The data and analytics sector rightly places great importance on data quality: Almost two-thirds (64%) of participants in Ventana Research’s Analytics and Data Benchmark Research cite reviewing data for quality and consistency issues as the most time-consuming task in analyzing data. Data and analytics vendors would not recommend that customers use tools known to have data quality problems. It is somewhat surprising, therefore, that data and analytics vendors are rushing to encourage customers...
Read More
Topics:
Analytics,
Data Governance,
Data Management,
Data,
Digital Technology,
natural language processing,
AI & Machine Learning,
Analytics & Data
The data platforms market has traditionally been divided between products specifically designed to support operational or analytic workloads, with other market segments having emerged in recent years for data platforms targeted specifically at data science and machine learning (ML), as well as real-time analytics. More recently, we have seen vendor strategies evolving to provide a more consolidated approach, with data platforms designed to address a combination of analytics and data science, as...
Read More
Topics:
Analytics,
Business Intelligence,
Cloud Computing,
Data,
Digital Technology,
AI & Machine Learning,
Analytics & Data,
analytic data platforms,
Operational Data Platforms
Despite the emphasis on organizations being more data-driven and making an increasing proportion of business decisions based on data and analytics, it remains the case that some of the most fundamental questions about an organization are difficult to answer using data and analytics. Ostensibly simple questions such as, “how many customers does the organization have?” can be fiendishly difficult to answer, especially for organizations with multiple business entities, regions, departments and...
Read More
Topics:
Cloud Computing,
Data Management,
Data,
data operations,
AI & Machine Learning,
Analytics & Data
The shift from on-premises server infrastructure to cloud-based and software-as-a-service (SaaS) models has had a profound impact on the data and analytics architecture of many organizations in recent years. More than one-half of participants (59%) in Ventana Research’s Analytics and Data Benchmark research are deploying data and analytics workloads in the cloud, and a further 30% plan to do so. Customer demand for cloud-based consumption models has also had a significant impact on the products...
Read More
Topics:
business intelligence,
Cloud Computing,
Data Management,
Data,
natural language processing,
data operations,
AI & Machine Learning,
Analytics & Data,
analytic data platforms,
Operational Data Platforms
One of the most significant considerations when choosing an analytic data platform is performance. As organizations compete to benefit most from being data-driven, the lower the time to insight the better. As data practitioners have learnt over time, however, lowering time to insight is about more than just high-performance queries. There are opportunities to improve time to insight throughout the analytics life cycle, which starts with data ingestion and integration, includes data preparation...
Read More
Topics:
business intelligence,
Data,
data operations,
AI & Machine Learning,
analytic data platforms
Almost all organizations are investing in data science, or planning to, as they seek to encourage experimentation and exploration to identify new business challenges and opportunities as part of the drive toward creating a more data-driven culture. My colleague, David Menninger, has written about how organizations using artificial intelligence and machine learning (AI/ML) report gaining competitive advantage, improving customer experiences, responding faster to opportunities and threats, and...
Read More
Topics:
Data Governance,
Data Management,
Data,
data operations,
AI & Machine Learning,
Analytics & Data,
analytic data platforms
I have previously written about growing interest in the data lakehouse as one of the design patterns for delivering hydroanalytics analysis of data in a data lake. Many organizations have invested in data lakes as a relatively inexpensive way of storing large volumes of data from multiple enterprise applications and workloads, especially semi- and unstructured data that is unsuitable for storing and processing in a data warehouse. However, early data lake projects lacked structured data...
Read More
Topics:
Business Intelligence,
Data Governance,
Data Management,
Data,
AI & Machine Learning,
Streaming Data & Events,
analytic data platforms
I have written recently about the similarities and differences between data mesh and data fabric. The two are potentially complementary. Data mesh is an organizational and cultural approach to data ownership, access and governance. Data fabric is a technical approach to automating data management and data governance in a distributed architecture. There are various definitions of data fabric, but key elements include a data catalog for metadata-driven data governance and self-service, agile data...
Read More
Topics:
business intelligence,
Cloud Computing,
Data Governance,
Data Management,
Data,
data operations,
AI & Machine Learning,
operational data plaftforms
I have written a few times in recent months about vendors offering functionality that addresses data orchestration. This is a concept that has been growing in popularity in the past five years amid the rise of Data Operations (DataOps), which describes more agile approaches to data integration and data management. In a nutshell, data orchestration is the process of combining data from multiple operational data sources and preparing and transforming it for analysis. To those unfamiliar with the...
Read More
Topics:
Data Management,
Data,
data operations,
AI & Machine Learning,
Analytics & Data
Ventana Research’s Data Lakes Dynamics Insights research illustrates that while data lakes are fulfilling their promise of enabling organizations to economically store and process large volumes of raw data, data lake environments continue to evolve. Data lakes were initially based primarily on Apache Hadoop deployed on-premises but are now increasingly based on cloud object storage. Adopters are also shifting from data lakes based on homegrown scripts and code to open standards and open...
Read More
Topics:
Business Intelligence,
Cloud Computing,
Data Governance,
Data Management,
Data,
data operations,
AI & Machine Learning,
Analytics & Data,
analytic data platforms,
Operational Data Platforms