I spent months trying to break the quadratic O(N^2) bottleneck of Transformers. Today I'm releasing Pulse-Field v3.0 — an event-driven, neuro-symbolic architecture that runs in O(N) time.
Benchmarks vs GPT-2 style baseline (on CPU):
- Latency: 5ms (vs 60ms)
- Context: Tested up to 100k tokens with <3ms penalty.
- Size: Starts at ~20MB (dynamic growth).
The architecture uses "Event-Driven Routing" instead of dense attention matrices. Tokens travel as impulses through a graph of specialized "crystals" (logic/memory nodes), activating only relevant paths.
This entire core was architected and coded in a 55-minute sprint using a swarm of AI agents (reasoning models) that I orchestrated to overcome the "average output" bias of standard LLMs.
Happy to answer questions about the routing logic!
cybermaggedon•5h ago
Where did the repository go? It has disappeared.
makimilan•3h ago
You can check it out; I'm still delayed for the next post and can't do it yet. Please check if my AI is correct and the project is worthwhile if you'd like. I'd appreciate your feedback: https://github.com/makimilan/pulse-field-corev
makimilan•3h ago
https://github.com/makimilan/pulse-field-corev
A new link for those who want to check out the project while I wait to release a new post. I deleted the previous repository because everything there was literally fake.
kevmo314•5h ago
You might want to read the code your AI agents are producing. Even the agents are aware that the metrics are all made up.
makimilan•6h ago
I spent months trying to break the quadratic O(N^2) bottleneck of Transformers. Today I'm releasing Pulse-Field v3.0 — an event-driven, neuro-symbolic architecture that runs in O(N) time.
Benchmarks vs GPT-2 style baseline (on CPU): - Latency: 5ms (vs 60ms) - Context: Tested up to 100k tokens with <3ms penalty. - Size: Starts at ~20MB (dynamic growth).
The architecture uses "Event-Driven Routing" instead of dense attention matrices. Tokens travel as impulses through a graph of specialized "crystals" (logic/memory nodes), activating only relevant paths.
This entire core was architected and coded in a 55-minute sprint using a swarm of AI agents (reasoning models) that I orchestrated to overcome the "average output" bias of standard LLMs.
Happy to answer questions about the routing logic!
cybermaggedon•5h ago
makimilan•3h ago
makimilan•3h ago