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"# Ex - GroupBy"
]
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"### Introduction:\n",
"\n",
"GroupBy can be summarizes as Split-Apply-Combine.\n",
"\n",
"Special thanks to: https://github.com/justmarkham for sharing the dataset and materials.\n",
"\n",
"Check out this [Diagram](http://i.imgur.com/yjNkiwL.png) \n",
"### Step 1. Import the necessary libraries"
]
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"### Step 2. Import the dataset from this [address](https://raw.githubusercontent.com/justmarkham/DAT8/master/data/drinks.csv). "
]
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"### Step 3. Assign it to a variable called drinks."
]
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"### Step 4. Which continent drinks more beer on average?"
]
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"### Step 5. For each continent print the statistics for wine consumption."
]
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"### Step 6. Print the mean alcoohol consumption per continent for every column"
]
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"### Step 7. Print the median alcoohol consumption per continent for every column"
]
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"### Step 8. Print the mean, min and max values for spirit consumption.\n",
"#### This time output a DataFrame"
]
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