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"""
Numba 1D mean kernels that can be shared by
* Dataframe / Series
* groupby
* rolling / expanding
 
Mirrors pandas/_libs/window/aggregation.pyx
"""
from __future__ import annotations
 
import numba
import numpy as np
 
from pandas.core._numba.kernels.shared import is_monotonic_increasing
 
 
@numba.jit(nopython=True, nogil=True, parallel=False)
def add_mean(
    val: float,
    nobs: int,
    sum_x: float,
    neg_ct: int,
    compensation: float,
    num_consecutive_same_value: int,
    prev_value: float,
) -> tuple[int, float, int, float, int, float]:
    if not np.isnan(val):
        nobs += 1
        y = val - compensation
        t = sum_x + y
        compensation = t - sum_x - y
        sum_x = t
        if val < 0:
            neg_ct += 1
 
        if val == prev_value:
            num_consecutive_same_value += 1
        else:
            num_consecutive_same_value = 1
        prev_value = val
 
    return nobs, sum_x, neg_ct, compensation, num_consecutive_same_value, prev_value
 
 
@numba.jit(nopython=True, nogil=True, parallel=False)
def remove_mean(
    val: float, nobs: int, sum_x: float, neg_ct: int, compensation: float
) -> tuple[int, float, int, float]:
    if not np.isnan(val):
        nobs -= 1
        y = -val - compensation
        t = sum_x + y
        compensation = t - sum_x - y
        sum_x = t
        if val < 0:
            neg_ct -= 1
    return nobs, sum_x, neg_ct, compensation
 
 
@numba.jit(nopython=True, nogil=True, parallel=False)
def sliding_mean(
    values: np.ndarray,
    start: np.ndarray,
    end: np.ndarray,
    min_periods: int,
) -> np.ndarray:
    N = len(start)
    nobs = 0
    sum_x = 0.0
    neg_ct = 0
    compensation_add = 0.0
    compensation_remove = 0.0
 
    is_monotonic_increasing_bounds = is_monotonic_increasing(
        start
    ) and is_monotonic_increasing(end)
 
    output = np.empty(N, dtype=np.float64)
 
    for i in range(N):
        s = start[i]
        e = end[i]
        if i == 0 or not is_monotonic_increasing_bounds:
            prev_value = values[s]
            num_consecutive_same_value = 0
 
            for j in range(s, e):
                val = values[j]
                (
                    nobs,
                    sum_x,
                    neg_ct,
                    compensation_add,
                    num_consecutive_same_value,
                    prev_value,
                ) = add_mean(
                    val,
                    nobs,
                    sum_x,
                    neg_ct,
                    compensation_add,
                    num_consecutive_same_value,
                    prev_value,
                )
        else:
            for j in range(start[i - 1], s):
                val = values[j]
                nobs, sum_x, neg_ct, compensation_remove = remove_mean(
                    val, nobs, sum_x, neg_ct, compensation_remove
                )
 
            for j in range(end[i - 1], e):
                val = values[j]
                (
                    nobs,
                    sum_x,
                    neg_ct,
                    compensation_add,
                    num_consecutive_same_value,
                    prev_value,
                ) = add_mean(
                    val,
                    nobs,
                    sum_x,
                    neg_ct,
                    compensation_add,
                    num_consecutive_same_value,
                    prev_value,
                )
 
        if nobs >= min_periods and nobs > 0:
            result = sum_x / nobs
            if num_consecutive_same_value >= nobs:
                result = prev_value
            elif neg_ct == 0 and result < 0:
                result = 0
            elif neg_ct == nobs and result > 0:
                result = 0
        else:
            result = np.nan
 
        output[i] = result
 
        if not is_monotonic_increasing_bounds:
            nobs = 0
            sum_x = 0.0
            neg_ct = 0
            compensation_remove = 0.0
 
    return output