BigPanda Recognized by Gartner as Representative Vendor for Domain-Agnostic AIOps
BigPanda Captures Market with Domain-Agnostic Event Correlation and Automation of IT Ops Data from All Monitoring, Observability, Change and Topology Tools
April 13, 2021
Share this

BigPanda announced its position as a Representative Vendor in the Gartner Market Guide for AIOps Platforms for the category: “Domain-Agnostic AIOps Platforms Market.”

The news comes as BigPanda continues to be recognized in this market for providing integration of IT Ops data from all sources, real-time machine learning-driven event correlation to detect incidents and surface root cause, as well as automation of IT operational tasks.

Gartner defines AIOps as combining big data and machine learning to automate IT operations processes, including event correlation, anomaly detection and causality determination. In the report, Gartner explained, “There is no future of IT operations that does not include AIOps. This is due to the rapid growth in data volumes and pace of change (exemplified by rate of application delivery and event-driven business models) that cannot wait on humans to derive insights.”

BigPanda uniquely addresses this market need with domain-agnostic Event Correlation and Automation required to automatically identify opportunities to detect, investigate and resolve incidents with minimal human oversight.

As the Gartner report notes, “requirements for increased flexibility for processing highly diverse datasets are having a significant impact on the market and shifting AIOps platforms toward domain-agnostic functionality.” It continues, “As organizations mature in AIOps adoption, they require a single domain-agnostic platform across I&O, DevOps, SRE and, in some cases, security practices.”

“We are glad Gartner has recognized that market requirements are shifting AIOps platforms toward a domain-agnostic approach — our customers confirm this is the right approach, especially given the proliferation of heterogeneous, best-of-breed tools in enterprise IT environments,” said Assaf Resnick, CEO and Co-Founder at BigPanda. “BigPanda is uniquely positioned to capture this demand, as evidenced by our ability to add 31 Fortune 500 companies as customers in 2020, including seven in the Fortune 100.”

Download the 2021 Gartner Market Guide for AIOps to discover:

- Why the future of the AIOps market will be centered around domain-agnostic platforms

- How enterprises are increasing their use of AIOps across various aspects of IT operations management

- The growing importance of AIOps platforms to analyze data across the IT Ops stack, rather than simply collecting it

Share this

The Latest

September 23, 2021

The Internet played a greater role than ever in supporting enterprise productivity over the past year-plus, as newly remote workers logged onto the job via residential links that, it turns out, left much to be desired in terms of enabling work ...

September 22, 2021

The world's appetite for cloud services has increased but now, more than 18 months since the beginning of the pandemic, organizations are assessing their cloud spend and trying to better understand the IT investments that were made under pressure. This is a huge challenge in and of itself, with the added complexity of embracing hybrid work ...

September 21, 2021

After a year of unprecedented challenges and change, tech pros responding to this year’s survey, IT Pro Day 2021 survey: Bring IT On from SolarWinds, report a positive perception of their roles and say they look forward to what lies ahead ...

September 20, 2021

One of the key performance indicators for IT Ops is MTTR (Mean-Time-To-Resolution). MTTR essentially measures the length of your incident management lifecycle: from detection; through assignment, triage and investigation; to remediation and resolution. IT Ops teams strive to shorten their incident management lifecycle and lower their MTTR, to meet their SLAs and maintain healthy infrastructures and services. But that's often easier said than done, with incident triage being a key factor in that challenge ...

September 16, 2021

Achieve more with less. How many of you feel that pressure — or, even worse, hear those words — trickle down from leadership? The reality is that overworked and under-resourced IT departments will only lead to chronic errors, missed deadlines and service assurance failures. After all, we're only human. So what are overburdened IT departments to do? Reduce the human factor. In a word: automate ...

September 15, 2021

On average, data innovators release twice as many products and increase employee productivity at double the rate of organizations with less mature data strategies, according to the State of Data Innovation report from Splunk ...

September 14, 2021

While 90% of respondents believe observability is important and strategic to their business — and 94% believe it to be strategic to their role — just 26% noted mature observability practices within their business, according to the 2021 Observability Forecast ...

September 13, 2021

Let's explore a few of the most prominent app success indicators and how app engineers can shift their development strategy to better meet the needs of today's app users ...

September 09, 2021

Business enterprises aiming at digital transformation or IT companies developing new software applications face challenges in developing eye-catching, robust, fast-loading, mobile-friendly, content-rich, and user-friendly software. However, with increased pressure to reduce costs and save time, business enterprises often give a short shrift to performance testing services ...

September 08, 2021

DevOps, SRE and other operations teams use observability solutions with AIOps to ingest and normalize data to get visibility into tech stacks from a centralized system, reduce noise and understand the data's context for quicker mean time to recovery (MTTR). With AI using these processes to produce actionable insights, teams are free to spend more time innovating and providing superior service assurance. Let's explore AI's role in ingestion and normalization, and then dive into correlation and deduplication too ...