2

Parttime Computer Science Jobs in Bridgewater, NJ

Researcher (Part-time)

New York, NY ยท On-site

$26.37/hr

Description Part time Research Scholar Biomedical Engineering New York University Faculty in the ... computer, or aerospace engineering, mathematics, computer science, or related fields. The ...

next page

Showing results 1-20

Parttime Computer Science information

See Bridgewater, NJ salary details

$37.3K

$66.9K

$124.2K

How much do parttime computer science jobs pay per year?

As of Jun 10, 2026, the average yearly pay for parttime computer science in Bridgewater, NJ is $66,926.00, according to ZipRecruiter salary data. Most workers in this role earn between $51,600.00 and $71,000.00 per year, depending on experience, location, and employer.

What is the difference between Parttime Computer Science vs Parttime Software Developer?

AspectParttime Computer ScienceParttime Software Developer
Required CredentialsTypically a degree or coursework in computer scienceOften a degree in computer science or related field, sometimes self-taught
Work EnvironmentAcademic settings, research labs, or online platformsTech companies, startups, freelance projects
Employer & Industry UsageUniversities, research institutions, online education platformsSoftware firms, IT services, freelance clients
Common Search & Comparison IntentUnderstanding academic or research roles in computer scienceFinding part-time coding or software development jobs

Parttime Computer Science generally involves academic, research, or educational roles requiring foundational knowledge in computer science. In contrast, Parttime Software Developer focuses on coding, application development, and software projects, often in industry settings. Both roles may require similar credentials but differ in work environment and job focus.

What cities near Bridgewater, NJ are hiring for Parttime Computer Science jobs? Cities near Bridgewater, NJ with the most Parttime Computer Science job openings:

Remote | Data Science & Analytics Workflow Consultant -- $75-$130/hour

24-MAG

New York, NY โ€ข Remote

$75 - $130/hr

Part-time

Posted 14 days ago


Job description

We are sharing a specialised part-time consulting opportunity for professionals experienced in data science, analytics engineering, business intelligence, SQL analysis, experimentation, data engineering, and structured data workflow review.

This role supports current and upcoming remote consulting opportunities focused on structured data science review, analytics workflow analysis, business intelligence assessment, experimentation review, data pipeline evaluation, metric documentation, and high-quality project execution. Selected professionals will apply their data and analytics expertise to review realistic technical scenarios, evaluate analytical requirements, prepare structured written outputs, and support accurate, evidence-based data workflow tasks.

Key Responsibilities

Professionals in this role may contribute to:

Analytics, BI & Metric Review

  • Review data scenarios involving SQL analysis, ad-hoc business questions, dashboard specifications, metric definitions, funnel analysis, cohort analysis, and reporting outputs
  • Evaluate analytical outputs against source data, defined business logic, expected numerical results, and documented requirements
  • Support structured review of SQL queries, BI dashboards, dashboard specs, metric documentation, and analytical summaries
  • Identify missing assumptions, query issues, metric inconsistencies, reporting gaps, and expected analysis outcomes

Experimentation & Data Science Support

  • Review experimentation scenarios involving A/B test design, readouts, lift calculations, statistical significance, guardrail metrics, and decision criteria
  • Evaluate experiment outputs against defined metrics, expected values, testing assumptions, and analytical standards
  • Support structured review of data science workflows, Python-based analyses, statistical outputs, and business interpretation materials
  • Prepare clear written explanations for data science and analytics decisions based on source materials and verifiable criteria

Data Engineering & Pipeline Workflow Review

  • Review data engineering scenarios involving ETL/ELT pipelines, dbt models, data quality monitoring, warehouse schema design, Airflow or Dagster DAGs, and pipeline documentation
  • Evaluate pipeline outputs, schemas, transformations, orchestration logic, and data quality checks against documented requirements
  • Support structured review of data artifacts such as dbt models, schema diagrams, data contracts, test suites, DAGs, and warehouse documentation
  • Maintain accuracy, consistency, and professional judgment across submitted work

Ideal Profile

Strong candidates may have:

  • 3+ years of experience as a data scientist, analytics engineer, BI analyst, data analyst, product analyst, data engineer, decision scientist, or related data professional
  • Working fluency in at least two areas such as advanced SQL, dbt, data warehousing, Snowflake, BigQuery, Redshift, experimentation, A/B testing, pipeline orchestration, metric modeling, or Python for analysis
  • Familiarity with tools such as SQL, Python, dbt, Airflow, Dagster, Snowflake, BigQuery, Redshift, Databricks, Looker, Tableau, Mode, Hex, Metabase, Power BI, or similar data and analytics systems
  • Comfort reading and preparing data artifacts such as SQL queries, dbt models, experiment readouts, dashboard specs, schema diagrams, metric definitions, and pipeline documentation
  • Strong written communication skills and ability to explain data decisions clearly
  • Ability to follow structured instructions and produce evidence-based work

Educational Background

  • A degree or professional background in data science, statistics, mathematics, computer science, economics, engineering, business analytics, information systems, or a related quantitative field is helpful
  • Equivalent practical experience in data science, analytics engineering, business intelligence, experimentation, data engineering, or data workflow review is also highly relevant

Nice to Have

  • Experience in product, consumer, SaaS, marketplace, fintech, e-commerce, or data-mature company environments
  • Familiarity with experimentation frameworks, metric governance, data quality monitoring, warehouse design, pipeline orchestration, or modern data stack workflows
  • Experience preparing or reviewing SQL queries, dbt models, experiment readouts, dashboards, schema diagrams, funnel analyses, cohort reports, or data documentation
  • Experience with Python-based analysis, statistical testing, data modeling, analytics engineering, or pipeline QA
  • Strong attention to detail in data-heavy, metric-heavy, and documentation-based technical environments

Why This Opportunity

  • Apply data science and analytics expertise to structured remote project work
  • Contribute to high-quality analytics review, experimentation assessment, BI documentation, and data pipeline workflow analysis
  • Work on flexible, project-based assignments aligned with your technical background
  • Use your data judgment in a focused, detail-oriented technical environment
  • Remote structure with competitive hourly compensation

Contract Details

  • Independent contractor role
  • Fully remote with flexible scheduling
  • Part-time commitment depending on project availability
  • Competitive rates between $75โ€“$130 per hour depending on expertise
  • Weekly payments via Stripe or Wise
  • Projects may be extended, shortened, or adjusted depending on scope and performance
  • Work will not involve access to confidential or proprietary information from any employer, client, or institution

About the Platform

This opportunity is available through 24-MAG LLC. We connect experienced professionals with remote consulting opportunities across technical, evaluation, and project-based workstreams.

By submitting this application, you acknowledge that your information may be processed by 24-MAG LLC for recruitment and opportunity matching in accordance with our Privacy Policy: https://www.24-mag.com/privacy-policy.