order management
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Salesforce certainly has a lot of tools crossing the sales, service and marketing categories, but until today when it announced Lightning Order Management, it lacked an integration layer that allowed companies to work across these systems to manage orders in a seamless way.
“This is a new product built from the ground up on the Salesforce Lightning Platform to allow our customers to fulfill, manage and service their orders at scale,” Luke Ball, VP of product management at Salesforce told TechCrunch.
He says that order management is an often-overlooked part of the sales process, but it’s one that’s really key to the whole experience you’re trying to provide for your customers. “We think about advertising and acquisition and awareness. We think about creating amazing, compelling commerce experiences on the storefront or on your website or in your app. But I think a lot of brands don’t necessarily think about the delivery experience as part of that customer experience,” he said.
The problem is that order management involves so many different systems along with internal and external stakeholders. Trying to pull them together into a coherent system is harder than it looks, especially when it could also involve older legacy technology. As Ball pointed out, the process includes shipping carriers, warehouse management systems, ERP systems and payment and tax and fraud tools.
The Salesforce solution involves a few key pieces. For starters there is order life cycle management, what Ball calls the brains of the operation. “This is the core logic of an order management system. Everything that extends commerce beyond the Buy button — supply chain management, order fulfillment, payment capture, invoice creation, inventory availability and custom business logic. This is the bread and butter of an order management system,” he said.
Salesforce Lightning Order Management App Picker (Image: Salesforce)
Customers start by building visual order workflows. They can move between systems in an App Picker, and the information is shared between Commerce Cloud and Service Cloud, so that as customers move from sales to service, the information moves with them and it makes it easier to process inquiries from customers about an order, including returns.
Ball says that Salesforce recognizes that not every customer will be an all-Salesforce shop and the system is designed to work with tools from other vendors, although these external tools won’t show up in the App Picker. It also knows that this process involves external vendors like shipping companies, so they will be offering specific integration apps for Lightning Order Management in the Salesforce AppExchange.
The company is announcing the product today and will be making it generally available in February.
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Shelf Engine’s team
While running Molly’s, the Seattle-based ready meal wholesaler he founded, Stefan Kalb was upset about its 28 percent food wastage rate. Feeling that the amount was “astronomical,” he began researching how to lower it — and was shocked to discovered Molly’s was actually outperforming the industry average. Confronted by the sheer amount of food wasted by American retailers, Kalb and Bede Jordan, then a Microsoft engineer, began working on an order prediction engine.
The project quickly brought Molly’s percentage of wasted food down to the mid-teens. “It was one of the most fulfilling things I’ve ever done in my career,” Kalb told TechCrunch in an interview. Driven by its success, Kalb and Jordan launched Shelf Engine in 2016 to make the technology available to other companies. Currently participating in Y Combinator, the startup has already raised $800,000 in seed funding from Initialized Capital, the venture capital firm founded by Alexis Ohanian and Gerry Tan, and is now used at more than 180 retail points by clients including WeWork, Bartell Drugs, Natural Grocers and StockBox.
Shelf Engine’s order prediction engine analyzes historical order and sales data and makes recommendations about how much retailers should order to minimize waste and increase margins. The more retailers use Shelf Engine, the more accurate its machine learning model becomes. The system also helps suppliers, because many operate on guaranteed sales, or scan-based trading, which means they agree to take back and refund the purchase price of any products that don’t sell by their expiration date. While running Molly’s, Kalb learned what a huge pain point this is for suppliers. To alleviate that, Shelf Engine itself buys back unsold inventory from the retailers it works with, taking the risk away from their suppliers.
Kalb, Shelf Engine’s CEO, claims the startup’s customers are able to increase their gross margins by 25 percent and reduce food waste from an industry average of 30 percent to about 16-18 percent for items that expire within one to five days. (For items with a shelf life of up to 45 days, the longest that Shelf Engine manages, it can reduce waste to as little as 3-4 percent).
The food industry operates on notoriously tight margins, and Shelf Engine wants to relieve some of the pressure. Running Molly’s, which supplies corporate campuses, including Microsoft, Boeing and Amazon, gave Kalb a firsthand look at the paradox faced by retail managers. Even though a lot of food is wasted, items are also frequently out of stock at stores, annoying customers. Then there is the social and environmental impact of food waste — not only does it raise prices, food rotting in landfills is a major contributor to methane emissions.
A store manager may need to make ordering decisions about thousands of products, leaving little time for analysis. Though there are enterprise resource planning software products for food retail, Kalb says that during store visits he realized a surprisingly high number still rely on Excel spreadsheets or pen and paper to manage reoccurring orders. The process is also highly subjective, with managers ordering products based on their personal preferences, a customer’s suggestion or what they’ve noticed does well at other stores. Sometimes retailers get stuck in a cycle of overcorrecting, because if customers complain about missing out on something, managers order more inventory, only to end up with wastage, then scaling back their next order and so on.
“Americans want selection at all times, we get furious when a product is sold out, but it’s a really hard decision to make about how much challah bread to stock on a Monday,” says Kalb. “Yet we are doing that ad hoc.”
When retailers use Shelf Engine’s prediction engine, it decides how many units they need and then submits those orders to their suppliers. After products reach their sell-by dates, the retailer reports back to Shelf Engine, which only charges them for units they sold, but still pays suppliers for the full order. As time passes, Shelf Engine can make more granular predictions (for example, how precipitation correlates with the sale of specific items like juice or bread).
In addition to providing the impetus for the creation of Shelf Engine, Molly’s also helped Kalb and Jordan, its CTO, build the startup’s distribution network. Kalb says Shelf Engine has benefited from the network effect, because when a retailer signs up, their suppliers will often mention it to other retailers that they serve. Kalb says the startup is currently hiring more engineers and salespeople to help Shelf Engine leverage that and spread through the food retail industry.
“It’s a world I got to know and I came into the world fascinated with healthy food and making delicious grab-and-go meals,” says Kalb. “It turned into a fascination with this crazy market, which is so massive and still has so many opportunities to be maximized.”
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