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578 lines
16 KiB
Python
578 lines
16 KiB
Python
8 months ago
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#!/usr/bin/env python
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# coding: utf-8
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# In[2]:
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import itertools as it
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import networkx as nx
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from collections import Counter
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import copy
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import matplotlib.pyplot as plt
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import random
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from fractions import Fraction
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import math
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def collapse(fraction):
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if fraction < 1:
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while fraction < 1:
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fraction *= Fraction(2, 1)
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elif fraction >= 2:
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while fraction >= 2:
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fraction *= Fraction(1, 2)
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return fraction
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def hsPointToFR(point):
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fraction = Fraction(1, 1)
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for dim in point:
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if dim > 0:
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fraction = fraction * dim
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else:
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fraction = fraction * 1/abs(dim)
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return fraction
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def pitches(iterable, r):
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for base in it.combinations_with_replacement(iterable, r - 1):
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split = tuple(list(g) for k, g in it.groupby(tuple(b for b in base if b != 1)))
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mults = list(it.product([-1, 1], repeat = len(split)))
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for mult in mults:
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yield tuple(it.chain(*[[val * mult[idx] for val in g] for idx, g in enumerate(split)]))
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def expandPitch(pitch):
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num = 1;
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den = 1;
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expandedPitch = list(pitch)
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for dim in pitch:
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if dim > 0:
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num *= dim
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else:
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den *= abs(dim)
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fraction = num/den
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if fraction < 1:
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while fraction < 1:
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fraction *= 2
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expandedPitch = [2] + expandedPitch
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elif fraction >= 2:
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while fraction >= 2:
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fraction *= 1/2
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expandedPitch = [-2] + expandedPitch
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return tuple(expandedPitch)
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def expandChord(chord):
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return tuple([expandPitch(p) for p in chord])
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def transposePitch(pitch, trans):
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transposedPitch = list(pitch)
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for t in trans:
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if (t * -1) in transposedPitch:
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transposedPitch.remove(t * -1)
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else:
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transposedPitch.append(t)
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transposedPitch.sort(key=lambda val: abs(val))
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return transposedPitch
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def transposeChord(chord, trans):
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transposedChord = list(chord)
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for pdx, pitch in enumerate(chord):
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transposedPitch = transposePitch(pitch, trans)
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transposedChord[pdx] = tuple(transposedPitch)
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return tuple(transposedChord)
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def chords(pitches, r):
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def is_connected(iterable):
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points = comparitors = list(iterable)
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connectedPoints = []
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base = points[0]
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bIdxScroll = 0
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while True:
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for comp in comparitors:
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comps = sorted([base, comp], key=len, reverse=True)
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if ((Counter(comps[0]) - Counter(comps[1])).total() == 1) and (len(comps[0]) - len(comps[1]) == 1):
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comparitors = connectedPoints = connectedPoints + comps
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points.remove(base)
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if comp in points:
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points.remove(comp)
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if(len(points) == 0):
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return True
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else:
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base = points[0]
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bIdxScroll = 0
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break
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else:
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if bIdxScroll < (len(points) - 1):
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bIdxScroll += 1
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base = points[bIdxScroll]
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else:
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return False
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def is_centered(iterable):
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return len(list(iterable)[0]) == 0
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#return filter(is_connected, it.takewhile(is_centered, it.combinations(pitches, r)))
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return {c for c in it.takewhile(is_centered, it.combinations(pitches, r)) if is_connected(c)}
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def pitchDifference(frs):
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cents1 = (1200 * math.log(hsPointToFR(frs[0]), 2))
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cents2 = (1200 * math.log(hsPointToFR(frs[1]), 2))
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return abs(cents2 - cents1)
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def difference(p1, p2):
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return transposePitch(p1, [p * -1 for p in p2])
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def edges(chords):
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def edgeDict(transposition, symDiff):
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dict = {}
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dict['melodic_movement'] = pitchDifference(symDiff)
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dict['transposition'] = transposition
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return dict
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def reverseDict(dict):
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revDict = copy.deepcopy(dict)
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if revDict['transposition'] != ():
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revDict['transposition'] = tuple(t * -1 for t in revDict['transposition'])
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return revDict
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def edgeData(iterable):
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[base, comp] = list(iterable)
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expandedBase = expandChord(base)
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expandedComp = expandChord(comp)
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transpositions = set([tuple(difference(pair[0], pair[1])) for pair in set(it.product(expandedBase, expandedComp))])
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edges = [(expandedBase, expandedComp, edgeDict(t, symDiff)) for t in transpositions if len(symDiff := list(set(expandedBase) ^ set(tChord := transposeChord(expandedComp, t)))) == 2]
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edges = edges + [(e[1], e[0], reverseDict(e[2])) for e in edges]
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if edges != []:
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return edges
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else:
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return None
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return list(it.chain(*[e for c in it.combinations(chords, 2) if (e := edgeData(c)) is not None]))
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def graph(edges):
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G = nx.MultiDiGraph()
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G.add_edges_from(edges)
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return G
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def hamiltonian(G):
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F = [(G,[list(G.nodes())[0]])]
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n = G.number_of_nodes()
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while F:
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graph,path = F.pop()
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confs = []
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neighbors = (node for node in graph.neighbors(path[-1])
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if node != path[-1]) #exclude self loops
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for neighbor in neighbors:
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conf_p = path[:]
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conf_p.append(neighbor)
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conf_g = nx.Graph(graph)
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conf_g.remove_node(path[-1])
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confs.append((conf_g,conf_p))
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for g,p in confs:
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if len(p)==n:
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return p
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else:
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F.append((g,p))
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return None
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def stochastic_hamiltonian(graph):
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check_graph = graph.copy()
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#next_node = random.choice(list(graph.nodes()))
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next_node = list(graph.nodes())[0]
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check_graph.remove_node(next_node)
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path = [next_node]
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while (nx.number_of_nodes(check_graph) > 0) and (len(path) < 5000):
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neighbors = graph[next_node]
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nd_list = list(graph.degree(list(neighbors)))
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neighbors, weights = zip(*[[n, 1/pow(d, 2) if n not in path else 0.0000001] for n, d in nd_list])
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next_node = random.choices(neighbors, weights=weights)[0]
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path.append(next_node)
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if next_node in check_graph.nodes:
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check_graph.remove_node(next_node)
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return [path, check_graph]
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def stochastic_hamiltonian(graph):
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check_graph = graph.copy()
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#next_node = random.choice(list(graph.nodes()))
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next_node = list(graph.nodes())[0]
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check_graph.remove_node(next_node)
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path = []
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while (nx.number_of_nodes(check_graph) > 0) and (len(path) < 5000):
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outEdges = list(graph.out_edges(next_node, data=True))
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weights = [(1 if e[2]['melodic_movement'] < 200 else 0.001) * (1 if e[1] not in [pE[0] for pE in path] else 0.0000001) for e in outEdges]
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edge = random.choices(outEdges, weights=weights)[0]
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next_node = edge[1]
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path.append(edge)
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if next_node in check_graph.nodes:
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check_graph.remove_node(next_node)
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return path
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# In[3]:
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pSet = pitches([1, 3, 5], 4)
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#print(len(list(pSet)))
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cSet = chords(pSet, 4)
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#print(cSet)
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eSet = edges(cSet)
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#for e in eSet:
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# print(e)
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testGraph = graph(eSet)
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# In[4]:
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len(testGraph.nodes)
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# In[5]:
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len(testGraph.edges)
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# In[6]:
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sGraph = nx.Graph(testGraph)
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pos = nx.draw_spring(sGraph, node_size=5, width=0.1)
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# larger figure size
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plt.figure(1, figsize=(12,12))
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nx.draw(sGraph, pos, node_size=5, width=0.1)
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#plt.show()
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plt.savefig('compact_sets.png', dpi=150)
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# In[7]:
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def reconcilePath(ham):
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def sortByOther(c1, c2, trans):
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indices = list(range(len(c1)))
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sortedChord = copy.deepcopy(c2)
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for pitch in c2:
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transposedPitch = tuple(transposePitch(pitch, trans))
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if transposedPitch in c1:
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index = c1.index(transposedPitch)
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sortedChord[index] = pitch
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indices.remove(index)
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else:
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diff = pitch
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sortedChord[indices[0]] = diff
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return sortedChord
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rPath = [[[], [list(p) for p in ham[0][0]]]]
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for cdx in range(len(ham)-1):
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c1 = list(ham[cdx][0])
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c2 = list(ham[cdx][1])
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trans = list(ham[cdx][2]['transposition'])
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c2 = sortByOther(c1, c2, trans)
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ham[cdx+1][0] = c2
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rPath.append([trans, [list(p) for p in c2]])
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return rPath
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ham = stochastic_hamiltonian(testGraph)
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ham = [list(e) for e in ham]
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print(len(ham))
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for e in ham:
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print(e)
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rPath = reconcilePath(ham)
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rPath
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# In[8]:
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def pathToChords(path):
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curRoot = Fraction(1, 1)
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chords = []
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for trans, points in path:
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curRoot = curRoot * hsPointToFR(trans)
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chord = [float(curRoot * hsPointToFR(p)) for p in points]
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chords.append(chord)
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return chords
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fPath = pathToChords(rPath)
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len(set([tuple(p) for p in fPath]))
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fPath
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# In[284]:
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# Opening a file in write mode{
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file = open("seq.txt", "w+")
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# Converting the array to a string and writing to the file
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content = str(fPath)
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file.write(content)
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# Closing the file
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file.close()
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# In[279]:
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for edge in list(testGraph.edges(data=True))[:1000]:
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print(edge)
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# In[161]:
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import networkx as nx
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from matplotlib import pyplot as plt
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import math
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G = nx.grid_graph(dim=(range(-3, 4), range(-3, 4)))
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def getLabel(x, y):
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num = 1
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den = 1
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if x >= 0:
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num *= math.pow(3, x)
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else:
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den *= math.pow(3, abs(x))
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if y >= 0:
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num *= math.pow(2, y)
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else:
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den *= math.pow(2, abs(y))
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return str(int(num)) + "/" + str(int(den))
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plt.figure(figsize=(10 * math.log2(3), 10 * math.log2(2)))
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#plt.figure(figsize=(10, 10))
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pos = {(x, y):(x * math.log2(3), y * math.log2(2)) for x,y in G.nodes()}
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labels = {(x, y):getLabel(x, y) for x,y in G.nodes()}
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nx.draw_networkx_labels(G, pos, labels=labels)
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nx.draw(G, pos=pos,
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node_color='white',
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with_labels=False,
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node_size=1000)
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# In[160]:
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import networkx as nx
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from matplotlib import pyplot as plt
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import math
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G = nx.grid_graph(dim=(range(-2, 3), range(-2, 3)))
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def collapseLabel(fraction):
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if fraction < 1:
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while fraction < 1:
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fraction *= Fraction(2, 1)
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elif fraction >= 2:
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while fraction >= 2:
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fraction *= Fraction(1, 2)
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return fraction
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def getLabel(x, y):
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num = 1
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den = 1
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if x >= 0:
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num *= math.pow(5, x)
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else:
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den *= math.pow(5, abs(x))
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if y >= 0:
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num *= math.pow(3, y)
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else:
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den *= math.pow(3, abs(y))
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fraction = collapse(Fraction(int(num), int(den)))
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num = fraction.numerator
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den = fraction.denominator
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return str(int(num)) + "/" + str(int(den))
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plt.figure(figsize=(5 * math.log2(5), 5 * math.log2(3)))
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#plt.figure(figsize=(10, 10))
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pos = {(x, y):(x, y) for x,y in G.nodes()}
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labels = {(x, y):getLabel(x, y) for x,y in G.nodes()}
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nx.draw_networkx_labels(G, pos, labels=labels)
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nx.draw(G, pos=pos,
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node_color='white',
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with_labels=False,
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node_size=2000)
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# In[44]:
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for node in list(testGraph.nodes)[2:3]:
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edges = list(testGraph.out_edges(node, data=True))
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for edge in edges:
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if list(edge)[2]['transposition'] != ():
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print(edge)
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# In[251]:
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import networkx as nx
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import numpy as np
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import matplotlib.pyplot as plt
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from mpl_toolkits.mplot3d import Axes3D
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# The graph to visualize
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G = nx.grid_graph(dim=(range(-1, 2), range(-1, 2), range(-1, 2)))
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# 3d spring layout
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#pos = nx.spring_layout(G, dim=3, seed=779)
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pos = {(x, y, z):(math.log2(2) * x, math.log2(3) * y, math.log2(5) * z) for x,y,z in G.nodes()}
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# Extract node and edge positions from the layout
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node_xyz = np.array([pos[v] for v in sorted(G)])
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edge_xyz = np.array([(pos[u], pos[v]) for u, v in G.edges()])
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# Create the 3D figure
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fig = plt.figure(figsize=(10, 10))
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ax = fig.add_subplot(111, projection="3d")
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# Plot the nodes - alpha is scaled by "depth" automatically
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ax.scatter(*node_xyz.T, s=100, ec="w")
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ax.view_init(elev=30, azim=45, roll=15)
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ax.axis('equal')
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# Plot the edges
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for vizedge in edge_xyz:
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ax.plot(*vizedge.T, color="tab:gray")
|
||
|
|
||
|
|
||
|
def _format_axes(ax):
|
||
|
"""Visualization options for the 3D axes."""
|
||
|
# Turn gridlines off
|
||
|
ax.grid(False)
|
||
|
# Suppress tick labels
|
||
|
for dim in (ax.xaxis, ax.yaxis, ax.zaxis):
|
||
|
dim.set_ticks([])
|
||
|
# Set axes labels
|
||
|
ax.set_xlabel("x")
|
||
|
ax.set_ylabel("y")
|
||
|
ax.set_zlabel("z")
|
||
|
|
||
|
|
||
|
_format_axes(ax)
|
||
|
fig.tight_layout()
|
||
|
plt.show()
|
||
|
|
||
|
|
||
|
# In[31]:
|
||
|
|
||
|
|
||
|
from tikzpy import TikzPicture
|
||
|
|
||
|
def collapseLabel(fraction):
|
||
|
if fraction < 1:
|
||
|
while fraction < 1:
|
||
|
fraction *= Fraction(2, 1)
|
||
|
elif fraction >= 2:
|
||
|
while fraction >= 2:
|
||
|
fraction *= Fraction(1, 2)
|
||
|
return fraction
|
||
|
|
||
|
def getLabel(x, y, z, collapse = False):
|
||
|
num = 1
|
||
|
den = 1
|
||
|
if x >= 0:
|
||
|
num *= math.pow(3, x)
|
||
|
else:
|
||
|
den *= math.pow(3, abs(x))
|
||
|
|
||
|
if y >= 0:
|
||
|
num *= math.pow(5, y)
|
||
|
else:
|
||
|
den *= math.pow(5, abs(y))
|
||
|
|
||
|
if z >= 0:
|
||
|
num *= math.pow(2, z)
|
||
|
else:
|
||
|
den *= math.pow(2, abs(z))
|
||
|
if collapse:
|
||
|
fraction = collapseLabel(Fraction(int(num), int(den)))
|
||
|
else:
|
||
|
fraction = Fraction(int(num), int(den))
|
||
|
num = fraction.numerator
|
||
|
den = fraction.denominator
|
||
|
return str(int(num)) + "/" + str(int(den))
|
||
|
|
||
|
def chord2Points(chord):
|
||
|
points = []
|
||
|
for n in chord:
|
||
|
counter = Counter(n)
|
||
|
points.append(tuple([counter[d] - counter[-d] for d in [2, 3, 5]]))
|
||
|
return tuple(points)
|
||
|
|
||
|
def genLattice(chord = None, ranges = None, filename = "tikz", collapse = False, scale = 1):
|
||
|
|
||
|
dx = math.log2(3) * scale
|
||
|
dy = math.log2(5) * scale
|
||
|
dz = math.log2(2) * scale
|
||
|
|
||
|
if chord:
|
||
|
set = chord2Points(chord)
|
||
|
|
||
|
if ranges:
|
||
|
rz,rx,ry = ranges
|
||
|
else:
|
||
|
rz,rx,ry = [[min(t), max(t) + 1] for t in list(zip(*set))]
|
||
|
|
||
|
if collapse:
|
||
|
rz = [0, 1]
|
||
|
|
||
|
tikz = TikzPicture(center=True)
|
||
|
tikz.set_tdplotsetmaincoords(30, -30)
|
||
|
tikz.options = "tdplot_main_coords"
|
||
|
|
||
|
for x in range(*rx):
|
||
|
for y in range(*ry):
|
||
|
for z in range(*rz):
|
||
|
line = tikz.line((x * dx - dx / 2, y * dy, z * dz), (x * dx + dx / 2, y * dy, z * dz), options="thick, black, -")
|
||
|
line = tikz.line((x * dx, y * dy - dy / 2, z * dz), (x * dx, y * dy + dy / 2, z * dz), options="thick, black, -")
|
||
|
if not collapse:
|
||
|
line = tikz.line((x * dx, y * dy, z * dz - dz / 2), (x * dx, y * dy, z * dz + dz / 2), options="thick, black, -")
|
||
|
node = tikz.node((x * dx, y * dy, z * dz), options="draw, fill=white, scale=0.5", text=getLabel(x,y,z, collapse))
|
||
|
|
||
|
if chord:
|
||
|
for e in set:
|
||
|
z,x,y = e
|
||
|
if collapse:
|
||
|
z = 0
|
||
|
line = tikz.line((x * dx - dx / 2, y * dy, z * dz), (x * dx + dx / 2, y * dy, z * dz), options="thick, black, -")
|
||
|
line = tikz.line((x * dx, y * dy - dy / 2, z * dz), (x * dx, y * dy + dy / 2, z * dz), options="thick, black, -")
|
||
|
if not collapse:
|
||
|
line = tikz.line((x * dx, y * dy, z * dz - dz / 2), (x * dx, y * dy, z * dz + dz / 2), options="thick, black, -")
|
||
|
node = tikz.node((x * dx, y * dy, z * dz), options="draw, fill=yellow, scale=0.5", text=getLabel(x,y,z, collapse))
|
||
|
|
||
|
tikz.compile(filename + ".pdf", True)
|
||
|
|
||
|
texFile = open(filename + ".tex", "w+")
|
||
|
texFile.write(tikz.code())
|
||
|
texFile.close()
|
||
|
|
||
|
|
||
|
# In[72]:
|
||
|
|
||
|
|
||
|
edge = (((), (-2, 3), (2, 3, -5), (3, 3, -5)), ((), (2, 2, -3), (-2, 3), (-2, -2, 5)), {'melodic_movement': 813.6862861351653, 'transposition': (2, 3, -5)})
|
||
|
chord = transposeChord(edge[0], (-2, -3, 5))
|
||
|
#genLattice(chord, path="figure.pdf", collapse=False)
|
||
|
genLattice(chord, ranges=[[-2, 2], [-2, 2], [-2, 2]], filename="compact_set_1_transposed_expanded_padded", collapse=False, scale=2)
|
||
|
|
||
|
|
||
|
# In[79]:
|
||
|
|
||
|
|
||
|
edge = (((), (-2, 3), (2, 3, -5), (3, 3, -5)), ((), (2, 2, -3), (-2, 3), (-2, -2, 5)), {'melodic_movement': 813.6862861351653, 'transposition': (2, 3, -5)})
|
||
|
chord = transposeChord(edge[0], (-2, -3, 5))
|
||
|
#genLattice(chord, path="figure.pdf", collapse=False)
|
||
|
genLattice(chord, ranges=[[-2, 2], [-1, 3], [-1, 2]], filename="compact_set_1_transposed_expanded_padded", collapse=False, scale=2)
|
||
|
|
||
|
|
||
|
# In[80]:
|
||
|
|
||
|
|
||
|
edge = (((), (-2, 3), (2, 3, -5), (3, 3, -5)), ((), (2, 2, -3), (-2, 3), (-2, -2, 5)), {'melodic_movement': 813.6862861351653, 'transposition': (2, 3, -5)})
|
||
|
chord = edge[0]
|
||
|
#genLattice(chord, path="figure.pdf", collapse=False)
|
||
|
genLattice(chord, ranges=[[-2, 2], [-1, 3], [-1, 2]], filename="compact_set_1_expanded_padded", collapse=False, scale=2)
|
||
|
|