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[quantized] Add bilinear quantized grid_sample #66879

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@jshen jshen commented Oct 19, 2021

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This adds a quantized implementation for bilinear gridsample. Bicubic interpolation cannot be supported as easily since we rely on the linearity of quantization to operate on the raw values, i.e.

f(q(a), q(b)) = q(f(a, b)) where f is the linear interpolation function.

Differential Revision: D31656893

This adds a quantized implementation for bilinear gridsample. Bicubic interpolation cannot be supported as easily since we rely on the linearity of quantization to operate on the raw values, i.e.

f(q(a), q(b)) = q(f(a, b)) where f is the linear interpolation function.

Differential Revision: [D31656893](https://our.internmc.facebook.com/intern/diff/D31656893/)

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jshen pushed a commit that referenced this pull request Oct 19, 2021
This adds a quantized implementation for bilinear gridsample. Bicubic interpolation cannot be supported as easily since we rely on the linearity of quantization to operate on the raw values, i.e.

f(q(a), q(b)) = q(f(a, b)) where f is the linear interpolation function.

Differential Revision: [D31656893](https://our.internmc.facebook.com/intern/diff/D31656893/)

ghstack-source-id: 140980166
Pull Request resolved: #66879
This adds a quantized implementation for bilinear gridsample. Bicubic interpolation cannot be supported as easily since we rely on the linearity of quantization to operate on the raw values, i.e.

f(q(a), q(b)) = q(f(a, b)) where f is the linear interpolation function.

Differential Revision: [D31656893](https://our.internmc.facebook.com/intern/diff/D31656893/)

[ghstack-poisoned]
jshen pushed a commit that referenced this pull request Oct 22, 2021
Pull Request resolved: #66879

This adds a quantized implementation for bilinear gridsample. Bicubic interpolation cannot be supported as easily since we rely on the linearity of quantization to operate on the raw values, i.e.

f(q(a), q(b)) = q(f(a, b)) where f is the linear interpolation function.
ghstack-source-id: 140980166

Differential Revision: [D31656893](https://our.internmc.facebook.com/intern/diff/D31656893/)
This adds a quantized implementation for bilinear gridsample. Bicubic interpolation cannot be supported as easily since we rely on the linearity of quantization to operate on the raw values, i.e.

f(q(a), q(b)) = q(f(a, b)) where f is the linear interpolation function.

Differential Revision: [D31656893](https://our.internmc.facebook.com/intern/diff/D31656893/)

[ghstack-poisoned]
jshen pushed a commit that referenced this pull request Oct 29, 2021
Pull Request resolved: #66879

This adds a quantized implementation for bilinear gridsample. Bicubic interpolation cannot be supported as easily since we rely on the linearity of quantization to operate on the raw values, i.e.

f(q(a), q(b)) = q(f(a, b)) where f is the linear interpolation function.
ghstack-source-id: 141321116

Differential Revision: [D31656893](https://our.internmc.facebook.com/intern/diff/D31656893/)
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This pull request has been merged in 234bd6d.

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