Systems | Development | Analytics | API | Testing

%term

Fivetran vs Stitch Comparison

Fivetran or Stitch for automated ELT? Learn the pros & cons of each platform. October 5, 2020 We commonly hear from our customers that when they initially evaluated cloud data integration solutions, both Fivetran and Stitch came up in their cursory searches. With the Stitch's announcement of their free plan deprecation, we’ve received an influx of questions on how the two solutions differ. Below, we highlight the differences in the approaches to handling automated ELT as well as pricing.

Oversee code coverage reports with the Codecov Verified Step

Our team at Codecov is happy to announce that we built an official Verified Step for Bitrise. Codecov began as a project to solve one developer’s personal frustration of not being able to get a quick look at what code is tested. That was the case with Bitrise too, starting out as a tool to solve the problem of our founders. With shared values and plenty of mutual customers, we’re excited to share this official integration and help out mobile developers all around the world.

On the importance of load testing Kafka

Socrates preached, “To know thyself is the beginning of wisdom.” This ancient Greek anecdote applies to your modern Apache Kafka project: developers, go forth and load test your real-time application to understand the capacity and limitations of your project before deployment. Failure to do so will cost you time and money (e.g. Robinhood’s outage on a historic trading day). Load testing your real-time applications has three main objectives.

How Serverless is an emerging Software Architecture?

Software development has greatly evolved over the years. Serverless is an emerging software architecture that could resolve issues when it comes to developing software solutions. As software developers, you’re tasked with server setup, installing the software, operating systems requirements, server management and maintenance, designing an application with high fault tolerance and availability, as well as managing load balance and more.

Cloudera Supercharges the Enterprise Data Cloud with NVIDIA

Cloudera Data Platform Powered by NVIDIA RAPIDS Software Aims to Dramatically Increase Performance of the Data Lifecycle Across Public and Private Clouds Cloudera announced today a new collaboration with NVIDIA that will help Cloudera customers accelerate data engineering, analytics, machine learning and deep learning performance with the power of NVIDIA GPU computing across public and private clouds.

Tracking your team's testing in Jira

With exponential growth in remote working, teams are struggling with collaboration and maintaining visibility. Sound familiar? In this blog we’ll explore how to keep track of your testing activity and team’s progress in Jira, and how TM4J – Test Management for Jira can help identify common problem areas so proper measures can be taken.

7 Rules for Bulletproof, Reproducible Machine Learning R&D

So, if you’re a nose-to-the-keyboard developer, there’s ample probability that this analogy is outside your comfort zone … bear with me. Imagine two Olympics-level figure skaters working together on the ice, day in and day out, to develop and perfect a medal-winning performance. Each has his or her role, and they work in sync to merge their actions and fine-tune the results.

Governing Cloud Data Stores

This is the second post in a series about data modeling and data governance in the cloud from Snowflake’s partners at erwin. See the first post here. As you move data from legacy systems to a cloud data platform, you need to ensure the quality and overall governance of that data. Until recently, data governance was primarily an IT role that involved cataloging data elements to support search and discovery.

Why Valuable Data Needs To Be Identifiable to The Entire Business

In recent years, organizations have been making massive investments in data analytics to transform their growing volume of data into actionable insights to inform decision-making. However, the pursuit of becoming data-driven has uncovered challenges earlier in the data pipeline that are preventing companies from reaping all the benefits from their data.