"""Provides some utilities widely used by other modules""" import bisect import collections import collections.abc import operator import os.path import random import math import functools from itertools import chain, combinations # ______________________________________________________________________________ # Functions on Sequences and Iterables def sequence(iterable): """Coerce iterable to sequence, if it is not already one.""" return (iterable if isinstance(iterable, collections.abc.Sequence) else tuple(iterable)) def removeall(item, seq): """Return a copy of seq (or string) with all occurences of item removed.""" if isinstance(seq, str): return seq.replace(item, '') else: return [x for x in seq if x != item] def unique(seq): # TODO: replace with set """Remove duplicate elements from seq. Assumes hashable elements.""" return list(set(seq)) def count(seq): """Count the number of items in sequence that are interpreted as true.""" return sum(bool(x) for x in seq) def product(numbers): """Return the product of the numbers, e.g. product([2, 3, 10]) == 60""" result = 1 for x in numbers: result *= x return result def first(iterable, default=None): """Return the first element of an iterable or the next element of a generator; or default.""" try: return iterable[0] except IndexError: return default except TypeError: return next(iterable, default) def is_in(elt, seq): """Similar to (elt in seq), but compares with 'is', not '=='.""" return any(x is elt for x in seq) def mode(data): """Return the most common data item. If there are ties, return any one of them.""" [(item, count)] = collections.Counter(data).most_common(1) return item def powerset(iterable): """powerset([1,2,3]) --> (1,) (2,) (3,) (1,2) (1,3) (2,3) (1,2,3)""" s = list(iterable) return list(chain.from_iterable(combinations(s, r) for r in range(len(s)+1)))[1:] # ______________________________________________________________________________ # argmin and argmax identity = lambda x: x argmin = min argmax = max def argmin_random_tie(seq, key=identity): """Return a minimum element of seq; break ties at random.""" return argmin(shuffled(seq), key=key) def argmax_random_tie(seq, key=identity): """Return an element with highest fn(seq[i]) score; break ties at random.""" return argmax(shuffled(seq), key=key) def shuffled(iterable): """Randomly shuffle a copy of iterable.""" items = list(iterable) random.shuffle(items) return items # ______________________________________________________________________________ # Statistical and mathematical functions def histogram(values, mode=0, bin_function=None): """Return a list of (value, count) pairs, summarizing the input values. Sorted by increasing value, or if mode=1, by decreasing count. If bin_function is given, map it over values first.""" if bin_function: values = map(bin_function, values) bins = {} for val in values: bins[val] = bins.get(val, 0) + 1 if mode: return sorted(list(bins.items()), key=lambda x: (x[1], x[0]), reverse=True) else: return sorted(bins.items()) def dotproduct(X, Y): """Return the sum of the element-wise product of vectors X and Y.""" return sum(x * y for x, y in zip(X, Y)) def element_wise_product(X, Y): """Return vector as an element-wise product of vectors X and Y""" assert len(X) == len(Y) return [x * y for x, y in zip(X, Y)] def matrix_multiplication(X_M, *Y_M): """Return a matrix as a matrix-multiplication of X_M and arbitary number of matrices *Y_M""" def _mat_mult(X_M, Y_M): """Return a matrix as a matrix-multiplication of two matrices X_M and Y_M >>> matrix_multiplication([[1, 2, 3], [2, 3, 4]], [[3, 4], [1, 2], [1, 0]]) [[8, 8],[13, 14]] """ assert len(X_M[0]) == len(Y_M) result = [[0 for i in range(len(Y_M[0]))] for j in range(len(X_M))] for i in range(len(X_M)): for j in range(len(Y_M[0])): for k in range(len(Y_M)): result[i][j] += X_M[i][k] * Y_M[k][j] return result result = X_M for Y in Y_M: result = _mat_mult(result, Y) return result def vector_to_diagonal(v): """Converts a vector to a diagonal matrix with vector elements as the diagonal elements of the matrix""" diag_matrix = [[0 for i in range(len(v))] for j in range(len(v))] for i in range(len(v)): diag_matrix[i][i] = v[i] return diag_matrix def vector_add(a, b): """Component-wise addition of two vectors.""" return tuple(map(operator.add, a, b)) def scalar_vector_product(X, Y): """Return vector as a product of a scalar and a vector""" return [X * y for y in Y] def scalar_matrix_product(X, Y): """Return matrix as a product of a scalar and a matrix""" return [scalar_vector_product(X, y) for y in Y] def inverse_matrix(X): """Inverse a given square matrix of size 2x2""" assert len(X) == 2 assert len(X[0]) == 2 det = X[0][0] * X[1][1] - X[0][1] * X[1][0] assert det != 0 inv_mat = scalar_matrix_product(1.0/det, [[X[1][1], -X[0][1]], [-X[1][0], X[0][0]]]) return inv_mat def probability(p): """Return true with probability p.""" return p > random.uniform(0.0, 1.0) def weighted_sample_with_replacement(n, seq, weights): """Pick n samples from seq at random, with replacement, with the probability of each element in proportion to its corresponding weight.""" sample = weighted_sampler(seq, weights) return [sample() for _ in range(n)] def weighted_sampler(seq, weights): """Return a random-sample function that picks from seq weighted by weights.""" totals = [] for w in weights: totals.append(w + totals[-1] if totals else w) return lambda: seq[bisect.bisect(totals, random.uniform(0, totals[-1]))] def rounder(numbers, d=4): """Round a single number, or sequence of numbers, to d decimal places.""" if isinstance(numbers, (int, float)): return round(numbers, d) else: constructor = type(numbers) # Can be list, set, tuple, etc. return constructor(rounder(n, d) for n in numbers) def num_or_str(x): """The argument is a string; convert to a number if possible, or strip it.""" try: return int(x) except ValueError: try: return float(x) except ValueError: return str(x).strip() def normalize(dist): """Multiply each number by a constant such that the sum is 1.0""" if isinstance(dist, dict): total = sum(dist.values()) for key in dist: dist[key] = dist[key] / total assert 0 <= dist[key] <= 1, "Probabilities must be between 0 and 1." return dist total = sum(dist) return [(n / total) for n in dist] def norm(X, n=2): """Return the n-norm of vector X""" return sum([x**n for x in X])**(1/n) def clip(x, lowest, highest): """Return x clipped to the range [lowest..highest].""" return max(lowest, min(x, highest)) def sigmoid_derivative(value): return value * (1 - value) def sigmoid(x): """Return activation value of x with sigmoid function""" return 1/(1 + math.exp(-x)) def step(x): """Return activation value of x with sign function""" return 1 if x >= 0 else 0 def gaussian(mean, st_dev, x): """Given the mean and standard deviation of a distribution, it returns the probability of x.""" return 1/(math.sqrt(2*math.pi)*st_dev)*math.e**(-0.5*(float(x-mean)/st_dev)**2) try: # math.isclose was added in Python 3.5; but we might be in 3.4 from math import isclose except ImportError: def isclose(a, b, rel_tol=1e-09, abs_tol=0.0): """Return true if numbers a and b are close to each other.""" return abs(a - b) <= max(rel_tol * max(abs(a), abs(b)), abs_tol) def weighted_choice(choices): """A weighted version of random.choice""" # NOTE: Shoule be replaced by random.choices if we port to Python 3.6 total = sum(w for _, w in choices) r = random.uniform(0, total) upto = 0 for c, w in choices: if upto + w >= r: return c, w upto += w # ______________________________________________________________________________ # Grid Functions orientations = EAST, NORTH, WEST, SOUTH = [(1, 0), (0, 1), (-1, 0), (0, -1)] turns = LEFT, RIGHT = (+1, -1) def turn_heading(heading, inc, headings=orientations): return headings[(headings.index(heading) + inc) % len(headings)] def turn_right(heading): return turn_heading(heading, RIGHT) def turn_left(heading): return turn_heading(heading, LEFT) def distance(a, b): """The distance between two (x, y) points.""" xA, yA = a xB, yB = b return math.hypot((xA - xB), (yA - yB)) def distance_squared(a, b): """The square of the distance between two (x, y) points.""" xA, yA = a xB, yB = b return (xA - xB)**2 + (yA - yB)**2 def vector_clip(vector, lowest, highest): """Return vector, except if any element is less than the corresponding value of lowest or more than the corresponding value of highest, clip to those values.""" return type(vector)(map(clip, vector, lowest, highest)) # ______________________________________________________________________________ # Misc Functions def memoize(fn, slot=None, maxsize=32): """Memoize fn: make it remember the computed value for any argument list. If slot is specified, store result in that slot of first argument. If slot is false, use lru_cache for caching the values.""" if slot: def memoized_fn(obj, *args): if hasattr(obj, slot): return getattr(obj, slot) else: val = fn(obj, *args) setattr(obj, slot, val) return val else: @functools.lru_cache(maxsize=maxsize) def memoized_fn(*args): return fn(*args) return memoized_fn def name(obj): """Try to find some reasonable name for the object.""" return (getattr(obj, 'name', 0) or getattr(obj, '__name__', 0) or getattr(getattr(obj, '__class__', 0), '__name__', 0) or str(obj)) def isnumber(x): """Is x a number?""" return hasattr(x, '__int__') def issequence(x): """Is x a sequence?""" return isinstance(x, collections.abc.Sequence) def print_table(table, header=None, sep=' ', numfmt='{}'): """Print a list of lists as a table, so that columns line up nicely. header, if specified, will be printed as the first row. numfmt is the format for all numbers; you might want e.g. '{:.2f}'. (If you want different formats in different columns, don't use print_table.) sep is the separator between columns.""" justs = ['rjust' if isnumber(x) else 'ljust' for x in table[0]] if header: table.insert(0, header) table = [[numfmt.format(x) if isnumber(x) else x for x in row] for row in table] sizes = list( map(lambda seq: max(map(len, seq)), list(zip(*[map(str, row) for row in table])))) for row in table: print(sep.join(getattr( str(x), j)(size) for (j, size, x) in zip(justs, sizes, row))) def open_data(name, mode='r'): aima_root = os.path.dirname(__file__) aima_file = os.path.join(aima_root, *['aima-data', name]) return open(aima_file) def failure_test(algorithm, tests): """Grades the given algorithm based on how many tests it passes. Most algorithms have arbitary output on correct execution, which is difficult to check for correctness. On the other hand, a lot of algorithms output something particular on fail (for example, False, or None). tests is a list with each element in the form: (values, failure_output).""" from statistics import mean return mean(int(algorithm(x) != y) for x, y in tests) # ______________________________________________________________________________ # Expressions # See https://docs.python.org/3/reference/expressions.html#operator-precedence # See https://docs.python.org/3/reference/datamodel.html#special-method-names class Expr(object): """A mathematical expression with an operator and 0 or more arguments. op is a str like '+' or 'sin'; args are Expressions. Expr('x') or Symbol('x') creates a symbol (a nullary Expr). Expr('-', x) creates a unary; Expr('+', x, 1) creates a binary.""" def __init__(self, op, *args): self.op = str(op) self.args = args # Operator overloads def __neg__(self): return Expr('-', self) def __pos__(self): return Expr('+', self) def __invert__(self): return Expr('~', self) def __add__(self, rhs): return Expr('+', self, rhs) def __sub__(self, rhs): return Expr('-', self, rhs) def __mul__(self, rhs): return Expr('*', self, rhs) def __pow__(self, rhs): return Expr('**', self, rhs) def __mod__(self, rhs): return Expr('%', self, rhs) def __and__(self, rhs): return Expr('&', self, rhs) def __xor__(self, rhs): return Expr('^', self, rhs) def __rshift__(self, rhs): return Expr('>>', self, rhs) def __lshift__(self, rhs): return Expr('<<', self, rhs) def __truediv__(self, rhs): return Expr('/', self, rhs) def __floordiv__(self, rhs): return Expr('//', self, rhs) def __matmul__(self, rhs): return Expr('@', self, rhs) def __or__(self, rhs): """Allow both P | Q, and P |'==>'| Q.""" if isinstance(rhs, Expression): return Expr('|', self, rhs) else: return PartialExpr(rhs, self) # Reverse operator overloads def __radd__(self, lhs): return Expr('+', lhs, self) def __rsub__(self, lhs): return Expr('-', lhs, self) def __rmul__(self, lhs): return Expr('*', lhs, self) def __rdiv__(self, lhs): return Expr('/', lhs, self) def __rpow__(self, lhs): return Expr('**', lhs, self) def __rmod__(self, lhs): return Expr('%', lhs, self) def __rand__(self, lhs): return Expr('&', lhs, self) def __rxor__(self, lhs): return Expr('^', lhs, self) def __ror__(self, lhs): return Expr('|', lhs, self) def __rrshift__(self, lhs): return Expr('>>', lhs, self) def __rlshift__(self, lhs): return Expr('<<', lhs, self) def __rtruediv__(self, lhs): return Expr('/', lhs, self) def __rfloordiv__(self, lhs): return Expr('//', lhs, self) def __rmatmul__(self, lhs): return Expr('@', lhs, self) def __call__(self, *args): "Call: if 'f' is a Symbol, then f(0) == Expr('f', 0)." if self.args: raise ValueError('can only do a call for a Symbol, not an Expr') else: return Expr(self.op, *args) # Equality and repr def __eq__(self, other): "'x == y' evaluates to True or False; does not build an Expr." return (isinstance(other, Expr) and self.op == other.op and self.args == other.args) def __hash__(self): return hash(self.op) ^ hash(self.args) def __repr__(self): op = self.op args = [str(arg) for arg in self.args] if op.isidentifier(): # f(x) or f(x, y) return '{}({})'.format(op, ', '.join(args)) if args else op elif len(args) == 1: # -x or -(x + 1) return op + args[0] else: # (x - y) opp = (' ' + op + ' ') return '(' + opp.join(args) + ')' # An 'Expression' is either an Expr or a Number. # Symbol is not an explicit type; it is any Expr with 0 args. Number = (int, float, complex) Expression = (Expr, Number) def Symbol(name): """A Symbol is just an Expr with no args.""" return Expr(name) def symbols(names): """Return a tuple of Symbols; names is a comma/whitespace delimited str.""" return tuple(Symbol(name) for name in names.replace(',', ' ').split()) def subexpressions(x): """Yield the subexpressions of an Expression (including x itself).""" yield x if isinstance(x, Expr): for arg in x.args: yield from subexpressions(arg) def arity(expression): """The number of sub-expressions in this expression.""" if isinstance(expression, Expr): return len(expression.args) else: # expression is a number return 0 # For operators that are not defined in Python, we allow new InfixOps: class PartialExpr: """Given 'P |'==>'| Q, first form PartialExpr('==>', P), then combine with Q.""" def __init__(self, op, lhs): self.op, self.lhs = op, lhs def __or__(self, rhs): return Expr(self.op, self.lhs, rhs) def __repr__(self): return "PartialExpr('{}', {})".format(self.op, self.lhs) def expr(x): """Shortcut to create an Expression. x is a str in which: - identifiers are automatically defined as Symbols. - ==> is treated as an infix |'==>'|, as are <== and <=>. If x is already an Expression, it is returned unchanged. Example: >>> expr('P & Q ==> Q') ((P & Q) ==> Q) """ if isinstance(x, str): return eval(expr_handle_infix_ops(x), defaultkeydict(Symbol)) else: return x infix_ops = '==> <== <=>'.split() def expr_handle_infix_ops(x): """Given a str, return a new str with ==> replaced by |'==>'|, etc. >>> expr_handle_infix_ops('P ==> Q') "P |'==>'| Q" """ for op in infix_ops: x = x.replace(op, '|' + repr(op) + '|') return x class defaultkeydict(collections.defaultdict): """Like defaultdict, but the default_factory is a function of the key. >>> d = defaultkeydict(len); d['four'] 4 """ def __missing__(self, key): self[key] = result = self.default_factory(key) return result class hashabledict(dict): """Allows hashing by representing a dictionary as tuple of key:value pairs May cause problems as the hash value may change during runtime """ def __tuplify__(self): return tuple(sorted(self.items())) def __hash__(self): return hash(self.__tuplify__()) def __lt__(self, odict): assert isinstance(odict, hashabledict) return self.__tuplify__() < odict.__tuplify__() def __gt__(self, odict): assert isinstance(odict, hashabledict) return self.__tuplify__() > odict.__tuplify__() def __le__(self, odict): assert isinstance(odict, hashabledict) return self.__tuplify__() <= odict.__tuplify__() def __ge__(self, odict): assert isinstance(odict, hashabledict) return self.__tuplify__() >= odict.__tuplify__() # ______________________________________________________________________________ # Queues: Stack, FIFOQueue, PriorityQueue # TODO: queue.PriorityQueue # TODO: Priority queues may not belong here -- see treatment in search.py class Queue: """Queue is an abstract class/interface. There are three types: Stack(): A Last In First Out Queue. FIFOQueue(): A First In First Out Queue. PriorityQueue(order, f): Queue in sorted order (default min-first). Each type supports the following methods and functions: q.append(item) -- add an item to the queue q.extend(items) -- equivalent to: for item in items: q.append(item) q.pop() -- return the top item from the queue len(q) -- number of items in q (also q.__len()) item in q -- does q contain item? Note that isinstance(Stack(), Queue) is false, because we implement stacks as lists. If Python ever gets interfaces, Queue will be an interface.""" def __init__(self): raise NotImplementedError def extend(self, items): for item in items: self.append(item) def Stack(): """Return an empty list, suitable as a Last-In-First-Out Queue.""" return [] class FIFOQueue(Queue): """A First-In-First-Out Queue.""" def __init__(self, maxlen=None, items=[]): self.queue = collections.deque(items, maxlen) def append(self, item): if not self.queue.maxlen or len(self.queue) < self.queue.maxlen: self.queue.append(item) else: raise Exception('FIFOQueue is full') def extend(self, items): if not self.queue.maxlen or len(self.queue) + len(items) <= self.queue.maxlen: self.queue.extend(items) else: raise Exception('FIFOQueue max length exceeded') def pop(self): if len(self.queue) > 0: return self.queue.popleft() else: raise Exception('FIFOQueue is empty') def __len__(self): return len(self.queue) def __contains__(self, item): return item in self.queue class PriorityQueue(Queue): """A queue in which the minimum (or maximum) element (as determined by f and order) is returned first. If order is min, the item with minimum f(x) is returned first; if order is max, then it is the item with maximum f(x). Also supports dict-like lookup.""" def __init__(self, order=min, f=lambda x: x): self.A = [] self.order = order self.f = f def append(self, item): bisect.insort(self.A, (self.f(item), item)) def __len__(self): return len(self.A) def pop(self): if self.order == min: return self.A.pop(0)[1] else: return self.A.pop()[1] def __contains__(self, item): return any(item == pair[1] for pair in self.A) def __getitem__(self, key): for _, item in self.A: if item == key: return item def __delitem__(self, key): for i, (value, item) in enumerate(self.A): if item == key: self.A.pop(i) # ______________________________________________________________________________ # Useful Shorthands class Bool(int): """Just like `bool`, except values display as 'T' and 'F' instead of 'True' and 'False'""" __str__ = __repr__ = lambda self: 'T' if self else 'F' T = Bool(True) F = Bool(False)