Data Architect

Reading
2 months ago
Applications closed

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Data Architect (Snowflake, AI, Machine Learning, Data Strategy, Data Roadmaps)

3 Month Contract

Reading/ London (Hybrid)

£550-£600/day (Inside IR35)

A Data Architect needed with proven hands-on experience with Snowflake, AI, Machine Learning, AWS, Data Strategy, and Data Roadmaps for a fantastic contract opportunity in Reading/London.

On and off occasional travel required to the London office, likely 1-2 times per week.

A chance to work with an established global Digital, IT and Network Services Consultancy.

Key skills and experience:

Proven hands-on experience with Snowflake, AWS, Tableau, Erwin, Kafka, Striims, Advanced Analytics,

Experience with Snowflake, AI, Machine Learning, AWS, Data Strategy, and Data Roadmaps

Data transformation & optimization of infrastructure to support advanced analytics, AI, and machine learning

Migrate from legacy systems to modern, cloud-based data platforms, optimizing storage, integration, & access to improve performance

Expertise in managing industry-level data, developing strategic frameworks, and designing comprehensive Data Roadmaps is required.

Proven experience in developing and executing data strategies.

Expertise in data governance, privacy regulations, and security standards.

Proficient in data analysis and business intelligence tools (e.g., Power BI, Tableau).

Strong background in data modeling, database management, and ETL processes.

Familiar with cloud platforms (AWS, Azure, Google Cloud) and big data technologies.

Relevant certifications: CDMP, CBIP, Google Cloud Professional Data Engineer).

IT Consultancy, Telecoms domain experience is desirable

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