1

Custom Learning Systems Jobs in Calgary, AB (NOW HIRING)

Experience with Windows Server Systems, Windows Clusters & other related Microsoft technologies ... learning and improving | Courage , we think and act boldly | Together , we respect each other and ...

Build custom machine learning models and natural language processing systems using state-of-the-art techniques. * Leverage tools like TensorFlow, PyTorch, Kubernetes, and Nvidia Triton Servers to ...

Hands-on opportunities to develop Workday integrations and custom reports * Participate in Workday ... Knowledge of Workday or other ERP system is a plus but not required * Bilingual French/English ...

Developer

Calgary, AB · On-site +1

... systems, particularly Vista ERP, for high-revenue construction companies across North America. As a ... Key Responsibilities - Collaborate with cross-functional teams to design, build, and enhance custom ...

Develop custom components and tools to optimize the functionality and performance of our chatbot ... Integrate chatbot systems seamlessly with backend systems, databases, and APIs to facilitate smooth ...

Evaluate and select performance technologies, build custom applications, and implement solutions ... A solid understanding of Land and Well domain processes and systems. We acknowledge the value of ...

Configure and maintain custom objects, validation rules, approvals, and Lightning pages * Build and ... Information Systems, or equivalent experience Nice to Have: * Salesforce certifications ...

next page

Showing results 1-20

Custom Learning Systems information

What is the difference between Custom Learning Systems vs Instructional Designer?

AspectCustom Learning SystemsInstructional Designer
CredentialsTypically requires a degree in education, instructional design, or related fieldRequires a degree in education, instructional design, or related field
Work EnvironmentDesigns and develops customized learning solutions for organizationsCreates instructional materials and courses, often for educational or corporate settings
Industry UsageUsed across corporate, educational, and training sectors for tailored learning programsCommonly employed in education, corporate training, and e-learning development

While both roles involve designing learning experiences, Custom Learning Systems focuses on creating tailored solutions for specific organizational needs, whereas Instructional Designers develop general instructional materials and courses. The roles often overlap but differ mainly in scope and application.

Infographic showing various Custom Learning Systems job openings in Calgary, AB as of June 2026, with employment types broken down into 100% Full Time. Highlights an 75% In-person, and 25% Remote job distribution.
Lead Engineer, Reinforcement Learning & Scenario Generation

Lead Engineer, Reinforcement Learning & Scenario Generation

Serve Robotics

Calgary, AB • Remote

$225K - $300K/yr

Full-time

Posted 28 days ago


Job description

At Serve Robotics, we’re reimagining how things move in cities. Our personable sidewalk robot is our vision for the future. It’s designed to take deliveries away from congested streets, make deliveries available to more people, and benefit local businesses.

The Serve fleet has been delighting merchants, customers, and pedestrians along the way in Los Angeles, Miami, Dallas, Atlanta and Chicago while doing commercial deliveries. We’re looking for talented individuals who will grow robotic deliveries from surprising novelty to efficient ubiquity.

Who We Are

We are tech industry veterans in software, hardware, and design who are pooling our skills to build the future we want to live in. We are solving real-world problems leveraging robotics, machine learning and computer vision, among other disciplines, with a mindful eye towards the end-to-end user experience. Our team is agile, diverse, and driven. We believe that the best way to solve complicated dynamic problems is collaboratively and respectfully.

The Lead Engineer, RL Scaling & Procedural Scenario Generation is responsible for building scalable training pipelines and generating high-fidelity synthetic scenarios. This role designs procedural simulation environments, creates diverse long-tail edge cases, and optimizes RL systems to train robust foundational models. This role sits at the intersection of simulation, machine learning, distributed systems, and content generation and has a high impact on how quickly and safely agents learn in simulation.

Responsibilities

  • Develop RL algorithms that can help with terrain intelligence and social navigation behaviors.

  • Design, build, and optimize large-scale RL training pipelines (distributed compute, GPU clusters, containerized workflows).

  • Implement curriculum learning, domain randomization, and multi-agent RL strategies.

  • Optimize RL model performance, sample efficiency, and stability across thousands to millions of simulation steps.

  • Build automated tools for experiment orchestration, rollout collection, and metrics visualization.

  • Develop procedural generation pipelines for synthetic environments, agents, and dynamic behaviors.

  • Build tools to generate long-tail scenarios, sudden appearance of objects, traffic behaviors, rare events, and environmental variations.

  • Create systems for configuration, validation, and scoring of generated scenarios.

  • Collaborate with autonomy, ML, and safety teams to map real-world failures into repeatable synthetic simulation cases.

  • Design APIs to connect RL agents, scenario generators, planners, and environment simulators.

  • Debug and optimize simulation performance (real-time speed, determinism, reproducibility).

  • Work with 3D assets, traffic models, mapping systems (e.g., Isaac Sim, CARLA, Unity, Gazebo).

  • Partner with autonomy, data, and modeling teams to define training objectives and scenario requirements.

  • Translate real-world logs and edge cases into parameterized procedural content.

  • Document tools, frameworks, and workflows for internal users.

Qualifications

  • Master’s degree in Robotics, AI, Computer Science, Mathematics, or a related field.

  • 7+ years of professional experience with shipping transformer based AI models handling complex navigation or manipulation tasks in AV or robotics solutions at scale in the real world.

  • 3+ years technical leadership/architecture experience

  • Strong experience with Reinforcement Learning (PPO, SAC, A3C, DQN, multi-agent RL, or equivalents).

  • Hands-on experience with distributed training frameworks (Ray RLlib, Accelerate, PyTorch Distributed, Kubernetes, or similar).

  • Proficiency in Python and C++ for performance-critical simulation or graphics pipelines.

  • Experience building or modifying simulation environments (Isaac Sim, Unity, Unreal, CARLA, Gazebo, MuJoCo or custom engines).

  • Experience with procedural generation (noise functions, rule-based systems, agent scripts, behavior trees).

  • Experience with GPU compute, containers, and cloud infrastructure.

What Make You Stand Out

  • Background in generative AI (diffusion, LLMs) for scenario synthesis or environment creation.

  • Experience with traffic simulation (SUMO) or sensor simulation (LiDAR, camera pipelines).

  • Knowledge of CUDA, graphics engines, physics modeling, or rendering.

* Please note: The base salary range listed in this job description reflects compensation for candidates based in the San Francisco Bay Area. We are also open to qualified talent working remotely across the:

United States - Base salary range (U.S. – all locations): $190k - $230k USD

Canada - Base salary range (Canada - all locations): $160k - $190k CAD

Compensation Range: $225K - $300K