Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm not sure if my post question makes lots of sense; however, I'm building an input array for a class/function that takes in a lot of user inputed data and outputs a numpy array.

# I'm trying to build an input array that should include following information:
* zone_id - id from db - int  
* model size - int
  * type of analysis - one of the following:
    * type 1 - int or string
    * type 2 - int or string
    * type 3 - int or string
  * model purposes:
    * default: ONE, TWO, THREE #this is just a title of the purpose
    * Custom: default + others (anywhere from 0 to 15 purposes)
  * Modeling step 1: some socio economic factors #produces results 1
  * Modeling step 2: 
    * Default: equation coefficients for retail/non retail
    * Custom: equation coefficients for each extra activities as defined by
      the user
    * produces results 2

Example array:
  def_array = (zone_id, model_size, analysis_type,
               socio_coefficients[] )
# Numerical example:
  my_arr = [np.array([ 10001, 1, 2,
                     [ 'ONE', 'TWO', 'THREE', 'FOUR', 'FIVE' ],
                     [ {'retail':500, 'non_retail':300, 'school':300', 'other':900} ],
                     [ {'retail':500, 'non_retail':300, 'school':300', 'other':900} ],
                     [ {'ONE':{'retail':.5, 'non_retail':1.7, 'school':.4', 'other':4.7},
                       {'TWO':{'retail':.2, 'non_retail':2.5, 'school':.5', 'other':4.3},
                       {'THREE':{'retail':.3, 'non_retail':2.3, 'school':.6', 'other':2.2},
                       {'FOUR':{'retail':.4, 'non_retail':1.1, 'school':.7', 'other':1.0},
                       {'FIVE':{'retail':7, 'non_retail':2, 'school':3', 'other':1} ] ])

# this array will be inserted into 3 functions and together should return the following array:
arr_results = [np.array([ 10001, one_1, TWO_1, THREE_1, FOUR_1, FIVE_1, ONE_2, TWO_2, THREE_2, FOUR_2, FIVE_2],
                        [10002, .... ,] ])
  • What are/is my best option(s) in defining the input array(s)?
share|improve this question
Are you sure you can build such a complicated numpy array? Numpy arrays are excellent for large regular shapes of data of the same type. Maybe define a class with specific attributes (some of them may be numpy arrays). –  eumiro Sep 22 '10 at 12:59
@eumiro - that works too, feel free to post an answer explaining that please :) –  dassouki Sep 22 '10 at 13:00
katrielalex has a lightweighter solution for you –  eumiro Sep 22 '10 at 13:09

1 Answer 1

up vote 3 down vote accepted

Numpy arrays are the wrong datatype here: they are designed for numeric manipulations of large amounts of similar data (e.g. large matrices). It looks like you could just use a dict:

options = {
    "zone_id": 10001,
    "model_size": 1,
    "analysis_type": 2,
    "model_purposes": [ "ONE", ... ]

You could then pass this on to a function, either as the dictionary or by unpacking it into names arguments using **:

def do_stuff(zone_id=10001, model_size=1, ...):


If you want a more complicated options datatype (e.g. if some of the options need to be calculated on the fly or depend on others), you could use a specialised Options class (though be warned, this is almost certainly overkill);

class Options:
    def __init__(self):
        # set some default values
        self.zone_id = 10001

    def populate_values(self):
        # maybe handle some user input?
        self.name = input("name: ")

    # use a property to calculate model_size on the fly
    def model_size(self):
        return 2-1

and then

options = Options()
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.