<!DOCTYPE html>
<html lang="en">

<head>
    <meta charset="UTF-8">
    <meta http-equiv="X-UA-Compatible" content="IE=edge">
    <meta name="viewport" content="width=device-width, initial-scale=1.0">
    <link href="https://cdn.jsdelivr.net/npm/bootstrap@5.3.0-alpha1/dist/css/bootstrap.min.css" rel="stylesheet"
        integrity="sha384-GLhlTQ8iRABdZLl6O3oVMWSktQOp6b7In1Zl3/Jr59b6EGGoI1aFkw7cmDA6j6gD" crossorigin="anonymous">
    <link rel="stylesheet" href="https://cdnjs.cloudflare.com/ajax/libs/font-awesome/6.3.0/css/all.min.css"
        integrity="sha512-SzlrxWUlpfuzQ+pcUCosxcglQRNAq/DZjVsC0lE40xsADsfeQoEypE+enwcOiGjk/bSuGGKHEyjSoQ1zVisanQ=="
        crossorigin="anonymous" referrerpolicy="no-referrer" />
</head>
</html>
import sys
import numpy as np

f2: np.float16
f8: np.float64
c8: np.complex64

# Construction

np.float32(3j)  # E: incompatible type

# Technically the following examples are valid NumPy code. But they
# are not considered a best practice, and people who wish to use the
# stubs should instead do
#
# np.array([1.0, 0.0, 0.0], dtype=np.float32)
# np.array([], dtype=np.complex64)
#
# See e.g. the discussion on the mailing list
#
# https://mail.python.org/pipermail/numpy-discussion/2020-April/080566.html
#
# and the issue
#
# https://github.com/numpy/numpy-stubs/issues/41
#
# for more context.
np.float32([1.0, 0.0, 0.0])  # E: incompatible type
np.complex64([])  # E: incompatible type

np.complex64(1, 2)  # E: Too many arguments
# TODO: protocols (can't check for non-existent protocols w/ __getattr__)

np.datetime64(0)  # E: No overload variant

class A:
    def __float__(self):
        return 1.0


np.int8(A())  # E: incompatible type
np.int16(A())  # E: incompatible type
np.int32(A())  # E: incompatible type
np.int64(A())  # E: incompatible type
np.uint8(A())  # E: incompatible type
np.uint16(A())  # E: incompatible type
np.uint32(A())  # E: incompatible type
np.uint64(A())  # E: incompatible type

np.void("test")  # E: No overload variant
np.void("test", dtype=None)  # E: No overload variant

np.generic(1)  # E: Cannot instantiate abstract class
np.number(1)  # E: Cannot instantiate abstract class
np.integer(1)  # E: Cannot instantiate abstract class
np.inexact(1)  # E: Cannot instantiate abstract class
np.character("test")  # E: Cannot instantiate abstract class
np.flexible(b"test")  # E: Cannot instantiate abstract class

np.float64(value=0.0)  # E: Unexpected keyword argument
np.int64(value=0)  # E: Unexpected keyword argument
np.uint64(value=0)  # E: Unexpected keyword argument
np.complex128(value=0.0j)  # E: Unexpected keyword argument
np.str_(value='bob')  # E: No overload variant
np.bytes_(value=b'test')  # E: No overload variant
np.void(value=b'test')  # E: No overload variant
np.bool_(value=True)  # E: Unexpected keyword argument
np.datetime64(value="2019")  # E: No overload variant
np.timedelta64(value=0)  # E: Unexpected keyword argument

np.bytes_(b"hello", encoding='utf-8')  # E: No overload variant
np.str_("hello", encoding='utf-8')  # E: No overload variant

f8.item(1)  # E: incompatible type
f8.item((0, 1))  # E: incompatible type
f8.squeeze(axis=1)  # E: incompatible type
f8.squeeze(axis=(0, 1))  # E: incompatible type
f8.transpose(1)  # E: incompatible type

def func(a: np.float32) -> None: ...

func(f2)  # E: incompatible type
func(f8)  # E: incompatible type

round(c8)  # E: No overload variant

c8.__getnewargs__()  # E: Invalid self argument
f2.__getnewargs__()  # E: Invalid self argument
f2.hex()  # E: Invalid self argument
np.float16.fromhex("0x0.0p+0")  # E: Invalid self argument
f2.__trunc__()  # E: Invalid self argument
f2.__getformat__("float")  # E: Invalid self argument
