See what comes ahead in the application process. Find out how we help you land that job.
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apply with randstad.
Applying with us is easy. We will review your application and see if you are a good fit for the job and the company.
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we'll give you a call.
Our consultant will call you at a suitable time to discuss your application and further career aspirations.
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getting you registered.
If you’ve never worked with us before, we’ll need some basic additional pieces of information to confirm your eligibility for work.
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compliance check.
Next, we just need to verify a few things - we’ll make the relevant compliance checks and keep you posted.
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reference and background check.
As part of the process in ensuring you’re perfect for the role, we’ll make contact with any relevant references you’ve provided.
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the perfect job for you.
Our expert team will either arrange an interview for the role you’ve applied for, or if they believe there’s a better opportunity, they’ll suggest alternative options too.
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the interview.
We’ll ensure that you’re fully prepared ahead of your interview and know exactly what to expect - good luck!
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start your new job.
Congratulations, you’re ready to begin your new job. The team will ensure that you’re fully prepared for your first day.
about the company.中国高端医疗装备行业的领军企业。about the team.核心算法团队。about the job.作为核心技术骨干,负责人工智能大模型在医疗放射设备领域的深度研发与工程化落地。重点攻克从通用大模型向医疗专用模型转化的技术难题,通过模型预训练、高效微调、对齐优化等手段,打造具备高精度、高鲁棒性且临床安全的AI模型,直接赋能CT、MR、PET、US等设备的智能化升级。大模型预训练与架构设计:1、负责医疗文本/影像/多模态大模型的架构设计与选型。2、主导大规模医疗数据的预处理、清洗与构建,设计并实施大模型的预训练任务,利用海量医疗数据提升模型的泛化能力与基础表征能力。医疗领域适配与高效微调:3、研究并应用先进的参数高效微调技术(如LoRA, P-Tuning, Adapter等)及全量微调策略,将通用大模型高效转化为专业的医疗任务模型。4、针对CT、MR、US、XR、DSA、RT、PET等不同模态设备的特性,设计特定的指令微调数据集与训练策略,提升模型在特定临床场景下的性
about the company.中国高端医疗装备行业的领军企业。about the team.核心算法团队。about the job.作为核心技术骨干,负责人工智能大模型在医疗放射设备领域的深度研发与工程化落地。重点攻克从通用大模型向医疗专用模型转化的技术难题,通过模型预训练、高效微调、对齐优化等手段,打造具备高精度、高鲁棒性且临床安全的AI模型,直接赋能CT、MR、PET、US等设备的智能化升级。大模型预训练与架构设计:1、负责医疗文本/影像/多模态大模型的架构设计与选型。2、主导大规模医疗数据的预处理、清洗与构建,设计并实施大模型的预训练任务,利用海量医疗数据提升模型的泛化能力与基础表征能力。医疗领域适配与高效微调:3、研究并应用先进的参数高效微调技术(如LoRA, P-Tuning, Adapter等)及全量微调策略,将通用大模型高效转化为专业的医疗任务模型。4、针对CT、MR、US、XR、DSA、RT、PET等不同模态设备的特性,设计特定的指令微调数据集与训练策略,提升模型在特定临床场景下的性