|
|
- Clive Thompson a very prominent technical author came to Rochester on
- November fifteenth to talk about the “Problems of Efficient Coding”.
- Going into this talk, I expected it to go along the lines of how
- making super “efficient” code often results in code that nobody
- understands and is hard to maintain. To my pleasant surprise, Clive
- Thompson provided a nuanced discussion around the cultural problems
- created when we try to optimize every problem using technology.
-
- ![Clive Thompson](media/thompson-talk.jpg)
-
- To understand Clive’s point, he used Facebook as a prime example of
- this problem. Before the Facebook feed system, the web largely acted
- like a blog where people had to actively reach out to everyone’s page
- to get content. Right after Facebook implemented the feed system there
- was a big debacle where nearly 20% of Facebook users entered a
- Facebook group opposed the new feed system. For nearly a week there
- were student protesters outside of the Facebook office. People
- initially found the feed system creepy because it gave everyone
- ambient awareness of everything happening in their network; this in
- some regards decreased “anonymity”. You no longer had to go out to
- every one’s page, Facebook created a tailored newspaper for you to
- consume. As a result of the new feed system, people started producing
- a lot more content to put on social media sites since people consumed
- it immediately. To filter content and only provide people with
- “important” posts, Facebook employed machine learning algorithms which
- favored posts that get more clicks. It turns out that people are very
- likely to click on things that are highly emotional or
- controversial--machine learning algorithms were quick to learn this
- and favor controversial content. People started to play the algorithm
- and turn Facebook into a hot take tire fire as it get littered with
- absurd conspiracy theories like #Pizzagate. Facebook’s motto used to
- be “move fast and break things”, however, after Zuckerburg was
- lambasted in front of congress, that motto is slowly changing.
-
-
- Facebook like many tech companies credits its major success to
- optimizing a sometimes niche problem -- this is something that
- programmers love to do and computers are perfect at. Facebook
- optimized how people consume media, but they did it to the detriment
- of quality content. Youtube tremendously optimized how we view videos
- by suggesting us recommended videos to watch, but, it often suggests
- repulsive content. Uber optimized how people found rides, but it
- resulted in an influx of part time drivers that are slowly pushing out
- full time drivers. This is not to say that optimization is a bad
- thing. As a result of optimizing tasks we can save a tremendous amount
- of time and be more productive members of society. Thompson suggests
- that there are certain cases where we should slow down and add
- friction to cases that we initially see the need to optimize.
- Reflection and deliberation are important things that are often thrown
- to the wind when we optimize things.
-
-
- This now begs the question: how do we do we solve these issues? This
- is something that Thompson didn’t discuss in depth nor had a great
- answer for. We could point our fingers at governments, companies, or
- consumers and tell them to solve the problem. Surely having the
- government enact some well-constructed public policy based on the
- current policy environment would solve the issues… right? The problem
- in the age of big data is that things are changing at a rapid pace and
- by the time we realize the dangers of a particular issue, it may have
- already caused grave damages or morphed into another form. Look at
- gambling for example, we have had decades of laws and regulations
- surrounding underage gambling, however, online gambling issues have
- been consistently creeping their way into policy discussion over the
- last five years. It is fascinating that most public policy generated in the
- technology field is actually created in the court systems. This is
- good in the sense that the court system is often faster than passing a
- new law, but, it is also very problematic. Old laws when used to
- interpret a nuanced technological problem often yield outcomes that
- the original authors of the law would possibly disagree with.
-
-
- Although Thompson’s talk raises more questions and problems than
- tangible easy-to-implement solutions, we must start having discussions
- like this so we can enact a cultural change around how we approach
- optimization tasks. Adding back careful reflection and deliberation
- back to currently optimized tasks on the internet could give us more
- freedom over how we consume content and interact with the world.
|