In my app I often call an external api that returns an json string.

$url = 'api.example.com/xyz';
$blah = json_decode( file_get_contents( $url ) );

But in some cases I get

PHP Fatal error: Allowed memory size of xxx bytes exhausted (tried to allocate 32 bytes) in ...

I cannot control the external API, and of course I could increase the memory for php, but that has some drawbacks.

1- Whatever size I set, could still be too little. 2- If I set the memory size to 'infinite' then I could run the risk of killing my server.

Ideally I would like to 'check' before I call json_decode( ... ) that the string result into a memory exhaustion.

Is that possible?

  • 2
    I get the problem but IMHO this should not happen having normal to medium size responses. How large is the response in your case? (in bytes)
    – hek2mgl
    Jun 27, 2015 at 6:53
  • I agree that it should not happen, but it does happen from time to time, the response can sometime be over 32Mb, (my server limit). As I said, the limit could/should be increased, but I would hate to increase what has so far worked very well, just for something that could go over the limit anyway. Jun 27, 2015 at 6:59
  • Note that there are two separate operations above that could run you out of memory: file_get_contents, and separately, json_decode. Also, 32MB is not much memory in today's world, that seems like quite a low limit indeed. Jun 27, 2015 at 7:01
  • Well in my code, the memory exhaustion is actually at the json_decode( ... ) level, the contents I get are with curl_exec( ... ). As I said, agree with you that 32Mb is a bit low, but increasing the size could only mask the problem until the next limit is reached. I would prefer a safe way to decode, (and then I would have a safe way to get the content as well). Jun 27, 2015 at 7:10
  • The point is that 32MB is really small. Use 512MB and move on to doing something more fun. :-) Jun 27, 2015 at 7:24

4 Answers 4


You must be getting some massive JSON responses if they manage to exhaust your server's memory. Here are some metrics with a 1 MB file containing a multidimensional associated array (containing data prepared for entry into three MySQL tables with diverse data-types).

When I include and the file is loaded into memory as an array, my memory usage goes to 9 MB. If I get the raw data with file_get_contents(), it takes 1 MB memory as expected. Then, a PHP array has an approximate ratio of 1:9 to the strlen() of the data (originally output with var_export()).

When I run json_encode(), peak memory usage doesn't increase. (PHP allocates memory in blocks so there's often a bit of overhead, in this case enough to include the string data of the JSON; but it could bump you up one block more.) The resulting JSON data as a string takes 670 KB.

When I load the JSON data with file_get_contents into a string, it takes an expected 0.75 MB of memory. When I run json_decode() on it, it takes 7 MB of memory. I would then factor a minimum ratio of 1:10 for JSON-data-bytesize decoded to native PHP array-or-object for RAM requirement.

To run a test on your JSON data before decoding it, you could then do something like this:

if (strlen($my_json) * 10 > ($my_mb_memory * 1024 * 1024)) {
    die ('Decoding this would exhaust the server memory. Sorry!');

...where $my_json is the raw JSON response, and $my_mb_memory is your allocated RAM that's converted into bytes for comparison with the incoming data. (You can of course also use intval(ini_get('memory_limit')) to get your memory limit as an integer.)

As pointed out below, the RAM usage will also depend on your data structure. For contrast, a few more quick test cases because I'm curious myself:

    1. If I create a uni-dimensional array with integers 1-60000, the saved PHP array size is 1 MB, but peak RAM usage is between 10.5 and 12.5 MB (curious oscillation), or a ratio of 1:12-ish.
    1. If I create a 1 MB file's worth data as 12000 random strings as a basic associative array, memory usage is only 5 MB when loaded; ratio of 1:5.
    1. If I create a 1 MB file's worth as a similar associative array, where half the entries are arrays as strings with a numeric index, memory usage is 7 MB, ratio 1:7.

So your actual RAM mileage may vary a good deal. Also be aware that if you pass that bulk of data around in circles and do a bit of this and that, your memory usage may get much (or exponentially, depending on your code economy) higher than what json_decode() alone will cause.

To debug memory usage, you can use memory_get_usage() and/or memory_get_peak_usage() at major intervals in your code to log or output the memory used in different parts of your code.

  • I get your reasoning behind that, but the values mentioned in the answer are only correct for your test data. The real memory size depends on the nature of the data. If the OP trusts that API and really wants to load such large responses I would advice him to simply increase memory_limit until it works - and has enough room for more.
    – hek2mgl
    Jun 27, 2015 at 7:22
  • @hek2mgl yes it could easily also take twice as much. Presuming the OP's API has a fairly uniform data structure, he could test for himself with the data he gets to see what sort of a conversion ratio there is. But yea, agreed, if he's using the API, he should allocate enough RAM to deal with the API. Somehow it doesn't seem right that an API should return such massive JSON chunks as to cause RAM issues, but then again, maybe he's getting ebooks or databases delivered as JSON, or something.
    – Markus AO
    Jun 27, 2015 at 7:30
  • Thanks, I will try your code, sadly it is not a 100% fool proof method as pointed out. Jun 27, 2015 at 8:07
  • 1
    @hek2mgl I crunched through a couple of quick test cases to see what sort of a range of variation we get. Of the above, by and far the largest RAM usage per array filesize was with a straight up list of integers, followed by the mixed-types data prepared for MySQL, followed by a 50/50 one-or-two-dimensional array, with a standard associative array taking the least of all. Would be curious to see a more elaborate benchmark.
    – Markus AO
    Jun 27, 2015 at 8:08
  • You are free to be elaborated as you wish! ;) It's interesting, indeed.
    – hek2mgl
    Jun 27, 2015 at 8:10

Rather than simply quit if the JSON file is too large, you can process arbitrary size JSON files by using an event-based JSON parser like https://github.com/salsify/jsonstreamingparser. Only a small chunk of the object/array will be loaded into memory at a time.

If you have any influence over the JSON file, request or change it to be reformatted in JSON Lines format so it can be processed line-by-line with any ordinary JSON parser.


My first answer above is purely about avoiding the memory limit. Now how can you deal with the data if you hate to discard some, but if it keeps being occasionally bulky beyond your memory limit?

Presuming that you don't need to have the response parsed in one shot and absolute real time. Then you could simply split the response into suitably sized chunks, for example with explode() or preg_split(), and save them into a temporary directory, and process later in a batch operation.

I presume the large API responses return multiple data-sets at once; if not, you could also splice a single multi-dimensional entry into more manageable chunks that are later rejoined, although that would require much more surgical precision into crafting your JSON-string splitter function.

If the multiple data-sets need to be associated in later processing (such as database-entry), you would also want to have an aggregator file containing the metadata for the batch op. (Or otherwise stick it all into a database.) You would of course have to ensure that the chunked data is well-formed. It's not ideal, but not having gigs of memory isn't ideal either. Batching is one way of dealing with it.


If the only thing you need is to iterate over items in a json of unpredictable size, try halaxa/json-machine. It will never run out of memory when parsing json of any size, and uses just foreach to do that, no rocket science. No need to check size "safety" beforehand nor increasing php memory limit. It works like this:

foreach(JsonMachine::fromFile('users.json') as $user) {
    echo $user['name'];
  • 1
    It works for very large json, but it is real slow. To slow for my taste.
    – Daantje
    Jun 22, 2021 at 17:19
  • 3
    Sure, it would be breaking the laws of thermodynamics if it wasn't slower than json_decode. Jun 24, 2021 at 10:53

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