home shape

The Rise of Graph

Graph databases are designed to handle complex and interconnected data with unmatched efficiency

right blob long
scroll down line
gartner image

“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.”

– August 2022 Market Guide for Graph Database Management Systems
icon 1

Get started with
Graph today

(no credit card required), and experience the shortest time to value for a hosted graph DB.

lowest tco icon

Download The Graph DB Buyer’s Guide

Questions to ask Legacy Graph DB Vendors

get started icon v2

Read the
Case Studies

Learn why companies across industries are switching to ArangoDB for Graph.

A New Paradigm data manage img 1

Connected World

A New Paradigm in Data Management

We live in a highly connected world and need a database to match it. Traditional databases struggle here, and this is where Graph Databases step in. Graph revolutionizes data insights by focusing on relationships as a foundation for advanced analytics and artificial intelligence.

Real-time

Discovering
Hidden Patterns

Graph database handle vast interconnected datasets, deliver real-time insights, and power applications that require intricate relationships,  setting them apart from traditional databases. This is key to unlocking hidden patterns for fraud detection, supply chain optimization, personalized marketing, and many more use cases.

Discovering Hidden Patterns imng 2
background img
Graph Database vs SQL Databases img 3

structured vs. interconnected

Graph Database
vs. SQL Databases

SQL databases are great for structured data but struggle with complex relationships. Joining tables for interconnected data leads to complex queries with slow performance. As data and relationships grow, SQL databases are less efficient than graph DBs, which excel in managing vast interconnected datasets, maintaining high performance, and navigating relationships easily.

AI/ML-ready

Relationships
The Pillar of AI/ML Models

Data relationships are crucial for advanced analytics and AI/ML. Graph databases excel at capturing and analyzing these relationships, offering valuable insights and accurate predictions within machine learning models. They are essential for applications like recommendation engines, fraud detection, and social network analysis.

Relationships The
optimal visual img 4

explore

Optimal
Visualization

Graph data is ready for visual representation. Graph databases excel at exploring relationships and unlocking hidden business value. Businesses can visually traverse graph data to discover patterns and identify connections.

icon 1

Get started with
Graph today

(no credit card required), and experience the shortest time to value for a hosted graph DB.

lowest tco icon

Download The Graph DB Buyer’s Guide

Questions to ask Legacy Graph DB Vendors

get started icon v2

Read the
Case Studies

Learn why companies across industries are switching to ArangoDB for Graph.

Get Started With ArangoGraph

Experience the shortest time to value for a hosted graph DB (no credit card required).