diff --git a/your-code/ages_population.csv b/your-code/ages_population.csv
new file mode 100644
index 0000000..64d8a0a
--- /dev/null
+++ b/your-code/ages_population.csv
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new file mode 100644
index 0000000..00860cb
--- /dev/null
+++ b/your-code/ages_population2.csv
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diff --git a/your-code/ages_population3.csv b/your-code/ages_population3.csv
new file mode 100644
index 0000000..6339a1d
--- /dev/null
+++ b/your-code/ages_population3.csv
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diff --git a/your-code/main.ipynb b/your-code/main.ipynb
index a0a5b66..ef450d7 100644
--- a/your-code/main.ipynb
+++ b/your-code/main.ipynb
@@ -1,6 +1,7 @@
{
"cells": [
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -11,14 +12,19 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 1,
"metadata": {},
"outputs": [],
"source": [
- "# Libraries"
+ "import statistics as stata\n",
+ "import random\n",
+ "import pandas as pd\n",
+ "import matplotlib.pyplot as plt\n",
+ "import numpy as np\n"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -29,14 +35,86 @@
},
{
"cell_type": "code",
- "execution_count": null,
- "metadata": {},
- "outputs": [],
- "source": [
- "# your code here"
+ "execution_count": 26,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/html": [
+ "
\n",
+ "\n",
+ "
\n",
+ " \n",
+ " \n",
+ " | \n",
+ " Dice Number | \n",
+ "
\n",
+ " \n",
+ " \n",
+ " \n",
+ " | 0 | \n",
+ " 1 | \n",
+ "
\n",
+ " \n",
+ " | 1 | \n",
+ " 3 | \n",
+ "
\n",
+ " \n",
+ " | 2 | \n",
+ " 6 | \n",
+ "
\n",
+ " \n",
+ " | 3 | \n",
+ " 2 | \n",
+ "
\n",
+ " \n",
+ " | 4 | \n",
+ " 3 | \n",
+ "
\n",
+ " \n",
+ "
\n",
+ "
"
+ ],
+ "text/plain": [
+ " Dice Number\n",
+ "0 1\n",
+ "1 3\n",
+ "2 6\n",
+ "3 2\n",
+ "4 3"
+ ]
+ },
+ "execution_count": 26,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
+ "source": [
+ "def rolling_dice():\n",
+ " dice_numbers = []\n",
+ " for item in range(5):\n",
+ " x = random.randint(1,6)\n",
+ " dice_numbers.append(x)\n",
+ " return pd.DataFrame(dice_numbers, columns = [\"Dice Number\"])\n",
+ "\n",
+ "dice = rolling_dice()\n",
+ "dice"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -45,14 +123,40 @@
},
{
"cell_type": "code",
- "execution_count": null,
- "metadata": {},
- "outputs": [],
- "source": [
- "# your code here"
+ "execution_count": 27,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "[]"
+ ]
+ },
+ "execution_count": 27,
+ "metadata": {},
+ "output_type": "execute_result"
+ },
+ {
+ "data": {
+ "image/png": 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",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {},
+ "output_type": "display_data"
+ }
+ ],
+ "source": [
+ "dice_rolls = roll_dice()\n",
+ "\n",
+ "sorted_dice = pd.DataFrame(sorted(dice[\"Dice Number\"]))\n",
+ "\n",
+ "plt.plot(sorted_dice)"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -61,25 +165,34 @@
},
{
"cell_type": "code",
- "execution_count": null,
- "metadata": {},
- "outputs": [],
- "source": [
- "# your code here"
- ]
- },
- {
- "cell_type": "code",
- "execution_count": null,
+ "execution_count": 28,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "image/png": 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",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {},
+ "output_type": "display_data"
+ }
+ ],
"source": [
- "\"\"\"\n",
- "your comments here\n",
- "\"\"\""
+ "dice_rolls = roll_dice()\n",
+ "\n",
+ "freq_dist = dice_rolls['Result'].value_counts().sort_index()\n",
+ "\n",
+ "plt.bar(freq_dist.index, freq_dist.values)\n",
+ "plt.xlabel('Dice Value')\n",
+ "plt.ylabel('Frequency')\n",
+ "plt.title('Dice Rolls Frequency Distribution')\n",
+ "plt.show()"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -91,14 +204,31 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 32,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "3.0"
+ ]
+ },
+ "execution_count": 32,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
"source": [
- "# your code here"
+ "def average1(x):\n",
+ " a=0\n",
+ " for item in x:\n",
+ " a = a + item\n",
+ " return a/len(x)\n",
+ "average1(dice[\"Dice Number\"])"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -107,14 +237,33 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 33,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "{1: 1, 3: 2, 6: 1, 2: 1}"
+ ]
+ },
+ "execution_count": 33,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
"source": [
- "# your code here"
+ "dice_dict = {}\n",
+ "for item in list(dice[\"Dice Number\"]):\n",
+ " if item not in dice_dict:\n",
+ " dice_dict[item] = 1\n",
+ " else:\n",
+ " dice_dict[item] += 1\n",
+ "\n",
+ "dice_dict"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -124,14 +273,33 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 34,
"metadata": {},
"outputs": [],
"source": [
- "# your code here"
+ "def median(dice_results):\n",
+ " n = len(dice_results)\n",
+ " sorted_results = sorted(dice_results)\n",
+ " if n % 2 == 0:\n",
+ " mid_right = n // 2\n",
+ " mid_left = mid_right - 1\n",
+ " return (sorted_results[mid_left] + sorted_results[mid_right]) / 2\n",
+ " else:\n",
+ " mid = n // 2\n",
+ " return sorted_results[mid]\n",
+ " sum = 0\n",
+ "\n",
+ "def average(x):\n",
+ " sum = 0\n",
+ " counter = 0\n",
+ " for item,item2 in x.items():\n",
+ " sum = sum + item * item2\n",
+ " counter=counter+item2\n",
+ " return sum/counter"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -140,14 +308,28 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 35,
"metadata": {},
"outputs": [],
"source": [
- "# your code here"
+ "def compute_quartiles(data):\n",
+ " data = sorted(data)\n",
+ " \n",
+ " n = len(data)\n",
+ " if n % 2 == 0:\n",
+ " mid = n // 2\n",
+ " q1 = compute_median(data[:mid])\n",
+ " q3 = compute_median(data[mid:])\n",
+ " else:\n",
+ " mid = (n - 1) // 2\n",
+ " q1 = compute_median(data[:mid])\n",
+ " q3 = compute_median(data[mid + 1:])\n",
+ " \n",
+ " return q1, q3"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -158,18 +340,51 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 9,
"metadata": {},
"outputs": [],
"source": [
- "# your code here"
+ "df = pd.read_csv('C:/Users/Leticia Demarchi/Documents/Ironhack Lisbon April/Labs/4 Week/Descriptive-Stats/data/roll_the_dice_hundred.csv', header=None, dtype={100: 'category'})\n",
+ "df_sorted = df.sort_values(0)\n"
]
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 10,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "image/png": 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",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {},
+ "output_type": "display_data"
+ }
+ ],
+ "source": [
+ "plt.plot(df_sorted[0], 'o')\n",
+ "plt.show()\n"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 11,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "'\\nyour comments here\\n'"
+ ]
+ },
+ "execution_count": 11,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
"source": [
"\"\"\"\n",
"your comments here\n",
@@ -177,6 +392,7 @@
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -185,14 +401,27 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 37,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "ename": "NameError",
+ "evalue": "name 'idk' is not defined",
+ "output_type": "error",
+ "traceback": [
+ "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m",
+ "\u001b[1;31mNameError\u001b[0m Traceback (most recent call last)",
+ "Cell \u001b[1;32mIn[37], line 1\u001b[0m\n\u001b[1;32m----> 1\u001b[0m idk\n",
+ "\u001b[1;31mNameError\u001b[0m: name 'idk' is not defined"
+ ]
+ }
+ ],
"source": [
- "# your code here"
+ "idk"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -203,12 +432,34 @@
"cell_type": "code",
"execution_count": null,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "name": "stdout",
+ "output_type": "stream",
+ "text": [
+ "0\n",
+ "0.0 1\n",
+ "63.0 1\n",
+ "73.0 1\n",
+ "72.0 1\n",
+ "71.0 1\n",
+ " ..\n",
+ "30.0 1\n",
+ "29.0 1\n",
+ "28.0 1\n",
+ "27.0 1\n",
+ "99.0 1\n",
+ "Name: count, Length: 100, dtype: int64\n"
+ ]
+ }
+ ],
"source": [
- "# your code here"
+ "freq = df[0].value_counts()\n",
+ "print(freq)"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -219,16 +470,39 @@
"cell_type": "code",
"execution_count": null,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "image/png": 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",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {},
+ "output_type": "display_data"
+ }
+ ],
"source": [
- "# your code here"
+ "plt.hist(freq_dist.index, bins=range(1, 8), weights=freq_dist.values)\n",
+ "plt.show()"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "'\\nyour comments here\\n'"
+ ]
+ },
+ "execution_count": 98,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
"source": [
"\"\"\"\n",
"your comments here\n",
@@ -236,6 +510,7 @@
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -246,16 +521,44 @@
"cell_type": "code",
"execution_count": null,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "image/png": 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",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {},
+ "output_type": "display_data"
+ }
+ ],
"source": [
- "# your code here"
+ "df = pd.read_csv('C:/Users/Leticia Demarchi/Documents/Ironhack Lisbon April/Labs/4 Week/Descriptive-Stats/data/roll_the_dice_thousand.csv', header=None)\n",
+ "\n",
+ "freq_dist = df[0].value_counts().sort_index()\n",
+ "plt.bar(freq_dist.index, freq_dist.values)\n",
+ "plt.xlabel('Dice Value')\n",
+ "plt.ylabel('Frequency')\n",
+ "plt.show()"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "'\\nyour comments here\\n'"
+ ]
+ },
+ "execution_count": 100,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
"source": [
"\"\"\"\n",
"your comments here\n",
@@ -263,6 +566,7 @@
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -276,12 +580,30 @@
"cell_type": "code",
"execution_count": null,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "image/png": 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",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {},
+ "output_type": "display_data"
+ }
+ ],
"source": [
- "# your code here"
+ "df = pd.read_csv('C:/Users/Leticia Demarchi/Documents/Ironhack Lisbon April/Labs/4 Week/Descriptive-Stats/data/ages_population.csv')\n",
+ "freq_dist = df['observation'].value_counts().sort_index()\n",
+ "\n",
+ "plt.bar(freq_dist.index, freq_dist.values)\n",
+ "plt.xlabel('Age')\n",
+ "plt.ylabel('Frequency')\n",
+ "plt.show()"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -293,9 +615,7 @@
"execution_count": null,
"metadata": {},
"outputs": [],
- "source": [
- "# your code here"
- ]
+ "source": []
},
{
"cell_type": "code",
@@ -309,6 +629,7 @@
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -317,14 +638,42 @@
},
{
"cell_type": "code",
- "execution_count": null,
- "metadata": {},
- "outputs": [],
- "source": [
- "# your code here"
+ "execution_count": 41,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "(array([ 16., 52., 119., 98., 245., 254., 90., 92., 29., 5.]),\n",
+ " array([19. , 20.7, 22.4, 24.1, 25.8, 27.5, 29.2, 30.9, 32.6, 34.3, 36. ]),\n",
+ " )"
+ ]
+ },
+ "execution_count": 41,
+ "metadata": {},
+ "output_type": "execute_result"
+ },
+ {
+ "data": {
+ "image/png": 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",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {},
+ "output_type": "display_data"
+ }
+ ],
+ "source": [
+ "import pandas as pd\n",
+ "import matplotlib.pyplot as plt\n",
+ "\n",
+ "data = pd.read_csv('ages_population2.csv')\n",
+ "plt.hist(data)\n"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -343,6 +692,7 @@
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -351,11 +701,23 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 42,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "name": "stdout",
+ "output_type": "stream",
+ "text": [
+ "observation 27.155\n",
+ "dtype: float64\n",
+ "observation 2.969814\n",
+ "dtype: float64\n"
+ ]
+ }
+ ],
"source": [
- "# your code here"
+ "print(data.mean())\n",
+ "print(data.std())"
]
},
{
@@ -370,6 +732,7 @@
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -381,14 +744,40 @@
},
{
"cell_type": "code",
- "execution_count": null,
- "metadata": {},
- "outputs": [],
- "source": [
- "# your code here"
+ "execution_count": 45,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "(array([ 8., 33., 78., 158., 187., 174., 133., 57., 117., 55.]),\n",
+ " array([ 1. , 8.6, 16.2, 23.8, 31.4, 39. , 46.6, 54.2, 61.8, 69.4, 77. ]),\n",
+ " )"
+ ]
+ },
+ "execution_count": 45,
+ "metadata": {},
+ "output_type": "execute_result"
+ },
+ {
+ "data": {
+ "image/png": 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",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {},
+ "output_type": "display_data"
+ }
+ ],
+ "source": [
+ "population3 = pd.read_csv(\"ages_population3.csv\")\n",
+ "\n",
+ "plt.hist(population3)"
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -397,11 +786,23 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 46,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "name": "stdout",
+ "output_type": "stream",
+ "text": [
+ "observation 41.989\n",
+ "dtype: float64\n",
+ "observation 16.144706\n",
+ "dtype: float64\n"
+ ]
+ }
+ ],
"source": [
- "# your code here"
+ "print(population3.mean())\n",
+ "print(population3.std())"
]
},
{
@@ -416,6 +817,7 @@
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -424,11 +826,24 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 47,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "name": "stdout",
+ "output_type": "stream",
+ "text": [
+ "[30.] [40.] [53.] [77.]\n"
+ ]
+ }
+ ],
"source": [
- "# your code here"
+ "q1=np.quantile(population3, [0.25])\n",
+ "q2=np.quantile(population3, [0.5])\n",
+ "q3=np.quantile(population3, [0.75])\n",
+ "q4=np.quantile(population3, [1])\n",
+ "\n",
+ "print(q1, q2, q3, q4)"
]
},
{
@@ -443,6 +858,7 @@
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -451,11 +867,24 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 48,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "76.0"
+ ]
+ },
+ "execution_count": 48,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
"source": [
- "# your code here"
+ "\n",
+ "range=np.max(population3)-np.min(population3)\n",
+ "range "
]
},
{
@@ -470,6 +899,7 @@
]
},
{
+ "attachments": {},
"cell_type": "markdown",
"metadata": {},
"source": [
@@ -500,9 +930,9 @@
],
"metadata": {
"kernelspec": {
- "display_name": "ironhack-3.7",
+ "display_name": "Python 3",
"language": "python",
- "name": "ironhack-3.7"
+ "name": "python3"
},
"language_info": {
"codemirror_mode": {
@@ -514,7 +944,7 @@
"name": "python",
"nbconvert_exporter": "python",
"pygments_lexer": "ipython3",
- "version": "3.7.3"
+ "version": "3.11.2"
}
},
"nbformat": 4,
diff --git a/your-code/roll_the_dice_hundred.csv b/your-code/roll_the_dice_hundred.csv
new file mode 100644
index 0000000..50975a2
--- /dev/null
+++ b/your-code/roll_the_dice_hundred.csv
@@ -0,0 +1,101 @@
+,roll,value
+0,0,1
+1,1,2
+2,2,6
+3,3,1
+4,4,6
+5,5,5
+6,6,2
+7,7,2
+8,8,4
+9,9,1
+10,10,5
+11,11,6
+12,12,5
+13,13,4
+14,14,5
+15,15,4
+16,16,4
+17,17,6
+18,18,2
+19,19,4
+20,20,4
+21,21,6
+22,22,3
+23,23,6
+24,24,6
+25,25,4
+26,26,1
+27,27,4
+28,28,4
+29,29,2
+30,30,6
+31,31,5
+32,32,5
+33,33,2
+34,34,3
+35,35,6
+36,36,6
+37,37,2
+38,38,3
+39,39,6
+40,40,6
+41,41,2
+42,42,5
+43,43,3
+44,44,4
+45,45,6
+46,46,2
+47,47,1
+48,48,4
+49,49,2
+50,50,3
+51,51,2
+52,52,2
+53,53,4
+54,54,6
+55,55,2
+56,56,1
+57,57,3
+58,58,2
+59,59,4
+60,60,4
+61,61,3
+62,62,4
+63,63,1
+64,64,3
+65,65,6
+66,66,3
+67,67,4
+68,68,4
+69,69,4
+70,70,2
+71,71,2
+72,72,5
+73,73,1
+74,74,5
+75,75,6
+76,76,2
+77,77,4
+78,78,6
+79,79,5
+80,80,6
+81,81,4
+82,82,1
+83,83,3
+84,84,3
+85,85,3
+86,86,5
+87,87,6
+88,88,5
+89,89,1
+90,90,6
+91,91,3
+92,92,6
+93,93,4
+94,94,1
+95,95,4
+96,96,6
+97,97,1
+98,98,3
+99,99,6
diff --git a/your-code/roll_the_dice_thousand.csv b/your-code/roll_the_dice_thousand.csv
new file mode 100644
index 0000000..f820dbb
--- /dev/null
+++ b/your-code/roll_the_dice_thousand.csv
@@ -0,0 +1,1001 @@
+,roll,value
+0,0,5
+1,1,6
+2,2,1
+3,3,6
+4,4,5
+5,5,2
+6,6,6
+7,7,5
+8,8,6
+9,9,6
+10,10,4
+11,11,3
+12,12,5
+13,13,6
+14,14,1
+15,15,3
+16,16,1
+17,17,1
+18,18,1
+19,19,1
+20,20,6
+21,21,2
+22,22,3
+23,23,4
+24,24,6
+25,25,5
+26,26,3
+27,27,2
+28,28,4
+29,29,1
+30,30,3
+31,31,4
+32,32,3
+33,33,3
+34,34,6
+35,35,2
+36,36,1
+37,37,2
+38,38,6
+39,39,4
+40,40,1
+41,41,4
+42,42,6
+43,43,1
+44,44,6
+45,45,3
+46,46,6
+47,47,4
+48,48,5
+49,49,1
+50,50,4
+51,51,4
+52,52,4
+53,53,6
+54,54,2
+55,55,6
+56,56,4
+57,57,6
+58,58,6
+59,59,2
+60,60,4
+61,61,1
+62,62,4
+63,63,3
+64,64,1
+65,65,4
+66,66,1
+67,67,2
+68,68,3
+69,69,3
+70,70,1
+71,71,6
+72,72,1
+73,73,6
+74,74,5
+75,75,2
+76,76,6
+77,77,5
+78,78,4
+79,79,6
+80,80,5
+81,81,1
+82,82,4
+83,83,4
+84,84,4
+85,85,4
+86,86,6
+87,87,2
+88,88,4
+89,89,5
+90,90,4
+91,91,3
+92,92,4
+93,93,3
+94,94,2
+95,95,5
+96,96,1
+97,97,6
+98,98,6
+99,99,1
+100,100,1
+101,101,3
+102,102,3
+103,103,2
+104,104,1
+105,105,3
+106,106,6
+107,107,2
+108,108,1
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