Post Job Free
Sign in

Graduate Trainee - Data Engineer

Company:
Emirates NBD
Location:
Dubai, United Arab Emirates
Posted:
April 16, 2024
Apply

Description:

Graduate Trainee - Data Engineer

Bedaya Training Program is a 12-month introductory workplace program for Emirati university graduates. By rotating through different departments and completing complimentary classroom training, you will gain hands-on experience and build critical skills to then transition into one of our targeted roles.

Bedaya prepares you for a long and successful career with us. After completing the program which includes a combination of on-the-job and classroom training, you’ll be offered a permanent position with us, tailored to your skills, experience and career ambitions. Whether you transition into our major Retail or Corporate Banking departments, our emerging tech teams like our Digital Office, Agile divisions or Advanced Analytics unit, or decide our high-growth subsidiaries like Liv. is for you, the sky is the limit.

It’s our job to help you get there!

Requirements:

* We’re not looking for candidates; we’re seeking trailblazers – Computer Science fresh graduates ready to infuse the banking world with energy, passion, and innovative spirit. Familarity with Python programming and experience with PySpark. Passion for data structures, algorithms, and software design principles. As well as, big data technologies such as Hadoop, Spark, and Hive.

It’s not just a program, it’s a transformative experience tailored just for you!

As a Graduate Trainee - Data Engineer, you will be responsible for developing and implementing scalable data processing solutions using PySpark, a powerful open-source data processing framework. You will work closely with our Senior/ Lead Data Engineers, Data Scientists and Software Engineers to build efficient and reliable data pipelines that can process large datasets.

Role & Responsibilities:

* Design and Develop PySpark-Based Data Pipelines:

You will design, develop, and maintain PySpark-based data pipelines for processing large datasets. You will write efficient and optimized PySpark code to perform data transformations and manipulations. You will ensure that the data pipelines are scalable, reliable, and efficient.

* Collaborate with Data Scientists and Analysts:

You will work closely with data scientists & analysts to understand their data needs and develop solutions that enable them to gain insights from data. You will work with senior and lead data engineers and help them to extract, transform, and load data from various sources and perform exploratory data analysis to identify patterns and insights.

* Perform Exploratory Data Analysis:

You will participate and perform exploratory data analysis to identify patterns and insights that can help in making informed decisions. You will use various statistical and visualization techniques to identify trends, correlations, and anomalies in the data, as needed.

* Develop and Maintain Data Quality Checks:

You will develop and maintain data quality checks to ensure the accuracy and completeness of data. You will monitor the health of the data pipelines and ensure that they are running smoothly.

* Integrate Data Pipelines into Production Systems:

You will work with software engineers to integrate data pipelines into production systems. You will ensure that the data pipelines are integrated seamlessly and that they meet the performance and scalability requirements of the production systems.

* Apply Knowledge of Distributed Computing:

You will apply basic knowledge of distributed computing to design and optimize data processing solutions that can handle large volumes of data. You will understand the concepts of distributed computing and their implications on data processing.

* Understand and Follow Software Lifecycle:

You will understand and follow the software lifecycle to develop, test, and deploy data processing solutions. You will follow best practices in software engineering to ensure that the solutions are reliable, maintainable, and scalable.

Apply