Chaimae M'saad

Data Science Intern at Ventus Technologies GmbH
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Contact Information
Location
Oujda, Oriental, Morocco, MA
Languages
  • Arabic Native or bilingual proficiency
  • French Full professional proficiency
  • English Full professional proficiency
  • Chinese Elementary proficiency

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Experience

    • Germany
    • Software Development
    • 1 - 100 Employee
    • Data Science Intern
      • Mar 2023 - Present
    • France
    • IT Services and IT Consulting
    • 100 - 200 Employee
    • Data engineer Intern
      • Jul 2022 - Aug 2022

      • Designed and implemented a data platform on Microsoft Azure • Built SQL Azure datawarehouse using Azure Data Factory , Azure Databricks and Azure synapse Analytics • Vizualize data from Azure synapse using PowerBi • Designed and implemented a data platform on Microsoft Azure • Built SQL Azure datawarehouse using Azure Data Factory , Azure Databricks and Azure synapse Analytics • Vizualize data from Azure synapse using PowerBi

    • Morocco
    • Building Materials
    • 500 - 600 Employee
    • Data Scientist Intern
      • Aug 2021 - Sep 2021

      • Performed time series analysis to prove pattern like seasonality , trends using StatsModels package with ARIMA model forecasting • Utilized Python to implement supervised learning techniques ( Decision Tree , LSTM ) to predict the date when the vibration of grinder draft fan will exceed the danger threshold • Performed time series analysis to prove pattern like seasonality , trends using StatsModels package with ARIMA model forecasting • Utilized Python to implement supervised learning techniques ( Decision Tree , LSTM ) to predict the date when the vibration of grinder draft fan will exceed the danger threshold

Education

  • ENSAO
    Masters in Data science et cloud computing
    2020 - 2023
  • ENSAO
    Bachelor of Science in Engineering (BSE )
    2017 - 2020

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