Based in San Francisco, California, Turing is the world’s leading research accelerator for frontier AI labs and a trusted partner for global enterprises looking to deploy advanced AI systems. Turing accelerates frontier research with high-quality data, specialized talent, and training pipelines that advance thinking, reasoning, coding, multimodality, and STEM. For enterprises, Turing builds proprietary intelligence systems that integrate AI into mission-critical workflows, unlock transformative outcomes, and drive lasting competitive advantage.
Recognized by Forbes, The Information, and Fast Company among the world’s top innovators, Turing’s leadership team includes AI technologists from Meta, Google, Microsoft, Apple, Amazon, McKinsey, Bain, Stanford, Caltech, and MIT. Learn more at www.turing.com
Department: Field Engineering — Pre-Sales (Founding)
Level: Senior (Staff level considered for exceptional candidates)
Domain: enterprise knowledge work (EKW)
Location: Strong preference for SF Bay Area but will consider Seattle and NYC.
Reports to: CRO (until VP, Field Engineering is hired)
Compensation: OTE $260,000–320,000 (Senior) or $325,000–400,000 (Staff) · 75/25 base/variable split · Equity
The Role
You will be the first technical partner to Turing's Research Partners selling and demoing custom and off-the-shelf human expert datasets into the frontier AI labs in the enterprise knowledge work domain. Every major lab is racing to push the frontier on multi-step reasoning over enterprise data, tool use, long-horizon task completion, and evaluation that reflects real work. They buy datasets, benchmarks, graders, and expert human expertise from Turing to train, post-train, and evaluate those capabilities. Your job is to convert our technical depth into won revenue.
This is a founding Field Engineering role. The playbook, the demo library, the qualification bar, and the handoff to Production Engineering do not yet exist — you will build them.
What You'll Do1) Technical discovery — lead the technical track on every qualified EKW opportunity
- Partner with Research Partners to run the technical conversation with lab researchers and engineers.
- Understand what agentic capability the lab is trying to unlock, what "good" looks like, and what evaluations a post-training team would actually trust.
- Qualify opportunities against a bar you help define: scope, feasibility, strategic fit.
2) Solution architecture — translate capability goals into scoped Turing deliverables
- Map research goals to Turing's offering shapes: agentic trajectories, rubric-graded reasoning tasks, tool-use evaluations, and domain-specialist-built datasets.
- Author technical proposals that frontier lab research leads accept and the Production Engineering team can execute without a rewrite.
3) Prototyping and demo-building — prove the approach before contract
- Build reference agent loops, sample multi-step evaluations, and graded trajectories that demonstrate quality before contract signature.
- The demo has to run. Expect to write real code.
4) POC ownership — take paid pilots from kick-off to scale-up decision
- Design a measurement plan the lab's research team will actually read and act on.
- Define success criteria, own the cadence, convert POC to production contract.
5) R&D interface — channel GTM-to-R&D asks for Enterprise Knowledge Workflow opportunities
- Pre-digest technical asks before routing to R&D. Shield research time from ad hoc calendaring.
- Maintain a collaboration cadence that R&D teams trust.
6) Playbook building — codify what works so future hires scale faster than you did
- Document discovery scripts, qualification criteria, demo artifacts, and objection-handling patterns for EKW opportunities.
- Own the EKW section of the Field Engineering knowledge base.
- 5+ years in applied AI, data engineering, or ML engineering, with meaningful work on agentic systems, RAG, tool use, or enterprise-knowledge LLM applications.
- Strong Python fluency and production experience with LLM orchestration frameworks (LangGraph, LlamaIndex, DSPy, or equivalents).
- Experience designing evaluations for multi-step reasoning or agentic systems — rubric design, trajectory grading, measurement beyond single-turn accuracy.
- Exposure to complex enterprise workflows (financial services, life sciences, legal, or similar) and the data and permission realities inside them.
- A high written communication bar: you can produce a scoping document that a frontier lab research lead accepts without a rewrite.
- Commercial instinct: you want to be in customer meetings, you can read a room, and you are willing to be measured on revenue.
- Prior time at a frontier AI lab, an AI startup building agentic products, or an enterprise AI team shipping to production.
- Experience with agentic or reasoning benchmarks (e.g., GAIA, τ-bench, or equivalents).
- Background in pre-sales, solutions architecture, or technical consulting.
- 30 days: first FE-led POC signed; enterprise knowledge work domain discovery playbook v1 published; three demo artifacts in the library.
- 60 days: win rate on EKW opportunities you cover is materially above the non-covered baseline; qualification bar codified.
- 180 days: a second Pre-Sales AI Solutions Engineer in the EKW domain hired behind you, ramping off your playbook.
Why Turing
- Work directly with the world's leading AI labs at the cutting edge of post-training, evaluation, and agentic AI research.
- Real impact on the path to AGI: the datasets, evaluations, and playbooks you build will directly influence frontier model development.
- Founding-team leverage. You will set the standards, not inherit them.
- Direct-to-research customers. You will spend your time talking to the people building AGI, not to procurement.
Send a resume or CV and a short note on a technical artifact you built — ideally something customer-facing, evaluation-adjacent, or that demonstrates how you think about technical scoping. We read every submission.
We are client first: We put our clients at the center of everything we do, because their success is the ultimate measure of our value.
We work at Start-Up Speed: We move fast, stay agile and favor action because momentum is the foundation of perfection
We are AI forward: We help our clients build the future of Al and implement it in our own roles and workflow to amplify productivity.
Amazing work culture (Super collaborative & supportive work environment; 5 days a week)
Awesome colleagues (Surround yourself with top talent from Meta, Google, LinkedIn etc. as well as people with deep startup experience)
Competitive compensation
Flexible working hours
Don’t meet every single requirement? Studies have shown that women and people of color are less likely to apply to jobs unless they meet every single qualification. Turing is proud to be an equal opportunity employer. We do not discriminate on the basis of race, religion, color, national origin, gender, gender identity, sexual orientation, age, marital status, disability, protected veteran status, or any other legally protected characteristics. At Turing we are dedicated to building a diverse, inclusive and authentic workplace and celebrate authenticity, so if you’re excited about this role but your past experience doesn’t align perfectly with every qualification in the job description, we encourage you to apply anyways. You may be just the right candidate for this or other roles.
For applicants from the European Union, please review Turing's GDPR notice here.
Skills Required
- 5+ years in applied AI, data engineering, or ML engineering
- Strong Python fluency and production experience with LLM orchestration frameworks
- Experience designing evaluations for multi-step reasoning or agentic systems
- Exposure to complex enterprise workflows
- High written communication skills to produce accepted scoping documents
Turing Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Turing and has not been reviewed or approved by Turing.
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Fair & Transparent Compensation — Feedback suggests USD-denominated pay and access to higher-paying clients can outpace local benchmarks for many non‑U.S. developers. Payout timing and processing are described as predictable once engagements begin, which supports confidence in earnings.
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Wellbeing & Lifestyle Benefits — Feedback suggests remote‑first work with flexible hours is a consistent positive that enhances day‑to‑day balance. The ability to work from anywhere and maintain autonomy is frequently highlighted as part of the overall rewards experience.
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Healthcare Strength — Feedback suggests some U.S. corporate roles include comprehensive health benefits, with individual accounts referencing employer‑covered medical insurance. These signals indicate stronger healthcare support for certain employee populations.
Turing Insights
What We Do
We now live in a remote-first world and every company is in a race to find the best remote engineers. There are so many amazing engineers all over the world. Turing’s mission is to help unleash the world’s untapped human potential. More than 300 companies, including those backed by Google Ventures, Bloomberg, Andreessen, Founders Fund, and Kleiner are already using Turing to spin up their engineering dream teams. Turing’s hiring platform combines the planetary reach and AI to deliver your ideal engineers in order to help you spin up your engineering dream team. Our deep matching intelligence finds the best Turing developers across 100+ skills like React, Node, Python, Golang, Angular, Swift, Java, and many more. As part of our rigorous vetting process, we also review software engineers’ technical abilities, English skills, and remote working capabilities. Turing ensures time zone overlap, transparency, and reliable communication in order to make remote development easy for you after the match. The Turing team has deep expertise in AI and building engineering dream teams in the U.S. at top companies. Turing company is backed by well-known investors like Facebook’s initial CTO (Adam D’Angelo), executives from Google, Facebook, Amazon, Twitter, Founders Fund (investors in Facebook, Tesla, Asana, etc). Turing.com is led by serial A.I. entrepreneurs Jonathan Siddharth and Vijay Krishnan, their last A.I. firm leveraged remote talent and had a successful acquisition.








