Remove Business Intelligence Remove Data Processing Remove Data Quality Remove Snapshot
article thumbnail

Power enterprise-grade Data Vaults with Amazon Redshift – Part 2

AWS Big Data

Through Amazon Redshift in-memory result set caching and compilation caching, workloads ranging from dashboarding to visualization to business intelligence (BI) that run repeat queries experience a significant performance boost. Automated snapshots retain all of the data required to restore a data warehouse from a snapshot.

article thumbnail

Get The Most Out Of Smart Business Intelligence Reporting

datapine

Spreadsheets no longer provide adequate solutions for a serious company looking to accurately analyze and utilize all the business information gathered. That’s where business intelligence reporting comes into play – and, indeed, is proving pivotal in empowering organizations to collect data effectively and transform insight into action.

Insiders

Sign Up for our Newsletter

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

article thumbnail

Take Advantage Of The Top 16 Sales Graphs And Charts To Boost Your Business

datapine

A sales growth graph that will help make your business robust, adaptable, and of course—profitable. Number 6 on our list is a sales graph example that offers a detailed snapshot of sales conversion rates. that Increasing revenue in a sales-based business can come from several areas, broadly speaking. 6) Sales Conversion.

Sales 235
article thumbnail

Accelerate Your Business Performance With Modern IT Reports

datapine

But in this digital age, dynamic modern IT reports created with a state-of-the-art online reporting tool are here to help you provide viable answers to a host of burning departmental questions. Quality over quantity: Data quality is an essential part of reporting, particularly when it comes to IT.

Reporting 173
article thumbnail

Orca Security’s journey to a petabyte-scale data lake with Apache Iceberg and AWS Analytics

AWS Big Data

Prior to the creation of the data lake, Orca’s data was distributed among various data silos, each owned by a different team with its own data pipelines and technology stack. Moreover, running advanced analytics and ML on disparate data sources proved challenging.