Is there an existing function in numpy that will tell me if a value is either a numeric type or a numpy array? I'm writing some data-processing code which needs to handle numbers in several different representations (by "number" I mean any representation of a numeric quantity which can be manipulated using the standard arithmetic operators, +, -, *, /, **).

Some examples of the behavior I'm looking for

```
>>> is_numeric(5)
True
>>> is_numeric(123.345)
True
>>> is_numeric('123.345')
False
>>> is_numeric(decimal.Decimal('123.345'))
True
>>> is_numeric(True)
False
>>> is_numeric([1, 2, 3])
False
>>> is_numeric([1, '2', 3])
False
>>> a = numpy.array([1, 2.3, 4.5, 6.7, 8.9])
>>> is_numeric(a)
True
>>> is_numeric(a[0])
True
>>> is_numeric(a[1])
True
>>> is_numeric(numpy.array([numpy.array([1]), numpy.array([2])])
True
>>> is_numeric(numpy.array(['1'])
False
```

If no such function exists, I know it shouldn't be hard to write one, something like

```
isinstance(n, (int, float, decimal.Decimal, numpy.number, numpy.ndarray))
```

but are there other numeric types I should include in the list?

`is_numeric([1,2,3])`

and`is_numeric([1, '2', 3])`

? – J.F. Sebastian Feb 1 '09 at 7:10`numpy.array([numpy.array([1]), numpy.array([2])])`

? – J.F. Sebastian Feb 1 '09 at 7:19`numpy.array(['1'])`

? – J.F. Sebastian Feb 1 '09 at 7:25`bool`

values, or numpy arrays of them. – Dave Feb 20 at 21:20