{"id":33367,"date":"2021-04-09T19:40:14","date_gmt":"2021-04-09T17:40:14","guid":{"rendered":"https:\/\/www.intellias.com\/?p=33367"},"modified":"2024-08-19T22:57:05","modified_gmt":"2024-08-19T20:57:05","slug":"dataops-the-new-devops-for-a-data-driven-world","status":"publish","type":"blog","link":"https:\/\/intellias.com\/what-is-dataops\/","title":{"rendered":"DataOps Framework Implementation: The Ultimate Guide"},"content":{"rendered":"

DevOps Market size was valued at USD 7.01 Billion in 2021 and is projected to reach USD 51.18 Billion by 2030<\/b>, growing at a CAGR of 24.7% from 2023 to 2030<\/b>.<\/p>\n

A concept that came into being in 2014, DataOps has already become an integral part of technology implementation by the leaders who are open to the idea of making real-time, relevant data fuel their day-to-day decisions and drive operational efficiency to a new level. The following are the benefits they expect from investing in advanced analytics:<\/p>\n

\"DataOps<\/p>\n

Source: Business Wire<\/a><\/em><\/p>\n

Now that data operations are increasingly playing a leading role within the framework of digital transformation and building of data-driven business models, it is important to recognize the importance of DataOps as an overarching approach to handling data inside organizations and executing long-term data science and big data<\/a> strategies.<\/p>\n

As experts in DevOps<\/a>, we have expanded into DataOps to provide our clients with a more efficient way to manage their data. For example, Intellias recently helped a European FinTech business cut costs by 20%<\/a> by implementing the right data strategy and deploying a custom data management solution.<\/p>\n

Based on our experience, we\u2019ll explain everything you need to know about how to implement DataOps in your organization and what business challenges this step can solve.<\/p>\n

The difference between DataOps and DevOps<\/h2>\n

Let\u2019s start with definitions. As IBM puts it<\/a>, \u201cDataOps (data operations) refers to practices that bring speed and agility to end-to-end data pipelines process, from collection to delivery.\u201d There are many other definitions, but the general consensus is that DataOps is, well, DevOps for data, and the difference between DevOps and DataOps is very slight. In fact, they have a lot of shared goals and characteristics:<\/p>\n