Forrester: DataOps for the Intelligent Edge of Business – Further Reading Recommendations

In Forresterโ€™s recent report, DataOps for the Intelligent Edge of Business, Michele Goetz, et al., describe how data teams are facing challenges โ€œabout data to support the return on investment and experience.โ€ In fact, โ€œno amount of investment in new big data systems, cloud migration, modern data warehousing, or data integration will completely solve the problem. The approach to data is shifting toward DataOps.โ€

We agree and you can read more about why DataOps matters in our blog, For Data Team Success, What You Do is Less Important Than How You Do it.

Below we provide additional suggestions for further reading based on Forresterโ€™s principles for advancing DataOps.

Prioritize the quality and value of deliverablesโ€œTo ensure data products succeed, adopt a test-driven development protocol to create tests upfront and maintain repeatable unit tests that can also be markers for upstream policy compliance.โ€

Speed up delivery for shorter development cycles โ€œAgile development strategy shifts the goal post for deliverables from complete platform solutions to smaller products defined by quality and value-based milestones.โ€

Build for reuse, flexibility, and elasticity – Data โ€œproducts become building blocks for a variety of analytics and application solutions…โ€ย 

Govern data by designโ€œDataOps addresses data governance policies through the creation of rule-based services and processes.โ€

Executive through inclusive teams – โ€œDataOps works in synchronous and asynchronous fashion with DevOps, ModelOps, and data governance teams.โ€

Forrester concludes with recommendations for technology investment, in particular for lineage, impact, and root cause analysis.ย  โ€œVendors such as DataKitchen are addressing this problem with detailed views of data flows and error rates.โ€

For more information, you can read the complete Forrester report here.

Sign-Up for our Newsletter

Get the latest straight into your inbox

Open Source Data Observability Software

DataOps Observability: Monitor every Data Journey in an enterprise, from source to customer value, and find errors fast! [Open Source, Enterprise]

DataOps Data Quality TestGen: Simple, Fast Data Quality Test Generation and Execution. Trust, but verify your data! [Open Source, Enterprise]

DataOps Software

DataOps Automation: Orchestrate and automate your data toolchain to deliver insight with few errors and a high rate of change. [Enterprise]

recipes for dataops success

DataKitchen Consulting Services


Assessments

Identify obstacles to remove and opportunities to grow

DataOps Consulting, Coaching, and Transformation

Deliver faster and eliminate errors

DataOps Training

Educate, align, and mobilize

Commercial Pharma Agile Data Warehouse

Get trusted data and fast changes from your warehouse

 

dataops-cookbook-download

DataOps Learning and Background Resources


DataOps Journey FAQ
DataOps Observability basics
Data Journey Manifesto
Why it matters!
DataOps FAQ
All the basics of DataOps
DataOps 101 Training
Get certified in DataOps
Maturity Model Assessment
Assess your DataOps Readiness
DataOps Manifesto
Thirty thousand signatures can't be wrong!

 

DataKitchen Basics


About DataKitchen

All the basics on DataKitchen

DataKitchen Team

Who we are; Why we are the DataOps experts

Careers

Come join us!

Contact

How to connect with DataKitchen

 

DataKitchen News


Newsroom

Hear the latest from DataKitchen

Events

See DataKitchen live!

Partners

See how partners are using our Products

 

Monitor every Data Journey in an enterprise, from source to customer value, in development and production.

Simple, Fast Data Quality Test Generation and Execution. Your Data Journey starts with verifying that you can trust your data.

Orchestrate and automate your data toolchain to deliver insight with few errors and a high rate of change.