MarkLogic develops a metadata refining platform. It provides an enterprise-class database designed for unstructured content. Its platform helps to store, manage, search, navigate and deliver content and toolkits for the integration of documents. The company caters to media, financial services, the public sector, aviation, and healthcare industries. MarkLogic was founded in 2001 and is based in Redwood City, California. In January 2023, MarkLogic was acquired by Progress Software.
Expert Collections containing MarkLogic
Expert Collections are analyst-curated lists that highlight the companies you need to know in the most important technology spaces.
MarkLogic is included in 2 Expert Collections, including Conference Exhibitors.
HLTH is a healthcare event bringing together startups and large companies from pharma, health insurance, business intelligence, and more to discuss the shifting landscape of healthcare
Tech IPO Pipeline
MarkLogic has filed 18 patents.
Latest MarkLogic News
Nov 25, 2023
2 mins read Explore the top 10 graph databases for 2023, uncovering the best solutions in this dynamic field Solutions Review’s annual compilation of the best Graph Databases reflects the current market landscape, assessing products based on the Authority Score, a meta-analysis of real user sentiments from trusted review sites. This curated list aids buyers in navigating the complex process of choosing the right Graph Database for their organizational needs, considering factors beyond technical capabilities. Here’s an in-depth exploration of some of the top 10 Graph Databases featured in the list: 1. Amazon Neptune Description: Amazon Neptune, a fully managed graph database service, empowers users to build and run applications handling highly connected datasets. It boasts a purpose-built, high-performance graph database engine optimized for storing vast relationships and executing rapid graph queries . Supporting graph models like Property Graph and W3C’s RDF, Neptune is recommended for use cases such as fraud detection and network security. 2. AnzoGraphDB by Cambridge Semantics Description: AnzoGraphDB by Cambridge Semantics is a massively parallel processing graph database designed to accelerate data integration analytics. Offering over 40 functions for regular line-of-business analytics, along with graph and data science algorithms, it facilitates in-graph feature engineering and transformations. 3. DataStax Enterprise Description: DataStax Enterprise, built on Apache Cassandra, provides a distributed hybrid cloud database . Simplifying the exploitation of hybrid and multi-cloud environments eliminates complexities associated with deploying applications across various data centers or public clouds. 4. Dgraph by Dgraph Labs Description: Dgraph is a graph database solution offering a single schema approach to development. Users can create a schema, deploy it, and access fast database and API functionalities without code. Dgraph supports GraphQL or DQL, making it accessible to users with no prior graph database experience. With features like simple data import, data streaming, and Dgraph Lambda, it simplifies business logic implementation. 5. IBM Graph Description: IBM Graph is an enterprise-grade property graph as a Service built on open-source database technologies . Enabling the storage, querying, and visualization of data points, connections, and properties, ensures an always-on service. Designed for scalability, organizations can start small and scale on demand as data complexity increases. 6. MarkLogic Server by MarkLogic Description: MarkLogic Server focuses on unifying silos of data, making it ideal for applications involving heterogeneous large-scale data integration or content delivery. With a flexible data model adapting to changing data, it natively stores JSON, XML, text, and geospatial data. MarkLogic’s Universal Index allows searching across all data, while APIs support application development and deployment. 7. Azure Cosmos DB by Microsoft Description: Azure Cosmos DB, a fully managed NoSQL database service, is tailored for modern application development. Backed by SLAs, automatic scalability, and open-source APIs for MongoDB and Cassandra, it accommodates spiky workloads and offers serverless alternatives to provisioned throughput. 8. Neo4j Database Description: Neo4j offers a graph database that enables organizations to decipher data relationships among people, processes, and systems. Natively storing interconnected data simplifies the understanding of complex relationships. The property graph model facilitates the evolution of machine learning and AI models, supporting high-performance graph queries on large datasets. 9. Oracle Spatial and Graph by Oracle Description: Oracle Spatial and Graph, part of the converged database offering, is available within the Oracle Autonomous Database. This solution automates graph data management, simplifying modeling, analysis, and visualization across the data lifecycle. With support for both property and RDF knowledge graphs, it allows interactive graph queries directly on graph data or in a high-performance memory graph. 10. OrientDB Enterprise Description: OrientDB Enterprise is a NoSQL database management system written in Java, offering multi-model support for graph, document, key/value, and object models. Managing relationships like graph databases supports direct connections between records. Disclaimer: Any financial and crypto market information given on Analytics Insight are sponsored articles, written for informational purpose only and is not an investment advice. The readers are further advised that Crypto products and NFTs are unregulated and can be highly risky. There may be no regulatory recourse for any loss from such transactions. Conduct your own research by contacting financial experts before making any investment decisions. The decision to read hereinafter is purely a matter of choice and shall be construed as an express undertaking/guarantee in favour of Analytics Insight of being absolved from any/ all potential legal action, or enforceable claims. We do not represent nor own any cryptocurrency, any complaints, abuse or concerns with regards to the information provided shall be immediately informed here .
MarkLogic Frequently Asked Questions (FAQ)
When was MarkLogic founded?
MarkLogic was founded in 2001.
Where is MarkLogic's headquarters?
MarkLogic's headquarters is located at 333 Twin Dolphin Drive, Redwood City.
What is MarkLogic's latest funding round?
MarkLogic's latest funding round is Acquired.
How much did MarkLogic raise?
MarkLogic raised a total of $172.5M.
Who are the investors of MarkLogic?
Investors of MarkLogic include Progress, Vector Capital, NTT Data, Sequoia Capital, Tenaya Capital and 9 more.
Who are MarkLogic's competitors?
Competitors of MarkLogic include Kofax and 8 more.
Compare MarkLogic to Competitors
Kofax provides automation software solutions in the information technology sector. The company's main offerings include the digital transformation of information-intensive business workflows, which allows customers to realize faster time-to-value and increased competitiveness, growth, and profitability. It primarily sells to businesses looking to increase their resiliency and mitigate compliance risk. It was founded in 1985 and is based in Irvine, California.
AppScale Systems develops AWS API-compatible software designed to meet enterprise business and technical requirements. Its software offers on-premises workload deployment and permits enterprises to manage their AWS hybrid cloud environment, enabling clients to execute GAE applications using their own clusters with increased scalability and reliability than the GAE SDK provides. The company was founded in 2012 and is based in Santa Barbara, California.
AppHarbor is developing what they describe as "Heroku for .NET". It offers a .NET platform-as-a-service offering.
IP Commerce is a company that focuses on financial technology in the accounting sector. It offers an automated bookkeeping service that transfers sales data into accounting software like QuickBooks and Xero, eliminating manual data entry and reducing errors. The company primarily serves the small business sector. It was founded in 2004 and is based in Denver, Colorado.
SandLogic aims to enable industries to adopt AI economically and faster using their Edge AI platform and Vision SDK (ready to use Deep learning models APIs).
CALIENT Technologies is a global provider in adaptive photonic switching with systems that enable dynamic optical layer optimization in next generation data centers and software defined networks.