Bug in new Deep learning Extension 0.9 sample process

wongcrwongcr MemberPosts:7Contributor II
RM 9.1 and the new Deeplearning4J extension 0.9 has a bug in the 01 Airline Passenger regression with LSTM v1 sample process.

The issue is the conversion of the dataset from collection to Timeseries to Tensor. The message is "Insufficient capability: The operation Timeseries to Tensor does not have sufficient capabilities for the given data set: polynomial attributes not supported" error


varunm1
1
1 votes

Fixed and Released·Last Updated

DLE-52

Comments

  • sgenzersgenzer 12Administrator, Moderator, Employee, RapidMiner Certified Analyst, Community Manager, Member, University Professor, PM ModeratorPosts:2,959Community Manager
    @wongcryes confirmed. Thank you for reporting. Moving to Product Feedback.
  • dias_1013dias_1013 MemberPosts:2Newbie
    RM 9.1 and the new Deeplearning4J extension 0.9 has a bug in the Deep Learning + Neural Net process.
    The message is: Could not initialize class org.nd4j.linalg.factory.Nd4j.
    Exception: java.lang.NoClassDefFoundError
  • pschlunderpschlunder Employee, RapidMiner Certified Analyst, RapidMiner Certified Expert, RMResearcher, MemberPosts:96RM Research
    @wongcrsorry for the bug in the tutorial process, it's due to working on studio version with different attribute handling of the windowing operator. Please just limit the attributes to numerical ones to solve it. You can set the "attribute filter type" of the windowing operator to "value_type" and choose "numerica" as the value type.

    Hope this helps,
    Philipp
  • pschlunderpschlunder Employee, RapidMiner Certified Analyst, RapidMiner Certified Expert, RMResearcher, MemberPosts:96RM Research
    can you share a process or a studio log please? Are you using a computer with an old 32bit system or 32bit java version?

    Regards,
    Philipp
Sign InorRegisterto comment.