Deploying TensorFlow models to production at scale: model serving, versioning, A/B testing, retraining pipelines. Used by ML engineers and ML ops teams. Salary band: 140–210k USD. Time to learn: 6–8 weeks. Adjacent to TensorFlow, MLOps, and Kubernetes. Essential for bringing ML from notebooks to customers.
TensorFlow Production involves deploying trained models to production systems that serve predictions at scale. It includes model serving infrastructure (TensorFlow Serving), ML pipelines (TensorFlow Extended), model management, versioning, A/B testing, and monitoring. Production TF requires reliability, latency guarantees, and safety (no model crashes affecting users). TFServing is Google's high-performance inference server optimized for TensorFlow models. It handles batching, version management, and canary deployments. TFX is a pipeline framework orchestrating the full ML lifecycle: data validation, training, model evaluation, and automated deployment.
| Region | Junior | Mid | Senior |
|---|---|---|---|
| USA | $110k | $180k | $250k |
| UK | $60k | $110k | $160k |
| EU | $65k | $115k | $170k |
| CANADA | $105k | $170k | $240k |
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