Being a data driven organization
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Being a data driven organization
David Taylor, notes by Josh Levinger (Citizen Engagement Lab)
what can we learn from obama campaign?
- they learned it all from silicon valley
what do we mean by data?
- raw chunks, metrics, informed decision making
- dashboards
how do we act on data we collect?
- only produce analytics that are actionable (vs reportable?)
- vanity metrics are killing startups (clicks, hits, users)
- actionable ones key (cost per acquisition, revenue per user, dropoff rate)
- very similar to member-funded orgs (dollars raised per user, value provided to them)
- * lead generation -> conversion -> lifetime value
- pirate metrics talk
what is most central metric? just actions, dollars?
- twitter used avg engagement per user per day in their early days)
- campaigns could use virality, or growth velocity (recruitment)
- ability of people to spread your message (shares)
knowing what your goal is as organization
- what are we trying to do in the world?
- at the end of the day, what do we care about?
most of the things that are measurable are best for lead conversion
- 90% of what we can measure are vanity metrics
- define qualitative metrics / proxies for real world engagement (clicks vs higher bar asks)
- move people up the engagement ladder
fundraising culture is far behind software development in following pace of change
- rigidity (obliviousness) vs plasticity
- how do we create pressure on foundations to change?
- some orgs stuck in loop of email list growth & rapid response
- key performance indicators should be balanced against each other
- data collection and decision making systems don't talk to each other
- by data we mean constituents (and their interactions with the org)
How do we make this easy?
- you need a lot of data before being metrics driven makes sense
- collect everything you can, go back and design what's relevant later
- use automated tools that are built for this (kissmetrics, mixpanel)
- google analytics gives you traffic numbers (vanity metric)
- cohort tracking, not just spikes
- decide on one kpi per channel (+- on baseline, something that indicates health)
- know your baseline, and the sector baseline
- start with goals, work backwards
- * but check that it fits your organization model
visualization helps connect between different staff cultures
- intelligence dashboards
- chart.io (visually build charts from many data sources)
- make everything transparent, everyone in the organization has access to every graph
design tests, knowing most of them will fail
- but with limited resources "burning" them can be scary
- phrase a hypothesis vs "fine tuning" or optimization
- when is there an end any more?