Speed up execution by turning stored knowledge into immediate action. A second brain for literature synthesis, hypotheses, and experimental tradeoffs so phd students can ship faster with less rework by retrieving context exactly when needed.




The Problem
Neuron pages for phd students are written around real memory pressure, not generic productivity advice.
You read deeply, but citation context is hard to retrieve when argument structure evolves.
Experimental decisions span months, increasing memory decay between iterative research cycles.
You need a memory system that supports rigor across long timelines and changing hypotheses. Execution drags when teams repeatedly pause to rediscover known information.
The Solution
Capture Connect Recall Retrieve
Capture paper notes, experiment logs, and advisor feedback in seconds so execution-critical details are available before work begins.
Map relationships across literature synthesis, hypotheses, and experimental tradeoffs so dependencies are clear before they introduce avoidable delays.
Generate active recall prompts like "How does this paper challenge the current working hypothesis in your project?" to keep key constraints active while decisions are being made.
Retrieve the right context before committee meetings, manuscript writing, and defense prep when execution speed depends on immediate contextual clarity.
Pricing
We like keeping things simple. One plan one price.
For power users.
Buy once. Use forever.
FAQ
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Insights, updates and stories from our team.
Why It Converts
It keeps paper notes, experiment logs, and advisor feedback in one place so retrieval is dependable instead of scattered.
It reframes literature synthesis, hypotheses, and experimental tradeoffs into prompts that match the way phd students actually think and execute.
It strengthens recall before committee meetings, manuscript writing, and defense prep, where context quality directly affects outcomes.
It keeps operational memory close to execution so momentum is maintained across cycles.
Stop losing hard-earned context. Capture it once, retrieve it on demand, and improve recall every week.