At Bugcrowd, our mission is to help customers reduce cybersecurity risk and improve security ROI by bringing the collective power of the global security research community (“the crowd”) to common security use cases like Pen Testing, Attack Surface Management, Vulnerability Disclosure, and Managed Bug Bounty. At the same time, we’re committed to giving the researcher/white-hat hacker community more lucrative (and interesting!) options for using their skills than any other crowdsourced security company.
We don’t take that mission lightly. It requires a SaaS-based, crowdsourcing-powered cybersecurity platform that encompasses:
In this post, I’ll explain how our platform investments in a vast security knowledge graph are paying off for customers today, and offer a brief preview of how we expect them to pay off in the future.
Like data science, cybersecurity is a people challenge as well as a technology one. Historically, the only solution was to hire in-house security experts, which is not only expensive but also very difficult to do, given our worldwide talent shortage–a gap of at least 3 million, according to the 2020 Cybersecurity Workforce Study from (ISC)².
In the last several years, many cybersecurity providers have responded to that pain with one of two types of offerings:
At Bugcrowd, however, we’ve invented a better way to address the problem.
The genius of the crowdsourced security model is that it taps into a global community of human talent to solve the constrained resources problem–but it’s only efficient if precisely the right trusted researchers are matched and activated for your goals, environment, and use cases at the right time, and that requires a deeply data-driven approach that works at scale.
Because a modern, scientific approach to cybersecurity is critical for customers, we’ve made it a key differentiating feature of the Bugcrowd SaaS Platform. Thanks to a massive graph of researcher, vulnerability, interaction, asset, and remediation data developed over a decade of experience and thousands of customer programs, the platform is equipped to add contextual intelligence to every use case, task, and workflow.
The first example of that capability is a proprietary ML recommendation engine called CrowdMatchTM. Instead of a shallow or narrow approach, CrowdMatch enables real-time auto-curation of crowds based on our rich knowledge graph to find the best possible match between specific customer needs, environment, and use cases on one hand, and researcher skill sets, interests, and availability on the other (hundreds of dimensions). Furthermore, because researchers are more motivated by projects that are aligned to their interests, CrowdMatch helps them be more active and productive. Read about best practices that help researchers get the most out of CrowdMatch in this post.
CrowdMatch does real-time auto-curation of crowds to enable the best possible match between specific customer needs and researcher profiles
That leads to much more thorough review (and thus higher-quality/more accepted submissions) than you would get from other providers, and, combined with the Bugcrowd Platform’s integrated Validation & Triage services, faster discovery and remediation of critical vulnerabilities. Along with other aspects of the platform, it all translates into a much better understanding of risk and better ROI–which, for Pen Testing as an example, can be 491% over three years per IDC.
CrowdMatch is the first milestone in a long roadmap of investment in our knowledge graph that will power more contextual intelligence in the Bugcrowd Platform. For example, we foresee the ability to provide automated guidance based on benchmarking, key metrics, and vulnerability trends, as well as contextual alerts and more detailed remediation advice. The journey has only just begun!