{"id":4035,"date":"2019-09-05T13:00:28","date_gmt":"2019-09-05T17:00:28","guid":{"rendered":"https:\/\/blogs.solidworks.com\/delmiaworks\/10-ways-machine-learning-can-improve-manufacturing-today\/"},"modified":"2019-09-05T13:00:28","modified_gmt":"2019-09-05T17:00:28","slug":"10-ways-machine-learning-can-improve-manufacturing-today","status":"publish","type":"post","link":"https:\/\/blogs.solidworks.com\/delmiaworks\/10-ways-machine-learning-can-improve-manufacturing-today\/","title":{"rendered":"10 Ways Machine Learning Can Improve Manufacturing Today"},"content":{"rendered":"<ul>\n<li>AI has the potential to create $1.4T to $2.6T of value in marketing and sales across the world\u2019s businesses, and&nbsp;<a href=\"https:\/\/www.mckinsey.com\/business-functions\/mckinsey-analytics\/our-insights\/most-of-ais-business-uses-will-be-in-two-areas\" target=\"_blank\" rel=\"noopener noreferrer\">$1.2T to $2T in supply-chain management and manufacturing<\/a>.<\/li>\n<li>By 2021, 20% of leading manufacturers will rely on embedded intelligence, using AI, IoT, and blockchain applications to automate processes and increase execution times by up to 25% according to<a href=\"https:\/\/www.cnbc.com\/advertorial\/2018\/04\/27\/how-manufacturing-can-harness-digital-innovation-and-reap-the-benefits-of-growth.html\" target=\"_blank\" rel=\"noopener noreferrer\">&nbsp;IDC<\/a>.<\/li>\n<li>Machine learning improves product quality up to 35% in discrete manufacturing industries, according to&nbsp;<a href=\"https:\/\/www2.deloitte.com\/content\/dam\/Deloitte\/us\/Documents\/about-deloitte\/us-a-turnkey-iot-solution-for-manufacturing.pdf\" target=\"_blank\" rel=\"noopener noreferrer\">Deloitte<\/a>.<\/li>\n<li>50% of companies that embrace AI over the next five to seven years have the potential to double their cash flow with manufacturing leading all industries due to its heavy reliance on data according to&nbsp;<a href=\"https:\/\/C:\\Users\\lcolumbus\\Downloads\\digital-manufacturing-capturing-sustainable-impact-at-scale.pdf\" target=\"_blank\" rel=\"noopener noreferrer\">McKinsey<\/a>.<\/li>\n<li>By 2020, 60% of leading manufacturers will depend on digital platforms to support as much as&nbsp;<a href=\"https:\/\/www.cnbc.com\/advertorial\/2018\/04\/27\/how-manufacturing-can-harness-digital-innovation-and-reap-the-benefits-of-growth.html\">30% of their overall revenue<\/a>.<\/li>\n<li>48% of Japanese manufacturers are seeing greater opportunities to integrate machine learning and digital manufacturing techniques into their operations than initially believed&nbsp;<a href=\"https:\/\/www.mckinsey.com\/~\/media\/mckinsey\/business%20functions\/operations\/our%20insights\/how%20digital%20manufacturing%20can%20escape%20pilot%20purgatory\/digital-manufacturing-escaping-pilot-purgatory.ashx\" target=\"_blank\" rel=\"noopener noreferrer\">according to McKinsey\u2019s landmark study, Digital Manufacturing \u2013 escaping pilot purgatory.<\/a><\/li>\n<\/ul>\n<p><strong>Bottom Line:&nbsp;<\/strong>The leading growth strategy for manufacturers in 2019 is improving shop floor productivity by investing in machine learning platforms that deliver the insights needed to improve product quality and production yields.<\/p>\n<p>Using machine learning to streamline every phase of production, starting with inbound supplier quality through manufacturing scheduling to fulfillment is now a priority in manufacturing. According to a&nbsp;<a href=\"https:\/\/www2.deloitte.com\/content\/dam\/Deloitte\/us\/Documents\/about-deloitte\/us-a-turnkey-iot-solution-for-manufacturing.pdf\" target=\"_blank\" rel=\"noopener noreferrer\">recent survey by Deloitte<\/a>, machine learning is reducing unplanned machinery downtime between 15 \u2013 30%, increasing production throughput by 20%, reducing maintenance costs 30% and delivering up to a 35% increase in quality.<\/p>\n<p>The following are ten ways machines learning is revolutionizing manufacturing in 2019:<\/p>\n<ul>\n<li><strong>AI has the potential to create $1.4T to $2.6T of value in marketing and sales across the world\u2019s businesses, and $1.2T to $2 in supply-chain management and manufacturing.<\/strong>&nbsp;McKinsey predicts AI-based predictive maintenance has the potential to deliver between $.5T to $.7T value to manufacturers. McKinsey cites AI\u2019s ability to process massive amounts of data, including audio and video, means it can quickly identify anomalies to prevent breakdowns. Machine learning can determine whether a specific sound is an aircraft engine operating correctly under quality tests or a machine on an assembly line about to fail. Source: McKinsey\/Harvard Business Review.&nbsp;<a href=\"https:\/\/www.mckinsey.com\/business-functions\/mckinsey-analytics\/our-insights\/most-of-ais-business-uses-will-be-in-two-areas\" target=\"_blank\" rel=\"noopener noreferrer\">Most of AI\u2019s business uses will be in two areas<\/a>&nbsp;by Michael Chui, Nicolaus Henke, and Mehdi Miremadi. March 2019<\/li>\n<\/ul>\n<p><a href=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/McKinsey-Market-Sizing.jpg\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-16808 aligncenter\" src=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/McKinsey-Market-Sizing.jpg\" alt=\"\" width=\"809\" height=\"797\"><\/a><\/p>\n<ul>\n<li><strong>Manufacturers are gaining new insights into how they can become more sustainable using machine learning and predictive analytics that scale on cloud platforms.<\/strong>&nbsp;Process manufacturers are using Azure\u2019s Symphony Industrial AI to deploy equipment models from a template library that includes heat exchangers, pumps, compressors, and other assets process manufacturers rely on. Symphony AI\u2019s Process 360 AI helps users create predictive models of their processes. A process is defined at the high level as the items (such as chemicals, fuels, metals, other intermediate and finished products) in production through the equipment. Process template examples include an ammonia process, an ethylene process, an LNG process, and a polypropylene process. Process models help predict process upsets and trips \u2014 which equipment models alone may not be able to predict. Source: Microsoft Azure blog,&nbsp;<a href=\"https:\/\/azure.microsoft.com\/en-us\/blog\/implement-predictive-analytics-for-manufacturing-with-symphony-industrial-ai\/\" target=\"_blank\" rel=\"noopener noreferrer\">Implement predictive analytics for manufacturing with Symphony Industrial AI<\/a>,<\/li>\n<\/ul>\n<p><a href=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/azure-dashboard.png\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-16810 aligncenter\" src=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/azure-dashboard.png\" alt=\"\" width=\"1024\" height=\"576\"><\/a><\/p>\n<ul>\n<li><strong>Boston Consulting Group (BCG) found that manufacturers\u2019 use of AI can reduce producer\u2019s conversion costs by up to 20% with up to 70% of the cost reduction resulting from higher workforce productivity.<\/strong>&nbsp;BCG found that producers will be able to generate additional sales by using AI to develop and produce innovative products tailored to specific customers and to deliver them in a much shorter lead-time. The following graphic illustrates how AI will bring increased flexibility and scale to production processes based on BCG\u2019s analysis. Source:&nbsp;<a href=\"https:\/\/www.bcg.com\/publications\/2018\/artificial-intelligence-factory-future.aspx\" target=\"_blank\" rel=\"noopener noreferrer\">Boston Consulting Group, AI in the Factory of the Future, April 18, 2018<\/a>.<\/li>\n<\/ul>\n<p><a href=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/BCG-Graphic.jpg\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-16811 aligncenter\" src=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/BCG-Graphic.jpg\" alt=\"\" width=\"906\" height=\"538\"><\/a><\/p>\n<ul>\n<li><strong>Discrete and process manufacturers who rely on heavy assets are using AI and machine learning to improve throughput, energy consumption, and profit per hour.<\/strong>&nbsp;Manufacturers with heavy equipment, including large-scale machinery, are exploring the use of algorithms to improve throughput, sustainability, and yield rates. McKinsey is finding AI can automate complex tasks and provide consistency and precise optimum set points to enable machinery to run in auto-pilot mode, which is essential for achieving lights-out manufacturing on one or more production shifts. Source: McKinsey,&nbsp;<a href=\"https:\/\/www.mckinsey.com\/business-functions\/mckinsey-analytics\/our-insights\/ai-in-production-a-game-changer-for-manufacturers-with-heavy-assets\" target=\"_blank\" rel=\"noopener noreferrer\">AI in production: A game-changer for manufacturers with heavy assets<\/a>, by Eleftherios Charalambous, Robert Feldmann, G\u00e9rard Richter, and Christoph Schmitz<\/li>\n<\/ul>\n<p><a href=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/AI-Asset-Optimizer.jpg\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-16812 aligncenter\" src=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/AI-Asset-Optimizer.jpg\" alt=\"\" width=\"999\" height=\"780\"><\/a><\/p>\n<ul>\n<li><strong>AI- and machine learning-based product defect detection and quality assurance show the potential to increase manufacturing productivity by 50% or more.<\/strong>&nbsp;Machine learning\u2019s inherent advantages in finding anomalies in a product and its packaging have significant potential to improve product quality and stop defective products from leaving a production facility.&nbsp; Improvements of up to 90% in defect detection as compared to human inspection are feasible using deep-learning-based systems. Given the availability of open-source AI environments and inexpensive hardware in terms of cameras and powerful computers, even small businesses are expected to increasingly rely on AI-based visual inspection. &nbsp;In AI-enabled visual quality inspection, reference examples are created by visual imaging of good and defective products from different perspectives that fuel the training of supervised learning algorithms.&nbsp;Source:&nbsp;<a href=\"https:\/\/www.mckinsey.de\/files\/170419_mckinsey_ki_final_m.pdf\" target=\"_blank\" rel=\"noopener noreferrer\">Smartening up with Artificial Intelligence (AI) &#8211; What\u2019s in it for Germany and its Industrial Sector?<\/a>&nbsp;(52 pp., PDF, no opt-in) McKinsey &amp; Company.<\/li>\n<\/ul>\n<p><a href=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/AI-based-inspections-2.jpg\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-16824 aligncenter\" src=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/AI-based-inspections-2.jpg\" alt=\"\" width=\"640\" height=\"664\"><\/a><\/p>\n<ul>\n<li><strong>Machine learning has the potential to reduce manufacturing\u2019s chronic labor shortage while finding new ways to retain employees at the same time.<\/strong>&nbsp;Manufacturing is facing a severe labor shortage today, with every survey of manufacturers reflecting this issue as one of the top three most constraining the industry\u2019s growth. One of the most interesting companies taking on this challenge is&nbsp;<a href=\"https:\/\/eightfold.ai\/\" target=\"_blank\" rel=\"noopener noreferrer\">Eightfold<\/a>. Their AI-based Talent Intelligence Platform relies on a series of supervised and unsupervised machine learning algorithms to match a candidate\u2019s unique set of capabilities, experience, and strengths. Manufacturers, including&nbsp;<a href=\"https:\/\/eightfold.ai\/resources\/eightfold-and-conagra-brands-join-forces-to-manage-their-talent\/\" target=\"_blank\" rel=\"noopener noreferrer\">ConAgra<\/a>, are relying on&nbsp;<a href=\"https:\/\/eightfold.ai\/\" target=\"_blank\" rel=\"noopener noreferrer\">Eightfold<\/a>&nbsp;to improve recruiting and rediscover talent they need to staff their teams and pursue growth opportunities. The following diagram explains how the Eightfold Talent Intelligence Platform works:<\/li>\n<\/ul>\n<p><a href=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/eightfold.jpg\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-16814 aligncenter\" src=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/eightfold.jpg\" alt=\"\" width=\"910\" height=\"451\"><\/a><\/p>\n<ul>\n<li><strong>Machine learning is helping manufacturers solve previously impenetrable problems and reveal those that they never knew existed, including hidden bottlenecks or unprofitable production lines<\/strong>. Improving predictive maintenance accuracy for every machine on the shop floor, uncovering how to increase the yield\/throughputs of each machine and associated workflow, and optimizing systems and supply chain optimization. The following graphic illustrates how machine learning is improving shop floor productivity beginning at the machine level first, then scaling out to workflows and the systems they rely on. Source: McKinsey,&nbsp;<a href=\"https:\/\/www.mckinsey.com\/business-functions\/operations\/our-insights\/manufacturing-analytics-unleashes-productivity-and-profitability\" target=\"_blank\" rel=\"noopener noreferrer\">Manufacturing: Analytics unleashes productivity and profitability<\/a>, by Valerio Dilda, Lapo Mori, Olivier Noterdaeme, and Christoph Schmitz<\/li>\n<\/ul>\n<p><a href=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/bottleneck-assets.jpg\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-16816 aligncenter\" src=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/bottleneck-assets.jpg\" alt=\"\" width=\"856\" height=\"669\"><\/a><\/p>\n<ul>\n<li><strong>Machine learning can significantly improve product configuration, and Configure-Price-Quote (CPQ) workflows manufacturers rely on to build-to-order products.<\/strong>&nbsp;Siemens\u2019 approach to selling, designing, and installing railway interlocking control systems uses AI and machine learning to find the optimal configuration out of 10<sup>90<\/sup>&nbsp;possible combinations. Machine learning is adept at defining the optimal configurations that best meet customers\u2019 needs while also being the most reliably manufactured. Source: Siemens,&nbsp;<a href=\"https:\/\/assets.new.siemens.com\/siemens\/assets\/public.1559011182.cb8f9288-6f4a-4568-b8fe-7a1c03deef5b.15-22-may-en-ai-presentation-sid-2019-dr--michael-may-en-final-0.pdf\" target=\"_blank\" rel=\"noopener noreferrer\">Next Level AI \u2013 Powered by Knowledge Graphs and Data Thinking, Siemens China Innovation Day, Michael May<\/a>, Chengdu, May 15th, 2019<\/li>\n<\/ul>\n<p><a href=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/Product-Configuration.jpg\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-16819 aligncenter\" src=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/Product-Configuration.jpg\" alt=\"\" width=\"1456\" height=\"808\"><\/a><\/p>\n<ul>\n<li><strong>AI and machine learning adoption in manufacturing are predicted to eclipse robotics in the next five years, becoming the leading use case in manufacturing.<\/strong>&nbsp;The complexity and constraints of supply chain operations are an ideal use case for machine learning algorithms to provide recommended solutions. Manufacturers are pursuing pilots on predictive maintenance today with those that deliver clear revenue gains being the most likely to move into production. Source: MAPI Foundation,&nbsp;<a href=\"https:\/\/mapifoundation.org\/manufacturing-evolution\" target=\"_blank\" rel=\"noopener noreferrer\">The Manufacturing Evolution: How AI Will Transform Manufacturing &amp; the Workforce of the Future<\/a>&nbsp;by Robert D. Atkinson, Stephen Ezell, Information Technology and Innovation Foundation (PDF, 56 pp., opt-in)<\/li>\n<\/ul>\n<p><a href=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/MAPI-Study-AI-Deployment-Levels-1.jpg\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-16826 aligncenter\" src=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/MAPI-Study-AI-Deployment-Levels-1.jpg\" alt=\"\" width=\"640\" height=\"715\"><\/a><\/p>\n<ul>\n<li><strong>Machine learning is revolutionizing how manufacturers secure every threat surface, relying on the Zero Trust Security (ZTS) framework to secure and scale their operations.<\/strong>&nbsp;Manufacturers are turning to the&nbsp;<a href=\"https:\/\/go.forrester.com\/blogs\/what-ztx-means-for-vendors-and-users\/\" target=\"_blank\" rel=\"noopener noreferrer\">Zero Trust Security (ZTS)&nbsp;<\/a>framework to&nbsp;secure every network, cloud and on-premise platform, operating system, and application across their supply chain and production networks.&nbsp;<a href=\"https:\/\/go.forrester.com\/blogs\/author\/chase_cunningham\/\" target=\"_blank\" rel=\"noopener noreferrer\">Chase Cunningham of Forrester<\/a>, Principal Analyst, is the leading authority on Zero Trust Security and his recent video,&nbsp;<a href=\"https:\/\/go.forrester.com\/blogs\/zero-trust-in-practice\/\">Zero Trust In Action<\/a>, is worth watching to learn more about how manufacturers can secure their IT infrastructures.&nbsp;<a href=\"https:\/\/go.forrester.com\/blogs\/author\/chase_cunningham\/\" target=\"_blank\" rel=\"noopener noreferrer\">You can find his blog here<\/a>. There are several fascinating companies to watch in this area, including&nbsp;<a href=\"https:\/\/www.mobileiron.com\/en\">MobileIron<\/a>, which has created a mobile-centric, zero-trust enterprise security framework manufacturers are relying on today.&nbsp;<a href=\"https:\/\/www.centrify.com\/\">Centrify\u2019s<\/a>&nbsp;approach to Identity Access Management thwarts privileged account abuse, which is the leading cause of breaches today.&nbsp;<a href=\"https:\/\/www.centrify.com\/\" target=\"_blank\" rel=\"noopener noreferrer\">Centrify\u2019s<\/a>&nbsp;most recent survey,&nbsp;<a href=\"https:\/\/www.centrify.com\/resources\/industry-research\/pam-survey\/\" target=\"_blank\" rel=\"noopener noreferrer\">Privileged Access Management in the Modern Threatscape<\/a>, found that&nbsp;<a href=\"https:\/\/www.centrify.com\/resources\/industry-research\/pam-survey\/\" target=\"_blank\" rel=\"noopener noreferrer\">74% of all breaches involved access to a privileged account<\/a>. Privileged access credentials are hackers\u2019 most popular technique for initiating a breach to&nbsp;exfiltrate valuable data from manufacturers and sell it on the Dark Web.<\/li>\n<\/ul>\n<p><a href=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/zts.jpg\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-16822 aligncenter\" src=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/zts.jpg\" alt=\"\" width=\"640\" height=\"655\"><\/a><\/p>\n<p><strong>Additional reading:<\/strong><\/p>\n<p><a href=\"https:\/\/info.microsoft.com\/rs\/157-GQE-382\/images\/EN-US-CNTNT-Report-2019-Manufacturing-Trends.pdf\">2019 Manufacturing Trends Report<\/a>, Microsoft (PDF, 72 pp., no opt-in)<\/p>\n<p>Accenture,&nbsp;<a href=\"https:\/\/www.accenture.com\/t20180327t080053z__w__\/us-en\/_acnmedia\/pdf-74\/accenture-pov-manufacturing-digital-final.pdf#zoom=50\">Manufacturing The Future, Artificial intelligence will fuel the next wave of growth for industrial equipment companies<\/a>&nbsp;(PDF, 20 pp., no opt-in)<\/p>\n<p>Anderson, M. (2019). Machine learning in manufacturing.<em>&nbsp;Automotive Design &amp; Production, 131<\/em>(4), 30-32.<br><!--nextpage--><br>Bruno, J. (2019). How the IIoT can change business models.<em>&nbsp;Manufacturing Engineering, 163<\/em>(1), 12.<\/p>\n<p>Greenfield, D. (2019). Advice on scaling IIoT projects.<em>&nbsp;ProFood World<\/em><\/p>\n<p>Hayhoe, T., Podhorska, I., Siekelova, A., &amp; Stehel, V. (2019). Sustainable manufacturing in industry 4.0: Cross-sector networks of multiple supply chains, cyber-physical production systems, and AI-driven decision-making.<em>&nbsp;Journal of Self-<\/em><\/p>\n<p><em>Governance and Management Economics, 7<\/em>(2), 31-36.<\/p>\n<p>Honeywell,&nbsp;<a href=\"https:\/\/www.honeywellprocess.com\/library\/news-and-events\/presentations\/hug-america-2018-honeywell-connected-plant-introduction.pdf\">The Honeywell Connected Plant, June, 2018<\/a>&nbsp;(PDF, 36 pp., no opt-in)<\/p>\n<p>How and why to digitize your supply chain. (2019).&nbsp;<em>Manufacturing.Net.<\/em><\/p>\n<p>How emerging technologies can transform the supply chain. (2019).&nbsp;<em>Manufacturing.Net,<\/em><\/p>\n<p>IRI offers AI and machine learning in leading suite of analytic solutions. (2019).&nbsp;<em>Manufacturing Close \u2013 Up<\/em><br><!--nextpage--><br>Kazuyuki, M. (2019).&nbsp;<em>Digitalization of manufacturing process and open innovation: Survey results of small and medium sized firms in japan<\/em>. St. Louis: Federal Reserve Bank of St Louis.<\/p>\n<p><a href=\"https:\/\/emerj.com\/ai-sector-overviews\/machine-learning-in-manufacturing\/\">Machine Learning in Manufacturing \u2013 Present and Future Use-Cases<\/a>, Emerj Artificial Intelligence Research, last updated May 20, 2019, published by Jon Walker<\/p>\n<p>Machine learning, AI are most impactful supply chain technologies. (2019).&nbsp;<em>Material Handling &amp; Logistics<\/em><\/p>\n<p>MAPI Foundation,&nbsp;<a href=\"https:\/\/mapifoundation.org\/manufacturing-evolution\">The Manufacturing Evolution: How AI Will Transform Manufacturing &amp; the Workforce of the Future<\/a>&nbsp;by Robert D. Atkinson, Stephen Ezell, Information Technology and Innovation Foundation (PDF, 56 pp., opt-in)<\/p>\n<p>McKinsey Global Institute<a href=\"https:\/\/www.mckinsey.com\/featured-insights\/artificial-intelligence\/visualizing-the-uses-and-potential-impact-of-ai-and-other-analytics\">, Visualizing the uses and potential impact of AI and other analytics<\/a>, Interactive Visualization Tool. April, 2018<\/p>\n<p>McKinsey<a href=\"https:\/\/www.mckinsey.com\/business-functions\/operations\/our-insights\/lighthouse-manufacturers-lead-the-way\">, \u2018Lighthouse\u2019 manufacturers lead the way\u2014can the rest of the world keep up?,<\/a>by Enno de Boer, Helena Leurent, and Adrian Widmer; January, 2019.<\/p>\n<p>McKinsey,&nbsp;<a href=\"https:\/\/www.mckinsey.com\/business-functions\/mckinsey-analytics\/our-insights\/ai-in-production-a-game-changer-for-manufacturers-with-heavy-assets\">AI in production: A game changer for manufacturers with heavy assets<\/a>, by Eleftherios Charalambous, Robert Feldmann, G\u00e9rard Richter, and Christoph Schmitz<\/p>\n<p>McKinsey,&nbsp;<a href=\"https:\/\/www.mckinsey.com\/~\/media\/mckinsey\/business%20functions\/operations\/our%20insights\/how%20digital%20manufacturing%20can%20escape%20pilot%20purgatory\/digital-manufacturing-escaping-pilot-purgatory.ashx\">Digital Manufacturing \u2013 escaping pilot purgatory<\/a>&nbsp;(PDF, 24 pp., no opt-in)<br><!--nextpage--><br>McKinsey,&nbsp;<a href=\"https:\/\/www.mckinsey.com\/~\/media\/McKinsey\/Business%20Functions\/McKinsey%20Digital\/Our%20Insights\/Driving%20impact%20at%20scale%20from%20automation%20and%20AI\/Driving-impact-at-scale-from-automation-and-AI.ashx\">Driving Impact and Scale from Automation and AI<\/a>, February 2019 (PDF, 100 pp., no opt-in).<\/p>\n<p>McKinsey,&nbsp;<a href=\"https:\/\/www.mckinsey.com\/business-functions\/operations\/our-insights\/manufacturing-analytics-unleashes-productivity-and-profitability\">Manufacturing: Analytics unleashes productivity and profitability<\/a>, by Valerio Dilda, Lapo Mori, Olivier Noterdaeme, and Christoph Schmitz, March, 2019<\/p>\n<p>McKinsey\/Harvard Business Review,&nbsp;<a href=\"https:\/\/www.mckinsey.com\/business-functions\/mckinsey-analytics\/our-insights\/most-of-ais-business-uses-will-be-in-two-areas\">Most of AI\u2019s business uses will be in two areas,<\/a><\/p>\n<p>Morey, B. (2019). Manufacturing and AI: Promises and pitfalls.<em>&nbsp;Manufacturing Engineering, 163<\/em>(1), 10.<\/p>\n<p>Otto, S. (2018). How predictive maintenance is improving asset efficiency.<em>&nbsp;Machine Design.<\/em><\/p>\n<p>Reducing the barriers to entry in advanced analytics. (2019).&nbsp;<em>Manufacturing.Net,<\/em><\/p>\n<p>Seven ways real-time monitoring is driving smart manufacturing. (2019).&nbsp;<em>Manufacturing.Net,<\/em><\/p>\n<p>Siemens,&nbsp;<a href=\"https:\/\/assets.new.siemens.com\/siemens\/assets\/public.1559011182.cb8f9288-6f4a-4568-b8fe-7a1c03deef5b.15-22-may-en-ai-presentation-sid-2019-dr--michael-may-en-final-0.pdf\">Next Level AI \u2013 Powered by Knowledge Graphs and Data Thinking, Siemens China Innovation Day, Michael May<\/a>, Chengdu, May 15th, 2019<br><!--nextpage--><br><a href=\"https:\/\/manufacturingpolicy.indiana.edu\/doc\/Smart%20Factories.pdf\">Smart Factories: Issues of Information Governance Manufacturing Policy Initiative School of Public and Environmental Affairs Indiana University, March 2019<\/a>&nbsp;(PDF, 68 pp., no opt-in)<\/p>\n<p><a href=\"https:\/\/www.mckinsey.de\/files\/170419_mckinsey_ki_final_m.pdf\">Smartening up with Artificial Intelligence (AI) &#8211; What\u2019s in it for Germany and its Industrial Sector?<\/a>&nbsp;(52 pp., PDF, no opt-in) McKinsey &amp; Company.<\/p>\n<p>Team predicts the useful life of batteries with data and AI. (2019, Mar 28).&nbsp;<em>R &amp; D.<\/em><\/p>\n<p><a href=\"https:\/\/3er1viui9wo30pkxh1v2nh4w-wpengine.netdna-ssl.com\/wp-content\/uploads\/prod\/sites\/393\/2019\/06\/Microsoft_TheFutureComputed_AI_MFG_Final_Online.pdf\">The Future of AI and Manufacturing<\/a>, Microsoft, Greg Shaw (PDF, 73 pp., PDF, no opt-in).<\/p>\n<p><a href=\"https:\/\/pdfs.semanticscholar.org\/1034\/e70ec2d1ba1fe0dfa7a872f63ea8cbd11f69.pdf\">The Use of Machine Learning in Industrial Quality Control Thesis<\/a>&nbsp;by Erik Granstedt M\u00f6ller for the degree of Master of Science in Engineering. KTH Royal Institute of Technology, published 2017. (PDF, 55 pp., no opt-in)<\/p>\n<p><a href=\"https:\/\/medium.com\/activewizards-machine-learning-company\/top-8-data-science-use-cases-in-manufacturing-749256b8f1ee\">Top 8 Data Science Use Cases in Manufacturing<\/a>, ActiveWizards: A Machine Learning Company Igor Bobriakov, March 12, 2019<\/p>\n<p>Walker, M. E. (2019). Armed with analytics: Manufacturing as a martial art.<em>&nbsp;Industry Week<\/em><\/p>\n<p>Whittle, T., Gregova, E., Podhorska, I., &amp; Rowland, Z. (2019). Smart manufacturing technologies: Data-driven algorithms in production planning, sustainable value creation, and operational performance improvement.<em>&nbsp;Economics, Management and Financial Markets, 14<\/em>(2), 52-57.<\/p>\n<p>Why software will drive the smart factory and the future of manufacturing. (2019).&nbsp;<em>Manufacturing.Net<\/em><\/p>\n<p>Zulick, J. (2019). How machine learning is transforming industrial production.<em>&nbsp;Machine Design<\/em><\/p>\n\n\n<figure class=\"wp-block-image\"><img decoding=\"async\" src=\"https:\/\/blog-assets.solidworks.com\/uploads\/sites\/17\/Ultimate-Guide-EBook-Blog-CTA-2.jpg\" alt=\"Download The Ultimate Guide to Manufacturing Software\" class=\"wp-image-2703\"\/><\/figure>\n","protected":false},"excerpt":{"rendered":"<p>AI has the potential to create $1.4T to $2.6T of value in marketing and sales across the world\u2019s businesses, and&nbsp;$1.2T to $2T in supply-chain management and manufacturing. By 2021, 20% of leading manufacturers will rely on embedded intelligence, using AI,<\/p>\n... <a href=\"https:\/\/blogs.solidworks.com\/delmiaworks\/10-ways-machine-learning-can-improve-manufacturing-today\/\">Continued<\/a>","protected":false},"author":559,"featured_media":4046,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"_acf_changed":false,"footnotes":""},"categories":[25,26,27,29],"tags":[164,168,175,184],"class_list":["post-4035","post","type-post","status-publish","format-standard","has-post-thumbnail","hentry","category-all-posts","category-manufacturing-across-america","category-manufacturing-trends-and-news","category-erp-technology-and-automation","tag-machine-learning","tag-manufacturing","tag-manufacturing-execution-systems","tag-manufacturing-quality"],"acf":[],"_links":{"self":[{"href":"https:\/\/blogs.solidworks.com\/delmiaworks\/wp-json\/wp\/v2\/posts\/4035","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/blogs.solidworks.com\/delmiaworks\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/blogs.solidworks.com\/delmiaworks\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/blogs.solidworks.com\/delmiaworks\/wp-json\/wp\/v2\/users\/559"}],"replies":[{"embeddable":true,"href":"https:\/\/blogs.solidworks.com\/delmiaworks\/wp-json\/wp\/v2\/comments?post=4035"}],"version-history":[{"count":0,"href":"https:\/\/blogs.solidworks.com\/delmiaworks\/wp-json\/wp\/v2\/posts\/4035\/revisions"}],"wp:featuredmedia":[{"embeddable":true,"href":"https:\/\/blogs.solidworks.com\/delmiaworks\/wp-json\/wp\/v2\/media\/4046"}],"wp:attachment":[{"href":"https:\/\/blogs.solidworks.com\/delmiaworks\/wp-json\/wp\/v2\/media?parent=4035"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/blogs.solidworks.com\/delmiaworks\/wp-json\/wp\/v2\/categories?post=4035"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/blogs.solidworks.com\/delmiaworks\/wp-json\/wp\/v2\/tags?post=4035"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}