Data Driven Design

Designing a new website is a big task. You must take many things into consideration: ease of use & functionality, mobile responsiveness, content, flow, graphics, etc. On top of that, you need to ensure that all of the analytics tracking is properly setup and collecting the necessary data for you to report on success. With so many considerations, it’s important to look at what your users are already telling you about it’s ease of use and helpfulness before you begin to make decisions about how to redesign and change it. Key metrics to consider when thinking about a website redesign: – number of unique users & sessions in a given time period – top content by pageviews/events/goal conversions/etc – funnel success (newsletter signups, contact form submits, checkouts, etc) – device
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Test Design: The Official Doc

If you are running a testing program, then you’ve more than likely had to think about what should go into a test you are running. This could include the problem statement, your hypothesis, how many variants, how different these variants will be, what your measures of success will be, screen captures, and more. It’s important to create a doc or some sort of accessible page/application for your teams to be able to reference this information. This helps to foster and open and collaborative culture of optimization. It will also help you as you look back to understand what your test objectives were and how the test did compared to those objectives. I track all of this via a Google Doc for each test I run. I used the same template for
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Step by Step: Setting Up a Quick Onsite Survey

We all love hard data. The facts and figures please. BUT those who really love data know that the secret sauce is to combine ‘hard’ data (quantitative) with ‘soft’ data (qualitative) to really understand the whole picture. There are many qualitative survey tools on the market that can help you do just that. For this post, I’ll talk about Google Consumer Surveys (GCS) as it’s the tool I use most frequently, but there are many others that rank high in terms of ease of use, functionality, and data output (Qualaroo, SurveyMonkey, Foresee, and Opinion Lab, to name a few). A couple of use cases are top of mind for me as a practitioner working with teams that are constantly launching new websites and updating offerings: 1. Task completion (tip of
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Step-by-Step: Setting up a Google Content Experiment on Your Website

Setting up a Google Analytics Content Experiment is easy! Follow this four-step process and you’ll be on your way to running your first test. To start, first go to the ‘Experiments’ section of Google Analytics and click on ‘Create Experiment’. Step 1: Setup the test Advanced: if you are working with a high volume page and want to analyze more than one goal at a time, you can set up a ‘fake goal’ so that the test will not optimize towards a single winner. Use a ‘fake goal’ to run the test longer than 2 weeks: Multi-armed bandit: Content Experiments uses a traffic splitting method called Multi-armed bandit (MAB) which essentially weights the traffic towards the variation(s) that appear to be winning, away from losing variations. In theory, this could
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Your Optimization Program’s First Hire

Just starting out in web optimization? I recently spoke on a panel at Optimizely’s Opticon and one of the questions that came up was ‘who would be your first hire’ for a new optimization program. There were a few different opinions on the panel, ranging from someone who gets stuff done, to an analytics rockstar, to that rare unicorn who can do it all. While all of these are good places to start, I tend to take the viewpoint of optimization through a solid analytics background as the best place to start. (Of course there are many optimization all-stars who didn’t come from an analytics background.) Why? Here are a few of the reasons why I’d look at hiring an analytics rockstar as your optimization lead: 1. They know data
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Building a Culture of Optimization, Part 5: So You’ve Found a Big Win… Now What?

In part 5 of this 5-part blog series about ‘Building a Culture of Optimization’ I’m going to talk about the importance of sharing your wins and bringing your organization along with you. You can see part 1, part 2, part 3 & part 4 here. Part 5: So you’ve found a big win. Now what? Ensure you’ve double triple checked your results! Are they statistically confident? Did you control for external variables? Why is this important? A personal example… I ran a test where we found significant uplift over our control from a couple of test variations, but one version stood out as the clear winner. After closing the test, reviewing and analyzing the data, I communicated the results and recommendation to launch the winner to the rest of my organization. Most people
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Building a Culture of Optimization, Part 4: Evangelize the Process

In part 4 of this 5-part blog series about ‘Building a Culture of Optimization’ I’m going to talk about evangelizing your process within your organization. You can see part 1, part 2, & part 3 here. Part 4: Evangelize the process Process is important. Process leads to consistency, repeatability, and authority in a testing program. Sharing that process and getting others in your organization bought in and supportive is even more important. One source of truth One of the best ways to make your optimization program better known within your organization is to evangelize it via a widely accessible & visible roadmap. Here’s an example roadmap that I use within my organization: I host this roadmap in a Google doc that is accessible to everyone in my organization, from analysts
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Building a Culture of Optimization, Part 3: Know the Math

In part 3 of this 5-part blog series about ‘Building a Culture of Optimization’ I’m going to talk about the importance of bringing your organization up to speed on the math behind the tests. You can look back and see part 1 on the basics and part 2 on good test design. Part 3: Know the Math! Give your peers a short stats lesson (but keep it light)! What does someone running an A/B or MVT test need to know about math? How detailed should they be? Here is what I tell all of my coworkers: Statistical Confidence = confidence in a repeated result The confidence level, or statistical significance indicate how likely it is that a test experience’s success was not due to chance. A higher confidence indicates that: – the
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Building a Culture of Optimization, Part 2: Good Test Designs

In part 2 of this 5-part blog series about ‘Building a Culture of Optimization’ I’m going to talk about the importance of teaching good test designs. You can see part 1 about educating the basics here. Part 2: Good Test Designs You can’t have a good test without a good test design. One of the first things I do when a new test idea surfaces is sit down with the key stakeholders & test proposers to understand the details of what they’d like to test. We’ll talk through the variables that are going to be tested, how best to setup & design the test, and ensure we are on the same page in terms of potential test outcomes and how to ensure we are testing in a clean and consistent manner.
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