
ManageEngine announced that Applications Manager, its application performance monitoring solution, now supports SAP HANA, Apache HBase, Oracle NoSQL and Apache Solr.
The move enables development and operations teams in enterprises to gain visibility into the performance of those NoSQL technologies as well as the business-critical applications connected to them.
With the rise of big data, NoSQL technology has emerged as the de facto standard powering today's data-driven applications. NoSQL companies, traditional vendors with NoSQL implementations, and open source NoSQL projects have all been gaining traction to become critical components of application infrastructure in many organizations. However, these technologies can also increase the complexity of the applications they power, making it difficult for IT teams to manage them.
"Many of our customers are investing in NoSQL data engines to cost-effectively build their information structure," said Dev Anand, Director of Product Management at ManageEngine. "Our goal is to give them deep visibility into their NoSQL deployments, as well as the connected applications, from a single monitoring console. This makes it easier to manage overall application performance and helps businesses get more out of their NoSQL investments to support their big data initiatives."
With Applications Manager, IT teams can now proactively monitor the performance of SAP HANA, Apache HBase and Oracle NoSQL databases as well as the Apache Solr search server and thereby ensure the performance of applications based on these technologies. The latest version of Applications Manager monitors the following:
- SAP HANA - key performance indicators (KPIs) including HANA services, memory and disk usage, schema details, replication and backup, workload, transactions, jobs, caches and alerts.
- Apache HBase - KPIs related to HBase Master, Region servers, JVM metrics, memory usage thread details, and exceptions.
- Oracle NoSQL - KPIs including memory usage, thread details, admin details, replicated nodes, and storage details.
- Apache Solr - key attributes related to cores, cache, query handler, update handler, replication, JVM usage, memory, and thread details.
Among its many benefits, the latest monitoring capabilities in Applications Manager help IT personnel:
- Get proactive notifications on a wide range of error conditions and faults. Detect and resolve performance problems quickly and keep business-critical applications up and running optimally.
- Keep tabs on resource consumption to make sure important workloads do not experience resource crunch. Plan capacity effectively to handle the ever-increasing size and complexity of data-driven applications.
- Get more out of NoSQL investments and succeed in big data projects.
The support for the new NoSQL databases is complementary to the existing out-of-the-box support for 80+ applications and infrastructure components, including other NoSQL and in-memory databases such as Cassandra, MongoDB, Redis, Memcached and Couchbase.
Pricing and Availability
Applications Manager 12.8 is available immediately.
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