Job Closed
This listing is no longer active.
Somos uma empresa brasileira de tecnologia referência na América Latina. Por meio de soluções inovadoras, conectamos milhares de restaurantes a milhões de consumidores diariamente com uma média de 100 milhões de pedidos mensais. Além do delivery de comida, também somos Mercado, Farmácia e Pet. Temos também o iFood Pago, nossa Fintech, que engloba o iFood Benefícios, o vale alimentação e refeição do iFood e o próprio iFood Pago, o banco do restaurante.
Data Engineer Mid-Level - MLE - AI
Location
United States + 1 moreAll locations: United States | Canada
Posted
108 days ago
Salary
0
Job Description
Data Engineer Mid-Level - MLE - AI
IA na iFood
This description is a summary of our understanding of the job description. Click on 'Apply' button to find out more. Role Description - Desenvolver e operacionalizar modelos de Machine Learning, garantindo a implementação e manutenção de pipelines eficientes. - Realizar deploy de modelos e gerenciar o ciclo de vida de modelos (LCM) dentro da plataforma GenPlat. - Colaborar com a equipe para fomentar uma cultura forte de IA e MLOps, promovendo práticas de inovação e melhoria contínua. - Apoiar a implementação de agentes e ferramentas baseadas em GenAI, contribuindo para a estabilidade técnica e organizacional. - Participar ativamente no planejamento e execução de projetos, garantindo alinhamento com os objetivos estratégicos da empresa. Qualifications - Experiência em MLOps e deploy de modelos, com sólida base em engenharia de software. - Conhecimento em infraestrutura em nuvem, preferencialmente AWS, e operação de pipelines. - Familiaridade com soluções open-source e vivência em ambientes tech-first. - Capacidade de comunicação clara e colaboração eficaz em equipes multidisciplinares. - Mentalidade voltada para inovação e adaptação a mudanças rápidas. Requirements - Conhecimentos em GenAI e sua aplicação prática em projetos. - Habilidade para liderar iniciativas técnicas e fomentar um ambiente de aprendizado contínuo. - Experiência em aumentar a eficiência no gerenciamento do ciclo de vida de modelos. - Capacidade de se adaptar rapidamente a novas tecnologias e desafios complexos. - Inglês avançado. Company Description Somos uma empresa brasileira de tecnologia referência na América Latina. Por meio de soluções inovadoras, conectamos milhares de restaurantes a milhões de consumidores diariamente com uma média de 100 milhões de pedidos mensais. Além do delivery de comida, também somos Mercado, Farmácia e Pet. Temos também o iFood Pago, nossa Fintech, que engloba o iFood Benefícios, o vale alimentação e refeição do iFood e o próprio iFood Pago, o banco do restaurante.
Job Requirements
- Experiência em MLOps e deploy de modelos, com sólida base em engenharia de software.
- Conhecimento em infraestrutura em nuvem, preferencialmente AWS, e operação de pipelines.
- Familiaridade com soluções open-source e vivência em ambientes tech-first.
- Capacidade de comunicação clara e colaboração eficaz em equipes multidisciplinares.
- Mentalidade voltada para inovação e adaptação a mudanças rápidas.
- Conhecimentos em GenAI e sua aplicação prática em projetos.
- Habilidade para liderar iniciativas técnicas e fomentar um ambiente de aprendizado contínuo.
- Experiência em aumentar a eficiência no gerenciamento do ciclo de vida de modelos.
- Capacidade de se adaptar rapidamente a novas tecnologias e desafios complexos.
- Inglês avançado.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Design, build, and operate scalable batch and streaming data pipelines • Develop and orchestrate workflows using Apache Airflow • Implement transformations and analytics-ready datasets using DBT • Build and maintain real-time pipelines using Kafka • Leverage Databricks for data processing, analytics, and AI enablement • Support AI and GenAI use cases, including enabling high-quality data access for tools like Databricks Genie • Design and optimize data storage using Apache Iceberg and Lakehouse architecture • Ingest and manage data from diverse internal and external sources using Fivetran • Handle a wide variety of data structures (structured, semi-structured, and event-based data) • Build and maintain a semantic layer that enables trusted reporting and self-service analytics • Implement data quality frameworks, monitoring, and unit test automation to ensure reliability at scale • Partner with BI, product, and engineering teams to deliver data that is intuitive, trusted, and actionable • Optimize performance, scalability, and cost across AWS services such as Athena, EC2, and related tooling • Contribute to data platform standards, documentation, and best practices
Data Engineer
Keller Postman LLCClients First. Innovation Always. Excellence in Everything. One of the nation's fastest growing plaintiffs' law firms.
• Develop, construct, test, and maintain data architectures, including databases and large-scale processing systems. • Design, build, and optimize data pipelines and ETL/ELT processes leveraging Snowflake and Azure Services. • Develop and maintain Snowflake data warehouses, ensuring efficient data modeling, partitioning, and performance tuning. • Implement data flow processes that automate and streamline data collection, processing, and analysis. • Ensure data governance, quality, and security best practices across all data platforms. • Collaborate with analytics and business teams to improve data models that feed business intelligence tools, increasing data accessibility and fostering data-driven decisionmaking across the organization. • Identify, design, and implement internal process improvements: automating manual processes, optimizing data delivery, re-designing infrastructure for greater scalability, etc. • Provide operational support for existing data infrastructure and develop new solutions as needed. • Monitor, troubleshoot, and optimize system performance in Azure and Snowflake environments. • Support CI/CD pipelines and automation for data workflows and deployments. • Keep current with industry trends and innovations in data engineering and propose changes to the existing landscape.
• You'll work on our data pipelines and build APIs that serve data to our product. • You'll own the full stack of our client-facing analytics and admin tool. • You'll implement data pipelines with DBT, Airflow, DynamoDB, and AWS Lambda. • You'll contribute front-end code to our core product to help integrate our data into product experiences. • You'll build out telemetry to power our analytics decision-making and machine learning models.
This description is a summary of our understanding of the job description. Click on 'Apply' button to find out more. Role Description As a Data Engineer, you will: - Build and maintain scalable, best-in-class data infrastructure and pipelines that serve as core components of a multi-tenant data platform. - Ensure our data pipelines and data warehouse are optimized for accuracy, performance, and accessibility. - Manage architecture frameworks and participate in the development of data, experimentation, and analytics solutions in collaboration with cross-functional partners in the Product and Engineering organizations. - Implement processes and systems to monitor data quality, ensuring production data is always accurate and available for key stakeholders and business processes that depend on it. - Test and clearly document data assets and warehouse implementations to enable others to understand the implementation and definition of data methodologies easily. - Design data integrations and a data quality framework. - Work closely with Product and Engineering teams to develop a strategy for long-term data platform architecture. Qualifications - Demonstrated ability to build, manage, and optimize core data infrastructure at scale in a multi-tenant environment. - A propensity to independently identify opportunities for optimization and drive forward high-impact projects with minimal guidance. - Proficiency in SQL and strong programming skills in Python, with experience in Bash scripting for automation and workflow management. - Deep knowledge and experience with Snowflake and advanced features like Snowpipes, storage integrations, stages, streams, tasks. - Experience with the AWS ecosystem and securely deploying and managing applications using serverless tools like ECS and Lambda. - Experience building and maintaining custom ingestion pipelines using tools like dlt or requests. - Ingest data from third-party APIs and custom ingestion pipelines with Dagster and Snowflake (Snowpipe, streams, and tasks). - Proficiency with workflow orchestration tools (Dagster or similar tooling like Airflow or Prefect) and data transformation tools (dbt). - Experience with DataOps tools, such as Docker, GitHub Actions, and Terraform. - Experience with AI or ML is a plus. Requirements - Excited to build foundational data infrastructure that powers many e-commerce brands. - Energized by the opportunity to abstract repeated data problems into platform-level solutions. - Passionate about working cross-functionally across engineering, product, and data teams. - Motivated by working in a fast-paced and iterative environment. - Excited by the opportunity to be an early, critical member of a rapidly growing organization. - Personally aligned with our mission to make commerce accessible. Benefits - An investment in your physical and mental well-being; we offer 100% employee Medical Benefits coverage, with 69% dependent coverage. - Flexible PTO; we encourage you to take the time you need to be your best self at work. - An onboarding package and annual work from home stipend to ensure you have everything you need to be successful while working remote. - Generous Parental Leave with customizable transition back to work program. - The benefits of working from home, with opportunities to spend quality time with the team at Chord in-person events throughout the year. - To make an impact! We’re an early-stage company, which means there is space to champion ideas, and create and lead initiatives at any level in the Organization. - This is a full-time, salaried position that includes Equity.



