$Not specified
As a Software Engineer Intern, you will ship agentic matchmaking from research to production and optimize AI chat systems for better performance. You will collaborate with cofounders and the product team to translate user problems into actionable features.
Candidates should have 2-4+ personal projects or intern experiences and strong programming foundations. Proficiency in TypeScript and Python, along with experience in AI and context engineering, is essential.
About the Role We’re looking for a self-starter who loves building new products in an iterative, fast-moving environment. As a Software Engineer Intern, you’ll report to the cofounders and other members of the engineering team and work closely with the product team. You’ll bring our smartest matchmaking AI to life, design chat agents that feel human, and create internal tools that agents use to reason, retrieve, and act. This is an early, high-ownership role (<10 people on the team) where your decisions will define our agentic system’s foundations. In this role, you will: Ship agentic matchmaking from research to production—own the end-to-end loop (retrieval, reasoning, tool use, safety) and drive measurable accuracy improvements. Build a prompt & model evaluation harness (offline + online) to compare prompts/models/policies, support A/B testing, and enable fast iteration. Optimize AI chat systems for lower latency, higher perceived “human-likeness,” and more consistent outcomes across providers. Design and maintain context engineering pipelines (RAG, memory, summarization, compression, grounding) for conversations and matchmaking. Stand up observability for agents (traces, costs, failures, hallucinations, guardrails) and create dashboards that guide product decisions. Collaborate daily with the cofounders and product to translate user problems into agent behaviors, experiments, and shipped features. Write clear, maintainable code; create small internal tools and SDKs other engineers (and AIs) will use. Your background looks something like: 2–4+ personal projects or intern experiences Strong programming foundations (data structures, algorithms, testing, profiling). TypeScript (product code, tools, services) and Python (model ops, evals, data) proficiency. Experience building with multiple LLM providers and tool-calling/function-calling; comfortable swapping models and orchestrating fallbacks. Hands-on with RAG (indexing, chunking, embeddings, reranking) and context engineering for reliability and cost/latency trade-offs. Practical prompt engineering and prompt libraries; can reason about failure modes and systematically improve prompts/policies. Ability to define metrics/KPIs (accuracy, latency, cost, safety), run A/B tests, and loop in human feedback for quality. Comfortable with MongoDB in production; familiarity with vector databases (e.g., pgvector/Redis/Pinecone/Weaviate) is a plus. Extra plusses (the more the better): MCP (Model Context Protocol), agent frameworks (LangGraph/CrewAI/Assistants), LLM observability/evals (e.g., Langfuse/Promptfoo/Ragas/TruLens), retrieval & embeddings know-how, safety/guardrails/red-teaming. Builder’s mindset: thrives with ambiguity, ships quickly, debugs systematically, and sweats the user experience. Location: Berkeley, CA (onsite preferred). Remote is acceptable for exceptional candidates. About Ditto We are a team of young and passionate people building the future of social networking. Both co-founders dropped out of UC Berkeley in their freshman years to pursue this vision. We're starting with dating, where our AI handles everything from profile creation to scheduling actual dates. Also, we already went viral on every campus we launched. With this vision, we've secured funding from Google and other Tier 1 VCs + incredible angels and have attracted brilliant minds from top universities and research labs from MIT, Stanford, Berkeley, and DeepMind. We're combining cutting-edge AI technology with thoughtful design to create experiences that genuinely improve how people connect.
This job posting was last updated on 10/1/2025