279 lines
12 KiB
Python
279 lines
12 KiB
Python
from logging import getLogger
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from typing import Dict, List
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from training_content.dtos import TrainingContentDTO, WeakAreaDTO, QueryDTO, DetailsDTO, TipsDTO
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class TrainingContentService:
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TOOLS = [
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'critical_thinking',
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'language_for_writing',
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'reading_skills',
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'strategy',
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'words',
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'writing_skills'
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]
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# strategy word_link ct_focus reading_skill word_partners writing_skill language_for_writing
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def __init__(self, kb, openai, firestore):
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self._training_content_module = kb
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self._db = firestore
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self._logger = getLogger()
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self._llm = openai
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def get_tips(self, stats):
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exam_data, exam_map = self._sort_out_solutions(stats)
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training_content = self._get_exam_details_and_tips(exam_data)
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tips = self._query_kb(training_content.queries)
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usefull_tips = self._get_usefull_tips(exam_data, tips)
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exam_map = self._merge_exam_map_with_details(exam_map, training_content.details)
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weak_areas = {"weak_areas": []}
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for area in training_content.weak_areas:
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weak_areas["weak_areas"].append(area.dict())
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training_doc = {
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**exam_map,
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**usefull_tips.dict(),
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**weak_areas
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}
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doc_ref = self._db.collection('training').add(training_doc)
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return {
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"id": doc_ref[1].id
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}
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@staticmethod
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def _merge_exam_map_with_details(exam_map: Dict[str, any], details: List[DetailsDTO]):
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new_exam_map = {"exams": []}
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for detail in details:
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new_exam_map["exams"].append({
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"id": detail.exam_id,
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"date": detail.date,
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"performance_comment": detail.performance_comment,
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"detailed_summary": detail.detailed_summary,
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**exam_map[detail.exam_id]
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})
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return new_exam_map
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def _query_kb(self, queries: List[QueryDTO]):
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map_categories = {
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"critical_thinking": "ct_focus",
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"language_for_writing": "language_for_writing",
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"reading_skills": "reading_skill",
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"strategy": "strategy",
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"writing_skills": "writing_skill"
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}
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tips = {"tips": []}
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for query in queries:
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print(f"{query.category} {query.text}")
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if query.category == "words":
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tips["tips"].extend(
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self._training_content_module.query_knowledge_base(query.text, "word_link")
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)
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tips["tips"].extend(
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self._training_content_module.query_knowledge_base(query.text, "word_partners")
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)
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else:
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if query.category in map_categories:
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tips["tips"].extend(
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self._training_content_module.query_knowledge_base(query.text, map_categories[query.category])
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)
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else:
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self._logger.info(f"GTP tried to query knowledge base for {query.category} and it doesn't exist.")
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return tips
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def _get_exam_details_and_tips(self, exam_data: Dict[str, any]) -> TrainingContentDTO:
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json_schema = (
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'{ "details": [{"exam_id": "", "date": 0, "performance_comment": "", "detailed_summary": ""}],'
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' "weak_areas": [{"area": "", "comment": ""}], "queries": [{"text": "", "category": ""}] }'
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)
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messages = [
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{
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"role": "user",
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"content": (
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f"I'm going to provide you with exam data, you will take the exam data and fill this json "
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f'schema : {json_schema}. "performance_comment" is a short sentence that describes the '
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'students\'s performance and main mistakes in a single exam, "detailed_summary" is a detailed '
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'summary of the student\'s performance, "weak_areas" are identified areas'
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' across all exams which need to be improved upon, for example, area "Grammar and Syntax" comment "Issues'
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' with sentence structure and punctuation.", the "queries" field is where you will write queries '
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'for tips that will be displayed to the student, the category attribute is a collection of '
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'embeddings and the text will be the text used to query the knowledge base. The categories are '
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f'the following [{", ".join(self.TOOLS)}].'
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)
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},
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{
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"role": "user",
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"content": f'Exam Data: {str(exam_data)}'
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}
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]
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return self._llm.prediction(messages, self._map_gpt_response, json_schema)
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def _get_usefull_tips(self, exam_data: Dict[str, any], tips: Dict[str, any]) -> TipsDTO:
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json_schema = (
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'{ "tip_ids": [] }'
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)
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messages = [
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{
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"role": "user",
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"content": (
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f"I'm going to provide you with tips and I want you to return to me the tips that "
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f"can be usefull for the student that made the exam that I'm going to send you, return "
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f"me the tip ids in this json format {json_schema}."
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)
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},
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{
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"role": "user",
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"content": f'Exam Data: {str(exam_data)}'
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},
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{
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"role": "user",
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"content": f'Tips: {str(tips)}'
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}
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]
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return self._llm.prediction(messages, lambda response: TipsDTO(**response), json_schema)
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@staticmethod
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def _map_gpt_response(response: Dict[str, any]) -> TrainingContentDTO:
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parsed_response = {
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"details": [DetailsDTO(**detail) for detail in response["details"]],
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"weak_areas": [WeakAreaDTO(**area) for area in response["weak_areas"]],
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"queries": [QueryDTO(**query) for query in response["queries"]]
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}
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return TrainingContentDTO(**parsed_response)
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def _sort_out_solutions(self, stats):
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grouped_stats = {}
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for stat in stats:
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exam_id = stat["exam"]
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module = stat["module"]
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if module not in grouped_stats:
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grouped_stats[module] = {}
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if exam_id not in grouped_stats[module]:
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grouped_stats[module][exam_id] = []
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grouped_stats[module][exam_id].append(stat)
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exercises = {}
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exam_map = {}
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for module, exams in grouped_stats.items():
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exercises[module] = {}
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for exam_id, stat_group in exams.items():
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exam = self._get_doc_by_id(module, exam_id)
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exercises[module][exam_id] = {"date": None, "exercises": [], "score": None}
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exam_total_questions = 0
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exam_total_correct = 0
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for stat in stat_group:
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exam_total_questions += stat["score"]["total"]
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exam_total_correct += stat["score"]["correct"]
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exercises[module][exam_id]["date"] = stat["date"]
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if exam_id not in exam_map:
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exam_map[exam_id] = {"stat_ids": [], "score": 0}
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exam_map[exam_id]["stat_ids"].append(stat["id"])
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if module == "listening":
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exercises[module][exam_id]["exercises"].extend(self._get_listening_solutions(stat, exam))
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if module == "reading":
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exercises[module][exam_id]["exercises"].extend(self._get_reading_solutions(stat, exam))
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if module == "writing":
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exercises[module][exam_id]["exercises"].extend(self._get_writing_prompts_and_answers(stat, exam))
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exam_map[exam_id]["score"] = round((exam_total_correct / exam_total_questions) * 100)
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return exercises, exam_map
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def _get_writing_prompts_and_answers(self, stat, exam):
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result = []
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try:
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exercises = []
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for solution in stat['solutions']:
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answer = solution['solution']
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exercise_id = solution['id']
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exercises.append({
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"exercise_id": exercise_id,
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"answer": answer
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})
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for exercise in exercises:
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for exam_exercise in exam["exercises"]:
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if exam_exercise["id"] == exercise["exercise_id"]:
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result.append({
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"exercise": exam_exercise["prompt"],
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"answer": exercise["answer"]
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})
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except KeyError as e:
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self._logger.warning(f"Malformed stat object: {str(e)}")
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return result
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def _get_listening_solutions(self, stat, exam):
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result = []
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try:
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for part in exam["parts"]:
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for exercise in part["exercises"]:
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if exercise["id"] == stat["exercise"]:
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if stat["type"] == "writeBlanks":
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result.append({
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"question": exercise["prompt"],
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"template": exercise["text"],
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"solution": exercise["solutions"],
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"answer": stat["solutions"]
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})
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if stat["type"] == "multipleChoice":
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result.append({
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"question": exercise["prompt"],
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"exercise": exercise["questions"],
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"answer": stat["solutions"]
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})
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except KeyError as e:
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self._logger.warning(f"Malformed stat object: {str(e)}")
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return result
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def _get_reading_solutions(self, stat, exam):
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result = []
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try:
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for part in exam["parts"]:
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text = part["text"]
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for exercise in part["exercises"]:
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if exercise["id"] == stat["exercise"]:
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if stat["type"] == "fillBlanks":
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result.append({
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"text": text,
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"question": exercise["prompt"],
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"template": exercise["text"],
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"words": exercise["words"],
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"solutions": exercise["solutions"],
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"answer": stat["solutions"]
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})
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elif stat["type"] == "writeBlanks":
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result.append({
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"text": text,
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"question": exercise["prompt"],
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"template": exercise["text"],
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"solutions": exercise["solutions"],
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"answer": stat["solutions"]
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})
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else:
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# match_sentences
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result.append({
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"text": text,
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"question": exercise["prompt"],
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"sentences": exercise["sentences"],
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"options": exercise["options"],
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"answer": stat["solutions"]
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})
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except KeyError as e:
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self._logger.warning(f"Malformed stat object: {str(e)}")
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return result
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def _get_doc_by_id(self, collection: str, doc_id: str):
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collection_ref = self._db.collection(collection)
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doc_ref = collection_ref.document(doc_id)
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doc = doc_ref.get()
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if doc.exists:
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return doc.to_dict()
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return None
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