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Communication Data Science Jobs (NOW HIRING)

AD, Data Science

Bellevue, WA · On-site +1

$189K - $296K/yr

Associate Director, Data Science Bellevue, WA - Merchandising - Full time - R29785 What you'll do ... and the ability to communicate insights effectively to both technical and non-technical ...

... · Communicate complex data insights and findings to non-technical stakeholders through ... Knowledge & Qualifications · Master of Science in a relevant field such as Computer Science ...

... · Communicate complex data insights and findings to non-technical stakeholders through ... Knowledge & Qualifications · Master of Science in a relevant field such as Computer Science ...

... • Communicate complex data insights and findings to non-technical stakeholders through ... Knowledge & Qualifications • Master of Science in a relevant field such as Computer Science ...

AD, Data Science

Bellevue, WA · On-site

$189K - $296K/yr

Associate Director, Data Science Bellevue, WA - Merchandising - Full time - R29785 What you'll do ... and the ability to communicate insights effectively to both technical and non-technical ...

They are seeking a Director of Data Science to lead the development and deployment of advanced AI ... to effectively communicate and work across different time zones Company : Novartis is a ...

As a Manager, Data Science, you will become a subject matter expert, defining projects and their ... Have excellent communication skills and the ability to convey information clearly to senior ...

As a Manager, Data Science, you will become a subject matter expert, defining projects and their ... Have excellent communication skills and the ability to convey information clearly to senior ...

They are seeking a Director of Data Science to lead the development and deployment of advanced AI ... to effectively communicate and work across different time zones Company : Novartis is a ...

KPMG is currently seeking a Manager, Data Science to join our Consulting practice. Responsibilities ... Communicate technical details of solution, including mathematical formulations, alternatives, and ...

KPMG is currently seeking a Manager, Data Science to join our Consulting practice. Responsibilities ... Communicate technical details of solution, including mathematical formulations, alternatives, and ...

Skilled at teaching the full data science workflow from question formulation through insight communication. Guides students through data cleaning with Pandas, exploratory analysis with visualization ...

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Communication Data Science information

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$41.5K

$142.5K

$201K

How much do communication data science jobs pay per year?

As of Jun 6, 2026, the average yearly pay for communication data science in the United States is $142,460.00, according to ZipRecruiter salary data. Most workers in this role earn between $118,500.00 and $166,500.00 per year, depending on experience, location, and employer.

What is the difference between Communication Data Science vs Data Analyst?

AspectCommunication Data ScienceData Analyst
Required SkillsData analysis, communication, storytelling, programming (Python/R), statisticsData analysis, Excel, SQL, visualization tools, basic statistics
Work EnvironmentCross-functional teams, presenting insights to stakeholders, data-driven projectsData reporting, dashboard creation, data cleaning, and analysis
Industry UsageTech, marketing, finance, consulting, where communicating insights is keyBusiness intelligence, finance, healthcare, retail

Communication Data Science focuses on analyzing data and effectively communicating insights to non-technical audiences, combining technical skills with storytelling. Data Analysts primarily perform data cleaning, analysis, and visualization to support decision-making. Both roles require analytical skills, but Communication Data Science emphasizes communication and presentation skills more heavily.

What is Communication Data Science?

Communication Data Science is an interdisciplinary field that combines data analysis, statistics, and computational methods with communication studies. Professionals in this field use data-driven techniques to analyze, interpret, and improve communication processes, including media trends, social networks, and audience engagement. They often work with large datasets to uncover insights about how information spreads, how messages are received, and how communication strategies can be optimized. This field is essential in today's data-driven world, helping organizations make informed decisions about their communication efforts.

How does a Communication Data Scientist typically collaborate with marketing and public relations teams?

A Communication Data Scientist often works closely with marketing and PR teams to analyze audience engagement, optimize messaging strategies, and measure the effectiveness of communication campaigns. This collaboration involves sharing analytical insights, recommending data-driven content adjustments, and developing predictive models to forecast campaign outcomes. Regular meetings and cross-functional teamwork are common, ensuring that data insights directly inform creative and strategic decisions. This dynamic environment fosters both technical and interpersonal skill development, making it ideal for those who enjoy bridging data analysis with impactful communication.

Is data science dead in 10 years?

Data science, including roles like communication data scientists, is expected to remain relevant over the next decade due to ongoing growth in data-driven decision making. Advances in automation and AI tools may change some tasks, but skills in statistical analysis, programming, and communication will continue to be valuable in the field.

What are the key skills and qualifications needed to thrive as a Communication Data Scientist, and why are they important?

To thrive as a Communication Data Scientist, you need expertise in data analysis, statistics, and a background in communications or related fields, typically supported by a relevant degree. Familiarity with tools such as Python or R, data visualization platforms, and analytics software like Tableau or Power BI is essential. Strong storytelling, collaboration, and presentation skills help translate complex data insights into actionable communication strategies. These skills enable professionals to bridge the gap between data and effective messaging, driving informed decision-making within organizations.
Infographic showing various Communication Data Science job openings in the United States as of May 2026, with employment types broken down into 73% Full Time, 23% Part Time, 2% Contract, and 2% Nights. Highlights an 74% Physical, 3% Hybrid, and 23% Remote job distribution, with an average salary of $142,460 per year, or $68.5 per hour.

Associate Director, Data Science

Princeton University

Princeton, NJ • On-site

$62K - $62K/yr

Full-time

Posted 7 days ago


Princeton University rating

9.0

Company rating: 9.0 out of 10

Based on 26 frontline employees who took The Breakroom Quiz

19th of 532 rated colleges and universities


Job description

Overview

As part of University Advancement Data Strategy and Innovation team, the role of the Associate Director, Data Science is to turn data into tactical information and knowledge by applying statistical, algorithmic, mining and visualization techniques. Data Strategy and Innovation plays a critical strategic role within Advancement, providing the analytical framework, data architecture, application development, and tools for data-driven decision making at all levels of the organization.

The person in this role should be a creative thinker and propose innovative ways to look at problems that can be used to make sound organizational decisions. The Associate Director, Data Science will need to be able to present their findings and communicate data in ways that can be easily understood by their business counterparts. Working with the department Executive Director, this role will supervise the activities of the data science team and provide management of day to day functional operations. This position is a hands-on role, requiring active involvement in day-to-day technical operations, problem-solving, and project execution in addition to management responsibilities.In addition, this position will serve as a liaison to other teams within University Advancement - acting as a lead and driving strategic planning to successfully execute analytics strategies and solutions in support of the University fundraising and engagement operations.

Responsibilities

Statistical Modeling and Technical Exploration 

  • Utilizing a combination of business focus, strong analytical and problem-solving skills and programming knowledge, drive new innovations and data exploration
  • Develop recommendation engines or automated lead scoring systems to drive our prospect management strategy and marketing segmentation, utilizing machine learning techniques
  • Work with structured data and drive innovation in unstructured data architecture and analysis
  • Work with statistical programming language, like R or Python, and database querying language like PL/SQL
  • Utilize innovative approaches to drive knowledge, incorporate and promote a big data environment.
  • Identify what data is available and relevant, including internal and external data sources, leveraging new data collection processes such as social media and web analytics

Communication, Mentoring and Analytics Implementation 

  • Work with business users to define desired outcomes and business requirements of analyses, data visualization and other reporting
  • Provide expertise on mathematical concepts for broader applied analytics and inspire the adoption of advanced analytics and data science across the Advancement Office
  • Describe findings or the way techniques work to audiences, both technical and non-technical, effectively using presentation tools such as data visualization, PowerPoint and documentation to drive strategic decision making and understanding of business analytics at all levels of the organization
  • Assist in addressing daily operational questions as needed, identify critical process improvement areas and collaborate in developing procedures and solutions for enhancing a high level of customer service

Staff Management 

  • Serve as the team lead for projects and priorities of the data science team, working closely with the Executive Director, Prospect, Engagement, and Data Strategy to ensure projects are aligned with department and Advancement priorities
  • Responsible for the hiring and professional development of staff including training, mentoring, and identifying goals, objectives and metrics
  • Responsible for performance management of staff and monitoring of activity and metrics
  • Other related tasks as assigned

Best Practices & Strategy 

  • Working closely with Data Strategy and Innovation team members, conceive of and contribute to strategies and best practices in maintaining a comprehensive, reliable, and innovative data environment
  • Review and recommend use of new technologies, vendor services and information sources. Keep abreast of news and relevant industry trends in support of the Office of Advancement
  • Develop and maintain proficiency in using advanced analytic and database tools, internet resources, in-house data, and other references
Qualifications
  • 7+ years of professional experience required in an analytical or information specialist role within an academic, nonprofit, corporate or consulting setting.
  • Deep understanding of statistical and predictive modeling concepts, machine-learning approaches, clustering and classification techniques, and recommendation and optimization algorithms.
  • Keen desire to solve business problems, and to find patterns and insights within structured and unstructured data.
  • Expert in analyzing large, complex, multi-dimensional datasets with a variety of tools.
  • Accomplished in the use of statistical analysis environments such as R, MATLAB, SPSS or SAS.
  • Experience with BI tools such as Tableau.
  • Having a good understanding of relational databases, warehouse design and architecture principles.
  • Familiarity with big data frameworks (e.g., such as Hadoop, Hive, Spark).
  • Good scripting and programming skills (e.g. familiarity with SQL, Python, Java).
  • Strong foundation in statistical, mathematical, predictive modeling as well as business strategy skills to build the algorithms necessary to ask the right questions and find effective answers.
  • Familiar with disciplines such as: natural language processing, machine learning, conceptual modelling, statistical analysis, predictive modeling and hypothesis testing.
  • Able to create examples, prototypes, demonstrations to help management better understand the work.
  • Able to work autonomously.
  • Proficiency at planning and setting meaningful objectives to meet office goals. Ability to articulate and promote goals and implement strategic plans.
  • Education: Bachelor's Degree in operations research, applied statistics, data mining, machine learning, or a related quantitative discipline required.

Preferred:

  • Knowledge of Princeton's mission
  • Experience in higher education
  • Master's degree or Ph.D. strongly preferred
  • Understanding of philanthropy (mission, practice, trends) and fundraising practices (the development cycle, prospect management policies and practices) preferred.

Princeton University is an Equal Opportunity Employer and all qualified applicants will receive consideration for employment without regard to age, race, color, religion, sex, sexual orientation, gender identity or expression, national origin, disability status, protected veteran status, or any other characteristic protected by law.

The University considers factors such as (but not limited to) scope and responsibilities of the position, candidate's qualifications, work experience, education/training, key skills, market, collective bargaining agreements as applicable, and organizational considerations when extending an offer. The posted salary range represents the University's good faith and reasonable estimate for a full-time position; salaries for part-time positions are pro-rated accordingly.

If the salary range on the posted position shows an hourly rate, this is the baseline; the actual hourly rate may be higher, depending on the position and factors listed above.

The University also offers a comprehensive benefit program to eligible employees. Please see this link for more information.

Standard Weekly Hours36.25Eligible for OvertimeNoBenefits EligibleYesProbationary Period180 daysEssential Services Personnel (see policy for detail)NoPhysical Capacity Exam RequiredNoValid Driver's License RequiredNo Experience LevelDirector#LI-JJ1Salary Range$145,000 to $160,000Employment Type: FULL_TIME

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