Start Date
Immediate
Expiry Date
21 Oct, 25
Salary
75000.0
Posted On
22 Jul, 25
Experience
0 year(s) or above
Remote Job
Yes
Telecommute
Yes
Sponsor Visa
No
Skills
Cognitive Science, Communication Skills, Python, Computer Science, Machine Learning, Social Dynamics, Psychology
Industry
Information Technology/IT
ABOUT ELECTRIC TWIN
Electric Twin is building the future of strategic decision-making. We use large language models (LLMs) to simulate human behaviour, allowing our clients to create science-based synthetic populations that mirror their target markets and research demographics.
Our platform provides a suite of investigative tools—from qualitative polling and quantitative analysis to simulated focus groups and one-on-one discussions. This enables leaders in business and government to investigate outcomes in near real-time, continuously refine ideas with powerful feedback, and make critical decisions with confidence.
With a unique proposition in the rapidly developing generative AI sector, Electric Twin is poised for significant growth. We are backed by world-class leadership, including:
We build science-based synthetic populations and the tools to interact with them. The world’s leading companies and governments use Electric Twin to make better decisions. Now, we are looking for brilliant minds to join us on this mission.
ESSENTIAL SKILLS & EXPERIENCE:
THE ROLE
As a Research Engineer at Electric Twin, you will focus on one of the most exciting and challenging applications of AI: modeling human behaviour. Your primary role is to pioneer the application of existing LLMs to create believable, consistent, and scientifically-grounded AI agents. You will design the cognitive architecture of our synthetic agents, figure out how to evaluate their behaviour in ambiguous scenarios, and develop the experimental methods to validate our simulations.
You will be at the forefront of an emerging field, tackling questions like: How can we use an LLM to give an agent a persistent memory? How do we ensure a population of agents behaves in a way that is statistically representative of a real demographic? How do we measure and validate “realism” when there is no simple ground truth?
This is a deeply interdisciplinary role that combines creative AI application, rigorous experimental design, and insights from computational social science to bring our synthetic populations to life.
KEY RESPONSIBILITIES