Azure AI Architect

Lostock Gralam
1 year ago
Applications closed

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AI/ML Azure Architect

Join our Azure services team and play a key role in supporting our continued growth plans. These plans aim to solidify our position as a leading global Services partner with Azure. As our Azure Achitect you will serve as the Subject Matter Expert (SME) in assisting end-customers to design and architect machine learning solutions using the Azure AI and ML stack to address complex business challenges.

As Azure Architect you will..



Work with end-customer’s AI team to deeply understand their business and technical needs and build AI solutions that make the best use of the Azure Cloud platform and AI/ML services

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Undertake individual consultancy assignments or work on a project as part of a larger team analysing customer requirements, gathering and analysing data and recommending solutions

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Technically manage the assessment, design, and implementation of solutions

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Ensure consultancy assignments are undertaken consistently and with quality

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Highlight technical risks so that any Ingram Micro exposure to commercial loss can be minimised

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Educate partners and end-customers on the value proposition of Azure, and participate in deep architectural discussions to ensure solutions are designed for successful deployment in the cloud

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Design and implement scalable, secure, and high-performance AI architectures on Azure.

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Develop and deploy machine learning models and AI solutions.

To set you up for success we are looking for the following skills and experience;

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Extensive experience working with Azure complex cloud environments

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Experience in a technical consulting and business analyst type role

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Knowledge of data security and compliance regulations.

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Relevant experience in machine learning model development lifecycle including (but not limited to) training, fine tuning feature engineering techniques and deployment options

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Familiarity with data visualization tools such as Tableau or QuickSight.

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Significant hands-on experience with Python, R or other programming languages and independently building prototype applications

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Significant experience building with libraries like PyTorch, Tensorflow, MxNet and ScikitLearn

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Experience with deep learning and neural networks.

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Certified: Azure AI Engineer Associate (desirable)

Why Choose Comms-care?

At Comms-care, we are leaders in providing channel network and server support solutions, managing over 30,000 active support contracts. We offer end-to-end IT lifecycle support—from consultancy and design to managed services and field support. Our dedication to excellence and our commitment to our partners set us apart in the industry.

Make an application to join the team!
Become a part of a team where people are as important as customers. Our #oneteam spirit drives our success. If you’re driven to succeed, we offer a competitive base salary and benefits package. Ready to elevate your career? Apply today and be part of our remarkable journey

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