Senior Performance Analysis Engineer - Machine Learning (1year relevant experience required)

ARM
Cambridge
6 months ago
Applications closed

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Job DescriptionArms Machine Learning group ishiring in western Europe! Want to help show developers the AIcapabilities of efficient, next-generation mobile, server andembedded devices? If so, we should talk! We are a diverse team ofhardworking problem solvers located across multiple countries andour flexible working practices enable us to collaborate efficientlyacross our different regions. We provide analysis, insights,collateral and that we share with our developers, seniorstakeholders and the wider ecosystem to make running AI best onArm.Responsibilities:We use our interpersonal andcommunications skills in direct contact with outstanding companiesacross multiple technology domains - we forge new paths and assistdevelopers the world over to follow in our footsteps, helping themto bring their visions to bear. This is an excellent opportunity tocontribute to the solutions powering the next generation of mobileapplications, portable devices and home automation. We look forwardto receiving your application - and potentially welcoming you toArm.Required skills and experience:● Good programming skills- preferably Python, C++ and OOP ● Experience of machine learningframeworks such as TensorFlow, ONNX, GGML or PyTorch ● Experienceof breaking down machine learning use-cases in a system context andproviding insights. ● A desire to have a positive impact bothwithin our team and the wider Arm ecosystem ● Experience ofprototyping AI use-cases on a variety of hardware platformsNiceto have abilities and knowledge:● Programming mobile GPUs (e.g.using shaders, Vulkan) would be a valuable differentiator ●Experience of profiling system concepts such as bandwidth, power,area, latency and throughput ● Android application developmentusing Android StudioIn Return:In return, the successfulcandidate will get to engage with thought-leaders, key developersand the biggest players on how best to deploy Machine Learningworkloads on Arm processors. Youll have the chance to interact witha wide range of engineers from prospective Arm customers through tomembers of the Arm ecosystem. Write your Job Description here orsearch the Document library (Everyones) for similar roles to beused as a base. We are trying to display the essence of the job, bydescribing goals, responsibilities, objectives, and contributionsas shown in below topics rather than a long list of tasks andactivities. This is another opportunity to distinguish your rolefrom competitors and help them visualize what the day-to-day wouldlook like. #LI-JB1Accommodations at ArmAt Arm, we want ourpeople to Do Great Things. If you need support or an accommodationto Be Your Brilliant Self during the recruitment process, pleaseemail . To note, by sending us the requestedinformation, you consent to its use by Arm to arrange forappropriate accommodations. All accommodation requests will betreated with confidentiality, and information concerning theserequests will only be disclosed as necessary to provide theaccommodation. Although this is not an exhaustive list, examples ofsupport include breaks between interviews, having documents readaloud or office accessibility. Please email us about anything wecan do to accommodate you during the recruitment process.HybridWorking at ArmArm’s approach to hybrid working is designed tocreate a working environment that supports both high performanceand personal wellbeing. We believe in bringing people together faceto face to enable us to work at pace, whilst recognizing the valueof flexibility. Within that framework, we empower groupsteams todetermine their own hybrid working patterns, depending on the workand the team’s needs. Details of what this means for each role willbe shared upon application. In some cases, the flexibility we canoffer is limited by local legal, regulatory, tax, or otherconsiderations, and where this is the case, we will collaboratewith you to find the best solution. Please talk to us to find outmore about what this could look like for you.Equal Opportunitiesat ArmArm is an equal opportunity employer, committed toproviding an environment of mutual respect where equalopportunities are available to all applicants and colleagues. Weare a diverse organization of dedicated and innovative individuals,and don’t discriminate on the basis of race, color, religion, sex,sexual orientation, gender identity, national origin, disability,or status as a protected veteran.

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