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For tidiness
For tidiness









  1. #For tidiness pdf#
  2. #For tidiness install#
  3. #For tidiness archive#
  4. #For tidiness plus#

In the Orient, for example, digested urine was used to clean the brightly coloured manmade clothing that was fashionable. Cleaning habits were related to cultural expectations, available natural resources, development of fabrics, and the development of technology. This is to be framed as an internal document.The concept of cleanliness has been important for mankind since ancient times when water and available natural Compounds were used for washing the body and cleaning clothes. Reporting for this ProjectĬreate a 300-600 word written report called wrangle_report.pdf or wrangle_report.html that briefly describes your wrangling efforts. At least three (3) insights and one (1) visualization must be produced. Additionally, you may store the cleaned data in a SQLite database (which is to be submitted as well if you do).Īnalyze and visualize your wrangled data in your wrangle_act.ipynb Jupyter Notebook. If additional files exist because multiple tables are required for tidiness, name these files appropriately. Store the clean DataFrame(s) in a CSV file with the main one named twitter_archive_master.csv. Storing, Analyzing, and Visualizing Data for this Project Again, the issues that satisfy the Project Motivation must be cleaned. The result should be a high quality and tidy master pandas DataFrame (or DataFrames, if appropriate). Perform this cleaning in wrangle_act.ipynb as well.

for tidiness

Cleaning Data for this ProjectĬlean each of the issues you documented while assessing. To meet specifications, the issues that satisfy the Project Motivation (see the Key Points header on the previous page) must be assessed.

for tidiness

Detect and document at least eight (8) quality issues and two (2) tidiness issues in your wrangle_act.ipynb Jupyter Notebook. Gather each of the three pieces of data as described below in a Jupyter Notebook titled wrangle_act.ipynb: Assessing Data for this ProjectĪfter gathering each of the above pieces of data, assess them visually and programmatically for quality and tidiness issues. Reporting on 1) your data wrangling efforts and 2) your data analyses and visualizations Storing, analyzing, and visualizing your wrangled data Your tasks in this project are as follows: Data wrangling, which consists of: This task can be done in a Jupyter Notebook, but you might prefer to use a word processor like Google Docs, which is free, or Microsoft Word.Ī text editor, like Sublime, which is free, will be useful but is not required.

#For tidiness pdf#

You need to be able to create written documents that contain images and you need to be able to export these documents as PDF files. Please revisit our Anaconda tutorial earlier in the Nanodegree program for package installation instructions.

#For tidiness install#

You can install these packages via conda or pip. The following packages (libraries) need to be installed. Please revisit our Jupyter Notebook and Anaconda tutorials earlier in the Nanodegree program for installation instructions. You need to be able to work in a Jupyter Notebook on your computer.

#For tidiness archive#

This archive contains basic tweet data (tweet ID, timestamp, text, etc.) for all 5000+ of their tweets as they stood on August 1, 2017.

for tidiness

WeRateDogs downloaded their Twitter archive and sent it to Udacity via email exclusively for you to use in this project. Why? Because "they're good dogs Brent." WeRateDogs has over 4 million followers and has received international media coverage. The numerators, though? Almost always greater than 10. These ratings almost always have a denominator of 10.

for tidiness

WeRateDogs is a Twitter account that rates people's dogs with a humorous comment about the dog. The dataset that you will be wrangling (and analyzing and visualizing) is the tweet archive of Twitter user also known as WeRateDogs.

#For tidiness plus#

You will document your wrangling efforts in a Jupyter Notebook, plus showcase them through analyses and visualizations using Python (and its libraries) and/or SQL. Using Python and its libraries, you will gather data from a variety of sources and in a variety of formats, assess its quality and tidiness, then clean it.











For tidiness