<br />
<b>Warning</b>:  Undefined array key "action" in <b>D:\inetpub\webs\fastlawit\web\wp-content\themes\onepress\functions.php</b> on line <b>2</b><br />
{"id":1575,"date":"2023-09-21T14:53:54","date_gmt":"2023-09-21T12:53:54","guid":{"rendered":"https:\/\/www.fastlaw.it\/web\/?p=1575"},"modified":"2023-12-27T18:03:50","modified_gmt":"2023-12-27T17:03:50","slug":"how-generative-ai-in-supply-chain-can-drive-value","status":"publish","type":"post","link":"https:\/\/www.fastlaw.it\/web\/index.php\/2023\/09\/21\/how-generative-ai-in-supply-chain-can-drive-value\/","title":{"rendered":"How generative AI in supply chain can drive value US"},"content":{"rendered":"<p><h1>Generative AI for Supply Chain Management and its Use Cases<\/h1>\n<\/p>\n<p><img class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto;' src=\"data:image\/jpeg;base64,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\" width=\"308px\" alt=\"supply chain ai use cases\"\/><\/p>\n<p><p>The emergence of Generative Adversarial Networks (GANs) in 2014 transformed the field, enabling the generation of realistic images, videos, and audio while raising concerns about deepfakes. Modern generative AI interfaces allow plain language requests, and the generated content can be adjusted based on feedback. AI in retail supply chain avoids human work, which is essential for organizations that need to minimize errors and costs as well. Using AI inventory, consumers can utilize the voice-based service to track the placed orders.<\/p>\n<\/p>\n<div style='border: black dotted 1px;padding: 14px;'>\n<h3>Building the Supply Chain of the Future  BCG &#8211; BCG<\/h3>\n<p>Building the Supply Chain of the Future  BCG.<\/p>\n<p>Posted: Mon, 10 Jul 2023 07:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiTWh0dHBzOi8vd3d3LmJjZy5jb20vcHVibGljYXRpb25zLzIwMjMvYnVpbGRpbmctdGhlLXN1cHBseS1jaGFpbi1vZi10aGUtZnV0dXJl0gEA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>As technologies such as digital twins, machine learning (ML) and the internet of things (IoT) continue to mature and proliferate, companies everywhere can begin to do things never before possible. To get the most from this data using data analytics, think about doctors with machine learning capabilities. Such robots will identify patterns, predict out-of-stock items, orders, and even returns. The AI system can optimize these recommendations by considering cost, time, capacity constraints, and other relevant factors. Generative AI can provide timely alerts and suggest adaptive measures to minimize disruptions. The knowlEdge innovations lead to a new generation of AI-based services and can transform the way supply chains are managed.<\/p>\n<\/p>\n<p><h2>What are the applications of AI in SCM?<\/h2>\n<\/p>\n<p><p>This innovation saves companies valuable time by steering clear of convoluted manual business models and minimizing errors in the planning process. AI-integrated supply chain software magnifies crucial factors, optimizing processes and assisting manufacturers in evaluating scenarios in terms of time, cost, and revenue. AI-powered systems offer real-time insights into the entire supply chain, enhancing transparency and enabling quick responses to disruptions. This heightened visibility aids in the identification of bottlenecks and inefficiencies, fostering a more agile and responsive supply chain. Artificial intelligence for supply chain management can do all of this, not only by using historical data, but also by taking in and comprehending real-time data across multiple layers of the supply chain.<\/p>\n<\/p>\n<ul>\n<li>Ultimately, AI will optimize supply chains to meet specific customer needs for any given situation.<\/li>\n<li>Generative AI models can identify optimal distribution strategies and storage practices considering delivery times, transportation costs, and demand fluctuations.<\/li>\n<li>By analyzing vast amounts of data from various sources, AI can generate efficient transportation plans, save time, and improve the overall efficiency of supply chain logistics.<\/li>\n<li>This raises concerns for businesses about being able to reach their contractual commitments on time.<\/li>\n<li>These insights help identify potential risks, improvement areas and propose negotiation strategies, enabling proactive management of supplier-related issues and fostering beneficial collaborations.<\/li>\n<\/ul>\n<p><p>With organizations driving revenues through AI implementation across the board, including the supply chain, there is more interest in AI in supply chain use cases. However, there is consensus that emerging and mature supply chain technology gives a competitive edge with a high ROI on investments guaranteed. Apart from administrative functions, intelligent allocation of  analyses promotes AI and supply chain uses, as it operates at the intersection of data, people, and processes. This hampers delivery timelines, which in turn results in hefty fines from clients to supply chain vendors.<\/p>\n<\/p>\n<p><h2>Why is Machine Learning Important to Supply Chain Management?<\/h2>\n<\/p>\n<p><p>All documents need to be within compliance, and it is important they are exact when generated. We then followed up with an invitation to MIT Professor Yossi Sheffi whose recently published book, The Magic Conveyor Belt, Supply Chains, AI and the Future of Work, has garnered a lot of reader interest. In this book, Professor Sheffi dedicates a section on generative AI technologies, potential supply chain business process and decision-making areas, along with the implication for different supply chain roles. This specific technology is predicated on rather large learning models that have acquired significant levels of knowledge. We further highlighted growing voices on concerns relative to this technology, especially the volumes and security levels of the data models, and the risks of the technology being leveraged for nefarious purposes. SCM solutions offer configurable processes covering end-to-end supply chain operations right from the procurement of raw materials to the sale of the finished product.<\/p>\n<\/p>\n<p><p>Generative AI models can make data analysis on various sources, such as traffic conditions, fuel prices, and weather forecasts, to identify the most efficient routes and schedules for transportation. The AI can generate multiple possible scenarios, and based on the desired optimization criteria, it can suggest the best options for cost savings, reduced lead times, and improved operational efficiency across the supply chain. AI ensures the accurate structuring and filing of material bills and purchase order data. This not only facilitates real-time predictions but also empowers field operators with data-driven insights to maintain optimal inventory levels. Advanced AI programs, leveraging computer vision and physical sensors, monitor and modify supply chain processes, maintaining an accurate inventory spreadsheet in real-time.<\/p>\n<\/p>\n<p><p>Consequently, supply chain management is constantly occupied with reducing complexity wherever possible and creating transparency [16,17,18]. In today&#8217;s global economy, companies and their operations are virtually inseparable from their supply chains [1, 2]. Due to the integrative nature of supply chains, they are often also referred to as value chains or value networks. The extension and outsourcing of activities are, of course, based on the recognition that different organisations specialise, leading to product differentiation and relative cost advantages. Their reintegration in the form of global supply chains creates real competitive advantages so that competitiveness is now a question of how best to organise supply chains [5,6,7,8].<\/p>\n<\/p>\n<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src=\"data:image\/jpeg;base64,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\" width=\"308px\" alt=\"supply chain ai use cases\"\/><\/p>\n<p><p>Due to the increasing demand for goods, relative scarcity of resources and the desire to mitigate the effects of climate change, the introduction and diffusion of artificial intelligence tools is increasingly important. The goal of producing more with less is an important contribution to achieving environmental sustainability. The technical foundations of knowlEdge enable, for example, the production of zero-defect products with predictable quality. At the same time, planning processes can  be optimised due to improved decision support. Both contribute to lower energy consumption and waste generation throughout the supply network. The more businesses adopt an AI\/machine learning-based approach to logistics and supply chain management; the better global supply chains will function.<\/p>\n<\/p>\n<p><h2>Bridging the AI Divide: Revolutionizing Multi-Platform Integration With Dataiku&#8217;s External Models<\/h2>\n<\/p>\n<p><p>Addressing these challenges requires a multidisciplinary approach involving expertise in AI, supply chain management, data governance, and legal and ethical considerations. Overcoming these challenges will enable organizations to fully leverage the potential of generative AI in the supply chain and drive significant improvements in operational efficiency and decision-making. Generative AI models require large volumes of high-quality data to learn from and generate accurate outputs. Obtaining sufficient and reliable data can be challenging in the supply chain, mainly when dealing with complex and dynamic data sources such as customer demand, production parameters, and logistics information. Data collection, cleaning, and integration become crucial steps to ensure the effectiveness of generative AI models. Moreover, Copilot-enabled inventory visibility is reshaping how businesses manage their stocks, providing users with rapid access to data.<\/p>\n<\/p>\n<p><p>In addition, machine learning allows Covariant\u2019s robots to improve upon their performance and adapt to handling a wide range of objects and tasks. Every business owner dreams of a supply chain that is finely tuned, seamlessly efficient, and adaptive to every twist and turn of the market. AI\u2019s routing optimization curtails transportation costs and improves delivery timelines, enabling businesses to allocate resources effectively. AI empowers businesses to fine-tune production and delivery schedules, streamlining operations and curtailing costs. Autonomous AI agents excel in adaptive decision-making to dynamically adjust supply chains based on changing circumstances. They can respond quickly to unexpected events, such as transportation delays or supplier disruptions, by recommending alternative routes, adjusting inventory allocations, or finding alternative suppliers.<\/p>\n<\/p>\n<p><h2>Last-mile dynamic route optimization<\/h2>\n<\/p>\n<p><p>Implementing AI into the existing software infrastructure and data lakes gives supply chain managers real-time oversight of inventory control and stock levels. Feeding the right data to an integrated AI\/ML system gives it the ability to predict the amount of stock needed, depending on the scenario. For example, a shortage of a material leading to the reduced production of specific goods. This lets supply chain executives accurately predict the amount of stock there should ideally be in their inventory to meet customer demand. This is helpful when planning inventory stock \u2014 and making business decisions based on data \u2014 to avoid over or understocking. Leverage AI\/ML to analyze historical data to uncover trends and patterns for a well-stocked inventory.<\/p>\n<\/p>\n<p><p>Using automated pattern recognition algorithms to&nbsp;capture, harmonize, and sort through masses of real-time data, ML can&nbsp;determine the influencing factor for each signal&nbsp;to&nbsp;predict&nbsp;for example&nbsp;customer orders. With this&nbsp;explosion in volume,&nbsp;variety&nbsp;and <a href=\"https:\/\/www.metadialog.com\/blog\/ai-use-cases-for-supply-chain-optimization\/\">veracity of<\/a>  data&nbsp;many&nbsp;companies have&nbsp;turned to machine learning to make sense of it all. The use of ML in supply chain is not new, innovators like&nbsp;John Galt&nbsp;Solutions,&nbsp;have&nbsp;been&nbsp;delivering&nbsp;solutions for more than a decade.<\/p>\n<\/p>\n<p><p>They partnered with Integrio to develop the AI that powers the platform&#8217;s A\/B testing, recommendation engine, and predictive capabilities. We don&#8217;t just build models; we build software that integrates with your unique systems and processes to deliver standout ROI with minimal disruption. The benefits of machine learning in the supply chain apply to sectors ranging from retail to humanitarian relief. Here, we&#8217;ll examine four high-level use cases that illustrate what&#8217;s at stake for companies contemplating a shift to ML-enhanced logistics. In the future, an increasing number of companies will adopt AI technologies in supply chain management to gain greater control over their operations each day.<\/p>\n<\/p>\n<div itemScope itemProp=\"mainEntity\" itemType=\"https:\/\/schema.org\/Question\">\n<div itemProp=\"name\">\n<h2>What is the future of AI in supply chain?<\/h2>\n<\/div>\n<div itemScope itemProp=\"acceptedAnswer\" itemType=\"https:\/\/schema.org\/Answer\">\n<div itemProp=\"text\">\n<p>AI&apos;s ability to process and analyze large volumes of data in real-time enables predictive maintenance and quality control in the supply chain. By monitoring equipment performance and analyzing sensor data, AI systems can predict maintenance needs, reduce downtime and optimize production schedules.<\/p>\n<\/div><\/div>\n<\/div>\n<p><p>By running simulations, decision-makers can gain insights into inventory performance, evaluate different strategies, and make informed decisions to improve supply chain operations. A. AI and ML are applied in the supply chain ecosystem with the help of advanced algorithms. The role of AI in supply chain solutions will be to enhance the quality of data and offer you a wholly redefined overview of the warehouse and supply chain.<\/p>\n<\/p>\n<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src=\"data:image\/jpeg;base64,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\" width=\"303px\" alt=\"supply chain ai use cases\"\/><\/p>\n<p><p>Now imagine a piece of machinery unpredictably breaking down, and others following suit over the next couple of months. Unplanned maintenance schedules disrupt the entire supply chain workflow, leading to delays and loss of productivity. Having equipment reliably up and running is key to ensuring a smooth end-to-end workflow.<\/p>\n<\/p>\n<p><a href=\"https:\/\/www.metadialog.com\/\"><\/p>\n<figure><img src='data:image\/jpeg;base64,\/9j\/4AAQSkZJRgABAQAAAQABAAD\/2wCEABALDBcVFhcVFRUXFRUVFR0VFRcVFSUXHRUdLicxMC0nLSs1PVBCNThLOSstRGFFS1NWW1xbMkFleWVYbFBZW1cBERISFxYYJRoXJVc2LTZXV1dXV1dXV2NXV1dXV1hXV1dXV1dZV1dXV1dYY2RXV1dXV1dbV1dYV1xXV1pXZGRjV\/\/AABEIAWgB4AMBIgACEQEDEQH\/xAAbAAACAwEBAQAAAAAAAAAAAAAAAQIDBAUGB\/\/EAEgQAAICAQEEBQgIAwUGBwEAAAABAgMRBAUSITETIkFRYQYUMjNxc5GxFiNUcoGSodEVQlIHNJOywUNEYnSC8DZTY4Ois+Ek\/8QAGAEBAQEBAQAAAAAAAAAAAAAAAAECAwT\/xAAjEQEBAAICAgICAwEAAAAAAAAAAQIRAzESIRNBBFJhcaFR\/9oADAMBAAIRAxEAPwDyQAAAAAAAAAIhNk2UXSAomyA2IoAAAAAAgYABQAxpG\/R7LnfFzjKMUpbuGn3f\/pBVRszU2xU69PbOD5ShW2marNkauUIvzW\/ejwf1UuKPp3kfp3Ts+mttNxc+K+8zdtHademUVJSsts4VUVLestfgu7xfBBHxz+C6z7Jf\/hSJLY2s+yX\/AOFI+qqjaGo42XQ0MH\/sqIq6xe2cuHwiT\/gj5+fa7e7\/ADj\/AExgqvlD2PrPsl\/+FIj\/AAbWfZL\/APCkfV3ptfp+NWojrIr\/AGWpiq5v2WRWPjE1bO2nDUb0N2VN9fraLVuzh4+K8VwA+QVbL1FclOyi2uC\/mnBxXxMtliScY9r60u8+q+XVbnoJRi8N2wWX3HzeGxLJcd+KXZlPiEcsDqR2FY20pw4c3h49gPYlm9uKcG8ZfB8ArljSydSGw7JZxOGE8Zw+IqdkTz6ceOex8kNIw+iio6X8IsknLfjhLPJit2NOCTc48cdjFI5oHT\/gtnW68ep4PiD2LZu72\/FrnyZFcwDox2NNptTjlPDWGJ7Jnu72\/HHbwfAaHPA6P8HnlLpI4l6Lw8Mqs2bODalKKfzXeNDGBv8A4VY1vRlGS8CL2ZYubXj4DQxDNN+i3Es2RbfYk8mjSbN3kpuSlHuw1xGhhdUt3fa6reF4lZ0doaSyEVZOUWnLdUY8N3\/vBzmUhAMQDJIiNATEAwEAABFllUiDEmBuTGV1SyWAAABAAAAMAAAAAAAATAUmZLZF9kjLJgRAAKAAAAAAIGMSJxiA4RPRbCX1MveP5I4cInf2Ivqpe8fyRSvc7O1kdNs7ppJtQUmornOW9hRXi3hGnZGz5Q3tRqMT1l6zZLmq49lce5L9XxORol0r2bp36Kndq5rv6NpR\/wDlNP8AA9FroXSra084V2NrE7IOaiu3hlcQLwPNanye1sk5x2tqOlxmK3VGGe7CF5Fbbu1cLqtS1K7TyS30sOUXlcfHKY0LHszX\/wAV8584\/wD48er336O7jd3eXPjk6W1tnO5Rtpar1dOXRb84S74vtRwp7U1H8d816aXm+6n0WFj1efbzPWijzW2tZHVbNjbuuL6WKsrfOFkW1KL9jR4anW2ys3OWXjGPRR7Dbceis1lS4RtdGriv+J5hL\/Kjz0KllvHFp5ZqIb1NdcGoyTkuxc2xVxajx9ZY8vwMOk0eLW204wec9506lnrvm+Xgghz6sHjnjdRTFbu\/j+WO5+JLU2xUoptJRW9+PYQbSqWX6cstgEF9VP4Etavq14YYf7H2vP6ktauo\/YRSrfXXdOsWn4b1b7HhewrU+FL7nusndJV2KbeIyWJP5AV+rnx5ei\/Z2MlZHcbeMxfpL\/Ud8ozipxalHlLHcFMt6Li\/Sjwfiu8DGtVUpuvOYN\/lZn1mhtlZmLcovCi2+ROnZDjPecsxzlLvNtNjg9yXLlCT+QGaDlW93lJLrR7J+KLp6muMd+Tx2bvbku1EIT6u8lNcVx4mK+hXYhJ7k4\/qUOyuvUpS48O7mjbTp4wgox5Ir0ujVcMRbfa2+02QjhEHM24sUx94vkzz8kei28vqY+8XyZ56RKsQEMRADQhlEkMiiSAAGIAIskJgWUyNKMUXhmuDygJgAEAAAAwAAAAAAIyZIrsYFFsiklNkAAAAoAACAGA0gCKL4RIQiaIoKaR3Ni+ql7x\/JHFO3sb1UveP5IQr1WyerqNA3ynptVBPxU4PHwz8D0Ws1dWnrlbdONdcecpPCOBGib0FGoqTlbo7XqIRXOcU2pxXti2iryx0tm0NBTbpM3QU1c4wfGcHFrK72s8io6Wm21bqVv6TRznU\/Rt1Fnm8Z+MVht\/A89\/Z5np9fng96OcccPemdHY22tVdp66KtDbC+EFVKy+PRUQwsb3e\/YkY\/JnZ2q2ftC6m2p21amO909a6iw203nlz5fMv1UVz\/wDEv\/TH\/wCo9wePnoL\/AOP+cdDPoN1fW7vV9Xjn7T1t10a4SsnJRhCLlKT4JJC\/Q8v5RdbVWY\/2emqjL2ynJr5HmNbrI1PcUctrOe49PqISlpLdXYnGes1ELIxfOFSWIRf4cfxPM66iub3pc13dogVEN5JLk1vSfebY8inTw3Y47XzM20da6klFelnj3FFWq00rX0kX24SfcLV0TVVdceLjlst09+9CL5Y4YIWaxOzgnhLdz4gT09UoU7s+bknju4mnVZcJLt3XgputW6vvL5lttsd1vPDDIODTG7eUmpYj1m+xnW2lS7qsReHlSXiYtFrnOSqaWJJpeBuqsW5GLa3l1Ws8QIbM0sq4SjJ5cnyXJDlmuX3eD8YPkzXXwKdYuG+llpNNd6AspeeBCynPPijmbL6Z28c7iTznkdpoDivZtnTbyfV3lLezxx3HR1VOUn2rk1zRdB8SxxyBwYau\/pVHMn1sY7GjvozRrxLlxNSA523fUx94vkzz0kei256qPvF8mefkjKxSyJNogwAAACSGiKGUSASGAhDYgEaKZGcnWwNiGRTJEAAAAwAAAAABNlFsi2TM1jAqYhsQAAAAAAANFkIChEvjEKcYliEiRAHb2N6qXvH8kcNs7Ww3mqXvH8kWFfQvJ\/8Autftl82ZnTZo5yu0sen0lsnO7Twa3qpPnOvvWecfgafJ\/wDutftl82Q0+gshKOLXjfe8oybi45k37Hxj8Co16HaVGpWabYzxwlH0Zwfc4vin7TUYtZsjTaiW\/bTB2YwrIrcsX\/UuJklsHTpqL1GrjnlDz+1J\/hvEG\/W7Qo00d662Na7E3mUn3JLi34I5qpt2hKMr65UaKElOFM1izUtcnNdke3d595t0mx9LRLfrph0mMdLP6yz8z4m4o5HlP\/df\/cieDm96eP5YPj4s9v5Y3dHo899sI+zOT5\/PUtLEfxfexBsnalzZi1V8GsSw8GW2xvi2YbbMs1o02ee44LghK9N5OfkkpAdPpMkukMNdpoTyUXUNQlvRXEohU+mU5PhvbzZIabGh3Y2Rkuq0E4ZTXgcSNsovKbR0NJtBS6suD+ZLEWaLg3W+ceXsNmDPbHdxZHnHnjtROrVVze7GcW+5Mgl0fHJLBIQC3VzGAEHP216qPvF8mcCSPQbZ9VH3i+TODNEWM8iDLZIraAiAAADEBRJDIjQDYhiYCBMAA1VyLUZapGpMBgAEDAAABMBSYFc5GeZZNlbAgIYFCAAACUUJF1cCKnCJYCQwAUp4BsqfEgHLJ6DYHqZe9fyRwYwPQbDX1UveP5IsK9rsjadFWmjCVijNb3Bp9\/AolqYLeUNXFRlmzhvwfSuOM8Fyyk\/icIZUd565b2951F5b6jnYo7r3uHBeMfgSlqaLOi6XURnuad12el155i084zjq+08+DYR3I6yOd6eph6UZJKy3CSnvNcvaQe06o5dutjFbyliFluEsrKzjP9XxPO6nUKEW2+R5zVax2Sz2diLFe18pduaa\/QQpr1Ebroyrc8KXWaXF8UeTT4GGMzRGxGpFF0coySqZvTXaUWNBWWVbRXg6EIKSwZrasMyulKZdC3HaUtCKy2q5E42I55KM8FlR0HIhu9qeGUwsLYyKNul1zw65N8VhPuDZ2zpRtU3JOMc4x2mGSN2z9Y4NRlyfDJmxHcwAReRmREBgBz9seqj7xfJnEkjubY9VH3i+TOIyLGeaKpI0zRRJBVbENiCAAAoCSIjAYMAAQAICcGaq2Y0aaZAXgIZAxDEAFc2TZVNgVSZBkmRwURwBY0VsBDENEE4RNMYldcS9BSAlgiyCEmKKGxZAmjvbC9TL3j+SPPZO\/sB\/Uy96\/kipXTAYioCu2eE2WM422NZurcT4sDn7S1jsk0n1V+pgyJsCqmjRXDtZni+JfG1YNCU32ChU32F1FLm844HV02kRLWpHPhp3ghbWd7zbhyM1mj48jO2nBnQ+4pnU0ehekz2FF+i8CppwWiLOm9E32FNugaWSppjjLBfXMolBxY4sbZbQKqbM8C40jrbM1eUoSfFcjpnlo2ODUl2HotJcrIKXxM0XgAGUc3brxVH3i+TOD0h2\/KH1Mfer5M89kixa5lUmGSLYVFiGxAAABQAAAMBAAxABAFtUiolBgbkMhWyYDEwEAmVTZORVICtjQmIoJMiNiCjBKKETgiC+CLERiTRA2QaLBNAUsiWyRBoCDPQeT3qZe9f+VHAaO\/5Pepl71\/JFK6gAAZVamzci33I8jqrnZNyffwO5t3UbsN1dp5wqmAhoocUbdLpnJ8ivSadya7jv6TT47CW6akGn0uEb9PRglXE01RMbb0apE6PA0xRLBRi828CuelTOiRayXaOa9Iu4zX6RNcjsyiUWQGx5HW6PGeBzJRxwPV66ng+B5rVQwzUrNiiEsPJsi8oxF9Euw1GV7WTVsnU7k9xvg+RlKptxakuwI9cgM2hv6SuMvwZpMVHK8oV9TH3q+TPO4PSbeX1Mfer5M4SiRqKd0TiaMIhNAZ2IlIiAAAAAAAAAAAAAAA0IANVLLjLSzUgGJjIsCMimRbIpkyiLFEbEgHJESyRDBFCLK0VotrAuRNEETRBJDEMKi0RcSwWAKnE7uwV9TL3r+SONg7exPVS94\/kipXRIzlhNkjDtS\/crfeyo4G1dR0lj7lwMBKby2yJQy6ityaRVCOWd7ZeixiUkS1Y0aLR7sV3nVoqIRSXMur1MFwyYvttdGo0VVFVWog+TRpqsWRpdp9ERcTUpR7yE0mFZ8Bgu3BbhUZ5xKpI2TgUSgQcrVwymeb2hTjJ63UwODtGnmWJXnGTqfEVywyEWbjnW5MhMhCY7DSOjsPUYk6328Ud5Hj9PbuWRkux8T1dE1KKa7UZoweULxTH3q+TPPqw7\/lEvqI+9X+VnmzKxfvkZSK0wyFJkRsQQAAAAAAAAAAAAAAAAE4PBrg8oxI1UsC4ixsiwISKWWzZUUJkSTEBNCaCJLBFQLYFeC2AFiJoiiSIqQ0IaIGAAUI7WxfVS94\/kjjnY2P6qXvH8kIlb5M4G2bt7qrsOzqJ4i34HmtU3JvvbNRGAWCyyDi8Ms0tHSTS8eJVbtlaPL32uHYdtTVcW3yQU0qEUlywUalb3DszlnO3baLvsueIJpEZ6e7uf4FsL4wXDgH8WS5cSwYpW21vjvL2mjT7YnF8XleLJWatWLjExyojL0eHgVl6HS7XU+fA6dGpUjyemrcTq6W1priStR6BSRJSRjrnlClbjtJtptk0Z7WkY7dZu9piu2skO0223cTma2rKZRbtnuMk9rN9hrTNrlayrdbMZ0NZdv8cHPZWDiy5yyjOTUigZ6HYl+9DdfOJ51s6Gxr921LslwA6m3\/Ux94vkzzUkel276mPvF8medkjJFYDwACEMQCAAAAEADAAAAAAAAAANFDM5ZU+IGwiyRGQFUysnIgUJiGxMATLEVIsiwGWRK0WxIqaJIiiSIqQ0ICCQCGUM7GyfVS++\/kjjo62zPVS++\/khCnr7MRZwnLEvE620ZcDj566bNxIoksttnT2PV1mzHbXxOrsqOF7SVp2oQzExaqlrkdCl8CydSZya08xqapNcEyuOllGEpy4YPRWaXPYQ6KLi4TXVawblSvMQ1DUHxe9ngscGjVXGzdU2uqzf\/CK1xVvDuaOg6oOCrS6q4GmXMqtyjVpbG5YF\/D918M7vPj2GnT6Xde8ZrUdbTLgUax7uTZpl1THtRYizKuBqtRx5nOtsz2ll0JNt47TNqNLZCKlJNZ5Jm4xUowz2ltei3v5kYrbPRUFJPHWz3+BKW\/Xh7z48So0azSKEcp5Zy2bLdQ5riY5ApDEAQydE92cX3MrGgPQ7VnvaeD75r5M4jib+k39LFP8AltXyZkaIKXEg0XuJCUQqoGieCLQRBkSTIgAAADAQAMBDAAAAAlFkRgbyEiZCQFMiJJkShMTGyLARZErLIkEolsSpFiCrESRFEkRUgEMKaJEUMCR1Nm+ql99\/JHLR09neql99\/JCJWXaEstI5s+Zu1j67MFxuMtKxKOTpbPjiKORpHw\/E7ek5IzW46dJpizNWX1nJ1izcyRlUaKkW9HksSxzJ0+Ao1PuwdNaYsVCRdpphhp+8nKovsmkVuWSC6hYRk2lHKNdb4GfWcUQciGminmX4C1FEZxal1kzXHHJkLKH2cjcrNjifw+pPOZPD4JletpU+S5Ha82zzIS0vDGDW2dPLTqxwKLI4PR6nQ544OLrq93gIWMICArKQCADZpp9Rx\/4lL5k8FGk9J+w1YJVVtCcSxoTRBQ4lcjRJFNiKKGIciIQAAAAAAAAAAwAAAAADoEJk2VzApYhsRQmRZJkWAkWpFceZojHgQRRNECUQqxEkRRIipDRFEkA0NCGgqSOps5\/VS++\/kjlI6egf1Uvvv5IRK5+qfXftMN7Nd76z9pjuNstOjre5vdmTr6RnP2bYnTZHOHF8u9GvSyMVvF162aa2YapGquRh1b6maoMwVzLOmwBslakYr9V2IouvyV2pxg5MIugnLiSmnHj2GavaFcV1ngts10JrCaA6GhjvlG0Oq2iGm1ahyKtZcpccjSMUm08+J0aEpxMO\/HGMou0lu7w7Ci6VOCDga95MqsQNMFyPO7aqwt49JccTbEc1yLizY80AAbcwMQAadH6T+6bDFovSf3f9UbSVYTIskyLIqLKrEWshIqMkyBZYVhAAAAAAAAAADAAAQxDA3srmWMrmBUIBFCZFkmRYDiaYvgZTRRLgQDHEjJ8RoKsRJEESRFTQyIwJIkRQ8gSRJ6yVcejjhbz3m\/8Av2EEU3+kvYWdlSbyjPcaFyM1ppl2ti6KEqJuTxOxYi+4jQ8fhwKNFtiFNW46nKayk88GLR3bybfPOTNajsUzNcLDm0zNCkzDpK6EbSM7TH0jQQllkVprTbybZJSg4PtRmqNMeJUce\/ZGX6WUYrtBOnrQk\/Yem3Su6lNcgjgV65pceZTqNoSl1Y8Wbr9mRbbXAjDQxhxxl+JRy6pWJ5cmdvSWtRTfaUutdy+BLksEHVqv4Ep2HKq1GOBf03iFWWzONtSfUl7DfdccHal+VjvLEycoAQ2jbkQhiA06H0391\/NG4w6H0393\/VG4lWIsiyTIsikyEibISCMtpUX2lJUIAAAAAAAAAAAAAAAA3ylgonPJBybAoYgABMiyRFgI06evPEogss31cEQZp8wRbfBcypBU0STIIkmRU0SRBMkBIZEMgTyUW+kvYW5KrPSXsNY9lSRRYXrkUWGqyqZp0NmHgzSCqW6zKx6CuXE3VrKOTp7co6Gmt7DFbjRKvgEOBbvLBgv6RvqZx3mWm+N6RN66EOckcWzS2tZ6R+wo8zn\/AFcfE1I1Jt3ntmHYmxR24u2vK9pxvNLOzDITrsjzj8C6b8Ho466iazvbvepcGjHdr6c4i38Dhycu1P4FcpPufwGjwjvb8XxTyQcsnBjqJRfA6ejv3+fPtJY5WaTt4PgLp2u01OjPEwalYIhXargzjamzekaNRLCZiNxjKhFifArGaZORAkyJBp0Ppv7r+aNph0XpP7v+qNpFgZFjyRZFJkJE2VsCm0pLrCgrIAAAAAAAAAAAAAAAAJjQhookIYmAmRY2JgSr5muOTJXLDNavjggV3IpQ7rs8CMGBYNERkVNEiCJBTyPJEAJZKpvrL2Eymx9dews7Sr2U2FzfApZtFMiJZNEMEGrSXY4M3wtwcZSw8nQot3kZsaldrT27xvqisHF0lnYdXTz7DGmti6HcYbOB0prJls07fIStS6UQvwOWoTKrKJ9xRKEl2GpXScjS7V3FFs89hDdl3McYMu1vJBVSm8tG6uqMeOCuqOAtswjNcLdrr9QoxZybrM8SV12fYc\/UX\/yosjO1V9m8\/AqAeDTJDSGkT3SitkSUhEF+j9J\/dNeTJpfSfsNRKsMixkWyKTISZJsqkyorsZUSkyIQDEMBAAAAAAAAAAAAATGhDRQwAAEyLJEQEAAQBODIEosC5EiESYU0SIIkiKkAAAFFvpL2F5TausvYWJVueBWPIjaIzRWXMraFFTJ12OLIyQiDo034eTsaW\/eSZ5qpvKS4tvCXezqaau+u1UumzpWsqvde\/j2E8bWo9HXLKLUjn6eySjvOMlFS3HJx4KXdnvNMbjFxs7aad1Fc6ovsIWTlHG8pR3o70d5Nby714FfSiyztUpUxKrK0iTtx2lM7csiIzwlk5erv44NGu1cYrGTh23uTNSM1K6\/sRnADTJoZbptNZa3GquVjit5qEd7C7yCRrQIosfIUSUgKJISRY0RRBZRz\/A0ZM9fP8CzJmrE8ibI5FkihsqmyUpFUmVEWIACAYhlAAwAiAwIEAAAAAATGRRIoYAACIskRABABAAgAC6LJplMWWJhU0SRBEkQTQxIkFGCmxdZewvKrPSXsLj2lRwAxM6IRAkGAO\/5G6SmyzUTtjVZOunNELpJQlJ9+T02ro0dfSzjRpJSjGiqEcJwdkpdaXs4r4HzeUSvdN456+lfUa9DoumunVVpW\/Oa63vySjXBJNyjx55ZzdlbQhZtnW2PoniMlTKx4w4rCSfieAwNIl5B9R0ltW5p6LoaZ9LO\/UXxTzCvHDq8eZTXVpI6WMt2E+kqbc3OO9Gxvgk28rHsPmyS7h8C\/NN9K+j7Tv0unrss6Oq5xsroqjKW9hKPF8+9sw06iivR12yrqnbqL5RTnxdUMYzg8OmPfwT5ffQ+oS0WkdlVMK4STsjuSUotyhFZk208tPHaVPT6R2Uwshpo2ZusjCuzqzgvQUnntyj5zpdpXaebnTPcm4uOUs8HzMcnltvm3ll+T0m30yWk0119WmdOnU7dFbO2VSUoV2cMPPhxI6OGgks10adw85hpaulS4xj6c37T59o9oXadWKmbgrY7lmFxlHuMxr5Zro2+meZ7PtlQpU0QXnFziovG\/COd1S49rFqKdFHprPN9O51adR3Go4lZKXDhFvil8z5skGCfL\/H+j6fXKiq7WLT16VWLS14TajGcmuss55eB4TbGhlRd1pVSdsemSpeYwT\/lOcku4mkS57mtIIjkJDkzAhLuIjbEQSgTyQiNmcu1h5E2Jsi2QEmVsbYgEAAEAxAAwACgAAIEAAAAAASRISGUMAACImMTABDEQAhiAkmWRZUTiwq1DTIoeQLEyaKkySZBYVz5\/gTyQlzLj2UmDExnREcDBDAhIg0TmICCLHUVS5m3TdaOO4zVjK0I3WacyzqaM7aVkZMm0QkEQAYYKyQIeCUUUGAwSwGC6DRISRIsCExkWBEYAEShz\/AGKHP8AAbZjLtqIsixsjJkEWIACAAAAAAAAAYAIYAIAAAAAAkiSIomigAAARFkhAIQxEAIYgGNMQAWxZIqiyxMKZJMgMgtTBkIsmax7KiwHITNoEAIYEJkQkyOQFIu0s8SKWSreGjNI7K4ohOpMlRxii3dOTbDPTopenOm4FcocCyo5FkMMgX3riyg3GQkTwOCG0aCAAKHEYojATEyRFgQYyLYZCJIBRGzF7WEytscmIgQAAAAAAAAwAAAAABAAAAAAAA0TRAkiiQhiAQAACAYgEAAQAAAAmTiyskmBaBFMkFSiTyVpjcsFnYkwkQ6T2\/AN\/wBvwN7RJDbIb\/g\/gJz8H8BuBMgxt+D+BHD7mTYMjiyOH3P4Dw+5\/Ag7OhnlYNu74HJ0GoUeafwOh5\/HuZixqVc4vuKbc4fAHr49zKbdZFrk\/gTQ51\/MpRZbPL4J\/BlS9j+B0jKyI2Q3vB\/AN7wfwKJDZFS8H8A3vB\/AehKIby718S3Ra2WntjdCOZQzjeTxxWDoryi4dbRaeUuG9Jw4t9r\/ABGxyd5Ck0dX+P8ABpaSmLcJQUoxw1lY7jPtLavnFcIdBCE4tb04x4ySWOY2M\/mE9xWNpZxiPbhlCred18GdO7WVzqS3knlPda4owKxOTfg93OVlmd+3STHx3e0XW4rPeVyZde47vB8c+OMfj2mYM5WfUAhiIyAAYCGAAAAMoQDBgIQxAAABAAAwBEkRRJFEhMAAQAAAIYgEAxAAAIAAAIJJk0ysaYFmT6L\/AGf7q0F0pqOI6mbbaTwlCB84TPfeReklfsvVV1z3J3Xyq3nlqMd2GWl34b\/QD0uj2ppLqY3qVdcJzdcemUa3vJ4xxJ1a\/TSWZOqrNsqYq1wi5yTxw7zj2eS1qyoaiMkrumrnYn0lbcUpcuD5cmiOo8l75xjDzivdVlljW41lysUk+HsxjkB09dtjT6a7obKpNxhCc5xqUo1qUt1Z\/E1+d6X6x9LpsU+te9D6r73cZNRsOu7WvVXKNkOghXCt56s4yb3n2Pn2nM+i17lZOV9UpylCUcwe7JxsclvLuw8cAOjrduaWjO9GM\/VKDgoNWb\/LDz4GrTa7TWKt5qrldvKuuzcU54eHhdvI5f0cm5qcrKfS00moVbkfq228LsTyGk8nLKba5q2mUUlGxTqcmkrJTW53PrcwOhqNpaerUV6WVf1liTTVa3VltL5dgtZtTT0Xx09kMTnXK1Po1u4Sbxnv4GDavk9dqNRK+F8ItuLhKSlvwilh1rDxuv4l22dgPV2Rn0kYbsa48nnhLMvisoBUeUOntVXQ6a213RnOMYUxyoxlutvj3nbjVF\/yxX\/SjzUPJmyuVE4z08+h6bEbYzx17N9NY7VyPUQ5oA83j\/TH8qE6If0x\/Ki48h5V7Sk7VTXNxVazNxeOL7DeGFzuo58nJMJt6noIf0w\/Kg83h\/TH8iPnMdTZlZusSzxe++B6\/T+UOjrhGHSTe7FLLi3k3nw5Y\/y5YfkY5d+nX83h\/TH8qF0EO6H5UeW2\/t6N0IV6eckt7M5LMX7DhLUWtpKyxtvCW++JrHgtm7dJl+TJdSbfR\/N4f0x\/Ig83h\/TH8iOLbtGOztPXVLNt7hvNN5497ZwNTt7VXP1jgnwUa1gxjxZZe501lzzH+3uHTWuah+VC6Kvur+ETy+l8ndTdFTuvdeeOHJykS1PkrdGOar9+S\/leY5\/EeGP7HyZ2b8XqOgh\/TD8qH5vD+mP5EeQp2XtOt5hKSx\/6uV+p35a22jRyt1KUbYprEXlN9hLh\/wAu2seW3flNN\/QQ7oflQdBD+mH5UfOZau5tt22Zbz6bPR+SVNk3O+yc5RXUgpSbTfazefD4zdrGHP55akZf7Sqox0NTSSfncFwil\/JM+aH07+03+4Vf85D\/ACTPmBwekAAFDAAAAAAAYiQAJjEwEIYAIAGQIYAUBJESSAYgAAAAAAAAEAAAgYxMBAAAAxAQSTPpf9nH9xt\/5uf+SB8zPpf9m\/8Acbf+bn\/kgB60AAAAAAAAAAAAAHHmhDjzAjrb1VVOx\/yRb9p84vnOycrJJuU5OT4M+mNp8+PtI7sO6PwOnHyeH048vF8n28h5M7Ihf0ll0N6C6kU+GX3ncs2Do4xcnSsRTb4s6i3VywvYsDckMuTLK7MOLHGafM9Qk5ycIOMHJ7qSfBHV8mNA7dQpyT3KlvcVzfYe13Yf0x\/KNbq5JL2I3ee2a05Y\/jSZb28p5TbJula9RXF2RlFKSXFxwcCqUqpxm4PMJKWJLHI+l7yIzrhL0oxl7YpjHnsmquX48t3K89Dyvqx1qpp+GGZrvKm+csUULd\/4ouTfwPTea0\/+VX\/hosjCEfRjFeyODPlh+rfx5\/s4mz9XtK5pzqqqr7ZSi848FkweV2slKUNPHLUevPCfF9h6zeRFqL5pZ8UZmest6W8duPjt8y3X3P4M9HoPKKGnqhVHT2dRYb732s9Tuw7o\/lQ92HdH8p0y5vLuOeP49x9yvnnltt1avSV1qmVe7qIzzLt6slj9Tw59N\/tLUfMKsJZ88hyWP5JnzI42y9PRjLJ7uwMAI0AACgAYAAxIYAJjEAgGIAAAABiGAiSEADAAAAAAAAABAAAAgABAAAAAAAdDQba1elg69PqJ1Qct9xjjDlhLP6IQEGr6U7S+2W\/FfsH0p2l9st+K\/YAAPpTtL7Zb8V+wfSnaX2y34r9gAA+lO0vtlvxX7B9KdpfbLfiv2AAD6U7S+2W\/FfsH0p2l9st+K\/YAAPpTtL7Zb8V+wfSnaX2y34r9gAA+lO0vtlvxX7Fj8ptoqKk9bbx9n7CAQOPlNtB\/77b+n7E\/pDtJ8tbb+n7ABuRm1XLyk2mv98t+K\/Yh9Kdo\/bLf0\/YAJYsH0o2j9st\/T9iyvyk2lLlrLX8P2ABJtLdJy2\/tWPPV3L4fsVS8p9pL\/fLf0\/YALZpJdo\/SnaP2y39P2D6U7R+2W\/p+wAYbH0p2j9st\/T9g+lO0ftlv6fsAAZtftnV6qCr1GonbBSU1GWMKWGs\/qzAIChk6q3N4QAWQWX6Z18ykAFAAAQCGAAAgAAAQAAAAAMAA\/9k=' alt='https:\/\/www.metadialog.com\/' class='aligncenter' style='display:block;margin-left:auto;margin-right:auto;' width='407px'\/><\/figure>\n<p><\/a><\/p>\n<p><p>Read more about <a href=\"https:\/\/www.metadialog.com\/\">https:\/\/www.metadialog.com\/<\/a> here.<\/p>\n<\/p>\n<div itemScope itemProp=\"mainEntity\" itemType=\"https:\/\/schema.org\/Question\">\n<div itemProp=\"name\">\n<h2>What companies use AI for logistics?<\/h2>\n<\/div>\n<div itemScope itemProp=\"acceptedAnswer\" itemType=\"https:\/\/schema.org\/Answer\">\n<div itemProp=\"text\">\n<ul>\n<li>Scale AI. Country: Canada  Funding: &#x24;602.6M.<\/li>\n<li>Optibus. Country: Israel  Funding: &#x24;260M.<\/li>\n<li>Covariant. Country: USA  Funding: &#x24;222M.<\/li>\n<li>Gatik. Country: USA  Funding: &#x24;122.9M.<\/li>\n<li>Altana. Country: USA  Funding: &#x24;122M.<\/li>\n<li>Locus. Country: India  Funding: &#x24;78.8M.<\/li>\n<li>NoTraffic.<\/li>\n<li>LogiNext.<\/li>\n<\/ul>\n<\/div><\/div>\n<\/div>\n","protected":false},"excerpt":{"rendered":"<p>Generative AI for Supply Chain Management and its Use Cases The emergence of Generative Adversarial Networks (GANs) in 2014 transformed the field, enabling the generation of realistic images, videos, and &#8230;<\/p>\n","protected":false},"author":5,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":[],"categories":[30],"tags":[],"_links":{"self":[{"href":"https:\/\/www.fastlaw.it\/web\/index.php\/wp-json\/wp\/v2\/posts\/1575"}],"collection":[{"href":"https:\/\/www.fastlaw.it\/web\/index.php\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.fastlaw.it\/web\/index.php\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.fastlaw.it\/web\/index.php\/wp-json\/wp\/v2\/users\/5"}],"replies":[{"embeddable":true,"href":"https:\/\/www.fastlaw.it\/web\/index.php\/wp-json\/wp\/v2\/comments?post=1575"}],"version-history":[{"count":1,"href":"https:\/\/www.fastlaw.it\/web\/index.php\/wp-json\/wp\/v2\/posts\/1575\/revisions"}],"predecessor-version":[{"id":1576,"href":"https:\/\/www.fastlaw.it\/web\/index.php\/wp-json\/wp\/v2\/posts\/1575\/revisions\/1576"}],"wp:attachment":[{"href":"https:\/\/www.fastlaw.it\/web\/index.php\/wp-json\/wp\/v2\/media?parent=1575"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.fastlaw.it\/web\/index.php\/wp-json\/wp\/v2\/categories?post=1575"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.fastlaw.it\/web\/index.php\/wp-json\/wp\/v2\/tags?post=1575"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}