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import math |
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import unittest |
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import mlx.core as mx |
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import mlx_tests |
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def rope_orig(x, dims, traditional, base, scale, offset, freqs=None): |
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N = x.shape[-2] |
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dtype = x.dtype |
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half_D = dims // 2 |
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positions = mx.arange(N, dtype=dtype) |
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if isinstance(offset, mx.array) and offset.size > 1: |
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expand = tuple(range(1, x.ndim - 1)) |
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positions = mx.expand_dims(offset, expand) + positions |
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else: |
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positions = offset + positions |
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positions = positions * scale |
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if freqs is None: |
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inv_freqs = mx.exp( |
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-mx.arange(0.0, half_D, dtype=dtype) * (math.log(base) / half_D) |
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) |
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else: |
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inv_freqs = (1 / freqs).astype(x.dtype) |
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theta = mx.expand_dims(positions, -1) * inv_freqs |
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costheta, sintheta = mx.cos(theta), mx.sin(theta) |
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if traditional: |
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x1 = x[..., :dims:2] |
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x2 = x[..., 1:dims:2] |
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rx1 = x1 * costheta - x2 * sintheta |
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rx2 = x1 * sintheta + x2 * costheta |
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rx = mx.concatenate([rx1[..., None], rx2[..., None]], axis=-1) |
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if dims < x.shape[-1]: |
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rx = mx.reshape(rx, (*x.shape[:-1], dims)) |
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rx = mx.concatenate([rx, x[..., dims:]], axis=-1) |
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return mx.reshape(rx, x.shape) |
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else: |
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x1 = x[..., : dims // 2] |
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x2 = x[..., dims // 2 : dims] |
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rx1 = x1 * costheta - x2 * sintheta |
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rx2 = x1 * sintheta + x2 * costheta |
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if dims < x.shape[-1]: |
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rx = mx.concatenate([rx1, rx2, x[..., dims:]], axis=-1) |
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else: |
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rx = mx.concatenate([rx1, rx2], axis=-1) |
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return rx |
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def rms_norm(x, weight, eps): |
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x = x.astype(mx.float32) |
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x = x * mx.rsqrt(x.square().mean(-1, keepdims=True) + eps) |
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return weight * x.astype(weight.dtype) |
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def layer_norm(x, weight, bias, eps): |
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ot = x.dtype |
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x = x.astype(mx.float32) |
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mean = x.mean(axis=-1, keepdims=True) |
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var = x.var(axis=-1, keepdims=True) |
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x = (x - mean) * mx.rsqrt(var + eps) |
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x = x.astype(ot) |
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if weight is not None: |
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x = x * weight |
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if bias is not None: |
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x = x + bias |
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return x |
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class TestFast(mlx_tests.MLXTestCase): |
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def test_rope(self): |
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T = 4 |
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defaults = (8, mx.float32, 10000.0, 1.0, 0, False) |
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tolerances = {mx.float32: 1e-6, mx.float16: 1e-3, mx.bfloat16: 1e-2} |
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dtypes = [mx.float32, mx.float16, mx.bfloat16] |
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bases = [10000.0, 1000000.0] |
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scales = [1.0, 2.0] |
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offsets = [0, 3, mx.array(3)] |
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traditional = [True, False] |
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for traditional in [True, False]: |
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dims, dtype, _, scale, offset, _ = defaults |
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for base in bases: |
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x = mx.random.uniform(shape=(2, T, dims)).astype(dtype) |
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rx = rope_orig(x, dims, traditional, base, scale, offset) |
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rx_fast = mx.fast.rope( |
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x, |
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dims, |
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traditional=traditional, |
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base=base, |
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scale=scale, |
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offset=offset, |
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) |
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self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
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dims, _, base, scale, offset, _ = defaults |
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for dtype in dtypes: |
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x = mx.random.uniform(shape=(2, T, dims)).astype(dtype) |
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ry = rope_orig( |
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x.astype(mx.float32), dims, traditional, base, scale, offset |
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) |
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rx = rope_orig(x, dims, traditional, base, scale, offset) |
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rx_fast = mx.fast.rope( |
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x, |
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dims, |
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traditional=traditional, |
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base=base, |
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scale=scale, |
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offset=offset, |
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) |
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if dtype != mx.float32: |
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self.assertLessEqual( |
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mx.abs(ry - rx_fast).max(), mx.abs(ry - rx).max() |
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) |
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self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
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dims, dtype, base, scale, _, _ = defaults |
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for offset in offsets: |
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x = mx.random.uniform(shape=(2, T, dims)).astype(dtype) |
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rx = rope_orig(x, dims, traditional, base, scale, offset) |
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rx_fast = mx.fast.rope( |
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x, |
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dims, |
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traditional=traditional, |
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base=base, |
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scale=scale, |
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offset=offset, |
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) |
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self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
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dims, dtype, base, _, offset, _ = defaults |
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for scale in scales: |
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x = mx.random.uniform(shape=(2, T, dims)).astype(dtype) |
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rx = rope_orig(x, dims, traditional, base, scale, offset) |
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rx_fast = mx.fast.rope( |
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x, |
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dims, |
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traditional=traditional, |
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base=base, |
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scale=scale, |
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offset=offset, |
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) |
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self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
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dims, _, base, scale, offset, traditional = defaults |
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x = mx.random.uniform(shape=(1, 1, 4, dims)).swapaxes(1, 2) |
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rx = rope_orig(x, dims, traditional, base, scale, offset) |
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rx_fast = mx.fast.rope( |
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1.0 * x, |
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dims, |
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traditional=traditional, |
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base=base, |
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scale=scale, |
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offset=offset, |
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) |
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self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[mx.float32]) |
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dims, _, base, scale, offset, traditional = defaults |
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x = (mx.random.uniform(shape=(2, T, dims)) * 10).astype(mx.int32) |
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with self.assertRaises(ValueError): |
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y = mx.fast.rope( |
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x, dims, traditional=traditional, base=base, scale=scale, offset=offset |
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) |
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def test_rope_with_freqs(self): |
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mx.random.seed(0) |
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T = 4 |
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dims = 8 |
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x = mx.random.uniform(shape=(2, T, dims)) |
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with self.assertRaises(ValueError): |
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freqs = mx.random.uniform(shape=(dims - 1,)) |
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mx.fast.rope( |
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x, |
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dims, |
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traditional=False, |
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base=None, |
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scale=1.0, |
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offset=0, |
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freqs=freqs, |
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) |
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with self.assertRaises(ValueError): |
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freqs = mx.random.uniform(shape=(1, dims)) |
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mx.fast.rope( |
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x, |
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dims, |
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traditional=False, |
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base=None, |
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scale=1.0, |
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offset=0, |
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freqs=freqs, |
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) |
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freqs = mx.random.uniform(shape=(dims // 2,)) |
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tolerances = {mx.float32: 1e-5, mx.float16: 1e-2} |
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for dtype in [mx.float32, mx.float16]: |
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x_ = x.astype(dtype) |
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rx = rope_orig(x_, dims, False, None, 1.0, 0, freqs) |
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rx_fast = mx.fast.rope( |
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x_, |
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dims, |
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traditional=False, |
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base=None, |
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scale=1.0, |
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offset=0, |
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freqs=freqs, |
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) |
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self.assertEqual(dtype, rx.dtype) |
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self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
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return |
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x = mx.random.uniform(shape=(1, 1, dims)) |
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rx = rope_orig(x, dims, False, None, 1.0, 0, freqs) |
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rx_fast = mx.fast.rope( |
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x, |
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dims, |
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traditional=False, |
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base=None, |
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scale=1.0, |
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offset=0, |
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freqs=freqs, |
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) |
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self.assertLess(mx.abs(rx - rx_fast).max(), 1e-5) |
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f1 = lambda x, y: (rope_orig(x, dims, False, None, 1.0, 0, freqs) * y).sum() |
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f2 = lambda x, y: ( |
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mx.fast.rope( |
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x, |
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dims, |
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traditional=False, |
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base=None, |
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scale=1.0, |
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offset=0, |
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freqs=freqs, |
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) |
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* y |
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).sum() |
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x = mx.random.uniform(shape=(2, 4, dims)) |
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y = mx.random.uniform(shape=(2, 4, dims)) |
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g1 = mx.grad(f1)(x, y) |
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g2 = mx.grad(f2)(x, y) |
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self.assertLess(mx.abs(g1 - g2).max(), 1e-5) |
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def test_rope_grad(self): |
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D = 32 |
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defaults = (D, 10000.0, 1.0, 0, False) |
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for dims in (D, D // 2): |
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for traditional in (True, False): |
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_, base, scale, offset, _ = defaults |
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f1 = lambda x, y: ( |
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rope_orig(x, dims, traditional, base, scale, offset) * y |
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).sum() |
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f2 = lambda x, y: ( |
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mx.fast.rope( |
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x, |
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dims, |
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traditional=traditional, |
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base=base, |
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scale=scale, |
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offset=offset, |
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) |
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* y |
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).sum() |
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x = mx.random.uniform(shape=(2, 100, D)) |
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y = mx.random.uniform(shape=(2, 100, D)) |
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g1 = mx.grad(f1)(x, y) |
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g2 = mx.grad(f2)(x, y) |
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self.assertLess(mx.abs(g1 - g2).max(), 1e-5) |
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def test_rope_batch(self): |
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T = 4 |
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base = 10000.0 |
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scale = 1.0 |
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traditional = True |
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batch_sizes = [3, 8, 11] |
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num_heads = [1, 3, 5] |
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dims = 32 |
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x = mx.random.uniform(shape=(8, 4, T, dims)) |
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offset = mx.array([1, 2, 3]) |
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with self.assertRaises(ValueError): |
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mx.fast.rope( |
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x, |
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dims, |
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traditional=traditional, |
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base=base, |
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scale=scale, |
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offset=offset, |
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) |
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for batch_size in batch_sizes: |
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for n_head in num_heads: |
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x = mx.random.uniform(shape=(batch_size, n_head, T, dims)) |
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offset = mx.arange(batch_size) |
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rx = rope_orig(x, dims, traditional, base, scale, offset) |
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rx_fast = mx.fast.rope( |
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x, |
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dims, |
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traditional=traditional, |
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base=base, |
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scale=scale, |
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offset=offset, |
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) |
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self.assertLess(mx.abs(rx - rx_fast).max(), 1e-5) |
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x = mx.random.normal(shape=(2, 6, 8, 64)).transpose(0, 2, 1, 3) |
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dims = 64 |
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offset = 0 |
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rx_fast = mx.fast.rope( |
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x, dims, traditional=traditional, scale=scale, base=base, offset=offset |
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) |
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rx_fast_single = mx.fast.rope( |
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x[0:1], dims, traditional=traditional, scale=scale, base=base, offset=offset |
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) |
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rx = rope_orig(x, dims, traditional, base, scale, offset) |
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self.assertLess(mx.abs(rx - rx_fast).max(), 1e-5) |
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def test_rms_norm(self): |
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tolerances = {mx.float32: 1e-6, mx.float16: 1e-3, mx.bfloat16: 1e-2} |
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dtypes = [mx.float32, mx.float16, mx.bfloat16] |
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epss = [1e-3, 1e-5] |
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dimss = [31, 32, 33] |
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defaults = (mx.float32, 1e-5, 32) |
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for dtype in dtypes: |
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_, eps, dims = defaults |
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x = mx.random.uniform( |
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shape=( |
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2, |
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dims, |
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) |
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).astype(dtype) |
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weight = mx.random.uniform(shape=(dims,)).astype(dtype) |
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rx = rms_norm(x, weight, eps) |
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rx_fast = mx.fast.rms_norm(x, weight, eps) |
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self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
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rx = rms_norm(x, mx.ones_like(weight), eps) |
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rx_fast = mx.fast.rms_norm(x, None, eps) |
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self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
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for eps in epss: |
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dtype, _, dims = defaults |
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x = mx.random.uniform(shape=(2, dims)).astype(dtype) |
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weight = mx.random.uniform(shape=(dims,)).astype(dtype) |
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rx = rms_norm(x, weight, eps) |
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rx_fast = mx.fast.rms_norm(x, weight, eps) |
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self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
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rx = rms_norm(x, mx.ones_like(weight), eps) |
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rx_fast = mx.fast.rms_norm(x, None, eps) |
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self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
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for dims in dimss: |
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dtype, eps, _ = defaults |
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x = mx.random.uniform(shape=(2, dims)).astype(dtype) |
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weight = mx.random.uniform(shape=(dims,)).astype(dtype) |
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rx = rms_norm(x, weight, eps) |
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rx_fast = mx.fast.rms_norm(x, weight, eps) |
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self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
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rx = rms_norm(x, mx.ones_like(weight), eps) |
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rx_fast = mx.fast.rms_norm(x, None, eps) |
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self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
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dims, dtype, eps = 4099, mx.float32, 1e-5 |
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x = mx.random.uniform(shape=(dims,)).astype(dtype) |
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weight = mx.random.uniform(shape=(dims,)).astype(dtype) |
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rx = rms_norm(x, weight, eps) |
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rx_fast = mx.fast.rms_norm(x, weight, eps) |
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self.assertLess(mx.abs(rx - rx_fast).max(), 1e-6) |
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with self.assertRaises(ValueError): |
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x = mx.random.uniform(shape=(1, 5)) |
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mx.fast.rms_norm(x, mx.ones((4,)), 1e-5) |
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def test_rms_norm_grad(self): |
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D = 32 |
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eps = 1e-5 |
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f1 = lambda x, w, y: (rms_norm(x, w, eps) * y).sum() |
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f2 = lambda x, w, y: (mx.fast.rms_norm(x, w, eps) * y).sum() |
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f3 = lambda x, y: (rms_norm(x, mx.ones((x.shape[-1],)), eps) * y).sum() |
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f4 = lambda x, y: (mx.fast.rms_norm(x, None, eps) * y).sum() |
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x = mx.random.uniform(shape=(8, 100, D)) |
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w = mx.random.uniform(shape=(D,)) |
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y = mx.random.uniform(shape=(8, 100, D)) |
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gx1, gw1 = mx.grad(f1, argnums=(0, 1))(x, w, y) |
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gx2, gw2 = mx.grad(f2, argnums=(0, 1))(x, w, y) |
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self.assertLess(mx.abs(gx1 - gx2).max(), 1e-5) |
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self.assertLess(mx.abs(gw1 - gw2).max() / mx.abs(gw1).mean(), 1e-5) |
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gx1 = mx.grad(f3, argnums=(0,))(x, y) |
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gx2 = mx.grad(f4, argnums=(0,))(x, y) |
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self.assertLess(mx.abs(gx1 - gx2).max(), 1e-5) |
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D = 8192 |
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x = mx.random.uniform(shape=(2, 2, D)) |
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w = mx.random.uniform(shape=(D,)) |
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y = mx.random.uniform(shape=(2, 2, D)) |
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gx1, gw1 = mx.grad(f1, argnums=(0, 1))(x, w, y) |
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gx2, gw2 = mx.grad(f2, argnums=(0, 1))(x, w, y) |
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self.assertLess(mx.abs(gx1 - gx2).max(), 1e-5) |
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self.assertLess(mx.abs(gw1 - gw2).max() / mx.abs(gw1).mean(), 1e-5) |
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gx1 = mx.grad(f3, argnums=(0,))(x, y) |
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gx2 = mx.grad(f4, argnums=(0,))(x, y) |
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self.assertLess(mx.abs(gx1 - gx2).max(), 1e-5) |
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def gf(f): |
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def inner(x, w, y): |
|
|
gx, gw = mx.grad(f, argnums=(0, 1))(x, w, y) |
|
|
return (gx + gw).sum() |
|
|
|
|
|
return inner |
|
|
|
|
|
gx1, gw1 = mx.grad(gf(f1), argnums=(0, 1))(x, w, y) |
|
|
gx2, gw2 = mx.grad(gf(f2), argnums=(0, 1))(x, w, y) |
|
|
self.assertLess(mx.abs(gx1 - gx2).max(), 1e-5) |
|
|
self.assertLess(mx.abs(gw1 - gw2).max() / mx.abs(gw1).mean(), 1e-5) |
|
|
|
|
|
def test_layer_norm(self): |
|
|
|
|
|
tolerances = {mx.float32: 1e-5, mx.float16: 5e-3, mx.bfloat16: 5e-2} |
|
|
|
|
|
dtypes = [mx.float32, mx.float16, mx.bfloat16] |
|
|
epss = [1e-3, 1e-5] |
|
|
dimss = [31, 32, 33] |
|
|
defaults = (mx.float32, 1e-5, 32) |
|
|
|
|
|
for dtype in dtypes: |
|
|
_, eps, dims = defaults |
|
|
x = mx.random.uniform( |
|
|
shape=( |
|
|
2, |
|
|
dims, |
|
|
) |
|
|
).astype(dtype) |
|
|
weight = mx.random.uniform(shape=(dims,)).astype(dtype) |
|
|
bias = mx.random.uniform(shape=(dims,)).astype(dtype) |
|
|
rx = layer_norm(x, weight, bias, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, weight, bias, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
rx = layer_norm(x, weight, None, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, weight, None, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
rx = layer_norm(x, None, bias, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, None, bias, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
rx = layer_norm(x, None, None, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, None, None, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
|
|
|
for eps in epss: |
|
|
dtype, _, dims = defaults |
|
|
x = mx.random.uniform(shape=(2, dims)).astype(dtype) |
|
|
weight = mx.random.uniform(shape=(dims,)).astype(dtype) |
|
|
bias = mx.random.uniform(shape=(dims,)).astype(dtype) |
|
|
rx = layer_norm(x, weight, bias, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, weight, bias, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
rx = layer_norm(x, weight, None, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, weight, None, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
rx = layer_norm(x, None, bias, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, None, bias, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
rx = layer_norm(x, None, None, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, None, None, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
|
|
|
for dims in dimss: |
|
|
dtype, eps, _ = defaults |
|
|
x = mx.random.uniform(shape=(2, dims)).astype(dtype) |
|
|
weight = mx.random.uniform(shape=(dims,)).astype(dtype) |
|
|
bias = mx.random.uniform(shape=(dims,)).astype(dtype) |
|
|
rx = layer_norm(x, weight, bias, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, weight, bias, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
rx = layer_norm(x, weight, None, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, weight, None, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
rx = layer_norm(x, None, bias, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, None, bias, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
rx = layer_norm(x, None, None, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, None, None, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
|
|
|
|
|
|
dims, dtype, eps = 4099, mx.float32, 1e-5 |
|
|
x = mx.random.uniform(shape=(dims,)).astype(dtype) |
|
|
weight = mx.random.uniform(shape=(dims,)).astype(dtype) |
|
|
bias = mx.random.uniform(shape=(dims,)).astype(dtype) |
|
|
rx = layer_norm(x, weight, bias, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, weight, bias, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
rx = layer_norm(x, weight, None, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, weight, None, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
rx = layer_norm(x, None, bias, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, None, bias, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
rx = layer_norm(x, None, None, eps) |
|
|
rx_fast = mx.fast.layer_norm(x, None, None, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), tolerances[dtype]) |
|
|
|
|
|
def test_slice_into_layer_norm(self): |
|
|
dim = 128 |
|
|
eps = 1e-5 |
|
|
x = mx.random.uniform(shape=(8, 100, 128))[:, 99:] |
|
|
rx_fast = mx.fast.layer_norm(x, weight=None, bias=None, eps=eps) |
|
|
rx = layer_norm(x, None, None, eps) |
|
|
self.assertLess(mx.abs(rx - rx_fast).max(), 1e-4) |
|
|
|
|
|
def test_layer_norm_grad(self): |
|
|
D = 32 |
|
|
eps = 1e-5 |
|
|
f1 = lambda x, w, b, y: (layer_norm(x, w, b, eps) * y).sum() |
|
|
f2 = lambda x, w, b, y: (mx.fast.layer_norm(x, w, b, eps) * y).sum() |
|
|
|
|
|
x = mx.random.uniform(shape=(8, 100, D)) |
|
|
w = mx.random.uniform(shape=(D,)) |
|
|
b = mx.random.uniform(shape=(D,)) |
|
|
y = mx.random.uniform(shape=(8, 100, D)) |
|
|
|
|
|
gx1, gw1, gb1 = mx.grad(f1, argnums=(0, 1, 2))(x, w, b, y) |
|
|
gx2, gw2, gb2 = mx.grad(f2, argnums=(0, 1, 2))(x, w, b, y) |
|
|
self.assertLess(mx.abs(gx1 - gx2).max(), 1e-5) |
|
|
self.assertLess(mx.abs(gw1 - gw2).max() / mx.abs(gw1).mean(), 1e-5) |
|
|
self.assertLess(mx.abs(gb1 - gb2).max() / mx.abs(gb1).mean(), 1e-5) |
|
|
|
|
|
D = 8192 |
|
|
x = mx.random.uniform(shape=(8, 100, D)) |
|
|
w = mx.random.uniform(shape=(D,)) |
|
|
b = mx.random.uniform(shape=(D,)) |
|
|
y = mx.random.uniform(shape=(8, 100, D)) |
|
|
|
|
|
gx1, gw1, gb1 = mx.grad(f1, argnums=(0, 1, 2))(x, w, b, y) |
|
|
gx2, gw2, gb2 = mx.grad(f2, argnums=(0, 1, 2))(x, w, b, y) |
|
|
self.assertLess(mx.abs(gx1 - gx2).max(), 5e-5) |
|
|
self.assertLess(mx.abs(gw1 - gw2).max() / mx.abs(gw1).mean(), 5e-5) |
|
|
self.assertLess(mx.abs(gb1 - gb2).max() / mx.abs(gb1).mean(), 5e-5) |
|
|
|
|
|
def gf(f): |
|
|
def inner(x, w, b, y): |
|
|
gx, gw, gb = mx.grad(f, argnums=(0, 1, 2))(x, w, b, y) |
|
|
return ((gx + gw + gb) * y).sum() |
|
|
|
|
|
return inner |
|
|
|
|
|
gx1, gw1, gb1 = mx.grad(gf(f1), argnums=(0, 1, 2))(x, w, b, y) |
|
|
gx2, gw2, gb2 = mx.grad(gf(f2), argnums=(0, 1, 2))(x, w, b, y) |
|
|
self.assertLess(mx.abs(gx1 - gx2).max() / mx.abs(gx1).mean(), 5e-5) |
|
|
self.assertLess(mx.abs(gw1 - gw2).max() / mx.abs(gw1).mean(), 5e-5) |
|
|
self.assertLess(mx.abs(gb1).max(), 1e-9) |
|
|
self.assertLess(mx.abs(gb2).max(), 1e-9) |
|
|
|
|
|
def test_layer_norm_grad_no_params(self): |
|
|
eps = 1e-5 |
|
|
f1 = lambda x: layer_norm(x, None, None, eps).sum() |
|
|
f2 = lambda x: mx.fast.layer_norm(x, None, None, eps).sum() |
|
|
x = mx.random.normal(shape=(2, 2, 8)) |
|
|
mx.eval(x) |
|
|
|
|
|
gx1 = mx.grad(f1)(x) |
|
|
gx2 = mx.grad(f2)(x) |
|
|
self.assertTrue(mx.allclose(gx1, gx2, atol=1e-6)) |
|
|
|
|
|
def test_layer_norm_grad_params(self): |
|
|
eps = 1e-5 |
|
|
f1 = lambda params, x: (layer_norm(x, params[0], params[1], eps)).sum() |
|
|
f2 = lambda params, x: (mx.fast.layer_norm(x, params[0], params[1], eps)).sum() |
|
|
|
|
|
w = mx.ones((8,)) |
|
|
b = mx.zeros((8,)) |
|
|
x = mx.random.normal(shape=(2, 2, 8)) |
|
|
mx.eval(x, w, b) |
|
|
|
|
|
gw1, gb1 = mx.grad(f1)((w, b), x) |
|
|
gw2, gb2 = mx.grad(f2)((w, b), x) |
|
|
self.assertLess(mx.abs(gw1 - gw2).max() / mx.abs(gw1).mean(), 1e-5) |
|
|
self.assertLess(mx.abs(gb1 - gb2).max() / mx.abs(gb1).mean(), 1e-5) |
|
|
|
|
|
def test_fast_transforms(self): |
|
|
x = mx.random.uniform(shape=(2, 2, 8)) |
|
|
|
|
|
defaults = (8, False, 10000.0, 1.0, 0) |
|
|
dims, traditional, base, scale, offset = defaults |
|
|
|
|
|
|
|
|
_, vjp_out = mx.vjp(lambda x: rope_orig(x, *defaults), (x,), (mx.ones_like(x),)) |
|
|
_, vjp_fast_out = mx.vjp( |
|
|
lambda x: mx.fast.rope( |
|
|
x, dims, traditional=traditional, base=base, scale=scale, offset=offset |
|
|
), |
|
|
(x,), |
|
|
(mx.ones_like(x),), |
|
|
) |
|
|
self.assertTrue(mx.allclose(vjp_out[0], vjp_fast_out[0])) |
|
|
|
|
|
|
|
|
_, jvp_out = mx.jvp(lambda x: rope_orig(x, *defaults), (x,), (mx.ones_like(x),)) |
|
|
_, jvp_fast_out = mx.jvp( |
|
|
lambda x: mx.fast.rope( |
|
|
x, dims, traditional=traditional, base=base, scale=scale, offset=offset |
|
|
), |
|
|
(x,), |
|
|
(mx.ones_like(x),), |
|
|
) |
|
|
self.assertTrue(mx.allclose(jvp_out[0], jvp_fast_out[0])) |
|
|
|
|
|
|
|
|
x = mx.random.uniform(shape=(2, 2, 2, 8)) |
|
|
vmap_out = mx.vmap(lambda x: rope_orig(x, *defaults))(x) |
|
|
vmap_fast_out = mx.vmap( |
|
|
lambda x: mx.fast.rope( |
|
|
x, dims, traditional=traditional, base=base, scale=scale, offset=offset |
|
|
) |
|
|
)(x) |
|
|
self.assertTrue(mx.allclose(vmap_out, vmap_fast_out)) |
|
|
|
|
|
@unittest.skipIf(not mx.is_available(mx.gpu), "No GPU available") |
|
|
def test_custom_kernel_basic(self): |
|
|
if mx.metal.is_available(): |
|
|
source = """ |
|
|
uint elem = thread_position_in_grid.x; |
|
|
out1[elem] = a[elem]; |
|
|
""" |
|
|
custom_kernel = mx.fast.metal_kernel |
|
|
elif mx.cuda.is_available(): |
|
|
source = """ |
|
|
auto elem = cooperative_groups::this_grid().thread_rank(); |
|
|
out1[elem] = a[elem]; |
|
|
""" |
|
|
custom_kernel = mx.fast.cuda_kernel |
|
|
|
|
|
mx.random.seed(7) |
|
|
a = mx.random.normal(shape=(2, 2)) |
|
|
kernel = custom_kernel( |
|
|
name="basic", |
|
|
input_names=["a"], |
|
|
output_names=["out1"], |
|
|
source=source, |
|
|
) |
|
|
out = kernel( |
|
|
inputs=[a], |
|
|
grid=(4, 1, 1), |
|
|
threadgroup=(2, 1, 1), |
|
|
output_shapes=[(2, 2)], |
|
|
output_dtypes=[mx.float32], |
|
|
stream=mx.gpu, |
|
|
) |
|
|
self.assertTrue(mx.allclose(out[0], a)) |
|
|
|
|
|
@unittest.skipIf(not mx.is_available(mx.gpu), "No GPU available") |
|
|
def test_custom_kernel_args(self): |
|
|
if mx.metal.is_available(): |
|
|
source = """ |
|
|
uint elem = thread_position_in_grid.x; |
|
|
T tmp = a[0]; |
|
|
if (e) { |
|
|
out1[elem] = a[1] + b[2] + c[3] + d + f; |
|
|
} else { |
|
|
out1[elem] = 1; |
|
|
} |
|
|
out2[elem] = a[1] + b[2] + c[1] - d; |
|
|
""" |
|
|
custom_kernel = mx.fast.metal_kernel |
|
|
elif mx.cuda.is_available(): |
|
|
source = """ |
|
|
auto elem = cooperative_groups::this_grid().thread_rank(); |
|
|
T tmp = a[0]; |
|
|
if (e) { |
|
|
out1[elem] = a[1] + b[2] + static_cast<float>(c[3]) + d[0] + f; |
|
|
} else { |
|
|
out1[elem] = 1; |
|
|
} |
|
|
out2[elem] = a[1] + b[2] + static_cast<float>(c[1]) - d[0]; |
|
|
""" |
|
|
custom_kernel = mx.fast.cuda_kernel |
|
|
|
|
|
mx.random.seed(7) |
|
|
a = mx.random.normal(shape=(3, 6)) |
|
|
c = mx.random.normal(shape=(2, 2)).astype(mx.bfloat16) |
|
|
|
|
|
kernel = custom_kernel( |
|
|
name="arg_test", |
|
|
input_names=["a", "b", "c", "d"], |
|
|
output_names=["out1", "out2"], |
|
|
source=source, |
|
|
) |
|
|
out = kernel( |
|
|
inputs=[ |
|
|
a, |
|
|
mx.array([3, 4, 5]), |
|
|
c, |
|
|
7.3, |
|
|
], |
|
|
template=[ |
|
|
("e", True), |
|
|
("f", 3), |
|
|
("T", mx.float16), |
|
|
], |
|
|
grid=(6, 1, 1), |
|
|
threadgroup=(2, 1, 1), |
|
|
output_shapes=[(3, 2), (3, 2)], |
|
|
output_dtypes=[mx.float32, mx.int32], |
|
|
stream=mx.gpu, |
|
|
) |
|
|
|
|
|
self.assertTrue(mx.allclose(out[0], mx.full((3, 2), 14.0484))) |
|
|
self.assertTrue(mx.allclose(out[1], mx.full((3, 2), -2, dtype=mx.int32))) |
|
|
|
|
|
@unittest.skipIf(not mx.is_available(mx.gpu), "No GPU available") |
|
|
def test_custom_kernel_strides(self): |
|
|
if mx.metal.is_available(): |
|
|
source = """ |
|
|
uint elem = thread_position_in_grid.x; |
|
|
uint loc = elem_to_loc(elem, inp_shape, inp_strides, inp_ndim); |
|
|
T tmp = inp[loc]; |
|
|
out[elem] = metal::precise::exp(tmp) * threads_per_simdgroup; |
|
|
""" |
|
|
source_contig = """ |
|
|
uint elem = thread_position_in_grid.x; |
|
|
T tmp = inp[elem]; |
|
|
out[elem] = metal::precise::exp(tmp) * threads_per_simdgroup; |
|
|
""" |
|
|
custom_kernel = mx.fast.metal_kernel |
|
|
elif mx.cuda.is_available(): |
|
|
source = """ |
|
|
auto elem = cooperative_groups::this_grid().thread_rank(); |
|
|
auto loc = elem_to_loc(elem, inp_shape.data(), inp_strides.data(), inp_ndim); |
|
|
T tmp = inp[loc]; |
|
|
out[elem] = exp(tmp) * WARP_SIZE; |
|
|
""" |
|
|
source_contig = """ |
|
|
auto elem = cooperative_groups::this_grid().thread_rank(); |
|
|
T tmp = inp[elem]; |
|
|
out[elem] = exp(tmp) * WARP_SIZE; |
|
|
""" |
|
|
custom_kernel = mx.fast.cuda_kernel |
|
|
|
|
|
mx.random.seed(7) |
|
|
a = mx.random.normal(shape=(3, 6)) |
|
|
|
|
|
|
|
|
a = mx.tile(a[::2], [4, 1]) |
|
|
|
|
|
for contig in [True, False]: |
|
|
kernel = custom_kernel( |
|
|
name="myexp" + str(contig), |
|
|
input_names=["inp"], |
|
|
output_names=["out"], |
|
|
source=source_contig if contig else source, |
|
|
ensure_row_contiguous=contig, |
|
|
) |
|
|
outputs = kernel( |
|
|
inputs=[a], |
|
|
template=[("T", mx.float32)], |
|
|
grid=(a.size, 1, 1), |
|
|
threadgroup=(256, 1, 1), |
|
|
output_shapes=[a.shape], |
|
|
output_dtypes=[a.dtype], |
|
|
stream=mx.gpu, |
|
|
) |
|
|
self.assertTrue(mx.allclose(mx.exp(a) * 32, outputs[0])) |
|
|
|
|
|
@unittest.skipIf(not mx.is_available(mx.gpu), "No GPU available") |
|
|
def test_custom_kernel_helper(self): |
|
|
if mx.metal.is_available(): |
|
|
header = """ |
|
|
template <typename T> |
|
|
T do_exp(T x) { |
|
|
return metal::precise::exp(x); |
|
|
} |
|
|
""" |
|
|
source = """ |
|
|
uint elem = thread_position_in_grid.x; |
|
|
out1[elem] = do_exp(a[elem]); |
|
|
""" |
|
|
custom_kernel = mx.fast.metal_kernel |
|
|
elif mx.cuda.is_available(): |
|
|
header = """ |
|
|
template <typename T> |
|
|
__device__ T do_exp(T x) { |
|
|
return exp(x); |
|
|
} |
|
|
""" |
|
|
source = """ |
|
|
auto elem = cooperative_groups::this_grid().thread_rank(); |
|
|
out1[elem] = do_exp(a[elem]); |
|
|
""" |
|
|
custom_kernel = mx.fast.cuda_kernel |
|
|
|
|
|
mx.random.seed(7) |
|
|
a = mx.random.normal(shape=(2, 2)) |
|
|
kernel = custom_kernel( |
|
|
name="helper", |
|
|
input_names=["a"], |
|
|
output_names=["out1"], |
|
|
header=header, |
|
|
source=source, |
|
|
) |
|
|
out = kernel( |
|
|
inputs=[a], |
|
|
grid=(4, 1, 1), |
|
|
threadgroup=(2, 1, 1), |
|
|
output_shapes=[(2, 2)], |
|
|
output_dtypes=[mx.float32], |
|
|
stream=mx.gpu, |
|
|
) |
|
|
self.assertTrue(mx.allclose(out[0], mx.exp(a))) |
|
|
|
|
|
@unittest.skipIf(not mx.is_available(mx.gpu), "No GPU available") |
|
|
def test_custom_kernel_attributes(self): |
|
|
if mx.metal.is_available(): |
|
|
source = "out[0] = threads_per_threadgroup.x;" |
|
|
custom_kernel = mx.fast.metal_kernel |
|
|
elif mx.cuda.is_available(): |
|
|
source = "out[0] = blockDim.x;" |
|
|
custom_kernel = mx.fast.cuda_kernel |
|
|
|
|
|
a = mx.zeros(shape=(1, 1)) |
|
|
kernel = custom_kernel( |
|
|
name="test_fun", |
|
|
input_names=["a"], |
|
|
output_names=["out"], |
|
|
source=source, |
|
|
) |
|
|
out = kernel( |
|
|
inputs=[a], |
|
|
grid=(2, 1, 1), |
|
|
threadgroup=(2, 1, 1), |
|
|
output_shapes=[(1, 1)], |
|
|
output_dtypes=[mx.uint32], |
|
|
stream=mx.gpu, |
|
|
)[0] |
|
|
self.assertEqual(out.item(), 2) |
|
|
|
|
|
@unittest.skipIf(not mx.metal.is_available(), "Metal is not available") |
|
|
def test_custom_kernel_caching(self): |
|
|
def call_kernel(a: mx.array, source): |
|
|
kernel = mx.fast.metal_kernel( |
|
|
name="my_kernel", |
|
|
input_names=["inp"], |
|
|
output_names=["out"], |
|
|
source=source, |
|
|
) |
|
|
return kernel( |
|
|
inputs=[a], |
|
|
grid=(a.size, 1, 1), |
|
|
threadgroup=(a.size, 1, 1), |
|
|
output_shapes=[a.shape], |
|
|
output_dtypes=[a.dtype], |
|
|
stream=mx.gpu, |
|
|
)[0] |
|
|
|
|
|
a = mx.random.normal(shape=(32,)) |
|
|
|
|
|
source = """ |
|
|
uint elem = thread_position_in_grid.x; |
|
|
out[elem] = 0.0; |
|
|
""" |
|
|
|
|
|
out = call_kernel(a, source) |
|
|
self.assertTrue(mx.array_equal(out, mx.zeros_like(out))) |
|
|
|
|
|
source = """ |
|
|
uint elem = thread_position_in_grid.x; |
|
|
out[elem] = 1.0; |
|
|
""" |
|
|
out = call_kernel(a, source) |
|
|
self.assertTrue(mx.array_equal(out, mx.ones_like(out))) |
|
|
|
|
|
|
|
|
if __name__ == "__main__": |
|
|
mlx_tests.MLXTestRunner() |
|
|
|