Data Architect

WhatJobs
Belfast
3 weeks ago
Applications closed

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Data Architect

Data Architect

Data Architect

Senior Data Architect - Databricks

Data Engineering Lead / Data Architect

Data & AI Solution Architect, Azure, Remote

My client are reshaping their business by integrating analytics into every facet of their operations, assisting clients in diverse industry sectors and lines of business in their transformative endeavours. My client are actively seeking managers in particular right now to further strengthen the already impressive Belfast team. Role Description: Facilitating the extraction of value from information assets by collaborating with domain experts and integrating innovative data analytics solutions into existing service lines. Leading diverse teams with varied skillsets utilizing different Data and Analytics technologies. Adapting leadership style to fit team, client, and cultural needs, anticipating and identifying risks, and fostering a positive learning culture. Collaborating in multi-disciplinary teams across various industries to aid clients in business transformation. Passion for contributing to team growth, bringing energy, enthusiasm, and the ability to lead and develop others. Drawing on knowledge and experience to create innovative insights adding value to clients and broader society. Championing operational efficiency improvements and consistently driving projects to completion with high-quality results. Contributing to the development of the broader Data & Analytics team's future by building the brand, attending relevant events, collaborating with internal teams, and producing thought leadership. Actively establishing, maintaining, and strengthening internal and external relationships to identify potential business opportunities. Skills and Attributes for Success: Relevant consulting or industry experience with significant management experience. Demonstrated ability to supervise and develop others, effectively communicate, manage budgets, meet client expectations, deliver quality projects on time, etc. Ability to communicate technical information to non-technical colleagues and clients. Proven work experience as a Data Architect. Experience in gathering and analysing system requirements. Proven cloud data architecture experience (Azure/AWS). Deep understanding of both relational and non-relational databases. Ability to design cloud architectures at conceptual, logical, and physical levels. Analytical mindset with the capability to assimilate and apply new techniques and knowledge for delivering insights and solving problems. Professionalism and ability to work in diverse, evolving, and dynamic client environments. Experience in various aspects of the data analytics lifecycle, including Cloud and Data Architecture, Data Pipelines and ETL/ELT, Data Modelling, and understanding of Data Governance principles. A completed degree (bachelors, masters, or PhD) or relevant professional experience. Advantageous to have attained data-related cloud certifications in Azure and/or AWS. Package Details: My client provide a competitive remuneration package, recognizing individual and team performance. A comprehensive Total Rewards package supports flexible working, career development, and includes various benefits covering holidays, health and well-being, insurance, savings, and a range of discounts and promotions. Continuous Learning: Develop the mindset and skills to navigate challenges. Opportunities for customizing your career journey as you grow and develop. To be considered for this role, please send your CV in via the link below or reach out to Ryan Quinn directly on LinkedIN. Skills: Sql Server Azure Database Benefits: Bonus performance reviews hybrid

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