IMC
Financial Trading
MachineLearningEngineer
Neural analysis suggests this role is
optimal for Senior candidates.
“Machine Learning Engineer at IMC. Skills: Machine Learning, Python, GPU programming, distributed training. Develop large-scale distributed training pipelines. Build and optimize low-latency inference pipelines”
What You'll Achieve.
accelerating experimentation cycles; shape the future of IMC’s technology; shape the future of IMC’s trading capabilities
Industry & Context.
What They're Looking For.
Must Have
5+ years of experience in machine learning, Python, CUDA, C++, GPU programming for training and inference acceleration, distributed training for scaling ML workloads
Nice to Have
real-time, low-latency ML pipelines in high-performance environments, Exposure to cloud platforms and orchestration tools, contributing to open-source projects in machine learning, data science, or distributed systems
What You'll Do.
Develop large-scale distributed training pipelines
Build and optimize low-latency inference pipelines
Develop libraries to improve ML frameworks performance
Maximize performance in training and inference
Design scalable model frameworks
Automate ML experiments
Evaluate and roll out third-party tools
Extend open-source ML tools capabilities
How You'll Work.
Team & Collaboration
Collaborate with leading researchers; Collaborate with hardware experts; Collaborate with software engineers; Collaborate with quantitative researchers; Partner with HPC specialists
Full Job Description
As a Machine Learning Engineer, you will play a pivotal role in building systems that drive the training and deployment of large-scale ML models across our global operations. You'll collaborate with leading researchers, hardware experts, and software engineers to build robust solutions that maximize the potential of GPU acceleration, distributed computing, and the latest open-source tools. Your work will influence our trading strategies by accelerating experimentation cycles that foster continuous innovation and refinement. This is a unique opportunity to solve problems at the intersection of advanced machine learning and trading, where your contributions will shape the future of IMC’s technology and trading capabilities. Your Core Responsibilities: Develop large-scale distributed training pipelines to manage datasets and complex models Build and optimize low-latency inference pipelines, ensuring models deliver real-time predictions in production systems Develop libraries to improve the performance of machine learning frameworks Maximize performance in training and inference using GPU hardware and acceleration libraries Design scalable model frameworks capable of handling high-volume trading data and delivering real-time, high-accuracy predictions Collaborate with quantitative researchers to automate ML experiments, hyperparameter tuning, and model retraining Partner with HPC specialists to optimize workflows, improve training speed, and reduce costs Evaluate and roll out third-party tools to enhance model development, training, and inference capabilities Dig into the internals of open-source ML tools to extend their capabilities and improve performance Your Skills and Experience: 5+ years of experience in machine learning with a focus on training or inference systems Hands-on experience with real-time, low-latency ML pipelines in high-performance environments is a strong plus Strong engineering skills, including Python, CUDA, or C++ Knowledge of machine learning fr
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