About the job
Computer Vision Engineer — Industrial AI Platform (Full-time) Doaz Inc. | Seoul, Korea About Doaz Doaz transforms industrial expertise into actionable AI. We build vertical AI solutions for engineering-intensive industries—construction, shipbuilding, heavy industries, and geotechnical engineering—where precision, regulatory compliance, and domain knowledge are non-negotiable. Our products are ... trusted by Korea’s leading enterprises, including POSCO E&C, Samsung Heavy Industries, Doosan Enerbility, and KT Estate. From automating geotechnical analysis with 95%+ accuracy to generating safety risk assessments in under 10 seconds, we solve problems that generic AI cannot reliably handle. • Founded: 2023 • Team: 20+ engineers and domain experts • Vision: Industrial Knowledge → Actionable AI The Role We’re looking for a Computer Vision Engineer to build the visual intelligence layer of our industrial AI platform. You will develop systems that understand engineering drawings, extract structured data from technical documents, and support automated verification across multiple industrial domains. This is not a demo role. Our CV models run in production and process high-volume engineering documents. In our world, a 1% accuracy improvement can translate to massive reductions in engineering hours and downstream rework. What You’ll Build 1) Drawing Intelligence • Object detection and instance segmentation for engineering drawings (architectural plans, structural drawings, P&IDs, ship block diagrams) • Symbol recognition across industrial standards (KS / ISO / ASME, classification society rules) • Extraction of relationships, cross-references, and revision changes across drawing sets 2) Document Understanding • Layout analysis for technical specs, engineering calculations, and regulatory documents • Table extraction from material schedules, BOMs, and equipment lists • Multi-format processing: PDF, scanned images, and CAD exports (DXF / DWG) 3) Compliance & Verification • Visual verification for compliance requirements (building codes, safety standards, maritime rules) • Automated comparison between design drawings and as-built documentation • Defect detection for construction / manufacturing quality inspection workflows Domain Applications (Examples) • Construction: floor plan analysis, certification review support, finish schedule extraction • Shipbuilding: block drawing interpretation, piping diagram analysis, weld symbol recognition • Heavy Industries: equipment layout verification, safety zone compliance, P&ID digitization • Geotechnical: borehole log interpretation, geological profile visualization What We’re Looking For Required • 3+ years in computer vision / deep learning with production deployment experience • MS or PhD in Computer Science, AI, or related field • Strong PyTorch proficiency; hands-on with detection / segmentation (YOLO / DETR / Mask R-CNN, etc.) • Strong Python engineering; comfortable with Git, Docker, and Linux environments • Ownership mindset; able to drive projects from research to production Preferred • Document AI experience: OCR, layout analysis, table extraction (LayoutLM / Donut / PaddleOCR, etc.) • CAD / engineering drawing domain familiarity • Experience in regulated / industrial environments (construction / manufacturing / maritime) • Multimodal AI (Vision-Language Models) research or applied experience • MLOps: serving, monitoring, retraining pipelines • Publications or open-source contributions Tech Stack (Typical) • Modeling: PyTorch, HuggingFace Transformers, Detectron2 • Optimization: ONNX Runtime, TensorRT • CV: OpenCV, Albumentations • Document / OCR: PaddleOCR, Tesseract, LayoutLMv3, Donut, DocTR, PyMuPDF • Infra: AWS (EC2 / S3 / Lambda / SageMaker), Docker, Kubernetes • Data: PostgreSQL, Elasticsearch, Vector DBs (Pinecone / Milvus) • Collaboration: GitHub, Notion, Slack Why Doaz • Solve real problems: Production systems used by real engineering teams • Deep technical work: Accuracy is a core product metric, not an afterthought • Domain expertise access: Work with engineers who have decades of field experience • Growth stage: Shape platform direction as we scale in Korea and expand globally • Compensation: Competitive salary + equity (impact-driven) Interview Process • Application Review (Resume + Portfolio) • Take-home Technical Assessment (approx. 3 hours) • Technical Interview (review + deep dive, 60 min) Apply Email doaz@doaz.ai with: • Resume / CV • Portfolio (GitHub, papers, or project documentation) • A brief note on why industrial AI interests you We review applications weekly and respond to all candidates. Doaz Inc. — Building AI that understands how industries actually work.
Requirements
- Computer Vision
- Deep Learning
- PyTorch
- Python
- Git
- Docker
- Linux
Qualifications
- MS or PhD in Computer Science
- AI
- related field
Preferred Technologies
- Computer Vision
- Deep Learning
- PyTorch
- Python
- Git
- Docker
- Linux
Benefits
- Competitive salary
- Equity
About the company
Doaz transforms industrial expertise into actionable AI. We build vertical AI solutions for engineering-intensive industries—construction, shipbuilding, heavy industries, and geotechnical engineering—where precision, regulatory compliance, and domain knowledge are non-negotiable. Our products are trusted by Korea’s leading enterprises, including POSCO E&C, Samsung Heavy Industries, Doosan Enerbility, and KT Estate.
Similar Jobs
computer science professor
abc consultants
Computer Scientist - I
Adobe
Senior Computer Scientist
Adobe