hero background shape
CUSTOMER STORY

GHD + Alteryx

hero background gradient

Searching for a solution

The state government in Melbourne, Australia contracted the machine learning (ML) team at GHD, a global consulting company, to improve container supply chain processes through the collection and understanding of large datasets from industry, government, and transport software service providers.

The team, led by Nikita Atkins, Data Science Global Leader, GHD, used Alteryx to narrow 100 million shipping container and commodity records down to 1.9 million with a 99.9965% match accuracy rate.

Additionally, using Intelligence Suite, they were able to forecast and build predictive models to better estimate where containers were going, what commodities they held, capacity level of each container, and how long it would take for them to return from their destination to the origination point to better assess government spending and infrastructure investment.

Challenge

Every five years, the Port of Melbourne (PoM) in Australia is required to track all shipping containers that enter and exit. Understanding where freight moves is critical to ensuring the correct infrastructure, industrial land, planning controls, and policy settings are in place to support efficient supply chains.

The PoM was utilizing more than 57 independent groups to track the data in over 60 different formats. This process typically takes hundreds of hours of manual time and resources, and historically, the forecasting rate fell below 30%. Additionally, they were unable to complete a successful match analysis – until recently.

Solution

In 2019, Nikita Atkins and the machine learning team at GHD were able to develop a predictive modeling process and champion the commodities and container survey. They used Alteryx to gather data from September to October 2019 (over 250,000 container trips) standardize it, combine it, and de-dupe 100 million records provided and include over 200 business rules before making the data consumable. They were able to compare their final data set of 1.9 million records to the PoM and found that their data cleansing with Alteryx yielded a match of 99.9965%.

They used Alteryx Intelligence Suite to build 10 predictive models and compare their effectiveness. They narrowed their selection and were able to estimate a container’s location — including its origination and destination point, the commodities held, the capacity level of each container, and provide insight into what a container’s return trip ending point and timeline was.

After completing this process, Nikita’s team gathered the exact data from the PoM and compared it to what their Alteryx Intelligence Suite model had forecasted. The results showed their work had a 77% accuracy rate in tracking the trip cycle of commodities and shipping containers. This was undoubtably the highest predictive yield PoM had ever expected.

Results/Business Impact

The insights GHD developed with Alteryx Intelligence Suite gives the local and state government an understanding of where containers are going and where commodities are being purchased to better inform decisions in transport infrastructure and network planning. In turn, this enables the delivery of a faster, focused, and more productive supply chain.

 

Recommended Resources

 
Use Case
Demand Forecasting
Empower finance teams to predict demand shifts faster and more accurately with explainable AI, automated workflows, and unified data across ERP, CRM, and planning systems.
  • Analytics Automation
  • Data Prep and Analytics
  • Data Science and Machine Learning
Learn More
 
Use Case
Fixed Asset Depreciation Automation
Tax teams replace spreadsheet-heavy depreciation work with governed, AI-supported automation that improves accuracy, speeds close cycles, and strengthens planning confidence.
  • Analytics Automation
  • Data Prep and Analytics
  • Data Science and Machine Learning
Learn More
 
Use Case
Transfer Pricing Automation
Automate and standardize transfer pricing workflows with governed data, repeatable logic, and clear audit documentation using Alteryx One.
  • Analytics Automation
  • Data Prep and Analytics
  • Data Science and Machine Learning
Learn More
 
Use Case
Dynamic Price Scenario Modeling
Finance teams simulate, compare, and update pricing strategies quickly by unifying cost, demand, and market inputs in one place. Automated workflows and AI-supported analysis help analysts refresh assumptions, run scenarios, and support timely pricing recommendations.
  • Analytics Automation
  • Data Prep and Analytics
  • Data Science and Machine Learning
Learn More
 
Use Case
Customer Segmentation
Unify CRM, donation, and marketing data into governed, AI-ready segments. Automate modeling, ensure compliance, and activate insights across campaigns to boost ROI and retention.
  • Data Prep and Analytics
  • Data Science and Machine Learning
  • Generative AI
Learn More
 
Use Case
Supply Chain Cost Optimization
Lower cost-to-serve by aligning supply chain planning with financial targets. Alteryx One combines operational data, forecast inputs, and cost models in one governed environment, enabling teams to build scenarios, test constraints, and compare outcomes to cut spend and increase transparency.
  • Analytics Automation
  • Data Prep and Analytics
  • Data Science and Machine Learning
Learn More