Applied Scientist (Tribal Knowledge)

Applied Scientist (Tribal Knowledge)

Full-Time 80000 - 100000 £ / year (est.) No working from home possible
Pavoai

At a Glance

  • Tasks: Lead research on compiling tribal knowledge into verifiable artifacts for AI systems.
  • Company: Pavo, a cutting-edge tech company focused on Enterprise Superintelligence.
  • Benefits: Competitive salary, flexible work environment, and opportunities for publication.
  • Other info: Join a small, dynamic team with real ownership of your work.
  • Why this job: Make a real impact in AI by solving complex, meaningful problems.
  • Qualifications: 8+ years in applied research or a PhD with strong applied-research experience.

The predicted salary is between 80000 - 100000 £ per year.

Lead the science of compiling an organization's tribal knowledge into a verifiable artifact.

About Pavo

Pavo is building Enterprise Superintelligence: compounding systems that take ownership of business outcomes and work with humans to deliver them. We believe that while foundation models are necessary, they are not sufficient. The hard problem is systems intelligence: end-to-end architectures that understand a company's code, data, and decisions, and improve themselves through experience. We are assembling a small, senior team of researchers and engineers obsessed with systems-first intelligence. Our current team consists of PhDs and ML engineers from top applied ML and coding agent companies, with a heritage of shipping systems at Spotify, ShareChat, and Sourcegraph scale. Our team has built impressive momentum with a small group of highly capable engineers and researchers.

The Opportunity

As an Applied Scientist at Pavo, you will lead the science track of tribal-knowledge generation. You'll work on the open problems that sit between today's RAG and tomorrow's organizationally-aware agents — and turn them into shipped, evidence-backed improvements to the production system. This is applied research in the truest sense: the questions arise from real production behavior, the answers must improve it, and the cycle from interesting finding to shipped change is days, not quarters. The questions themselves are also publishable — most sit at or beyond the current literature. This is a senior, individual-contributor role. Everyone on the team joins as a Member of Technical Staff — with the scope, autonomy, and end-to-end ownership that title implies.

What You'll Work On

  • The science track owns the open questions that decide whether compiled knowledge can be trusted:
    • Retrieval over Heterogeneous Private Evidence: How an agent should traverse an organization's source code, structured data, internal documents, and conversations to assemble the evidence required to compile knowledge.
    • Verifiability of Open-Ended Generation: What it means for an agent-produced knowledge artifact to be trustworthy — beyond precision-only validation of individual facts.
    • Evaluation of Multi-Stage Agentic Pipelines: Benchmarks and instrumentation that localize quality gains to the responsible stage, without leaking the answer key into the pipeline being measured.
    • Reliability & Variance: Characterizing and reducing run-to-run variance in stochastic synthesis, so knowledge artifacts can be released with the same confidence as deterministic software.
    • Continual Update & Conflict Resolution: How a compiled knowledge artifact should evolve as the underlying organization changes — surfacing conflict and accruing authority and temporal validity.
    • Publication: Internal findings as decision-grade memos; external results as papers, talks, or technical reports — wherever the work advances the field.

What We Are Looking For

We are looking for an applied researcher who turns messy production behavior into questions, and questions into shipped, evidence-backed change.

Core Qualifications

  • Senior Track Record: Years of applied-research or ML experience (typically 8+ in industry, or a PhD plus a strong applied-research record), including work you drove end-to-end that held up under scrutiny — the scientist others bring their hardest, most ambiguous problems to.
  • Working Understanding of Agentic Systems: You know how tool use, multi-turn execution, context limits, and structured outputs behave in practice — even if you haven't built a production agent yourself.
  • Strong Retrieval Fundamentals: Fluency in dense and sparse retrieval, reranking, query understanding, and IR-style evaluation. Many of the open problems here are dressed-up retrieval problems.
  • Experimental Discipline: You’ve designed and run ablations that survive scrutiny; you treat n=1 with the suspicion it deserves; you know the difference between a result that explains the past and one that predicts the future.
  • Familiarity with the Hallucination & RAG‑Eval Literature: At a level where you can identify when a published benchmark or method has structural limitations.
  • Production Intuition: You can read messy run logs and formulate the question hiding inside them.
  • Strong Technical Writing: You can produce a finding another scientist trusts, and a script the engineering team can run.

Nice to Have

  • Publications in agents, RAG, IR, hallucination evaluation, knowledge integration, or continual learning.
  • Hands-on experience designing benchmarks or evaluation harnesses for open-ended generation.
  • Familiarity with conflict-resolution, record-linkage, or entity-resolution literature — these surface as adjacent problems in tribal knowledge.
  • PhD in ML / NLP / IR, or an equivalent applied-research track record in industry.

Why Join Us

  • Foundational Work: The private knowledge layer will reshape how AI agents operate inside organizations. The problems are real and at the edge of the field.
  • Short Loop: Work directly with the engineering lead and the founders. Finding to recommendation to shipped change is days, not quarters.
  • Real Ownership of the Science Agenda: In a small, technically deep team. Your name will be on the work.
  • Publication Encouraged: Including external — papers, talks, and technical reports where the work advances the field.

Pavo is an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees.

Applied Scientist (Tribal Knowledge) employer: Pavoai

Pavo is an exceptional employer, offering a unique opportunity for Applied Scientists to engage in groundbreaking research that directly impacts business outcomes. With a culture that prioritises collaboration and innovation, employees enjoy the autonomy to drive their projects from conception to implementation in a supportive environment. Located in vibrant London or San Francisco, Pavo fosters professional growth through direct access to industry leaders and encourages contributions to the academic community through publications.

Pavoai

Contact Details:

Pavoai Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Applied Scientist (Tribal Knowledge)

Tip Number 1

Network like a pro! Reach out to folks in your field on LinkedIn or at industry events. A friendly chat can lead to opportunities that aren’t even advertised yet.

Tip Number 2

Show off your skills! Create a portfolio or GitHub repo showcasing your projects and research. This gives potential employers a taste of what you can do, especially for a role like Applied Scientist.

Tip Number 3

Prepare for interviews by diving deep into the company’s work. Understand their challenges and think about how your expertise can help solve them. Tailor your answers to show you’re the perfect fit for Pavo!

Tip Number 4

Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re genuinely interested in joining our team.

We think you need these skills to ace Applied Scientist (Tribal Knowledge)

Applied Research
Machine Learning (ML)
Agentic Systems Understanding
Retrieval Fundamentals
Experimental Design
Technical Writing
Data Analysis

Some tips for your application 🫡

Show Your Passion for Applied Research:When writing your application, let your enthusiasm for applied research shine through. Share specific examples of how you've tackled complex problems in the past and how they relate to the role at Pavo. We want to see that you're not just qualified, but genuinely excited about the work you'll be doing!

Be Clear and Concise:Keep your writing clear and to the point. Avoid jargon unless it's necessary, and make sure your ideas flow logically. We appreciate well-structured applications that are easy to read. Remember, we’re looking for strong technical writing skills, so this is your chance to showcase them!

Highlight Relevant Experience:Make sure to emphasise your experience with agentic systems, retrieval fundamentals, and experimental discipline. Tailor your application to reflect how your background aligns with the core qualifications listed in the job description. We want to see how your unique experiences can contribute to our team!

Apply Through Our Website:We encourage you to apply directly through our website. It’s the best way for us to receive your application and ensures it gets into the right hands. Plus, it shows that you’re proactive and keen to join our team at Pavo!

How to prepare for a job interview at Pavoai

Know Your Stuff

Make sure you brush up on your applied research and ML experience. Be ready to discuss specific projects you've worked on, especially those that involved messy production behaviour. They’ll want to see how you turned complex problems into actionable solutions.

Understand the Role

Familiarise yourself with the concepts of agentic systems and retrieval fundamentals. Be prepared to explain how these relate to the role of an Applied Scientist at Pavo. Showing that you understand the nuances of their work will set you apart.

Show Your Experimental Discipline

Be ready to talk about your experience designing and running experiments. Highlight any ablation studies you've conducted and how you ensure your results are robust. This is crucial for demonstrating your ability to handle the scientific rigour they expect.

Communicate Clearly

Strong technical writing is key. Prepare to discuss how you’ve communicated findings in the past, whether through memos or publications. Being able to convey complex ideas simply will show that you can bridge the gap between research and engineering.