Logistics Companies Embracing AI

Employees in logistics are among the top users of artificial intelligence, with almost all saying it has had a positive impact on their workplace. New research found that 62% of people who work in the industry, and who regularly handle information as part of their job, use AI today, and 97% of those say it’s been beneficial.

The Access Group surveyed employees in 12 industries and professions – and found that half of all employees use AI. While the logistics sector was behind the tech industry, where adoption is 74%, it was well ahead of not-for-profit, and health and social care sectors where it is 29% and 30% respectively. Employees in logistics cite reduced workloads and higher productivity as the top benefits of AI.

Top five benefits of AI in Supply Chain

• Reduces workload (62%)
• Gives employees time to focus on what matters most (37%)
• Employees are more productive (31%)
• Better team communication (30%)
• Better customer service (29%)

Generative AI tool, ChatGPT is the most popular application – used by 53% of respondents and 64% say it has reduced their stress levels. However, there were some concerns too, with 51% pointing to job replacement, and 46% to data security.

Jarrod Adam

Jarrod Adam (pictured), Head of Product for inventory software platform Unleashed said: “Small and medium-sized logistics firms have made great strides in moving towards digital technologies in recent years – but the adoption of AI is set to transform the industry, enabling firms to be more innovative, competitive and profitable. Many routine and repetitive tasks are now being automated using ERP and warehouse management software. AI is the next natural step for these firms, allowing them to save valuable resources in an industry that has been plagued by skills shortages and rising costs for years. AI can vastly improve operational efficiency by intelligently prioritising tasks for users and providing insights that result in better decisions. By removing a lot of the drudge work, firms also create modern working environments that are more attractive to current and existing employees.”

Marko Perisic, Chief Product and Engineering Officer at The Access Group, said that the adoption of AI in logistics was positive – but added that employees must be given the right tools and training. “AI has taken off in a way that few people could have imagined – but left unchecked it can lead to some employees using it irresponsibly. Logistics firms need a vendor who offers the highest data protection standards. Our new AI experience, Access Evo, encourages employees to innovate, while giving them peace of mind that all information is stored in a secure and private environment and not used in other open source AI systems. Approved AI tools like these, underpinned by clear and regularly-updated policies and training, can help everyone to deliver a better standard of service, and get ahead in their careers without compromising company data.”

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AI essential to supply chain transformation

 

The Future of Physical Operations

Senior Executives at Samsara are forecasting trends in physical operations for next year and beyond.

Philip van der Wilt (pictured), SVP and GM EMEA of Samsara says, “physical operations will continue to be challenged by the uncertainty surrounding fleet electrification and the need to double down on fuel efficiency. Businesses are waking up to the fact that it’s not petrol, diesel or electricity that powers fleets — it’s data.

“Those who have already invested in technology and IoT platforms to manage their fleets are already better off. Fleets that have already invested in connected data platforms are better able to identify which routes, vehicles, and tasks are best suited to the electrification of their fleets.

“They’re also using these same fuel-agnostic systems to identify other technologies that will lead to fleet decarbonisation. It’s now up to the rest of the industry to play catch-up or risk being hit with a double whammy — falling behind on electrification plans while being unable to manage sprawling fuel costs.”

Stephen Franchetti, CIO, Samsara, added: “As the AI explosion continues, an organization’s ability to stay competitive and innovate will come down to their enterprise data strategy. Over the past year and a half, there’s been a significant explosion of ‘ready for prime time’ generative AI, opening opportunities for enterprises to benefit from intelligent automation. There’s no denying that AI will continue to increase efficiency, accuracy, and overall business agility in 2024.

“With this, we’ll start to see an increased need for a robust foundation of reliable and well-governed enterprise data. Utilizing the power of this data is paramount for training precise machine learning models, deriving insightful analytics, and enabling intelligent decision-making. As AI technologies continue to evolve, the quality and accessibility of enterprise data could significantly impact an organization’s ability to assess large datasets in real-time, stay competitive, eliminate bias, and free up more time for innovation.

“Expect to see an increase in vertical use cases for AI and a tight race between incumbents and emerging vendors to solve more nuanced, complex problems for these users.

“There’s already a race for incumbent players to infuse AI into every facet of their platforms. At the same time, we’re seeing several new emerging apps coming onto the scene that are purpose-built for vertical use cases within the business – like Sales, Marketing, Legal, and IT. As AI models become more robust and sophisticated, they will be able to handle the nuanced and complex tasks needed for these vertical teams. This will ultimately enable better integration between systems and processes and lead to improved operational efficiencies, as well as cost savings.

“Amidst emerging threats, increased regulation and data privacy laws, organizations will lean on technology for management and protection. With a global focus on data privacy, organizations must leverage technology to identify and mitigate risks quickly and effectively. In 2024, leaders will invest in AI-driven security to monitor network behavior, detect anomalies, and protect against potential threats – all in real time. This proactive approach will allow organizations to enhance their ability to safeguard data and operations.

“This technology, however, is only effective when coupled with a robust data strategy that leverages a zero-trust model. In the new year, more leaders will adopt this approach, which requires verification at every step of the data access and transfer process, significantly reducing the potential for breaches.”

Finally, Evan Welbourne, Head of AI and Data for Samsara, says, “explainable AI will play a key role in the broader acceptance and trust of AI systems as adoption continues to increase.

“The next frontier in AI for physical operations lies in the synergy between AI, IoT, and real-time insights across a diversity of data. In 2024, we’ll see substantial advancements in predictive maintenance, real-time monitoring, and workflow automation. We may also begin to see multimodal foundation models that combine not just text and images, but equipment diagnostics, sensor data, and other sources from the field. As leaders seek new ways to gain deeper insights into model predictions and modernize their tech stack, I expect organizations to become more interested in explainable AI (XAI).

“XAI is essential for earning trust among AI users – it sheds light on the black-box nature of AI systems by providing deeper insights into model predictions and it will afford users a better understanding of how their AI systems are interacting with their data. Ultimately, this will foster a greater sense of reliability and predictability. In the context of AI Assistants, XAI will reveal more of the decision-making process and empower users to better steer the Assistant toward desired behaviors. In the new year, I anticipate XAI will advance both the functionality of AI Assistant and the trust of AI systems.

“The evolution of generative AI across industries will focus on advancements in domain-specific knowledge and expertise, making specialized talent increasingly competitive.

“The advent of ChatGPT this past year showcased the potency of large language models (LLMs) in understanding and generating human-like text, which has accelerated investments and innovations in generative AI. Moving into 2024, I anticipate a continuous maturation of generative AI technologies, particularly emphasizing domain-specific knowledge and real-time adaptation to evolving scenarios. This convergence of generative AI with domain expertise will facilitate more nuanced and valuable insights, making AI a quintessential partner in decision-making processes across industries.

“With this, the demand for AI and machine learning talent will continue to surge in 2024, as businesses increasingly integrate AI not just into their products, but into their operational frameworks. Apart from foundational skills in machine learning, statistics, and programming, I expect to see an increased demand for expertise in domain-specific AI applications and AI governance.”

Where AI Can Find its Place in SCM

Jag Lamba (pictured), CEO of Certa, writes about how AI can be beneficial to supply chain professionals and SCM (supply chain management).

While most of the coverage of the rise of artificial intelligence in the past year or so has been on generative models such as ChatGPT that can be used by the average person, the business world is no stranger to AI. It’s been used for years to streamline workflows, analyse data, and build predictive models that can steer organizations in the right direction.

But there’s no doubt that we’re in a moment where AI is growing in its applications and power faster than ever before — so we need to ask, can we use its latest iterations to make our jobs easier as supply chain managers? Given the supply chains that still bear scars from the rough going that started in 2020, anything that can reduce risk and improve managers’ ability to make smart strategic decisions is welcome. Let’s discuss a few ways that AI is showing up in the logistics toolbox.

AI lets you adapt to global market movements

In today’s unstable and rapidly changing economic and geopolitical landscape, supply chain managers are often saddled with the unenviable task of pivoting quickly as a result of some major event like a war or political turmoil. With how interconnected the world is, these disruptive events seem to be happening on a regular basis.

Fortunately, advances in AI make it possible for operations to sync with current market dynamics — with high levels of automation and minimal input from users. Something as simple as a business requirement document (BRD) inputted into an AI engine can spur the system to adapt workflows accordingly. Normally, these complex workflows would take a significant amount of time — especially when they change so rapidly — but AI has advanced in its language processing to the point where it can interpret documents like a BRD and use old workflows as a template to create new processes better suited to the moment.

AI can gather, parse, and visualize insightful data with simple queries

Thanks to the advancements in conversational AI, insights into the various data points gathered along the supply chain are a quick query away. Data visualizations can be generated with ease, and conversational AI lets you drill down into that data just by asking for certain filters or parameters to be applied. These systems also often provide a way to generate simple reports for sharing with stakeholders.

AI’s ability to predict market shifts by analysing historical data and patterns in the market alongside the context of what’s happening in the world right now can be a major competitive advantage. Supply chain managers equipped with access to these data insights can steer their organization’s efforts today into the right position for success tomorrow and beyond.

AI speeds up supplier compliance processes

When AI is plugged into historical data for partners and vendors, it can speed up the compliance process (and improve the odds of meeting regulatory standards) by making the information-gathering stage quick and easy. It can pull data from onboarding, email and chat conversations, and other sources to pre-fill in large portions of the forms required to meet various regulatory requirements. AI is responsive and dynamic by nature, so suppliers can work with the AI to fill in any missing information and verify what’s there. The onus for validation of such information falls to the supplier, so when AI is able to make that process quicker and easier for them, you’ll often see quicker turnarounds and fewer compliance oversights.

AI is a boon for sustainability initiatives

Sustainability is far more than a buzzword — in supply chain management circles, it’s a core tenet of operations. It’s responsible environmental stewardship, sure, but also a way to drive down costs and risks. AI can make it quick and easy for managers to get a birds’ eye view not only of their own company’s carbon footprint and sustainability initiatives, but also those of potential suppliers. This allows companies to make smarter decisions when it comes to choosing suppliers that will match their sustainability plans and not open them up to ESG-related risks.

AI isn’t done evolving — not even close. Though it’s been a useful tool for businesses for decades now, conversational AI and a focus on new implementations of the technology means we’re in an exciting time of innovation. Supply chain managers ignore AI at their own peril — smart and judicious use of the technology can help smooth out operations and give companies a competitive edge in the years to come.

AI’s Transformative Role in Warehousing

Everybody is talking about Artificial Intelligence but what are its potential applications for warehousing and supply chain? Edward Napier-Fenning, Sales & Marketing Director of leading supply chain software company Balloon, explores five key areas that can boost performance – including route planning, picking, labour management reporting and data entry.

Quite suddenly, Artificial Intelligence (AI) is everywhere. As with the early days of many other revolutionary technologies, there is a lot of overclaiming, and a lot of what is currently touted as ‘AI-enabled’ is really only a sequence of, admittedly very fast and very clever, algorithms, following logical pathways devised by the humans. The ability to process immense amounts of ‘big data’ at lightning speed is impressive and extremely valuable, but it doesn’t of itself constitute Artificial Intelligence. True AI has the ability to learn from historic data and from current activities, and, in a sense, rewrite its own algorithms.

The pace of development of AI is accelerating and we can already see some key areas in warehousing and logistics where it can be applied.

1. Enhanced route planning

Up to now a driver has set off with a fixed route, perhaps a regular round, or one planned a day or two earlier, and it is up to him/her to work out the best response to an accident, traffic jam or other event as and when these arise. Now, traffic management can be linked in real time to resources such as Google, working out not just the work-around a current problem, but using its learning to predict where the congestion is likely to occur, which strangely often isn’t at the site of the actual incident. This makes a more robust avoidance recommendation and helps keep deliveries to and from the warehouse on schedule.

This approach to route planning can work in tandem with dynamic load building. Currently, there isn’t a full order file at the beginning of the day, or at the point where drivers and routes have to be fixed for the next day’s operations. The route, therefore, may include destinations where there isn’t actually a drop to be made, or leave out drops that could usefully have been made. Intelligent systems can continually replan, modify and optimise the routes as the order profile builds up. That in turn can assist with the next topic, that of efficient order picking, which of course has its own pathing and routeing issues.

2. Efficient picking

A lot of the noise around AI in the supply chain is around issues like inventory and ordering. Improvement here is clearly important, but we have barely begun to touch on how to run the warehouse more efficiently, which is where some really big labour and administration costs lie – as well as potential savings.

Pick path optimisation is a hot topic in warehousing, although at the low end this amounts to little more than putting orders into a sequence and chopping them up into blocks of work. It is nice to be able to do this really quickly, but true AI is beginning to be able to look at the whole situation more intelligently: where goods are in the warehouse, what goods can or cannot be combined on a given trolley or container (and where those containers are), what the priority orders are (which has clear links to the routeing question above), and thus building the most efficient pick routines possible.

AI will be able to improve the choice and operation of picking strategies – and the optimum may differ according to the type of goods, or even the time of day. Strategies are many and varied: for example batch picking, which involves walking a route, picking one SKU at a time for a batch of orders. Or it could be zonal or ‘cluster’ picking where the operator picks all the SKUs in one ‘zone’ for a batch of orders, and the tote (with or without that operative) then moves on to the next zone.

Cluster picking is usually more efficient but does require the layout of goods in the warehouse to be optimised, so that goods most likely to occur in the same orders are grouped together, and the orders to be clustered around similar profiles. It also means that orders aren’t necessarily being picked in strictly chronological order, i.e., according to the departure times of the delivery route, and so are vulnerable to congestion delays, perhaps because of narrow aisles or the need to separate pedestrians from trucks and other machinery.

Working with client Pets Corner, Balloon has been developing a general purpose order clustering model, which can operate as a cloud-based web function. The new technique has accelerated the time taken to pick a wave of orders by 38%. This approach doesn’t strictly use any developed AI, but we can easily see that AI could enable further significant improvements in both the layout and operation of order picking and the selection of the most appropriate strategy for those orders, right now. We are, for example, working on ways by which this approach could be extended to multi-line orders, and to having ‘start points’ for picking routes at different places in the warehouse. That rapidly becomes rather complex, and AI will be very helpful in working things out.

One source of efficiencies is that operations need not be so bound by ‘standard’ processes, which sometimes may not be necessary. A minor example is some work we recently did for Birlea. This firm had a conventional procedure whereby picked goods are given a ‘WMS’ label showing the order to which they are assigned, and sent on for checking and repacking, after which they are given a different ‘carrier’ label. But their furniture items don’t need checking or repacking. It proved possible to eliminate the WMS label for these goods, and reprogramme the SQL so that the system thinks the carrier label is the WMS label it was expecting at this point. That in itself doesn’t require AI, but it is easy to conceive of AI systems that can learn to recognise that for a particular item certain processes are redundant and can be eliminated – without the risk of a human operator making the wrong call.

3. More effective labour management

In current conditions the greatest challenge for increasing efficiency is that of where to allocate scarce and expensive labour. A facility with good Warehouse Management Software (WMS) and other systems should have a great deal of data from end to end: what is happening in receiving, put away, picking, replenishment and so on. That should tell the operator where they need to put their people, but it is complex. A traditional WMS manages this, up to a point, but relies heavily on people creating, inputting and maintaining data, from standard times for elements of work, to who is allowed to perform certain tasks, and so on.

To some extent we are already able to marshal goods, activities and resources more effectively using historical records and current data capture to allow more complex labour management models. But AI could certainly make a further contribution in pulling data from the various different sources and making sense of it.

Effective deployment will become even more important as companies take up the use of robotics in the form of ‘cobots’ – machines working collaboratively with people. This is perhaps particularly pertinent for SMEs, who can increasingly afford this type of automation, and need it to be a lot more flexible than the big ‘goods-to-person’ automated systems operated by large operations. For example, workers could be ‘tagged’ with a Bluetooth device to locate them relative both to the current or intended position of a robot and the position and current status of priority orders, but taking full advantage of this requires intelligent systems.

We don’t see the use of AI to improve labour efficiency as primarily about reducing headcount. Rather it is about eliminating ‘dead time’, and non-productive activities such as walking from one end of the warehouse to the other. Obviously, that improves productivity, but also it is easier to retain good people if they aren’t spending half their time idle and the other half in a frantic rush, which can leave staff feeling both fatigued and under-valued.

4. More accurate reporting and analytics

Balloon is actively involved in applying AI in the supply chain space. Activity in the sector is growing fast. It has to be remembered that everyone’s environment is different, especially among SMEs, which is one of the reasons why AI’s ability to learn from the situation, rather than merely process an externally derived algorithm, is so attractive. Another consideration is that a lot of the data is text-based, so one of the things we are doing is to pull data from multiple sources into a Microsoft analytics package with a data model that tells the system how to relate data to different objects. We can create a dashboard and on top of that we can layer some ChatGPT type functionality – ‘show me a pie chart of my staff picking by day and by person’ – so managers don’t have to ask IT to build them a report.

AI based systems can lift a lot of the cost and burden of manual record keeping and analytics, not to mention eliminating (or at least detecting) the errors that inevitably arise in manual systems. Ultimately there may even be savings to be had in integrating all the different systems that warehouse and distribution operations use: AI may be able to ‘learn’ how to get data from one system to another, despite apparently incompatible formats, rather than having someone laboriously write code for every eventuality.

5. Enhanced image recognition and reduced rekeying

AI is already making a difference here, for example in data entry, including Optical Character Recognition and image scanning – making sense of it, relating it to other elements in the system, and particularly in looking for errors and discrepancies. That might be a quantity difference between a sales order and the relevant pick note; or it might be a delivery address that doesn’t exist or doesn’t make sense: in which case it may be possible to configure AI to make intelligent suggestions about what the address should be, before the delivery driver sets off on a wild goose chase.

So there is a lot going on with AI in the warehouse environment. At present the landscape is a patchwork of small developments helping people to fit bits of AI to their operations, often to start with just eliminating smaller pieces of work at the interfaces between systems, which is where, for instance, data discrepancies tend to manifest. But this patchwork will surely coalesce in fairly short order.

That chimes with Balloon’s own approach whereby our innovation team is targeting small pockets of advanced functionality, clustering being one of the first, and one where we have already seen big efficiency gains on customer sites.

Warehouse management is characterised by multiple data inputs and multiple possible decisions and output scenarios. These are beyond the capability of human managers to optimise robustly and in time, while traditional algorithmic approaches rely on assumptions and simplifications that are often not always or entirely valid. Meanwhile, scarce labour may be sitting around waiting to be told what to do. AI promises to provide the tools to resolve these problems.

AI in Intralogistics: Customer Benefit is Decisive

Helmut Prieschenk from Witron (pictured) and Franziskos Kyriakopoulos, founder of 7LYTIX from Linz, Austria, have been discussing ChatGPT, machine learning in logistics, and demand forecasting for food retailers. Both agree – AI technology offers a wide range of optimization potential for optimizing processes in the distribution centre as well as the entire supply chain. But high data quality is not the only crucial factor. Equally important for the data models are the experiences of people and the requirements of consumers.

“And then overnight everyone was an AI influencer,” joked Prieschenk, Managing Director of Witron. He wanted to talk about industrial AI, demand forecasting, and a bit about ChatGPT. Kyriakopoulos and his team develop machine learning solutions for the retail and industry sector. He is physicist, while Prieschenk is a mathematician. “That’s a dangerous mixture.” Prieschenk warned. “Of course, we have already dealt with LLMs (Large Language Models) at Witron. However, I would ask for a certain serenity. The world will not come to an end through their use – and we are continuously verifying whether such tools are suitable to reasonably help our customers or our developers with the implementation of concrete customer requirements.”

Kyriakopoulos agreed, but already outlines applications. “LLMs are good at processing sequences – orders, debits, sales, or customer communications. That can be used in intra-logistics as well. There’s a lot of hype, a lot of influencers running around spreading half-truths.” Witron has already experienced this, Prieschenk says. Competitors to the OPM system were advertising AI in the stacking algorithm. “But the results can’t beat the functionalities of our Witron OPM. These weren’t developed with AI, but with a great deal of human intelligence, based on solid software development, intensive communication with the users, and years of practical experience. We always have to take a sober approach. Our customers are basically not looking for a new tool. They have a problem and need a working solution that optimizes the logistics process in the distribution centre or in the supply chain, that works stable in practical use, and can be usefully integrated into a grown structure.”

But isn’t this soberness holding us back in Germany and Europe? “I certainly need a ROI”, Prieschenk strongly emphasizes. “LLM developers have a burn rate of $500 million per year and need another few billion”, said Kyriakopoulos. “That would be inconceivable in Germany or in Austria.”

Are we taking too few risks? Prieschenk is sceptical. “I don’t think so. When I look at the investments in Q-commerce, for example, I get dizzy. That’s where a lot of investors took a full risk. But the market has developed into a completely different direction. Predicted growth rates failed to appear. In the meantime, consolidation is taking place. Investors have moved on. Our retailers want AI and are investing in the technology. But we and our customers need AI tools, such as sample or image identification, that are transparent to then solve problems that we couldn’t solve before or could only solve with a lot of effort.”

The 7LYTIX developers work with LLMs, but the focus is on demand forecasting. “We can provide added values, but some companies often don’t understand at the beginning what the added value of the model will be. More sales through better communication with the customer or lost sales? Many people can’t calculate that. That’s where they need help from us”, stated Kyriakopoulos. Prieschenk adds: “Our Witron customers can calculate very well and have perfected their business over decades. But I understand what Mr. Kyriakopoulous means: First, we need to clarify what is to be optimized. The retailers ask themselves whether they want to optimize the supply chain network, the warehouse size, whether they want to be closer to the customer, whether to reduce throughput times, change delivery cycles, reduce food waste and stock-out, or have less stock in the warehouse. In this respect, we have learned a lot together with our customers from different parts of the world. We also learned that the requirements for bank holidays in Finland are different from those in the U.S., or that a Monday holds different requirements than a Thursday.” Kyriakopoulos agrees. “We need a requirement first and then a corresponding AI tool. And we don’t need deep learning all-around.”

How much accuracy is required?

How does his demand forecasting work? “First, we need to obtain an overview of the data. This is laborious work for many retailers. It’s not only about stored goods, but also about the amount of goods in the store, how much was sold, which influencing factors such as promotions exist, how many lost sales are in the store, and much more”, explained Kyriakopoulos. In addition, there are customer cards, seasons, the location of the store or special offers. “And we need to know what’s in the distribution centre, in the back room of the store, in the trucks on the road, because optimization does not end in the store. It is also important to avoid cross-company or cross-divisional restrictions as well as data lakes. A major part of the required data is mostly known, but different departments unfortunately pursue different interests.” Prieschenk agreed: “Even holistic logistics design should not only focus on the distribution centre or the key interests of individual logistics areas, or process-influencing departments such as purchasing or shipping. It’s important to include the entire supply chain into the optimization process – both internally and externally – and to avoid silos as much as possible, both physically and in terms of IT.”

“The data flow into very simple models”, continued Kyriakopoulos. “The baseline is the people’s experiences. That’s not AI yet. We talk about regressions. Then we ask ourselves if we became better. This is followed by time series analyses and first machine learning methods. We always have to look at how much accuracy we can achieve through the next level versus how much is the added value for the customer and user.”

And Witron? “We have to make sure that the mechanics fit the model. Because physics must work in the same way. Do we supply cases or pieces? Or one item with both options? How often is a store delivered? What happens when the product range changes?” answered Prieschenk. WITRON logistics centres create flexibility for both the store and e-commerce. The key to successful implementation, however, is to think the process backwards throughout all channels – from the consumer to the distribution centre and, if necessary, even further back, all the way to the supplier. He sees a challenge especially in the explainability of the model. “We experience push and pull systems with our customers. Some work better than others.”

Will store managers let an AI model specify their orders in the future? Kyriakopoulos knows the argument from the fashion industry. “If someone has been shopping there for 20 years, then it’s difficult to immediately explain the added value or to convince the consumer that this model might be better. But we make it transparent – we say which factors we use, how we weight them, and where the respective factor applies.”

The human being has the control

The experts from Austria can look 18 months into the future. They use interfaces to connect the model to the existing systems of the retailer, the steel manufacturer, or the shoe retailer. “I do not want to tear everything down to use an AI model”, Kyriakopoulos laughed. “This is the right way – the integration into existing architectures”, confirmed Prieschenk.

But how robust is the model? Keyword: Covid 19. “We weren’t able to see that either,” explained the Austrian expert. “We were working with the model in frozen logistics at the time. The short-term forecast wasn’t good at the beginning, but after one week, the model worked again. After two weeks, it was stable. But the forecast alone is not enough. The customer has to work with it – for example strengthen marketing channels, running promotions, or adjusting prices, if necessary.”

“That’s crucial,” Prieschenk said. “This is when people take over control. Never underestimate the gut feeling of a logistics manager, service technician, or store operator. People’s experiences and a well-functioning data model are the basis for making intelligent – i.e., right decisions in the long-term. In the distribution centre, this also applies to the implementation of maintenance strategies or the ‘correct operation’ of the system. And importantly, the models, tools, and solutions have to be stable and prove themselves in practical use, delivering real added values in day-to-day business.”

AI provides information, the person in charge decides and continues to have control over the process. “We revolutionized physics in the logistics centre over 20 years ago. With the OPM solution, we have managed that goods are automatically stacked onto pallets and roll containers without errors and in a store-friendly manner. Now we are taking the next step and opting for data and end-to-end logistics models. And I am sure that I will still experience an end-to-end Witron AI model for the warehouse,” predicted Prieschenk.

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