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va-project/presentation_notebook.ipynb

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{
"cells": [
{
"attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
"<h1>Function for getting scores: Sigmoid fucntion</h1>"
]
},
{
"cell_type": "code",
"execution_count": 4,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"75.50813375962909\n"
]
}
],
"source": [
"\n",
"mean_stocks = 5\n",
"value_stock = 4\n",
"\n",
"score= (200/(1+math.e**( 0.5*(mean_stocks-value_stock))))\n",
"\n",
"print(score)\n"
]
},
{
"cell_type": "code",
"execution_count": 14,
"metadata": {},
"outputs": [
{
"data": {
"image/png": 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",
"text/plain": [
"<Figure size 600x400 with 1 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
},
{
"data": {
"application/vnd.jupyter.widget-view+json": {
"model_id": "1e6dab8358774ba1b4a796b47bbf6360",
"version_major": 2,
"version_minor": 0
},
"text/plain": [
"interactive(children=(IntSlider(value=1, description='w', max=10), FloatSlider(value=1.0, description='amp', m…"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"import ipywidgets as widgets\n",
"import matplotlib.pyplot as plt\n",
"import numpy as np\n",
"# set up plot\n",
"fig, ax = plt.subplots(figsize=(6, 4))\n",
"ax.set_ylim([-4, 4])\n",
"ax.grid(True)\n",
" \n",
"# generate x values\n",
"x = np.linspace(0, 2 * np.pi, 100)\n",
" \n",
" \n",
"def my_sine(x, w, amp, phi):\n",
" \"\"\"\n",
" Return a sine for x with angular frequeny w and amplitude amp.\n",
" \"\"\"\n",
" return amp*np.sin(w * (x-phi))\n",
" \n",
" \n",
"@widgets.interact(w=(0, 10, 1), amp=(0, 4, .1), phi=(0, 2*np.pi+0.01, 0.01))\n",
"def update(w = 1.0, amp=1, phi=0):\n",
" \"\"\"Remove old lines from plot and plot new one\"\"\"\n",
" [l.remove() for l in ax.lines]\n",
" ax.plot(x, my_sine(x, w, amp, phi), color='C0')\n",
"\n"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
}
],
"metadata": {
"language_info": {
"name": "python"
},
"orig_nbformat": 4
},
"nbformat": 4,
"nbformat_minor": 2
}