CPC G06F 16/287 (2019.01) [G06F 16/22 (2019.01)] | 14 Claims |
1. An apparatus for classifying an entity to an executable data structure, the apparatus comprising:
at least a processor; and a memory communicatively connected to the at least a processor, the memory containing instructions configuring the at least a processor to:
receive entity input from an entity using a graphical user interface, wherein receiving the entity input comprises:
receiving a low-level entity data at a first time;
and receiving a high-level entity data at a subsequent time, wherein the high-level entity data is received using a smart assessment, wherein the smart assessment comprises a base question and at least an additional question generated as a function of a response to the base question;
determine a degree of interaction pertaining to the entity by comparing the low-level entity data to the high-level entity data;
identify at least a protocol metric as a function of a degree of interaction, wherein the protocol metric comprises an expertise metric, and an objective function including an optimization criterion to compute a weighted score associated with the protocol metric;
determine a protocol object, wherein the protocol object includes a chatbot generated by a machine learning model configured to generate chatbot responses as a function of record datum as an input and output additional questions to the entity, as a function of the high-level entity data and the at least a protocol metric using a protocol object machine learning model which comprises:
receiving protocol object training data, wherein the training data correlates a plurality of high-level entity data as inputs to a plurality of protocol objects data as outputs;
training, iteratively, the protocol object machine learning model using the protocol object training data, wherein training the protocol object machine learning model includes retraining the protocol object machine learning model with feedback from previous iterations of the protocol object machine learning model;
and determining the protocol object using the trained protocol object machine learning model;
establish an executable data structure for the entity as a function of the protocol object wherein establishing an executable data structure comprises generating an executable data structure machine learning model wherein generating the executable data structure machine learning model comprises:
receiving executable data structure training data comprising the protocol object as input correlated to a plurality of executable data structures as output;
iteratively training the executable data structure machine learning model using the executable data structure training data;
display the executable data structure using the graphical user interface;
and provide client portal access based on the executable data structure to the entity.
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