refactor
This commit is contained in:
329
ai/views/oj.py
329
ai/views/oj.py
@@ -40,6 +40,12 @@ SMALL_SCALE_PENALTY = {
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"downgrade": {"S": "A", "A": "B"},
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}
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# 等级权重映射(用于加权平均计算)
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GRADE_WEIGHTS = {"S": 4, "A": 3, "B": 2, "C": 1}
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# 平均等级阈值:(最小权重, 等级)
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AVERAGE_GRADE_THRESHOLDS = [(3.5, "S"), (2.5, "A"), (1.5, "B")]
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def get_cache_key(prefix, *args):
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return hashlib.md5(f"{prefix}:{'_'.join(map(str, args))}".encode()).hexdigest()
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@@ -61,35 +67,44 @@ def get_grade(rank, submission_count):
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特殊规则:
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- 参与人数少于10人时,S级降为A级,A级降为B级(避免因人少而评级虚高)
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Args:
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rank: 用户排名(1表示第一名)
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submission_count: 总AC人数
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Returns:
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评级字符串 ("S", "A", "B", "C")
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"""
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# 边界检查
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if not rank or rank <= 0 or submission_count <= 0:
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return "C"
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# 计算百分位(0-100),使用 (rank-1) 使第一名的百分位为0
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percentile = (rank - 1) / submission_count * 100
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# 根据百分位确定基础评级
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base_grade = "C"
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for threshold, grade in GRADE_THRESHOLDS:
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if percentile < threshold:
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base_grade = grade
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break
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# 小规模参与惩罚:人数太少时降低评级
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if submission_count < SMALL_SCALE_PENALTY["threshold"]:
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base_grade = SMALL_SCALE_PENALTY["downgrade"].get(base_grade, base_grade)
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return base_grade
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def calculate_average_grade(grades):
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"""根据等级列表计算加权平均等级"""
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scores = [GRADE_WEIGHTS[g] for g in grades if g in GRADE_WEIGHTS]
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if not scores:
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return ""
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avg = sum(scores) / len(scores)
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for threshold, grade in AVERAGE_GRADE_THRESHOLDS:
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if avg >= threshold:
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return grade
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return "C"
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def find_user_rank(ranking_list, user_id):
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"""在排名列表中找到用户的排名(1-based),未找到返回 None"""
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return next(
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(idx + 1 for idx, rec in enumerate(ranking_list) if rec["user_id"] == user_id),
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None,
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)
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def get_class_user_ids(user):
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if not user.class_name:
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return []
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@@ -137,6 +152,54 @@ def get_user_first_ac_submissions(
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return user_first_ac, by_problem, problem_ids
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def stream_ai_response(client, system_prompt, user_prompt, on_complete=None):
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"""SSE 流式响应生成器,on_complete(full_text) 在流结束时调用"""
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try:
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stream = client.chat.completions.create(
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model="deepseek-chat",
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messages=[
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{"role": "system", "content": system_prompt},
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{"role": "user", "content": user_prompt},
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],
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stream=True,
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)
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except Exception as exc:
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yield f"data: {json.dumps({'type': 'error', 'message': str(exc)})}\n\n"
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yield "event: end\n\n"
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return
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yield "event: start\n\n"
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chunks = []
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try:
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for chunk in stream:
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if not chunk.choices:
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continue
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choice = chunk.choices[0]
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if choice.finish_reason:
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if on_complete:
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on_complete("".join(chunks).strip())
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yield f"data: {json.dumps({'type': 'done'})}\n\n"
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break
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content = choice.delta.content
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if content:
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chunks.append(content)
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yield f"data: {json.dumps({'type': 'delta', 'content': content})}\n\n"
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except Exception as exc:
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yield f"data: {json.dumps({'type': 'error', 'message': str(exc)})}\n\n"
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finally:
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yield "event: end\n\n"
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def make_sse_response(generator):
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"""创建 SSE StreamingHttpResponse"""
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response = StreamingHttpResponse(
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streaming_content=generator,
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content_type="text/event-stream",
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)
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response["Cache-Control"] = "no-cache"
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return response
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class AIDetailDataAPI(APIView):
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@login_required
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def get(self, request):
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@@ -254,7 +317,7 @@ class AIDetailDataAPI(APIView):
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{
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"solved": solved,
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"flowcharts": flowcharts_data,
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"grade": self._calculate_average_grade(solved),
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"grade": calculate_average_grade([s["grade"] for s in solved]),
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"tags": self._calculate_top_tags(problems.values()),
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"difficulty": self._calculate_difficulty_distribution(
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problems.values()
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@@ -275,14 +338,7 @@ class AIDetailDataAPI(APIView):
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continue
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ranking_list = by_problem.get(pid, [])
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rank = next(
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(
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idx + 1
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for idx, rec in enumerate(ranking_list)
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if rec["user_id"] == user_id
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),
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None,
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)
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rank = find_user_rank(ranking_list, user_id)
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if problem.contest_id:
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contest_ids.append(problem.contest_id)
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@@ -305,52 +361,6 @@ class AIDetailDataAPI(APIView):
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return sorted(solved, key=lambda x: x["ac_time"]), contest_ids
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def _calculate_average_grade(self, solved):
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"""
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计算平均等级,使用加权平均方法
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等级权重:S=4, A=3, B=2, C=1
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计算加权平均后,根据阈值确定最终等级
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Args:
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solved: 已解决的题目列表,每个包含grade字段
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Returns:
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平均等级字符串 ("S", "A", "B", "C")
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"""
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if not solved:
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return ""
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# 等级权重映射
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grade_weights = {"S": 4, "A": 3, "B": 2, "C": 1}
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# 计算加权总分
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total_weight = 0
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total_score = 0
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for s in solved:
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grade = s["grade"]
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if grade in grade_weights:
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total_score += grade_weights[grade]
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total_weight += 1
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if total_weight == 0:
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return ""
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# 计算平均权重
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average_weight = total_score / total_weight
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# 根据平均权重确定等级
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# S级: 3.5-4.0, A级: 2.5-3.5, B级: 1.5-2.5, C级: 1.0-1.5
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if average_weight >= 3.5:
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return "S"
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elif average_weight >= 2.5:
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return "A"
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elif average_weight >= 1.5:
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return "B"
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else:
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return "C"
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def _calculate_top_tags(self, problems):
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tags_counter = defaultdict(int)
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for problem in problems:
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@@ -420,9 +430,14 @@ class AIDurationDataAPI(APIView):
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)
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if user_first_ac:
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period_data["problem_count"] = len(problem_ids)
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period_data["grade"] = self._calculate_period_grade(
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user_first_ac, by_problem, user.id
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)
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grades = [
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get_grade(
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find_user_rank(by_problem.get(item["problem_id"], []), user.id),
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len(by_problem.get(item["problem_id"], [])),
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)
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for item in user_first_ac
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]
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period_data["grade"] = calculate_average_grade(grades)
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duration_data.append(period_data)
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@@ -464,64 +479,6 @@ class AIDurationDataAPI(APIView):
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},
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)
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def _calculate_period_grade(self, user_first_ac, by_problem, user_id):
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"""
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计算时间段内的平均等级,使用加权平均方法
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等级权重:S=4, A=3, B=2, C=1
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计算加权平均后,根据阈值确定最终等级
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Args:
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user_first_ac: 用户首次AC的提交记录
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by_problem: 按题目分组的排名数据
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user_id: 用户ID
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Returns:
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平均等级字符串 ("S", "A", "B", "C")
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"""
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if not user_first_ac:
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return ""
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# 等级权重映射
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grade_weights = {"S": 4, "A": 3, "B": 2, "C": 1}
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# 计算加权总分
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total_weight = 0
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total_score = 0
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for item in user_first_ac:
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ranking_list = by_problem.get(item["problem_id"], [])
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rank = next(
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(
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idx + 1
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for idx, rec in enumerate(ranking_list)
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if rec["user_id"] == user_id
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),
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None,
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)
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if rank:
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grade = get_grade(rank, len(ranking_list))
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if grade in grade_weights:
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total_score += grade_weights[grade]
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total_weight += 1
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if total_weight == 0:
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return ""
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# 计算平均权重
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average_weight = total_score / total_weight
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# 根据平均权重确定等级
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# S级: 3.5-4.0, A级: 2.5-3.5, B级: 1.5-2.5, C级: 1.0-1.5
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if average_weight >= 3.5:
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return "S"
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elif average_weight >= 2.5:
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return "A"
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elif average_weight >= 1.5:
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return "B"
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else:
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return "C"
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class AILoginSummaryAPI(APIView):
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@@ -644,75 +601,20 @@ class AIAnalysisAPI(APIView):
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system_prompt = "你是一个风趣的编程老师,学生使用判题狗平台进行编程练习。请根据学生提供的详细数据和每周数据,给出用户的学习建议,最后写一句鼓励学生的话。请使用 markdown 格式输出,不要在代码块中输出。"
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user_prompt = f"这段时间内的详细数据: {details}\n(其中部分字段含义是 flowcharts:流程图的提交,solved:代码的提交)\n每周或每月的数据: {duration}"
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analysis_chunks = []
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saved_instance = None
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completed = False
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def on_complete(full_text):
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AIAnalysis.objects.create(
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user=request.user,
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provider="deepseek",
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model="deepseek-chat",
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data={"details": details, "duration": duration},
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system_prompt=system_prompt,
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user_prompt="这段时间内的详细数据,每周或每月的数据。",
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analysis=full_text,
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)
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def save_analysis():
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nonlocal saved_instance
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if analysis_chunks and not saved_instance:
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saved_instance = AIAnalysis.objects.create(
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user=request.user,
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provider="deepseek",
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model="deepseek-chat",
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data={"details": details, "duration": duration},
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system_prompt=system_prompt,
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user_prompt="这段时间内的详细数据,每周或每月的数据。",
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analysis="".join(analysis_chunks).strip(),
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)
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def stream_generator():
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nonlocal completed
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try:
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stream = client.chat.completions.create(
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model="deepseek-chat",
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messages=[
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{"role": "system", "content": system_prompt},
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{"role": "user", "content": user_prompt},
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],
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stream=True,
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)
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except Exception as exc:
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yield f"data: {json.dumps({'type': 'error', 'message': str(exc)})}\n\n"
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yield "event: end\n\n"
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return
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yield "event: start\n\n"
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try:
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for chunk in stream:
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if not chunk.choices:
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continue
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choice = chunk.choices[0]
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if choice.finish_reason:
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completed = True
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save_analysis()
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yield f"data: {json.dumps({'type': 'done'})}\n\n"
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break
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content = choice.delta.content
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if content:
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analysis_chunks.append(content)
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yield f"data: {json.dumps({'type': 'delta', 'content': content})}\n\n"
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except Exception as exc:
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yield f"data: {json.dumps({'type': 'error', 'message': str(exc)})}\n\n"
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finally:
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save_analysis()
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if saved_instance and not completed:
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try:
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saved_instance.delete()
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except Exception:
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pass
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yield "event: end\n\n"
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response = StreamingHttpResponse(
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streaming_content=stream_generator(),
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content_type="text/event-stream",
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return make_sse_response(
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stream_ai_response(client, system_prompt, user_prompt, on_complete)
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)
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response["Cache-Control"] = "no-cache"
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return response
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class AIHintAPI(APIView):
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@@ -755,44 +657,9 @@ class AIHintAPI(APIView):
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f"学生代码:\n```\n{submission.code[:2000]}\n```"
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)
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def stream_generator():
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try:
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stream = client.chat.completions.create(
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model="deepseek-chat",
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messages=[
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{"role": "system", "content": system_prompt},
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{"role": "user", "content": user_prompt},
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],
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stream=True,
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)
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except Exception as exc:
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yield f"data: {json.dumps({'type': 'error', 'message': str(exc)})}\n\n"
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yield "event: end\n\n"
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return
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yield "event: start\n\n"
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try:
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for chunk in stream:
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if not chunk.choices:
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continue
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choice = chunk.choices[0]
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if choice.finish_reason:
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yield f"data: {json.dumps({'type': 'done'})}\n\n"
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break
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content = choice.delta.content
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if content:
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yield f"data: {json.dumps({'type': 'delta', 'content': content})}\n\n"
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except Exception as exc:
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yield f"data: {json.dumps({'type': 'error', 'message': str(exc)})}\n\n"
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finally:
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yield "event: end\n\n"
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response = StreamingHttpResponse(
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streaming_content=stream_generator(),
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content_type="text/event-stream",
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return make_sse_response(
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stream_ai_response(client, system_prompt, user_prompt)
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)
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response["Cache-Control"] = "no-cache"
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return response
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class AIHeatmapDataAPI(APIView):
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Reference in New Issue
Block a user