-- Flexible PostgreSQL import schema for Learning Outcome OS AI-ready dataset v2 DROP TABLE IF EXISTS schools; CREATE TABLE schools ( school_id TEXT, school_name TEXT, board TEXT, state TEXT, city TEXT, region_type TEXT, academic_year TEXT, is_synthetic INTEGER ); -- COPY schools FROM '/path/schools.csv' WITH CSV HEADER; DROP TABLE IF EXISTS classes; CREATE TABLE classes ( class_id TEXT, school_id TEXT, grade INTEGER, section TEXT, class_name TEXT, academic_year TEXT, class_teacher_id TEXT ); -- COPY classes FROM '/path/classes.csv' WITH CSV HEADER; DROP TABLE IF EXISTS subjects; CREATE TABLE subjects ( subject_id TEXT, grade INTEGER, subject TEXT, subject_code TEXT ); -- COPY subjects FROM '/path/subjects.csv' WITH CSV HEADER; DROP TABLE IF EXISTS chapters; CREATE TABLE chapters ( chapter_id TEXT, grade INTEGER, subject TEXT, chapter TEXT, chapter_order INTEGER, lo_count INTEGER, is_active INTEGER ); -- COPY chapters FROM '/path/chapters.csv' WITH CSV HEADER; DROP TABLE IF EXISTS teachers; CREATE TABLE teachers ( teacher_id TEXT, school_id TEXT, class_id TEXT, teacher_name TEXT, grade INTEGER, section TEXT, subject TEXT, email TEXT, experience_years INTEGER, ai_feedback_participation_rate DOUBLE PRECISION ); -- COPY teachers FROM '/path/teachers.csv' WITH CSV HEADER; DROP TABLE IF EXISTS student_profiles; CREATE TABLE student_profiles ( student_id TEXT, school_id TEXT, class_id TEXT, grade INTEGER, section TEXT, roll_number INTEGER, student_name TEXT, learning_style TEXT, learner_archetype TEXT, baseline_level TEXT, attendance_percentage INTEGER, assignment_completion_rate INTEGER, average_login_per_week INTEGER, inactive_days_last_14 INTEGER, parent_contact_available INTEGER, is_synthetic INTEGER, train_split TEXT ); -- COPY student_profiles FROM '/path/student_profiles.csv' WITH CSV HEADER; DROP TABLE IF EXISTS learning_outcomes; CREATE TABLE learning_outcomes ( lo_id TEXT, grade INTEGER, subject TEXT, chapter TEXT, competency TEXT, title TEXT, description TEXT, difficulty TEXT, bloom_level TEXT, source_framework TEXT, source_pdf TEXT, source_pages TEXT, alignment_confidence DOUBLE PRECISION, difficulty_score INTEGER, bloom_score INTEGER, embedding_text TEXT, is_active INTEGER, train_split TEXT ); -- COPY learning_outcomes FROM '/path/learning_outcomes.csv' WITH CSV HEADER; DROP TABLE IF EXISTS lo_dependencies; CREATE TABLE lo_dependencies ( lo_id TEXT, prerequisite_lo_id TEXT, relationship_type TEXT, strength TEXT ); -- COPY lo_dependencies FROM '/path/lo_dependencies.csv' WITH CSV HEADER; DROP TABLE IF EXISTS questions; CREATE TABLE questions ( question_id TEXT, lo_id TEXT, grade INTEGER, subject TEXT, chapter TEXT, question_text TEXT, question_type TEXT, difficulty TEXT, difficulty_score INTEGER, bloom_level TEXT, bloom_score INTEGER, correct_answer TEXT, rubric TEXT, max_marks INTEGER, source TEXT, source_lo_pdf TEXT, alignment_confidence DOUBLE PRECISION, embedding_text TEXT, train_split TEXT ); -- COPY questions FROM '/path/questions.csv' WITH CSV HEADER; DROP TABLE IF EXISTS question_options; CREATE TABLE question_options ( question_id TEXT, option_label TEXT, option_text TEXT, is_correct INTEGER ); -- COPY question_options FROM '/path/question_options.csv' WITH CSV HEADER; DROP TABLE IF EXISTS content_catalog; CREATE TABLE content_catalog ( content_id TEXT, lo_id TEXT, grade INTEGER, subject TEXT, chapter TEXT, title TEXT, content_type TEXT, target_use TEXT, difficulty TEXT, duration_minutes INTEGER, language TEXT, description TEXT, estimated_mastery_gain DOUBLE PRECISION, embedding_text TEXT, is_active INTEGER, train_split TEXT ); -- COPY content_catalog FROM '/path/content_catalog.csv' WITH CSV HEADER; DROP TABLE IF EXISTS assessments; CREATE TABLE assessments ( assessment_id TEXT, school_id TEXT, class_id TEXT, grade INTEGER, section TEXT, subject TEXT, assessment_name TEXT, assessment_type TEXT, scheduled_date TEXT, max_marks INTEGER, question_count INTEGER, academic_year TEXT, train_split TEXT ); -- COPY assessments FROM '/path/assessments.csv' WITH CSV HEADER; DROP TABLE IF EXISTS assessment_questions; CREATE TABLE assessment_questions ( assessment_id TEXT, question_id TEXT, question_order INTEGER ); -- COPY assessment_questions FROM '/path/assessment_questions.csv' WITH CSV HEADER; DROP TABLE IF EXISTS student_attempts; CREATE TABLE student_attempts ( attempt_id TEXT, assessment_id TEXT, school_id TEXT, class_id TEXT, student_id TEXT, question_id TEXT, lo_id TEXT, grade INTEGER, section TEXT, subject TEXT, question_type TEXT, difficulty_score INTEGER, bloom_score INTEGER, is_correct INTEGER, marks_obtained DOUBLE PRECISION, max_marks INTEGER, marks_ratio DOUBLE PRECISION, time_taken_seconds INTEGER, hint_used INTEGER, attempt_number INTEGER, submitted_at TEXT, train_split TEXT ); -- COPY student_attempts FROM '/path/student_attempts.csv' WITH CSV HEADER; DROP TABLE IF EXISTS initial_mastery_profiles; CREATE TABLE initial_mastery_profiles ( student_id TEXT, lo_id TEXT, grade INTEGER, section TEXT, subject TEXT, chapter TEXT, train_split TEXT, attempt_count INTEGER, accuracy DOUBLE PRECISION, average_marks_ratio DOUBLE PRECISION, average_time_seconds DOUBLE PRECISION, hint_usage_rate DOUBLE PRECISION, mastery_score DOUBLE PRECISION, status TEXT, confidence DOUBLE PRECISION, last_updated TEXT ); -- COPY initial_mastery_profiles FROM '/path/initial_mastery_profiles.csv' WITH CSV HEADER; DROP TABLE IF EXISTS mastery_profiles; CREATE TABLE mastery_profiles ( student_id TEXT, lo_id TEXT, grade INTEGER, section TEXT, subject TEXT, chapter TEXT, train_split TEXT, attempt_count INTEGER, accuracy DOUBLE PRECISION, average_marks_ratio DOUBLE PRECISION, average_time_seconds DOUBLE PRECISION, hint_usage_rate DOUBLE PRECISION, mastery_score DOUBLE PRECISION, status TEXT, confidence DOUBLE PRECISION, last_updated TEXT ); -- COPY mastery_profiles FROM '/path/mastery_profiles.csv' WITH CSV HEADER; DROP TABLE IF EXISTS engagement_logs; CREATE TABLE engagement_logs ( engagement_id TEXT, student_id TEXT, school_id TEXT, class_id TEXT, activity_date TEXT, login_count INTEGER, active_minutes INTEGER, content_completed_count INTEGER, quiz_attempt_count INTEGER, recommendation_click_count INTEGER, video_watch_ratio DOUBLE PRECISION, discussion_posts INTEGER, device_type TEXT, train_split TEXT ); -- COPY engagement_logs FROM '/path/engagement_logs.csv' WITH CSV HEADER; DROP TABLE IF EXISTS risk_profiles; CREATE TABLE risk_profiles ( risk_prediction_id TEXT, student_id TEXT, school_id TEXT, class_id TEXT, grade INTEGER, section TEXT, subject TEXT, risk_score DOUBLE PRECISION, risk_level TEXT, risk_label INTEGER, primary_reasons TEXT, recommended_intervention TEXT, model_version TEXT, generated_at TEXT, confidence DOUBLE PRECISION, train_split TEXT ); -- COPY risk_profiles FROM '/path/risk_profiles.csv' WITH CSV HEADER; DROP TABLE IF EXISTS recommendations; CREATE TABLE recommendations ( recommendation_id TEXT, student_id TEXT, school_id TEXT, class_id TEXT, lo_id TEXT, content_id TEXT, grade INTEGER, section TEXT, subject TEXT, recommendation_type TEXT, priority TEXT, reason TEXT, ai_confidence DOUBLE PRECISION, generated_at TEXT, shown_to_student INTEGER, clicked INTEGER, is_completed INTEGER, observed_mastery_gain DOUBLE PRECISION, model_version TEXT, train_split TEXT ); -- COPY recommendations FROM '/path/recommendations.csv' WITH CSV HEADER; DROP TABLE IF EXISTS teacher_interventions; CREATE TABLE teacher_interventions ( intervention_id TEXT, school_id TEXT, class_id TEXT, teacher_id TEXT, grade INTEGER, section TEXT, subject TEXT, lo_id TEXT, intervention_type TEXT, affected_students INTEGER, avg_mastery_before DOUBLE PRECISION, suggested_action TEXT, scheduled_week TEXT, status TEXT, expected_mastery_gain DOUBLE PRECISION, generated_by_ai INTEGER, train_split TEXT ); -- COPY teacher_interventions FROM '/path/teacher_interventions.csv' WITH CSV HEADER; DROP TABLE IF EXISTS subjective_answers; CREATE TABLE subjective_answers ( answer_id TEXT, attempt_id TEXT, student_id TEXT, question_id TEXT, lo_id TEXT, grade INTEGER, subject TEXT, question_type TEXT, student_answer TEXT, model_answer TEXT, rubric TEXT, max_marks INTEGER, teacher_marks DOUBLE PRECISION, ai_predicted_marks DOUBLE PRECISION, absolute_error DOUBLE PRECISION, rubric_match_score DOUBLE PRECISION, concept_coverage_score DOUBLE PRECISION, feedback_text TEXT, teacher_review_required INTEGER, train_split TEXT ); -- COPY subjective_answers FROM '/path/subjective_answers.csv' WITH CSV HEADER; DROP TABLE IF EXISTS teacher_feedback; CREATE TABLE teacher_feedback ( feedback_id TEXT, teacher_id TEXT, student_id TEXT, related_entity_type TEXT, related_entity_id TEXT, feedback_type TEXT, teacher_rating INTEGER, correction_required INTEGER, correction_text TEXT, created_at TEXT, train_split TEXT ); -- COPY teacher_feedback FROM '/path/teacher_feedback.csv' WITH CSV HEADER; DROP TABLE IF EXISTS student_digital_twins; CREATE TABLE student_digital_twins ( digital_twin_id TEXT, student_id TEXT, school_id TEXT, class_id TEXT, grade INTEGER, section TEXT, overall_mastery_score DOUBLE PRECISION, strongest_subject TEXT, weakest_subject TEXT, top_weak_lo_ids TEXT, learning_speed_score DOUBLE PRECISION, consistency_score DOUBLE PRECISION, preferred_content_type TEXT, current_risk_level TEXT, current_risk_score DOUBLE PRECISION, recommended_next_action TEXT, last_updated TEXT, train_split TEXT ); -- COPY student_digital_twins FROM '/path/student_digital_twins.csv' WITH CSV HEADER; DROP TABLE IF EXISTS ai_prediction_logs; CREATE TABLE ai_prediction_logs ( prediction_log_id TEXT, model_name TEXT, model_version TEXT, entity_type TEXT, entity_id TEXT, prediction_output TEXT, confidence DOUBLE PRECISION, latency_ms INTEGER, created_at TEXT, train_split TEXT ); -- COPY ai_prediction_logs FROM '/path/ai_prediction_logs.csv' WITH CSV HEADER; DROP TABLE IF EXISTS ml_features_student_subject; CREATE TABLE ml_features_student_subject ( feature_row_id TEXT, student_id TEXT, school_id TEXT, class_id TEXT, grade INTEGER, section TEXT, subject TEXT, avg_mastery_score DOUBLE PRECISION, weak_lo_count INTEGER, developing_lo_count INTEGER, mastered_lo_count INTEGER, avg_confidence DOUBLE PRECISION, avg_accuracy DOUBLE PRECISION, avg_marks_ratio DOUBLE PRECISION, avg_time_seconds DOUBLE PRECISION, hint_usage_rate DOUBLE PRECISION, total_attempts INTEGER, attendance_percentage INTEGER, assignment_completion_rate INTEGER, average_login_per_week INTEGER, inactive_days_last_14 INTEGER, avg_active_minutes DOUBLE PRECISION, total_logins INTEGER, avg_video_watch_ratio DOUBLE PRECISION, total_content_completed INTEGER, total_quiz_attempts INTEGER, risk_score DOUBLE PRECISION, risk_level TEXT, risk_label INTEGER, train_split TEXT ); -- COPY ml_features_student_subject FROM '/path/ml_features_student_subject.csv' WITH CSV HEADER; DROP TABLE IF EXISTS ml_features_student_lo; CREATE TABLE ml_features_student_lo ( feature_row_id TEXT, student_id TEXT, lo_id TEXT, grade INTEGER, section TEXT, subject TEXT, chapter TEXT, train_split TEXT, attempt_count INTEGER, accuracy DOUBLE PRECISION, average_marks_ratio DOUBLE PRECISION, average_time_seconds DOUBLE PRECISION, hint_usage_rate DOUBLE PRECISION, mastery_score DOUBLE PRECISION, status TEXT, confidence DOUBLE PRECISION, last_updated TEXT, school_id TEXT, class_id TEXT, attendance_percentage INTEGER, assignment_completion_rate INTEGER, average_login_per_week INTEGER, inactive_days_last_14 INTEGER, mastery_label INTEGER ); -- COPY ml_features_student_lo FROM '/path/ml_features_student_lo.csv' WITH CSV HEADER; DROP TABLE IF EXISTS training_lo_tagging; CREATE TABLE training_lo_tagging ( question_id TEXT, question_text TEXT, embedding_text TEXT, lo_id TEXT, grade INTEGER, subject TEXT, chapter TEXT, difficulty TEXT, difficulty_score INTEGER, bloom_level TEXT, bloom_score INTEGER, train_split TEXT ); -- COPY training_lo_tagging FROM '/path/training_lo_tagging.csv' WITH CSV HEADER; DROP TABLE IF EXISTS training_bloom_classification; CREATE TABLE training_bloom_classification ( question_id TEXT, question_text TEXT, embedding_text TEXT, bloom_level TEXT, bloom_score INTEGER, grade INTEGER, subject TEXT, question_type TEXT, train_split TEXT ); -- COPY training_bloom_classification FROM '/path/training_bloom_classification.csv' WITH CSV HEADER; DROP TABLE IF EXISTS training_risk_prediction; CREATE TABLE training_risk_prediction ( feature_row_id TEXT, student_id TEXT, school_id TEXT, class_id TEXT, grade INTEGER, section TEXT, subject TEXT, avg_mastery_score DOUBLE PRECISION, weak_lo_count INTEGER, developing_lo_count INTEGER, mastered_lo_count INTEGER, avg_confidence DOUBLE PRECISION, avg_accuracy DOUBLE PRECISION, avg_marks_ratio DOUBLE PRECISION, avg_time_seconds DOUBLE PRECISION, hint_usage_rate DOUBLE PRECISION, total_attempts INTEGER, attendance_percentage INTEGER, assignment_completion_rate INTEGER, average_login_per_week INTEGER, inactive_days_last_14 INTEGER, avg_active_minutes DOUBLE PRECISION, total_logins INTEGER, avg_video_watch_ratio DOUBLE PRECISION, total_content_completed INTEGER, total_quiz_attempts INTEGER, risk_score DOUBLE PRECISION, risk_level TEXT, risk_label INTEGER, train_split TEXT ); -- COPY training_risk_prediction FROM '/path/training_risk_prediction.csv' WITH CSV HEADER; DROP TABLE IF EXISTS training_mastery_prediction; CREATE TABLE training_mastery_prediction ( feature_row_id TEXT, student_id TEXT, lo_id TEXT, grade INTEGER, section TEXT, subject TEXT, chapter TEXT, train_split TEXT, attempt_count INTEGER, accuracy DOUBLE PRECISION, average_marks_ratio DOUBLE PRECISION, average_time_seconds DOUBLE PRECISION, hint_usage_rate DOUBLE PRECISION, mastery_score DOUBLE PRECISION, status TEXT, confidence DOUBLE PRECISION, last_updated TEXT, school_id TEXT, class_id TEXT, attendance_percentage INTEGER, assignment_completion_rate INTEGER, average_login_per_week INTEGER, inactive_days_last_14 INTEGER, mastery_label INTEGER ); -- COPY training_mastery_prediction FROM '/path/training_mastery_prediction.csv' WITH CSV HEADER; DROP TABLE IF EXISTS training_answer_scoring; CREATE TABLE training_answer_scoring ( answer_id TEXT, question_id TEXT, student_id TEXT, lo_id TEXT, grade INTEGER, subject TEXT, question_type TEXT, student_answer TEXT, model_answer TEXT, rubric TEXT, max_marks INTEGER, teacher_marks DOUBLE PRECISION, ai_predicted_marks DOUBLE PRECISION, rubric_match_score DOUBLE PRECISION, concept_coverage_score DOUBLE PRECISION, teacher_review_required INTEGER, train_split TEXT ); -- COPY training_answer_scoring FROM '/path/training_answer_scoring.csv' WITH CSV HEADER; DROP TABLE IF EXISTS training_recommendation_outcomes; CREATE TABLE training_recommendation_outcomes ( recommendation_id TEXT, student_id TEXT, lo_id TEXT, content_id TEXT, grade INTEGER, subject TEXT, recommendation_type TEXT, priority TEXT, ai_confidence DOUBLE PRECISION, clicked INTEGER, is_completed INTEGER, observed_mastery_gain DOUBLE PRECISION, train_split TEXT ); -- COPY training_recommendation_outcomes FROM '/path/training_recommendation_outcomes.csv' WITH CSV HEADER;