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Hand Talk

Inteligência Artificial para Acessibilidade Digital

Data Engineer Intern

Data EngineerData EngineerInternshipRemoteEntry LevelTeam 51-200Since 2012H1B No SponsorCompany SiteLinkedIn

Location

Brazil

Posted

1 day ago

Salary

0

Seniority

Entry Level

Bachelor DegreeExperience acceptedPortugueseEnglishAirflowApacheETLPySparkPythonSQLTerraform

Job Description

Data Engineer Intern

Hand Talk

• Assist in developing and maintaining basic data ingestion and transformation pipelines (ETL/ELT) using PySpark and SQL. • Help monitor data pipelines and implement basic checks to ensure data reliability for internal consumers (such as Data Scientists). • Learn and assist in automating pipeline testing and deployment processes. • Work alongside data scientists and software engineers to understand and support integrated data flows. • Assist in documenting data schemas, pipeline architectures, and metadata cataloging.

Job Requirements

  • Currently pursuing a Bachelor's degree in Computer Science, Software Engineering, or a related technical field.
  • Advanced English.
  • Proficiency in Python / PySpark.
  • Knowledge of Terraform (HCL).
  • Familiarity with modern data architectures (Lakehouse), Databricks (Delta Lake), and Apache Iceberg.
  • Data orchestration (Airflow).
  • Experience working with semi-structured and unstructured data (JSON, video, text (txt), audio, etc.).
  • Agentic AI development.
  • Ability and willingness to quickly learn new technologies, frameworks, and modern data concepts.
  • Shows initiative in investigating data issues, suggesting improvements, and asking questions to grow technically.
  • Able to interact effectively with technical colleagues (Developers, Data Scientists) and to explain technical issues.
  • Logical reasoning to help diagnose pipeline failures and resolve complex data engineering problems.
  • Comfortable working in dynamic, fast-paced environments, adapting easily to change and focusing on continuous improvement.

Benefits

  • Caju Benefits Card (R$ 500.00): Flexible balance you can use as you prefer: meals, groceries, home office, culture, and mobility!
  • Remote Work — Work from anywhere in Brazil! Enjoy the freedom to work from anywhere in Brazil with flexibility and comfort.
  • SulAmérica Life Insurance.
  • Online consultations with specialists via Conexa Saúde — telemedicine.
  • Extended Year-End Break: Celebrate the holidays with more peace of mind! Enjoy an extended period to recharge with family and friends.
  • Birthday day off: Take a special day off during your birthday month!
  • Continuous Professional Development: Access leading platforms like LinkedIn Learning, plus an annual allowance for courses and training in your area.
  • Training in Brazilian Sign Language (Libras): Learn this important language for our community!
  • English Pass: English language learning to help you continue advancing your career!
  • Work equipment provided as part of your onboarding kit.

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