-
1
Neo4j
Neo4j
Unlock the power of interconnected data with ease.
Neo4j's graph platform is crafted to enable users to maximize the potential of data and its interconnections. By utilizing Neo4j, developers can build smart applications capable of navigating the vast, interconnected datasets of today in real-time. This platform features a native graph storage engine coupled with a processing engine that enhances its capabilities. Furthermore, it offers distinctive, actionable insights through a user-friendly, adaptable, and secure database environment, making it an essential tool for modern data analysis.
-
2
xtendr
xtendr
Unlock secure data collaborations with unmatched privacy solutions today!
xtendr offers an extensive range of privacy-centered insights drawn from multiple independent data sources while prioritizing user protection throughout the entire data management process. This groundbreaking platform grants access to data that was previously difficult to obtain, fostering confidence in both privacy measures and regulatory compliance. In addition to ensuring anonymity, xtendr effectively bridges the crucial divide in multi-party data sharing by implementing strong privacy protections, acting as a steward of your information through advanced cryptographic techniques that empower you to reach your full potential. It stands as the apex of privacy-enhancing data collaboration technology, having adeptly addressed longstanding cryptographic hurdles linked to data sharing between parties with varying levels of trust. Organizations can elevate their operations with xtendr’s enterprise-grade data protection solutions, which enable the development of data partnerships without compromising sensitive information. In the contemporary digital age, data is increasingly viewed as an essential currency, with many experts claiming it has overtaken oil as the most valuable asset, highlighting its growing importance in our lives. As we navigate this digital transformation, the necessity for secure data sharing only intensifies, making it critical for businesses that aspire to succeed in a connected global economy. Furthermore, the ability to harness data safely is not just advantageous—it's becoming a foundational requirement for strategic growth and innovation.
-
3
Cayley
Cayley
Empower your applications with seamless, efficient linked data management.
Cayley is an open-source database specifically designed for Linked Data, inspired by the graph database that underpins Google's Knowledge Graph, which was formerly known as Freebase. This database prioritizes user-friendly design while effectively managing complex data structures; it includes a built-in query editor, visualizer, and Read-Eval-Print Loop (REPL) functionality. It supports a variety of query languages, such as Gizmo, which is modeled after Gremlin, a query language similar to GraphQL, along with MQL, a simplified version aimed at Freebase users. With its modular architecture, Cayley seamlessly integrates with preferred programming languages and backend storage solutions, making it production-ready and well-tested, with numerous companies relying on it for their operational needs. Furthermore, its optimization for application use showcases remarkable performance; for example, it has been demonstrated to handle 134 million quads in LevelDB on standard 2014 hardware, with multi-hop intersection queries—like identifying films featuring both X and Y—executing in around 150 milliseconds. By default, Cayley operates in-memory, reflecting the capabilities of its backend memstore, which significantly boosts its speed and efficiency during data retrieval and manipulation. Overall, Cayley stands as a robust solution for developers aiming to harness linked data in their applications, while its continuous improvements and community support ensure it keeps pace with evolving technological demands.
-
4
GraphBase
FactNexus
Revolutionize your data management with intuitive graph capabilities.
GraphBase is an advanced Graph Database Management System created to simplify the creation and maintenance of complex data graphs. Unlike Relational Database Management Systems, which often face challenges with intricate and connected data structures, graph databases provide enhanced modeling capabilities, improved performance, and greater scalability. Although a variety of graph database solutions, such as triplestores and property graphs, have been in existence for nearly two decades and serve diverse functions, they still encounter limitations when it comes to handling highly complex data structures. With the launch of GraphBase, our objective was to improve the management of sophisticated data architectures, enabling your data to develop into a richer form of Knowledge. This was achieved by redefining how graph data is managed, placing the graph at the forefront of the system's design. Users of GraphBase experience a graph equivalent to the traditional "rows and tables" schema, which enhances the user-friendliness characteristic of Relational Databases, thus making data navigation and manipulation more intuitive. As a result, GraphBase not only changes how organizations perceive their data but also opens the door to groundbreaking opportunities and advancements in data analysis. This innovative approach ultimately empowers users to derive deeper insights and foster a more informed decision-making process.
-
5
Graph Engine
Microsoft
Unlock unparalleled data insights with efficient graph processing.
Graph Engine (GE) is an advanced distributed in-memory data processing platform that utilizes a strongly-typed RAM storage system combined with a flexible distributed computation engine. This RAM storage operates as a high-performance key-value store, which can be accessed throughout a cluster of machines, enabling efficient data retrieval. By harnessing the power of this RAM store, GE allows for quick random data access across vast distributed datasets, making it particularly effective for handling large graphs. Its capacity to conduct fast data exploration and perform distributed parallel computations makes GE a prime choice for processing extensive datasets, specifically those with billions of nodes. The engine adeptly supports both low-latency online query processing and high-throughput offline analytics, showcasing its versatility in dealing with massive graph structures. The significance of schema in efficient data processing is highlighted by the necessity of strongly-typed data models, which are crucial for optimizing storage and accelerating data retrieval while maintaining clear data semantics. GE stands out in managing billions of runtime objects, irrespective of their sizes, and it operates with exceptional efficiency. Even slight fluctuations in the number of objects can greatly affect performance, emphasizing that every byte matters. Furthermore, GE excels in rapid memory allocation and reallocation, leading to impressive memory utilization ratios that significantly bolster its performance. This combination of capabilities positions GE as an essential asset for developers and data scientists who are navigating the complexities of large-scale data environments, enabling them to derive valuable insights from their data with ease.
-
6
Aster SQL-GR
Teradata
Transform insights with unparalleled performance in graph analytics.
Discover the power of advanced graph analytics with Aster SQL-GR™, a dedicated engine crafted for comprehensive Graph Analysis. This innovative tool streamlines the resolution of complex business problems such as social network dynamics, influencer identification, fraud detection, supply chain enhancements, network analyses, threat recognition, and money laundering investigations, providing deeper insights compared to traditional graph navigation methods. Built on the Bulk Synchronous Processing (BSP) model, SQL-GR effectively employs massively iterative, distributed, and parallel processing strategies to address intricate graph-related challenges with efficiency. Its remarkable scalability is a result of the BSP framework combined with Teradata Aster’s massively parallel processing (MPP) architecture, which facilitates the distribution of graph computations across a multitude of servers or nodes. By operating without memory limitations and avoiding dependence on a single server or node, SQL-GR empowers users to achieve exceptional performance and rapid processing for sophisticated graph analyses even on extensive datasets. This capability not only enhances decision-making but also significantly boosts operational efficiency across various business sectors. As a result, SQL-GR sets a new benchmark for graph analytics, transforming the landscape of data-driven insights in contemporary enterprises. With its unparalleled capacity to process large volumes of data, SQL-GR is poised to redefine how businesses approach and solve complex analytical challenges.
-
7
AnzoGraph DB
Cambridge Semantics
Unlock insights effortlessly with powerful graph analytics tools.
AnzoGraph DB offers an extensive suite of analytical tools that can greatly enhance your analytical framework. This video demonstrates how AnzoGraph DB operates as a native graph database with Massively Parallel Processing (MPP) capabilities, specifically engineered for data integration and analysis. It is designed for horizontal scalability, making it ideal for online analytical processes and addressing the challenges associated with data integration. Address the intricacies of linked data and data integration with AnzoGraph DB, a prominent contender in the analytical graph database sector. The platform provides strong online performance, making it well-suited for large-scale enterprise graph applications. AnzoGraph DB is compatible with well-known semantic graph languages such as SPARQL*/OWL, and it also supports Labeled Property Graphs (LPGs). With access to a wide array of analytical, machine learning, and data science capabilities, users can uncover insights with unparalleled speed and scale. Additionally, it emphasizes the importance of context and relationships among data points during analysis, featuring extremely fast data loading and quick execution of analytical queries. This unique combination of features establishes AnzoGraph DB as an indispensable resource for organizations aiming to maximize the effectiveness of their data usage, allowing businesses to stay ahead in an increasingly data-driven world.
-
8
TerminusDB
TerminusDB
Empowering data collaboration for innovation and productivity.
Our goal is to streamline collaboration around data. Whether you're a developer looking to innovate or a data expert focused on managing versions effectively, our platform meets a variety of requirements. TerminusDB serves as an open-source knowledge graph database that aims to provide secure, efficient, and private revision control alongside teamwork capabilities. Utilizing TerminusDB can significantly boost your productivity, whether you're collaborating with colleagues or building applications rich in data. It includes an extensive array of revision control features. With the addition of TerminusHub, users can manage database access and collaborate on shared assets with ease. Our platform is equipped with flexible options for data storage, sharing, and versioning, making it ideal for collaborative efforts as well as application integration. You have the freedom to work locally and synchronize your modifications whenever you choose. Additionally, our tools facilitate easier querying, data cleaning, and visualization processes. By integrating strong version control and collaborative features, we enable both enterprises and individuals to work together efficiently on various projects. This partnership not only enhances productivity but also fosters innovation through effective teamwork in data management. Ultimately, our mission is to empower users to unlock their full potential in data collaboration.
-
9
To truly understand the importance of constantly evolving business data, one must delve into the complex relationships that exist within it on a more profound level. Unlike conventional databases, a graph database emphasizes these relationships, utilizing Graph theory and Linear Algebra to explore and depict the connections between intricate data networks, sources, and nodes. The TIBCO® Graph Database enables users to discover, store, and convert complex dynamic data into practical insights that can drive business strategies. This platform allows for the rapid development of data and computational models that promote dynamic interactions across various departments within an organization. By harnessing the power of knowledge graphs, companies can unlock significant value by connecting their various data assets, revealing interrelationships that optimize both resources and workflows. Moreover, the integration of OLTP and OLAP functionalities into a single, powerful enterprise database delivers a holistic solution for data management. With built-in optimistic ACID transaction properties along with native storage and access capabilities, businesses can confidently oversee their data-driven initiatives. Ultimately, this sophisticated technology not only streamlines data management processes but also fosters innovative approaches to decision-making, ensuring organizations can adapt to future challenges effectively. In this rapidly changing landscape, leveraging such advanced tools is imperative for sustained success.
-
10
RelationalAI
RelationalAI
Revolutionizing data applications through advanced relational knowledge graphs.
RelationalAI stands at the forefront of database technology, specifically designed to optimize advanced data applications utilizing relational knowledge graphs. By emphasizing a data-centric approach to application development, it seamlessly integrates data with logic into modular structures. These advanced applications are adept at understanding and leveraging every relationship within a given model. Utilizing a knowledge graph framework, the system articulates knowledge through executable models that can be easily expanded with declarative programs, which are both accessible and user-friendly. The versatile declarative language offered by RelationalAI allows developers to significantly reduce the amount of code needed, achieving reductions between 10 to 100 times, which in turn accelerates application development and improves quality by enabling non-technical users to participate in the creation process while simultaneously automating intricate programming tasks. By harnessing a flexible graph data model, users can establish a strong data-centric infrastructure. Moreover, the integration of various models facilitates the discovery of new relationships, effectively breaking down barriers that separate different applications. This pioneering methodology not only enhances the efficiency of development but also encourages collaboration across multiple domains, ultimately creating a more interconnected ecosystem for innovation. In this way, RelationalAI is redefining the standards for how data applications are built and utilized.
-
11
Luna delivers a subscription-based service that offers support and expertise for Apache Cassandra through DataStax, enabling users to leverage the advantages of open-source Cassandra while tapping into the extensive knowledge of the team that has significantly contributed to its development and has managed some of the most substantial deployments worldwide. By choosing Luna, you gain invaluable insights into best practices, receive expert guidance, and benefit from SLA-based support to maintain an efficient and effective Cassandra environment. This service allows you to expand your operations without compromising on performance or latency, seamlessly handling even the most intensive real-time workloads. With its capabilities, Luna empowers you to design engaging and highly interactive customer experiences with remarkably rapid read and write operations. Furthermore, Luna assists in troubleshooting and adhering to best practices in the management of Cassandra clusters, ensuring that your systems operate smoothly. The comprehensive support spans the entire application life cycle, fostering a collaborative relationship with your team during the implementation process and ensuring that your requirements are addressed at every phase. Ultimately, Luna not only enhances your operational efficiency but also maximizes your ability to leverage Cassandra's full potential, driving your business goals forward effectively. By integrating Luna into your strategy, you position your organization to achieve greater agility and responsiveness in a competitive market.
-
12
Locstat
Locstat
Empower your organization with cutting-edge graph intelligence solutions.
Locstat represents a state-of-the-art graph intelligence platform that delivers customized solutions tailored to specific industries and needs through the synergy of graph-driven AI, analytics, and event processing, empowering organizations to rapidly advance their future data capabilities. Research shows that adopting progressive, AI-driven digital transformation strategies can provide significant benefits and enhancements for businesses. Our proven ability to improve customer efficiencies has resulted in impressive returns on investment, as confirmed by independent research organizations. This highlights how advanced analytics technologies can more effectively tackle the complex challenges faced today compared to conventional relational database systems. With the increasing need for innovative data approaches, organizations that utilize these sophisticated tools will be well-positioned to achieve sustained success in the long run, reinforcing their competitiveness in a rapidly evolving market landscape.
-
13
FalkorDB
FalkorDB
Experience lightning-fast, accurate graph data management today!
FalkorDB is an exceptionally rapid, multi-tenant graph database that is finely tuned for GraphRAG, ensuring accurate and relevant AI/ML outcomes while minimizing hallucinations and boosting efficiency. By utilizing sparse matrix representations alongside linear algebra, it adeptly processes intricate, interconnected datasets in real-time, leading to a reduction in hallucinations and an increase in the precision of responses generated by large language models. The database is compatible with the OpenCypher query language, enhanced by proprietary features that facilitate expressive and efficient graph data querying. Additionally, it incorporates built-in vector indexing and full-text search functions, which allow for intricate search operations and similarity assessments within a unified database framework. FalkorDB's architecture is designed to support multiple graphs, permitting the existence of several isolated graphs within a single instance, which enhances both security and performance for different tenants. Furthermore, it guarantees high availability through live replication, ensuring that data remains perpetually accessible, even in high-demand scenarios. This combination of features positions FalkorDB as a robust solution for organizations seeking to manage complex graph data effectively.
-
14
Graph databases, an essential component of Oracle's converged database offering, eliminate the need for creating a separate database and migrating data. This innovation empowers analysts and developers in the banking industry to perform fraud detection, reveal connections and relationships within data, and improve traceability in smart manufacturing, all while enjoying the advantages of enterprise-grade security, seamless data ingestion, and strong support for diverse data workloads. The Oracle Autonomous Database features Graph Studio, which provides a one-click setup, integrated tools, and enhanced security protocols. Graph Studio simplifies the oversight of graph data and supports the modeling, analysis, and visualization throughout the entirety of the graph analytics process. Oracle accommodates both property and RDF knowledge graphs, facilitating the representation of relational data as graph structures. Furthermore, users can execute interactive graph queries directly on the graph data or through a high-performance in-memory graph server, allowing for effective data processing and analysis. This incorporation of graph technology not only augments the capabilities of data management within Oracle's ecosystem but also enhances the overall efficiency of data-driven decision-making processes. Ultimately, the combination of these features positions Oracle as a leader in the realm of advanced data management solutions.
-
15
DataStax
DataStax
Unleash modern data power with scalable, flexible solutions.
Presenting a comprehensive, open-source multi-cloud platform crafted for modern data applications and powered by Apache Cassandra™. Experience unparalleled global-scale performance with a commitment to 100% uptime, completely circumventing vendor lock-in. You can choose to deploy across multi-cloud settings, on-premises systems, or utilize Kubernetes for your needs. This platform is engineered for elasticity and features a pay-as-you-go pricing strategy that significantly enhances total cost of ownership. Boost your development efforts with Stargate APIs, which accommodate NoSQL, real-time interactions, reactive programming, and support for JSON, REST, and GraphQL formats. Eliminate the challenges tied to juggling various open-source projects and APIs that may not provide the necessary scalability. This solution caters to a wide range of industries, including e-commerce, mobile applications, AI/ML, IoT, microservices, social networking, gaming, and other highly interactive applications that necessitate dynamic scaling based on demand. Embark on your journey of developing modern data applications with Astra, a database-as-a-service driven by Apache Cassandra™. Utilize REST, GraphQL, and JSON in conjunction with your chosen full-stack framework. The platform guarantees that your interactive applications are both elastic and ready to attract users from day one, all while delivering an economical Apache Cassandra DBaaS that scales effortlessly and affordably as your requirements change. By adopting this innovative method, developers can concentrate on their creative work rather than the complexities of managing infrastructure, allowing for a more efficient and streamlined development experience. With these robust features, the platform promises to redefine the way you approach data management and application development.
-
16
ArangoDB
ArangoDB
Seamlessly store and access diverse data with confidence.
Store data natively for various requirements such as graphs, documents, and search functionalities. A single query language facilitates rich access to features. You can seamlessly map your data to the database and retrieve it using optimal patterns suited for your tasks, including traversals, joins, searches, rankings, geospatial queries, and aggregations—whatever you need. Enjoy polyglot persistence without incurring high costs. The architecture is easily designed, scaled, and adapted to accommodate evolving needs with minimal effort. By merging the versatility and strength of JSON with graph technology, you can derive advanced features even from extensive datasets, ensuring your solutions remain cutting-edge. This integration not only maximizes efficiency but also empowers you to tackle complex data challenges with confidence.
-
17
OrientDB
SAP
Unleash innovation with the world's fastest graph database!
OrientDB is recognized as the fastest graph database in the world. A benchmarking study carried out by IBM in collaboration with the Tokyo Institute of Technology demonstrated that OrientDB excels over Neo4j by a margin of tenfold in graph operations for different workloads. This remarkable performance can provide companies with a significant advantage, paving the way for innovation and the creation of new revenue streams. Utilizing OrientDB allows organizations to improve their operational efficiency, ensuring they remain competitive in a swiftly changing market landscape. Moreover, as businesses adopt this technology, they can expect to unlock new possibilities that drive growth and success.
-
18
Dgraph
Hypermode
Effortlessly scale your data with low latency solutions.
Dgraph is a distributed graph database that is open-source, characterized by its low latency and high throughput capabilities. This database is built to effortlessly scale, accommodating both small startups and larger enterprises that manage vast datasets. It efficiently processes terabytes of structured data on standard hardware, ensuring quick responses to user queries. Dgraph is well-suited for a variety of applications, including diverse social networks, real-time recommendation systems, semantic search functionalities, pattern recognition, fraud detection, and delivering relationship data for web applications. Additionally, its versatility makes it an attractive option for businesses seeking to leverage complex data relationships effectively.