Martech Data Engineer

Wyoming Interactive
Edinburgh
1 week ago
Applications closed

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Wyoming Interactive is an award-winning digital solutions agency who specialize in designing and engineering innovative solutions that deliver transformative results for industry leaders in Life Sciences, Financial Services and Technology. Through our digital services we help our clients connect and communicate better with their customers.


As we continue to grow, we are seeking a talented Martech Data Engineer to join our team, focusing on implementing and optimizing a fully integrated Martech stack for an international client.

In this role, you'll collaborate with the client's team to define and deliver technical solutions that support business goals and enhance decision-making on a global scale.


The role:

As a Martech Data Engineer, you will play a crucial role in implementing and deploying the client's Martech stack. You'll work closely with their marketing, analytics, and product teams to build and optimize a scalable architecture, including managing an Azure Data Lake Gen2, Azure Data Factory, Snowflake warehouse, and RudderStack for customer data flows. Your responsibilities will include designing and maintaining data integrations from sources such as HubSpot and Shopify, enabling efficient marketing automation and data-driven insights.


Key Responsibilities:

  • Martech Architecture:Develop and manage a scalable data architecture using Azure and Snowflake.
  • Data Pipeline Management:Implement and maintain data ingestion and integration from platforms like HubSpot and Shopify.
  • Client Collaboration:Work within the client project team to ensure the Martech stack meets their specific data needs.
  • Data Reporting & Visualization:Support reporting and visualization needs using Looker Studio.
  • Data Governance & Compliance:Implement and maintain data governance practices to uphold data security and integrity.
  • Troubleshooting & Optimization:Monitor and optimize data pipelines to ensure reliability.


Skills and experience you will bring:

  • Experience:3+ years in data engineering or martech engineering roles.
  • Technical Proficiency:Expertise with Azure Data Lake Gen2, Azure Data Factory and Snowflake.
  • Experience with Looker Studio for visualization.
  • Proficiency with RudderStack or similar customer data platforms.
  • Data Integration Skills:Skilled in ETL/ELT processes, with direct experience integrating platforms such as HubSpot and Shopify.
  • Programming Skills:Proficient in SQL, Python, or similar languages.
  • Client-Facing Experience:Strong interpersonal skills for effective collaboration within a client team, with the ability to communicate technical details to non-technical stakeholders.


Nice-to-Have Skills:

  • Industry Knowledge:Familiarity with the drinks, consumer goods, or retail sectors.
  • Data Compliance:Knowledge of data governance frameworks and compliance regulations (e.g., GDPR, CCPA).
  • Additional BI Skills:Experience with supplementary BI tools or frameworks compatible with Snowflake and Looker Studio.


Why Wyoming Interactive?

We offer a competitive package in a flat, friendly, and progressive environment where we prioritize work-life balance. While we do experience intense periods at times, we always recognize the importance of maintaining this balance and strive to give back wherever we can. We believe in empowering our team members to learn, develop, and take ownership of their work. Regular opportunities for skills development, participation in learning conferences, and engaging in frequent in-house social events at our Edinburgh HQ are all part of our culture.


You'll find an environment that fosters creativity, innovation, and a spirit of fun, including:

  • Hybrid, remote, in-office, and flexible working patterns available.
  • Discretionary performance-based bonus.
  • Annual profit share scheme.
  • 28 days holiday inclusive of Bank Holidays.
  • Additional holidays for Christmas Day, Boxing Day, and New Year's Day.


Ready to Take the Next Step?

Submit your profile today for review, and let's explore the possibilities together.

By joining our team, you would be joining a group of diverse, highly talented digital experts. We welcome applicants from all walks of life, and believe that diversity fuels creativity, drives innovation, and fosters a culture of inclusion where everyone feels valued and empowered to contribute their best work.

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