Ok, so I’m playing fast and loose; ‘fracticality’ isn’t a word. Yet, the world is fractal, in the sense that everything unpacks. We also have to make decisions about what to do, without having time, nor inclination, to go to depths that aren’t relevant. How do we strike that balance? How do we go about defying fracticality? Some reflections…
I’m naturally curious, and track what research tells us. And, research continues, and unpacks new depths. For instance, we:
- know models are important, but then they need to be causal, and connected, and conceptual…
- want ‘desirable difficulty’, but then it’s more than challenge, it’s also context varying, and spacing, and feedback fading, and…
- need examples, but they have to explicitly include models, be interesting and relevant, have outcomes…
- want to elaborate, but then learn that certain activities are generative and others aren’t effective…
The list goes on, and each of these expands! How do we cope?
For one, it occurs to me that we need at least a minimum viable level. We can adopt that notion of ‘minimum viable product’, and recognize that learning should, at least, have:
- a clear objective
- a rallying introduction
- an appropriate model
- several relevant examples
- a suite of meaningful practice extended over time
- a satisfying closing
- some measurement beyond ‘enjoyment’ towards impact
If we have the basics down, we can budget and justify what we’re doing. And, likely, this can all be done within the existing constraints. We have to acknowledge the world we work in as well as the one we’re building, after all.
We elaborate from there. If we show improvement, and we should, we then lobby to do more that’ll yield even bigger impacts. We can and should space out the learning. We can consider where it’s complex and maybe start with a simple model, and then expand, with more examples. What is the minimum set of contexts to support transfer? We can consider expertise, and adjust our starting and pedagogy appropriately. We can also expand beyond courses and look for when performance support makes more sense, or a combination. Then there’s community and informal learning. And strategy, politics, …
Associated with this is expanding our own understanding. We need basics, and then we need to keep understanding more. We can’t stop at just meeting the basic needs, for a variety of reasons. These include what the competition is doing, but also our own professionalism. We shouldn’t allow ourselves to be complacent, but keep improving our own understanding and then our practice as well.
The world is fractal, and everything people do continues to unpack. The only path to defying fracticality is pick an initial level that’s minimally viable, achieve it, and then start expanding upon it. You’ll get pushback, but you’ll also find that as you get more capable, things get automated and you have more bandwidth. Tools get more capable as well. It’s an ongoing process, but it’s one worth indulging in. If this isn’t the field for you, find somewhere where you are interested in continuing to explore. Stay curious, my friends.
(The nuances of learning are part of our LDA Learning Science Conference. The stuff that’s not learning, but around it as part of our, that is L&D’s, ability to succeed is what we are covering in our L&D As Ecosystem conference. FYI)
