9. NumPy¶
“Let’s be clear: the work of science has nothing whatever to do with consensus. Consensus is the business of politics. Science, on the contrary, requires only one investigator who happens to be right, which means that he or she has results that are verifiable by reference to the real world. In science consensus is irrelevant. What is relevant is reproducible results.” – Michael Crichton
9.1. Overview¶
NumPy is a first-rate library for numerical programming
Widely used in academia, finance and industry.
Mature, fast, stable and under continuous development.
We have already seen some code involving NumPy in the preceding lectures.
In this lecture, we will start a more systematic discussion of both
NumPy arrays and
the fundamental array processing operations provided by NumPy.
9.1.1. References¶
9.2. NumPy Arrays¶
The essential problem that NumPy solves is fast array processing.
The most important structure that NumPy defines is an array data type formally called a numpy.ndarray.
NumPy arrays power a large proportion of the scientific Python ecosystem.
Let’s first import the library.
import numpy as np
To create a NumPy array containing only zeros we use np.zeros
a = np.zeros(3)
a
array([0., 0., 0.])
type(a)
numpy.ndarray
NumPy arrays are somewhat like native Python lists, except that
Data must be homogeneous (all elements of the same type).
These types must be one of the data types (
dtypes
) provided by NumPy.
The most important of these dtypes are:
float64: 64 bit floating-point number
int64: 64 bit integer
bool: 8 bit True or False
There are also dtypes to represent complex numbers, unsigned integers, etc.
On modern machines, the default dtype for arrays is float64
a = np.zeros(3)
type(a[0])
numpy.float64
If we want to use integers we can specify as follows:
a = np.zeros(3, dtype=int)
type(a[0])
numpy.int64
9.2.1. Shape and Dimension¶
Consider the following assignment
z = np.zeros(10)
Here z
is a flat array with no dimension — neither row nor column vector.
The dimension is recorded in the shape
attribute, which is a tuple
z.shape
(10,)
Here the shape tuple has only one element, which is the length of the array (tuples with one element end with a comma).
To give it dimension, we can change the shape
attribute
z.shape = (10, 1)
z
array([[0.],
[0.],
[0.],
[0.],
[0.],
[0.],
[0.],
[0.],
[0.],
[0.]])
z = np.zeros(4)
z.shape = (2, 2)
z
array([[0., 0.],
[0., 0.]])
In the last case, to make the 2 by 2 array, we could also pass a tuple to the zeros()
function, as
in z = np.zeros((2, 2))
.
9.2.2. Creating Arrays¶
As we’ve seen, the np.zeros
function creates an array of zeros.
You can probably guess what np.ones
creates.
Related is np.empty
, which creates arrays in memory that can later be populated with data
z = np.empty(3)
z
array([0., 0., 0.])
The numbers you see here are garbage values.
(Python allocates 3 contiguous 64 bit pieces of memory, and the existing contents of those memory slots are interpreted as float64
values)
To set up a grid of evenly spaced numbers use np.linspace
z = np.linspace(2, 4, 5) # From 2 to 4, with 5 elements
To create an identity matrix use either np.identity
or np.eye
z = np.identity(2)
z
array([[1., 0.],
[0., 1.]])
In addition, NumPy arrays can be created from Python lists, tuples, etc. using np.array
z = np.array([10, 20]) # ndarray from Python list
z
array([10, 20])
type(z)
numpy.ndarray
z = np.array((10, 20), dtype=float) # Here 'float' is equivalent to 'np.float64'
z
array([10., 20.])
z = np.array([[1, 2], [3, 4]]) # 2D array from a list of lists
z
array([[1, 2],
[3, 4]])
See also np.asarray
, which performs a similar function, but does not make
a distinct copy of data already in a NumPy array.
na = np.linspace(10, 20, 2)
na is np.asarray(na) # Does not copy NumPy arrays
True
na is np.array(na) # Does make a new copy --- perhaps unnecessarily
False
To read in the array data from a text file containing numeric data use np.loadtxt
or np.genfromtxt
—see the documentation for details.
9.2.3. Array Indexing¶
For a flat array, indexing is the same as Python sequences:
z = np.linspace(1, 2, 5)
z
array([1. , 1.25, 1.5 , 1.75, 2. ])
z[0]
1.0
z[0:2] # Two elements, starting at element 0
array([1. , 1.25])
z[-1]
2.0
For 2D arrays the index syntax is as follows:
z = np.array([[1, 2], [3, 4]])
z
array([[1, 2],
[3, 4]])
z[0, 0]
1
z[0, 1]
2
And so on.
Note that indices are still zero-based, to maintain compatibility with Python sequences.
Columns and rows can be extracted as follows
z[0, :]
array([1, 2])
z[:, 1]
array([2, 4])
NumPy arrays of integers can also be used to extract elements
z = np.linspace(2, 4, 5)
z
array([2. , 2.5, 3. , 3.5, 4. ])
indices = np.array((0, 2, 3))
z[indices]
array([2. , 3. , 3.5])
Finally, an array of dtype bool
can be used to extract elements
z
array([2. , 2.5, 3. , 3.5, 4. ])
d = np.array([0, 1, 1, 0, 0], dtype=bool)
d
array([False, True, True, False, False])
z[d]
array([2.5, 3. ])
We’ll see why this is useful below.
An aside: all elements of an array can be set equal to one number using slice notation
z = np.empty(3)
z
array([2. , 3. , 3.5])
z[:] = 42
z
array([42., 42., 42.])
9.2.4. Array Methods¶
Arrays have useful methods, all of which are carefully optimized
a = np.array((4, 3, 2, 1))
a
array([4, 3, 2, 1])
a.sort() # Sorts a in place
a
array([1, 2, 3, 4])
a.sum() # Sum
10
a.mean() # Mean
2.5
a.max() # Max
4
a.argmax() # Returns the index of the maximal element
3
a.cumsum() # Cumulative sum of the elements of a
array([ 1, 3, 6, 10])
a.cumprod() # Cumulative product of the elements of a
array([ 1, 2, 6, 24])
a.var() # Variance
1.25
a.std() # Standard deviation
1.118033988749895
a.shape = (2, 2)
a.T # Equivalent to a.transpose()
array([[1, 3],
[2, 4]])
Another method worth knowing is searchsorted()
.
If z
is a nondecreasing array, then z.searchsorted(a)
returns the index of the first element of z
that is >= a
z = np.linspace(2, 4, 5)
z
array([2. , 2.5, 3. , 3.5, 4. ])
z.searchsorted(2.2)
1
Many of the methods discussed above have equivalent functions in the NumPy namespace
a = np.array((4, 3, 2, 1))
np.sum(a)
10
np.mean(a)
2.5
9.3. Operations on Arrays¶
9.3.1. Arithmetic Operations¶
The operators +
, -
, *
, /
and **
all act elementwise on arrays
a = np.array([1, 2, 3, 4])
b = np.array([5, 6, 7, 8])
a + b
array([ 6, 8, 10, 12])
a * b
array([ 5, 12, 21, 32])
We can add a scalar to each element as follows
a + 10
array([11, 12, 13, 14])
Scalar multiplication is similar
a * 10
array([10, 20, 30, 40])
The two-dimensional arrays follow the same general rules
A = np.ones((2, 2))
B = np.ones((2, 2))
A + B
array([[2., 2.],
[2., 2.]])
A + 10
array([[11., 11.],
[11., 11.]])
A * B
array([[1., 1.],
[1., 1.]])
In particular, A * B
is not the matrix product, it is an element-wise product.
9.3.2. Matrix Multiplication¶
With Anaconda’s scientific Python package based around Python 3.5 and above,
one can use the @
symbol for matrix multiplication, as follows:
A = np.ones((2, 2))
B = np.ones((2, 2))
A @ B
array([[2., 2.],
[2., 2.]])
(For older versions of Python and NumPy you need to use the np.dot function)
We can also use @
to take the inner product of two flat arrays
A = np.array((1, 2))
B = np.array((10, 20))
A @ B
50
In fact, we can use @
when one element is a Python list or tuple
A = np.array(((1, 2), (3, 4)))
A
array([[1, 2],
[3, 4]])
A @ (0, 1)
array([2, 4])
Since we are post-multiplying, the tuple is treated as a column vector.
9.3.3. Mutability and Copying Arrays¶
NumPy arrays are mutable data types, like Python lists.
In other words, their contents can be altered (mutated) in memory after initialization.
We already saw examples above.
Here’s another example:
a = np.array([42, 44])
a
array([42, 44])
a[-1] = 0 # Change last element to 0
a
array([42, 0])
Mutability leads to the following behavior (which can be shocking to MATLAB programmers…)
a = np.random.randn(3)
a
array([ 1.73421544, -0.90186613, 1.48129924])
b = a
b[0] = 0.0
a
array([ 0. , -0.90186613, 1.48129924])
What’s happened is that we have changed a
by changing b
.
The name b
is bound to a
and becomes just another reference to the
array (the Python assignment model is described in more detail later in the course).
Hence, it has equal rights to make changes to that array.
This is in fact the most sensible default behavior!
It means that we pass around only pointers to data, rather than making copies.
Making copies is expensive in terms of both speed and memory.
9.3.3.1. Making Copies¶
It is of course possible to make b
an independent copy of a
when required.
This can be done using np.copy
a = np.random.randn(3)
a
array([-0.24923738, 0.8621003 , 0.05138425])
b = np.copy(a)
b
array([-0.24923738, 0.8621003 , 0.05138425])
Now b
is an independent copy (called a deep copy)
b[:] = 1
b
array([1., 1., 1.])
a
array([-0.24923738, 0.8621003 , 0.05138425])
Note that the change to b
has not affected a
.
9.4. Additional Functionality¶
Let’s look at some other useful things we can do with NumPy.
9.4.1. Vectorized Functions¶
NumPy provides versions of the standard functions log
, exp
, sin
, etc. that act element-wise on arrays
z = np.array([1, 2, 3])
np.sin(z)
array([0.84147098, 0.90929743, 0.14112001])
This eliminates the need for explicit element-by-element loops such as
n = len(z)
y = np.empty(n)
for i in range(n):
y[i] = np.sin(z[i])
Because they act element-wise on arrays, these functions are called vectorized functions.
In NumPy-speak, they are also called ufuncs, which stands for “universal functions”.
As we saw above, the usual arithmetic operations (+
, *
, etc.) also
work element-wise, and combining these with the ufuncs gives a very large set of fast element-wise functions.
z
array([1, 2, 3])
(1 / np.sqrt(2 * np.pi)) * np.exp(- 0.5 * z**2)
array([0.24197072, 0.05399097, 0.00443185])
Not all user-defined functions will act element-wise.
For example, passing the function f
defined below a NumPy array causes a ValueError
def f(x):
return 1 if x > 0 else 0
The NumPy function np.where
provides a vectorized alternative:
x = np.random.randn(4)
x
array([-0.60149135, -0.59693716, -1.41711357, -0.88384999])
np.where(x > 0, 1, 0) # Insert 1 if x > 0 true, otherwise 0
array([0, 0, 0, 0])
You can also use np.vectorize
to vectorize a given function
f = np.vectorize(f)
f(x) # Passing the same vector x as in the previous example
array([0, 0, 0, 0])
However, this approach doesn’t always obtain the same speed as a more carefully crafted vectorized function.
9.4.2. Comparisons¶
As a rule, comparisons on arrays are done element-wise
z = np.array([2, 3])
y = np.array([2, 3])
z == y
array([ True, True])
y[0] = 5
z == y
array([False, True])
z != y
array([ True, False])
The situation is similar for >
, <
, >=
and <=
.
We can also do comparisons against scalars
z = np.linspace(0, 10, 5)
z
array([ 0. , 2.5, 5. , 7.5, 10. ])
z > 3
array([False, False, True, True, True])
This is particularly useful for conditional extraction
b = z > 3
b
array([False, False, True, True, True])
z[b]
array([ 5. , 7.5, 10. ])
Of course we can—and frequently do—perform this in one step
z[z > 3]
array([ 5. , 7.5, 10. ])
9.4.3. Sub-packages¶
NumPy provides some additional functionality related to scientific programming through its sub-packages.
We’ve already seen how we can generate random variables using np.random
z = np.random.randn(10000) # Generate standard normals
y = np.random.binomial(10, 0.5, size=1000) # 1,000 draws from Bin(10, 0.5)
y.mean()
5.011e+00
Another commonly used subpackage is np.linalg
A = np.array([[1, 2], [3, 4]])
np.linalg.det(A) # Compute the determinant
-2.0000000000000004
np.linalg.inv(A) # Compute the inverse
array([[-2. , 1. ],
[ 1.5, -0.5]])
Much of this functionality is also available in SciPy, a collection of modules that are built on top of NumPy.
We’ll cover the SciPy versions in more detail soon.
For a comprehensive list of what’s available in NumPy see this documentation.
9.5. Exercises¶
%matplotlib inline
import matplotlib.pyplot as plt
plt.rcParams['figure.figsize'] = (10,6)
Consider the polynomial expression
Earlier, you wrote a simple function p(x, coeff)
to evaluate (9.1) without considering efficiency.
Now write a new function that does the same job, but uses NumPy arrays and array operations for its computations, rather than any form of Python loop.
(Such functionality is already implemented as np.poly1d
, but for the sake of the exercise don’t use this class)
Hint: Use
np.cumprod()
Solution to Exercise 9.1
This code does the job
def p(x, coef):
X = np.ones_like(coef)
X[1:] = x
y = np.cumprod(X) # y = [1, x, x**2,...]
return coef @ y
Let’s test it
x = 2
coef = np.linspace(2, 4, 3)
print(coef)
print(p(x, coef))
# For comparison
q = np.poly1d(np.flip(coef))
print(q(x))
[2. 3. 4.]
24.0
24.0
Let q
be a NumPy array of length n
with q.sum() == 1
.
Suppose that q
represents a probability mass function.
We wish to generate a discrete random variable \(x\) such that \(\mathbb P\{x = i\} = q_i\).
In other words, x
takes values in range(len(q))
and x = i
with probability q[i]
.
The standard (inverse transform) algorithm is as follows:
Divide the unit interval \([0, 1]\) into \(n\) subintervals \(I_0, I_1, \ldots, I_{n-1}\) such that the length of \(I_i\) is \(q_i\).
Draw a uniform random variable \(U\) on \([0, 1]\) and return the \(i\) such that \(U \in I_i\).
The probability of drawing \(i\) is the length of \(I_i\), which is equal to \(q_i\).
We can implement the algorithm as follows
from random import uniform
def sample(q):
a = 0.0
U = uniform(0, 1)
for i in range(len(q)):
if a < U <= a + q[i]:
return i
a = a + q[i]
If you can’t see how this works, try thinking through the flow for a simple example, such as q = [0.25, 0.75]
It helps to sketch the intervals on paper.
Your exercise is to speed it up using NumPy, avoiding explicit loops
Hint: Use
np.searchsorted
andnp.cumsum
If you can, implement the functionality as a class called DiscreteRV
, where
the data for an instance of the class is the vector of probabilities
q
the class has a
draw()
method, which returns one draw according to the algorithm described above
If you can, write the method so that draw(k)
returns k
draws from q
.
Solution to Exercise 9.2
Here’s our first pass at a solution:
from numpy import cumsum
from numpy.random import uniform
class DiscreteRV:
"""
Generates an array of draws from a discrete random variable with vector of
probabilities given by q.
"""
def __init__(self, q):
"""
The argument q is a NumPy array, or array like, nonnegative and sums
to 1
"""
self.q = q
self.Q = cumsum(q)
def draw(self, k=1):
"""
Returns k draws from q. For each such draw, the value i is returned
with probability q[i].
"""
return self.Q.searchsorted(uniform(0, 1, size=k))
The logic is not obvious, but if you take your time and read it slowly, you will understand.
There is a problem here, however.
Suppose that q
is altered after an instance of discreteRV
is
created, for example by
q = (0.1, 0.9)
d = DiscreteRV(q)
d.q = (0.5, 0.5)
The problem is that Q
does not change accordingly, and Q
is the
data used in the draw
method.
To deal with this, one option is to compute Q
every time the draw
method is called.
But this is inefficient relative to computing Q
once-off.
A better option is to use descriptors.
A solution from the quantecon library using descriptors that behaves as we desire can be found here.
Recall our earlier discussion of the empirical cumulative distribution function.
Your task is to
Make the
__call__
method more efficient using NumPy.Add a method that plots the ECDF over \([a, b]\), where \(a\) and \(b\) are method parameters.
Solution to Exercise 9.3
An example solution is given below.
In essence, we’ve just taken this code from QuantEcon and added in a plot method
"""
Modifies ecdf.py from QuantEcon to add in a plot method
"""
class ECDF:
"""
One-dimensional empirical distribution function given a vector of
observations.
Parameters
----------
observations : array_like
An array of observations
Attributes
----------
observations : array_like
An array of observations
"""
def __init__(self, observations):
self.observations = np.asarray(observations)
def __call__(self, x):
"""
Evaluates the ecdf at x
Parameters
----------
x : scalar(float)
The x at which the ecdf is evaluated
Returns
-------
scalar(float)
Fraction of the sample less than x
"""
return np.mean(self.observations <= x)
def plot(self, ax, a=None, b=None):
"""
Plot the ecdf on the interval [a, b].
Parameters
----------
a : scalar(float), optional(default=None)
Lower endpoint of the plot interval
b : scalar(float), optional(default=None)
Upper endpoint of the plot interval
"""
# === choose reasonable interval if [a, b] not specified === #
if a is None:
a = self.observations.min() - self.observations.std()
if b is None:
b = self.observations.max() + self.observations.std()
# === generate plot === #
x_vals = np.linspace(a, b, num=100)
f = np.vectorize(self.__call__)
ax.plot(x_vals, f(x_vals))
plt.show()
Here’s an example of usage
fig, ax = plt.subplots()
X = np.random.randn(1000)
F = ECDF(X)
F.plot(ax)