Machine Learning Engineer – Generative AI & NLP Specialist
United Kingdom
Welocalize
Every day, through localized content, you can improve customer engagement. Better engagement is proven to drive stronger business outcomes.
ROLE OVERVIEW
The Machine Learning Engineer – Generative AI & NLP Specialist to design, develop, and implement cutting-edge AI-driven systems. This role will focus on enhancing translation systems using advanced NLP techniques and Generative AI (GenAI). The ideal candidate will have extensive experience in end-to-end machine learning (ML) lifecycles, large language models (LLMs), and the ability to create scalable, secure, and efficient AI solutions.
KEY RESPONSIBILITIES
- Design and optimize translation systems leveraging advanced NLP and Generative AI (GenAI) techniques.- Focus on delivering contextually accurate, multilingual solutions with domain-specific customizations to meet diverse client needs.- Continuously improve performance using metrics like BLEU scores and human evaluation benchmarks.- Take ownership of the entire machine learning pipeline, from prototyping and concept validation to scalable production deployment.- Collaborate with cross-functional teams to align solutions with business objectives and ensure seamless integration.- Implement monitoring frameworks to track model performance, detect anomalies, and ensure reliability in production.- Automate pipelines for model retraining and fine-tuning to address data drift and maintain accuracy.- Deploy highly scalable inference endpoints that handle concurrent requests efficiently while maintaining low latency.- Ensure compliance with security standards, including encryption, access control, and API authentication.- Develop well-documented APIs to enable seamless integration of GenAI capabilities into applications and external systems.- Support API versioning and updates to meet evolving requirements.- Work with vector and graph databases to enable efficient Retrieval-Augmented Generation (RAG) systems.- Optimize data retrieval processes and evaluate RAG metrics, such as precision and relevance, to ensure high-quality results.
REQUIREMENTS
- Deep understanding of the full ML lifecycle, including development, training, deployment, and maintenance.- Proficiency in tools like Weights & Biases (W&B) or MLflow to track and manage experiments.- Strong Python programming skills, with expertise in ML libraries such as LangChain, LlamaIndex, PyTorch, TensorFlow, NumPy, SciPy, pandas, and scikit-learn.- Experience designing APIs with industry best practices.- Strong knowledge of large language models, including open-source and commercial implementations, and their practical applications.- Basic experience in building or deploying AI agents for specialized tasks.- Hands-on experience with vector and graph databases, including understanding metrics for evaluating RAG systems.- Proficiency in cloud platforms, preferably Google Cloud Platform (GCP).- Familiarity with Docker and containerization technologies.- Proven ability to ensure that GenAI deployments are scalable, secure, and efficient.
The Machine Learning Engineer – Generative AI & NLP Specialist to design, develop, and implement cutting-edge AI-driven systems. This role will focus on enhancing translation systems using advanced NLP techniques and Generative AI (GenAI). The ideal candidate will have extensive experience in end-to-end machine learning (ML) lifecycles, large language models (LLMs), and the ability to create scalable, secure, and efficient AI solutions.
KEY RESPONSIBILITIES
- Design and optimize translation systems leveraging advanced NLP and Generative AI (GenAI) techniques.- Focus on delivering contextually accurate, multilingual solutions with domain-specific customizations to meet diverse client needs.- Continuously improve performance using metrics like BLEU scores and human evaluation benchmarks.- Take ownership of the entire machine learning pipeline, from prototyping and concept validation to scalable production deployment.- Collaborate with cross-functional teams to align solutions with business objectives and ensure seamless integration.- Implement monitoring frameworks to track model performance, detect anomalies, and ensure reliability in production.- Automate pipelines for model retraining and fine-tuning to address data drift and maintain accuracy.- Deploy highly scalable inference endpoints that handle concurrent requests efficiently while maintaining low latency.- Ensure compliance with security standards, including encryption, access control, and API authentication.- Develop well-documented APIs to enable seamless integration of GenAI capabilities into applications and external systems.- Support API versioning and updates to meet evolving requirements.- Work with vector and graph databases to enable efficient Retrieval-Augmented Generation (RAG) systems.- Optimize data retrieval processes and evaluate RAG metrics, such as precision and relevance, to ensure high-quality results.
REQUIREMENTS
- Deep understanding of the full ML lifecycle, including development, training, deployment, and maintenance.- Proficiency in tools like Weights & Biases (W&B) or MLflow to track and manage experiments.- Strong Python programming skills, with expertise in ML libraries such as LangChain, LlamaIndex, PyTorch, TensorFlow, NumPy, SciPy, pandas, and scikit-learn.- Experience designing APIs with industry best practices.- Strong knowledge of large language models, including open-source and commercial implementations, and their practical applications.- Basic experience in building or deploying AI agents for specialized tasks.- Hands-on experience with vector and graph databases, including understanding metrics for evaluating RAG systems.- Proficiency in cloud platforms, preferably Google Cloud Platform (GCP).- Familiarity with Docker and containerization technologies.- Proven ability to ensure that GenAI deployments are scalable, secure, and efficient.
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Job stats:
16
5
0
Tags: APIs Docker GCP Generative AI Google Cloud LangChain LLMs Machine Learning MLFlow NLP NumPy Open Source Pandas Pipelines Prototyping Python PyTorch RAG Scikit-learn SciPy Security TensorFlow Weights & Biases
Region:
Europe
Country:
United Kingdom
More jobs like this
Explore more career opportunities
Find even more open roles below ordered by popularity of job title or skills/products/technologies used.
Staff Machine Learning Engineer jobsData Engineer II jobsData Scientist II jobsStaff Data Scientist jobsBI Developer jobsPrincipal Data Engineer jobsData Manager jobsJunior Data Analyst jobsData Science Manager jobsSenior AI Engineer jobsResearch Scientist jobsBusiness Data Analyst jobsData Specialist jobsData Science Intern jobsPrincipal Software Engineer jobsLead Data Analyst jobsData Analyst Intern jobsData Analyst II jobsSr. Data Scientist jobsBI Analyst jobsSoftware Engineer, Machine Learning jobsSoftware Engineer II jobsData Engineer III jobsAzure Data Engineer jobsJunior Data Engineer jobs
Consulting jobsLinux jobsEconomics jobsOpen Source jobsComputer Vision jobsHadoop jobsRDBMS jobsData Warehousing jobsGoogle Cloud jobsAirflow jobsMLOps jobsClassification jobsKafka jobsNoSQL jobsJavaScript jobsScala jobsPhysics jobsBanking jobsScikit-learn jobsKPIs jobsStreaming jobsData warehouse jobsLooker jobsOracle jobsR&D jobs
PostgreSQL jobsPySpark jobsPandas jobsGitHub jobsTerraform jobsRobotics jobsSAS jobsCX jobsBigQuery jobsScrum jobsData Mining jobsIndustrial jobsDistributed Systems jobsJira jobsRedshift jobsPharma jobsUnstructured data jobsMicroservices jobsdbt jobsJenkins jobsReact jobsRAG jobsGPT jobsNumPy jobsData strategy jobs