Data Engineering Training & Internship

Oeson Learning
Bristol
11 months ago
Applications closed

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Data Engineering Team Lead

About the Company:Oeson is a leading IT corporation globally recognized for its expertise in providing top-notch IT and Ed-tech services. Specializing in digital marketing, data science, data analytics, business analytics, cyber security, UI-UX design, web development, and app development, we are dedicated to innovation, excellence, and empowering talents worldwide.


About the Role:Oeson is seeking enthusiastic individuals who are looking to learn with us in the field of Data Engineering while working on live projects internationally. We are not just offering a flexible work environment but also offering to work with people in a global team all around from Oceania, Asia, Europe, & American continents.


Projects You Will Work On:

  • Data Warehousing
  • ETL (Extract, Transform, Load) Processes
  • Data Modelling and Database Management
  • Data Pipeline Development
  • Data Quality Assurance
  • Big Data Technologies (e.g., Hadoop, Spark)
  • Data Visualization


Roles & Responsibilities:

  • Collaborate with experienced data engineering professionals and global team members.
  • Participate in designing and implementing data warehousing solutions.
  • Develop and maintain ETL processes to ensure efficient data flow.
  • Contribute to data modelling efforts for optimized database structures.
  • Assist in building and maintaining data pipelines for real-time and batch processing.
  • Conduct quality assurance checks to ensure data accuracy and consistency.
  • Explore and utilize big data technologies for scalable data processing.
  • Create visually appealing data visualizations to communicate insights effectively.


Qualifications:

  • Currently pursuing a degree in Computer Science, Engineering, or related fields, demonstrating a strong commitment to continuous learning and professional growth.
  • Proficient in programming languages such as Python, Java, or SQL.
  • Familiarity with database management systems (e.g., MySQL, PostgreSQL).
  • Strong analytical and problem-solving skills, with attention to detail.
  • Excellent written and verbal communication skills, essential for effective collaboration and conveying complex concepts.
  • Ability to work independently and as part of a team, showcasing adaptability and strong teamwork capabilities.


Note:This position is unpaid. After submitting your application, our team will contact you to proceed with the application details and joining process.


Location:Remote, United Kingdom

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