AI Engineer – (Quantexa/Fraud & Financial Crime/ETL/MLOps/CI/CD/Azure/Insurance)

GIOS Technology
London
1 day ago
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I am hiring for AI Engineer – (Quantexa/Fraud & Financial Crime/ETL/MLOps/CI/CD/Azure/Insurance)


Location: London, UK - Hybrid - weekly 2-3 in office


Job Description:

• Design, build, test, and maintain ML models and ML pipelines on Azure for programme delivery.

• Analyse business requirements and support Quantexa platform components for fraud and financial crime detection.

• Develop AI/ML solutions individually and in collaboration with solution architects and data engineers.

• Implement MLOps practices for deployment, CI/CD, unit testing, monitoring, and model governance.

• Perform data extraction, cleaning, feature engineering, and analysis to deliver business insights and value.

• Communicate analytical findings to stakeholders and contribute to release documentation and defect resolution.


Key Skills:

Machine Learning, Deep Learning, Statistics, MLOps, CI/CD, Model Deployment, Feature Engineering, Data Analysis, SQL, Python, Scala, Spark, Azure, Quantexa

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