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Data Analyst / Data Scientist (Remote)

Haims Motors
Full-time
Remote
United States

Job role:


As a data analyst, you will be responsible for compiling actionable insights from data and assisting program, sales and marketing managers build data-driven processes. Your role will involve driving initiatives to optimize for operational excellence and revenue.






Responsibilities:



  • Ensure that data flows smoothly from source to destination so that it can be processed

  • Utilize strong database skills to work with large, complex data sets to extract insights

  • Filter and cleanse unstructured (or ambiguous) data into usable data sets that can be analyzed to extract insights and improve business processes

  • Identify new internal and external data sources to support analytics initiatives and work with appropriate partners to absorb the data into new or existing data infrastructure

  • Build tools for automating repetitive asks so that bandwidth can be freed for analytics

  • Collaborate with program managers and business analysts Β to help them come up with actionable, high-impact insights across product lines and functions

  • Work closely with top management to prioritize information and analytic needs






Requirements:



  • Bachelors or Masters in a quantitative field (such as Engineering, Statistics, Math, Economics, or Computer Science with Modeling/Data Science), preferably with work experience of over [X] years.

  • Ability to program in any high level language is required. Familiarity with R and statistical packages are preferred.

  • Proven problem solving and debugging skills.

  • Familiar with database technologies and tools (SQL/R/SAS/JMP etc.), data warehousing, transformation and processing. Work experience with real data for customer insights, business and market analysis will be advantageous.

  • Experience with text analytics, data mining and social media analytics.

  • Statistical knowledge in standard techniques: Logistic Regression, Classification models, Cluster Analysis, Neural Networks, Random Forests, Ensembles, etc.