Key Responsibilities
- Lead research and implementation of reasoning-enhanced LLM capabilities through novel data collection, architecture design, and system integration.
- Design and implement pipelines to collect, curate, and structure open-source and web-scale data relevant to reasoning tasks, ensuring scalability and reproducibility.
- Build robust software to support fine-tuning, evaluation, and deployment of LLMs that interact with structured and unstructured knowledge bases.
- Collaborate with ML researchers to create, test, and evaluate new approaches in information retrieval, agentic search, and RAG (retrieval-augmented generation) pipelines.
- Rapidly prototype tools, APIs, and infrastructure for enabling LLMs to reason over external information, and build datasets for identifying and analyzing LLM failure modes.
- Communicate research findings in internal documents and external publications (e.g., top-tier conferences like ACL, ICLR, NeurIPS).
- Contribute to design/code reviews and foster engineering best practices in a high-performance research environment.
- Represent MBZUAI at conferences and forums, promoting institutional leadership in safe, efficient, and high-impact AI systems.
- Perform all other duties as reasonably directed by the line manager that are commensurate with these functional objectives.
Academic Qualifications
- Master’s in Computer Science, Data Science, or a related technical field, or equivalent practical experience required.
- PhD or equivalent research experience in Machine Learning, NLP, or Data Science with a focus on reasoning and LLMs preferred.
Minimum Professional Experience
- Experience working with large language models, including fine-tuning, prompt engineering, and multi-modal interaction.
- Strong Python development skills with a focus on research-grade code and scalable data pipelines.
- Familiarity with collecting and processing large-scale datasets from open-source and web resources.
- Demonstrated ability to work with ML infrastructure (e.g., model evaluation, optimization, debugging).
- Proactive mindset with the ability to identify impactful research questions and execute on them with minimal supervision.
- Effective communication and collaboration skills for working in cross-functional teams.
Preferred Professional Experience
- Experience designing and deploying agentic LLM systems, reasoning benchmarks, or RAG pipelines.
- Background in building complex knowledge retrieval systems (e.g., knowledge graphs, semantic search, indexing).
- Strong publication record in leading AI conferences (e.g., ICLR, ACL, NeurIPS, EMNLP).
- Familiarity with performance constraints in production environments and the trade-offs in model and data design.
- Prior contributions to open-source ML research or data tools.
Skills Required
- Master's in Computer Science, Data Science, or related technical field, or equivalent practical experience
- PhD or equivalent research experience in Machine Learning, NLP, or Data Science with focus on reasoning and LLMs
- Experience working with large language models, including fine-tuning, prompt engineering, and multi-modal interaction
- Strong Python development skills with focus on research-grade code and scalable data pipelines
- Familiarity with collecting and processing large-scale datasets from open-source and web resources
- Demonstrated ability to work with ML infrastructure (model evaluation, optimization, debugging)
- Proactive mindset with ability to identify impactful research questions and execute with minimal supervision
- Effective communication and collaboration skills for cross-functional teams
- Experience designing and deploying agentic LLM systems, reasoning benchmarks, or RAG pipelines
- Background in building complex knowledge retrieval systems (knowledge graphs, semantic search, indexing)
- Strong publication record in leading AI conferences (ICLR, ACL, NeurIPS, EMNLP)
- Familiarity with production performance constraints and model/data trade-offs
- Prior contributions to open-source ML research or data tools
What We Do
First a passion, then an idea transformed into success – when it comes to pioneering automation and digitalisation technology, the ifm group is the ideal partner. Since its foundation in 1969, ifm has developed, produced and sold sensors, controllers, software and systems for industrial automation and for SAP-based solutions for supply chain management and shop floor integration worldwide. As one of the pioneers of Industry 4.0, ifm develops and implements consistent solutions to digitalise the entire value chain “from sensor to ERP”. Today, the second-generation family-run ifm group has more than 8,750 employees and is one of the worldwide market leaders. The group combines the internationality and innovative strength of a growing group of companies with the flexibility and close customer contact of a medium-sized company.






