Data Solution Architect (AWS, Data Engineering)

Infoplus Technologies UK Ltd
London
1 day ago
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Role/Job title
Data Solution Architect (AWS, Data Engineering)
Work Location
Norwich
Role type - Permanent/Fixed Term/ Contracting
Contracting
Mode of working

Hybrid /office based
Hybrid
If Hybrid, how many days are required in office?
3 Days (Flexible)
Number of positions
Unit
IS-BFSI-UK2-IE-RSA 1.1
WON / SWON
Contractor Rate (if applicable)
Market rates
Duratx`ion of assignment
06 Months
Any other working conditions - travel/on call/shifts
To be published on job boards from below onwards
The Role
Your responsibilities:

(Up to 10,

Avoid repetition)
Experience as Solution Designer and should be currently working on Data Lake (Big Data) based projects.
Guide the full lifecycle of a BI solution, including requirements impact analysis, platform selection, technical architecture design, application design and development, testing, and deployment.
Ability to demonstrate structured consideration of multiple options (ideally comparing competing technologies, but even comparing different functional design approaches / options would be helpful); [eg Produce a KDD]
Ability to present / discuss competing options and make a recommendation to key stakeholders [as per KDD, but ability to discuss with others to gain support and/or feedback]
Ability to present recommended design to a governance group / authority, and to champion the design whilst responding to the groups feedback.
Thought leadership in Big Data space with proven expertise in delivering challenging assignment.
Provide thought leadership for Data Management, Data Migration Strategy and Data Lake Solutions
Good knowledge onData Modelling and able to translate Business requirements to Design and Data Models, technical designs and analytical solutions to meet business needs.
Liaising with enterprise architects, solution designers, analysts, and development partners
Designing the BI Big data solution and application customization on an AWS Cloud based platform
Provide technical assistance to development team with day today technical issues
Undertaking the deployment of proposed solution
Your Profile
Essential skills/knowledge/experience:
Good understanding of Data Lake and Big Data technologies.
Understanding of AWS Services will be required
AWS native data services(S3, Lambda, Kinesis) etc
ETL/ELT solutions such as AWS glue, DBT, Data solutions such as Snowflake
Good understanding of Insurance Domain
Desirable

skills/knowledge/experience:

(As applicable)
BFSI domain experience (risk, fraud, AML, credit, customer analytics)
Exposure to GenAI, LLMs, and vector databases
TOGAF or cloud architecture certifications

TPBN1_UKTJ

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