Quaxar: Cyber Threat Intelligence Platform

Services

Web Design /

User Guideline

Client

S2W.Inc

Date

March 2025

Project Overview

Quaxar is a CTI platform that helps security teams detect hidden threats, prioritize vulnerabilities, and respond faster through an asset-centric approach.
With a redesigned ASM interface, advanced search flows, and standardized operator guides, Quaxar delivers a smarter, more efficient security workflow.

Project Highlights

Goal

To enable security teams to detect exposed assets in real time, identify vulnerabilities quickly, and proactively respond to potential threats by improving the information architecture and user flow of the ASM (Attack Surface Management) service.


Outcome

Due to the dynamic creation and continuous changes of exposed assets such as domains, IPs, and cloud resources, the previous ASM screen often failed to highlight core information, reducing efficiency in analysis and response.


Challenge

Enhanced visibility and detection accuracy of assets, enabling faster identification of specific assets through expanded search capabilities and reinforcing the security team’s threat response capabilities.

Project Timeline

Explore Challenge

In the early stage, we applied the How Might We method to reframe problems from a fresh perspective, focusing on the underlying user needs. By generating diverse questions, we were able to uncover multiple potential solutions and broaden the scope of innovation.

Key Insight

In the next phase, we conducted a focus group interview (FGI) with nine members from different departments. Through this collaborative session, we transformed ambiguous problems into clear and actionable design requirements.

UI Wireframe

Redesigned the ASM navigation to improve visibility and hierarchy, enabling analysts to grasp asset status at a glance, and developed an advanced search wireflow that supports incremental filtering and live feedback based on real analyst workflows, reducing friction and enhancing decision-making in large-scale asset environments.

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