AiDash
Staff Machine Learning Engineer (LiDAR)
2 months ago
About the Job
How you'll make an impact:
- Design, implement, and optimize deep learning models for aerial LiDAR data—using CNNs, Transformers, and hybrid architectures
- Build end-to-end pipelines for object detection, segmentation, and terrain modeling from geo-referenced point clouds
- Combine aerial LiDAR with other data sources (e.g., RGB imagery, DSM/DTM, hyperspectral) using cross-modal transformers or fusion models
- Implement efficient 3D spatial reasoning using voxel grids, sparse tensors, and attention-based architectures
- Drive experimentation, model benchmarking, and ablation studies to push accuracy and efficiency boundaries
- Collaborate with geospatial scientists and ML engineers to bring models to production via scalable APIs and cloud-native services
- Apply MLOps practices to manage datasets, monitor model drift, and automate retraining workflows
What we're looking for:
- 7+ years of experience in applied machine learning or computer vision, with 3+ years focused on LiDAR or 3D data
- Proven expertise in 3D deep learning (e.g., 3D CNNs, PointNet/PointNeXt, SparseConvNet, Minkowski Engine)
- Experience building and fine-tuning transformer architectures for spatial or remote sensing applications (e.g., Swin3D, PointTransformer, GeoTransformer)
- Strong coding skills in Python and deep learning libraries (PyTorch preferred)
- Familiarity with aerial LiDAR data characteristics, including waveform/point density, elevation modeling, and coordinate systems (EPSG, UTM, etc.)
- Hands-on experience with geospatial and point cloud libraries (PDAL, Open3D, PCL)
- Understanding of GPU optimization and deployment in production (CUDA, TensorRT, TorchScript)
- Master’s or PhD in Computer Science, Remote Sensing, Geomatics, or related field
Preferred Qualifications:
- Experience with neural implicit models (e.g., NeRF, occupancy networks) for 3D scene modeling
- Knowledge of spatiotemporal modeling or change detection from periodic LiDAR collections
- Prior work with cloud-based pipelines (AWS SageMaker, GCP Vertex AI, or Azure ML)
- Contributions to open-source geospatial/ML tools or research publications
What you'll love:
- Comprehensive Medical, Dental, and Vision Coverage: 100% coverage for employees and 80% for their spouses and children
- Health Reimbursement Account (HRA): 100% funded by AiDASH to cover medical deductibles
- 401(k) Plan: Begin contributing after three months of employment to prepare for your future. Currently, no company match is offered
- Parental Leave: Supportive parental leave with 16 weeks for primary caregivers and 4 weeks for secondary caregivers
- Generous Vacation Policy: Accrue 20 vacation days per year, plus enjoy an additional flex holiday to celebrate whatever feels most important to you!
- Winter Break: From December 25th through January 2nd, we give everyone time off to recharge and enjoy time with family and friends!
About the Company

AiDash
<p>AiDash is making critical infrastructure industries climate-resilient and sustainable with satellites and AI. Using our full-stack SaaS solutions, customers in electric, gas, and water utilities, transportation, and construction are transforming asset inspection and maintenance - and complying with biodiversity net gain mandates and carbon capture goals. Our customers deliver ROI in their first year of deployment with reduced costs, improved reliability, and achieved sustainability goals.</p>
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