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# Add to top of roster_app_enterprise.py (after imports)

# ------------------------------
# Weekly Optimiser (7-day CP-SAT)
# ------------------------------
def solve_week(
    week_idx: int,
    start_date: datetime.date,
    available_staff: list[str],
    cumulative_shifts: dict[str, int],  # current totals
    names_all: list[str]
) -> tuple[dict, dict]:
    """
    Returns (schedule_week, weekly_counts) for 7 days.
    schedule_week: {d: {"day":[], "night":[]}} for d in 0..6 (relative)
    """
    # Map name β†’ index for optimisation (only available staff + placeholders)
    idx_map = {name: i for i, name in enumerate(available_staff)}
    N = len(available_staff)
    if N < 5:
        raise ValueError("At least 5 staff must be available.")

    # Pad to 9 with vacants (to reuse model structure)
    full_names = available_staff + [f"Vacant_{i}" for i in range(9 - N)]
    SHIFT_IDX = {"day": 0, "night": 1}
    DAYS = 7
    WEEKDAY_REL = {0,1,2,3,4}  # Mon=0 relative to week start
    model = cp_model.CpModel()
    x = {}
    for p, d, s in itertools.product(range(9), range(DAYS), range(2)):
        x[p, d, s] = model.NewBoolVar(f"x_{p}_{d}_{s}")

    # Coverage (7 days)
    for d in range(DAYS):
        req = (3, 1) if d in WEEKDAY_REL else (1, 1)
        model.Add(sum(x[p, d, SHIFT_IDX["day"]] for p in range(9)) == req[0])
        model.Add(sum(x[p, d, SHIFT_IDX["night"]] for p in range(9)) == req[1])

    # Temporal constraints (relative days)
    for p, d in itertools.product(range(9), range(DAYS)):
        model.Add(x[p, d, SHIFT_IDX["day"]] + x[p, d, SHIFT_IDX["night"]] <= 1)
    for p in range(9):
        for d in range(DAYS - 1):
            model.Add(
                x[p, d, SHIFT_IDX["day"]] +
                x[p, d, SHIFT_IDX["night"]] +
                x[p, d+1, SHIFT_IDX["day"]] +
                x[p, d+1, SHIFT_IDX["night"]] <= 1
            )
    # Weekend cap (d=5,6)
    for p in range(9):
        model.Add(sum(x[p, d, s] for d in (5, 6) for s in range(2)) <= 1)

    # Availability: vacants must be 0
    for p in range(N, 9):  # vacants
        for d, s in itertools.product(range(DAYS), range(2)):
            model.Add(x[p, d, s] == 0)

    # Fairness: minimize max deviation from target
    # Target = avg of cumulative + weekly fair share
    total_needed = sum(3+1 for _ in range(5)) + sum(1+1 for _ in range(2))  # 24 shifts/week
    target_per_person = total_needed / len(names_all)  # β‰ˆ2.67 β†’ use soft objective
    week_shifts = {}
    for p, name in enumerate(available_staff):
        var = model.NewIntVar(0, 3, f"weekshift_{p}")
        model.Add(var == sum(x[p, d, s] for d in range(DAYS) for s in range(2)))
        week_shifts[name] = var

    # Soft fairness: minimize max deviation
    max_dev = model.NewIntVar(0, 3, "max_dev")
    for name in available_staff:
        total_after = cumulative_shifts.get(name, 0) + week_shifts[name]
        # Deviation from ideal rolling mean (e.g., 16/6 β‰ˆ 2.67 per week)
        ideal = 16 / 6  # 2.666...
        # Linearize |total_after - ideal| via auxiliary vars
        pos = model.NewIntVar(0, 10, f"pos_{name}")
        neg = model.NewIntVar(0, 10, f"neg_{name}")
        model.Add(total_after - round(ideal * 10) == pos - neg).OnlyEnforceIf(model.NewBoolVar(""))  # skip exact
        # Simpler: bound each person to 2 or 3 shifts/week
        model.Add(week_shifts[name] >= 2)
        model.Add(week_shifts[name] <= 3)
    model.Minimize(max_dev)

    # Solve
    solver = cp_model.CpSolver()
    solver.parameters.max_time_in_seconds = 20.0
    solver.parameters.num_search_workers = 4

    if solver.Solve(model) not in (cp_model.OPTIMAL, cp_model.FEASIBLE):
        raise RuntimeError(f"Week {week_idx+1} infeasible with given availability.")

    # Extract
    schedule_week = {}
    weekly_counts = {name: 0 for name in available_staff}
    for d in range(7):
        day_staff = [full_names[p] for p in range(9)
                     if solver.Value(x[p, d, SHIFT_IDX["day"]]) and not full_names[p].startswith("Vacant_")]
        night_staff = [full_names[p] for p in range(9)
                       if solver.Value(x[p, d, SHIFT_IDX["night"]]) and not full_names[p].startswith("Vacant_")]
        schedule_week[d] = {"day": day_staff, "night": night_staff}
        for name in day_staff + night_staff:
            weekly_counts[name] += 1

    return schedule_week, weekly_counts

# ------------------------------
# Streamlit UI Additions
# ------------------------------
# Add to session state init (if not present)
if "cumulative_shifts" not in st.session_state:
    st.session_state.cumulative_shifts = {}
if "roster_weekly" not in st.session_state:
    st.session_state.roster_weekly = {}  # week_idx β†’ schedule

# In Manager section, after staff input:
st.header("3. Weekly Availability (Holiday/Mission)")
st.markdown("Mark unavailable staff for each week (max 4 per week).")

# Weekly toggles
avail_matrix = {}
cols = st.columns(6)
for w in range(6):
    with cols[w]:
        st.subheader(f"Week {w+1}")
        available = []
        for i, name in enumerate([n for n in st.session_state.names if n]):
            if st.checkbox(f"{name}", value=True, key=f"avail_w{w}_p{i}"):
                available.append(name)
        if len(available) < 5:
            st.error("⚠️ At least 5 must be available.")
        avail_matrix[w] = available

if st.button("πŸš€ Generate Rolling Roster", type="primary"):
    try:
        names_all = [n for n in st.session_state.names if n]
        start = st.session_state.start_date
        cum_shifts = st.session_state.cumulative_shifts.copy()
        weekly_schedules = {}

        for w in range(6):
            week_start = start + timedelta(weeks=w)
            avail = avail_matrix[w]
            schedule_w, counts_w = solve_week(w, week_start, avail, cum_shifts, names_all)
            # Update cumulative
            for name, cnt in counts_w.items():
                cum_shifts[name] = cum_shifts.get(name, 0) + cnt
            # Store absolute-date schedule
            abs_schedule = {}
            for d_rel, shifts in schedule_w.items():
                d_abs = w * 7 + d_rel
                abs_schedule[d_abs] = shifts
            weekly_schedules[w] = abs_schedule

        st.session_state.cumulative_shifts = cum_shifts
        st.session_state.roster_weekly = weekly_schedules
        st.session_state.roster_ready = True
        st.success("βœ… Rolling roster generated!")

    except Exception as e:
        st.error(f"Generation failed: {e}")

# Display logic (updated for weekly)
if st.session_state.roster_ready:
    # Merge weekly schedules into full 42-day dict
    full_sched = {}
    for w_sched in st.session_state.roster_weekly.values():
        full_sched.update(w_sched)

    if st.session_state.user_role == "manager":
        # Full roster table (same as before, using full_sched)
        rows = []
        for d in range(42):
            dt = st.session_state.start_date + timedelta(days=d)
            wd = ["Mon","Tue","Wed","Thu","Fri","Sat","Sun"][d%7]
            week = d//7 + 1
            typ = "WD" if (d%7)<5 else "WE"
            rows.append({
                "Week": f"W{week}",
                "Date": dt.strftime("%Y-%m-%d"),
                "Day": wd,
                "Type": typ,
                "Day Shift": ", ".join(full_sched.get(d, {}).get("day", [])),
                "Night Shift": ", ".join(full_sched.get(d, {}).get("night", [])),
            })
        df = pd.DataFrame(rows)
        st.dataframe(df, use_container_width=True, hide_index=True)

        # Cumulative summary
        st.subheader("πŸ“Š Cumulative Shifts (So Far)")
        summ = []
        for name in [n for n in st.session_state.names if n]:
            summ.append({"Staff": name, "Total": st.session_state.cumulative_shifts.get(name, 0)})
        st.dataframe(pd.DataFrame(summ), use_container_width=True, hide_index=True)

    else:
        # Staff view: filter full_sched
        email = st.session_state.staff_email
        names = [n for n in st.session_state.names if n]
        emails = [e for i, e in enumerate(st.session_state.emails) if st.session_state.names[i]]
        staff_name = None
        if email in emails:
            staff_name = names[emails.index(email)]
        if staff_name:
            my_shifts = []
            for d in range(42):
                dt = st.session_state.start_date + timedelta(days=d)
                if staff_name in full_sched.get(d, {}).get("day", []):
                    my_shifts.append({"Date": dt.strftime("%Y-%m-%d"), "Shift": "Day"})
                if staff_name in full_sched.get(d, {}).get("night", []):
                    my_shifts.append({"Date": dt.strftime("%Y-%m-%d"), "Shift": "Night"})
            st.dataframe(pd.DataFrame(my_shifts), use_container_width=True, hide_index=True)
        else:
            st.warning("Enter an email matching a staff member.")