
Case Study: Data Dashboards
Spin Scooters
I worked with Spin scooters to create a 0 to 1 data dashboard for FleetOps and accessibility advocates.
Overview
Spin is an electric scooter company based in San Francisco. As we rapidly expanded within the US, we started to receive pushback from local government and citizens with concerns on the negative impact on mobility within cities if Spin scooters aren't managed properly. To solve this, Spin leverages Fleet Operations employees that help manage inventory, charge and repair scooters, and make sure scooters aren't negatively impacting walkways and other parts of the city. In order to scale this, we needed to design a product for FleetOps specialists to track their tasks and manage their day.
Process
Our process started with research to understand how FleetOps currently work and opportunities for product features, synthesis to make sense of our research and understand our user, ideation and design, and then delivering final product designs.
Framing the Problem
When thinking about local community concerns, our data and policy team surfaced that many of the concerns were focused on Spin's effect accessibility within cities. At the same time, we were tasked with creating a product with core business value for Spin by empowering FleetOps (gig workers) to best do their jobs. Since these are critical stakeholders to Spin, we wanted to create a better way for these stakeholders to leverage data for their jobs in an effort to better work with community partners. Our challenge was to design a new data dashboard that helped two unique stakeholders make sense of data in a similar fashion.
Research
Semi-structured Interviews & Contextual Inquiries


Data-driven Design

Synthesizing with Affinity Diagrams

Making Sense of Research
One of the challenges of our project was trying to build one dashboard product for two relatively distinct users (accessibility policy advocates and FleetOps gig workers), so we used value flow mapping to synthesize our learnings into a comprehensive flow and identify opportunities for a better user experience. This was also a great tool for working across Spin to gain alignment on where to focus before jumping into design explorations.

We modeled the current state, highlighting interactions between the personas and their environment along with Spin scooters and users. This process allowed us to identify the problems that our personas were likely to face in their daily lives. These ranged from scooters parked on the sidewalk, not allowing wheelchair users to safely pass, to it
being difficult for broken scooters to be located, causing more accidents.
With information gathered from the current state model, we were able to add interception points to the model where we anticipated our dashboard to facilitate the personas. Examples include providing FleetOps with a map that calculates the best routes to get to multiple scooter locations and data for accessibility advocates that allows them to know if a scooter is parked on the sidewalk near her in real time.
Design Explorations
Sketches
Mid-Fidelity Prototyping

Spin Dashboard Product
For the final product, I further considered how I could minimize the amount of cognitive load that would be placed on users as they leverage our tool. Instead of having them input queries according to a certain format and scope, we could allow users to search based on keywords or natural sentences.
Based on previous iterations of feedback, I also tried to be more intentional with color choices—changing the colors of the sidebar as well as indicators in the map view to not only provide better contrast and legibility, but also align with users’ mental models. For example, I changed the color of the zones that need scooters from blue to yellow, since the latter seems to entail a stronger sense of warning and urgency.
