Skip to content
View jtamanas's full-sized avatar

Block or report jtamanas

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Maximum 250 characters. Please don't include any personal information such as legal names or email addresses. Markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
jtamanas/README.md

Hey there superstar 🌟

Website Email

As a member of both Stefano Profumo’s SCIPP Theory group at UC Santa Cruz and Joseph Hennawi’s ENIGMA group at UC Santa Barbara and Leiden Observatory, I work at the intersection of (high energy/astro)physics, deep learning, and statistics.

In my time as a graduate student, I’ve been lucky enough to work on projects with the world’s leading experts on applied deep learning. I have worked on deepening (pun intended) the understanding of current theories for a variety of topics: From beyond standard model particle physics, to the structure of the Milky Way, and the cosmological history of the universe.

You might know me from my work on:

  1. Simulation-Based Inference: Approximate Sequential Bayesian algorithms written in JAX. Used with applications to high energy physics phenomenology and future quasar inference work.
  2. Via Machinae: Unsupervised anomaly detection to discover stellar streams in the Milky Way.
  3. Spectre: Approximate Bayesian algorithm for SOTA quasar continuum inference.

Pinned Loading

  1. davidreiman/spectre davidreiman/spectre Public

    Forked from bayesiains/nsf

    Fully probabilistic quasar continua predictions near Lyman-α with conditional neural spline flows

    Python 6 1

  2. SaxBI SaxBI Public

    JAX implementation of Sequential Neural Likelihood Estimation (SNLE) and Sequential Neural Ratio Estimation (SNRE) simulation-based inference algorithms

    Python 6 1