Not every part of research is glamorous, there is a lot of routine labor to do, and most of the time its the researchers (grad students or postdocs) doing it. The first lab I ever worked in, we spent about 3 months designing and building the experiment and almost a year straight of round-the-clock data collection, I suppose you could say we temporarily stopped being researchers and became technicians but that seems a bit odd. During one of my postdocs, a good 60% of my job was sys-admin type work to keep a cluster running, while waiting for code to run. My point is that the rate-limiting step in a lot of research is that experiments take time to perform, and code takes time to run. Most labs have experiments/code running round the clock.
I guess if you want to differentiate technician work from researcher work, you could do something non-standard and say that every postdoc/grad student in a lab is 30% sales (after all, begging for money isn't being a researcher, properly understood), 60% technician, 10% researcher.
The cluster of thingspace you're referring to can properly be called researchers (probably).
Just the same, if that were how the term were typically used -- for cases where the deep theoretical, high-inferential-distance understanding is vital for core job functions -- I would not feel the need to raise the point I did.
Rather, it's because people tend to inflate their own job descriptions, and my frequent observation of anyone working in lab-like environments being classified as a "researcher" or "doing research", regardless of how small...
Summary: Intelligence Explosion Microeconomics (pdf) is 40,000 words taking some initial steps toward tackling the key quantitative issue in the intelligence explosion, "reinvestable returns on cognitive investments": what kind of returns can you get from an investment in cognition, can you reinvest it to make yourself even smarter, and does this process die out or blow up? This can be thought of as the compact and hopefully more coherent successor to the AI Foom Debate of a few years back.
(Sample idea you haven't heard before: The increase in hominid brain size over evolutionary time should be interpreted as evidence about increasing marginal fitness returns on brain size, presumably due to improved brain wiring algorithms; not as direct evidence about an intelligence scaling factor from brain size.)
I hope that the open problems posed therein inspire further work by economists or economically literate modelers, interested specifically in the intelligence explosion qua cognitive intelligence rather than non-cognitive 'technological acceleration'. MIRI has an intended-to-be-small-and-technical mailing list for such discussion. In case it's not clear from context, I (Yudkowsky) am the author of the paper.
Abstract:
The dedicated mailing list will be small and restricted to technical discussants.
This topic was originally intended to be a sequence in Open Problems in Friendly AI, but further work produced something compacted beyond where it could be easily broken up into subposts.
Outline of contents:
1: Introduces the basic questions and the key quantitative issue of sustained reinvestable returns on cognitive investments.
2: Discusses the basic language for talking about the intelligence explosion, and argues that we should pursue this project by looking for underlying microfoundations, not by pursuing analogies to allegedly similar historical events.
3: Goes into detail on what I see as the main arguments for a fast intelligence explosion, constituting the bulk of the paper with the following subsections:
4: A tentative methodology for formalizing theories of the intelligence explosion - a project of formalizing possible microfoundations and explicitly stating their alleged relation to historical experience, such that some possibilities can allegedly be falsified.
5: Which open sub-questions seem both high-value and possibly answerable.
6: Formally poses the Open Problem and mentions what it would take for MIRI itself to directly fund further work in this field.