Research Scientist/Engineer (Agentic Systems)

Posted 15 Days Ago
Be an Early Applicant
2 Locations
Hybrid
150K-250K Annually
Mid level
Artificial Intelligence • Security • Software • Cybersecurity
The Role
Design and run adversarial single- and multi-agent environments to find concrete failure modes in LLM agents. Orchestrate large-scale experiments against external APIs and internal models, instrument emergent behaviors, catalogue failures, and translate findings into internal models and public research.
Summary Generated by Built In

TLDR: We're looking for a research scientist to build autonomous, large-scale environments that push LLM agents (single and multi-agent) to failure, and study how they actually break.

About us

White Circle is an AI Safety company building the safety, reliability, and optimization layer for AI systems. At the core of our platform are policies – simple natural-language rules that define what an AI model should and shouldn’t do. We automatically test, enforce, and continuously improve these policies at scale.

  • We’ve raised $11M from top funds, founders, and senior leaders at OpenAI, Anthropic, HuggingFace, Mistral, DeepMind, Datadog, Sentry, and others

  • We process over 100M+ API calls every month

  • We fine-tune and train our own LLMs so they run faster and cheaper than any open or proprietary model

We’re a small, highly focused team. If you want to work deeply on hard problems, see your work ship to production quickly, and influence how AI safety is actually built – you’re the one we need.

About the team

White Circle's fundamental research team works on the science of how AI systems fail: where agents break, why misalignment and unsafe behaviours emerge, and how to catch them before they reach the real world. We build the evals, benchmarks, environments, and tooling that empirically study the most pressing AI safety concerns — some of which become the guardrails shipped in our products, and some of which become public writeups.

You will

  • Build adversarial environments for agents: complex, uncertain settings that sit on the boundary of agent capability and alignment, where failure is informative rather than trivial.

  • Build realistic multi-agent environments and instrument them so emergent breakdowns are observable — failures that arise from the agents themselves, not ones scripted from the outside.

  • Run experiments end to end, against external APIs and our own models, orchestrating many agents in parallel.

  • Catalogue concrete agent failure modes and build the tooling to surface them at scale.

  • Turn findings into internal models of agent behaviour and into public writeups.

You’ll fit right in if you:

  • Have built at least one non-trivial agent environment or automated research pipeline that ran end to end (single- or multi-agent), and can talk through what broke and why.

  • Strong software and AI engineering. Can independently orchestrate many agents and containers in parallel without that orchestration being the bottleneck.

  • A track record of empirical research in agents, red-teaming, or post-training where you defined the question, ran it, and drew a defensible conclusion.

  • A fast empirical iterator who is comfortable defining the question when there's no playbook: can take a fuzzy concern ("do these agents collude under pressure?") and turn it into a concrete, falsifiable experiment.

  • An AI power-user — fluent with frontier models and coding agents in your daily work.

A big plus:

  • Published research at A* venues on automated red-teaming, agentic environments, or post-training.

  • Experience building monitoring for model failures and anomalous behaviour.

  • Experience reproducing public benchmark results and finding where the original methodology is fragile or misleading.

  • An MSc or PhD in machine learning, computer science, cognitive science, computational neuroscience, physics, or a related quantitative field.

  • AI safety fellowship (MATS, ASTRA, Anthropic Fellows, etc.), or a comparable self-directed research record.

Why White Circle

  • Paid time off in line with your local regulations, no matter where you work from

  • Work from Paris (hybrid) with a relocation package available, or work from London (note: we are unable to provide relocation support or medical insurance for London-based roles)

  • Comprehensive medical insurance for our France-based team

  • All the hardware, tools, and services you need

  • Covered subscriptions for AI agents and IDEs

  • Team off-sites twice a year: we’ve recently been to the Alps and to Saint-Tropez

How we hire

  1. Introductory call with HR (25 min)

  2. Take-home test task

  3. Technical interview with Head of Fundamental Research (60 min)

  4. Final conversation with our CEO (45 min)

Please submit your application in English.

Skills Required

  • Built at least one non-trivial agent environment or automated research pipeline that ran end-to-end (single- or multi-agent).
  • Strong software and AI engineering ability to implement and scale experiments reliably.
  • Ability to orchestrate many agents and containers in parallel without orchestration being the bottleneck.
  • Track record of empirical research in agents, red-teaming, or post-training with defensible conclusions.
  • Fast empirical iteration: define fuzzy research questions and convert them into concrete, falsifiable experiments.
  • Fluent with frontier models and coding agents; regular AI power-user.
  • Published research at top venues on automated red-teaming, agentic environments, or post-training.
  • Experience building monitoring for model failures and anomalous behavior.
  • Experience reproducing public benchmark results and identifying methodological fragility.
  • MSc or PhD in machine learning, computer science, cognitive science, computational neuroscience, physics, or related quantitative field.
  • AI safety fellowship or comparable self-directed research record.
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The Company
23 Employees
Year Founded: 2025

What We Do

White Circle is an enterprise AI control platform specializing in automated vulnerability detection and protection for AI systems. The company provides a unified system for testing, monitoring, and safeguarding AI applications in real time, focusing on blocking unsafe inputs, preventing jailbreaks, and optimizing model performance. Its mission is to secure AI systems and ensure they remain safe and controllable for businesses worldwide.

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