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<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"IPOP-SEP-CMA-ES_ros" &<name>:"funcId",<type>:<INTEGER>,<value>:4 &<name>:"DIM",<type>:<INTEGER>,<value>:3 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..3]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<typ...
{ "algorithm": "IPOP-SEP-CMA-ES_ros", "funcId": 4, "DIM": 3, "precision": "1.000e-08", "n_all": 144, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-4.620900000000e+02) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_p...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"CMA-ESPLUSSEL_auger" &<name>:"funcId",<type>:<INTEGER>,<value>:22 &<name>:"DIM",<type>:<INTEGER>,<value>:20 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..20]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<...
{ "algorithm": "CMA-ESPLUSSEL_auger", "funcId": 22, "DIM": 20, "precision": "1.000e-08", "n_all": 643, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-1.000000000000e+03) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"NELDER_hansen" &<name>:"funcId",<type>:<INTEGER>,<value>:17 &<name>:"DIM",<type>:<INTEGER>,<value>:5 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..5]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<D...
{ "algorithm": "NELDER_hansen", "funcId": 17, "DIM": 5, "precision": "1.000e-08", "n_all": 139, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-1.694000000000e+01) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_st...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"NEWUOA_ros" &<name>:"funcId",<type>:<INTEGER>,<value>:24 &<name>:"DIM",<type>:<INTEGER>,<value>:40 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..40]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DO...
{ "algorithm": "NEWUOA_ros", "funcId": 24, "DIM": 40, "precision": "1.000e-08", "n_all": 23, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (1.026100000000e+02) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_study"...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"GA_nicolau" &<name>:"funcId",<type>:<INTEGER>,<value>:10 &<name>:"DIM",<type>:<INTEGER>,<value>:2 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..2]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DOUB...
{ "algorithm": "GA_nicolau", "funcId": 10, "DIM": 2, "precision": "1.000e-08", "n_all": 187, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-5.494000000000e+01) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_study...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"DASA_korosec" &<name>:"funcId",<type>:<INTEGER>,<value>:19 &<name>:"DIM",<type>:<INTEGER>,<value>:5 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..5]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DO...
{ "algorithm": "DASA_korosec", "funcId": 19, "DIM": 5, "precision": "1.000e-08", "n_all": 12, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-1.025500000000e+002) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_stu...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"BAYEDA_gallagher" &<name>:"funcId",<type>:<INTEGER>,<value>:20 &<name>:"DIM",<type>:<INTEGER>,<value>:3 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..3]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>...
{ "algorithm": "BAYEDA_gallagher", "funcId": 20, "DIM": 3, "precision": "1.000e-08", "n_all": 95, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-5.465000000000e+02) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"ONEFIFTH_auger" &<name>:"funcId",<type>:<INTEGER>,<value>:12 &<name>:"DIM",<type>:<INTEGER>,<value>:3 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..3]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<...
{ "algorithm": "ONEFIFTH_auger", "funcId": 12, "DIM": 3, "precision": "1.000e-08", "n_all": 268, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-6.211100000000e+02) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_s...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"NELDER_hansen" &<name>:"funcId",<type>:<INTEGER>,<value>:11 &<name>:"DIM",<type>:<INTEGER>,<value>:10 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..10]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:...
{ "algorithm": "NELDER_hansen", "funcId": 11, "DIM": 10, "precision": "1.000e-08", "n_all": 229, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (7.627000000000e+01) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_st...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"GA_nicolau" &<name>:"funcId",<type>:<INTEGER>,<value>:22 &<name>:"DIM",<type>:<INTEGER>,<value>:2 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..2]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DOUB...
{ "algorithm": "GA_nicolau", "funcId": 22, "DIM": 2, "precision": "1.000e-08", "n_all": 140, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-1.000000000000e+03) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_study...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"MCS_huyer" &<name>:"funcId",<type>:<INTEGER>,<value>:19 &<name>:"DIM",<type>:<INTEGER>,<value>:5 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..5]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DOUBL...
{ "algorithm": "MCS_huyer", "funcId": 19, "DIM": 5, "precision": "1.000e-08", "n_all": 93, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-1.025500000000e+02) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_study":...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"NELDER_hansen" &<name>:"funcId",<type>:<INTEGER>,<value>:6 &<name>:"DIM",<type>:<INTEGER>,<value>:40 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..40]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<...
{ "algorithm": "NELDER_hansen", "funcId": 6, "DIM": 40, "precision": "1.000e-08", "n_all": 608, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (3.590000000000e+01) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_stu...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"DASA_korosec" &<name>:"funcId",<type>:<INTEGER>,<value>:19 &<name>:"DIM",<type>:<INTEGER>,<value>:40 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..40]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<...
{ "algorithm": "DASA_korosec", "funcId": 19, "DIM": 40, "precision": "1.000e-08", "n_all": 3, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-1.025500000000e+002) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_stu...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"ONEFIFTH_auger" &<name>:"funcId",<type>:<INTEGER>,<value>:24 &<name>:"DIM",<type>:<INTEGER>,<value>:5 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..5]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<...
{ "algorithm": "ONEFIFTH_auger", "funcId": 24, "DIM": 5, "precision": "1.000e-08", "n_all": 169, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (1.026100000000e+02) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_st...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"CMA-ESPLUSSEL_auger" &<name>:"funcId",<type>:<INTEGER>,<value>:15 &<name>:"DIM",<type>:<INTEGER>,<value>:40 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..40]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<...
{ "algorithm": "CMA-ESPLUSSEL_auger", "funcId": 15, "DIM": 40, "precision": "1.000e-08", "n_all": 90, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (1.000000000000e+03) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_p...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"MA-LS-CHAIN_molina" &<name>:"funcId",<type>:<INTEGER>,<value>:8 &<name>:"DIM",<type>:<INTEGER>,<value>:5 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..5]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type...
{ "algorithm": "MA-LS-CHAIN_molina", "funcId": 8, "DIM": 5, "precision": "1.000e-08", "n_all": 722, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (1.491500000000e+02) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"ALPS_hornby" &<name>:"funcId",<type>:<INTEGER>,<value>:24 &<name>:"DIM",<type>:<INTEGER>,<value>:3 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..3]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DOU...
{ "algorithm": "ALPS_hornby", "funcId": 24, "DIM": 3, "precision": "1.000e-08", "n_all": 534, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (1.026100000000e+02) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_study...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"NELDER_hansen" &<name>:"funcId",<type>:<INTEGER>,<value>:10 &<name>:"DIM",<type>:<INTEGER>,<value>:40 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..40]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:...
{ "algorithm": "NELDER_hansen", "funcId": 10, "DIM": 40, "precision": "1.000e-08", "n_all": 258, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-5.494000000000e+01) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_s...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"GA_nicolau" &<name>:"funcId",<type>:<INTEGER>,<value>:2 &<name>:"DIM",<type>:<INTEGER>,<value>:40 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..40]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DOU...
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<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"MCS_huyer" &<name>:"funcId",<type>:<INTEGER>,<value>:7 &<name>:"DIM",<type>:<INTEGER>,<value>:5 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..5]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DOUBLE...
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<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"NEWUOA_ros" &<name>:"funcId",<type>:<INTEGER>,<value>:1 &<name>:"DIM",<type>:<INTEGER>,<value>:2 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..2]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DOUBL...
{ "algorithm": "NEWUOA_ros", "funcId": 1, "DIM": 2, "precision": "1.000e-08", "n_all": 11, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (7.948000000000e+01) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_study": ...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"MCS_huyer" &<name>:"funcId",<type>:<INTEGER>,<value>:22 &<name>:"DIM",<type>:<INTEGER>,<value>:3 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..3]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DOUBL...
{ "algorithm": "MCS_huyer", "funcId": 22, "DIM": 3, "precision": "1.000e-08", "n_all": 336, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-1.000000000000e+03) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_study"...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"NEWUOA_ros" &<name>:"funcId",<type>:<INTEGER>,<value>:24 &<name>:"DIM",<type>:<INTEGER>,<value>:3 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..3]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DOUB...
{ "algorithm": "NEWUOA_ros", "funcId": 24, "DIM": 3, "precision": "1.000e-08", "n_all": 52, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (1.026100000000e+02) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_study":...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"IPOP-SEP-CMA-ES_ros" &<name>:"funcId",<type>:<INTEGER>,<value>:13 &<name>:"DIM",<type>:<INTEGER>,<value>:20 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..20]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<...
{ "algorithm": "IPOP-SEP-CMA-ES_ros", "funcId": 13, "DIM": 20, "precision": "1.000e-08", "n_all": 897, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (2.997000000000e+01) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"NELDER_hansen" &<name>:"funcId",<type>:<INTEGER>,<value>:21 &<name>:"DIM",<type>:<INTEGER>,<value>:3 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..3]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<D...
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<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"CMA-ESPLUSSEL_auger" &<name>:"funcId",<type>:<INTEGER>,<value>:24 &<name>:"DIM",<type>:<INTEGER>,<value>:3 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..3]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<ty...
{ "algorithm": "CMA-ESPLUSSEL_auger", "funcId": 24, "DIM": 3, "precision": "1.000e-08", "n_all": 126, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (1.026100000000e+02) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_p...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"IPOP-SEP-CMA-ES_ros" &<name>:"funcId",<type>:<INTEGER>,<value>:2 &<name>:"DIM",<type>:<INTEGER>,<value>:10 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..10]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<t...
{ "algorithm": "IPOP-SEP-CMA-ES_ros", "funcId": 2, "DIM": 10, "precision": "1.000e-08", "n_all": 968, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-2.098800000000e+02) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"NELDER_hansen" &<name>:"funcId",<type>:<INTEGER>,<value>:17 &<name>:"DIM",<type>:<INTEGER>,<value>:10 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..10]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:...
{ "algorithm": "NELDER_hansen", "funcId": 17, "DIM": 10, "precision": "1.000e-08", "n_all": 46, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-1.694000000000e+01) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_st...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"MA-LS-CHAIN_molina" &<name>:"funcId",<type>:<INTEGER>,<value>:20 &<name>:"DIM",<type>:<INTEGER>,<value>:10 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..10]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<t...
{ "algorithm": "MA-LS-CHAIN_molina", "funcId": 20, "DIM": 10, "precision": "1.000e-08", "n_all": 471, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-5.465000000000e+02) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"iAMALGAM_bosman" &<name>:"funcId",<type>:<INTEGER>,<value>:13 &<name>:"DIM",<type>:<INTEGER>,<value>:40 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..40]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type...
{ "algorithm": "iAMALGAM_bosman", "funcId": 13, "DIM": 40, "precision": "1.000e-08", "n_all": 899, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (2.997000000000e+01) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"MCS_huyer" &<name>:"funcId",<type>:<INTEGER>,<value>:14 &<name>:"DIM",<type>:<INTEGER>,<value>:2 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..2]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DOUBL...
{ "algorithm": "MCS_huyer", "funcId": 14, "DIM": 2, "precision": "1.000e-08", "n_all": 320, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-5.235000000000e+01) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_study"...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"AMALGAM_bosman" &<name>:"funcId",<type>:<INTEGER>,<value>:7 &<name>:"DIM",<type>:<INTEGER>,<value>:3 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..3]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<D...
{ "algorithm": "AMALGAM_bosman", "funcId": 7, "DIM": 3, "precision": "1.000e-08", "n_all": 234, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (9.294000000000e+01) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_stu...
<name>:"bbob2009",<metric>:"best_noisefree_f_minus_Fopt",<goal>:<MINIMIZE>,<algorithm>:"NEWUOA_ros" &<name>:"funcId",<type>:<INTEGER>,<value>:22 &<name>:"DIM",<type>:<INTEGER>,<value>:40 &<name>:"precision",<type>:<DOUBLE>,<value>:1.000e-08 &<name>:"x[1..40]",<type>:<DOUBLE>,<scale_type>:<LINEAR> &<name>:"y",<type>:<DO...
{ "algorithm": "NEWUOA_ros", "funcId": 22, "DIM": 40, "precision": "1.000e-08", "n_all": 382, "n_used": 300, "header_hint": "% function evaluation | noise-free fitness - Fopt (-1.000000000000e+03) | best noise-free fitness - Fopt | measured fitness | best measured fitness | x1 | x2...", "trials_per_stud...