Building a Data-Driven Culture with DataOps and Tessell

Bakul Banthia
Tessell DBaaS
5 min read3 days ago

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Data and analytics leaders face significant challenges in streamlining data operations, ensuring agile practices, and delivering trusted data. The goal is to connect data initiatives with tangible business outcomes. This is where DataOps becomes crucial. DataOps is an emerging practice that enhances communication, integration, automation, and data flow operations between data engineers and data consumers. This blog will delve into the importance of DataOps and how Tessell can play a pivotal role in implementing effective DataOps practices.

What Business Challenges Does DataOps Address?

DataOps is essential for addressing technical and organizational impediments that slow down data delivery across organizations. With businesses undergoing rapid change, there’s an increasing demand for trusted, decision-quality data. Enterprises have invested in multiple data consumer personas, such as line-of-business data leaders, data domain experts, and data scientists, who drive the need for rapid, reliable data access. DataOps practices help overcome these challenges by eliminating inefficiencies and misalignments between data management and consumption use cases. This streamlines data delivery processes and operationalizes data workloads, ensuring that data is delivered quickly and efficiently.

Why Is DataOps Important?

1. Improving Organizational Speed: DataOps enhances the speed of delivering trusted data, allowing organizations to respond swiftly to business needs. Faster data delivery translates to quicker insights and more agile decision-making processes.

2. Reducing Excess Efforts: By focusing on value flows connected to business impact, DataOps removes unnecessary efforts in data delivery. This allows teams to concentrate on tasks that drive business value rather than getting bogged down by redundant processes.

3. Fostering Collaboration: DataOps promotes cross-functional collaboration among data, business, governance, and technical personas. This collaboration ensures that all stakeholders are aligned and working towards common goals, enhancing overall efficiency.

4. Managing Interdependencies: It helps in managing data operation interdependencies across data pipelines, supporting various business processes. Proper management of these interdependencies ensures seamless data flow and reduces the risk of bottlenecks.

5. Increasing Reusability: Through automation and standardization, DataOps increases the reusability of data engineering products. Reusable data components reduce development time and costs, making the data management process more efficient.

6. Ensuring Accountability: DataOps ensures accountability of data-delivery commitments, meeting service-level agreements. Clear accountability structures help maintain high standards of data quality and reliability.

Who Benefits From DataOps?

Organizations: They benefit from increased data literacy, productivity gains, enhanced data governance, self-service enablement, and a collaborative culture. These advantages lead to faster and more informed decision-making, ultimately driving business success.

Data Engineers: They experience increased productivity, robust change management, and improved data delivery service levels such as quality, lineage, and security. Data engineers can focus on innovation rather than troubleshooting, leading to higher job satisfaction and better outcomes.

Data Consumers: They enjoy reduced cycle times for accessing ready-to-use data and improved data trust to meet business goals. Reliable and timely data access empowers data consumers to make data-driven decisions more effectively.

How to Introduce DataOps Practices?

Introducing DataOps involves overcoming challenges caused by silos and delays in data delivery. Organizations can achieve operational excellence through agile delivery practices, monitored change management of data, and implementing DataOps tools and practices tied to process and culture changes. This involves bringing together data managers and data consumers in cross-functional teams to ensure seamless data delivery.

1. Agile Delivery Practices: Adopt agile methodologies to enhance the flexibility and responsiveness of data operations.

2. Monitored Change Management: Implement continuous monitoring of data quality, skews, and freshness to ensure reliable data delivery.

3. Cross-functional Teams: Create teams that include data managers (data engineers, data integration developers, data architects, and data stewards) and data consumers (analysts, domain experts, casual users, and data scientists) to foster collaboration and efficiency.

Recommendations for Data and Analytics Leaders

1. Target Struggling Projects: Focus on projects that lack collaboration, suffer from data pipeline failures, or have overburdened resources. Addressing these pain points can demonstrate the value of DataOps and build momentum for broader adoption.

2. Track Metrics: Measure key performance indicators such as time-to-deploy changes, code quality, data quality, failure rates in production, cost efficiencies, and business impact. Use these metrics to continuously improve data operations and demonstrate ROI.

3. Revisit Data Operations Ownership: Focus on predictability and ensure that DataOps teams own the full data delivery life cycle. Clear ownership and accountability enhance the reliability and quality of data delivery.

4. Leverage DevOps Practices: Collaborate with application leaders who have successfully applied DevOps practices to jump-start foundational activities. This includes setting up version control, building automated regression tests, and establishing release pipelines.

How Tessell Can Help

Tessell is at the forefront of enabling DataOps practices, providing tools and solutions that address the friction points in data operations. Here’s how Tessell can assist:

End-to-End Data Management: Tessell offers comprehensive tools for managing data from inception to production, ensuring seamless data flows. These tools streamline the entire data lifecycle, reducing complexity and improving efficiency.

Automation and Standardization: Tessell’s solutions automate repetitive tasks and standardize processes, increasing the reusability of data products. Automation reduces manual errors and accelerates data delivery, while standardization ensures consistency and quality.

Enhanced Collaboration: Tessell facilitates cross-functional collaboration, ensuring that data engineers and consumers work together effectively. Collaborative tools and workflows enable teams to align on goals and share insights, driving better outcomes.

Robust Monitoring and Analytics: With Tessell, organizations can monitor data pipelines, track performance metrics, and gain insights to improve data operations continuously. Real-time monitoring and analytics provide visibility into data processes, helping teams identify and resolve issues promptly.

Agile Practices: Tessell supports agile methodologies, enabling rapid adaptation to changing business needs and improving data delivery speed. Agile tools and frameworks help teams iterate quickly and respond to feedback, ensuring that data solutions meet evolving requirements.

In conclusion, DataOps is a critical practice for modern organizations looking to become data-driven and achieve operational excellence in data delivery. Tessell’s suite of tools and solutions makes it an invaluable partner in implementing effective DataOps practices, driving business outcomes, and fostering a collaborative and efficient data culture. By embracing DataOps with the support of Tessell, organizations can overcome data delivery challenges, enhance data quality and reliability, and unlock the full potential of their data assets.

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