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author | S. Solomon Darnell | 2025-03-28 21:52:21 -0500 |
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committer | S. Solomon Darnell | 2025-03-28 21:52:21 -0500 |
commit | 4a52a71956a8d46fcb7294ac71734504bb09bcc2 (patch) | |
tree | ee3dc5af3b6313e921cd920906356f5d4febc4ed /.venv/lib/python3.12/site-packages/networkx/drawing/tests/test_layout.py | |
parent | cc961e04ba734dd72309fb548a2f97d67d578813 (diff) | |
download | gn-ai-master.tar.gz |
Diffstat (limited to '.venv/lib/python3.12/site-packages/networkx/drawing/tests/test_layout.py')
-rw-r--r-- | .venv/lib/python3.12/site-packages/networkx/drawing/tests/test_layout.py | 538 |
1 files changed, 538 insertions, 0 deletions
diff --git a/.venv/lib/python3.12/site-packages/networkx/drawing/tests/test_layout.py b/.venv/lib/python3.12/site-packages/networkx/drawing/tests/test_layout.py new file mode 100644 index 00000000..7f0412ce --- /dev/null +++ b/.venv/lib/python3.12/site-packages/networkx/drawing/tests/test_layout.py @@ -0,0 +1,538 @@ +"""Unit tests for layout functions.""" + +import pytest + +import networkx as nx + +np = pytest.importorskip("numpy") +pytest.importorskip("scipy") + + +class TestLayout: + @classmethod + def setup_class(cls): + cls.Gi = nx.grid_2d_graph(5, 5) + cls.Gs = nx.Graph() + nx.add_path(cls.Gs, "abcdef") + cls.bigG = nx.grid_2d_graph(25, 25) # > 500 nodes for sparse + + def test_spring_fixed_without_pos(self): + G = nx.path_graph(4) + pytest.raises(ValueError, nx.spring_layout, G, fixed=[0]) + pos = {0: (1, 1), 2: (0, 0)} + pytest.raises(ValueError, nx.spring_layout, G, fixed=[0, 1], pos=pos) + nx.spring_layout(G, fixed=[0, 2], pos=pos) # No ValueError + + def test_spring_init_pos(self): + # Tests GH #2448 + import math + + G = nx.Graph() + G.add_edges_from([(0, 1), (1, 2), (2, 0), (2, 3)]) + + init_pos = {0: (0.0, 0.0)} + fixed_pos = [0] + pos = nx.fruchterman_reingold_layout(G, pos=init_pos, fixed=fixed_pos) + has_nan = any(math.isnan(c) for coords in pos.values() for c in coords) + assert not has_nan, "values should not be nan" + + def test_smoke_empty_graph(self): + G = [] + nx.random_layout(G) + nx.circular_layout(G) + nx.planar_layout(G) + nx.spring_layout(G) + nx.fruchterman_reingold_layout(G) + nx.spectral_layout(G) + nx.shell_layout(G) + nx.bipartite_layout(G, G) + nx.spiral_layout(G) + nx.multipartite_layout(G) + nx.kamada_kawai_layout(G) + + def test_smoke_int(self): + G = self.Gi + nx.random_layout(G) + nx.circular_layout(G) + nx.planar_layout(G) + nx.spring_layout(G) + nx.forceatlas2_layout(G) + nx.fruchterman_reingold_layout(G) + nx.fruchterman_reingold_layout(self.bigG) + nx.spectral_layout(G) + nx.spectral_layout(G.to_directed()) + nx.spectral_layout(self.bigG) + nx.spectral_layout(self.bigG.to_directed()) + nx.shell_layout(G) + nx.spiral_layout(G) + nx.kamada_kawai_layout(G) + nx.kamada_kawai_layout(G, dim=1) + nx.kamada_kawai_layout(G, dim=3) + nx.arf_layout(G) + + def test_smoke_string(self): + G = self.Gs + nx.random_layout(G) + nx.circular_layout(G) + nx.planar_layout(G) + nx.spring_layout(G) + nx.forceatlas2_layout(G) + nx.fruchterman_reingold_layout(G) + nx.spectral_layout(G) + nx.shell_layout(G) + nx.spiral_layout(G) + nx.kamada_kawai_layout(G) + nx.kamada_kawai_layout(G, dim=1) + nx.kamada_kawai_layout(G, dim=3) + nx.arf_layout(G) + + def check_scale_and_center(self, pos, scale, center): + center = np.array(center) + low = center - scale + hi = center + scale + vpos = np.array(list(pos.values())) + length = vpos.max(0) - vpos.min(0) + assert (length <= 2 * scale).all() + assert (vpos >= low).all() + assert (vpos <= hi).all() + + def test_scale_and_center_arg(self): + sc = self.check_scale_and_center + c = (4, 5) + G = nx.complete_graph(9) + G.add_node(9) + sc(nx.random_layout(G, center=c), scale=0.5, center=(4.5, 5.5)) + # rest can have 2*scale length: [-scale, scale] + sc(nx.spring_layout(G, scale=2, center=c), scale=2, center=c) + sc(nx.spectral_layout(G, scale=2, center=c), scale=2, center=c) + sc(nx.circular_layout(G, scale=2, center=c), scale=2, center=c) + sc(nx.shell_layout(G, scale=2, center=c), scale=2, center=c) + sc(nx.spiral_layout(G, scale=2, center=c), scale=2, center=c) + sc(nx.kamada_kawai_layout(G, scale=2, center=c), scale=2, center=c) + + c = (2, 3, 5) + sc(nx.kamada_kawai_layout(G, dim=3, scale=2, center=c), scale=2, center=c) + + def test_planar_layout_non_planar_input(self): + G = nx.complete_graph(9) + pytest.raises(nx.NetworkXException, nx.planar_layout, G) + + def test_smoke_planar_layout_embedding_input(self): + embedding = nx.PlanarEmbedding() + embedding.set_data({0: [1, 2], 1: [0, 2], 2: [0, 1]}) + nx.planar_layout(embedding) + + def test_default_scale_and_center(self): + sc = self.check_scale_and_center + c = (0, 0) + G = nx.complete_graph(9) + G.add_node(9) + sc(nx.random_layout(G), scale=0.5, center=(0.5, 0.5)) + sc(nx.spring_layout(G), scale=1, center=c) + sc(nx.spectral_layout(G), scale=1, center=c) + sc(nx.circular_layout(G), scale=1, center=c) + sc(nx.shell_layout(G), scale=1, center=c) + sc(nx.spiral_layout(G), scale=1, center=c) + sc(nx.kamada_kawai_layout(G), scale=1, center=c) + + c = (0, 0, 0) + sc(nx.kamada_kawai_layout(G, dim=3), scale=1, center=c) + + def test_circular_planar_and_shell_dim_error(self): + G = nx.path_graph(4) + pytest.raises(ValueError, nx.circular_layout, G, dim=1) + pytest.raises(ValueError, nx.shell_layout, G, dim=1) + pytest.raises(ValueError, nx.shell_layout, G, dim=3) + pytest.raises(ValueError, nx.planar_layout, G, dim=1) + pytest.raises(ValueError, nx.planar_layout, G, dim=3) + + def test_adjacency_interface_numpy(self): + A = nx.to_numpy_array(self.Gs) + pos = nx.drawing.layout._fruchterman_reingold(A) + assert pos.shape == (6, 2) + pos = nx.drawing.layout._fruchterman_reingold(A, dim=3) + assert pos.shape == (6, 3) + pos = nx.drawing.layout._sparse_fruchterman_reingold(A) + assert pos.shape == (6, 2) + + def test_adjacency_interface_scipy(self): + A = nx.to_scipy_sparse_array(self.Gs, dtype="d") + pos = nx.drawing.layout._sparse_fruchterman_reingold(A) + assert pos.shape == (6, 2) + pos = nx.drawing.layout._sparse_spectral(A) + assert pos.shape == (6, 2) + pos = nx.drawing.layout._sparse_fruchterman_reingold(A, dim=3) + assert pos.shape == (6, 3) + + def test_single_nodes(self): + G = nx.path_graph(1) + vpos = nx.shell_layout(G) + assert not vpos[0].any() + G = nx.path_graph(4) + vpos = nx.shell_layout(G, [[0], [1, 2], [3]]) + assert not vpos[0].any() + assert vpos[3].any() # ensure node 3 not at origin (#3188) + assert np.linalg.norm(vpos[3]) <= 1 # ensure node 3 fits (#3753) + vpos = nx.shell_layout(G, [[0], [1, 2], [3]], rotate=0) + assert np.linalg.norm(vpos[3]) <= 1 # ensure node 3 fits (#3753) + + def test_smoke_initial_pos_forceatlas2(self): + pos = nx.circular_layout(self.Gi) + npos = nx.forceatlas2_layout(self.Gi, pos=pos) + + def test_smoke_initial_pos_fruchterman_reingold(self): + pos = nx.circular_layout(self.Gi) + npos = nx.fruchterman_reingold_layout(self.Gi, pos=pos) + + def test_smoke_initial_pos_arf(self): + pos = nx.circular_layout(self.Gi) + npos = nx.arf_layout(self.Gi, pos=pos) + + def test_fixed_node_fruchterman_reingold(self): + # Dense version (numpy based) + pos = nx.circular_layout(self.Gi) + npos = nx.spring_layout(self.Gi, pos=pos, fixed=[(0, 0)]) + assert tuple(pos[(0, 0)]) == tuple(npos[(0, 0)]) + # Sparse version (scipy based) + pos = nx.circular_layout(self.bigG) + npos = nx.spring_layout(self.bigG, pos=pos, fixed=[(0, 0)]) + for axis in range(2): + assert pos[(0, 0)][axis] == pytest.approx(npos[(0, 0)][axis], abs=1e-7) + + def test_center_parameter(self): + G = nx.path_graph(1) + nx.random_layout(G, center=(1, 1)) + vpos = nx.circular_layout(G, center=(1, 1)) + assert tuple(vpos[0]) == (1, 1) + vpos = nx.planar_layout(G, center=(1, 1)) + assert tuple(vpos[0]) == (1, 1) + vpos = nx.spring_layout(G, center=(1, 1)) + assert tuple(vpos[0]) == (1, 1) + vpos = nx.fruchterman_reingold_layout(G, center=(1, 1)) + assert tuple(vpos[0]) == (1, 1) + vpos = nx.spectral_layout(G, center=(1, 1)) + assert tuple(vpos[0]) == (1, 1) + vpos = nx.shell_layout(G, center=(1, 1)) + assert tuple(vpos[0]) == (1, 1) + vpos = nx.spiral_layout(G, center=(1, 1)) + assert tuple(vpos[0]) == (1, 1) + + def test_center_wrong_dimensions(self): + G = nx.path_graph(1) + assert id(nx.spring_layout) == id(nx.fruchterman_reingold_layout) + pytest.raises(ValueError, nx.random_layout, G, center=(1, 1, 1)) + pytest.raises(ValueError, nx.circular_layout, G, center=(1, 1, 1)) + pytest.raises(ValueError, nx.planar_layout, G, center=(1, 1, 1)) + pytest.raises(ValueError, nx.spring_layout, G, center=(1, 1, 1)) + pytest.raises(ValueError, nx.spring_layout, G, dim=3, center=(1, 1)) + pytest.raises(ValueError, nx.spectral_layout, G, center=(1, 1, 1)) + pytest.raises(ValueError, nx.spectral_layout, G, dim=3, center=(1, 1)) + pytest.raises(ValueError, nx.shell_layout, G, center=(1, 1, 1)) + pytest.raises(ValueError, nx.spiral_layout, G, center=(1, 1, 1)) + pytest.raises(ValueError, nx.kamada_kawai_layout, G, center=(1, 1, 1)) + + def test_empty_graph(self): + G = nx.empty_graph() + vpos = nx.random_layout(G, center=(1, 1)) + assert vpos == {} + vpos = nx.circular_layout(G, center=(1, 1)) + assert vpos == {} + vpos = nx.planar_layout(G, center=(1, 1)) + assert vpos == {} + vpos = nx.bipartite_layout(G, G) + assert vpos == {} + vpos = nx.spring_layout(G, center=(1, 1)) + assert vpos == {} + vpos = nx.fruchterman_reingold_layout(G, center=(1, 1)) + assert vpos == {} + vpos = nx.spectral_layout(G, center=(1, 1)) + assert vpos == {} + vpos = nx.shell_layout(G, center=(1, 1)) + assert vpos == {} + vpos = nx.spiral_layout(G, center=(1, 1)) + assert vpos == {} + vpos = nx.multipartite_layout(G, center=(1, 1)) + assert vpos == {} + vpos = nx.kamada_kawai_layout(G, center=(1, 1)) + assert vpos == {} + vpos = nx.forceatlas2_layout(G) + assert vpos == {} + vpos = nx.arf_layout(G) + assert vpos == {} + + def test_bipartite_layout(self): + G = nx.complete_bipartite_graph(3, 5) + top, bottom = nx.bipartite.sets(G) + + vpos = nx.bipartite_layout(G, top) + assert len(vpos) == len(G) + + top_x = vpos[list(top)[0]][0] + bottom_x = vpos[list(bottom)[0]][0] + for node in top: + assert vpos[node][0] == top_x + for node in bottom: + assert vpos[node][0] == bottom_x + + vpos = nx.bipartite_layout( + G, top, align="horizontal", center=(2, 2), scale=2, aspect_ratio=1 + ) + assert len(vpos) == len(G) + + top_y = vpos[list(top)[0]][1] + bottom_y = vpos[list(bottom)[0]][1] + for node in top: + assert vpos[node][1] == top_y + for node in bottom: + assert vpos[node][1] == bottom_y + + pytest.raises(ValueError, nx.bipartite_layout, G, top, align="foo") + + def test_multipartite_layout(self): + sizes = (0, 5, 7, 2, 8) + G = nx.complete_multipartite_graph(*sizes) + + vpos = nx.multipartite_layout(G) + assert len(vpos) == len(G) + + start = 0 + for n in sizes: + end = start + n + assert all(vpos[start][0] == vpos[i][0] for i in range(start + 1, end)) + start += n + + vpos = nx.multipartite_layout(G, align="horizontal", scale=2, center=(2, 2)) + assert len(vpos) == len(G) + + start = 0 + for n in sizes: + end = start + n + assert all(vpos[start][1] == vpos[i][1] for i in range(start + 1, end)) + start += n + + pytest.raises(ValueError, nx.multipartite_layout, G, align="foo") + + def test_kamada_kawai_costfn_1d(self): + costfn = nx.drawing.layout._kamada_kawai_costfn + + pos = np.array([4.0, 7.0]) + invdist = 1 / np.array([[0.1, 2.0], [2.0, 0.3]]) + + cost, grad = costfn(pos, np, invdist, meanweight=0, dim=1) + + assert cost == pytest.approx(((3 / 2.0 - 1) ** 2), abs=1e-7) + assert grad[0] == pytest.approx((-0.5), abs=1e-7) + assert grad[1] == pytest.approx(0.5, abs=1e-7) + + def check_kamada_kawai_costfn(self, pos, invdist, meanwt, dim): + costfn = nx.drawing.layout._kamada_kawai_costfn + + cost, grad = costfn(pos.ravel(), np, invdist, meanweight=meanwt, dim=dim) + + expected_cost = 0.5 * meanwt * np.sum(np.sum(pos, axis=0) ** 2) + for i in range(pos.shape[0]): + for j in range(i + 1, pos.shape[0]): + diff = np.linalg.norm(pos[i] - pos[j]) + expected_cost += (diff * invdist[i][j] - 1.0) ** 2 + + assert cost == pytest.approx(expected_cost, abs=1e-7) + + dx = 1e-4 + for nd in range(pos.shape[0]): + for dm in range(pos.shape[1]): + idx = nd * pos.shape[1] + dm + ps = pos.flatten() + + ps[idx] += dx + cplus = costfn(ps, np, invdist, meanweight=meanwt, dim=pos.shape[1])[0] + + ps[idx] -= 2 * dx + cminus = costfn(ps, np, invdist, meanweight=meanwt, dim=pos.shape[1])[0] + + assert grad[idx] == pytest.approx((cplus - cminus) / (2 * dx), abs=1e-5) + + def test_kamada_kawai_costfn(self): + invdist = 1 / np.array([[0.1, 2.1, 1.7], [2.1, 0.2, 0.6], [1.7, 0.6, 0.3]]) + meanwt = 0.3 + + # 2d + pos = np.array([[1.3, -3.2], [2.7, -0.3], [5.1, 2.5]]) + + self.check_kamada_kawai_costfn(pos, invdist, meanwt, 2) + + # 3d + pos = np.array([[0.9, 8.6, -8.7], [-10, -0.5, -7.1], [9.1, -8.1, 1.6]]) + + self.check_kamada_kawai_costfn(pos, invdist, meanwt, 3) + + def test_spiral_layout(self): + G = self.Gs + + # a lower value of resolution should result in a more compact layout + # intuitively, the total distance from the start and end nodes + # via each node in between (transiting through each) will be less, + # assuming rescaling does not occur on the computed node positions + pos_standard = np.array(list(nx.spiral_layout(G, resolution=0.35).values())) + pos_tighter = np.array(list(nx.spiral_layout(G, resolution=0.34).values())) + distances = np.linalg.norm(pos_standard[:-1] - pos_standard[1:], axis=1) + distances_tighter = np.linalg.norm(pos_tighter[:-1] - pos_tighter[1:], axis=1) + assert sum(distances) > sum(distances_tighter) + + # return near-equidistant points after the first value if set to true + pos_equidistant = np.array(list(nx.spiral_layout(G, equidistant=True).values())) + distances_equidistant = np.linalg.norm( + pos_equidistant[:-1] - pos_equidistant[1:], axis=1 + ) + assert np.allclose( + distances_equidistant[1:], distances_equidistant[-1], atol=0.01 + ) + + def test_spiral_layout_equidistant(self): + G = nx.path_graph(10) + pos = nx.spiral_layout(G, equidistant=True) + # Extract individual node positions as an array + p = np.array(list(pos.values())) + # Elementwise-distance between node positions + dist = np.linalg.norm(p[1:] - p[:-1], axis=1) + assert np.allclose(np.diff(dist), 0, atol=1e-3) + + def test_forceatlas2_layout_partial_input_test(self): + # check whether partial pos input still returns a full proper position + G = self.Gs + node = nx.utils.arbitrary_element(G) + pos = nx.circular_layout(G) + del pos[node] + pos = nx.forceatlas2_layout(G, pos=pos) + assert len(pos) == len(G) + + def test_rescale_layout_dict(self): + G = nx.empty_graph() + vpos = nx.random_layout(G, center=(1, 1)) + assert nx.rescale_layout_dict(vpos) == {} + + G = nx.empty_graph(2) + vpos = {0: (0.0, 0.0), 1: (1.0, 1.0)} + s_vpos = nx.rescale_layout_dict(vpos) + assert np.linalg.norm([sum(x) for x in zip(*s_vpos.values())]) < 1e-6 + + G = nx.empty_graph(3) + vpos = {0: (0, 0), 1: (1, 1), 2: (0.5, 0.5)} + s_vpos = nx.rescale_layout_dict(vpos) + + expectation = { + 0: np.array((-1, -1)), + 1: np.array((1, 1)), + 2: np.array((0, 0)), + } + for k, v in expectation.items(): + assert (s_vpos[k] == v).all() + s_vpos = nx.rescale_layout_dict(vpos, scale=2) + expectation = { + 0: np.array((-2, -2)), + 1: np.array((2, 2)), + 2: np.array((0, 0)), + } + for k, v in expectation.items(): + assert (s_vpos[k] == v).all() + + def test_arf_layout_partial_input_test(self): + # Checks whether partial pos input still returns a proper position. + G = self.Gs + node = nx.utils.arbitrary_element(G) + pos = nx.circular_layout(G) + del pos[node] + pos = nx.arf_layout(G, pos=pos) + assert len(pos) == len(G) + + def test_arf_layout_negative_a_check(self): + """ + Checks input parameters correctly raises errors. For example, `a` should be larger than 1 + """ + G = self.Gs + pytest.raises(ValueError, nx.arf_layout, G=G, a=-1) + + def test_smoke_seed_input(self): + G = self.Gs + nx.random_layout(G, seed=42) + nx.spring_layout(G, seed=42) + nx.arf_layout(G, seed=42) + nx.forceatlas2_layout(G, seed=42) + + +def test_multipartite_layout_nonnumeric_partition_labels(): + """See gh-5123.""" + G = nx.Graph() + G.add_node(0, subset="s0") + G.add_node(1, subset="s0") + G.add_node(2, subset="s1") + G.add_node(3, subset="s1") + G.add_edges_from([(0, 2), (0, 3), (1, 2)]) + pos = nx.multipartite_layout(G) + assert len(pos) == len(G) + + +def test_multipartite_layout_layer_order(): + """Return the layers in sorted order if the layers of the multipartite + graph are sortable. See gh-5691""" + G = nx.Graph() + node_group = dict(zip(("a", "b", "c", "d", "e"), (2, 3, 1, 2, 4))) + for node, layer in node_group.items(): + G.add_node(node, subset=layer) + + # Horizontal alignment, therefore y-coord determines layers + pos = nx.multipartite_layout(G, align="horizontal") + + layers = nx.utils.groups(node_group) + pos_from_layers = nx.multipartite_layout(G, align="horizontal", subset_key=layers) + for (n1, p1), (n2, p2) in zip(pos.items(), pos_from_layers.items()): + assert n1 == n2 and (p1 == p2).all() + + # Nodes "a" and "d" are in the same layer + assert pos["a"][-1] == pos["d"][-1] + # positions should be sorted according to layer + assert pos["c"][-1] < pos["a"][-1] < pos["b"][-1] < pos["e"][-1] + + # Make sure that multipartite_layout still works when layers are not sortable + G.nodes["a"]["subset"] = "layer_0" # Can't sort mixed strs/ints + pos_nosort = nx.multipartite_layout(G) # smoke test: this should not raise + assert pos_nosort.keys() == pos.keys() + + +def _num_nodes_per_bfs_layer(pos): + """Helper function to extract the number of nodes in each layer of bfs_layout""" + x = np.array(list(pos.values()))[:, 0] # node positions in layered dimension + _, layer_count = np.unique(x, return_counts=True) + return layer_count + + +@pytest.mark.parametrize("n", range(2, 7)) +def test_bfs_layout_complete_graph(n): + """The complete graph should result in two layers: the starting node and + a second layer containing all neighbors.""" + G = nx.complete_graph(n) + pos = nx.bfs_layout(G, start=0) + assert np.array_equal(_num_nodes_per_bfs_layer(pos), [1, n - 1]) + + +def test_bfs_layout_barbell(): + G = nx.barbell_graph(5, 3) + # Start in one of the "bells" + pos = nx.bfs_layout(G, start=0) + # start, bell-1, [1] * len(bar)+1, bell-1 + expected_nodes_per_layer = [1, 4, 1, 1, 1, 1, 4] + assert np.array_equal(_num_nodes_per_bfs_layer(pos), expected_nodes_per_layer) + # Start in the other "bell" - expect same layer pattern + pos = nx.bfs_layout(G, start=12) + assert np.array_equal(_num_nodes_per_bfs_layer(pos), expected_nodes_per_layer) + # Starting in the center of the bar, expect layers to be symmetric + pos = nx.bfs_layout(G, start=6) + # Expected layers: {6 (start)}, {5, 7}, {4, 8}, {8 nodes from remainder of bells} + expected_nodes_per_layer = [1, 2, 2, 8] + assert np.array_equal(_num_nodes_per_bfs_layer(pos), expected_nodes_per_layer) + + +def test_bfs_layout_disconnected(): + G = nx.complete_graph(5) + G.add_edges_from([(10, 11), (11, 12)]) + with pytest.raises(nx.NetworkXError, match="bfs_layout didn't include all nodes"): + nx.bfs_layout(G, start=0) |