3 Matching Annotations
  1. Jun 2024
    1. TensionThe ability to see like a data structure afforded us the technology we have today. But it was built for and within a set of societal systems—and stories—that can’t cope with nebulosity. Worse still is the transitional era we’ve entered, in which overwhelming complexity leads more and more people to believe in nothing. That way lies madness. Seeing is a choice, and we need to reclaim that choice. However, we need to see things and do things differently, and build sociotechnical systems that embody this difference.This is best seen through a small example. In our jobs, many of us deal with interpersonal dynamics that sometimes overwhelm the rules. The rules are still there—those that the company operates by and laws that it follows—meaning there are limits to how those interpersonal dynamics can play out. But those rules are rigid and bureaucratic, and most of the time they are irrelevant to what you’re dealing with. People learn to work with and around the rules rather than follow them to the letter. Some of these might be deliberate hacks, ones that are known, and passed down, by an organization’s workers. A work-to-rule strike, or quiet quitting for that matter, is effective at slowing a company to a halt because work is never as routine as schedules, processes, leadership principles, or any other codified rules might allow management to believe.The tension we face is that on an everyday basis, we want things to be simple and certain. But that means ignoring the messiness of reality. And when we delegate that simplicity and certainty to systems—either to institutions or increasingly to software—they feel impersonal and oppressive. People used to say that they felt like large institutions were treating them like a number. For decades, we have literally been numbers in government and corporate data structures. BreakdownAs historian Jill Lepore wrote, we used to be in a world of mystery. Then we began to understand those mysteries and use science to turn them into facts. And then we quantified and operationalized those facts through numbers. We’re currently in a world of data—overwhelming, human-incomprehensible amounts of data—that we use to make predictions even though that data isn’t enough to fully grapple with the complexity of reality.How do we move past this era of breakdown? It’s not by eschewing technology. We need our complex socio-technical systems. We need mental models to make sense of the complexities of our world. But we also need to understand and accept their inherent imperfections. We need to make sure we’re avoiding static and biased patterns—of the sort that a state functionary or a rigid algorithm might produce—while leaving room for the messiness inherent in human interactions. Chapman calls this balance “fluidity,” where society (and really, the tech we use every day) gives us the disparate things we need to be happy while also enabling the complex global society we have today.
  2. Sep 2023
    1. It' is pretty good to see the mapping innovation taking several shapes, from the starting narrative to this one.

      Regarding feedback from this one I would make a call out that make more visible where the data and code behind the map is hosted and how to reproduce the results.

      On a more general sense, I think is important to see how the different narratives are better connected and which values they embody and make explicit. I would propose this values:

      1. Utility:

        • internal: helping us to make short or long lasting peer to peer connections like the one between Copincha (Habana, Cuba) and HackBo/Grafoscopio (Bogotá, Colombia) communities resulting from DOTS 202.
        • external to showcase which innovation, people and communities are doing and how they are connected now or can be in the future.
      2. Reproducibility: The data narratives should be able to be reproducible.

      3. Portability: Functionality bundles, including data, code, software should be packages to they can be used in local contexts, particularly those with low/intermittent internet connectivity.

      4. Recontextualization: Our data narratives should be empowering its reuse, adaptation, and extension by other communities and in other context.

      5. Commons/Community oriented: licenses on data/code should be explicit to allow the previous qualities. Some times that would require a copyfarleft license that protect third parties extract value from the data narratives and its bundles against the community interest (cfg current discussion on data collection from IA projects against community of creators).
  3. Aug 2021