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| Full-time
, ,About the Project
We are building a high-performance machine learning engineering platform that powers scalable, data-driven solutions for enterprise environments. Your expertise in Python, performance optimization, and ML tooling will play a key role in shaping intelligent systems for data science and analytics use cases. Experience with MLOps, SaaS products, or big data environments will be a strong plus.
Role and Responsibilities
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Design, build, and optimize components of the ML engineering pipeline for scalability and performance.
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Work closely with data scientists and platform engineers to enable seamless deployment and monitoring of ML models.
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Implement robust workflows using modern ML tooling such as Feast, Kubeflow, and MLflow.
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Collaborate with cross-functional teams to design and scale end-to-end ML services across a cloud-native infrastructure.
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Leverage frameworks like NumPy, Pandas, and distributed compute environments to manage large-scale data transformations.
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Continuously improve model deployment pipelines for reliability, monitoring, and automation.
Requirements
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5+ years of hands-on experience in Python programming with a strong focus on performance tuning and optimization.
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Solid knowledge of ML engineering principles and deployment best practices.
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Experience with Feast, Kubeflow, MLflow, or similar tools.
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Deep understanding of NumPy, Pandas, and data processing workflows.
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Exposure to big data environments and a good grasp of data science model workflows.
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Strong analytical and problem-solving skills with attention to detail.
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Comfortable working in fast-paced, agile environments with frequent cross-functional collaboration.
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Excellent communication and collaboration skills.
Nice to Have
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Experience deploying ML workloads in public cloud environments (AWS, GCP, or Azure).
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Familiarity with containerization technologies like Docker and orchestration using Kubernetes.
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Exposure to CI/CD pipelines, serverless frameworks, and modern cloud-native stacks.
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Understanding of data protection, governance, or security aspects in ML pipelines.
Experience Required: 5+ years