About the job Applied AI Engineer — Pointer
Pointer — Applied AI Engineer
Type: Full-time | On-site (5 days/week) | San Francisco, CA Compensation: $180,000–$250,000 + competitive equity Hiring count: 1 Visa sponsorship: Yes — H-1B, O-1 Reports to: Not specified on role page
About Pointer
Pointer builds AI that operates computers the way humans do — navigating browsers, processing documents, and working through legacy systems — to automate the messiest enterprise finance operations. It is going after the $300B+ BPO industry built on labor arbitrage that software historically couldn't touch, because people were the product. Pointer recently raised a $6M seed round from Amplify Partners (first investors in Datadog, Modal, and other category-defining infrastructure companies). Early customers range from $500M to $5B in revenue, including a $2B property-management company automating accounts payable and invoice processing, and one of Belgium's largest retailers reconciling orders across decades-old legacy systems.
Founded: 2025 | Team size: 6 (4 full-time, 2 interns) | Total funding: $6M (Seed) Industry: Applied AI · enterprise automation · finance operations Website: pointer.ai Office: San Francisco, CA
Why Candidates Should Join
- Category-defining problem: Building AI that actually operates software end-to-end to attack a $300B+ market software couldn't previously touch.
- Top-tier backing: $6M seed from Amplify Partners, the first money into Datadog and Modal.
- Real enterprise traction: Live customers from $500M to $5B in revenue, including a $2B property manager and a major Belgian retailer.
- Frontier research-to-production work: Browser agent reliability, document understanding, fine-tuning pipelines, and inference optimization — shipping improvements every week.
- Ground-floor ownership: A six-person team in SF; this hire owns the intelligence layer that powers the whole product.
Intake Call Summary
- No intake-call transcript was supplied with this role page — an intake video is linked on Contrario but is not transcribed. Treat the points below as calibration signals surfaced on the page, not a verified intake summary.
- Calibration anchors for "strong company": Ramp, Databricks, Scale, and Stripe were named as reference points for the kind of applied-ML/AI background they want.
- Highest-signal background: Lab or research exposure (SAIL, BAIR, MIT CSAIL, similar) paired with evidence of shipping — the combination, not research alone.
- Roadmap adjacency matters: Recent work on LLMs, agents, RAG, fine-tuning, or production ML maps directly to Pointer's roadmap (browser agent reliability, document understanding, inference optimization).
- Communication bar: They explicitly screen for people who can describe what they built in a few clear sentences without buzzwords; script-like or keyword-stuffed self-presentation is a turn-off.
The Role
Own the intelligence that powers Pointer's automation. You'll turn research into production across browser agent reliability, document understanding, and inference optimization — making the system more accurate and faster every week.
What You'll Be Doing
- Push core automation capabilities to state-of-the-art: UI interaction, unstructured-data parsing, and tool use.
- Build adaptive systems that self-heal when environments change.
- Design fine-tuning pipelines that learn from customer-specific workflows.
- Optimize latency across the stack via model selection, quantization, caching, and routing strategies.
- Improve browser agent reliability and document-understanding accuracy on real enterprise data.
Tech stack: Python, PyTorch, and modern ML frameworks; LLMs, agents, RAG, and fine-tuning; inference optimization (quantization, caching, routing).
Requirements
- Strong Python and ML frameworks, particularly PyTorch.
- Applied ML/AI engineering experience at a strong company.
- Eval-and-metric mindset — thinks in terms of metrics that matter in production, not just benchmarks.
- Comfort with messy data and figuring out how to make it useful.
- Track record of shipping — can describe specific systems built end-to-end, not just research.
- Crisp communication about own work — can describe what they built in a few clear sentences without buzzwords.
- Based in San Francisco or willing to relocate; in-person 5 days a week.
Green Flags
- Real applied ML or AI engineering work at a respected Series A–D startup or selective technical org (calibration anchors: Ramp, Databricks, Scale, Stripe).
- Lab or research exposure (SAIL, BAIR, MIT CSAIL, or similar) paired with evidence of shipping, not just publishing — the combination is the highest-signal background.
- Recent momentum toward LLMs, agents, RAG, fine-tuning, or production ML systems; direct adjacency to Pointer's roadmap (browser agents, document understanding, inference optimization).
- Experience with RL, retrieval systems, or agent-based systems.
- Cross-stack range: inference optimization, data pipelines, fine-tuning, and model monitoring.
- Published ML papers or significant OSS contributions.
Red Flags
- Resumes or LinkedIn profiles stuffed with 300–400 word descriptions full of buzzwords and keywords.
- Inability to clearly articulate what they actually built and how they thought through problems.
- Communication style that sounds like reading off a script or cue card.
Role Details
Salary$180,000–$250,000EquityCompetitive equityOn-site policyIn-person in SF, 5 days a week (relocation supported)Visa sponsorshipH-1B, O-1Employment typeFull-timeLocationSan Francisco, CAExperience band (per role page)0–4 years
Screening Questions
- None specified on the role page — confirm with Contrario / the hiring manager before screening calls.
Interview Process
Stage 1 — Initial conversation — Behavioral chat focused on how you think, what you're interested in, and general fit. Stage 2 — Technical deep dive — Conversation about what you've built and how you think through problems (not whiteboarding or leetcode; the focus is walking through your actual work). Stage 3 — Take-home assessment Stage 4 — On-site work trial (1–2 days) — Working alongside the team on real problems. Pointer covers flights, accommodation, and compensates for your time. Stage 5 — Offer Extended Stage 6 — Candidate Hired — Candidate accepts and starts.
(Benefits & perks: coffee/lunch/dinner/snacks covered, M4 Pro/Max MacBook Pro + 2+ monitors, unlimited PTO, 401(k).)
Ideal Companies & Backgrounds
Updated June 24, 2026 Calibration anchors (applied ML/AI at a strong company) — Ramp, Databricks, Scale, Stripe Profile types — Respected Series A–D startups and selective technical orgs Research labs (paired with shipping) — SAIL, BAIR, MIT CSAIL, and similar
No "Show all X companies" list was present on the page; the above is drawn from the named calibration anchors.
Ideal Candidate Profiles
For reference only — do not source these specific profiles. The role page flags these as DO NOT CONTACT. Pulkit Arya — LinkedIn URL not captured in HTML (icon button had no extractable link) Mohammed Tibian Zaman — LinkedIn URL not captured in HTML (icon button had no extractable link)
Rejected Candidate Feedback
- None provided on the role page.