Software Alternatives, Accelerators & Startups

MarkLogic Server VS NetworkX

Compare MarkLogic Server VS NetworkX and see what are their differences

MarkLogic Server logo MarkLogic Server

MarkLogic Server is a multi-model database that has both NoSQL and trusted enterprise data management capabilities.

NetworkX logo NetworkX

NetworkX is a Python language software package for the creation, manipulation, and study of the...
  • MarkLogic Server Landing page
    Landing page //
    2023-07-27
  • NetworkX Landing page
    Landing page //
    2023-09-14

MarkLogic Server features and specs

  • Multi-Model Database
    MarkLogic Server is a multi-model database that supports documents, graphs, and relational data, allowing for versatility in storing and managing various data types.
  • Enterprise Features
    Includes enterprise-grade features such as ACID transactions, built-in search capability, scalability, high availability, and disaster recovery.
  • Security
    Offers advanced security controls including role-based access, encryption, and auditing, which are crucial for handling sensitive and regulated data.
  • Integrated Search
    Provides powerful search capabilities out-of-the-box, which can index and search text, structure, and metadata across all data types efficiently.
  • Data Integration
    Facilitates data integration from multiple sources, supporting seamless interoperability and operational data hubs, which is beneficial for complex data environments.

Possible disadvantages of MarkLogic Server

  • Complexity and Learning Curve
    While rich in features, it may have a steep learning curve for new users, which could lead to a longer setup and training time.
  • Cost
    Can be expensive, especially for smaller organizations, as it comes with licensing costs typical of enterprise-grade software.
  • Vendor Lock-in
    Using a proprietary database like MarkLogic can create risks of vendor lock-in, potentially complicating data migrations to other platforms if needed.
  • Limited Community Support
    Compared to open-source alternatives, there might be less community support available, which can be a drawback for troubleshooting or finding resources.
  • Performance Overhead
    Due to its extensive feature set, there can be performance overhead, requiring careful management and optimal configuration to achieve desired performance.

NetworkX features and specs

  • Ease of Use
    NetworkX provides a simple and intuitive API that makes it easy for both novices and experienced users to create, manipulate, and study the structure and dynamics of complex networks.
  • Comprehensive Documentation
    The library is well-documented with a vast number of examples and tutorials, aiding users in understanding and applying the features effectively.
  • Rich Functionality
    NetworkX offers numerous built-in functions to analyze network properties, perform algorithms like shortest path and clustering, and handle various graph types such as directed, undirected, and multigraphs.
  • Integration with Python Ecosystem
    Being a Python library, NetworkX integrates seamlessly with other scientific computing libraries like NumPy, SciPy, and Matplotlib, allowing for extensive data analysis and visualization.
  • Active Community
    NetworkX's active community of users and developers means continuous improvements and updates, as well as a wealth of shared knowledge and code to draw upon.

Possible disadvantages of NetworkX

  • Performance Limitations
    NetworkX may suffer from performance issues with extremely large graphs due to its in-memory data storage and Python's inherent single-threaded execution, making it less suitable for handling very large-scale networks.
  • Lack of Parallel Processing
    NetworkX does not natively support parallel processing within its operations, which can be a drawback when working with complex computations or very large graphs.
  • Memory Consumption
    Graphs and network data structures in NetworkX may consume a substantial amount of memory, especially with large datasets, potentially leading to inefficiencies.
  • Visualization Limitations
    While NetworkX provides basic plotting capabilities, for more advanced and interactive visualizations, additional libraries like Matplotlib or Plotly might be needed.
  • Scalability Constraints
    The library is not designed to work efficiently with very large networks compared to other frameworks specialized for scalability, such as Graph-tool or igraph.

MarkLogic Server videos

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NetworkX videos

Directed Network Analysis - Simulating a Social Network Using Networkx in Python - Tutorial 28

Category Popularity

0-100% (relative to MarkLogic Server and NetworkX)
Databases
58 58%
42% 42
Graph Databases
0 0%
100% 100
Relational Databases
100 100%
0% 0
Network & Admin
100 100%
0% 0

User comments

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Social recommendations and mentions

Based on our record, NetworkX seems to be more popular. It has been mentiond 35 times since March 2021. We are tracking product recommendations and mentions on various public social media platforms and blogs. They can help you identify which product is more popular and what people think of it.

MarkLogic Server mentions (0)

We have not tracked any mentions of MarkLogic Server yet. Tracking of MarkLogic Server recommendations started around Apr 2022.

NetworkX mentions (35)

  • Representing Graphs in PostgreSQL
    If you are interested in the subject, also take a look at NetworkDisk[1] which enable users of NetworkX[2] which maps graphs to databases. [1] https://networkdisk.inria.fr/ [2] https://networkx.org/. - Source: Hacker News / 3 months ago
  • Build the dependency graph of your BigQuery pipelines at no cost: a Python implementation
    In the project we used Python lib networkx and a DiGraph object (Direct Graph). To detect a table reference in a Query, we use sqlglot, a SQL parser (among other things) that works well with Bigquery. - Source: dev.to / over 1 year ago
  • Custom libraries and utility tools for challenges
    If you program in Python, can use NetworkX for that. But it's probably a good idea to implement the basic algorithms yourself at least one time. Source: over 1 year ago
  • Google open-sources their graph mining library
    For those wanting to play with graphs and ML I was browsing the arangodb docs recently and I saw that it includes integrations to various graph libraries and machine learning frameworks [1]. I also saw a few jupyter notebooks dealing with machine learning from graphs [2]. Integrations include: * NetworkX -- https://networkx.org/ * DeepGraphLibrary -- https://www.dgl.ai/ * cuGraph (Rapids.ai Graph) --... - Source: Hacker News / over 1 year ago
  • org-roam-pygraph: Build a graph of your org-roam collection for use in Python
    Org-roam-ui is a great interactive visualization tool, but its main use is visualization. The hope of this library is that it could be part of a larger graph analysis pipeline. The demo provides an example graph visualization, but what you choose to do with the resulting graph certainly isn't limited to that. See for example networkx. Source: almost 2 years ago
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What are some alternatives?

When comparing MarkLogic Server and NetworkX, you can also consider the following products

Datomic - The fully transactional, cloud-ready, distributed database

neo4j - Meet Neo4j: The graph database platform powering today's mission-critical enterprise applications, including artificial intelligence, fraud detection and recommendations.

Valentina Server - Valentina Server is 3 in 1: Valentina DB Server / SQLite Server / Report Server

ArangoDB - A distributed open-source database with a flexible data model for documents, graphs, and key-values.

Google Cloud Datastore - Cloud Datastore is a NoSQL database for your web and mobile applications.

RedisGraph - A high-performance graph database implemented as a Redis module.