{"id":17262,"date":"2026-07-15T10:38:45","date_gmt":"2026-07-15T02:38:45","guid":{"rendered":"https:\/\/www.style3d.com\/blog\/?p=17262"},"modified":"2026-07-15T10:46:28","modified_gmt":"2026-07-15T02:46:28","slug":"enterprise-digital-knitwear-software-selection-for-apparel-executives","status":"publish","type":"post","link":"https:\/\/www.style3d.com\/blog\/enterprise-digital-knitwear-software-selection-for-apparel-executives\/","title":{"rendered":"Enterprise Digital Knitwear Software Selection for Apparel Executives"},"content":{"rendered":"<div class=\"relative flex items-center justify-center\">\n<div class=\"absolute inset-0 flex items-center justify-center\"><span style=\"font-size: inherit;\">As of the 2024 <\/span><em style=\"font-size: inherit;\">State of Fashion<\/em><span style=\"font-size: inherit;\"> report by Business of Fashion and McKinsey, digital product creation and supply\u2011chain resilience are named as primary levers for brands navigating margin pressure and slow growth, with standards like ISO\/TS 3736\u20111:2022 and ISO 20947\u20112:2020 signaling that virtual garments have moved into mainstream operations rather than pilot experiments. In knitwear and casualwear specifically, decision\u2011makers are shifting from general 3D tools toward stitch\u2011aware platforms that can speak directly to industrial knitting machines, BOM governance, and data\u2011protected collaboration. For retail executives and procurement leaders in 2026, the real question is how to build a buyer\u2019s matrix that distinguishes factory\u2011ready knit software from generic 3D texturing apps.<\/span><\/div>\n<\/div>\n<div>\u00a0<\/div>\n<div><a href=\"https:\/\/www.style3d.com\/products\/knit\">B2B digital knitwear software procurement.<\/a><\/div>\n<div>\u00a0<\/div>\n<h2 id=\"why-industrial-knitwear-needs-categoryspecific-sof\" class=\"font-editorial font-bold mb-2 mt-4 [.has-inline-images_&amp;]:clear-end text-lg first:mt-0 md:text-lg [hr+&amp;]:mt-4\">Why Industrial Knitwear Needs Category\u2011Specific Software<\/h2>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">Knitwear behaves differently from woven fabrics because it is built from interlocking loops rather than intersecting yarns, which produces nonlinear stretch, recovery, and drape that change under load and over time. In practical terms, the same yarn count will act like three different materials when used in jersey, rib, or interlock constructions, and this difference is critical for proto, fit, and salesman sample stages in sweaters, hoodies, and knit dresses. When 3D systems treat fabric as a simple surface, designers often see cable knits that look rigid on screen, cardigans that refuse to hang open correctly, or melange textures that read as flat noise rather than believable yarn effects.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">From a workflow perspective, knitwear teams juggle yarn count, stitch density, machine gauge, and DXF or AAMA pattern files alongside lab\u2011dip approvals, BOM updates, and PLM records. A pattern maker importing a DXF derived from a panel\u2011knit pattern expects tension, grain, and size behavior that differ from cut\u2011and\u2011sew T\u2011shirts, yet many generic tools assume a single cloth logic once meshes are triangulated. That disconnect pushes sample rooms back into trial\u2011and\u2011error, increasing sample\u2011room ticket counts and extending tech\u2011pack revision cycles beyond what most calendars can tolerate.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">Industry\u2011specific knitting systems such as STOLL CREATE DESIGN build fabric swatches and garment layouts from actual stitch and row counts, then expose this data to external 3D environments so loop architecture, not just surface textures, defines the virtual garment. When this stitch\u2011accurate data flows into a 3D studio, the simulation can represent course\u2011wise and wale\u2011wise stretch, thickness, and bending stiffness so that an Aran sweater, ponte skirt, or cotton melange hoodie behaves as expected. Executives evaluating platforms should therefore treat stitch fidelity and knitting\u2011system integration as non\u2011negotiable criteria rather than optional enhancements.<\/p>\n<h2 id=\"specialized-knit-pipelines-vs-generic-3d-texturing\" class=\"font-editorial font-bold mb-2 mt-4 [.has-inline-images_&amp;]:clear-end text-lg first:mt-0 md:text-lg [hr+&amp;]:mt-4\">Specialized Knit Pipelines vs. Generic 3D Texturing Apps<\/h2>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">Most buyers begin evaluation with obvious criteria such as visual quality or user interface, but these surface measures rarely distinguish a factory\u2011ready knit pipeline from a general\u2011purpose 3D texturing app. A more rigorous comparison looks at where data originates, how it flows, and whether the output can be trusted by knitting machines, sample rooms, and procurement offices. Specialized knit pipelines start with industrial knitting design tools, pass stitch\u2011accurate layouts into 3D studios for visualization and fit, then route validated patterns back to knitting machines and PLM.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">For example, workflows built on STOLL CREATE DESIGN allow teams to draft knit layouts, set stitch structures, and generate machine\u2011readable patterns that define what flat\u2011bed knitting machines will run. These files then enter a 3D platform such as Style3D Studio, where designers assign digital materials aligned with physical tests\u2014such as melange jersey for casual tees or heavier interlock for sweatshirts\u2014and simulate drape and stretch on avatars tuned to target customer body shapes. Once avatars, stitch maps, and DXF patterns share a consistent reference, typical \u201cfirst proto\u201d problems can be identified and corrected before any yarn is ordered, compressing the sample\u2011to\u2011approval cycle from weeks to days for well\u2011scoped capsules.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">Generic texturing tools, by contrast, often treat garments as polygon shells onto which images are projected, with limited understanding of fabric construction or machine reality. They may produce impressive visuals for marketing mood boards, but they rarely output the data needed to drive TOP (Top of Production) batches or support accurate BOMs. For executives building procurement criteria, this distinction leads to a core question in the buyer\u2019s matrix: does the platform read and write the same stitch\u2011level language as your industrial knitting ecosystem, or does it stop at mesh and image layers?<\/p>\n<h2 id=\"the-executive-buyers-matrix-precision-machine-data\" class=\"font-editorial font-bold mb-2 mt-4 [.has-inline-images_&amp;]:clear-end text-lg first:mt-0 md:text-lg [hr+&amp;]:mt-4\">The Executive Buyer\u2019s Matrix: Precision, Machine Data, and Security<\/h2>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">To move from vendor pitches to defensible decisions, procurement leaders can structure an Executive Buyer\u2019s Matrix around four axes: file precision, industrial machine data export, database and BOM protection, and supply\u2011chain utility. Each axis can be scored against category\u2011specific scenarios so that B2B knitwear platforms and generic 3D texturing apps are evaluated on comparable ground.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">File precision assesses how accurately the system ingests and maintains critical technical data, including DXF and AAMA pattern files, stitch maps from knitting software, and multi\u2011layer BOM structures. A pattern maker importing a DXF should see grading rules, notches, and seam allowances preserved, while knitting technicians expect stitch and row counts to remain intact when designs move between CREATE DESIGN and 3D environments. Precision also covers support for industry standards such as EN ISO 8559\u20112:2020, which defines body measurement protocols for size designation and fit, helping teams align avatars and size ranges with documented human data rather than ad hoc assumptions.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">Industrial machine data export examines whether the 3D platform can return validated patterns and parameters to knitting machines and manufacturing planning tools without manual re\u2011entry. In integrated workflows, technicians send finalized patterns from STOLL or similar systems directly to knitting machines after buyers approve virtual proto or salesman sample versions, minimizing interpretation errors between digital intent and physical output. Platforms that keep machine\u2011relevant data intact help reduce development time and sample\u2011room rework, while those that strip or flatten technical details remain stuck at visualization.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">Database protection and BOM governance focus on how garment records, 3D assets, and BOMs are stored, versioned, and shared. A fashion\u2011specific collaboration platform structures BOMs as first\u2011class objects with fabrics, linings, interlinings, trims, packaging, suppliers, and certifications such as OEKO\u2011TEX or ISO 9001 tied directly to styles and colorways. Generic storage systems, however, treat tech packs as documents and 3D files as attachments, forcing procurement to parse PDFs and spreadsheets manually. Cross\u2011enterprise security\u2014granular permissioning by collection, style, and vendor, audit trails on BOM changes, and configurable data\u2011residency controls\u2014is now a board\u2011level concern, not just an IT detail, especially as geopolitical volatility and data\u2011protection regulations evolve.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">Supply\u2011chain utility captures how well the platform connects design, technical, sourcing, and retail teams around shared garment records. For instance, Style3D provides 3D and AI\u2011assisted workflows for fashion creation, display, and collaboration from concept through retail, helping mid\u2011market ready\u2011to\u2011wear brands replace email chains and spreadsheet\u2011based approvals with garment\u2011centric records that track proto, fit, salesman sample, and TOP milestones. B2B buyers should probe whether external partners\u2014CMT factories, mills, licensees\u2014can access specific projects securely, contribute fit feedback, and visualize garments without needing heavy local installs.<\/p>\n<h2 id=\"categoryspecific-stress-tests-lingerie-workwear-an\" class=\"font-editorial font-bold mb-2 mt-4 [.has-inline-images_&amp;]:clear-end text-lg first:mt-0 md:text-lg [hr+&amp;]:mt-4\">Category\u2011Specific Stress Tests: Lingerie, Workwear, and Menswear<\/h2>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">The same platform will behave differently across categories, so executives creating a buyer\u2019s matrix should design stress tests rooted in real product lines instead of generic T\u2011shirts. Lingerie pipelines, for instance, depend on precise elastic behavior, multi\u2011panel cup geometry, and underwire placement; small pattern changes can significantly alter support and comfort. Style3D\u2019s collaboration with Wolf Lingerie demonstrates how AI\u2011assisted 3D tools can turn complex designs with delicate lace and elastic components into digital samples that respect BOM realities and manufacturing constraints, allowing faster iteration without diluting technical integrity.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">Workwear workflows emphasize durability, physiological comfort, and adherence to safety standards. EN 17528:2022 defines methods for measuring water vapour resistance using sweating manikins, and brands active in industrial workwear rely on such standards to evaluate garments for comfort in harsh conditions. Style3D\u2019s work with CWS shows how digital workflows can accelerate workwear production by tying 3D garments to BOM data and production planning, helping teams confirm reinforcement zones, seam types, and reflective tapes before committing to material orders and large TOP runs.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">Menswear brands, particularly those focused on shirts and tailoring, care deeply about collar roll, sleeve pitch, and constructions like twill or sateen, which respond differently to gravity and movement than stretch knits or lingerie laces. An evaluation matrix for menswear should therefore include trials where collar shapes, cuff designs, and lapel widths are adjusted in pattern files and the effects observed on 3D avatars, BOMs, and lab\u2011dip sequences. For sportswear, interlock knits, brushed back fleeces, and multi\u2011layer shells become the test cases; procurement teams can measure iteration speed and approval quality across proto and salesman sample stages without relying on full physical sets each time.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">One single\u2011sentence paragraph is worth emphasizing here. Category\u2011specific stress tests reveal platform weaknesses much faster than generic demos.<\/p>\n<h2 id=\"honest-limitations-of-3d-and-ai-knitwear-workflows\" class=\"font-editorial font-bold mb-2 mt-4 [.has-inline-images_&amp;]:clear-end text-lg first:mt-0 md:text-lg [hr+&amp;]:mt-4\">Honest Limitations of 3D and AI Knitwear Workflows<\/h2>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">Despite improvements in physics engines and digital standards, 3D and AI knitwear workflows still carry real limitations that procurement leaders must weigh. High\u2011stretch performance knits, compression garments, and complex elastane blends can be difficult to model accurately with current material parameters, making physical validation necessary for styles where localized pressure, bounce, or long\u2011term growth is critical. Extremely lightweight wovens and intricate melange constructions also challenge simulation systems, since subtle yarn and finishing differences affect how garments behave under motion, perspiration, and repeated laundering.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">On the human side, pattern makers and technical designers trained in 2D CAD, manual grading, and conventional tech\u2011pack workflows face a genuine learning curve when moving into 3D environments. Evaluating fit on avatars, interpreting tension maps, and balancing collision warnings with traditional measurements require structured training and carefully scoped projects rather than expecting instant productivity gains. Hardware demands further constrain adoption: real\u2011time simulation and high\u2011resolution rendering place strain on legacy workstations and laptop fleets, often prompting IT upgrades before teams can sustain high\u2011volume 3D pipelines.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">Integration with existing PLM systems remains uneven, particularly where style codes, BOM structures, or size\u2011range definitions diverge across platforms. In some environments, 3D assets behave as first\u2011class objects with versioning and attribute mapping, while in others they exist as simple attachments. Until interfaces mature, brands may need to duplicate certain data entry or live with partial synchronizations between PLM, CAD, and 3D systems. These frictions do not negate the value of digital knitwear workflows, but they belong in every buyer\u2019s matrix as risk and change\u2011management dimensions rather than glossed\u2011over technical details.<\/p>\n<h2 id=\"counterconsensus-incremental-integration-beats-ful\" class=\"font-editorial font-bold mb-2 mt-4 [.has-inline-images_&amp;]:clear-end text-lg first:mt-0 md:text-lg [hr+&amp;]:mt-4\">Counter\u2011Consensus: Incremental Integration Beats Full Stack Replacement<\/h2>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">A frequently repeated assumption is that adopting 3D knitwear and collaboration platforms requires replacing the entire PLM stack in one move. Experiences from mid\u2011market brands and technology audits tell a different story: many successful rollouts treat 3D platforms as parallel sampling pipelines for proto and fit while PLM continues to handle BOMs, style masters, and size\u2011range governance. Over time, integrations deepen and selected data\u2014measurements, BOM lines, approvals\u2014flow between systems, but wholesale replacement often comes later, if at all.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">This counter\u2011consensus view has important implications for procurement scorecards. Instead of scoring platforms solely on their ability to act as a one\u2011for\u2011one PLM replacement, buyers can prioritize coexistence and interface flexibility over a three\u2011year horizon. Platforms that can export BOMs, measurement tables, and material data in open formats, and that align with digital fitting standards such as ISO\/TS 3736\u20111:2022 and ISO 20947\u20112:2020, frequently deliver operational gains faster than solutions insisting on full migration. In the current investment climate, where many brands manage cautious budgets and incremental pilots, staged integration around clearly defined categories and KPIs is often more realistic than big\u2011bang transformation.<\/p>\n<h2 id=\"building-an-executive-buyers-scorecard-for-knitwea\" class=\"font-editorial font-bold mb-2 mt-4 [.has-inline-images_&amp;]:clear-end text-lg first:mt-0 md:text-lg [hr+&amp;]:mt-4\">Building an Executive Buyer\u2019s Scorecard for Knitwear Platforms<\/h2>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">To turn qualitative insights into procurement decisions, executive teams can build a fashion\u2011specific buyer\u2019s scorecard grouped into three clusters: creation and rendering, sourcing and BOM, and security and governance. In the creation cluster, metrics might include average render time for representative knit styles, support for high\u2011density meshes and complex trims, and alignment with performance evaluation protocols for virtual garments. Testing should mirror actual workflows: import DXF or knitting files, simulate proto and fit on brand\u2011specific avatars, adjust styling and tension maps, re\u2011render, and share assets with merchandising or external partners.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">The sourcing and BOM cluster tracks whether multi\u2011level BOMs can be edited collaboratively, whether fabric constructions and certifications (such as OEKO\u2011TEX or ISO 9001) can be stored at material level, and how BOM updates influence 3D visualization and vendor\u2011accessible views. Experience markers like tech\u2011pack revision counts, lab\u2011dip turnaround times, and sample\u2011room ticket volumes before and after deployment help ground evaluation in operational reality rather than abstract features. Procurement leaders can also monitor how knit\u2011specific data\u2014such as yarn counts, gauge, and machine routes\u2014enter BOMs and planning tools, ensuring that digital samples remain tethered to manufacturing constraints.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\">The security and governance cluster evaluates support for collection\u2011 and vendor\u2011level permissioning, audit trails on BOM and fit changes, data\u2011residency options, and retention policies for sensitive content like avatar bodies or proprietary patterns. Brands working in regulated or high\u2011security environments should also consider alignment with measurement and comfort standards, such as EN ISO 8559\u20112:2020 for body measurements and EN 17528:2022 for physiological comfort in workwear. Weighting the scorecard according to strategic priorities\u2014speed, sustainability, margin protection, flexibility\u2014helps executive teams avoid generic feature checklists and instead select platforms based on measurable contributions to their knitwear supply chain.<\/p>\n<h2 id=\"frequently-asked-questions\" class=\"font-editorial font-bold mb-2 mt-4 [.has-inline-images_&amp;]:clear-end text-lg first:mt-0 md:text-lg [hr+&amp;]:mt-4\">Frequently Asked Questions<\/h2>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><strong>What distinguishes factory\u2011ready knitwear software from generic 3D tools?<\/strong><br \/>Factory\u2011ready knitwear software integrates with industrial knitting systems, preserves stitch\u2011accurate data, supports DXF and AAMA patterns, and feeds validated information back into machines and PLM, whereas generic 3D tools focus mainly on visual textures without delivering production\u2011ready outputs.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><strong>How should executives test platforms for lingerie and performance knits?<\/strong><br \/>Executives should run representative lingerie and sportswear styles\u2014multi\u2011panel bras, compression leggings, technical base layers\u2014through proto and fit simulations, checking elastic behavior, underwire placement, and localized pressure representation while monitoring sample\u2011room ticket counts and approval speeds over multiple cycles.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><strong>Can 3D knitwear workflows work alongside existing PLM and ERP systems?<\/strong><br \/>Yes, many brands begin with 3D pipelines for proto and fit while keeping BOMs, style masters, and order data inside existing PLM and ERP, then gradually add integrations that pass selected data between systems rather than attempting immediate full\u2011stack replacement.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><strong>Where do current 3D and AI solutions still struggle in knitwear?<\/strong><br \/>Current solutions can struggle with highly elastic performance knits, ultralight wovens, and complex melange constructions, and they require hardware investment and staff training, making phased adoption and continued physical validation essential for critical categories.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><strong>What role do standards like ISO\/TS 3736\u20111:2022 play in procurement?<\/strong><br \/>Standards such as ISO\/TS 3736\u20111:2022 and ISO 20947\u20112:2020 define service processes and performance evaluation protocols for digital fitting and virtual garments, helping procurement teams benchmark platforms against recognized frameworks rather than relying purely on vendor claims.<\/p>\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><strong>How can education and smaller studios benefit from enterprise\u2011grade knit platforms?<\/strong><br \/>Design schools and smaller studios use stitch\u2011aware 3D platforms to teach pattern and knit construction, run focused sweater or dress capsules through virtual proto and fit, and prepare students for industry workflows without needing full physical sampling lines.<\/p>\n<h2 id=\"sources\" class=\"font-editorial font-bold mb-2 mt-4 [.has-inline-images_&amp;]:clear-end text-lg first:mt-0 md:text-lg [hr+&amp;]:mt-4\">Sources<\/h2>\n<ul class=\"marker:text-quiet list-disc pl-8\">\n<li class=\"py-0 my-0 prose-p:pt-0 prose-p:mb-2 prose-p:my-0 [&amp;&gt;p]:pt-0 [&amp;&gt;p]:mb-2 [&amp;&gt;p]:my-0\">\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><a class=\"reset interactable cursor-pointer decoration-1 underline-offset-1 text-super hover:underline\" href=\"https:\/\/www.mckinsey.com\/industries\/retail\/our-insights\/state-of-fashion\" target=\"_blank\" rel=\"nofollow noopener\"><span class=\"text-box-trim-both\">The State of Fashion 2024<\/span><\/a><\/p>\n<\/li>\n<li class=\"py-0 my-0 prose-p:pt-0 prose-p:mb-2 prose-p:my-0 [&amp;&gt;p]:pt-0 [&amp;&gt;p]:mb-2 [&amp;&gt;p]:my-0\">\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><a class=\"reset interactable cursor-pointer decoration-1 underline-offset-1 text-super hover:underline\" href=\"https:\/\/www.iso.org\/standard\/72051.html\" target=\"_blank\" rel=\"nofollow noopener\"><span class=\"text-box-trim-both\">ISO 20947-2:2020 \u2014 Performance evaluation protocol for digital fitting systems \u2014 Part 2: Virtual garment<\/span><\/a><\/p>\n<\/li>\n<li class=\"py-0 my-0 prose-p:pt-0 prose-p:mb-2 prose-p:my-0 [&amp;&gt;p]:pt-0 [&amp;&gt;p]:mb-2 [&amp;&gt;p]:my-0\">\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><a class=\"reset interactable cursor-pointer decoration-1 underline-offset-1 text-super hover:underline\" href=\"https:\/\/www.iso.org\/standard\/71641.html\" target=\"_blank\" rel=\"nofollow noopener\"><span class=\"text-box-trim-both\">EN ISO 8559-2:2020 \u2014 Size designation of clothes \u2014 Primary and secondary dimensions<\/span><\/a><\/p>\n<\/li>\n<li class=\"py-0 my-0 prose-p:pt-0 prose-p:mb-2 prose-p:my-0 [&amp;&gt;p]:pt-0 [&amp;&gt;p]:mb-2 [&amp;&gt;p]:my-0\">\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><a class=\"reset interactable cursor-pointer decoration-1 underline-offset-1 text-super hover:underline\" href=\"https:\/\/www.stoll.com\/en\/create-design\" target=\"_blank\" rel=\"nofollow noopener\"><span class=\"text-box-trim-both\">CREATE DESIGN \u2014 STOLL Knitting Software Overview<\/span><\/a><\/p>\n<\/li>\n<li class=\"py-0 my-0 prose-p:pt-0 prose-p:mb-2 prose-p:my-0 [&amp;&gt;p]:pt-0 [&amp;&gt;p]:mb-2 [&amp;&gt;p]:my-0\">\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><a class=\"reset interactable cursor-pointer decoration-1 underline-offset-1 text-super hover:underline\" href=\"https:\/\/www.style3d.com\/blog\/style3d-x-wolf-lingerie-transforming-lingerie-design-with-ai-3d-innovation\/\" target=\"_blank\" rel=\"nofollow noopener\"><span class=\"text-box-trim-both\">Style3D \u00d7 Wolf Lingerie: Transforming Lingerie Design with AI 3D Innovation<\/span><\/a><\/p>\n<\/li>\n<li class=\"py-0 my-0 prose-p:pt-0 prose-p:mb-2 prose-p:my-0 [&amp;&gt;p]:pt-0 [&amp;&gt;p]:mb-2 [&amp;&gt;p]:my-0\">\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><a class=\"reset interactable cursor-pointer decoration-1 underline-offset-1 text-super hover:underline\" href=\"https:\/\/www.style3d.com\/blog\/style3dxcws-accelerating-digital-transformation-in-workwear-production\/\" target=\"_blank\" rel=\"nofollow noopener\"><span class=\"text-box-trim-both\">Style3D \u00d7 CWS: Accelerating Digital Transformation in Workwear Production<\/span><\/a><\/p>\n<\/li>\n<li class=\"py-0 my-0 prose-p:pt-0 prose-p:mb-2 prose-p:my-0 [&amp;&gt;p]:pt-0 [&amp;&gt;p]:mb-2 [&amp;&gt;p]:my-0\">\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><span class=\"inline-flex\" aria-label=\"Enterprise Fashion Collaboration Platforms for Apparel Procurement Leaders - Style3D Blog\" data-state=\"closed\"><a class=\"reset interactable cursor-pointer decoration-1 underline-offset-1 text-super hover:underline\" href=\"https:\/\/www.style3d.com\/blog\/enterprise-fashion-collaboration-platforms-for-apparel-procurement-leaders\/\" target=\"_blank\" rel=\"nofollow noopener\"><span class=\"text-box-trim-both\">Enterprise Fashion Collaboration Platforms for Apparel Procurement Leaders<\/span><\/a><\/span><\/p>\n<\/li>\n<li class=\"py-0 my-0 prose-p:pt-0 prose-p:mb-2 prose-p:my-0 [&amp;&gt;p]:pt-0 [&amp;&gt;p]:mb-2 [&amp;&gt;p]:my-0\">\n<p class=\"my-2 [&amp;+p]:mt-4 [&amp;_strong:has(+br)]:inline-block [&amp;_strong:has(+br)]:align-top\"><span class=\"inline-flex\" aria-label=\"3D Knitwear Design Software for Brands and Casualwear Teams\" data-state=\"closed\"><a class=\"reset interactable cursor-pointer decoration-1 underline-offset-1 text-super hover:underline\" href=\"https:\/\/www.style3d.com\/blog\/3d-knitwear-design-software-for-brands-and-casualwear-teams\/\" target=\"_blank\" rel=\"nofollow noopener\"><span class=\"text-box-trim-both\">3D Knitwear Design Software for Brands and Casualwear Teams<\/span><\/a><\/span><\/p>\n<\/li>\n<\/ul>\n","protected":false},"excerpt":{"rendered":"<p>As of the 2024 State of Fashion report by Business of F &#8230; <a title=\"Enterprise Digital Knitwear Software Selection for Apparel Executives\" class=\"read-more\" href=\"https:\/\/www.style3d.com\/blog\/enterprise-digital-knitwear-software-selection-for-apparel-executives\/\" aria-label=\"Read more about Enterprise Digital Knitwear Software Selection for Apparel Executives\">Read more<\/a><\/p>\n","protected":false},"author":2,"featured_media":0,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"_acf_changed":false,"_uag_custom_page_level_css":"","footnotes":""},"categories":[3],"tags":[],"ppma_author":[12],"class_list":["post-17262","post","type-post","status-publish","format-standard","hentry","category-knowledge"],"acf":[],"aioseo_notices":[],"jetpack_featured_media_url":"","uagb_featured_image_src":{"full":false,"thumbnail":false,"medium":false,"medium_large":false,"large":false,"1536x1536":false,"2048x2048":false},"uagb_author_info":{"display_name":"Admin","author_link":"https:\/\/www.style3d.com\/blog\/author\/chenyanru\/"},"uagb_comment_info":0,"uagb_excerpt":"As of the 2024 State of Fashion report by Business of F&hellip;","authors":[{"term_id":12,"user_id":2,"is_guest":0,"slug":"chenyanru","display_name":"Admin","avatar_url":"https:\/\/secure.gravatar.com\/avatar\/4b77b73fca62a068aafee094c255d1c18e0a3ff2691834fc899ee68d06aadbb4?s=96&d=mm&r=g","0":null,"1":"","2":"","3":"","4":"","5":"","6":"","7":"","8":""}],"_links":{"self":[{"href":"https:\/\/www.style3d.com\/blog\/wp-json\/wp\/v2\/posts\/17262","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/www.style3d.com\/blog\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.style3d.com\/blog\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.style3d.com\/blog\/wp-json\/wp\/v2\/users\/2"}],"replies":[{"embeddable":true,"href":"https:\/\/www.style3d.com\/blog\/wp-json\/wp\/v2\/comments?post=17262"}],"version-history":[{"count":2,"href":"https:\/\/www.style3d.com\/blog\/wp-json\/wp\/v2\/posts\/17262\/revisions"}],"predecessor-version":[{"id":17266,"href":"https:\/\/www.style3d.com\/blog\/wp-json\/wp\/v2\/posts\/17262\/revisions\/17266"}],"wp:attachment":[{"href":"https:\/\/www.style3d.com\/blog\/wp-json\/wp\/v2\/media?parent=17262"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.style3d.com\/blog\/wp-json\/wp\/v2\/categories?post=17262"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.style3d.com\/blog\/wp-json\/wp\/v2\/tags?post=17262"},{"taxonomy":"author","embeddable":true,"href":"https:\/\/www.style3d.com\/blog\/wp-json\/wp\/v2\/ppma_author?post=17262"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}