{"id":46203,"date":"2026-02-03T17:07:21","date_gmt":"2026-02-03T13:37:21","guid":{"rendered":"https:\/\/caeassistant.com\/?post_type=product&#038;p=46203"},"modified":"2026-05-18T13:06:17","modified_gmt":"2026-05-18T09:36:17","slug":"using-deep-learning-in-abaqus-umat-pytorch","status":"publish","type":"product","link":"https:\/\/dev.caeassistant.com\/ko\/product\/using-deep-learning-in-abaqus-umat-pytorch\/","title":{"rendered":"Using Deep Learning in Abaqus: UMAT + PyTorch"},"content":{"rendered":"<div class=\"wpb-content-wrapper\"><section data-vc-full-width=\"true\" data-vc-full-width-temp=\"true\" data-vc-full-width-init=\"false\" class=\"vc_section vc_custom_1744108144281 vc_section-has-fill\"><div data-vc-full-width=\"true\" data-vc-full-width-temp=\"true\" data-vc-full-width-init=\"false\" class=\"vc_row wpb_row vc_row-fluid vc_custom_1748511058502 vc_row-has-fill\"><div class=\"wpb_column vc_column_container vc_col-sm-4\"><div class=\"vc_column-inner vc_custom_1500915066158\"><div class=\"wpb_wrapper\">[woodmart_info_box image=&#8221;47504&#8243; 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subtitle=&#8221;Using Deep Learning in Abaqus:<br \/>\nUMAT + PyTorch&#8221; img_size=&#8221;medium&#8221;][\/woodmart_info_box]<\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-4 vc_col-has-fill\"><div class=\"vc_column-inner vc_custom_1748433731583\"><div class=\"wpb_wrapper\"><div class=\"vc_row wpb_row vc_inner vc_row-fluid\"><div class=\"wpb_column vc_column_container vc_col-sm-12\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\">[woodmart_title align=&#8221;left&#8221; size=&#8221;medium&#8221; font_weight=&#8221;200&#8243; title_decoration_style=&#8221;bordered&#8221; woodmart_css_id=&#8221;67f4e446dacb9&#8243; title=&#8221;What <strong><u>\ud3ec\ud568\ub428<\/u><\/strong> in this package?&#8221; title_font_size=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zaXplIiwiY3NzX2FyZ3MiOnsiZm9udC1zaXplIjpbIiAud29vZG1hcnQtdGl0bGUtY29udGFpbmVyIl19LCJzZWxlY3Rvcl9pZCI6IjY3ZjRlNDQ2ZGFjYjkiLCJkYXRhIjp7ImRlc2t0b3AiOiIyNnB4IiwidGFibGV0IjoiMzJweCIsIm1vYmlsZSI6IjI2cHgifX0=&#8221; 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image_alignment=&#8221;left&#8221; title_size=&#8221;small&#8221; svg_animation=&#8221;yes&#8221; title=&#8221;Theory &amp;<br \/>\nPractice&#8221; img_size=&#8221;45&#215;45&#8243; woodmart_css_id=&#8221;69ecbcc164c3c&#8221; info_box_inline=&#8221;no&#8221; wd_hide_on_desktop=&#8221;no&#8221; wd_hide_on_tablet_landscape=&#8221;no&#8221; wd_hide_on_tablet=&#8221;no&#8221; wd_hide_on_mobile=&#8221;no&#8221; responsive_spacing=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zcGFjaW5nIiwic2VsZWN0b3JfaWQiOiI2OWVjYmNjMTY0YzNjIiwic2hvcnRjb2RlIjoid29vZG1hcnRfaW5mb19ib3giLCJkYXRhIjp7InRhYmxldCI6e30sIm1vYmlsZSI6e319fQ==&#8221; wd_z_index=&#8221;no&#8221;][\/woodmart_info_box]<\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/div><div class=\"vc_row-full-width vc_clearfix\"><\/div><\/section><div class=\"vc_row-full-width vc_clearfix\"><\/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=\"vc_row wpb_row vc_inner 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=\"vc_empty_space\"   style=\"height: 64px\"><span class=\"vc_empty_space_inner\"><\/span><\/div>\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<h1 data-sourcepos=\"3:1-3:895\"><span style=\"font-family: 'arial black', sans-serif; font-size: 24pt;\">\ud328\ud0a4\uc9c0 \uc124\uba85<\/span><\/h1>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_inner vc_row-fluid\"><div class=\"wpb_column vc_column_container vc_col-sm-10\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<p data-start=\"24\" data-end=\"736\"><span style=\"font-family: arial, helvetica, sans-serif; font-size: 14pt;\">Modern <strong>constitutive modeling<\/strong> is evolving beyond traditional hand-crafted equations toward data-driven formulations powered by <strong>neural networks<\/strong>. In this package, you will learn how to <strong>implement that advanced workflow directly inside Abaqus by<\/strong> <strong>linking UMAT with PyTorch<\/strong>. Instead of relying only on classical material laws, a trained neural network will be used to represent strain energy density functions, generate stress responses, and provide the consistent tangent stiffness required for nonlinear finite element simulations. The course begins with the fundamentals of tensors, continuum mechanics, and automatic differentiation, giving you the theoretical base needed to understand smart constitutive modeling.<\/span><\/p>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_inner vc_row-fluid\"><div class=\"wpb_column vc_column_container vc_col-sm-10\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<p><span style=\"font-family: arial, helvetica, sans-serif; font-size: 14pt;\">The package then moves into practical implementation, where you will learn <strong>how to export trained network weights and biases from PyTorch<\/strong>, rebuild the forward pass inside a <strong>Fortran UMAT<\/strong>, and deploy <strong>AI-based material behavior in Abaqus<\/strong>. Through a hands-on workshop, you will replace the Neo-Hookean hyperelastic model with a Fully Connected Neural Network (FCNN), validate derivatives, and compare accuracy and speed against the native Abaqus model. This package is ideal for engineers and researchers who want to integrate Deep learning into real finite element workflows.<\/span><\/p>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/div><div data-vc-full-width=\"true\" data-vc-full-width-temp=\"true\" data-vc-full-width-init=\"false\" class=\"vc_row wpb_row vc_row-fluid vc_custom_1655899305674 vc_row-has-fill\"><div class=\"wpb_column vc_column_container vc_col-sm-12\"><div class=\"vc_column-inner vc_custom_1690468703421\"><div class=\"wpb_wrapper\">[woodmart_text_block woodmart_css_id=&#8221;69ecc82339c72&#8243; woodmart_inline=&#8221;no&#8221; responsive_spacing=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zcGFjaW5nIiwic2VsZWN0b3JfaWQiOiI2OWVjYzgyMzM5YzcyIiwic2hvcnRjb2RlIjoid29vZG1hcnRfdGV4dF9ibG9jayIsImRhdGEiOnsidGFibGV0Ijp7fSwibW9iaWxlIjp7fX19&#8243; parallax_scroll=&#8221;no&#8221; wd_hide_on_desktop=&#8221;no&#8221; wd_hide_on_tablet_landscape=&#8221;no&#8221; wd_hide_on_tablet=&#8221;no&#8221; wd_hide_on_mobile=&#8221;no&#8221;]<\/p>\n<h2><span style=\"font-family: arial, helvetica, sans-serif; font-size: 14pt;\">\uc774 \ud328\ud0a4\uc9c0\uc5d0\ub294 \ubb34\uc5c7\uc774 \ud3ec\ud568\ub418\uc5b4 \uc788\ub098\uc694?<\/span><\/h2>\n<p data-start=\"1291\" data-end=\"1493\"><span style=\"font-family: arial, helvetica, sans-serif;\"><span style=\"font-size: 14pt;\">This package is designed to give you both the <strong>\uc774\ub860\uc801\uc778<\/strong> understanding and <strong>\ud604\uc2e4\uc801\uc778<\/strong> implementation skills required to build <strong>intelligent constitutive models<\/strong> in Abaqus using deep learning frameworks.<\/span><br \/>\n<\/span><\/p>\n<h4 data-start=\"1291\" data-end=\"1493\">Lession: Theorical Undrestanding<\/h4>\n<p data-start=\"1495\" data-end=\"1820\"><span style=\"font-family: arial, helvetica, sans-serif; font-size: 14pt;\">You will first learn how neural networks can replace traditional closed-form constitutive equations by approximating material energy potentials. The course explains how strain energy density functions can be learned from data and then used to derive stress responses and tangent operators required in finite element analysis.<\/span><\/p>\n<p data-start=\"1822\" data-end=\"2267\"><span style=\"font-family: arial, helvetica, sans-serif; font-size: 14pt;\">A strong focus is placed on tensor mathematics and continuum mechanics fundamentals, ensuring that the neural network outputs remain physically meaningful within nonlinear simulations. You will also understand how gradients and second-order derivatives are obtained using PyTorch automatic differentiation. This is essential because Abaqus UMAT requires not only stress updates but also a consistent DDSDDE tangent matrix for robust convergence.<\/span><\/p>\n<h4 data-start=\"1822\" data-end=\"2267\">Workshop1: Practical Implementation<\/h4>\n<p data-start=\"2269\" data-end=\"2635\"><span style=\"font-family: arial, helvetica, sans-serif; font-size: 14pt;\">A major practical section of the course covers the offline deployment strategy. You will learn how to extract trained weights and biases from PyTorch, translate them into Fortran arrays, and manually reconstruct the network\u2019s forward propagation inside a UMAT subroutine. This enables AI-driven constitutive behavior without requiring Python during Abaqus execution.<\/span><\/p>\n<p data-start=\"2637\" data-end=\"3009\"><span style=\"font-family: arial, helvetica, sans-serif; font-size: 14pt;\">In the workshop section, you will implement a Fully Connected Neural Network to emulate Neo-Hookean hyperelasticity, verify stress and stiffness accuracy, and run a single-element benchmark model in Abaqus. Finally, you will compare computational speed, numerical stability, and predictive capability between the neural-network UMAT and the standard Abaqus material model.<\/span><\/p>\n<p data-start=\"3011\" data-end=\"3161\"><span style=\"font-family: arial, helvetica, sans-serif; font-size: 14pt;\">By the end of the package, you will have a complete roadmap for integrating deep learning material models into industrial finite element workflows.<\/span><\/p>\n<p>[\/woodmart_text_block][woodmart_button style=&#8221;link&#8221; color=&#8221;primary&#8221; align=&#8221;left&#8221; woodmart_css_id=&#8221;6981dc5c0a870&#8243; title=&#8221;Read More&#8221; full_width=&#8221;no&#8221; button_inline=&#8221;no&#8221; button_smooth_scroll=&#8221;no&#8221; wd_button_collapsible_content=&#8221;yes&#8221; responsive_spacing=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zcGFjaW5nIiwic2VsZWN0b3JfaWQiOiI2OTgxZGM1YzBhODcwIiwic2hvcnRjb2RlIjoid29vZG1hcnRfYnV0dG9uIiwiZGF0YSI6eyJ0YWJsZXQiOnt9LCJtb2JpbGUiOnt9fX0=&#8221; wd_hide_on_desktop=&#8221;no&#8221; wd_hide_on_tablet=&#8221;no&#8221; wd_hide_on_mobile=&#8221;no&#8221;]<\/div><\/div><\/div><\/div><div class=\"vc_row-full-width vc_clearfix\"><\/div><section data-vc-full-width=\"true\" data-vc-full-width-temp=\"true\" data-vc-full-width-init=\"false\" class=\"vc_section\"><div class=\"vc_row wpb_row vc_row-fluid vc_row-o-full-height vc_row-o-columns-middle vc_row-o-equal-height vc_row-flex\"><div class=\"wpb_column vc_column_container vc_col-sm-8\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\">[woodmart_title align=&#8221;left&#8221; woodmart_css_id=&#8221;67cffade9a3ae&#8221; title=&#8221;Syllabus&#8221; responsive_spacing=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zcGFjaW5nIiwic2VsZWN0b3JfaWQiOiI2N2NmZmFkZTlhM2FlIiwic2hvcnRjb2RlIjoid29vZG1hcnRfdGl0bGUiLCJkYXRhIjp7InRhYmxldCI6e30sIm1vYmlsZSI6e319fQ==&#8221; wd_hide_on_desktop=&#8221;no&#8221; wd_hide_on_tablet=&#8221;no&#8221; wd_hide_on_mobile=&#8221;no&#8221;]<div class=\"vc_tta-container\" data-vc-action=\"collapse\"><div class=\"vc_general vc_tta vc_tta-accordion vc_tta-color-grey vc_tta-style-classic vc_tta-shape-rounded vc_tta-o-shape-group vc_tta-controls-align-default\"><div class=\"vc_tta-panels-container\"><div class=\"vc_tta-panels\"><div class=\"vc_tta-panel vc_active\" id=\"1742298470919-94a10064-085d\" data-vc-content=\".vc_tta-panel-body\"><div class=\"vc_tta-panel-heading\"><h4 class=\"vc_tta-panel-title vc_tta-controls-icon-position-left\"><a href=\"#1742298470919-94a10064-085d\" data-vc-accordion data-vc-container=\".vc_tta-container\"><span class=\"vc_tta-title-text\">Lession<\/span><i class=\"vc_tta-controls-icon vc_tta-controls-icon-plus\"><\/i><\/a><\/h4><\/div><div class=\"vc_tta-panel-body\"><div class=\"vc_row wpb_row vc_inner vc_row-fluid\"><div class=\"wpb_column vc_column_container vc_col-sm-2 vc_col-xs-1\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"vc_icon_element vc_icon_element-outer vc_do_icon vc_icon_element-align-left\"><div class=\"vc_icon_element-inner vc_icon_element-color-black vc_icon_element-size-sm vc_icon_element-style- vc_icon_element-background-color-grey\" ><span class=\"vc_icon_element-icon fas fa-video\" ><\/span><\/div><\/div><\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-8 vc_col-xs-8\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<table style=\"border-collapse: collapse; width: 100%; height: 10px;\">\n<tbody>\n<tr style=\"height: 24px;\">\n<td style=\"width: 75.0918%; height: 10px;\">Review of tensors in continuum mechanics and defining Energy Potential (WWW) using neural networks.<\/td>\n<td style=\"width: 12.1559%; height: 10px; text-align: center;\">\u2013<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-2 vc_col-xs-2\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"vc_icon_element vc_icon_element-outer vc_do_icon vc_icon_element-align-left\"><div class=\"vc_icon_element-inner vc_icon_element-color-black vc_icon_element-size-sm vc_icon_element-style- vc_icon_element-background-color-grey\" ><span class=\"vc_icon_element-icon fas fa-lock\" ><\/span><\/div><\/div><\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_inner vc_row-fluid\"><div class=\"wpb_column vc_column_container vc_col-sm-2 vc_col-xs-1\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"vc_icon_element vc_icon_element-outer vc_do_icon vc_icon_element-align-left\"><div class=\"vc_icon_element-inner vc_icon_element-color-black vc_icon_element-size-sm vc_icon_element-style- vc_icon_element-background-color-grey\" ><span class=\"vc_icon_element-icon fas fa-video\" ><\/span><\/div><\/div><\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-8 vc_col-xs-8\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<table style=\"border-collapse: collapse; width: 100%; height: 10px;\">\n<tbody>\n<tr style=\"height: 24px;\">\n<td style=\"width: 75.0918%; height: 10px;\">Automatic differentiation mathematics (torch.autograd) for extracting stress and the tangent tensor (DDSDDE).<\/td>\n<td style=\"width: 12.1559%; height: 10px; text-align: center;\">\u2013<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-2 vc_col-xs-2\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"vc_icon_element vc_icon_element-outer vc_do_icon vc_icon_element-align-left\"><div class=\"vc_icon_element-inner vc_icon_element-color-black vc_icon_element-size-sm vc_icon_element-style- vc_icon_element-background-color-grey\" ><span class=\"vc_icon_element-icon fas fa-lock\" ><\/span><\/div><\/div><\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_inner vc_row-fluid\"><div class=\"wpb_column vc_column_container vc_col-sm-2 vc_col-xs-1\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"vc_icon_element vc_icon_element-outer vc_do_icon vc_icon_element-align-left\"><div class=\"vc_icon_element-inner vc_icon_element-color-black vc_icon_element-size-sm vc_icon_element-style- vc_icon_element-background-color-grey\" ><span class=\"vc_icon_element-icon fas fa-video\" ><\/span><\/div><\/div><\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-8 vc_col-xs-8\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<table style=\"border-collapse: collapse; width: 100%; height: 10px;\">\n<tbody>\n<tr style=\"height: 24px;\">\n<td style=\"width: 75.0918%; height: 10px;\">Hard-coding Strategy: How to extract weight matrices (WWW) and biases (bbb) from Python and rewrite the network\u2019s Forward Pass in the Fortran environment<\/td>\n<td style=\"width: 12.1559%; height: 10px; text-align: center;\">\u2013<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-2 vc_col-xs-2\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"vc_icon_element vc_icon_element-outer vc_do_icon vc_icon_element-align-left\"><div class=\"vc_icon_element-inner vc_icon_element-color-black vc_icon_element-size-sm vc_icon_element-style- vc_icon_element-background-color-grey\" ><span class=\"vc_icon_element-icon fas fa-lock\" ><\/span><\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/div><div class=\"vc_tta-panel\" id=\"1777276661913-78a08a03-9337\" data-vc-content=\".vc_tta-panel-body\"><div class=\"vc_tta-panel-heading\"><h4 class=\"vc_tta-panel-title vc_tta-controls-icon-position-left\"><a href=\"#1777276661913-78a08a03-9337\" data-vc-accordion data-vc-container=\".vc_tta-container\"><span class=\"vc_tta-title-text\">Workshop (Avaiable one week after your purchase)<\/span><i class=\"vc_tta-controls-icon vc_tta-controls-icon-plus\"><\/i><\/a><\/h4><\/div><div class=\"vc_tta-panel-body\"><div class=\"vc_row wpb_row vc_inner vc_row-fluid\"><div class=\"wpb_column vc_column_container vc_col-sm-2 vc_col-xs-1\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"vc_icon_element vc_icon_element-outer vc_do_icon vc_icon_element-align-left\"><div class=\"vc_icon_element-inner vc_icon_element-color-black vc_icon_element-size-sm vc_icon_element-style- vc_icon_element-background-color-grey\" ><span class=\"vc_icon_element-icon fas fa-video\" ><\/span><\/div><\/div><\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-8 vc_col-xs-8\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<table style=\"border-collapse: collapse; width: 100%; height: 10px;\">\n<tbody>\n<tr style=\"height: 24px;\">\n<td style=\"width: 75.0918%; height: 10px;\">Training the network in PyTorch and validating second-order derivatives<\/td>\n<td style=\"width: 12.1559%; height: 10px; text-align: center;\">\u2013<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-2 vc_col-xs-2\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"vc_icon_element vc_icon_element-outer vc_do_icon vc_icon_element-align-left\"><div class=\"vc_icon_element-inner vc_icon_element-color-black vc_icon_element-size-sm vc_icon_element-style- vc_icon_element-background-color-grey\" ><span class=\"vc_icon_element-icon fas fa-lock\" ><\/span><\/div><\/div><\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_inner vc_row-fluid\"><div class=\"wpb_column vc_column_container vc_col-sm-2 vc_col-xs-1\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"vc_icon_element vc_icon_element-outer vc_do_icon vc_icon_element-align-left\"><div class=\"vc_icon_element-inner vc_icon_element-color-black vc_icon_element-size-sm vc_icon_element-style- vc_icon_element-background-color-grey\" ><span class=\"vc_icon_element-icon fa fa-solid fa-video\" ><\/span><\/div><\/div><\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-8 vc_col-xs-8\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<table style=\"border-collapse: collapse; width: 100%; height: 10px;\">\n<tbody>\n<tr style=\"height: 24px;\">\n<td style=\"width: 75.0918%; height: 10px;\">Writing the UMAT subroutine in Fortran using the extracted weights<\/td>\n<td style=\"width: 12.1559%; height: 10px; text-align: center;\">\u2013<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-2 vc_col-xs-2\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"vc_icon_element vc_icon_element-outer vc_do_icon vc_icon_element-align-left\"><div class=\"vc_icon_element-inner vc_icon_element-color-black vc_icon_element-size-sm vc_icon_element-style- vc_icon_element-background-color-grey\" ><span class=\"vc_icon_element-icon fas fa-lock\" ><\/span><\/div><\/div><\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_inner vc_row-fluid\"><div class=\"wpb_column vc_column_container vc_col-sm-2 vc_col-xs-1\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"vc_icon_element vc_icon_element-outer vc_do_icon vc_icon_element-align-left\"><div class=\"vc_icon_element-inner vc_icon_element-color-black vc_icon_element-size-sm vc_icon_element-style- vc_icon_element-background-color-grey\" ><span class=\"vc_icon_element-icon fas fa-video\" ><\/span><\/div><\/div><\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-8 vc_col-xs-8\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<table style=\"border-collapse: collapse; width: 100%; height: 10px;\">\n<tbody>\n<tr style=\"height: 24px;\">\n<td style=\"width: 75.0918%; height: 10px;\">Solving a single-element problem in Abaqus and comparing speed and accuracy with the standard Abaqus model<\/td>\n<td style=\"width: 12.1559%; height: 10px; text-align: center;\">\u2013<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-2 vc_col-xs-2\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\"><div class=\"vc_icon_element vc_icon_element-outer vc_do_icon vc_icon_element-align-left\"><div class=\"vc_icon_element-inner vc_icon_element-color-black vc_icon_element-size-sm vc_icon_element-style- vc_icon_element-background-color-grey\" ><span class=\"vc_icon_element-icon fa fa-solid fa-lock\" ><\/span><\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/div><\/section><div class=\"vc_row-full-width vc_clearfix\"><\/div><section data-vc-full-width=\"true\" data-vc-full-width-temp=\"true\" data-vc-full-width-init=\"false\" class=\"vc_section vc_custom_1743317499228 vc_section-has-fill\"><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=\"vc_empty_space\"   style=\"height: 10px\"><span class=\"vc_empty_space_inner\"><\/span><\/div><\/div><\/div><\/div><\/div><div data-vc-full-width=\"true\" data-vc-full-width-temp=\"true\" data-vc-full-width-init=\"false\" class=\"vc_row wpb_row vc_row-fluid vc_custom_1743317079650 vc_row-has-fill\"><div class=\"wpb_column vc_column_container vc_col-sm-6 vc_col-has-fill\"><div class=\"vc_column-inner vc_custom_1743317776646\"><div class=\"wpb_wrapper\">[woodmart_info_box image=&#8221;32167&#8243; rounding_size=&#8221;&#8221; alignment=&#8221;center&#8221; btn_position=&#8221;static&#8221; btn_color=&#8221;primary&#8221; btn_style=&#8221;link&#8221; no_svg_animation=&#8221;yes&#8221; title=&#8221;Quality Insurance&#8221; css=&#8221;.vc_custom_1743318038318{border-right-width: 1px !important;border-right-style: inherit !important;border-color: #c4c4c4 !important;}&#8221; img_size=&#8221;100&#215;100&#8243; woodmart_css_id=&#8221;67e8ec03dce53&#8243; svg_animation=&#8221;no&#8221; info_box_inline=&#8221;no&#8221; wd_hide_on_desktop=&#8221;no&#8221; wd_hide_on_tablet_landscape=&#8221;no&#8221; wd_hide_on_tablet=&#8221;no&#8221; wd_hide_on_mobile=&#8221;no&#8221; responsive_spacing=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zcGFjaW5nIiwic2VsZWN0b3JfaWQiOiI2N2U4ZWMwM2RjZTUzIiwic2hvcnRjb2RlIjoid29vZG1hcnRfaW5mb19ib3giLCJkYXRhIjp7InRhYmxldCI6e30sIm1vYmlsZSI6e319fQ==&#8221; wd_z_index=&#8221;no&#8221;]<strong>\ud658\ubd88\uc740 \uc57d\uad00\uc5d0 \ub530\ub77c \ub2e4\uc74c \uc0ac\ud56d\uc744 \ud3ec\ud568\ud569\ub2c8\ub2e4.<\/strong><\/p>\n<p>\uc785\ub825 \ud30c\uc77c(.inp) \uc2e4\ud589\uc5d0 \uacb0\ud568\uc774 \uc788\uc2b5\ub2c8\ub2e4.<\/p>\n<p>\uc11c\ube0c\ub8e8\ud2f4 \ud30c\uc77c(.for) \uc2e4\ud589\uc5d0 \uacb0\ud568\uc774 \uc788\uc2b5\ub2c8\ub2e4.<\/p>\n<p>\uac80\uc99d \ubc0f \uc815\ud655\ud55c \uc2dc\ubbac\ub808\uc774\uc158 \uacb0\uacfc\ub97c \ubcf4\uc7a5\ud569\ub2c8\ub2e4.<\/p>\n<p>ensures product matches page descriptions.[\/woodmart_info_box]<\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-6\"><div class=\"vc_column-inner\"><div class=\"wpb_wrapper\">[woodmart_info_box image=&#8221;32168&#8243; rounding_size=&#8221;&#8221; alignment=&#8221;center&#8221; btn_position=&#8221;static&#8221; btn_color=&#8221;primary&#8221; btn_style=&#8221;link&#8221; no_svg_animation=&#8221;yes&#8221; img_size=&#8221;100&#215;100&#8243; woodmart_css_id=&#8221;67e8e9484f09a&#8221; svg_animation=&#8221;no&#8221; info_box_inline=&#8221;no&#8221; wd_hide_on_desktop=&#8221;no&#8221; wd_hide_on_tablet_landscape=&#8221;no&#8221; wd_hide_on_tablet=&#8221;no&#8221; wd_hide_on_mobile=&#8221;no&#8221; responsive_spacing=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zcGFjaW5nIiwic2VsZWN0b3JfaWQiOiI2N2U4ZTk0ODRmMDlhIiwic2hvcnRjb2RlIjoid29vZG1hcnRfaW5mb19ib3giLCJkYXRhIjp7InRhYmxldCI6e30sIm1vYmlsZSI6e319fQ==&#8221; wd_z_index=&#8221;no&#8221; title=&#8221;Attendance Certificate&#8221;]<strong>\ucd94\uac00 \ube44\uc6a9\uc73c\ub85c \uc120\ud0dd \uac00\ub2a5\ud55c \uc778\uc99d\uc11c:<\/strong><\/p>\n<p>\uc131\uacf5\uc801\uc73c\ub85c \uc644\ub8cc\ub418\uba74 \ubc1c\uae09\ub429\ub2c8\ub2e4.<\/p>\n<p>\uc5b8\uc81c\ub4e0\uc9c0 \ub2f9\uc0ac \uc6f9\uc0ac\uc774\ud2b8\uc5d0\uc11c \ud655\uc778 \uac00\ub2a5\ud569\ub2c8\ub2e4.<\/p>\n<p>\ud6c8\ub828 \ucc38\uc5ec \uc99d\uba85\uc11c.<\/p>\n<p>Validates understanding of topic simulation.[\/woodmart_info_box]<\/div><\/div><\/div><\/div><div class=\"vc_row-full-width vc_clearfix\"><\/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=\"vc_empty_space\"   style=\"height: 10px\"><span class=\"vc_empty_space_inner\"><\/span><\/div><\/div><\/div><\/div><\/div><\/section><div class=\"vc_row-full-width vc_clearfix\"><\/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\">[woodmart_title size=&#8221;extra-large&#8221; title=&#8221;Tutor&#8221; css=&#8221;.vc_custom_1743681891791{margin-bottom: 20px !important;}&#8221; woodmart_css_id=&#8221;67ee795c988b7&#8243; subtitle_font_size=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zaXplIiwiY3NzX2FyZ3MiOnsiZm9udC1zaXplIjpbIiAudGl0bGUtc3VidGl0bGUiXX0sInNlbGVjdG9yX2lkIjoiNjdlZTc5NWM5ODhiNyIsImRhdGEiOnsiZGVza3RvcCI6IjE4cHgifX0=&#8221; responsive_spacing=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zcGFjaW5nIiwic2VsZWN0b3JfaWQiOiI2N2VlNzk1Yzk4OGI3Iiwic2hvcnRjb2RlIjoid29vZG1hcnRfdGl0bGUiLCJkYXRhIjp7InRhYmxldCI6e30sIm1vYmlsZSI6e319fQ==&#8221; wd_hide_on_desktop=&#8221;no&#8221; wd_hide_on_tablet=&#8221;no&#8221; wd_hide_on_mobile=&#8221;no&#8221;]<\/div><\/div><\/div><\/div><div class=\"vc_row wpb_row vc_row-fluid vc_custom_1743327243811 vc_row-o-equal-height vc_row-flex\"><div class=\"wpb_column vc_column_container vc_col-sm-3 vc_col-lg-offset-1 vc_col-lg-5 vc_col-md-offset-1 vc_col-md-8 vc_col-xs-12\"><div class=\"vc_column-inner vc_custom_1629815662255\"><div class=\"wpb_wrapper\">[team_member image=&#8221;33430&#8243; name=&#8221;Produced in Partnership Plan&#8221; align=&#8221;center&#8221; style=&#8221;colored&#8221; size=&#8221;small&#8221; woodmart_color_scheme=&#8221;dark&#8221; img_size=&#8221;full&#8221; google_plus=&#8221;#&#8221; linkedin=&#8221;https:\/\/de.linkedin.com\/company\/caeassistant&#8221; woodmart_css_id=&#8221;6811e08223129&#8243; responsive_spacing=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zcGFjaW5nIiwic2VsZWN0b3JfaWQiOiI2ODExZTA4MjIzMTI5Iiwic2hvcnRjb2RlIjoidGVhbV9tZW1iZXIiLCJkYXRhIjp7InRhYmxldCI6e30sIm1vYmlsZSI6e319fQ==&#8221;][\/team_member]<\/div><\/div><\/div><div class=\"wpb_column vc_column_container vc_col-sm-9 vc_col-lg-6 vc_col-md-12 vc_col-xs-12\"><div class=\"vc_column-inner vc_custom_1629815080795\"><div class=\"wpb_wrapper\">[woodmart_text_block text_font_size=&#8221;custom&#8221; text_color=&#8221;title&#8221; woodmart_css_id=&#8221;681339c8bbcce&#8221; text_font_size_custom=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zaXplIiwiY3NzX2FyZ3MiOnsiZm9udC1zaXplIjpbIi53ZC10ZXh0LWJsb2NrIl19LCJzZWxlY3Rvcl9pZCI6IjY4MTMzOWM4YmJjY2UiLCJkYXRhIjp7ImRlc2t0b3AiOiIyNHB4In19&#8243; parallax_scroll=&#8221;no&#8221; woodmart_inline=&#8221;no&#8221; wd_hide_on_desktop=&#8221;no&#8221; wd_hide_on_tablet_landscape=&#8221;no&#8221; wd_hide_on_tablet=&#8221;no&#8221; wd_hide_on_mobile=&#8221;no&#8221; responsive_spacing=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zcGFjaW5nIiwic2VsZWN0b3JfaWQiOiI2ODEzMzljOGJiY2NlIiwic2hvcnRjb2RlIjoid29vZG1hcnRfdGV4dF9ibG9jayIsImRhdGEiOnsidGFibGV0Ijp7fSwibW9iaWxlIjp7fX19&#8243;]<\/p>\n<p class=\"\" data-start=\"92\" data-end=\"648\"><span style=\"font-family: georgia, palatino, serif; font-size: 12pt;\">CAE \uc5b4\uc2dc\uc2a4\ud134\ud2b8 \ud300\uc740 \ud559\uc0ac, \uc11d\uc0ac, \ubc15\uc0ac \ud559\uc704\ub97c \uc18c\uc9c0\ud55c \uc218\ub9ce\uc740 \ud559\uc790, \uc5f0\uad6c\uc6d0, \uadf8\ub9ac\uace0 \uc5c5\uacc4 \uc804\ubb38\uac00\ub4e4\uacfc \ud611\ub825\ud558\uc5ec \ub2e4\uc591\ud55c \uad50\uc721 \ud328\ud0a4\uc9c0\ub97c \uac1c\ubc1c\ud588\uc2b5\ub2c8\ub2e4. \uc774\ub7ec\ud55c \uc804\ubb38\uac00\ub4e4\uc758 \uc804\ubb38 \uc9c0\uc2dd\uc744 \ud65c\uc6a9\ud558\ub294 \uc8fc\uc694 \uc774\uc810 \uc911 \ud558\ub098\ub294 \uacbd\uc7c1\uc0ac\uc640 \ucc28\ubcc4\ud654\ub418\ub294 \uace0\ud488\uc9c8\uc758 \uac00\uce58 \uc788\ub294 \ucf58\ud150\uce20\ub97c \uc81c\uc791\ud560 \uc218 \uc788\ub2e4\ub294 \uac83\uc785\ub2c8\ub2e4. \uc774\ub97c \ud1b5\ud574 \uc800\ud76c \ud300\uc740 \uc720\uba85 \uae30\uc5c5\uacfc \ub300\ud559 \ucd9c\uc2e0\uc758 \ub9ce\uc740 \uad6c\uc131\uc6d0\ub4e4\uc758 \uc2e0\ub8b0\ub97c \uc5bb\uc5c8\uc73c\uba70, \uc800\ud76c\uac00 \uc81c\uc791\ud558\ub294 \ucf58\ud150\uce20\uc758 \ud488\uc9c8\uc740 \uc800\ud76c\uc5d0\uac8c \ud56d\uc0c1 \ud070 \uc790\ubd80\uc2ec\uc744 \uc548\uaca8\uc8fc\uc5c8\uc2b5\ub2c8\ub2e4.<\/span><\/p>\n<p>[\/woodmart_text_block]<div class=\"vc_progress_bar wpb_content_element vc_custom_1770107061543\" ><h2 class=\"wpb_heading wpb_progress_bar_heading\">\uc6b0\ub9ac\uac00 \uc81c\uacf5\ud558\ub294 FEM \uc2dc\ubbac\ub808\uc774\uc158 \ubd84\uc57c:<\/h2><div class=\"vc_general vc_single_bar\"><small class=\"vc_label\" style=\"color:#ffffff;\">\uae30\uacc4\uacf5\ud559<\/small><span class=\"vc_bar\" data-percentage-value=\"100\" data-value=\"100\" style=\"background-color:#29c093;\"><\/span><\/div><div class=\"vc_general vc_single_bar\"><small class=\"vc_label\" style=\"color:#ffffff;\">\uc0dd\uccb4\uc5ed\ud559 \uacf5\ud559<\/small><span class=\"vc_bar\" data-percentage-value=\"100\" data-value=\"100\" style=\"background-color:#29c093;\"><\/span><\/div><div class=\"vc_general vc_single_bar\"><small class=\"vc_label\" style=\"color:#ffffff;\">Abaqus \uc11c\ube0c\ub8e8\ud2f4 \uc791\uc131<\/small><span class=\"vc_bar\" data-percentage-value=\"100\" data-value=\"100\" style=\"background-color:#29c093;\"><\/span><\/div><div class=\"vc_general vc_single_bar\"><small class=\"vc_label\" style=\"color:#ffffff;\">\ud1a0\ubaa9, \uc218\uc790\uc6d0 \ubc0f \ud1a0\uc591 \uacf5\ud559<\/small><span class=\"vc_bar\" data-percentage-value=\"100\" data-value=\"100\" style=\"background-color:#29c093;\"><\/span><\/div><\/div><div class=\"vc_empty_space\"   style=\"height: 32px\"><span class=\"vc_empty_space_inner\"><\/span><\/div>[woodmart_button woodmart_css_id=&#8221;6803734de3378&#8243; title=&#8221;Book a Consultation Session&#8221; button_smooth_scroll=&#8221;no&#8221; wd_button_collapsible_content=&#8221;no&#8221; full_width=&#8221;no&#8221; button_inline=&#8221;no&#8221; responsive_spacing=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zcGFjaW5nIiwic2VsZWN0b3JfaWQiOiI2ODAzNzM0ZGUzMzc4Iiwic2hvcnRjb2RlIjoid29vZG1hcnRfYnV0dG9uIiwiZGF0YSI6eyJ0YWJsZXQiOnt9LCJtb2JpbGUiOnt9fX0=&#8221; wd_hide_on_desktop=&#8221;no&#8221; wd_hide_on_tablet=&#8221;no&#8221; wd_hide_on_mobile=&#8221;no&#8221; link=&#8221;url:https%3A%2F%2Fcaeassistant.com%2Fonline-tutoring-consulting%2Fpre-registration%2F&#8221; css=&#8221;.vc_custom_1745056601789{border-top-width: 25px !important;}&#8221;]<\/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=\"vc_empty_space\"   style=\"height: 5px\"><span class=\"vc_empty_space_inner\"><\/span><\/div><div class=\"vc_tta-container\" data-vc-action=\"collapse\"><div class=\"vc_general vc_tta vc_tta-accordion vc_tta-color-grey vc_tta-style-classic vc_tta-shape-rounded vc_tta-o-shape-group vc_tta-controls-align-default\"><div class=\"vc_tta-panels-container\"><div class=\"vc_tta-panels\"><div class=\"vc_tta-panel\" id=\"1741682989270-56247be3-e195\" data-vc-content=\".vc_tta-panel-body\"><div class=\"vc_tta-panel-heading\"><h4 class=\"vc_tta-panel-title vc_tta-controls-icon-position-left\"><a href=\"#1741682989270-56247be3-e195\" data-vc-accordion data-vc-container=\".vc_tta-container\"><span class=\"vc_tta-title-text\">\ubb34\uc5c7\uc744 \ubc30\uc6b0\uac8c \ub418\ub098\uc694?<\/span><i class=\"vc_tta-controls-icon vc_tta-controls-icon-plus\"><\/i><\/a><\/h4><\/div><div class=\"vc_tta-panel-body\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<p data-path-to-node=\"2\">You will learn how to build <strong>intelligence constitutive material models<\/strong> ~\uc5d0 <strong>\uc544\ubc14\ucfe0\uc2a4<\/strong> by connecting <strong>UMAT with PyTorch<\/strong>. The course covers <strong>neural-network-based strain energy<\/strong> modeling, automatic differentiation for stress and tangent stiffness, and practical implementation of trained models in <strong>Fortran UMAT<\/strong>.<\/p>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><div class=\"vc_tta-panel\" id=\"1741681537425-d0c5442e-0f78\" data-vc-content=\".vc_tta-panel-body\"><div class=\"vc_tta-panel-heading\"><h4 class=\"vc_tta-panel-title vc_tta-controls-icon-position-left\"><a href=\"#1741681537425-d0c5442e-0f78\" data-vc-accordion data-vc-container=\".vc_tta-container\"><span class=\"vc_tta-title-text\">\uc774 \uacfc\uc815\uc740 \ub204\uad6c\ub97c \uc704\ud55c \uac83\uc778\uac00\uc694?<\/span><i class=\"vc_tta-controls-icon vc_tta-controls-icon-plus\"><\/i><\/a><\/h4><\/div><div class=\"vc_tta-panel-body\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<p data-path-to-node=\"2\">This course is designed for simulation engineers, researchers, graduate students, and Abaqus users who want to combine <strong>\uc720\ud55c\uc694\uc18c\ud574\uc11d<\/strong> ~\uc640 \ud568\uaed8 <strong>deep learning<\/strong>. It is especially valuable for those working in computational mechanics, <strong>material modeling<\/strong>, \uadf8\ub9ac\uace0 <strong>AI-driven simulation<\/strong>.<\/p>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><div class=\"vc_tta-panel\" id=\"1741681537468-90129cb4-8da3\" data-vc-content=\".vc_tta-panel-body\"><div class=\"vc_tta-panel-heading\"><h4 class=\"vc_tta-panel-title vc_tta-controls-icon-position-left\"><a href=\"#1741681537468-90129cb4-8da3\" data-vc-accordion data-vc-container=\".vc_tta-container\"><span class=\"vc_tta-title-text\">\uc65c \uc774 \uad50\uc721\uc5d0 \ube44\uc6a9\uc744 \uc9c0\ubd88\ud574\uc57c \ud569\ub2c8\uae4c?<\/span><i class=\"vc_tta-controls-icon vc_tta-controls-icon-plus\"><\/i><\/a><\/h4><\/div><div class=\"vc_tta-panel-body\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<p data-path-to-node=\"0\">This training provides a structured and practical roadmap that saves you significant time in learning a complex interdisciplinary topic. Instead of spending months combining scattered resources, you receive focused guidance, implementation strategies, and real Abaqus examples in one package.<\/p>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><div class=\"vc_tta-panel\" id=\"1744109030311-7db7b02f-f379\" data-vc-content=\".vc_tta-panel-body\"><div class=\"vc_tta-panel-heading\"><h4 class=\"vc_tta-panel-title vc_tta-controls-icon-position-left\"><a href=\"#1744109030311-7db7b02f-f379\" data-vc-accordion data-vc-container=\".vc_tta-container\"><span class=\"vc_tta-title-text\">\uc5b4\ub5a4 \uc5b8\uc5b4\ub85c \uad50\uc721\uc774 \uc9c4\ud589\ub418\ub098\uc694?<\/span><i class=\"vc_tta-controls-icon vc_tta-controls-icon-plus\"><\/i><\/a><\/h4><\/div><div class=\"vc_tta-panel-body\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<p>\ubcf8 \uad50\uc721\uc5d0 \uc81c\uacf5\ub418\ub294 PDF \ubc0f \ube44\ub514\uc624 \uc790\ub8cc\ub294 \ub2e4\uc74c\uacfc \uac19\uc2b5\ub2c8\ub2e4. <strong>\uc601\uc5b4<\/strong>. \uc624\ub958\uac00 \uc5c6\uc73c\uba70, <strong>\uba85\ud655\ud558\uace0 \uac04\ub2e8\ud55c \ubc29\uc2dd\uc73c\ub85c \uc81c\uc2dc\ub428<\/strong>, \ub530\ub77c\uc11c \uae30\ubcf8\uc801\uc778 \uc601\uc5b4 \uc774\ud574\ub9cc \uc788\ub2e4\uba74 \ub204\uad6c\ub098 \uc27d\uac8c \ub530\ub77c\uac08 \uc218 \uc788\uc2b5\ub2c8\ub2e4.<\/p>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><div class=\"vc_tta-panel\" id=\"1741687095721-67d0d472-348d\" data-vc-content=\".vc_tta-panel-body\"><div class=\"vc_tta-panel-heading\"><h4 class=\"vc_tta-panel-title vc_tta-controls-icon-position-left\"><a href=\"#1741687095721-67d0d472-348d\" data-vc-accordion data-vc-container=\".vc_tta-container\"><span class=\"vc_tta-title-text\">\ud658\ubd88 \ubcf4\uc7a5\uc740 \ubb34\uc5c7\uc744 \ubcf4\uc7a5\ud569\ub2c8\uae4c?<\/span><i class=\"vc_tta-controls-icon vc_tta-controls-icon-plus\"><\/i><\/a><\/h4><\/div><div class=\"vc_tta-panel-body\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<p>\uc800\ud76c\ub294 \ub2f9\uc0ac \ucf58\ud150\uce20\uc758 \uc815\ud655\uc131\uacfc \uae30\ub2a5\uc131\uc744 \uc644\uc804\ud558\uace0 \ubb34\uc870\uac74\uc801\uc73c\ub85c \ubcf4\uc7a5\ud569\ub2c8\ub2e4., <strong>\ub2f9\uc0ac \uc6f9\uc0ac\uc774\ud2b8\uc5d0 \uc81c\uacf5\ub41c \uc124\uba85\uacfc \uc77c\uce58\ud558\ub294\uc9c0 \ud655\uc778\ud569\ub2c8\ub2e4.<\/strong>. \uc774 \ubcf4\uc99d\uc740 \ub2e4\uc74c\uc744 \ud3ec\ud568\ud569\ub2c8\ub2e4. <strong>\uad50\uc721 \uacfc\uc815\uacfc \uc81c\uc2dc\ub41c \uad50\uacfc \uacfc\uc815 \uac04\uc758 \ubd88\uc77c\uce58<\/strong>, \uac8c\ub2e4\uac00<strong> \ubc1b\uc740 \ud30c\uc77c, \ucf54\ub4dc \ubc0f \ube44\ub514\uc624\uc5d0 \ubb38\uc81c\uac00 \uc788\ub294 \uacbd\uc6b0<\/strong>. \uc790\uc138\ud55c \ub0b4\uc6a9\uc740 \ub2e4\uc74c\uc744 \ud655\uc778\ud558\uc138\uc694. <a href=\"https:\/\/caeassistant.com\/terms-and-conditions\/\"><span style=\"color: #0000ff;\"><strong>\uc774\uc6a9 \uc57d\uad00<\/strong><\/span><\/a>.<\/p>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><div class=\"vc_tta-panel\" id=\"1741686883970-daaa1b02-21be\" data-vc-content=\".vc_tta-panel-body\"><div class=\"vc_tta-panel-heading\"><h4 class=\"vc_tta-panel-title vc_tta-controls-icon-position-left\"><a href=\"#1741686883970-daaa1b02-21be\" data-vc-accordion data-vc-container=\".vc_tta-container\"><span class=\"vc_tta-title-text\">\uc774 \ud328\ud0a4\uc9c0\ub97c \uad6c\ub9e4\ud558\uba74 \uc5b4\ub5a4 \ud61c\ud0dd\uc744 \ubc1b\uc744 \uc218 \uc788\ub098\uc694?<\/span><i class=\"vc_tta-controls-icon vc_tta-controls-icon-plus\"><\/i><\/a><\/h4><\/div><div class=\"vc_tta-panel-body\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<p class=\"\" data-start=\"49\" data-end=\"114\"><span style=\"color: #800080;\"><strong>\uc774 \ud328\ud0a4\uc9c0\ub97c \uad6c\ub9e4\ud558\uba74 \ub2e4\uc74c \uae30\ub2a5\uc5d0 \uc561\uc138\uc2a4\ud560 \uc218 \uc788\uc2b5\ub2c8\ub2e4.<\/strong><\/span><\/p>\n<ul data-start=\"116\" data-end=\"767\">\n<li class=\"\" data-start=\"116\" data-end=\"403\">\n<p class=\"\" data-start=\"118\" data-end=\"403\"><span style=\"color: #008000;\"><strong>\uad50\uc721 \uc601\uc0c1: <\/strong><\/span>\ud559\uc2b5 \ud6a8\uacfc\ub97c \ub192\uc774\uae30 \uc704\ud574 \ub2e4\uc74c\uacfc \uac19\uc740 \uc0ac\ud56d\uc744 \uc81c\uacf5\ud569\ub2c8\ub2e4. <b data-path-to-node=\"2\" data-index-in-node=\"52\">\ube44\ub514\uc624 \ud29c\ud1a0\ub9ac\uc5bc<\/b> PDF \uac00\uc774\ub4dc\ub97c \ubcf4\uc644\ud558\ub294 \uc774 \ube44\ub514\uc624\ub4e4\uc740 \uc774\ub860\uc5d0 \ub300\ud55c \uc2ec\uce35\uc801\uc778 \uc124\uba85\uc744 \uc81c\uacf5\ud558\uace0 \uac01 \uc6cc\ud06c\uc20d\uc744 \uc548\ub0b4\ud558\uba70, \ud30c\uc77c\uc744 \ubd84\uc11d\ud558\uace0 \uacb0\uacfc\ub97c \ud574\uc11d\ud558\ub294 \ubc29\ubc95\uc744 \uc815\ud655\ud558\uac8c \ubcf4\uc5ec\uc90d\ub2c8\ub2e4.<\/p>\n<\/li>\n<li class=\"\" data-start=\"649\" data-end=\"767\">\n<p class=\"\" data-start=\"651\" data-end=\"767\"><span style=\"color: #008000;\"><strong>Abaqus \uc785\ub825 \ud30c\uc77c<\/strong><\/span> \uc6cc\ud06c\uc20d\uc5d0 \uc0ac\uc6a9\ub41c \ubaa8\ub4e0 Abaqus inp \ud30c\uc77c\uc5d0 \ub300\ud55c \uc804\uccb4 \uc561\uc138\uc2a4 \uad8c\ud55c\uc774 \uc81c\uacf5\ub418\ubbc0\ub85c, \ud574\ub2f9 \ud30c\uc77c\uc744 \ubcf4\uad00\ud558\uace0 \uac1c\uc778 \ud504\ub85c\uc81d\ud2b8\uc5d0 \ud65c\uc6a9\ud560 \uc218 \uc788\uc2b5\ub2c8\ub2e4.<\/p>\n<\/li>\n<\/ul>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><div class=\"vc_tta-panel\" id=\"1744109133888-c70d16a3-ca11\" data-vc-content=\".vc_tta-panel-body\"><div class=\"vc_tta-panel-heading\"><h4 class=\"vc_tta-panel-title vc_tta-controls-icon-position-left\"><a href=\"#1744109133888-c70d16a3-ca11\" data-vc-accordion data-vc-container=\".vc_tta-container\"><span class=\"vc_tta-title-text\">\ub0b4\uac00 \uc6d0\ud558\ub294 \uc5b8\uc5b4\ub85c \uad50\uc721 \ub0b4\uc6a9\uc744 \ubc88\uc5ed\ud558\ub294 \uac83\uc774 \uac00\ub2a5\ud569\ub2c8\uae4c?<\/span><i class=\"vc_tta-controls-icon vc_tta-controls-icon-plus\"><\/i><\/a><\/h4><\/div><div class=\"vc_tta-panel-body\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<p>\ub124, \uc601\uc5b4 \uc774\uc678\uc758 \uc5b8\uc5b4\ub85c\ub3c4 \uad50\uc721\uc744 \ubc1b\uc73c\uc2e4 \uc218 \uc788\uc73c\uba70, \ucd94\uac00 \ube44\uc6a9\uc774 \ubc1c\uc0dd\ud569\ub2c8\ub2e4. \uad00\uc2ec\uc774 \uc788\uc73c\uc2dc\uba74 \uc628\ub77c\uc778 \ucc44\ud305\uc774\ub098 \uace0\uac1d \uc9c0\uc6d0 \uc774\uba54\uc77c\ub85c \ubb38\uc758\ud574 \uc8fc\uc138\uc694.<\/p>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><div class=\"vc_tta-panel\" id=\"1745055945086-b2f08f9e-a154\" data-vc-content=\".vc_tta-panel-body\"><div class=\"vc_tta-panel-heading\"><h4 class=\"vc_tta-panel-title vc_tta-controls-icon-position-left\"><a href=\"#1745055945086-b2f08f9e-a154\" data-vc-accordion data-vc-container=\".vc_tta-container\"><span class=\"vc_tta-title-text\">\ub0b4 \ud2b9\uc815 \uc694\uad6c \uc0ac\ud56d\uc774\ub098 \ub9e4\uac1c\ubcc0\uc218\uc5d0 \ub9de\ucdb0 \uac1c\ubc1c\ud558\ub294 \uac83\uc774 \uac00\ub2a5\ud569\ub2c8\uae4c?<\/span><i class=\"vc_tta-controls-icon vc_tta-controls-icon-plus\"><\/i><\/a><\/h4><\/div><div class=\"vc_tta-panel-body\">\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<p>\ub124, \uc6d0\ud558\uc2dc\ub294 \uc218\uc815 \uc0ac\ud56d\uc5d0 \ub530\ub77c \ud544\uc694\ud55c \ubcc0\uacbd \uc0ac\ud56d\uc744 \uad6c\ud604\ud574 \ub4dc\ub9b4 \uc218 \uc788\uc2b5\ub2c8\ub2e4. \ub9de\ucda4 \uc8fc\ubb38\uc5d0 \ub300\ud55c \uc57d\uad00\uc5d0 \ub300\ud574 \uc790\uc138\ud788 \uc54c\uc544\ubcf4\ub824\uba74 \uc9c0\uc6d0 \uc774\uba54\uc77c\uc774\ub098 \uc628\ub77c\uc778 \ucc44\ud305\uc73c\ub85c \ubb38\uc758\ud574 \uc8fc\uc138\uc694.<\/p>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><\/div><\/div><\/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\">[woodmart_title woodmart_css_id=&#8221;67e8ee8ba2ca3&#8243; responsive_spacing=&#8221;eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zcGFjaW5nIiwic2VsZWN0b3JfaWQiOiI2N2U4ZWU4YmEyY2EzIiwic2hvcnRjb2RlIjoid29vZG1hcnRfdGl0bGUiLCJkYXRhIjp7InRhYmxldCI6e30sIm1vYmlsZSI6e319fQ==&#8221; wd_hide_on_desktop=&#8221;no&#8221; wd_hide_on_tablet=&#8221;no&#8221; wd_hide_on_mobile=&#8221;no&#8221; subtitle=&#8221;Are you a <u>\uad50\uc218\uc9c4<\/u> \ub610\ub294 \ub300\ud45c\ud558\ub2e4 <u>\ud68c\uc0ac<\/u>? Explore our Unlimited Bundle Plan.&#8221; title=&#8221;Purchase Multiple Packages at Less than Half Price&#8221;]\n\t<div class=\"wpb_text_column wpb_content_element\" >\n\t\t<div class=\"wpb_wrapper\">\n\t\t\t<p>\uad50\uc9c1\uc6d0\uc774\ub098 \uae30\uc5c5\uc5d0\uc11c \uc9c1\uc6d0\uc744 \uc704\ud55c \ub2e4\uc591\ud55c \uad50\uc721 \ud328\ud0a4\uc9c0\uac00 \ud544\uc694\ud558\uc2dc\uac70\ub098, \ub2e4\uc591\ud55c \ubd84\uc57c\uc5d0\uc11c \uc5ed\ub7c9\uc744 \ud5a5\uc0c1\uc2dc\ud0a4\uace0\uc790 \ud558\ub294 \uac1c\uc778\uc774\uc2dc\ub77c\uba74, \ub9de\ucda4\ud615 \ubc88\ub4e4 \ud50c\ub79c\uc744 \uc81c\uacf5\ud569\ub2c8\ub2e4. \uc774 \ud50c\ub79c\uc740 1\ub144 \ub610\ub294 2\ub144 \ub3d9\uc548 \ud2b9\uc815 \uc218\uc758 \ud328\ud0a4\uc9c0\ub97c \uc774\uc6a9\ud558\uc2e4 \uc218 \uc788\ub3c4\ub85d \ud574\uc90d\ub2c8\ub2e4. \ubc88\ub4e4 \ud50c\ub79c \uc694\uae08\uc744 \uc9c0\ubd88\ud558\uc2dc\uba74 \ub2e4\uc591\ud55c \ucd94\uac00 \uc11c\ube44\uc2a4\uc5d0 \ub300\ud55c \ud560\uc778 \ud61c\ud0dd\ub3c4 \ubc1b\uc73c\uc2e4 \uc218 \uc788\uc2b5\ub2c8\ub2e4. \ud300\uc774\ub098 \ud559\uc0dd\ub4e4\uc758 \uc9c0\uc2dd\uacfc \uc5ed\ub7c9\uc744 \ud5a5\uc0c1\uc2dc\ud0a4\ub294 \ud3ec\uad04\uc801\uc774\uace0 \ube44\uc6a9 \ud6a8\uc728\uc801\uc778 \uc194\ub8e8\uc158\uc785\ub2c8\ub2e4.<\/p>\n<p>\ucc38\uace0: \uc774 \ubc88\ub4e4 \ud50c\ub79c\uc5d0\ub294 \ub2e4\uc591\ud55c \uc778\uae30 \ud2b8\ub808\uc774\ub2dd \ud328\ud0a4\uc9c0\uac00 \ud3ec\ud568\ub418\uc5b4 \uc788\uc2b5\ub2c8\ub2e4. \uc774 \ud50c\ub79c\uc5d0 \ud3ec\ud568\ub41c \ud2b9\uc815 \ud328\ud0a4\uc9c0(400\u20ac \ubbf8\ub9cc\uc758 \ubaa8\ub4e0 \ud328\ud0a4\uc9c0)\ub97c \ud655\uc778\ud558\ub824\uba74 \ub2e4\uc74c\uc744 \ud655\uc778\ud558\uc138\uc694. <a href=\"https:\/\/caeassistant.com\/shop\/?min_price=0&amp;max_price=400\">\uc774 \ud398\uc774\uc9c0<\/a> \ub610\ub294 \uc628\ub77c\uc778 \ucc44\ud305\uc744 \ud1b5\ud574 \uc9c0\uc6d0\ud300\uc5d0 \ubb38\uc758\ud558\uc138\uc694.<\/p>\n\n\t\t<\/div>\n\t<\/div>\n<\/div><\/div><\/div><\/div>\n<\/div>","protected":false},"excerpt":{"rendered":"[woodmart_info_box image=\"47504\" style=\"bg-hover\" rounding_size=\"\" alignment=\"center\" title_size=\"small\" title_font_weight=\"200\" css_animation=\"none\" woodmart_css_id=\"69ef1f1c0179b\" svg_animation=\"no\" info_box_inline=\"no\" responsive_spacing=\"eyJwYXJhbV90eXBlIjoid29vZG1hcnRfcmVzcG9uc2l2ZV9zcGFjaW5nIiwic2VsZWN0b3JfaWQiOiI2OWVmMWYxYzAxNzliIiwic2hvcnRjb2RlIjoid29vZG1hcnRfaW5mb19ib3giLCJkYXRhIjp7InRhYmxldCI6e30sIm1vYmlsZSI6e319fQ==\" wd_z_index=\"no\" wd_hide_on_desktop=\"no\" wd_hide_on_tablet=\"no\" wd_hide_on_mobile=\"no\" link=\"url:https%3A%2F%2Fcaeassistant.com%2Fproduct%2Fusing-deep-learning-in-abaqus-umat-pytorch%2F\" bg_hover_color_gradient=\"rgb(60, 27, 59)-0\/rgb(90, 55, 105)-33\/rgb(46, 76, 130)-66\/rgb(29, 28, 44)-100\/|linear-gradient(left , rgb(60, 27, 59) , rgb(90, 55, 105) 33% , rgb(46, 76, 130) 66% , rgb(29, 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