Provide visibility
Provide simulated data using AI of stock levels on board. Giving users a holistic view of vessel needs.
AI Design, Data, Research, Beta Product launch
Aug 2018 – March 2020
Provide visibility
Provide simulated data using AI of stock levels on board. Giving users a holistic view of vessel needs.
AI Predictions
Tools to help users forecast and plan purchases, especially for vessels with unpredictable schedules.
Insights and feedback
Using data to understand purchasing patterns and provide insights to be more efficient.
I conducted research to understand current procurement workflows, how the AI order prompt solved pains, and areas where we could improve our product.
The main issue is a lack of visibility of stock for both Shell and clients. This causes a lot of delays within the process. Procurement operative relies on staff onboard ships to update them on stock reserves, and ask for orders, resulting in reactive workflows.
There is also no live data of oil stock at ports, orders have to be checked manually before being accepted for clients to know if their order will be fulfilled.
Our users
Ideation Workshops
A vessel receives an automate Order Suggestion when there is oil that has low stock and is approaching a good port to lift. This was calculated based on previous purchase volumes, nautical miles travelled, and type of oil.
The goal of the ML engines is to answer:
The user then able to review and edit the products and quantities, then submit an order quote. The user then uses their normal channels to place and confirm the order.
By having access to this data, companies can work towards more efficient lifting behaviour:
This was not just a result of surfacing data, but also transforming the company working processed for Procurement operatives to take the lead in ensuring vessels are well stocked, instead of reacting to order requirements from the vessels. This also resulted in elevating work load for workers on the vessels.