Founding Go-to-Market Engineer (Contract-to-Hire)

Posted 3 Days Ago
Be an Early Applicant
New York, NY, USA
In-Office
140K-260K Annually
Mid level
Artificial Intelligence • Marketing Tech • Sales • Big Data Analytics
The Role
Build the context-management layer and semantic data access patterns for AI agents: retrieval/embedding pipelines, self-healing data models, knowledge graphs, semantic modeling, LLM orchestration, and production ML monitoring and evaluation to enable reliable AI-driven GTM execution.
Summary Generated by Built In
Founding GTM Engineer

Location: New York City
Type: Full-time


ABOUT DEEPLINE

Deepline is the operating system for GTM execution. We turn operator intent into governed execution and measurable outcomes. Not more dashboards. Not more automations. The backend for GTM engineering that makes your GTM stack actually work. Our vision is "ambient automation" that exists & solves problems before you know they exist.

We're building the universal API for B2B businesses.
Replace 20+ API calls to dozens of tools with a single call to Deepline's Context API.

Deepline is a context manager that understands how the real-world works, with an intent compiler that turns context & natural language into outcomes with guardrails and observability.

  • Team: Small senior team from Uber, Lyft, OM1, Capchase. MIT, Waterloo, Berkeley, Princeton, UCSD.
  • Funding: $3.3M pre-seed from Lerer Hippeau, K5 Global, Exceptional Capital, Sabrina Hahn, Rohan Shah


THE PROBLEM
Every AI tool today hits the same wall: they can't reliably access your company's knowledge. Claude Code can't query your Snowflake out-of-the-box. ChatGPT doesn't know your weird custom Salesforce schema. They hallucinate because they lack structured context.

The root cause: data infrastructure was built for humans, not AI agents reasoning about business context without tribal knowledge & context. Database access patterns are shifting. SQL won't be how AI systems query data in five years. We're moving to semantic queries, knowledge graphs, self-healing data models. No one has solved this.

You'll build the structured context management layer that makes AI context selection reliable in production. This isn't better RAG or fine-tuning. This is inventing new data access patterns and context architectures that power the next generation of AI applications in the fastest changing space around.

WHAT YOU'LL BUILD

Context Management API
Build the context layer AI systems need. Systems that maintain structured context across workflows, self-heal when data changes, and compound knowledge over time.

New Data Access Patterns
Design semantic query interfaces that replace SQL for AI agents. Build retrieval pipelines that reason about context before querying. Create systems that understand business semantics and go beyond data schemas.

Self-Healing Data Models
Architect feedback loops that automatically improve data models based on usage. Systems that detect when context breaks and fix it automatically. Knowledge graphs that evolve as the business evolves.

Semantic Modeling Infrastructure
Users need to be able to improve/expand their data model without data experts. Build the semantic layer that translates business questions & existing reports into precise, verifiable queries. Identity resolution across 50+ enterprise systems. Systems that learn customer language patterns and map them to business outcomes.


WHAT WE'RE LOOKING FOR

Required
• 3+ years building production systems
• Experience with retrieval systems, embeddings, vector databases, LLMs or knowledge graphs
• Production ML experience: monitoring, versioning, evaluation frameworks
• Experience with LLM orchestration (LangChain, LlamaIndex) and multi-agent systems
• Familiarity with semantic layers (dbt), data warehouses (Snowflake, BigQuery), enterprise data systems

Nice to Have
• Enterprise data systems (Snowflake, BigQuery, Salesforce, Segment, Gong)
• Multi-agent systems (LangGraph, CrewAI) or workflow orchestration (Airflow, Prefect)
• Knowledge graphs, graph databases, semantic layer tools (dbt, Cube)
• Real-time data pipelines and streaming architectures


TECH STACK

Core: Python (primary), TypeScript/JavaScript, SQL
LLMs: Anthropic Claude API, OpenAI, in-house frameworks
Knowledge Graphs/RAG
Data Infrastructure: Snowflake/BigQuery/Redshift, dbt, Kafka/Pulsar, Reverse ETL (Hightouch, Census)
Enterprise Integrations: Salesforce, HubSpot, Segment, Gong, Slack, Zendesk, Mixpanel/Amplitude


COMPANY CONTEXT

Stage: $3.3M pre-seed, proven product-market fit, growing adoption
Team: Small senior team from Uber, Lyft, OM1, Capchase. MIT, Princeton, UCSD. You'll be engineer #5-6. Direct collaboration with founders & customers
Culture: First-principles debate. Ship multiple times a day. Rapid iteration. In-person in NYC with quarterly off-sites.
Compensation: $140K-220K base + meaningful equity. Early-stage upside in proven company.



Jai, Saf, & Chirag
Co-founders of Deepline
Compensation
The base pay range for this role is $140,000 – $260,000 per year.

Skills Required

  • 3+ years building production systems
  • Experience with retrieval systems, embeddings, and vector databases
  • Experience with LLMs or knowledge graphs
  • Production ML experience (monitoring, versioning, evaluation frameworks)
  • Experience with LLM orchestration (LangChain, LlamaIndex) and multi-agent systems
  • Familiarity with semantic layers (dbt) and data warehouses (Snowflake, BigQuery)
  • Core programming: Python, TypeScript/JavaScript, and SQL
  • Experience with enterprise data systems (Salesforce, HubSpot, Segment, Gong)
  • Experience with workflow orchestration or streaming (Airflow, Prefect, Kafka/Pulsar)
  • Experience with knowledge graphs, graph databases, semantic layer tools
Am I A Good Fit?
beta
Get Personalized Job Insights.
Our AI-powered fit analysis compares your resume with a job listing so you know if your skills & experience align.

The Company
6 Employees

What We Do

Deepline is a GTM (Go-to-Market) data infrastructure platform that provides a unified CLI and API for waterfall enrichment, lead discovery, signal detection, and campaign activation. It helps revenue teams automate their go-to-market stack by integrating with tools like Claude Code, Cursor, and Codex, allowing users to turn data into actionable insights without needing new technical resources.

Similar Jobs

Palantir Technologies Logo Palantir Technologies

Software Engineer

Artificial Intelligence • Software
In-Office
New York, NY, USA
4400 Employees
145K-200K Annually

Palantir Technologies Logo Palantir Technologies

Software Engineer

Artificial Intelligence • Software
In-Office
New York, NY, USA
4400 Employees
135K-200K Annually

Palantir Technologies Logo Palantir Technologies

Deal Operations Administrator

Artificial Intelligence • Software
Hybrid
New York, NY, USA
4400 Employees
75K-112K Annually

Benchling Logo Benchling

Enterprise Account Executive

Cloud • Healthtech • Social Impact • Software • Biotech
Remote or Hybrid
3 Locations
605 Employees
140K-400K Annually

Similar Companies Hiring

Hanover Park Thumbnail
Artificial Intelligence • Fintech • Software • Financial Services
New York, New York
42 Employees
Golden Pet Brands Thumbnail
Digital Media • eCommerce • Information Technology • Marketing Tech • Pet • Retail • Social Media
El Segundo, California
178 Employees
Onshore Thumbnail
Artificial Intelligence • Fintech • Software • Financial Services
New York, New York
60 Employees

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account