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Systematic Review Meta Analysis Jobs (NOW HIRING)

Implement and interpret HTA validated meta-analytic methods and indirect treatment comparisons ... base from systematic literature reviews to identify inferences, methods, key limitations and ...

Demonstrated proficiency through previous systematic reviews (and meta-analysis). The ideal candidate will have : * Implementation science methods expertise. * Strong written and oral communication ...

Demonstrated proficiency through previous systematic reviews (and meta-analysis). The ideal candidate will have : * Implementation science methods expertise. * Strong written and oral communication ...

... in systematic literature reviews and/or indirect treatment comparisons (e.g. NMA, MAIC, STC) for ... Multivariate network meta-analysis of survival function parameters. Research synthesis methods ...

Work with members of GHO team to develop non-interventional studies on disease burden, treatment patterns and patient experience and/or systematic literature reviews, meta-analyses, indirect ...

We're looking for a seasoned analytics leader to drive data-informed decisions for Meta. You will ... reviews) * Demonstrated ongoing AI skill development (e.g., prompt/context engineering, agent ...

Data Science Director

Menlo Park, CA · On-site

$253K - $314K/yr

We're looking for a seasoned analytics leader to drive data-informed decisions for Meta. You will ... and accuracy reviews) • Demonstrated ongoing AI skill development (e.g., prompt/context ...

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Systematic Review Meta Analysis information

What is a Systematic Review Meta Analysis job?

A Systematic Review Meta-Analysis job involves systematically collecting, evaluating, and synthesizing data from multiple research studies to draw meaningful conclusions. Professionals in this role use statistical methods to assess study results, identify trends, and determine the overall effectiveness of interventions or treatments. This role is common in healthcare, psychology, and social sciences, requiring expertise in research methodology, data analysis, and critical appraisal.

What are some typical challenges faced by professionals working in Systematic Review Meta Analysis roles?

Professionals in Systematic Review Meta Analysis often face challenges such as managing large volumes of scientific literature, ensuring the quality and relevance of included studies, and dealing with heterogeneity in data. Collaborating with multidisciplinary teams, maintaining methodological rigor, and adhering to reporting standards can also be demanding. However, overcoming these challenges helps produce credible, impactful reviews that inform evidence-based decision-making. Developing expertise in systematic review workflows and robust project management skills can make these tasks more manageable and rewarding. By tackling these challenges, you’ll contribute valuable insights that shape policies, guidelines, and clinical practices.

What are the key skills and qualifications needed to thrive in the Systematic Review Meta Analysis position, and why are they important?

To thrive in Systematic Review Meta Analysis, you need a solid background in research methodology, critical appraisal skills, and advanced statistical analysis, often supported by a relevant graduate degree in health sciences, epidemiology, or a related field. Proficiency in literature databases (like PubMed, Embase), reference management tools (such as EndNote or Zotero), and statistical software (like RevMan, Stata, or R) is important. Attention to detail, strong organizational skills, and clear written and verbal communication are key soft skills in this role. These competencies are crucial to ensure accuracy, transparency, and reliability in synthesizing and presenting complex research findings.

More about Systematic Review Meta Analysis jobs
What are the most commonly searched types of Systematic Review Meta Analysis jobs? The most popular types of Systematic Review Meta Analysis jobs are:

Postdoctoral Research Fellow - Agentic AI for Systematic Reviews and Human-LLM Collaboration

Uq

Campus, IL • On-site

$83K - $111K/yr

Full-time

PTO

Posted 4 days ago


Job description

  • Faculty of Engineering, Architecture and Information Technology / School of Electrical Engineering and Computer Science

  • Full-time fixed-term position for up to 18 months

  • Base salary will be in the range $83,698.91 - $111,431.10 + 17% super (Academic Level A)

  • Based at our St Lucia Campus

About This Opportunity

We are seeking an outstanding Postdoctoral Research Fellow to contribute to ambitious, highimpact research at the intersection of Artificial Intelligence, Information Retrieval, Natural Language Processing, digital health, and HumanComputer Interaction. Working within a collaborative and multidisciplinary research environment, you will help design and deliver novel methods and opensource systems that leverage Large Language Models to support evidence synthesis, relevance assessment, and human-AI collaborative decisionmaking.

This role offers a rare opportunity to combine methodological innovation with practical research software development, contributing to globally relevant research outcomes and platforms.

Key responsibilities will include:

  • Research and Algorithm Development: Conduct high-quality research in areas related to LLM-assisted systematic reviews, IR, NLP, Retrieval-Augmented Generation (RAG), and human-AI collaboration. Develop novel approaches for literature screening, relevance assessment, evidence synthesis, AI-assisted ranking, and collaborative review workflows. Lead and contribute to publications in leading venues and journals in Information Retrieval, AI, NLP, digital health, and health informatics. Assist with the preparation of grant applications and collaborative research proposals.

  • Research Software and Platform Development: Design, develop, and maintain scalable research software systems supporting AI-assisted systematic review workflows and relevance assessment tasks. Contribute to the development of open-source platforms integrating LLMs into evidence synthesis workflows. Develop and maintain APIs, retrieval pipelines, vector search systems, databases, and cloud-based infrastructure for LLM-assisted applications. Support experimentation with commercial and open-source LLMs, semantic retrieval systems, and RAG pipelines.

  • User Studies and Human-AI Collaboration Research: Design and conduct user studies investigating the effectiveness, usability, trustworthiness, and cognitive impact of AI-assisted relevance assessment and systematic review systems. This includes research involving platforms for systematic reviews and projects on User-LLM Collaboration in relevance judgement.

  • Develop experimental protocols and evaluation methodologies to study how different forms of LLM assistance influence human decision-making, screening behaviour, relevance judgements, efficiency, and perceived utility. Analyse user interaction data and contribute to publications related to human-AI collaboration, trustworthy AI, and interactive information retrieval.

  • Supervision and Researcher Development: Provide supervision and mentoring to HDR students and research assistants, and contribute to the supervision of capstone and projectbased students as required. Support a positive and inclusive research culture through collaborative project work, feedback, and shared scholarly practice.

  • Citizenship and Service: Contribute to technical documentation, reproducible research workflows, software demonstrations, tutorials, workshops, and broader collaborative research activities. Actively foster a collegial, inclusive, and respectful research environment aligned with UQ values.

This is a research focused position. Further information can be found by viewing UQ's Criteria for Academic Performance.

About You

Our ideal candidate will be a selfmotivated, inquisitive, and solutionsfocused researcher who thrives in interdisciplinary environments and is motivated to contribute meaningfully to collaborative research programs. You will combine strong technical capability with excellent communication skills and a commitment to highquality, reproducible research.

You will have:

  • Completion or near completion of a PhD in Computer Science, Artificial Intelligence, Information Retrieval, Natural Language Processing, Data Science, Human-Computer Interaction, Health Informatics, or a closely related field.

  • Strong research track record relative to opportunity, demonstrated through publications in relevant venues.

  • Demonstrated expertise in one or more of the following areas:

    • Large Language Models (LLMs)

    • Information Retrieval (IR)

    • Natural Language Processing (NLP)

    • Retrieval-Augmented Generation (RAG)

    • Human-AI collaboration systems

    • Interactive information retrieval

    • Systematic review automation

    • Machine learning and deep learning

  • Experience conducting empirical evaluations, user studies, or experimental research involving human participants is highly desirable.

  • Strong programming and software engineering skills, particularly in Python and modern AI/ML frameworks such as PyTorch, Hugging Face Transformers, LangChain, or LlamaIndex.

  • Experience with backend or full-stack software development, APIs, databases, vector search systems, Docker, Kubernetes, and cloud platforms, such as AWS or GCP is desirable.

  • Demonstrated ability to work collaboratively in interdisciplinary research environments and contribute to team-based research projects.

  • Excellent written and verbal communication skills.


About UQ

As part of the UQ community, you will have the opportunity to work alongside the brightest minds, who have joined us from all over the world, and within an environment where interdisciplinary collaborations are encouraged. As part of our commitment to excellence in research and professional practice in academic contexts, we are proud to provide our staff with access to world-class facilities and equipment, grant writing support, greater research funding opportunities, and other forms of staff support and development.

The greater benefits of joining the UQ community are broad: from being part of a Group of Eight university, to recognition of prior service with other Australian universities, up to 26 weeks of paid parental leave, 17.5% annual leave loading, flexible working arrangements, access to exclusive internal-only vacancies, and genuine career progression opportunities via the academic promotions process.


Interested?

For more information about this opportunity, please contact Dr. Teerapong Leelanupab t.leelanupab@uq.edu.au. For application inquiries, please reach out to the Talent Acquisition team at talent@uq.edu.au, stating the job reference number (below)in the subject line.

When you apply, please ensure you upload a resume, cover letter, and responses to the 'About You' section. Please note that applications received via email will not be accepted.

Other Information

Pre-employment checks may include: verification of the right to work in Australia, qualifications and criminal history checks. This may also include checks relating to gender-based violence matters or other integrity and conduct requirements.

You must maintain unrestricted work rights in Australia for the duration of this appointment to apply. Employer sponsored work rights are not available for this appointment.

We're dedicated to equity, diversity, and inclusion. We recognise that career pathways and opportunities differ, and encourage applications from candidates who may not meet every criteria but can demonstrate their potential relative to opportunity. We're also happy to support any accessibility needs throughout the recruitment process. Just let us know how we can help by emailing talent@uq.edu.au or calling +61 7 3365 2623.

Applications close Sunday June 14th 2026 at 11.00pm AEST (R-65547). Please note that interviews have been tentatively scheduled for Friday 19 June 2026.