article thumbnail

Top Business Intelligence Platforms of 2024 [with Features]

Knowledge Hut

BI encourages using historical data to promote fact-based decision-making instead of assumptions and intuition. Data analysis is carried out by business intelligence platform tools, which also produce reports, summaries, dashboards, maps, graphs, and charts to give users a thorough understanding of the nature of the business.

article thumbnail

How and Why NetSpring is Building the Next Generation of Product Analytics on Snowflake

Snowflake

Next-gen product analytics is now warehouse-native, an architectural approach that allows for the separation of code and data. In this model, providers of next-gen product analytics maintain code for the analytical application as a connected app, while customers manage the data in their own cloud data platform.

BI 81
Insiders

Sign Up for our Newsletter

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

article thumbnail

The Good and the Bad of Apache Kafka Streaming Platform

AltexSoft

After trying all options existing on the market — from messaging systems to ETL tools — in-house data engineers decided to design a totally new solution for metrics monitoring and user activity tracking which would handle billions of messages a day. Kafka vs ETL. It’s quite common to see Kafka as a faster ETL.

Kafka 93
article thumbnail

The Rise of Streaming Data and the Modern Real-Time Data Stack

Rockset

Disclaimer: Rockset is a real-time analytics database and one of the pieces in the modern real-time data stack So What is Real-Time Data (And Why Can’t the Modern Data Stack Handle It)? Real-time data streams typically power analytical or data applications whereas batch systems were built to power static dashboards.

article thumbnail

Turning Streams Into Data Products

Cloudera

Building real-time data analytics pipelines is a complex problem, and we saw customers struggle using processing frameworks such as Apache Storm, Spark Streaming, and Kafka Streams. . Reduce ingest latency and complexity: Multiple point solutions were needed to move data from different data sources to downstream systems.

Kafka 88