Differences between revisions 32 and 33
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Deletions are marked like this. Additions are marked like this.
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astar(eval, lazy_evaluator=<none>, pruning=null(), cost_type=NORMAL, bound=infinity, max_time=infinity) astar(eval, lazy_evaluator=<none>, pruning=null(), cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
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 * ''verbosity'' ({silent, normal, verbose, debug}): Option to specify the verbosity level.
  * {{{silent}}}: silent: only the most basic output
  * {{{normal}}}: normal: relevant information to monitor progress
  * {{{verbose}}}: verbose: full output
  * {{{debug}}}: debug: like full with additional debug output
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eager(open, reopen_closed=false, f_eval=<none>, preferred=[], pruning=null(), cost_type=NORMAL, bound=infinity, max_time=infinity) eager(open, reopen_closed=false, f_eval=<none>, preferred=[], pruning=null(), cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
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 * ''verbosity'' ({silent, normal, verbose, debug}): Option to specify the verbosity level.
  * {{{silent}}}: silent: only the most basic output
  * {{{normal}}}: normal: relevant information to monitor progress
  * {{{verbose}}}: verbose: full output
  * {{{debug}}}: debug: like full with additional debug output
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eager_greedy(evals, preferred=[], boost=0, pruning=null(), cost_type=NORMAL, bound=infinity, max_time=infinity) eager_greedy(evals, preferred=[], boost=0, pruning=null(), cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
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 * ''verbosity'' ({silent, normal, verbose, debug}): Option to specify the verbosity level.
  * {{{silent}}}: silent: only the most basic output
  * {{{normal}}}: normal: relevant information to monitor progress
  * {{{verbose}}}: verbose: full output
  * {{{debug}}}: debug: like full with additional debug output
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eager_wastar(evals, preferred=[], reopen_closed=true, boost=0, w=1, pruning=null(), cost_type=NORMAL, bound=infinity, max_time=infinity) eager_wastar(evals, preferred=[], reopen_closed=true, boost=0, w=1, pruning=null(), cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
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 * ''verbosity'' ({silent, normal, verbose, debug}): Option to specify the verbosity level.
  * {{{silent}}}: silent: only the most basic output
  * {{{normal}}}: normal: relevant information to monitor progress
  * {{{verbose}}}: verbose: full output
  * {{{debug}}}: debug: like full with additional debug output
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ehc(h, preferred_usage=PRUNE_BY_PREFERRED, preferred=[], cost_type=NORMAL, bound=infinity, max_time=infinity) ehc(h, preferred_usage=PRUNE_BY_PREFERRED, preferred=[], cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
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 * ''verbosity'' ({silent, normal, verbose, debug}): Option to specify the verbosity level.
  * {{{silent}}}: silent: only the most basic output
  * {{{normal}}}: normal: relevant information to monitor progress
  * {{{verbose}}}: verbose: full output
  * {{{debug}}}: debug: like full with additional debug output
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iterated(engine_configs, pass_bound=true, repeat_last=false, continue_on_fail=false, continue_on_solve=true, cost_type=NORMAL, bound=infinity, max_time=infinity) iterated(engine_configs, pass_bound=true, repeat_last=false, continue_on_fail=false, continue_on_solve=true, cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
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 * ''verbosity'' ({silent, normal, verbose, debug}): Option to specify the verbosity level.
  * {{{silent}}}: silent: only the most basic output
  * {{{normal}}}: normal: relevant information to monitor progress
  * {{{verbose}}}: verbose: full output
  * {{{debug}}}: debug: like full with additional debug output
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lazy(open, reopen_closed=false, preferred=[], randomize_successors=false, preferred_successors_first=false, random_seed=-1, cost_type=NORMAL, bound=infinity, max_time=infinity) lazy(open, reopen_closed=false, preferred=[], randomize_successors=false, preferred_successors_first=false, random_seed=-1, cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
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 * ''verbosity'' ({silent, normal, verbose, debug}): Option to specify the verbosity level.
  * {{{silent}}}: silent: only the most basic output
  * {{{normal}}}: normal: relevant information to monitor progress
  * {{{verbose}}}: verbose: full output
  * {{{debug}}}: debug: like full with additional debug output
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lazy_greedy(evals, preferred=[], reopen_closed=false, boost=1000, randomize_successors=false, preferred_successors_first=false, random_seed=-1, cost_type=NORMAL, bound=infinity, max_time=infinity) lazy_greedy(evals, preferred=[], reopen_closed=false, boost=1000, randomize_successors=false, preferred_successors_first=false, random_seed=-1, cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
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 * ''verbosity'' ({silent, normal, verbose, debug}): Option to specify the verbosity level.
  * {{{silent}}}: silent: only the most basic output
  * {{{normal}}}: normal: relevant information to monitor progress
  * {{{verbose}}}: verbose: full output
  * {{{debug}}}: debug: like full with additional debug output
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lazy_wastar(evals, preferred=[], reopen_closed=true, boost=1000, w=1, randomize_successors=false, preferred_successors_first=false, random_seed=-1, cost_type=NORMAL, bound=infinity, max_time=infinity) lazy_wastar(evals, preferred=[], reopen_closed=true, boost=1000, w=1, randomize_successors=false, preferred_successors_first=false, random_seed=-1, cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
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 * ''verbosity'' ({silent, normal, verbose, debug}): Option to specify the verbosity level.
  * {{{silent}}}: silent: only the most basic output
  * {{{normal}}}: normal: relevant information to monitor progress
  * {{{verbose}}}: verbose: full output
  * {{{debug}}}: debug: like full with additional debug output

A* search (eager)

A* is a special case of eager best first search that uses g+h as f-function. We break ties using the evaluator. Closed nodes are re-opened.

astar(eval, lazy_evaluator=<none>, pruning=null(), cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
  • eval (Evaluator): evaluator for h-value

  • lazy_evaluator (Evaluator): An evaluator that re-evaluates a state before it is expanded.

  • pruning (PruningMethod): Pruning methods can prune or reorder the set of applicable operators in each state and thereby influence the number and order of successor states that are considered.

  • cost_type ({NORMAL, ONE, PLUSONE}): Operator cost adjustment type. No matter what this setting is, axioms will always be considered as actions of cost 0 by the heuristics that treat axioms as actions.

    • NORMAL: all actions are accounted for with their real cost

    • ONE: all actions are accounted for as unit cost

    • PLUSONE: all actions are accounted for as their real cost + 1 (except if all actions have original cost 1, in which case cost 1 is used). This is the behaviour known for the heuristics of the LAMA planner. This is intended to be used by the heuristics, not search engines, but is supported for both.

  • bound (int): exclusive depth bound on g-values. Cutoffs are always performed according to the real cost, regardless of the cost_type parameter

  • max_time (double): maximum time in seconds the search is allowed to run for. The timeout is only checked after each complete search step (usually a node expansion), so the actual runtime can be arbitrarily longer. Therefore, this parameter should not be used for time-limiting experiments. Timed-out searches are treated as failed searches, just like incomplete search algorithms that exhaust their search space.

  • verbosity ({silent, normal, verbose, debug}): Option to specify the verbosity level.

    • silent: silent: only the most basic output

    • normal: normal: relevant information to monitor progress

    • verbose: verbose: full output

    • debug: debug: like full with additional debug output

lazy_evaluator: When a state s is taken out of the open list, the lazy evaluator h re-evaluates s. If h(s) changes (for example because h is path-dependent), s is not expanded, but instead reinserted into the open list. This option is currently only present for the A* algorithm.

--search astar(evaluator)

is equivalent to

--evaluator h=evaluator
--search eager(tiebreaking([sum([g(), h]), h], unsafe_pruning=false),
               reopen_closed=true, f_eval=sum([g(), h]))

eager(open, reopen_closed=false, f_eval=<none>, preferred=[], pruning=null(), cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
  • open (OpenList): open list

  • reopen_closed (bool): reopen closed nodes

  • f_eval (Evaluator): set evaluator for jump statistics. (Optional; if no evaluator is used, jump statistics will not be displayed.)

  • preferred (list of Evaluator): use preferred operators of these evaluators

  • pruning (PruningMethod): Pruning methods can prune or reorder the set of applicable operators in each state and thereby influence the number and order of successor states that are considered.

  • cost_type ({NORMAL, ONE, PLUSONE}): Operator cost adjustment type. No matter what this setting is, axioms will always be considered as actions of cost 0 by the heuristics that treat axioms as actions.

    • NORMAL: all actions are accounted for with their real cost

    • ONE: all actions are accounted for as unit cost

    • PLUSONE: all actions are accounted for as their real cost + 1 (except if all actions have original cost 1, in which case cost 1 is used). This is the behaviour known for the heuristics of the LAMA planner. This is intended to be used by the heuristics, not search engines, but is supported for both.

  • bound (int): exclusive depth bound on g-values. Cutoffs are always performed according to the real cost, regardless of the cost_type parameter

  • max_time (double): maximum time in seconds the search is allowed to run for. The timeout is only checked after each complete search step (usually a node expansion), so the actual runtime can be arbitrarily longer. Therefore, this parameter should not be used for time-limiting experiments. Timed-out searches are treated as failed searches, just like incomplete search algorithms that exhaust their search space.

  • verbosity ({silent, normal, verbose, debug}): Option to specify the verbosity level.

    • silent: silent: only the most basic output

    • normal: normal: relevant information to monitor progress

    • verbose: verbose: full output

    • debug: debug: like full with additional debug output

Greedy search (eager)

eager_greedy(evals, preferred=[], boost=0, pruning=null(), cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
  • evals (list of Evaluator): evaluators

  • preferred (list of Evaluator): use preferred operators of these evaluators

  • boost (int): boost value for preferred operator open lists

  • pruning (PruningMethod): Pruning methods can prune or reorder the set of applicable operators in each state and thereby influence the number and order of successor states that are considered.

  • cost_type ({NORMAL, ONE, PLUSONE}): Operator cost adjustment type. No matter what this setting is, axioms will always be considered as actions of cost 0 by the heuristics that treat axioms as actions.

    • NORMAL: all actions are accounted for with their real cost

    • ONE: all actions are accounted for as unit cost

    • PLUSONE: all actions are accounted for as their real cost + 1 (except if all actions have original cost 1, in which case cost 1 is used). This is the behaviour known for the heuristics of the LAMA planner. This is intended to be used by the heuristics, not search engines, but is supported for both.

  • bound (int): exclusive depth bound on g-values. Cutoffs are always performed according to the real cost, regardless of the cost_type parameter

  • max_time (double): maximum time in seconds the search is allowed to run for. The timeout is only checked after each complete search step (usually a node expansion), so the actual runtime can be arbitrarily longer. Therefore, this parameter should not be used for time-limiting experiments. Timed-out searches are treated as failed searches, just like incomplete search algorithms that exhaust their search space.

  • verbosity ({silent, normal, verbose, debug}): Option to specify the verbosity level.

    • silent: silent: only the most basic output

    • normal: normal: relevant information to monitor progress

    • verbose: verbose: full output

    • debug: debug: like full with additional debug output

Open list: In most cases, eager greedy best first search uses an alternation open list with one queue for each evaluator. If preferred operator evaluators are used, it adds an extra queue for each of these evaluators that includes only the nodes that are generated with a preferred operator. If only one evaluator and no preferred operator evaluator is used, the search does not use an alternation open list but a standard open list with only one queue.

Closed nodes: Closed node are not re-opened

Equivalent statements using general eager search

--evaluator h2=eval2
--search eager_greedy([eval1, h2], preferred=h2, boost=100)

is equivalent to

--evaluator h1=eval1 --heuristic h2=eval2
--search eager(alt([single(h1), single(h1, pref_only=true), single(h2), 
                    single(h2, pref_only=true)], boost=100),
               preferred=h2)


--search eager_greedy([eval1, eval2])

is equivalent to

--search eager(alt([single(eval1), single(eval2)]))


--evaluator h1=eval1
--search eager_greedy(h1, preferred=h1)

is equivalent to

--evaluator h1=eval1
--search eager(alt([single(h1), single(h1, pref_only=true)]),
               preferred=h1)


--search eager_greedy(eval1)

is equivalent to

--search eager(single(eval1))

eager_wastar(evals, preferred=[], reopen_closed=true, boost=0, w=1, pruning=null(), cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
  • evals (list of Evaluator): evaluators

  • preferred (list of Evaluator): use preferred operators of these evaluators

  • reopen_closed (bool): reopen closed nodes

  • boost (int): boost value for preferred operator open lists

  • w (int): evaluator weight

  • pruning (PruningMethod): Pruning methods can prune or reorder the set of applicable operators in each state and thereby influence the number and order of successor states that are considered.

  • cost_type ({NORMAL, ONE, PLUSONE}): Operator cost adjustment type. No matter what this setting is, axioms will always be considered as actions of cost 0 by the heuristics that treat axioms as actions.

    • NORMAL: all actions are accounted for with their real cost

    • ONE: all actions are accounted for as unit cost

    • PLUSONE: all actions are accounted for as their real cost + 1 (except if all actions have original cost 1, in which case cost 1 is used). This is the behaviour known for the heuristics of the LAMA planner. This is intended to be used by the heuristics, not search engines, but is supported for both.

  • bound (int): exclusive depth bound on g-values. Cutoffs are always performed according to the real cost, regardless of the cost_type parameter

  • max_time (double): maximum time in seconds the search is allowed to run for. The timeout is only checked after each complete search step (usually a node expansion), so the actual runtime can be arbitrarily longer. Therefore, this parameter should not be used for time-limiting experiments. Timed-out searches are treated as failed searches, just like incomplete search algorithms that exhaust their search space.

  • verbosity ({silent, normal, verbose, debug}): Option to specify the verbosity level.

    • silent: silent: only the most basic output

    • normal: normal: relevant information to monitor progress

    • verbose: verbose: full output

    • debug: debug: like full with additional debug output

Open lists and equivalent statements using general eager search: See corresponding notes for "(Weighted) A* search (lazy)"

Note: Eager weighted A* search uses an alternation open list while A* search uses a tie-breaking open list. Consequently,

--search eager_wastar([h()], w=1)

is not equivalent to

--search astar(h())

Lazy enforced hill-climbing

ehc(h, preferred_usage=PRUNE_BY_PREFERRED, preferred=[], cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
  • h (Evaluator): heuristic

  • preferred_usage ({PRUNE_BY_PREFERRED, RANK_PREFERRED_FIRST}): preferred operator usage

  • preferred (list of Evaluator): use preferred operators of these evaluators

  • cost_type ({NORMAL, ONE, PLUSONE}): Operator cost adjustment type. No matter what this setting is, axioms will always be considered as actions of cost 0 by the heuristics that treat axioms as actions.

    • NORMAL: all actions are accounted for with their real cost

    • ONE: all actions are accounted for as unit cost

    • PLUSONE: all actions are accounted for as their real cost + 1 (except if all actions have original cost 1, in which case cost 1 is used). This is the behaviour known for the heuristics of the LAMA planner. This is intended to be used by the heuristics, not search engines, but is supported for both.

  • bound (int): exclusive depth bound on g-values. Cutoffs are always performed according to the real cost, regardless of the cost_type parameter

  • max_time (double): maximum time in seconds the search is allowed to run for. The timeout is only checked after each complete search step (usually a node expansion), so the actual runtime can be arbitrarily longer. Therefore, this parameter should not be used for time-limiting experiments. Timed-out searches are treated as failed searches, just like incomplete search algorithms that exhaust their search space.

  • verbosity ({silent, normal, verbose, debug}): Option to specify the verbosity level.

    • silent: silent: only the most basic output

    • normal: normal: relevant information to monitor progress

    • verbose: verbose: full output

    • debug: debug: like full with additional debug output

iterated(engine_configs, pass_bound=true, repeat_last=false, continue_on_fail=false, continue_on_solve=true, cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
  • engine_configs (list of ParseTree (this just means the input is parsed at a later point. The real type is probably a search engine.)): list of search engines for each phase

  • pass_bound (bool): use bound from previous search. The bound is the real cost of the plan found before, regardless of the cost_type parameter.

  • repeat_last (bool): repeat last phase of search

  • continue_on_fail (bool): continue search after no solution found

  • continue_on_solve (bool): continue search after solution found

  • cost_type ({NORMAL, ONE, PLUSONE}): Operator cost adjustment type. No matter what this setting is, axioms will always be considered as actions of cost 0 by the heuristics that treat axioms as actions.

    • NORMAL: all actions are accounted for with their real cost

    • ONE: all actions are accounted for as unit cost

    • PLUSONE: all actions are accounted for as their real cost + 1 (except if all actions have original cost 1, in which case cost 1 is used). This is the behaviour known for the heuristics of the LAMA planner. This is intended to be used by the heuristics, not search engines, but is supported for both.

  • bound (int): exclusive depth bound on g-values. Cutoffs are always performed according to the real cost, regardless of the cost_type parameter

  • max_time (double): maximum time in seconds the search is allowed to run for. The timeout is only checked after each complete search step (usually a node expansion), so the actual runtime can be arbitrarily longer. Therefore, this parameter should not be used for time-limiting experiments. Timed-out searches are treated as failed searches, just like incomplete search algorithms that exhaust their search space.

  • verbosity ({silent, normal, verbose, debug}): Option to specify the verbosity level.

    • silent: silent: only the most basic output

    • normal: normal: relevant information to monitor progress

    • verbose: verbose: full output

    • debug: debug: like full with additional debug output

Note 1: We don't cache heuristic values between search iterations at the moment. If you perform a LAMA-style iterative search, heuristic values will be computed multiple times.

Note 2: The configuration

--search "iterated([lazy_wastar(merge_and_shrink(),w=10), lazy_wastar(merge_and_shrink(),w=5), lazy_wastar(merge_and_shrink(),w=3), lazy_wastar(merge_and_shrink(),w=2), lazy_wastar(merge_and_shrink(),w=1)])"

would perform the preprocessing phase of the merge and shrink heuristic 5 times (once before each iteration).

To avoid this, use heuristic predefinition, which avoids duplicate preprocessing, as follows:

--evaluator "h=merge_and_shrink()" --search "iterated([lazy_wastar(h,w=10), lazy_wastar(h,w=5), lazy_wastar(h,w=3), lazy_wastar(h,w=2), lazy_wastar(h,w=1)])"

Note 3: If you reuse the same landmark count heuristic (using heuristic predefinition) between iterations, the path data (that is, landmark status for each visited state) will be saved between iterations.

lazy(open, reopen_closed=false, preferred=[], randomize_successors=false, preferred_successors_first=false, random_seed=-1, cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
  • open (OpenList): open list

  • reopen_closed (bool): reopen closed nodes

  • preferred (list of Evaluator): use preferred operators of these evaluators

  • randomize_successors (bool): randomize the order in which successors are generated

  • preferred_successors_first (bool): consider preferred operators first

  • random_seed (int [-1, infinity]): Set to -1 (default) to use the global random number generator. Set to any other value to use a local random number generator with the given seed.

  • cost_type ({NORMAL, ONE, PLUSONE}): Operator cost adjustment type. No matter what this setting is, axioms will always be considered as actions of cost 0 by the heuristics that treat axioms as actions.

    • NORMAL: all actions are accounted for with their real cost

    • ONE: all actions are accounted for as unit cost

    • PLUSONE: all actions are accounted for as their real cost + 1 (except if all actions have original cost 1, in which case cost 1 is used). This is the behaviour known for the heuristics of the LAMA planner. This is intended to be used by the heuristics, not search engines, but is supported for both.

  • bound (int): exclusive depth bound on g-values. Cutoffs are always performed according to the real cost, regardless of the cost_type parameter

  • max_time (double): maximum time in seconds the search is allowed to run for. The timeout is only checked after each complete search step (usually a node expansion), so the actual runtime can be arbitrarily longer. Therefore, this parameter should not be used for time-limiting experiments. Timed-out searches are treated as failed searches, just like incomplete search algorithms that exhaust their search space.

  • verbosity ({silent, normal, verbose, debug}): Option to specify the verbosity level.

    • silent: silent: only the most basic output

    • normal: normal: relevant information to monitor progress

    • verbose: verbose: full output

    • debug: debug: like full with additional debug output

Successor ordering: When using randomize_successors=true and preferred_successors_first=true, randomization happens before preferred operators are moved to the front.

Greedy search (lazy)

lazy_greedy(evals, preferred=[], reopen_closed=false, boost=1000, randomize_successors=false, preferred_successors_first=false, random_seed=-1, cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
  • evals (list of Evaluator): evaluators

  • preferred (list of Evaluator): use preferred operators of these evaluators

  • reopen_closed (bool): reopen closed nodes

  • boost (int): boost value for alternation queues that are restricted to preferred operator nodes

  • randomize_successors (bool): randomize the order in which successors are generated

  • preferred_successors_first (bool): consider preferred operators first

  • random_seed (int [-1, infinity]): Set to -1 (default) to use the global random number generator. Set to any other value to use a local random number generator with the given seed.

  • cost_type ({NORMAL, ONE, PLUSONE}): Operator cost adjustment type. No matter what this setting is, axioms will always be considered as actions of cost 0 by the heuristics that treat axioms as actions.

    • NORMAL: all actions are accounted for with their real cost

    • ONE: all actions are accounted for as unit cost

    • PLUSONE: all actions are accounted for as their real cost + 1 (except if all actions have original cost 1, in which case cost 1 is used). This is the behaviour known for the heuristics of the LAMA planner. This is intended to be used by the heuristics, not search engines, but is supported for both.

  • bound (int): exclusive depth bound on g-values. Cutoffs are always performed according to the real cost, regardless of the cost_type parameter

  • max_time (double): maximum time in seconds the search is allowed to run for. The timeout is only checked after each complete search step (usually a node expansion), so the actual runtime can be arbitrarily longer. Therefore, this parameter should not be used for time-limiting experiments. Timed-out searches are treated as failed searches, just like incomplete search algorithms that exhaust their search space.

  • verbosity ({silent, normal, verbose, debug}): Option to specify the verbosity level.

    • silent: silent: only the most basic output

    • normal: normal: relevant information to monitor progress

    • verbose: verbose: full output

    • debug: debug: like full with additional debug output

Open lists: In most cases, lazy greedy best first search uses an alternation open list with one queue for each evaluator. If preferred operator evaluators are used, it adds an extra queue for each of these evaluators that includes only the nodes that are generated with a preferred operator. If only one evaluator and no preferred operator evaluator is used, the search does not use an alternation open list but a standard open list with only one queue.

--evaluator h2=eval2
--search lazy_greedy([eval1, h2], preferred=h2, boost=100)

is equivalent to

--evaluator h1=eval1 --heuristic h2=eval2
--search lazy(alt([single(h1), single(h1, pref_only=true), single(h2),
                  single(h2, pref_only=true)], boost=100),
              preferred=h2)


--search lazy_greedy([eval1, eval2], boost=100)

is equivalent to

--search lazy(alt([single(eval1), single(eval2)], boost=100))


--evaluator h1=eval1
--search lazy_greedy(h1, preferred=h1)

is equivalent to

--evaluator h1=eval1
--search lazy(alt([single(h1), single(h1, pref_only=true)], boost=1000),
              preferred=h1)


--search lazy_greedy(eval1)

is equivalent to

--search lazy(single(eval1))

Successor ordering: When using randomize_successors=true and preferred_successors_first=true, randomization happens before preferred operators are moved to the front.

(Weighted) A* search (lazy)

Weighted A* is a special case of lazy best first search.

lazy_wastar(evals, preferred=[], reopen_closed=true, boost=1000, w=1, randomize_successors=false, preferred_successors_first=false, random_seed=-1, cost_type=NORMAL, bound=infinity, max_time=infinity, verbosity=normal)
  • evals (list of Evaluator): evaluators

  • preferred (list of Evaluator): use preferred operators of these evaluators

  • reopen_closed (bool): reopen closed nodes

  • boost (int): boost value for preferred operator open lists

  • w (int): evaluator weight

  • randomize_successors (bool): randomize the order in which successors are generated

  • preferred_successors_first (bool): consider preferred operators first

  • random_seed (int [-1, infinity]): Set to -1 (default) to use the global random number generator. Set to any other value to use a local random number generator with the given seed.

  • cost_type ({NORMAL, ONE, PLUSONE}): Operator cost adjustment type. No matter what this setting is, axioms will always be considered as actions of cost 0 by the heuristics that treat axioms as actions.

    • NORMAL: all actions are accounted for with their real cost

    • ONE: all actions are accounted for as unit cost

    • PLUSONE: all actions are accounted for as their real cost + 1 (except if all actions have original cost 1, in which case cost 1 is used). This is the behaviour known for the heuristics of the LAMA planner. This is intended to be used by the heuristics, not search engines, but is supported for both.

  • bound (int): exclusive depth bound on g-values. Cutoffs are always performed according to the real cost, regardless of the cost_type parameter

  • max_time (double): maximum time in seconds the search is allowed to run for. The timeout is only checked after each complete search step (usually a node expansion), so the actual runtime can be arbitrarily longer. Therefore, this parameter should not be used for time-limiting experiments. Timed-out searches are treated as failed searches, just like incomplete search algorithms that exhaust their search space.

  • verbosity ({silent, normal, verbose, debug}): Option to specify the verbosity level.

    • silent: silent: only the most basic output

    • normal: normal: relevant information to monitor progress

    • verbose: verbose: full output

    • debug: debug: like full with additional debug output

Open lists: In the general case, it uses an alternation open list with one queue for each evaluator h that ranks the nodes by g + w * h. If preferred operator evaluators are used, it adds for each of the evaluators another such queue that only inserts nodes that are generated by preferred operators. In the special case with only one evaluator and no preferred operator evaluators, it uses a single queue that is ranked by g + w * h.

Equivalent statements using general lazy search

--evaluator h1=eval1
--search lazy_wastar([h1, eval2], w=2, preferred=h1,
                     bound=100, boost=500)

is equivalent to

--evaluator h1=eval1 --heuristic h2=eval2
--search lazy(alt([single(sum([g(), weight(h1, 2)])),
                   single(sum([g(), weight(h1, 2)]), pref_only=true),
                   single(sum([g(), weight(h2, 2)])),
                   single(sum([g(), weight(h2, 2)]), pref_only=true)],
                  boost=500),
              preferred=h1, reopen_closed=true, bound=100)


--search lazy_wastar([eval1, eval2], w=2, bound=100)

is equivalent to

--search lazy(alt([single(sum([g(), weight(eval1, 2)])),
                   single(sum([g(), weight(eval2, 2)]))],
                  boost=1000),
              reopen_closed=true, bound=100)


--search lazy_wastar([eval1, eval2], bound=100, boost=0)

is equivalent to

--search lazy(alt([single(sum([g(), eval1])),
                   single(sum([g(), eval2]))])
              reopen_closed=true, bound=100)


--search lazy_wastar(eval1, w=2)

is equivalent to

--search lazy(single(sum([g(), weight(eval1, 2)])), reopen_closed=true)

Successor ordering: When using randomize_successors=true and preferred_successors_first=true, randomization happens before preferred operators are moved to the front.