Sr. Computer Vision Engineer - 3D Semantic Scene Understanding at Conxai Technologies GmbH
Munich, Bavaria, Germany -
Full Time


Start Date

Immediate

Expiry Date

27 Jun, 26

Salary

0.0

Posted On

29 Mar, 26

Experience

2 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Computer Vision, Deep Learning, 3D Semantic Reconstruction, Geometric Deep Learning, Agentic Inference, Spatial Knowledge Graphs, Multi-Modal Fusion, Surface Reconstruction, Occupancy Mapping, Volumetric Segmentation, GraphRAG, Langgraph, LlamaIndex, Open3D, PyTorch 3D, TSDF

Industry

Software Development

Description
About CONXAI CONXAI has built a no-code, agentic AI platform for the Architecture, Engineering and Construction (AEC) and physical industries, focused on knowledge-automation. We automate high-stakes, knowledge-intensive workflows traditionally trapped in siloed data, fragmented tools and tacit (undocumented) human expertise. Our multi-agent systems perform complex reasoning in the physical world; and transform bespoke, service-heavy processes into scalable Service-as-a-Software automation. CONXAI is trusted by some of the leading AEC companies in Europe, US, LATAM and Japan. Your Role As a Senior ML Engineer, you will lead the development of the spatial reasoning engine for our agentic AI platform. Your work focuses on the intersection of 3D Semantic Reconstruction, Geometric Deep Learning, and Agentic Inference. You will be responsible for building pipelines that transform unstructured multi-modal data into structured, actionable Spatial Knowledge Graphs. You will prioritize topological accuracy and semantic grounding, over photorealistic neural rendering. You will design the logic that allows autonomous agents to navigate, reason about, and perform inference on complex 3D environments, ensuring that AI-driven insights are rooted in the physical and engineering constraints of the real world. What You’ll Do Semantic Scene Reconstruction: Develop algorithms for 3D scene representation that prioritize geometric primitives and semantic labels over pixel-accuracy. This includes surface reconstruction, occupancy mapping and volumetric segmentation Multi-Modal Fusion: Architect systems that fuse panoptic segmentation representations from CONXAI’s AEC Foundation model with 3D models to generate high-fidelity, labeled representations Knowledge Graph Augmentation: Automate the augmentation of 3D spatial data to CONXAI’s Spatio-Temporal Knowledge Graphs, from reconstructed 3D scenes, mapping the hierarchical and functional relationships between structural elements Agentic Inference & Reasoning: Design agentic workflows that perform complex reasoning tasks directly on the STKG Actionable Affordance Mapping: Implement methods to identify "affordances" within a 3D volume, defining how agents or users can interact with the environment based on its physical geometry and engineering logic Optimization & Scaling: Deploy SoTA models, representations and inferred domain context into production use-cases that deliver significant value to customers What We’re Looking For MS / PhD in Computer Science, Robotics, Electrical Engineering or related field 3+ years of industry experience in Computer Vision and Deep Learning 2+ years of leading 3D Computer Vision projects, specifically, geometric deep learning, 3D reconstruction Experience with physics engines, e.g., NVIDIA Isaac Gym, MuJoCo, PyBullet, etc. is a plus Experience in Agentic AI implementations with GraphRAG, Langgraph/LlamaIndex is a plus Exceptional implementation experience with Open3D / PyTorch 3D, reconstruction (multi-view stereo, surface reconstruction and mesh-fitting, e.g., with TSDF), 2D → 3D “lifting” Thorough understanding of software design Previous experience in a fast-paced technology startup environment is a plus Fluent and articulate in English Why CONXAI Edge of Innovation: Be at the absolute forefront of AI in the construction tech space High Autonomy: Contribute to a new paradigm for multi-modal scene understanding and reasoning - owning the logic, performance, and customer impact Top-Tier Peer Group: Work with a global team of ML engineers, software engineers and industry practitioners Equity & Scale: Competitive compensation with significant equity upside Location Munich Department Technology Employment Type Full-Time Minimum Experience Experienced
Responsibilities
The role involves leading the development of the spatial reasoning engine, focusing on 3D Semantic Reconstruction, Geometric Deep Learning, and Agentic Inference to build actionable Spatial Knowledge Graphs. Responsibilities include designing logic for autonomous agents to reason about 3D environments while prioritizing topological accuracy and semantic grounding.
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