Skip to content

Addressing Slower Parallel Implementations in nx-parallel Compared to NetworkX #79

Open
@Schefflera-Arboricola

Description

Description:

Need to address the performance of certain algorithms in the nx-parallel whose parallel implementations are currently slower than their corresponding implementations in NetworkX. Some of these algorithms include:

Issues to Discuss:

  1. Performance Comparison: What should we do with these functions that show slower performance in their parallel implementations? Should we consider reverting to or recommending the use of NetworkX's implementation in these cases?

  2. Optimization: Is there a more optimized way that would improve the performance of these parallel implementations? And will that be way better the performance for all the algorithms? And how can we give the control of changing these "ways" to the end user?

  3. Functionality: There are also some graph algorithms that cannot be parallelized due to their fundamentally non-parallelizable nature. How should we handle such algorithms in nx-parallel? Should we provide a clear indication in the documentation or in the code itself? Or not add them to nx-parallel at all?

Next Steps:

  • Gather insights and suggestions from the community.
  • Determine whether to optimize, remove, or replace the slower parallel implementations.
  • Identify any non-parallelizable functions and decide on how to best handle them.

Thank you :)

Activity

Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment

Metadata

Assignees

No one assigned

    Labels

    InfrastructureRelated to the general infrastructure and organisation of code in the repoquestionFurther information is requested

    Type

    No type

    Projects

    No projects

    Milestone

    No milestone

    Relationships

    None yet

    Development

    No branches or pull requests

    Issue actions