Autonomous Data Capture

Stock-taking in a warehouse is a time-consuming, manual process. Until now. David Priestman visited a British supplier of a robotic alternative.

Real-time data, including inventory, enables structural visibility in logistics, which leads to better resource allocation, reduced downtime and improved customer service. Dexory’s robot (pictured) automated inventory management, providing instant, continuous data. It can scan a medium-sized distribution centre in two hours, whereas doing it manually could take months. It corrects WMS errors and provides a ‘digital twin’ of the facility with 3D mapping.

Dexory offer this on a subscription model – RaaS, or robots-as-a-service – with no capital investment required. The company’s target are tier 1 customers with multiple locations, including third party logistics (3PL) firms, often with shared-user facilities. Maersk and Schenker have both invested in Dexory and Maersk are also using the product. I visited the production and demonstration site in Wallingford, Oxfordshire to understand why the company is making such rapid progress.

Tatiana Kalinina, VP of Sales, told me that Dexory has grown from 17 staff last summer to a likely 100 by this Christmas. She describes the machine as an ‘autonomous data capture unit’. The new model (RE4) is silent, handles precarious routes well and fully navigates a 3D space. The stopping distance is amendable and it can move around obstacles. It features an emergency stop button, though Kalinina says that has never needed to be used.

At 3.25m high the RE4 extends to 12m and can thereby scan up to 13.5m in a warehouse. Future models will be even taller. It lights up in a pleasant way and can work through the night. On average there are 16 LiDAR (light detection and ranging) cameras on each robot but sometimes up to 20. The LiDARs scan and produces high-res photos. The bot utilises a wireless docking station (supplied by Wiferion) for charging and recognises when it needs to charge, with an 8-hour battery life. Customers can choose bespoke options (such as height), their own livery colours or ‘skin’ and give the bot a nickname. It is easy to see why the bots are popular with warehouse workers.

“3PLs can invest in our system knowing this helps them to win business,” Kalinina told me. “We test each machine here with the customer’s bar codes before shipping it out to their site,” she added. Quality assurance testing of the tower extensions and cables, for example, is done here in Wallingford before shipment, vertically, using specially-designed transport trailers. Training and final testing is then done at the customer’s site, with remote monitoring and diagnostics provided.

All the design is done at this centre, as well as 3D printing of various plastic and carbon-fibre parts. The cameras are bought in, as are the batteries. The base is made first, then the tower. The target is to produce one robot per day by next year, in order to meet demand, and Dexory is scaling-up to that level. The whole unit weighs 600kg. It can work in ambient temperatures and within chilled areas of DCs, anything above zero degrees as the cameras cannot operate in frozen environments.

Dexory View

The platform that the robots work on is called ‘Dexory View’ (see image). This provides web-based reports, data interpretation and visualisation. KPIs can be measured. “It provides the capability to optimize your warehouse,” Kalinina explained. “It’s a Digital Twin – a like-for-like copy of your DC. All the aisles and location numbers are inputted in the first week of installation.” Given installation is usually just a week, quicker than for AMRs or AGVs, there are low barriers to entry. “There’s very little we ask for from customers,” she informed. “We do all the mapping for them and build the optimal path through the DC.”

A 2D ‘birds eye’ view is provided, which is intuitive to use and has zoom functions. Red is used to highlight errors detected. Options include not scanning reserve stock or very slow-moving products on site. Customers can choose which items are scanned daily. Dexory View provides a summary of each scan: time taken, locations scanned, missing items, places occupied with the incorrect item, unreadable barcodes, wrong items, put-away accuracy, volumetrics and more. It truly is ‘big data’ in action.

Warehouse managers can therefore compare, on a daily basis, each metric and see the trends – for example replenishment and stock turnover. These statistics can then be compared across different warehouses operated by the customer for best practice targets. The 3D view shows every location, with each one clickable and showing a photo. This enables errors to be checked and escalated without physically visiting the aisle in question. Tasks can be allocated from these findings. A photo scan of the whole aisle is also provided.

“We eliminate manual, repetitive tasks,” Kalinina concluded, “and provide a single source of the truth, alongside WMS and ERP, because of the regularity of scans. The bigger the facility, the greater the benefits and efficiencies.”

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.

Game-Changing Partnership in Logistics Insurance

Otonomi, specialist in innovative supply chain risk technology and the freight insurance industry, has joined forces with Redkik, a leading innovator in the embedded cargo insurance space, to revolutionize the way logistics companies and shippers mitigate their financial risks. This ground-breaking partnership is aimed to bridge a $50 billion protection gap in the time-critical freight sector, where shippers of pharmaceuticals, perishables, aerospace engines, aircraft parts, and many other expedited assets shipments are in dramatic need of proper insurance coverage.

Powered by proprietary technologies in data-activated triggers, AI-assisted underwriting, and seamless integrated API, this synergetic partnership introduces unparalleled values to cargo owners to gain transparency and mitigate their risks. The unique set of benefits includes: 1) seamlessly embedded insurance solutions, 2) premium rates pricing in seconds, 3) policy binding in minutes, and 4) parametrically activated claims resolution which provides outstanding transparency and speed (22x faster than industry standard).

Logistics companies and shipping clients have long grappled with the cumbersome and time-consuming process of obtaining insurance coverage and filing claims. Redkik and Otonomi’s joint innovative solution aims to streamline and modernize this critical aspect of the industry, ultimately improving efficiency and profitability for all stakeholders involved.
Key Benefits of the Partnership

This collaboration brings unparalleled benefits to an industry always in motion:

● First-to-Market Air Cargo Delay Insurance: Otonomi introduces air freight delay protection policies that are unprecedented in the industry. Otonomi’s Cargo+ policy coverage offers logistics companies and cargo owners fast, cost-effective, and transparent operations, reducing financial risks associated with delays in cargo shipments.
● Instant Transactional Insurance Quotations: Through the integration of Redkik’s cutting-edge technology along with Otonomi’s algorithmic underwriting engine, clients can now receive instant insurance quotes, simplifying the decision-making process and allowing for quicker coverage acquisition.
● Remarkable Reduction in Claim Resolution Times: The platform, with its data-activated triggers and smart contracts, dramatically reduces claim resolution times, by orders of magnitude. This swift resolution process minimizes disruptions to logistics operations and ensures faster claims payouts.
● Significant Administrative Cost Savings: Redkik and Otonomi’s integrated digital wallet and automated processes substantially cut administrative costs, allowing companies to allocate resources more efficiently and improve their bottom line.
● Enhanced Coverage and Risk Management: The coverage is further enhanced by AI-assisted portfolio risk models and advanced stressed scenario capabilities. This not only opens up new markets but also creates greater opportunities for profitability.

Quote from Otonomi: ”Team Otonomi is thrilled to announce a ground-breaking partnership with Redkik that redefines the insurtech landscape. Together, we are embarking on a journey to revolutionize supply chain risk management by directly embedding insurance solutions into logistics companies and shippers’ ecosystems. Bringing cargo delay quotes in seconds, resolving claims 22 times faster than industry standard, all wrapped up seamlessly thanks to modern API integrations, Otonomi and Redkik empower clients to mitigate freight disruption risks efficiently.”

Quote from Redkik: ”We are proud to join forces with the innovative team at Otonomi. Although often mistaken to be competitors, we actually compliment each other extremely well. Adding an air cargo delay insurance to our existing offerings is yet another powerful value add to all of our existing and future clients and partners. Working with the team at Otonomi has been a lot of fun and we are looking forward to continue to work closely together in the future.”

IoT Tracking Solution for Load Carriers

Container management plays an important role in the logistics of manufacturing companies. However, this aspect usually only comes into play when load carriers go missing, transport times increase, or new purchases have to be made at great expense. “Particularly in the case of expensive special load carriers, which are frequently used in the automotive industry, non-transparent delivery chains are an avoidable nuisance. There is huge savings potential, after all,” states Stefan Schenk, who is responsible for the off-road business sector at Robert Bosch GmbH. That is why Bosch developed ‘Track and Trace’. This smart complete solution ensures full transparency throughout the load carrier cycle – across different plants and national borders and with effective integration of various suppliers, logistics service providers, and empties locations.

Transparency across the entire load carrier cycle

Where are there (special) load carriers in the logistics cycle? Are they being used to optimum effect? How can their use be optimized? These are just some of the questions faced by logistics experts the world over. All too often, inventories of (special) load carriers across multiple sites are still performed manually – an elaborate and highly error-prone process. “Employees spend too much time looking for containers that have been recorded either incorrectly or not at all,” explains Schenk. “To maintain an uninterrupted supply to production, additional load carriers have to be purchased while others remain unused.”

Help is now at hand, however, in the form of the smart logistics solution Track and Trace from Bosch. The smart tracking solution provides complete transparency regarding the usage and whereabouts of individual load carriers across all processes. To enable real-time tracking, the containers are equipped with sensors. Gateways located at the main hubs within the plants and at the supplier sites collect the sensor data and enrich it with position data before transferring it to the application in the cloud. Thanks to the software’s web interface, the received data can be clearly displayed in the form of dashboards. This provides all user groups with permanent access to the position as well as transport, throughput, and standstill times of the loading units.

“We want Track and Trace to be simple and intuitive to use,” states Schenk. “Logistics is not about millimetre-accurate localization. Instead, the focus must be on cost-efficient implementation and scalability of the solution for later rollouts.” As well as classic asset tracking, Track and Trace also enables tracking of materials or goods. This allows movements to be tracked via our IoT devices in real-time, thereby ensuring the necessary availabilities. Data regarding product-related information – such as temperature, humidity, and shocks – can also be displayed with the tracking solution.

Preparing Logistics Brands for Digital Transformation

Boardrooms and business news are abuzz with talk of digital transformation, writes Jeff Mallchok (pictured), Product Lead at MMT.

Little wonder: with predictions that digital transformation spending in logistics will reach $108.8bn by 2030. Traditionally known for its reliance on manual processes and paperwork, the logistics sector is undergoing a significant shift towards digitalisation. Brands such as Uber Freight have revolutionised the trucking industry by creating a digital platform that connects shippers and carriers. Streamlining the process of finding available trucks for transporting goods, effectively eliminating intermediaries, and reducing inefficiencies.

By embracing this digital transformation not only can logistics brands streamline operations, but they can also enhance their efficiency, customer experiences and competitive advantage. But there are lots of steps to complete before getting your logistic brand digital transformation ready. Standing still isn’t an option. If you’re committed to change then pretty much everything must change.
After all, you don’t want to be like 70% of all digital transformation teams who end up getting lost in the wasteland of abandoned transformations.

Communicate your digital vision

Becoming digitally better starts with aligning your digital strategy and the wider goals of your logistics business. This alignment is crucial in making a positive impact on your team, your customers and – as a result – your bottom line. It’s essential prior to a single line of code being crafted that a wide team of stakeholders evaluates the vision behind the transformation and its intended purpose.

To this extent, while a better UX design means more customers which in turn boosts profits and pays salaries, ultimately the people who work hard to earn those wages are central to your digital transformation strategy. If you don’t think carefully about how your employees can play their part, and how their jobs might change, they probably won’t join the journey. A recent poll by Forbes discovered that more than three-quarters (77%) of employees are fearful of AI advancing to such an extent that their roles will become redundant.

It may seem ironic, but by embracing digital transformation businesses can actually grow and transform their employee’s roles and their effectiveness. On the contrary, ignore digital transformation and you risk reducing competitiveness. Ushering in the very consequence of redundancy that is most feared by staff. Consequently, in an industry well-known for its manual labour and repetitive tasks, the clear explanation of the mission alongside the creation of a digital culture within your workforce are critical to a successful digital transformation. At the same time, knowledge shouldn’t be retrofitted. It’s important to devise learning and development programmes from the outset, which prepare the workforce for the long road ahead. This can make all the difference between success and failure.

It’s all about the destination

OBM (Outcome-based business models) is a fairly new approach but is already becoming a big deal across the commercial world. Logistics companies can thrive if they develop and implement a fully fledged OBM as part of their digital transformation strategy. OBM is a framework that focusses on desired outcomes, rather than specific outputs as it’s an approach that aligns an organisation’s strategic goals and is focussed on delivering value to the end user.

This is where it’s important to realise that each digital transformation is unique. Focus on what you want to be best at and known for. What will make your customers’ lives better? And how will transforming your technology help your mission? Maersk’s successful introduction of Tradelens is a great example. They introduced a blockchain-based platform that digitised and streamlined their global procedures. Matching their consumer’s desire for a more transparent and efficient system.

Put a digital transformation support system in place

It simply isn’t enough to assume that transferring regular operational practices to a digital platform will work seamlessly. A period of trial and error is necessary with any transformation, even more so with the added complexities of the logistics industry. Delivering effectively means considering your company’s IT and digital teams’ size and capabilities as part of wider the operation and change management. It’s crucial to define the scope appropriately and avoid taking on more than can be handled.

To ensure this, use measurement as the golden thread running through your digital transformation roadmap. That means ascribing metrics specific to the agile transformation strategy to measure progress and capacity in areas that must be modernised. It’s also important to not forget the resources needed to maintain the new digital infrastructure and platforms, providing constant systems support and robust cybersecurity measures to ensure the digital platform’s successes.

In for the long haul

Whether you’re flying halfway around the world or climbing into the car for a long drive to see a client, you’d better be well-prepared before leaving home. The same is true of digital transformation: you can’t go into this journey blindly, and you must be ready to embrace ongoing change. To this extent, agility is key to implementing digital innovation and making your digital transformation a success, whatever roadblocks might be around the bend.

A great example of the need for flexibility was Tesco’s response to the pandemic. As an essential retailer, Tesco saw the demand for online shopping growing at an unprecedented rate while other outlets were temporarily closed. Tesco responded by doubling its capacity for online orders and opening an urban fulfilment centre – a small, automated warehouse – within each store for logistical purposes. Consequently, online sales have grown 77% since the pandemic began. The retailer could have missed this growth opportunity by ignoring its logistic capabilities. But it rose to the challenge by testing several approaches to modernising the logistical capabilities of its omnichannel retail operation that have since been adopted for the long run.

How AI Can Transform Intralogistics

There are many safety and efficiency gains to be experienced with the help of artificial intelligence, especially if technology is allowed to coexist with humans – as Kardex states in its new publication.

Despite the complexity, initial operating costs, and resource-intensive implementation, AI has emerged as a crucial Industry 4.0 solution. AI can help companies meet challenges linked to increased customer demands, new and existing needs for streamlined logistics, and labour shortages.

In the publication “Warehouse Insights: 4 Ways AI Transforms Intralogistics”, Kardex, one of the world’s leading manufacturers of vertical storage systems and customised warehouse solutions, takes a deep dive into key elements of AI technology that will no doubt transform intralogistics.

It concludes that AI can help reduce costs while maintaining or even increasing productivity. For example, AI-powered automated storage and retrieval systems, which process and detect patterns in large amounts of data, can determine the optimal placement of items and predict purchase needs. There are also great opportunities for AI in predictive maintenance.

AI and warehouse staff

It is also highlighted that AI and humans can advantageously coexist, not least to ensure optimal security. Robots can perform tasks that are considered dangerous and demanding for humans and AI can monitor storage spaces and equipment to identify potential safety risks. At the same time, warehouse staff are freed up for more dynamic roles.

There is still a lack of knowledge among industrial companies about how they can benefit from AI. This is where Kardex wants to guide.

“We have a deep understanding of the distinct challenges faced by our customers. By closely monitoring inventory challenges and staying up to date with the latest technology trends, we continuously adapt our solution to ensure that our customers’ facilities always stay at the forefront of innovation.” Says Debra Grimwood, Marketing Manager at Kardex UK.

Kardex installs and services both simple, scalable solutions and large, fully automated flows for customers in e-commerce, electronics, production, automotive and the food industry.

Read “Warehouse Insights: 4 Ways AI Transforms Intralogistics” here.

Quantum-Powered Solution Tackles Logistics Optimization

Unisys has unveiled ‘Unisys Logistics Optimization’™, a new quantum-powered solution designed to help organizations solve complex logistics optimization challenges in seconds. As logistics costs continue to rise, companies are urgently trying to redefine the shipping process to improve the customer experience, decrease their costs and drive additional incremental revenue.

This is where Unisys Logistics Optimization™ steps in. Populated with industry-specific insights, the solution leverages a combination of quantum computing, advanced analytics and artificial intelligence (AI) to drive business outcomes.

The company will debut Unisys Logistics Optimization™ during a virtual launch event on October 17th, and anyone interested in attending is encouraged to register in advance. Those who attend will have the opportunity to see a demonstration of the solution and hear from industry leaders.

Unisys Logistics Optimization™ uses pre-trained models to generate answers to complex queries in seconds. This represents a substantial leap forward, as this rapid turnaround was not possible previously. Traditional computational tools would require years to collect and learn from operational data to produce similar results. The solution provides logistics companies, such as air cargo carriers, with an optimal plan for packing, storing and routing shipments across multiple vehicles more efficiently and cost-effectively.

Piloting the new solution in pursuit of its next breakthrough in logistics optimization is Malaysia Aviation Group’s (MAG) cargo arm, MAB Kargo Sdn Bhd (MASkargo), which serves nearly 100 destinations worldwide. Currently, the airline’s flight planners spend a significant amount of time manually selecting and assigning each shipment to unit load devices (ULDs), resulting in high operational overhead. Unisys will implement a secure and reliable solution that provides MASkargo flight planners with a graphic cargo plan tailored to maximize their cargo capacity, profitability and ability to manage priority shipments that meet customer expectations.

“MASkargo is continuously seeking ways to enhance efficiency, improving the customer experience and touchpoints,” commented Mark Jason Thomas, CEO of MASkargo. “Our collaboration with Unisys represents part of MASkargo’s digitalization journey by employing the use of quantum computing, artificial intelligence and machine learning to optimize processes, supporting network planning, and ensuring reliable, clear communication of accurate information.”

Unisys has an extensive track record of serving and innovating for logistics and transportation companies for more than 30 years, putting the company in a unique position to offer a wealth of industry expertise. Unlike other solutions in the market, Unisys Logistics Optimization™ does not require any additional data training to begin deployment, and it does not upend existing IT infrastructure or operations – providing immediate and ongoing value to clients as its accuracy self-improves over time through daily use, so it is never out of date.

“Containing logistics costs is mission critical, and companies are seeking solutions that will meet that important need,” said Chris Arrasmith, senior vice president, Enterprise Computing Solutions at Unisys. “We have built true operational foresight by integrating advanced analytics, reinforced machine learning, and the best of classical and new quantum computing architectures, enabling us to drive value in near real-time for clients.”

Unisys Logistics Optimization™ is built for air cargo, ground handlers and freight forwarders and is designed to help logistics companies optimize in three ways:

• Capacity: The solution evaluates loading strategies for companies by predicting and prescribing scenarios for pallet and ULD builds, allowing for more day-of shipment departures. It also helps identify opportunities for additional carrier revenue by detecting unused space.

• Inventory: The solution can predict and prescribe locations and packaging requirements on inventory, as well as amounts of inventory and freight sensitivity. This reduces packing and build times, minimizing freight damage or spoilage, preventing costly claims.

• Routing: The solution evaluates all potential routes and incorporates dynamic data sets, such as weather and travel times, to optimize and identify ideal outbound and reverse logistics routes.

Strategic KYX Partnership for Logistics

KYX – Know Your Client with Know Your Cargo – by Deloitte, powered by Nexxiot, has been launched. Deloitte, known for its range of services including audit, consulting, financial advisory, risk management, tax, and legal services, is joining forces with Nexxiot, known for its expertise in digitalizing supply chain assets, such as shipping containers and railcars. Nexxiot’s network of sensors and artificial intelligence capabilities offer valuable insights into supply chain inefficiencies, reducing uncertainty and operational costs. Deloitte will play a crucial role as the integration partner responsible for delivering these digital transformations.

This strategic partnership will provide a robust, scalable infrastructure rooted in a strong commitment to regulatory excellence and trust. It leverages Deloitte’s established KYC (Know Your Client) services and implementation capabilities with Nexxiot’s cutting-edge asset intelligence technology and trusted CINFONI (Client Information Network Intelligence) platform. CINFONI has regulatory approval for generating, implementing, recycling, and exchanging ‘Golden Records’ within the Banking, Financial Services, and Insurance (BFSI) sectors.

Nexxiot CEO, Stefan Kalmund, said, “The strategic partnership with Deloitte and Nexxiot represents a significant step forward for supply chain participants. It will accelerate the adoption of fleet-wide technologies, fostering visibility, transparency, and operational excellence.”

Deloitte’s James Yearsley, Lead Partner for the Transportation, Hospitality and Services Sector for NSE (North & South Europe), added, “Through this partnership, we aim to set a new global standard for KYX services, benefitting all stakeholders in the logistics sector, including trade finance, banking, and insurance. Deloitte and Nexxiot offer new services based on real-time data, covering all aspects of KYX from door-to-door, internationally.”

Deloitte and Nexxiot are committed to enhancing global trade compliance and operational efficiency through this partnership. It offers the logistics industry a means to embrace a future marked by improved efficiency, resilience, and integrity, all made possible by this strategic collaboration.

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.

1st Robotics Trailer Loading Technology

Dexterity AI has announced a collaboration with FedEx Corp. to leverage AI-powered robotic technology to load boxes into trucks and trailers.

Truck loading has long been considered one of the most challenging tasks in parcel hubs. Manual loading is taxing and previous technology approaches have not been able to handle the complex decision making required to stack the wide range of shipments encountered in FedEx network, which vary in size, shape, weight, and packaging material.

Dexterity AI focuses on the complexity of truck loading by giving mobile robots a suite of intelligence ranging from the ability to see, touch, think, and move quickly to pack trailers with stable, dense walls of randomized boxes.

“Our culture of innovation is driven by a desire to help our team members and customers succeed,” said Rebecca Yeung, corporate vice president of Operations Science and Advanced Technologies for FedEx. “Based on feedback from our operations team, we have been looking for a solution that helps alleviate the challenges of truck loading. Collaborating with Dexterity AI to combine the latest in AI and robotics supports our operations team while meeting growing customer demand.”

Introducing Next-Generation AI for Intelligent Truck Loading Robots

Dexterity AI’s proprietary mobile robot design, DexR, navigates autonomously to the back of trailers and connects to a powered conveyor system that feeds the robot boxes directly from the sortation system. The DexR’s unique two arm design enables the robot to pick and pack boxes simultaneously, improving throughput.

Dexterity’s AI platform uses a broad set of intelligence, so it can be used to handle the complexities of truck loading required by operations.

Some unique characteristics of the platform include:
● Generative Wall Planning: With every new box presented to the DexR, Dexterity’s AI software takes 500 milliseconds or less to assess billions of wall build possibilities to pack trailers with tight, stable walls.
● A Sense of Touch: Dexterity AI-powered force control gives robots a unique sense of touch so they know how to gently nudge boxes together in creating tightly packed walls.
● Machine Learning-Based Pack Improvement: Machine learning helps ensure that with every box picked, the Dexterity AI truck loading software becomes even more efficient in handling a broader range of packing challenges.
● Integrated Motion Planning: By integrating its own trajectory and motion planning, the Dexterity AI platform helps the DexR’s two arms move quickly inside trailers without colliding with each other or the truck walls.

Testing of the truck load technology is ongoing by FedEx with a goal to refine the technology and deploy commercially in the future.

“FedEx shares our belief that innovation should solve the most difficult tasks in operations,” said Samir Menon, founder and CEO of Dexterity AI. “Our collaboration is driven by a vision of AI-powered robotics that is adaptable to our customer’s most pressing needs.”

The official unveiling of this innovative AI-powered robotics truck loading technology took place at the companies’ joint event “Unlock the Dock” in San Francisco on September 26, 2023.

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