A Unified Graph-Vector-Relational DBMS for Enterprise AI

One engine is all you need for AI data infrastructure. AkasicDB unifies vector, graph,
and relational DB into a single engine to maximize enterprise AI efficiency.

The more databases you operate separately, the more complex AI adoption becomes—and the less efficient.

The Inefficiency of Storing the Same Data Across Multiple DBs

Storing identical data redundantly across vector DB, graph DB, and RDB leads to ever-increasing synchronization and operational costs.

A Structure That Requires Separate Execution of Relationship Traversal and Conditional Queries

When finding relationships in a graph and filtering conditions in an RDB are handled separately, complex query performance suffers.

The Dilemma Where Increasing Speed Reduces Accuracy and Operational Efficiency

In conventional separated architectures, having to choose between speed, accuracy, and operational efficiency is a frequent challenge.

AkasicDB overcomes the limitations of separated DB
stacks with a single unified engine.

If you are ready to fully leverage AI’s potential, explore adoption today.

Why a Single Engine Is All You Need for Complex AI Queries and Search

Storage architecture, query optimization, and vector search all work
together within a single engine.

  • 1. Dual Storage: One Dataset, Two Storage Strategies

    Data is stored in ways optimized for graph traversal and relational queries respectively, yet operates as a single logical DB. The same data is accessed via the fastest path depending on the purpose.

  • 2. TJ Operator: Processing Relationship Traversal and Conditional Queries in One Step

    Unlike conventional databases, AkasicDB unifies both operations into a single cost model using the Traversal-Join (TJ) operator. The bottleneck in AI response speed lies not in the model, but in the query executor.

  • 3. A Structure Where Vector Search Operates Alongside Graph and SQL

    Most vector DBs only perform standalone searches. In AkasicDB, vector search runs within a single query alongside graph traversal and SQL conditions. This is why it can deliver accurate answers even to complex questions.

Vector · Graph · Relation—three types of queries, one engine.

No need to send vector, graph, and SQL queries separately and merge the results. AkasicDB automatically determines the optimal execution path within a single engine.
Vector
Semantic Search
Graph
Relationship Traversal
SQL
Aggregation & Retrieval
AkasicDB
Single Execution Engine
Single Cost Model
Automatic Optimal Path Routing
Accurate Answers to Complex Queries
Predictable & Consistent Performance
Stable Scalability for Large-Scale Data

An Enterprise-Ready DBMS That Reliably Handles Large-Scale Data

Designed for real enterprise operations, not experimental environments. Performance remains stable even as data grows, with built-in security and access control.
Even as Data Scales
Consistent & Stable Performance
AkasicDB
Designed for Enterprise Operations
Stable
Secure
Scalable
Reliable Processing of
Large-Scale Datasets
Fault Isolation &
Guaranteed Performance
Built-in Security:
RLS & Access Control
Multi-tenancy & Policy
Enforcement Integration

The Core Engine of the Akasic Pipeline: AkasicDB

This is where data standardized by AkasicIN is stored, AkasicON policies are enforced, and AkasicAI queries are executed. A solid architecture ensures performance and stability across the entire pipeline.
STEP 01
AkasicIN
Preparation
Collecting scattered data and standardizing it for AI utilization
STEP 02
AkasicDB
Integration
Unified storage for Vector, Graph, and SQL in one engine
STEP 03
AkasicON
Governance
Defining semantics and rules to make AI controllable
STEP 04
AkasicAI
Decision
Proposing evidence-based and validated action plans

GraphAI: A trusted AI data technology company across all industries.
GraphAI’s AI data solutions support fast and accurate enterprise decision-making.









      This site is registered on wpml.org as a development site. Switch to a production site key to remove this banner.