tportseq Output


0: Iteration: 0 Max: 0.999838 Min: 1.60381e-28 Norm: 0.37756
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0: Iteration: 1 Max: 0.999892 Min: -1.63113e-12 Norm: 0.378644
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0: Iteration: 2 Max: 1.00004 Min: -2.6177e-10 Norm: 0.379713
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0: Iteration: 4 Max: 1.00036 Min: -2.99928e-08 Norm: 0.381843
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0: Iteration: 64 Max: 1.05737 Min: -0.0374171 Norm: 0.397717
Bye !


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