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authorNguyễn Gia Phong <mcsinyx@disroot.org>2021-03-08 21:45:21 +0700
committerNguyễn Gia Phong <mcsinyx@disroot.org>2021-03-08 21:45:21 +0700
commit818a0bd6f1b3305351d482eeab4e9e64c2af3a18 (patch)
tree807afa8b0a26d98202f97bf7d4ab9d6513054fa2 /fun
parentc9409b7b0b426a8af44c2046972d26ff5621f37b (diff)
downloadsite-818a0bd6f1b3305351d482eeab4e9e64c2af3a18.tar.gz
Migrate *the rest* of the math blogs
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-+++
-title = "Infinite Sequences: A Case Study in Functional Python"
-hascode = true
-date = Date(2019, 2, 28)
-rss = "SICP subsection 3.5.2 in Python"
-+++
-@def tags = ["sicp", "fun", "python", "calculus"]
-
-# Infinite Sequences: A Case Study in Functional Python
-
-In this article, we will only consider sequences defined by a function
-whose domain is a subset of the set of all integers.  Such sequences will be
-*visualized*, i.e. we will try to evaluate the first few (thousand) elements,
-using functional programming paradigm, where functions are more similar
-to the ones in math (in contrast to imperative style with side effects
-confusing to inexperenced coders).  The idea is taken from [subsection 3.5.2
-of SICP][] and adapted to Python, which, compare to Scheme, is significantly
-more popular: Python is pre-installed on almost every modern Unix-like system,
-namely macOS, GNU/Linux and the \*BSDs; and even at MIT, the new 6.01 in Python
-has recently replaced the legendary 6.001 (SICP).
-
-One notable advantage of using Python is its huge **standard** library.
-For example the *identity sequence* (sequence defined by the identity function)
-can be imported directly from ``itertools``:
-
-```python
->>> from itertools import count
->>> positive_integers = count(start=1)
->>> next(positive_integers)
-1
->>> next(positive_integers)
-2
->>> for _ in range(4): next(positive_integers)
-... 
-3
-4
-5
-6
-```
-
-To open a Python emulator, simply lauch your terminal and run `python`.
-If that is somehow still too struggling, navigate to [the interactive shell][]
-on Python.org.
-
-*Let's get it started* with somethings everyone hates: recursively defined
-sequences, e.g. the famous Fibonacci ($F_n = F_{n-1} + F_{n-2}$,
-$F_1 = 1$ and $F_0 = 0$).  Since [Python does not support][] [tail recursion][],
-it's generally **not** a good idea to define anything recursively (which is,
-ironically, the only trivial *functional* solution in this case)
-but since we will only evaluate the first few terms
-(use the **Tab** key to indent the line when needed):
-
-```python
->>> def fibonacci(n, a=0, b=1):
-...     # To avoid making the code look complicated,
-...     # n < 0 is not handled here.
-...     return a if n == 0 else fibonacci(n - 1, b, a + b)
-... 
->>> fibo_seq = (fibonacci(n) for n in count(start=0))
->>> for _ in range(7): next(fibo_seq)
-... 
-0
-1
-1
-2
-3
-5
-8
-```
-
-@@colbox-blue
-The `fibo_seq` above is just to demonstrate how `itertools.count`
-can be use to create an infinite sequence defined by a function.
-For better performance, this should be used instead:
-
-```python
-def fibonacci_sequence(a=0, b=1):
-    yield a
-    yield from fibonacci_sequence(b, a + b)
-```
-@@
-
-It is noticable that the elements having been iterated through (using `next`)
-will disappear forever in the void (oh no!), but that is the cost we are
-willing to pay to save some memory, especially when we need to evaluate a
-member of (arbitrarily) large index to estimate the sequence's limit.
-One case in point is estimating a definite integral using [left Riemann sum][].
-
-```python
-def integral(f, a, b):
-    def left_riemann_sum(n):
-        dx = (b-a) / n
-        def x(i): return a + i*dx
-        return sum(f(x(i)) for i in range(n)) * dx
-    return left_riemann_sum
-```
-
-The function `integral(f, a, b)` as defined above returns a function taking
-$n$ as an argument.  As $n\to\infty$, its result approaches
-$\int_a^b f(x)\mathrm d x$.  For example, we are going to estimate
-$\pi$ as the area of a semicircle whose radius is $\sqrt 2$:
-
-```python
->>> from math import sqrt
->>> def semicircle(x): return sqrt(abs(2 - x*x))
-... 
->>> pi = integral(semicircle, -sqrt(2), sqrt(2))
->>> pi_seq = (pi(n) for n in count(start=2))
->>> for _ in range(3): next(pi_seq)
-... 
-2.000000029802323
-2.514157464087051
-2.7320508224700384
-```
-
-Whilst the first few aren't quite close, at index around 1000,
-the result is somewhat acceptable:
-
-```
-3.1414873191059525
-3.1414874770617427
-3.1414876346231577
-```
-
-Since we are comfortable with sequence of sums, let's move on to sums of
-a sequence, which are called series.  For estimation, again, we are going to
-make use of infinite sequences of partial sums, which are implemented as
-`itertools.accumulate` by thoughtful Python developers.  [Geometric][] and
-[p-series][] can be defined as follow:
-
-```python
-from itertools import accumulate as partial_sums
-
-def geometric_series(r, a=1):
-    return partial_sums(a*r**n for n in count(0))
-
-def p_series(p):
-    return partial_sums(1 / n**p for n in count(1))
-```
-
-We can then use these to determine whether a series is convergent or divergent.
-For instance, one can easily verify that the $p$-series with $p = 2$
-converges to $\pi^2 / 6 \approx 1.6449340668482264$ via
-
-```python
->>> s = p_series(p=2)
->>> for _ in range(11): next(s)
-... 
-1.0
-1.25
-1.3611111111111112
-1.4236111111111112
-1.4636111111111112
-1.4913888888888889
-1.511797052154195
-1.527422052154195
-1.5397677311665408
-1.5497677311665408
-1.558032193976458
-```
-
-We can observe that it takes quite a lot of steps to get the precision we would
-generally expect ($s_{11}$ is only precise to the first decimal place;
-second decimal places: $s_{101}$; third: $s_{2304}$).
-Luckily, many techniques for series acceleration are available.
-[Shanks transformation][] for instance, can be implemented as follow:
-
-```python
-from itertools import islice, tee
-
-def shanks(seq):
-    return map(lambda x, y, z: (x*z - y*y) / (x + z - y*2),
-               *(islice(t, i, None) for i, t in enumerate(tee(seq, 3))))
-```
-
-In the code above, `lambda x, y, z: (x*z - y*y) / (x + z - y*2)` denotes
-the anonymous function $(x, y, z) \mapsto \frac{xz - y^2}{x + z - 2y}$
-and `map` is a higher order function applying that function to
-respective elements of subsequences starting from index 1, 2 and 3 of `seq`.
-On Python 2, one should import `imap` from `itertools` to get the same
-[lazy][] behavior of `map` on Python 3.
-
-```python
->>> s = shanks(p_series(2))
->>> for _ in range(10): next(s)
-... 
-1.4500000000000002
-1.503968253968257
-1.53472222222223
-1.5545202020202133
-1.5683119658120213
-1.57846371882088
-1.5862455815659202
-1.5923993101138652
-1.5973867787856946
-1.6015104548459742
-```
-
-The result was quite satisfying, yet we can do one step futher
-by continuously applying the transformation to the sequence:
-
-```python
->>> def compose(transform, seq):
-... 	yield next(seq)
-... 	yield from compose(transform, transform(seq))
-... 
->>> s = compose(shanks, p_series(2))
->>> for _ in range(10): next(s)
-... 
-1.0
-1.503968253968257
-1.5999812811165188
-1.6284732442271674
-1.6384666832276524
-1.642311342667821
-1.6425249569252578
-1.640277484549416
-1.6415443295058203
-1.642038043478661
-```
-
-Shanks transformation works on every sequence (not just sequences of
-partial sums).  Back to previous example of using left Riemann sum
-to compute definite integral:
-
-```python
->>> pi_seq = compose(shanks, map(pi, count(2)))
->>> for _ in range(10): next(pi_seq)
-... 
-2.000000029802323
-2.978391111182236
-3.105916845397819
-3.1323116570377185
-3.1389379264270736
-3.140788413965646
-3.140921512857936
-3.1400282163913436
-3.1400874774021816
-3.1407097229603256
->>> next(islice(pi_seq, 300, None))
-3.1415061302492413
-```
-
-Now having series defined, let's see if we can learn anything
-about power series. Sequence of partial sums of power series
-$\sum c_n (x - a)^n$ can be defined as
-
-```python
-from operator import mul
-
-def power_series(c, start=0, a=0):
-    return lambda x: partial_sums(map(mul, c, (x**n for n in count(start))))
-```
-
-We can use this to compute functions that can be written as
-[Taylor series][]:
-
-```python
-from math import factorial
-def exp(x):
-    return power_series(1/factorial(n) for n in count(0))(x)
-
-def cos(x):
-    c = ((1 - n%2) * (1 - n%4) / factorial(n) for n in count(0))
-    return power_series(c)(x)
-
-def sin(x):
-    c = (n%2 * (2 - n%4) / factorial(n) for n in count(1))
-    return power_series(c, start=1)(x)
-```
-
-Amazing!  Let's test 'em!
-
-```python
->>> e = compose(shanks, exp(1)) # this should converges to 2.718281828459045
->>> for _ in range(4): next(e)
-... 
-1.0
-2.749999999999996
-2.718276515152136
-2.718281825486623
-```
-
-Impressive, huh? For sine and cosine, series acceleration is not even necessary:
-
-```python
->>> from math import pi as PI
->>> s = sin(PI/6)
->>> for _ in range(5): next(s)
-... 
-0.5235987755982988
-0.5235987755982988
-0.49967417939436376
-0.49967417939436376
-0.5000021325887924
->>> next(islice(cos(PI/3), 8, None))
-0.500000433432915
-```
-
-[subsection 3.5.2 of SICP]: https://mitpress.mit.edu/sites/default/files/sicp/full-text/book/book-Z-H-24.html#%_sec_3.5.2
-[the interactive shell]: https://www.python.org/shell
-[Python does not support]: http://neopythonic.blogspot.com/2009/04/final-words-on-tail-calls.html
-[tail recursion]: https://mitpress.mit.edu/sites/default/files/sicp/full-text/book/book-Z-H-11.html#call_footnote_Temp_48
-[left Riemann sum]: https://en.wikipedia.org/wiki/Riemann_sum#Left_Riemann_sum
-[Geometric]: https://en.wikipedia.org/wiki/Geometric_series
-[p-series]: https://math.oregonstate.edu/home/programs/undergrad/CalculusQuestStudyGuides/SandS/SeriesTests/p-series.html
-[Shanks transformation]: https://en.wikipedia.org/wiki/Shanks_transformation
-[lazy]: https://en.wikipedia.org/wiki/Lazy_evaluation
-[Taylor series]: https://en.wikipedia.org/wiki/Taylor_series