Want quantified metrics of enhanced productivity for Spark development and management over manual programming?
Download this white paper to find out how StreamAnalytix provides a practical and viable alternative to the complexities of building enterprise-grade Spark applications.
Enterprises are increasingly adopting Spark for tasks ranging from ingestion, ETL, and data processing to advanced analytics and machine learning. But despite its growing popularity, Apache Spark is complex, and the learning curve is steep. Moreover, developing code, integrating, and testing with Spark is often time-consuming.
Impetus StreamAnalytix, the only multi-engine real-time and batch analytics platform with data-360 capability enables accelerated Spark development to help Fortune 500 companies achieve significantly higher productivity.
You may also be interested in…
Massive volumes of customer data are being generated every second. To derive valuable insights from these real-time data streams, businesses…
Ensuring that the data is well managed, secure, and accessible are some of the critical requirements for organizations relying on…
The exponential growth of data across industries is fuelling the evolution of extract, transform, and load (ETL) processes.
Businesses are struggling with huge volumes of data to solve complex business problems while relying on their legacy data platform…
Apache Spark Empowering the Real-time, Data Driven Enterprise: The De Facto Choice for Stream Processing and Machine Learning
Apache Spark is one of the most popular Big Data frameworks today. It is fast becoming the de facto technology…
Most enterprises are undertaking a digital transformation initiative. Data and analytics modernization is an integral part of this journey. On-premise…
Ensure successful data ingestion on the cloud: Strategies for 2021
Dec 04, 2020 | 10:00 am PT / 1:00 pm ET