top of page
KwF Logo

NLP / Machine Learning (Bioacoustics & Conservation)

Job Type

Virtual Part-Time

About the Role

Kashmir World Foundation is a 100% volunteer-driven nonprofit using AI and bioacoustics to protect endangered species and ecosystems. Our flagship project leverages sentinel species as biological sensors, analyzing animal vocalizations and soundscapes to detect environmental and human-driven threats before they escalate to poaching or wildlife loss.
We apply machine learning to high-dimensional acoustic embeddings, modeling temporal dynamics, regime changes, and anomalies to enable proactive conservation.
🔗 Learn more:

Sentinel Species as Guardians: https://www.kashmirworldfoundation.org/post/sentinel-species-as-guardians-a-breakthrough-in-bioacoustic-conservation
Documentary Beyond the Noise: https://youtu.be/-Ti0vHeNF8o

Internship Overview
We are seeking an NLP / ML intern to analyze bioacoustic embeddings from field data (Costa Rica expedition), focusing on temporal structure, stability vs. transitions, and early threat detection.
What You’ll Work On

Analyze high-dimensional audio embeddings
Apply PCA, UMAP, and trajectory analysis
Study embedding geometry and regime shifts
Build reproducible ML experiments
Explore models for behavioral and environmental change detection

Requirements

Required Skills

  • Dimensionality reduction (PCA, UMAP)

  • Understanding of embedding spaces and temporal dynamics

  • Experience with reproducible ML workflows

  • Familiarity with HMMs, change-point detection, or regime-switching models

  • PyTorch and/or TensorFlow


Nice to Have: Self-supervised or contrastive learning, edge deployment, conservation tech interest

Connect with us

  • Instagram
  • Facebook
  • Twitter
  • LinkedIn
  • YouTube

Based in Greenwood, Arkansas · Protecting wildlife worldwide

Kashmir World Foundation is a tax-exempt charitable nonprofit organization (Tax ID: 24-4144922) under Section 501(c)(3) of the U.S. Internal Revenue Code. Contributions are tax-deductible to the extent allowed by law.

bottom of page