Azərbaycan Yerüstü Nəqliyyat Agentliyi

Senior Data Scientist (Digital Twin)

Bu gün

172

Təsvir

  • Design, implement, and optimize advanced data processing workflows on large-scale datasets using Python, with a strong emphasis on data-wrangling libraries (such as pandas and numpy) and geo-analytics libraries (such as geopandas and shapely)
  • Lead the identification, acquisition, validation, and integration of raw datasets to enhance model performance and business insights
  • Develop, deploy, and continuously refine predictive models and machine learning algorithms to support travel demand forecasting and strategic decision-making
  • Define, calibrate, and optimize key parameters for demand forecasting systems, ensuring model robustness and accuracy
  • Support the modeling team in the setup, execution, and analysis of simulations across multiple demand and service scenarios, integrating geo-spatial analytics into the workflow and producing high-quality outputs for GIS-based decision-support tools
  • Lead scenario modeling and sensitivity analyses to assess the impact of different mobility policies and service configurations on transit demand
  • Collaborate on the development and enhancement of public transport network design and scheduling optimization models (including timetabling solutions)
  • Conduct advanced exploratory data analysis and develop impactful visualizations and dashboards using tools such as Tableau and Python visualization libraries (e.g., Plotly, Seaborn, Matplotlib)
  • Act as a data science advisor to cross-functional teams, translating business needs into analytical solutions and ensuring data-driven decision support

Tələblər

  • Advanced proficiency in Python programming (or C/C++), with deep knowledge of Python data manipulation libraries (pandas, geopandas) and scientific computing and machine learning libraries (such as Scikit-learn, SciPy, LightGBM, and XGBoost)
  • Demonstrated practical experience in data cleansing, transformation, advanced analytics, and data visualization, using tools such as Tableau or Python-based visualization frameworks
  • Strong expertise in statistical methods and quantitative problem-solving, with practical experience in developing demand forecasting models using techniques such as regression analysis, discrete choice modeling, and advanced curve fitting on real-world datasets
  • Solid experience in network design and scheduling optimization, with practical application of network flow models, linear programming (LP), and mixed-integer programming (MIP) methodologies
  • Good understanding of parallel and distributed computing principles for handling large-scale data processing and model training tasks
  • Hands-on experience with geo-spatial analytics, GIS tools, and familiarity with transport demand modeling and simulation software (e.g., PTV Visum, Aimsun) is considered a strong advantage
  • In-depth knowledge of the transportation and mobility industry, with the ability to translate complex business and operational challenges into data-driven analytical solutions
  • Excellent communication and collaboration skills, with the ability to work effectively in cross-functional and multidisciplinary teams
  • Fluency in English is mandatory; proficiency in Russian is considered an asset
  • Advanced Degree (Master's or Ph.D. preferred) in quantitative science such as Data Science, Statistics, Operations Research, Computer Science, or Industrial Engineering
  • At least 3–5 years of hands-on experience in data science, advanced data analytics, or predictive modeling, preferably applied to transportation, mobility, or network optimization domains

Vakansiya haqqında

Son tarix

June 15, 2025

Paylaşılıb

aprel 30, 2025

Vakansiya növü

Tam ştat

Kateqoriya

Elm, Texnologiya və Mühəndislik