JaxPM/jaxpm/plotting.py
Wassim Kabalan 21373b89ee update code
2024-12-06 18:56:24 +01:00

129 lines
4.6 KiB
Python

import matplotlib.pyplot as plt
import numpy as np
def plot_fields(fields_dict, sum_over=None):
"""
Plots sum projections of 3D fields along different axes,
slicing only the first `sum_over` elements along each axis.
Args:
- fields: list of 3D arrays representing fields to plot
- names: list of names for each field, used in titles
- sum_over: number of slices to sum along each axis (default: fields[0].shape[0] // 8)
"""
sum_over = sum_over or list(fields_dict.values())[0].shape[0] // 8
nb_rows = len(fields_dict)
nb_cols = 3
fig, axes = plt.subplots(nb_rows, nb_cols, figsize=(15, 5 * nb_rows))
def plot_subplots(proj_axis, field, row, title):
slicing = [slice(None)] * field.ndim
slicing[proj_axis] = slice(None, sum_over)
slicing = tuple(slicing)
# Sum projection over the specified axis and plot
axes[row, proj_axis].imshow(
field[slicing].sum(axis=proj_axis) + 1,
cmap='magma',
extent=[0, field.shape[proj_axis], 0, field.shape[proj_axis]])
axes[row, proj_axis].set_xlabel('Mpc/h')
axes[row, proj_axis].set_ylabel('Mpc/h')
axes[row, proj_axis].set_title(title)
# Plot each field across the three axes
for i, (name, field) in enumerate(fields_dict.items()):
for proj_axis in range(3):
plot_subplots(proj_axis, field, i,
f"{name} projection {proj_axis}")
plt.tight_layout()
plt.show()
def plot_fields_single_projection(fields_dict,
sum_over=None,
project_axis=0,
vmin=None,
vmax=None,
colorbar=False):
"""
Plots a single projection (along axis 0) of 3D fields in a grid,
summing over the first `sum_over` elements along the 0-axis, with 4 images per row.
Args:
- fields_dict: dictionary where keys are field names and values are 3D arrays
- sum_over: number of slices to sum along the projection axis (default: fields[0].shape[0] // 8)
"""
sum_over = sum_over or list(fields_dict.values())[0].shape[0] // 8
nb_fields = len(fields_dict)
nb_cols = 4 # Set number of images per row
nb_rows = (nb_fields + nb_cols - 1) // nb_cols # Calculate required rows
fig, axes = plt.subplots(nb_rows,
nb_cols,
figsize=(5 * nb_cols, 5 * nb_rows))
axes = np.atleast_2d(axes) # Ensure axes is always a 2D array
for i, (name, field) in enumerate(fields_dict.items()):
row, col = divmod(i, nb_cols)
# Define the slice for the 0-axis projection
slicing = [slice(None)] * field.ndim
slicing[project_axis] = slice(None, sum_over)
slicing = tuple(slicing)
# Sum projection over axis 0 and plot
a = axes[row,
col].imshow(field[slicing].sum(axis=project_axis) + 1,
cmap='magma',
extent=[0, field.shape[1], 0, field.shape[2]],
vmin=vmin,
vmax=vmax)
axes[row, col].set_xlabel('Mpc/h')
axes[row, col].set_ylabel('Mpc/h')
axes[row, col].set_title(f"{name} projection 0")
if colorbar:
fig.colorbar(a, ax=axes[row, col], shrink=0.7)
# Remove any empty subplots
for j in range(i + 1, nb_rows * nb_cols):
fig.delaxes(axes.flatten()[j])
plt.tight_layout()
plt.show()
def stack_slices(array):
"""
Stacks 2D slices of an array into a single array based on provided partition dimensions.
Args:
- array_slices: a 2D list of array slices (list of lists format) where
array_slices[i][j] is the slice located at row i, column j in the grid.
- pdims: a tuple representing the grid dimensions (rows, columns).
Returns:
- A single array constructed by stacking the slices.
"""
# Initialize an empty list to store the vertically stacked rows
pdims = array.sharding.mesh.devices.shape
field_slices = []
# Iterate over rows in pdims[0]
for i in range(pdims[0]):
row_slices = []
# Iterate over columns in pdims[1]
for j in range(pdims[1]):
slice_index = i * pdims[0] + j
row_slices.append(array.addressable_data(slice_index))
# Stack the current row of slices vertically
stacked_row = np.hstack(row_slices)
field_slices.append(stacked_row)
# Stack all rows horizontally to form the full array
full_array = np.vstack(field_slices)
return full_array