DevOps.com

  • Latest
    • Articles
    • Features
    • Most Read
    • News
    • News Releases
  • Topics
    • AI
    • Continuous Delivery
    • Continuous Testing
    • Cloud
    • Culture
    • DataOps
    • DevSecOps
    • Enterprise DevOps
    • Leadership Suite
    • DevOps Practice
    • ROELBOB
    • DevOps Toolbox
    • IT as Code
  • Videos/Podcasts
    • Techstrong.tv Podcast
    • Techstrong.tv - Twitch
    • DevOps Unbound
  • Webinars
    • Upcoming
    • On-Demand Webinars
  • Library
  • Events
    • Upcoming Events
    • On-Demand Events
  • Sponsored Content
  • Related Sites
    • Techstrong Group
    • Container Journal
    • Security Boulevard
    • Techstrong Research
    • DevOps Chat
    • DevOps Dozen
    • DevOps TV
    • Techstrong TV
    • Techstrong.tv Podcast
    • Techstrong.tv - Twitch
  • Media Kit
  • About
  • Sponsor
  • AI
  • Cloud
  • Continuous Delivery
  • Continuous Testing
  • DataOps
  • DevSecOps
  • DevOps Onramp
  • Platform Engineering
  • Low-Code/No-Code
  • IT as Code
  • More
    • Application Performance Management/Monitoring
    • Culture
    • Enterprise DevOps
    • ROELBOB
Hot Topics
  • npm is Scam-Spam Cesspool ¦ Google in Microsoft Antitrust Thrust
  • 5 Key Performance Metrics to Track in 2023
  • Debunking Myths About Reliability
  • New Relic Bets on AI to Advance Observability
  • Vega Cloud Commits to Reducing Cloud Costs

Home » Latest News Releases » TigerGraph Demonstrates Scalability to Support Massive Data Volumes, Complex Workloads and Real-World Business Challenges

TigerGraph Demonstrates Scalability to Support Massive Data Volumes, Complex Workloads and Real-World Business Challenges

By: Deborah Schalm on October 19, 2020 Leave a Comment

Company Achieves “Industry First” Results in New Graph Database Performance Benchmark

Recent Posts By Deborah Schalm
  • Exabeam Reinvents Security Analytics with Fusion XDR and Fusion SIEM Cloud Products to Address Security Needs at Scale
  • New Study Reveals Importance of Optimized Strategy for the Selection, Support, and Maintenance of Open Source Software
  • Applitools Integrates With Rally for Fast and Automated Bug Management
More from Deborah Schalm
Related Posts
  • TigerGraph Demonstrates Scalability to Support Massive Data Volumes, Complex Workloads and Real-World Business Challenges
  • TigerGraph Continues to Drive Graph Analytics and AI Market Momentum, Unveils TigerGraph Cloud on Google Cloud Platform and Expanded Global Developer Community
  • TigerGraph Offers Multi-Cloud Graph Database-As-A-Service With Availability On Microsoft Azure
    Related Categories
  • Latest News Releases
    Related Topics
  • TigerGraph
Show more
Show less

REDWOOD CITY, CA – Oct. 19, 2020 – TigerGraph, the only scalable graph database for the enterprise, today announced the results of the first comprehensive graph data management benchmark study using nearly 5TB of raw data on a cluster of machines – and the performance numbers prove graph can scale with real data, in real time. The company used the Linked Data Benchmark Council Social Network Benchmark (LDBC SNB), recognized as the reference standard for evaluating graph technology performance with intensive analytical and transactional workloads. TigerGraph is the industry’s first vendor to report LDBC benchmark results at this scale. TigerGraph is able to run deep-link OLAP queries on a graph of almost nine billion vertices (entities) and more than 60 billion edges (relationships), returning results in under a minute.

TechStrong Con 2023Sponsorships Available

“This benchmark and these results are significant, both for TigerGraph and the overall market. While TigerGraph has multiple customers in production with 10X data size and number of entities/relationships, this is the first public benchmark report where anyone can download the data, queries, and perform the benchmark. No other graph database vendor or relational database vendor has demonstrated equivalent analytical capabilities or performance numbers,” said Dr. Yu Xu, CEO and founder, TigerGraph. “If there was lingering uncertainty about graph’s ability to scale to accommodate large data volumes in record time, these results should eliminate those doubts. Graph is the engine that enables us to answer high-value business questions with complex real data, in real time, at scale. TigerGraph’s ongoing work in advanced graph analytics has been validated by market recognition, innovative customer applications and continued product evolution – and these benchmark results confirm the company’s position as a clear market leader, succeeding where other vendors have failed.”

Historically, enterprises in multiple industries – from financial services to healthcare – have struggled with numerous graph-related challenges as they work to unlock real value from connected data. These challenges include an inability to support large data volumes, slow query performance, and lack of flexibility with existing BI tools. TigerGraph has addressed these pain points with the world’s fastest and most scalable graph platform, providing massive scalability of data volumes, fast deep-link analysis for real-time performance and an offering that is delivered as a service and on-prem. TigerGraph’s proven technology connects data silos for deeper, wider and operational analytics at scale.

For this latest benchmark, TigerGraph’s performance was measured using the LDBC SNB

Benchmark scale-factor 10K dataset (4.8TB raw data, 8.86B vertices, 61.77B edges,) on a distributed cluster. The implementation uses GSQL, a query language developed by TigerGraph. The queries were compiled and loaded into the database as stored procedures.

We tested TigerGraph’s performance with three types of queries: IS Workload (all queries answered in one to three seconds), IC Workload (all queries answered in three to nine seconds) and BI Workload (the majority of OLAP-style iterative and/or deep-link graph queries were answered in under one minute). Each query was performed three times, and the median of the elapsed times presented as the final latency time. Each query was performed on clusters of 24 machines, 18 machines and 12 machines, respectively.

The LDBC SNB benchmark is an industry-respected test for confirming a graph platform’s performance while executing complex business intelligence and advanced analytics tasks.

To access the full report with detailed step-by-step instructions on how to perform/repeat the benchmark, please visit: https://www.tigergraph.com/benchmark/

Helpful Links

  • Graph + AI World
  • TigerGraph Cloud
  • TigerGraph Developer Community
  • TigerGraph Certification
  • TigerGraph Website
  • TigerGraph Blog
  • TigerGraph on Twitter
  • TigerGraph on LinkedIn

About TigerGraph

TigerGraph is the only scalable graph database for the enterprise. TigerGraph’s proven technology connects data silos for deeper, wider and operational analytics at scale. Four out of the top five global banks use TigerGraph for real-time fraud detection. Over 50 million patients receive care path recommendations to assist them on their wellness journey. 300 million consumers receive personalized offers with recommendation engines powered by TigerGraph. The energy infrastructure for 1 billion people is optimized by TigerGraph for reducing power outages. TigerGraph’s proven technology supports applications such as fraud detection, customer 360, MDM, IoT, AI, and machine learning. The company is headquartered in Redwood City, California, USA. Follow TigerGraph on Twitter at @TigerGraphDB or start free with tigergraph.com/cloud or download TigerGraph Enterprise Free License.

 

Filed Under: Latest News Releases Tagged With: TigerGraph

« The Low-Code/No-Code Revolution: Join the Conversation
Defeating DevOps Demons and Haunted Systems »

Techstrong TV – Live

Click full-screen to enable volume control
Watch latest episodes and shows

Upcoming Webinars

https://webinars.devops.com/overcoming-business-challenges-with-automation-of-sap-processes
Tuesday, April 4, 2023 - 11:00 am EDT
Key Strategies for a Secure and Productive Hybrid Workforce
Tuesday, April 4, 2023 - 1:00 pm EDT
Using Value Stream Automation Patterns and Analytics to Accelerate DevOps
Thursday, April 6, 2023 - 1:00 pm EDT

Sponsored Content

The Google Cloud DevOps Awards: Apply Now!

January 10, 2023 | Brenna Washington

Codenotary Extends Dynamic SBOM Reach to Serverless Computing Platforms

December 9, 2022 | Mike Vizard

Why a Low-Code Platform Should Have Pro-Code Capabilities

March 24, 2021 | Andrew Manby

AWS Well-Architected Framework Elevates Agility

December 17, 2020 | JT Giri

Practical Approaches to Long-Term Cloud-Native Security

December 5, 2019 | Chris Tozzi

Latest from DevOps.com

npm is Scam-Spam Cesspool ¦ Google in Microsoft Antitrust Thrust
March 31, 2023 | Richi Jennings
5 Key Performance Metrics to Track in 2023
March 31, 2023 | Sarah Guthals
Debunking Myths About Reliability
March 31, 2023 | Kit Merker
New Relic Bets on AI to Advance Observability
March 30, 2023 | Mike Vizard
Vega Cloud Commits to Reducing Cloud Costs
March 30, 2023 | Mike Vizard

TSTV Podcast

On-Demand Webinars

DevOps.com Webinar ReplaysDevOps.com Webinar Replays

GET THE TOP STORIES OF THE WEEK

Most Read on DevOps.com

Don’t Make Big Tech’s Mistakes: Build Leaner IT Teams Instead
March 27, 2023 | Olivier Maes
How to Supercharge Your Engineering Teams
March 27, 2023 | Sean Knapp
Five Great DevOps Job Opportunities
March 27, 2023 | Mike Vizard
The Power of Observability: Performance and Reliability
March 29, 2023 | Javier Antich
Cloud Management Issues Are Coming to a Head
March 29, 2023 | Mike Vizard
  • Home
  • About DevOps.com
  • Meet our Authors
  • Write for DevOps.com
  • Media Kit
  • Sponsor Info
  • Copyright
  • TOS
  • Privacy Policy

Powered by Techstrong Group, Inc.

© 2023 ·Techstrong Group, Inc.All rights reserved.