A B C D E F G H I J K L M N O P Q R S T U V W X Y Z 3 Home / Browse T / Training Pipeline Training Pipeline Intermediate EN Share Print End-to-end process for model training. AdvertisementAd space — term-top Definition Full Definition End-to-end process for model training. Keywords data → model Domains MLOps & Infrastructure Related Terms Inference Pipeline related to Model execution path in production. Batch Inference related to Running predictions on large datasets periodically. Online Inference related to Low-latency prediction per request. Shadow Deployment related to Running new model alongside production without user impact. Domain Shift related to A mismatch between training and deployment data distributions that can degrade model performance. MLOps related to Practices for operationalizing ML: versioning, CI/CD, monitoring, retraining, and reliable production management. CI/CD for ML related to Automated testing and deployment processes for models and data workflows, extending DevOps to ML artifacts. Monitoring related to Observing model inputs/outputs, latency, cost, and quality over time to catch regressions and drift.