Company Description McEasy, a transportation management solution to simplify complex logistics operations. is looking for an Computer Vision Engineer to join our ever-growing team. If you are a keen learner, self-driven,…
Skills: Computer Vision, Deep Learning, PyTorch, TensorFlow, Python
Company Description McEasy is Indonesia's Top Transportation Management System with IoT Integration. We provide Internet-based and GPS-based digital solutions to address the needs of logistics operations and vehicle loca…
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Full-time
Posted 10d ago
~40 hrs/week
Responsibilities
Develop and deploy computer vision models for driver monitoring and road event detection. Optimize these models for edge devices and manage the end-to-end vision data pipeline from annotation to production.
Requirements
Requires strong fundamentals in deep learning and hands-on experience training and deploying CV models to production using PyTorch or TensorFlow. Proficiency in Python and experience with resource-constrained inference optimization is essential.
Full job description
Company Description
McEasy, a transportation management solution to simplify complex logistics operations. is looking for an Computer Vision Engineerto join our ever-growing team.
If you are a keen learner, self-driven, and looking to be a part of a team that is passionate with helping each other, we want to hear from you.
Job Description
1. Own Video Intelligence
Build and train CV models for driver fatigue & distraction detection, ADAS-style road & event detection, and cargo, theft, and in-cabin monitoring.
Turn messy, real-world video into reliable detections.
2. Optimize for the Edge
Make models run cost-effectively at scale using quantization, pruning, distillation, on-device/edge inference, and trigger-based, event-driven processing.
Treat inference cost-per-camera as a first-class design constraint.
3. Train, Don't Just Wrap
Build custom models where they create differentiation.
Use pre-trained backbones and transfer learning to move fast.
Know when to fine-tune vs. build from scratch.
4. Own the Vision Data Pipeline
Define annotation specs and quality standards (labeling is outsourced — you own the spec).
Build training and evaluation datasets from real fleet video.
Monitor model drift and retrain as conditions change.
5. Ship to Production
Deploy models into the product, not notebooks.
Build inference services (edge + cloud), monitoring, and versioning.
Iterate from real field performance.
6. Collaborate Across Teams
Work with Hardware/IoT Engineers on dashcams and edge devices.
Partner with Data & AI Product Engineers for shared data and benchmarking.
Collaborate with Software Engineers and Product/Leadership to integrate solutions and refine use cases.
Qualifications
Must-Have
Strong computer-vision and deep-learning fundamentals (object detection, image/video models)
Hands-on with PyTorch or TensorFlow — training, not just inference
Track record deploying CV models to production (real users, real data — not just papers or Kaggle)
Experience optimizing models for real-time / resource-constrained inference
Solid engineering (Python; can build and ship services)
Comfort with messy, real-world image/video data at scale
McEasy is a leading Indonesian company specializing in logistics and transportation solutions. We develop the McEasy Platform (MEP), which integrates multiple solutions into a single dashboard. The MEP is designed to streamline fleet management and optimize supply chains. It provides real-time visibility for B2B clients to ensure seamless and efficient operations.
Our vision is to drive the transformation of supply chains in Southeast Asia (SEA) through digitization and promote an inclusive digital ecosystem.
In pursuit of our goals, McEasy delivers solutions such as an integrated Fleet Management system with GPS tracking, video monitoring utilizing TrackVision cameras along with AI-powered MDVR, fuel management with integrated sensors, and reports and analytics to enhance business performance.
Certified with ISO 27001:2022 and 9001:2015, we have partnered with over 1,500 companies across various industries.
Offices: Jalan Mega Kuningan Barat 3, Sopo Del Office Tower B Lt. 11 Unit 7, Jakarta, Jakarta 12950, ID · Gd. Sinarmas Land Plaza Lantai 8 Jl. Pemuda No 60-70 Surabaya 60271, Surabaya, East Java 60271, ID
SaaSTelematicsIoTTMSTransportation Management SystemGPS TrackerFleet Management SystemRoute PlanningFleet TrackingOrder Management System
McEasy is a leading Indonesian company specializing in logistics and transportation solutions. We develop the McEasy Platform (MEP), which integrates multiple solutions into a single dashboard. The MEP is designed to streamline fleet management and optimize supply chains. It provides real-time visibility for B2B clients to ensure seamless and efficient operations.
Our vision is to drive the transformation of supply chains in Southeast Asia (SEA) through digitization and promote an inclusive digital ecosystem.
In pursuit of our goals, McEasy delivers solutions such as an integrated Fleet Management system with GPS tracking, video monitoring utilizing TrackVision cameras along with AI-powered MDVR, fuel management with integrated sensors, and reports and analytics to enhance business performance.
Certified with ISO 27001:2022 and 9001:2015, we have partnered with over 1,500 companies across various industries.
Offices: Jalan Mega Kuningan Barat 3, Sopo Del Office Tower B Lt. 11 Unit 7, Jakarta, Jakarta 12950, ID · Gd. Sinarmas Land Plaza Lantai 8 Jl. Pemuda No 60-70 Surabaya 60271, Surabaya, East Java 60271, ID
SaaSTelematicsIoTTMSTransportation Management SystemGPS TrackerFleet Management SystemRoute PlanningFleet TrackingOrder Management System