Systems | Development | Analytics | API | Testing

Talend

The ROI of Being Data-Driven

I hope you have had a chance to read my earlier blog about the steps that an organization can take to become data-driven. The more I thought about that particular blog, the more I realized that it does make a very significant presumption: that companies should become data-driven. Which begs the question - why would a company want to become data-driven?

Open Source: 20 years of Innovation and the Best is Yet to Come

In 1998, Netscape decided to release their source code in an effort to attract new users to their product and new developers who could easily integrate applications with the browser. At the same time, there seemed to be a groundswell around a culture of open and collaborative development, with legacy software companies beginning to acknowledge Linux and open source software (OSS) as a legitimate option for enterprise solutions.

How to Migrate Your Data From On-premise to the Cloud: Amazon S3

2018 is the year of the cloud, and as more and more companies move to cloud technologies it is important to realize how your business can best utilize the cloud. One of the biggest issues enterprises are having today, is moving their data from their on-premise databases to their cloud data storage. This can be a long, and tedious process if you don’t have the correct tools. Luckily, Talend is here to help!

Building the Best Enterprise Data Strategy in 2018: How Our Customers Are Getting There

It’s an exciting time to be working in the Cloud, Big Data, and Machine Learning industry, but it’s even more exciting to hear how Talend customers are building their data strategy to drive business results. Every year we invite representatives from some of our most strategic customers to join us for two days to share their experiences with Talend’s products and provide input into our roadmap.

Digital transformation in the public sector: balancing the risks with data-driven cyber security

The 35 million people who saw Skyfall back in 2012 were in for a treat – thrills, tension, and a spectacular hacking attempt against the UK public sector. While many have picked up on the evident flaws in the Bond version of MI6’s approach to cybersecurity, the film provokes an interesting reminder that in our rush to digitize public services, there is certainly more to be done in ensuring that these services are secure.

The Paradise Papers: How the Cloud Helped Expose the Hidden Wealth of the Global Elite

In early 2016, the International Consortium of Investigative Journalists (ICIJ) published the Panama Papers –one of the biggest tax-related data leaks in recent history involving 2.6 Terabytes (TBs) of information. It exposed the widespread use of offshore tax havens and shell companies by thousands of wealthy individuals and political officials, including the British and Icelandic Prime Ministers.

How to Structure Your Business to Make Better Use of Data

A few years ago, Starbucks’ director of analytics and business intelligence, Joe LaCugna, said the Seattle coffee giant once struggled to make sense of the data pouring in from its loyalty card holders, which at the time was over 13 million and comprise 36 percent of all Starbucks’ transactions.

Legacy Versus Next-Generation - How Open Source is Driving the Big Data Market

When it comes to solutions for the big data sector, there is a clear split between the legacy and next-generation approaches to software development. Legacy vendors in this space generally have their own large internal development organizations, dedicated to building proprietary, bespoke software. It’s an approach that has worked well over the years.

Talend Step-by-Step: Continuous Data Matching & Machine Learning with Microsoft Azure

Today, almost everyone has big data, machine learning and cloud at the top of their IT “to-do” list. The importance of these technologies can’t be overemphasized as all three are opening up innovation, uncovering opportunities and optimizing businesses. Machine learning isn’t a brand new concept, simple machine learning algorithms actually date back to the 1950s, though today it’s subject to large-scale data sets and applications.