Fast Accessorial Tech That's Ahead of It's Time

Shiplify was the first to unleash the power of Machine Learning AI to refine billions of geospatial data points and provide relevant location data to the LTL industry at scale. Now, with API connections and an ever-growing database of location types and attributes, we’re committed to staying on the cutting edge of accessorial identification technology.

Shiplify Location Attributes

Location Type
Identification

Shiplify location types are directly correlated with those referenced within LTL carrier rules tariffs, including Limited Access locations like military bases and schools; Residential locations like single family, apartment/condo, and mixed use; and 60+ more.

Dock Access
Identification

Not sure if a destination has a loading dock? Shiplify dock access identification uses an extensive database and best-in-class machine learning models to identify the dock details of anywhere you deliver, helping you operate more efficiently and tackle the billing process more accurately.

Forklift
Identification

If a location does not have a loading dock, forklifts can get your freight unloaded. But how do you know which locations have access to a forklift? Shiplify forklift data coupled with dock access data can help you understand if carriers truly need to provide a lift-gate service even before the delivery takes place.

Multi-Tenant
Identification

What about consignees with the same physical address but different suite or unit numbers? Shiplify differentiates location types and other attributes for each tenant at the same physical address, including dock access, restaurants next to grocery stores, or tenants with other unique requirements.

You Can Bet Your Accessorial on Shiplify

See how quickly we can deliver accurate location data with our proprietary confidence scores, so you can know impactful delivery dynamics before the quote, before the shipment, and certainly before the frustrating billing discrepancies resulting from accessorial-backward fees.

Benefits of Shiplify

99.5% Accuracy

Only one disputed accessorial notification per 1,000 returned, and a feedback loop to quickly fix the one.

100% Geospatial

Our database is built on a geospatial framework taking into account far more than just name and address. ​

Powered by AI

With billions of data points, our algorithms determine location attributes with unparalleled precision.

Ways You Can Gain Access to Shiplify

We offer multiple methods of accessing our LTL location data, so we’ll meet you where you are from a technology standpoint, even if you don’t have API capabilities. 

Location Lookup

Plug in an address. We’ll handle any variations or typos. Then we deliver you clear accessorial visibility to the specified location.

Quote API

Integrate Shiplify data into your quote flow. Provide us the signatory name with address for both shipper and consignee. Then we’ll deliver the attributes for both locations.

Shipment API

Provide us the signatory name with address for both shipper and consignee. Then we’ll deliver the attributes for both locations tied to an actual shipment’s id number.

Batch Process

Don’t have API capabilities? No problem. Send us a csv file of shipments and we’ll get you the same high quality attributes results in minutes.

LSP Integrations to Get the Most Out
of Shiplify

We have strategic partnerships through API connections with TMS providers and other supply chain technology vendors. Access Shiplify data through your provider or request a partnership to seamlessly connect to your existing processes.

Shiplify Technology Success Stories

Featured Technology Content


How Shiplify’s Approach to Data Responsibility is Revolutionizing Supply Chain Management 

A Message From the Offices of North Winship, President, Shiplify  In an era where data is king, the role of...

read more

Navigating Accessorial Fees in the LTL Industry: Understanding Shipping Costs

In the complicated ecosystem of Less-than-Truckload (LTL) shipping, there's more to consider beyond just the weight and size of your...

read more