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import json
import re
from collections import defaultdict
from datetime import datetime, timezone, timedelta
from io import BytesIO
from bson import ObjectId
from openpyxl import Workbook
from openpyxl.styles import Alignment, Border, Font, PatternFill, Side
from openpyxl.utils import get_column_letter
from database import get_db
from models.collections import (
GROUP_TESTS,
GROUP_TEST_RESULTS,
JOB_DESCRIPTIONS,
SKILLS,
TOPICS,
USERS,
)
from services.group_test_service import _refresh_topic_statuses
from utils.gemini import call_gemini
from utils.helpers import str_objectids
# βββ Gemini query parser βββββββββββββββββββββββββββββββββββββββββββββββββββββ
async def _parse_query(query: str, group_tests: list[dict], jd_content: str | None) -> dict:
"""Ask Gemini to extract structured filter parameters from a natural-language query."""
gt_list = [{"id": gt["id"], "name": gt["name"]} for gt in group_tests]
jd_context = ""
if jd_content:
jd_context = (
f"\n\nJob Description:\n{jd_content}\n"
"Use this JD to rank students by skill relevance when use_jd_ranking is true."
)
prompt = (
f'Admin query: "{query}"\n\n'
f"Available group tests: {json.dumps(gt_list)}"
f"{jd_context}\n\n"
"Extract filter parameters and return ONLY a JSON object (no markdown, no extra text):\n"
"{\n"
' "group_test_id": "<id from the list, or null if none matches>",\n'
' "group_test_name": "<matched name or null>",\n'
' "top_k": <integer or null>,\n'
' "min_score": <number 0-100 or null>,\n'
' "use_jd_ranking": <true if JD was provided and should influence ranking>,\n'
' "response_message": "<short 1-2 sentence message describing the filter result>"\n'
"}\n\n"
"Rules:\n"
"- Match group_test_id to the best-fitting group test. null = show all students across all tests.\n"
"- top_k: number from phrases like 'top 5', 'top k', 'best 10'. null = all.\n"
"- min_score: extract from 'score above 70', 'minimum 80%'. null = no filter.\n"
"- response_message: friendly description of what was filtered.\n"
"Return ONLY valid JSON, no other text."
)
raw = await call_gemini(prompt)
cleaned = raw.strip()
if cleaned.startswith("```"):
cleaned = re.sub(r"```[a-z]*\n?", "", cleaned).strip().rstrip("`").strip()
try:
return json.loads(cleaned)
except Exception:
# Fallback: return empty params so the caller can show a helpful message
return {
"group_test_id": None,
"group_test_name": None,
"top_k": None,
"min_score": None,
"use_jd_ranking": False,
"response_message": "I couldn't understand the query. Please try something like: 'top 5 students in SWE group'.",
}
# βββ Data helpers βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
async def _user_info(user_id: str, db) -> dict:
try:
user = await db[USERS].find_one({"_id": ObjectId(user_id)})
except Exception:
user = None
if not user:
return {"reg_no": "N/A", "name": "", "email": ""}
return {
"reg_no": user.get("reg_no") or "N/A",
"name": user.get("name", ""),
"email": user.get("email", ""),
}
async def _jd_skills(jd_id: str, db) -> tuple[str | None, list[str]]:
"""Return (jd_content_str, required_skills_list)."""
try:
doc = await db[JOB_DESCRIPTIONS].find_one({"_id": ObjectId(jd_id)})
except Exception:
doc = None
if not doc:
return None, []
content = f"Title: {doc.get('title', '')}\n{doc.get('description', '')}"
return content, doc.get("required_skills") or []
def _skill_match_pct(student_skills: list[str], jd_skills: list[str]) -> float | None:
if not jd_skills:
return None
s_lower = [s.lower() for s in student_skills]
j_lower = [s.lower() for s in jd_skills]
matched = sum(1 for j in j_lower if any(j in s or s in j for s in s_lower))
return round(matched / len(j_lower) * 100, 1)
# βββ Main query processor ββββββββββββββββββββββββββββββββββββββββββββββββββββ
async def process_chatbot_query(query: str, jd_id: str | None) -> dict:
"""Parse admin query, aggregate student data, apply filters, return ranked rows."""
db = get_db()
# Fetch all group tests
gt_cursor = db[GROUP_TESTS].find({}).sort("created_at", -1)
gt_docs = await gt_cursor.to_list(length=300)
all_group_tests = [
{
"id": str(d["_id"]),
"name": d.get("name", ""),
"topic_ids": d.get("topic_ids") or [],
}
for d in gt_docs
]
# Fetch JD if provided
jd_content, jd_req_skills = (None, [])
if jd_id:
jd_content, jd_req_skills = await _jd_skills(jd_id, db)
# Let Gemini parse the query
parsed = await _parse_query(query, all_group_tests, jd_content)
group_test_id: str | None = parsed.get("group_test_id")
top_k: int | None = parsed.get("top_k")
min_score: float | None = parsed.get("min_score")
use_jd_ranking: bool = bool(parsed.get("use_jd_ranking")) and bool(jd_req_skills)
response_message: str = parsed.get("response_message") or "Here are the filtered results."
# Build topic column list from the matched group test
topic_columns: list[dict] = []
group_test_name: str = ""
if group_test_id:
gt_doc = next((g for g in all_group_tests if g["id"] == group_test_id), None)
if gt_doc:
group_test_name = gt_doc["name"]
for tid in gt_doc["topic_ids"]:
try:
t = await db[TOPICS].find_one({"_id": ObjectId(tid)})
except Exception:
t = None
if t:
topic_columns.append({"id": tid, "name": t.get("name", tid)})
# Fetch relevant results
results_filter = {"group_test_id": group_test_id} if group_test_id else {}
results_cursor = db[GROUP_TEST_RESULTS].find(results_filter)
results_docs = await results_cursor.to_list(length=2000)
# Group by user_id; pick best attempt per user per group_test
# Key: (user_id, group_test_id) β list of attempts
attempts_map: dict[tuple, list] = defaultdict(list)
for r in results_docs:
key = (r.get("user_id", ""), r.get("group_test_id", ""))
attempts_map[key].append(r)
rows: list[dict] = []
seen_users: set[str] = set()
for (uid, gt_id), attempts in attempts_map.items():
if not uid:
continue
# Refresh topic statuses and choose best attempt
best = None
for attempt in attempts:
attempt = await _refresh_topic_statuses(attempt, db)
score = attempt.get("overall_score") or 0
if best is None or score > (best.get("overall_score") or 0):
best = attempt
user = await _user_info(uid, db)
# Per-topic scores from best attempt
topic_scores: dict[str, dict] = {}
for tr in best.get("topic_results") or []:
tid = tr.get("topic_id", "")
topic_scores[tid] = {
"topic_name": tr.get("topic_name", ""),
"score": tr.get("overall_score"),
"status": tr.get("status", "pending"),
}
# JD skill match
skill_match: float | None = None
if use_jd_ranking:
skills_doc = await db[SKILLS].find_one({"user_id": uid})
student_skills = (skills_doc or {}).get("skills") or []
skill_match = _skill_match_pct(student_skills, jd_req_skills)
row = {
"user_id": uid,
"reg_no": user["reg_no"],
"name": user["name"],
"email": user["email"],
"group_test_id": gt_id,
"group_test_name": best.get("group_test_name") or group_test_name,
"overall_score": round(best.get("overall_score") or 0, 1),
"total_attempts": len(attempts),
"status": best.get("status", "in_progress"),
"topic_scores": topic_scores,
"skill_match": skill_match,
"rank": 0, # assigned below
}
rows.append(row)
# If multiple group tests queried (no filter), collect unique topic columns
if not group_test_id:
topic_set: dict[str, str] = {}
for r in rows:
for tid, ts in r["topic_scores"].items():
if tid not in topic_set:
topic_set[tid] = ts["topic_name"]
topic_columns = [{"id": tid, "name": name} for tid, name in topic_set.items()]
# Sort
if use_jd_ranking:
rows.sort(
key=lambda r: (r["skill_match"] or 0) * 0.4 + (r["overall_score"] or 0) * 0.6,
reverse=True,
)
else:
rows.sort(key=lambda r: r["overall_score"] or 0, reverse=True)
# Min score filter
if min_score is not None:
rows = [r for r in rows if (r["overall_score"] or 0) >= min_score]
# Assign ranks
for i, row in enumerate(rows):
row["rank"] = i + 1
# Top-k slice
if top_k and top_k > 0:
rows = rows[:top_k]
return {
"message": response_message,
"group_test_name": group_test_name or "All Group Tests",
"group_test_id": group_test_id,
"topic_columns": topic_columns,
"rows": rows,
"total": len(rows),
}
# βββ Update student βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
async def update_student_info(user_id: str, reg_no: str | None, name: str | None) -> dict:
"""Allow admin to correct a student's reg_no or name."""
db = get_db()
update: dict = {}
if reg_no is not None:
reg_no = reg_no.strip()
if reg_no:
# Uniqueness check
existing = await db[USERS].find_one(
{"reg_no": reg_no, "_id": {"$ne": ObjectId(user_id)}}
)
if existing:
raise ValueError("This register number is already used by another student.")
update["reg_no"] = reg_no
if name is not None:
name = name.strip()
if name:
update["name"] = name
if not update:
raise ValueError("Nothing to update.")
await db[USERS].update_one({"_id": ObjectId(user_id)}, {"$set": update})
user = await db[USERS].find_one({"_id": ObjectId(user_id)})
return {
"user_id": user_id,
"reg_no": (user or {}).get("reg_no") or "N/A",
"name": (user or {}).get("name", ""),
"email": (user or {}).get("email", ""),
}
# βββ Excel export βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
_HEADER_FILL = PatternFill(start_color="1F4E79", end_color="1F4E79", fill_type="solid")
_ALT_FILL = PatternFill(start_color="D6E4F0", end_color="D6E4F0", fill_type="solid")
_SCORE_FILL = PatternFill(start_color="E8F5E9", end_color="E8F5E9", fill_type="solid")
_HEADER_FONT = Font(name="Calibri", bold=True, color="FFFFFF", size=11)
_DATA_FONT = Font(name="Calibri", size=10)
_BOLD_DATA_FONT = Font(name="Calibri", bold=True, size=10)
_CENTER = Alignment(horizontal="center", vertical="center", wrap_text=True)
_LEFT = Alignment(horizontal="left", vertical="center")
def _thin_border() -> Border:
s = Side(style="thin", color="B0BEC5")
return Border(left=s, right=s, top=s, bottom=s)
def generate_excel(rows: list[dict], topic_columns: list[dict], group_test_name: str) -> BytesIO:
wb = Workbook()
ws = wb.active
ws.title = "Students"
border = _thin_border()
# ββ Header row ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
headers = ["Rank", "Reg No", "Name", "Email"]
for tc in topic_columns:
headers.append(f"{tc['name']}\nScore")
headers += ["Overall\nScore", "Attempts", "Status"]
if any(r.get("skill_match") is not None for r in rows):
headers.append("JD Match\n(%)")
for col_idx, header in enumerate(headers, 1):
cell = ws.cell(row=1, column=col_idx, value=header)
cell.font = _HEADER_FONT
cell.fill = _HEADER_FILL
cell.alignment = _CENTER
cell.border = border
ws.row_dimensions[1].height = 36
# ββ Data rows βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
for row_num, row in enumerate(rows, 2):
use_alt = row_num % 2 == 0
row_fill = _ALT_FILL if use_alt else None
data: list = [
row.get("rank", row_num - 1),
row.get("reg_no", ""),
row.get("name", ""),
row.get("email", ""),
]
for tc in topic_columns:
ts = row.get("topic_scores", {}).get(tc["id"], {})
score = ts.get("score")
data.append(f"{score:.1f}%" if score is not None else "β")
overall = row.get("overall_score")
data.append(f"{overall:.1f}%" if overall is not None else "β")
data.append(row.get("total_attempts", 1))
data.append((row.get("status") or "").replace("_", " ").title())
if any(r.get("skill_match") is not None for r in rows):
sm = row.get("skill_match")
data.append(f"{sm:.1f}%" if sm is not None else "β")
for col_idx, value in enumerate(data, 1):
cell = ws.cell(row=row_num, column=col_idx, value=value)
cell.border = border
cell.font = _DATA_FONT
if col_idx in (1,): # rank β bold + centered
cell.font = _BOLD_DATA_FONT
cell.alignment = _CENTER
elif col_idx in (2, 3, 4):
cell.alignment = _LEFT
else:
cell.alignment = _CENTER
if row_fill:
cell.fill = row_fill
ws.row_dimensions[row_num].height = 20
# ββ Column widths ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
col_widths = [6, 16, 22, 28]
for _ in topic_columns:
col_widths.append(14)
col_widths += [14, 10, 14]
if any(r.get("skill_match") is not None for r in rows):
col_widths.append(12)
for i, width in enumerate(col_widths, 1):
ws.column_dimensions[get_column_letter(i)].width = width
# ββ Title row above headers ββββββββββββββββββββββββββββββββββββββββββββββββ
ws.insert_rows(1)
title_cell = ws.cell(row=1, column=1, value=f"Student Results β {group_test_name}")
title_cell.font = Font(name="Calibri", bold=True, size=13, color="1F4E79")
title_cell.alignment = _LEFT
ws.merge_cells(start_row=1, start_column=1, end_row=1, end_column=max(len(headers), 5))
ws.row_dimensions[1].height = 28
# ββ Freeze header row ββββββββββββββββββββββββββββββββββββββββββββββββββββββ
ws.freeze_panes = "A3"
bio = BytesIO()
wb.save(bio)
bio.seek(0)
return bio
# βββ Structured Student Filter (no Gemini) βββββββββββββββββββββββββββββββββββ
def _parse_date(date_str: str | None, end_of_day: bool = False):
"""Parse YYYY-MM-DD string to UTC-aware datetime, or None."""
if not date_str:
return None
try:
dt = datetime.strptime(date_str.strip(), "%Y-%m-%d").replace(tzinfo=timezone.utc)
if end_of_day:
dt = dt + timedelta(days=1)
return dt
except ValueError:
return None
def _compute_duration(started_at, completed_at) -> float | None:
"""Duration in minutes, rounded to 1 dp. Returns None if either timestamp missing."""
if started_at is None or completed_at is None:
return None
try:
# Handle both datetime objects and ISO strings
if isinstance(started_at, str):
started_at = datetime.fromisoformat(started_at.replace("Z", "+00:00"))
if isinstance(completed_at, str):
completed_at = datetime.fromisoformat(completed_at.replace("Z", "+00:00"))
delta = completed_at - started_at
return round(max(delta.total_seconds(), 0) / 60, 1)
except Exception:
return None
async def filter_students_structured(
group_test_ids: list[str] | None,
jd_id: str | None,
start_date: str | None,
end_date: str | None,
top_k: int | None,
min_score: float | None,
sort_fields: list[str] | None = None,
sort_orders: list[str] | None = None,
) -> dict:
"""Structured student filter β no Gemini, explicit params, composable."""
db = get_db()
# ββ Fetch all group tests for metadata ββββββββββββββββββββββββββββββββββββ
gt_cursor = db[GROUP_TESTS].find({}).sort("created_at", -1)
gt_docs = await gt_cursor.to_list(length=300)
all_group_tests: dict[str, dict] = {
str(d["_id"]): {
"id": str(d["_id"]),
"name": d.get("name", ""),
"topic_ids": d.get("topic_ids") or [],
}
for d in gt_docs
}
# ββ Fetch JD info if provided βββββββββββββββββββββββββββββββββββββββββββββ
jd_content, jd_req_skills = (None, [])
if jd_id:
jd_content, jd_req_skills = await _jd_skills(jd_id, db)
use_jd_ranking = bool(jd_req_skills)
# ββ Build MongoDB query βββββββββββββββββββββββββββββββββββββββββββββββββββ
results_filter: dict = {}
if group_test_ids:
results_filter["group_test_id"] = {"$in": group_test_ids}
start_dt = _parse_date(start_date, end_of_day=False)
end_dt = _parse_date(end_date, end_of_day=True)
if start_dt or end_dt:
date_filter: dict = {}
if start_dt:
date_filter["$gte"] = start_dt
if end_dt:
date_filter["$lt"] = end_dt
results_filter["started_at"] = date_filter
results_cursor = db[GROUP_TEST_RESULTS].find(results_filter)
results_docs = await results_cursor.to_list(length=3000)
# ββ Collect topic columns from selected group tests βββββββββββββββββββββββ
selected_gt_ids: set[str] = (
set(group_test_ids) if group_test_ids
else {str(d["_id"]) for d in gt_docs}
)
topic_columns: list[dict] = []
topic_seen: set[str] = set()
group_test_name = "All Group Tests"
if group_test_ids and len(group_test_ids) == 1:
gt = all_group_tests.get(group_test_ids[0])
if gt:
group_test_name = gt["name"]
for tid in gt["topic_ids"]:
if tid not in topic_seen:
topic_seen.add(tid)
try:
t = await db[TOPICS].find_one({"_id": ObjectId(tid)})
except Exception:
t = None
if t:
topic_columns.append({"id": tid, "name": t.get("name", tid)})
elif group_test_ids and len(group_test_ids) > 1:
names = [all_group_tests[gid]["name"] for gid in group_test_ids if gid in all_group_tests]
group_test_name = ", ".join(names) if names else "Multiple Tests"
for gid in group_test_ids:
gt = all_group_tests.get(gid)
if not gt:
continue
for tid in gt["topic_ids"]:
if tid not in topic_seen:
topic_seen.add(tid)
try:
t = await db[TOPICS].find_one({"_id": ObjectId(tid)})
except Exception:
t = None
if t:
topic_columns.append({"id": tid, "name": t.get("name", tid)})
# ββ Group by (user_id, group_test_id) β pick best attempt ββββββββββββββββ
attempts_map: dict[tuple, list] = defaultdict(list)
for r in results_docs:
uid = r.get("user_id", "")
gtid = r.get("group_test_id", "")
if uid:
attempts_map[(uid, gtid)].append(r)
rows: list[dict] = []
for (uid, gt_id), attempts in attempts_map.items():
best = None
for attempt in attempts:
attempt = await _refresh_topic_statuses(attempt, db)
score = attempt.get("overall_score") or 0
if best is None or score > (best.get("overall_score") or 0):
best = attempt
user = await _user_info(uid, db)
# Per-topic scores
topic_scores: dict[str, dict] = {}
for tr in best.get("topic_results") or []:
tid = tr.get("topic_id", "")
topic_scores[tid] = {
"topic_name": tr.get("topic_name", ""),
"score": tr.get("overall_score"),
"status": tr.get("status", "pending"),
}
# JD skill match
skill_match: float | None = None
if use_jd_ranking:
skills_doc = await db[SKILLS].find_one({"user_id": uid})
student_skills = (skills_doc or {}).get("skills") or []
skill_match = _skill_match_pct(student_skills, jd_req_skills)
# Attempt time & duration
started_at = best.get("started_at")
completed_at = best.get("completed_at")
attempt_time: str | None = None
if started_at is not None:
try:
attempt_time = started_at.isoformat() if isinstance(started_at, datetime) else str(started_at)
except Exception:
attempt_time = None
# Collect topic columns dynamically when showing all tests
if not group_test_ids:
gt = all_group_tests.get(gt_id)
if gt:
for tid in gt["topic_ids"]:
if tid not in topic_seen:
topic_seen.add(tid)
try:
t = await db[TOPICS].find_one({"_id": ObjectId(tid)})
except Exception:
t = None
if t:
topic_columns.append({"id": tid, "name": t.get("name", tid)})
gt_info = all_group_tests.get(gt_id, {})
row = {
"user_id": uid,
"reg_no": user["reg_no"],
"name": user["name"],
"email": user["email"],
"group_test_id": gt_id,
"group_test_name": best.get("group_test_name") or gt_info.get("name", ""),
"overall_score": round(best.get("overall_score") or 0, 1),
"total_attempts": len(attempts),
"status": best.get("status", "in_progress"),
"topic_scores": topic_scores,
"skill_match": skill_match,
"rank": 0,
"attempt_time": attempt_time,
"duration_minutes": _compute_duration(started_at, completed_at),
}
rows.append(row)
# ββ Min score filter ββββββββββββββββββββββββββββββββββββββββββββββββββββββ
if min_score is not None:
rows = [r for r in rows if (r["overall_score"] or 0) >= min_score]
# ββ Multi-sort ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
_fields = sort_fields if sort_fields else ["time"]
_orders = sort_orders if sort_orders else ["desc"]
_INF = float("inf")
_NEG_INF = float("-inf")
def _row_key(r: dict, field: str, order: str):
"""Return a comparable key, handling None with order-aware sentinel."""
desc = order.lower() == "desc"
if field == "score":
v = r.get("overall_score") or 0
return -v if desc else v
elif field == "duration":
v = r.get("duration_minutes")
if v is None:
return _INF # always sort None to end
return -v if desc else v
else: # "time"
v = r.get("attempt_time") or ""
# For strings, desc means we negate via reverse tuple trick below
return v
# Apply sorts in reverse priority order (stable sort)
paired = list(zip(_fields, _orders))
for field, order in reversed(paired):
desc = order.lower() == "desc"
if field == "time":
rows.sort(key=lambda r: r.get("attempt_time") or "", reverse=desc)
elif field == "score":
rows.sort(key=lambda r: r.get("overall_score") or 0, reverse=desc)
elif field == "duration":
rows.sort(
key=lambda r: r["duration_minutes"] if r["duration_minutes"] is not None
else (_NEG_INF if desc else _INF),
reverse=desc,
)
# ββ Assign ranks ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
for i, row in enumerate(rows):
row["rank"] = i + 1
# ββ Top-K slice βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
if top_k and top_k > 0:
rows = rows[:top_k]
return {
"group_test_name": group_test_name,
"group_test_id": group_test_ids[0] if group_test_ids and len(group_test_ids) == 1 else None,
"topic_columns": topic_columns,
"rows": rows,
"total": len(rows),
}
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