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Development and Optimization of VGF-GaAs Crystal Growth Process Using Data Mining and Machine Learning Techniques
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$a Development and Optimization of VGF-GaAs Crystal Growth Process Using Data Mining and Machine Learning Techniques 215 $a 20 s. 463 -1
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$3 cav_un_auth*0100761 $a Holeňa $b Martin $p UIVT-O $i Oddělení strojového učení $j Department of Machine Learning $w Department of Machine Learning $T Ústav informatiky AV ČR, v. v. i. 856 $u http://dx.doi.org/10.3390/cryst11101218 $9 RIV
Number of the records: 1