I am naive to Python. But, what I came to know is that both are being used for serialization and deserialization. So, I just want to know what all basic differences in between them?

3 Answers 3


YAML is a language-neutral format that can represent primitive types (int, string, etc.) well, and is highly portable between languages. Kind of analogous to JSON, XML or a plain-text file; just with some useful formatting conventions mixed in -- in fact, YAML is a superset of JSON.

Pickle format is specific to Python and can represent a wide variety of data structures and objects, e.g. Python lists, sets and dictionaries; instances of Python classes; and combinations of these like lists of objects; objects containing dicts containing lists; etc.

So basically:

  • YAML represents simple data types & structures in a language-portable manner
  • pickle can represent complex structures, but in a non-language-portable manner

There's more to it than that, but you asked for the "basic" difference.

  • Thank you and please feel free to refer me more information about pickle & yaml. Like, on what parameters we should pick one of them for data serialization and all(apart from this language portability)?
    – nirprat
    Commented Sep 19, 2013 at 18:15
  • @nirprat is serialization/deserialization speed critical? What about readablity, do you need to store those serialized files in a human-readable form?
    – alecxe
    Commented Sep 19, 2013 at 18:18
  • The structure of YAML follows the Python concept of indenting; each level is represented by an indent, and there is no closing marker. Compare to XML where starting a block with <something>, you should end the same block with </something>. YAML is somewhat easier to copy, cut and paste than XML or JSON for this reason. The simplest rule of thumb is, if you are using just primitive data types, choose YAML (or JSON) because they are human-readable, editable and portable; but if you are using non-primitive data types (e.g. Python objects), then you must use Pickle. Commented Sep 19, 2013 at 18:21
  • Through API call I am collecting some stats which will be heavily used. So, in my case I am a bit speed concerned and so that I am trying to dump this data into file and cache it instead of dumping it into DB.
    – nirprat
    Commented Sep 19, 2013 at 18:23
  • @nirprat if speed matters, consider using cPickle instead of pickle, it's much faster.
    – alecxe
    Commented Sep 19, 2013 at 18:24

pickle is a special python serialization format when a python object is converted into a byte stream and back:

“Pickling” is the process whereby a Python object hierarchy is converted into a byte stream, and “unpickling” is the inverse operation, whereby a byte stream is converted back into an object hierarchy.

The main point is that it is python specific.

On the other hand, YAML is language-agnostic and human-readable serialization format.

FYI, if you are choosing between these formats, think about:

  • serialization/derialization speed (see cPickle module)
  • do you need to store serialized files in a human-readable form?
  • what are you going to serialize? If it's a python-specific complex data structure, for example, then you should go with pickle.

See also:

  • So, I have to cache some stats which will be used by other programs for stats manipulation and not concerned about human readability.
    – nirprat
    Commented Sep 19, 2013 at 18:29
  • @nirprat if these serialized stats will be used by non-python programs then pickle is not a way to go: choose between language agnostic formats: YAML, JSON, XML, CSV etc. Take a look at ujson and simplejson modules - they are quite fast comparing to json module.
    – alecxe
    Commented Sep 19, 2013 at 18:32

If it is not important for you to read files by a person, but you just need to save the file, and then read it, then use the pickle. It is much faster and the binaries weigh less.

YAML files are more readable as mentioned above, but also slower and larger in size.

I have tested for my application. I measured the time to upload and download an object to a file, as well as its size.

Serialization/deserialization method Average time, s Size of file, kB
PyYAML 1.73 1149.358
pickle 0.004 690.658

As you can see, yaml is 1,67 times heavier. And 432,5 times slower.

P. S. This is for my data. In your case, it may be different. But that's enough for comparison.

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