aboutsummaryrefslogtreecommitdiff
path: root/content/blog/2024-01-27-tableau-dashboard.md
diff options
context:
space:
mode:
Diffstat (limited to 'content/blog/2024-01-27-tableau-dashboard.md')
-rw-r--r--content/blog/2024-01-27-tableau-dashboard.md148
1 files changed, 0 insertions, 148 deletions
diff --git a/content/blog/2024-01-27-tableau-dashboard.md b/content/blog/2024-01-27-tableau-dashboard.md
deleted file mode 100644
index 3fa0d50..0000000
--- a/content/blog/2024-01-27-tableau-dashboard.md
+++ /dev/null
@@ -1,148 +0,0 @@
-+++
-date = 2024-01-27
-title = "Data Visualization: Mapping Omaha Crime Data with Tableau"
-description = ""
-draft = false
-+++
-
-In this project, I am going to show you how to use Tableau Public for free to
-create simple dashboards.
-
-I will be creating simple visuals from an Omaha crime data set and combining
-them to create the dashboard below. You can view this dashboard interactively
-online here: [Omaha Crime Data (2015 -
-2023)](https://public.tableau.com/app/profile/c.c7042/viz/OmahaCrimeData2015-2023/OmahaCrimeData2015-2023#1).
-
-![Tableau
-Dashboard](https://img.cleberg.net/blog/20240127-tableau-dashboard/dashboard.png)
-
-# Gather the Data
-
-You can download incident data from the Omaha Police Department on their
-[Incident Data
-Download](https://police.cityofomaha.org/crime-information/incident-data-download)
-page. They currently have files for the years 2015 through 2023.
-
-Each file will be downloaded as a CSV file, approximately 3 MB - 8 MB.
-
-# Clean and Transform the Data
-
-I have used Python to combine the files into a single CSV file, as well as
-adding a custom `datetime` column. You could do this step in any software you
-prefer, but I prefer Python as its free, easy to use, and has a plethora of
-support resources online.
-
-Start by opening a terminal, navigating to your Downloads directory, and
-creating a python script.
-
-```sh
-cd ~/Downloads
-nano data_processing.py
-```
-
-Within the Python script, paste the following:
-
-```python
-# Import modules
-import pandas as pd
-import glob
-import os
-
-# Import the data
-path = r"~/Downloads/*.csv"
-files = glob.glob(path)
-
-list = []
-
-for file in files:
- df_tmp = pd.read_csv(file)
- li.append(df_tmp)
-
-df = pd.concat(list, axis=0, ignore_index=True)
-
-# Create a combined datetime column
-df["datetime"] = pd.to_datetime(
- df["date"] + " " + df["time"],
- format="%m/%d/%Y %H:%M:%S"
-)
-df.head()
-
-# Export the combined data
-df.to_csv(r"~/Downloads/combined_incidents.csv")
-```
-
-Once pasted, save and close the file. You can execute the file like so:
-
-```sh
-python3 data_processing.py
-```
-
-After this, you should have a combined data file that contains all incidents
-between 2015 and 2023. Mine was approximately 55 MB.
-
-# Tableau Public
-
-[Tableau Public](https://public.tableau.com/) is a free-to-use web application
-that allows you to create visualizations by uploading data sources. Note that
-there's no way to keep the data and visualizations private, so don't upload
-anything private.
-
-After creating an account, you can click the `Create` > `Web Authoring` link to
-create your first visualization.
-
-## Upload the Data
-
-Once you've opened your first project, Tableau will ask you to connect to your
-data. For this project, click the `Upload from computer` button and select the
-CSV file previously combined in the step above.
-
-Once connected, you can refresh the preview of the data with the `Refresh Data
-Source` button in the toolbar.
-
-If you need to edit any of the data types, column names, etc., you can do so
-now. Once complete, generate an extract so that you can start creating
-visualizations.
-
-## Create Visualizations
-
-To start, create a worksheet in the toolbar at the bottom of the screen.
-
-Within this screen, select a column from the `Data` side bar on the left and
-drag it into the `Columns` or `Rows` area of the canvas.
-
-See below for the map visualization. You can recreate this by adding the
-following fields:
-
-- `Columns`: Lon
-- `Rows`: Lat
-- `Marks`:
- - Description
- - Datetime
-- `Filters`: Datetime
-
-You can repeat this process for each visualization you want to create. Explore
-your options by dragging data fields to different areas and by opening the field
-options to explore what operations can be performed on different data types
-(e.g., average, count, etc.).
-
-## Create Dashboard
-
-To create a dashboard, click the button on the toolbar at the bottom of the
-screen. Within the dashboard, drag each sheet from the left side bar onto the
-dashboard canvas.
-
-## Formatting
-
-You can explore a ton of different formatting options throughout the worksheets
-and dashboard. Specifically for maps, you can alter the map layers, background,
-and visible features through the `Map` menu in the top file menu of the editing
-screen.
-
-In the finished dashboard below, I opted for a dark mode with a map that showed
-county lines and city names.
-
-There's a ton of other options available to be used in a dashboard like this,
-but this project shows a quick preview of what you can do in Tableau Public.
-
-![Tableau
-Dashboard](https://img.cleberg.net/blog/20240127-tableau-dashboard/dashboard.png)