The term DataOps has become a powerhouse of data engineering operations in recent years. The framework collaborates with an approach that aims to enhance partnership amongst teams involved in data operations and analysis, including data engineers, analysts, and scientists.
The idea is to create an efficient data-driven environment by automating all the time-consuming procedures, minimizing error logs, and speeding up the data transmission, allowing companies to get better insights for informed decision-making.
This article comprehends questions like,
What is DataOps? What are DataOps best practices, and how does Spiral Mantra use them?
What is DataOps?
The DataOps framework is an assortment of methods, tools, and advanced techniques used to foster businesses’ accuracy, speed, and reliability on their optimum data management and analytics operations. The primary function of DataOps is to break down silos, boost collaboration, and streamline an adhesive workflow for data teams.
Automation is a vital element in the DataOps architecture, as it allows teams to augment their analytics process while ensuring to reduce the risk of frequent human error. Spiral Mantra, has best
devops consulting services in USA, concentrates on producing higher-value results and strategies to drive corporate success.
DataOps Vs DevOps
Even though both the terms sound similar, they differ significantly in many ways.
DevOps follows a method that brings together the processes of operations and development teams, resulting in an improved software development cycle with efficient delivery. In contrast, DataOps is majorly focused on breaking the data silos between producers and consumers, resulting in higher data value.
DataOps Best Practices Followed By Spiral Mantra Team
#1 Define Clear Objectives and Metrics
Having a clear understanding of your business objectives, metrics, and goals is a critical process that needs to be followed for efficacious DataOps initiatives. Other than this, identifying key performance indicators (KPIs) and other metrics helps you to access the overall success of your DataOps implementation.
#2 Automate and Optimize Your Existing Data Pipelines
Automation is the core of DataOps, as it aims to reduce manual errors by speeding up the data delivery ratio. Being the
best devops consulting company, we work on technologies like Kubernetes, CI CD pipelines, and Apache Airflow, aiming to automate data intake by transforming and loading it for further analysis.
#3 Establish the Grounds of Data Quality and Integrity
Data quality is an integral part of DataOps, allowing businesses to implement best-quality tests at every potential level of the data pipeline. This helps to detect all the abnormalities and bugs at an early stage of the project. Plus, it also helps to decode data accuracy by utilizing practices like schema validation, data profiling, and outlier identification techniques.
#4 Implement Data Version Control
Implement and utilize version control systems like LakeFS to monitor and keep an eye on data pipelines and code changes. This process proffers a history of changes while helping team members to collaborate efficiently with teams across data management programs.
#5 Prioritize Data Security
Data security and compliance are non-negotiable among DataOps best practices; henceforth, implementing strong security measures is needed. This involves innumerable aspects of the process, like access controls, encryption, and data masking.
Conclusion
DataOps is a powerful archetype useful to change how businesses manage and use their data. Spiral Mantra, a trusted
USA big data and analytics company, implements these best practices can streamline their data operations, increase data quality, and make faster and more informed decisions.
Remember that DataOps best practices should be customized to meet your organization’s specific needs and goals.