Data Architect

Socium Recruitment
Manchester
3 months 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

Data Architect – Remote First - £75-85,000A big-name professional services software provider, and we're shaking things up with AI-first software across all our brands. We're at the start of an awesome three-year AI transformation, and we need you to join the ride.What You'll Do: * Upgrade our current data platform with microservices. * Figure out the best way to structure our data. * Boost performance to handle loads of data (100k+ entries daily). * Design a scalable data platform. * Juggle performance and cost. * Go all-in on AI by using ML algorithms. * Set up best practices and data standards. * Pick the coolest Microsoft Azure tools to level up our tech stack.Tech Stack You'll Work With: * Azure * Databricks * DataFactory * Synapse Analytics * Azure Data Lake Storage (ADLS) * Azure SQL Database * Azure Stream Analytics * Azure Machine Learning * FabricWhat We're Looking For:Experience in data architecture and platform consolidation. * Skilled with Microsoft Azure data services. * A pro at designing scalable data platforms. * Good at handling loads of data and optimizing performance. * Experienced with microservices. * Knowledgeable about AI and machine learning. * Great problem-solving skills and can balance performance and cost. * Familiar with data best practices and standards.Perks:Be part of...

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