机器学习的过程中处理数据,会遇到数据可视化的问题.
大部分都是利用python的matplotlib库进行数据的可视化处理.
plt.show() 默认都是输出.png文件,图片只要稍微放大一点,就糊的不行.
下面给出一段正常进行数据处理可视化输出图片的代码
import pandas as pd
import matplotlib.pyplot as plt
with open(\'sourcedata2.csv\')as f:
df=pd.read_csv(f,header=0)
X=df[df.columns[1:6]]
y=df[\'Vibration\']
plt.figure()
f,ax1=plt.subplots()
for i in range(1,7):
number=320+i
ax1.locator_params(nbins=3)
ax1=plt.subplot(number)
plt.title(list(df)[i])
ax1.scatter(df[df.columns[i]],y)
plt.tight_layout(pad=0.4,w_pad=0.5,h_pad=1.0)
plt.show()
上面这段代码会直接显示出绘制的图像.我们可以将图片另存为.
但是我们是不是可以直接在代码中将图片进行保存呐?
matplotlib,pyplot中有一个内置函数savefig
查看savefig()函数的功能
savefig(*args, **kwargs)
Save the current figure.
Call signature::
savefig(fname, dpi=None, facecolor=\'w\', edgecolor=\'w\',
orientation=\'portrait\', papertype=None, format=None,
transparent=False, bbox_inches=None, pad_inches=0.1,
frameon=None)
The output formats available depend on the backend being used.
Arguments:
*fname*:
A string containing a path to a filename, or a Python
file-like object, or possibly some backend-dependent object
such as :class:`~matplotlib.backends.backend_pdf.PdfPages`.
If *format* is *None* and *fname* is a string, the output
format is deduced from the extension of the filename. If
the filename has no extension, the value of the rc parameter
``savefig.format`` is used.
If *fname* is not a string, remember to specify *format* to
ensure that the correct backend is used.
Keyword arguments:
*dpi*: [ *None* | ``scalar > 0`` | \'figure\']
The resolution in dots per inch. If *None* it will default to
the value ``savefig.dpi`` in the matplotlibrc file. If \'figure\'
it will set the dpi to be the value of the figure.
*facecolor*, *edgecolor*:
the colors of the figure rectangle
*orientation*: [ \'landscape\' | \'portrait\' ]
not supported on all backends; currently only on postscript output
*papertype*:
One of \'letter\', \'legal\', \'executive\', \'ledger\', \'a0\' through
\'a10\', \'b0\' through \'b10\'. Only supported for postscript
output.
*format*:
One of the file extensions supported by the active
backend. Most backends support png, pdf, ps, eps and svg.
可以看到一个关键词参数format,it support png,pdf,ps,eps and svg.
重新实现上一段代码
X=df[df.columns[1:6]]
y=df[\'Vibration\']
plt.figure()
f,ax1=plt.subplots()
for i in range(1,7):
number=320+i
ax1.locator_params(nbins=3)
ax1=plt.subplot(number)
plt.title(list(df)[i])
ax1.scatter(df[df.columns[i]],y)
plt.tight_layout(pad=0.4,w_pad=0.5,h_pad=1.0)
plt.savefig(fname="name",format="svg")
plt.show()
在plt.savefig()函数的format参数选择你需要保存图片的格式,和图片的名称fname="your picture name"
就可以实现图片多种格式的输出.
利用graphviz来绘制绘图
神经网络的图(也就是其基本的模型架构)可以使用process on 也可以在python库函数中进行绘制
from pydotplus import graphviz