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apurvabisht97 avatar apurvabisht97 commented on August 22, 2024

Backend added two fields predictionConfidence it is storing the accuracy rate at which student id are scanned and predictedStudentId it is storing the student id which we got when we scan the sheet .

Inside marksInfo we are storing predictionConfidenece it is storing the accuracy rate at which marks are scanned and predictedMarks it is storing the marks which we got when we scan the sheet .

from project-saral.

dileep-gadiraju avatar dileep-gadiraju commented on August 22, 2024

from project-saral.

apurvabisht97 avatar apurvabisht97 commented on August 22, 2024

{
"studentIdTrainingData": [
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"predictionConfidence": ["0],
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],
"predictedMarks": "11",
"questionId": "QUESTION1",
"obtainedMarks": "11"
}
],
"schoolId": "odisha001",
"examDate": "01/10/2021",
"subject": "Hindi",
"classId": "2"
}

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dileep-gadiraju avatar dileep-gadiraju commented on August 22, 2024

@arman-tdev / @apurvabisht97 ,

Discussed capturing training data only when there is a difference between predicted and ground truth accepted by user.
@arman-tdev going to implement it. @apurvabisht97 please certify this before closing this enhancement.

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dileep-gadiraju avatar dileep-gadiraju commented on August 22, 2024

Save All Scan failures should show "Something went wrong , contact Admin". Please simulate and test.

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apurvabisht97 avatar apurvabisht97 commented on August 22, 2024

now we are storing prediction value and confidence values for marks and student id also

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Related Issues (20)

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