Hi, I'm

Morten Svendgård

  • @UC Berkeley EECS — GPA 4.0, NORAM Scholar
  • @ICML 2024 — In-context learning research
  • @InMind — Robotics / AI / FPGA Engineer
  • @NTNU — M.Sc. Cybernetics & Robotics
Morten Svendgård

"Polynomial Regression as a Task for Understanding In-Context Learning Through Finetuning and Alignment"

  • Proposed polynomial regression as a structured function class for studying prompting, alignment, and in-context learning in transformers.
  • Ran large-scale experiments on Berkeley compute clusters.
  • Worked under Prof. Anant Sahai.
In-context learning performance results — degree 5 polynomial regression
  • Graduate-level coursework in deep learning, robotics, and autonomy — including large-scale training runs on university GPU clusters.
  • Regularly turned recent research papers into working prototypes and experiment code.

Selected courses:

  • COMPSCI 294 — Experimental Design for ML on Multimedia Data (Gerald Friedland)
  • EECS 225B — Digital Image Processing (Avideh Zakhor)
  • INDENG 221 — Introduction to Financial Engineering (Lizeng Zhang)
Show more courses University of California, Berkeley seal
  • Control theory, signal processing, machine learning, and robotic systems.
  • Thesis (grade: A): "Safe Navigation in Dynamic Environments Using Control Barrier Functions and an RGB-D Camera". Supervised by Prof. Kostas Alexis.
  • Quadrotor that avoids moving obstacles using RGB-D, scene flow, and CBFs — running at 20+ Hz on a Jetson Orin NX.
Quadrotor dodging a dynamic obstacle using CBFs and scene flow
  • Building a humanoid robot from the ground up — FPGA acceleration, motor controllers, whole-body control, and AI integration.
  • Early-stage team — broad ownership across the full stack, from PCB-level hardware to high-level intelligence.
  • Working at the intersection of embedded systems, real-time control, and machine learning.
InMind humanoid robot
  • Specialized RAG pipeline over Norwegian legal sources.
  • Combined retrieval, reasoning, and document generation into one product.
  • Owned backend infrastructure and frontend interface end-to-end.
JussAI
  • Built and published Moving Dots on Google Play independently — no team, no guidance.
  • Polished Unity/C# game with real downloads and ad revenue.
Moving Dots game illustration
  • Automatically regulates seed and fertilizer output based on predefined field zones — GPS positioning, zone mapping, and real-time control.
  • Runs on an Arduino with RTK GPS and a personal RTK base station for centimeter-level positioning accuracy.
  • Built independently, integrating embedded hardware, GPS, and custom control software.
  • Connected speech-to-text, LLM reasoning, higher-level planning, and ROS motor control.
  • Language model reasons about what to do before executing — not just keyword matching.
  • Practical embodied AI, not a chatbot demo.
  • Built backend, infrastructure, deployment, and product plumbing from scratch.
  • Analyzed how companies perform on AI search engines like Perplexity.
  • Applied to Y Combinator. Left before the company continued as Jarts.io.