

Project Brains
Payments AI Specialist
β - Featured Role | Apply direct with Data Freelance Hub
This role is for a Payments AI Specialist with 5+ years of experience in machine learning, focusing on AI engineering in a fintech environment. It offers a hybrid work location, a contract of over 6 months, and requires expertise in Python and Azure AI Foundry.
π - Country
United Kingdom
π± - Currency
Β£ GBP
-
π° - Day rate
Unknown
-
ποΈ - Date
July 4, 2026
π - Duration
More than 6 months
-
ποΈ - Location
Hybrid
-
π - Contract
Fixed Term
-
π - Security
Unknown
-
π - Location detailed
London Area, United Kingdom
-
π§ - Skills detailed
#Deployment #Computer Science #ML (Machine Learning) #Data Warehouse #Continuous Deployment #Deep Learning #Cloud #Compliance #Data Science #Data Engineering #Automation #Scala #SageMaker #"ETL (Extract #Transform #Load)" #Libraries #AI (Artificial Intelligence) #TensorFlow #Azure #AWS SageMaker #Hugging Face #PyTorch #MLflow #Consulting #AWS (Amazon Web Services) #Mathematics #Python #Databases #Process Automation #NLP (Natural Language Processing) #Data Pipeline
Role description
Agentic AI Engineer
Fintech, Hybrid
We are looking for a Expert Agentic AI Engineer to join a tech consulting team full-time in the UK. The company is a custom product engineering company that supports both multinational organizations and scaling startups to solve their most complex business challenges.
Project Description
The end-client is the recognized operator and standards body for the UKβs interbank retail payment systems. As the infrastructure core supporting the UK economy, our client runs the critical networks that power Bacs, Faster Payments, and the Image Clearing System, enabling
individuals and organizations to transfer money safely, quickly, and securely. Processing billions of transactions worth over Β£7 trillion every single year, our clientβs mission is to power
payments, champion innovation, and serve as the smartest way to move money now and in the future.
Join a high-impact, multi-disciplinary engineering initiative driving enterprise-wide digital
transformation and intelligent automation. This project focuses on designing and implementing robust, scalable, and highly secure technical architectures that safely integrate core ecosystem systems with advanced AI/ML capabilities, data engineering pipelines, and intelligent automation frameworks. Operating within a highly regulated financial services landscape, the project balances technical innovation with rigorous governance, compliance, and structural integrity.
Responsibilities:
Design, build, train, and deploy production-grade Machine Learning, Deep Learning, or Natural Language Processing (NLP) models.
Optimize ML models for enterprise-scale latency, throughput, and performance, ensuring flawless integration with data warehouses and automated workflow bots.
Partner with Data Engineers to engineer high-quality data pipelines, automated feature stores, and secure data preprocessing routines.
Establish and scale MLOps workflows to handle model lineage tracking, code versioning, automated validation gates, and continuous deployment pipelines.
[Expert Level Focus] Set the core technical direction for AI engineering across squads, evaluate emerging AI methodologies, and provide high-level mentorship to senior team members.
Requirements
5+ years (Senior) or 8+ years (Expert) of professional experience developing, shipping, and maintaining machine learning models in live production environments.
Agentic Frameworks: Hands-on experience building autonomous workflows, custom plugins, and orchestration logic using Microsoft Copilot Studio or semantic kernels.
Cloud AI Infrastructure: Proven experience deploying and fine-tuning generative AI models, prompt flow, and vector databases within Azure AI Foundry (formerly Azure AI Studio).
Tool Integration: Strong background in connecting LLMs to external APIs, enterprise data sources, and robotic process automation (RPA) tools to enable autonomous action execution.
Elite proficiency in Python paired with extensive experience using core ML libraries and frameworks (such as PyTorch, TensorFlow, Scikit-Learn, or Hugging Face).
Hands-on experience working with MLOps tracking tools and cloud-based AI infrastructure ecosystems (such as MLflow, Kubeflow, AWS SageMaker, or Azure ML).
Strong computer science fundamentals, including advanced knowledge of data structures, algorithmic complexity, and clean code principles. a formal degree in Computer Science, Data Science, Mathematics, or a highly quantitative field is strongly preferred.
Please get in touch with us on info@projectbrains.io
Agentic AI Engineer
Fintech, Hybrid
We are looking for a Expert Agentic AI Engineer to join a tech consulting team full-time in the UK. The company is a custom product engineering company that supports both multinational organizations and scaling startups to solve their most complex business challenges.
Project Description
The end-client is the recognized operator and standards body for the UKβs interbank retail payment systems. As the infrastructure core supporting the UK economy, our client runs the critical networks that power Bacs, Faster Payments, and the Image Clearing System, enabling
individuals and organizations to transfer money safely, quickly, and securely. Processing billions of transactions worth over Β£7 trillion every single year, our clientβs mission is to power
payments, champion innovation, and serve as the smartest way to move money now and in the future.
Join a high-impact, multi-disciplinary engineering initiative driving enterprise-wide digital
transformation and intelligent automation. This project focuses on designing and implementing robust, scalable, and highly secure technical architectures that safely integrate core ecosystem systems with advanced AI/ML capabilities, data engineering pipelines, and intelligent automation frameworks. Operating within a highly regulated financial services landscape, the project balances technical innovation with rigorous governance, compliance, and structural integrity.
Responsibilities:
Design, build, train, and deploy production-grade Machine Learning, Deep Learning, or Natural Language Processing (NLP) models.
Optimize ML models for enterprise-scale latency, throughput, and performance, ensuring flawless integration with data warehouses and automated workflow bots.
Partner with Data Engineers to engineer high-quality data pipelines, automated feature stores, and secure data preprocessing routines.
Establish and scale MLOps workflows to handle model lineage tracking, code versioning, automated validation gates, and continuous deployment pipelines.
[Expert Level Focus] Set the core technical direction for AI engineering across squads, evaluate emerging AI methodologies, and provide high-level mentorship to senior team members.
Requirements
5+ years (Senior) or 8+ years (Expert) of professional experience developing, shipping, and maintaining machine learning models in live production environments.
Agentic Frameworks: Hands-on experience building autonomous workflows, custom plugins, and orchestration logic using Microsoft Copilot Studio or semantic kernels.
Cloud AI Infrastructure: Proven experience deploying and fine-tuning generative AI models, prompt flow, and vector databases within Azure AI Foundry (formerly Azure AI Studio).
Tool Integration: Strong background in connecting LLMs to external APIs, enterprise data sources, and robotic process automation (RPA) tools to enable autonomous action execution.
Elite proficiency in Python paired with extensive experience using core ML libraries and frameworks (such as PyTorch, TensorFlow, Scikit-Learn, or Hugging Face).
Hands-on experience working with MLOps tracking tools and cloud-based AI infrastructure ecosystems (such as MLflow, Kubeflow, AWS SageMaker, or Azure ML).
Strong computer science fundamentals, including advanced knowledge of data structures, algorithmic complexity, and clean code principles. a formal degree in Computer Science, Data Science, Mathematics, or a highly quantitative field is strongly preferred.
Please get in touch with us on info@projectbrains.io






