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I build AI copilots, intelligent analytics, and automation that ship.
Pragmatic systems, clean interfaces, measurable outcomes.

Recent work: LLM workspace audits • consensus draft analytics • live‑market valuation pipelines

What I Do

  • AI copilots that take action (multi‑provider, safe fallbacks, observability)
  • Decision‑support analytics (aggregation, ranking, reporting, exports)
  • Production ML/MLOps (containers, CI, metrics, reproducible pipelines)

Selected Work

NotionIQ — LLM Workspace Auditor

NotionIQ — multi‑provider orchestration, health metrics, JSON reporting
  • Problem → Fragmented pages, inbox bloat, duplicative databases slow teams.
  • Approach → Multi‑provider LLM orchestration (Claude/GPT/Gemini), deep health metrics, JSON reports.
  • Impact → Actionable playbooks; cached runs cut API spend significantly.
  • Docs → See case study below.

Fantasy Draft Tools — Consensus + VBD Engine

Fantasy Draft Tools — multi‑source aggregation, VBD logic, exports
  • Problem → Fragmented rankings and noisy advice; hard cross‑positional calls.
  • Approach → Aggregates 5+ sources, VBD (VOLS/VORP/BEER), presets, offline caching.
  • Impact → Calm draft day with reproducible boards + Sheets/CSV exports.
  • Docs → See case study below.

Intrinsic Value Calculator — Live DCF at Scale

Intrinsic Value Calculator — live ingestion, parallel valuation, investor reports
  • Problem → Ad‑hoc valuations lack consistency and auditability.
  • Approach → Live data (Yahoo, FRED), parallelized DCF, risk/growth adjustments.
  • Impact → Investor‑ready CSV/JSON outputs for dashboards and research.
  • Docs → See case study below.

Operating Principles

  • Speed with safety: fast loops, strong guards, reversible changes.
  • Observability first: logs, metrics, JSON artifacts; decisions are inspectable.
  • Simplicity scales: clear boundaries, predictable deployments.
  • User empathy: defaults that work, frictionless installs, readable reports.

Writing & Resources

  • Academy Orientation — docs/academy/orientation.md
  • Command‑Line Toolkit — docs/playbooks/command-line-toolkit.md
  • IDE & Environment Verification — docs/playbooks/ide-setup.md
  • Mathematics for AI — docs/foundations/math-for-ai.md
  • Python Essentials — docs/foundations/python-essentials.md
Toolbox (click to expand)

AI & Data: PyTorch • scikit‑learn • Hugging Face • pandas • NumPy • Polars
Platforms: Python • PowerShell • Bash • FastAPI • Streamlit • Docker • AWS
Dev Flow: Git • GitHub Actions • pytest • Make • VS Code

GitHub Signals (click to expand)

GitHub Stats Top Languages

Let’s Build

  • Email: [email protected]
  • LinkedIn: linkedin.com/in/brandonpshay/
  • Open to full‑time roles and selective consulting.

Case Studies

- NotionIQ — docs/case-studies/notioniq.md - Fantasy Draft Tools — docs/case-studies/ff-draft-tools.md - Intrinsic Value Calculator — docs/case-studies/intrinsic-value.md

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