Back To Projects
Back To Projects

UI optimization of web and mobile screens for a design-to-code startup

SUPA leveraged an elite team of 12 UI experts to deliver a highly complex UI optimization curation project.

Problem statement

A UI startup Client required a high quality of curation of optimized, responsive web and mobile screens to train their design-to-code design.

SOLUTION

SUPA curated a team of 12 elite UI designers to curate the highest quality wireframes.

RESULT

The team successfully completed the curation dataset with the ability to scale curation to 4,000 designs per month.

Overview

The Problem

The Client is a UI startup looking to build an ML model that can accurately convert Figma wireframes into editable code. To achieve this, the client requires a highly accurate training dataset consisting of optimised web and mobile screens.

These requirements include curating:

  • Optimized wireframes adhering to industry best practices
  • Fully responsive designs tested across a range of device widths
  • Prototypes with scroll actions and interactions, where applicable

The Solution

Given the complexity of the task and the open-ended nature of the data curation task, SUPA assembled a small team of 12 elite designers to control the quality of every curated output.

SUPA recruited and nurtured these experts by:

  • Running customized assessments to determine the suitability of each candidate
  • Identifying highly adaptable experts, in addition to possessing strong UI skills
  • Rewarding high-performing members that demonstrated proactiveness and great teamwork throughout the project, in addition to successful data curation

The SUPA team also conducted weekly calls to ensure all client feedback was captured and implemented promptly, scaling quality over time. 

The Result

The SUPA team successfully assessed, onboarded, and trained the curation team within 10 days, with an additional 300 experts waitlisted to meet future demand.

The team successfully delivered the wireframes, meeting client requirements with capabilities to scale to up to 4,000 highly accurate designs per month. 

Why SUPA?

As model builders, SUPA understands the impact of data quality on AI model output. Our data curation experts deliver the highest quality data to meet all your model training requirements. 

Other Projects

Discover the work we do

View All
View All

Advancing AI Waste Intelligence

SUPA's labeling infrastructure helped Greyparrot.ai, a global leader in AI waste intelligence, expand to 89 categories

problem
Greyparrot undertook the task of expanding its waste recognition library to encompass 89 categories, enabling a finer analysis of various waste streams.
solution
SUPA's technological infrastructure optimized the data labeling pipeline, slashing the startup time from 2-3 weeks to a mere 24 hours, all while maintaining stringent data quality standards.
result
Drawing upon SUPA's proficiency in data annotation, Greyparrot extended its waste recognition library from 49 to 89 categories; and it doesn’t stop there.
89 classes
Waste Intelligence
24-hour start-up time
Advancing AI Waste Intelligence

Enhancing AR footwear try-on precision through high-quality segmentation

>99% accurate semantic segmentation data for ZERO10’s AR footwear try-on, enabling a precise, immersive user experience with rapid 5-week turnaround

problem
ZERO10 required enhanced precision in their footwear try-on models to deliver a more immersive and accurate AR user experience
solution
SUPA deployed its expert annotators, skilled in semantic segmentation, alongside its advanced labeling infrastructure, ensuring high-quality, scalable data annotation
result
ZERO10 successfully launched their advanced AR footwear try-on feature, powered by SUPA’s rapid delivery of segmentation datasets with >99% accuracy, enabling superior model performance and user experience
Enhancing AR footwear try-on precision through high-quality segmentation