Systems | Development | Analytics | API | Testing

3-Minute Recap: Unlocking the Value of Cloud Data and Analytics

DBTA recently hosted a roundtable webinar with four industry experts on “Unlocking the Value of Cloud Data and Analytics.” Moderated by Stephen Faig, Research Director, Unisphere Research and DBTA, the webinar featured presentations from Progress, Ahana, Reltio, and Unravel. You can see the full 1-hour webinar “Unlocking the Value of Cloud Data and Analytics” below. Here’s a quick recap of what each presentation covered.

Get Ready for the Next Generation of DataOps Observability

I was chatting with Sanjeev Mohan, Principal and Founder of SanjMo Consulting and former Research Vice President at Gartner, about how the emergence of DataOps is changing people’s idea of what “data observability” means. Not in any semantic sense or a definitional war of words, but in terms of what data teams need to stay on top of an increasingly complex modern data stack.

Ep 59: New Zealand's Crown Research Institute CDAO, Jan Sheppard on Treating Data as a Treasure

Treating data as a treasure is a foundational principle for Jan Sheppard, the Chief Data and Analytics officer at New Zealand’s Crown Research Institute of Environmental Science and Research (ESR.) This agency leads ongoing research in public health, environmental health, and forensics for the country of New Zealand. Like many other CDAOs, her role is relatively new. But the unique values she applies to data can be traced back many hundreds of years to the indigenous Maori people of her country. Through her work, Jan recognizes the profound impact data can have on people and their environments for generations to come.

Integration testing made easy with Oleg Šelajev | Kongcast Episode 21

In this episode of Kongcast, @Viktor Gamov , a principal developer advocate at @Kong joined by @Oleg Šelajev , Head of DevRel at @AtomicJar to talk about testing complex infrastructures (data systems, microservices, messaging systems) using containers, and specifically open source library called Testcontainers.

What Challenges Are Hindering the Success of Your Data Lake Initiative?

Conventional databases are no longer the appropriate solution in a world where data volume is growing every second. Many modern businesses are adopting big data technologies like data lakes to counter data volume and velocity. Data lake infrastructures such as Apache Hadoop are designed to handle data in large capacities. These infrastructures offer benefits such as data replication for enhanced protection and multi-node computing for faster data processing.

7 Best Data Pipeline Tools 2022

The data pipeline is at the heart of your company’s operations. It allows you to take control of your raw data and use it to generate revenue-driving insights. However, managing all the different types of data pipeline operations (data extractions, transformations, loading into databases, orchestration, monitoring, and more) can be a little daunting. Here, we present the 7 best data pipeline tools of 2022, with pros, cons, and who they are most suitable for. 1. Keboola 2. Stitch 3. Segment 4.

Introduction to Automated Data Analytics (With Examples)

Is repetitive and menial work impeding your data scientists, analysts, and engineers from delivering their best work? Consider automating your data analytics to free their hands from routine tasks so they can dedicate their time to doing more meaningful, creative work that requires human attention. In this blog we are going to talk about: Now let’s dive in.

Faster XML Parsing with Elixir

The XML data format has been around since 1996. It was first envisioned as a lingua franca (bridging language) for data to be serialized and read into completely disparate systems (with different programming languages, operating systems, and even hardware). It has been wildly successful in that goal. In software, though, 26 years is like a lifetime — and in hardware, it's an eternity.