How to save parameters on local server when using remote grpc session on Tensorflow?












0















I first start a grpc server in server A.



server = tf.train.Server.create_local_server()
server.join()


Then I execute the training process on server B:



sess = tf.Session("grpc://172.31.222.83:34217")
sess.run(init)

for i in range(1000):
_, l = sess.run([train_op, loss], feed)

saver.save(sess, './ckpts/model')


When the training process is finished, I find the checkpoints have saved on server A. But I want server A just used as computational node. That is to say, I want the parameters are all saved on server B, server A is used only to compute. How can I achieve this?










share|improve this question



























    0















    I first start a grpc server in server A.



    server = tf.train.Server.create_local_server()
    server.join()


    Then I execute the training process on server B:



    sess = tf.Session("grpc://172.31.222.83:34217")
    sess.run(init)

    for i in range(1000):
    _, l = sess.run([train_op, loss], feed)

    saver.save(sess, './ckpts/model')


    When the training process is finished, I find the checkpoints have saved on server A. But I want server A just used as computational node. That is to say, I want the parameters are all saved on server B, server A is used only to compute. How can I achieve this?










    share|improve this question

























      0












      0








      0








      I first start a grpc server in server A.



      server = tf.train.Server.create_local_server()
      server.join()


      Then I execute the training process on server B:



      sess = tf.Session("grpc://172.31.222.83:34217")
      sess.run(init)

      for i in range(1000):
      _, l = sess.run([train_op, loss], feed)

      saver.save(sess, './ckpts/model')


      When the training process is finished, I find the checkpoints have saved on server A. But I want server A just used as computational node. That is to say, I want the parameters are all saved on server B, server A is used only to compute. How can I achieve this?










      share|improve this question














      I first start a grpc server in server A.



      server = tf.train.Server.create_local_server()
      server.join()


      Then I execute the training process on server B:



      sess = tf.Session("grpc://172.31.222.83:34217")
      sess.run(init)

      for i in range(1000):
      _, l = sess.run([train_op, loss], feed)

      saver.save(sess, './ckpts/model')


      When the training process is finished, I find the checkpoints have saved on server A. But I want server A just used as computational node. That is to say, I want the parameters are all saved on server B, server A is used only to compute. How can I achieve this?







      tensorflow






      share|improve this question













      share|improve this question











      share|improve this question




      share|improve this question










      asked Nov 24 '18 at 13:15









      alanalan

      11




      11
























          1 Answer
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          Here is one possibility.



          service TrainerService {
          rpc Train(TrainRequest) returns (TrainResponse);
          }

          func (s *trainerServer) Train(..., req *pb.TrainRequest) (resp *pb.TrainResponse) {
          return &pb.TrainResponse{tensorTrainer.Train(req.data)}
          }


          Here is another



          service TrainerService {
          rpc Train(TrainRequest) returns (TrainResponse);
          rpc Results(ResultsRequest) returns (ResultsResponse);
          }

          func (s *trainerServer) Train(..., req *pb.TrainRequest) (resp *pb.TrainResponse) {
          session, err := NewTrainingSession(req.data)
          if err != nil { panic() }
          go session.Train()
          return &pb.TrainResponse{session.id}
          }

          func (s *trainerServer) Results(..., req *pb.ResultsRequest) (resp *pb.ResultsResponse) {
          results, err := GetResults(req.id)
          if err != nil { panic() }
          return &pb.ResultsResponse{results}
          }


          The client can call Train and poll Results until success. Perhaps TrainResponse returns an estimate.






          share|improve this answer























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            1 Answer
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            active

            oldest

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            1 Answer
            1






            active

            oldest

            votes









            active

            oldest

            votes






            active

            oldest

            votes









            0














            Here is one possibility.



            service TrainerService {
            rpc Train(TrainRequest) returns (TrainResponse);
            }

            func (s *trainerServer) Train(..., req *pb.TrainRequest) (resp *pb.TrainResponse) {
            return &pb.TrainResponse{tensorTrainer.Train(req.data)}
            }


            Here is another



            service TrainerService {
            rpc Train(TrainRequest) returns (TrainResponse);
            rpc Results(ResultsRequest) returns (ResultsResponse);
            }

            func (s *trainerServer) Train(..., req *pb.TrainRequest) (resp *pb.TrainResponse) {
            session, err := NewTrainingSession(req.data)
            if err != nil { panic() }
            go session.Train()
            return &pb.TrainResponse{session.id}
            }

            func (s *trainerServer) Results(..., req *pb.ResultsRequest) (resp *pb.ResultsResponse) {
            results, err := GetResults(req.id)
            if err != nil { panic() }
            return &pb.ResultsResponse{results}
            }


            The client can call Train and poll Results until success. Perhaps TrainResponse returns an estimate.






            share|improve this answer




























              0














              Here is one possibility.



              service TrainerService {
              rpc Train(TrainRequest) returns (TrainResponse);
              }

              func (s *trainerServer) Train(..., req *pb.TrainRequest) (resp *pb.TrainResponse) {
              return &pb.TrainResponse{tensorTrainer.Train(req.data)}
              }


              Here is another



              service TrainerService {
              rpc Train(TrainRequest) returns (TrainResponse);
              rpc Results(ResultsRequest) returns (ResultsResponse);
              }

              func (s *trainerServer) Train(..., req *pb.TrainRequest) (resp *pb.TrainResponse) {
              session, err := NewTrainingSession(req.data)
              if err != nil { panic() }
              go session.Train()
              return &pb.TrainResponse{session.id}
              }

              func (s *trainerServer) Results(..., req *pb.ResultsRequest) (resp *pb.ResultsResponse) {
              results, err := GetResults(req.id)
              if err != nil { panic() }
              return &pb.ResultsResponse{results}
              }


              The client can call Train and poll Results until success. Perhaps TrainResponse returns an estimate.






              share|improve this answer


























                0












                0








                0







                Here is one possibility.



                service TrainerService {
                rpc Train(TrainRequest) returns (TrainResponse);
                }

                func (s *trainerServer) Train(..., req *pb.TrainRequest) (resp *pb.TrainResponse) {
                return &pb.TrainResponse{tensorTrainer.Train(req.data)}
                }


                Here is another



                service TrainerService {
                rpc Train(TrainRequest) returns (TrainResponse);
                rpc Results(ResultsRequest) returns (ResultsResponse);
                }

                func (s *trainerServer) Train(..., req *pb.TrainRequest) (resp *pb.TrainResponse) {
                session, err := NewTrainingSession(req.data)
                if err != nil { panic() }
                go session.Train()
                return &pb.TrainResponse{session.id}
                }

                func (s *trainerServer) Results(..., req *pb.ResultsRequest) (resp *pb.ResultsResponse) {
                results, err := GetResults(req.id)
                if err != nil { panic() }
                return &pb.ResultsResponse{results}
                }


                The client can call Train and poll Results until success. Perhaps TrainResponse returns an estimate.






                share|improve this answer













                Here is one possibility.



                service TrainerService {
                rpc Train(TrainRequest) returns (TrainResponse);
                }

                func (s *trainerServer) Train(..., req *pb.TrainRequest) (resp *pb.TrainResponse) {
                return &pb.TrainResponse{tensorTrainer.Train(req.data)}
                }


                Here is another



                service TrainerService {
                rpc Train(TrainRequest) returns (TrainResponse);
                rpc Results(ResultsRequest) returns (ResultsResponse);
                }

                func (s *trainerServer) Train(..., req *pb.TrainRequest) (resp *pb.TrainResponse) {
                session, err := NewTrainingSession(req.data)
                if err != nil { panic() }
                go session.Train()
                return &pb.TrainResponse{session.id}
                }

                func (s *trainerServer) Results(..., req *pb.ResultsRequest) (resp *pb.ResultsResponse) {
                results, err := GetResults(req.id)
                if err != nil { panic() }
                return &pb.ResultsResponse{results}
                }


                The client can call Train and poll Results until success. Perhaps TrainResponse returns an estimate.







                share|improve this answer












                share|improve this answer



                share|improve this answer










                answered Nov 24 '18 at 13:27









                user2882597user2882597

                389211




                389211
































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