Data Solutions Architect

Ashdown Group
Collingtree
2 months ago
Applications closed

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This is an exciting opportunity for a Data Solutions Architect to join a leading finance firm in the Northampton area. This role pays £45,000 + generous annual bonus and offers hybrid working.To be considered for this position you will have previous experience with a CRM system supporting many internal users across Sales & Marketing. The ideal candidate will have solid CRM experience, working with SQL queries & reports, and be familiar with customer journeys & automation workflows. As a CRM data solutions architect, you will be familiar with: SQL queries & reports in either MS SQL, MySQL, PL/SQL or similarA mainstream CRM system Salesforce, Zoho, Dynamics, HubSpotSome form of scripting / development JavaScript, Python, PHP, .Net, HTMLCRM integration, customisation & automationManaging CRM Best Practice processesReviewing functionality & business processes to identify any areas of improvementIf possible, a Zoho CRM background would be preferred, however, my client is willing to consider candidates from a wide range of CRM backgrounds (HubSpot, Salesforce, Dynamics, Odoo). Please note full Zoho CRM training will be provided, as well as training on JavaScript.This role is based in Northampton and pays £55,000 + bonus (circa 10% discretionary). If you are an experienced solutions architect, lead / senior data analyst, CRM analyst, software developer, application support analyst, CRM support analyst, or CRM administrator, and you are looking for a new challenge please send me your CV immediately.TPBN1_UKTJ

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