Esempio n. 1
0
  @Override
  protected void checkMemoryFootPrint() {
    if (_model._output._ntrees == 0) return;
    int trees_so_far = _model._output._ntrees; // existing trees
    long model_mem_size =
        new ComputeModelSize(trees_so_far, _model._output._treeKeys).doAllNodes()._model_mem_size;
    _model._output._treeStats._byte_size = model_mem_size;
    double avg_tree_mem_size = (double) model_mem_size / trees_so_far;
    Log.debug(
        "Average tree size (for all classes): " + PrettyPrint.bytes((long) avg_tree_mem_size));

    // all the compressed trees are stored on the driver node
    long max_mem = H2O.SELF.get_max_mem();
    if (_parms._ntrees * avg_tree_mem_size > max_mem) {
      String msg =
          "The tree model will not fit in the driver node's memory ("
              + PrettyPrint.bytes((long) avg_tree_mem_size)
              + " per tree x "
              + _parms._ntrees
              + " > "
              + PrettyPrint.bytes(max_mem)
              + ") - try decreasing ntrees and/or max_depth or increasing min_rows!";
      error("_ntrees", msg);
      cancel(msg);
    }
  }
Esempio n. 2
0
 /**
  * Simple GLM wrapper to enable launching GLM from command line.
  *
  * <p>Example input: java -jar target/h2o.jar -name=test -runMethod water.util.GLMRunner
  * -file=smalldata/logreg/prostate.csv -y=CAPSULE -family=binomial
  *
  * @param args
  * @throws InterruptedException
  */
 public static void main(String[] args) throws InterruptedException {
   try {
     GLMArgs ARGS = new GLMArgs();
     new Arguments(args).extract(ARGS);
     System.out.println("==================<GLMRunner START>===================");
     ValueArray ary = Utils.loadAndParseKey(ARGS.file);
     int ycol;
     try {
       ycol = Integer.parseInt(ARGS.y);
     } catch (NumberFormatException e) {
       ycol = ary.getColumnIds(new String[] {ARGS.y})[0];
     }
     int ncols = ary.numCols();
     if (ycol < 0 || ycol >= ary.numCols()) {
       System.err.println("invalid y column: " + ycol);
       H2O.exit(-1);
     }
     int[] xcols;
     if (ARGS.xs.equalsIgnoreCase("all")) {
       xcols = new int[ncols - 1];
       for (int i = 0; i < ycol; ++i) xcols[i] = i;
       for (int i = ycol; i < ncols - 1; ++i) xcols[i] = i + 1;
     } else {
       System.out.println("xs = " + ARGS.xs);
       String[] names = ARGS.xs.split(",");
       xcols = new int[names.length];
       try {
         for (int i = 0; i < names.length; ++i) xcols[i] = Integer.valueOf(names[i]);
       } catch (NumberFormatException e) {
         xcols = ary.getColumnIds(ARGS.xs.split(","));
       }
     }
     for (int x : xcols)
       if (x < 0) {
         System.err.println("Invalid predictor specification " + ARGS.xs);
         H2O.exit(-1);
       }
     GLMJob j =
         DGLM.startGLMJob(
             DGLM.getData(ary, xcols, ycol, null, true),
             new ADMMSolver(ARGS.lambda, ARGS._alpha),
             new GLMParams(Family.valueOf(ARGS.family)),
             null,
             ARGS.xval,
             true);
     System.out.print("[GLM] computing model...");
     int progress = 0;
     while (!j.isDone()) {
       int p = (int) (100 * j.progress());
       int dots = p - progress;
       progress = p;
       for (int i = 0; i < dots; ++i) System.out.print('.');
       Thread.sleep(250);
     }
     Log.debug(Sys.GENLM, "DONE.");
     GLMModel m = j.get();
     String[] colnames = ary.colNames();
     System.out.println("Intercept" + " = " + m._beta[ncols - 1]);
     for (int i = 0; i < xcols.length; ++i) {
       System.out.println(colnames[i] + " = " + m._beta[i]);
     }
   } catch (Throwable t) {
     Log.err(t);
   } finally { // we're done. shutdown the cloud
     Log.debug(Sys.GENLM, "==================<GLMRunner DONE>===================");
     UDPRebooted.suicide(UDPRebooted.T.shutdown, H2O.SELF);
   }
 }