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Data Science Intern ~ Mozn  ~ Riyadh, Saudi Arabia



About the job

Mozn is a rapidly growing and leading data science & product development firm based in Riyadh with a proven track record of excellence in supporting and growing the analytics ecosystem in Saudi Arabia.

Mozn is a trusted analytics partner for the largest government organizations in Saudi Arabia, as well as many large corporations and startups.
We are in a critical stage of scaling the company to build institutional analytics knowledge within Mozn and Saudi Arabia. It is an exciting time to work in Saudi Arabia; through Vision 2030, the rate of social and industrial change is staggering. We are searching for a strategic and inquisitive Data Scientist.
As a member of Mozn’s Data Science team, you will work with cross-disciplinary teams to identify the problems to be solved, specify the problems in mathematical and statistical terms, scope out the project/product in collaboration with your team and external stakeholders, and then go about answering the identified questions. You find insights that spur teams and stakeholders to improve their business/product and drive value for internal and external stakeholders.

As a Data Science Intern, your daily workload might include:

  • Collaborate with the client and Data Science team to identify business needs and define project goals and objectives.
  • Assist with analyzing data, statistical analysis, and the development of machine learning models.
  • Support with the design and execution of experiments and simulations to detect patterns, trends, and insights in data.
  • Handel the development of data visualizations and dashboards to communicate results and insights to stakeholders.
  • Participate in team meetings and discussions, share progress updates, and provide suggestions for improving project outcomes.
  • Assist with the data preparation process, including data cleaning, feature engineering, and data transformation.
  • Research new data sources, technologies, and techniques to improve the quality and accuracy of data analyses and models.
  • Participate in company-organized training programs, learning opportunities, and sessions to improve skills in the Data Science field.
  • Maintain confidentiality and security of the client’s data and information.


Our target profile is candidates with…

  • Bachelor’s Degree in Computer Science, Mathematics, Statistics, Engineering, or related fields.
  • Proficiency in programming languages such as Python, and familiarity with database technologies like SQL and NoSQL
  • Knowledge of machine learning algorithms, and experience in working with data visualization tools like PowerBI.
  • Strong problem-solving skills, including the ability to think creatively and critically analyze data to identify trends and insights
  • Effective verbal and written communication skills to articulate complex technical concepts to both technical and non-technical audiences.
  • Ability to work independently and collaboratively in a team environment
  • Ability to multitask, and work under pressure in a fast-paced environment
  • Exceptional attention to detail, time management, and organizational skills.
  • Must not be afraid to be turned into a meme.
  • Must be ready to compete with great board game champions
  • Must be Humble, Excellent, Relevant with a high sense of Ownership.


We think you’ll enjoy working at Mozn. Here’s why:

  • You will be at the forefront of an exciting time for the Middle East, joining a high-growth rocket-ship in an exciting space.
  • You will be given a lot of responsibility and trust. We believe that the best results come when the people responsible for a function are given the freedom to do what they think is best.
  • You can enjoy being in an enabling culture so that you can focus on what you do best
  • You will enjoy a fun and dynamic workplace working alongside some of the greatest minds in AI.
  • We believe strength lies in difference, embracing all for who they are and empowered to be the best version of themselves