AI & ML Architect

Atos
London
1 month ago
Applications closed

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Eviden, part of the Atos Group, with an annual revenue of circa € 5 billion is a global leader in data-driven, trusted and sustainable digital transformation. As a next generation digital business with worldwide leading positions in digital, cloud, data, advanced computing and security, it brings deep expertise for all industries in more than 47 countries. By uniting unique high-end technologies across the full digital continuum with 47,000 world-class talents, Eviden expands the possibilities of data and technology, now and for generations to come.

The Opportunity:

  1. The Artificial Intelligence and Machine Learning team blend statistical techniques and ML to create value from data for our clients.
  2. You will collaborate with business stakeholders to identify use cases and shape opportunities for delivering data science solutions, ensuring a clear connection to business benefits.
  3. You'll extract, analyse, and interpret large amounts of data from a range of sources, using algorithmic, data mining, artificial intelligence, machine learning and statistical tools, to make it accessible to our clients. You will then present your results using clear and engaging language in a way that bridges the fundamentally theoretical aspects of these initiatives to the business needs. This includes translating between technical and nontechnical audiences.
  4. You will work across industries and technology platforms (Azure, AWS, GCP) working with structured and unstructured data from an array of data sources.

Essential Duties & Responsibilities:

  1. Lead and deliver innovative technical solutions that will meet the requirements of our clients. This will entail gathering requirements, analysing, developing, testing, evaluating, and deploying the appropriate solution through the full development lifecycle.
  2. Maintain clear and coherent communication, both verbal and written, to understand data needs and report results to technical and non-technical audiences.
  3. Expertise in Designing and Architecting AI and Gen AI.
  4. Horizon scan to stay up to date with the latest technology, techniques, and methods.
  5. Conduct research from which you'll develop prototypes and proof of concepts.
  6. Manage and mentor junior team members.

Person Specification:

  1. Extensive experience in comprehending business challenges and converting this understanding into practical data science solutions.
  2. Previous experience of delivering data science solutions using Microsoft Fabric and Azure DevOps or similar.
  3. Passionate about the transformative impact the right information can have on a business.
  4. Strong grasp of statistical methods, experimental design and the underlying principles of machine learning algorithms.
  5. Ability to transform, analyse and model data from a variety of data sources, extracting and interpreting trends and insights.
  6. Able to evaluate the models and experience of implementing them as stand-alone apps and as part of enterprise technology stacks. DataOps / MLOps experience would be valued.
  7. Strong Python programming for modelling and/or data analysis is essential, preferably with experience using the spaCy NLP framework and BERT.
  8. Knowledge of database design as well as strong experience with SQL queries is desirable. Familiarity with R and other common languages and tools would be beneficial.
  9. Proficiency in stakeholder management and an effective, persuasive communication style to explain technical subjects to non-technical audiences.
  10. Background in Mathematics or Physics and experience working within Agile projects as a team member and Scrum Master.

We care about our employees' happiness by:

  1. 25 days of Annual leave + an option to purchase more through our Flexible Benefits.
  2. Flex benefits system – an exciting opportunity to choose your own benefits.
  3. Retail discounts.
  4. Pension - matching contribution up to 10%.
  5. Private Medical Scheme.
  6. Life Assurance.
  7. Enrolment in our Share scheme - subject to scheme eligibility criteria.
  8. Unlimited opportunities to learn in our Training platforms.

As a Disability Confident employer, we aim to ensure that people with disabilities who meet the minimum criteria for this position will be offered an interview. We are committed to making reasonable adjustments and changes as needed to the application and assessment process to remove or reduce any disadvantage associated with a person's disability.

Let’s grow together.

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