Principal Machine Learning Architect

Ocho
Belfast
7 months ago
Applications closed

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Principal Machine Learning Architect London or Northern Ireland - Remote Ocho are delighted to have been retained to identify an experienced Machine learning Architect. Join a forward-thinking team at the forefront of technological innovation. The Machine Learning Engineering team ensures that our client can effectively deploy cutting-edge, enterprise-level machine learning solutions at scale and within budget. The group develops and manages the infrastructure, tools, and analytical services needed to drive intelligent applications. Were currently looking for a seasoned Machine Learning Architect to lead a dynamic team of skilled ML Engineers, with a focus on talent development and fostering innovation within the realm of Machine Learning. Who are we? At Ocho, we connect talented professionals with leading organizations in the tech sector. Our mission is simple: to find and place the best talent in tech while empowering businesses to scale and innovate. We are proud to work with industry giants and disruptive startups alike, constantly driving innovation and success. The role As a Principal Machine Learning Architect you will work alongside our clients Engineering Director to architect, design, and deploy advanced machine learning solutions. You will play a pivotal role in ensuring that the ML solutions are scalable, reliable, and optimized for performance. This position is key to shaping the strategic direction of machine learning initiatives, driving innovation, and leading the development of scalable systems. You will also play a crucial role in leading and nurturing talent, ensuring that the Machine Learning Engineering team can operate at the cutting edge of technology and continue to drive forward our clients innovation strategy. You will lead the design, development, and deployment of cutting-edge ML systems that fuel smarter decision-making and operational efficiency. If you are passionate about pushing the boundaries of machine learning and leading teams that innovate at scale, this role could be the perfect fit. How will you contribute? Architectural Leadership Lead the design and development of scalable, high-performance machine learning architectures that align with business goals. Define and implement best practices for ML model development, deployment, and maintenance. Technical Strategy Drive the strategic vision for machine learning within the organization. Collaborate with key stakeholders to understand business needs and translate them into actionable ML solutions. Stay updated on the latest ML technologies and frameworks to ensure our client remains at the forefront of innovation. Model Development & Deployment Oversee the end-to-end process of testing, deploying, and monitoring ML models. Ensure models are optimized for performance, scalability, and cost-efficiency. Work closely with data scientists and engineers to integrate ML models into production. Team Leadership & Mentorship Mentor a team of ML engineers and data scientists, fostering a culture of innovation and continuous learning. Provide technical guidance and support on complex challenges. Collaboration & Communication Work closely with cross-functional teams, including product managers and business analysts, to deliver ML solutions that drive value. Communicate technical concepts to non-technical stakeholders with clarity. Compliance & Ethical Standards Ensure all ML processes comply with industry standards, regulations, and ethical guidelines, promoting the responsible use of AI. Ideal candidate Experience Proven expertise in leading the design, development, and deployment of large-scale ML systems. Strong background in statistical modeling, data mining, and machine learning algorithms. Maybe a background in MLOps Technical Skills Mastery of programming languages like Python and Java/Kotlin. Extensive experience with ML frameworks (e.g., TensorFlow, PyTorch, Scikit-learn) and deploying ML models in cloud environments (AWS, Azure, GCP). Leadership & Soft Skills Strong leadership and team management capabilities. Exceptional problem-solving, analytical, and communication skills, with the ability to thrive in a fast-paced environment. Preferred Qualifications Experience in deep learning, natural language processing (NLP), GenAI, and familiarity with MLOps practices. Contributions to open-source projects or research publications in recognized journals are a plus. What does our client offer? - Competitive salary: £130,000 to £160,000 per annum - Bonus and stock options tied to performance and commitment - Opportunity to work with cutting-edge technologies in a globally recognized software company - Generous parental leave schemes - Workplace pension - "Take what you need" holiday package - Private medical insurance and dental plans - Life assurance and income protection - Employee assistance programs and monthly wellness allowance - Adoption assistance - Stock options If you believe you are well-suited for this role please apply via this link or contact Phil Gamble directly for an informal discussion via LinkedIn or WhatsApp. Phil boasts over 19 years of experience in the Tech recruitment industry, successfully delivering challenging IT recruitment campaigns for global IT software companies in the US, UK, and Ireland. Reach out for a conversation on how we can support your career or hiring needs. Skills: Mlops Machine learning Java Aws Benefits: Work From Home Equity Pension Medical

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