Evaluation Officer (AI & Data Analytics) (Independent Office of Evaluation)

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1 week ago
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Evaluation Officer (AI & Data Analytics) (Independent Office of Evaluation)

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This role is for an Evaluation Officer (AI & Data Analytics) with a contract length of "unknown," offering a pay rate of "unknown." Key skills include AI integration, project evaluation, and data analysis. A degree in "Economics, Rural Development, or related fields" and five years of relevant experience are required.


United Kingdom


Hare Street, England, United Kingdom


Key Functions And Results

  • PROJECT EVALUATION: enhances IFAD’s success in advocating for rural food security and nutrition; conduct project validation and performance assessments; prepare reports in accordance with IFAD’s evaluation policy.
  • LIAISE with government officials, Country & Regional Directors, and key stakeholders; lead or contribute to fieldwork; guide consultants; organize in‑country workshops and present findings.
  • CONTRIBUTE TO HIGHER-LEVEL EVALUATION: support country programme and corporate‑level evaluations and syntheses; review documents, provide data analysis, draft desk reviews and working papers; present findings to stakeholders and prepare IOE comments on new policies.
  • KNOWLEDGE MANAGEMENT: use evaluation findings as a knowledge source; develop communication products, participate in peer reviews, document innovations.
  • REPORTING: draft and finalize regular and periodic reports; participate in IOE delegations; prepare concise, reader-friendly reports for the Evaluation Committee.
  • DIVISIONAL MANAGEMENT SUPPORT: support preparation of work programme and budget; monitor budget use; assist in distributing labour.
  • MANAGERIAL FUNCTIONS: ensure integrity, transparency and equity in managing IFAD resources including contracting.

Accountabilities (AI & Data Analytics)

  • Develop and apply AI‑assisted tools for evaluation design, evidence synthesis and validation.
  • Use natural language processing and other AI methods to extract, classify and synthesize evidence.
  • Develop interactive dashboards and visual summaries for knowledge sharing.
  • Provide technical advice and training on responsible use of AI; build internal community of practice.
  • Document, test and share lessons from AI‑enhanced approaches; contribute to thought leadership.

Education

  • Advanced level university degree from an accredited institution in Economics, Rural Development, Agriculture, Rural Sociology, Finance, Development Policy or related disciplines.

Experience

  • At least five (5) years of progressively responsible and relevant professional experience in programme evaluation with international financial institutions or development cooperation agencies.
  • Two (2) years in a multicultural or national organization providing support on a global scope.
  • Experience in country programme design, supervision and loan/grant administration (plus).

Languages

  • Required: English – Excellent.
  • Desirable: French, Spanish or Arabic – Good.

Key Skills

  • Economic evaluation and impact evaluation (programme/project, corporate level).
  • Knowledge of IFAD partners' functioning and mandate.
  • Risk management, confidentiality and discretion.
  • Basic ICT & digital fluency.
  • Integrity, ethics and communication.
  • Listening, written communication and rural development expertise.

Technical Skills

  • #ETL (Extract #Transform #Load)
  • #Security
  • #.Net
  • #Documentation
  • #NLP (Natural Language Processing)
  • #Leadership
  • #AI (Artificial Intelligence)
  • #DAC (Discretionary Access Control)
  • #Strategy
  • #Monitoring
  • #Data Analysis
  • #Programming
  • #Visualization
  • #PHP

Additional Information

Applicants are invited to use the ICSC compensation calculator to estimate salary and benefits. Candidates who do not receive any feedback within three months should consider their application unsuccessful. Candidates may be required to take a written test and deliver a presentation as well as participate in interviews.


IFAD is an Equal Opportunity Employer and does not discriminate on the basis of ethnic, social or political background, colour, nationality, religion, age, gender, disability, marital status, family size or sexual orientation. Please be aware of fraudulent job offers. IFAD does not charge any fees at any stage of the recruitment process. Official communication from IFAD will always come from e‑mails ending in @ifad.org.


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