Skip to main content

This package provides modules for manipulating floating point numbers quantization using NumPy.

Project description

License Build Status PyPI version Pyversions

fpq

About

This package provides modules for manipulating floating point numbers quantization using NumPy.

Feature

  • Supports multidimensional arrays.

  • Supports encoding and decoding between 64/32/16-bits floating point numbers and N-bits unsigned normalized integers.

  • Supports encoding and decoding between 64/32/16-bits floating point numbers and N-bits signed normalized integers.

  • Supports encoding and decoding between 3d-vectors and N-bits unsigned integers.

  • Supports encoding and decoding between Quaternions and N-bits unsigned integers.

Compatibility

fpq works with Python 3.4 or higher.

Dependencies

  • NumPy

  • Numba

Installation

pip install fpq

Usage

encoding and decoding between 32-bits floating point numbers and 5-bits unsigned normalized integers.

>>> import numpy as np
>>> from fpq.fp import *
>>> fp = np.array([0., 0.25, 1.], dtype=np.float32)
>>> enc = encode_fp_to_std_unorm(fp, dtype=np.uint8, nbits=5)
>>> enc
array([ 0,  8, 31], dtype=uint8)
>>> dec = decode_std_unorm_to_fp(enc, dtype=np.float32, nbits=5)
>>> dec
array([0.       , 0.2580645, 1.       ], dtype=float32)

encoding and decoding between 32-bits floating point numbers and 5-bits signed normalized integers.

>>> import numpy as np
>>> from fpq.fp import *
>>> fp = np.array([-1., -0.25, -0., 0., 0.25, 1.], dtype=np.float32)
>>> enc = encode_fp_to_std_snorm(fp, dtype=np.uint8, nbits=5)
>>> enc
array([31,  9,  1,  0,  8, 30], dtype=uint8)
>>> dec = decode_std_snorm_to_fp(enc, dtype=np.float32, nbits=5)
>>> dec
array([-1.        , -0.26666668, -0.        ,  0.        ,  0.26666668,
        1.        ], dtype=float32)
>>> enc = encode_fp_to_ogl_snorm(fp, dtype=np.uint8, nbits=5)
>>> enc
array([17, 28,  0,  0,  4, 15], dtype=uint8)
>>> dec = decode_ogl_snorm_to_fp(enc, dtype=np.float32, nbits=5)
>>> dec
array([-1.        , -0.26666668,  0.        ,  0.        ,  0.26666668,
        1.        ], dtype=float32)

encoding and decoding between 3d-vectors and 64-bits(2:20:20:22) unsigned integers.

>>> import math
>>> import random
>>> import numpy as np
>>> from fpq.vector import *
>>> v = np.array([vec_random(norm=100.) for _ in range(3)], dtype=np.float64)
>>> v
array([[-54.70386501, -22.45578546, -52.18237577],
       [-85.46791152,  -5.69032986,   1.21334561],
       [ 16.02886205,   1.94634654, -30.35219431]])
>>> enc = encode_vec_to_uint(v, dtype=np.uint64, nbits=20)
>>> enc
array([ 1313110064653969262,   306332797892602581, 11373476070061802081],
      dtype=uint64)
>>> dec = decode_uint_to_vec(enc, dtype=np.float64, nbits=20)
>>> dec
array([[-54.69957531, -22.45404536, -52.17828412],
       [-85.4662517 ,  -5.69027392,   1.21334561],
       [ 16.02845595,   1.94632843, -30.3514349 ]])

encoding and decoding between Quaternions and 64-bits(2:20:20:20) unsigned integers.

>>> import numpy as np
>>> from fpq.quaternion import *
>>> q = np.array([quat_random() for _ in range(3)], dtype=np.float64)
>>> q
array([[ 0.25679071, -0.15512517,  0.88804262,  0.34838917],
       [ 0.71399177,  0.05729705, -0.69728753, -0.02688697],
       [-0.66527338, -0.62596543, -0.40672262, -0.01246296]])
>>> enc = encode_quat_to_uint(q, dtype=np.uint64)
>>> enc
array([2724532880236077588,   93422189206870975, 1020620101889574962],
      dtype=uint64)
>>> dec = decode_uint_to_quat(enc, dtype=np.float64)
>>> dec
array([[ 0.25679011, -0.15512497,  0.88804308,  0.34838854],
       [ 0.71399243,  0.0572969 , -0.69728688, -0.02688637],
       [ 0.66527395,  0.62596484,  0.40672258,  0.01246335]])

Here are a few examples.

Documentation

For users, docs are now available at https://hasenpfote.github.io/fpq/.

License

This software is released under the MIT License, see LICENSE.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

fpq-0.12.0.tar.gz (280.7 kB view hashes)

Uploaded Source

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page