We’re building a collective intelligence layer for revenue teams—connecting messy, real‑world data into context that AI agents can learn from and act on autonomously. The goal: replace meta‑work with action that compounds revenue per rep—less digging through data and dashboards, more time moving pipeline.
If you’re entrepreneurial and want to help define what AI‑native software looks like—how data becomes context, how agents plan and act, and how “chat” turns into outcomes—you’ll like building here. We ship in tight loops, learn in public, and measure by customer impact. Backed by SYN Ventures, we're working with customers like BigID and Modern Health.
If this work gets you excited—and you want to leave a mark—let’s talk.
Create the collective memory. Ingest and unify data from many sources (CRM and far beyond) into a semi‑structured context graph that captures what leads to winning deals—modeled at multiple levels with strong tenant isolation.
Orchestrate agentic systems. Design planner/executor patterns, tools, and policies (including MCP‑style interfaces) that turn context into content and then into actions. Define simple eval harnesses to measure quality.
Deliver where users work. Expose capabilities through native surfaces (apps, chat, and integrations) in tight loops with product and GTM—reducing context switches and meta‑work.
Prove outcomes. With product and customers, define success metrics (e.g. tasks auto‑completed, adoption/retention, pipeline lift; keep latency in check) and wire observability so we can ship → learn → iterate quickly.
Balance cost & reliability. Tune accuracy, latency, and cost for agent runs and retrieval; design fallbacks and safeguards that keep the system dependable under real‑world load.
Owner/builder mindset with product taste — you frame problems, choose the simplest path, and own outcomes.
4+ years building & owning applications end-to-end, with 0→1 wins and measurable business impact.
Curious by default; comfortable taking smart risks and turning fuzzy problems into shipped outcomes.
You talk in terms of impact and trade-offs; decide with ~70% info; turn ambiguity into simple, testable systems.
Experience stitching messy, multi‑source data into something a product can reason over; strong instincts for reliability, privacy, and multi‑tenant boundaries.
Able to hit the ground running with React, Python and standing up cloud infrastructure.
Nice to have: exposure to agent orchestration/planning, retrieval/graph‑shaped context, eval frameworks, and distributed systems at scale.
Outcome‑first. We anchor on the seller’s job; stay close to customers; success = adoption, pipeline quality, time‑to‑value.
Ship small, learn fast. Start simple; instrument; iterate with “sniff tests.”
High trust, high ownership. Own problems end‑to‑end and make product‑level decisions with the team.
We build with: React/TypeScript, Python, FastAPI/GraphQL, PostgreSQL/DynamoDB, AWS, Kubernetes, Pulumi, Spark/Databricks, and event‑driven architectures. Familiarity helps, but isn’t required.
Base salary: $100–$200k (based on experience)
Equity: meaningful ownership in a fast-growing company
Benefits: health, dental, vision
Location: Hybrid San Francisco, New York City, Vancouver — 3 days in‑office, 2 remote
Team: small, senior; big surface area and ownership
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