{"id":16533,"date":"2020-07-22T08:00:05","date_gmt":"2020-07-22T06:00:05","guid":{"rendered":"https:\/\/zema.de\/?post_type=dt_portfolio&#038;p=16533"},"modified":"2020-07-22T12:12:56","modified_gmt":"2020-07-22T10:12:56","slug":"easy-ml","status":"publish","type":"dt_portfolio","link":"https:\/\/zema.de\/fr\/projekt\/easy-ml\/","title":{"rendered":"EaSy ML"},"content":{"rendered":"<div class=\"wpb-content-wrapper\"><div class=\"vc_row wpb_row vc_row-fluid\"><div class=\"wpb_column vc_column_container vc_col-sm-12\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"ult-spacer spacer-69e0cd1609a36\" data-id=\"69e0cd1609a36\" data-height=\"30\" data-height-mobile=\"30\" data-height-tab=\"30\" data-height-tab-portrait=\"\" data-height-mobile-landscape=\"\" style=\"clear:both;display:block;\"><\/div><div class=\"hr-thin style-line\" style=\"width: 100%;border-top-width: 1px;\"><\/div><div class=\"ult-spacer spacer-69e0cd1609a7b\" data-id=\"69e0cd1609a7b\" data-height=\"30\" data-height-mobile=\"30\" data-height-tab=\"30\" data-height-tab-portrait=\"\" data-height-mobile-landscape=\"\" style=\"clear:both;display:block;\"><\/div><div class=\"dt-fancy-separator h1-size\" style=\"width: 100%;\"><div class=\"dt-fancy-title\"><span class=\"separator-holder separator-left\"><\/span>EaSy ML \u2013 Assistance Evaluation System for Machine Learning<span class=\"separator-holder separator-right\"><\/span><\/div><\/div><\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_row-fluid\"><div class=\"wpb_column vc_column_container vc_col-sm-12\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"ult-spacer spacer-69e0cd160a16f\" data-id=\"69e0cd160a16f\" data-height=\"30\" data-height-mobile=\"30\" data-height-tab=\"30\" data-height-tab-portrait=\"\" data-height-mobile-landscape=\"\" style=\"clear:both;display:block;\"><\/div><div class=\"hr-thin style-line\" style=\"width: 100%;border-top-width: 1px;\"><\/div><\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_row-fluid wpb_animate_when_almost_visible wpb_slideInUp slideInUp\"><div class=\"right wpb_column vc_column_container vc_col-sm-8\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"ult-spacer spacer-69e0cd160a683\" data-id=\"69e0cd160a683\" data-height=\"30\" data-height-mobile=\"30\" data-height-tab=\"30\" data-height-tab-portrait=\"\" data-height-mobile-landscape=\"\" style=\"clear:both;display:block;\"><\/div><style type=\"text\/css\" data-type=\"the7_shortcodes-inline-css\">.icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b .text-icon {\n  width: 128px;\n  height: 128px;\n  line-height: 128px;\n  font-size: 64px;\n  border-radius: 200px;\n  margin: 45px 0px 0px 60px;\n}\n.icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b .text-icon .icon-inner {\n  min-width: 128px;\n  min-height: 128px;\n  border-radius: 200px;\n}\n@media all and 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.icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b .text-icon.dt-icon-hover-off .soc-font-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b .text-icon.dt-icon-hover-off .soc-font-icon,\n#page .icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b .text-icon.dt-icon-hover-off .soc-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b .text-icon.dt-icon-hover-off .soc-icon {\n  color: #ffffff;\n  background: none;\n}\n.icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b.layout-1 {\n  grid-template-columns: 128px minmax(0,1fr);\n  grid-column-gap: 60px;\n}\n.icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b.layout-2 {\n  grid-template-columns: minmax(0,1fr) 128px;\n  grid-column-gap: 60px;\n}\n.icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b.layout-2 .text-icon {\n  margin-left: 0;\n}\n.icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b.layout-3 {\n  grid-template-columns: 128px minmax(0,1fr);\n}\n.icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b.layout-3 .dt-text-title {\n  margin-left: 0px;\n}\n.icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b .dt-text-title,\n.icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b .dt-text-title a {\n  color: #558398;\n  background: none;\n  font-weight: bold;\n}\n.icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b .dt-text-title {\n  margin-bottom: 10px;\n}\n.icon-with-text-shortcode.icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b .dt-text-desc {\n  margin-bottom: 30px;\n}<\/style><div class=\"icon-with-text-shortcode  icon-text-id-6bdc12c082e0e3c0d3b01a5ff7e2091b layout-2\" ><span   class=\"text-icon dt-icon-bg-on dt-icon-hover-off\" ><span class=\"icon-inner\"><i class=\"dt-regular-icon soc-icon Defaults-exclamation\"><\/i><i class=\"dt-hover-icon soc-icon Defaults-exclamation\"><\/i><\/span><\/span><h3 class=\"dt-text-title\"  >probl\u00e9matique<\/h3><div class=\"dt-text-desc\">Une production optimale en termes de co\u00fbts associ\u00e9e \u00e0 une qualit\u00e9 \u00e9lev\u00e9e des processus et des produits est une promesse centrale de l'industrie 4.0 et de la num\u00e9risation qui l'accompagne.<br \/>\nIl existe de nombreux exemples de la fa\u00e7on dont les techniques d'apprentissage automatique (ML) aident \u00e0 analyser les donn\u00e9es, \u00e0 acqu\u00e9rir de nouvelles connaissances sur la production et \u00e0 optimiser la production.<br \/>\nCependant, une compr\u00e9hension superficielle des algorithmes et des proc\u00e9dures n'est souvent pas suffisante pour tirer des conclusions significatives des donn\u00e9es de production.<\/div><\/div><div class=\"hr-thin style-dotted\" style=\"width: 100%;border-top-width: 1px;\"><\/div><\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-4\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"ult-spacer spacer-69e0cd160a9fc\" data-id=\"69e0cd160a9fc\" data-height=\"105\" data-height-mobile=\"105\" data-height-tab=\"105\" data-height-tab-portrait=\"\" data-height-mobile-landscape=\"\" style=\"clear:both;display:block;\"><\/div><\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_row-fluid wpb_animate_when_almost_visible wpb_slideInUp slideInUp\"><div class=\"wpb_column vc_column_container vc_col-sm-4\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"ult-spacer spacer-69e0cd160ae43\" data-id=\"69e0cd160ae43\" data-height=\"95\" data-height-mobile=\"95\" data-height-tab=\"95\" data-height-tab-portrait=\"\" data-height-mobile-landscape=\"\" style=\"clear:both;display:block;\"><\/div><\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-8\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"ult-spacer spacer-69e0cd160afe6\" data-id=\"69e0cd160afe6\" data-height=\"30\" data-height-mobile=\"30\" data-height-tab=\"30\" data-height-tab-portrait=\"\" data-height-mobile-landscape=\"\" style=\"clear:both;display:block;\"><\/div><style type=\"text\/css\" data-type=\"the7_shortcodes-inline-css\">.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon {\n  width: 128px;\n  height: 128px;\n  line-height: 128px;\n  font-size: 64px;\n  border-radius: 200px;\n  margin: 15px 60px 0px 0px;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon .icon-inner {\n  min-width: 128px;\n  min-height: 128px;\n  border-radius: 200px;\n}\n@media all and (-ms-high-contrast: none) {\n  .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon .icon-inner {\n    height: 128px;\n  }\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon .dt-hover-icon {\n  line-height: 128px;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon:before,\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon:after,\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon .icon-inner:before,\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon .icon-inner:after {\n  min-width: 100%;\n  min-height: 100%;\n  padding: inherit;\n  border-radius: inherit;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-border-on:before {\n  border-width: 2px;\n  border-style: solid;\n}\n.dt-icon-border-dashed.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-border-on:before {\n  border-style: dashed;\n}\n.dt-icon-border-dotted.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-border-on:before {\n  border-style: dotted;\n}\n.dt-icon-border-double.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-border-on:before {\n  border-style: double;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-border-dashed.dt-icon-border-on:before {\n  border-style: dashed;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-border-dotted.dt-icon-border-on:before {\n  border-style: dotted;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-border-double.dt-icon-border-on:before {\n  border-style: double;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-border-on:after {\n  border-width: 2px;\n  border-style: solid;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-border-dashed.dt-icon-hover-border-on:after {\n  border-style: dashed;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-border-dotted.dt-icon-hover-border-on:after {\n  border-style: dotted;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-border-double.dt-icon-hover-border-on:after {\n  border-style: double;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-on:hover {\n  font-size: 64px;\n}\n#page .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-on:hover .soc-font-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-on:hover .soc-font-icon,\n#page .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-on:hover .soc-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-on:hover .soc-icon {\n  color: #fff;\n  background: none;\n}\n#page .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-on:not(:hover) .soc-font-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-on:not(:hover) .soc-font-icon,\n#page .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-on:not(:hover) .soc-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-on:not(:hover) .soc-icon,\n#page .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-off .soc-font-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-off .soc-font-icon,\n#page .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-off .soc-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .text-icon.dt-icon-hover-off .soc-icon {\n  color: #ffffff;\n  background: none;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f.layout-1 {\n  grid-template-columns: 128px minmax(0,1fr);\n  grid-column-gap: 60px;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f.layout-2 {\n  grid-template-columns: minmax(0,1fr) 128px;\n  grid-column-gap: 0px;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f.layout-2 .text-icon {\n  margin-left: 0;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f.layout-3 {\n  grid-template-columns: 128px minmax(0,1fr);\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f.layout-3 .dt-text-title {\n  margin-left: 60px;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .dt-text-title,\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .dt-text-title a {\n  color: #558398;\n  background: none;\n  font-weight: bold;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .dt-text-title {\n  margin-bottom: 10px;\n}\n.icon-with-text-shortcode.icon-text-id-908ee9d39fc6defb0faffe03cbf2157f .dt-text-desc {\n  margin-bottom: 30px;\n}<\/style><div class=\"icon-with-text-shortcode  icon-text-id-908ee9d39fc6defb0faffe03cbf2157f layout-1\" ><span   class=\"text-icon dt-icon-bg-on dt-icon-hover-off\" ><span class=\"icon-inner\"><i class=\"dt-regular-icon soc-icon icomoon-the7-font-the7-map-02\"><\/i><i class=\"dt-hover-icon soc-icon icomoon-the7-font-the7-map-02\"><\/i><\/span><\/span><h3 class=\"dt-text-title\"  >Objectif<\/h3><div class=\"dt-text-desc\">L'objectif du projet EaSyML est maintenant de r\u00e9duire de mani\u00e8re significative le co\u00fbt \u00e9lev\u00e9 de l'optimisation de la production par le machine learning pour les PME en permettant aux op\u00e9rateurs eux-m\u00eames d'appliquer les m\u00e9thodes et algorithmes de machine learning aux donn\u00e9es collect\u00e9es.<\/div><\/div><div class=\"hr-thin style-dotted\" style=\"width: 100%;border-top-width: 1px;\"><\/div><\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_row-fluid wpb_animate_when_almost_visible wpb_slideInUp slideInUp\"><div class=\"right wpb_column vc_column_container vc_col-sm-8\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"ult-spacer spacer-69e0cd160b51c\" data-id=\"69e0cd160b51c\" data-height=\"30\" data-height-mobile=\"30\" data-height-tab=\"30\" data-height-tab-portrait=\"\" data-height-mobile-landscape=\"\" style=\"clear:both;display:block;\"><\/div><style type=\"text\/css\" data-type=\"the7_shortcodes-inline-css\">.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon {\n  width: 128px;\n  height: 128px;\n  line-height: 128px;\n  font-size: 64px;\n  border-radius: 200px;\n  margin: 120px 0px 0px 60px;\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon .icon-inner {\n  min-width: 128px;\n  min-height: 128px;\n  border-radius: 200px;\n}\n@media all and (-ms-high-contrast: none) {\n  .icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon .icon-inner {\n    height: 128px;\n  }\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon .dt-hover-icon {\n  line-height: 128px;\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon:before,\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon:after,\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon .icon-inner:before,\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon .icon-inner:after {\n  min-width: 100%;\n  min-height: 100%;\n  padding: inherit;\n  border-radius: inherit;\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-border-on:before {\n  border-width: 2px;\n  border-style: solid;\n}\n.dt-icon-border-dashed.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-border-on:before {\n  border-style: dashed;\n}\n.dt-icon-border-dotted.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-border-on:before {\n  border-style: dotted;\n}\n.dt-icon-border-double.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-border-on:before {\n  border-style: double;\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-border-dashed.dt-icon-border-on:before {\n  border-style: dashed;\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-border-dotted.dt-icon-border-on:before {\n  border-style: 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.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-hover-on:hover .soc-font-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-hover-on:hover .soc-font-icon,\n#page .icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-hover-on:hover .soc-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-hover-on:hover .soc-icon {\n  color: #fff;\n  background: none;\n}\n#page .icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-hover-on:not(:hover) .soc-font-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-hover-on:not(:hover) .soc-font-icon,\n#page .icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-hover-on:not(:hover) .soc-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-hover-on:not(:hover) .soc-icon,\n#page .icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-hover-off .soc-font-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-hover-off .soc-font-icon,\n#page .icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-hover-off .soc-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .text-icon.dt-icon-hover-off .soc-icon {\n  color: #ffffff;\n  background: none;\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202.layout-1 {\n  grid-template-columns: 128px minmax(0,1fr);\n  grid-column-gap: 60px;\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202.layout-2 {\n  grid-template-columns: minmax(0,1fr) 128px;\n  grid-column-gap: 60px;\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202.layout-2 .text-icon {\n  margin-left: 0;\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202.layout-3 {\n  grid-template-columns: 128px minmax(0,1fr);\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202.layout-3 .dt-text-title {\n  margin-left: 0px;\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .dt-text-title,\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .dt-text-title a {\n  color: #558398;\n  background: none;\n  font-weight: bold;\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .dt-text-title {\n  margin-bottom: 10px;\n}\n.icon-with-text-shortcode.icon-text-id-2615030b9fba76daa29861cb7f169202 .dt-text-desc {\n  margin-bottom: 30px;\n}<\/style><div class=\"icon-with-text-shortcode  icon-text-id-2615030b9fba76daa29861cb7f169202 layout-2\" ><span   class=\"text-icon dt-icon-bg-on dt-icon-hover-off\" ><span class=\"icon-inner\"><i class=\"dt-regular-icon soc-icon icomoon-font-awesome-14x14-map-signs\"><\/i><i class=\"dt-hover-icon soc-icon icomoon-font-awesome-14x14-map-signs\"><\/i><\/span><\/span><h3 class=\"dt-text-title\"  >Proc\u00e9dure \u00e0 suivre<\/h3><div class=\"dt-text-desc\">Gr\u00e2ce \u00e0 l'intelligence artificielle, un syst\u00e8me d'analyse qui compl\u00e8te l'acquisition de donn\u00e9es machine d'ODION GmbH fournit un tuteur intelligent qui aide l'ouvrier \u00e0 choisir et \u00e0 appliquer des m\u00e9thodes d'apprentissage machine et donc \u00e0 analyser les donn\u00e9es de production.<br \/>\nL\u2019op\u00e9rateur, en tant qu\u2019expert de la production, peut ainsi facilement identifier des questions et des sc\u00e9narios int\u00e9ressants et v\u00e9rifier la plausibilit\u00e9 des r\u00e9sultats d\u2019analyse fournis. Les connaissances peuvent ensuite \u00eatre int\u00e9gr\u00e9es dans une question ou une \u00e9valuation plus approfondie, plus nuanc\u00e9e ou compl\u00e8tement diff\u00e9rente \u00e0 l'aide du tuteur d'IA.<br \/>\nLe syst\u00e8me doit ainsi permettre \u00e0 chaque PME d'utiliser le savoir-faire des ouvriers en mati\u00e8re de production et de machines afin d'utiliser ce savoir-faire pour d\u00e9couvrir des relations et des situations de production difficiles et incompr\u00e9hensibles pour l'homme en raison de la charge de donn\u00e9es complexe.<\/div><\/div><div class=\"hr-thin style-dotted\" style=\"width: 100%;border-top-width: 1px;\"><\/div><\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-4\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"ult-spacer spacer-69e0cd160b7b1\" data-id=\"69e0cd160b7b1\" data-height=\"140\" data-height-mobile=\"140\" data-height-tab=\"140\" data-height-tab-portrait=\"\" data-height-mobile-landscape=\"\" style=\"clear:both;display:block;\"><\/div><\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_row-fluid wpb_animate_when_almost_visible wpb_slideInUp slideInUp\"><div class=\"wpb_column vc_column_container vc_col-sm-4\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"ult-spacer spacer-69e0cd160bc4b\" data-id=\"69e0cd160bc4b\" data-height=\"145\" data-height-mobile=\"145\" data-height-tab=\"145\" data-height-tab-portrait=\"\" data-height-mobile-landscape=\"\" style=\"clear:both;display:block;\"><\/div><\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-8\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"ult-spacer spacer-69e0cd160be56\" data-id=\"69e0cd160be56\" data-height=\"30\" data-height-mobile=\"30\" data-height-tab=\"30\" data-height-tab-portrait=\"\" data-height-mobile-landscape=\"\" style=\"clear:both;display:block;\"><\/div><style type=\"text\/css\" data-type=\"the7_shortcodes-inline-css\">.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon {\n  width: 128px;\n  height: 128px;\n  line-height: 128px;\n  font-size: 64px;\n  border-radius: 200px;\n  margin: 150px 60px 0px 0px;\n}\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon .icon-inner {\n  min-width: 128px;\n  min-height: 128px;\n  border-radius: 200px;\n}\n@media all and (-ms-high-contrast: none) {\n  .icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon .icon-inner {\n    height: 128px;\n  }\n}\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon .dt-hover-icon {\n  line-height: 128px;\n}\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon:before,\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon:after,\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon 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.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon.dt-icon-hover-on:not(:hover) .soc-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon.dt-icon-hover-on:not(:hover) .soc-icon,\n#page .icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon.dt-icon-hover-off .soc-font-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon.dt-icon-hover-off .soc-font-icon,\n#page .icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon.dt-icon-hover-off .soc-icon,\n#phantom .icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .text-icon.dt-icon-hover-off .soc-icon {\n  color: #ffffff;\n  background: none;\n}\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224.layout-1 {\n  grid-template-columns: 128px minmax(0,1fr);\n  grid-column-gap: 60px;\n}\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224.layout-2 {\n  grid-template-columns: minmax(0,1fr) 128px;\n  grid-column-gap: 0px;\n}\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224.layout-2 .text-icon {\n  margin-left: 0;\n}\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224.layout-3 {\n  grid-template-columns: 128px minmax(0,1fr);\n}\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224.layout-3 .dt-text-title {\n  margin-left: 60px;\n}\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .dt-text-title,\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .dt-text-title a {\n  color: #558398;\n  background: none;\n  font-weight: bold;\n}\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .dt-text-title {\n  margin-bottom: 10px;\n}\n.icon-with-text-shortcode.icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 .dt-text-desc {\n  margin-bottom: 30px;\n}<\/style><div class=\"icon-with-text-shortcode  icon-text-id-31dfb6f3d018f5d383f8709f73a9d224 layout-1\" ><span   class=\"text-icon dt-icon-bg-on dt-icon-hover-off\" ><span class=\"icon-inner\"><i class=\"dt-regular-icon soc-icon fas fa-industry\"><\/i><i class=\"dt-hover-icon soc-icon fas fa-industry\"><\/i><\/span><\/span><h3 class=\"dt-text-title\"  >Concept de valorisation:<\/h3><div class=\"dt-text-desc\">Les m\u00e9thodologies ML mises en \u0153uvre dans le cadre du projet, bas\u00e9es sur les algorithmes MoSes-Pro d\u00e9velopp\u00e9s par ZeMA et soutenues par l'assistance d'un syst\u00e8me de tutoriels intelligents, peuvent \u00eatre appliqu\u00e9es \u00e0 diff\u00e9rents sc\u00e9narios au sein de la production. Les PME participant au projet peuvent influencer activement la d\u00e9cision quant aux sc\u00e9narios \u00e0 examiner ou aux questions importantes ou urgentes pour elles.<\/p>\n<p>Jusqu'\u00e0 pr\u00e9sent, les sc\u00e9narios d'application suivants ont \u00e9t\u00e9 identifi\u00e9s:<br \/>\nIdentifier les relations complexes dans la production<br \/>\n\u2022 D\u00e9tection des anomalies<br \/>\n\u2022 Autosurveillance du capteur<br \/>\n\u2022 Maintenance pr\u00e9dictive<br \/>\n\u2022 Pr\u00e9vision de la qualit\u00e9 des produits<\/p>\n<p>Personne \u00e0 contacter: Titian Schneider<br \/>\nDirection du projet: Prof. Dr. Andreas Sch\u00fctze<br \/>\nDur\u00e9e: 01.03.2019 \u2013 28.02.2021<\/div><\/div><\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_row-fluid wpb_animate_when_almost_visible wpb_slideInUp slideInUp\"><div class=\"wpb_column vc_column_container vc_col-sm-6\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><style type=\"text\/css\" data-type=\"the7_shortcodes-inline-css\">.shortcode-single-image-wrap.shortcode-single-image-571721de5504bfa48d4c6132f31da384.enable-bg-rollover .rollover i,\n.shortcode-single-image-wrap.shortcode-single-image-571721de5504bfa48d4c6132f31da384.enable-bg-rollover .rollover-video i {\n  background: -webkit-linear-gradient();\n  background: linear-gradient();\n}\n.shortcode-single-image-wrap.shortcode-single-image-571721de5504bfa48d4c6132f31da384 .rollover-icon {\n  font-size: 32px;\n  color: #ffffff;\n  min-width: 44px;\n  min-height: 44px;\n  line-height: 44px;\n  border-radius: 100px;\n  border-style: solid;\n  border-width: 0px;\n}\n.dt-icon-bg-on.shortcode-single-image-wrap.shortcode-single-image-571721de5504bfa48d4c6132f31da384 .rollover-icon {\n  background: rgba(255,255,255,0.3);\n  box-shadow: none;\n}<\/style><div class=\"shortcode-single-image-wrap shortcode-single-image-571721de5504bfa48d4c6132f31da384 alignnone  enable-bg-rollover dt-icon-bg-off\" style=\"margin-top:0px; 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Il existe de nombreux exemples de la fa\u00e7on dont les techniques d'apprentissage automatique (ML) aident \u00e0 analyser les donn\u00e9es, \u00e0 acqu\u00e9rir de nouvelles connaissances sur la production et \u00e0 optimiser la production....<\/p>","protected":false},"author":14,"featured_media":16537,"comment_status":"closed","ping_status":"closed","template":"","dt_portfolio_category":[42],"dt_portfolio_tags":[],"class_list":["post-16533","dt_portfolio","type-dt_portfolio","status-publish","has-post-thumbnail","hentry","dt_portfolio_category-multimodal-smart-sensing","dt_portfolio_category-42","description-off"],"yoast_head":"<!-- This site is optimized with the Yoast SEO plugin v27.4 - https:\/\/yoast.com\/product\/yoast-seo-wordpress\/ -->\n<title>Das Projekt EaSy ML am Forschungszentrum - ZeMA gGmbH Saarbr\u00fccken<\/title>\n<meta name=\"description\" content=\"Hohe Kosten f\u00fcr die Produktionsoptimierung mittels maschinellem Lernen f\u00fcr KMU signifikant reduzieren mit dem Projekt EaSy ML \u25b6 Erfahren Sie mehr!\" \/>\n<meta name=\"robots\" content=\"index, follow, max-snippet:-1, max-image-preview:large, max-video-preview:-1\" \/>\n<link rel=\"canonical\" href=\"https:\/\/zema.de\/fr\/projekt\/easy-ml\/\" \/>\n<meta property=\"og:locale\" content=\"fr_FR\" \/>\n<meta property=\"og:type\" content=\"article\" \/>\n<meta property=\"og:title\" content=\"Das Projekt EaSy ML am Forschungszentrum - 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