Yes Suneel is completely wright. If the data does not implement IOReadableWritable it is probably easier to use the TypeSerializerOutputFormat. What you need here to seralize the data is a TypeSerializer. You can obtain it the following way:
val model = mlr.weightsOption.get val weightVectorTypeInfo = TypeInformation.of(classOf[WeightVector]) val weightVectorSerializer = weightVectorTypeInfo.createSerializer(new ExecutionConfig()) val outputFormat = new TypeSerializerOutputFormat[WeightVector] outputFormat.setSerializer(weightVectorSerializer) model.write(outputFormat, "path") Cheers, Till On Tue, Mar 29, 2016 at 8:22 PM, Suneel Marthi <smar...@apache.org> wrote: > U may want to use FlinkMLTools.persist() methods which use > TypeSerializerFormat and don't enforce IOReadableWritable. > > > > On Tue, Mar 29, 2016 at 2:12 PM, Sourigna Phetsarath < > gna.phetsar...@teamaol.com> wrote: > >> Till, >> >> Thank you for your reply. >> >> Having this issue though, WeightVector does not extend IOReadWriteable: >> >> *public* *class* SerializedOutputFormat<*T* *extends* IOReadableWritable> >> >> >> *case* *class* WeightVector(weights: Vector, intercept: Double) *extends* >> Serializable {} >> >> >> However, I will use the approach to write out the weights as text. >> >> >> On Tue, Mar 29, 2016 at 5:01 AM, Till Rohrmann <trohrm...@apache.org> >> wrote: >> >>> Hi Gna, >>> >>> there are no utilities yet to do that but you can do it manually. In the >>> end, a model is simply a Flink DataSet which you can serialize to some >>> file. Upon reading this DataSet you simply have to give it to your >>> algorithm to be used as the model. The following code snippet illustrates >>> this approach: >>> >>> mlr.fit(inputDS, parameters) >>> >>> // write model to disk using the SerializedOutputFormat >>> mlr.weightsOption.get.write(new SerializedOutputFormat[WeightVector], >>> "path") >>> >>> // read the serialized model from disk >>> val model = env.readFile(new SerializedInputFormat[WeightVector], "path") >>> >>> // set the read model for the MLR algorithm >>> mlr.weightsOption = model >>> >>> Cheers, >>> Till >>> >>> >>> On Tue, Mar 29, 2016 at 10:46 AM, Simone Robutti < >>> simone.robu...@radicalbit.io> wrote: >>> >>>> To my knowledge there is nothing like that. PMML is not supported in >>>> any form and there's no custom saving format yet. If you really need a >>>> quick and dirty solution, it's not that hard to serialize the model into a >>>> file. >>>> >>>> 2016-03-28 17:59 GMT+02:00 Sourigna Phetsarath < >>>> gna.phetsar...@teamaol.com>: >>>> >>>>> Flinksters, >>>>> >>>>> Is there an example of saving a Trained Model, loading a Trained Model >>>>> and then scoring one or more feature vectors using Flink ML? >>>>> >>>>> All of the examples I've seen have shown only sequential fit and >>>>> predict. >>>>> >>>>> Thank you. >>>>> >>>>> -Gna >>>>> -- >>>>> >>>>> >>>>> *Gna Phetsarath*System Architect // AOL Platforms // Data Services // >>>>> Applied Research Chapter >>>>> 770 Broadway, 5th Floor, New York, NY 10003 >>>>> o: 212.402.4871 // m: 917.373.7363 >>>>> vvmr: 8890237 aim: sphetsarath20 t: @sourigna >>>>> >>>>> * <http://www.aolplatforms.com>* >>>>> >>>> >>>> >>> >> >> >> -- >> >> >> *Gna Phetsarath*System Architect // AOL Platforms // Data Services // >> Applied Research Chapter >> 770 Broadway, 5th Floor, New York, NY 10003 >> o: 212.402.4871 // m: 917.373.7363 >> vvmr: 8890237 aim: sphetsarath20 t: @sourigna >> >> * <http://www.aolplatforms.com>* >> > >