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\n", " \n", " BokehJS successfully loaded.\n", "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "# Custom libraries\n", "from datascienceutils import plotter\n", "from datascienceutils import analyze\n", "\n", "# Standard libraries\n", "import json\n", "%matplotlib inline\n", "import datetime\n", "import numpy as np\n", "import pandas as pd\n", "import random\n", "\n", "\n", "from bokeh.plotting import figure, show, output_file, output_notebook, ColumnDataSource\n", "from bokeh.charts import Histogram\n", "import bokeh\n", "output_notebook()\n" ] }, { "cell_type": "code", "execution_count": 2, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:31.965317Z", "start_time": "2017-11-21T17:37:31.850049Z" }, "scrolled": false }, "outputs": [], "source": [ "irisDf = pd.read_csv('/home/anand/DataScientist/data/Iris.csv')\n", "# Sample Timeseries picked from here https://www.backblaze.com/b2/hard-drive-test-data.html\n", "hdd2013Df = pd.read_csv('/home/anand/DataScientist/data/hdd_2013/2013-11-26.csv')" ] }, { "cell_type": "code", "execution_count": 3, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:31.973985Z", "start_time": "2017-11-21T17:37:31.966636Z" }, "scrolled": false }, "outputs": [], "source": [ "# Create classes for showing off correlation_analyze's heatmapping ability\n", "def createClasses(x):\n", " rdm = random.random()\n", " if rdm < 0.3:\n", " return 'A'\n", " elif rdm > 0.3 and rdm < 0.6:\n", " return 'B' \n", " else:\n", " return 'C'\n", "irisDf['Class'] = [np.nan]*len(irisDf)\n", "irisDf['Class'] = irisDf['Class'].apply(createClasses)" ] }, { "cell_type": "code", "execution_count": 4, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:32.063875Z", "start_time": "2017-11-21T17:37:31.975282Z" }, "scrolled": false }, "outputs": [ { "data": { "text/html": [ "
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Rkcwa2GE7RZbAHjNmDMaMGQMAeOCBBzpv79qFExGRZ+DypM7hSmdERCQrnsN2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\nq0wmEy5cuIB+/fpBr9fLHoeIiLrIYrGguroaQ4cOhaenp+x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jEVOnTsXu3buluhwRESmMHbFzJAviuLg47N27F62trbDb7diyZQtSU1OluhwR\nESmspoFzxM6QbI44JycH06ZNw9VXXw0vLy8MGjQI1113nVSXIyIihVXUtChdgiZJeh/xwoULsXDh\nQikvQUREKuBl0KOimkHsDO6sRURELgsJ9EF5TTPsdrvSpWgOg5iIiFwWGuiNFpMFTa3cc9pRDGIi\nInJZSGDH9sXl1c0KV6I9DGIiInJZaFBHEJdWNilcifYwiImIyGVRYf4AgIKyBoUr0R4GMRERuSw6\nzA8AcIJB7DAGMRERuczX2wshgd4oOMkgdhSDmIiIRBEbEYCaBhPquee0QxjEREQkin4RAQDArthB\nDGIiIhJFXGRHEB8pqlW4Em1hEBMRkSiS+gUDAA7mVytcibYwiImISBSB/t6ICvPDoYJqWK02pcvR\nDAYxERGJJrlfMExtVuSV1itdimYwiImISDTJcSEAgAN5HJ4WikFMRESi6ZwnPpB/SuFKtINBTERE\nogkJ9EFUmB/2HquCqd2idDma4KV0AUREUnJ17+PODo+Ey0qKwPrdJdh9pApjh/RTuhzVYxATkVsR\n+6EDZ56PoSxMdko41u8uwdYDZQxiARjERKR5cj3xp/M6DOTexUcFIiTQG9sOlsNitcHLwFnQ3vC7\nQ0SaVVDWoMhj9/iov97pdDoMSopAc6sZB/K4aKsvDGIi0hylAlhtNahZdnI4AGDzvjKFK1E/BjER\naUJn8Kkt/NRWj1okxYUgyN+IjXtK0W62Kl2OqjGIiUjV1Bi+59JCjXIz6HUYlhGNplYzth8qV7oc\nVWMQE5EqMdy074KB0QCA77cVKVyJujGIiUhVtBzAWq1bKjHh/kiMDcKuI5U4eapJ6XJUi0FMRKqg\n5QA+kzt8DWIaM7jjPuLVmwqULUTFGMREpBi1LsBylbt9Pa7ITolAoJ8R328vRIvJrHQ5qsQgJiLZ\nuWP4nsvdvz6hvAx6jBnSDy0mC77dWqh0OarEICYiWbhr99sbT/paezMmOxbeRj1WbMiD2WJTuhzV\nYRATkWQ8MXzpfP6+RozKikV1vQnrfuEK6nMxiIlINGcGL8O3A78PHS7KiYOXQY8l3x+F2cINPs7E\nhz4QkcMYLuSo4AAfjBkci5/3nsR324owc3yy0iWpBoOYiM7CkBVfQVkDn9gE4OJh8dh+qBxLvj+C\nySMT4OfDCAIYxERuj8FKahHo742LhsZj3c5iLP/xOG6cnql0SarAICbSOAatNrAr7jBheDx2HC7H\n8p+OYfrYRESE+CldkuIYxEQawcB1XH5p39+zlHiGo5x8jAZMGZWI5T8dx+KVB/GHm0YqXZLiGMRE\nKsXgdZyQ4O3tPVKHMrviDhfLSO88AAAgAElEQVQMjMb2Q+XYsLsUU0cnIic9SumSFMXbl4hUhLf+\nOCa/tOGsD7HOR9LS63WYfXEqdAAWfb7P4zf5YBATKYzh6xgxg7e3a5C04qMCMXpwLEqrmvDZ2qNK\nl6MoBjGRAhi+jpEjfLu7phT43/xXU0cnIiTAG0t/OIoTJ+uVLkcxDGIiGTF8hRF7yNmVOkg6vt5e\nuOqSNFhtdrz66W5YrJ45RM0gJpIBA7hvagje7qitHnczMDEMFwyMRl5pPT757ojS5SiCq6aJJMLg\n7R6Djc51xfhknCirx2drj2JoWqTHraJmEBOJzFMD2J0DNr+0gfcbS8jXxwvXXzYQb3y5H3//eCde\ne3gSQgJ9lC5LNgxiIhEpHcLuHIbk3hJigjDlwgH4dlshXl2yG39ZMBo6nU7psmTBICYSgdwBzMCV\nn5hdMTf26N6E4fHIK63DjkMVWPlzPq6ckKp0SbJgEBO5QI4AZuiSp9DrdJg3OQOvfbYH7648hOzk\nCKT2D1W6LMlx1TSRk6QMYbWuICaSWnCAN+ZNSofFasML721HfVOb0iVJjkFM5CCpbkVi+BJ1GJgY\nhksvTEBlbStefH+H22+BySAmEkiKAGb4agv/O8ln0ogEZKdE4GB+Nd76cr/S5UiKc8REAkgRwETU\nM71Oh2smp6Om3oRvthQgKS4Yl49LVrosSTCIiXohZgArEb5C6+cKXlIjb6MBN83IxH+W7cWbX+xH\nQkwQhqRGKl2W6BjERD1QewiLWZ8j52Jok5zCgnxxw7RMvLPyIF58bzv+8eAliI0IULosUTGIic6h\nxgBWeqOQM/VVC4OaxJYcF4JZF6VgxYY8PPXmFrz0uwlutfMWg5joDGIFnhgBrKbwdURvdWs9pLnN\npXJGZ8eirrEN63eX4K/vbMXz94yHr497RJh7fBVELlJLAGs1fIXq6evTekA7ytO+XrFMHT0ADc1t\n2H20Cv/34S944vZRMBi0f/MPg5g8nhjh50oAu3v4CnHu94BBRd3R6XSYMzENTa1m/HK4Av9ethe/\nu3aY5vek1v6vEkQuUDKE+YzinnV+b/j9oXMZDHrcMC0T8VEB+H57ET7+VvvPMGZHTB5J6QAWg1Qh\npbZutPPrVFtdpBwfowG3XJ6FN77Yj0+/P4LQIB/MHK/de4wZxORxlAphV64rZ2fY3bXUEIJKP7GI\nC7XUJcjfG7fNzMKbX+7Hf5fvg7eXHlNGJypdllMYxORRXA00OQNYTcOyapnDdYfuWMu1q01kqB8W\nzMrG218dwGuf7YHRaMDEC/orXZbDGMTkEZTogp25pprCtzdn1ukJwcJuWL1iIwJw+xXZWLzyIP7f\nJ7tgNOgxPidO6bIcwsVa5PbE6IIdCWFnFhlpeWGSEgurtPq9ImnERwXitplZMBr0ePl/v2D7wXKl\nS3IIO2Jya3IPRTtyPTHDpLisWvCxCf0iRLvuudxh6Phc7Ia1ISEmCLfOzMJ7qw7ixfd34C8LRuOC\nzGilyxKEQUxuyV0D2JHAdfQcYga0OwayGPj9kFZSv2DcPGMQ3l99GM+/uw1P3TkGQ9OilC6rTwxi\ncjtyhrDUASxG8Dp7LTGCWeuBzG5Ye1L7h+Km6Zn4cM1h/PXtbXjmrrHITpFuFEgMks4RNzQ0YOHC\nhZg+fTpmzJiB3bt3S3k5IpdC2Jm5YKHHOVJXcVl114eSxKyDc7ra/WVEizIGhGH+lIEwW2145u2t\nOFpUq3RJvZI0iJ9//nlMmDABa9aswYoVK5Camirl5cjDuRrCjlzHkRAWSg3h2xMxahM7jKUOd3bD\n2paVHIHrLsuAqd2CJ9/cgvzSeqVL6pFkQdzY2IgdO3Zg3rx5AABvb28EB/N/2CQNOUNY6HFCjlVL\n9yuUq7VqpTNmCLuHIamRmDc5HS2tZjzx380oVOn//iSbIy4pKUF4eDj+9Kc/ITc3F9nZ2Xj88cfh\n7+8v1SXJA8kVwEKvJbQeZ8OsprLEqfd1Jzza+Y0POut3Zh5ZrB2ypBrqlSKEOSytnOEZ0bBa7Vj+\n03E88d/NePG349E/Okjpss4iWUdssVhw6NAhzJ8/H19++SX8/Pzw5ptvSnU58kBqG4p2pAMWqqay\n5KwPMYlxXmd/odBKZywGhrDyRg6KwZUTUlDX1IbHF21G2almpUs6i2RBHBsbi9jYWOTk5AAApk+f\njkOHDkl1OfIwahqKFhLUjgSwVMEr1TW1MqwuBIek3deYwf1w+bgk1DSY8PiiTaisaVG6pC6SBXFU\nVBRiY2ORn58PANiyZQsXa5Eo5AhhsbtgIeQOXzHrcCaM1dYVc0ja/V2UE4+powagqq4Vj/93E6rr\nW5UuCYDE9xH/5S9/wSOPPAKz2YyEhAS8+OKLUl6OPICzP7yl6IL74kgAq1FnXULnkovLqiXdtUtK\n7IQ9x8QRCTBbbfhxZwkeX9QxZxwW5KtoTZIG8aBBg7B8+XIpL0EeRCshLCSAXQnfhqoCp94XHJXk\n1PtqKkskC2NnF26J2WlKFcLshtXrsgsHwGK1Y+OeUvzlv5vx/L3jERLoo1g93FmLNEHqEJazC3Yk\nhJ0NXSHnciSYHemOtdQZM4Q9k06nw/QxibBYbdiyvwxPvrkFz98zDoH+3orUw6cvkeppIYSFLMYS\nOvfaUFXQ9SElZ64h9JcId1rARe5Jp9PhivHJuDArBvml9Xjm7a1obbMoUguDmFRNKyHcG0cDWG6O\nXletc9qOYjdMOp0Osy9OxbCMKOQW1uKFd7fDbLHKXgeDmFRL6RDua+V0X12w2gO4uzrEJFVXLEbQ\nMYSpk16nw9xJ6RiUFI49x6rw8v92wmq1yVoD54hJldQQwr0R0gX3xZXg6+u9zi7M6jxvX+93ZAGX\n2jCE6VwGvQ7XTxmI91cfwpb9ZfjX0j144Lrh0Ot1slyfQUyqI2UISz0ULUUAOxPYrizM6ny/O4Yx\nQ5h6YvTS4+bpmVi88iDW/VIMf18v3HXVEOh00ocxh6ZJVdQcwkKGonvjyBC02Au2nDmXGNcWe3ja\nlcBjCFNffLy9cOvMLMSG+2PVzyfw0ZpcWa7LICbVUDKEhcwH96SvuWChISjHamlHz9/XsVpZuMUQ\nJqH8fY24fVY2woN9seSHo1izpUDyazKISRWUDuHeuNoF90WJxVpqWSAmB4YwOSrI3xsLZmUjwM+I\nRcv3YVdupaTXYxCTZkkdwq4MRQsJOjWEodBfFHojV1espuBTUy0kjfBgX9w8PRN6HfC3D3ZIujc6\ng5gU58z/wOUI4Z4IGYrujasB3FCVf96HK5T+ZUBKfJADuWJAbDDmTc5Aa5sFz7y9BTUNJkmuw1XT\npCgthnBPhASwIxwJ2O6ODY5KceD9va+SFrKKWkrOhB9DmMQwNC0StQ0mfLutEM++sxUv3ncRfH3E\njU52xKQYhnBPx7re5Yp5Hi1iCJOYLh4ej5GZ0TheUo9XPtoJq80u6vkZxKQITwlh4SumxRlm7unc\nwo4rcOnz7owh7Nk6t8JMjQ/BtoPlWPr9EVHPzyAm2WkphHubD+4rZB0JYKmJFcY9kXLBlqMhKHY3\nzBAmADAY9Jg/dSBCg3zwyfdHsDO3QrRzM4hJVmoL4d5WRkvZBSsxbOwJw9QMYZKSv68RN07LhF6n\nwyv/24nKmhZRzssgJlWTOoR74koI90XJQFRbGKs16JL6Bau2NlJWfFQgrpyQgqZWM/7+sTjzxQxi\nko2j3bC7hbBaFk/1VYOa5oIdCUOxumEGMPVl5KAYDE6JwKETNVi27qjL5+PtSyQLKW6GlzOEXQ1g\nZwgNRCVvK1ILhjDJSafT4apLUlFU0YhPvj2C4RnRyBgQ5vT52BGT5KSYF3bXEHZmv2nnHugg7S8H\nWsQQJkf4+xoxb3I6rDY7Xlu6BxYXnmHMICZJSbU4y5lrqjmExdjuUmsh2VfwCQ1GMbphhjA5I61/\nKEZmRqOgrAEr1uc5fR4GMamKq/PCaghhR+aCxd5vWuowdsdhcIYwuWL62CQE+Bnx8Xe5qHByFTWD\nmCQj97ywM9eTIoSFkPKBD0p0xuHR/bt9PaFfhFPnk6sbZgiTq/x9jbh8bBLazTb875vDTp2DQUyS\nkHte2NnNOrojZQir4YlL1IEhTGLJyYhCXGQAftpVgrySOoffzyAm0ck9L6ylEJaL2sNejBB0pRtm\nCJOY9Dodpo1JAgB8sNrxrphBTKJSaues7ogVwn1vZamuENY6qUOSIUxSSE8IRXJcMHYdqcSJk/UO\nvZdBTKon5uIsZ0K4N0I2x2AIi0+KpysRuWpCTjwAYMUGx1ZQM4hJNGqZFxZzOLo3WtqhSgnOLtSS\nErthklJGYhgiQ32xflcp6hrbBL+PQUyiUNO8cHfknhP2pBDuacV0T3oLQyFB6Ww3zBAmqel1OozO\n6geL1YZNe0uFv0/CmohcIua8cHcYwt3r6V5hLd9DzBAmuQxO7RgJ2rj3pOD3MIjJZVodku6JJ4ew\nWJwZlpaqG2YIk5xCAn2QGBuMQyeqUdtgEvQeBjG5RC1D0nIszmIIn0/MYWkid5GZFAa7HTh4QtgI\nnaCnL5lMJqxatQpFRUWwWCxdrz/66KPOVUluQYqds8Q8ryeHcF/DyMFRKaKeTw7shkkrBsQEAQAO\nF9TgotMrqXsjKIjvv/9+6PV6ZGdnw9vb27UKyaPJOSTdHU8IYVeIEbg9DUu7ukjLUQxhUkr/6EAY\n9DocKagVdLygIC4rK8PXX3/tUmHkXrQ6JO0oZx8XqCSxu+GeODos7QreN0xaYvQyICzIB+XVzYKO\nFzRHnJ6ejsrKSpcKI/fhSUPSffGEbljqYWl2w+SOggN8UN/cDrPF2uexgoemr732WmRmZsLHx6fr\n9VdffdX5KsmjyNkNd8dThqSV7oadGZbui6PdMEOY1CA4sGMat6ahDTHh/r0eKyiIH330UUyePBlZ\nWVkwGAyuV0iapZZumEPS4nKnbphIDbz0OgCA1Wbr+1ghJzSbzXjyySddq4o0z9kQlurxhufy9CFp\nubrhnrAbJvqVzd7xp0Hf9wywoDniYcOG4ciRIy4VRZ7JlSHpnnBI+nyudK6OdsNyLtIi0iqLtaMT\nNpzujHsjqCPet28f5s6di+Tk5LPmiJctW+ZkiaQ1SgxJi9ENO0qLQ9JCQliNc8N9da/shknL6pva\nodd17LTVF0FB/Pjjj7tcFHkeLS7QcvacatZbCLvjvtJEalDT0IrIUH8YvfoeeO41iJuamlBXV4dR\no0ad9XpJSQlCQ0Ndq5I0Qy0LtHrCbri3z4sXwuyGiYQxtVnQ2GJGarywnOw1ql966SXk5uae93pu\nbi5eeukl5yokTZFqgZYzlO6G1SQ4KkmSENYihjCpzYmT9QCAgUlhgo7vNYgPHDiAyy677LzXL7vs\nMuzcudOJ8og6cG7YeVLOCWuxGyZSm+OlHUGckx4l6Pheg9hsNvf4OZ2u75VgpG3shsV9vxjECGGp\nh6TlxG6Y1MZut+NoUS18jAZkJorQEdvtdtTU1Jz3ek1NDex2u3NVEvVCiW5YC4QMRXccJ24IO4Pd\nMHmywvJGVNebMHZIPxi9hG2A1WsQX3PNNVi4cCEKCwt/vUhhIR588EFcc801rlVLqiZlNyzV4q/e\nuHLfcCel5lWFXtfZEO6NnEPSjmI3TGr0y+EKAMBlowYIfk+vq6ZvvfVW1NTU4Morr+y6f7itrQ23\n3XYbbrvtNucrJeqGlLcsaZEjwelKCKtlSJrdMGldY0s79uedQky4P4akRgp+X5/3ET/00EO4++67\ncfz4cQBAWloa/P1738CatE0L3bA7D0s72rnKGcK9YTdMnm7jnlKYLTbMmZQGvYAdtToJ2tDD398f\n6enpKC8vx8mTJ7teT0tLc7xSIuqW2AHc1zmdCWEp9pMG2A2T9jW2tGPbwXJEhvphigPD0oDAIP7o\no4/wyiuvIDQ0tGu1tE6nw9q1ax2vllRNifnb3q6rhtXSZwqOShL9fM69z7X5YDFDuC/cvIM8wffb\nCmG22HDtZRmCF2l1EhTEixcvxqpVqxAfH+9UgeT+PGlY2tUwdu0BDdJ0wYDzISznkDSRGhWWNeCX\n3EokxwVjqoPdMCAwiKOiohjCHkCpbliLOgNNSCCLsdpa6AYdagphIdgNk9ZZrTZ8uSEPAHDf3BwY\nDIIeaniWXoO4c4HWuHHj8NJLL2HmzJlnPX2Jc8QEuN4NizEsrRQ5bmlytQvu6/NShTCHpMkTrP2l\nGBU1LZg2JhGZSeFOnaPXIL7rrrvO+veaNWu6/s45YvfCblhdHNmiUoshTOQO8kvrsX5XCWLC/bFg\nVrbT5+k1iNetW+f0iYnk5C73D8sVwIA0C7MAYSHMbpi0rsVkxtK1R6HT6/DITSPg72t0+lyCBrMf\neOABQa+R55FiX+neKL1QSyrBUSkOzQMrGcIMRfJ0Vpsdn35/BA3N7bhh2kBkJjo3JN1JUBAXFRWd\n91p+vnaeVkO9k3pYWu3D3s4+qUisa4vZBQs5RsoQZjdMnmDNlhM4XlKPUVmxuGZyhsvn63VoeunS\npViyZAkKCgowb968rtcbGxuRnJzs8sWJ1LJQKzgqRbZHIToT/FIHMMAQJhJiZ24FNu0rQ0JMEB6+\n8QKHdtDqSa9BPH78eCQmJuLZZ5/Fo48+2vV6YGAgBg4c6PLFSXmudKtyD0tLTcowFvv5wI4eo8UQ\nJlKbo0W1+GJ9HgL8jHhiwSiX5oXP1GsQx8fHIz4+HqtWrRLlYkRqJ2YYuzLkLfyJS70f52oAA8qF\nMLthUpPSqiZ8/F0uDHod/rJgNOIiA0U7t6ANPebOndu1tWWnoKAgDBs2DHfccQcCAgJEK4jcixrm\nhx3dCaszQB0JZDHmmR172lLfx0rdBQs9xhkMYVKT6vpWvP/1IZgtNjx2y4XIThH3CWSCgnjs2LEo\nLCzEVVddBQBYsWIFoqOjUVFRgaeffhovv/yyqEWRPNxpWFrsPaA7zinPIi65AxiQN4Q5JE1aVtfY\nhne+OoimVjPumTMU44bGiX4NQUG8Y8cOLFmypOvfkyZNwvXXX48lS5bg8ssvF70oIrFJEdSuUmMA\nA8qHMLthUouG5ja8/dUB1DW14ZbLB2HmeGkWKQsK4traWrS1tXVtb9ne3o76+nrodDr4+vr2+l6r\n1Yq5c+ciJiYGb7zxhusVE2mY4486FHY8Q5hIXA3N7Xhn5UHUNJhw3ZQMXHOp67cp9URQEM+YMQPX\nXXcdZsyYAQD49ttvMW3aNDQ3N/f5MIgPPvgAqampaGpqcr1a8njh0f2d3tRDqa7Ymf2o1RjAjhzH\nECYtq20wdYXwVZek4sZpmZJeT1AQP/TQQ8jJycH27dsBAPfffz8mT54MAHj99dd7fF95eTl++ukn\n3HPPPXjvvfdcr5ZE407zw52EBK1cYSxl+ALiBTAg/qIszgmTllXVtmDxyoOob27HdZdl4Mbpmect\nVhaboCAGgMmTJ3eFr1AvvPAC/vCHP6C5udnhwsj9KbWiWqowdvZJTGIHMKBMFww4H8LshkkNTp5q\nwrurDqG51Yzbr8jCnEnpslxXUBDn5+dj0aJFKC4uhsVi6Xp92bJlPb7nxx9/RHh4OAYPHoxt27a5\nXilpTl9Bm9QvWPQwFhqyjjxPWMh5pH6vmAEMMISJzlVY3oD3vz6ENrMV983LwYyxSbJdW1AQ//73\nv8f06dMxZ84cGAwGQSfetWsX1q1bhw0bNqCtrQ1NTU145JFH8Morr7hUMLlODff29iWhX0SP21y6\nMk98ru7CsLtwFuu5w46eR6kAdvRYhjBp2fGSOnz4zWFYbXb8/oYRmHiBsP/fiUVQENtsNtxzzz0O\nnfjhhx/Gww8/DADYtm0bFi9ezBAmWbg69CxW6LpyTrEDGJCmCwYYwqRth05U45PvjkCv1+HPt16I\n0YP7yV6DoCAeNmwYcnNzkZkp7coxUj+1LtQ6lxruG5YqfAFpAtjRYwGGMGnbnqOVWLbuGIxGA/5y\n+2jkZEQpUoegIN63bx+WL1+O5OTkrnuJgd7niM80evRojB492rkKibohZHhaK7creVIAE6nFtoNl\n+GpDPvx9jXj6zjHITHLtmcKuEBTEf/7zn6Wug2SihfnhTr3NEwul5tuV1BDAzhzvagizGyalbdhd\ngjVbCxES6I1n7x6H5LgQResRFMSjRo0CANTU1CA8XLnfGojOJHTRllgrpHs6r6O0GsAAQ5i0zW63\n4/vtRfhpVwkiQnzx3D3j0D86SOmyhAXx3r178eCDD8Jms2H9+vXYv38/li5dimeffVbq+oh65cgK\n6jOD05lQdmURlyPhCzCAicRms9ux6ucT2HqgDP0iA/Dc3eMQHe6vdFkABAbxiy++iLfeeguPPPII\nAGDIkCF47LHHJC2M1EeKhVp93UssZHjamduZpFgZ3R2pul9AngAGGMKkfVabHV/8dBy7jlQiMTYI\nz949DmHBvT8nQU6CgthsNiMtLe2s14xGoyQFkXS0ND/sKDHvLXaVlN0v4FywKdEFO3tdIjFZrDYs\n+eEoDuZXIyMhFE/fNRZB/t5Kl3UWQUHs7e2N5ubmrv02jx8/ftbqaSIpCV20pXQYu0sAAwxhcg/t\nZis++jYXx4rrMCQ1Ek8sGAV/X/U1kYKC+J577sFvfvMbVFZW4rHHHsPGjRvx8ssvS10baZyYW1iq\nNYwdDV/A/QPYlesTiaWt3YL3Vx9GQVkDRg6KwWO3Xggfo7CdIeUmKIgvueQSpKSkYOPGjbDb7bj3\n3nuRmJgodW3kIcTec7ozHKUKZGfCF/CMAHalBiKxmNoteO/rQygqb8T4nDg8fMMIGL30SpfVI8FP\nX0pISMANN9zQ9e8FCxZg8eLFkhRF1B1H7ys+MzBdCWVngxdQd/h2YhdM7qS1zYJ3Vx1ESWUTLhne\nHw/NHw6DQb0hDDgQxOfKy8sTsw6SmNoXagntip3d5MOVMHWGJwUwwBAmdWgxmfHuqoMorWrG5JEJ\nWHjdcBj00j5LWAxOB7HUD0om6okYO25JwdHwBbQfwABDmNShxWTGOysPouxUM6aMGoDfXjNMEyEM\nuBDE5FnkeNiDI3PFnaGnhkBmABMpq6nVjMVfHUB5TQumj03CvXOGQq+REAb6COIxY8Z02/na7XY0\nNjZKVhS5D0cXYjl6vFLdsTPhC7hHAAMMYVKP1jYLFq/sCOGZ45Nx99VDNDdi22sQf/7553LVQRJS\n+/zwuZwJY0D67ljO8HXlfZ0YwOTu2sxWvP/1IZRXt+DycUmaDGGgjyCOj4+Xqw4il50ZlGKEsrPB\n24kBTCQdi9WGj9YcRlFFIyaO6I+7rx6qyRAG+gjihQsX9vqFvfrqq6IXRAS4fm9xbyF6Zki7Grbd\ncacABhjCpD42ux3L1h3D8ZJ6jM6OxQPXDdfUnPC5eg3iSZMmyVUHuTFnQ1XsjT46SRG+gPvM/3Zi\nAJNa/bC9CPuOn8KgpHA8evNIeKn8PuG+9BrEV199tVx1kES0Nj98rs4wUOvX4W7dL8AAJnX75XAF\nftpVgn6RAXj89lHwVum2lY4QdPuSxWLB559/jsOHD6Otra3r9RdffFGywkg95Lh1qS9SdcfOYgAT\nya+ovAErNuQh0N+Ip+8Yg5BA93j4kKAgfvLJJ2G1WrFt2zbMnz8fq1atwsiRI6WujdyIGEGqdHfs\nSlAxgIlc09RqxsffHYHNbsdjt1yIuKhApUsSjaAg3r9/P1auXIlZs2bh7rvvxg033ID77rtP6trI\nRWrqIMUkVyCLEVAMYCLX2Wx2LPn+CBqa23HL5YOQkx6ldEmiEhTEnc8eNhgMaG1tRVBQEKqrld/R\niKQn5rC02MPL5waJWB23GBjAROL5eW8p8krrMSorFnMnpStdjugEBXFISAjq6+sxYcIE3HnnnQgL\nC0NMTIzUtRE5RA0BwwAmEldlbQt+2FGE0EAfPHC9tm9T6omgIH7zzTdhMBjw0EMPYeXKlWhsbMRV\nV10ldW3kAncdllYjMQKOAUx0Pqut435hi9WO++blIDjAW+mSJCHo5qvO5w7r9XrMnj0bN910Ez75\n5BNJCyPlSbFa2p1CIalfsCgdsJQbcbjT95s8z87ciq7nCo8d0k/pciQjKIhXr14t6DVSB7V3w1oP\nBzUHcGdtWv8eE7W1W/DD9iL4ehuw4MpspcuRVK9D05s2bcLPP/+MyspKvPTSS12vNzU1wW63S14c\nKUcN9w6riVjBxm0oiYTZuOckmlrNmD91IMKDfZUuR1K9BrHRaERAQAB0Oh38/f27Xo+OjsZdd90l\neXHkOLV3w53UtkFHd8QMNwYwkXBtZis27T+JkEBvXD0xTelyJNdrEI8aNQqjRo3C1KlTkZGRIVdN\npDBP7obFDjYGMJHjdh+pRFu7FXMnpsHPR9CaYk0T9BVGRETgkUceQVlZGT766CPk5uZi9+7dmD9/\nvtT1kQPE6DA9MYSlCDUGMJFz7HY7th4og5dBh+ljk5QuRxaCFms98cQTGDFiBBoaOn5Ip6Sk4OOP\nP5a0MHIMQ1i4Mxc0SdEBS7kIi8jdlVe3oLK2FaMH90OYm88NdxLUEVdUVGD+/PlYsmQJAMDb2xt6\nvbYfO0XKk2ueWI4AYwdMJI6jRbUAgDHZsQpXIh9BQezldfZhDQ0NXDWtIlrshqUIYCVCiwFMJK6j\nxbXQ6YDhA6OVLkU2goJ4ypQpePLJJ9Hc3Izly5fj448/xty5c6WujQTQUghLuc+03BjAROKz2+0o\nqWxCYmyw2zziUIg+g7iurg5jx45FTEwMGhoasH79etx8882YPXu2HPVRL7QQwu4Uvp0YwkTSaGxp\nh9liQ7wbPeJQiF6DePXq1fjTn/6EgIAAtLe347XXXsPYsWPlqo0kJlUIiz3srJaAYgATSau63gQA\niI3w7+NI99JrEC9atAiffvopBg0ahK1bt+Lf//43g1glXA07sUNY7ZtzuIIBTCSP1jYLACA0yHOG\npYE+bl/S6/UYNGgQAA2Oxi0AAB/ASURBVGDMmDFobGyUpSjqnVpCuKCsoevDXTGEieTT+YhDm82z\nFgP32hGbzWbk5eV1rZBub28/699pae6/9ZjaqCGE5Q7egrIG2YOLAUwkP72uI4gtVgZxF5PJhDvv\nvPOs1zr/rdPpsHbtWukqo/O4EoBaDGClMISJlOHv2xFJtQ0mhSuRV69BvG7dOrnqoD4oGcJqCGC5\numKpdsUior5Fh/lDB6Cw3LOmQd1/N203oEQIqyF8zyV1GDOEiZTlbTQgPMQXBWUdm0bpTg9Vuzvu\nU6lyDOGzSVUbQ5hIHQbEBKGxpR3HiuuULkU2DGIVkzuEtbICWuwaGcJE6jE4JQIAsGnvSYUrkQ+D\nWKXkDGGtBLBWMISJnJeWEAYfowE/7y2F1UNuY2IQq5DcIaxFaq2bIUzkGqOXHkPTI1FZ24pNe0uV\nLkcWXKylMs4GjBIB7Mw5xAwqMRZvSXWrEhE575Lh/bHzcAWW/nAUF+XEd2304a4YxCqi9hCWIrxd\nDVIlNvvoiVrqINK68GBf5KRHYffRKmzaexIThscrXZKkODStEnKEsDNzwVJvYynGudU6TE1Ezps8\nMgFeBh3e+mo/mlvNSpcjKQaxCsgVwo6QewGXq4Ev12hCT9gNE4krIsQPE0ckoLahDe+vPqR0OZJi\nECtMbSGshhXUSl+fiNTh4mHxiA7zwzebC7D3aJXS5UiGQawgqUPYkVBVQwCfydlhdCWwGyaShpdB\nj7mT0mHQ6/DyR7+gur5V6ZIkwcVaGuNICIt5XE+Ky6r7PCahX4TT53d0MZaaFm8RkesSYoIwY2wS\nVm06gZc+/AXP3zseXgb36iEZxApxJgDFDGFnri8kdIW8z9Fg7qxVaMA6Gsb5pQ28jYlIxcYO6YeC\n8gYcyKvGW1/uxz1zhrrVPtQMYgVoKYSdDV+h53QklB0JWHbGRO5Dp9NhzsQ0nKptxerNBYgJ98ec\nSelKlyUa9+rvNUCqEBYypyp03rW4rLrrQ2qOXkeqeWCxVk8TkTR8vb1w68wsBAd4491Vh7Bxt/vs\nusUglpGUISzGMXKFr6vXlmv+Wyg1LXIjcmchgT64dWYWfIwG/OOTXdiZW6F0SaJgEMtEqRAW0gW7\nEsA1lSXdfjhLaC1Cu3uGJJF76RcRgJtmZAIAXnh3O/Ye0/5tTQxilRIrhHvjaAA7EriuBrQjgSzG\nMQCHp4m0IjU+FDdNz4TVZsez72zDwXxlRvLEwiCWgaNdmVwhLIQYXa4r51NqqJyI1C1jQBhumDoQ\nZqsNT7+1BfuPn1K6JKcxiCWmthAW0mmKHb59XacvfdXLrpjIMw1KjugIY0tHGGt1zphBLCE1hnBv\n5AhfZ68rZxg7g3PRRMrISo7AzTMGwWYHnlu8DZv3nVS6JIfxPmINkSqEnQnfhqoCQccFRyUJPmdn\nHeHR/bv9fOfX0NO9x2LdO8wNPoi0JWNAGG67Igsfrj6M//vwFzx4/XBMGpGgdFmCsSOWiNjdsNIh\n3FBVcNaHUM68z5Xu2NW5cyLSppS4ECyYlQ0fowH/75NdWLOlQOmSBGMQS0CKIWlnrtfbfLCQ4WBn\ngrcvQs8nZRgLwbliIu1JiAnCHVcOhr+vEf9ethdfrs9TuiRBGMQKc3VeuLcQ7onQAJaSkGv09cuC\ns2EsVVfMbptIef0iA3Dn7MEIDvDGO18dwJIfjihdUp8kC+KysjLcfPPNuPzyyzFz5ky8//77Ul1K\nVcT+YSxnCMsRwM5cU4oFZEL+O7ErJtKm6DB/3HXVEIQG+eB/3+Tiw28Ow263K11WjyRbrGUwGPDY\nY48hOzsbTU1NmDt3LsaPH4+0tDSpLqk5rswLSxHCQjgT1EIWbDVUFfR6XE1lSbeLuIrLqiVfvEVE\n2hMe7Iu7Zg/BOysPYOkPR9FutmLBrGxVPrVJso44Ojoa2dnZAIDAwECkpKSgokKb93gJ5Ug37Eq3\n5UzX3VMIC+lIXZ0rFvr+vo7p6WtwdtMPKYaSOTxNpB6hQT64c/ZgRIX54cv1eVi0fB9sNvV1xrLM\nEZeUlODw4cPIycmR43JuQcznBfcWwr2RYqhaaCD3xNEwdjUYOTxNpG3BAT6488rBiI3wxzebC/Da\n0j2wqiyMJQ/i5uZmLFy4EH/+858RGBgo9eUUI2Y3LOaQtDMhLNdiLVc+7wglFm4RkXoE+nvjjisH\nIz4qED/sKMI/Pt4Jq9WmdFldJA1is9mMhQsXYtasWZg6daqUl/IIcoWwXPoK/J4+J/YQdV/YFRNp\nn7+vEb+ZlY3E2CBs2F2K1z7bo5phaskWa9ntdjz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stY2Ii+rGfaVdxBATEZHbSsurAQCD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\ngugTmwHtAAAAAElFTkSuQmCC\n", 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0Oh1WrFiBw4cPIzg4GC+88ALi4uJEqpiIiJzNz0eNkioGui1E69A1Gg0+/PBD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\nAPDhhx/Czc0NKSkpSEtLw+jRoxEYGIj+/fs327Hevn270clyUVFRWL9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tGMREROSy5hZ57tLlDRjERETksmYzg9hZDGIiInJZSwuHpp3FICYiIpexI3Ye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\nthAREWmziNB6o0vwWUF2u91udBEAFy9e5Ntvv+WWW27BZNL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mvnHXDUf2jt0yVKUsRUWFmDNrBu7+3bt4+v4pcpfjlNhCJyKS2K2/mi93CU6j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\nwcHBCA4ORkJCwoDrvHv3Lnbs2IHnn39erxo2btyIc+fOYdu2bRg6dCi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c/3j9VXy+4j9YcPNinDp5As88+WjnsW1tl++nfrXz77jrHmjUatTW1uE/n32F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\n7Tx/TkTOVN/QjO17zkJbVY8R/SPxl6WjERTgmqgV2qEfOHA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"text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "import itertools\n", "for combo in itertools.combinations(numericalCols, 2):\n", " analyze.correlation_analyze(irisDf, combo[0], combo[1],\n", " categories=['Class'], \n", " measures=['PetalLengthCm', 'PetalWidthCm'])" ] }, { "cell_type": "code", "execution_count": 11, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:37.384592Z", "start_time": "2017-11-21T17:37:37.205412Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Variance of PetalLengthCm\n", "3.11317941834\n", "Skewness of PetalLengthCm\n", "-0.274464252474\n", "Kolmogrov - Smirnov test with distribution norm\n", "KstestResult(statistic=0.87653284874772308, pvalue=0.0)\n", "Anderson-Darling normality test on PetalLengthCm \n", "Statistic: 7.672883 \n", " p-value: 0.000000\n", "\n" ] }, { "ename": "AttributeError", "evalue": "'pandas._libs.interval.Interval' object has no attribute 'split'", "output_type": "error", "traceback": [ "\u001b[0;31m---------------------------------------------------------------------------\u001b[0m", "\u001b[0;31mAttributeError\u001b[0m Traceback (most recent call last)", "\u001b[0;32m\u001b[0m in \u001b[0;36m\u001b[0;34m()\u001b[0m\n\u001b[0;32m----> 1\u001b[0;31m \u001b[0mplotter\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mshow\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0manalyze\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mdist_analyze\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mirisDf\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0;34m'PetalLengthCm'\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mbayesian_hist\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0;32mFalse\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0m", "\u001b[0;32m~/playspace/data-science-utils/datascienceutils/analyze.py\u001b[0m in \u001b[0;36mdist_analyze\u001b[0;34m(df, column, category, is_normal, bayesian_hist, kdeplot, violinplot)\u001b[0m\n\u001b[1;32m 52\u001b[0m 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"plotter.show(analyze.dist_analyze(irisDf, 'PetalLengthCm'))" ] }, { "cell_type": "code", "execution_count": null, "metadata": { "ExecuteTime": { "start_time": "2017-11-21T17:38:23.148Z" }, "scrolled": true }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "P-value and test statistic for distribution similarity between SepalLengthCm and SepalWidthCm\n" ] } ], "source": [ "analyze.regression_analyze(irisDf, 'SepalLengthCm', 'SepalWidthCm', check_vif=False, check_heteroskedasticity=False)" ] }, { "cell_type": "code", "execution_count": null, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:37.388842Z", "start_time": "2017-11-21T17:37:30.815Z" } }, "outputs": [], "source": [ "irisDf.head()" ] }, { "cell_type": "code", "execution_count": null, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:37.389911Z", "start_time": "2017-11-21T17:37:30.818Z" } }, "outputs": [], "source": [ "irisDf.tail()" ] }, { "cell_type": "code", "execution_count": null, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:37.390965Z", "start_time": "2017-11-21T17:37:30.821Z" } }, "outputs": [], "source": [ "plotter.show(analyze.fractal_analyze(irisDf, 'SepalLengthCm'))" ] }, { "cell_type": "code", "execution_count": null, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:37.392041Z", "start_time": "2017-11-21T17:37:30.825Z" } }, "outputs": [], "source": [ "print(analyze.fractal_dimension(irisDf[['SepalLengthCm', 'PetalLengthCm']].as_matrix()))" ] }, { "cell_type": "code", "execution_count": null, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:37.393132Z", "start_time": "2017-11-21T17:37:30.829Z" }, "scrolled": false }, "outputs": [], "source": [ "hdd2013Df.fillna(value=0, inplace=True)\n", "hdd2013Df.describe()" ] }, { "cell_type": "code", "execution_count": null, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:37.394139Z", "start_time": "2017-11-21T17:37:30.831Z" }, "scrolled": false }, "outputs": [], "source": [ "hdd2013Df.head()" ] }, { "cell_type": "code", "execution_count": null, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:37.395224Z", "start_time": "2017-11-21T17:37:30.834Z" }, "scrolled": false }, "outputs": [], "source": [ "hdd2013Df['date'] = hdd2013Df['date'].astype('datetime64[ns]')" ] }, { "cell_type": "code", "execution_count": null, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:37.396256Z", "start_time": "2017-11-21T17:37:30.838Z" }, "scrolled": false }, "outputs": [], "source": [ "hdd2013Df['date'] = [each + datetime.timedelta(0, i*45) for i, each in enumerate(hdd2013Df.date)]" ] }, { "cell_type": "code", "execution_count": null, "metadata": { "ExecuteTime": { "end_time": "2017-11-21T17:37:37.396901Z", "start_time": "2017-11-21T17:37:30.840Z" }, "scrolled": false }, "outputs": [], "source": [ "analyze.time_series_analysis(hdd2013Df, timeCol='date', valueCol='smart_1_raw', seasonal={'freq': '30s'})" ] }, { "cell_type": "code", "execution_count": null, "metadata": { "scrolled": false }, "outputs": [], "source": [] } ], "metadata": { "anaconda-cloud": {}, "kernelspec": { "display_name": "Python 3", "language": "python", "name": "python3" }, "language_info": { "codemirror_mode": { "name": "ipython", "version": 3 }, "file_extension": ".py", "mimetype": "text/x-python", "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", "version": "3.6.3" }, "latex_envs": { "bibliofile": "biblio.bib", "cite_by": "apalike", "current_citInitial": 1, "eqLabelWithNumbers": true, "eqNumInitial": 0 } }, "nbformat": 4, "nbformat_minor": 1 }