GurobiDirect
(class from pyomo.solvers.plugins.solvers.gurobi_direct)
- class pyomo.solvers.plugins.solvers.gurobi_direct.GurobiDirect(manage_env=False, **kwds)[source]
Bases:
DirectSolverA direct interface to Gurobi using gurobipy.
- Parameters:
If
manage_envis set to True, theGurobiDirectobject creates a local Gurobi environment and manage all associated Gurobi resources. Importantly, this enables Gurobi licenses to be freed and connections terminated when the solver context is exited:with SolverFactory('gurobi', solver_io='python', manage_env=True) as opt: opt.solve(model) # All Gurobi models and environments are freed
If
manage_envis set to False (the default), theGurobiDirectobject uses the global default Gurobi environment:with SolverFactory('gurobi', solver_io='python') as opt: opt.solve(model) # Only models created by `opt` are freed, the global default # environment remains active
manage_env=Trueis required when setting license or connection parameters programmatically. Theoptionsargument is used to pass parameters to the Gurobi environment. For example, to connect to a Gurobi Cluster Manager:options = { "CSManager": "<url>", "CSAPIAccessID": "<access-id>", "CSAPISecret": "<api-key>", } with SolverFactory( 'gurobi', solver_io='python', manage_env=True, options=options ) as opt: opt.solve(model) # Model solved on compute server # Compute server connection terminated
Methods
__init__([manage_env])Constructor
available([exception_flag])Returns True if the solver is available.
close()Frees local Gurobi resources used by this solver instance.
Frees all Gurobi models used by this solver, and frees the global default Gurobi environment.
config_block([init])default_variable_value()has_capability(cap)Returns a boolean value representing whether a solver supports a specific feature.
True if the solver is present and has a valid license (if applicable)
load_duals([cons_to_load])Load the duals into the 'dual' suffix.
load_rc(vars_to_load)Load the reduced costs into the 'rc' suffix.
load_slacks([cons_to_load])Load the values of the slack variables into the 'slack' suffix.
load_vars([vars_to_load])Load the values from the solver's variables into the corresponding pyomo variables.
Returns the current problem format.
reset()Reset the state of the solver
Returns the current results format.
set_callback(name[, callback_fn])Set the callback function for a named callback.
set_options(istr)set_problem_format(format)Set the current problem format (if it's valid) and update the results format to something valid for this problem format.
set_results_format(format)Set the current results format (if it's valid for the current problem format).
solve(*args, **kwds)Solve the problem
version()Returns a 4-tuple describing the solver executable version.
True is the solver can accept a warm-start solution
Attributes
keepfileslog_filesoln_filesuffixessymbolic_solver_labelsteewarm_start_file_namewarm_start_solveA results object return from the solve method.
Member Documentation
- available(exception_flag=True)[source]
Returns True if the solver is available.
- Parameters:
exception_flag (bool) – If True, raise an exception instead of returning False if the solver is unavailable (defaults to False)
In general,
available()does not need to be called by the user, as the check is run automatically when solving a model. However it is useful for a simple retry loop when using a shared Gurobi license:with SolverFactory('gurobi', solver_io='python') as opt: while not available(exception_flag=False): time.sleep(1) opt.solve(model)
- close()[source]
Frees local Gurobi resources used by this solver instance.
All Gurobi models created by the solver are freed. If the solver was created with
manage_env=True, this method also closes the Gurobi environment used by this solver instance. Calling.close()achieves the same result as exiting the solver context (although using context managers is preferred where possible):opt = SolverFactory('gurobi', solver_io='python', manage_env=True) try: opt.solve(model) finally: opt.close() # Gurobi models and environments created by `opt` are freed
As with the context manager, if
manage_env=False(the default) was used, only the Gurobi models created by this solver are freed. The default global Gurobi environment will still be active:opt = SolverFactory('gurobi', solver_io='python') try: opt.solve(model) finally: opt.close() # Gurobi models created by `opt` are freed; however the # default/global Gurobi environment is still active
- close_global()[source]
Frees all Gurobi models used by this solver, and frees the global default Gurobi environment.
The default environment is used by all
GurobiDirectsolvers started withmanage_env=False(the default). To guarantee that all Gurobi resources are freed, all instantiatedGurobiDirectsolvers must also be correctly closed.The following example will free all Gurobi resources assuming the user did not create any other models (e.g. via another
GurobiDirectobject withmanage_env=False):opt = SolverFactory('gurobi', solver_io='python') try: opt.solve(model) finally: opt.close_global() # All Gurobi models created by `opt` are freed and the default # Gurobi environment is closed
- has_capability(cap)
Returns a boolean value representing whether a solver supports a specific feature. Defaults to ‘False’ if the solver is unaware of an option. Expects a string.
Example: # prints True if solver supports sos1 constraints, and False otherwise print(solver.has_capability(‘sos1’)
# prints True is solver supports ‘feature’, and False otherwise print(solver.has_capability(‘feature’)
- license_is_valid()
True if the solver is present and has a valid license (if applicable)
- load_duals(cons_to_load=None)[source]
Load the duals into the ‘dual’ suffix. The ‘dual’ suffix must live on the parent model.
- Parameters:
cons_to_load (list of Constraint)
- load_rc(vars_to_load)[source]
Load the reduced costs into the ‘rc’ suffix. The ‘rc’ suffix must live on the parent model.
- load_slacks(cons_to_load=None)[source]
Load the values of the slack variables into the ‘slack’ suffix. The ‘slack’ suffix must live on the parent model.
- Parameters:
cons_to_load (list of Constraint)
- load_vars(vars_to_load=None)
Load the values from the solver’s variables into the corresponding pyomo variables.
- problem_format()
Returns the current problem format.
- reset()
Reset the state of the solver
- results_format()
Returns the current results format.
- set_callback(name, callback_fn=None)
Set the callback function for a named callback.
A call-back function has the form:
- def fn(solver, model):
pass
where ‘solver’ is the native solver interface object and ‘model’ is a Pyomo model instance object.
- set_problem_format(format)
Set the current problem format (if it’s valid) and update the results format to something valid for this problem format.
- set_results_format(format)
Set the current results format (if it’s valid for the current problem format).
- solve(*args, **kwds)
Solve the problem
- version()
Returns a 4-tuple describing the solver executable version.
- results
A results object return from the solve method.