We're helping one of our clients, **Web Shop Manager**, hire for a **Data Engineer focused on Search, ML/AI.**
"Empowering eCommerce success globally with advanced product data expertise and superior customer experience!"
Compensation**:To be agreed upon.**
Location**:Remote (for Argentina, Colombia, Mexico, and Brazil residents).**
Skills**:Proficient Big data technologies, AWS, ETL, Airflow, AWS Bedrock, Hadoop, Elasticsearch, and vector databases.**
Responsibilities and more:
- Participate in all aspects of agile software development, including design, implementation, and deployment.
- Design, build and maintain data transformations efficiently and reliably for different purposes (e.g. indexing, reporting, growth analysis, multidimensional analysis).
- Design, implement and maintain reliable, scalable, robust and extensible big data systems that support core products and business.
- Design, develop and support data pipelines and workflows that integrate various sources of structured and unstructured data across our customers' landscape.
- Assess and implement any customizations and custom data wrangling needed to transform customer datasets in a way that is best suited for processing by our ML models.
- Monitor data processing and machine learning workflows to ensure customer data is successfully processed by our ML models, debugging and resolving any issues faced along the way.
- Generate necessary data artifacts and analytics needed to assess the quality of results generated by different parts of the AI workflow to ensure they meet desired quality standards.
- Collaborate closely with the engineering team to assess model performance and improve results as needed.
- Collaborate closely with Product Engineering as needed to resolve any issues faced during customer deployment and onboarding.
- Collaborate closely with Customer Success Managers and Account managers to maintain close customer relationships and ensure customer satisfaction.
- Develop tooling and playbooks to streamline and automate key technical delivery activities to be repeatable and scalable.
- Develop and maintain RAG & Vector embeddings for AI and semantic search.
- Establish solid design and best engineering practice for engineers as well as non-technical people.
- Develop and maintain scalable and high-performing software solutions using the specified tech stack.
- Architect and provide guidance on building data pipelines and lakes.
- Collaborate with cross-functional teams to design and implement new features.
- Ensure code quality through functional testing.
- Troubleshoot and debug issues to ensure smooth functionality.
- Collaborate across time zones via Slack, GitHub comments, documents, and frequent videoconferences.
- Stay up to date with industry trends and best practices.