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I was looking at the source of the json module to try to answer another question when I found something curious. Removing the docstring and a whole bunch of keyword arguments, the source of json.load is as follows:

def load(fp):
    return loads(fp.read())

This was not at all as I expected. If json.load doesn't avoid the overhead of reading the whole file at once, is its only advantage over json.loads(f.read()) the savings of a few characters of source code? Why does it even exist? Why does it get the short name, instead of loads getting the load name and load getting a name like loadf? I can think of reasons (copying the pickle interface, for example), but can anyone provide an authoritative answer rather than speculation?

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1  
I think your pickle idea is more than speculation. The json module documentation says, "json exposes an API familiar to users of the standard library marshal and pickle modules", which strongly suggests this is intentional. Of course it's possible there's another reason as well. – Steve Jessop Dec 31 '13 at 10:41
    
Why do you think it's inefficient? The whole text must be read eventually, so doing a single read they are minimizing I/O time. Also, if the text of the file cannot stay into RAM, then almost surely the result wouldn't stay into RAM. Having all the text available avoids to deal with the issue during parsing, which might speed up the parsing significantly. If you want to send gigabytes of data around you shouldn't use json anyway, so I don't see how this choice is wrong. – Bakuriu Dec 31 '13 at 10:55
    
@Bakuriu However if the string takes ~50% of memory and parsed object takes say ~75% of memory then load (implemented as above) will fail. On the other hand parsing a file chunk by chunk would work. So it is inefficient in terms of memory. It is a bit abstract though. Who's working with such big JSONs in the first place? – freakish Dec 31 '13 at 10:57
    
@freakish That's my point. If the string takes ~50% of the memory you shouldn't use json at all, but a more efficient encoding. In fact you shouldn't try to decode object that takes that big amount of RAM too, since a ~75% RAM-size object would make the computer swap a lot anyway. – Bakuriu Dec 31 '13 at 11:01
    
@Bakuriu: I'm aware of that. It doesn't answer the question of why json.load exists or whether it "should" be used, though. I came up with a bunch of reasons why load might be implemented this way, but they're all speculative, and none of them answer the question of whether and how strongly I should prefer it to loads(f.read()). – user2357112 Dec 31 '13 at 11:04

Though it is natural to expect json.load() does something better, as mentioned in the comments, it doesn't guarantee to do so. This is purely speculative, but if I were a Python maintainer, I would design the modules for the simplicity and least maintenance overhead.

Python standard library json module is not optimal, in speed-wise or memory-usage wise. There are many alternative JSON reading implementations for different sweet spots and some of them have Python bindings e.g. Jansson:

http://stackoverflow.com/a/3512887/315168

Alternative JSON implementation are born from the necessity to handle streaming and/or huge amount of data in efficient manner.

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It is probably safe to say that reading JSON from files, although important, is not the main use case for JSON serialization. Thus, implementing an efficient JSON load from file is not that interesting, except in special cases (there are more efficient ways of serializing huge data structures to disk).

However, generalizing the concept may introduce some useful aspects (JSON deserialization from network streams, for example, or progressive JSON deserialization from pipes).

What we are looking for then is a streaming parser (for example like SAX for XML). YAJL is a common such parser, and there are some Python bindings for it

Also see the top answer to this question: Is there a streaming API for JSON?

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"implementing an efficient JSON load from file is not that interesting" -- it would be fun, though, if read() from a binary mode file could return a byte-sequence-like object that's just a copy-on-write wrapper for a read-only memory map of (part of) the file :-) – Steve Jessop Jan 1 '14 at 13:50
    
That would indeed be fun, though I suspect it would fail on string encoding. Data blobs are base64, regular strings are UTF-8, neither are very useful as is. – Krumelur Jan 3 '14 at 0:09

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