Google Analytics API v2 Python Client Library
We know it's easier for developers to program in the languages they know.
So we updated the Google Analytics API
Python Client library with all the new
API version 2 features and added reference exampels for
both the
Account Feed and
Data Feed. Now it's easier than ever to automate your
analysis workflow using our API.
Taking The Library For a
SpinWith the updated library, we thought it would be a great
time to highlight the power of the new v2 features. So we created a
sample application to do just that. The
application uses the new
Google Analytics Python client
library to retrieve metrics for a series of segments. It then performs some
calculations on the data and creates bar charts using the
GChartWrapper package, an open source Python wrapper for
the
Google Charts API. Finally, it uses the
Python Imaging Library to add a title and legend, and stitches all the
charts together into a single image. We decided to release this application as open source so
you can create visualizations with your own data.
Solving
Business ProblemsWith social media all the rage, we wanted
to use this new application to help
Avinash Kaushik, our Analytics Evangelist, to measure
"
engagement" on his popular
Occam's Razor
blog. We also wanted to determine if the time he spends participating in social
media sites is valuable and sends new readers to his blog.
First we
created segments to pull all the referrals from Facebook and Twitter. Second, we chose five
calculations and corresponding metrics to compare the performance of thee two segments. We
then compared the segments to each other and, for context, to all the visits to the site as a
control.
They say a picture is worth a thousand words, here are the
results:
Let's AnalyzeSome interesting observations
become apparent.
- Far more visits originate from Twitter (3.6x) when
compared to Facebook, perhaps not surprising given Avinash's Twitter followers (~16,120)
- Visitors
from Twitter tend to be new visitors, a good thing, but they view fewer pages and spend
significantly less time on the blog.
- On the other hand Facebook delivers
an audience that is loyal. These visitors come back to the site more often and spend a
significant time on the blog (compared to Twitter and all other
visitors).
The bottom line? Even though social networking sites are all
the rage, they actually contribute very little to Avinash's blog. If this blog were a company,
it would be wise to ensure the time and effort put into driving traffic from social media is
proportionate to the actual volume of traffic and goal conversions from those sites.
Hopefully this example shows how powerful our new features can be.
If you're interested in running this report against your own data, the
application is free and open sourced. Additionally, we made it really easy to change the
metrics, segments, calculations and all the other visual properties to power your own
visualizations. So please
download it here and give it a whirl, we would
love to hear your feedback.
By Nick Mihailovski, Google Analytics API Team