Research Scientist, Anthrokrishi, Deepmind

Google Google · Big Tech · Bengaluru, Karnataka, India

Research Scientist at Google DeepMind's AnthroKrishi team, focusing on developing AI models for global agriculture using satellite data. The role involves pioneering computer vision models, leading research in crop yield forecasting, and designing large-scale experiments with a focus on spatio-temporal reasoning and limited data scenarios. The position requires a PhD and publication record, with a path to impacting global agricultural systems and contributing to production-ready systems.

What you'd actually do

  1. Pioneer novel computer vision models to create a unified understanding of agriculture from satellite data sources.
  2. Solve core AI problems by developing generalizable models that are robust across varied agricultural systems, from smallholder farms to large-scale industrial fields.
  3. Lead research toward the grand challenge of field-level crop yield forecasting. This involves advancing spatio-temporal reasoning and learning effectively from limited or sparse data.
  4. Design and execute large-scale experiments, writing high-quality, reusable code (JAX preferred), and contributing to a production-ready system.
  5. Mentor junior researchers, collaborating with cross-functional teams across Google, and publishing your work at conferences.

Skills

Required

  • PhD or equivalent practical research experience in Computer Science, AI, or a related field with a focus on computer vision or machine learning
  • 2 years of experience in building computer vision models using machine learning techniques
  • One or more scientific publications in the ML/AI conferences or journals (e.g., NeurIPS, ICML, ICLR, CVPR)

Nice to have

  • Experience mentoring students or junior researchers
  • Experience building and training deep learning models in frameworks such as JAX, TensorFlow, or PyTorch
  • Experience with or a strong interest in remote sensing or geospatial data
  • Demonstrated expertise in one or more of the following: generative models, segmentation algorithms, multi-modal fusion, spatio-temporal analysis
  • A passion for applying AI to solve large-scale societal challenges like climate change and food security

What the JD emphasized

  • publication track record
  • building computer vision models

Other signals

  • AI models
  • satellite data
  • computer vision
  • machine learning
  • crop yield forecasting
  • spatio-temporal reasoning
  • limited data