http://git-wip-us.apache.org/repos/asf/zeppelin/blob/085efeb6/notebook/2C2AUG798/note.json
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-{
-  "paragraphs": [
-    {
-      "text": "%md\n## Introduction\nIn this tutorial we will go through some 
of the basic features of Zeppelin\u0027s built-in matplotlib integration. 
\n\n### Prerequisites\n`matplotlib` must be installed to your local python 
installation. (use `pip install matplotlib` or `conda install matplotlib` if 
you have `conda`). Additionally, you will need Zeppelin\u0027s matplotlib 
backend files which are usually found in `$ZEPPELIN_HOME/lib/python`. Although 
Zeppelin should automatically find this directory, it might be a good idea to 
add it to your `PYTHONPATH` just in case. \n\n### Interpreters\nMost of the 
examples shown in this tutorial can be used interchangeably with either the 
`python` or `pyspark` interpreters. Iterative plotting using the Angular 
Display System is currently only available for `pyspark`, but this 
functionality will eventually be added to the base `python` interpreter. 
\n\n### macOS\nMake sure locale is set, to avoid `ValueError: unknown locale: 
UTF-8`\n\n### virtu
 alenv\nIn case you want to use virtualenv or conda env:\n - configure python 
interpreter property -\u003e `absolute/path/to/venv/bin/python`\n - see 
*Working with Matplotlib in Virtual environments* in the [Matplotlib 
FAQ](http://matplotlib.org/faq/virtualenv_faq.html)\n \n### A simple 
example\nLet\u0027s start by making a very simple line plot:",
-      "user": "anonymous",
-      "dateUpdated": "Dec 17, 2016 3:33:25 PM",
-      "config": {
-        "tableHide": false,
-        "colWidth": 12.0,
-        "editorMode": "ace/mode/text",
-        "editorHide": true,
-        "enabled": true,
-        "results": [
-          {
-            "graph": {
-              "mode": "table",
-              "height": 300.0,
-              "optionOpen": false,
-              "keys": [],
-              "values": [],
-              "groups": [],
-              "scatter": {}
-            }
-          }
-        ],
-        "editorSetting": {
-          "language": "text",
-          "editOnDblClick": false
-        }
-      },
-      "settings": {
-        "params": {},
-        "forms": {}
-      },
-      "apps": [],
-      "jobName": "paragraph_1478123627954_-1473548609",
-      "id": "20160614-174657_1772993700",
-      "results": {
-        "code": "SUCCESS",
-        "msg": [
-          {
-            "type": "HTML",
-            "data": "\u003cdiv 
class\u003d\"markdown-body\"\u003e\n\u003ch2\u003eIntroduction\u003c/h2\u003e\n\u003cp\u003eIn
 this tutorial we will go through some of the basic features of 
Zeppelin\u0026rsquo;s built-in matplotlib integration. 
\u003c/p\u003e\n\u003ch3\u003ePrerequisites\u003c/h3\u003e\n\u003cp\u003e\u003ccode\u003ematplotlib\u003c/code\u003e
 must be installed to your local python installation. (use \u003ccode\u003epip 
install matplotlib\u003c/code\u003e or \u003ccode\u003econda install 
matplotlib\u003c/code\u003e if you have 
\u003ccode\u003econda\u003c/code\u003e). Additionally, you will need 
Zeppelin\u0026rsquo;s matplotlib backend files which are usually found in 
\u003ccode\u003e$ZEPPELIN_HOME/interpreter/lib/python\u003c/code\u003e. 
Although Zeppelin should automatically find this directory, it might be a good 
idea to add it to your \u003ccode\u003ePYTHONPATH\u003c/code\u003e just in 
case. \u003c/p\u003e\n\u003ch3\u003eInterpreters\u003c/h3\u003e\n\u003cp\u003eMo
 st of the examples shown in this tutorial can be used interchangeably with 
either the \u003ccode\u003epython\u003c/code\u003e or 
\u003ccode\u003epyspark\u003c/code\u003e interpreters. Iterative plotting using 
the Angular Display System is currently only available for 
\u003ccode\u003epyspark\u003c/code\u003e, but this functionality will 
eventually be added to the base \u003ccode\u003epython\u003c/code\u003e 
interpreter. 
\u003c/p\u003e\n\u003ch3\u003emacOS\u003c/h3\u003e\n\u003cp\u003eMake sure 
locale is set, to avoid \u003ccode\u003eValueError: unknown locale: 
UTF-8\u003c/code\u003e\u003c/p\u003e\n\u003ch3\u003evirtualenv\u003c/h3\u003e\n\u003cp\u003eIn
 case you want to use virtualenv or conda env:\u003cbr/\u003e - configure 
python interpreter property -\u0026gt; 
\u003ccode\u003eabsolute/path/to/venv/bin/python\u003c/code\u003e\u003cbr/\u003e
 - see \u003cem\u003eWorking with Matplotlib in Virtual 
environments\u003c/em\u003e in the \u003ca 
href\u003d\"http://matplotlib.org/faq/virtual
 env_faq.html\"\u003eMatplotlib 
FAQ\u003c/a\u003e\u003c/p\u003e\n\u003ch3\u003eA simple 
example\u003c/h3\u003e\n\u003cp\u003eLet\u0026rsquo;s start by making a very 
simple line plot:\u003c/p\u003e\n\u003c/div\u003e"
-          }
-        ]
-      },
-      "dateCreated": "Nov 2, 2016 2:53:47 PM",
-      "dateStarted": "Dec 17, 2016 3:33:25 PM",
-      "dateFinished": "Dec 17, 2016 3:33:25 PM",
-      "status": "FINISHED",
-      "progressUpdateIntervalMs": 500
-    },
-    {
-      "text": "%python\nimport matplotlib.pyplot as plt\nplt.plot([1, 2, 3])",
-      "dateUpdated": "Nov 2, 2016 2:53:47 PM",
-      "config": {
-        "colWidth": 12.0,
-        "editorMode": "ace/mode/python",
-        "enabled": true,
-        "results": [
-          {
-            "graph": {
-              "mode": "table",
-              "height": 300.0,
-              "optionOpen": false,
-              "keys": [],
-              "values": [],
-              "groups": [],
-              "scatter": {}
-            }
-          }
-        ]
-      },
-      "settings": {
-        "params": {},
-        "forms": {}
-      },
-      "apps": [],
-      "jobName": "paragraph_1478123627958_-1475087605",
-      "id": "20161101-192232_289486976",
-      "results": {
-        "code": "SUCCESS",
-        "msg": [
-          {
-            "type": "HTML",
-            "data": "\u003cdiv 
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 style\u003d\u0027width\u003dauto;height:auto\u0027\u003e\u003cdiv\u003e\n"
-          }
-        ]
-      },
-      "dateCreated": "Nov 2, 2016 2:53:47 PM",
-      "status": "READY",
-      "errorMessage": "",
-      "progressUpdateIntervalMs": 500
-    },
-    {
-      "text": "%md\n### Changing the default inline plotting behavior\nBoth 
the `python` and `pyspark` include a built-in function for changing some 
default inline plotting behavior. For example, we can change the default size 
of each figure in pixels to 400x300 in svg format using: ",
-      "dateUpdated": "Nov 2, 2016 2:53:47 PM",
-      "config": {
-        "tableHide": false,
-        "colWidth": 12.0,
-        "editorMode": "ace/mode/markdown",
-        "editorHide": true,
-        "enabled": true,
-        "results": [
-          {
-            "graph": {
-              "mode": "table",
-              "height": 300.0,
-              "optionOpen": false,
-              "keys": [],
-              "values": [],
-              "groups": [],
-              "scatter": {}
-            }
-          }
-        ]
-      },
-      "settings": {
-        "params": {},
-        "forms": {}
-      },
-      "apps": [],
-      "jobName": "paragraph_1478123627959_-1475472354",
-      "id": "20160614-174421_274483707",
-      "results": {
-        "code": "SUCCESS",
-        "msg": [
-          {
-            "type": "HTML",
-            "data": "\u003ch3\u003eChanging the default inline plotting 
behavior\u003c/h3\u003e\n\u003cp\u003eBoth the 
\u003ccode\u003epython\u003c/code\u003e and 
\u003ccode\u003epyspark\u003c/code\u003e include a built-in function for 
changing some default inline plotting behavior. For example, we can change the 
default size of each figure in pixels to 400x300 in svg format 
using:\u003c/p\u003e\n"
-          }
-        ]
-      },
-      "dateCreated": "Nov 2, 2016 2:53:47 PM",
-      "status": "READY",
-      "errorMessage": "",
-      "progressUpdateIntervalMs": 500
-    },
-    {
-      "text": "%python\nz.configure_mpl(width\u003d400, height\u003d300, 
fmt\u003d\u0027svg\u0027)\nplt.plot([1, 2, 3])",
-      "dateUpdated": "Nov 2, 2016 2:53:47 PM",
-      "config": {
-        "colWidth": 12.0,
-        "editorMode": "ace/mode/scala",
-        "enabled": true,
-        "results": [
-          {
-            "graph": {
-              "mode": "table",
-              "height": 300.0,
-              "optionOpen": false,
-              "keys": [],
-              "values": [],
-              "groups": [],
-              "scatter": {}
-            }
-          }
-        ]
-      },
-      "settings": {
-        "params": {
-          "f1": "defaultValue"
-        },
-        "forms": {}
-      },
-      "apps": [],
-      "jobName": "paragraph_1478123627959_-1475472354",
-      "id": "20160616-234947_579056637",
-      "results": {
-        "code": "SUCCESS",
-        "msg": [
-          {
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 style\u003d\u0027width\u003dauto;height:auto\u0027\u003e\u003cdiv\u003e\n"
-          }
-        ]
-      },
-      "dateCreated": "Nov 2, 2016 2:53:47 PM",
-      "status": "READY",
-      "errorMessage": "",
-      "progressUpdateIntervalMs": 500
-    },
-    {
-      "text": "%md\n### Iteratively updating a plot\n#### (a) Using multiple 
plots\nNow let\u0027s show an example where we update each element of the plot 
in a separate paragraph. However, you may have noticed that each matplotlib 
figure instance gets closed immediately after its shown. To fix this, we set 
the `close` property to `False` in our configuration:",
-      "dateUpdated": "Nov 2, 2016 2:53:47 PM",
-      "config": {
-        "colWidth": 12.0,
-        "editorMode": "ace/mode/markdown",
-        "editorHide": true,
-        "enabled": true,
-        "results": [
-          {
-            "graph": {
-              "mode": "table",
-              "height": 394.0,
-              "optionOpen": false,
-              "keys": [],
-              "values": [],
-              "groups": [],
-              "scatter": {}
-            }
-          }
-        ]
-      },
-      "settings": {
-        "params": {},
-        "forms": {}
-      },
-      "apps": [],
-      "jobName": "paragraph_1478123627960_-1477396098",
-      "id": "20160617-140439_1111727405",
-      "results": {
-        "code": "SUCCESS",
-        "msg": [
-          {
-            "type": "HTML",
-            "data": "\u003ch3\u003eIteratively updating a 
plot\u003c/h3\u003e\n\u003ch4\u003e(a) Using multiple 
plots\u003c/h4\u003e\n\u003cp\u003eNow let\u0027s show an example where we 
update each element of the plot in a separate paragraph. However, you may have 
noticed that each matplotlib figure instance gets closed immediately after its 
shown. To fix this, we set the \u003ccode\u003eclose\u003c/code\u003e property 
to \u003ccode\u003eFalse\u003c/code\u003e in our configuration:\u003c/p\u003e\n"
-          }
-        ]
-      },
-      "dateCreated": "Nov 2, 2016 2:53:47 PM",
-      "status": "READY",
-      "errorMessage": "",
-      "progressUpdateIntervalMs": 500
-    },
-    {
-      "title": "First line",
-      "text": "%python\nplt.close() # Added here to reset the first plot when 
rerunning the paragraph\nz.configure_mpl(width\u003d600, height\u003d400, 
fmt\u003d\u0027png\u0027, close\u003dFalse)\nplt.plot([1, 2, 3], 
label\u003dr\u0027$y\u003dx$\u0027)",
-      "dateUpdated": "Nov 2, 2016 2:53:47 PM",
-      "config": {
-        "colWidth": 12.0,
-        "title": true,
-        "enabled": true,
-        "results": [
-          {
-            "graph": {
-              "mode": "table",
-              "height": 389.0,
-              "optionOpen": false,
-              "keys": [],
-              "values": [],
-              "groups": [],
-              "scatter": {}
-            }
-          }
-        ]
-      },
-      "settings": {
-        "params": {},
-        "forms": {}
-      },
-      "apps": [],
-      "jobName": "paragraph_1478123627960_-1477396098",
-      "id": "20161101-195657_1336292109",
-      "results": {
-        "code": "SUCCESS",
-        "msg": [
-          {
-            "type": "HTML",
-            "data": "\u003cdiv 
style\u003d\u0027width:auto;height:auto\u0027\u003e\u003cimg 
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