Master Deck: GraphSummit Bengaluru (Oct 7)

neo4j 0 views 123 slides Oct 10, 2025
Slide 1
Slide 1 of 141
Slide 1
1
Slide 2
2
Slide 3
3
Slide 4
4
Slide 5
5
Slide 6
6
Slide 7
7
Slide 8
8
Slide 9
9
Slide 10
10
Slide 11
11
Slide 12
12
Slide 13
13
Slide 14
14
Slide 15
15
Slide 16
16
Slide 17
17
Slide 18
18
Slide 19
19
Slide 20
20
Slide 21
21
Slide 22
22
Slide 23
23
Slide 24
24
Slide 25
25
Slide 26
26
Slide 27
27
Slide 28
28
Slide 29
29
Slide 30
30
Slide 31
31
Slide 32
32
Slide 33
33
Slide 34
34
Slide 35
35
Slide 36
36
Slide 37
37
Slide 38
38
Slide 39
39
Slide 40
40
Slide 41
41
Slide 42
42
Slide 43
43
Slide 44
44
Slide 45
45
Slide 46
46
Slide 47
47
Slide 48
48
Slide 49
49
Slide 50
50
Slide 51
51
Slide 52
52
Slide 53
53
Slide 54
54
Slide 55
55
Slide 56
56
Slide 57
57
Slide 58
58
Slide 59
59
Slide 60
60
Slide 61
61
Slide 62
62
Slide 63
63
Slide 64
64
Slide 65
65
Slide 66
66
Slide 67
67
Slide 68
68
Slide 69
69
Slide 70
70
Slide 71
71
Slide 72
72
Slide 73
73
Slide 74
74
Slide 75
75
Slide 76
76
Slide 77
77
Slide 78
78
Slide 79
79
Slide 80
80
Slide 81
81
Slide 82
82
Slide 83
83
Slide 84
84
Slide 85
85
Slide 86
86
Slide 87
87
Slide 88
88
Slide 89
89
Slide 90
90
Slide 91
91
Slide 92
92
Slide 93
93
Slide 94
94
Slide 95
95
Slide 96
96
Slide 97
97
Slide 98
98
Slide 99
99
Slide 100
100
Slide 101
101
Slide 102
102
Slide 103
103
Slide 104
104
Slide 105
105
Slide 106
106
Slide 107
107
Slide 108
108
Slide 109
109
Slide 110
110
Slide 111
111
Slide 112
112
Slide 113
113
Slide 114
114
Slide 115
115
Slide 116
116
Slide 117
117
Slide 118
118
Slide 119
119
Slide 120
120
Slide 121
121
Slide 122
122
Slide 123
123
Slide 124
124
Slide 125
125
Slide 126
126
Slide 127
127
Slide 128
128
Slide 129
129
Slide 130
130
Slide 131
131
Slide 132
132
Slide 133
133
Slide 134
134
Slide 135
135
Slide 136
136
Slide 137
137
Slide 138
138
Slide 139
139
Slide 140
140
Slide 141
141

About This Presentation

Run of Show deck from GraphSummit Bengaluru held on Oct 7, 2025.
Contains: Agenda, Keynote, Customer Stories & Product Vision & Roadmap from Neo4j
Speakers: Jim Webber, Sunil Thakur, Shalabh Garg, Anurag Tandon


Slide Content

TABLE OF CONTENTS
PLEASE DELETE BEFORE SHOWTIME
Housekeeping: 1 - 8
Keynote: 9 - 53
Product Vision 54 - 95
Add customer decks in at 95

BEFORE START
Play this looping video while attendees arrive.

OPENER
Play this cold open video right before MC takes the stage.

Slido & Survey
Network:
[insert network]

Password:
[insert password]

Wi-Fi
Let’s get you
connected
INSERT QR CODE

Welcome to

Thank
you to our
sponsors

Agenda 
09:30 Welcome from Neo4j
Ish Thukral, Country Head - India, Neo4j
09:40 Graphs + AI: Transform Your Data Into Knowledge
Jim Webber, Chief Scientist, Neo4j
10:10 Connected Data, Smarter AI: The AWS - Neo4j Advantage
Biswajit Das, Head of Data & AI, AWS
10:30 Graph-Driven Digital Twin of Enterprise IS: The Infosys Approach
Sunil Thakur, Associate Vice President – Data & Analytics at Infosys
10:50 Morning Break & Networking
11:10

How OpenText Leverages Neo4j Graphs to Modernize IAM
Shalabh Garg, Principal Product Manager, OpenText
11:30 Neo4j: Product Vision & Roadmap
Anurag Tandon, VP of Product Management
& User Experience Neo4j

Agenda 
12:00 Q&A Panel
12:30 Lunch
14:00 Concurrent Hands-On Workshops

Option A: Create a Graph-Backed App from Scratch | Level 1, Junior Ballroom

Option B: Building Smarter GenAI Apps with Knowledge Graphs | Level 1, Grand Ballroom

16:30 Networking Drinks & Snacks

Graphs + AI:
Your Enterprise
Advantage
Dr. Jim Webber | Chief Scientist | Neo4j

PLACEHOLDER- FINAL SLIDE TO
BE PORTED IN WEDS
Ready for design,

Graphs
create a
more
intuitive,
connected
view of
data.
Simple,
but
powerful.

The power of
the graph model

The power of
the graph model
Relationships
connect nodes
:LOCATED_IN
Relationships can
have properties
(key-value pairs)
name: Lakshmi Kumar
date_of_birth: 1984-03-01
employee_ID: 1
City Company Employee
Nodes represent
entities
Relationships
are directional
:CEO_OF
start_date:
2022-11
toponym: Bengaluru
nickname: Garden City
org: Ajeya AI
type: Pvt. Ltd. Company
founded: 2018


Nodes typically
have properties too
Nodes usually have
one or more labels

Graphs naturally
and humanely
represent
complex
systems, cutting
through
complexity.

23
Trusted by 84 of the
9 / 10
Top Telcos
9 /10
Top Aerospace & Defense
20 / 20
Top US banks
10 / 10
Top Automakers
9 / 10
Top Pharmaceuticals
10 / 10
Top Technology & Software
8 / 10
Top Insurance Companies
8 / 10
Top Retailers

2,100+ Customers
Worldwide

What is this?
●Has been extensively
trained on a wide-range of
eclectic subjects
●Answers confidently, even
when making things up
●Opaque about reasoning
●Expensive
25

J

J

Knowledge
Facts
Context
Language
Statistics
Creativity
KG LLM
AI needs knowledge graphs
+

●LLMs are a lossy compression of the
internet as it was

●Knowledge graphs provide lossless
information you care about now

AI is changing how we develop applications.
Quickly.
"AI is fundamentally disrupting
software development ...”

- Innovation Endeavors (VC) / Axios, June 2025

“...AI pipelines need dynamic schemas
to [handle] evolving sources.”

-2025 Future Enterprise Resiliency & Spending, IDC

“A business data fabric reduces
latency and powers advanced AI…”

- Venture Beat, Enhancing business agility with rapid
data integration and advanced AI, 2025

"Organizations with rich, [connected]
knowledge graphs will have a
significant competitive advantage…”

- Gartner Perception is the New Superpower For the
Future of Analytics and BI, 2025

"[GenAI]…will disrupt the very
software that enabled the last wave
of transformation."

- Harvard Business Review, May 2025

30

Why we build applications is
NOT changing
Problem to Solve
Business Process to Map
Questions to Answer
Where
When
How
Who
What
?
31

Dynamic,
Context-Aware &
Autonomous
Applications
Predefined
Workflows on
Simple CRUD
Data Models
Real time
decisions
Proactive
Connected
context
Agents working in
coordination
Behavior by code,
prompts & models
Agentic AI
Create
(Create, Read,
Update, Delete)
Upload
Read
Update
Delete
CRUD
32

From Static Logic to Dynamic Reasoning1
Hardcoded
rules defined at
compile-time
Create
(Create, Read,
Update, Delete)
Upload
Read
Update
Delete
CRUD
Reason, adapt & make
decisions in real time
based on goals, context
& changing inputs
Real time
decisions
Proactive
Connected
context
Agents working in
coordination
Behavior by code,
prompts & models
Agentic AI
33

From Request-Response to Goal-Oriented2
34
React to user
input
Create
(Create, Read,
Update, Delete)
Upload
Read
Update
Delete
CRUD
Proactively pursue goals,
orchestrate tasks, and
learn from feedback
Real time
decisions
Proactive
Connected
context
Agents working in
coordination
Behavior by code,
prompts & models
Agentic AI

From Monoliths to Composable Systems3
35
Tightly coupled
architecture
Create
(Create, Read,
Update, Delete)
Upload
Read
Update
Delete
CRUD
Multiple specialized
agents working in
coordination
Real time
decisions
Proactive
Connected
context
Agents working in
coordination
Behavior by code,
prompts & models
Agentic AI

From Code-Centric to Prompt-Driven4
36
Behavior defined
exclusively by
code
Create
(Create, Read,
Update, Delete)
Upload
Read
Update
Delete
CRUD
Behavior defined by a
combination of code,
prompts and AI models
Real time
decisions
Proactive
Connected
context
Agents working in
coordination
Behavior by code,
prompts & models
Agentic AI

From CRUD to Context5
37
Logic centered
around
Create Read
Update Delete
Create
(Create, Read,
Update, Delete)
Upload
Read
Update
Delete
CRUD
Logic set by reasoning,
goals & rich, connected
context (users, tasks,
history, environment)
Real time
decisions
Proactive
Connected
context
Agents working in
coordination
Behavior by code,
prompts & models
Agentic AI

1From Static Logic to Dynamic Reasoning
From Request-Response to Goal-Oriented 2
From Monoliths to Composable Systems 3
From Code-Centric to Prompt-Driven 4
From CRUD to Context5
The Application Architecture is Changing
38

Most data is still stored
in rows & columns
Structured for fixed
questions and static data
Relationships are implied,
or even lost
Apps will
change.
So must the
data layer.
39

What must
a data layer
for AI do?

Kiruna Table
Chat History
Hi, I'm ABK the carpenter and I fixed this problem by applying 2 drops of
glue to the table legs before step 8.
Product
Bill-of-materials
Product Issue
Tracker
Kiruna Table
Assembly Guides

Kiruna Table
Chat History
Hi, I'm ABK the carpenter and I fixed this problem by applying 2 drops of
glue to the table legs before step 8.
Product
Bill-of-materials
Product Issue
Tracker
Kiruna Table
Assembly Guides

Kiruna Table
Chat History
Hi, I'm ABK the carpenter and I fixed this problem by applying 2 drops of
glue to the table legs before step 8.
Product
Bill-of-materials
Product Issue
Tracker
Kiruna Table
Assembly Guides
Unified
RAG corpus
and agentic
memory

Properties of an amazing knowledge layer for AI
Efficient Storage of
Structured, Semi-structured
and Unstructured data
1
Connects Enterprise Data
Within and Across Silos to
Provide Context for AI
2
Stores RAG Corpus and
Agentic Memory in a Unified
Platform
3
Enterprise Strength
Governance & Explainability
for trust, transparency and
compliance
4

Powerful, but it
doesn’t support
relationships

And relationships
are crucial for
context

Data Platforms
Apps Agents Tools
Application Layer
Shopping Cart Fraud Catalog Sales
But what about my existing data platform?

Data
Platforms
Apps Agents
Knowledge Graph Layer
Tools
Data Source
Data Source
Data Source
The next layer in the AI stack:

We have learned building RAG apps that
you need a more sophisticated retrieval
system. It's not good enough to have
just vector search and some
embeddings.” Satya Nadella @
Microsoft BUILD 2025 keynote
“Models are just part of the equation. For
anyone building an agent you need to be
able to have truly great access to the real
time web as well as the entire enterprise
knowledge graph.
47

Dr. Swami Sivasubramanian (AWS reInvent 2024 - Keynote)
GraphRAG - Improves Accuracy & Explainability
48

build the knowledge graph
layer for your AI applications
to enable you to

Free Aura
Credits
Free Help From
Graph Experts

Co-Marketing
Support

What does this
look like in
52

53
So what do people do?
Leading video game co.

●150+ non-technical analysts need real-time access to
data using natural language
●No holistic view across silos
●Get answers to complex questions, e.g. “How do
competitor launches impact our sales?”
CHALLENGE
Reduction in analyst time spent on routine requests.
Time-to-insight vs. traditional analytics. Time for analysis
reduced from weeks to seconds

54
How? A knowledge layer architecture

Internal
Documentation
Wikis
Enterprise
Systems
Klarna transforms knowledge access
with GraphRAG
HR Systems
↑ Driving up productivity
↑ Enhancing quality of deliverables
↑ Enabling faster delivery

Internal
Documentation
Wikis
Enterprise
Systems
Klarna transforms knowledge access
with GraphRAG
HR Systems
↑ Driving up productivity
↑ Enhancing quality of deliverables
↑ Enabling faster delivery
Daily queries processed
250K
Employee questions
answered in first year
2,000
85%
Employee adoption

Relationships are everywhere
To power your intelligent applications & systems
They transform your data into knowledge

Enjoy Graph Summit
Dr. Jim Webber | Chief Scientist | Neo4j

Digital Twin for
IT systems
Sunil Thakur
AVP (AI & Data Infosys IT)
Infosys

Since 2019
Infosys Knowledge Graph
Journey with Neo4j
Learning
Recommendations
2020
2024 - now
IS Graph
hAIreNxt
2020 and early 2021
Talent/Hiring
Recommendations
Publish Content
Recommendations
2022
2022
Account Marketing
Recommendations
Skill and other
ontologies
2023 - 2024
19 Use cases15 m Nodes191 m Relationships

Dependencies
Are you too dependent on specific individuals to
manage your code?
Do you lack clear visibility into application
dependencies, lineage, and code explainability?
Are your technical documents outdated?
Hidden cost & complexity of legacy systems
Why is this application down?
Who are the impacted users?
Who is the owner of this code / server / process / …
What does this piece of code do?
If I make this change, what else will get impacted?
How does this process work

IS Graph
Digital Twin for IT Systems
Centralized lineage solution built to know cross application
code, data, process, Infrastructure and human
dependencies – how are they interconnected, impact of one
to another & quick analysis

Discovery & Parsing (Gen AI)
Legacy Landscape Code,
System data, Documents
IS Graph
Digital Twin for IT Systems
Automation of Information extraction, processing and
inference
Modeling & integration (Neo4j)
Network schema of Nodes & Edges
Inference & Action (Gen AI)
Agentic AI, RAG and Natural
Language Querying

Graph Schema

Impact
Analysis
Use graph to get
impact application
and objects for any
SP, SSIS, Cube, K8
Service and many
more
Key Capabilities
Monitoring
& Alerts
Monitor the uptime
of all system and
infrastructure
components
GenAI
RCA
Automated error
identification and
analysis
Gen AI
Chatbot
Use Gen AI to
query about
domain, process
and system
implementation
Access
Validations
Monitor the uptime
of all system and
infrastructure
components
S/PII
Data Lineage,
archival and
GDPR
compliance
IS Graph
Digital Twin for IT Systems

Demo

Productivity & Efficiency

40% effort saving for
developers in impacted role

Code parsing & explainability –
quickly know the impact of change
in your code cross application,
understand your code
Inspirational

Infosys inhouse solution
with capability to visualize and
analyze the impact across the
organization using Neo4j
Targeted reach,
Quick Turn around
Helps to effectively collaborate
via identified impacted
application, SPOCs and not
spam each other.

What are we achieving?

Key Takeaways
Power of Knowledge Graph + Generative AI

Complexity is now navigable
Treat your entire IT environment as a single unified graph

Gen AI is your Data Translator
Gen AI efficiently parses and interprets unstructured data,
including code, configuration files, and system documents.

Neo4j Graph is the intelligent brain
Graph integrating those facts to form a digital twin, which can
answer multi hop complex questions

Gen AI links interdependencies in real time
Gen AI enables interacting with the Digital Twin using natural
language querying

Sunil Thakur
AVP (AI & Data Infosys IT)
Infosys
Thank You

[email protected]
[email protected]

Modern IAM with
Neo4j
Shalabh Kumar Garg
Principal Product Manager
07/10/2025

73OpenText ©2025. All rights reserved. 73OpenText ©2025. All rights reserved.
OpenText at a glance
22,000
employees
99
of top 100 global companies
are customers
180
countries where we
serve customers
31M
public cloud users
9,000
private cloud
deployments
120K+
enterprise customers

74OpenText ©2025. All rights reserved. 74OpenText ©2025. All rights reserved.
Business AI


OpenText Cloud Platform
OpenText Services
•Cloud delivery platform across all OpenText cloud products
•Automated deployment of services into different environments
•Unified cloud platform for cloud applications, integrations, microservices
•Single identity, simplified administration, streamlined operations
•Advisory and Implementation Services
•Managed Services and Learning
•Advanced Customer Support
•Customer Success Services
Multi-Cloud Ecosystem
OpenText Data Cloud
•Content Management and Metadata Management APIs
•Communications and Business Network APIs
•Secure Data Management APIs
•Threat Intelligence APIs
Trading Partners | Connected Subscribers | Private Cloud Environments Strategic Partners | System Integrators | Distributors | Resellers | MSPs
Business Clouds
Content
Document
Management
Capture & IDP
Information
Archiving
Process
Automation
Business
Integrations
Industry &
Departmental
Applications
Business Network
Industry
Applications &
Services
B2B
Integration
Supply Chain
Orchestration
Supply Chain
Insights
Supply Chain
Traceability
Secure
Collaboration
Experience
Customer
Communication
s
Omnichannel
Messaging
Web & Mobile
Experiences
Digital Asset
Management
Customer
Journey & Data
Digital Fax
Cybersecurity
Antivirus and
Identity
protection
IAM &
Application
Security Testing
Backup and
Recovery
Security
Operations
Data Security
and Protection
Cyber Risk
Management &
Resilience
DevOps
DevOps
Platform
Quality
Management
PPM and
Strategic
Portfolio
Management
Functional
Testing
Performance
Engineering
Test & Release
Automation
Observability &
Service Management
Service
Management
Infrastructure &
Application
Automation
Universal
Discovery
Observability
and AIOps
Network
Management
FinOps &
GreenOps
Analytics
Enterprise
Data
Warehouse
Data
Lakehouse
Data
Ingestion &
Transformation
eDiscovery
with AI
Business
Intelligence &
Insights
AI &
Advanced
Analytics

75OpenText ©2025. All rights reserved.
Worldwide Leadership across Industries
20 out of top 20
Manufacturing Companies
20 out of top 20
Telecom Companies
20 out of top 20
Insurance Companies
19 out of top 20
Retail Companies
20 out of top 20
High Tech Companies
20 out of top 20
Life Sciences Companies
20 out of top 20
Healthcare Companies
20 out of top 20
Automotive Companies
20 out of top 20
Federal Governments
19 out of top 20
Transportation Companies
20 out of top 20
Banking Companies
20 out of top 20
Oil & Gas Companies
Sources: Forbes Global 1000 and SAP Enterprise Customer List (provided by Rev Ops)
Assessment updated by Competitive and Market Intelligence June 2025
20 out of top 20
Utilities Companies
20 out of top 20
Consumer Packaged Goods Companies
99
of the 100 largest companies in
these key industries are
OpenText Customers

76OpenText ©2025. All rights reserved.
IAM Portfolio

77OpenText ©2025. All rights reserved.
OpenText IAM Portfolio – Complete Core Capabilities
Leveraging Identity to provide secure access, effective governance, scalable automation, actionable analysis and intelligent insight
•Access requests
•Access governance and certification
•Access workflows
•Security orchestration
•Business and technical role
management
•Integration to directory services
•API driven capabilities
•Windows Policy Management
•Access management to
unstructured data
•Authorization
•Monitoring, audit, compliance
•Complete list of authenticators
•MFA and passwordless options
•Integrated Risk service
•Adaptive/continuous
•IOT support and SDKs
•Mobile apps
•Integration and synchronization with
directory services
•Federated provisioning (JIT)
•Centralized management of users,
authorization policies, etc.
•User self-service (access, pwd, etc)
•Password mgmt
•User onboarding and registration
•Audit, compliance, reporting

•Keystroke and video recording
•Secrets/credential vault
•API driven
•JIT provisioning
•Authorization Services
•Reverse/forward proxy, API security
•Session management
•Full federation, OIDC, OAuth support
•Support for legacy apps
•ITSM integration
Access
Management
Privileged
Access
Management
Administrative
Tools
Privacy and
Consent
Adaptive
Authentication
Identity
Lifecycle
Management
Identity
Governance
Data Access
Governance


Access
Intelligence
and analytics

78OpenText ©2025. All rights reserved.
OpenText ©2023 All rights reserved
78
OpenText IAM holistic portfolio
Identity Foundation & Shared Services
Identities Resources History Analytics Cloud Bridge Risk Self Service
Privileged Access
Management
Workforce Identity
B2B/B2E
Customer Identity
B2C/G2C
Identity Governance
& Administration
Access
Management Policy Orchestration

79OpenText ©2025. All rights reserved.
Application
Application
Advanced
Authentication
Service
Access Management
Authorization Service Application
Policy
Enforcement
Point
(PEP)
Policy Information
Point (PIP)
Policy Decision
Point (PDP)
or
Application Data
Application
Entitlements
Identity Governance
Collecting
Entitlements
Provisioning
Entitlements &
Assignments
or
Internal
PDP
Internal
PEP
JIT External
Attributes
Policy
Administration
Point
(PAP)
User
Authenticates
and attempts
access to
application
Entitlements
Decision Maker
reviews access
MFA
Risk Engine
Risk Level
Identity Life Cycle Management and Change Orchestration
Step up
Authentication
App Identities and
their Attributes
Proprietary Authorization Mechanism
Join / Move / Leave
Processing
Identity Correlation
Attribute-level
Authority
Event
Transformation
Detecting
change
events
Submitting
change
events
Common Identity
Repository (Neo4j)
Privileged Session Management
Credential Vault

80OpenText ©2025. All rights reserved.
Database Choices

81
Database Choices
Object Database
Key Value Pair Database
•DynamoDB
•FoundationDB
Columnar Database
•Cassandra
•Vertica
•ScyllaDB
Relational Database
•PostgreSQL
Graph Database

82OpenText ©2025. All rights reserved.
•Representing relationships and properties
•Traversal queries are highly performant
•Flexible and extensible data model
•Direct fit for complex identity data
•Properties on edges as well
•Single graph for one tenant
•Options considered
•Memgraph
•Janus Graph
•Neo4j
Why Graph

83OpenText ©2025. All rights reserved.
Why Neo4j
•Easy to learn query language
•ACID compliant
•Transaction support
•Active graph community
•Cloud service presence
•Multiple cloud support
•Native graph storage and processing
•Reliable and scalable
•CDC Module

84OpenText ©2025. All rights reserved.
Query Performance

85OpenText ©2025. All rights reserved.
Current State
Identity Graph
Identity Relations
Application Associations
Identity Change Event System
Group Permissions
RBAC

86OpenText ©2025. All rights reserved.
Future
•Entitlement Graph
•Current State Snapshot
•Analytics Integration
•Combined Identity and Entitlement graphs
•Threat detection

opentext.com · twitter.com/opentext · linkedin.com/company/opentext

Anurag Tandon
Product Vision &
Roadmap
VP Product Management, User Experiences
[email protected]

This was in 2022 …

Your Business
is a Graph
Employees
Network & Security
Suppliers
Product
Customers
Finance
Process

Talent Learning & Development
Career Management
Skills Management
Orgs (who is who)
Job Search
Account/Identity Control
Reputation Scoring
Threat Detection
Access Control
Zero Trust
Route Planning & Optimization
Real-time Shipment Tracking
Inventory Planning
Risk Analysis
Product Recommendations
New Product Introductions
Product Customizations
Product Inventory
Product Pricing
Bottleneck Identification
Process Improvement
Process Automation
Process Monitoring
Recommendations
Loyalty Programs
Churn Prevention
Customer Offers
Dynamic Pricing
Intelligent Ads
Anti-money Laundering
Circular Payments
Fraud Detection
Employees
Network & Security
Suppliers
Product
Finance
Process
Your Business
is a Graph Customers

Setting the Pace
Open Source
Release
2007
Cypher Query
Language Launch
2011
First Production-Ready
Deployment
2009



Graph Data Science
and MultiDB
2020
Neo4j AuraDB
Launch & Neo4j
Fabric
2019
ISO Announces
GQL Standard
2024
Native Vector Search
Capabilities in Neo4j
2023
Browser and Labels
2013
OpenCypher Project
Launched
2015
Distributed Graph
Database (Clustering)
2017

Technology Trends
Driving Innovation

For developers, data analysts, and data scientists
Premium, trusted cloud-native graph intelligence platform

Cross cloud, easy to use, and enable AI accuracy

Most powerful
database for
graphRAG
Most
developer-friendly
platform for
agentic AI
Deep integrations
across the
AI ecosystem

Provides foundational services
like memory to power all
AI platforms.
Agentic Brain
Graph Intelligence Platform
Browser (Query) Bloom (Explore) NeoDash(Dashboards) Data & Document Import GraphQL
Aura Agents
Build multi hop agents
in seconds.
Graph Engine
Graph
AI
AI
Powered
Graph
Tools
Database
& Graph
Algorithms

Fully Managed
Seconds to Sign Up
Minutes to Wow
Days to Value Integrated Ecosystem
Strategic Investments
Trusted Fundamentals Scalability with Enterprise Security, Governance, and Compliancec

Fully Managed
Seconds to Sign Up
Minutes to Wow
Days to Value Integrated Ecosystem
Trusted Fundamentals Scalability with Enterprise Security, Governance, and Compliance
Strategic Investments
c

Autonomous
Clustering
High availability with multi-DB support.

Servers and databases are decoupled:
servers provide computation and storage
power for databases to use. Each
database relies on its own autonomous
cluster, organized in primaries and
secondaries.

Scalability, allocation / reallocation,
service elasticity, load balancing,
automatic routing are automatically
provided (or they can be finely controlled).






3 primary3 primary +
2 secondary
Composite
Database
APP APP APP
Applications
Databases
Servers
CORE DATABASE ENHANCEMENTS

Graph that fits on single
machine in a single clustered
environment replicated for
read scalability.
Replicated Graph Federated Graph
(Fabric)
C
Different graphs (supply chain
& parts graph) in an
organization being queried to
aggregate information.

Could be Replicated
or Sharded.

INTRODUCING
➔100TB+ scale with full ACID compliance
➔One system for transactions and analytics
➔Distributed by design, full graph integrity
➔AI-ready - billions of vectors directly in the graph

Create Large Scale Sharded Graphs

INFINITE SCALABILITY
C
Sharded Graph
(InfiniGraph)
Single Graph sharded across
many machines across
clustered environments.

Growing need to support
large graph sizes.
Graph that fits on single
machine in a single clustered
environment replicated for
read scalability.
Replicated Graph Federated Graph
(Fabric)
C
Different graphs (supply chain
& parts graph) in an organiz-
ation being queried to
aggregate information.

Could be Replicated
or Sharded.

Large Graph
Support

●High data volumes - up to 100TB (and
potentially more) of graph data
●Fast data loading - initial bulk import and
staging/live incremental updates
●Semantic indexes - sharded full-text and
vector indexes are natively integrated
●ACID - fully transactional and ACID compliant
●Simplicity - Transparent to user, standard
Cypher
●Analytics - supports Neo4j tools (Query,
Explore, Graph Analytics)
●Transparent to all API calls
NEW CAPABILITIES
EAP Available
GA - Planned Q4 2025
Demo
</>
X


Streaming
Operational
Analytical
READS
Reporting
T
Autonomous Clustering
Property Shards
TXN logs
Graph Shard
101
01
101
01
101
01
101
01
101
01
WRITES
Bulk WRITESBulk WRITES

Centralized Management
Monitor & manage all Neo4j databases across the
enterprise

Proactive Monitoring
Insights and health monitoring to optimize
performance and reliability
Identify security risks

Streamlined Operations
Seamless workload operations across databases
to reduce risk and downtime of your enterprise
data

Easily migrate self managed databases
to Aura with few clicks
Fleet
Management
HYBRID ADMIN EXPERIENCE
Aura (Unified Fleet Management)
Aura Self Managed
ENTERPRISE DESKTOP COMMUNITY
Now Available

Block Format is superior graph native
format to group graph data into blocks
that reduces amount of data read with
greater performance in
memory-constrained scenarios

Parallel Runtime speeds up analytical
queries up to 100x by concurrent
execution on all cores

CDC enables graph changes published as
events in real-time (full or diff mode)

Autonomous clustering with multi-db for
multi-tenant SaaS solutions
Performance &
Scalability
Block Format Parallel Runtime
Change Data Capture Autonomous Clustering (with Multi DB)
CORE DATABASE ENHANCEMENTS
Now Available

GQL as ISO Standard for Graph Queries

Conditional Queries to provide more
flexibility and expressive power to handle
complex querying scenarios

Quantified graph patterns & Quantified
path patterns for simplified execution

Cypher version can be selected at DBMS,
database and single-query level: server
upgrades do not require query migration.
Query Language is decoupled from the
server releases


Language
Enhancements
MATCH (n:Person)
CALL (n) {
WHEN n.age > 60 THEN {
SET n.ageGroup = 'Veteran'
}
WHEN n.age >= 35 AND n.age <= 59 THEN {
SET n.ageGroup = 'Senior'
}
ELSE {
SET n.ageGroup = 'Junior'
}
}
RETURN n.name AS name, n.ageGroup

Conditional Queries Graph Pattern Matching
Quantified Path Patterns Cypher Versioning
CORE DATABASE ENHANCEMENTS
Now Available

Security &
Operations
Graph Schema Property Based Access Control (PBAC)
CORE DATABASE ENHANCEMENTS
Offline Incremental Importer Differential Backup & Point in Time Recovery
Now Available
Schema: Unique relationship property,
relationship key, property data types

Property Based Access Control (PBAC)
for RBAC, data-driven rules to control
READ and TRAVERSE privileges on
nodes

Ultra-high speed incremental importer
addition to offline importer

Incremental backup and recovery

●Replication of data from one
database instance to another.
●Replication across instances
running in any configuration
(across DCs, Clouds platform,
Self managed vs Aura).
●Neo4j to be Tier 1 platform in
enterprises with potential to
deliver RPO (0) /RTO (15min)
Cross-Cluster
Replication

CORE DATABASE Roadmap
Roadmap - 2026
High Availability across DCs/Regions
Migrate Self Managed Databases to Cloud

Strategic Investments
Fully Managed
GraphRAG
Trusted Fundamentals Scalability with Enterprise Security, Governance, and Compliance
AI AccuracyEase of Use
5
Seconds to Sign Up
Minutes to Wow
Days to Value Integrated Ecosystem

Focus on Your App,
Not Infrastructure!
Available on Google Cloud, AWS, and Azure

99.95% uptime SLA with self-healing
cluster architecture

Scale up for large memory-intensive graphs

Automated backups and restore

Automated upgrades, zero maintenance

CLOUD FIRST CAPABILITIES
More than
30k
Managed
Databases
Available on all major
cloud providers

Aura Launches
2024/2025
Feature: Customer Managed Keys
(AWS)
GA Date: 18 April

Feature: GDS Sessions (w/console
UX) EAP Date: 6 Jun

Feature: Customer Metrics
Integrations
GA Date: 8 June

Feature: Security Log Forwarding
GA Date: 2 July

Feature: User Management Pro PLG -
GA Date: 3 July

Feature: 512GB RAM (AWS)
GA Date: 8 July

Feature: Customer Managed Keys
(Azure)
GA Date: 12 July

Feature: Query Log Analyzer
EAP Date: 22 July

Feature: Customer Managed Keys
(GCP)
GA Date: 31 July


Feature: Business Critical Tier v1
Date: 1st August

Feature: 512GB RAM GCP
GA Date: 13th August

Feature: SSO Config (Admin UI)
GA Date: 20 August

Feature: Query Log Analyzer
Date: 27 August

Feature: Pro Trial
Date: 2 September

Feature: UPX - Preview
Date: 2 September

Feature: Change Data Capture
Date: 4 September

Feature: VDC Name Change
Date: 4 September

Feature: Query API
GA Date: 6 September

Feature: Migration
Readiness Reports
EAP Date: 6 September
Feature: Console Consumption Reports
GA Date: 16 September

Feature: Mark DB as Production
Date: 14 October

Feature: Secondaries
GA Date: 21 October

Feature: Migration Readiness Report
GA Date: 7 November

Feature: 512Gi GCP Business Critical
Date: 15 November

Feature: Business Critical All Aura Regions
Date: 19 November

Feature: UPX GA Self Serve
Date: 11 December

Feature: 512GB Azure BC & VDC
GA Date: 12 December

Feature: Security Log Analyzer
GA Date: 12 December

Feature: Adaptive Email MFA
GA Date: 15 December

Feature: AuraDB Vector Optimised
GA Date: 19 December
Feature: India Region Pro & BC ‘all
clouds’
Date: 7 Jan

Feature: AuraDB Pro <128GB
(pre-paid)
Date: 13 Jan

Feature: Aura CLI
Date: 14 Jan

Feature: GraphQL for AuraDB
(BETA) Date: 14 Jan

Feature: AuraDB Pro Trial 14 day
length + all CSP Regions
Date: 23 Jan

Feature: AuraDB Latest version
(CalVer)
Date: 29 Jan

Feature: AuraDB: Graph Analytics
(Professional)
Date: 13 Feb
Q2 ‘24 Q1 ‘25Q3 ‘24 Q4 ‘24

Comprehensive Cloud Offerings
for Your Workloads
Zonal (single AZ) with
functionality aimed at
smaller teams &
departmental solutions
Regional (Multi-AZ) with
enterprise-grade SLA &
functionality
Highest tier, regional
(Multi-AZ) with dedicated
account provisioned per
customer
Perpetually free
database for customers
to learn and experiment
with apps
Now Available

3 paid SKUs: Fit your workloads across Aura
Professional, Business Critical, and Virtual
Dedicated Cloud

Free Trial: Try Aura Professional before you buy

Scale Out: Secondaries provide ability to scale
out for read heavy workloads

Security: SSO using IDPs such as AAD and Okta,
encryption in-transit and at-rest; CMEK, private
VPC and private links, standard industry
compliance
New
Capabilities
Aura Pro (Free Trials)
Secondaries For Scale Out
AURA ENHANCEMENTS
Now available

Security &
Compliance
Trust Center
SSO using IDPs such as AAD and Okta

Fine-grained access control

Encryption in-transit and at-rest;
Customer Managed Keys (AWS)

Private VPC and Private Links

Standard Industry Compliance
AURADB NEW CAPABILITIES
Now available
114

IP Filtering
Control network access with IP allow-lists
on VDC and BC tiers

Works with public, private, or hybrid
network setups

No endpoints or DNS required, simple UI
or API setup

Enforce consistent network access rules
across instances and projects
AURADB NEW CAPABILITIES
Now available
115

Pay-as-you-go, Serverless offering providing
65+ built-in graph algorithms for use with any enterprise
data on any cloud platform
New
Graph Analytics
Use Graph Analytics in any data in any system without
full replication.
Deliver most advanced graph algorithms in industry across
CPU & GPU
Deliver serverless experience so customers only pay
for what they use
Enable real-time execution with high throughput scenarios
Enable interactive experiences with multiple analysts and
data scientists running parallel algorithms
GRAPH ANALYTICS AS KEY DIFFERENTIATOR
Serverless
Analytics
Higher Scalability & Concurrency
All Databases
Projection
Write Back
Now available

Self-service, simple tools
Fully Managed
GraphRAG
Trusted Fundamentals Scalability with Enterprise Security, Governance, and Compliance
Cloud First AI Accuracy
Seconds to Sign up
Minutes to Wow
Days to Value
Zero Ops
Integrated Ecosystem
Strategic Investments

Unified Data Management and Visualization
Demo

Improved workflows with a single hub for
all data management tasks

Consistent user experience through a
single unified console across Neo4j tools

Easier collaboration as teams can share
resources and collaborate on projects

Improved productivity with GenAI copilot
by helping developers write and improve
Cypher queries

Secure data access with expanded roles
and new access controls

Unified
Experience
Data Import (growing sources) One Click Graph Data Modeling
AURA ENHANCEMENTS
Co-pilot for Cypher Adoption AI Powered Dashboards
Now available

VS Code enables syntax highlighting, auto
completions, connection mgmt, and more
JDBC Driver enables tool integrations,
supports SQL translation, and schema
mapping

Neo4j GraphQL library and service to
deploy low code API with GraphQL

Query API (Cypher over HTTPS) allows for
single Cypher requests with the response
returned as JSON

Model Context Protocol (MCP) Server
Developer
Surfaces
VS Code Extension Drivers & Connectors
DEVELOPER EXPERIENCE
GraphQL Support Query API
Now available

Unified local console with Neo4j
Enterprise Edition installation

Convenience of offline working

Enable remote connections, including
to Aura Databases

Unified login with Aura



Migrate local databases to Aura
Desktop V2
HYBRID DEVELOPER EXPERIENCE
Coming Soon
Coming Soon
Now available

Strategic Investments

Fully Managed
Trusted Fundamentals Scalability with Enterprise Security, Governance, and Compliance
Cloud First Ease of Use
5
Seconds to Sign Up
Minutes to Wow
Days to Value
Zero Ops
Integrated Ecosystem

GenAI
Language
Statistics
Creativity
KGs
Knowledge
Facts
Context
Knowledge Graphs Unlock GenAI
Accurate
Contextual
Explainable

GraphRAG is RAG where the R path
includes a knowledge graph.
What is GraphRAG?

Query
Response
User
Users
Graph
Retrieval Agent
Agents
Vector + Graph
Retriever
HRIS
Retriever
Tools
Text2Cypher
Retriever
SME Cypher
Template
LLM
(Planning)
LLM
(Output)
Graph
Database
1
5
4
2
3a
3b
3n
Agentic GraphRAG
HRIS
3
MCP

GraphRAG
Performance
RAG
Performance
Lettria Analysis
1
81.67% 57.50%
Writer Knowledge Graph
2

(RobustQA Benchmark)
86.31% 32.74%–75.89%
RAG vs. GraphRAG: Multi-hop
Question Answering
3

77% 66%
GenUI Experiments
(MultiHop-RAG Dataset)
4

Successfully answered
complex, multi-step queries
Struggled integrating data
from multiple sources
GraphRAG delivers
up to
than traditional RAG,
with better multi-hop
reasoning for
context- rich AI
applications.

1) https://writer.com/engineering/rag-benchmark/ 2) https://www.lettria.com/blogpost/vectorrag-vs-graphrag-a-convincing-comparison
3) https://arxiv.org/abs/2502.11371 4) https://www.genui.com/resources/graphrag-vs.-traditional-rag-solving-multi-hop-reasoning-in-llms



Higher Accuracy1

127
Opaque & Implicit
Customer: "I actually already
fixed a couple of bugs thanks
to this!”
Transparent & Explainable
2Easier Development

X
Customer
Service
Doctor
Social Security
Number
Social Security
Number
Patient
Bob
Phone
Number
Health
Diagnosis
Improved Governance & Explainability3

Higher
Accuracy
Easier
Development
Improved
Explainability
1 2 3

Vector
Support
RELEASED CAPABILITIES
Vector Index built into the database

Store any property, node, and relationship
as vector in the database

Ability to create embeddings by directly calling
various embedding services like OpenAI, Azure
OpenAI, VertexAI, and Bedrock

Vector Type, Distance Function, Pre-Filtering,
Scaling, external vector stores
Coming Soon

Construct knowledge graphs from unstructured
data/documents using schema

Implement different GraphRAG retrievers

Build GenAI RAG pipelines with vector and hybrid
search and GraphRAG retrieval

External vector search integration
GraphRAG
Python Package 
RELEASED CAPABILITIES

Integrated with GenAI ecosystem
Orchestration & Agent Libraries

Support for major frameworks like
Langchain, LlamaIndex, Spring AI,
Langchain4j, Haystack, Semantic Kernel,
etc.

Integrated with all LLM platforms like AWS,
GCP, Azure, and OpenAI

Model Context Protocol (MCP), CrewAI,
Pydantic.AI, other Agent SDKs

GenAI
Ecosystem
RELEASED CAPABILITIES
●Graph Connector
●CypherQAChain
●KG Construction
●Vector Index
Integration
●Multiple LangChain
Templates
●LangChain.js
●LangChain4j
●Cypher Data
Loader
●Vector Search
Integration
●KG Construction
●Create Vector
Index
●KG Construction
●Query Vector
Index
●Embedding
Retriever
●Dynamic
Document
Retrieve (Cypher)
Coming Soon

MCP is the AI native tool integration
protocol for agents.

Expose Neo4j data to any agentic AI
system, enabling intelligent reasoning
that can break down tasks for
explainable, multi-hop retrieval on
knowledge graphs with an
officially-supported MCP server

Announcing official MCP Server in Beta;
supports self managed and Aura Data

MCP Roadmap
●Neo4j Database & GDS (GA-Q4)
●MCP for Aura Agents (GA-Q4)
●Aura hosted MCP Server (2026)
●MCP for Aura Management (2026)
MCP Servers
133
Beta - Available Now
NEW CAPABILITIES
github.com/neo4j/mcp

An agentic, API-driven service enabling
developers to build GenAI applications
in minutes
●Developer-Centric Agent API
provisioned at Database Level
●Low code Agent and Tool creation
with Cypher
●Simple UI to test chat experience
and potentially embed in apps
●Seamlessly integrate explainable,
multi-hop retrieval & reasoning into
your AI workflows
Aura Agent
Beta - Available Now
NEW CAPABILITIES

Let us know
how we did
today!
Survey
INSERT QR CODE

AFTER LUNCH
Play this brand video when session resumes

Thank You!