Senior Machine Learning Engineer

Synergize Consulting Ltd
Bristol
3 days ago
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Senior Machine Learning Engineer

Bristol HQ (Hybrid remote)

SC Clearance required

Up to £76 ph outside IR35

We are looking for a Senior Machine Learning Engineer to take ownership of machine learning solutions supporting secure, high-integrity systems and services. This is an exciting opportunity to design, develop, deploy, and improve advanced ML models that enable data-driven decision-making across complex and mission‑critical environments.

You will work closely with engineering, data, DevOps, and delivery teams to ensure machine learning solutions are robust, scalable, secure, and production ready. This role is ideal for someone who enjoys solving complex technical challenges, working across the full ML lifecycle, and helping shape best practice in high‑impact delivery environments.

This position may involve a hybrid working model, combining remote working with time on site to support collaboration with wider technical teams and stakeholders.

What we’re looking for
  • Proven experience developing and deploying machine learning models in production environments
  • Extensive experience developing in Python
  • Strong hands‑on experience with OpenCV and object detection models including YOLO, RCNN, and Vision models
  • Strong understanding of object detection concepts
  • Experience in video analysis, including optical flow and object tracking
  • Knowledge of OCR models, including fine‑tuning using custom datasets
  • Understanding of model evaluation metrics such as Character Error Rate (CER) and Word Error Rate (WER)
  • Experience with ML frameworks such as TensorFlow and PyTorch
  • Good understanding of ML architectures, hyperparameter tuning, and performance optimisation
  • Experience with MLOps tooling and CI/CD pipelines
  • Familiarity with data engineering concepts, including ETL, SQL, and data pipelines
What you’ll be doing
  • Design, build, and optimise machine learning models across areas such as computer vision, NLP, and predictive analytics
  • Own the ML lifecycle from data preparation and training through to evaluation, deployment, and optimisation
  • Implement and maintain MLOps workflows to support continuous integration and delivery of ML models
  • Work closely with Data Engineers and DevOps teams to ensure production readiness and scalability
  • Contribute to architecture decisions for ML pipelines, model deployment, and data flows
  • Apply secure coding and configuration practices in line with compliance and quality standards
  • Mentor junior engineers and share best practice across the team
  • Research and evaluate emerging ML tools, techniques, and approaches to support innovation and continuous improvement


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