Development & Cloud Solutions Architect

Northfleet
2 months ago
Applications closed

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Inspirec have partnered with a Digital and Cyber Security Consultancy who are looking to build a team to continue solving problems using software and technology for their clients.
As a Development & Cloud Solutions Architect, you will lead the design and delivery of scalable, secure, and high-performing cloud-based solutions tailored to meet the needs of private and public sector clients.
RESPONSIBILITIES

  • Across AWS, Azure, and GCP, devise and execute flexible, protected data architectures.
  • Give enterprise-wide data models, pipelines, and artificial intelligence frameworks.
  • Use Spark, Kinesis, Pub/Sub to organise real time and batch data processing. Create ML pipelines for effective model training, deployment, and monitoring.
  • Construct AI powered analytical systems, data lakes, and warehouses stored in the cloud.
  • Ensure that data security, privacy, and integrity policies are followed.
  • Offer technical leadership in data engineering, artificial intelligence, and machine learning.
  • Deploy auto AI using CI/CD together with MLOps greatest practices.
  • While guaranteeing high availability and performance, make the best use of cloud assets.
  • Lead groups in choosing technology agnostic data and artificial intelligence tools.
  • Work with the sales team to help form AI driven products and answer RFPs.
  • Give customers technical lectures, proofs of concept, and artificial intelligence demos.
  • Encourage stakeholders to modernise, embrace the cloud, and embrace artificial intelligence. Get engineering teams and senior management involved to coordinate artificial intelligence approaches with corporate aims.
  • Give training seminars, hackathons, and workshops to stimulate creativity. Mentoring groups on optimal approaches in artificial intelligence, data engineering, and cloud structures.
  • Create artificial intelligence powered systems appropriate to security standards and official rules. Convey difficult scientific ideas to stakeholder who themselves are not experts.
    EXPERIENCE & SKILLS REQUIRED
  • Experience in AI/ML platform design, data engineering, and solution architecture.Skilled in current data technologies (Kafka, Spark, Snowflake, Databricks, BigQuery).
  • Proficient in deep learning (TensorFlow, PyTorch) as well as artificial intelligence/machine learning platforms (SageMaker, Azure ML, Vertex AI).
  • Good understanding of responsible Artificial Intelligence practices, model interpretability, and AI ethics.
  • Experience combining artificial intelligence with event driven architectures, APIfirst approach, and microservices.
  • Ability demonstrated to create AI/ML solutions from start to end—from data acquisition to deployment.
  • Knowledge of regulatory compliance, data strategy, and governance in different industries.Experience with cognitive services, decision making, and AI driven automation.
  • Technical presales knowledge, proposition drafting, and stakeholder interaction.
  • Good consulting abilities marrying technical feasibility with corporate requirements.
  • Track history of providing artificial intelligence/data services to enterprise clients and government.Full knowledge of constraints on public sector data policies and compliance requirements.
  • Cybersecurity, health, and financial industries expertise.
  • Trained in Azure, AWS, and common artificial intelligence/machine learning platforms.
    BENEFITS*
    Our client prioritises employee well-being and mental health by offering a comprehensive range of benefits so to enhance both health and career growth.
    Salary depending on experience and background.
    Health Benefits: 24/7 GP Access, Counselling Services, Virtual Physiotherapy, Discounted Gym Memberships, Virtual Gym Classes, Discounted Private Health Cover, Eye Care Discounts.
    Wealth Benefits: Shopping Discounts, Debt Support, Money Advice, Free Credit Reports, Travel Money Savings.
    Education Benefits: Learning Courses, Business Skills Training.
    *Offered only to employees based in the UK

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