PpAistech Space is focused on generating affordable, recurrent, high resolution thermal imagery of the planet to provide a new perspective of Earth’s changing resources. The company is based in Barcelona and aims to revolutionize remote sensing for environmental monitoring and resource management. /p pAistech Space is seeking a highly specialized Machine Learning and Embedded AI Systems Engineer to serve as the critical bridge between data science, software, and hardware development. This role is focused on the successful integration and performance optimization of ML models across diverse and often constrained operational environments, including in-orbit systems (satellites, embedded TPUs), on-ground processing, and online platforms. The successful candidate will drive the deployment lifecycle, ensuring our AI systems are reliable and performant across the entire Aistech Space ecosystem. /p h3Key Responsibilities /h3 ul libEmbedded Deployment: /b Collaborate with FPGA hardware, embedded software, and data science teams to deploy AI solutions directly onto satellites and other constrained Edge AI devices. /li libAlgorithm Conversion: /b Implement high-performance solutions by transferring and optimizing algorithms initially created in Python into robust C/C++ codebases. /li libInfrastructure Development: /b Research, recommend, and implement new hardware and software solutions to improve the company’s overall AI infrastructure. /li libPerformance Optimization: /b Ensure AI models are highly optimized for efficiency, especially when utilizing hardware accelerators like GPUs and NPUs. /li libTeam Support: /b Provide computational and deployment support to the Remote Sensing and Data Science teams. /li /ul h3Who you are /h3 h3Must /h3 ul liMasters/PhD in Computer Science, Engineering, or a related technical field. /li liFluency in English. /li liMore than 2 years of professional experience in Embedded Software Development. /li liProgramming fluency in C, C++, and Python. /li liProficiency with Linux environments and collaborative development using GitHub. /li liExperience with hardware acceleration technologies, including Graphics Processing Units (GPUs) and Neural Processing Units (NPUs). /li liExpertise in ML/Deep Learning deployment frameworks, such as TensorFlow Lite, ONNX Runtime, or PyTorch Edge. /li liWorking knowledge of MLOps principles for training/evaluation pipelines and automated model delivery/monitoring. /li /ul h3Critical bonus skills (high priority) /h3 ul liExperience with AMD Versal AI engines and Vitis Model Composer (Kernel development, data flow optimization, model quantization/pruning, Vitis IDE, and performance analysis are a plus). /li liExperience deploying models via web services, dashboards, and APIs (e.g., FastAPI, Flask, gRPC) and using cloud services/containerization (GCP, AWS, Azure, Docker, Kubernetes). /li liFamiliarity with High-Performance Computing (HPC) and job scheduling systems like SLURM. /li /ul h3Nice to have /h3 ul liFamiliarity with containerization on constrained systems (e.g., Singularity, microcontainers). /li liKnowledge of data compression techniques for in-orbit data handling. /li liPrior experience in the aerospace or remote sensing industries. /li /ul h3What You’ll Gain by Joining Us /h3 /p