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For an API that I'm writing, I'd like to write a 'check_params' method that ensures arguments passed in the body of an http-post request are able to be appropriately typecasted.

For example, suppose I am passing an argument 'latitude'. Then,

    'latitude'='thisisnotafloat'

should give an error, while

    'latitude'='43.21'

should not throw an error.

To handle multiple arguments, is there anything wrong with creating a dictionary with types as the values:

    required_types = {
            'arg1':str,
            'arg2':int,
            'arg3':str,
            'arg4':float
    }

and then performing duck-typing (for simplification of the question, assume I'm handling the case where a required arg does not get passed in at all and type checking only occurs after an existence check).

    for arg, type_ in required_types.iteritems():
        try:
            type_(self.get_argument(arg))    #using tornado here to get body arg
        except:
            handle_invalid_type_error()

Alternatively, I could store the types as strings and use the eval() function. E.g.,

     required_types = {
            'arg1':'str',
            'arg2':'int',
            'arg3':'str',
            'arg4':'float'
    }

    for arg, type_ in required_types.iteritems():
        try:
            eval(type_)(self.get_argument(arg))  #using tornado here to get body arg
        except:
            handle_invalid_type_error()

Is there a clear winner here? Or another superior approach?

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I find your first approach OK. You need anyway to cast the input values to their respective types to work with them (i.e. latitude as float, etc.). –  eumiro Oct 27 '11 at 7:38

4 Answers 4

The recommended ("Pythonic") way to do this is to just do the conversion when you need to, and raise an error if it fails. Unless it's massively inconvenient to deal with an error in a later stage of the program, I wouldn't bother with a check_params method at all.

Also, I see absolutely no advantage to storing the types as strings and evaling them. If you were getting the types dynamically, then sure, you could use eval, but otherwise it adds an extra processing step that, although it comes at a negligible cost, serves no purpose. and it's generally better to stay away from eval unless you really need it (just a good mindset to get into from a security standpoint).

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David's answer would be my general advice, too.

If you really need to check the arguments beforehand – sometimes there are reasons to do so – your first approach is basically fine. Two comments, though:

  1. You shouldn't use a bare except clause. It will also catch exceptions you most certainly don't want to catch here, like SystemExit. In the given example, the bare except clause would also catch a KeyError (or whatever) resulting from a failing argument look-up, which would probably lead to a rather unhelpful error message. If the types you are checking for are built-in Python types, catching ValueError should be enough. If ValueError isn't enough, except Exception is almost always better than a bare except clause, since it won't catch GeneratorExit, KeyboardInterrupt and SystemExit.

  2. In your example, you also check for str. This will always succeed because the values you are retrieving are strings, so it's a bit pointless to check if you can convert them to strings.

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Any chance you could use WTForms? If not, it might be worth having a look at how it implements validators for your API.

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I don't share the same point of view of the other comments (so far). I think that exposing an API that does a proper error checking and report a clear, descriptive error message (or even a list of errors), is a crucial point to get your API used by third parties.

Moreover, you get the validation out of the way once for all and can focus on the real work : the logic.

Now to answer your question:

Have you look at this gist : https://gist.github.com/anonymous/850704 ?

You can validate using a validator function, a type checking, an equality checking. It fits well in tornado if you ever use it to power your API.

If you are looking for something mode declarative, you can have a look at https://pypi.python.org/pypi/voluptuous#show-me-an-example

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