Ejemplo n.º 1
0
out = '/Dropbox/Thesis/IMG/chapter7/'
NCIhome = '/short/fr3/ndh401'
NCIfolder = '/chapter7/'

#==========================================
# NCI general case - initialisation
#==========================================

try:
    arg1 = sys.argv[1]
except IndexError:
    print "Provide arguments <runnum> <numofjobs> <scenario>"

para = Para()
para.central_case(N = 100)
para.randomize()
para.set_property_rights(scenario='CS')

run_no = int(arg1)

print '============================================================'
print 'Initialisation for run no: ' + str(run_no)
print '============================================================'

mod = Model(para, ch7=True, turn_off_env=True)
E_lambda = mod.chapter7_initialise()
print '============================================================'
print 'E_lambda: ' + str(E_lambda)
print '============================================================'

para.E_lambda_hat = E_lambda
Ejemplo n.º 2
0
out = '/Dropbox/Thesis/IMG/chapter7/'
NCIhome = '/short/fr3/ndh401'
NCIfolder = '/chapter7/'

#==========================================
# NCI general case - initialisation
#==========================================

try:
    arg1 = sys.argv[1]
except IndexError:
    print "Provide arguments <runnum> <numofjobs> <scenario>"

para = Para()
para.central_case(N=100)
para.randomize()
para.set_property_rights(scenario='CS')

run_no = int(arg1)

print '============================================================'
print 'Initialisation for run no: ' + str(run_no)
print '============================================================'

mod = Model(para, ch7=True, turn_off_env=True)
E_lambda = mod.chapter7_initialise()
print '============================================================'
print 'E_lambda: ' + str(E_lambda)
print '============================================================'

para.E_lambda_hat = E_lambda
Ejemplo n.º 3
0
        mod.simulate_myopic(500000)
        
        result['stats'].append(mod.sim.stats)
        result['paras'].append(para.para_list)
        #result['series'].append(mod.sim.series)
        
        #mod2 = Model(para)
        #mod2.simulate_myopic(500000)
        #temp[1] = mod2.sim.series
        #result['series'].append(temp)

        if i == 0:
            W_f = mod.sdp.W_f
            V_f = mod.sdp.V_f
            SW_f = mod.users.SW_f

        para.SDP_GRID = 35
        para.randomize(N = 100)
        mod = Model(para)
    
    except KeyboardInterrupt:
        raise
    except:
        raise
    
    with open(NCI + 'result.pkl', 'wb') as f:
        pickle.dump(result, f)
        f.close()

#chapter3.build(results)