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MLflow Jobs in London

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Looking for MLflow jobs in London? Discover the latest machine learning operations opportunities on Haystack, your go-to IT job board. Whether you're an ML engineer, data scientist, or MLOps specialist, find top London-based roles working with MLflow to streamline model management and deployment. Start your next career move today with Haystack!
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Senior Data Scientist
Anson McCade
London
Hybrid
Senior
£65,000
RECENTLY POSTED
aws
python
pytorch
pandas
mlflow
£45,000 - £65,000 GBP £7,000 DV Bonus Hybrid WORKING Location: Central London, Greater London - United Kingdom Type: PermanentRole: Senior Data ScientistArea: National Security ProjectsLocation: London (Hybrid) - 3 days per weekSecurity: Eligibility for Developed Vetting Clearance with the UK GovernmentSalary: Up to £65k + £7k annual DV bonus (once obtained)About the Role:This is a unique opportunity to apply advanced data science in the national security domain. You’ll work with highly sensitive, complex datasets that you won’t find anywhere else, solving problems that have a direct impact on UK security. Expect variety: one day you’ll be scoping new AI projects with stakeholders, the next you’ll be building models for text, image, or geospatial data, and later presenting findings to senior decision-makers.You’ll influence strategy, mentor junior colleagues, and help shape how AI is adopted across critical missions. If you want to combine technical depth with meaningful impact, this is the role for you.What You’ll Do:
Lead data science projects from scoping to deployment
Apply ML and statistical methods across varied data types
Collaborate with ML engineers to productionise models
Communicate insights to technical and non-technical stakeholders
Mentor junior team members
Skillset:
Strong Python and ML libraries (scikit-learn, PyTorch, pandas, NumPy)
Experience with AWS cloud services (SageMaker, Lambda, S3)
Familiarity with MLOps tools (MLflow, Weights & Biases)
Knowledge of NLP, computer vision, or time-series analysis
Ability to design experiments and apply statistical validation
Understanding of Responsible AI principles and model explainability
Ready to take your data science expertise to the next level and make a real-world difference? Apply today.Reference: AMC/JWH/DSLB1#jawh
AI Automation Engineer
McCabe & Barton
London
Hybrid
Mid - Senior
Private salary
RECENTLY POSTED
processing-js
tensorflow
django
kubernetes
restful
python
+6
AI Automation Engineer | Hybrid 3 days a week in office | London | PermanentA leading financial services client in London is seeking a talented AI Automation Engineer to join their team. Please see below for key details.Role Overview: Analyse and optimise business processes for automation whilst designing, building, and deploying intelligent automation solutions using BPA platforms (Appian), Machine Learning, and Generative AI to drive operational efficiency and innovation.Key Characteristics:
Process Analysis & Optimisation - Expert in analysing existing business processes through stakeholder interviews, process mapping, and workflow documentation to identify automation opportunities. Skilled in creating process flow diagrams, conducting time-motion studies, identifying bottlenecks and inefficiencies, and redesigning processes to be machine-readable and automation-ready using methodologies.
Python Development - Strong proficiency in Python programming including object-oriented design, asynchronous programming, error handling, and writing clean, maintainable code. Experience with key libraries including Pandas, NumPy for data manipulation, requests and APIs for integrations, asyncio for concurrent processing, and building robust automation scripts with proper logging, testing (pytest), and documentation.
AI & Machine Learning Frameworks - Deep expertise in AI/ML frameworks including TensorFlow, PyTorch, Scikit-learn, and Hugging Face Transformers. Experience building, training, and deploying machine learning models for classification, regression, clustering, and NLP tasks. Understanding of model evaluation metrics, hyperparameter tuning, feature engineering, and MLOps practices for production deployment.
Generative AI & LLM Integration - Proficient in working with Large Language Models including OpenAI GPT models, Anthropic Claude, Azure OpenAI, and open-source alternatives (Llama, Mistral). Experience with prompt engineering, fine-tuning, RAG (Retrieval Augmented Generation) architectures, vector databases (Pinecone, ChromaDB, FAISS), embeddings, and building AI-powered automation solutions that leverage natural language understanding.
Appian BPA Platform - Strong experience with Appian low-code platform including process modelling, interface design, expression rules, integration objects, and data modelling. Skilled in building end-to-end business process applications, configuring workflows, implementing business rules, managing records, and integrating Appian with external systems via REST APIs, web services, and connected systems.
API Development & Integration - Proficient in designing and building RESTful APIs using FastAPI, Flask, or Django REST Framework for exposing AI models and automation services. Experience with API authentication (OAuth, JWT), rate limiting, error handling, API documentation (Swagger/OpenAPI), webhooks, and integrating disparate systems to create seamless automated workflows.
Document Processing & OCR - Experience implementing intelligent document processing solutions using OCR technologies (Tesseract, Azure AI Document Intelligence, natural language processing for information extraction, document classification, and building end-to-end pipelines for automated document ingestion, processing, and data extraction with validation rules.
Robotic Process Automation (RPA) - Knowledge of RPA concepts and tools (UiPath, Automation Anywhere, Power Automate) for automating repetitive tasks, screen scraping, and Legacy system integration. Ability to assess when RPA vs. API integration vs. AI solutions are most appropriate, and experience building hybrid automation solutions combining multiple technologies.
Data Engineering & Pipeline Development - Strong skills in building data pipelines for AI/automation solutions including data extraction, transformation, and loading (ETL). Experience with SQL databases (SQL Server), data validation, cleansing workflows, scheduling tools (Azure Data Factory), and ensuring data quality for machine learning applications.
Machine Learning Operations (MLOps) - Experience deploying ML models to production environments using containerisation (Docker), orchestration (Kubernetes), model versioning (MLflow, DVC), monitoring model performance and drift, A/B testing frameworks, and implementing CI/CD pipelines for automated model training and deployment. Understanding of model governance, explainability, and compliance requirements.
Solution Architecture & Technical Design - Ability to design end-to-end automation architectures that combine multiple technologies (BPA, ML, GenAI, APIs) into cohesive solutions. Experience creating technical design documents, system architecture diagrams, assessing build vs. buy decisions, estimating effort and complexity, and presenting technical recommendations to both technical and non-technical stakeholders.
Stakeholder Collaboration & Change Management - Excellent communication skills for gathering requirements from business users, translating business needs into technical specifications, and demonstrating proof-of-concepts. Experience managing stakeholder expectations, conducting user acceptance testing, providing training on automated solutions, measuring automation ROI through KPIs (time saved, error reduction, cost savings), and driving adoption of intelligent automation across the organisation.
If you align to the key requirements then please apply with an updated CV.
AI Engineer
Certain Advantage
London
Hybrid
Mid - Senior
Private salary
RECENTLY POSTED
python
pandas
sql
mlflow
Certain Advantage are recruiting on behalf of our Trading client for an AI Engineer on a contract basis for 6-12 months initially in London. This will require some onsite days in Central London during the week. We are seeking Engineers skilled in python with a strong focus on GenAI AI and LLMs to lead the integration of cutting-edge language technologies into real-world applications. If you’re someone passionate about building scalable, responsible, and high-impact GenAI solutions then this could be for you! We’re looking for Engineers offering competent core technical skills in Python Programming, Data Handling with NumPy, Pandas, SQL, and use of Git/GitHub for version control. Any experience with these GenAI Use Cases would be relevant and desirable; Chatbots, copilots, document summarisation, Q&A, content generation. To help make your application as relevant as possible, please ensure your CV demonstrates any prior experience you have relating to the below; System Integration & Deployment Model Deployment: Flask, FastAPI, MLflow Model Serving: Triton Inference Server, Hugging Face Inference Endpoints API Integration: OpenAI, Anthropic, Cohere, Mistral APIs LLM Frameworks: LangChain, LlamaIndex – for building LLM-powered applications Vector Databases: FAISS, Weaviate, Pinecone, Qdrant (Nice-to-Have) Retrieval-Augmented Generation (RAG): Experience building hybrid systems combining LLMs with enterprise dataMLOps & Infrastructure MLOps: Model versioning, monitoring, logging Bias Detection & Mitigation Content Filtering & Moderation Explainability & Transparency LLM Safety & Guardrails: Hallucination mitigation, prompt validation, safety layers Azure Cloud Experience Collaboration & Delivery Cross-functional Collaboration: Working with software engineers, DevOps, and product teams Rapid Prototyping: Building and deploying MVPs Understanding of ML & LLM Techniques: To support integration, scaling, and responsible deployment Prompt Engineering: Designing and optimising prompts for LLMs across use cases Model Evaluation & Monitoring Evaluation Metrics: Perplexity, relevance, response quality, user satisfaction Monitoring in Production: Drift detection, performance degradation, logging outputs Evaluation Pipelines: Automating metric tracking via MLflow or custom dashboards A/B Testing: Experience evaluating GenAI features in production environments Does this sound like your next career move? Apply today! Working with Certain Advantage We go the extra mile to find the best people for the job. If you’re hunting for a role where you can make an impact and grow your career, we’ll work with you to find it. We work with businesses across the UK to find the best people in Finance, Marketing, IT and Engineering. If this job isn’t for you, head to (url removed) and register for job alerts and career guidance tips
Senior Machine Learning Engineer
Anson McCade
London
Hybrid
Senior
£55,000 - £65,000
RECENTLY POSTED
aws
tensorflow
python
pytorch
mlflow
£55,000 - 65,000 GBPHybrid WORKINGLocation: Central London, Greater London - United Kingdom Type: PermanentSenior Machine Learning Engineer - National Security (London, Hybrid) Salary: Up to £65,000 per year + £7,000 DV clearance bonus (tax-free, subject to eligibility) Working Model: Hybrid - 3 days on client site once clearance is granted, 1 day in central office, remainder remoteA leading UK national security-focused technology organisation is seeking a Senior Machine Learning Engineer to join its AI team. You will design, develop, and deploy ML models and LLM/GenAI solutions to solve real-world national security challenges. This is a highly innovative, collaborative, and impactful environment where you will apply cutting-edge machine learning methods to unique datasets.Key responsibilities:
Lead and contribute to ML projects, including forecasting, classification, anomaly detection, and LLM/GenAI applications.
Design experiments, formulate hypotheses, evaluate results, and iterate rapidly to validate approaches.
Transition experimental models into production-ready solutions, collaborating with engineers on deployment, monitoring, and optimisation.
Build and maintain ML pipelines using AWS services and modern MLOps/LLMOps tooling.
Implement robust versioning, experiment tracking, and reproducibility practices.
Mentor junior engineers and contribute to team-wide AI knowledge sharing.
Communicate complex technical concepts to both technical and non-technical stakeholders.
Ideal candidate:
BSc, MSc, or PhD in a quantitative discipline (e.g., Maths, Physics, Computer Science).
4-5 years’ experience in ML/AI engineering or data science roles (senior level).
Hands-on experience with Python ML frameworks (scikit-learn, PyTorch, TensorFlow, XGBoost).
Experience with AWS ML services (SageMaker, Lambda, S3) and MLOps/LLMOps tooling (MLflow, Weights & Biases, DVC).
Proven track record transitioning models from experimentation to production with governance and quality controls.
Experience developing LLM/GenAI solutions and familiarity with LLMOps tools.
Strong problem-solving, communication, and project delivery skills.
Eligible for UK DV security clearance; candidates without clearance must be able to undergo the process.
Why this role is unique:
Work on national security projects with niche datasets unavailable elsewhere.
Influence AI adoption from the ground floor for high-profile government clients.
Join a collaborative team of over 4,000 digital, cyber, and intelligence specialists across multiple locations.
Hybrid working flexibility, generous benefits, career development support, and a culture valuing diversity and inclusion.
For further information, feel free to reach me at 02895213213, or simply apply!
Senior Machine Learning Engineer
167 Solutions Ltd
London
Hybrid
Senior
£100,000
RECENTLY POSTED
processing-js
aws
tensorflow
python
pytorch
mlflow
AI / Machine Learning Engineer / Staff Machine Learning / Location: UK (Hybrid or Remote options available) Salary: £60,000 £100,000 per annum (depending on experience) Type: Permanent Recruitment Partner: 167 Solutions Ltd The Opportunity 167 Solutions is working with a forward-thinking organisation that is investing heavily in artificial intelligence and data-driven products. This role sits at the heart of that growth and will suit an AI / Machine Learning Engineer who enjoys taking models from concept through to production. You will work closely with software engineers, data teams, and product stakeholders to design, build, deploy, and maintain machine learning solutions that deliver real commercial value. Key Responsibilities Design, develop, and deploy machine learning models into production environments Work with structured and unstructured data at scale Build and optimise models across areas such as predictive analytics, natural language processing, computer vision, or generative AI Collaborate with software engineers to integrate models into live applications Monitor, evaluate, and improve model performance over time Contribute to best practice around MLOps, automation, and model governance Document solutions clearly for both technical and non-technical stakeholders Essential Skills and Experience Commercial experience as a Machine Learning Engineer, AI Engineer, or similar role Strong programming skills in Python Experience with machine learning frameworks such as PyTorch or TensorFlow Solid understanding of supervised and unsupervised learning techniques Experience deploying models into production environments Familiarity with cloud platforms such as AWS, Azure, or GCP Comfortable working with large datasets and data pipelines Desirable Experience Experience with Generative AI or large language models Exposure to tools such as Hugging Face, MLflow, Kubeflow, or similar Knowledge of NLP, computer vision, or recommendation systems Experience working in agile or product-led environments Whats on Offer Competitive salary and benefits package Hybrid or remote working options Opportunity to work on real-world AI products rather than proof-of-concepts Clear progression and exposure to senior technical leadership Supportive engineering culture with a focus on quality and innovation TPBN1_UKTJ
Senior Data Scientist
Anson McCade
London
Hybrid
Senior
£50,000 - £65,000
RECENTLY POSTED
aws
python
docker
pytorch
pandas
mlflow
£50,000-65,000 GBP Hybrid WORKING Location: Central London, Greater London - United Kingdom Type: Permanent A leading UK digital, cyber and intelligence organisation is hiring a Senior Data Scientist to work on high-impact AI projects within the national security domain. This role is ideal for someone who enjoys applied AI, complex data, and delivering real-world solutions. The Role Lead and deliver AI/ML solutions across text, imagery, audio, video and geospatial data Work closely with ML engineers, project managers and government customers Scope AI use cases, contribute to bids, and present findings to technical and non-technical audiences Mentor junior data scientists and help shape AI best practice Requirements Strong experience in AI, machine learning and statistics Python expertise (e.g. pandas, NumPy, scikit-learn, PyTorch, transformers) Experience deploying models and working with cloud platforms (AWS preferred) Ability to communicate complex technical concepts clearly Desirable AWS services (SageMaker, ECS, Lambda, S3, Bedrock) MLOps / ML engineering experience (Docker, MLflow) Experience in government or regulated environments Practical experience applying LLMs Security Clearance UKIC DV eligible required £7,000 tax-free DV bonus on completion (TBC, paid quarterly) Location London-based hybrid role Up to 3 days per week onsite at customer location once cleared 1 day per week team day in the London office (counts as onsite) Benefits Flexible working and strong work-life balance 25 days’ holiday plus buy/sell options Pension, bonus scheme and flexible benefits Structured career development support Apply directly or message for more information on this Senior Data Scientist role. Reference: AMC/AQI/SDS Postcode: EC3 #aoqu TPBN1_UKTJ
Senior Data Scientist
Anson McCade
London
Hybrid
Senior
£65,000
aws
python
docker
pytorch
pandas
mlflow
£65,000 GBPHybrid WORKINGLocation: Central London, Greater London - United Kingdom Type: PermanentAn exciting opportunity has arisen for an experienced Senior Data Scientist to work at the forefront of artificial intelligence and machine learning, delivering high-impact digital solutions that contribute to the safety and security of the UK.This role sits within a specialist AI and data science team supporting a range of government and national security clients. The team delivers work across defence, space and public sector organisations, spanning exploratory research, advanced analytics, bespoke AI solutions and large-scale data platforms operating on complex and sensitive datasets.The RoleThe Senior Data Scientist position offers significant variety and challenge. The successful candidate will work with both technical and non-technical stakeholders, applying advanced AI, machine learning and statistical techniques across diverse data types, including text, images, audio, video, graphs, time-series and geospatial data.Responsibilities will include shaping future AI initiatives with customers, researching and evaluating emerging AI approaches, and delivering robust, production-ready solutions. The role combines hands-on technical delivery with customer engagement, thought leadership and mentoring.Key Responsibilities
Acting as a senior technical authority for AI and data science, contributing expertise across projects, bids and stakeholder discussions
Leading and delivering complex machine learning and AI projects in collaboration with ML engineers, delivery teams and customers
Engaging with users to define requirements, scope AI use cases and develop realistic delivery plans
Supporting the design, development and deployment of models within AWS cloud environments
Contributing to written proposals and bid responses, including research into relevant academic and industry literature
Presenting technical findings and insights to internal teams and external stakeholders
Mentoring junior data scientists and graduates, supporting capability growth
Promoting AI knowledge across multidisciplinary teams and representing the organisation through blogs, events and conferences
About the CandidateThe ideal candidate will demonstrate strong depth and breadth across data science, AI and machine learning, alongside the ability to translate complex technical concepts into practical, business-focused outcomes.Essential experience includes:
Degree (BSc, MSc or PhD) in a quantitative or scientific discipline such as computer science, mathematics, physics or engineering
Several years’ experience working as a Data Scientist or in a closely related role
Expert knowledge of machine learning, AI and statistical methods, applied across domains such as NLP, computer vision, audio, graphs, time-series or tabular data
Strong Python skills and experience with common libraries (e.g. pandas, NumPy, scikit-learn, PyTorch, Transformers, statsmodels, PyMC)
Understanding of software engineering and ML best practices, including version control, packaging and model deployment
Experience training and deploying models using cloud platforms, particularly AWS
Ability to communicate complex ideas clearly to both technical and non-technical audiences
Commitment to high-quality, ethical and robust scientific work
Awareness of ethical, privacy, security and policy considerations in applied AI
Desirable Experience
Hands-on experience with AWS services such as Lambda, ECS, S3, SageMaker or Bedrock
Knowledge of ML engineering and MLOps practices (e.g. Docker, MLflow)
Experience working in government, defence or other highly regulated environments
Proven application of large language models (LLMs) to real-world problems
Security ClearanceThis role requires UK Security Clearance. Applicants must either already hold clearance or be eligible and willing to undergo the vetting process.
MLOps Tech Lead
Stackstudio Digital Ltd.
London
Hybrid
Senior
£500/day - £525/day
processing-js
aws
mongodb
mysql
tensorflow
git
+13
Job DetailsRole / Job Title:MLOps Tech LeadWork Location:London, UKOffice Requirement (Hybrid):2 days per weekKey Responsibilities (High-Level) Data Pipeline Development: Lead the technical direction of projects and ensure the use of Sainsbury’s best practices to the best quality. Data Integration: Lead and provide expertise on Integrate data from various sources, ensuring data consistency, integrity, and quality across the entire data lifecycle. Infrastructure Management: Provide guidance for the junior & Mid Data Engineers on the best practices when building and managing data infrastructure, including data lakes, warehouses, and distributed processing systems (e.g., PySpark, Hadoop).The RoleAs a Tech Lead, you will play a critical role in designing, building, and maintaining data pipelines and infrastructure that enable the development and deployment of machine learning models and drive engineering excellence. You will collaborate closely with data scientists, and lead ML engineers, and software engineers to ensure data is clean, accessible, and optimised for large-scale processing and analysis.Your Responsibilities Data Pipeline Development: Lead the technical direction of projects and ensure the use of Sainsbury’s best practices to the best quality. Data Integration: Lead and provide expertise on Integrate data from various sources, ensuring data consistency, integrity, and quality across the entire data lifecycle. Infrastructure Management: Provide guidance for the junior & Mid Data Engineers on the best practices when building and managing data infrastructure, including data lakes, warehouses, and distributed processing systems (e.g., PySpark, Hadoop). Data Preparation: Collaborate with data scientists to prepare and transform raw data into formats suitable for machine learning, including feature engineering and data augmentation. Automation: Implement automation tools and frameworks (CI/CD) to streamline the deployment and monitoring of machine learning models in production. Performance Optimisation: Optimise data processing workflows and storage solutions to improve performance and reduce costs. Collaboration: Work closely with cross-functional teams, including data science, engineering, and product management, to deliver data solutions that meet business needs. Mentorship: junior and mid-level data engineers and provide technical guidance on best practices and emerging technologies in data engineering and machine learning and helping to enhance their skills and career growth. Knowledge Sharing and Empowerment: Promote a culture of knowledge sharing within the engineering teams by organising regular technical workshops, brown bag sessions, and code reviews. Innovation and Continuous Improvement: Foster a collaborative and inclusive team environment that encourages continuous learning and improvement.Your ProfileEssential Skills / Knowledge / Experience Knowledge of machine learning frameworks (e.g., PySpark, PyTorch) and model deployment tools (e.g., MLflow, TensorFlow Serving). Strong experience with data processing frameworks (e.g., Apache Spark, Flink). Expertise in SQL and NoSQL databases (e.g., MySQL, PostgreSQL, MongoDB, Cassandra). Hands-on experience with cloud platforms (e.g., AWS, GCP, Azure) and their data services (e.g., Snowflake, S3, BigQuery, Redshift). Experience with containerisation and orchestration tools (e.g., Docker, Kubernetes). Familiarity with version control systems (e.g., Git) and CI/CD pipelines.Desirable Skills / Knowledge / Experience Certifications: AWS Certified Big Data Specialty, Google Professional Data Engineer, or equivalent.Soft Skills: o Excellent problem-solving and analytical skills. o Strong communication skills, with the ability to explain complex technical concepts to non-technical stakeholders. o Ability to work independently and in a team-oriented, collaborative environment.Leadership and Communication Strong leadership skills with the ability to inspire and guide team. Lead scrum ceremonies as and when needed (Standup, Planning, and grooming sessions). Excellent verbal and written communication skills, with the ability to articulate complex technical concepts. Creating a safe and inclusive environment where all team members feel that their input is valued and are never dissuaded from speaking up or asking questions.Collaborative Attitude Strong team player with a collaborative approach to working with cross-functional teams within the Media Agency. Open to feedback and willing to provide constructive criticism to others. Be available for the team, responding within a reasonable time frame and if not possible clearly sign positing alternative contacts who can guide. Building a community across Media Agency. Contribute to a positive and inclusive atmosphere within the team.Knowledge Sharing and Empowerment Commitment to fostering a learning culture within the team and ensuring knowledge transfer across all levels. Support and mentor C3s and C4s engineers by providing them opportunities to lead initiatives and contribute to the technical roadmap.
Senior Data Scientist
Anson McCade
London
Hybrid
Senior
£50,000 - £65,000
aws
git
python
docker
pytorch
pandas
+1
£50,000 to 60,000 GBP bonus Hybrid WORKING Location: Central London, Greater London - United Kingdom Type: Permanent Senior Data Scientist - London / Hybrid Up to £65,000 + DV Bonus | SC Eligible / DV Eligble Required | No Sponsorship We are looking for a Senior Data Scientist to join a leading organisation delivering cutting-edge AI and machine learning solutions with real-world impact. You will work on diverse projects across national security and healthcare-related sectors, applying AI/ML techniques to solve complex challenges. This is a London-based role with hybrid working support. Key Responsibilities: Lead and contribute to AI and ML projects, working closely with engineers, project managers, and non-technical stakeholders. Act as a technical point of contact, sharing expertise in AI/ML methods across projects and bids. Scope, plan, and deliver AI solutions, including model development, deployment, and evaluation. Mentor junior team members and support their professional growth. Present results and insights to both technical and non-technical audiences. Contribute to internal knowledge-sharing and best practices in AI/ML. Requirements: BSc, MSc, or PhD in a quantitative, scientific, or technical discipline (e.g., computer science, mathematics, physics). Strong expertise in AI, ML, and statistical methods, with experience across domains such as NLP, images, audio, graphs, time series, and tabular data. Several years’ experience as a data scientist in industry or related environments. Proficiency in Python and common ML/data libraries (e.g., pandas, numpy, scikit-learn, PyTorch, transformers). Understanding of software and ML engineering best practices (git, package development, model deployment). Experience with cloud platforms, particularly AWS, for training and deploying models. Ability to communicate complex technical concepts to diverse audiences. Eligible for DV security clearance; sponsorship cannot be provided. Desirable: Knowledge of AWS services (e.g., Lambda, ECS, Bedrock, S3, SageMaker). Experience with ML engineering and MLOps (e.g., Docker, MLflow). Experience in regulated industries or government-related projects. Applying LLMs or advanced AI methods to real-world problems. Benefits: Competitive salary up to £65,000 plus DV clearance bonus. Hybrid working with flexibility around core hours. 25 days holiday plus buy/sell/carry over options. Pension scheme and other flexible benefits. Opportunity to work on high-impact AI/ML projects. Reference: AMC-AQU-SDSB Postcode: EC2V 6AA #adqu TPBN1_UKTJ
Machine Learning Engineer
Anson McCade
London
In office
Mid - Senior
£100,000
aws
tensorflow
kubernetes
python
docker
pytorch
+1
ML Engineer - Must hold active DV Clearance This is an exciting time to join a team to help pioneer both customer’s and an AI adoption journey. Not only will you be directly making a huge impact through the solutions you develop, youll be doing it for an organisation who makes a huge impact to the security of the UK. Core Duties Design and develop machine learning models for traditional ML use cases (forecasting, classification, anomaly detection) and GenAI/LLM applications Lead experimentation cycles: define hypotheses, design experiments, evaluate results, and iterate rapidly while adhering to governance requirements Transition validated experiments into production-ready solutions, working closely with other engineers on deployment and monitoring Build and optimise ML pipelines using AWS services and experiment tracking tools Develop and integrate LLM-powered solutions for tracing, evaluation, and production monitoring Implement robust experiment tracking, model versioning, and reproducibility practices with full audit trails Design feature engineering approaches and contribute to feature store development Support production models through monitoring, performance analysis, and continuous improvement Apply responsible AI practices, including model explainability and fairness assessment Present experiment findings and production outcomes to stakeholders, articulating operational and strategic value Mentor junior colleagues and share learnings across the team You will have experience in many of the following: Hands-on experience developing and deploying ML models in Python using frameworks such as scikit-learn, XGBoost, PyTorch, or TensorFlow Strong experience with AWS ML services (SageMaker, Lambda, S3) in production environments Strong experiment design skills: hypothesis formulation, A/B testing methodology, and statistical evaluation Proven track record transitioning models from experimentation to production with appropriate governance and quality controls Experience with experiment tracking and MLOps tooling (MLflow, Weights & Biases, Data Version Control) It Would Be Great If You Also Had Experience In Some Of These, But If Not Well Help You With Them Experience with advanced LLM techniques: agents, tool use, and agentic workflows Experience with vector databases (Pinecone, Weaviate, pgvector) for RAG applications Experience with feature stores (Feast, AWS Feature Store) Experience with containerisation (Docker) and orchestration (Kubernetes, ECS) TPBN1_UKTJ
Senior Data Scientist
Anson McCade
London
Hybrid
Senior
£65,000
aws
python
pytorch
pandas
mlflow
£45,000 - £65,000 GBP £7,000 DV Bonus Hybrid WORKING Location: Central London, Greater London - United Kingdom Type: Permanent Role: Senior Data Scientist Area : National Security Projects Location: London (Hybrid) - 3 days per week Security : Eligibility for Developed Vetting Clearance with the UK Government Salary: Up to £65k + £7k annual DV bonus (once obtained) About the Role: This is a unique opportunity to apply advanced data science in the national security domain. You’ll work with highly sensitive, complex dataset s that you won’t find anywhere else, solving problems that have a direct impact on UK security. Expect variety: one day you’ll be scoping new AI projects with stakeholders, the next you’ll be building models for text, image, or geospatial data, and later presenting findings to senior decision-makers. You’ll influence strategy, mentor junior colleagues, and help shape how AI is adopted across critical missions. If you want to combine technical depth with meaningful impact, this is the role for you. What You’ll Do: Lead data science projects from scoping to deployment Apply ML and statistical methods across varied data types Collaborate with ML engineers to productionise models Communicate insights to technical and non-technical stakeholders Mentor junior team members Skillset: Strong Python and ML libraries (scikit-learn, PyTorch, pandas, NumPy) Experience with AWS cloud services (SageMaker, Lambda, S3) Familiarity with MLOps tools (MLflow, Weights & Biases) Knowledge of NLP, computer vision, or time-series analysis Ability to design experiments and apply statistical validation Understanding of Responsible AI principles and model explainability Ready to take your data science expertise to the next level and make a real-world difference? Apply today. Reference: AMC/JWH/DSLB1 #jawh TPBN1_UKTJ
Machine Learning Engineer
Anson McCade
London
In office
Senior
£65,000
processing-js
aws
tensorflow
terraform
kubernetes
python
+3
£65,000 GBP Onsite WORKING Location: Central London, Greater London - United Kingdom Type: Permanent An opportunity is available for an experienced Senior Machine Learning Engineer to design, build and operationalise advanced machine learning solutions that directly support UK national security objectives. This role sits within a multidisciplinary AI engineering environment, working closely with Data Scientists, Software Engineers, Product teams and government stakeholders. The Senior ML Engineer will own the journey from experimentation and hypothesis testing through to secure, production-grade deployment, using a modern AWS-based MLOps and LLMOps platform. The Role The successful candidate will balance rapid experimentation with production readiness, prototyping and validating machine learning and generative AI approaches while ensuring successful models integrate seamlessly into live operational systems. This is a high-impact role at a pivotal point in the adoption of AI, machine learning and large language models across critical national systems, offering the chance to deliver real-world outcomes at scale. Key Responsibilities Designing, developing and optimising machine learning models across traditional ML use cases (forecasting, classification, anomaly detection) and GenAI / LLM solutions Leading experimentation cycles, including hypothesis definition, experimental design, evaluation and iteration, while complying with governance standards Transitioning validated experiments into production-ready ML services, collaborating closely with engineering teams on deployment and monitoring Building scalable ML pipelines using AWS services and modern experiment tracking frameworks Developing and integrating LLM-powered capabilities for evaluation, tracing and production monitoring Implementing robust experiment tracking, model versioning and reproducibility, ensuring full auditability Designing feature engineering strategies and contributing to feature store development Monitoring live models, analysing performance and driving continuous improvement Applying responsible AI principles, including explainability, robustness and fairness Communicating experimental results and production outcomes to stakeholders, highlighting operational and strategic value Mentoring junior engineers and promoting best practices across the team About the Candidate The ideal candidate will bring strong hands-on experience in machine learning engineering, with the ability to translate experimental success into reliable, scalable systems. Essential experience includes: Commercial experience developing and deploying machine learning models in Python Proficiency with ML frameworks such as scikit-learn, XGBoost, PyTorch or TensorFlow Strong experience delivering ML solutions using AWS services (e.g. SageMaker, Lambda, S3) Expertise in experiment design, including hypothesis formulation, A/B testing and statistical evaluation Proven experience moving models from experimentation into production with appropriate governance and quality controls Hands-on experience with MLOps tooling such as MLflow, Weights & Biases or Data Version Control Practical experience building LLM / GenAI applications, including prompt engineering and retrieval-augmented generation (RAG) Familiarity with LLMOps frameworks such as LangChain, LangSmith or LangGraph Understanding of model validation, evaluation techniques and production monitoring Experience working in cross-functional teams from problem definition through to delivery Strong communication skills, with the ability to explain complex concepts to non-technical audiences Sound judgement in applying AI appropriately and recognising when non-AI approaches are more suitable Desirable Experience Advanced LLM techniques, including agents, tool use and agentic workflows Experience with vector databases (e.g. Pinecone, Weaviate, pgvector) Feature store technologies such as Feast or AWS Feature Store Containerisation and orchestration using Docker, Kubernetes or ECS Infrastructure as Code using Terraform or CloudFormation Large-scale data processing frameworks such as Spark or Dask Knowledge of data governance, compliance and regulated environments Experience delivering solutions within highly regulated industries such as government, finance or healthcare Security Clearance This role requires UK Security Clearance. Applicants must already hold clearance or be eligible and willing to undergo the vetting process. Reference: AMC/RHU/MLE #ryhu TPBN1_UKTJ
Senior Machine Learning Engineer
Anson McCade
London
Hybrid
Senior
£65,000
aws
tensorflow
kubernetes
python
docker
pytorch
+1
Senior Machine Learning Engineer London Are you a Senior ML Engineer who wants to build AI that genuinely matters? Our client is a leading digital technology organisation delivering AI, data, and software solutions to UK public sector and national security customers. They are expanding their machine learning capability and are seeking an experienced engineer to design, evaluate, and deploy production-grade ML and GenAI solutions in high-impact operational environments. What youll be doing: Design and build ML models across forecasting, classification, anomaly detection, and GenAI / LLM use casesLead experimentation cycles: hypothesis, evaluation, iteration, and validationTake successful ML approaches into production, including deployment and monitoringBuild and optimise ML pipelines on AWSDevelop LLM-powered solutions, including evaluation and observabilityApply strong MLOps practices: experiment tracking, versioning, and reproducibilityCommunicate findings clearly to technical and non-technical stakeholdersMentor junior engineers and contribute to team best practicesThis role is for you if you have: Strong Python ML experience (e.g. scikit-learn, XGBoost, PyTorch, or TensorFlow)Production experience with AWS ML services (e.g. SageMaker, Lambda, S3)Proven ability to move models from experimentation into live systemsExperience with MLOps tools (MLflow, Weights & Biases, DVC, or similar)Hands-on exposure to LLM / GenAI applications, including RAGNice to have: Experience with advanced LLM techniques (e.g. agents, tool use)Familiarity with vector databases and feature storesExperience with Docker, Kubernetes, or Infrastructure as CodeImportant: Security clearance required (or eligibility to obtain it).Benefits: Hybrid working with flexibility25 days holiday plus buy/sell optionsCompetitive pension, bonus, and benefitsStrong career development and mentoringOpportunity to work on mission-critical AI supporting UK securityOk, Im in whats next? Please apply with your latest CV.TPBN1_UKTJ
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Frequently asked questions

What types of MLflow job roles are available in London?
London offers a variety of MLflow-related roles including ML Engineer, Data Scientist, Machine Learning Engineer, MLOps Engineer, and AI Developer positions that utilize MLflow for managing machine learning lifecycle.
Do I need to have experience specifically with MLflow to apply?
While direct experience with MLflow is highly valued, many roles also consider candidates with strong machine learning and MLOps backgrounds who are willing to learn MLflow on the job.
Are MLflow jobs in London typically remote or on-site?
Many MLflow roles in London offer flexible work arrangements including fully remote, hybrid, or on-site positions. Specific details depend on the employer.
What skills complement MLflow experience for job seekers?
Skills that complement MLflow experience include Python programming, Docker, Kubernetes, cloud platforms (AWS, Azure, GCP), data engineering, and CI/CD pipelines for machine learning.
How can I find MLflow job opportunities in London on Haystack?
You can find MLflow jobs in London by using the Haystack search bar, entering 'MLflow' and setting the location filter to 'London'. You can also create job alerts to get notified about new postings.