bluedoor data·Job Postings API·bluedoor.sh ↗

HomeCompaniesUniversityhealthnetworkPostdoctoral Researcher (Machine Learning for Multimodal Healthcare AI)

Postdoctoral Researcher (Machine Learning for Multimodal Healthcare AI)

Universityhealthnetwork · Toronto, Ontario, Canada · Active · CAD 54,902–CAD 93,333 / year · SmartRecruiters

Job facts

FieldValue
CompanyUniversityhealthnetwork
TitlePostdoctoral Researcher (Machine Learning for Multimodal Healthcare AI)
Normalized title-
Department / teamResearch
LocationToronto, ON, Canada
Work model-
Employment typeFull Time
SalaryCAD 54,902–CAD 93,333 / year
Statusactive
ATS providerSmartRecruiters
Posted / first seen2026-04-15 / 2026-05-31
Changed / last seen2026-05-31 / 2026-06-06

Related slices

PageWhat it containsOpen
Company jobsActive postings from Universityhealthnetwork.Open
Company breakdownsRole, location, ATS, and work model facets for this company.Open
ATS provider jobsActive postings observed through SmartRecruiters.Open
Provider filtered searchThe same provider as a filtered job collection.Open
City jobsActive postings in Toronto.Open
Department jobsActive postings in Research.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

CompanyUniversityhealthnetwork
Source5938c452-4fff-41f3-acb4-529875223376
ATS providerSmartRecruiters

Description

UHN is Canada’s #1 hospital and the world’s #1 publicly funded hospital. With 10 sites and more than 44,000 Team UHN members, UHN consists of Toronto General Hospital, Toronto Western Hospital, Princess Margaret Cancer Centre, Toronto Rehabilitation Institute, The Michener Institute of Education and West Park Healthcare Centre. As Canada's top research hospital, the scope of biomedical research and complexity of cases at UHN have made it a national and international source for discovery, education and patient care. UHN has the largest hospital-based research program in Canada, with major research in neurosciences, cardiology, transplantation, oncology, surgical innovation, infectious diseases, genomic medicine and rehabilitation medicine. UHN is a research hospital affiliated with the University of Toronto. UHN’s vision is to build A Healthier World and it’s only because of the talented and dedicated people who work here that we are continually bringing that vision closer to reality. www.uhn.ca *REPOST* Union: Non-Union Number of Vacancies : 1 New or Replacement: New Site: Toronto General Hospital Research Department: Multi organ Transplant Reports to: Dr. Mamatha Bhat Hours: 37.5 Salary : $54,902 to $93,333 per year Shifts: Monday to Friday Status: Temporary Full-Time Closing Date: June 30, 2026 Position Summary We're seeking a Postdoctoral Researcher in Machine Learning / Computer Science to help build the next frontier of deep learning, multimodal fusion, and longitudinal modeling in clinical medicine. This unique position offers the opportunity to work at the intersection of AI, healthcare, and translational science tackling some of the most complex challenges in transplant medicine and liver disease. The candidate would be co-supervised by both Dr. Mamatha Bhat (clinician), and Dr. Divya Sharma (Computer Science). Build generative and predictive models using longitudinal, multimodal patient data including clinical variables, labs, imaging, pathology, and multi-omics. Design and deploy foundation model-inspired architectures for real-time clinical applications. Incorporate causal inference and counterfactual modeling to guide treatment simulations and improve decision-making. Develop clinician-facing software tools that embed your ML models into UHN’s digital ecosystem. Contribute to high-impact research publications, funding proposals, and collaborative innovations across AI and medicine. innovations across AI and medicine. D uties Data Integration & Preprocessing Preprocess and harmonize large-scale longitudinal datasets comprising structured (clinical/lab) and unstructured (imaging, pathology, molecular) data. Develop reproducible pipelines for multimodal data ingestion from diverse health system and research sources (e.g., EHRs, biobanks, imaging repositories). Machine Learning & Model Development Design, train, and validate predictive and generative models leveraging deep learning, causal inference, and time-aware architectures. Build foundation model-inspired pipelines for patient trajectory modeling, treatment response simulation, and risk stratification in liver disease and transplantation. Translational AI Tool Deployment Translate research outputs into clinician-facing software applications, ensuring integration into UHN’s digital ecosystem. Build user-friendly, interpretable tools with real-time capability to support decision-making in complex clinical workflows. Scientific Discovery & Collaboration Co-lead hypothesis-driven, translational research in collaboration with clinicians, data scientists, and health system partners. Explore novel computational strategies for multimodal fusion and disease modeling. Knowledge Mobilization & Scholarly Output Contribute to high-impact publications, presentations, and grant proposals that bridge AI and healthcare. Document technical workflows and model development for reproducibility and knowledge sharing. Supervision & Mentorship Engage with and support junior trainees, including students and analysts, contributing to shared project goals and team culture. Collaborate closely with supervisors Dr. Mamatha Bhat and Dr. Divya Sharma through regular joint meetings and milestone planning. Learning & Growth Stay current on state-of-the-art developments in machine learning, generative modeling, and precision medicine. Adapt models and methods to evolving project requirements in a fast-paced, interdisciplinary environment. A recent (or soon-to-be) PhD graduate in Machine Learning, Computer Science, Bioinformatics, or related fields. Fluent in Python, and experienced with deep learning frameworks like PyTorch or TensorFlow. Familiar with (or excited to learn) deep generative models, causal ML, transformer architectures, foundational models and multimodal learning. A collaborative and curious researcher with a strong publication record, excellent communication skills, and a passion for translational AI in medicine. Why join UHN? In addition to working alongside some of the most talented and inspiring healthcare professionals in the world, UHN offers a wide range of benefits, programs and perks. It is the comprehensiveness of these offerings that makes it a differentiating factor, allowing you to find value where it matters most to you, now and throughout your career at UHN. Competitive offer packages Government organization and a member of the Healthcare of Ontario Pension Plan (HOOPP https://hoopp.com/ ) Close access to Transit and UHN shuttle service A flexible work environment Opportunities for development and promotions within a large organization Additional perks (multiple corporate discounts including: travel, restaurants, parking, phone plans, auto insurance discounts, on-site gyms, etc.) Current UHN employees must have successfully completed their probationary period, have a good employee record along with satisfactory attendance in accordance with UHN's attendance management program, to be eligible for consideration. All applications must be submitted before the posting close date. UHN uses email to communicate with selected candidates.  Please ensure you check your email regularly. Please be advised that a Criminal Record Check may be required of the successful candidate. Should it be determined that any information provided by a candidate be misleading, inaccurate or incorrect, UHN reserves the right to discontinue with the consideration of their application. UHN is an equal opportunity employer committed to an inclusive recruitment process and workplace. Requests for accommodation can be made at any stage of the recruitment process. Applicants need to make their requirements known. We thank all applicants for their interest, however, only those selected for further consideration will be contacted.

Full job record

Job IDa6cd3f0c50177c085ccd27d91c94410752d858e6
Org IDb1b8a615-1272-4022-84b4-f8e0e783db5c
Source ID5938c452-4fff-41f3-acb4-529875223376
Board ID5938c452-4fff-41f3-acb4-529875223376
Providersmartrecruiters
Provider Job Key744000120953763
TitlePostdoctoral Researcher (Machine Learning for Multimodal Healthcare AI)
Normalized Title
Statusactive
Activeyes
Location TextToronto, Ontario, Canada
DepartmentResearch
Team
Employment Typefull_time
Workplace Type
Remote Policy
CountryCanada
RegionON
CityToronto
Salary RawCAD 54902-93333 year
Salary Min54,902
Salary Max93,333
Salary CurrencyCAD
Salary Periodyear
Source URLhttps://jobs.smartrecruiters.com/UniversityHealthNetwork/744000120953763-postdoctoral-researcher-machine-learning-for-multimodal-healthcare-ai-
Apply URLhttps://jobs.smartrecruiters.com/UniversityHealthNetwork/744000120953763-postdoctoral-researcher-machine-learning-for-multimodal-healthcare-ai-?oga=true
First Seen At2026-05-31 17:40:21Z
Last Seen At2026-06-06 20:25:28Z
Last Checked At2026-06-06 20:25:28Z
Last Changed At2026-05-31 17:40:21Z
Inactive At
Source Posted At2026-04-15 13:12:12Z
Source Updated At
Raw Payload Uris3://job-postings-prod-raw-590183727216/raw/provider=smartrecruiters/board=universityhealthnetwork/date=2026-06-06/2026-06-06T20-25-05-929Z-5ff04f2843fef8765cf8af8410d256a41dc176b028452987dd17da85e9c716dc.json
Event Fields
{
  "content_hash": "3920ca809c4ee525aa00c5b42719d376a6417ca3c89f8fcf2d00bcbd7999b7ea",
  "source_hash": "49c599be1f30d22048bef3e9e85c4c03f6de949993aa2e6f313b763120607e6a",
  "last_changed_at": "2026-05-31T17:40:21.181Z",
  "active_status": "active"
}
Parsed Structured
{
  "language": "en",
  "location": {
    "raw": "Toronto, Ontario, Canada",
    "city": "Toronto",
    "region": "ON",
    "country": "Canada",
    "is_remote": false,
    "confidence": 0.8
  },
  "salary_max": 93333,
  "salary_min": 54902,
  "inferred_at": "2026-06-06T20:25:28.269Z",
  "launch_scope": {
    "reason": "english_us_canada",
    "included": true,
    "language": "en",
    "location": {
      "raw": "Toronto, Ontario, Canada",
      "city": "Toronto",
      "region": "ON",
      "country": "Canada",
      "is_remote": false,
      "confidence": 0.8
    },
    "countries": [
      "Canada"
    ]
  },
  "remote_policy": null,
  "salary_period": "year",
  "workplace_type": null,
  "salary_currency": "CAD"
}
Extensions
{}
Native Structured
{
  "id": "744000120953763",
  "ref": "https://api.smartrecruiters.com/v1/companies/universityhealthnetwork/postings/744000120953763",
  "name": "Postdoctoral Researcher (Machine Learning for Multimodal Healthcare AI)",
  "uuid": "ff67077a-7dcd-4bb2-beca-1cb81d96b5fa",
  "detail": {
    "id": "744000120953763",
    "name": "Postdoctoral Researcher (Machine Learning for Multimodal Healthcare AI)",
    "uuid": "ff67077a-7dcd-4bb2-beca-1cb81d96b5fa",
    "jobAd": {
      "sections": {
        "jobDescription": {
          "text": "<p><strong>*REPOST*<br>\n<br>\nUnion:</strong> Non-Union<br>\n<strong>Number of Vacancies</strong>: 1<br>\n<strong>New or Replacement:</strong> New<br>\n<strong>Site: </strong>Toronto General Hospital Research<br>\n<strong>Department:</strong> Multi organ Transplant<br>\n<strong>Reports to: </strong>Dr. Mamatha Bhat<br>\n<strong>Hours: </strong>37.5<br>\n<strong>Salary</strong>: $54,902 to $93,333 per year<br>\n<strong>Shifts: </strong>Monday to Friday<br>\n<strong>Status:</strong> Temporary Full-Time<br>\n<strong>Closing Date: </strong>June 30, 2026</p><p><strong>Position Summary </strong></p><p>We're seeking a&#xa0;Postdoctoral Researcher in Machine Learning / Computer Science to help build the next frontier of deep learning, multimodal fusion, and longitudinal modeling in clinical medicine. This unique position offers the opportunity to work at the intersection of AI, healthcare, and translational science tackling some of the most complex challenges in transplant medicine and liver disease. The candidate would be co-supervised by both Dr. Mamatha Bhat (clinician), and Dr. Divya Sharma (Computer Science).</p><ul><li>Build generative and predictive models using longitudinal, multimodal patient data including clinical variables, labs, imaging, pathology, and multi-omics.</li><li>Design and deploy foundation model-inspired architectures for real-time clinical applications.</li><li>Incorporate causal inference and counterfactual modeling to guide treatment simulations and improve decision-making.</li><li>Develop clinician-facing software tools that embed your ML models into UHN’s digital ecosystem.</li><li>Contribute to high-impact research publications, funding proposals, and collaborative innovations across AI and medicine.</li><li>innovations across AI and medicine.</li></ul><p><strong>D</strong><strong>uties</strong></p><ul><li>Data Integration &amp; Preprocessing</li><li>Preprocess and harmonize large-scale longitudinal datasets comprising structured (clinical/lab) and unstructured (imaging, pathology, molecular) data.</li><li>Develop reproducible pipelines for multimodal data ingestion from diverse health system and research sources (e.g., EHRs, biobanks, imaging repositories).</li><li>Machine Learning &amp; Model Development</li><li>Design, train, and validate predictive and generative models leveraging deep learning, causal inference, and time-aware architectures.</li><li>Build foundation model-inspired pipelines for patient trajectory modeling, treatment response simulation, and risk stratification in liver disease and transplantation.</li><li>Translational AI Tool Deployment</li><li>Translate research outputs into clinician-facing software applications, ensuring integration into UHN’s digital ecosystem.</li><li>Build user-friendly, interpretable tools with real-time capability to support decision-making in complex clinical workflows.</li><li>Scientific Discovery &amp; Collaboration</li><li>Co-lead hypothesis-driven, translational research in collaboration with clinicians, data scientists, and health system partners.</li><li>Explore novel computational strategies for multimodal fusion and disease modeling.</li><li>Knowledge Mobilization &amp; Scholarly Output</li><li>Contribute to high-impact publications, presentations, and grant proposals that bridge AI and healthcare.</li><li>Document technical workflows and model development for reproducibility and knowledge sharing.</li><li>Supervision &amp; Mentorship</li><li>Engage with and support junior trainees, including students and analysts, contributing to shared project goals and team culture.</li><li>Collaborate closely with supervisors Dr. Mamatha Bhat and Dr. Divya Sharma through regular joint meetings and milestone planning.</li><li>Learning &amp; Growth</li><li>Stay current on state-of-the-art developments in machine learning, generative modeling, and precision medicine.</li><li>Adapt models and methods to evolving project requirements in a fast-paced, interdisciplinary environment.</li></ul>",
          "title": "Job Description"
        },
        "qualifications": {
          "text": "<ul><li>A recent (or soon-to-be) PhD graduate in Machine Learning, Computer Science, Bioinformatics, or related fields.</li><li>Fluent in Python, and experienced with deep learning frameworks like PyTorch or TensorFlow.</li><li>Familiar with (or excited to learn) deep generative models, causal ML, transformer architectures, foundational models and multimodal learning.</li><li>A collaborative and curious researcher with a strong publication record, excellent communication skills, and a passion for translational AI in medicine.</li></ul>",
          "title": "Qualifications"
        },
        "companyDescription": {
          "text": "<p>UHN is Canada’s #1 hospital and the world’s #1 publicly funded hospital. With 10 sites and more than 44,000 Team UHN members, UHN consists of Toronto General Hospital, Toronto Western Hospital, Princess Margaret Cancer Centre, Toronto Rehabilitation Institute, The Michener Institute of Education and West Park Healthcare Centre. As Canada's top research hospital, the scope of biomedical research and complexity of cases at UHN have made it a national and international source for discovery, education and patient care. UHN has the largest hospital-based research program in Canada, with major research in neurosciences, cardiology, transplantation, oncology, surgical innovation, infectious diseases, genomic medicine and rehabilitation medicine. UHN is a research hospital affiliated with the University of Toronto.&#xa0;</p><p>UHN’s vision is to build A Healthier World and it’s only because of the talented and dedicated people who work here that we are continually bringing that vision closer to reality.&#xa0;</p><p><a href=\"https://www.uhn.ca/\">www.uhn.ca</a>&#xa0;</p>",
          "title": "Company Description"
        },
        "additionalInformation": {
          "text": "<p><strong>Why join UHN?</strong></p><p>In addition to working alongside some of the most talented and inspiring healthcare professionals in the world, UHN offers a wide range of benefits, programs and perks. It is the comprehensiveness of these offerings that makes it a differentiating factor, allowing you to find value where it matters most to you, now and throughout your career at UHN.</p><ul><li>Competitive offer packages</li><li>Government organization and a member of the Healthcare of Ontario Pension Plan (HOOPP <a href=\"https://hoopp.com/\">https://hoopp.com/</a>)</li><li>Close access to Transit and UHN shuttle service</li><li>A flexible work environment</li><li>Opportunities for development and promotions within a large organization</li><li>Additional perks (multiple corporate discounts including: travel, restaurants, parking, phone plans, auto insurance discounts, on-site gyms, etc.)</li></ul><p>Current UHN employees must have successfully completed their probationary period, have a good employee record along with satisfactory attendance in accordance with UHN's attendance management program, to be eligible for consideration.</p><div sr-tagline=\"\"></div><p>All applications must be submitted before the posting close date.</p><p>UHN uses email to communicate with selected candidates.&#xa0; Please ensure you check your email regularly.</p><p>Please be advised that a Criminal Record Check may be required of the successful candidate. Should it be determined that any information provided by a candidate be misleading, inaccurate or incorrect, UHN reserves the right to discontinue with the consideration of their application.</p><p>UHN is an equal opportunity employer committed to an inclusive recruitment process and workplace. Requests for accommodation can be made at any stage of the recruitment process. Applicants need to make their requirements known.</p><p><strong>We thank all applicants for their interest, however, only those selected for further consideration will be contacted.</strong></p>",
          "title": "Additional Information"
        }
      }
    },
    "jobId": "c9b6ed09-e078-4c88-b077-d63177d6bc2b",
    "active": true,
    "company": {
      "name": "University Health Network",
      "identifier": "UniversityHealthNetwork"
    },
    "creator": {
      "name": "",
      "avatarUrl": ""
    },
    "jobAdId": "44f870a1-7ce2-4ac0-9f5a-fe386edb8d95",
    "applyUrl": "https://jobs.smartrecruiters.com/UniversityHealthNetwork/744000120953763-postdoctoral-researcher-machine-learning-for-multimodal-healthcare-ai-?oga=true",
    "function": {
      "id": "research",
      "label": "Research"
    },
    "industry": {
      "id": "hospital_and_health_care",
      "label": "Hospital And Health Care"
    },
    "language": {
      "code": "en",
      "label": "English",
      "labelNative": "English (US)"
    },
    "location": {
      "city": "Toronto",
      "hybrid": false,
      "region": "Ontario",
      "remote": false,
      "address": "200 Elizabeth Street",
      "country": "ca",
      "latitude": "43.653226",
      "longitude": "-79.3831843",
      "postalCode": "M5G 2C4",
      "fullLocation": "Toronto, Ontario, Canada"
    },
    "refNumber": "REF9648M",
    "department": {
      "id": 9847971,
      "label": "Research"
    },
    "postingUrl": "https://jobs.smartrecruiters.com/UniversityHealthNetwork/744000120953763-postdoctoral-researcher-machine-learning-for-multimodal-healthcare-ai-",
    "visibility": "PUBLIC",
    "customField": [
      {
        "fieldId": "650358f75c2bc17960ebaf04",
        "valueId": "9847971",
        "fieldLabel": "Department",
        "valueLabel": "Research"
      },
      {
        "fieldId": "65ca67593cf25d53a576549b",
        "valueId": "bceb37d3-e2c4-4c34-9bbb-832588d1ef9c",
        "fieldLabel": "UHN Site",
        "valueLabel": "101 College Street, Suite 245"
      },
      {
        "fieldId": "6511a1a59b31b6513d5d5a04",
        "valueId": "12d65536-6cb9-4493-bd64-e5cef624310c",
        "fieldLabel": "Union (Comp Group Name)",
        "valueLabel": "NON UNION"
      },
      {
        "fieldId": "COUNTRY",
        "valueId": "ca",
        "fieldLabel": "Country/Region",
        "valueLabel": "Canada"
      },
      {
        "fieldId": "650daec47d09790483a85860",
        "valueId": "29c7f7f5-6a89-4dbe-8406-dad7cadfc97d",
        "fieldLabel": "Single or Multiple Work Location?",
        "valueLabel": "Single Work Location"
      },
      {
        "fieldId": "650358f75c2bc17960ebaf03",
        "valueId": "default",
        "fieldLabel": "Brands",
        "valueLabel": "University Health Network"
      },
      {
        "fieldId": "650c559d94b00d310a088882",
        "valueId": "97b14bd5-611e-4b71-a0f1-e5ef61ae8b0d",
        "fieldLabel": "VP Portfolio",
        "valueLabel": "Science & Research"
      },
      {
        "fieldId": "650c550508156859f0d26964",
        "valueId": "0138db55-4ac3-4a3d-a518-761001bcc54f",
        "fieldLabel": "Screening Question Set",
        "valueLabel": "Research - Postdoctoral Research"
      },
      {
        "fieldId": "65144b12d493c2241eba4cc0",
        "valueId": "50c49e70-e7fb-40ba-9cf7-59223a743180",
        "fieldLabel": "Position Employment Status",
        "valueLabel": "Temporary Full Time"
      }
    ],
    "referralUrl": "https://jobs.smartrecruiters.com/external-referrals/company/UniversityHealthNetwork/publication/ff67077a-7dcd-4bb2-beca-1cb81d96b5fa?dcr_ci=UniversityHealthNetwork",
    "compensation": {
      "max": 93333,
      "min": 54902,
      "period": "YEARLY",
      "currency": "CAD"
    },
    "defaultJobAd": true,
    "releasedDate": "2026-04-15T13:12:12.211Z",
    "experienceLevel": {
      "id": "not_applicable",
      "label": "Not Applicable"
    },
    "typeOfEmployment": {
      "id": "permanent",
      "label": "Full-time"
    }
  },
  "company": {
    "name": "University Health Network",
    "identifier": "UniversityHealthNetwork"
  },
  "jobAdId": "44f870a1-7ce2-4ac0-9f5a-fe386edb8d95",
  "function": {
    "id": "research",
    "label": "Research"
  },
  "industry": {
    "id": "hospital_and_health_care",
    "label": "Hospital And Health Care"
  },
  "language": {
    "code": "en",
    "label": "English",
    "labelNative": "English (US)"
  },
  "location": {
    "city": "Toronto",
    "hybrid": false,
    "region": "Ontario",
    "remote": false,
    "address": "200 Elizabeth Street",
    "country": "ca",
    "latitude": "43.653226",
    "longitude": "-79.3831843",
    "postalCode": "M5G 2C4",
    "fullLocation": "Toronto, Ontario, Canada"
  },
  "refNumber": "REF9648M",
  "department": {
    "id": "9847971",
    "label": "Research"
  },
  "visibility": "PUBLIC",
  "customField": [
    {
      "fieldId": "650358f75c2bc17960ebaf04",
      "valueId": "9847971",
      "fieldLabel": "Department",
      "valueLabel": "Research"
    },
    {
      "fieldId": "65ca67593cf25d53a576549b",
      "valueId": "bceb37d3-e2c4-4c34-9bbb-832588d1ef9c",
      "fieldLabel": "UHN Site",
      "valueLabel": "101 College Street, Suite 245"
    },
    {
      "fieldId": "650358f75c2bc17960ebaf03",
      "valueId": "default",
      "fieldLabel": "Brands",
      "valueLabel": "University Health Network"
    },
    {
      "fieldId": "650c559d94b00d310a088882",
      "valueId": "97b14bd5-611e-4b71-a0f1-e5ef61ae8b0d",
      "fieldLabel": "VP Portfolio",
      "valueLabel": "Science & Research"
    },
    {
      "fieldId": "65144b12d493c2241eba4cc0",
      "valueId": "50c49e70-e7fb-40ba-9cf7-59223a743180",
      "fieldLabel": "Position Employment Status",
      "valueLabel": "Temporary Full Time"
    },
    {
      "fieldId": "6511a1a59b31b6513d5d5a04",
      "valueId": "12d65536-6cb9-4493-bd64-e5cef624310c",
      "fieldLabel": "Union (Comp Group Name)",
      "valueLabel": "NON UNION"
    },
    {
      "fieldId": "COUNTRY",
      "valueId": "ca",
      "fieldLabel": "Country/Region",
      "valueLabel": "Canada"
    },
    {
      "fieldId": "650daec47d09790483a85860",
      "valueId": "29c7f7f5-6a89-4dbe-8406-dad7cadfc97d",
      "fieldLabel": "Single or Multiple Work Location?",
      "valueLabel": "Single Work Location"
    },
    {
      "fieldId": "650c550508156859f0d26964",
      "valueId": "0138db55-4ac3-4a3d-a518-761001bcc54f",
      "fieldLabel": "Screening Question Set",
      "valueLabel": "Research - Postdoctoral Research"
    }
  ],
  "defaultJobAd": true,
  "releasedDate": "2026-04-15T13:12:12.211Z",
  "detail_errors": [],
  "experienceLevel": {
    "id": "not_applicable",
    "label": "Not Applicable"
  },
  "typeOfEmployment": {
    "id": "permanent",
    "label": "Full-time"
  }
}
Get this page with API

Rendered from the bluedoor Job Postings API. Reproduce it:

GET https://api.bluedoor.sh/job-postings/v1/jobs/a6cd3f0c50177c085ccd27d91c94410752d858e6?include=descriptionJSON
GET https://api.bluedoor.sh/job-postings/v1/orgs/b1b8a615-1272-4022-84b4-f8e0e783db5cJSON
GET https://api.bluedoor.sh/job-postings/v1/sources/5938c452-4fff-41f3-acb4-529875223376JSON
GET https://api.bluedoor.sh/job-postings/v1/jobs/a6cd3f0c50177c085ccd27d91c94410752d858e6/eventsJSON