Solutions Architect - Applications, DevOps - eCommerce, Shopify

Streetly
9 months ago
Applications closed

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Solutions Architect - Applications - Azure DevOps - Power Platform - Shopify eCommerce - SaaS - Digital

Role is Hybrid and Locations are Regional, either London (preferred), Newcastle, Manchester, Birmingham or Bristol

Solutions level Architecture to ensure the best use of data, ideally handling Applications, DevOps and Legacy Systems.

This role will suite an experienced Solutions Architect or a Solutions Designer seeking to step into an Architect post within a secure organisation with a renowned legacy in the charity and non-profit environment.

Salary is £65,000pa + Benefits - Hybrid

As the Solutions Architect, you will be responsible for designing the technical architecture all Applications, DevOps, Systems and Infrastructure and ensuring alignment to the client's technology roadmap and principles.

Responsible for Developing and Maintaining the Solution Architecture for Applications and DevOps aligned to the strategy and business goals, you will be required to initiate Concepts, Scope, Designs and Transformation of Transitioning to the Cloud.

You will scope Solutions needs and requirements to build relevant solutions underpinned by a common data model and working in conjunction with the key stakeholders across the charity.

You will Lead on stakeholder engagement and hold a robust understanding of all the operations and activities that the charity carries out.

Your key technical and systems knowledge will include:

Applications
Microsoft Azure - DevOps
Power Platform
Shopify eCommerce
SaaS - Digital
Cloud SecurityRole Responsibilities:

Experience of delivering Solutions level Architecture to ensure the best use of data, ideally handling Applications, Azure DevOps and Legacy Systems.
Working with 3rd party Application Architects
Significant experience working within mobile, SaaS, PaaS and IaaS solutions environment
Experience of DevOps, Agile Project and Product Management
Experience of supporting procurement of DDAT Architecture
Comfortable and confident workingDesirable experience:

Public Sector Experience - (Government, Education, Local Councils, MoJ, MoD and Transport).
Azure Certifications (DP-203, DP-600)
Data Governance tools (i.e. Microsoft Purview)
Community engagement and amplification of best practise at organisation & industry level
Integration to D365 and Dataverse solutions
Azure storage technologies and cost/performance characteristics
Techniques and tools for sanitizing data prior to use
Master Data solutions
Python and Data ScienceThis Client Offers:

Real Flexibility - Remote First
Interesting Work - The chance to work with household names
Great recognition and growth opportunities
Other great benefits including private healthcare, pension scheme and moreCall Experis IT today on (phone number removed) for more information

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