Sunday, October 26, 2025
Patsnap

MLOps Engineer

Posted: 1 minutes ago

Job Description

About PatSnapPatsnap empowers IP and R&D teams by providing better answers, so they can makefaster decisions with more confidence. Founded in 2007, Patsnap is the global leaderin AI-powered IP and R&D intelligence. Our domain-specific LLM, trained on ourextensive proprietary innovation data, coupled with Hiro, our AI assistant, deliversactionable insights that increase productivity for IP tasks by 75% and reduce R&Dwastage by 25%. IP and R&D teams collaborate better with a user-friendly platformacross the entire innovation lifecycle. Over 15,000 companies trust Patsnap toinnovate faster with AI, including NASA, Tesla, PayPal, Sanofi, Dow Chemical, andWilson Sonsini.About The RoleWe are seeking a passionate MLOps Engineer to join our team and drive the deployment, monitoring, and optimization of machine learning models in production. This role will be key in ensuring the reliability, scalability, and efficiency of our ML infrastructure while supporting the development and release of AI-driven solutions. If you havea strong background in cloud technologies, automation, and ML model deployment, this is an excellent opportunity to work on cutting-edge AI applications.ResponsibilitiesDesign, build, and maintain scalable ML model deployment pipelines for real-time and batch inferenceManage and optimize cloud-based ML infrastructure, ensuring high availability and cost efficiencyImplement monitoring, logging, and alerting systems for ML models in production to track performance, data drift, and anomaliesAutomate model training, evaluation, and deployment processes using CI/CD pipelinesEnsure compliance with MLOps best practices, including model versioning, reproducibility, and governanceCollaborate with data scientists, ML engineers, and software developers to streamline the transition of models from development to productionOptimize model serving infrastructure using Kubernetes, Docker, and serverless technologiesImprove data pipelines for feature engineering, data preprocessing, and real-time data streamingResearch and implement tools for scalable AI development, such as Retrieval-Augmented Generation (RAG) and agent-based applicationsQualificationsHands-on experience with MLOps platforms (e.g., MLflow, Kubeflow, TFX, SageMaker)Strong expertise in cloud services (AWS, GCP, Azure and other Clouds)Proficiency in containerization (Docker, Kubernetes) and infrastructure as code (Terraform, CloudFormation)Experience in building CI/CD pipelines for machine learning modelsSolid programming skills in Python, Go, or Shell scripting for automationFamiliarity with data versioning and model monitoring tools (DVC, Evidently AI, Prometheus, Grafana)Understanding of feature stores and efficient data management for ML workflowsStrong problem-solving skills with a proactive, self-motivated attitudeExcellent collaboration and communication skills to work in a cross-functional teamFluent in Mandarin for effective communication within a multilingual team environmentWhy Join UsWork with cutting-edge MLOps and AI deployment technologies in a fast-growing industry.Be part of a dynamic and innovative team focused on AI and cloud solutions.Gain exposure to end-to-end machine learning workflows, from data processingto model deployment.Opportunities for professional growth in cloud computing, automation, and AI infrastructure.

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