Friday, May 9, 2025
News PouroverAI
Visit PourOver.AI
No Result
View All Result
  • Home
  • AI Tech
  • Business
  • Blockchain
  • Data Science & ML
  • Cloud & Programming
  • Automation
  • Front-Tech
  • Marketing
  • Home
  • AI Tech
  • Business
  • Blockchain
  • Data Science & ML
  • Cloud & Programming
  • Automation
  • Front-Tech
  • Marketing
News PouroverAI
No Result
View All Result

Optimizing Performance and Cost Savings for Elastic on Pure Storage

January 24, 2024
in Data Science & ML
Reading Time: 4 mins read
0 0
A A
0
Share on FacebookShare on Twitter


There’s no denying that data is growing at an unprecedented rate and access to this data is crucial for enterprises seeking insights for business growth. As data continues to expand, so does the demand for fast query performance and quick insights. 

Across Pure Storage’s install base, organizations use Elastic as a tool to store, search, and analyze data at scale, across a broad range of use cases. While some use it within their applications for search and indexing, others use it for log analysis where they analyze application, infrastructure, or security logs to trace problems and find root causes to issues. 

Whatever the use case, the proliferation of modern applications, IoT, DevOps, and microservices have resulted in an explosive growth in infrastructure, and ultimately growth in machine generated log data, which is critical in preserving system health, troubleshooting issues, and deriving valuable insights. As a result, Observability and Security Operations teams are not only challenged with rapid growth in data and increased infrastructure complexity, but also with keeping their systems running and doing faster root cause analysis of issues.

Challenge: Balancing Performance and Cost as Elastic Deployment Scales

Generally, Elastic is used as a central repository to analyze logs originating from distributed infrastructures. As an organization’s usage of Elastic grows, enterprises bring more and more data and logs into Elastic. Over time, the log files are becoming larger. In addition, a malware may be within an enterprise’s firewalls for weeks before it is detected. It is no surprise that organizations want to retain security related logs much longer.

What happens when data volumes begin to reach hundreds of terabytes? As applications scale and the demands on infrastructure increase, often operational challenges arise in maintaining the overall system. These may include unpredictable search performance, infrastructure complexity, underutilized resources, and increase in operational overhead. Organizations considering Elastic Cloud see their costs increase significantly as well: Enterprises pay Elastic for the infrastructure resources consumed in the cloud, number of days the data is retained, and for maintaining their Elastic cluster. 

Not all organizations utilize the Elastic Cloud offering. Data residency, data sovereignty, regulatory and compliance mandates, and rising cloud costs are some of the reasons why enterprises explore an on-premises deployment of Elastic. Even when organizations use Elastic on-premises, they do want a cloud-like experience and get the most performance from Elastic while optimizing costs. 

Use the Right Storage Choices with Elastic Data Tiers

The first step organizations can take to balance performance with cost is use the Data Tier capability in Elastic and pair each Tier effectively with a storage solution that best matches its performance and capacity requirements.

In some instances, data gets searched less often as time goes by. Logs, metrics, and transactions, for example, may be of less interest to users as days/weeks/years go by. Elastic allows users to effectively manage growing volumes of data through Data Tiers. With Elastic Data Tiers, users can select between hot, warm, cold, and frozen tiers to optimize storage cost and query performance based on the needs of their use case.  

Pure Storage provides storage solutions suited to get the most out of each Data Tier. Organizations can store data that is accessed the most in the expensive hot tier and search it in milliseconds. When the Elastic cluster is relatively small with extremely low latency needs, Pure FlashArray//X is a commonly used solution. When the Elastic cluster is relatively large with high throughput needs, FlashBlade//S on NFS is most commonly used for the hot tier.

All infrequently accessed data for which query time of seconds or minutes is acceptable, can be stored in the cheaper cold, or frozen Data Tier. 

Use Cold and Frozen Data Tiers with Capacity-Optimized Storage 

Use of cold and frozen tiers can help reduce infrastructure costs with minimal performance impact. Elastic cold and frozen Data Tiers use searchable snapshots. Searchable snapshots rely on the same snapshot mechanism an organization already uses for backups and allows for automatic retrieval of frozen data from an S3 bucket. Organizations can search across data in snapshots stored on low-cost object storage. Generally this is the data that is accessed infrequently, is read-only, with query performance of seconds or minutes.

Data stored in cold or frozen tiers eliminate the need for replica shards in Elastic as these are now stored in the lost cost storage as snapshots. This reduces the storage consumed by almost 50% and as a result Elastic storage costs. By offloading historical data to cold and frozen tiers and storing less data in the hot tier, organizations reduce the amount of data processing that has to be done in the hot nodes. This in turn significantly reduces the number of hot/warm nodes required and subsequently compute costs. While all of this sounds compelling, the use of cold/frozen data tiers has not gained as much traction as organizations still need storage performance from the low cost object storage supporting cold and frozen tiers. Pure Storage uniquely provides an all-flash, capacity-optimized object storage technology that provides the needed performance for the cold and frozen tier at disk economics. Organizations can augment their existing hot tier, and offload historical data to FlashBlade//E – a capacity-optimized, yet performant S3 bucket.

Pure Storage and Elastic Deployments

As enterprises grapple with escalating volumes of data and the challenges of balancing performance and cost in Elastic deployments, Pure Storage is a strategic partner providing tailored solutions. Pure Storage’s FlashArray and FlashBlade offerings address diverse needs, from small clusters with low-latency requirements to large clusters demanding high throughput. The introduction of FlashBlade//E in 2023 further revolutionizes the landscape by offering all-flash, capacity-optimized object storage, addressing the longstanding performance concerns associated with low-cost disk-based solutions. 

Organizations can now confidently embrace Elastic, enhance their hot tier storage, and seamlessly manage historical data with cost-efficient capacity-optimized storage. Pure Storage not only meets the demands of the modern data landscape but also empowers organizations to simplify their Elastic architecture, reflecting the industry trend towards a more streamlined and efficient approach.



Source link

Tags: costElasticOptimizingPerformancePuresavingsStorage
Previous Post

Complete guide on SEO competitor analysis to beat competitors

Next Post

Building an SEO Strategy in 2024

Related Posts

AI Compared: Which Assistant Is the Best?
Data Science & ML

AI Compared: Which Assistant Is the Best?

June 10, 2024
5 Machine Learning Models Explained in 5 Minutes
Data Science & ML

5 Machine Learning Models Explained in 5 Minutes

June 7, 2024
Cohere Picks Enterprise AI Needs Over ‘Abstract Concepts Like AGI’
Data Science & ML

Cohere Picks Enterprise AI Needs Over ‘Abstract Concepts Like AGI’

June 7, 2024
How to Learn Data Analytics – Dataquest
Data Science & ML

How to Learn Data Analytics – Dataquest

June 6, 2024
Adobe Terms Of Service Update Privacy Concerns
Data Science & ML

Adobe Terms Of Service Update Privacy Concerns

June 6, 2024
Build RAG applications using Jina Embeddings v2 on Amazon SageMaker JumpStart
Data Science & ML

Build RAG applications using Jina Embeddings v2 on Amazon SageMaker JumpStart

June 6, 2024
Next Post
Building an SEO Strategy in 2024

Building an SEO Strategy in 2024

Tech View: Nifty forms bullish piercing candle. What traders should do on Thursday expiry

Tech View: Nifty forms bullish piercing candle. What traders should do on Thursday expiry

Experimental CSS-Only Carousels with Scroll-Driven Animations

Experimental CSS-Only Carousels with Scroll-Driven Animations

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

  • Trending
  • Comments
  • Latest
Is C.AI Down? Here Is What To Do Now

Is C.AI Down? Here Is What To Do Now

January 10, 2024
Porfo: Revolutionizing the Crypto Wallet Landscape

Porfo: Revolutionizing the Crypto Wallet Landscape

October 9, 2023
A Complete Guide to BERT with Code | by Bradney Smith | May, 2024

A Complete Guide to BERT with Code | by Bradney Smith | May, 2024

May 19, 2024
A faster, better way to prevent an AI chatbot from giving toxic responses | MIT News

A faster, better way to prevent an AI chatbot from giving toxic responses | MIT News

April 10, 2024
Part 1: ABAP RESTful Application Programming Model (RAP) – Introduction

Part 1: ABAP RESTful Application Programming Model (RAP) – Introduction

November 20, 2023
Saginaw HMI Enclosures and Suspension Arm Systems from AutomationDirect – Library.Automationdirect.com

Saginaw HMI Enclosures and Suspension Arm Systems from AutomationDirect – Library.Automationdirect.com

December 6, 2023
Can You Guess What Percentage Of Their Wealth The Rich Keep In Cash?

Can You Guess What Percentage Of Their Wealth The Rich Keep In Cash?

June 10, 2024
AI Compared: Which Assistant Is the Best?

AI Compared: Which Assistant Is the Best?

June 10, 2024
How insurance companies can use synthetic data to fight bias

How insurance companies can use synthetic data to fight bias

June 10, 2024
5 SLA metrics you should be monitoring

5 SLA metrics you should be monitoring

June 10, 2024
From Low-Level to High-Level Tasks: Scaling Fine-Tuning with the ANDROIDCONTROL Dataset

From Low-Level to High-Level Tasks: Scaling Fine-Tuning with the ANDROIDCONTROL Dataset

June 10, 2024
UGRO Capital: Targeting to hit milestone of Rs 20,000 cr loan book in 8-10 quarters: Shachindra Nath

UGRO Capital: Targeting to hit milestone of Rs 20,000 cr loan book in 8-10 quarters: Shachindra Nath

June 10, 2024
Facebook Twitter LinkedIn Pinterest RSS
News PouroverAI

The latest news and updates about the AI Technology and Latest Tech Updates around the world... PouroverAI keeps you in the loop.

CATEGORIES

  • AI Technology
  • Automation
  • Blockchain
  • Business
  • Cloud & Programming
  • Data Science & ML
  • Digital Marketing
  • Front-Tech
  • Uncategorized

SITEMAP

  • Disclaimer
  • Privacy Policy
  • DMCA
  • Cookie Privacy Policy
  • Terms and Conditions
  • Contact us

Copyright © 2023 PouroverAI News.
PouroverAI News

No Result
View All Result
  • Home
  • AI Tech
  • Business
  • Blockchain
  • Data Science & ML
  • Cloud & Programming
  • Automation
  • Front-Tech
  • Marketing

Copyright © 2023 PouroverAI News.
PouroverAI News

Welcome Back!

Login to your account below

Forgotten Password? Sign Up

Create New Account!

Fill the forms bellow to register

All fields are required. Log In

Retrieve your password

Please enter your username or email address to reset your password.

Log In