Project demonstrating the integration of sqlalchemy in a jupyter notebook. Basis climate analysis using SQLAlchemy, ORM queries, Pandas, and Matplotlib
Create a new repository for this project called sqlalchemy-challenge
. Do not add this homework to an existing repository.
Clone the new repository to your computer.
Add your Jupyter notebook and app.py
to this folder. These will be the main scripts to run for analysis.
Push the above changes to GitHub or GitLab.
Congratulations! You’ve decided to treat yourself to a long holiday vacation in Honolulu, Hawaii! To help with your trip planning, you need to do some climate analysis on the area. The following outlines what you need to do.
To begin, use Python and SQLAlchemy to do basic climate analysis and data exploration of your climate database. All of the following analysis should be completed using SQLAlchemy ORM queries, Pandas, and Matplotlib.
Use the provided starter notebook and hawaii.sqlite files to complete your climate analysis and data exploration.
Choose a start date and end date for your trip. Make sure that your vacation range is approximately 3-15 days total.
Use SQLAlchemy create_engine
to connect to your sqlite database.
Use SQLAlchemy automap_base()
to reflect your tables into classes and save a reference to those classes called Station
and Measurement
.
Design a query to retrieve the last 12 months of precipitation data.
Select only the date
and prcp
values.
Load the query results into a Pandas DataFrame and set the index to the date column.
Sort the DataFrame values by date
.
Plot the results using the DataFrame plot
method.
Use Pandas to print the summary statistics for the precipitation data.
Design a query to calculate the total number of stations.
Design a query to find the most active stations.
List the stations and observation counts in descending order.
Which station has the highest number of observations?
Hint: You may need to use functions such as func.min
, func.max
, func.avg
, and func.count
in your queries.
Design a query to retrieve the last 12 months of temperature observation data (TOBS).
Filter by the station with the highest number of observations.
Plot the results as a histogram with bins=12
.
Now that you have completed your initial analysis, design a Flask API based on the queries that you have just developed.
/
Home page.
List all routes that are available.
/api/v1.0/precipitation
Convert the query results to a dictionary using date
as the key and prcp
as the value.
Return the JSON representation of your dictionary.
/api/v1.0/stations
/api/v1.0/tobs
Query the dates and temperature observations of the most active station for the last year of data.
Return a JSON list of temperature observations (TOBS) for the previous year.
/api/v1.0/<start>
and /api/v1.0/<start>/<end>
Return a JSON list of the minimum temperature, the average temperature, and the max temperature for a given start or start-end range.
When given the start only, calculate TMIN
, TAVG
, and TMAX
for all dates greater than and equal to the start date.
When given the start and the end date, calculate the TMIN
, TAVG
, and TMAX
for dates between the start and end date inclusive.
You will need to join the station and measurement tables for some of the queries.
Use Flask jsonify
to convert your API data into a valid JSON response object.
Hawaii is reputed to enjoy mild weather all year. Is there a meaningful difference between the temperature in, for example, June and December?
You may either use SQLAlchemy or pandas’s read_csv()
to perform this portion.
Identify the average temperature in June at all stations across all available years in the dataset. Do the same for December temperature.
Use the t-test to determine whether the difference in the means, if any, is statistically significant. Will you use a paired t-test, or an unpaired t-test? Why?
The starter notebook contains a function called calc_temps
that will accept a start date and end date in the format %Y-%m-%d
. The function will return the minimum, average, and maximum temperatures for that range of dates.
Use the calc_temps
function to calculate the min, avg, and max temperatures for your trip using the matching dates from the previous year (i.e., use “2017-01-01” if your trip start date was “2018-01-01”).
Plot the min, avg, and max temperature from your previous query as a bar chart.
Use the average temperature as the bar height.
Use the peak-to-peak (TMAX-TMIN) value as the y error bar (YERR).
Calculate the rainfall per weather station using the previous year’s matching dates.
Calculate the daily normals. Normals are the averages for the min, avg, and max temperatures.
You are provided with a function called daily_normals
that will calculate the daily normals for a specific date. This date string will be in the format %m-%d
. Be sure to use all historic TOBS that match that date string.
Create a list of dates for your trip in the format %m-%d
. Use the daily_normals
function to calculate the normals for each date string and append the results to a list.
Load the list of daily normals into a Pandas DataFrame and set the index equal to the date.
Use Pandas to plot an area plot (stacked=False
) for the daily normals.
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