技能档案

ML Deployment

此技能定义了各角色和级别的期望。

Machine Learning & AI MLOps

角色数

2

包含此技能的角色

级别数

5

结构化成长路径

必要要求

0

其余 10 个可选

领域

Machine Learning & AI

skills.group

MLOps

最后更新

2026/2/22

如何使用

选择当前级别并对比期望。下方卡片显示晋升所需掌握的内容。

各级别期望

表格展示从初级到首席的技能深度变化。点击行查看详情。

角色 必要性 描述
Data Scientist Understands the fundamentals of ML Deployment. Applies basic practices in daily work. Follows recommendations from the team and documentation.
LLM Engineer Knows ML model deployment basics: REST API, model serialization, inference server. Deploys simple ML models via web framework with basic error handling under mentor guidance.
角色 必要性 描述
Data Scientist Independently deploys ML models to production using MLflow, BentoML, or TorchServe. Configures model versioning, A/B testing, and canary releases. Monitors prediction quality and data drift through automated alerts.
LLM Engineer Independently deploys ML models to production: TorchServe, BentoML, model optimization (ONNX, TensorRT). Configures prediction monitoring, data drift detection, and A/B testing.
角色 必要性 描述
Data Scientist Designs ML serving infrastructure for high-throughput production systems. Optimizes inference through model optimization: ONNX, TensorRT, quantization. Implements feature store integration, online/offline serving, shadow mode for new models.
LLM Engineer Designs ML serving infrastructure for the LLM ecosystem: unified serving layer for ML and LLM models, feature stores, online/offline prediction pipelines with low latency requirements.
角色 必要性 描述
Data Scientist Defines ML deployment strategy for the data science team. Establishes production readiness standards: SLA, monitoring, rollback procedures. Coordinates ML engineering and DevOps for building a reliable ML serving platform.
LLM Engineer Defines ML deployment standards for the LLM team. Establishes guidelines for model serving, versioning, rollback strategy. Coordinates infrastructure for different ML model types.
角色 必要性 描述
Data Scientist Shapes ML infrastructure strategy at organizational level. Defines investments in ML serving platforms, evaluates managed vs self-hosted solutions. Designs scalable architecture for hundreds of models in production.
LLM Engineer Shapes enterprise ML serving platform. Defines approaches to unified model serving for ML and LLM, cost optimization, and capacity planning. Ensures SLA for critical prediction services.

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📋 提案
暂无提案 ML Deployment
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