Full-Time

Data Scientist

Confirmed live in the last 24 hours

WGU

WGU

Compensation Overview

$95.9k - $143.8kAnnually

+ Bonus

Mid

Salt Lake City, UT, USA

Category
Data Science
Data Analysis
Data & Analytics
Required Skills
Power BI
Agile
Python
Data Science
R
Git
SQL
Visio
Tableau
Natural Language Processing (NLP)
Data Analysis
Requirements
  • Bachelor's Degree in a related discipline
  • 3 years of related experience in Data Analysis, Business Intelligence, Data Science, Statistics, Decision Intelligence, Research, Learning Science, or Behavioral/Cognitive Psychology.
  • Advanced SQL proficiency, with experience writing queries and subqueries, modifying data (INSERT, UPDATE, DELETE), creating views, and knowledge of the different join types, filtering, sorting, aggregation, window functions, common table expressions (CTE), and performance tuning.
  • Ability to interpret and design models that describe how data relate to one another and to the properties of the real-world entities they represent.
  • Familiarized with versioning tools in the context of CI/CD (e.g., Github) and deploys models using the university’s machine learning operations (MLOps) self-service capabilities.
  • Highly proficient and experienced in using tools like Tableau and Power BI to present data and information utilizing charts, graphs, and maps, in ways that make it easy to understand trends, patterns, and outliers.
  • Experience using Python, R, and/or Natural Language Processing in an ML environment, requiring minimal supervision.
  • Skilled at selecting and deploying methods and techniques like A/B Testing.
  • Comfortable with common project management methodologies and frameworks (e.g., Waterfall, Agile, SDLC).
  • Proficient in the MS office suite, including advanced Excel knowledge.
  • Proficient in flowchart and diagramming tools like Miro, Visio, Lucidchart, and similar applications.
  • Ability to apply sound judgment, systems-thinking, and analytical skills to assess risks, perform root-cause analyses, make recommendations, and drive decisions that contribute to the achievement of the university’s objectives.
  • Ability to perform assigned tasks with high levels of autonomy, reliability, self-direction, and with a bias for action. Manages conflicting and concurrent activities with sporadic support from their leader(s).
  • Knowledgeable of the university’s most relevant KPIs and the drivers that affect them.
Responsibilities
  • Documents data and analytics needs in projects of medium/high complexity with a student and equity-centered lens, collaborating with peers, cross-functional partners, faculty staff, and leaders. Translates user stories into technical requirements.
  • Sets and manages expectations about analytics tasks and activities through clear, timely, and effective communication with partners and stakeholders.
  • Identifies adequate data sources and data sets to evaluate hypotheses and produce forecasts.
  • Analyzes large data sets from both structured and unstructured sources and develops statistical and predictive models.
  • Collaborates with Data Engineering in the development of ETL/ELT processes and data pipelines.
  • Identifies, investigates, and solves complex data issues, contributing to the accuracy, completeness, consistency, timeliness, and validity of the university’s data.
  • Utilizes software, scripts, and algorithms to perform complex data-related tasks (e.g., importing, cleaning, transforming, analyzing, displaying) without human intervention.
  • Combines data analysis, visualization, and narrative structures to convey information in compelling ways that instigate deliberate action.
  • Selects and deploys a variety of mathematical models, forecasting methods (e.g., time series, inferential, regression), descriptive statistics, and/or classification algorithms to make predictions and identify relationships based on limited sets of data.
  • Conveys information effectively to peers, partners, and senior leaders, using a variety of resources and formats (synchronous and asynchronous, verbal and written) such as e-mails, presentations, meeting, and workshops.
  • Creates and organizes information about processes, projects, operations, data assets, and insights from analyses, making it accessible in ways that increase the university’s knowledge and efficiency.
  • Writes and interprets technical documentation (e.g. Entity-Relationship, Conceptual, Logical, and Physical data models).
  • Contributes actively to the enrichment of the university’s data management platforms (e.g., data dictionaries, catalogs, etc.).
  • Tracks and reports own progress, dependencies, and challenges diligently.
  • Designs small-scale solutions and collaborates effectively with other technical specialists (e.g., data engineers) in the construction of data products, systems, and applications.
  • Understands and abides by the relevant policies and methods to access, use, transform, store, and delete data in responsible, secure, and compliant ways.
  • Works actively in improving own skills and knowledge through internal and external, formal and informal, structured and unstructured learning. Is a lifelong learner and embodies a growth mindset.
  • Performs other job-related duties as assigned.

Company Stage

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Total Funding

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Headquarters

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Founded

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