Snowflake Data Architect - (M/F/D)

ITC Infotech
Hertfordshire
2 days ago
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ITC Infotech is looking for a UX Design Operations Specialist to join our team in Walldorf, Germany

Your X-Factor

Work ethic - You are a consummate professional.

Aptitude - You have an innate capacity to transition from project to project without skipping a beat.

Communication - You have excellent written and verbal communication skills for coordination across projects and teams.

Impact - You are a critical thinker with an emphasis on creativity and innovation.

Passion - You have the drive to succeed paired with a continuous hunger to learn.

Leadership - You are trusted, empathetic, accountable, and empower others around you.

Role Overview

Job Summary

We are seeking an experienced Data Architect with strong expertise in Snowflake on Amazon Web Services and DBT to design, build, and optimize scalable data pipelines and modern data platforms. The role involves developing robust data transformation frameworks, implementing best practices for data modelling, and supporting analytics and visualization teams.

The ideal candidate should also have worked knowledge of AI/ML data pipelines and experience in the hospitality domain, supporting systems such as reservations, guest management, and operational analytics.

Key Responsibilities

  • Design and implement scalable data solutions using Snowflake on AWS.
  • Build and maintain data transformation pipelines using DBT.
  • Develop ELT/ETL pipelines to ingest and transform data from multiple sources.
  • Design and implement data models (star schema, dimensional models) for analytics and reporting.
  • Optimize Snowflake performance, query efficiency, and cost management.
  • Implement data quality checks, automated testing, and documentation using DBT.
  • Collaborate with BI and analytics teams to deliver reliable datasets for dashboards and reporting.
  • Support AI/ML initiatives by preparing and managing data pipelines for machine learning and predictive analytics use cases.
  • Implement data governance, role-based access control, and security best practices in Snowflake.
  • Automate workflows and pipelines using orchestration tools such as Apache Airflow.
  • Work closely with data analysts, architects, and business stakeholders to understand business requirements.
  • Support hospitality analytics use cases, including booking trends, guest behaviour analysis, revenue management, and operational performance.

Required Technical Skills

Data Platform

  • Strong hands-on experience with Snowflake
  • Expertise in Snowflake architecture, performance tuning, data sharing, and security models

Experience with Amazon Web Services, including:

  • S3
  • IAM
  • AWS Glue
  • Lambda
  • CloudWatch

Data Transformation

  • Experience with
  • DBT for data modelling, testing, and transformation frameworks.

Programming / Query

  • Strong SQL for data transformation and analysis
  • Python (preferred) for data processing and automation.
  • Data warehousing and dimensional modelling
  • Data modelling techniques (Star schema, Snowflake schema)

AI / Data Science Exposure

  • Basic understanding of AI/ML data pipelines and data preparation for machine learning models.
  • Familiarity with predictive analytics, recommendation engines, or customer behavior analysis is an advantage.

Preferred Skills

  • Experience with Apache Airflow for orchestration.
  • Knowledge of CI/CD pipelines, Git-based workflows, and DevOps practices.
  • Experience with data governance, metadata management, and data catalogue tools.
  • Experience with BI tools such as Tableau or Microsoft Power BI.
  • Domain experience in hospitality, travel, or hotel systems, including exposure to reservation systems, guest analytics, and operational reporting.

Education

  • Bachelor’s or master’s degree in computer science, Information Technology, Data Engineering, Data Science, or a related field.

Our Mission

ITC Infotech is a leading global technology services and solutions provider, led by Business and Technology Consulting. ITC Infotech provides business-friendly solutions to help clients succeed and be future-ready, by seamlessly bringing together digital expertise, strong industry specific alliances and the unique ability to leverage deep domain expertise from ITC Group businesses. We provide technology solutions and services to enterprises across industries such as Banking & Financial Services, Healthcare, Manufacturing, Consumer Goods, Travel and Hospitality, through a combination of traditional and newer business models, as a long-term sustainable partner.

ITC Infotech is an Equal Opportunity Employer. We believe that no one should be discriminated against because of their differences, such as age, disability, ethnicity, gender, gender identity and expression, religion, or sexual orientation. All employment decisions shall be made without regard to age, race, creed, color, religion, sex, national origin, ancestry, disability status, veteran status, sexual orientation, gender identity or expression, genetic information, marital status, citizenship status or any other basis as protected by federal, state, or local law. ITC infotech is committed to providing veteran employment opportunities to our service men and women.


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