Firebase killed due to memory limit exceeded

I keep getting a sporadic error from Cloud Functions for Firebase when converting a relatively small image (2mb). When successful, the function only takes about 2000ms or less to finish, and according to Image Magick documentation should I should not see any problems.

I tried increasing the buffer size for the command, which isn't allows from within Firebase, and I tried to find alternatives to .spawn() as that could be overloaded with garbage and slow things down. Nothing works.



Solution 1:[1]

You can set this from within your Cloud Function file on Firebase.

const runtimeOpts = {
  timeoutSeconds: 300,
  memory: '1GB'
}

exports.myStorageFunction = functions
  .runWith(runtimeOpts)
  .storage
  .object()
  .onFinalize((object) = > {
    // do some complicated things that take a lot of memory and time
  });

Taken from the docs here: https://firebase.google.com/docs/functions/manage-functions#set_timeout_and_memory_allocation

Don't forget to then run firebase deploy from your terminal.

Solution 2:[2]

I was lost in the UI, couldn't find any option to change the memory, but finally found it:

  1. Go to the Google Cloud Platform Console (not the Firebase console)
  2. Select Cloud Functions in the menu
  3. Now you see your firebase function in here if it's correct. Otherwise check if you selected the right project.
  4. Ignore all checkboxes, buttons and menu items, just click on the name of the function.
  5. Click on edit (top menu) and only change the allocated memory and click save.

Solution 3:[3]

The latest firebase deploy command does overwrite the memory allocation to default 256MB and timeout up to 60s.

Alternatively , to specify the desired memory allocation and maximum timeout , I use gcloud command such as:

gcloud beta functions deploy YourFunctionName --memory=2048MB --timeout=540s

Other options, please refer to:

https://cloud.google.com/sdk/gcloud/reference/beta/functions/deploy

Solution 4:[4]

You can adjust your memory here:

enter image description here

Solution 5:[5]

Figuring out from UI is a bit tricky so here are some guided screenshots:
Go to url https://console.cloud.google.com/functions/list

enter image description here

enter image description here

enter image description here


You can also increase default timeout of 60 sec

enter image description here

enter image description here

Solution 6:[6]

Update: It looks that they now preserve settings on re-deploy so you can safely change memory allocation in cloud console!

Solution 7:[7]

you can add the configurations in your firebase functions definitions something like:

functions.runWith({memory: '2GB', timeoutSeconds: '360'})

Solution 8:[8]

It seems the default ImageMagick resource config in Firebase Cloud Functions doesn't match the actual memory allocated to the function.

Running identify -list resource in the context of a Firebase Cloud Function yields:

File       Area         Memory        Map       Disk   Thread  Throttle       Time
--------------------------------------------------------------------------------
 18750    4.295GB       2GiB       4GiB  unlimited        8         0   unlimited  

The default memory allocated to a FCF is 256MB - the default ImageMagick instance thinks it has 2GB and therefore doesn't allocate buffer from disk and can easily try to over allocate memory causing the function to fail on Error: memory limit exceeded. Function killed.

One way is to increase required memory as suggested above - although there's still risk IM will try to over allocate depending on your use case and outliers.

Safer yet would be to set the correct memory limit to IM as part of the image manipulation process using -limit memory [your limit]. You can figure out your approx memory usage by running your IM logic with `-debug Cache' - it will show you all the buffers allocated, their sizes and if they were memory or disk.

If IM hits the memory limit it will start allocating buffers on disk (memory mapped and then regular disk buffers.You'll have to consider your specific balance between I/O performance vs memory cost. Price of every additional byte of memory you allocate to your FCF is multiplied by 100ms of usage - so that can grow quickly.

Solution 9:[9]

Another option here would be to avoid using .spawn() altogether.

There is a great image processing package for node called Sharp that uses the low-memory footprint library libvips. You can check out the Cloud Function sample on Github.

Alternately, there is a Node wrapper for ImageMagick (and GraphicsMagick) called gm. It even supports the -limit option to report your resource limitations to IM.

Sources

This article follows the attribution requirements of Stack Overflow and is licensed under CC BY-SA 3.0.

Source: Stack Overflow

Solution Source
Solution 1
Solution 2 Bhargav Rao
Solution 3 Fan Kam Thong
Solution 4 ravo10
Solution 5 GorvGoyl
Solution 6 ovaris
Solution 7 Siddhant
Solution 8 Shai Ben-Tovim
Solution 9 Kiana