An easy module for building data pipe in python.
Project description
# pypeup - Piping Up with Python
This is a simple python module to help you to build a data pipe in python.
## First Glance
Suppose you have a bunch of functions dealing with data of the same structure (e.g they are all `array`, `integer`, ...etc) and you want to pipe them up for complex computations, `pypeup` is here at your service.
With `pypeup`, you can write something like this:
```{python}
from pypeup import DataPipe
# Note that these two funtion all return the same data structure and their
# first arguments are all data.
# In this example, the data are all of type list.
def fun1(data, x):
"""
x: <number>
data: <list>
"""
return [a + x for a in data]
def fun2(data, ind):
"""
ind: <integer>
data: <list>
"""
return data[:min(ind, len(data) - 1)]
class MyPipe(DataPipe):
pass
my_pipe = MyPipe([1, 2, 3, 4, 5])
my_pipe.register(fun1) # Use register method to add any method you like
my_pipe.register(fun2) # for your data.
my_pipe.fun1(1).fun2(3).fun2(2).fun1(3) # Pipe the function up at your wish
my_pipe.data # Access the data by the `data` attribute
# >>> [5, 6]
```
Also, you can build up the pipe by one class declairation:
```{python}
from pypeup import DataPipe
import numpy as np
class MyPipe2(DataPipe):
def add(self, x):
return self.data + x
def sub(self, x):
return self.data - x
def mul(self, x):
return self.data * x
pipe2 = MyPipe2(np.array([1, 2, 3]))
pipe2.add(3).sub(2).mul(4)
pipe2.data
# >>> np.array([8, 12, 16])
```
You can use private method as normal python:
```{python}
from pypeup import DataPipe
import math
class MyPipe(DataPipe):
def fun(self, x):
return self._magic(x)
def _magic(self, x):
print "Where the magic happens!"
return self.data + math.sin(x)
pipe = MyPipe(0.)
print pipe.fun(math.pi / 2).data
# >>> 1.
```
In order to protect the data inside the pipe, any modification to the `data` which is outside of the execution context of the methods of the pipe is not allowed and an `ExecutionContextError` will be raised.
```{python}
from pypeup import DataPipe
class MyPipe(DataPipe):
def addOne(self):
return self.data + 1
pipe = MyPipe(10)
pipe.addOne(1) # OK.
pipe.data = 11 # Not OK.
```
There are some limits on the functions which can be applied to `pypeup`.
See [Limits](https://github.com/dboyliao/pypipe#limits) for detail.
## Limits
As mentioned above, there are few limits on the functions that can be used with `pypeup`:
- The current data can be access through `self.data`.
- This means that if you want to overwrite the `__init__` by yourself, make sure you have an attribute the serve as the same purpose as `data`. Note that `data` is a property with type-checking.
- All the functions' first argument must be `data`. (But not method, see below)
- It doesn't mean you have to name it as `data`, but you have to be sure that all the functions' first argument will hold the data you want to process.
- If the function is defined as an instance method, you only need to pass all the parameters needed to work with the data which can be access through `self.data`.
- If the instance method is private method (method with the name start with one `_`) will work just like normal instance method.
- All the `data` must be of the same (or compatible) data structure or type.
- for example, they must be all `list`, `number`, `numpy.array`...etc.
- All the function must return the data which will be passed through the pipe.
## Installation
- Install through `pip`:
- Just run `pip install pypeup`
- Install from source:
- run `git clone https://github.com/dboyliao/pypeup.git && cd pypeup`
- run `python setup.py install` to install the package.
## Tests
- If you haven't installed `nose` yet, run `pip install -r requirements.txt` first.
- run `nosetests`
This is a simple python module to help you to build a data pipe in python.
## First Glance
Suppose you have a bunch of functions dealing with data of the same structure (e.g they are all `array`, `integer`, ...etc) and you want to pipe them up for complex computations, `pypeup` is here at your service.
With `pypeup`, you can write something like this:
```{python}
from pypeup import DataPipe
# Note that these two funtion all return the same data structure and their
# first arguments are all data.
# In this example, the data are all of type list.
def fun1(data, x):
"""
x: <number>
data: <list>
"""
return [a + x for a in data]
def fun2(data, ind):
"""
ind: <integer>
data: <list>
"""
return data[:min(ind, len(data) - 1)]
class MyPipe(DataPipe):
pass
my_pipe = MyPipe([1, 2, 3, 4, 5])
my_pipe.register(fun1) # Use register method to add any method you like
my_pipe.register(fun2) # for your data.
my_pipe.fun1(1).fun2(3).fun2(2).fun1(3) # Pipe the function up at your wish
my_pipe.data # Access the data by the `data` attribute
# >>> [5, 6]
```
Also, you can build up the pipe by one class declairation:
```{python}
from pypeup import DataPipe
import numpy as np
class MyPipe2(DataPipe):
def add(self, x):
return self.data + x
def sub(self, x):
return self.data - x
def mul(self, x):
return self.data * x
pipe2 = MyPipe2(np.array([1, 2, 3]))
pipe2.add(3).sub(2).mul(4)
pipe2.data
# >>> np.array([8, 12, 16])
```
You can use private method as normal python:
```{python}
from pypeup import DataPipe
import math
class MyPipe(DataPipe):
def fun(self, x):
return self._magic(x)
def _magic(self, x):
print "Where the magic happens!"
return self.data + math.sin(x)
pipe = MyPipe(0.)
print pipe.fun(math.pi / 2).data
# >>> 1.
```
In order to protect the data inside the pipe, any modification to the `data` which is outside of the execution context of the methods of the pipe is not allowed and an `ExecutionContextError` will be raised.
```{python}
from pypeup import DataPipe
class MyPipe(DataPipe):
def addOne(self):
return self.data + 1
pipe = MyPipe(10)
pipe.addOne(1) # OK.
pipe.data = 11 # Not OK.
```
There are some limits on the functions which can be applied to `pypeup`.
See [Limits](https://github.com/dboyliao/pypipe#limits) for detail.
## Limits
As mentioned above, there are few limits on the functions that can be used with `pypeup`:
- The current data can be access through `self.data`.
- This means that if you want to overwrite the `__init__` by yourself, make sure you have an attribute the serve as the same purpose as `data`. Note that `data` is a property with type-checking.
- All the functions' first argument must be `data`. (But not method, see below)
- It doesn't mean you have to name it as `data`, but you have to be sure that all the functions' first argument will hold the data you want to process.
- If the function is defined as an instance method, you only need to pass all the parameters needed to work with the data which can be access through `self.data`.
- If the instance method is private method (method with the name start with one `_`) will work just like normal instance method.
- All the `data` must be of the same (or compatible) data structure or type.
- for example, they must be all `list`, `number`, `numpy.array`...etc.
- All the function must return the data which will be passed through the pipe.
## Installation
- Install through `pip`:
- Just run `pip install pypeup`
- Install from source:
- run `git clone https://github.com/dboyliao/pypeup.git && cd pypeup`
- run `python setup.py install` to install the package.
## Tests
- If you haven't installed `nose` yet, run `pip install -r requirements.txt` first.
- run `nosetests`
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