Senior Machine Learning Engineer

Netcall
Manchester
3 days ago
Create job alert

At Netcall, we deliver powerful low-code, robotic process automation (RPA), and contact centre solutions that enable organisations to transform and streamline their processes. Central to our innovative platform, Liberty, is our dedicated Liberty AI Team, which integrates sophisticated, robust, and thoroughly tested AI capabilities across various products including low-code development, process mapping, automation, and customer service solutions. Our AI team collaborates closely with diverse product teams, ensuring seamless integration and maximising value through intelligent, user-focused enhancements.


Purpose of Role:

To maintain, enhance, and deploy AI services and codebases, ensuring high-quality integration and performance of machine learning models and generative AI solutions within the Netcall Liberty platform.


Key Responsibilities:


  • Maintains and improvesAI codebasesfor reliability and performance.
  • Deploys and managesmachine learning platformsfor predictive model training.
  • Implements and maintainsgenerative AI systemswith frameworks likeSGLang, TGI, vLLM.
  • Optimisesnatural language processing (NLP)tasks (summarisation, sentiment analysis, keyword extraction, categorisation).
  • Develops and maintainsretrieval-augmented generation (RAG)systems, indexing, embedding, and reranking.
  • Buildsevaluation frameworksassessing AI output faithfulness, relevance, and truthfulness.
  • Enhances solutions with a focus onefficient compute usagefor environmental sustainability, cost-effectiveness, and performance.
  • Supports and contributes to improvements inAWS infrastructure, considering architecture optimisation, scalability, and robustness in collaboration with the DevOps team.
  • Integrates AI solutions acrossbackend infrastructure and front-end interfaces.
  • Investigates and resolves complex technical issues with proactive debugging.
  • Communicates effectively to stakeholders of varyingtechnical expertise.
  • Mentors junior team members, promoting best practices and skills development.


Essential Skills:


Cloud & Infrastructure:

  • Foundationalunderstanding of AWSor other cloud platforms, with an awareness of deploying and managing multi-tenant infrastructure.
  • Ability to contribute ideas forarchitectural optimisation, improving scalability and robustness with support from the DevOps team.


Programming:

  • Excellent programming and debugging skills inPython, including libraries likepandas,FastAPI, andPydantic.
  • Experience with version control systems, particularlyGit.
  • Ability to maintain and enhanceAPIs.
  • Understanding ofdatabase managementusingPostgreSQL, including database models and entity diagrams.


ML/AI:

  • Strong knowledge and practical experience in machine learningmodel training,evaluation, anddeployment.
  • Experience withAutoMLlibraries (e.g., AutoKeras).
  • Solid experience with natural language processing (NLP) tasks and retrieval-augmented generation (RAG) systems.
  • Expertise inembeddingmodels,indexingtechniques, andrerankingmethods.
  • Familiarity with frameworks and libraries like HuggingFace and LangChain.


Deployment:

  • Proficiency withdeploying large language models(LLMs) using frameworks like SGLang, TGI, or vLLM.
  • Proficiency inLinuxand command-line interface for system administration and automation.
  • Basic foundation in AWS or other cloud service providers to deploymulti-tenant infrastructures, managing and segregating user access control.
  • Understanding ofKubernetesand containerised applications orchestration, including inter-service communication.


Development Methodologies:

  • Familiarity withAgile developmentprocesses including daily stand-ups, weekly catch-ups, retrospectives, and hybrid approaches.



Desirable Skills:


  • Familiarity withagentic AI frameworkssuch as PydanticAI or smolagents.
  • Experience withfine-tuninglarge language models (LLMs).
  • Interest or experience withMCP,A2A, orAutoGen.
  • Keeps up to date with thelatest trendsin RAG solutions, agentic AI, and generative AI implementations.


Behavioural Competencies:


  • Accountability:Takes ownership and responsibility for tasks and outcomes.
  • Proactiveness:Anticipates needs, takes initiative, and seeks continuous improvement.
  • Agility:Demonstrates flexibility and adaptability in a dynamic environment.
  • Customer Focus:Prioritises user experience and customer satisfaction.
  • Collaboration:Effectively works with and mentors colleagues, promoting teamwork and shared success.
  • Communication:Clearly articulates complex technical information to diverse stakeholders.

Related Jobs

View all jobs

Senior Machine Learning Engineer

Senior Machine Learning Engineer

Senior Machine Learning Engineer

Senior Machine Learning Engineer

Senior Machine Learning Engineer

Senior Machine Learning Engineer

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

How to Advertise AI Jobs and List AI Vacancies: Advanced Recruitment Strategies for 2025

In a landscape where artificial intelligence (AI) is rapidly transforming industries—from healthcare and finance to manufacturing and creative fields—employers are in stiff competition to secure the best AI talent. Whether you’re a start-up looking for your first machine learning engineer or a global enterprise planning an AI research lab, knowing how to advertise AI jobs effectively has never been more critical. Below, you’ll find in-depth strategies for crafting compelling AI job adverts, optimising your recruitment funnel, and showcasing your organisation as an employer of choice for top AI specialists. We’ll also explore the importance of salary transparency, the best channels for promoting your AI vacancies, and advanced techniques for nurturing a culture of innovation.

AI Training Jobs: Your Comprehensive Guide to Launching a High-Potential Career

Artificial Intelligence (AI) has evolved from a futuristic concept to a core component of modern business strategy. As organisations increasingly embrace AI-driven systems to stay competitive, the demand for qualified professionals who can develop, implement, and train AI models has skyrocketed. In the UK—and indeed worldwide—there is a pressing need for skilled experts who understand the nuances of AI, from algorithm design to ethical considerations. For anyone seeking to enter this exciting field or pivot into a role focusing on AI training, the opportunities are abundant. This in-depth blog post will explore everything you need to know about AI training jobs, the essential skills you’ll need, the current employment landscape in the UK, and how to future-proof your career in AI.

Rural-Remote AI Jobs: A Breath of Fresh Air in the UK Tech Scene

A New Horizon for AI Professionals For years, conversations around tech careers in the UK have hinged on a central theme: to succeed in artificial intelligence (AI), you must be in or around London (or other big metropolitan areas like Manchester, Bristol, or Edinburgh). But times are changing. Technological leaps and the rise of flexible working are paving the way for AI professionals to live and work well beyond the capital. From the rugged coastlines of Cornwall and Pembrokeshire to the rolling hills of the Yorkshire Dales, we’re witnessing an exciting trend of AI remote countryside roles that allow you to work at the forefront of tech innovation—all while enjoying the tranquillity of rural or seaside living. At ArtificialIntelligenceJobs.co.uk, we’re seeing a marked increase in job postings and applications for these sorts of positions. A growing segment of job seekers is actively searching for “tech jobs by the sea” or “AI remote countryside,” driven by a desire for better work-life balance, lower living costs, and a healthier lifestyle. And it’s not just employees who stand to benefit; employers eager to attract top-tier AI talent are discovering that offering remote or flexible roles widens their candidate pool and enhances diversity. If you’re enticed by the idea of logging off from a day of coding neural networks and taking a stroll along a coastal path—or stepping outside your converted barn in Northumberland to soak in some fresh country air—this article is for you. Below, we’ll explore the benefits and challenges of rural-remote AI jobs, the specific roles best suited for remote work, and how to position yourself for success in this rapidly evolving sector.