Data First Jobs

Fashion Dream

Data Scientist

Full Time · In Office · Houston, Texas (USA)

Posted Jun 14, 2026

  • Hiring: Data Scientist (United States)
  • We are currently seeking a talented and analytical Data Scientist to join our international team in the United States.
  • Position:
  • Data Scientist
  • Location:
  • United States
  • Job Type:
  • Full-Time / Part-Time
  • Remote / Hybrid Available
  • Responsibilities:
  • Analyze large and complex datasets to extract actionable insights
  • Develop predictive models and machine learning algorithms
  • Build data pipelines and support data-driven decision-making
  • Create dashboards, reports, and visualizations for stakeholders
  • Collaborate with engineering, product, and business teams
  • Improve data quality, model performance, and analytical processes
  • Requirements:
  • Strong proficiency in Python, SQL, and statistical analysis
  • Experience with machine learning, predictive modeling, and data mining
  • Familiarity with tools such as Pandas, NumPy, Scikit-learn, TensorFlow, or PyTorch
  • Experience with data visualization tools such as Tableau or Power BI is a plus
  • Strong analytical, problem-solving, and communication skills
  • Ability to explain complex insights to both technical and non-technical audiences
  • Benefits:
  • Competitive salary package
  • Flexible working environment
  • Remote and hybrid work opportunities
  • International career development opportunities
  • Exposure to cutting-edge AI and data science projects
  • Friendly and collaborative company culture
  • How to Apply:
  • Please send your CV/Resume and a brief self-introduction to our recruitment team.
  • Join us and help transform data into strategic insights and innovative solutions that drive business success!

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Data Scientist

Fashion Dream

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