An AutoDifferentiation Library
Project description
Click here to see full documentation
Final Project - AutoDiffCC Python Package
CS207: Systems Development for Computational Science in Fall 2019
Group 22
- Alex Spiride
- Maja Garbulinska
- Matthew Finney
- Zhiying Xu
Overview
With the evolution of science and the growing computational possibilities, differentiation plays a critical role in a wide range of scientific and industrial applications of computer science. However, the precise computation of symbolic derivatives is computationally expensive, and not even possible in all situations, whereas the finite differencing method is not always accurate or stable. Automatic differentiation, however, provides a computationally efficient way to calculate derivatives, particularly of complex functions, for applications where accuracy and performance at scale are important.
Our package AutoDiffCC provides is an easy to use package that computes derivates of scalar and vector functions using the concept of automatic differentation.
We invite you to take a look at our repo and use AutoDiffCC!
Installation Guide
AutoDiffCC supports package installation via pip
. Users can install the package in the command line with the following command.
pip install autodiffcc
How To Use
To use AutoDiffCC you first have to import it. If you already have it installed, you can do it by just running:
# Import the autodiffcc package
>>> import autodiffcc as ad
Basic Applications
There are several ways in which you can take advantage of AutoDiffCC. Below we present some examples.
Example 1
A simple example using overloaded operators is described below. If you would like to evaluate f = x * x
at x = 2
, first initiate an AD object x
with x = ad.AD(2.0, 1.0)
, where 2
is the value and 1
is the derivative. Then simply define your function f = x * x
and enjoy the results. You can see this example implemented below.
# Overload basic arithmetic operations
>>> x = ad.AD(val = 2.0, 1.0)
>>> f = x * x
>>> print(f.val, f.der)
4.0 4.0
Alternatively, you can just proceed as follows:
>>> def f(x):
>>> return x*x
>>> dfdx = differentiate(f)
>>> dfdx(x= 2.0)
4.0 # this is the derivative value at x=2
Example 2
To use more complex function like cos(x) follow this example using our built-in module ADmath:
>>> x = AD(val = 3.0, der = 1.0)
>>> ADmath.cos(x)
(array(-0.9899924966004454), array(-0.1411200080598672))
Again, you can also do:
>>> def f(x):
>>> return ADmath.cos(x)
>>> dfdx = differentiate(f)
>>> dfdx( x = 3.0)
-0.1411200080598672 # this is the derivative value evaluated at 3.0.
Offered Extentions
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
File details
Details for the file AutoDiffCC-0.1.1.tar.gz
.
File metadata
- Download URL: AutoDiffCC-0.1.1.tar.gz
- Upload date:
- Size: 22.9 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/2.0.0 pkginfo/1.5.0.1 requests/2.22.0 setuptools/41.6.0 requests-toolbelt/0.9.1 tqdm/4.36.1 CPython/3.7.5
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | e627ab5c0f2ed43e9330fc466972525f1fe7480799b84e1b63f778f2a8cecd86 |
|
MD5 | 8596636f4cbb25ba5898798d00298d0b |
|
BLAKE2b-256 | 174db37a064e46508d4712ea6bd10c0d2c77a98210490839678dd60bff7bf9db |
File details
Details for the file AutoDiffCC-0.1.1-py3-none-any.whl
.
File metadata
- Download URL: AutoDiffCC-0.1.1-py3-none-any.whl
- Upload date:
- Size: 28.1 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/2.0.0 pkginfo/1.5.0.1 requests/2.22.0 setuptools/41.6.0 requests-toolbelt/0.9.1 tqdm/4.36.1 CPython/3.7.5
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 9cc0dc8a1b3ad4eaf105ac81108c36cfacf4254676679ebbc2160726b96ac5e8 |
|
MD5 | 3a2f3e56239d16ce42ab9452247deca9 |
|
BLAKE2b-256 | 05bde10aa8ec1377903ef80256317385866f625a8f8bd14d56f1357c5ab9a180 |