Product Analytics Team

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People

Team members

  • Marius Andra

    Team lead

    Software Engineer

  • Michael Matloka

    Software Engineer

  • Yakko Majuri

    Software Engineer

  • Annika Schmid

    Product Manager

  • Thomas Obermüller

    Software Engineer

Mission

Makers everywhere get better at building products because of PostHog

Q2 2023 Goals

Objective 1: PostHog 3000 Hacker News launch is a wild success

  • Why? Subjectively, we believe there are many UI/UX improvements to make it a tool that product engineers love.
  • Key results:
    • We have shipped a reimagined IDE-inspired interface

Objective 2: Make PostHog performance frustration free for our 10 largest customers

  • Key results:
    • For top 10 US&EU clients p95 of dashboard load time <10s
    • For top 10 US&EU clients p95 of insight load time <10s
    • US ClickHouse setup is less bespoke

Objective 3: HogQL

  • Why? We have built our query language called HogQL. The experience using it is still lacking.
  • Key results:
    • HogQL is launched and used by 10% of users
    • HogQL parsing errors are insightful and timely.
    • HogQL supports all of ClickHouse SQL, including arrays and window functions.
    • You can do pivot tables via HogQL, or in the interface we built to make this easier.
    • The trends and funnels insights are powered by HogQL.

Who are we building for?

Personas

  • Primary Personas:
    • Product engineer
      • These are the engineers building the product. Normally full-stack engineers skewing frontend or frontend engineers.
      • Product engineers have more limited time. Need to quickly get high-quality insights to inform what they are building and assess what they've shipped.
    • Product manager (ex-engineer type)
      • Supports the product teams (engineers, PMs, designers) to build the best products. They guide the product roadmap by speaking to customers and diving into the data.
      • Product managers are the power-users of analytics (further evidence in the data analysis of paying users). They have desire and the time to go significantly deeper into the data.
  • Limited focus:
    • Growth engineer
  • Not a focus but should be usable by:
    • Everyone in the product team (less technical PMs, designers)
    • Marketing
    • Leadership team

What types of companies?

The highest-performing product teams building the most loved products at high-growth startups. For more context on the company read about the ideal customer persona.

Jobs to be done

Product analytics is a wide tool which fulfills many job-to-be-done (non-exhaustive list):

  • Monitoring KPIs - how are the specific KPIs (product/team/company) doing? Are there any big changes, is everything going roughly in the right direction?
  • Insights into a new feature you've built - I've created a new feature and I want to make sure that it's being used successfully
  • Watching for errors and debugging - something went wrong (error gets trigger, product regression, drop in conversion), getting told it went wrong, debugging it, shipping a solution and making sure that fixes it
  • Conversion optimization - the growth team is monitoring how particular KPIs are doing, trying to come up with experiments, shipping features to try and improve these
  • Answering product strategy questions - which customers should we focus on, what are our most used/valued features. e.g. should we increase the pricing from X to Y? Which customers should we focus on?

You can broadly group the job-to-be-done of Product Analytics in PostHog as:

  • Creating: You have a specific query/dashboard in mind, you open PostHog to view it. E.g. creating a dashboard to Monitor KPIs, or creating the funnel for your onboarding flow
  • Consuming: you or someone else has made something in Posthog that you refer back to. E.g. Checking the dashboard you made to Monitor KPIs
  • Exploring: you're answering a broader open-ended question. E.g. If you're monitoring your KPIs and you see something not right - you then want to dive into understanding why

Roadmap

3 year goals

  • You can explore data across all insights and dimensions
  • You can trivially share any insight anywhere
  • Onboarding is as easy as a video game
  • Tight integration with developer workflows
  • No more complex than it is today
  • Using PostHog sparks joy
  • We support trillion event querying

Feature ownership

You can find out more about the features we own here

What we're building

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