Operations | Monitoring | ITSM | DevOps | Cloud

Search

Ingram Micro chooses Elastic to bolster search, sales on ecommerce site

Ingram Micro is a Fortune 100 company with $50 billion plus in revenue and operating in 56 countries. As the global leader in delivering technology and supply chain services to businesses, Ingram Micro touches about 80% of all high tech products sold around the world. Andre Dykhno, Head of Product for Global ecommerce, says ecommerce has been a large contributing factor to Ingram Micro’s modern day successes.

Virtual Meetup: Running Elasticsearch on Kubernetes

Elasticsearch is the world's most popular open source search engine. Kubernetes (k8s) is the popular container orchestration engine giving developers the flexibility to run all sorts of workloads easily. Elastic launched Elasticsearch k8s operator sometime ago. With this, one can not only run Elasticsearch on k8s but also can launch other Elastic Stack projects like APM Server, help run rolling upgrades, manage data etc. This talk is a demo of all latest features.

Virtual Meetup: Search, Full Text Search and Elasticsearch

This talk starts with the significance of search problem and its origin in history how it has been an integral part of our daily lives. Also, basics of full text search will be discussed along with the anatomy of a full text search engine by taking Elastic Search as an example. Speaker: Muhammad Junaid Muzammil is a Software Engineer with over 9 years of professional experience, along with over 4 years of experience working with Elasticsearch. He is also an Elastic Certified Engineer and one of our active Elastic user group organizers, based in Pakistan, Karachi.

Searching Zendesk: Elastic Workplace Search for customer service organizations

We’re excited to announce that Zendesk is now available as a pre-built content source, along with a host of others, as part of the Workplace Search application. With more than 130,000 customers in 30 countries, Zendesk has become one of the de facto customer service platforms in the world. Each day, millions of users interact with support agents via the cloud-based tool regardless of the support channel they choose.

Feature importance for data frame analytics with Elastic machine learning

With Elasticsearch machine learning one can build regression and classification models for data analysis and inference. Accurate prediction models are often too complex to understand simply by looking at their definition. Using feature importance, introduced in Elastic Stack 7.6, we can now interpret and validate such models.

Elastic App Search: A free product for building great search experiences

Wherever people encounter a search bar — whether on Google, phone apps, or while shopping online — they're conditioned to expect search experiences that deliver fast and relevant results. With this ever-evolving expectation in mind, millions of developers and organizations have chosen Elasticsearch for building powerful content discovery experiences over the years, to the great delight of their audience and user base.

While You Work from Home, Double Down on Elasticsearch Security

As engineers, you and I have a responsibility to protect both our customers’ and our respective companies’ data. But unlike our office networks that adhere to strict security protocols and a well-defined perimeter, our home networks usually fall short. And now that most of us are at home waiting out the COVID-19 pandemic, it’s time to revisit of logging in and Elasticsearch security during while you work from home.

42 Elasticsearch Query Examples - Hands-on Tutorial

Elasticsearch provides a powerful set of options for querying documents for various use cases so it’s useful to know which query to apply to a specific case. The following is a hands-on tutorial to help you take advantage of the most important queries that Elasticsearch has to offer. In this guide, you’ll learn 42 popular query examples with detailed explanations, but before we get started, here’s a summary of what the types of queries we’ll tackle.

Transparent, resource-based pricing with Elastic Enterprise Search

Until now, standard search solution pricing has been based on models that are difficult to understand, expensive to scale, and/or beneficial to only the search vendor. At Elastic, we’re taking a different approach based on the principles of transparency, fairness, and scalability, and have introduced resource-based pricing for our products running on Elastic Cloud. And we believe that this pricing approach will revolutionize Enterprise Search buying and ownership.

Creating meta engines in App Search to scale your search experiences

We introduced meta engines for Elastic App Search on Elastic Cloud and self-managed versions in the 7.6 release and have been thrilled to see the response to the new feature. Meta engines provide the ability to search across multiple existing or new engines. Think of adding a new search box to a page that then goes off and searches the documents in the sub-engines of your choosing.