// Close all AppendableVec public Futures closeAppendables(Futures fs) { _col0 = null; // Reset cache int len = vecs().length; for (int i = 0; i < len; i++) { Vec v = _vecs[i]; if (v instanceof AppendableVec) DKV.put(_keys[i], _vecs[i] = ((AppendableVec) v).close(fs), fs); } return fs; }
public Vec replace(int col, Vec nv) { assert col < _names.length; Vec rv = vecs()[col]; assert rv.group().equals(nv.group()); _vecs[col] = nv; _keys[col] = nv._key; if (DKV.get(nv._key) == null) // If not already in KV, put it there DKV.put(nv._key, nv); return rv; }
public Frame(String[] names, Vec[] vecs) { // assert names==null || names.length == vecs.length : "Number of columns does not match to // number of cols' names."; _names = names; _vecs = vecs; _keys = new Key[vecs.length]; for (int i = 0; i < vecs.length; i++) { Key k = _keys[i] = vecs[i]._key; if (DKV.get(k) == null) // If not already in KV, put it there DKV.put(k, vecs[i]); } Vec v0 = anyVec(); if (v0 == null) return; VectorGroup grp = v0.group(); for (int i = 0; i < vecs.length; i++) assert grp.equals(vecs[i].group()); }
@Override public void map(Chunk cs) { int idx = _chunkOffset + cs.cidx(); Key ckey = Vec.chunkKey(_v._key, idx); if (_cmap != null) { assert !cs.hasFloat() : "Input chunk (" + cs.getClass() + ") has float, but is expected to be categorical"; NewChunk nc = new NewChunk(_v, idx); // loop over rows and update ints for new domain mapping according to vecs[c].domain() for (int r = 0; r < cs._len; ++r) { if (cs.isNA(r)) nc.addNA(); else nc.addNum(_cmap[(int) cs.at8(r)], 0); } nc.close(_fs); } else { DKV.put(ckey, cs.deepCopy(), _fs, true); } }
/** * Train a Deep Learning model, assumes that all members are populated If checkpoint == null, * then start training a new model, otherwise continue from a checkpoint */ public final void buildModel() { DeepLearningModel cp = null; if (_parms._checkpoint == null) { cp = new DeepLearningModel( dest(), _parms, new DeepLearningModel.DeepLearningModelOutput(DeepLearning.this), _train, _valid, nclasses()); cp.model_info().initializeMembers(); } else { final DeepLearningModel previous = DKV.getGet(_parms._checkpoint); if (previous == null) throw new IllegalArgumentException("Checkpoint not found."); Log.info("Resuming from checkpoint."); _job.update(0, "Resuming from checkpoint"); if (isClassifier() != previous._output.isClassifier()) throw new H2OIllegalArgumentException( "Response type must be the same as for the checkpointed model."); if (isSupervised() != previous._output.isSupervised()) throw new H2OIllegalArgumentException( "Model type must be the same as for the checkpointed model."); // check the user-given arguments for consistency DeepLearningParameters oldP = previous._parms; // sanitized parameters for checkpointed model DeepLearningParameters newP = _parms; // user-given parameters for restart DeepLearningParameters oldP2 = (DeepLearningParameters) oldP.clone(); DeepLearningParameters newP2 = (DeepLearningParameters) newP.clone(); DeepLearningParameters.Sanity.modifyParms( oldP, oldP2, nclasses()); // sanitize the user-given parameters DeepLearningParameters.Sanity.modifyParms( newP, newP2, nclasses()); // sanitize the user-given parameters DeepLearningParameters.Sanity.checkpoint(oldP2, newP2); DataInfo dinfo; try { // PUBDEV-2513: Adapt _train and _valid (in-place) to match the frames that were used for // the previous model // This can add or remove dummy columns (can happen if the dataset is sparse and datasets // have different non-const columns) for (String st : previous.adaptTestForTrain(_train, true, false)) Log.warn(st); for (String st : previous.adaptTestForTrain(_valid, true, false)) Log.warn(st); dinfo = makeDataInfo(_train, _valid, _parms, nclasses()); DKV.put(dinfo); cp = new DeepLearningModel(dest(), _parms, previous, false, dinfo); cp.write_lock(_job); if (!Arrays.equals(cp._output._names, previous._output._names)) { throw new H2OIllegalArgumentException( "The columns of the training data must be the same as for the checkpointed model. Check ignored columns (or disable ignore_const_cols)."); } if (!Arrays.deepEquals(cp._output._domains, previous._output._domains)) { throw new H2OIllegalArgumentException( "Categorical factor levels of the training data must be the same as for the checkpointed model."); } if (dinfo.fullN() != previous.model_info().data_info().fullN()) { throw new H2OIllegalArgumentException( "Total number of predictors is different than for the checkpointed model."); } if (_parms._epochs <= previous.epoch_counter) { throw new H2OIllegalArgumentException( "Total number of epochs must be larger than the number of epochs already trained for the checkpointed model (" + previous.epoch_counter + ")."); } // these are the mutable parameters that are to be used by the model (stored in // model_info._parms) final DeepLearningParameters actualNewP = cp.model_info() .get_params(); // actually used parameters for model building (defaults filled in, // etc.) assert (actualNewP != previous.model_info().get_params()); assert (actualNewP != newP); assert (actualNewP != oldP); DeepLearningParameters.Sanity.update(actualNewP, newP, nclasses()); Log.info( "Continuing training after " + String.format("%.3f", previous.epoch_counter) + " epochs from the checkpointed model."); cp.update(_job); } catch (H2OIllegalArgumentException ex) { if (cp != null) { cp.unlock(_job); cp.delete(); cp = null; } throw ex; } finally { if (cp != null) cp.unlock(_job); } } trainModel(cp); // clean up, but don't delete weights and biases if user asked for export List<Key> keep = new ArrayList<>(); try { if (_parms._export_weights_and_biases && cp._output.weights != null && cp._output.biases != null) { for (Key k : Arrays.asList(cp._output.weights)) { keep.add(k); for (Vec vk : ((Frame) DKV.getGet(k)).vecs()) { keep.add(vk._key); } } for (Key k : Arrays.asList(cp._output.biases)) { keep.add(k); for (Vec vk : ((Frame) DKV.getGet(k)).vecs()) { keep.add(vk._key); } } } } finally { Scope.exit(keep.toArray(new Key[keep.size()])); } }
@Override public void onCompletion(CountedCompleter cc) { DKV.put(_v); }