Systems | Development | Analytics | API | Testing

%term

Fraud Detection using Deep Learning

One of the many areas where machine learning has made a large difference for enterprise business is in the ability to make accurate predictions in the realm of fraud detection. Knowing that a transaction is fraudulent is a critical requirement for financial services companies, but knowing that a transaction that was flagged by a rules-based system as fraudulent is a valid transaction, can be equally important.

Microservices vs API

In this article, we’ll cover the key differences between APIs and microservices as answered by our contributors consisting of senior decision-makers and CTOs from technology companies around the world. One of the most popular ways to consume data from a web service is through a web application programming interface (API). By interface, we are referring to an agreement, or schema, that anyone using this API must abide by.

What your test management platform is missing (plus how to fix it)

Your test management platform allows you to create test cases and assign them to testers. It makes it easy to analyze your results. But it doesn’t help you manage all of your testing resources in one place, and that’s a huge problem. In today’s world of online, remote work and the rise of the gig economy, distributed testing is not only widespread—but it also provides countless benefits to product and engineering teams (including faster releases).

The benefits of collective testing

Unless someone at your organization has built internal QA software, your in-house testers and your external testing resources are not testing under the same platform. We know, because no collective testing software exists, until now that is. We’ve enabled groundbreaking collective testing capabilities under our test management platform to keep your testing under one roof. But what does this really mean? And why should you—as a QA manager, dev team leader, or DevOps manager—care?

Kubeflow: Simplified, Extended and Operationalized

The success and growth of companies can be determined by the technologies they rely on in their tech stack. To deploy AI enabled applications to production, companies have discovered that they’ll need an army of developers, data engineers, DevOps practitioners and data scientists to manage Kubeflow — but do they really? Much of the complexity involved in delivering data intensive products to production comes from the workflow between different organizational and technology silos.

Combating Fraud in Insurance with Data

Well, it is International Fraud Awareness Week, focused on promoting fraud prevention and education. A fantastic initiative! Maybe I am naïve but I feel a bit sad that there is a need for “fraud week”. The insurance industry has a long and intimate relationship with fraud in many different ways. Insurance fraud can take place at a process or business function level, most notably in claims or underwriting.

The Developer's Guide to Contextual Analytics

As a specialized and mature form of embedded analytics, contextual analytics is a game-changer if you're a software vendor looking to further augment your customers’ user experience, without requiring developers to completely reengineer your offering. Contextual analytics blends the data your users need for decision-making right at the point of their daily work, directly inside the interface and transaction flow of your software.

Performance Regression Testing

Regression Testing, as all Quality Assurance professionals know, is ensuring that previously developed and tested software continues to operate after a change. Performance Regression being a subset of regression testing as a discipline is therefore ensuring that previously developed and tested continues to meet its performance criteria after a change.