Per issues #2946 , #2621 , #2835, #2804, #2591, and #2490 -- this exercise has gone through a lot of improvements and also complaints.
Since multiple re-works and improvements have not succeeded, we have decided a complete re-design of the Numbers exercise is in order.
Concept docs can be retained, or revised as needed. Design documents should be updated.
Original specs for Numbers exercise are below:
Goal
The goal of this exercise is to teach the basics of theint , float , and complex numeric types (numbers) in Python.
Learning objectives
- understand the difference between
int, float and complex numbers in Python
- understand that Python uses
j to represent the square root of -1. appending j to a number defines it as imaginary. (e.g.3j is equivalent of 3(sqrt(-1)) -- IF Pythons math module allowed negative square roots...it doesn't).
- understand that a decimal (
.) preceeded or followed by a number creates a float literal
- create an imaginary literal via appending
j to an int or float (e.g. 3.4j or 5j)
- create a
float by casting an int and an int by casting a float, using the int() and float() constructors.
- create complex numbers by casting
int and float to complex using the complex() constructor.
- create a complex number by adding a
float and an imaginary literal (e.g. 3.0 + 6j)
- understand when and how Python uses arithmetic conversions to apply arithmetic operators between these numeric types.
- apply the arithmetic operators to each/between each of the number types (where applicable)
- perform integer (floor) division and "regular" (float) division and see how they differ.
- changing precision of a
float, using round(<float>, <digits>)
Out of scope
- Special values for
Infinity and NaN
- Special math functions for complex numbers contained in cmath
- Bitwise operations on
ints
- round numbers using
math.floor() and math.ceiling()
- Issues with precision limits &
sys.float_info -- but maybe we should note these in passing, or link to them in links.
- Numpy and the numeric types defined by Numpy -- again, something for links/notes.
- Checking strings to see if they are floats. This means any test input to this exercise should not require a student to (a) catch or raise an Exception if a non-float string is passed, or (b) check to see if the string is a float. Only pass valid float strings, i.e.
"1.032".
Concepts
numbers
arithmetic operations
Prerequisites
Resources to refer to
Hints
Hints can link to the builtin function docs mentioned above, with appropriate prompts.
Concept Description
(a variant of this can be used for the v3/languages/python/concepts/<concept>/about.md doc and this exercises introduction.md doc.)
Python has three different types of built-in numbers: integers (int), floating-point (float, and complex (complex). Fractions (fractions.Fraction) and Decimals (decimal.Decimal) are also available via import from the standard library.
Whole numbers (including hex, octals and binary numbers) without decimal places are identified as ints:
#whole number
>>> 1234
1234
>>> type(1234)
<class 'int'>
>>> -12
-12
#hex number
>>> 0x17
23
>>> type(0x17)
<class 'int'>
#octal number
>>> 0o446
294
>>> type(0o446)
<class 'int'>
#binary number
>>> 0b1100110
102
>>> type(0b1100110)
<class 'int'>
Numbers containing a decimal point are identified as floats:
>>> 3.45
3.45
>>> type(3.45)
<class 'float'>
Appending `j` or `J` to a number creates a _imaginary number_ -- a `complex` number with a zero real part. Integers or floats can then be added to an imaginary number to create a `complex` number with both real and imaginary parts:
>>> 3j
3j
>>> type(3j)
<class 'complex'>
>>> 3.5+4j
(3.5+4j)
Arithmetic
Python fully supports arithmetic between these different number types, and will convert narrower numbers to match their less narrow counterparts when used with binary arithmetic operators (+, -, *, /, and %). ints are narrower than floats, which are considered narrower than complex. Comparisons between different number types behaves as as if the exact values of those numbers were being compared:
#the int is widened to a float here, and a float is returned
>>> 3 + 4.0
7.0
#the int is widened to a complex number, and a complex number is returned
>>> 6/(3+2j)
(2+2j)
#division always returns a float, even if integers are used
>>> 6/2
3.0
#if an int result is needed, you can use floor division to truncate the result
>>> 6//2
3
#when comparing, exact values are used
>>> 23 == 0x17
True
>>> 0b10111 \== 0x17
True
>>> 6 == (6+0j)
True
All numbers (except complex) support the same general arithmetic operations, evaluated according to operator precedence.
Precision & Representation
Integers in Python have arbitrary precision -- the amount of digits is limited only by the available memory of the host system.
Floating point numbers are usually implemented using a double in C (15 decimal places of precision), but will vary in representation based on the host system. Complex numbers have a real and an imaginary part, both of which are represented by floating point numbers.
For a more detailed discussion of the issues and limitations of floating point arithmetic, take a look at The Python Tutorial.
Implementing
Tests should be written using unittest.TestCase, and the test file named numbers_test.py.
Code in the .meta/example.py file should only use syntax & concepts introduced in this exercise or one of its prerequisites.
Please do not use comprehensions, generator expressions, or other syntax not previously covered. Please also follow PEP8 guidelines.
Help
If you have any questions while implementing the exercise, please post the questions as comments in this issue.
Per issues #2946 , #2621 , #2835, #2804, #2591, and #2490 -- this exercise has gone through a lot of improvements and also complaints.
Since multiple re-works and improvements have not succeeded, we have decided a complete re-design of the
Numbersexercise is in order.Concept docs can be retained, or revised as needed. Design documents should be updated.
Original specs for
Numbersexercise are below:Goal
The goal of this exercise is to teach the basics of the
int,float, andcomplexnumeric types (numbers) in Python.Learning objectives
int,floatandcomplexnumbers in Pythonjto represent the square root of -1. appendingjto a number defines it as imaginary. (e.g.3jis equivalent of3(sqrt(-1))-- IF Pythons math module allowed negative square roots...it doesn't)..) preceeded or followed by a number creates afloatliteraljto anintorfloat(e.g. 3.4j or 5j)floatby casting anintand anintby casting afloat, using theint()andfloat()constructors.intandfloattocomplexusing thecomplex()constructor.floatand animaginaryliteral (e.g. 3.0 + 6j)float, usinground(<float>, <digits>)Out of scope
InfinityandNaNintsmath.floor()andmath.ceiling()sys.float_info-- but maybe we should note these in passing, or link to them in links."1.032".Concepts
numbersarithmetic operationsPrerequisites
basicsResources to refer to
int()built incomplex()built infloat()built inround()Hints
Hints can link to the builtin function docs mentioned above, with appropriate prompts.
Concept Description
(a variant of this can be used for the
v3/languages/python/concepts/<concept>/about.mddoc and this exercisesintroduction.mddoc.)Python has three different types of built-in numbers: integers (
int), floating-point (float, and complex (complex). Fractions (fractions.Fraction) and Decimals (decimal.Decimal) are also available via import from the standard library.Whole numbers (including hex, octals and binary numbers) without decimal places are identified as
ints:Numbers containing a decimal point are identified as
floats:Arithmetic
Python fully supports arithmetic between these different number types, and will convert narrower numbers to match their less narrow counterparts when used with binary arithmetic operators (
+,-,*,/, and%).intsare narrower thanfloats, which are considered narrower thancomplex. Comparisons between different number types behaves as as if the exact values of those numbers were being compared:All numbers (except complex) support the same general arithmetic operations, evaluated according to operator precedence.
Precision & Representation
Integers in Python have arbitrary precision -- the amount of digits is limited only by the available memory of the host system.
Floating point numbers are usually implemented using a
doublein C (15 decimal places of precision), but will vary in representation based on the host system. Complex numbers have arealand animaginarypart, both of which are represented by floating point numbers.For a more detailed discussion of the issues and limitations of floating point arithmetic, take a look at The Python Tutorial.
Implementing
Tests should be written using
unittest.TestCase, and the test file namednumbers_test.py.Code in the
.meta/example.pyfile should only use syntax & concepts introduced in this exercise or one of its prerequisites.Please do not use comprehensions, generator expressions, or other syntax not previously covered. Please also follow PEP8 guidelines.
Help
If you have any questions while implementing the exercise, please post the questions as comments in this issue.