The GEQO module is intended for the solution of the query
    optimization problem similar to a traveling salesman problem (TSP).
    Possible query plans are encoded as integer strings. Each string
    represents the join order from one relation of the query to the next.
    E. g., the query tree
   /\
  /\ 2
 /\ 3
4  1
    is encoded by the integer string '4-1-3-2',
    which means, first join relation '4' and '1', then '3', and
    then '2', where 1, 2, 3, 4 are relation IDs within the
    PostgreSQL optimizer.
   
    Parts of the GEQO module are adapted from D. Whitley's Genitor
    algorithm.
   
    Specific characteristics of the GEQO
    implementation in PostgreSQL
    are:
    
-        Usage of a steady state GA (replacement of the least fit
       individuals in a population, not whole-generational replacement)
       allows fast convergence towards improved query plans. This is
       essential for query handling with reasonable time;
       
-        Usage of edge recombination crossover which is
       especially suited
       to keep edge losses low for the solution of the
       TSP by means of a GA;
       
-        Mutation as genetic operator is deprecated so that no repair
       mechanisms are needed to generate legal TSP tours.
       
   
    The GEQO module allows
    the PostgreSQL query optimizer to
    support large join queries effectively through
    non-exhaustive search.
   
      Work is still needed to improve the genetic algorithm parameter
      settings.
      In file backend/optimizer/geqo/geqo_params.c, routines
      gimme_pool_size and gimme_number_generations,
      we have to find a compromise for the parameter settings
      to satisfy two competing demands: