Blogs

The Future of Delivery Management Has Arrived with Machine Learning

There is a tendency to use Artificial Intelligence (AI) and Machine Learning (ML) interchangeably to refer to any process that uses data science to make business decisions. However, there is a subtle, but distinct, difference between the two which is important to understand when making purchasing decisions around delivery management solutions.

AI is an umbrella technology that uses a combination of optimization techniques and data science to incorporate human thinking into machines. An example is industrial robots that are programmed to perform specific tasks on a production line. ML is a subset of AI that empowers computer systems to self-learn so they do not need human programming. Over time, ML trains algorithms to imitate human intelligence so that machines can make their own decisions. An example would be services such as Netflix and Amazon that automatically learn from past data and provide recommendations based on that knowledge.

What Does ML Mean for Delivery Management?  

In the delivery management world, different problems require different toolsets. For instance, to determine the best route for a driver based on delivery windows, vehicle capacity and travel time, constraint-based optimization algorithms work well. Broadly referred to as Vehicle Routing Problem (VRP), these solutions find optimal routes to improve speed and accuracy of deliveries and reduce last-mile transportation costs. 

ML takes this process into the future by looking at vast data sets, far beyond what a human can do, in order to predict business outcomes. 

For instance, with enough data ML can determine how much time it takes for a driver to deliver at each business location depending on the hour of day. Routes can be adjusted if certain time frames require more or less than others. Another example would be learning patterns from the dispatcher such as making changes to the vehicle size based on the day of the week. ML can process these changes and ultimately mimic the dispatcher’s intuitive decision to assign accurate vehicles and drivers without human input.

How Does ML Help Transportation Businesses Grow?

Business growth typically involves adding new customers. For transportation companies, this means increased shipping volumes, which require more routes, vehicles, and drivers. While VRP solutions may work for smaller organizations, increased capacity and complexity will quickly overwhelm systems that are not prepared, resulting in missed and late deliveries, overwhelmed staff and dissatisfied customers. 

Here are some examples of how ML can solve these challenges over time:

  • Developing elaborate mapping plans of residential and business deliveries that include sectioned out heat maps for greater accuracy
  • Creating routes and sending them to drivers to get a confirmation on timing; this can include details such as where to park at customer sites, refueling spots and rest area locations
  • Accounting for sudden changes in weather, traffic, road hazards and anything that may impact the delivery schedule and adjusting plans on the fly to ensure no delays
  • Reassigning routes when drivers are absent from their shift, which ensures deliveries are not delayed and prepares the replacement driver for the changes
  • Planning redeliveries when something goes wrong, and a package does not get dropped as planned
  • Creating electronic logs that record inbound shipments to the warehouse and then automating the sorting process in order to keep the assembly line moving
  • Reaching out to customers via text messages to arrange appointment time slots based on what can accurately be shipped the next day
  • Detecting issues that may contribute to delivery delays such as unclear directions at the customer site and then resolving them by providing detailed instructions
  • Alerting dispatchers of potential improvements or modifications to the route layout so that the most efficient and cost-effective plan is always being implemented

What is the Right Solution for My Company?

An effective delivery optimization solution applies the right toolsets and algorithms to solve different problems within delivery management. In other words, there is no one solution. In this case, context is everything. Each sector has its own requirements, making transportation and delivery in healthcare look very different than what it looks like in retail. 

Instead, companies need to determine the specific goals and challenges confronting their business before looking into different technologies. For instance, is the company looking to add new customers, expand into new territories, bring in a different product mix, resolve chronic missed deadlines, address driver dissatisfaction, take burdens off the dispatcher, etc. 

Once these are identified companies can determine the features and benefits of a software solution that best meets their needs and balance that against the financial investment. Some features that are universally important to most companies include:

  • Easy integration
  • User-friendly 
  • Flexible and scalable
  • Secure

An ML delivery management solution not only helps companies optimize their transportation network and obtain real-time visibility. It also provides a radical business advantage that will help them thrive and prosper in the decades to come.

nuVizz Chronicle

From the Blogs
How Real-Time Fleet Management Optimizes Last-Mile Delivery

Last-mile delivery has become the ultimate logistics battleground—where customer loyalty is won or lost. This final stage, which gets products from local hubs to the customer’s doorstep, accounts for 41–53% of total logistics costs due to its complexity. Tight deadlines, growing e-commerce volumes, and rising fuel prices are pushing businesses to rethink their operations. Real-time… Continue reading How Real-Time Fleet Management Optimizes Last-Mile Delivery

Retail Logistics: Definition, Challenges, and Best Practices

The retail industry has undergone a massive transformation over the past decade, driven by the rapid growth of e-commerce, omnichannel sales, and evolving customer expectations. Shoppers today expect fast, accurate, and seamless delivery experiences—whether they purchase online, in-store, or through a hybrid model. For retailers, meeting these demands hinges on one critical element in retail… Continue reading Retail Logistics: Definition, Challenges, and Best Practices

Real-Time Customer Feedback Matters

Capturing real-time customer feedback is essential to make businesses run better but also a gesture to show customers that YOU care. Customer feedback should be captured at point of delivery or point of sale to establish loyalty and trust. As we can all attest, we want things faster and, as a result, expect superior customer… Continue reading Real-Time Customer Feedback Matters

What Amazon and FedEx Are Doing with TMS for Optimizing Last Mile Delivery

In today’s era of instant gratification, the logistics battlefield has moved to the final leg — the last mile delivery. Consumers expect same-day, even same-hour deliveries, and the pressure is on for companies to meet these demands without breaking the bank. Amazon and FedEx, two of the world’s most prominent logistics powerhouses, have turned to… Continue reading What Amazon and FedEx Are Doing with TMS for Optimizing Last Mile Delivery

How to Scale and Optimize Delivery Operations with Vehicle Routing Software for the Final Mile

In the era of rapid digital commerce and increasing customer expectations, delivery speed and efficiency have become a major differentiator in logistics. The final mile delivery is the last part of a product’s journey to the customer. It is often the most expensive and complex part of the supply chain. Businesses striving to scale and… Continue reading How to Scale and Optimize Delivery Operations with Vehicle Routing Software for the Final Mile