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from fastapi import FastAPI, HTTPException, Query
from functools import lru_cache
import pandas as pd
import os
from typing import Dict, Any
app = FastAPI(title="Dashboard Akademik API")
# Lokasi CSV dapat dioverride di HuggingFace: Settings β Variables β CSV_PATH
CSV_PATH = os.getenv("CSV_PATH", "generated_dummy_data.csv")
# Konversi nilai huruf ke skala 4.0
MAP_NILAI = {
"A": 4.0,
"AB": 3.5,
"B": 3.0,
"BC": 2.5,
"C": 2.0,
"D": 1.0,
"E": 0.0
}
# Pastikan CSV memiliki kolom wajib
def _ensure_columns(df: pd.DataFrame):
required = {
"kode_mhs", "nama_prodi", "id_smt", "kode_mk", "nama_mk",
"RMK", "sks", "nilai_akhir", "nilai_huruf", "Tahun angkatan",
"Semester_sekarang", "Deskripsi Matkul"
}
missing = required - set(df.columns)
if missing:
raise ValueError(f"CSV missing required columns: {missing}")
# Helper untuk normalisasi nilai_huruf sel yang mungkin berisi list/Series/None
def _to_simple_string(val):
try:
# pandas NA
if pd.isna(val):
return ""
except Exception:
# if val is unhashable, continue
pass
# If the cell contains a pandas Series or ndarray-like
if isinstance(val, pd.Series):
# take first non-null element if possible
non_null = val.dropna()
if not non_null.empty:
return str(non_null.iloc[0])
if not val.empty:
return str(val.iloc[0])
return ""
if isinstance(val, (list, tuple)):
if len(val) == 0:
return ""
return str(val[0])
# dict or other object: convert to string
try:
return str(val)
except Exception:
return ""
# Loader CSV dengan cache
@lru_cache(maxsize=1)
def load_data_cached() -> pd.DataFrame:
if not os.path.exists(CSV_PATH):
raise FileNotFoundError(f"CSV not found at: {CSV_PATH}")
# Read CSV (let pandas infer types). If encoding issues happen, set encoding='utf-8'
df = pd.read_csv(CSV_PATH)
# Normalize column names: strip whitespace
df.columns = [c.strip() for c in df.columns]
_ensure_columns(df)
# Normalize numeric columns
df["sks"] = pd.to_numeric(df["sks"], errors="coerce").fillna(0).astype(int)
df["id_smt"] = pd.to_numeric(df["id_smt"], errors="coerce").fillna(0).astype(int)
# SAFELY normalize nilai_huruf (handle lists, Series, NaN, ints, etc.)
df["nilai_huruf"] = df["nilai_huruf"].apply(_to_simple_string).astype(str).str.strip()
# Map A, AB, B, ... -> numeric
df["nilai_numerik"] = df["nilai_huruf"].map(MAP_NILAI)
# Jika huruf invalid β fallback ke nilai_akhir (0β100 -> skala 0-4)
def fallback_numeric(row):
# jika sudah mapped, kembalikan
if pd.notna(row["nilai_numerik"]):
return row["nilai_numerik"]
try:
v = float(row.get("nilai_akhir", 0))
if v >= 86: return 4.0
if v >= 76: return 3.5
if v >= 66: return 3.0
if v >= 61: return 2.5
if v >= 56: return 2.0
if v >= 41: return 1.0
return 0.0
except Exception:
return 0.0
df["nilai_numerik"] = df.apply(fallback_numeric, axis=1)
return df
# Pakai nilai terakhir per (mhs, matkul)
def get_final_records(df: pd.DataFrame) -> pd.DataFrame:
df_sorted = df.sort_values(["kode_mhs", "kode_mk", "id_smt"])
return df_sorted.groupby(["kode_mhs", "kode_mk"], as_index=False).last()
# ----------------------------------------------------
# ENDPOINT 1 β TOTAL MAHASISWA
# ----------------------------------------------------
@app.get("/jumlah_mahasiswa")
def jumlah_mahasiswa(reload: bool = Query(False, description="reload CSV cache")):
if reload:
load_data_cached.cache_clear()
try:
df = load_data_cached()
except Exception as e:
raise HTTPException(status_code=500, detail=str(e))
total = int(df["kode_mhs"].nunique())
return {"total_mahasiswa": total}
# ----------------------------------------------------
# ENDPOINT 2 β JUMLAH PER ANGKATAN
# ----------------------------------------------------
@app.get("/jumlah_per_angkatan")
def jumlah_per_angkatan(reload: bool = Query(False, description="reload CSV cache")):
if reload:
load_data_cached.cache_clear()
try:
df = load_data_cached()
except Exception as e:
raise HTTPException(status_code=500, detail=str(e))
per_ang = df.groupby("Tahun angkatan")["kode_mhs"].nunique().sort_index().to_dict()
per_ang = {str(k): int(v) for k, v in per_ang.items()}
return {"mahasiswa_per_angkatan": per_ang}
# ----------------------------------------------------
# ENDPOINT 3 β MAHASISWA ELIGIBLE TA
# ----------------------------------------------------
@app.get("/eligible_ta")
def eligible_ta(reload: bool = Query(False, description="reload CSV cache"),
min_sks: int = Query(110, description="threshold SKS untuk eligible (default:110)")):
if reload:
load_data_cached.cache_clear()
try:
df = load_data_cached()
except Exception as e:
raise HTTPException(status_code=500, detail=str(e))
final = get_final_records(df)
sks_per_mhs = final.groupby("kode_mhs")["sks"].sum()
eligible = sks_per_mhs[sks_per_mhs > min_sks]
data = [{"kode_mhs": m, "total_sks": int(sks_per_mhs[m])} for m in eligible.index]
return {"jumlah_eligible": len(data), "daftar": data}
# ----------------------------------------------------
# ENDPOINT 4 β IPK RATA-RATA
# ----------------------------------------------------
@app.get("/ipk_rata_rata")
def ipk_rata_rata(reload: bool = Query(False, description="reload CSV cache")):
if reload:
load_data_cached.cache_clear()
try:
df = load_data_cached()
except Exception as e:
raise HTTPException(status_code=500, detail=str(e))
final = get_final_records(df)
final["total_bobot"] = final["sks"] * final["nilai_numerik"]
grp = final.groupby(["kode_mhs", "id_smt"]).agg(
total_bobot=("total_bobot", "sum"),
total_sks=("sks", "sum")
).reset_index()
grp["ips"] = grp.apply(lambda r: (r["total_bobot"] / r["total_sks"]) if r["total_sks"] > 0 else 0.0, axis=1)
ipk_series = grp.groupby("kode_mhs")["ips"].mean()
if ipk_series.empty:
return {"ipk_rata_rata": 0.0, "ipk_quartiles": {}}
mean_ipk = float(round(ipk_series.mean(), 3))
q = ipk_series.quantile([0.25, 0.5, 0.75]).to_dict()
q = {str(k): float(v) for k, v in q.items()}
return {"ipk_rata_rata": mean_ipk, "ipk_quartiles": q}
# ----------------------------------------------------
# ENDPOINT 5 β DASHBOARD SUMMARY (SEMUA RINGKASAN)
# ----------------------------------------------------
@app.get("/dashboard_summary")
def dashboard_summary(reload: bool = Query(False, description="reload CSV cache")):
if reload:
load_data_cached.cache_clear()
try:
df = load_data_cached()
except Exception as e:
raise HTTPException(status_code=500, detail=str(e))
final = get_final_records(df)
total_mhs = int(df["kode_mhs"].nunique())
per_ang = df.groupby("Tahun angkatan")["kode_mhs"].nunique().to_dict()
per_ang = {str(k): int(v) for k, v in per_ang.items()}
sks_per_mhs = final.groupby("kode_mhs")["sks"].sum()
eligible = sks_per_mhs[sks_per_mhs > 110]
eligible_list = [{"kode_mhs": m, "total_sks": int(sks_per_mhs[m])} for m in eligible.index]
# Hitung IPK
final["total_bobot"] = final["sks"] * final["nilai_numerik"]
grp = final.groupby(["kode_mhs", "id_smt"]).agg(
total_bobot=("total_bobot", "sum"),
total_sks=("sks", "sum")
).reset_index()
grp["ips"] = grp.apply(lambda r: (r["total_bobot"] / r["total_sks"]) if r["total_sks"] > 0 else 0.0, axis=1)
ipk_series = grp.groupby("kode_mhs")["ips"].mean()
mean_ipk = float(round(ipk_series.mean(), 3)) if not ipk_series.empty else 0.0
return {
"total_mahasiswa": total_mhs,
"mahasiswa_per_angkatan": per_ang,
"eligible_ta": {
"jumlah": len(eligible_list),
"daftar": eligible_list
},
"ipk": {
"rata_rata_ipk": mean_ipk
}
}
# ----------------------------------------------------
# ADDITIONAL ENDPOINT β RATA-RATA SKS
# ----------------------------------------------------
@app.get("/rata_sks")
def rata_sks(reload: bool = Query(False, description="reload CSV cache")):
if reload:
load_data_cached.cache_clear()
try:
df = load_data_cached()
except Exception as e:
raise HTTPException(status_code=500, detail=str(e))
final = get_final_records(df)
sks_per_mhs = final.groupby("kode_mhs")["sks"].sum()
if sks_per_mhs.empty:
return {"rata_rata_sks": 0.0}
rata2 = float(round(sks_per_mhs.mean(), 2))
return {"rata_rata_sks": rata2}
# ----------------------------------------------------
# ADDITIONAL ENDPOINT β IPS TREND (per angkatan per semester)
# ----------------------------------------------------
@app.get("/ips_trend")
def ips_trend(reload: bool = Query(False, description="reload CSV cache")):
if reload:
load_data_cached.cache_clear()
try:
df = load_data_cached()
except Exception as e:
raise HTTPException(status_code=500, detail=str(e))
final = get_final_records(df)
final["total_bobot"] = final["sks"] * final["nilai_numerik"]
grp = final.groupby(["kode_mhs", "id_smt", "Tahun angkatan"]).agg(
total_bobot=("total_bobot", "sum"),
total_sks=("sks", "sum")
).reset_index()
grp["ips"] = grp.apply(lambda r: (r["total_bobot"] / r["total_sks"]) if r["total_sks"] > 0 else 0.0, axis=1)
result = grp.groupby(["Tahun angkatan", "id_smt"])["ips"].mean().round(3).reset_index()
output = {}
for _, row in result.iterrows():
angkatan = str(int(row["Tahun angkatan"]))
semester = str(int(row["id_smt"]))
output.setdefault(angkatan, {})[semester] = float(row["ips"])
return output
# ----------------------------------------------------
# ADDITIONAL ENDPOINT β POPULASI (jumlah mahasiswa per angkatan)
# ----------------------------------------------------
@app.get("/populasi")
def populasi(reload: bool = Query(False, description="reload CSV cache")):
if reload:
load_data_cached.cache_clear()
try:
df = load_data_cached()
except Exception as e:
raise HTTPException(status_code=500, detail=str(e))
per_ang = df.groupby("Tahun angkatan")["kode_mhs"].nunique().sort_index().to_dict()
per_ang = {str(k): int(v) for k, v in per_ang.items()}
return {"populasi": per_ang}
# ----------------------------------------------------
# ENDPOINT β RELOAD CSV
# ----------------------------------------------------
@app.post("/reload_data")
def reload_data():
load_data_cached.cache_clear()
try:
_ = load_data_cached()
except Exception as e:
raise HTTPException(status_code=500, detail=f"Reload failed: {e}")
return {"status": "reloaded"}
# ----------------------------------------------------
# ENDPOINT 7 β TREN IPS PER ANGKATAN / SEMESTER
# ----------------------------------------------------
@app.get("/tren_ips")
def tren_ips(reload: bool = False):
if reload:
load_data_cached.cache_clear()
try:
df = load_data_cached()
except Exception as e:
raise HTTPException(500, str(e))
final = get_final_records(df)
final["total_bobot"] = final["sks"] * final["nilai_numerik"]
# hitung IPS per (angkatan, semester)
grouped = final.groupby(["Tahun angkatan", "id_smt"]).agg(
total_bobot=("total_bobot", "sum"),
total_sks=("sks", "sum")
).reset_index()
grouped["ips"] = grouped.apply(
lambda r: (r["total_bobot"] / r["total_sks"]) if r["total_sks"] > 0 else 0.0,
axis=1
)
result = {}
for angkatan, d in grouped.groupby("Tahun angkatan"):
d_sorted = d.sort_values("id_smt")
result[str(angkatan)] = d_sorted["ips"].round(3).tolist()
return result
# ----------------------------------------------------
# ENDPOINT 8 β DISTRIBUSI POPULASI PER ANGKATAN
# ----------------------------------------------------
@app.get("/distribusi_populasi")
def distribusi_populasi(reload: bool = False, min_sks: int = 110):
if reload:
load_data_cached.cache_clear()
try:
df = load_data_cached()
except Exception as e:
raise HTTPException(500, str(e))
final = get_final_records(df)
# total mahasiswa per angkatan
total_mhs = df.groupby("Tahun angkatan")["kode_mhs"].nunique()
# eligible per angkatan
sks_per_mhs = final.groupby("kode_mhs")["sks"].sum()
eligible = sks_per_mhs[sks_per_mhs > min_sks]
angkatan_map = df.set_index("kode_mhs")["Tahun angkatan"].to_dict()
eligible_count = {}
for mhs in eligible.index:
ang = angkatan_map.get(mhs)
if ang is not None:
eligible_count.setdefault(ang, 0)
eligible_count[ang] += 1
# bentuk response
final_result = {}
for angkatan in sorted(total_mhs.index):
final_result[str(angkatan)] = {
"total": int(total_mhs[angkatan]),
"eligible": int(eligible_count.get(angkatan, 0))
}
return final_result
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