Remove Business Intelligence Remove Data Engineering Remove Data Observability
article thumbnail

Supercharge your data strategy: Integrate and innovate today leveraging data integration

IBM Journey to AI blog

Data must be combined and harmonized from multiple sources into a unified, coherent format before being used with AI models. This process is known as data integration , one of the key components to improving the usability of data for AI and other use cases, such as business intelligence (BI) and analytics.

article thumbnail

Alation 2022.2: Open Data Quality Initiative and Enhanced Data Governance

Alation

This has created many different data quality tools and offerings in the market today and we’re thrilled to see the innovation. People will need high-quality data to trust information and make decisions. The stewardship workbench within the data governance app empowers data stewards to bulk curate data using search and filters.

professionals

Sign Up for our Newsletter

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

article thumbnail

Maximize the Power of dbt and Snowflake to Achieve Efficient and Scalable Data Vault Solutions

phData

The implementation of a data vault architecture requires the integration of multiple technologies to effectively support the design principles and meet the organization’s requirements. Having model-level data validations along with implementing a data observability framework helps to address the data vault’s data quality challenges.

SQL 52
article thumbnail

Five benefits of a data catalog

IBM Journey to AI blog

It seamlessly integrates with IBM’s data integration, data observability, and data virtualization products as well as with other IBM technologies that analysts and data scientists use to create business intelligence reports, conduct analyses and build AI models.

article thumbnail

Data Quality Framework: What It Is, Components, and Implementation

DagsHub

TDWI Data Quality Framework This framework , developed by the Data Warehousing Institute, focuses on practical methodologies and tools that address managing data quality across various stages of the data lifecycle, including data integration, cleaning, and validation. quality) for your data.

article thumbnail

The Rise of Open-Source Data Catalogs: A New Opportunity For Implementing Data Mesh

ODSC - Open Data Science

Understanding data mesh Data mesh is a decentralized architecture type that allows different departments to access data independently. It’s different from traditional data architecture, which usually has dedicated data engineering teams that provide access to information after other departments request it.

article thumbnail

Best Data Engineering Tools Every Engineer Should Know

Pickl AI

Summary: Data engineering tools streamline data collection, storage, and processing. Tools like Python, SQL, Apache Spark, and Snowflake help engineers automate workflows and improve efficiency. Learning these tools is crucial for building scalable data pipelines. Thats where data engineering tools come in!