ML Summer Intern

Pravah

Pravah

Software Engineering, Data Science

San Francisco, CA, USA

Posted on Apr 20, 2026

Location

San Francisco

Employment Type

Full time

Location Type

On-site

Department

ML

Deadline to Apply

May 30, 2026 at 12:00 PM EDT

Compensation

  • Summer Compensation $5K – $10K

About Pravah

Pravah is building foundational intelligence for the electric grid. We apply modern machine learning to complex physical infrastructure problems spanning grid operations, weather, and geospatial systems.

Our work sits at the intersection of computer vision, physical systems, and large-scale ML, with deployments across utilities in the United States and India. We leverage multimodal data - including satellite imagery, LiDAR, and street-level data - to build high-fidelity representations of grid assets and their surroundings.

We are backed by Khosla Ventures, Pear VC, and Conviction.

To know more about who we are, what we are building, and why we are excited read this Notion!
https://pravah.notion.site/


Role Overview

We are seeking highly motivated students with strong foundations in mathematics, machine learning, and computational methods to join us for a summer internship. As an ML Intern at Pravah, you will work on real, open-ended technical problems at the frontier of AI and physical systems.


What You Might Work On

Weather & Load Forecasting

  • Develop and improve forecasting models for weather and electricity demand

  • Working with large-scale weather foundation models, applying geo-targeted corrections, and fine-tuning for regional accuracy

  • Train models for improved performance across diverse and challenging real-world conditions

Computer Vision for Grid Mapping

  • Build models for object detection, segmentation, and depth estimation

  • Apply computer vision techniques to street view, LiDAR, and satellite imagery

  • Contribute to world models of physical infrastructure

Graph Machine Learning for Power Systems

  • Graph neural networks and graph transformers for modeling power flow and temporal dynamics in large-scale grids

  • Model and forecast behavior in large-scale power networks

  • Work on power flow modeling and system optimization


Who You Are

  • Currently pursuing a degree in Computer Science, Electrical Engineering, Applied Math, Physics, or a related field

  • Strong foundation in machine learning

  • Comfortable with Python and ML frameworks (e.g., PyTorch, TensorFlow, JAX) Experience with one or more of the following is a plus:

    • Time series forecasting

    • Computer vision

    • Graph neural networks

    • Geospatial data or physical systems modeling

  • Curious, self-driven, and comfortable working on open-ended problems


What You’ll Gain

  • Hands-on experience solving real-world ML problems with direct impact

  • Exposure to cutting-edge research and production systems

  • Close collaboration with a deeply technical founding team

  • Opportunity to contribute to systems deployed across global energy infrastructure


Compensation

$5,000 - $10,000 per month, depending on experience and background.


Timeline & Application

Interviews are currently ongoing! So apply as soon as you can :)

Compensation Range: $5K - $10K