TLC Worldwide logo
TLC Worldwide

The world’s largest promotions, loyalty and rewards platform.

Data Engineer

Data EngineerData EngineerFull TimeRemoteSeniorTeam 201-500Since 1993H1B No SponsorCompany SiteLinkedIn

Location

India

Posted

5 days ago

Salary

0

Seniority

Senior

Job Description

Data Engineer

TLC Worldwide

• Data Platform Development & AI Enablement: You will build, maintain, and optimise ELT pipelines that ingest data from internal operational systems, APIs, third-party platforms, and event sources into Snowflake using tools such as Fivetran and cloud-native integrations. • Data Modelling, Transformation & Analytics Enablement: You will develop and maintain raw, curated, and business-ready data models within Snowflake, ensuring data is structured, documented, and optimised for analytics and self-service reporting. • Platform Optimisation & Continuous Improvement: You will help improve the reliability, scalability, performance, and observability of the modern data platform, identifying opportunities to optimise Snowflake usage, streamline workflows, improve automation, and enhance developer experience as TLC’s data capabilities continue to evolve. • Cross-Functional Collaboration: You will work closely with Analysts, Technology, Product, and Client teams to understand data requirements and deliver scalable data solutions that support business decision-making. • Operational System Integration: You will support integrations across TLC’s operational ecosystem, including COSMOS, Mixpanel, external plugins, and third-party platforms, helping ensure reliable, accurate, and scalable movement of data across business systems. • Data Quality, Governance & Engineering Best Practices: You will contribute to data governance, testing, monitoring, documentation, and engineering standards to ensure trusted, high-quality datasets and scalable development practices across the data platform. This includes version control, code reviews, automation, and continuous improvement of engineering processes.

Job Requirements

  • Proven experience in data engineering, analytics engineering, or modern data platform development
  • Strong SQL and Python skills, with experience building and optimising data transformations, automation, and scalable data workflows
  • Experience working with cloud data warehouses such as Snowflake, BigQuery, Redshift, or similar, including performance, scalability, and cost optimisation
  • Understanding of dimensional modelling, semantic layer design, and building curated business-ready datasets for analytics and reporting
  • Experience developing and maintaining ELT/ETL pipelines, including ingesting and integrating data from APIs, SaaS platforms, and operational systems
  • Experience monitoring and troubleshooting data pipelines, schema changes, synchronisation issues, and platform reliability
  • Familiarity with modern data stack tools such as Fivetran, dbt, orchestration tools, Git, and collaborative engineering practices including version control and code reviews
  • Experience working with cloud platforms such as Azure and/or GCP
  • Strong communication skills with the ability to work across technical and non-technical stakeholders
  • A proactive mindset with an interest in modern data platform trends, AI enablement, automation, scalability, and continuous improvement
  • Preferred Experience
  • Experience with Snowflake optimisation and performance tuning
  • Experience working with event analytics platforms such as Mixpanel
  • Familiarity with modern analytics platforms
  • Experience using Python for data engineering or automation tasks
  • Familiarity with customer, campaign, loyalty, or martech data ecosystems
  • Experience working with AI/GenAI capabilities within Snowflake, including implementing best practices and leveraging advanced analytics and machine learning features to support business use cases.

Benefits

  • Dynamic & collaborative team in a creative environment with exposure to global clients & colleagues
  • Weekly webinars to support your development through our People Academy
  • Annual TLC Wellness Week and programmes throughout the year
  • TLC Culture Club - including seasonal social events, tasty lunches & more
  • TLC Gives Back - volunteering opportunities, including off site visits and volunteering leave
  • TLC Rise - supporting and empowering women into leadership roles
  • 'Frankies' - Our very own awards ceremony where we walk down the TLC red carpet in our best outfits
  • TLC Owner's Club - Everyone that is part of the TLC experience contributes to our success, which is why we all own a piece of TLC as part of our share holder scheme

Related Categories

Related Job Pages

More Data Engineer Jobs

Zup Innovation logo

Data Engineering Lead

Zup Innovation

We create digital assets to build, grow and accelerate your applications with efficiency, security and scalability.

Data Engineer5 days ago
Full TimeRemoteTeam 1,001-5,000H1B No Sponsor

• Design and implement reusable data platforms and systems with a focus on security • Define architectural standards for data flows, ensuring scalability and resilience • Lead the development of data ingestion, processing, and governance pipelines across cloud and on-premises environments • Propose and evolve integration solutions between dependent teams using modern data tools • Implement best practices for observability, cost control, and security in distributed environments • Support the dissemination of development standards, code review practices, and release automation

Brazil

Role Description We are looking for an Analytics Consultant with sound experience in the development of data integration solutions. SQL and working knowledge of Data Integration techniques necessary (ETL, Replication, Profiling) to support business needs. - Develop and maintain SQL code and SSIS packages. - Analyze data and solve new and existing business issues. - Reviewing query performance and optimizing code. - Provide production level support. - Fully document all processes that are being created. - Sound experience on Microsoft on-premise data integration stack (SSIS, SQL, SQL Server). - Skilled in PowerBI. - Fluent in English, able to communicate both with the team and client. - Knowledge of insurance industry is a plus. - Reside in Argentina. Qualifications - Sound experience in data integration solutions. - Proficiency in SQL and Data Integration techniques (ETL, Replication, Profiling). - Experience with Microsoft on-premise data integration stack (SSIS, SQL, SQL Server). - Skilled in PowerBI. - Fluent in English. - Knowledge of the insurance industry is a plus. - Must reside in Argentina. Requirements - Experience developing and maintaining SQL code and SSIS packages. - Ability to analyze data and solve business issues. - Experience in reviewing query performance and optimizing code. - Capability to provide production level support. - Ability to fully document processes.

Argentina
Full TimeRemoteTeam 51-200Since 1994H1B No Sponsor

• Design, develop, and maintain enterprise data architecture solutions that support business growth, operational efficiency, regulatory compliance, and risk management objectives. • Lead modernization initiatives across data platforms, integration frameworks, reporting environments, and analytical capabilities. • Evaluate and implement emerging technologies, including cloud services, artificial intelligence, machine learning, automation, and advanced analytics solutions where appropriate. • Architect scalable and reusable data integration frameworks that reduce maintenance overhead and support future business expansion. • Develop and optimize ETL/ELT processes, data pipelines, and data movement strategies across multiple systems and platforms. • Collaborate with business leaders, risk management teams, compliance personnel, and technology stakeholders to translate business requirements into sustainable technical solutions. • Design data models, metadata strategies, governance frameworks, lineage tracking, and quality controls that support enterprise reporting and regulatory requirements. • Partner with stakeholders to identify opportunities for process automation, operational improvement, and enhanced decision-making through data-driven solutions. • Establish and promote development standards, architectural best practices, and data engineering disciplines that balance agility with long-term maintainability. • Evaluate existing systems and processes to identify technical debt, scalability limitations, operational risks, and modernization opportunities. • Support risk modeling, forecasting, financial analytics, and strategic reporting initiatives through robust data architecture and engineering practices. • Implement monitoring, validation, reconciliation, and control processes to ensure data accuracy, integrity, availability, and auditability. • Participate in technology roadmap planning and provide architectural guidance for future-state platform evolution. • Serve as a technical leader and trusted advisor across multiple business and technology teams. • Maintain awareness of regulatory expectations, industry trends, cybersecurity considerations, and emerging technologies impacting financial services organizations.

United States
Codvo.ai logo

Senior Data Engineer – Full Stack

Codvo.ai

Building Advance AI & Cloud Native Software Using The "Virtual Silicon Valley" Model. Let’s Talk AI, Cloud and Outcomes.

Data Engineer5 days ago
Full TimeRemoteTeam 51-200Since 2019H1B No Sponsor

• Design and develop CLI tools, scripts, and internal utilities to automate repetitive tasks across the data platform, including: • Pipeline execution and orchestration • Data governance workflows • Metadata synchronization • Environment setup and configuration • Test harness development • Automate workflows on Databricks, including: • Job deployment and scheduling • Environment provisioning • MLOps processes using APIs, Terraform, or Databricks SDK • Build and implement robust testing frameworks: • Integration testing for pipelines • End-to-end validation of ETL/ELT workflows • Testing and validation for ML inference workflows • Improve overall productivity, scalability, and reliability of the data and ML engineering ecosystem • Develop lightweight internal tools and dashboards using frameworks such as React, Streamlit, or similar technologies to: • Visualize data pipelines and workflows • Demonstrate model inference capabilities • Provide configuration and operational controls • Enable internal productivity monitoring and dashboards • Collaborate with cross-functional teams to identify automation opportunities and implement best practices

United States