Intel NPU organization is dedicated to research and development for the future of AI - unprecedented scale for enabling machine intelligence on Edge, desktop, and mobile computers. While achieving a minimal power consumption and tremendous computing power, Intel AI accelerators are targeting daily use for millions of devices. Join the adventure of harnessing the complexity of state-of-art Deep Neural Networks and most advanced AI hardware accelerators in the word.
The Neural Network Compiler Optimization team is looking for a highly motivated Software Engineer with a graph theory background and problem-solving skills. Our team is working to utilize the OpenVINO toolkit and underlying MLIR infrastructure in order to redefine the limits of Neural Networks performance for the Neural Processing Units generations to come.
The successful candidate will be part of our efforts to research and develop graph-based compilation algorithms for broad horizontal scaling for the new Neural Network back-end compiler project and will be cooperating on a daily basis with runtime software, research, infrastructure and front-end teams.
Minimal Qualifications:
BS/MS in Computer Science or a similar field.
At least 3-4 years of experience in programming.
Excellent C++ programming skills.
Strong production software engineering background, experience with CI, code reviews, paired programming, unit and integration testing.
Proven track of experience in contributing in large-scale, multi-component software systems.
Experience in LLVM/MLIR.
Preferred Qualifications:
Experience in one the following:
compiler technologies, computer vision, numerical modelling, high-performance computing, deep-learning frameworks or algorithms.
Experience in development of graph-based algorithms, e.g. production solutions based on graph coloring, maximum cut, shortest path, etc.
Experience in AI hardware accelerators, GPU, heterogeneous architectures software development.
Experience in mapping between Neural Networks architectures and hardware accelerated inference.
Python programming skills.
Requirements listed would be obtained through a combination of industry relevant job experience, internship experiences and or schoolwork/classes/research.
Work Model for this Role
This role will be eligible for our hybrid work model which allows employees to split their time between working on-site at their assigned Intel site and off-site. * Job posting details (such as work model, location or time type) are subject to change.