The world of parcel shipping has changed dramatically in recent years. Network complexity and customer expectations are both higher than ever.
Amazon Prime has raised the bar for performance across the board, to the point that today’s customers now expect fast, low-cost, transparent shipping options. In fact, this has become such a deeply ingrained preference that shipping is now the 2nd-greatest driver of ecommerce growth, behind only price.
Unfortunately, for many enterprise retailers, the notion of fast, flexible, low-cost shipping still presents more of a threat than an opportunity. That’s because the complexity of networks has evolved faster than their ability to keep up. There are more nodes, SKUs, carrier & service methods — as well as greater overall shipping volume.
Without the right, data-driven approach to parcel shipping, many retailers have ended up in one of two broad camps:
The retailers who have been able to redesign their parcel shipment process to meet today’s customer expectations without compromising their margins share a common characteristic — they’ve been able to effectively harness and leverage their network data to make smarter decisions at every stage in the parcel fulfillment workflow.
Data leverage is the key to meeting today’s customer expectations while improving the underlying economics of your shipping operations. While data leverage shows up in many different ways, for the purposes of Closed-Loop parcel, the most important thing is being able to use downstream data to give your operators a forward-facing view of what to expect when it comes to carrier performance & cost implications, historical transit performance and more.
In this guide, we’ll explore how to create a Closed-Loop parcel fulfillment process that enables you to make more informed decisions by leveraging the data in your network. You’ll learn about the types of data that should be (but often aren’t) used when creating delivery promises and fulfillment plans, as well as specific implications for both costs and shipping performance.
Let’s get started.
Before exploring the concept of Closed-Loop parcel fulfillment in detail, it’s important to understand what we’re contrasting it with. While more traditional parcel fulfillment processes aren’t wholly ineffective, they present two data-related challenges that necessitate a better way of doing things.
Many enterprise retailers are still struggling with fragmentation and data silos.
The use of specialized systems of record for different stages of parcel fulfillment is the right idea — but when an ecommerce platform gathers order & customer information, OMS includes inventory/product availability data, TMS includes routes & carrier performance data, and the systems don’t reliably integrate with one another, you have a problem.
Data fragmentation causes both negative process and overall business outcomes.
Process implications:
Business implications:
When data is siloed in loosely connected systems of record, you’re left to make decisions based on a combination of pre-defined rules, carrier SLAs, static historical performance data, and other relatively ineffective methods.
This brings us to the next overarching data challenge presented by traditional parcel fulfillment processes.
Despite real challenges associated with excessive IT resource consumption and vendor dependency, retailers have gotten good at developing strategies and investing in technology that connects each stage of the process to the next. Data may flow from system to system without the need for too much manual correction — for instance, new order and customer data flow from an ecommerce platform to the OMS for verification and processing, then to the WMS for picking and packing, then through the TMS for carrier selection, shipment planning, and manifesting to carriers.
Here’s the problem: the latter stages of that process are generating actionable data that can be extremely valuable, but isn’t used. Some examples of this include use of actual carrier performance and cost structures, historical transit performance for different routes and seasonality etc.
This can, and often does, lead to inaccurate delivery promises, poor performance and/or excessive costs during peak, orders being routed through slower, less reliable paths, one-sided carrier contract negotiations and more.
These are the two main data-related challenges that Closed-Loop parcel fulfillment aims to solve.
A Closed-Loop parcel fulfillment process is a system where data and feedback from various stages of the supply chain are continuously collected, integrated, and utilized to inform and optimize decisions throughout the workflow. Every stage of the process, from making a delivery promise to a package hitting a customer’s doorstop, is informed by real-time, data-driven insights — enabling you to create a competitive shipping experience that increases top-line growth without excessive costs.
In this section, we’ll explore the principles of Closed-Loop parcel, specific business outcomes you can expect by implementing it, and some of the most impactful use cases associated with it.
The principles that define Closed-Loop parcel fulfillment are:
The most important way that Closed-Loop parcel differs from traditional fulfillment is by filling key data gaps and enabling the use of downstream data in upstream decision-making and process design. Let’s explore some use cases for this in more detail.
While building a Closed-Loop system that’s designed for maximum data leverage and continuous improvement can help to fill many different process gaps, there are a few that stand out as it pertains to parcel fulfillment.
If you’re not accounting for both of these factors when making delivery promises to customers, you’re bound to either mismanage expectations or create operational and cost inefficiencies. Inventory availability is the first piece of the puzzle — after all, to make a commitment to a customer in a certain location, you need to know the closest place you have their desired SKUs in stock (whether that’s a warehouse, store, DC etc.) This gives you the understanding of origins and destinations you need to begin to measure transit performance.
However, it’s not enough to stop there. To make a truly data-backed, reliable delivery promise that doesn’t break the bank, you also need a way to predict carrier performance that goes beyond the SLAs they offer. It’s important to have an understanding of historical carrier performance against relevant criteria (ex. Types of products being shipped, locations of origins and destinations, macro-conditional data like weather patterns and fuel prices).
Choosing the lowest-cost carrier at the risk of missing a delivery date is one side of the problem. But as mentioned above, if you’re relying on static SLAs to determine which carrier and service method is the best option to meet a delivery promise, you’re likely leaving significant savings on the table. In many cases, shipments that have date constraints tied to them (ex. “Delivery by Thursday”) typically don’t flow to economy service methods at all, because these more cost-effective methods don’t guarantee a delivery date.
For those reasons, one of the most impactful use cases for Closed-Loop parcel fulfillment is making intelligent downgrades based on ML-powered analysis of historical carrier performance and other relevant criteria — for example:
By leveraging these factors, you can effectively establish dynamic SLAs for economy service methods (ex. UPS MI), and predict delivery dates for such methods with a great deal of accuracy and confidence. Over time, this enables you to consistently downgrade to such methods and lower shipping costs while still meeting your commitments to customers.
Peak season is the single most hectic and costly period for enterprise retailers. Demand can fluctuate wildly, leading to stockouts or overstock scenarios, ineffective route optimization and more.
With Closed-Loop parcel fulfillment, you can address that head-on.
Pre-peak, you can leverage the transit, carrier, and inventory data described above to automate and optimize carrier selection decisions as well as inventory placement. You can also proactively assess and validate peak surcharges before they begin to apply.
During peak, you can automate inventory allocation and load balancing, dynamically route orders from the optimal location, monitor carrier performance and make necessary adjustments in real-time, and scale to massive demands without completely disrupting your operations.
Adopting a Closed-Loop parcel fulfillment process that’s focused on creating maximum data leverage, continuous improvement, process automation, and ML-powered predictive analytics can help your enterprise avoid the common tradeoff between meeting today’s customer expectations and running efficient, cost-effective shipping operations.
The overarching business outcomes include:
Put simply: by adopting a Closed-Loop parcel fulfillment process, you can improve shipping performance while lowering costs.