Skip to content
START FOR FREE
START FOR FREE
  • SUPPORT
  • COMMUNITY
  • CONTACT US
  • SUPPORT
  • COMMUNITY
  • CONTACT US
MENUMENU
  • Products
    • The World’s Fastest and Most Scalable Graph Platform

      LEARN MORE

      Watch a TigerGraph Demo

      TIGERGRAPH CLOUD

      • Overview
      • TigerGraph Cloud Suite
      • FAQ
      • Pricing

      USER TOOLS

      • GraphStudio
      • Insights
      • Application Workbenches
      • Connectors and Drivers
      • Starter Kits
      • openCypher Support

      TIGERGRAPH DB

      • Overview
      • GSQL Query Language
      • Compare Editions

      GRAPH DATA SCIENCE

      • Graph Data Science Library
      • Machine Learning Workbench

      Success Plans

  • Solutions
    • The World’s Fastest and Most Scalable Graph Platform

      LEARN MORE

      Watch a TigerGraph Demo

      Solutions

      • Solutions Overview

      INCREASE REVENUE

      • Customer Journey/360
      • Product Marketing
      • Entity Resolution
      • Recommendation Engine

      MANAGE RISK

      • Fraud Detection
      • Anti-Money Laundering
      • Threat Detection
      • Risk Monitoring

      IMPROVE OPERATIONS

      • Supply Chain Analysis
      • Energy Management
      • Network Optimization

      By Industry

      • Advertising, Media & Entertainment
      • Financial Services
      • Healthcare & Life Sciences

      FOUNDATIONAL

      • AI & Machine Learning
      • Time Series Analysis
      • Geospatial Analysis
  • Customers
    • The World’s Fastest and Most Scalable Graph Platform

      LEARN MORE

      CUSTOMER SUCCESS STORIES

      • Ford
      • Intuit
      • JPMorgan Chase
      • READ MORE SUCCESS STORIES
      • Jaguar Land Rover
      • Xbox
  • Partners
    • The World’s Fastest and Most Scalable Graph Platform

      LEARN MORE

      PARTNER PROGRAM

      • Partner Benefits
      • TigerGraph Partners
      • Sign Up
      TigerGraph partners with organizations that offer complementary technology solutions and services.​
  • Resources
    • The World’s Fastest and Most Scalable Graph Platform

      LEARN MORE

      BLOG

      • TigerGraph Blog

      RESOURCES

      • Resource Library
      • Benchmarks
      • Demos
      • O'Reilly Graph + ML Book

      EVENTS & WEBINARS

      • Events &Trade Shows
      • Webinars

      DEVELOPERS

      • Documentation
      • Ecosystem
      • Developers Hub
      • Community Forum

      SUPPORT

      • Contact Support
      • Production Guidelines

      EDUCATION

      • Training & Certifications
  • Company
    • Join the World’s Fastest and Most Scalable Graph Platform

      WE ARE HIRING

      COMPANY

      • Company Overview
      • Leadership
      • Legal Terms
      • Patents
      • Security and Compliance

      CAREERS

      • Join Us
      • Open Positions

      AWARDS

      • Awards and Recognition
      • Leader in Forrester Wave
      • Gartner Research

      PRESS RELEASE

      • Read All Press Releases
      TigerGraph Debuts TigerGraph CoPilot for Graph-Augmented AI, New Cloud-Native Generation of TigerGraph Cloud, and Solution Kits
      April 30, 2024
      Read More »

      NEWS

      • Read All News

      Best paper award at International Conference on Very Large Data Bases

      New TigerGraph CEO Refocuses Efforts on Enterprise Customers

  • START FREE
    • The World’s Fastest and Most Scalable Graph Platform

      GET STARTED

      • Request a Demo
      • CONTACT US
      • Try TigerGraph
      • START FREE
      • TRY AN ONLINE DEMO

The Decade of the Graph: 2021 Illustrates that Graph is entering the mainstream  

  • Yu Xu
  • June 29, 2021
  • blog, Graph Database Market, TigerGraph
  • Blog >
  • The Decade of the Graph: 2021 Illustrates that Graph is entering the mainstream  

TigerGraph came out of stealth in 2017, and every year since has been coined “The Year of the Graph” by experts, journalists, and market watchers due to the accelerating momentum.  2018, 2019, and 2020 each had incremental “Year of the Graph” potential. In those years, more and more enterprises adopted graph at scale for increasingly critical applications. Now, just six months into 2021, graph technology companies have attracted more than $450 million in additional funding — and we’re only halfway through the year.  Considering the graph market’s continual evolution, growth, and innovation, we think “The Year of the Graph” should be renamed “The Decade of the Graph.” Let’s look at the developments in the last few months to understand this better. 

November 2020 

Forrester released the Forrester Wave Report for Graph Data Platforms.  A tip of our collective hat to Noel Yuhanna, Vice President, Principal Analyst, and his team at Forrester, saw the momentum for Graph and published this detailed research report to help enterprises evaluate various offerings in the Graph technology market. 

December 2020 

Earlier in 2020, Gartner’s report, “Top Trends in Data and Analytics for 2021” by Rita Sallam, Distinguished VP and Fellow, forecasted the adoption of Graph as a part of data and analytics projects in enterprises. “By 2025, graph technologies will be used in 80% of data and analytics innovations, up from 10% in 2021, facilitating rapid decision making across the enterprise.” 

In December 2020, Gartner released the research report titled “Graph steps onto the main stage data and analytics”. Mark Beyer, Distinguished Vice President Analyst at Gartner, weighed in on whether Graph is an essential technology. “To Graph or Not to Graph? That is NOT the Question – You Will Graph.”  

January 2021

Neo4j announced the general availability of Neo4j Aura™ Enterprise.

February 2021

In February, TigerGraph announced $105 million in Series C funding, and shortly after, Katana Graph announced $28.5 million in Series A funding.

TigerGraph also hit the ground running in the Asia Pacific (APAC) region and hired our VP, Joe Lee, out of Singapore. Since then, we have been hiring aggressively not only in APAC but around the world.

April 2021

In April, TigerGraph hosted the second Graph + AI Summit with nearly 7,000 attendees, reflecting strong, community-wide interest in learning more about how graph and AI can accelerate analytics. Graph + AI Summit had speakers from JPMorgan, Jaguar Land Rover, Pinterest, Forrester, Accenture, NewDay, Intuit, KPMG, Intel, Dell, IBM, and more technology-first companies. Over 180 companies from the Fortune 500 attended from 74 countries, marking this as the largest and only open graph conference with a worldwide audience.

TigerGraph has been available in the marketplace for all three leading clouds – Amazon’s AWS, Microsoft Azure, and Google Cloud Platform(GCP) for over two years. TigerGraph Cloud, our graph-database-as-a-service, added support for GCP workloads, making it the only distributed graph-database-as-a-service available with a choice of running workloads on AWS, Azure, and GCP. 

May 2021

Gartner released the ”Market Guide for Graph Database Management Solutions.” The report predicted that “graph database management solutions (DBMSs) are growing in awareness and popularity as they and their associated tools become more mature.” (Gartner, Market Guide for Graph Database Management Solutions, By Merv Adrian, Afraz Jaffri, Donald Feinberg, May 24, 2021) 

June 2021

Earlier this month had multiple milestones, the first being Neo4j’s announcement of a $325 million funding round. We are so excited to see “the largest investment in a private database company” be in the graph space. This round of funding further emphasizes the continuing, explosive growth of graph, and we congratulate Neo4j on this outstanding achievement.

At TigerGraph, we just announced plans to open a center of innovation in San Diego. TigerGraph has deep roots in the area: our CEO, Dr. Yu Xu, and COO, Todd Blaschka, are UC San Diego alumni, and our Chief Technologist, Dr. Alin Deutsch, is a professor in UC San Diego’s Computer Science and Engineering department. The center of innovation will open in Q3 2021 with plans to hire more than 100 professionals for this site. 

Also, our TigerGraph team in APAC recently announced that Merkle Science uses TigerGraph to preempt and prevent financial crime. Merkle Science evaluated all available graph vendors and chose TigerGraph for their cryptocurrency network graph, which includes over 2.5 terabytes of data, 5 billion vertices (entities), and 36 billion edges (relationships). And this week, the TigerGraph APAC team announced a multi-year deal with the Australian Taxation Office (ATO). Our market-leading graph technology is helping the ATO  reduce tax avoidance by detecting intricate and multi-layered relationships between individuals and organizations. 

Building on these exciting developments, the first half of 2021 saw various milestones for the adoption of Graph among customers, partners, and the developer community.

Expanding Graph Use Cases and Partner Ecosystem 

As more organizations scale up with graph technology and deploy it into production, we have seen a steady rise in the staple graph use cases – fraud detection, anti-money laundering, entity resolution, and customer 360.  It’s wonderful to see new use cases emerge, including improving cancer treatment, finding suspicious activity among crypto-currency transactions, and investigating tax avoidance with higher accuracy. 

The partner ecosystem for Graph has expanded to include prominent vendors such as Dell, Xilinx, and Intel driving new analytics and machine learning workloads on optimized hardware. Business data visualization leaders such as Tableau have stepped up to the plate to integrate their products with graphs for combining the two worlds – the world of relational data and the world of connected data or Graphs.  All of this means one thing: Graph is mainstream (as in the words of Geoffrey Moore, graph has “crossed the chasm”). 

GQL – Graph Query Language Standard

A standard language for querying graph data, GQL, is currently being developed as an ISO/ANSI standard and will be published next year. Remarkably, this is the first ISO query language standard in the circa 40 years since the publication of SQL, which constitutes a powerful testament to the industrial importance of graph data.  TigerGraph is one of the active participants in the standardization process, with its language GSQL is one example of influencing the GQL standard. 

GSQL’s capabilities go beyond those of GQL, pioneering advanced features such as a novel paradigm for aggregating graph data more flexibly and efficiently than in SQL style (published in an ACM SIGMOD 2019 paper); and a natural way to parallelize query execution (pioneered in an ACM SIGMOD 2021 paper to parallelize even relational SQL queries for significant performance gains).

Graph is reaching the tipping point for broad adoption, and the market is ready for a leader to drive the transformation and business value with Graph. 

Who is going to be the Snowflake of Graph? And Why

The size of the investment,  the number of players in the graph market, and the case studies of customers with large deployments in production tell us the graph market is mainstream now.  This begs the question: who will dominate the market? Who will be the Snowflake of Graph disrupting incumbents and delivering massive business value in a short period of time? In the end, the engineers vote with their time and the buyers vote with their money to make that decision.

What matters in choosing a Graph Database

As you consider the purchase of a graph database, here are the key questions that most buyers work through:

  1. Where is the graph market going? How should I prepare?
  2. Will my selected graph database continue to serve my needs now and into the future as the complexity and volume of my data grow?  In other words, is my choice or investment future-proof? 
  3. How easy is it to scale out, i.e., distribute the data across multiple machines to avoid adding CPUs or RAM to a single, expensive machine? 
  4. What is the total cost of ownership for the selected graph database considering the initial cost of the license (on-premises) or subscription (cloud-based service), cost of infrastructure, whether physical hardware or cloud resources and cost of maintaining and upgrading my solution? 

Here’s a buyer’s guide for graph databases to answer these key questions and help you make this important decision for your organization. 

Brad Spiers, Executive Director, JPMorgan Chase leads the Graph initiative for the company and shared the following during Graph + AI Spring 2021 in his keynote – “Graph algorithms scale exponentially, therefore, Graph requires scalable software.”  I couldn’t agree more. 

Next week, I will share how TigerGraph is born parallel, distributed and high performance, and how no other graph vendor or project is even close to TigerGraph in architecture and performance due to historical and technical limitations. Architecture will be a critical factor for deciding who will be the Snowflake of Graph market. It’s the architecture, guys!    

I am looking forward to the decade of Graph, as the technology transforms the enterprise landscape. Welcome to the Age of Graph!

You Might Also Like

Graph Developer Proficiency Rating

Graph Developer Proficiency Rating

June 16, 2024
Supply Chain Digital Twins Enable Analytics and Resiliency

Supply Chain Digital Twins Enable Analytics...

May 29, 2024
Putting the Customer First: The Power of the Empty Chair

Putting the Customer First: The Power...

May 17, 2024

Yu Xu

TigerGraph Blog

  • Categories
    • blogs
      • Customer 360
      • Cybersecurity
      • Developers
      • Digital Twin
      • Engineers
      • Fraud / Anti-Money Laundering
      • GQL
      • GSQL
      • Supply Chain
      • TigerGraph
      • TigerGraph Cloud
    • Graph AI On Demand
      • Customer Spotlight
      • Digital Transformation, Management, & Strategy
      • Finance, Banking, Insurance
      • Graph + AI
      • Graph Algorithms
      • Retail, Manufacturing, and Supply Chain
    • RulesEngine
    • Video
  • Recent Posts

    • Graph Developer Proficiency Rating
    • Supply Chain Digital Twins Enable Analytics and Resiliency
    • Welcome to ENGAGE 2024!
    • Putting the Customer First: The Power of the Empty Chair
    • Join TigerGraph at ENGAGE 2024: Advancing Financial Crime Solutions
    TigerGraph

    Product

    SOLUTIONS

    customers

    RESOURCES

    start for free

    TIGERGRAPH DB
    • Overview
    • Features
    • GSQL Query Language
    GRAPH DATA SCIENCE
    • Graph Data Science Library
    • Machine Learning Workbench
    TIGERGRAPH CLOUD
    • Overview
    • Cloud Starter Kits
    • Login
    • FAQ
    • Pricing
    • Cloud Marketplaces
    USEr TOOLS
    • GraphStudio
    • TigerGraph Insights
    • Application Workbenches
    • Connectors and Drivers
    • Starter Kits
    • openCypher Support
    SOLUTIONS
    • Why Graph?
    industry
    • Advertising, Media & Entertainment
    • Financial Services
    • Healthcare & Life Sciences
    use cases
    • Benefits
    • Product & Service Marketing
    • Entity Resolution
    • Customer 360/MDM
    • Recommendation Engine
    • Anti-Money Laundering
    • Cybersecurity Threat Detection
    • Fraud Detection
    • Risk Assessment & Monitoring
    • Energy Management
    • Network & IT Management
    • Supply Chain Analysis
    • AI & Machine Learning
    • Geospatial Analysis
    • Time Series Analysis
    success stories
    • Customer Success Stories

    Partners

    Partner program
    • Partner Benefits
    • TigerGraph Partners
    • Sign Up
    LIBRARY
    • Resources
    • Benchmark
    • Webinars
    Events
    • Trade Shows
    • Graph + AI Summit
    • Million Dollar Challenge
    EDUCATION
    • Training & Certifications
    Blog
    • TigerGraph Blog
    DEVELOPERS
    • Developers Hub
    • Community Forum
    • Documentation
    • Ecosystem

    COMPANY

    Company
    • Overview
    • Careers
    • News
    • Press Release
    • Awards
    • Legal Terms
    • Patents
    • Security and Compliance
    • Contact
    Get Started
    • Start Free
    • Compare Editions
    • Online Demo - Test Drive
    • Request a Demo

    Product

    • Overview
    • TigerGraph 3.0
    • TIGERGRAPH DB
    • TIGERGRAPH CLOUD
    • GRAPHSTUDIO
    • TRY NOW

    customers

    • success stories

    RESOURCES

    • LIBRARY
    • Events
    • EDUCATION
    • BLOG
    • DEVELOPERS

    SOLUTIONS

    • SOLUTIONS
    • use cases
    • industry

    Partners

    • partner program

    company

    • Overview
    • news
    • Press Release
    • Awards

    start for free

    • Request Demo
    • take a test drive
    • SUPPORT
    • COMMUNITY
    • CONTACT
    • Copyright © 2024 TigerGraph
    • Privacy Policy
    • Linkedin
    • Twitter

    Copyright © 2020 TigerGraph | Privacy Policy

    Copyright © 2020 TigerGraph Privacy Policy

    • SUPPORT
    • COMMUNITY
    • COMPANY
    • CONTACT
    • Linkedin
    • Facebook
    • Twitter

    Copyright © 2020 TigerGraph

    Privacy Policy

    • Products
    • Solutions
    • Customers
    • Partners
    • Resources
    • Company
    • START FREE
    START FOR FREE
    START FOR FREE
    TigerGraph
    PRODUCT
    PRODUCT
    • Overview
    • GraphStudio UI
    • Graph Data Science Library
    TIGERGRAPH DB
    • Overview
    • Features
    • GSQL Query Language
    TIGERGRAPH CLOUD
    • Overview
    • Cloud Starter Kits
    TRY TIGERGRAPH
    • Get Started for Free
    • Compare Editions
    SOLUTIONS
    SOLUTIONS
    • Why Graph?
    use cases
    • Benefits
    • Product & Service Marketing
    • Entity Resolution
    • Customer Journey/360
    • Recommendation Engine
    • Anti-Money Laundering (AML)
    • Cybersecurity Threat Detection
    • Fraud Detection
    • Risk Assessment & Monitoring
    • Energy Management
    • Network Resources Optimization
    • Supply Chain Analysis
    • AI & Machine Learning
    • Geospatial Analysis
    • Time Series Analysis
    industry
    • Advertising, Media & Entertainment
    • Financial Services
    • Healthcare & Life Sciences
    CUSTOMERS
    read all success stories

     

    PARTNERS
    Partner program
    • Partner Benefits
    • TigerGraph Partners
    • Sign Up
    RESOURCES
    LIBRARY
    • Resource Library
    • Benchmark
    • Webinars
    Events
    • Trade Shows
    • Graph + AI Summit
    • Graph for All - Million Dollar Challenge
    EDUCATION
    • TigerGraph Academy
    • Certification
    Blog
    • TigerGraph Blog
    DEVELOPERS
    • Developers Hub
    • Community Forum
    • Documentation
    • Ecosystem
    COMPANY
    COMPANY
    • Overview
    • Leadership
    • Careers  
    NEWS
    PRESS RELEASE
    AWARDS
    START FREE
    Start Free
    • Request a Demo
    • SUPPORT
    • COMMUNITY
    • CONTACT
    Dr. Jay Yu

    Dr. Jay Yu | VP of Product and Innovation

    Dr. Jay Yu is the VP of Product and Innovation at TigerGraph, responsible for driving product strategy and roadmap, as well as fostering innovation in graph database engine and graph solutions. He is a proven hands-on full-stack innovator, strategic thinker, leader, and evangelist for new technology and product, with 25+ years of industry experience ranging from highly scalable distributed database engine company (Teradata), B2B e-commerce services startup, to consumer-facing financial applications company (Intuit). He received his PhD from the University of Wisconsin - Madison, where he specialized in large scale parallel database systems

    Todd Blaschka | COO

    Todd Blaschka is a veteran in the enterprise software industry. He is passionate about creating entirely new segments in data, analytics and AI, with the distinction of establishing graph analytics as a Gartner Top 10 Data & Analytics trend two years in a row. By fervently focusing on critical industry and customer challenges, the companies under Todd's leadership have delivered significant quantifiable results to the largest brands in the world through channel and solution sales approach. Prior to TigerGraph, Todd led go to market and customer experience functions at Clustrix (acquired by MariaDB), Dataguise and IBM.