Data Quality in the Era of AI

Data Quality in the Era of AI

Today - in the tech-world, every hour, AI is evolving, technology is advancing, and data is increasing. With growing data, grows the need to govern it and also manage and maintain its quality to make right use of data. We need to quickly adapt newer and better ways to manage, discover and access data.

In my previous blog (click here to read), I discussed about various data quality qualms, how to address them to build a better relationship with data quality in an organization, what are some of the measures to take and most importantly, how we can think about DQ with the new lens of AI.

In this blog, I would like to show and discuss about Microsoft Purview where the data governance, data quality has been implemented keeping AI at the core of it all. In this article, you will see a glimpse of UI with AI assistance to create and manage data domains, create data quality rules, understand the data quality related health actions etc.

Microsoft Purview - A complete data governance solution in the era of AI


Microsoft Purview has been envisioned to help customers to get accelerated data value creation with - a responsible offense and secure data with an essential defense.

Data value creation with essential defense & response offense

It helps rapidly advance business innovation by enabling business units across the organization to govern their data. Let's take a sneak peek at the UI of Microsoft Purview.

Data Domain and Data Product Creation

With the introduction of domain and data product, Microsoft Purview empowers you to structure data according to your business context and the specific terminology you use. It seamlessly classifies data for discovery, ensures data quality management, and facilitates data access governance, all with the assistance of Copilot.

Note the business domain, its data products, glossary items, owner, published status etc.

Now comes the best part - developer productivity enhancement for data quality by leveraging on the AI assistance.

On the selected data product, you can ask Copilot to assist you to understand it better. You may ask questions around source of data aka lineage details, data asset usage, data quality scoring etc.

Ask Copilot to give me the lineage of data sources, data assets, it's quality as well as business use cases.

On a selected product, you may create rules manually.

There are 7 DCAM rules that we can create as shown below.

DCAM Rules for DQ 3/7
DCAM Rules for DQ 4/7

You can ask copilot to suggest the DQ rules and copilot will recommend the DQ rules based on the content of the data product.

Ask Copilot for DQ Rule Suggestions and Recommendations!


Copilot's DQ rules' recommendation!

After the DQ rules are selected/adjusted/modified per the need of the customer, we can initiate a DQ scan post which we can see the DQ trend, DQ scoring and other details within the same UI.

DQ Scoring and its trend.


The DQ score is highlighted in the Data product page too for a bird's eye view of data product, its quality, it's subscriber details etc.

DQ score at data product level.


Conclusion

This blog is an attempt to show you just the tip of the iceberg when it comes to Microsoft Purview Data Quality, use of AI in Data Quality. In DQ itself there are several features that are not discussed in this blog like the data profiling, data remediation etc. DQ is just one arm of Purview. We have general Data Governance, Data Privacy, Policy and other aspects. There are copilots to assist each of these arms like copilot to help create/recommend glossary term, simple UI to create/manage access policies etc. I will discuss more about it in my subsequent blogs. Please watch this space.

Please share your thoughts, comments, feedback in the comments section and if you find this article useful, please give it a thumbs up.

#Microsoft #MicrosoftPurview #DataInTheEraOfAI #DataQuality #DataManagement #CloudScaleAnalytics #DataDomain #DataProduct #Copilot


Karthik Ravindran

General Manager, Regulatory Governance Systems at Microsoft

10 个月

Excellent article Suma! Thank you for penning and sharing.

Debananda Ghosh

Cloud Analytics Business Lead- APJ market | Author

10 个月

Good one Suma Manohar

Kalyani Sowdamini

Senior Manager | Program Delivery Management @ Accenture

10 个月

Good insights Suma.

Ravikanth Musti

Senior Data & Analytics Architect

10 个月

very well written Suma Manohar

Ritik Sharma

Creative Video Producer | I love producing Product Explainers and Demo Videos for SaaS products

10 个月

Excited to dive into this insightful read. ??

要查看或添加评论,请登录

Suma Manohar的更多文章

社区洞察

其他会员也浏览了