Challenge: A mature U.S. 3PL operator was losing money across transportation and warehouse operations.
Driver paperwork and Excel-based invoicing failed to capture all billable activities. Operational data was isolated across WMS, telematics, and CRM systems. There was no real-time visibility into margins by customer, route, or service.
In a thin-margin industry, fragmented systems were turning operational complexity into financial loss.
Operational complexity increased dramatically:
The consequences were severe:
In logistics, margins are thin. Small inaccuracies compound into significant financial impact.
We designed and implemented a logistics data analytics architecture that connected operations, finance, sales, and warehouse intelligence into a unified ecosystem.
Here is how we did it.
From WMS Transactions to Financial Cube Modeling
Finance teams were unable to properly analyze margin by:
We built an automated pipeline that:
This enabled:
For the first time, finance could see operational reality reflected in financial planning without having to manually export Excel files and upload them to Workday.
Eliminating Revenue Leakage
Manual invoicing in logistics is dangerous. Driver wait times, detention charges, load handling, kilometers driven, and storage often get partially billed or not billed at all. The client previously relied on Excel-based processes.
We developed a custom invoicing engine that:
This ensured:
In industries where margins are often 5–10%, invoice precision is critical.
Synapse → Deposco Transition Without Losing Visibility
The company transitioned warehouse management systems from Synapse to Deposco. Historical data risked being siloed permanently.
We:
The result:
Leadership could analyze multi-year warehouse performance despite platform migration. No data loss. No reporting discontinuity.
Inventory Intelligence Beyond Storage
Warehouse profitability depends on understanding:
We implemented ABC velocity segmentation:
This moved warehouse reporting from reactive to strategic.
Reducing Dependency & Increasing Control
Sales pipeline visibility was disconnected from operations. The company relied on Fivetran to sync HubSpot data, which:
We designed a custom data pipeline that:
This enabled:
And reduced reliance on generic connectors.
Operational Intelligence Instead of Spreadsheet Guesswork
After implementation:
The company moved from fragmented reporting to structured logistics data analytics infrastructure. Instead of reacting to financial surprises at month-end, leadership now monitors operational performance continuously.
Snowflake, Python, Power BI, Workday Adaptive Planning, HubSpot API, Samsara API, Custom ETL Pipelines
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