$10,000 - 15,000 monthly
Number of Applicants
:000+
Let AI Supercharge Your Job Hunt!
JobCopilot scans 500,000+ company career sites daily to find jobs for you
Job Summary
We are hiring a core algorithm R&D engineer to develop and advance the key AI capabilities of our internally developed vision platform. You will drive research-to-production delivery of state-of-the-art computer vision, deep learning, and multimodal foundation model techniques, focusing on industrial-grade performance, robustness, and efficiency.
Key Responsibilities
Core Vision Algorithm R&D (Deep Learning + Transformers)
• Research, develop, and optimize computer vision algorithms across:
CNN-based classification, anomaly detection, Siamese networks, object detection, rotated object detection, semantic segmentation, instance segmentation, keypoint detection.
• Build and improve Transformer-based detection/recognition architectures and training pipelines.
• Design evaluation protocols, run ablation studies, and iterate based on measurable improvements (accuracy, robustness, latency).
Few-shot / Small-sample Learning for Industrial Use Cases
• Own R&D for few-shot rotated detection, segmentation, and anomaly detection—aiming to train effective models from only a few images.
• Explore and implement methods such as meta-learning, prompt-/prototype-based learning, retrieval-enhanced approaches, and foundation-model feature adaptation for industrial inspection scenarios.
LLM / VLM Fine-tuning & Reinforcement Learning (Post-training)
• Understand LLM/VLM principles and implement practical post-training pipelines:
• Supervised fine-tuning (SFT), parameter-efficient fine-tuning (e.g., LoRA/PEFT), alignment methods (e.g., RLHF/DPO-like approaches), evaluation harnesses and safety/quality checks.
• Build reproducible training workflows (data curation, experiment tracking, model versioning, deployment readiness).
Vector / Graph-based Learning for CAD/PCB & Structured Data
• Research and develop models beyond raster images for vector data scenarios (e.g., engineering drawings, PCB schematics/layouts), aiming to outperform image-based baselines.
• Apply graph neural networks (GNNs) and vector/geometric representations to tasks such as component understanding, connectivity reasoning, and structured recognition.
High-performance Implementation & Productionization
• Write efficient, maintainable code in C++ and Python for training/inference pipelines and algorithm modules.
• Develop high-performance compute kernels and optimizations using SIMD and/or CUDA, profiling and improving runtime, memory use, and throughput.
• Collaborate with platform/software teams to integrate algorithms into product modules and ensure test coverage, stability, and maintainability.
Paper Reading & Reproducibility
• Regularly read and analyze top-tier papers; identify key contributions and reproduce core algorithms in code.
• Deliver internal technical notes and share learnings with the team.
Required Qualifications
• Bachelor’s / Master’s / PhD in Computer Science, Electrical Engineering, Applied Mathematics, or related fields (industry experience may substitute).
• Strong fundamentals and hands-on experience in deep learning for computer vision, including detection and segmentation.
• Solid engineering ability with Python + C++; capable of building clean training code (with Pytorch) and production-ready modules.
• Practical experience with performance optimization and acceleration (one or more of CUDA / SIMD / parallel computing).
• Ability to communicate effectively in both Chinese (Mandarin) and English as the successful person will have to liaise with our counterparts in China
JABIL CIRCUIT (SINGAPORE) PTE. LTD.
Jabil is one of the world’s largest electronic manufacturing services companies, providing customized design, manufacturing, distribution and aftermarket services for some of today’s largest companies and brands. Our global operations encompass over 100 plants in the world and employ over 180,000 pe...
Read more about the companyAuto-Apply to Similar Jobs with your AI JobCopilot
Copyright © 2026 Grabjobs Pte.Ltd. All Rights Reserved.