bluedoor data·Job Postings API·bluedoor.sh ↗

HomeCompaniesMain Princeton Icims ComComputational Research Analyst

Computational Research Analyst

Main Princeton Icims Com · Princeton, NJ, US · Active · $76,000–$86,000 / hour · iCIMS

Job facts

FieldValue
CompanyMain Princeton Icims Com
TitleComputational Research Analyst
Normalized title-
Department / teamInformation Technology
LocationPrinceton, NJ, United States
Work model-
Employment typeFull Time
Salary$76,000–$86,000 / hour
Statusactive
ATS provideriCIMS
Posted / first seen2026-04-14 / 2026-05-31
Changed / last seen2026-06-01 / 2026-06-06

Related slices

PageWhat it containsOpen
Company jobsActive postings from Main Princeton Icims Com.Open
Company breakdownsRole, location, ATS, and work model facets for this company.Open
ATS provider jobsActive postings observed through iCIMS.Open
Provider filtered searchThe same provider as a filtered job collection.Open
City jobsActive postings in Princeton.Open
Department jobsActive postings in Information Technology.Open
Lifecycle eventsOpen, update, close, and reopen events for this posting.Open
Original postingCanonical source or apply URL captured from the ATS.Open

Linked records

CompanyMain Princeton Icims Com
Sourceb3fa7dae-27df-4ef4-b621-e2b771a00f56
ATS provideriCIMS

Description

Overview Profs. Sam Wang and Simon Levin perform research on aggregated decision-making through rule systems. This work includes research into electoral mechanisms including the voting rules, redistricting, and Electoral College. As part of these efforts, they are recruiting a Computational Research Analyst. The Computational Research Analyst will develop computational analysis of redistricting and voting rules, toward the goal of performing analytics and scholarship relevant to identifying the performance characteristics and inefficiencies of complex U.S. election systems. A main focus is translating the dimensionality of aggregated cognitive approaches of large populations of voters to their ballots, with the goal of going from modeling all the way to practical interpretability. The work will be made publicly available through peer-reviewed scientific scholarship as well as databases that may be of use to a variety of audiences. The work will include dissemination and archival of codebooks, scripts, map content, and analytics. Other work includes the investigation of electoral rules such as ranked-choice voting and other modifications, with the goal of quantifying functional impacts. Translation to general audiences is part of the work and will produce content that is understandable to nontechnical readers (for example see one publication, the Princeton Gerrymandering Project). This comes in addition to other scholarship in scientific, statistical, and law journals. This position is suitable for someone with graduate or postgraduate level competence in one or more relevant subject areas, including computational simulation, model testing, and geospatial analysis. The term of this appointment is 1 year, with the possibility of renewal based upon satisfactory performance and funding. Responsibilities Perform original computationally intensive research on ranked-choice voting and other proposed changes to U.S. electoral institutions. Maintain and expand a high-quality database of computationally driven analysis of redistricting plans for all 50 states combining census data, precinct-level results, and other information using Python (including numpy) and GIS software. Publish codebooks and datasets to allow public access to analysis, and to drive legal and academic scholarship. Coordinate with collaborators in several states. Qualifications Essential Qualifications: This position requires a Bachelor’s degree in Computer Science, Statistics, or related quantitative discipline and 1+ years of experience. Strong quantitative and programming background (Python, QGIS) A willingness to learn GIS software and other programs or tools necessary for the project Experience gathering and combining data from many disparate sources An interest in law, government, or democratic reform Ability to balance and work on several projects simultaneously and successfully Strong orientation toward teamwork and collaborative research Preferred Qualifications: Background in high-performance computing (C, C++, or a comparable language) is a plus. Excellent writing and verbal presentation skills are also highly desired. 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 Hours 36.25 Eligible for Overtime No Benefits Eligible Yes Probationary Period 180 days Essential Services Personnel (see policy for detail) No Physical Capacity Exam Required No Valid Driver’s License Required No Experience Level Associate #Ll-DP1 Salary Range $76,000 to $86,000

Full job record

Job ID4d5d612534e63d4cbf09c6de2f9ab9121c9f8ee2
Org IDf908eb05-d256-4d19-a609-e639d44fcb98
Source IDb3fa7dae-27df-4ef4-b621-e2b771a00f56
Board IDb3fa7dae-27df-4ef4-b621-e2b771a00f56
Providericims
Provider Job Key21709
TitleComputational Research Analyst
Normalized Title
Statusactive
Activeyes
Location TextPrinceton, NJ, US
DepartmentInformation Technology
Team
Employment Typefull_time
Workplace Type
Remote Policy
CountryUnited States
RegionNJ
CityPrinceton
Salary RawOverview Profs. Sam Wang and Simon Levin perform research on aggregated decision-making through rule systems. This work includes research into electoral mechanisms including the voting rules, redistricting, and Electoral College. As part of these efforts, they are recruiting a Computational Research Analyst. The Computational Research Analyst will develop computational analysis of redistricting and voting rules, toward the goal of performing analytics and scholarship relevant to identifying the performance characteristics and inefficiencies of complex U.S. election systems. A main focus is translating the dimensionality of aggregated cognitive approaches of large populations of voters to their ballots, with the goal of going from modeling all the way to practical interpretability. The work will be made publicly available through peer-reviewed scientific scholarship as well as databases that may be of use to a variety of audiences. The work will include dissemination and archival of codebooks, scripts, map content, and analytics. Other work includes the investigation of electoral rules such as ranked-choice voting and other modifications, with the goal of quantifying functional impacts. Translation to general audiences is part of the work and will produce content that is understandable to nontechnical readers (for example see one publication, the Princeton Gerrymandering Project). This comes in addition to other scholarship in scientific, statistical, and law journals. This position is suitable for someone with graduate or postgraduate level competence in one or more relevant subject areas, including computational simulation, model testing, and geospatial analysis. The term of this appointment is 1 year, with the possibility of renewal based upon satisfactory performance and funding. Responsibilities Perform original computationally intensive research on ranked-choice voting and other proposed changes to U.S. electoral institutions. Maintain and expand a high-quality database of computationally driven analysis of redistricting plans for all 50 states combining census data, precinct-level results, and other information using Python (including numpy) and GIS software. Publish codebooks and datasets to allow public access to analysis, and to drive legal and academic scholarship. Coordinate with collaborators in several states. Qualifications Essential Qualifications: This position requires a Bachelor’s degree in Computer Science, Statistics, or related quantitative discipline and 1+ years of experience. Strong quantitative and programming background (Python, QGIS) A willingness to learn GIS software and other programs or tools necessary for the project Experience gathering and combining data from many disparate sources An interest in law, government, or democratic reform Ability to balance and work on several projects simultaneously and successfully Strong orientation toward teamwork and collaborative research Preferred Qualifications: Background in high-performance computing (C, C++, or a comparable language) is a plus. Excellent writing and verbal presentation skills are also highly desired. 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 Hours 36.25 Eligible for Overtime No Benefits Eligible Yes Probationary Period 180 days Essential Services Personnel (see policy for detail) No Physical Capacity Exam Required No Valid Driver’s License Required No Experience Level Associate #Ll-DP1 Salary Range $76,000 to $86,000
Salary Min76,000
Salary Max86,000
Salary CurrencyUSD
Salary Periodhour
Source URLhttps://main-princeton.icims.com/jobs/21709/computational-research-analyst/job
Apply URLhttps://main-princeton.icims.com/jobs/21709/computational-research-analyst/job
First Seen At2026-05-31 18:45:51Z
Last Seen At2026-06-06 08:32:21Z
Last Checked At2026-06-06 08:32:21Z
Last Changed At2026-06-01 13:59:27Z
Inactive At
Source Posted At2026-04-14 04:00:00Z
Source Updated At2026-05-20 16:27:35Z
Raw Payload Uris3://job-postings-prod-raw-590183727216/raw/provider=icims/board=main-princeton.icims.com/date=2026-06-06/2026-06-06T08-32-17-975Z-e2cede686904ebd9cce9e33540e82eb90692536077fbe02fb9c48d4f3e2132b6.json
Event Fields
{
  "content_hash": "d880eb4aa2b02bdf7087d71ce758cf1124b3233d7a1e366db5707d27f84ab727",
  "source_hash": "55b3e56b298a1269e0e742fb23dc086e5743c001746003ebaa66eb2fc5ca4861",
  "last_changed_at": "2026-06-01T13:59:27.432Z",
  "active_status": "active"
}
Parsed Structured
{
  "language": "en",
  "location": {
    "raw": "Princeton, NJ, US",
    "city": "Princeton",
    "region": "NJ",
    "country": "United States",
    "is_remote": false,
    "confidence": 0.8
  },
  "salary_max": 86000,
  "salary_min": 76000,
  "inferred_at": "2026-06-06T08:32:21.444Z",
  "launch_scope": {
    "reason": "english_us_canada",
    "included": true,
    "language": "en",
    "location": {
      "raw": "Princeton, NJ, US",
      "city": "Princeton",
      "region": "NJ",
      "country": "United States",
      "is_remote": false,
      "confidence": 0.8
    },
    "countries": [
      "United States"
    ]
  },
  "remote_policy": null,
  "salary_period": "hour",
  "workplace_type": null,
  "salary_currency": "USD"
}
Extensions
{}
Native Structured
{
  "json_ld": {
    "url": "https://main-princeton.icims.com/jobs/21709/computational-research-analyst/job",
    "@type": "JobPosting",
    "title": "Computational Research Analyst",
    "@context": "http://schema.org",
    "datePosted": "2026-04-14T04:00:00.000Z",
    "description": "<h2>Overview</h2>\n<p>Profs. Sam Wang and Simon Levin perform research on aggregated decision-making through rule systems. This work includes research into electoral mechanisms including the voting rules, redistricting, and Electoral College. As part of these efforts, they are recruiting a Computational Research Analyst.</p>\n<p> </p>\n<p>The <strong>Computational Research Analyst</strong> will develop computational analysis of redistricting and voting rules, toward the goal of performing analytics and scholarship relevant to identifying the performance characteristics and inefficiencies of complex U.S. election systems. A main focus is translating the dimensionality of aggregated cognitive approaches of large populations of voters to their ballots, with the goal of going from modeling all the way to practical interpretability. The work will be made publicly available through peer-reviewed scientific scholarship as well as databases that may be of use to a variety of audiences.</p>\n<p> </p>\n<p>The work will include dissemination and archival of codebooks, scripts, map content, and analytics. Other work includes the investigation of electoral rules such as ranked-choice voting and other modifications, with the goal of quantifying functional impacts. Translation to general audiences is part of the work and will produce content that is understandable to nontechnical readers (for example see one publication, the Princeton Gerrymandering Project). This comes in addition to other scholarship in scientific, statistical, and law journals.</p>\n<p> </p>\n<p>This position is suitable for someone with graduate or postgraduate level competence in one or more relevant subject areas, including computational simulation, model testing, and geospatial analysis.</p>\n<p> </p>\n<p>The term of this appointment is 1 year, with the possibility of renewal based upon satisfactory performance and funding.</p>\n<h2>Responsibilities</h2>\n<ul>\n <li>Perform original computationally intensive research on ranked-choice voting and other proposed changes to U.S. electoral institutions.</li>\n <li>Maintain and expand a high-quality database of computationally driven analysis of redistricting plans for all 50 states combining census data, precinct-level results, and other information using Python (including numpy) and GIS software.</li>\n <li>Publish codebooks and datasets to allow public access to analysis, and to drive legal and academic scholarship.</li>\n <li>Coordinate with collaborators in several states. </li>\n</ul>\n<h2>Qualifications</h2>\n<p><strong>Essential Qualifications:</strong></p>\n<ul>\n <li>This position requires a Bachelor’s degree in Computer Science, Statistics, or related quantitative discipline and 1+ years of experience.</li>\n <li>Strong quantitative and programming background (Python, QGIS)</li>\n <li>A willingness to learn GIS software and other programs or tools necessary for the project</li>\n <li>Experience gathering and combining data from many disparate sources</li>\n <li>An interest in law, government, or democratic reform</li>\n <li>Ability to balance and work on several projects simultaneously and successfully </li>\n <li>Strong orientation toward teamwork and collaborative research</li>\n</ul>\n<p> </p>\n<p><strong>Preferred Qualifications:</strong></p>\n<ul>\n <li>Background in high-performance computing (C, C++, or a comparable language) is a plus. </li>\n <li>Excellent writing and verbal presentation skills are also highly desired.</li>\n</ul>\n<p> </p>\n<p>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.</p>\n<p> </p>\n<p>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.</p>\n<p> </p>\n<p>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.</p>\n<p> </p>\n<p>The University also offers a comprehensive benefit program to eligible employees. Please see this link for more information.</p>\n<h2>Standard Weekly Hours</h2>36.25\n<h2>Eligible for Overtime</h2>No\n<h2>Benefits Eligible</h2>Yes\n<h2>Probationary Period</h2>180 days\n<h2>Essential Services Personnel (see policy for detail)</h2>No\n<h2>Physical Capacity Exam Required</h2>No\n<h2>Valid Driver’s License Required</h2>No\n<h2> Experience Level</h2>Associate\n<h2></h2>#Ll-DP1\n<h2>Salary Range</h2>$76,000 to $86,000",
    "directApply": true,
    "jobLocation": [
      {
        "@type": "Place",
        "address": {
          "@type": "PostalAddress",
          "postalCode": "08542",
          "addressRegion": "NJ",
          "streetAddress": "Nassau Hall",
          "addressCountry": "US",
          "addressLocality": "Princeton",
          "postOfficeBoxNumber": "UNAVAILABLE"
        }
      }
    ],
    "validThrough": "2027-04-14T04:00:00.000Z",
    "employmentType": "FULL_TIME",
    "hiringOrganization": {
      "name": "Princeton University",
      "@type": "Organization",
      "sameAs": "https://www.princeton.edu/"
    },
    "occupationalCategory": "Information Technology"
  },
  "detail_meta": {
    "url": "https://main-princeton.icims.com/jobs/21709/computational-research-analyst/job?in_iframe=1",
    "http_status": 200,
    "content_type": "text/html;charset=UTF-8",
    "response_bytes": 47232,
    "compact_response_bytes": 6113,
    "original_response_bytes": 47232
  },
  "sitemap_job": {
    "id": "21709",
    "url": "https://main-princeton.icims.com/jobs/21709/computational-research-analyst/job",
    "slug": "computational-research-analyst",
    "lastmod": "2026-05-20T12:27:35-04:00"
  },
  "detail_errors": []
}
Get this page with API

Rendered from the bluedoor Job Postings API. Reproduce it:

GET https://api.bluedoor.sh/job-postings/v1/jobs/4d5d612534e63d4cbf09c6de2f9ab9121c9f8ee2?include=descriptionJSON
GET https://api.bluedoor.sh/job-postings/v1/orgs/f908eb05-d256-4d19-a609-e639d44fcb98JSON
GET https://api.bluedoor.sh/job-postings/v1/sources/b3fa7dae-27df-4ef4-b621-e2b771a00f56JSON
GET https://api.bluedoor.sh/job-postings/v1/jobs/4d5d612534e63d4cbf09c6de2f9ab9121c9f8ee2/eventsJSON