Remove Data Platform Remove Data Quality Remove Metadata
article thumbnail

Data architecture strategy for data quality

IBM Journey to AI blog

Poor data quality is one of the top barriers faced by organizations aspiring to be more data-driven. Ill-timed business decisions and misinformed business processes, missed revenue opportunities, failed business initiatives and complex data systems can all stem from data quality issues.

article thumbnail

AI that’s ready for business starts with data that’s ready for AI

IBM Journey to AI blog

Open is creating a foundation for storing, managing, integrating and accessing data built on open and interoperable capabilities that span hybrid cloud deployments, data storage, data formats, query engines, governance and metadata. Effective data quality management is crucial to mitigating these risks.

Metadata 113
professionals

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Trending Sources

article thumbnail

How Can The Adoption of a Data Platform Simplify Data Governance For An Organization?

Pickl AI

Falling into the wrong hands can lead to the illicit use of this data. Hence, adopting a Data Platform that assures complete data security and governance for an organization becomes paramount. In this blog, we are going to discuss more on What are Data platforms & Data Governance.

article thumbnail

18 Data Profiling Tools Every Developer Must Know

Marktechpost

In addition, organizations that rely on data must prioritize data quality review. Data profiling is a crucial tool. For evaluating data quality. Data profiling gives your company the tools to spot patterns, anticipate consumer actions, and create a solid data governance plan.

article thumbnail

How the right data and AI foundation can empower a successful ESG strategy

IBM Journey to AI blog

That is, it should support both sound data governance —such as allowing access only by authorized processes and stakeholders—and provide oversight into the use and trustworthiness of AI through transparency and explainability.

ESG 264
article thumbnail

The Sequence Pulse: The Architecture Powering Data Drift Detection at Uber

TheSequence

Like any large tech company, data is the backbone of the Uber platform. Not surprisingly, data quality and drifting is incredibly important. Many data drift error translates into poor performance of ML models which are not detected until the models have ran.

article thumbnail

AI and the future of unstructured data

IBM Journey to AI blog

Unstructured enables companies to transform their unstructured data into a standardized format, regardless of file type, and enrich it with additional metadata. Text-to-SQL models are getting very good, which will dramatically reduce the barrier to working with data for a broad range of use cases beyond business intelligence.