Data Everywhere: AI in Logistics

Most shippers, carriers and logistics service providers understand the importance of data collection and data-driven decision-making. Data collected over time provides intelligence, enabling companies to enhance long-term decision-making. Meanwhile, real-time data can be used to make smart split-second decisions – like how to correct or replan when problems occur.

Artificial intelligence is a potent tool that helps companies get the most from their data. This takes several forms. “Statistical AI” enables users to analyse huge quantities of information to find hidden patterns and make smart decisions. Meanwhile, companies can use past data to programme “symbolic AI” models, which can be used for “purpose-seeking” applications, such as process optimisation. Jonah Mcintire (pictured), Chief Network Officer at Transporeon, A Trimble Company, explores further.

Automation vs. AI – understanding the difference

Automation and AI are often spoken about in the same breath, as if they are synonymous. However, though they’re interlinked, there’s an important distinction between the two. Automation involves delegating mundane, often administrative, tasks to software. It’s clerical. On the other hand, true AI involves handing over decision-making power. Software is given set parameters, but it will use them to draw unexpected conclusions. Users can give AI varying degrees of freedom. A more cautious approach is to allow software to calculate options and make recommendations for a human to approve. However, it’s also possible for it to reach conclusions and make decisions autonomously, without even informing a human.

So, where can AI in logistics transportation have the most impact? The short answer is ‘everywhere’. In fact, forward-thinking shippers, carriers and logistics service providers are already integrating AI into their tech stacks.

There are a few considerations to keep in mind. AI is best used for decisions with concrete financial values that are easy to score and have discrete, well-known variables. Fast decision-making cycles are also important. Like humans, AI learns from experimentation. So, if a decision is only made annually, it will take decades for the software to gather enough data to get feedback. Realistically, you want AI models to analyse thousands of decisions per day. Ideally, players would use models trained not just with their own data, but with data gathered from across the industry. This collaborative (also known as “platform”) approach enables everyone to get ahead.

So, how AI can transform how companies utilise their data through autonomous procurement, real-time ETA tools and decarbonisation?

Real-time ETA tools

The disconnect between shippers and carriers has long been a challenge in the logistics transportation industry. To enhance visibility, transparency and efficiency, we need to connect load receivers and load givers. For example, predicting arrival times for loads has traditionally been a pain point for both shippers and carriers. Common causes of delay – like strikes, traffic jams and mechanical difficulties – can seem completely random to the human eye. But when an AI model analyses years’ worth of this data, hidden patterns do emerge. Typically – unless circumstances are truly unprecedented – AI is much better at predicting ETAs and with the help of an AI-assisted real-time ETA tool, companies can ensure they’re prepared to receive loads whenever they arrive.

Automating procurement and quotation

Spot buying is a perfect use case for symbolic AI, as companies have a set budget and clear constraints around lead times and carrier types. Beyond this, the structure of negotiations is relatively simple – participants can make an offer, wait for a response, make a counteroffer, accept an offer, or end a negotiation. This makes it easy for software to pursue its goals independently, saving thousands of manual administrative hours.

This is just one example. In the procurement space, statistical AI can also revolutionise tendering by using huge quantities of data to predict pricing. For example, instead of asking carriers to bid on a load tender, AI can present said tender – and a pricing offer – to a select number of carriers. If no carrier accepts the tendered load at the offered price, the AI can initiate additional tendering rounds as needed.

AI can also have a transformative effect for sellers of logistics services, enabling them to automatically serve customers with instant, accurate pricing for spot transports based on predicted market rates. With this ability, load takers can increase the volume of opportunities they quote for and ultimately win more new business.

Decarbonisation

The logistics transportation sector is under pressure to slash its carbon emissions. End-user customers are leaning on shippers to decarbonise. Meanwhile, shippers are putting the same pressure on carriers by contracting them based on their sustainability practices, offering longer freight contracts to environmentally responsible carriers, and even paying a premium for lower carbon transport.

With sustainability now affecting the bottom line, it’s no surprise that decarbonisation is rising to the top of the agenda for both shippers and carriers. So, how can AI help with all this? The first thing to emphasise is that – unlike procurement – there’s often no single ‘right’ answer when it comes to sustainability. Companies may have differing ideas of the optimum strategy, carefully balancing ‘cost vs. emissions’ or ‘certainty vs. emissions’. However, once shippers, carriers and logistics service providers have decided on their risk appetite, AI can play a crucial role in helping them stick to their goals.

Companies typically adopt one of two mentalities. The first is a cap-and-trade strategy, where the company decides that it won’t tolerate more than X emissions. The second is a carbon tax, where a company decides to offset its emissions. For both of these strategies, shippers and carriers can factor ‘price per ton of emissions’ into procurement events. Statistical AI can be a helpful decision-making tool. For example, when deciding which mode of transportation should be used for each shipment.

The future of AI in logistics transportation is collaborative

We’re at an important inflection point in the use of AI in logistics transportation. It’s poised to slash administrative work and help companies become more efficient and sustainable. But achieving this depends on effective data gathering and sharing. This is where cooperation between industry players comes in. To maximise positive outcomes for everyone, shippers, carriers and logistics service providers need collaborative digital platforms to share data to feed AI models. Looking ahead with this approach, we can significantly accelerate our progress towards reaching the industry’s digitalisation and decarbonisation goals.

Maersk Expands DexoryView Partnership

As a result of a successful deployment at its Kettering site in England, Maersk UK&I is expanding the use of Dexory technology across all its warehouse operations in the area over the next few months, it was announced today.

The partnership began with a successful deployment of the first Dexory robot and integrated data platform into the Kettering site in January. The platform and robot helped Maersk save dozens of hours per week in tracking and solving inventory issues, giving continuous visibility across the site that supports identifying and achieving improvements across the operation. Due to its ongoing success, the solution will be deployed into another Maersk facility in Tamworth early June and across the UK&I afterwards, in line with Maersk’s expansion plans in the region.

Attendees of the Multimodal event in Birmingham, UK, from the 13th to 15th June will be able to see a demonstration of how Maersk maximises data and provides unprecedented insights into operations for its customers via Dexory’s solution. Dexory will be present on the Maersk stand numbered 2040/2041 and on Dexory’s own stand 7022.

Oana Jinga, Dexory’s Chief Commercial Officer, commented, “We’re thrilled to continue supporting Maersk on their journey to being the efficient and sustainable Global Integrator they intend to be. The extension of our partnership underlines the growing trust in our technologies and the value we are bringing to their organisation.”

Using the DexoryView platform allows Maersk and its customers to automate data collection and build real-time digital twin technology that unlocks insights across all levels of warehouse operations. Dexory’s technology will allow Maersk to gather full visibility of stock across the various UK&I sites, and achieve greater operational efficiency, thus bringing resilience as well as flexibility to their supply chains.

The deepening partnership with Dexory is also a great enabler of Maersk’s commitment to sustainability, as it allows them and their customers to optimise existing resources within warehouses and racks, maximising utilisation, and reducing wastage across stock.

Fergus Whinham, Maersk’s UK&I Commercial Lead, says “As a customer-centric organisation, it is vital for Maersk to stay at the forefront of innovation within the supply chain and be able to offer their customers the opportunity to test the latest and greatest solutions as they are developed. We’re confident that continuing and expanding our work with Dexory will continue to drive that innovation on behalf of our customers”.

Dexory provides the only system on the market that combines inventory-scanning robots with powerful warehouse analytics, all built and maintained in-house. Dexory captures real-time insights into warehouse operations using fully autonomous robots and Artificial Intelligence. Instant access to real-time data helps optimise the present, de-risk the future and discover the intractable in each location and at every stage of the product journey through the warehouse and onto dispatch. Founded in 2015, Dexory aims to transform the data-gathering operations of warehouse environments.

eBook: Data Driven Logistics

Logistics Business magazine, together with the Information Factory, have produced a 7 page digital magazine on data in transport logistics. Editor Peter MacLeod talks to iFactory CEO Robert Jordan to understand how transport businesses can drive up profitability by adopting a data-driven approach. Learn how to transform data into insights and decision-making power.

Read the free eBook here.

A framework for being data driven

“Information about the package is as important as the package itself,” said Fred Smith, founder and chairman of FedEx. And it’s easy to see why. Data is generated at every stage of the logistics process. When integrated, organised and managed properly data tells you how your business is performing. More importantly, data can be used to predict future outcomes. And ultimately what you need to do to get to where you need to be. The iFactory call this being data driven.

The great thing about your data is that you don’t need to invest huge amounts of time and money in order to start out on your data driven journey. Cost effective business intelligence tools will quickly show how you’re doing against your company and department KPIs.

Predictive analytics and data science systems offer more advanced functionality such as demand forecasting, dynamic pricing and route planning. And, for those with more complex requirements, data can be used to power decision support systems that support strategic and operational work at all levels of the organisation.

The imperative faced by companies operating in today’s supply chains is to use their data to integrate with other players upstream and downstream. If they can’t they are increasingly redundant. And likely to be less efficient and more costly than those that can.

The Information Factory have developed a simple framework to help companies harness the power of their data; Strategy, Delivery, People & Culture and Technology. The recommendations in the framework have all been road tested in live situations and come from clients who’ve already embarked on their data driven journey.

And, if you’re attending Transport Logistic in Munich between May 9 – 12, you have an open invitation to visit the iFactory on stand A3 605.

UK businesses believe Brexit created data challenges

More than half of UK businesses (54%) say Brexit has presented them with data access and management challenges, according to research from MuleSoft, an integration and API platform provider. This finding highlights that the challenges of siloed data and skills shortages are being amplified as businesses adapt their operations in response to Brexit.

However, these pains are not just being felt by UK businesses: 40% of German and 39% of French businesses also report that Brexit has made it more difficult for them to access and manage data.

These difficulties have helped fuel the supply chain issues that have prompted recent headlines around product shortages and availability. The findings also suggest that businesses may have a hard time navigating future regulatory changes. While there may currently be close regulatory alignment between the UK and EU, businesses’ inability to unlock and act on data quickly may limit their ability to respond to changes in the future.

“Brexit has laid bare just how underprepared many businesses are for the challenges around data access and management in an increasingly digital economy,” said Justin Wilson, head of UK&I at MuleSoft. “At a time when businesses need to be more agile than ever, the UK’s departure from the EU has made it harder for them to harness the data they need to do just that. There’s also the issue of skills shortages. While digital transformation is at the top of their agenda, the exodus of skilled IT professionals has left many businesses without the resources they need to deliver those projects.”

As businesses continue to adjust to the post-Brexit landscape, they urgently need a more agile approach to integrating data and delivering digital transformation. API-led connectivity will be key to this, enabling businesses to break down data silos and overcome borders, so they can quickly create actionable insights. For instance, APIs can be used to connect supply chain data between multiple stakeholders, so UK and EU businesses can achieve the visibility needed to ensure their products are available where they’re needed and mitigate disruption.

Better still, an API-led approach reimagines digital assets as a network of reusable capabilities that anyone can draw from. This enables a wider range of business users to compose their own innovations without IT’s involvement, improving autonomy, business agility and accelerating digital transformation.

“APIs help businesses to overcome many of the most pressing problems they face in the aftermath of Brexit, because they make the process of drawing disparate data sources together far easier,” continued Wilson. “This more flexible approach to integration also enables businesses to package their digital capabilities as a series of reusable building blocks. Not only does this make businesses more agile for change by removing the need to start digital initiatives from scratch, but it also helps ease the skills burden. Now, anyone within the business – not just the IT team – can draw on these pre-existing IT capabilities to drive digital innovation.”

IoT Firm Adds to Leadership

IoT company Nexxiot hires a new senior advisor to expand and commercialize the data-driven services in asset management and predictive diagnostics. From April 2021, Bernard Guillelmon will take on an advisory role at the Swiss IoT company headquartered in Zurich, Switzerland. Guillelmon brings together his expertise in freight and passenger traffic railway operations and maintenance to create immediate benefits for Nexxiot clients.

Bernard Guillelmon has deep expertise in rail freight services together with an extensive industry network, which includes experience of serving in boardroom positions of prominent players like Ermewa, as president of UIC Europe and as CEO of BLS. He will position Nexxiot with key decision-makers in a global market worth billions of Euros per year.

“Before Nexxiot arrived on the scene, there was always uncertainty around how many miles a particular rail freight wagon had travelled. Since those days, Nexxiot has expanded its capabilities to evaluate shock profiles, vibration patterns, maintenance activities and much more. Bernard Guillelmon will support bringing the products to the next level by engaging senior rail freight decision and align Nexxiot’s development roadmap to solve these issues,” said Nexxiot CEO Stefan Kalmund.

As pioneer in global IoT, Nexxiot continually revolutionizes supply chain practices through its’ cutting-edge use of data. The extensive product portfolio includes sensors, gateways, connectivity and IoT cloud services for its global customer base. Participants in the supply chain often operate with inaccurate, outdated information. Nexxiot’s clients and supply chain participants can access unique information to improve their business processes and open up new revenues. Nexxiot provides access to data and analytics that are used to create automated processes and increase transparency, trust, safety, and sustainability. This data also enables the use of predictive maintenance.

“Without predictive maintenance solutions, hundreds of millions of Euros are wasted every year on unnecessary or late repairs,” Stefan Kalmund continued. In complex rail operations, there is a tendency to over-maintain assets as safety is a real concern. The cost of breakdowns also has a huge impact on bottom-line. Rather than maintaining assets when they actually need it, they are brought into workshops early or late or they stay idle because reparations slots are scarce. “Without transparency on asset usage, total mileage, accumulated elevation, maintenance actions across workshops and vibrations and shock profiles, it’s difficult to get this right,” he added. Clients of Nexxiot are already able to manage the utilisation of their asset fleet and provide valuable services to cargo owners and shippers. Stefan Kalmund continued, “With the addition of Bernard Guillelmon to the team, we can better shape our solutions to make more significant and rapid improvements for our clients business practices and profitability.”

Bernard Guillelmon has proven himself in rail and logistics management and has a profound understanding of the challenges associated with digital transformation. As an expert in change management, he will support customers to find the best ways to apply the data using analytics and machine learning. At the same time, he will enable cultural readiness by supporting knowledge transfer and get the right stakeholders engaged. With his very broad network of key decision-makers who are active in shaping the rail industry, he is perfectly placed to handle these requirements.

“This is a key area of growth for Nexxiot,” CEO Stefan Kalmund went on to explain. “We see that the gathering and processing of data is now firmly within our grasp. The next phase is to redefine the processes in the industry.” The entire value chain is supported with hardware, software and via easy-to-use mobile applications. To create maximum value, these applications must be aligned with the physical reality on the ground.

Bernard Guillelmon stated, “In the next years, the monitoring of the rolling stock will be of crucial importance for the operators as Entities in Charge of Maintenance (ECM). Nexxiot has already removed the technical barriers through its on-board devices. Now we transform and optimize the processes using our data, analytics and our domain expertise.”

Artificial Intelligence Solves Master Data Issues

Digitec Galaxus AG, the largest online retailer in Switzerland, and Logivations GmbH, an international consulting and technology company based in Munich, concluded a cooperation to improve Digitec Galaxus products master data with the help of Logivations Artificial Intelligence Software for Goods Recognition, Counting & Measurement.

After conducting an extensive trial phase last year, in the coming weeks Logivations will install 40 workstations in the receiving area of the Digitec Galaxus distribution center in Wohlen. In addition to the engineering services to support the initial configuration and setup of the 40 workstations, Logivations also offers extended maintenance of hardware and software components.

AI based Goods Recognition, Counting and Measurement

Logivations W2MO uses neural networks running on a GPU which can be trained to “learn” certain patterns so that goods can be automatically recognized, counted, and/or measured. The process usually takes less than a second. Data can be easily transferred to any WMS using an USB- or RestFullAPI-interface.

A new technology offers new opportunities

In contrast to the use of conventional 3D scanners, Logivations’ technology can not only measure goods much faster, but also recognize them by their appearance or barcodes / QR codes. For this purpose, certain properties (e.g. the X, Y & Z dimensions of the products, as well as the weight) are recorded, the product is classified (e.g. boxed/unboxed item, irregular shape, textile, etc). All steps are done simultaneously and the user sees the result immediately. More information can be found here.

 

Artificial Intelligence Solves Master Data Issues

Digitec Galaxus AG, the largest online retailer in Switzerland, and Logivations GmbH, an international consulting and technology company based in Munich, concluded a cooperation to improve Digitec Galaxus products master data with the help of Logivations Artificial Intelligence Software for Goods Recognition, Counting & Measurement.

After conducting an extensive trial phase last year, in the coming weeks Logivations will install 40 workstations in the receiving area of the Digitec Galaxus distribution center in Wohlen. In addition to the engineering services to support the initial configuration and setup of the 40 workstations, Logivations also offers extended maintenance of hardware and software components.

AI based Goods Recognition, Counting and Measurement

Logivations W2MO uses neural networks running on a GPU which can be trained to “learn” certain patterns so that goods can be automatically recognized, counted, and/or measured. The process usually takes less than a second. Data can be easily transferred to any WMS using an USB- or RestFullAPI-interface.

A new technology offers new opportunities

In contrast to the use of conventional 3D scanners, Logivations’ technology can not only measure goods much faster, but also recognize them by their appearance or barcodes / QR codes. For this purpose, certain properties (e.g. the X, Y & Z dimensions of the products, as well as the weight) are recorded, the product is classified (e.g. boxed/unboxed item, irregular shape, textile, etc). All steps are done simultaneously and the user sees the result immediately. More information can be found here.

 

Using Data Collaboration to Aid Competitive Advantage

In an industry where margins are already tight, the ability of Logistics Service Providers (LSPs) to harness data to make operational and strategic decisions – both in terms of responding to unforeseen events and delivering sustainable profits – can be the difference between survival and obsolescence.

In response, recent years have seen an encouraging shift from ‘gut instinct’ governance to objective, data-led decision making. LSPs are using their own data to make better decisions, react more responsively to market conditions and better forecast the future. However, while many LSPs have broken down internal silos, the unwritten rules of competition still largely prevent the widespread sharing of data across organisations who carry out the same core activity.

Internally stored data on pre COVID-19 trends no longer offers the same value and insight with the changing landscape of supply chains. It’s time for LSPs to shift their mindset and further embrace vertical and horizontal data collaboration. In doing so, they can drive improved productivity, create effective partnerships and ensure supply chains remain robust during the recovery from COVID-19 and beyond.

Using vertical data collaboration to optimise operations 

In vertical collaboration, live data makes it possible to pinpoint bottlenecks, formulate changes and implement solutions in order to smooth the flow of goods across all parts of a supply chain. Whilst vertical data collaboration isn’t an entirely new concept, to date, it has largely been reserved for those who can afford it, such as large or tech-forward companies. However, recent technological advances have made it much more accessible and affordable for smaller firms to access and share up-to-the-second accurate data across the whole supply chain.

The benefits are manifold. Take, for example, food processing company Santa Maria and its LSP, Yunsen Logistics. Vertical collaboration enabled these companies to reduce costs, improve logistics performance and increase customer satisfaction, as well as improving traceability. Imagine the impact this could have on smaller businesses, providing them with access to accurate and timely vertical data from their supply chains, and giving customers greater visibility and decision making power.

To make this happen, and before engaging with potential partners, logistics leaders need to improve and update legacy systems to enable their data sharing capability. Knowing you can view, understand and use your own data to the fullest will strengthen your position when sharing data. Next, work with your supply chain partners to identify quick wins. For example, in the seasonal retail sector, greater access to consumer preference data and forecast data will help you better plan for peaks and make your operations more robust.

Using horizontal data collaboration to optimise operations 

As LSPs respond to rising online sales, increased customer expectations and shifting regulations, last-mile delivery will become an area where horizontal collaboration can strengthen resilience and enhance performance. This will involve active collaboration between two or more companies that operate at the same level of the supply chain and have similar logistics functions. Case studies show that this type of horizontal data collaboration can deliver cost reductions of up to 33 per cent.

Real-time, secure and accurate data collaboration, both horizontally and vertically, is key to success. Data, the main driver of logistics operations, is the foundation on which effective collaborations can be built. However, it is particularly important when setting up horizontal data collaboration with competitors that LSPs work with a trusted third-party to ensure they realise value while retaining the high level of data security required. You’ll also need to anonymise data to ensure you’re not breaching any legal terms and that your company is protected.

Along the way, it’s essential LSPs select the right provider within their level of the supply chain to embark on this journey with. This calls for a thorough investigation of an LSP’s business to identify where horizontal collaboration can improve business performance. You’ll need to understand the potential gains for both your organisation and the collaborator, and ensure incentives are aligned. This will allow for the formulation of strategies and processes that facilitate these collaborations.

One solution is for LSPs to explore asset pooling and journey sharing into their operating models through the creation of an integrated final-mile delivery platform that is open to all LSPs. The concept would match shippers with carriers and allow LSPs to share freight volume with traditional competition. These competitors may, for instance, have a stronger reach in a geographical area, which would optimise efficiencies. Open to all, from large logistics organisations to self-employed individuals, this on-the-go freight delivery platform could bring environmental benefits and create greater profitability per consumer delivery. While Amazon and Uber have ventured into this area for the transportation of larger goods, there is yet to be a fully integrated platform for final-mile delivery.

What next? 

In an industry of high competition and low-profit margins, the idea of sharing data with competitors can cause consternation. The reality is very different. Through successful vertical and horizontal data collaboration, LSPs can gain competitive advantage through enhanced crisis management, more profitable routing and asset efficiency, all while delivering better end-to-end customer service. The move towards a market of shared efficiencies is inevitable. It’s those bold enough to seize the opportunity now who’ll benefit the most.

Written by Global Head of Transport at PA Consulting, David Oliver

Precision Pricing Software

Forensic profitability analysis for small and global businesses alike is available at a click with today’s supply chain software, as Paul Hamblin discovers.

Graeme Aitken has a job title I’ve never heard before: he’s VP Strategic Customer Pricing, part of the global pricing team at parcels and shipping behemoth DHL Express. In essence, he is available when the standard company pricing process becomes more complex. “If we have a profitability issue, whatever it is, I tend to get involved,” he says. “I also work on larger yield projects.So if we want to look at unprofitable customers, unprofitable lanes, I help come up with various yield initiatives.”

‘Complex’ in this context can mean several things. “It might mean complex operationally, where we might offer services beyond normal pickup and delivery, or it could be complex pricing. Examples might include running dedicated trucks to the customer; or we might have people working in the customer premises to process shipments on their behalf, perhaps including specialpackaging requirements or customs paperwork.”

Some years ago, as Head of Global Costing, Graeme Aitken built a new cost and profitability system for DHL Express. Historically, it was painstaking work, using the more basic spreadsheet skills available at the time and requiring detailed visits to DHL facilities to examine processes up close (“Time and motion studies, basically,” he sighs). By 2012, the company started to fully automate.
“So we now had every checkpoint for every shipment. Because we had that, we could cross reference it to the P&L, we could cross-reference it to the billing data. And we could produce margin data for every shipment that goes through our network.”

This is where data software vendor The Information Factory came in. The UK-based supply chain software specialist used this new profitability data to create a set of applications for Graeme Aitken and his
team which enable forensic analytical capability of DHL’s global network and processes. The results are astonishing levels of data knowledge that would have been inconceivable even a few
years ago.

How does it work, in layman’s terms? “We can look at groups of customers when we have a potential problem somewhere in the network. So, for example, we might have too much business on particular lanes. And if our planes are full, we either have to get a new plane, which is very, very expensive, or we take off the cheapest business that’s flying that plane; or we put in a rate increase, perhaps.”

The Information Factory has built the analytical capability to make these examinations very quickly. “Because I can specify a bunch of criteria,” Aitken goes on, “I can ask for, say, every shipment which is coming from Hong Kong, every shipment which is going to the US, every one over 30 kilos, or less than a certain price per shipment. With these high filter delivery percentages, I can specify such criteria and the system will immediately deliver, say, 50 customers that meet that criteria and need action.”

The data thrown up by the system is then shared with DHL’s relevant country management teams. “We will share everything with the country concerned, because the first thing we want to do
is check that the data is accurate,” Aitken explains. “If there’s a credit note, for instance, that needs to be taken into account. Then the country has everything it needs to fix the issue.”

All such knowledge is distributed through the system that The Information Factory built. “It creates the analysis at the front end, it’s the distribution tool for all the data, and then the country must come back and tell us what they’re going to do. And then we’ll go back to track it and measure the improvement.”

He says that The Information Factory is very good at building prototypes and showing what they can do for their clients, quickly. “It’s straightforward. Their experts say: ‘Here’s what we can do for you. Here’s how it’s going to work. Here’s a small testing set. Here’s how and why tests can be done quickly.’” And he wanted to succeed quickly, he confirms. “It can give me every customer with a margin of worse than minus 10%. If that’s too many, I make it minus 20, minus 25 minus 30. And I can run iterations of this stuff 20 times a day, if I wish. I will also go to the customer with the salespeople to discuss pricing. And you have this amazing information at your fingertips and you can show them why you’ve come up with the price you have. We can be very surgical in the actions we take.”

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