Best Web-Based Graph Databases of 2025 - Page 2

Find and compare the best Web-Based Graph Databases in 2025

Use the comparison tool below to compare the top Web-Based Graph Databases on the market. You can filter results by user reviews, pricing, features, platform, region, support options, integrations, and more.

  • 1
    Neo4j Reviews
    Neo4j's graph platform is designed to help you leverage data and data relationships. Developers can create intelligent applications that use Neo4j to traverse today's interconnected, large datasets in real-time. Neo4j's graph database is powered by a native graph storage engine and processing engine. It provides unique, actionable insights through an intuitive, flexible, and secure database.
  • 2
    xtendr Reviews
    xtendr reveals comprehensive, privacy-focused insights from various independent data sources while ensuring user protection throughout the entire data lifecycle. This innovative platform provides access to previously unreachable data and instills confidence in both privacy and adherence to regulations. Beyond mere anonymity, xtendr addresses the critical gap in multi-party data sharing by offering robust privacy safeguards, effectively serving as a guardian of your data through advanced cryptography, enabling you to unlock your full potential. It represents the pinnacle of privacy-enhancing data collaboration technology, having successfully tackled the long-standing cryptographic challenges associated with data sharing among parties that may not fully trust one another. With xtendr, organizations can advance their operations through an enterprise-level data protection solution that facilitates the formation of data partnerships while safeguarding sensitive information. In today's digital landscape, data is increasingly recognized as a vital currency, with many asserting that it is surpassing oil as the most valuable asset, underscoring its ever-growing significance. As we continue to embrace this digital evolution, the importance of secure data sharing becomes ever more critical for businesses looking to thrive in an interconnected world.
  • 3
    Cayley Reviews
    Cayley is an open-source database tailored for Linked Data, drawing inspiration from the graph database that supports Google's Knowledge Graph, previously known as Freebase. This graph database is crafted for user-friendliness and adept at handling intricate data structures, featuring an integrated query editor, a visualizer, and a Read-Eval-Print Loop (REPL). It supports various query languages, including Gizmo, which is influenced by Gremlin, a GraphQL-like query language, and MQL, a streamlined version catering to Freebase enthusiasts. Cayley's modular architecture allows seamless integration with preferred programming languages and backend storage solutions, making it production-ready, thoroughly tested, and utilized by numerous companies for their operational tasks. Additionally, it is optimized for application use, demonstrating impressive performance metrics; for instance, testing has shown that it can effortlessly manage 134 million quads in LevelDB on consumer-grade hardware from 2014, with multi-hop intersection queries—such as finding films featuring both X and Y—executing in about 150 milliseconds. By default, Cayley is set up to operate in-memory, which is what the backend memstore refers to, thereby enhancing its speed and efficiency for data retrieval and manipulation. Overall, Cayley offers a powerful solution for those looking to leverage linked data in their applications.
  • 4
    GraphBase Reviews
    GraphBase is a Graph Database Management System designed to streamline the development and upkeep of intricate data graphs. While Relational Database Management Systems often struggle with complex and interconnected structures, graph databases offer superior modeling capabilities, enhanced performance, and greater scalability. The existing range of graph database solutions, including triplestores and property graphs, has been available for almost twenty years; although they are effective tools with diverse applications, they still fall short in managing intricate data structures. With the introduction of GraphBase, we aimed to facilitate the handling of complex data architectures, allowing your information to evolve into something greater—Knowledge. We accomplished this by reimagining the management of graph data, ensuring that the graph is prioritized as a fundamental component. In GraphBase, users benefit from a graph equivalent of the familiar "rows and tables" framework, which contributes to the user-friendly nature of Relational Databases, making it easier to navigate and manipulate data. Ultimately, GraphBase transforms how organizations view and interact with their data, paving the way for innovative possibilities.
  • 5
    Graph Engine Reviews
    Graph Engine (GE) is a powerful distributed in-memory data processing platform that relies on a strongly-typed RAM storage system paired with a versatile distributed computation engine. This RAM store functions as a high-performance key-value store that is accessible globally across a cluster of machines. By leveraging this RAM store, GE facilitates rapid random data access over extensive distributed datasets. Its ability to perform swift data exploration and execute distributed parallel computations positions GE as an ideal solution for processing large graphs. The engine effectively accommodates both low-latency online query processing and high-throughput offline analytics for graphs containing billions of nodes. Efficient data processing emphasizes the importance of schema, as strongly-typed data models are vital for optimizing storage, accelerating data retrieval, and ensuring clear data semantics. GE excels in the management of billions of runtime objects, regardless of their size, demonstrating remarkable efficiency. Even minor variations in object count can significantly impact performance, underscoring the importance of every byte. Moreover, GE offers rapid memory allocation and reallocation, achieving impressive memory utilization ratios that further enhance its capabilities. This makes GE not only efficient but also an invaluable tool for developers and data scientists working with large-scale data environments.
  • 6
    Aster SQL-GR Reviews
    Experience powerful graph analytics with simplicity through Aster SQL-GR™, a dedicated graph processing engine designed for tackling intricate business challenges like social network and influencer assessment, fraud detection, supply chain oversight, network evaluation, threat identification, and money laundering—issues that extend beyond fundamental graph navigation. Utilizing the Bulk Synchronous Processing (BSP) model, SQL-GR employs massively iterative, distributed, and parallel processing techniques to effectively address complex graph-related problems. This innovative platform is incredibly scalable, leveraging Teradata Aster’s massively parallel processing (MPP) architecture to distribute graph computations across numerous servers and nodes. Furthermore, SQL-GR operates without the constraints of memory limits or dependence on a single server, allowing users to harness exceptional power and speed for extensive graph analysis at a big data scale. In a world where data complexity is ever-increasing, SQL-GR stands out as an essential tool for businesses aiming to derive meaningful insights from their data.
  • 7
    AnzoGraph DB Reviews

    AnzoGraph DB

    Cambridge Semantics

    AnzoGraph DB boasts an extensive array of analytical features that can significantly improve your analytical framework. Check out this video to discover how AnzoGraph DB operates as a Massively Parallel Processing (MPP) native graph database specifically designed for data harmonization and analytics. This horizontally scalable graph database is optimized for online analytics and tackling data harmonization issues. Addressing challenges related to linked data, AnzoGraph DB stands out as a leading analytical graph database in the market. It offers robust online performance suitable for enterprise-scale graph applications, ensuring efficiency and speed. AnzoGraph DB employs familiar SPARQL*/OWL for semantic graphs, while also accommodating Labeled Property Graphs (LPGs). Its vast array of analytical, machine learning, and data science tools empowers users to uncover new insights at remarkable speed and scale. By prioritizing context and relationships among data, you can enhance your analysis significantly. Additionally, the database enables ultra-fast data loading and execution of analytical queries, making it an invaluable asset for any data-driven organization.
  • 8
    TerminusDB Reviews
    Simplifying data collaboration is our mission. Whether you're a developer eager to push the boundaries of innovation or a data specialist seeking effective version control, our platform caters to all needs. TerminusDB is an open-source knowledge graph database designed to facilitate secure, efficient, and private revision control and teamwork. By using TerminusDB, you can enhance your productivity when collaborating with teammates or developing data-heavy applications. It offers a comprehensive set of revision control functionalities. With TerminusHub, users can oversee database access and work together on shared resources seamlessly. Our platform boasts versatile capabilities for data storage, sharing, and versioning, making it suitable for both team-based collaboration and integration into applications. You can operate locally and sync changes when you're ready. Our tools also simplify querying, data cleaning, and visualization tasks. By incorporating robust version control and collaborative features, we empower both enterprise and individual users, enabling remote data teams to collaborate efficiently on projects. Together, we can drive innovation through effective data teamwork.
  • 9
    TIBCO Graph Database Reviews
    To fully appreciate the significance of ever-changing business data, it is essential to grasp the intricate connections within that data on a deeper level. In contrast to traditional databases, a graph database prioritizes these relationships, employing Graph theory and Linear Algebra to navigate and illustrate the interconnections among complex data networks, sources, and points. The TIBCO® Graph Database empowers users to uncover, store, and transform intricate dynamic data into actionable insights. This platform enables users to swiftly create data and computational models that foster dynamic interactions across various organizational silos. By leveraging knowledge graphs, organizations can derive immense value by linking their diverse data assets and uncovering relationships that enhance the optimization of resources and workflows. Furthermore, the combination of OLTP and OLAP capabilities within a single, robust enterprise database provides a comprehensive solution. With optimistic ACID transaction properties integrated alongside native storage and access, businesses can confidently manage their data-driven operations. Ultimately, this advanced technology not only simplifies data management but also paves the way for innovative decision-making processes.
  • 10
    RelationalAI Reviews
    RelationalAI represents a cutting-edge database system tailored for advanced data applications that leverage relational knowledge graphs. By focusing on data-centric application design, it effectively merges data with logic into modular models. These intelligent applications possess the capability to comprehend and utilize every relationship present within a model. The system employs a knowledge graph framework that allows for the articulation of knowledge in the form of executable models. These models offer the benefit of being easily expanded through declarative programs that are accessible and understandable to humans. With RelationalAI's versatile and expressive declarative language, developers can achieve a remarkable reduction in code size, ranging from 10 to 100 times less. This accelerates the development of applications and enhances their quality by involving non-technical users in the creation process while automating complex programming tasks. By leveraging the adaptable graph data model, users can build a robust data-centric architecture. Additionally, the integration of models paves the way for the exploration of new relationships, effectively dismantling barriers that exist between various applications. Ultimately, this innovative approach not only streamlines development but also fosters collaboration across different domains.
  • 11
    Luna for Apache Cassandra Reviews
    Luna offers a subscription service for Apache Cassandra support and expertise through DataStax, allowing users to take advantage of open-source Cassandra while benefiting from the knowledge and experience of the team that created most of its code and has supported some of the largest deployments globally. With Luna, you gain access to best practices, expert advice, and SLA-based support to ensure your Cassandra setup remains optimal. You can scale your operations without sacrificing performance or latency, effectively managing even the most demanding real-time workloads with ease. The service empowers you to create dynamic and highly-interactive customer experiences with exceptionally fast read and write capabilities. Additionally, Luna helps resolve issues and adhere to best practices in managing Cassandra clusters. The support provided encompasses the entire application life cycle, facilitating a deeper collaboration with your team throughout the implementation process, ensuring that your needs are met at every stage. Ultimately, Luna enhances your ability to harness the full potential of Cassandra for your business objectives.
  • 12
    Locstat Reviews
    Locstat is a cutting-edge graph intelligence platform that offers tailored industry-specific and point solutions through the integration of graph-based AI, analytics, and event processing, allowing organizations to swiftly enhance their data solutions for the future. Studies indicate that embracing forward-thinking, AI-enhanced digitalization strategies can yield substantial advantages and improvements for organizations. Our success in boosting customer efficiencies has led to notable returns on investment, corroborated by independent research firms. This underscores the effectiveness of advanced analytics technologies in addressing the intricate challenges of today more economically compared to traditional relational database solutions. As the demand for innovative data strategies grows, organizations that leverage these advanced tools can position themselves for long-term success.
  • 13
    FalkorDB Reviews
    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
    Oracle Spatial and Graph Reviews
    Graph databases, which are a key feature of Oracle's converged database solution, remove the necessity for establishing a distinct database and transferring data. This allows analysts and developers to conduct fraud detection in the banking sector, uncover relationships and links to data, and enhance traceability in smart manufacturing, all while benefiting from enterprise-level security, straightforward data ingestion, and robust support for various data workloads. The Oracle Autonomous Database incorporates Graph Studio, offering one-click setup, built-in tools, and advanced security measures. Graph Studio streamlines the management of graph data and facilitates the modeling, analysis, and visualization throughout the entire graph analytics lifecycle. Oracle supports both property and RDF knowledge graphs, making it easier to model relational data as graph structures. Additionally, interactive graph queries can be executed directly on the graph data or via a high-performance in-memory graph server, enabling efficient data processing and analysis. This integration of graph technology enhances the overall capabilities of data management within Oracle's ecosystem.
  • 15
    DataStax Reviews
    Introducing a versatile, open-source multi-cloud platform for contemporary data applications, built on Apache Cassandra™. Achieve global-scale performance with guaranteed 100% uptime while avoiding vendor lock-in. You have the flexibility to deploy on multi-cloud environments, on-premises infrastructures, or use Kubernetes. The platform is designed to be elastic and offers a pay-as-you-go pricing model to enhance total cost of ownership. Accelerate your development process with Stargate APIs, which support NoSQL, real-time interactions, reactive programming, as well as JSON, REST, and GraphQL formats. Bypass the difficulties associated with managing numerous open-source projects and APIs that lack scalability. This solution is perfect for various sectors including e-commerce, mobile applications, AI/ML, IoT, microservices, social networking, gaming, and other highly interactive applications that require dynamic scaling based on demand. Start your journey of creating modern data applications with Astra, a database-as-a-service powered by Apache Cassandra™. Leverage REST, GraphQL, and JSON alongside your preferred full-stack framework. This platform ensures that your richly interactive applications are not only elastic but also ready to gain traction from the very first day, all while offering a cost-effective Apache Cassandra DBaaS that scales seamlessly and affordably as your needs evolve. With this innovative approach, developers can focus on building rather than managing infrastructure.
  • 16
    ArangoDB Reviews
    Store data in its native format for graph, document, and search purposes. Leverage a comprehensive query language that allows for rich access to this data. Map the data directly to the database and interact with it through optimal methods tailored for specific tasks, such as traversals, joins, searches, rankings, geospatial queries, and aggregations. Experience the benefits of polyglot persistence without incurring additional costs. Design, scale, and modify your architectures with ease to accommodate evolving requirements, all while minimizing effort. Merge the adaptability of JSON with advanced semantic search and graph technologies, enabling the extraction of features even from extensive datasets, thereby enhancing data analysis capabilities. This combination opens up new possibilities for handling complex data scenarios efficiently.
  • 17
    OrientDB Reviews
    OrientDB stands out as the fastest graph database globally. An independent benchmarking analysis conducted by IBM alongside the Tokyo Institute of Technology revealed that OrientDB outperforms Neo4j by a factor of ten in graph operations across various workloads. This exceptional speed can help organizations gain a competitive edge and foster innovation, ultimately leading to the development of new revenue opportunities. By leveraging OrientDB, businesses can enhance their operational efficiency and stay ahead in a rapidly evolving market.
  • 18
    Dgraph Reviews
    Dgraph is an open-source, low-latency, high throughput native and distributed graph database. DGraph is designed to scale easily to meet the needs for small startups and large companies with huge amounts of data. It can handle terabytes structured data on commodity hardware with low latency to respond to user queries. It addresses business needs and can be used in cases that involve diverse social and knowledge networks, real-time recommendation engines and semantic search, pattern matching, fraud detection, serving relationship information, and serving web applications.