Data Architect / BI Architect

InterEx Group
London
3 days ago
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For this role, you will be responsible for providing the framework that appropriately replicates the Big Data needs of a company utilizing data.

Essential requirements:

More than 3 years of presales experience in the design of Big Data and Data analytics solutions according to customer requirements

Previous experience with the preparation of high-quality engaging customer presentations, excellent communication skills, experience in conversations at CxO level, ability to adapt the message to the customer feedback, etc.

Experience in preparation answering RFPs: organize the offer solution team, solution definition, effort and cost estimation,

Past experience in dealing with partners, tools vendors, etc.

Business Domain Knowledge

More than 5 years of experience in Big Data implementation projects

Experience in the definition of Big Data architecture with different tools and environments: Cloud (AWS, Azure and GCP), Cloudera, No-sql databases (Cassandra, Mongo DB), ELK, Kafka, Snowflake, etc.

Past experience in Data Engineering and data quality tools (Informatica, Talend, etc.)

Previous involvement in working in a Multilanguage and multicultural environment

Proactive, tech passionate and highly motivated



Desirable requirements:

Experience in Data analysis and visualization solutions: Microstrategy, Qlik, PowerBI, Tableau, Looker,…

Background in Data Governance and Data Catalog solutions: Axon, Informatica EDC, Colibra, Purview, etc.

Previous experience in Artificial Intelligence techniques: ML/Deep Learning, Computer Vision, NLP, etc



General information:

Start Date: ASAP

Length of Contract: 1 year (minimum)

Work Location: Madrid

Remote working. (It may be necessary at some point on-site presence in the customer office in Madrid).



We look forward to receiving your application!

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