core-lightning/plugins/askrene/algorithm.h
Lagrang3 84a9476311 askrene: add mcf_refinement to the public API
Changelog-none: askrene: add mcf_refinement to the public API

Signed-off-by: Lagrang3 <lagrang3@protonmail.com>
2024-11-21 16:17:52 +10:30

179 lines
5.9 KiB
C

#ifndef LIGHTNING_PLUGINS_ASKRENE_ALGORITHM_H
#define LIGHTNING_PLUGINS_ASKRENE_ALGORITHM_H
/* Implementation of network algorithms: shortests path, minimum cost flow, etc.
*/
#include "config.h"
#include <plugins/askrene/graph.h>
/* Search any path from source to destination using Breadth First Search.
*
* input:
* @ctx: tal allocator,
* @graph: graph of the network,
* @source: source node,
* @destination: destination node,
* @capacity: arcs capacity
* @cap_threshold: an arc i is traversable if capacity[i]>=cap_threshold
*
* output:
* @prev: prev[i] is the arc that leads to node i for an optimal solution, it
* @return: true if the destination node was reached.
*
* precondition:
* |capacity|=graph_max_num_arcs
* |prev|=graph_max_num_nodes
*
* The destination is only used as a stopping condition, if destination is
* passed with an invalid idx then the algorithm will produce a discovery tree
* of all reacheable nodes from the source.
* */
bool BFS_path(const tal_t *ctx, const struct graph *graph,
const struct node source, const struct node destination,
const s64 *capacity, const s64 cap_threshold, struct arc *prev);
/* Computes the distance from the source to every other node in the network
* using Dijkstra's algorithm.
*
* input:
* @ctx: tal context for internal allocation
* @graph: topological information of the graph
* @source: source node
* @destination: destination node
* @prune: if prune is true the algorithm stops when the optimal path is found
* for the destination node
* @capacity: arcs capacity
* @cap_threshold: an arc i is traversable if capacity[i]>=cap_threshold
* @cost: arc's cost
* @potential: nodes' potential, ie. reduced cost for an arc
* c_ij = cost_ij - potential[i] + potential[j]
*
* output:
* @prev: for each node, this is the arc that was used to arrive to it, this can
* be used to reconstruct the path from the destination to the source,
* @distance: node's best distance
* returns true if an optimal path is found for the destination, false otherwise
*
* precondition:
* |capacity|=|cost|=graph_max_num_arcs
* |prev|=|distance|=graph_max_num_nodes
* cost[i]>=0
* if prune is true the destination must be valid
* */
bool dijkstra_path(const tal_t *ctx, const struct graph *graph,
const struct node source, const struct node destination,
bool prune, const s64 *capacity, const s64 cap_threshold,
const s64 *cost, const s64 *potential, struct arc *prev,
s64 *distance);
/* Finds any flow that satisfy the capacity constraints:
* flow[i] <= capacity[i]
* and supply/demand constraints:
* supply[source] = demand[destination] = amount
* supply/demand[node] = 0 for every other node
*
* It uses simple augmenting paths algorithm.
*
* input:
* @ctx: tal context for internal allocation
* @graph: topological information of the graph
* @source: source node
* @destination: destination node
* @capacity: arcs capacity
* @amount: supply/demand
*
* output:
* @capacity: residual capacity
* returns true if the balance constraint can be satisfied
*
* precondition:
* |capacity|=graph_max_num_arcs
* amount>=0
* */
bool simple_feasibleflow(const tal_t *ctx, const struct graph *graph,
const struct node source,
const struct node destination, s64 *capacity,
s64 amount);
/* Computes the balance of a node, ie. the incoming flows minus the outgoing.
*
* @graph: topology
* @node: node
* @capacity: capacity in the residual sense, not the constrain capacity
*
* This works because in the adjacency list an arc wich is dual is associated
* with an inconming arc i, then we add this flow, while an arc which is not
* dual corresponds to and outgoing flow that we need to substract.
* The flow on the arc i (not dual) is computed as:
* flow[i] = residual_capacity[i_dual],
* while the constrain capacity is
* capacity[i] = residual_capacity[i] + residual_capacity[i_dual] */
s64 node_balance(const struct graph *graph, const struct node node,
const s64 *capacity);
/* Finds the minimum cost flow that satisfy the capacity constraints:
* flow[i] <= capacity[i]
* and supply/demand constraints:
* supply[source] = demand[destination] = amount
* supply/demand[node] = 0 for every other node
*
* It uses successive shortest path algorithm.
*
* input:
* @ctx: tal context for internal allocation
* @graph: topological information of the graph
* @source: source node
* @destination: destination node
* @capacity: arcs capacity
* @amount: desired balance at the destination
* @cost: cost per unit of flow
*
* output:
* @capacity: residual capacity
* returns true if the balance constraint can be satisfied
*
* precondition:
* |capacity|=graph_max_num_arcs
* |cost|=graph_max_num_arcs
* amount>=0
* */
bool simple_mcf(const tal_t *ctx, const struct graph *graph,
const struct node source, const struct node destination,
s64 *capacity, s64 amount, const s64 *cost);
/* Compute the cost of a flow in the network.
*
* @graph: network topology
* @capacity: residual capacity (encodes the flow)
* @cost: cost per unit of flow */
s64 flow_cost(const struct graph *graph, const s64 *capacity, const s64 *cost);
/* Take an existent flow and find an optimal redistribution:
*
* inputs:
* @ctx: tal context for internal allocation,
* @graph: topological information of the graph,
* @excess: supply/demand of nodes,
* @capacity: residual capacity in the arcs,
* @cost: cost per unit of flow for every arc,
* @potential: node potential,
*
* outputs:
* @excess: all values become zero if there exist a feasible solution,
* @capacity: encodes the resulting flow,
* @potential: the potential that proves the solution using the complementary
* slackness optimality condition.
* */
bool mcf_refinement(const tal_t *ctx,
const struct graph *graph,
s64 *excess,
s64 *capacity,
const s64 *cost,
s64 *potential);
#endif /* LIGHTNING_PLUGINS_ASKRENE_ALGORITHM_H */