At a Glance
- Tasks: Lead cloud architecture for AI/ML solutions and tackle customer challenges daily.
- Company: DoiT is a global tech company driving innovation through cloud solutions for over 4,000 clients.
- Benefits: Enjoy unlimited vacation, flexible working options, health insurance, and professional development stipends.
- Why this job: Join a diverse team, enhance your skills, and make a real impact in the tech world.
- Qualifications: 4+ years in cloud-based AI/ML solutions; AWS expertise required.
- Other info: Remote work available across multiple countries; embrace your entrepreneurial spirit!
The predicted salary is between 48000 - 84000 £ per year.
Our Senior Cloud Architect will be an integral part of our Cloud Reliability Engineering team in the UK, Ireland, Estonia, Netherlands, Sweden and Spain. The role is also available to contractors in other Eastern European locations / Portugal.
DoiT is a global technology company that works with cloud-driven organizations to leverage the cloud to drive business growth and innovation. We combine data, technology, and human expertise to ensure our customers operate in a well-architected and scalable state - from planning to production.
Delivering DoiT Cloud Intelligence, the only solution that integrates advanced technology with human intelligence, we help our customers solve complex multicloud problems and drive efficiency. With decades of multicloud experience, we have specializations in Kubernetes, GenAI, CloudOps, and more. An award-winning strategic partner of AWS, Google Cloud, and Microsoft Azure, we work alongside more than 4,000 customers worldwide.
As a Senior Cloud Architect, you will be part of our global CRE team, working with rapidly growing companies in EMEA and around the world. This role offers you the chance to:
- Apply your hands-on experience & skills in a consultative manner to address our customers’ strategic and tactical needs around cloud technologies.
- Grow your technical and interpersonal skills by addressing customer challenges in your daily work and leveraging dedicated time allocated by the company for learning new technologies and engaging in internal initiatives.
- Strengthen your personal brand through thought leadership activities such as blogging, public speaking, and participation in technology events.
Qualifications
Experience Requirement: Minimum of 4+ years of experience in architecting, deploying, and managing cloud-based AI/ML solutions.
Core AWS Expertise: Expertise in architecting, developing, and troubleshooting large production-grade distributed systems on AWS, and selecting the appropriate tools to address business problems at the correct scale. Advanced proficiency in AWS, with a focus on Generative AI and machine learning services. Certified AWS Solutions Architect Professional and/or AWS Machine Learning Specialty. Proven track record of architecting, deploying, and optimizing complex cloud solutions for AI-driven workloads.
Generative AI and Cutting-Edge Technologies: Expertise in Amazon Bedrock for deploying foundation models and managing scalable GenAI workloads. Proficiency in fine-tuning and deploying Large Language Models (LLMs) and multimodal AI using Amazon SageMaker JumpStart and Hugging Face on AWS. Experience leveraging Amazon Q (formerly AWS CodeWhisperer) Business and Developer for AI-powered coding productivity and automation.
Machine Learning Frameworks and Pipelines: In-depth knowledge of Amazon SageMaker, including Pipelines, Model Monitor, Data Wrangler, and SageMaker Clarify for bias detection and interpretability. Skilled in distributed model training with multi-GPU clusters and optimization for high-performance inference.
Data Engineering and AI Workflow Optimization: Proficient in building data pipelines with Amazon S3, AWS Glue, Lake Formation, and Redshift for AI and ML workloads. Experienced in optimizing data preparation for large-scale AI model training and inference workflows.
AI Integration and Deployment: Expertise in building end-to-end AI pipelines using AWS Lambda, Step Functions, and API Gateway for real-time AI inference and automation. Familiarity with containerized AI deployments using Amazon EKS and AWS Fargate.
DevOps and MLOps Expertise: Hands-on experience with CI/CD pipelines for AI/ML workflows using AWS CodePipeline, CodeBuild, and SageMaker Pipelines. Proficiency in monitoring and maintaining AI systems with Amazon CloudWatch and SageMaker Model Monitor.
AI Governance and Security: Strong understanding of AI governance, incorporating IAM, AWS Key Management Service (KMS), and compliance frameworks. Knowledgeable in AI ethics, bias detection, and accountability using tools like SageMaker Clarify.
Emerging AI Trends: Up-to-date on Generative AI advancements such as RLHF (Reinforcement Learning with Human Feedback), foundation model fine-tuning, and hybrid AI architectures. Familiarity with integrating open-source tools like Hugging Face Transformers and AWS-native solutions.
Knowledge of Multi-Cloud AI Tools: Good knowledge and understanding of Google Cloud AI tools such as Vertex AI, Cloud AutoML, and BigQuery ML, enabling effective integration in multi-cloud environments.
Mentoring and Enablement Skills: Proven ability to mentor team members and enable cross-functional collaboration to foster technical growth and innovation. Skilled in creating knowledge-sharing platforms and hands-on workshops to enhance team capabilities.
Bonus Points: Passion for technology, with a demonstrated ability to quickly learn and stay up to date with industry trends. Data certification is a major advantage (e.g., Stanford, Coursera, Udacity, MIT, eCornell, or any Data certification with AWS/GCP). BA/BS degree in Computer Science, Mathematics, Economics, or a related technical field, or equivalent practical experience.
We are home to a global team of incredible talent who work remotely and have the flexibility to have a schedule that balances your work and home life. We embrace and support leveling up your skills professionally and personally.
What does being a Do’er mean? We’re all about being entrepreneurial, pursuing knowledge and having fun!
Many Do’ers, One Team: DoiT unites as Many Do’ers, One Team, where diversity is more than a goal—it’s our strength. We actively cultivate an inclusive, equitable workplace, recognizing that each unique perspective enhances our innovation. By celebrating differences, we create an environment where every individual feels valued, contributing to our collective success.
Senior Cloud Architect, ML/AI employer: DoiT
Contact Detail:
DoiT Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Senior Cloud Architect, ML/AI
✨Tip Number 1
Make sure to showcase your hands-on experience with AWS and AI/ML solutions during networking events or meetups. Engaging with professionals in the field can help you gain insights and potentially lead to referrals.
✨Tip Number 2
Stay updated on the latest trends in Generative AI and cloud technologies. Follow industry leaders on social media and participate in relevant online forums to demonstrate your passion and knowledge when discussing your expertise.
✨Tip Number 3
Consider contributing to open-source projects related to cloud architecture or AI. This not only enhances your skills but also builds your portfolio, making you a more attractive candidate for the Senior Cloud Architect role.
✨Tip Number 4
Engage in thought leadership by writing articles or blogs about your experiences and insights in cloud architecture and AI. Sharing your knowledge can help you establish credibility and attract attention from potential employers like DoiT.
We think you need these skills to ace Senior Cloud Architect, ML/AI
Some tips for your application 🫡
Tailor Your CV: Make sure your CV highlights your experience in architecting and managing cloud-based AI/ML solutions. Focus on your AWS expertise and any relevant certifications, such as AWS Solutions Architect Professional.
Craft a Compelling Cover Letter: In your cover letter, express your passion for technology and how your skills align with DoiT's mission. Mention specific projects or experiences that demonstrate your ability to solve complex multicloud problems.
Showcase Your Thought Leadership: If you have experience in blogging, public speaking, or participating in tech events, mention these in your application. DoiT values thought leadership, so highlight any contributions you've made to the tech community.
Highlight Mentoring Experience: DoiT appreciates candidates who can mentor others. If you have experience enabling cross-functional collaboration or creating knowledge-sharing platforms, be sure to include this in your application.
How to prepare for a job interview at DoiT
✨Showcase Your Cloud Expertise
Make sure to highlight your hands-on experience with AWS and other cloud platforms. Be prepared to discuss specific projects where you've architected, deployed, or managed AI/ML solutions, focusing on the challenges you faced and how you overcame them.
✨Demonstrate Thought Leadership
DoiT values thought leadership, so be ready to talk about any blogs, talks, or events you've participated in. Share your insights on emerging trends in Generative AI and how they can impact business growth and innovation.
✨Prepare for Technical Questions
Expect in-depth technical questions related to cloud architecture, machine learning frameworks, and data engineering. Brush up on your knowledge of tools like Amazon SageMaker, AWS Lambda, and CI/CD pipelines to confidently answer these queries.
✨Emphasise Collaboration and Mentoring Skills
As a Senior Cloud Architect, you'll need to work well with others. Be prepared to discuss your experience in mentoring team members and fostering collaboration across teams. Highlight any initiatives you've led to enhance team capabilities.