bluedoor data·Job Postings API·bluedoor.sh ↗

HomeCompaniesCursorMachine Learning Data Systems

Machine Learning Data Systems

Cursor · San Francisco · On Site · Active · Ashby

Job facts

FieldValue
CompanyCursor
TitleMachine Learning Data Systems
Normalized title-
Department / teamEngineering / Engineering, Foundations
LocationSan Francisco, CA, United States
Work modelOn Site
Employment typeFull Time
Salary-
Statusactive
ATS providerAshby
Posted / first seen / 2026-05-29
Changed / last seen2026-06-18 / 2026-06-18

Related slices

PageWhat it containsOpen
Company jobsActive postings from Cursor.Open
Company breakdownsRole, location, ATS, and work model facets for this company.Open
ATS provider jobsActive postings observed through Ashby.Open
Provider filtered searchThe same provider as a filtered job collection.Open
City jobsActive postings in San Francisco.Open
Department jobsActive postings in Engineering.Open
Work model jobsActive On Site postings.Open
Lifecycle eventsOpen, update, close, and reopen events for this posting.Open
Original postingCanonical source or apply URL captured from the ATS.Open

Linked records

CompanyCursor
Sourcea1be9bce-7d19-4f33-8899-8faf8c351d4d
ATS providerAshby

Description

Our mission is to automate coding. The first step in our journey is to build the best tool for professional programmers, using a combination of inventive research, design, and engineering. Our organization is very flat, and our team is small and talent dense. We particularly like people who are truth-seeking, passionate, and creative. We enjoy spirited debate, crazy ideas, and shipping code. About the Role Cursor ships daily. Every release leaves signals behind: telemetry, prompts, completions, agent runs, sessions. Those signals power model improvement, evals, and experimentation. Data infrastructure is what turns them into something teams can trust. A lot of systems here started simple so we could move fast. Over time, the constraints change and the “good enough” version becomes the bottleneck. This role owns the full ladder: patch what should be patched, redesign what should be redesigned, ship the replacement, and operate it. Privacy guarantees are part of correctness. What we can retain and use depends on Privacy Mode and org configuration, and getting that wrong breaks a product promise. We choose work by business impact: what blocks product and model teams today, and what will block them next month. Sample projects include... A core pipeline started as a pragmatic reuse of infrastructure built for something else. It works, but it cannot guarantee properties downstream consumers now need (for example, point-in-time consistency). You design and ship the replacement while keeping the existing system running. A new product surface ships without instrumentation. You talk to the team, define what needs to be captured, and wire it through before the absence becomes anyone else’s problem. Eval coverage drops. You trace it to an instrumentation gap introduced weeks ago by a product change nobody flagged. You fix the gap, add a contract so it cannot recur, and ship the dashboard that would have caught it earlier. Multiple consumers depend on overlapping data. You design schema evolution and validation so changes in one place do not silently degrade the others. Storage costs rise faster than usage. You decide what is worth keeping, implement retention and compression, and delete what is not. What we're looking for We’re looking for someone who has built real systems at scale and cares about correctness, cost, and ergonomics. Strong signals include: Deep experience with Spark (Databricks or open-source Spark both count) Production experience with Ray Data Hands-on ownership of large data pipelines and storage systems Comfort debugging performance issues across client instrumentation, streaming, storage, and model-facing workflows, as well as, compute, storage, and networking layers Clear thinking about data modeling and long-term maintainability You have good judgment about when to patch and when to rebuild Nice to have Experience running or scaling ClickHouse Familiarity with dbt, Dagster, or similar orchestration and modeling tools We're in-person with cozy offices in North Beach, San Francisco and Manhattan, New York, replete with well-stocked libraries. Applying If there appears to be a fit, we'll reach to schedule 2-3 short technicals. After, we'll schedule an onsite in our office, where you'll work on a small project, discuss ideas, and meet the team. #LI-DNI

Full job record

Job IDbba56bbb49a586b1bfb1bd6507e169de38347134
Org ID6f3c9660-c42e-4e5a-8352-8b96453d18e3
Source IDa1be9bce-7d19-4f33-8899-8faf8c351d4d
Board IDa1be9bce-7d19-4f33-8899-8faf8c351d4d
Providerashby
Provider Job Key8d07fe0f-34aa-458b-88e8-091469a963dc
TitleMachine Learning Data Systems
Normalized Title
Statusactive
Activeyes
Location TextSan Francisco
DepartmentEngineering
TeamEngineering, Foundations
Employment Typefull_time
Workplace Typeon_site
Remote Policy
CountryUnited States
RegionCA
CitySan Francisco
Salary Raw
Salary Min
Salary Max
Salary Currency
Salary Period
Source URLhttps://jobs.ashbyhq.com/cursor/8d07fe0f-34aa-458b-88e8-091469a963dc
Apply URLhttps://jobs.ashbyhq.com/cursor/8d07fe0f-34aa-458b-88e8-091469a963dc/application
First Seen At2026-05-29 06:36:51Z
Last Seen At2026-06-18 10:20:03Z
Last Checked At2026-06-18 10:20:03Z
Last Changed At2026-06-18 10:20:03Z
Inactive At
Source Posted At
Source Updated At
Raw Payload Uris3://job-postings-prod-raw-590183727216/raw/provider=ashby/board=cursor/date=2026-06-18/2026-06-18T10-19-01-052Z-0ec2e1337a4d69bedb5473ec621b7f0dc09a72ef32f51defa5f0cffd306be305.json
Event Fields
{
  "content_hash": "bf563de332c655862b8af431820e75bcfc36b12fe6b098690fc7267d2c303826",
  "source_hash": "c50f29586128a3a7bc64bf2fa576c95eaed6f95f8f85b2b3d5e41a16b5b8c14c",
  "last_changed_at": "2026-06-18T10:20:03.592Z",
  "active_status": "active"
}
Parsed Structured
{
  "language": "en",
  "location": {
    "raw": "San Francisco",
    "city": "San Francisco",
    "region": "CA",
    "country": "United States",
    "is_remote": false,
    "confidence": 0.75
  },
  "salary_max": null,
  "salary_min": null,
  "inferred_at": "2026-06-18T10:20:03.492Z",
  "launch_scope": {
    "reason": "english_us_canada",
    "included": true,
    "language": "en",
    "location": {
      "raw": "San Francisco",
      "city": "San Francisco",
      "region": "CA",
      "country": "United States",
      "is_remote": false,
      "confidence": 0.75
    },
    "countries": [
      "United States"
    ]
  },
  "remote_policy": null,
  "salary_period": null,
  "workplace_type": "on_site",
  "salary_currency": null
}
Extensions
{}
Native Structured
{
  "id": "8d07fe0f-34aa-458b-88e8-091469a963dc",
  "team": "Engineering, Foundations",
  "title": "Machine Learning Data Systems",
  "jobUrl": "https://jobs.ashbyhq.com/cursor/8d07fe0f-34aa-458b-88e8-091469a963dc",
  "address": null,
  "applyUrl": "https://jobs.ashbyhq.com/cursor/8d07fe0f-34aa-458b-88e8-091469a963dc/application",
  "isListed": true,
  "isRemote": false,
  "location": "San Francisco",
  "updatedAt": null,
  "apiVersion": "ashby-non-user-graphql-v1",
  "department": "Engineering",
  "publishedAt": null,
  "workplaceType": "OnSite",
  "employmentType": "FullTime",
  "secondaryLocations": [
    {
      "location": "New York"
    }
  ]
}
Get this page with API

Rendered from the bluedoor Job Postings API. Reproduce it:

GET https://api.bluedoor.sh/job-postings/v1/jobs/bba56bbb49a586b1bfb1bd6507e169de38347134?include=descriptionJSON
GET https://api.bluedoor.sh/job-postings/v1/orgs/6f3c9660-c42e-4e5a-8352-8b96453d18e3JSON
GET https://api.bluedoor.sh/job-postings/v1/sources/a1be9bce-7d19-4f33-8899-8faf8c351d4dJSON
GET https://api.bluedoor.sh/job-postings/v1/jobs/bba56bbb49a586b1bfb1bd6507e169de38347134/eventsJSON