man writing code on his computer

Metadata and Lineage Governance

Ensure accuracy of analytics and earn trust from end users through creating visible analytics workflows.

Successful digital transformation depends on trust in the source and accuracy of analytics. Without trust, analytic insights can be left out of initiatives or business decisions. Data lineage and governance are crucial to ensuring that results are reliable and to earning the trust of users.
image

Top-Line Growth

Establish and communicate data lineage to enable teams to focus on results and make decisions faster
Automation_icon

Bottom-Line Returns

Fully understand and communicate data lineage to reduce investment needed to make changes
Image

Customer Experience

Eliminate mistakes caused by bad data that affects your customers
image

Efficiency Gains

Eliminate redundant or manual data validation and reduce need to double-check results
Advanced Analytics

Risk Reduction

Gain visibility into data lineage for complete understanding of where data originates and what processes it passes through

Business Problem

How can you trust the results if you don’t know the sources of the data that went into them? Trust in data quality depends on knowing where the data came from and how it was processed along the way to insight. In removing the labor and repetition from analytics, automation makes it more important to trust the data source and the analytic process.

As companies progress on their analytics journey, business users need to know that the data they’re working with is accurate and consistent with data other users are working with. When users lack that trust, analytic processes suffer and silos arise. Users begin to store their own data in departmental databases and do their own work separately from the rest of the company.

Alteryx Solution

Data lineage maps out where data came from and how it moved, offering a clear view of the entire analytics automation process. With data lineage, users have the opportunity to see and know the provenance of the data they depend on and how insights were derived.

Users rely on lineage for an understanding of the structure and fields in data and for assurance that those match everyone else’s definitions. Organizations with established data lineage can depend on consistency and move on to the creation of glossaries, data dictionaries, and definitions of metrics. When users are convinced that metadata (or data about the data) is uniform across the organization, they don’t need to create their own silos or work separately.

Data lineage enables full understanding of process, stepwise debugging when there are errors, and communication of processes to end users. It paves the way for analytic transformation and analytic process automation.

Additional Resources

データガバナンスと監査性 | Alteryx

電話上の Snowflake のロゴ

Snowflake スターターキット

アナリティクスリーダー

人事分析のためのスターターキット

AWS

分析アプリスターターキット

ヒートマップ

空間分析スターターキット

電話上の Adobe のロゴ

Adobe マーケティング分析スターターキット

分析を変革

データに潜むインサイトを引き出しませんか?

無料トライアル