If you are interested in the application of artificial intelligence (AI) and machine learning (ML) methods for Energy systems optimization Distributed Energy Resources and Multi-Agent RL this is the right opportunity for you. Be a part of the team of research and machine learning scientists building a state-of-the-art predictive model from the ground up and get mentored by some of the best minds in AI during the process.
-Mara Cairo Product Owner Advanced Technology
Description
About the Role
This is a paid residency that will be undertaken over a 12-month period with the potential to be hired by our client AI afterwards (note: at the discretion of the client). The Resident will report to an Amii Scientist and regularly consult with the client team to share insights and engage in knowledge transfer activities. Successful candidates will be members of a cross-functional project team with backgrounds in ML research project management software engineering and new product development. This is a rare opportunity to be mentored by world-class scientists and to develop something truly impactful.
The clients core team is small so the resident will have a chance to become one of the companys first hires and fundamentally contribute to the companys future success. This role will have the opportunity to not only express and grow a technical skillset but also learn how a company is built from the ground up and how a deeply technical product makes its way from vision to scale.
About the Client
AI is a deeptech startup founded in 2021 by three UofA graduate students to commercialize their joint research.
The companys main product is ALEX a Deep Reinforcement Learning agent that helps electric utilities unlock grid capacity without requiring infrastructure upgrades. ALEX is pre-trained on a client utilitys historical data in a digital twin environment. It is deployed as a containerized runtime on AMI 2.0 smart meters where it provides premise level load forecasting flexibility forecasting and orchestration services to the customer utility.
2026 will be a pivotal year for AI as the company will hire its first employees attempt to scale ALEXs ML pipeline by a factor of 1k in order to execute on pilot projects and deploy the first agents.
About the Project
In technical terms an ALEX agent is a Deep Reinforcement Learning policy trained in a custom environment using a premises historical energy usage data. The agents purpose is to perform orchestration: scheduling of the premises load flexibility assets (Batteries Electric Vehicles). The agents reward is derived from a local energy market (LEM) where connected agents can exchange energy at a dynamically determined price that correlates with the LEMs supply and demand ratio. The agents observation space includes premise-specific time-series information (e.g. load demand flexibility asset status) and shared observations (daytime market statistics from LEMs last settled round). This frames the orchestration task as a multi-agent game in a partially observable environment where maximizing reward requires successful resource arbitrage. ALEXs policy neural network shares parameters between the actor critic and a parallel-trained world model that provides forecasting services.
The first pilot in 2024 trained ALEX agents for several LEMs each treated as an independent environment with 20 premises via PPO and a basic form of Centralized Learning / Decentralized Execution (CLDE) and self-play. Execution of the 2026 deliverables requires developing the capability to train ALEX agents for 20000 premises simultaneously.
While the 2024 setup produced competent agents it also faces scalability challenges. PPOs principal scalability challenges with available computational resources has been addressed through a switch to IMPALA. A more fundamental issue is that each environments population had to independently rediscover basic principles (e.g. discharging batteries when the premise needs energy daily load cycles). This is the challenge this project aims to solve.
The goal is to directly reduce per-agent walltime by mitigating the need for per-environment rediscovery of basic game rules. Possible avenues for this include:
Required Skills / Expertise
Are you passionate about building great solutions Youll be presented with opportunities to both personally and professionally develop as you build your career. Were looking for a talented and enthusiastic individual with a solid background in machine learning specifically time-series analysis and forecasting.
Key Responsibilities:
Required Qualifications:
Preferred Qualifications:
Non-Technical Requirements:
Why You Should Apply
Besides gaining industry experience additional perks include:
About Amii
One of Canadas three main institutes for artificial intelligence (AI) and machine learning our world-renowned researchers drive fundamental and applied research at the University of Alberta (and other academic institutions) training some of the worlds top scientific talent. Our cross-functional teams work collaboratively with Alberta-based businesses and organizations to build AI capacity and translate scientific advancement into industry adoption and economic impact.
How to Apply
If this sounds like the opportunity youve been waiting for please dont wait for the closing date of January 28 2026 to apply. Were excited to add a new member to the Amii team for this role and the posting may come down sooner than the closing date if we find the right candidate before the posting closes! When sending your application please send your resume and cover letter indicating why you think youd be a fit for Amii and the your cover letter please include one professional accomplishment you are most proud of and why.
Applicants must be legally eligible to work in Canada at the time of application.
Amii is an equal opportunity employer and values a diverse workforce. We encourage applications from all qualified individuals without regard to ethnicity religion gender identity sexual orientation age or disability. Accommodations for disability-related needs throughout the recruitment and selection process are available upon request. Any information provided by you for accommodations will be kept confidential and wont be used in the selection process.
Machine Learning Resident Client AI (1 year term) • Edmonton, Alberta, Canada