Considerations similar to Kenzi's have led me to think that if we want to beat potential filters, we should be accelerating work on autonomous self-replicating space-based robotics. Once we do that, we will have beaten the Fermi odds. I'm not saying that it's all smooth sailing from there, but it does guarantee that something from our civilization will survive in a potentially "showy" way, so that our civilization will not be a "great silence" victim.
The argument is as follows: Any near-future great filter for humankind is probably self-produced, from some development path we can call QEP (quiet extinction path). Let's call the path to self-replicating autonomous robots FRP (Fermi robot path). Since the success of this path would not produce a great filter, QEP =/= FRP. FRP is an independent path parallel to QEP. In effect the two development paths are in a race. We can't implement a policy of slowing QEP down, because we are unable to uniquely identify QEP. But since we know that QEP =/= FRP, and that in completing FRP we beat Fermi's silence, our best strategy is to accelerate FRP and invest substantial resources into robotics that will ultimately produce Fermi probes. Alacrity is necessary because FRP must complete before QEP takes its course, and we have very bad information about QEP's timelines and nature.
This is part of a weekly reading group on Nick Bostrom's book, Superintelligence. For more information about the group, and an index of posts so far see the announcement post. For the schedule of future topics, see MIRI's reading guide.
Welcome. This week we discuss the twenty-seventh section in the reading guide: Pathways and enablers.
This post summarizes the section, and offers a few relevant notes, and ideas for further investigation. Some of my own thoughts and questions for discussion are in the comments.
There is no need to proceed in order through this post, or to look at everything. Feel free to jump straight to the discussion. Where applicable, page numbers indicate the rough part of the chapter that is most related (not necessarily that the chapter is being cited for the specific claim).
Reading: “Pathways and enablers” from Chapter 14
Summary
Another view
I talked to Kenzi Amodei about her thoughts on this section. Here is a summary of her disagreements:
Notes
1. How is hardware progressing?
I've been looking into this lately, at AI Impacts. Here's a figure of MIPS/$ growing, from Muehlhauser and Rieber.
(Note: I edited the vertical axis, to remove a typo)
2. Hardware-software indifference curves
It was brought up in this chapter that hardware and software can substitute for each other: if there is endless hardware, you can run worse algorithms, and vice versa. I find it useful to picture this as indifference curves, something like this:
(Image: Hypothetical curves of hardware-software combinations producing the same performance at Go (source).)
I wrote about predicting AI given this kind of model here.
3. The potential for discontinuous AI progress
While we are on the topic of relevant stuff at AI Impacts, I've been investigating and quantifying the claim that AI might suddenly undergo huge amounts of abrupt progress (unlike brain emulations, according to Bostrom). As a step, we are finding other things that have undergone huge amounts of progress, such as nuclear weapons and high temperature superconductors:
(Figure originally from here)
4. The person-affecting perspective favors speed less as other prospects improve
I agree with Bostrom that the person-affecting perspective probably favors speeding many technologies, in the status quo. However I think it's worth noting that people with the person-affecting view should be scared of existential risk again as soon as society has achieved some modest chance of greatly extending life via specific technologies. So if you take the person-affecting view, and think there's a reasonable chance of very long life extension within the lifetimes of many existing humans, you should be careful about trading off speed and risk of catastrophe.
5. It seems unclear that an emulation transition would be slower than an AI transition.
One reason to expect an emulation transition to proceed faster is that there is an unusual reason to expect abrupt progress there.
6. Beware of brittle arguments
This chapter presented a large number of detailed lines of reasoning for evaluating hardware and brain emulations. This kind of concern might apply.
In-depth investigations
If you are particularly interested in these topics, and want to do further research, these are a few plausible directions, some inspired by Luke Muehlhauser's list, which contains many suggestions related to parts of Superintelligence. These projects could be attempted at various levels of depth.
How to proceed
This has been a collection of notes on the chapter. The most important part of the reading group though is discussion, which is in the comments section. I pose some questions for you there, and I invite you to add your own. Please remember that this group contains a variety of levels of expertise: if a line of discussion seems too basic or too incomprehensible, look around for one that suits you better!
Next week, we will talk about how collaboration and competition affect the strategic picture. To prepare, read “Collaboration” from Chapter 14 The discussion will go live at 6pm Pacific time next Monday 23 March. Sign up to be notified here.