

Arrows
Machine Learning Engineer
⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Machine Learning Engineer on a contract basis, offering a competitive pay rate. Key skills include TensorFlow, Python, GCP, and experience with ML lifecycle management. Familiarity with recommender systems and A/B testing is essential.
🌎 - Country
United Kingdom
💱 - Currency
£ GBP
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💰 - Day rate
720
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🗓️ - Date
January 28, 2026
🕒 - Duration
Unknown
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🏝️ - Location
Unknown
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📄 - Contract
Unknown
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🔒 - Security
Unknown
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📍 - Location detailed
Twickenham, England, United Kingdom
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🧠 - Skills detailed
#GCP (Google Cloud Platform) #Deep Learning #Python #ML (Machine Learning) #Deployment #Dataflow #Data Processing #Cloud #Batch #PyTorch #Monitoring #AI (Artificial Intelligence) #A/B Testing #Recommender Systems #Datasets #Scala #TensorFlow #Data Pipeline #BigQuery
Role description
What you’ll be doing
Model Development:
Design, train, and optimise machine learning models for user personalisation, including recommendation systems, ranking models, user segmentation, and content understanding, with a strong focus on TensorFlow-based development.
Data Pipeline Engineering:
Build and maintain scalable data pipelines to support feature engineering and model training across large structured and unstructured datasets, leveraging cloud‑native tooling.
Production Deployment:
Deploy, monitor, and maintain ML models in production environments, including cloud‑based model serving on GCP. Ensure high availability, strong performance, and continuous model relevance.
Experimentation:
Lead A/B testing and offline experimentation to evaluate model performance and guide ongoing improvement.
Cross‑Functional Collaboration:
Work closely with engineering, product, data, and research teams to ensure ML solutions align with product and business goals.
Research & Innovation:
Stay informed on advances in machine learning, deep learning, and personalisation, and evaluate their integration into existing systems.
What you'll bring
• End‑to‑end experience across the ML lifecycle: model development, training, deployment, monitoring, and continuous maintenance.
• Strong proficiency in Python and ML frameworks, with expertise in TensorFlow (and experience with PyTorch).
• Experience with GCP machine learning and data services (e.g., Vertex AI, Dataflow, BigQuery, AI Platform, Pub/Sub).
• Hands‑on experience with ML training frameworks such as TFX or Kubeflow Pipelines, and model‑serving technologies like TensorFlow Serving, Triton, or TorchServe.
• Background working with large‑scale batch and real‑time data processing systems.
• Strong understanding of recommender systems, ranking models, and personalisation algorithms.
• Familiarity with Generative AI and its use in production environments.
• Strong communication skills and analytical problem‑solving abilities.
What you’ll be doing
Model Development:
Design, train, and optimise machine learning models for user personalisation, including recommendation systems, ranking models, user segmentation, and content understanding, with a strong focus on TensorFlow-based development.
Data Pipeline Engineering:
Build and maintain scalable data pipelines to support feature engineering and model training across large structured and unstructured datasets, leveraging cloud‑native tooling.
Production Deployment:
Deploy, monitor, and maintain ML models in production environments, including cloud‑based model serving on GCP. Ensure high availability, strong performance, and continuous model relevance.
Experimentation:
Lead A/B testing and offline experimentation to evaluate model performance and guide ongoing improvement.
Cross‑Functional Collaboration:
Work closely with engineering, product, data, and research teams to ensure ML solutions align with product and business goals.
Research & Innovation:
Stay informed on advances in machine learning, deep learning, and personalisation, and evaluate their integration into existing systems.
What you'll bring
• End‑to‑end experience across the ML lifecycle: model development, training, deployment, monitoring, and continuous maintenance.
• Strong proficiency in Python and ML frameworks, with expertise in TensorFlow (and experience with PyTorch).
• Experience with GCP machine learning and data services (e.g., Vertex AI, Dataflow, BigQuery, AI Platform, Pub/Sub).
• Hands‑on experience with ML training frameworks such as TFX or Kubeflow Pipelines, and model‑serving technologies like TensorFlow Serving, Triton, or TorchServe.
• Background working with large‑scale batch and real‑time data processing systems.
• Strong understanding of recommender systems, ranking models, and personalisation algorithms.
• Familiarity with Generative AI and its use in production environments.
• Strong communication skills and analytical problem‑solving abilities.






