bempp_octree/octree.rs
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//! Definition of Octree.
mod implementation;
use std::collections::HashMap;
pub(crate) use implementation::*;
use mpi::{
collective::SystemOperation,
traits::{CommunicatorCollectives, Root},
};
use rand::SeedableRng;
use rand_chacha::ChaCha8Rng;
use crate::{
constants::DEEPEST_LEVEL,
geometry::{PhysicalBox, Point},
morton::MortonKey,
tools::gather_to_root,
};
/// Stores the type of the key relative to the octree.
#[derive(PartialEq, Eq, Hash, Copy, Clone, Debug)]
pub enum KeyType {
/// A local leaf.
LocalLeaf,
/// A local interior key.
LocalInterior,
/// A global key.
Global,
/// A ghost key from a specific process.
Ghost(usize),
}
/// A general structure for octrees.
pub struct Octree<'o, C> {
points: Vec<Point>,
point_keys: Vec<MortonKey>,
coarse_tree_leafs: Vec<MortonKey>,
leaf_keys: Vec<MortonKey>,
coarse_tree_bounds: Vec<MortonKey>,
all_keys: HashMap<MortonKey, KeyType>,
neighbours: HashMap<MortonKey, Vec<MortonKey>>,
leaf_keys_to_local_point_indices: HashMap<MortonKey, Vec<usize>>,
bounding_box: PhysicalBox,
comm: &'o C,
}
impl<'o, C: CommunicatorCollectives> Octree<'o, C> {
/// Create a new distributed Octree.
///
/// # Arguments
/// - `max_level`: The maximum level of the tree. The maximum level is 16.
/// - `max_leaf_points`: The maximum number of points per leaf.
/// - `comm`: The communicator.
///
/// # Returns
/// A new Octree.
///
/// # Note
/// The points are redistributed during construction of the octree. The tree stores
/// the redistributed points and the corresponding Morton keys.
pub fn new(points: &[Point], max_level: usize, max_leaf_points: usize, comm: &'o C) -> Self {
// We need a random number generator for sorting. For simplicity we use a ChaCha8 random number generator
// seeded with the rank of the process.
let mut rng = ChaCha8Rng::seed_from_u64(comm.rank() as u64);
// First compute the Morton keys of the points.
let (point_keys, bounding_box) = points_to_morton(points, DEEPEST_LEVEL as usize, comm);
// Generate the coarse tree
let (coarse_tree, leaf_tree) = {
// Linearize the keys.
let linear_keys = linearize(&point_keys, &mut rng, comm);
// Compute the first version of the coarse tree without load balancing.
// We want to ensure that it is 2:1 balanced.
let coarse_tree = compute_coarse_tree(&linear_keys, comm);
let coarse_tree = balance(&coarse_tree, &mut rng, comm);
debug_assert!(is_complete_linear_tree(&coarse_tree, comm));
// We now compute the weights for the initial coarse tree.
let weights = compute_coarse_tree_weights(&linear_keys, &coarse_tree, comm);
// We now load balance the initial coarse tree. This forms our final coarse tree
// that is used from now on.
let coarse_tree = load_balance(&coarse_tree, &weights, comm);
// We also want to redistribute the fine keys with respect to the load balanced coarse trees.
let fine_keys =
redistribute_with_respect_to_coarse_tree(&linear_keys, &coarse_tree, comm);
// We now create the refined tree by recursing the coarse tree until we are at max level
// or the fine tree keys per coarse tree box is small enough.
let refined_tree =
create_local_tree(&fine_keys, &coarse_tree, max_level, max_leaf_points);
// We now need to 2:1 balance the refined tree and then redistribute again with respect to the coarse tree.
let refined_tree = redistribute_with_respect_to_coarse_tree(
&balance(&refined_tree, &mut rng, comm),
&coarse_tree,
comm,
);
(coarse_tree, refined_tree)
// redistribute the balanced tree according to coarse tree
};
let (points, point_keys) = redistribute_points_with_respect_to_coarse_tree(
points,
&point_keys,
&coarse_tree,
comm,
);
let coarse_tree_bounds = get_tree_bins(&coarse_tree, comm);
// Duplicate the coarse tree across all nodes
// let coarse_tree = gather_to_all(&coarse_tree, comm);
let all_keys = generate_all_keys(&leaf_tree, &coarse_tree, &coarse_tree_bounds, comm);
let neighbours = compute_neighbours(&all_keys);
let leaf_keys_to_points = assign_points_to_leaf_keys(&point_keys, &leaf_tree);
Self {
points: points.to_vec(),
point_keys,
coarse_tree_leafs: coarse_tree,
leaf_keys: leaf_tree,
coarse_tree_bounds,
all_keys,
neighbours,
leaf_keys_to_local_point_indices: leaf_keys_to_points,
bounding_box,
comm,
}
}
/// Return the Morton keys associated with points.
pub fn point_keys(&self) -> &Vec<MortonKey> {
&self.point_keys
}
/// Return the bounding box.
///
/// The bounding box is computed globally for the distributed octree.
pub fn bounding_box(&self) -> &PhysicalBox {
&self.bounding_box
}
/// Return the coarse tree leafs.
pub fn coarse_tree_leafs(&self) -> &Vec<MortonKey> {
&self.coarse_tree_leafs
}
/// Return the points.
///
/// Points are distributed across the nodes as part of the tree generation.
/// This function returns the redistributed points.
pub fn points(&self) -> &Vec<Point> {
&self.points
}
/// Return the leaf nodes.
pub fn leaf_keys(&self) -> &Vec<MortonKey> {
&self.leaf_keys
}
/// Return the map from leaf keys to local point indices.
///
/// This allows to find the points associated with a given key.
/// # Example
/// ```ignore
/// let leaf_map = octree.leaf_keys_to_local_point_indices();
/// let indices = leaf_map.get(&key);
/// let points_for_key = indices.iter().map(|&i| octree.points()[i]).collect::<Vec<_>>();
/// ```
/// Each point in `points_for_key` is contained in the leaf box defined by `key`.
pub fn leaf_keys_to_local_point_indices(&self) -> &HashMap<MortonKey, Vec<usize>> {
&self.leaf_keys_to_local_point_indices
}
/// Get the coarse tree bounds.
///
/// This returns an array of size the number of ranks,
/// where each element consists of the smallest Morton key in
/// the corresponding rank.
///
/// If a Morton key is on rank i with i not the last rank then
/// ```text
/// coarse_tree_bounds[i] <= key < coarse_tree_bounds[i+1]
/// ```
/// where as if i is the last rank then
/// ```text
/// coarse_tree_bounds[i] <= key
/// ```
/// This allows to find the rank of a given Morton key.
pub fn coarse_tree_bounds(&self) -> &Vec<MortonKey> {
&self.coarse_tree_bounds
}
/// Return the communicator.
pub fn comm(&self) -> &C {
self.comm
}
/// Return a map of all leaf and interior keys.
///
/// The map assigns each key a [KeyType] identifier. It is one of:
/// - [KeyType::LocalLeaf] for leaf keys
/// - [KeyType::LocalInterior] for interior keys
/// - [KeyType::Global] for global keys
/// - [KeyType::Ghost], a typed enum for keys that are adjacent to keys
/// on the current rank but live on a different rank.
///
/// Leaf keys have no children. Interior keys have children within the local rank.
/// Global keys are keys that are not uniquely assigned to a rank but exist on all ranks.
/// The global keys are those that are close to the root of the tree. By construction these
/// are the ancestors of the coarse tree leafs, where as the coarse tree leafs themselves are
/// the first level of keys distributed across ranks. Ghost keys are keys that are not local to
/// the current rank but lie along the interface to the current rank. Their identifiers store the value
/// of the rank that they originate from.
pub fn all_keys(&self) -> &HashMap<MortonKey, KeyType> {
&self.all_keys
}
/// Get the neighbour map.
///
/// Returns a hash map that contains as keys all the keys obtained from [Octree::all_keys] except
/// those that are of type [KeyType::Ghost]. The values are the neighbours of the key.
pub fn neighbour_map(&self) -> &HashMap<MortonKey, Vec<MortonKey>> {
&self.neighbours
}
/// Return the local number of points in the octree.
pub fn local_number_of_points(&self) -> usize {
self.points.len()
}
/// Return the global number of points in the octree.
pub fn global_number_of_points(&self) -> usize {
let mut global_num_points = 0;
self.comm.all_reduce_into(
&self.local_number_of_points(),
&mut global_num_points,
SystemOperation::sum(),
);
global_num_points
}
/// Return the local maximum level
pub fn local_max_level(&self) -> usize {
self.leaf_keys
.iter()
.map(|key| key.level())
.max()
.unwrap_or(0)
}
/// Return the global maximum level
pub fn global_max_level(&self) -> usize {
let mut global_max_level = 0;
self.comm.all_reduce_into(
&self.local_max_level(),
&mut global_max_level,
SystemOperation::max(),
);
global_max_level
}
}
/// Test if an array of keys are the leafs of a complete linear and balanced tree.
pub fn is_complete_linear_and_balanced<C: CommunicatorCollectives>(
arr: &[MortonKey],
comm: &C,
) -> bool {
// Send the tree to the root node and check there that it is balanced.
let mut balanced = false;
if let Some(arr) = gather_to_root(arr, comm) {
balanced = MortonKey::is_complete_linear_and_balanced(&arr);
}
comm.process_at_rank(0).broadcast_into(&mut balanced);
balanced
}
/// Compute the global bounding box across all points on all processes.
pub fn compute_global_bounding_box<C: CommunicatorCollectives>(
points: &[Point],
comm: &C,
) -> PhysicalBox {
// Make sure that the points array is a multiple of 3.
// Now compute the minimum and maximum across each dimension.
let mut xmin = f64::MAX;
let mut xmax = f64::MIN;
let mut ymin = f64::MAX;
let mut ymax = f64::MIN;
let mut zmin = f64::MAX;
let mut zmax = f64::MIN;
for point in points {
let x = point.coords()[0];
let y = point.coords()[1];
let z = point.coords()[2];
xmin = f64::min(xmin, x);
xmax = f64::max(xmax, x);
ymin = f64::min(ymin, y);
ymax = f64::max(ymax, y);
zmin = f64::min(zmin, z);
zmax = f64::max(zmax, z);
}
let mut global_xmin = 0.0;
let mut global_xmax = 0.0;
let mut global_ymin = 0.0;
let mut global_ymax = 0.0;
let mut global_zmin = 0.0;
let mut global_zmax = 0.0;
comm.all_reduce_into(&xmin, &mut global_xmin, SystemOperation::min());
comm.all_reduce_into(&xmax, &mut global_xmax, SystemOperation::max());
comm.all_reduce_into(&ymin, &mut global_ymin, SystemOperation::min());
comm.all_reduce_into(&ymax, &mut global_ymax, SystemOperation::max());
comm.all_reduce_into(&zmin, &mut global_zmin, SystemOperation::min());
comm.all_reduce_into(&zmax, &mut global_zmax, SystemOperation::max());
let xdiam = global_xmax - global_xmin;
let ydiam = global_ymax - global_ymin;
let zdiam = global_zmax - global_zmin;
let xmean = global_xmin + 0.5 * xdiam;
let ymean = global_ymin + 0.5 * ydiam;
let zmean = global_zmin + 0.5 * zdiam;
// We increase diameters by box size on deepest level
// and use the maximum diameter to compute a
// cubic bounding box.
let deepest_box_diam = 1.0 / (1 << DEEPEST_LEVEL) as f64;
let max_diam = [xdiam, ydiam, zdiam].into_iter().reduce(f64::max).unwrap();
let max_diam = max_diam * (1.0 + deepest_box_diam);
PhysicalBox::new([
xmean - 0.5 * max_diam,
ymean - 0.5 * max_diam,
zmean - 0.5 * max_diam,
xmean + 0.5 * max_diam,
ymean + 0.5 * max_diam,
zmean + 0.5 * max_diam,
])
}