GreyBrain Academy

Path 2 • AI Research Accelerator

The In-Silico Investigator

White-label learning flow for clinicians who want to do rigorous research with AI assistance, not AI hype.

Research Pedagogy Loop

Teach methodology first, then use AI as an accelerator with clear evaluation checkpoints.

1. Hypothesis

Frame a testable clinical or operational question with measurable endpoints.

2. Methodology

Define cohort, inclusion criteria, confounders, and statistical guardrails.

3. Data

Prepare tabular, note, and literature data while maintaining governance discipline.

4. Experiment

Run AI-assisted experiments and benchmark against baseline methods.

5. Conclusion

Report findings with limitations, reproducibility notes, and deployment implications.

Experiment Lab Module

The Predictor (Regression)

Estimate continuous outcomes such as length of stay or recovery time.

Experiment Lab Module

The Diagnostician (Classification)

Classify notes into clinically meaningful categories with confidence signals.

Experiment Lab Module

The Reader (NLP Synthesis)

Summarize long papers and extract structured evidence quickly.

How The AI Tutor Works (Clinician View)

This is the teaching sequence we expose to reduce AI anxiety and build infrastructure fluency.

Prompt

Your clinical question is converted to machine-readable tokens.

Embedding

Question meaning is encoded into vectors for semantic retrieval.

Retrieval

Relevant syllabus/manual chunks are fetched from Vectorize.

Generation

Groq model composes an answer constrained by retrieved context.

Review

You validate evidence, reasoning quality, and fit for patient-facing use.