It's an enormously cool project (amd also feels like the next logical thing to do after all the existing modalities)<p>But it feels weirdly eery to read a detailed story how they built and improved their setup and what obstacles they encountered, complete with photos - without any mention <i>who</i> is doing the things we are reading about. There is no mention of the staff or even the founders on the whole website.<p>I had a hard time judging how large this project even is. The homebuilt booths and trial-and-error workflow sound like "three people garage startup", but the bookings schedule suggests a larger team.<p>(At least there is an author line on that blog post. Had to google the names to get some background on this company)<p>You should consider an "about us" page :)
Hey I'm Nick, and I originally came to Conduit as a data participant! After my session, I started asking questions about the setup to the people working there, and apparently I asked good questions, so they hired me.<p>Since I joined, we've gone from <1k hours to >10k hours, and I've been really excited by how much our whole setup has changed. I've been implementing lots of improvements to the whole data pipeline and the operations side. Now that we train lots of models on the data, the model results also inform how we collect data (e.g. we care a lot less about noise now that we have more data).<p>We're definitely still improving the whole system, but at this point, we've learned a lot that I wish someone had told us when we started, so we thought we'd share it in case any of you are doing human data collection. We're all also very curious to get any feedback from the community!
Really cool dataset! Love seeing people actually doing the hard work of generating data rather than just trying to analyze what exists (I say this as someone who’s gone out of his way to avoid data collection).<p>Have you played at all with thought-to-voice? Intuitively I’d think EEG readout would be more reliable for spoken rather than typed words, especially if you’re not controlling for keyboard fluency.
Yeah we do both text and voice (roughly 70% of data collection is typed, 30% spoken). Partly this is to make sure the model is learning to decode semantic intent (rather than just planned motor movements). Right now, it's doing better on the typed part, but I expect that's just because we have more data of that kind.<p>It does generalize between typed and spoken, i.e. it does much better on spoken decoding if we've also trained on the typing data, which is what we were hoping to see.
It's interesting that the model generalizes to unseen participants. I was under the impression that everyone's brain patterns were different enough that the model would need to be retrained for new users.<p>Though, I suppose if the model had LLM-like context where it kept track of brain data and speech/typing from earlier in the conversation then it could perform in-context learning to adapt to the user.
Basically correct intuition: the model does much better when we give it, e.g., 30 secs of neural data in the leadup instead of e.g. 5 secs. My sense is also that it's learning in context, so people's neural patterns are quite different but there's a higher-level generator that lets the model learn in context (or probably multiple higher-level patterns, each of which the model can learn from in context).<p>We only got any generalization to new users after we had >500 individuals in the dataset, fwiw. There's some interesting MRI studies also finding a similar thing that when you have enough individuals in the dataset, you start seeing generalization.
I lol'd at the hardware "patch" that kept the software from crashing--removing all but the alpha-numeric keys (!?). Holy cow, you had time to collect thousands of hours of neurotraces but couldn't sanitize the inputs to remove a stray [? That sounds...funky.
This is a cool setup, but naively it feels like it would require hundreds of thousands of hours of data to train a decent generalizable model that would be useful for consumers. Are there plans to scale this up, or is there reason to believe that tens of thousands of hours are enough?
Yeah I think the way we trained the embedding model focused a lot on how to make it as efficient as possible, since it is such a data-limited regime. So I think based on (early) scaling results, it'll be closer to 50-70k hours, which we should be able to get in the next months now we've already scaled up a lot.<p>That said, the way to 10-20x data collection would be to open a couple other data collection centers outside SF, in high-population cities. Right now, there's a big advantage in just having the data collection totally in-house, because it's so much easier to debug/improve it because we're so small. But now we've mostly worked out the process, it should also be very straightforward for us to just replicate the entire ops/data pipeline in 3-4 parallel data collection centers.
This is an interesting dataset to collect, and I wonder whether there will be applications for it beyond what you're currently thinking.<p>A couple of questions: What's the relationship between the number of hours of neurodata you collect and the quality of your predictions? Does it help to get less data from more people, or more data from fewer people?
What's the plan for after this mind reading helmet works reliably?
Cool post! I'm somewhat curious whether the data quality scoring has actually translated into better data; do you have numbers on how much more of your data is useful for training vs in May?
so the neural quality real-time checking was the most important thing here. Before we rewrote the backend, between 58-64% of participant hours were actually usable data. Now, it's between 90-95%<p>If you mean the text quality scoring system, then when we added that, it improved the amount of text we got per hour of neural data by between 30-35%. (That includes the fact that we filter which participants we have return based on their text quality scores)
The example sentences generated “only from neural data” at the top of this article seem surprisingly accurate to me, like, not exact matches but much better than what I would expect even from 10k hours:<p>“the room seemed colder” -> “ there was a breeze even a gentle gust”
Really interested in how accuracy improves with the scale of the data set. Non-invasive thought-to-action would be a whole new interaction paradigm.
Did you consider trying to collect data in a much poorer country that still has high quality English? e.g. the Philippines
Yeah we did consider this. For now, there's an advantage to having the data collection in the same building as the whole eng team, but once we hire a couple more engs, I expect we'll just replicate the collection setup in other countries as well
Interesting dataset! I'm curious what kind of results you would get with just EEG, compared to multiple modalities? Why do multiple modalities end up being important?
Makes sense that CL ends up being the best for recruiting first-time participants. Curious what other things you tried for recruitment and how useful they were?
The second most useful by far is Indeed, where we post an internship opportunity for participants interested in doing 10 sessions over 10 weeks. Other things that work pretty well are asking professors to send out emails to students at local universities, putting up ~300-500 fliers (mostly around universities and public transit), and posting on Nextdoor. We also just texted a lot of groupchats/posted on linkedin/ gave out fliers and the signup link to kind of everyone we talked to in cafes and similar. We take on some participants as ambassadors as well, and pay them to refer their friends.<p>We tried google/facebook/instagram ads, and we tried paying for some video placements. Basically none of the explicit advertisement worked at all and it wasn't worth the money. Though for what it's worth, none of us are experts in advertising, so we might have been going about it wrong -- we didn't put loads of effort into iterating once we realized it wasn't working.
Loved watching this unfold in our basement. : )
what's the basis for conversion between hours of neural data to number of tokens? is that counting the paired text tokens?
[under-the-rug stub]<p>[see <a href="https://news.ycombinator.com/item?id=45988611">https://news.ycombinator.com/item?id=45988611</a> for explanation]
This is very cool, thanks for writing about your setup in such detail! It’s impressive that you can predict stuff from this noninvasive data. Are there similar existing datasets or this the first of its kind?
Yoo this is sick!! sometimes it might actually just be a data game, so huge props to them for actually collecting all that high-quality data
Wild world we live in