Middle Data Scientist
Required work experience: not required
Full-time, full day
Responsibilities include:
  • Developing and implementing complex machine learning algorithms to enhance products and services.
  • Analyzing large volumes of data and creating predictive models to assist in decisionmaking.
  • Collaborating with other departments to identify important questions and develop appropriate data analysis strategies.
  • Presenting complex technical concepts to a wide audience.
Our ideal candidate should have:
  • Bachelor's or Master's degree in computer science, statistics, mathematics, or related field.
  • Minimum of 2 years of experience in Data Science.
  • Proficiency in Python and major data processing (numpy, pandas) and machine learning (scikitlearn, TensorFlow) libraries.
  • Experience with large datasets and SQL databases.
  • Knowledge of statistical analysis and predictive modeling.
  • Strong data visualization skills, experience with libraries such as Matplotlib or Seaborn.
  • Ability to work in a team, excellent communication skills.
Bonus Skills:
  • Experience in the telecommunications sector.
  • Experience with Spark/Hadoop.
  • Knowledge of BI systems.
Perks and Benefits include:
  • Hybrid work format and flexible start to the workday.
  • Professional development opportunities: participation in meetups, trainings, conferences, demo days, and hackathons.
  • Additional 4 days of vacation — totaling 28 calendar days per year.
  • Annual bonus based on KPI achievements.
  • Corporate mobile communication.
  • Voluntary medical insurance with dental care and medication coverage, with the option to add two close relatives for free.
  • Discounted and installment fitness subscriptions.
  • Monetary compensation for using a personal laptop.
  • Online platform for free psychological assistance.
  • Access to the corporate online library MyBook.
Join us!
Send your resume
Your resume is already on its way to our recruiters
We are reviewing it and will definitely get back to you if your experience fits our needs.
Meanwhile, keep an eye on the space of opportunities