gdpoc
gdpoc t1_jajjufm wrote
Reply to comment by Kear_Bear_3747 in NASA’s DART data validates kinetic impact as planetary defense method | DART altered the orbit of the asteroid moonlet Dimorphos by 33 minutes by mepper
Doesn't it also matter whether what you're hitting is an isotropic homogeneous solid and how much of that is aggregate v fill when we talk about celestial body surface composition?
gdpoc t1_j9gqaue wrote
I'll be using this content to illustrate, thanks!
gdpoc t1_j7337zm wrote
Reply to comment by asarig_ in [R] Graph Mixer Networks by asarig_
That is fascinating work.
I'd like to read the paper and will, given the time; are the results promising?
It seems reasonable that a graph with a small branching factor could reasonably replicate logarithmic search complexity of the input space to at least some extent; I'm very interested in exploring this space.
gdpoc t1_j4ssata wrote
Reply to comment by Franck_Dernoncourt in [D] Unlocking the Potential of ChatGPT: A Community Discussion by North-Ad6756
Chat gpt (large language models, in general) is a great generalist and would be likely very useful in predicting 'root node' locations in a knowledge graph which would allow finding the correct content from a minimal subset.
Chat gpt sucks with details, yes, but for use in a recommendation algorithm which depends on the graph, I think that issue could be minimized.
gdpoc t1_j4sc11w wrote
Reply to comment by Franck_Dernoncourt in [D] Unlocking the Potential of ChatGPT: A Community Discussion by North-Ad6756
Education first.
gdpoc t1_j4s74zi wrote
ChatGPT, coupled with a dynamic, searchable (log(n) query) knowledge graph, and an algorithm to optimize that graph to maximize educational growth.
gdpoc t1_jcperei wrote
Reply to comment by nucLeaRStarcraft in [D] Unit and Integration Testing for ML Pipelines by Fender6969
Also depends on privacy constraints, sometimes you can't persist the data.