Grab
Technology
LeadEdgeAIEngineer
Neural analysis suggests this role is
optimal for mid candidates.
“Lead Edge AI Engineer at Grab. Skills: Edge AI, Computer Vision, Machine Learning, PyTorch. Develop multi-task learning models. Refine multi-task learning models”
What You'll Achieve.
Maintain recording integrity; Ensure system stability
Industry & Context.
Root cause analysis
What They're Looking For.
Must Have
Bachelor's degree or higher, Minimum 5 years experience, Mandatory focus on Edge AI, Deep expertise in PyTorch, Proficient in Video Action Recognition, Proficient in Learning network design, Deep understanding of resource-constrained environments, Knowledge of model optimization techniques, Proficiency in English
Nice to Have
Context-Aware DSP Optimization experience, Dynamic Graph Execution experience, Experience designing intelligent runtime management logic, Experience dynamically loading/unloading heads, Proven experience with Qualcomm DSP, Proven experience with SNPE, Proven experience with QNN SDK, Background in Android development, Experience with sensor fusion, Experience with camera localization, Experience with motion estimation, Experience with 3D reconstruction, Proficiency in low-level system software, Proficiency in hardware-software interactions
What You'll Do.
Develop multi-task learning models
Refine multi-task learning models
Develop video action recognition systems
Deploy Computer Vision algorithms
Utilize Qualcomm SNPE / QNN SDK
Reduce power consumption
Manage thermal constraints
Ensure minimal model switching latency
Implement safety mechanisms
Ensure system stability
Collaborate with Firmware teams
Collaborate with Mobile teams
How You'll Work.
Team & Collaboration
Firmware teams; Mobile teams
Communication Scope
Present technical data
Full Job Description
Life at Grab At Grab, every Grabber is guided by The Grab Way, which spells out our mission, how we believe we can achieve it, and our operating principles - the 4Hs: Heart, Hunger, Honour and Humility. These principles guide and help us make decisions as we create economic empowerment for the people of Southeast Asia. Get to know the Team The Data Science (Geo Vision) team at Grab focuses on improving the maps and building map-based intelligence such as localization, routing, travel time estimation, and traffic forecasting. We use Computer Vision and conventional machine learning methods on a variety of signals—specifically utilizing edge device footage—to understand our locations and road networks. Get to know the Role We are looking for a Lead Data Scientist / Edge AI Engineer to lead edge development for our edge devices. A key focus will be Multi-Task & Action Recognition Development, where the successful candidate will be responsible for developing and refining multi-task learning models and video action recognition systems for our edge devices. You will work onsite and will report to the Head of Data Science based in the Cluj Office. The Critical Tasks You Will Perform * Multi-Task & Action Recognition Development: Develop and refine multi-task learning models (specifically Hydranet architecture) and video action recognition systems using PyTorch. * Edge Deployment & Engineering: Deploy Computer Vision algorithms into embedded Android platforms, utilizing the Qualcomm SNPE / QNN SDK to interact directly with the DSP. * Resource Efficiency: Conduct rigorous performance analysis to reduce power consumption and manage thermal constraints. You will ensure model switching latency remains minimal to maintain recording integrity. * System Stability: Implement safety mechanisms to ensure system stability during dynamic model graph reconfiguration. * Collaboration: Collaborate with Firmware and Mobile teams to integrate signals for model decision-making. ## Qualificat
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