AI Engineer

Cognassist
Hebburn
2 weeks ago
Create job alert

Cognassist is seeking a proactive and highly skilled AI Engineer to work as part of a cross-functional team, tackling complex and interesting problems to deliver high-quality solutions. You will be involved from idea inception through to delivery and feature launch. While your primary focus will be on developing and maintaining AI services using Python, you will also have opportunities to contribute to data pipelines and Knowledge Graphs.

Responsibilities

  • AI and Advanced Analytics:
    • Preprocess data: Ensure the quality and accuracy of data used to train AI models.
    • Develop and deploy AI models, with a strong focus on Large Language Models (LLMs) and natural language processing (NLP) applications.
    • Explore and integrate cutting-edge AI and machine learning technologies into the business by deploying models into production.
  • Develop and integrate REST APIs, microservices, and serverless architectures within the SaaS ecosystem.
  • Collaborate in technical decision-making, influencing architectural improvements and implementing modern best practices for software development.
  • Adhere to continuous integration and continuous deployment (CI/CD) practices, ensuring automated testing and delivery pipelines.
  • Monitor and troubleshoot production issues, taking ownership of issues until resolution.
  • Collaborate with DevOps teams to maintain and improve cloud infrastructure and ensure efficient resource usage.
  • Stay updated on industry trends and emerging technologies, applying them to current and future projects as relevant.

Required Skills & Experience

Our ideal candidate will have a broad range of skills and experience.

  • Extensive experience in developing and deploying AI/ML models, with specific expertise in Large Language Models (LLMs like Llama, OpenAI, Mistral, Deepseek), NLP, and machine learning algorithms.
  • Knowledge of AI tools and frameworks, such as PyTorch, Autogen, Langchain, Azure AI Foundry, Hugging Face Transformers and experience with AI integration in SaaS.
  • Proficiency in Python for AI/ML; experience with RAGs, graph databases, graph embeddings, neural networks, and MLOps.
  • Data Manipulation: Strong knowledge of libraries like NumPy, Pandas, and Matplotlib for handling and visualizing data.
  • Adequate knowledge of database systems (both Vector databases, SQL and Graph databases).
  • Strategic thinking in systems capacity planning, hardware and software updates, and migration.
  • Solid understanding of API design and development, including RESTful services.
  • Hands-on experience with DevOps tools, including CI/CD pipelines, infrastructure automation, and monitoring solutions (e.g., GitLab CI, or Azure DevOps).

Key Competencies

  • Excellent communication skills.
  • Ability and willingness to learn about and use new technologies.
  • AI/ML Expertise: Strong experience with AI/ML technologies, particularly in deploying Large Language Models (LLMs) and natural language processing (NLP) applications.
  • Able to work independently whilst able to seek guidance from team leads where necessary.
  • Desire and ability to automate.

Qualifications

  • Bachelor’s in Computer Science or adjacent field.
  • Minimum 5 years in high-level architecture design and solution development for large-scale AI/ML systems.
  • Proven track record in industry use cases utilizing deep and machine learning techniques.
  • Any other certifications would be beneficial.

What's in it for You?

  • EMI company share scheme, meaning you would own a percentage of shares, turning into significant monetary value in time.
  • Competitive salary.
  • Westfield Health Care plan.
  • 1-2-1 Sanctus coaching sessions to support personal and professional development with proactive mental wellbeing support.
  • Fully flexible working.
  • A paid day off on your birthday.
  • AIG Life insurance.
  • Workplace Nursery Benefit.
  • Long service awards to celebrate key employment anniversaries.
  • Excellent discounts/wider wallet.
  • 5% matched contribution pension scheme.
  • 25 days holiday + bank holidays (33 days).
  • Paid wellbeing days, volunteer days, and study days.
  • Quarterly values awards.
  • Staff parties and events.
  • Modern homeworking tech kit.
  • Enhanced maternity & paternity pay.
  • And being part of something AMAZING!

Cognassist is a Disability Confident Committed employer, and we welcome your application even if you believe you do not meet all of the above criteria - your unique skills and experiences are valued, and your contribution could be exactly what we need to grow together.

#J-18808-Ljbffr

Related Jobs

View all jobs

AI Engineer

AI Engineer

AI Engineer

AI Engineer

Azure AI Engineer

Senior AI Engineer - Remote - LegalTech - Circa. £120k

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.

Navigating Data Science Career Fairs Like a Pro: Preparing Your Pitch, Questions to Ask, and Follow-Up Strategies to Stand Out

Data science has taken centre stage in the modern workplace. Organisations rely on data-driven insights to shape everything from product innovation and customer experience to operational efficiency and strategic planning. As a result, there is a growing need for skilled data scientists who can analyse large volumes of data, build predictive models, communicate findings effectively, and collaborate cross-functionally. If you are looking to accelerate your data science career—or even land your first role—attending data science career fairs can be a game-changer. Unlike traditional online applications, face-to-face interactions let you showcase your personality, passion, and communication skills in addition to your technical expertise. However, to stand out in a busy environment, you need a clear strategy: from polishing your personal pitch and asking thoughtful questions to following up with a memorable message. In this article, we’ll guide you through every step of making a strong impression at data science career fairs in the UK and beyond.

Common Pitfalls Data Science Job Seekers Face and How to Avoid Them

Data science has become a linchpin for decision-making and innovation across countless industries, from finance and healthcare to tech and retail. The demand for data scientists in the UK continues to climb, with businesses seeking professionals who can interpret complex datasets, build predictive models, and communicate actionable insights. Despite this high demand, the job market can be extremely competitive—and many applicants unknowingly fall into avoidable traps. Whether you’re an aspiring data scientist fresh out of university, a professional transitioning from a quantitative role, or a seasoned analyst looking to expand your skill set, it’s crucial to navigate your job search effectively. In this article, we explore the most common pitfalls data science job seekers face and provide pragmatic advice to help you stand out. By refining your CV, portfolio, interview strategies, and communication skills, you can significantly increase your chances of landing a rewarding data science role. If you’re looking for your next data science job in the UK, don’t forget to explore the listings at Data Science Jobs. Read on to discover how to avoid critical mistakes and position yourself for success.

Career Paths in Data Science: From Entry-Level Analysis to Leadership and Beyond

Data is the lifeblood of modern business, and Data Scientists are the experts who turn raw information into strategic insights. From building recommendation engines to predicting market trends, the impact of data science extends across virtually every industry—finance, healthcare, retail, manufacturing, and beyond. In the UK, data-driven decision-making is critical to remaining competitive in a global market, making data science one of the most sought-after career paths. But how does one launch a career in data science, and how can professionals progress from entry-level analysts to senior leadership roles? In this comprehensive guide, we’ll explore the typical career trajectory, from junior data scientist to chief data officer, discussing the key skills, qualifications, and strategic moves you need to succeed. Whether you’re a recent graduate, transitioning from another technical field, or an experienced data scientist aiming for management, you’ll find actionable insights on forging a successful career in the UK data science sector.