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I have code that relies heavily on yaml for cross-language serialization and while working on speeding some stuff up I noticed that yaml was insanely slow compared to other serialization methods (e.g., pickle, json).

So what really blows my mind is that json is so much faster that yaml when the output is nearly identical.

>>> import yaml, cjson; d={'foo': {'bar': 1}}
>>> yaml.dump(d, Dumper=yaml.SafeDumper)
'foo: {bar: 1}\n'
>>> cjson.encode(d)
'{"foo": {"bar": 1}}'
>>> import yaml, cjson;
>>> timeit("yaml.dump(d, Dumper=yaml.SafeDumper)", setup="import yaml; d={'foo': {'bar': 1}}", number=10000)
>>> timeit("yaml.dump(d, Dumper=yaml.CSafeDumper)", setup="import yaml; d={'foo': {'bar': 1}}", number=10000)
>>> timeit("cjson.encode(d)", setup="import cjson; d={'foo': {'bar': 1}}", number=10000)

PyYaml's CSafeDumper and cjson are both written in C so it's not like this is a C vs Python speed issue. I've even added some random data to it to see if cjson is doing any caching, but it's still way faster than PyYaml. I realize that yaml is a superset of json, but how could the yaml serializer be 2 orders of magnitude slower with such simple input?

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4 Answers 4

up vote 30 down vote accepted

In general, it's not the complexity of the output that determines the speed of parsing, but the complexity of the accepted input. The JSON grammar is very concise. The YAML parsers are comparatively complex, leading to increased overheads.

JSON’s foremost design goal is simplicity and universality. Thus, JSON is trivial to generate and parse, at the cost of reduced human readability. It also uses a lowest common denominator information model, ensuring any JSON data can be easily processed by every modern programming environment.

In contrast, YAML’s foremost design goals are human readability and support for serializing arbitrary native data structures. Thus, YAML allows for extremely readable files, but is more complex to generate and parse. In addition, YAML ventures beyond the lowest common denominator data types, requiring more complex processing when crossing between different programming environments.

I'm not a YAML parser implementor, so I can't speak specifically to the orders of magnitude without some profiling data and a big corpus of examples. In any case, be sure to test over a large body of inputs before feeling confident in benchmark numbers.

Update Whoops, misread the question. :-( Serialization can still be blazingly fast despite the large input grammar; however, browsing the source, it looks like PyYAML's Python-level serialization constructs a representation graph whereas simplejson encodes builtin Python datatypes directly into text chunks.

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(Just an example of how concise the JSON grammar is, you can't have an extraneous trailing comma at the end of an array. Overkill IMO.) – cdleary Mar 16 '10 at 4:11
He's asking about encoding, not parsing. – Glenn Maynard Mar 16 '10 at 6:59
YAML builds a graph because it is a general-purpose serialisation format that is able to represent multiple references to the same object. If you know no object is repeated and only basic types appear, you can use a json serialiser, it will still be valid YAML. – Tobu Jun 28 '11 at 18:28
@Tobu Useful comment - I took the liberty to quote it in this answer – Jivan Jan 2 at 18:42

A cursory look at python-yaml suggests its design is much more complex than cjson's:

>>> dir(cjson)
['DecodeError', 'EncodeError', 'Error', '__doc__', '__file__', '__name__', '__package__', 
'__version__', 'decode', 'encode']

>>> dir(yaml)
['AliasEvent', 'AliasToken', 'AnchorToken', 'BaseDumper', 'BaseLoader', 'BlockEndToken',
 'BlockEntryToken', 'BlockMappingStartToken', 'BlockSequenceStartToken', 'CBaseDumper',
'CBaseLoader', 'CDumper', 'CLoader', 'CSafeDumper', 'CSafeLoader', 'CollectionEndEvent', 
'CollectionNode', 'CollectionStartEvent', 'DirectiveToken', 'DocumentEndEvent', 'DocumentEndToken', 
'DocumentStartEvent', 'DocumentStartToken', 'Dumper', 'Event', 'FlowEntryToken', 
'FlowMappingEndToken', 'FlowMappingStartToken', 'FlowSequenceEndToken', 'FlowSequenceStartToken', 
'KeyToken', 'Loader', 'MappingEndEvent', 'MappingNode', 'MappingStartEvent', 'Mark', 
'MarkedYAMLError', 'Node', 'NodeEvent', 'SafeDumper', 'SafeLoader', 'ScalarEvent', 
'ScalarNode', 'ScalarToken', 'SequenceEndEvent', 'SequenceNode', 'SequenceStartEvent', 
'StreamEndEvent', 'StreamEndToken', 'StreamStartEvent', 'StreamStartToken', 'TagToken', 
'Token', 'ValueToken', 'YAMLError', 'YAMLObject', 'YAMLObjectMetaclass', '__builtins__', 
'__doc__', '__file__', '__name__', '__package__', '__path__', '__version__', '__with_libyaml__', 
'add_constructor', 'add_implicit_resolver', 'add_multi_constructor', 'add_multi_representer', 
'add_path_resolver', 'add_representer', 'compose', 'compose_all', 'composer', 'constructor', 
'cyaml', 'dump', 'dump_all', 'dumper', 'emit', 'emitter', 'error', 'events', 'load', 
'load_all', 'loader', 'nodes', 'parse', 'parser', 'reader', 'representer', 'resolver', 
'safe_dump', 'safe_dump_all', 'safe_load', 'safe_load_all', 'scan', 'scanner', 'serialize', 
'serialize_all', 'serializer', 'tokens']

More complex designs almost invariably mean slower designs, and this is far more complex than most people will ever need.

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Speaking about efficiency, I used YAML for a time and felt attracted by the simplicity that some name/value assignments take on in this language. However, in the process I tripped so and so often about one of YAML’s finesses, subtle variations in the grammar that allow you to write special cases in a more concise style and such. In the end, although YAML’s grammar is almost for certain formally consistent, it has left me with a certain feeling of ‘vagueness’. I then restricted myself to not touch existing, working YAML code and write everything new in a more roundabout, fail-safe syntax—which made me abandon all of YAML. The upshot is that YAML tries to look like a W3C standard, and produces a small library of hard to read literature concerning its concepts and rules.

This, I feel, is by far more intellectual overhead than needed. Look at SGML/XML: developed by IBM in the roaring 60s, standardized by the ISO, known (in a dumbed-down and modified form) as HTML to uncounted millions of people, documented and documented and documented again the world over. Comes up little JSON and slays that dragon. How could JSON become so widely used in so short a time, with just one meager website (and a javascript luminary to back it)? It is in its simplicity, the sheer absence of doubt in its grammar, the ease of learning and using it.

XML and YAML are hard for humans, and they are hard for computers. JSON is quite friendly and easy to both humans and computers.

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In applications I've worked on, the type inference between strings to numbers (float/int) is where the largest overhead is for parsing yaml is because strings can be written without quotes. Because all strings in json are in quotes there is no backtracking when parsing strings. A great example where this would slow down is the value 0000000000000000000s. You cannot tell this value is a string until you've read to the end of it.

The other answers are correct but this is a specific detail that I've discovered in practice.

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