-
-
-
-
URL copied!
“True happiness comes only by making others happy.” – David O. McKay
Background and Context
As in the quote above, a data platform can only be truly “happy” if it can make others happy. The others in this context are the actors/teams with whom the data platform interacts, including:
- Data Engineers
- Data Consumers
- Data Analysts
- Data Scientists/Machine Learning Engineers
- External Data Consumers like partners & data buyers
- DataOps Engineers
- Data Stewards & Admins (for Data Governance)
While Part I of this blog series covered the perspectives of Data Engineers and Data Consumers, in this second and final post you’ll find the perspectives of DataOps Engineers and Data Stewards & Admins.
Great (User) Expectations
Data Governance
End-to-end data governance encompasses aspects of Data Quality, Data Security and Data Compliance.
It also includes data cataloging, enabling us to discover the data and data lineage. This furthers our understanding of its origins, process, and journey to its current state.
Data stewards want to make sure that all the above aspects are taken care of by the data platform; that all of the data quality, security, and compliance requirements are converted into policies, controls and processes.
Overarching management processes, policies, and control are needed around aspects including the following:
- Defining the tags and tagging the data.
- Establishing communication and collaboration around the data and the data platform assets.
- Monitoring and managing the usage of these assets.
- Monitoring and managing the effectiveness and efficiency of these assets.
- Defining, monitoring, and managing policies and controls.
- Establishing a continuous improvement process of managing feedback/changes such as regulatory ones.
- Analysis and improvements across all the three dimensions of quality, security, and compliance.
- Implementing workflows to allow search and request for access to existing data assets, as well as requesting the availability of new data.
Enabling enterprise data governance has to be a step-by-step process, and it needs to start with defining MVP based on the specific needs and context. You can keep adding features based on specific priorities, rather than trying to do a “big bang” implementation covering everything all at once.
Data Ops
While DataOps might sound similar to DevOps for data projects, it is much more than that.
DevOps typically covers aspects such as software and services setup, environment provisioning, infrastructure as code, and continuous development, continuous testing, continuous integration, continuous deployment, continuous monitoring, etc.
While DevOps is involved as part of the DataOps, it is only a subset of the whole gamut of aspects that the SuperSet DataOps includes. The high-level objective of DataOps is to make sure that the appropriate data is available to the right consumers, at the right time.
DataOps covers an end-to-end, 360-degree aspect of orchestrating data and converting it into value. It is about enabling an ecosystem of technology, tools, processes, policies, and people to effectively and efficiently ingest, process, store, discover, and consume the data in a secured and compliant manner.
DataOps also involves enabling end users’ trust in the data assets made available to them (which encompasses the aspects covered in Part I of this series).
Accelerate Your Own Data Journey
The objective of a data platform is to eventually enable purposeful, actionable insights that can lead to business outcomes. Additionally, if the data platform puts the right emphasis on the journey and process (i.e., how it can make the job easier for its key actors while delivering the prioritized projects), then it will deliver an ecosystem that is fit for purpose, minimizes waste, and enables a “reuse” mindset.
At GlobalLogic, we are continuously improving our Data Platform Accelerator based on a similar approach. This digital accelerator enables enterprises to immediately manifest a solution that can gather, transform, and enrich data from across their organization. We are excited to work with our clients to accelerate their data journeys and would be happy to discuss your needs with you. Please get in touch using the contact form below.
Related Blogs – The Happy Data Platform – A Personified Perspective (Part I)
Top Insights
Best practices for selecting a software engineering partner
SecurityDigital TransformationDevOpsCloudMediaMy Intro to the Amazing Partnership Between the...
Experience DesignPerspectiveCommunicationsMediaTechnologyAdaptive and Intuitive Design: Disrupting Sports Broadcasting
Experience DesignSecurityMobilityDigital TransformationCloudBig Data & AnalyticsMediaLet’s Work Together
Related Content
Edge-Computing Paradigm: Survey and Analysis on Security Threats
The commencement of extensive applications of IoT devices in the world of information technology are generating massive amount of data. The deployment of various IoT devices/sensors within the complex interconnected networks give rise to raw data from sensors, processed and controlled data, decision making data providing intelligent solution etc. IoT provide a common platform (called IoT cloud) for all the networks and devices connected to those networks so that the analytics can be performed on data and valuable information can be extracted.
Learn More
Automation of Mobile Application Stress Scenarios for Performance Engineering
In the healthcare industry where medical insurance providers are competing with each other to acquire more and more customers, evaluating customers' application to assign a risk level is of prime importance. This helps in formulating the policies and the premium that a customer needs to pay. In order to work on this the insurance companies must share their data which is highly susceptible of being stolen and misused against them by their corporate rivals.
Learn More
Enterprise GenAI: The Time to Focus on High-ROI Use Cases is Now
In the relentless pursuit of digital transformation, enterprises are constantly seeking innovative avenues to maintain a competitive edge. Generative Artificial Intelligence (GenAI) stands out as one of the most promising frontiers in this quest. Unlike traditional AI, which primarily focuses on data analysis and interpretation, GenAI has the unique ability to generate new, original content, ideas, and solutions, making it an indispensable tool for businesses across various sectors.
Learn More
DevOps for Customer First Strategy
In the healthcare industry where medical insurance providers are competing with each other to acquire more and more customers, evaluating customers' application to assign a risk level is of prime importance. This helps in formulating the policies and the premium that a customer needs to pay. In order to work on this the insurance companies must share their data which is highly susceptible of being stolen and misused against them by their corporate rivals.
Learn More
Master the skills of QAOps
Recently, the IT world has been experiencing an explosion of different terms related to operations. The good old days—when the global order was defined around a rule of thumb and IT as separate from business—are gone, never to return. Dozens of ‘Ops’ crowded the sphere of software testing: starting with trendy DevOps.
Learn More
The rise of digital cognitive behavioral therapy
In today’s world, more and more people are struggling with depression, anxiety, addiction and a whole range of similar mental health problems. In most of the cases, people are not even aware of the fact that they are fighting with some kind of mental illness. Managing these problems is not an easy task and ignoring these problems calls for unwanted actions and severe consequences, but fortunately we have Cognitive behavioral therapy (CBT) to help people manage their problems by making simple changes in the way they think and behave.
Learn More
Share this page:
-
-
-
-
URL copied!