XenonStack Recommends

Managed Apache Nifi Services

Automate data integration with Apache Nifi

Implementing Apache NiFi and data analytics platform for automating the data between disparate systems. NiFi is an open-source server that manages distributed systems and provides a configurable data platform, and enables real-time tracing. Apache NiFi tool provides an easy way to handle data flow and supports powerful and scalable data routing and transformation.

highly-configurable

Highly Configurable

Apache Nifi promotes a balance between loss tolerance, guaranteed delivery, and low latency vs. high throughput.

extensible

Extensible

Apache Nifi helps with extensible design, and custom development capabilites help ensures faster data delivery.

secure

Secure

Apache Nifi supports SSL, SSH, HTTPS, and encrypted content and provides multi-tenant authorization and internal policy management.

Apache NiFi Architecture Overview

Apache NiFi provides an easy-to-use, powerful, and reliable system to process and distribute data over several resources. NiFi helps to route and process data from any source to any destination.

apache-nifi-services-wheel

Pricing Plan

Standard

$49/

Month

  • XenonStack Tick Bullet

    Managed Security

    • XenonStack Tick

      Basic Monitoring

    • XenonStack Tick

      24 x 7 Support

Pro

$99/

Month

  • XenonStack Tick Bullet

    All Standard features

    • XenonStack Tick

      Managed Backup Full and Daily Snapshots

    • XenonStack Tick

      Managed Operating System Patches and Updates, Hardening, Configuration and Tuning

Enterprise

$125/

Month

  • XenonStack Tick Bullet

    All Standard and Pro features

    • XenonStack Tick

      Application Monitoring and Response CPU, RAM, Disk IO, URL, and Application metrics

    • XenonStack Tick

      Advanced Enterprise Analytics and Dashboard

XenonStack Managed Services Left Image
XenonStack Managed Services Right Image

Apache NiFi As A Service

streamline-data-processing

Streamline Data Processing

End-to-End enterprise solutions for automating and simplifying data flow between systems.

streamline-data-processings

Comply with regulatory requirements and make user authentication more reliable.

Empower automated and managed data integration with Managed Apache NiFi as a Service.

Monitor and gain insights over deployed clusters and take action in real-time.

Discover deep and actionable insights and gain intelligence with low-latency-based solutions.

Streamline Data Processing

Building powerful and effective Big Data workloads.

xenonstack-partner-AWS

Deploy Clusters on AWS

Empower scalable and reliable applications with optimized query execution and implementation solutions.

Data Flow Management related Insights

Building Data Ingestion Platform Using Apache Nifi

data-integration-from-different-data-sources-using-apache-nifi-xenonstack

Building Data Ingestion Platform Using Apache Nifi

data-transformation-etl-xenonstack-2

Data Transformation using ETL

Data Transformation using ETL

Big Data Ingestion Architecture

xenonstack-big-data-ingestion-architecture

Big Data Ingestion Architecture

Apache Gobblin

StreamSets

Marmaray

Apache Druid

Apache Gobblin

Apache Gobblin is a unified data ingestion framework for extracting, transforming and loading a large volume of data from a variety of data sources. It can ingest data from different data sources in the same execution framework and manages the metadata of different sources in on place.

StreamSets

StreamSets is a data ingestion platform that focuses on building robust, managed, and effective data pipelines.

Marmaray is an Open source Data Ingestion, and dispersal framework and library for Apache Hadoop, build on the top of the Hadoop ecosystem. Users ingest data from any source and also further distribute it to any sink leveraging the use of Apache Spark.

Apache Druid

Apache Druid is a real-time analytics database designed for rapid analytics on large datasets. This database is often used for powering use cases where real-time ingestion, high uptime, and fast query performance are needed.