Seqanswers Leaderboard Ad

Collapse

Announcement

Collapse
No announcement yet.
X
 
  • Filter
  • Time
  • Show
Clear All
new posts

  • scientific workflow systems: waste of time or boost of productivity?

    I read (online) and hear (conferences) a lot about scientific workflow systems, in the sense of http://en.wikipedia.org/wiki/Scientific_workflow_system.

    There are many such systems under development, for example Kepler, Taverna, VisTtrails, LoniPipeline, Apache Airavata.

    Scientific workflow systems *sound* very interesting when I read or hear about them; they promise reproducibility, grid and cluster support, use R without programming etc etc.

    But when digging a bit deeper it looks like a tool where I can string together boxes to coordinate different programs. Nothing I can't do with make, bash and awk a dozen times faster. Also it's great that they have grid support but I don't have access to a grid. I have access to one of the Top 500 supercomputers but this system is so secured that not in a million years, any of these workflow systems can connect to it.

    I work in a very big genomics research insitute in the bioinformatics department and *noone* is using scientific workflow systems, either.

    So I am just wondering. Are scientific workflow systems (Kepler, Taverna, VisTtrails, LoniPipeline, Apache Airavata...) useful for anything? Are they just a waste of time or do they boost productivity? Do *you* use them for anything? And if yes, do you use them for ad-hoc type of data analysis, or for byuilding analysis services?

    Looking forward to your opinions.

  • #2
    This is a very interesting question. I have worked with and been part of efforts to create scientific workflow systems. Do I use one in my day to day job? No. If I set out to create a workflow tomorrow would I use one? Almost certainly not.

    These are largely over-engineered, poorly supported solutions to a problem which doesn't really exist. They do not deliver 'building block' approaches to workflow building. Many of them will require you some new arbitrary language to sequence workflows, and the brittleness of most bioinformatics pipelines (changing input and output streams from various tools) and fast pace of underlying component change means they are even harder to keep updated and debugged than a more traditional approach.

    A lot of these grew up around 'Grid' computing, I don't even hear the term 'Grid computing' anymore, or 'e-Science'. Very little in my bioinformatics life cannot be solved by a few instances on EC2 and a bit of patience. I'd rather take the time to learn a cluster based scheduling system, which generally already have all you need to sequence workflows in place and apply that over a supercomputing infrastructure (I too have access to a number of supercomputers and still can't see a compelling reason to stop doing what I'm doing).

    I think essentially these systems get in the way of bioinformatics which has to be largely agile. Adding in additional layers of complexity is not worth it. These systems were designed against the computing paradigms we imagined we might have 10 years ago. Well now we have cheap disks, cheap cores, cheap memory - I don't think that was considered at the time.

    My personal opinions, YMMV

    Comment


    • #3
      Cloud is the new Grid.

      Comment


      • #4
        Thanks for your input Bukowski! I have very similar impressions about these workflow systems.

        Comment

        Latest Articles

        Collapse

        • seqadmin
          Current Approaches to Protein Sequencing
          by seqadmin


          Proteins are often described as the workhorses of the cell, and identifying their sequences is key to understanding their role in biological processes and disease. Currently, the most common technique used to determine protein sequences is mass spectrometry. While still a valuable tool, mass spectrometry faces several limitations and requires a highly experienced scientist familiar with the equipment to operate it. Additionally, other proteomic methods, like affinity assays, are constrained...
          04-04-2024, 04:25 PM
        • seqadmin
          Strategies for Sequencing Challenging Samples
          by seqadmin


          Despite advancements in sequencing platforms and related sample preparation technologies, certain sample types continue to present significant challenges that can compromise sequencing results. Pedro Echave, Senior Manager of the Global Business Segment at Revvity, explained that the success of a sequencing experiment ultimately depends on the amount and integrity of the nucleic acid template (RNA or DNA) obtained from a sample. “The better the quality of the nucleic acid isolated...
          03-22-2024, 06:39 AM

        ad_right_rmr

        Collapse

        News

        Collapse

        Topics Statistics Last Post
        Started by seqadmin, 04-11-2024, 12:08 PM
        0 responses
        30 views
        0 likes
        Last Post seqadmin  
        Started by seqadmin, 04-10-2024, 10:19 PM
        0 responses
        32 views
        0 likes
        Last Post seqadmin  
        Started by seqadmin, 04-10-2024, 09:21 AM
        0 responses
        28 views
        0 likes
        Last Post seqadmin  
        Started by seqadmin, 04-04-2024, 09:00 AM
        0 responses
        53 views
        0 likes
        Last Post seqadmin  
        Working...
        X