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I have an array like this:

elements=[['1', '1', '2'], ['2', '2', '3'], ['3', '3', '4'], ['4', '4', '5'], ['5', '5', '6'], ['6', '6', '7'], ['7', '7', '8'], ['8', '8', '9'], ['9', '9', '10'], ['10', '10', '11'], ['11', '11', '12'], ['12', '12', '13'], ['13', '13', '14'], ['14', '14', '15'], ['15', '15', '16'], ['16', '16', '17'], ['17', '17', '18'], ['18', '18', '19'], ['19', '19', '20'], ['20', '20', '21'], ['21', '21', '22'], ['22', '22', '23'], ['23', '23', '24'], ['24', '24', '25'], ['25', '25', '26'], ['26', '26', '27'], ['27', '27', '28'], ['28', '28', '29'], ['29', '29', '30'], ['30', '30', '31'], ['31', '32', '33'], ['32', '33', '34'], ['33', '34', '35'], ['34', '35', '36'], ['35', '36', '37'], ['36', '37', '38'], ['37', '38', '39'], ['38', '39', '40'], ['39', '40', '41'], ['40', '41', '42'], ['41', '42', '43'], ['42', '43', '44'], ['43', '44', '45'], ['44', '45', '46'], ['45', '46', '47'], ['46', '47', '48'], ['47', '48', '49'], ['48', '49', '50'], ['49', '50', '51'], ['50', '51', '52'], ['51', '52', '53'], ['52', '53', '54'], ['53', '54', '55'], ['54', '55', '56'], ['55', '56', '57'], ['56', '57', '58'], ['57', '58', '59'], ['58', '59', '60'], ['59', '60', '61'], ['60', '61', '62'], ['61', '63', '64'], ['62', '64', '65'], ['63', '65', '66'], ['64', '66', '67'], ['65', '67', '68'], ['66', '68', '69'], ['67', '69', '70'], ['68', '70', '71'], ['69', '71', '72'], ['70', '72', '73'], ['71', '73', '74'], ['72', '74', '75'], ['73', '75', '76'], ['74', '76', '77'], ['75', '77', '78'], ['76', '78', '79'], ['77', '79', '80'], ['78', '80', '81'], ['79', '81', '82'], ['80', '82', '83'], ['81', '83', '84'], ['82', '84', '85'], ['83', '85', '86'], ['84', '86', '87'], ['85', '87', '88'], ['86', '88', '89'], ['87', '89', '90'], ['88', '90', '91'], ['89', '91', '92'], ['90', '92', '93'], ['91', '94', '95'], ['92', '95', '96'], ['93', '96', '97'], ['94', '97', '98'], ['95', '98', '99'], ['96', '99', '100'], ['97', '100', '101'], ['98', '101', '102'], ['99', '102', '103'], ['100', '103', '104'], ['101', '104', '105'], ['102', '105', '106'], ['103', '106', '107'], ['104', '107', '108'], ['105', '108', '109'], ['106', '109', '110'], ['107', '110', '111'], ['108', '111', '112'], ['109', '112', '113'], ['110', '113', '114'], ['111', '114', '115'], ['112', '115', '116'], ['113', '116', '117'], ['114', '117', '118'], ['115', '118', '119'], ['116', '119', '120'], ['117', '120', '121'], ['118', '121', '122'], ['119', '122', '123'], ['120', '123', '124'], ['121', '125', '126'], ['122', '126', '127'], ['123', '127', '128'], ['124', '128', '129'], ['125', '129', '130'], ['126', '130', '131'], ['127', '131', '132'], ['128', '132', '133'], ['129', '133', '134'], ['130', '134', '135'], ['131', '135', '136'], ['132', '136', '137'], ['133', '137', '138'], ['134', '138', '139'], ['135', '139', '140'], ['136', '141', '142'], ['137', '142', '143'], ['138', '143', '144'], ['139', '144', '145'], ['140', '145', '146'], ['141', '146', '147'], ['142', '147', '148'], ['143', '148', '149'], ['144', '149', '150'], ['145', '150', '151'], ['146', '151', '152'], ['147', '152', '153'], ['148', '153', '154'], ['149', '154', '155'], ['150', '155', '156'], ['151', '157', '158'], ['152', '158', '159'], ['153', '159', '160'], ['154', '160', '161'], ['155', '161', '162'], ['156', '162', '163'], ['157', '163', '164'], ['158', '164', '165'], ['159', '165', '166'], ['160', '166', '167'], ['161', '167', '168'], ['162', '168', '169'], ['163', '169', '170'], ['164', '170', '171'], ['165', '171', '172'], ['166', '172', '173'], ['167', '173', '174'], ['168', '174', '175'], ['169', '175', '176'], ['170', '176', '177'], ['171', '177', '178'], ['172', '178', '179'], ['173', '179', '180'], ['174', '180', '181'], ['175', '181', '182'], ['176', '182', '183'], ['177', '183', '184'], ['178', '184', '185'], ['179', '185', '186'], ['180', '186', '187'], ['181', '188', '189'], ['182', '189', '190'], ['183', '190', '191'], ['184', '191', '192'], ['185', '192', '193'], ['186', '193', '194'], ['187', '194', '195'], ['188', '195', '196'], ['189', '196', '197'], ['190', '197', '198'], ['191', '198', '199'], ['192', '199', '200'], ['193', '200', '201'], ['194', '201', '202'], ['195', '202', '203'], ['196', '203', '204'], ['197', '204', '205'], ['198', '205', '206'], ['199', '206', '207'], ['200', '207', '208'], ['201', '208', '209'], ['202', '209', '210'], ['203', '210', '211'], ['204', '211', '212'], ['205', '212', '213'], ['206', '213', '214'], ['207', '214', '215'], ['208', '215', '216'], ['209', '216', '217'], ['210', '217', '218'], ['211', '219', '220'], ['212', '220', '221'], ['213', '221', '222'], ['214', '222', '223'], ['215', '223', '224'], ['216', '224', '225'], ['217', '225', '226'], ['218', '226', '227'], ['219', '227', '228'], ['220', '228', '229'], ['221', '229', '230'], ['222', '230', '231'], ['223', '231', '232'], ['224', '232', '233'], ['225', '233', '234'], ['226', '235', '236'], ['227', '236', '237'], ['228', '237', '238'], ['229', '238', '239'], ['230', '239', '240'], ['231', '240', '241'], ['232', '241', '242'], ['233', '242', '243'], ['234', '243', '244'], ['235', '244', '245'], ['236', '245', '246'], ['237', '246', '247'], ['238', '247', '248'], ['239', '248', '249'], ['240', '249', '250'], ['241', '251', '252'], ['242', '252', '253'], ['243', '253', '254'], ['244', '254', '255'], ['245', '255', '256'], ['246', '256', '257'], ['247', '257', '258'], ['248', '258', '259'], ['249', '259', '260'], ['250', '260', '261'], ['251', '261', '262'], ['252', '262', '263'], ['253', '263', '264'], ['254', '264', '265'], ['255', '265', '266'], ['256', '267', '268'], ['257', '268', '269'], ['258', '269', '270'], ['259', '270', '271'], ['260', '271', '272'], ['261', '272', '273'], ['262', '273', '274'], ['263', '274', '275'], ['264', '275', '276'], ['265', '276', '277'], ['266', '277', '278'], ['267', '278', '279'], ['268', '279', '280'], ['269', '280', '281'], ['270', '281', '282'], ['271', '283', '284'], ['272', '284', '285'], ['273', '285', '286'], ['274', '286', '287'], ['275', '287', '288'], ['276', '288', '289'], ['277', '289', '290'], ['278', '290', '291'], ['279', '291', '292'], ['280', '292', '293'], ['281', '293', '294'], ['282', '294', '295'], ['283', '295', '296'], ['284', '296', '297'], ['285', '297', '298'], ['286', '298', '299'], ['287', '299', '300'], ['288', '300', '301'], ['289', '301', '302'], ['290', '302', '303'], ['291', '303', '304'], ['292', '304', '305'], ['293', '305', '306'], ['294', '306', '307'], ['295', '307', '308'], ['296', '308', '309'], ['297', '309', '310'], ['298', '310', '311'], ['299', '311', '312'], ['300', '312', '313'], ['301', '314', '315'], ['302', '315', '316'], ['303', '316', '317'], ['304', '317', '318'], ['305', '318', '319'], ['306', '319', '320'], ['307', '320', '321'], ['308', '321', '322'], ['309', '322', '323'], ['310', '323', '324'], ['311', '324', '325'], ['312', '325', '326'], ['313', '326', '327'], ['314', '327', '328'], ['315', '328', '329'], ['316', '329', '330'], ['317', '330', '331'], ['318', '331', '332'], ['319', '332', '333'], ['320', '333', '334'], ['321', '334', '335'], ['322', '335', '336'], ['323', '336', '337'], ['324', '337', '338'], ['325', '338', '339'], ['326', '339', '340'], ['327', '340', '341'], ['328', '341', '342'], ['329', '342', '343'], ['330', '343', '344'], ['331', '345', '346'], ['332', '346', '347'], ['333', '347', '348'], ['334', '348', '349'], ['335', '349', '350'], ['336', '350', '351'], ['337', '351', '352'], ['338', '352', '353'], ['339', '353', '354'], ['340', '354', '355'], ['341', '355', '356'], ['342', '356', '357'], ['343', '357', '358'], ['344', '358', '359'], ['345', '359', '360'], ['346', '361', '362'], ['347', '362', '363'], ['348', '363', '364'], ['349', '364', '365'], ['350', '365', '366'], ['351', '366', '367'], ['352', '367', '368'], ['353', '368', '369'], ['354', '369', '370'], ['355', '370', '371'], ['356', '371', '372'], ['357', '372', '373'], ['358', '373', '374'], ['359', '374', '375'], ['360', '375', '376']]

I'd like to know the maximum value of the first column of this array. However I've found that problematic since I'm not used to python.

I've tried:

import numpy as np
a = np.array(elements)
numEL = a[np.argmax(a)][0]

but I get a wrong result. I know it is 360 but it returns 285...

Any ideas?

share|improve this question
1  
max(element[0] for element in elements) - there is probably a numpy way of doing this that is more efficient, however. –  Lattyware Mar 19 '13 at 19:15
    
Hi! It returns 99. I know it is 360 –  jpcgandre Mar 19 '13 at 19:17
    
print() your list - it doesn't contain what you think it does if you are getting 99. –  Lattyware Mar 19 '13 at 19:19
    
@jpcgandre, consider challenging what you 'know'. Perhaps you've arranged the data incorrectly given the problem or stated the problem incorrectly given the data. –  Brian Cain Mar 19 '13 at 19:20
    
@jpcgandre Did you try: np.argmax(a, axis=0)? Without specifying the axis I get 6 as result of argmax and this gives an IndexError. –  Bakuriu Mar 19 '13 at 19:22

5 Answers 5

up vote 6 down vote accepted

Your elements are strings, and therefore the comparisons are lexicographic. You want to work with integers:

>>> elements=[['1', '1', '2'], ['99', '2', '3'],['360', '10', '11']]
>>> a = np.array(elements,dtype=int)
>>> a
array([[  1,   1,   2],
       [ 99,   2,   3],
       [360,  10,  11]])
>>> a.max(axis=0)
array([360,  10,  11])
>>> a.max(axis=0)[0]
360

or simply

>>> a[:,0]
array([  1,  99, 360])
>>> a[:,0].max()
360

[Note: this is how to get it to work. As for why the code was returning a strange answer in the first place, @mgilson explains that in the comments to this answer.]

share|improve this answer
    
I wonder whats better ... taking the max along axis=0, or slicing the 0'th column out and taking the max of that ... –  mgilson Mar 19 '13 at 19:20
    
Oy, it looks like you beat me to it. :-/ You want this one? –  DSM Mar 19 '13 at 19:21
    
Nah -- Yours is more complete -- Although I'm still struggling to figure out how '285' could sort greater than '360' –  mgilson Mar 19 '13 at 19:22
    
This is the right answer. I'll mark it in 5 min :) –  jpcgandre Mar 19 '13 at 19:24
2  
Ahh ... the real problem (I think -- other than the string compare) is that np.argmax returns the index in the flattened array. This "flat" index is then used to index the non-flattened array and then the 0th element gets pulled out. OP's code is just as likely to raise an IndexError as anything else. –  mgilson Mar 19 '13 at 19:26
In [3]: max(elements, key=lambda e: int(e[0]))
Out[3]: ['360', '10', '11']
share|improve this answer
maxEl = max(element[0] for element in elements)

Bear in mind that you're still comparing strings here! If you're trying to compare by integer, you need to make sure that you actually do that.

maxIntEl = max(int(element[0]) for element in elements)
share|improve this answer

max(elements, key=lambda x: x[0]) or max(elements, key=lambda x: x[0])[0] if you just care about the actual value of the first column and not the element that contains the maximum value

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import numpy as np

elements = np.array([['1', '1', '2'], ['10002', '2', '3'], ['360', '10', '11']])
print np.max([int(e) for e in elements[:, 0]])

or

elements = [['1', '1', '2'], ['10002', '2', '3'], ['360', '10', '11']]
elements = np.array([[int(e) for e in element] for element in elements])
print np.max(elements[:, 0])

The first snippet is more efficient since string to int conversion is done only for one column rather than doing type conversion for entire numpy array (as in 2nd snippet).

Hope it helps.

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