Exemplo n.º 1
0
    def _init_node_parm(self, pself, conf_data):
        """
        call on init parms from db
        :param node_id:
        :return:
        """
        # get initial value
        pself.conf_data = conf_data
        pself.cls_pool = conf_data["cls_pool"]
        pself.nn_id = conf_data["nn_id"]
        pself.wf_ver = conf_data["wf_ver"]
        pself.node_id = conf_data["node_id"]

        # net type
        nninfo = NNCommonManager().get_nn_id_info(conf_data["nn_id"])
        pself.net_type = nninfo[0]['fields']['dir']
        graph = NNCommonManager().get_nn_node_name(conf_data["nn_id"])
        for net in graph:
            if net['fields']['graph_node'] == 'netconf_node':
                pself.netconf_node = net['fields']['graph_node_name']
            if net['fields']['graph_node'] == 'netconf_feed':
                pself.train_feed_name = pself.nn_id + "_" + pself.wf_ver + "_" + net[
                    'fields']['graph_node_name']
            if net['fields']['graph_node'] == 'eval_feed':
                pself.eval_feed_name = pself.nn_id + "_" + pself.wf_ver + "_" + net[
                    'fields']['graph_node_name']

        pself.feed_node = pself.get_prev_node()

        # set batch
        pself.load_batch = self.get_eval_batch(pself.node_id)
        _, pself.train_batch = self.make_batch(pself.node_id)

        return pself
Exemplo n.º 2
0
    def get(self, request, nnid):
        """
        Common Network Info Get Method
        ---
        # Class Name : CommonNNInfoList

        # Description:
            Structure : <nninfo> - version - batch version
            Search deinfed list of neural networks
        """
        try:
            condition = {}
            condition['nn_id'] = nnid
            if str(nnid).lower() == 'all':
                condition['nn_id'] = '%'
            elif str(nnid).lower() == 'seq':
                condition['nn_id'] = 'seq'
            return_data = NNCommonManager().get_nn_info(condition)
            logging.info(return_data)
            # Data node name
            graph = NNCommonManager.get_nn_node_name(None, nnid)

            return_param = {}
            return_param['fields'] = return_data
            return_param['graph'] = graph
            return Response(json.dumps(return_param, cls=DjangoJSONEncoder))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_param, cls=DjangoJSONEncoder))
Exemplo n.º 3
0
    def ngram_mro(self):
        graph = NNCommonManager().get_nn_node_name(self.nn_id)
        for net in graph:
            if net['fields']['graph_node'] == 'netconf_data':
                data_node = net['fields']['graph_node_name']
            elif net['fields']['graph_node'] == 'netconf_node':
                net_node = net['fields']['graph_node_name']

        netconf = NNCommonManager().get_nn_node_info(self.nn_id, str(
            self.ver), net_node)[0]['fields']['node_config_data']

        self.param['list'] = []
        self.param['standard'] = float(netconf['standard'])
        self.param['datatype'] = netconf['datatype']
        self.param['conninfo'] = netconf['conninfo']

        if self.param['datatype'] == 'file':
            self.get_file_data(data_node)
        elif self.param['datatype'] == 'db':
            self.get_db_data()

        item = []
        for val in self.param['list']:
            try:
                item_tuple = (val['item_code'].strip(),
                              val['item_leaf'].strip(),
                              val['item_desc'].strip())
                item.append(item_tuple)
            except:
                logging.info('Error Data' + val['item_code'])

        dataset = ngram.NGram(item, key=lambda x: x[2])
        dataset = sorted(dataset, key=lambda x: x[0])
        findset = ngram.NGram(item, key=lambda x: x[2])

        logging.info(
            '================================================================================================'
        )
        return_data = {}
        for data in dataset:
            findset.remove(data)
            result = findset.search(data[2], self.param['standard'])

            for r in range(len(result)):
                if return_data.get(data[0]) == None:
                    return_data[data[0]] = {}
                    return_data[data[0]]['desc'] = data[2]
                    # logging.info(str(data[0]) + ':' + str(data[2]))
                return_data[data[0]][result[r][0][0]] = {
                    'item_desc': result[r][0][2],
                    'item_perc': result[r][1]
                }
                # logging.info(' - '+str(result[r][0][0])+'('+str(result[r][1])+')' + ':' + str(result[r][0][2]))
                logging.info(
                    str(data[0]) + '-' + str(result[r][0][0]) + '(' +
                    str(result[r][1]) + ')')

        return return_data
Exemplo n.º 4
0
    def get(self, request, nnid, ver):
        """
        Your docs
        ---
        # Class Name (must be separated by `---`)

        # Description:
            - name: name
              description: Foobar long description goes here
        """
        try:
            return_data = NNCommonManager().get_nn_batch_info(nnid, ver)
            conv = []

            netconf_node = ""
            graph = NNCommonManager().get_nn_node_name(nnid)
            for net in graph:
                if net['fields']['graph_node'] == 'netconf_node':
                    netconf_node = net['fields']['graph_node_name']
            model_path = get_model_path(nnid, ver, netconf_node)

            for row in return_data:
                row["model"] = "N"
                filename = row["nn_batch_ver_id"]

                for fn in os.listdir(model_path):
                    fnsplit = fn.split(".")
                    fnsplitName = fnsplit[0]
                    if (fnsplitName == filename):
                        row["model"] = fnsplitName
                        row["model_exists"] = "Y"
                if row["result_info"] != None:
                    predicts = row["result_info"]["predicts"]

                    tfTot = 0
                    fTot = 0
                    tTot = 0
                    for i in range(len(predicts)):
                        for j in range(len(predicts[i])):
                            if i == j:
                                tTot += predicts[i][j]
                            else:
                                fTot += predicts[i][j]
                    row["true_cnt"] = tTot
                    row["false_cnt"] = fTot
                    tfTot = tTot + fTot
                    row["true_false_cnt"] = tfTot
                    if tfTot == 0:
                        tfTot = 1
                    row["true_false_percent"] = round(tTot / tfTot * 100)

                conv.append(row)
            return Response(json.dumps(conv))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
Exemplo n.º 5
0
    def post(self, request, nnid):
        """
        Common Network Info Post Method
        ---
        # Class Name : CommonNNInfoList

        # Description:
            Structure : <nninfo> - version - batch version
            Define new neural network process
        """
        try:

            input_parm = request.data
            max_nnid = NNCommonManager().get_nn_id_max() + 1
            if nnid == "new":
                nnid = "nn" + str(max_nnid).zfill(8)
            else:
                return_data = NNCommonManager().get_nn_id_info(nnid)
                if return_data != []:
                    return Response(
                        json.dumps(nnid + " Network ID already exists"))
            input_parm['nn_id'] = nnid
            if input_parm.get('automl_parms') == None:
                input_parm['automl_parms'] = {}
            if input_parm.get('automl_runtime') == None:
                input_parm['automl_runtime'] = {}
            if input_parm.get('automl_stat') == None:
                input_parm['automl_stat'] = {}

            input_parm_s = {}
            input_parm_s['id'] = max_nnid
            input_parm_s['nn_id'] = nnid
            return_data = NNCommonManager().insert_nn_info(
                input_parm, input_parm_s)
            # Data node name
            graph = NNCommonManager.get_nn_node_name(None, return_data)

            return_param = {}
            return_param['nn_id'] = return_data
            return_param['graph'] = graph

            return Response(json.dumps(return_param))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
        finally:
            graph = NNCommonManager().get_nn_node_name(nnid)
            for net in graph:
                if net['fields']['graph_node'] in [
                        'netconf_data', 'eval_data'
                ]:
                    utils.get_source_path(nnid, None,
                                          net['fields']['graph_node_name'])
Exemplo n.º 6
0
 def post(self, request, nnid):
     """
     - desc : insert cnn configuration data
     """
     try:
         input_data = request.data
         input_data['nn_id'] = nnid
         nnManager = NNCommonManager()
         nn_wf_ver_id = nnManager.get_nn_max_ver(nnid) + 1
         input_data['nn_wf_ver_id'] = nn_wf_ver_id
         return_data = nnManager.insert_nn_wf_info(input_data)
         return Response(json.dumps(return_data))
     except Exception as e:
         return_data = {"status": "404", "result": str(e)}
         return Response(json.dumps(return_data))
Exemplo n.º 7
0
    def run(self, conf_data):
        """
        executed on cluster run
        :param conf_data:
        :return:
        """
        try:
            # get related nodes
            net_node = self.get_prev_node(grp='netconf')
            data_node = self.get_prev_node(grp='preprocess')
            self._init_node_parm(conf_data['node_id'])

            # set result info cls
            result = TrainSummaryInfo(type=self.eval_result_type)
            result.set_nn_wf_ver_id(conf_data['wf_ver'])
            result.set_nn_id(conf_data['nn_id'])

            # run eval for each network
            result = net_node[0].eval(conf_data['node_id'],
                                      conf_data,
                                      data=data_node[0],
                                      result=result)

            if result is None or result == '':
                return {}
            # set parms for db store
            input_data = TrainSummaryInfo.save_result_info(self, result)
            input_data['accuracy'] = result.get_accuracy()

            condition_data = {}
            condition_data['nn_wf_ver_id'] = conf_data['wf_ver']
            condition_data[
                'condition'] = "3"  # 1 Pending, 2 Progress, 3 Finish, 4 Error
            # Net Version create
            NNCommonManager().update_nn_wf_info(conf_data['nn_id'],
                                                condition_data)

            return input_data
        except Exception as e:
            condition_data = {}
            condition_data['nn_wf_ver_id'] = conf_data['wf_ver']
            condition_data[
                'condition'] = "4"  # 1 Pending, 2 Progress, 3 Finish, 4 Error
            # Net Version create
            NNCommonManager().update_nn_wf_info(conf_data['nn_id'],
                                                condition_data)
            logging.error(e)
            raise Exception(e)
Exemplo n.º 8
0
    def get(self, request, nnid, ver):
        """
        Your docs
        ---
        # Class Name (must be separated by `---`)

        # Description:
            - name: name
              description: Foobar long description goes here
        """
        try:
            return_data = NNCommonManager().get_nn_batch_info(nnid, ver)
            conv = []

            node = WorkFlowSimpleManager().get_train_node()
            model_path = get_model_path(nnid, ver, node)

            for row in return_data:
                row["model"] = "N"
                filename = row["nn_batch_ver_id"]

                for fn in os.listdir(model_path):
                    fnsplit = fn.split(".")
                    fnsplitName = fnsplit[0]
                    if (fnsplitName == filename):
                        row["model"] = fn
                        row["model_exists"] = "Y"

                conv.append(row)
            return Response(json.dumps(conv))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
Exemplo n.º 9
0
    def _init_train_parm(self, conf_data):
        # get initial value
        self.conf_data = conf_data
        self.cls_pool = conf_data["cls_pool"]
        self.nn_id = conf_data["nn_id"]
        self.wf_ver = conf_data["wf_ver"]
        self.node_id = conf_data["node_id"]
        graph = NNCommonManager().get_nn_node_name(conf_data["nn_id"])
        for net in graph:
            if net['fields']['graph_node'] == 'netconf_node':
                self.netconf_node = net['fields']['graph_node_name']
            if net['fields']['graph_node'] == 'netconf_feed':
                self.train_feed_name = self.nn_id + "_" + self.wf_ver + "_" + net['fields']['graph_node_name']
            if net['fields']['graph_node'] == 'eval_feed':
                self.eval_feed_name = self.nn_id + "_" + self.wf_ver + "_" + net['fields']['graph_node_name']
        self.feed_node = self.get_prev_node()

        #key = conf_data.
        wf_net_conf = WorkFlowNetConfXgboost(self.node_id )
        self.conf = wf_net_conf.conf
        self.data_store_path = utils.get_store_path(self.net_id, self.net_ver, "data_node")
        self.data_store_eval_path = utils.get_store_path(self.net_id, self.net_ver, 'evaldata')
        self.model_path =self.conf.get('model_path')
        self.model_type = self.conf.get('model_type')
        print("")
Exemplo n.º 10
0
    def get(self, request, nnid):
        """
        Common Network Info Get Method
        ---
        # Class Name : CommonNNInfoList

        # Description:
            Structure : <nninfo> - version - batch version
            Search deinfed list of neural networks
        """
        try:
            condition = {}
            condition['nn_id'] = nnid
            if str(nnid).lower() == 'all':
                condition['nn_id'] = '%'
            elif str(nnid).lower() == 'seq':
                condition['nn_id'] = 'seq'
            return_data = NNCommonManager().get_nn_info(condition)
            logging.info(return_data)
            # Data node name
            graph = NNCommonManager.get_nn_node_name(None, nnid)

            return_param = {}
            return_param['fields'] = return_data
            return_param['graph'] = graph
            return Response(json.dumps(return_param, cls=DjangoJSONEncoder))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_param, cls=DjangoJSONEncoder))
Exemplo n.º 11
0
 def set_train_finish(self, ver_data_sets):
     """
     update state flag for version level info on database
     :param input_data : raw info we had on database 
     :return:version info 
     """
     try :
         for input_data in ver_data_sets :
             # Create Version
             nnCommonManager = NNCommonManager()
             del input_data['nn_id']
             input_data['condition'] = "3" # 1 Pending, 2 Progress, 3 Finish, 4 Error
             # Net Version create
             nnCommonManager.update_nn_wf_info(self.nn_id, input_data)
         return True
     except Exception as e :
         return False
Exemplo n.º 12
0
    def update_summary(self, networks, survive):
        """
        update summary info of processing genetic algorithm
        arranged by generation (sequece of list means number of generation
        each node contains extra info like survive or not 
        :param networks: networks for one generations
        :param survive: number of gene to survive 
        :return: dict type result info with extra flag 
        """

        # Regression sorting order add
        if self.net_type.rfind("_reg") != -1:
            networksNew = copy.deepcopy(
                sorted(networks, key=lambda x: x.get('acc'), reverse=False))
        else:
            networksNew = copy.deepcopy(
                sorted(networks, key=lambda x: x.get('acc'), reverse=True))
        # result = list(map(lambda x : self.set_value(x, 'survive', True) , networks[0:survive]))
        # self.summary['best'] = result
        # result = result + list(map(lambda x : self.set_value(x, 'survive', False) , networks[survive:]))
        # self.summary['bygen'].append(result)
        surcnt = 1
        result = []
        best = []
        for net in networksNew:
            if survive < surcnt:
                net['survive'] = False
            else:
                net['survive'] = True
                best.append(net)
            if survive == surcnt:
                self.summary['best'] = best
            result.append(net)
            surcnt += 1
        self.summary['bygen'].append(result)

        AutoMlCommon().update_stat_obj(self.nn_id, self.summary)

        # Set Best Active
        nnCommonManager = NNCommonManager()
        input_data = {}
        input_data['active_flag'] = "Y"
        input_data['nn_wf_ver_id'] = networksNew[0].get('nn_wf_ver_id')
        nnCommonManager.update_nn_wf_info(networksNew[0].get('nn_id'),
                                          input_data)
Exemplo n.º 13
0
 def set_train_finish(self, ver_data_sets):
     """
     update state flag for version level info on database
     :param input_data : raw info we had on database 
     :return:version info 
     """
     try:
         for input_data in ver_data_sets:
             # Create Version
             nnCommonManager = NNCommonManager()
             del input_data['nn_id']
             input_data[
                 'condition'] = "3"  # 1 Pending, 2 Progress, 3 Finish, 4 Error
             # Net Version create
             nnCommonManager.update_nn_wf_info(self.nn_id, input_data)
         return True
     except Exception as e:
         return False
Exemplo n.º 14
0
 def get(self, request, nnid, wfver, desc):
     """
     - desc : get data
     """
     try:
         return_data = NNCommonManager().get_nn_node_info(nnid, wfver, desc)
         return Response(json.dumps(return_data))
     except Exception as e:
         return_data = {"status": "404", "result": str(e)}
         return Response(json.dumps(return_data))
Exemplo n.º 15
0
 def get(self, request, nnid):
     """
     - desc : get cnn configuration data
     """
     try:
         return_data = NNCommonManager().get_nn_wf_info(nnid)
         return Response(json.dumps(return_data))
     except Exception as e:
         return_data = {"status": "404", "result": str(e)}
         return Response(json.dumps(return_data))
Exemplo n.º 16
0
    def update_summary(self, networks, survive):
        """
        update summary info of processing genetic algorithm
        arranged by generation (sequece of list means number of generation
        each node contains extra info like survive or not 
        :param networks: networks for one generations
        :param survive: number of gene to survive 
        :return: dict type result info with extra flag 
        """

        # Regression sorting order add
        if self.net_type.rfind("_reg") != -1:
            networksNew = copy.deepcopy(sorted(networks, key=lambda x: x.get('acc'), reverse=False))
        else:
            networksNew = copy.deepcopy(sorted(networks, key=lambda x: x.get('acc'), reverse=True))
        # result = list(map(lambda x : self.set_value(x, 'survive', True) , networks[0:survive]))
        # self.summary['best'] = result
        # result = result + list(map(lambda x : self.set_value(x, 'survive', False) , networks[survive:]))
        # self.summary['bygen'].append(result)
        surcnt = 1
        result = []
        best = []
        for net in networksNew:
            if survive < surcnt:
                net['survive'] = False
            else:
                net['survive'] = True
                best.append(net)
            if survive == surcnt:
                self.summary['best'] = best
            result.append(net)
            surcnt += 1
        self.summary['bygen'].append(result)

        AutoMlCommon().update_stat_obj(self.nn_id, self.summary)

        # Set Best Active
        nnCommonManager = NNCommonManager()
        input_data = {}
        input_data['active_flag'] = "Y"
        input_data['nn_wf_ver_id'] = networksNew[0].get('nn_wf_ver_id')
        nnCommonManager.update_nn_wf_info(networksNew[0].get('nn_id'), input_data)
Exemplo n.º 17
0
 def delete(self, request, nnid):
     """
     - desc : delete cnn configuration data
     """
     try:
         input_parm = request.data
         input_parm['nn_id'] = nnid
         return_data = NNCommonManager().delete_nn_info(input_parm)
         return Response(json.dumps(return_data))
     except Exception as e:
         return_data = {"status": "404", "result": str(e)}
         return Response(json.dumps(return_data))
Exemplo n.º 18
0
    def post(self, request, nnid):
        """
        Your docs
        ---
        # Class Name (must be separated by `---`)

        # Description:
            - name: name
              description: Foobar long description goes here
        """
        try:
            input_data = request.data
            input_data['nn_id'] = nnid
            nnManager = NNCommonManager()
            nn_wf_ver_id = nnManager.get_nn_max_ver(nnid) + 1
            input_data['nn_wf_ver_id'] = nn_wf_ver_id
            return_data = nnManager.insert_nn_wf_info(input_data)
            return Response(json.dumps(return_data))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
Exemplo n.º 19
0
    def post(self, request, nnid):
        """
        Common Network Version Info Post Method
        ---
        # Class Name : CommonNNInfoVersion

        # Description:
            Structure : nninfo - <version> - batch version
            need to define version info under network definition
        """
        try:
            input_data = request.data
            input_data['nn_id'] = nnid
            nnManager = NNCommonManager()
            nn_wf_ver_id = nnManager.get_nn_max_ver(nnid) + 1
            input_data['nn_wf_ver_id'] = nn_wf_ver_id
            return_data = nnManager.insert_nn_wf_info(input_data)
            return Response(json.dumps(return_data))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
Exemplo n.º 20
0
    def create_version(self, generation):
        """
        create version on database
        :param generation:
        :return:
        """
        # Create Version
        nnCommonManager = NNCommonManager()
        nn_wf_ver_id = nnCommonManager.get_nn_max_ver(self.nn_id) + 1
        input_data = {}
        input_data['nn_wf_ver_id'] = nn_wf_ver_id
        input_data['nn_def_list_info_nn_id'] = generation
        input_data['automl_gen'] = generation
        input_data['condition'] = "2"  # 1 Pending, 2 Progress, 3 Finish, 4 Error
        input_data['active_flag'] = "N"
        # input_data['nn_wf_ver_desc'] = " ".join(["id:",self.nn_id, "gen:", generation, "ver:", str(nn_wf_ver_id)])
        input_data['nn_id'] = self.nn_id

        # Net Version create
        nnCommonManager.insert_nn_wf_info(input_data)
        return nn_wf_ver_id, input_data
Exemplo n.º 21
0
    def create_version(self, generation):
        """
        create version on database
        :param generation:
        :return:
        """
        # Create Version
        nnCommonManager = NNCommonManager()
        nn_wf_ver_id = nnCommonManager.get_nn_max_ver(self.nn_id) + 1
        input_data = {}
        input_data['nn_wf_ver_id'] = nn_wf_ver_id
        input_data['nn_def_list_info_nn_id'] = generation
        input_data['automl_gen'] = generation
        input_data[
            'condition'] = "2"  # 1 Pending, 2 Progress, 3 Finish, 4 Error
        input_data['active_flag'] = "N"
        # input_data['nn_wf_ver_desc'] = " ".join(["id:",self.nn_id, "gen:", generation, "ver:", str(nn_wf_ver_id)])
        input_data['nn_id'] = self.nn_id

        # Net Version create
        nnCommonManager.insert_nn_wf_info(input_data)
        return nn_wf_ver_id, input_data
Exemplo n.º 22
0
    def get(self, request, nnid):
        """
        Common Network Version Info Get Method
        ---
        # Class Name : CommonNNInfoVersion

        # Description:
            Structure : nninfo - <version> - batch version
            Get version information of selected nnid
        """
        try:
            return_data = NNCommonManager().get_nn_wf_info(nnid)
            conv = []
            netconf_node = ""
            graph = NNCommonManager().get_nn_node_name(nnid)
            for net in graph:
                if net['fields']['graph_node'] == 'netconf_node':
                    netconf_node = net['fields']['graph_node_name']

            for row in return_data:
                row["model"] = "N"
                train_filename = row["train_batch_ver_id"]
                pred_filename  = row["pred_batch_ver_id"]
                ver = str(row["nn_wf_ver_id"])
                model_path = get_model_path(nnid, ver, netconf_node)
                for fn in os.listdir(model_path):
                    fnsplit = fn.split(".")
                    fnsplitName = fnsplit[0]
                    if (fnsplitName == train_filename):
                        row["train_model"] = fn
                        row["train_model_exists"] = "Y"
                    if (fnsplitName == pred_filename):
                        row["pred_model"] = fn
                        row["pred_model_exists"] = "Y"
                conv.append(row)
            return Response(json.dumps(conv))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
Exemplo n.º 23
0
    def post(self, request, type, nnid, ver):
        """
        Request Deep Neural Network to predict result with given data   \n
        input formats can be varies on type of networks     \n
        but usually you can use it with parm input_data     \n
        ---
        # Class Name : ServiceManagerPredict

        # Description:
            request predict service via rest service
            It caches the model and vectors on first request
            It may can take some time at first for caching, after than we can response the request
            within 1.0 sec
        """
        try:
            if ver == 'active':
                condition = {'nn_id': nnid}
                ver = NNCommonManager().get_nn_info(
                    condition)[0]['nn_wf_ver_id']

            if (type == "resnet" or type == "inceptionv4"):
                return_data = PredictNetImage().run(nnid, ver, request)
            elif (type == 'w2v'):
                return_data = PredictNetW2V().run(nnid, request.data)
            elif (type == "d2v"):
                return_data = PredictNetD2V().run(nnid, request.data)
            elif (type == "cnn"):
                return_data = PredictNetCnn().run(nnid, ver, request.FILES)
            elif (type == "wdnn"):
                return_data = PredictNetWdnn().run(nnid, ver, request)
            elif (type == "seq2seq"):
                return_data = PredictNetSeq2Seq().run(nnid, request.data)
            elif (type == "autoencoder"):
                return_data = PredictNetAutoEncoder().run(nnid, request.data)
            elif (type == "anomaly"):
                return_data = PredictNetAnomaly().run(nnid, request.data)
            elif (type == "wcnn"):
                return_data = PredictNetWcnn().run(nnid, request.data)
            elif (type == "bilstmcrf"):
                return_data = PredictNetBiLstmCrf().run(nnid, request.data)
            elif (type == "ngram_mro"):
                return_data = PredictNetNgram().run(type, nnid, ver,
                                                    request.data)
            elif (type == "xgboost_reg"):
                return_data = PredictNetXgboost().run(nnid, ver, request.FILES)

            return Response(return_data)
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
Exemplo n.º 24
0
    def post(self, request, nnid):
        """
        Common Network Version Info Post Method
        ---
        # Class Name : CommonNNInfoVersion

        # Description:
            Structure : nninfo - <version> - batch version
            need to define version info under network definition
        """
        try:
            input_data = request.data
            input_data['nn_id'] = nnid
            nnManager = NNCommonManager()
            nn_wf_ver_id = nnManager.get_nn_max_ver(nnid) + 1
            input_data['nn_wf_ver_id'] = nn_wf_ver_id
            if(nn_wf_ver_id == 1 and input_data['nn_wf_ver_info'] == 'single'):
                input_data['active_flag'] = 'Y'
            return_data = nnManager.insert_nn_wf_info(input_data)
            return Response(json.dumps(return_data))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
Exemplo n.º 25
0
    def post(self, request, nnid):
        """
        Common Network Info Post Method
        ---
        # Class Name : CommonNNInfoList

        # Description:
            Structure : <nninfo> - version - batch version
            Define new neural network process
        """
        try:
            input_parm = request.data
            max_nnid = NNCommonManager().get_nn_id_max() + 1
            if nnid == "":
                nnid = "nn" + str(max_nnid).zfill(8)
            else:
                return_data = NNCommonManager().get_nn_id_info(nnid)
                if return_data != []:
                    return Response(
                        json.dumps(nnid + " Network ID already exists"))
            input_parm['nn_id'] = nnid
            if input_parm.get('automl_parms') == None:
                input_parm['automl_parms'] = {}
            if input_parm.get('automl_runtime') == None:
                input_parm['automl_runtime'] = {}
            if input_parm.get('automl_stat') == None:
                input_parm['automl_stat'] = {}

            input_parm_s = {}
            input_parm_s['id'] = max_nnid
            input_parm_s['nn_id'] = nnid
            return_data = NNCommonManager().insert_nn_info(
                input_parm, input_parm_s)
            return Response(json.dumps(return_data))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
Exemplo n.º 26
0
    def post(self, request, nnid):
        """
        Your docs
        ---
        # Class Name (must be separated by `---`)

        # Description:
            - name: name
              description: Foobar long description goes here
        """
        try:
            input_parm = request.data
            max_nnid = NNCommonManager().get_nn_id_max() + 1
            if nnid == "":
                nnid = "nn" + str(max_nnid).zfill(8)
            else:
                return_data = NNCommonManager().get_nn_id_info(nnid)
                if return_data != []:
                    return Response(
                        json.dumps(nnid + " Network ID already exists"))
            input_parm['nn_id'] = nnid
            if input_parm.get('automl_parms') == None:
                input_parm['automl_parms'] = {}
            if input_parm.get('automl_runtime') == None:
                input_parm['automl_runtime'] = {}
            if input_parm.get('automl_stat') == None:
                input_parm['automl_stat'] = {}

            input_parm_s = {}
            input_parm_s['id'] = max_nnid
            input_parm_s['nn_id'] = nnid
            return_data = NNCommonManager().insert_nn_info(
                input_parm, input_parm_s)
            return Response(json.dumps(return_data))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
Exemplo n.º 27
0
    def run(self, type, nn_id, ver, parm):
        """
        run predict service
        1. get node id
        2. check json conf format
        3. run predict & return
        :param parm:
        :return:
        """
        if(self._valid_check(parm)) :
            if ver == 'active':
                condition = {'nn_id': nn_id}
                ver = NNCommonManager().get_nn_info(condition)[0]['nn_wf_ver_id']

            return ThirdPartyNgram().predict(type, nn_id, ver)
Exemplo n.º 28
0
 def get(self, request, nnid):
     """
     - desc : get cnn configuration data
     """
     try:
         condition = {}
         condition['nn_id'] = nnid
         if str(nnid).lower() == 'all':
             condition['nn_id'] = '%'
         return_data = NNCommonManager().get_nn_info(condition)
         logging.info(return_data)
         return Response(json.dumps(return_data, cls=DjangoJSONEncoder))
     except Exception as e:
         return_data = {"status": "404", "result": str(e)}
         return Response(json.dumps(return_data, cls=DjangoJSONEncoder))
Exemplo n.º 29
0
 def post(self, request, nnid):
     """
     - desc : insert cnn configuration data
     """
     try:
         input_parm = request.data
         input_parm['nn_id'] = nnid
         input_parm['automl_parms'] = {}
         input_parm['automl_runtime'] = {}
         input_parm['automl_stat'] = {}
         return_data = NNCommonManager().insert_nn_info(input_parm)
         return Response(json.dumps(return_data))
     except Exception as e:
         return_data = {"status": "404", "result": str(e)}
         return Response(json.dumps(return_data))
Exemplo n.º 30
0
    def run(self):
        """
        run automl
        :return:
        """
        try:
            # get genetic algorithm hyper parameters
            generation = self.parm_info.get('generation')
            population = self.parm_info.get('population')
            survive = self.parm_info.get('survive')

            # define gene list
            networks = []

            # iterate generation
            for idx in range(generation):
                # create new generations
                if (idx == 0):
                    gen_nets, ver_data_sets = self.create_networks(
                        idx, population)
                    networks = networks + gen_nets
                    AutoMlCommon().reset_stat_obj(self.nn_id)
                else:
                    gen_nets, ver_data_sets = self.create_networks(
                        idx, population - survive)
                    networks = networks + gen_nets

                # train & evaluate networks
                initial = True if idx == 0 else False
                networks = self.train_networks(networks, initial=initial)
                # set each train set flag to fin
                self.set_train_finish(ver_data_sets)
                # network acc set
                accArr = 0
                for net in networks:
                    return_data = NNCommonManager().get_nn_batch_info(
                        net['nn_id'], net['nn_wf_ver_id'])
                    re_acc = return_data[0]['acc_info']['acc']
                    networks[accArr]['acc'] = float(re_acc[len(re_acc) - 1])
                    accArr += 1
                    # print(return_data)
                # update traing progress
                self.update_summary(networks, survive)
                # sort & discard
                networks = self.discard_inferior(networks, survive)
            return networks
        except Exception as e:
            logging.error("Error on running AutoML alogorithm : {0}".format(e))
Exemplo n.º 31
0
    def post(self, request, nnid):
        """
        Common Network Info Post Method
        ---
        # Class Name : CommonNNInfoList

        # Description:
            Structure : <nninfo> - version - batch version
            Define new neural network process
        """
        try:

            input_parm = request.data
            max_nnid = NNCommonManager().get_nn_id_max() + 1
            if nnid == "new":
                nnid = "nn" + str(max_nnid).zfill(8)
            else:
                return_data = NNCommonManager().get_nn_id_info(nnid)
                if return_data != []:
                    return Response(json.dumps(nnid+" Network ID already exists"))
            input_parm['nn_id'] = nnid
            if input_parm.get('automl_parms') == None:
                input_parm['automl_parms'] = {}
            if input_parm.get('automl_runtime') == None:
                input_parm['automl_runtime'] = {}
            if input_parm.get('automl_stat') == None:
                input_parm['automl_stat'] = {}

            input_parm_s = {}
            input_parm_s['id'] = max_nnid
            input_parm_s['nn_id'] = nnid
            return_data = NNCommonManager().insert_nn_info(input_parm, input_parm_s)
            # Data node name
            graph = NNCommonManager.get_nn_node_name(None, return_data)

            return_param = {}
            return_param['nn_id'] = return_data
            return_param['graph'] = graph

            return Response(json.dumps(return_param))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
        finally:
            graph = NNCommonManager().get_nn_node_name(nnid)
            for net in graph:
                if net['fields']['graph_node'] in ['netconf_data','eval_data']:
                    utils.get_source_path(nnid, None, net['fields']['graph_node_name'])
Exemplo n.º 32
0
    def put(self, request, nnid):
        """
        Common Network Version Info Delete Method
        ---
        # Class Name : CommonNNInfoVersion

        # Description:
            Structure : nninfo - <version> - batch version
            Modify seleted nnid's information
        """
        try:
            return_data = NNCommonManager().update_nn_wf_info(nnid, request.data)
            return Response(json.dumps(return_data))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
Exemplo n.º 33
0
 def _init_train_parm(self, conf_data):
     # get initial value
     self.conf_data = conf_data
     self.cls_pool = conf_data["cls_pool"]
     self.nn_id = conf_data["nn_id"]
     self.wf_ver = conf_data["wf_ver"]
     self.node_id = conf_data["node_id"]
     graph = NNCommonManager().get_nn_node_name(conf_data["nn_id"])
     for net in graph:
         if net['fields']['graph_node'] == 'netconf_node':
             self.netconf_node = net['fields']['graph_node_name']
         if net['fields']['graph_node'] == 'netconf_feed':
             self.train_feed_name = self.nn_id + "_" + self.wf_ver + "_" + net['fields']['graph_node_name']
         if net['fields']['graph_node'] == 'eval_feed':
             self.eval_feed_name = self.nn_id + "_" + self.wf_ver + "_" + net['fields']['graph_node_name']
     self.feed_node = self.get_prev_node()
Exemplo n.º 34
0
    def put(self, request, nnid, ver):
        """
        Your docs
        ---
        # Class Name (must be separated by `---`)

        # Description:
            - name: name
              description: Foobar long description goes here
        """
        try:
            return_data = NNCommonManager().update_nn_batch_info(
                nnid, ver, request.data)
            return Response(json.dumps(return_data))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
Exemplo n.º 35
0
    def delete(self, request, nnid):
        """
        Common Network Version Info Delete Method
        ---
        # Class Name : CommonNNInfoVersion

        # Description:
            Structure : nninfo - <version> - batch version
            delete selected network info and related data
        """
        try:

            return_data = NNCommonManager().delete_nn_wf_info(request.data)
            return Response(json.dumps(return_data))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))
Exemplo n.º 36
0
    def delete(self, request, nnid):
        """
        Your docs
        ---
        # Class Name (must be separated by `---`)

        # Description:
            - name: name
              description: Foobar long description goes here
        """
        try:
            input_parm = request.data
            input_parm['nn_id'] = nnid
            return_data = NNCommonManager().delete_nn_info(input_parm)
            return Response(json.dumps(return_data))
        except Exception as e:
            return_data = {"status": "404", "result": str(e)}
            return Response(json.dumps(return_data))