Lead Data Scientist (Agentic AI)
Dittoai
Posted: January 9, 2026
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Quick Summary
We're hiring a Lead Data Scientist to join our team and help build the agentic social network, a platform where profiles aren’t static pages, but AI agents that learn from experience, adapt, and help people form meaningful connections.
Required Skills
Job Description
Ditto is building the agentic social network — a platform where profiles aren’t static pages, but AI agents that learn from experience, adapt, and help people form meaningful connections.
As an AI-native company, Ditto is designed to operate as a continuously improving intelligence:
• agents learn from real behavior
• systems evolve through feedback
• safety, alignment, and control come first
We believe that systems that learn through interaction will outperform systems trained only on static human data — and unlock a new level of meaningful human connection.
Role Overview
We’re hiring a Lead Data Scientist (Data Engine) to design and own the learning backbone that allows Ditto’s agents to improve safely over time.
You will build systems that:
• capture continuous experience streams, not snapshots
• transform signals into rewards grounded in real outcomes
• feed those rewards back into agents
• prevent drift while still allowing improvement
• help the system reason and plan based on consequences, not guesswork
This role owns the full loop: data → experience → reward → feedback loops → discovering leverage points → adaptation → product outcomes
You are here to build a living system that learns — continuously — and to identify small, high-leverage changes that create outsized impact over time.
What You’ll Build
You will architect the data engine that powers experiential learning:
• experience streams — behavior stitched across long time horizons
• reward streams — derived from actions, outcomes, and environment feedback
• models that capture intent, preference, habit, and change
• evaluation pipelines that measure long-term improvement, not one-off wins
• matchmaking & recommendation signals that uncover hidden compatibility
• systems that let agents plan based on predicted consequences
• experimentation frameworks (A/B tests, bandits, sequential testing)
• drift detection & safety monitors
• guardrails to prevent reward hacking, bias loops, or unintended behaviors
Everything must be auditable, grounded, explainable, repeatable.
Systems Thinking Expectations (Why This Role Is Different)
You will:
• design reinforcing loops that compound value responsibly
• design balancing loops that stabilize trust, fairness, and safety
• identify and avoid system traps (gaming metrics, tragedy-of-the-commons patterns)
• push on leverage points that change behavior — not just parameters
Sometimes the right move is not tuning a metric — it’s redefining the goal.
Must-Have Experience
We want someone who has built systems that learn from experience — not just analyzed history.
• 10+ years in applied ML / data science (production)
• 3+ years building LLM-enabled systems
• built behavioral pipelines that drive real agent / product behavior
• designed feedback & reward loops end-to-end
• hands-on large-scale data engineering
• deep, practical experience with agent frameworks, including:
• LangGraph (preferred)
• LangChain
• or equivalent agent-orchestration frameworks in production
• experience feeding data back into agents to actually change behavior
• strong grounding in:
• reward shaping
• value estimation
• world modeling
• temporal / TD learning
• long-horizon feedback loops
If your work stops at insights, this role will feel wrong. If your systems adapt and improve — you’ll thrive here.
Big Pluses
• social graphs, matchmaking, recommendation systems
• trust & safety, anomaly detection, abuse prevention
• causal inference / world-model thinking
• reinforcement learning or TD-style learning
• experience grounding rewards in real outcomes, not proxy metrics
How You’ll Work (AI-Native Collaboration)
You’ll partner closely with:
• AI / NLP — translating signals into agent behavior
• Product — defining success over long time horizons
• Infrastructure — building reliable, observable learning pipelines
• Leadership — aligning learning with business strategy
You won’t just evaluate results. You’ll design how the system learns from them.