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Pipeline run

865c7c39-cc12-456d-8251-d26de5c4a2fe

Pipeline LLM cost (USD)
API 1: $0.0034 API 2: $0.0000 API 3: $0.0000 Total: $0.0034

Client output enrichment

v2 Skill cluster · Nature of work · AI index · Tech stack maturity · Evidence · KRA description
Nature of work · ML Infrastructure / MLOps / ML Systems
Create and review technical training tasks for ML infra/MLOps, then write reference solutions, rubrics, and feedback on distributed training, training pipelines, and GPU kernel optimization.
""Design challenging tasks across MLOps, ML infrastructure, and ML systems for use in model training""
Tech stack maturity
AI-Native & Bleeding-Edge cache hit
The stack centers on cutting-edge ML systems work like distributed training, GPU kernel optimization, JAX, Pallas, Triton, and framework internals, which is characteristic of AI-native bleeding-edge engineering.
AI index (0 = no AI use, 5 = totally AI-dependent · v2.1)
3.20 / 5
Title match
Has AI skill
AI skill (primary)
· AI skill (secondary)
· On AI team
· Builds AI products
vocab breakdown (legacy)
Assistants (×1):
Frameworks (×2):
Models / concepts (×3): LLMs, MLOps, AI, ML, GenAI, Machine Learning
Evidence — skills matched in JD (13)
MLOps Machine Learning Distributed Training Training Pipelines GPU Kernel Optimization ML Infrastructure ML Systems JAX PyTorch Pallas Triton ML Framework Internals Distributed Systems
Skill cluster (5 dimension groups, role-scoped)
ML Frameworks and Libraries
JAX PyTorch
AI Governance and Model Security
Machine Learning
Cloud Platforms
Distributed Systems
Deployment Rollouts and Release Control
MLOps
Cross-cutting / unaligned
Distributed Training Training Pipelines GPU Kernel Optimization ML Infrastructure ML Systems Pallas Triton ML Framework Internals
Show KRA description ↓
Design challenging tasks across MLOps, ML infrastructure, and ML systems for use in model training Write accurate, well-structured reference solutions covering distributed training, training pipelines, and GPU kernel optimization Evaluate submissions from other engineers and provide clear, written technical feedback Develop rubrics and guidelines for assessing training pipeline design, distributed systems reasoning, and kernel-level optimization Collaborate with other ML subject matter experts to maintain consistency and accuracy across the training data Guide research and engineering teams toward closing specific knowledge gaps in ML framework internals 2+ years of professional experience in ML Infrastructure, MLOps, or ML Systems Engineering at a recognized, top-tier organization Hands-on production experience with JAX and/or Py Torch at scale — real training workloads, not coursework or hobby projects Experience writing or optimizing custom GPU kernels with Pallas (JAX) or Triton Demonstrable career progression Strong written English — you can explain complex technical decisions clearly Reliable availability for at least 30 hours/week on weekdays

Signals

Skill ml-engineer
0.62
Alias ml-ops-engineer
1.00
KRA ml-ops-engineer
0.48

Post-classification

Centroidupdated · n=1
Alias collision log
New-role queue
New skills captured0
New KRA captured
Status: extract_from_jd_done Created: 2026-05-19T17:45:38.185889Z Updated: 2026-05-19T17:45:39.772914Z
Flow Current 3-step pipeline

1 POST /skills/extract-from-jd

2 POST /skills/extract-details

3 POST /skills/final-role-output

Role Chosen role & resolution

No chosen role stored for this run.

Job description

Hiring MLOps Engineers (JAX, Py Torch, Pallas/Triton) to help train the next generation of large language models at a leading frontier AI lab.

Remote from India.

$35–$45/hour USD, W-2 contract, 30–40 hrs/week weekdays.

Para AI Labs is sourcing this role on behalf of Mercor — a well-established AI hiring platform — for a leading frontier AI lab's Gen AI team.

You won't be labeling data.

You'll be designing the technical problems, writing reference solutions, and building the rubrics that feed directly into how the next generation of LLMs reason about MLOps and ML systems.

The essentials Pay: $35–$45/hour USD (strong rates for India-based MLOps work) Work mode: Fully remote from anywhere in India Commitment: 30–40 hrs/week, weekdays only Employment: W-2 via Cincinnatus LLC (the employer of record) Placement: A leading frontier AI lab's Gen AI team What you'll do Design challenging tasks across MLOps, ML infrastructure, and ML systems for use in model training Write accurate, well-structured reference solutions covering distributed training, training pipelines, and GPU kernel optimization Evaluate submissions from other engineers and provide clear, written technical feedback Develop rubrics and guidelines for assessing training pipeline design, distributed systems reasoning, and kernel-level optimization Collaborate with other ML subject matter experts to maintain consistency and accuracy across the training data Guide research and engineering teams toward closing specific knowledge gaps in ML framework internals What you need 2+ years of professional experience in ML Infrastructure, MLOps, or ML Systems Engineering at a recognized, top-tier organization Hands-on production experience with JAX and/or Py Torch at scale — real training workloads, not coursework or hobby projects Experience writing or optimizing custom GPU kernels with Pallas (JAX) or Triton Demonstrable career progression Strong written English — you can explain complex technical decisions clearly Reliable availability for at least 30 hours/week on weekdays Why this is worth your time Top-tier USD rates for remote India-based MLOps work Direct, measurable impact on a frontier AI lab's next-generation models Proper W-2 employment via Cincinnatus — no invoice chasing, no contractor tax surprises, no weekend work Work alongside senior ML engineers and researchers from across the global AI ecosystem About Para AI Labs Para AI Labs is the curated destination for high-quality AI training and evaluation roles from leading platforms including Mercor, Scale AI, Turing, and others.

Skills from this JD

Each row merges API 1 extraction, API 2 library match / v3 orchestration (dimensions + locked dims), and API 3 persistence tags.

MLOps Primary No API 2 row (run stopped after API 1 or history missing)
Machine Learning Primary No API 2 row (run stopped after API 1 or history missing)
Distributed Training Primary No API 2 row (run stopped after API 1 or history missing)
Training Pipelines Primary No API 2 row (run stopped after API 1 or history missing)
GPU Kernel Optimization Primary No API 2 row (run stopped after API 1 or history missing)
ML Infrastructure Primary No API 2 row (run stopped after API 1 or history missing)
ML Systems Primary No API 2 row (run stopped after API 1 or history missing)
JAX Primary No API 2 row (run stopped after API 1 or history missing)
PyTorch Primary No API 2 row (run stopped after API 1 or history missing)
Pallas Primary No API 2 row (run stopped after API 1 or history missing)
Triton Primary No API 2 row (run stopped after API 1 or history missing)
ML Framework Internals Primary No API 2 row (run stopped after API 1 or history missing)
Distributed Systems Primary No API 2 row (run stopped after API 1 or history missing)

Library artifacts (this run)

No artifact rows for this run.
nano JD Parser — gpt-4.1-nano click to toggle
RoleMLOps Engineer
CompanyMercor
Experience2+ years of professional experience
CTC{'max': 45, 'min': 35, 'raw': '$35–$45/hour USD', 'period': 'hourly', 'currency': 'USD'}
DomainIT Services & Consulting
Location India (remote)
JD type pass
Show raw JSON
{
  "JD_type": "pass",
  "about_company": {
    "source_marker": {
      "first_5_words": "Para AI Labs is the",
      "last_5_words": "including Mercor, Scale AI,"
    },
    "text": "Para AI Labs is the curated destination for high-quality AI training and evaluation roles from leading platforms including Mercor, Scale AI, Turing, and others.",
    "word_count": 27
  },
  "certifications": [],
  "company_name": "Mercor",
  "ctc": {
    "currency": "USD",
    "max": 45,
    "min": 35,
    "period": "hourly",
    "raw": "$35\u2013$45/hour USD"
  },
  "domain": {
    "primary": {
      "aliases": [],
      "domain": "IT Services \u0026 Consulting"
    },
    "secondary": null
  },
  "education": [],
  "experience": {
    "max": null,
    "min": 2,
    "raw": "2+ years of professional experience"
  },
  "job_locations": [
    {
      "aliases": [],
      "city": null,
      "country": "India",
      "state": null,
      "work_mode": "remote"
    }
  ],
  "role": "MLOps Engineer",
  "role_aliases": [
    "MLOps Engineer",
    "Machine Learning Operations Engineer"
  ],
  "role_archetype": "Engineering",
  "roles_and_responsibilities": [
    {
      "bullet_count": 6,
      "heading": "What you\u0027ll do",
      "heading_was_present": true,
      "source_marker": {
        "first_5_words": "Design challenging tasks across MLOps,",
        "last_5_words": "gaps in ML framework internals"
      },
      "text": "Design challenging tasks across MLOps, ML infrastructure, and ML systems for use in model training\nWrite accurate, well-structured reference solutions covering distributed training, training pipelines, and GPU kernel optimization\nEvaluate submissions from other engineers and provide clear, written technical feedback\nDevelop rubrics and guidelines for assessing training pipeline design, distributed systems reasoning, and kernel-level optimization\nCollaborate with other ML subject matter experts to maintain consistency and accuracy across the training data\nGuide research and engineering teams toward closing specific knowledge gaps in ML framework internals",
      "word_count": 66
    },
    {
      "bullet_count": 6,
      "heading": "What you need",
      "heading_was_present": true,
      "source_marker": {
        "first_5_words": "2+ years of professional experience",
        "last_5_words": "on weekdays"
      },
      "text": "2+ years of professional experience in ML Infrastructure, MLOps, or ML Systems Engineering at a recognized, top-tier organization\nHands-on production experience with JAX and/or Py Torch at scale \u2014 real training workloads, not coursework or hobby projects\nExperience writing or optimizing custom GPU kernels with Pallas (JAX) or Triton\nDemonstrable career progression\nStrong written English \u2014 you can explain complex technical decisions clearly\nReliable availability for at least 30 hours/week on weekdays",
      "word_count": 66
    }
  ],
  "urls": []
}
API 1 — extract-from-jd click to toggle
{
  "final_skills": [
    {
      "is_primary": true,
      "skill_name": "MLOps"
    },
    {
      "is_primary": true,
      "skill_name": "Machine Learning"
    },
    {
      "is_primary": true,
      "skill_name": "Distributed Training"
    },
    {
      "is_primary": true,
      "skill_name": "Training Pipelines"
    },
    {
      "is_primary": true,
      "skill_name": "GPU Kernel Optimization"
    },
    {
      "is_primary": true,
      "skill_name": "ML Infrastructure"
    },
    {
      "is_primary": true,
      "skill_name": "ML Systems"
    },
    {
      "is_primary": true,
      "skill_name": "JAX"
    },
    {
      "is_primary": true,
      "skill_name": "PyTorch"
    },
    {
      "is_primary": true,
      "skill_name": "Pallas"
    },
    {
      "is_primary": true,
      "skill_name": "Triton"
    },
    {
      "is_primary": true,
      "skill_name": "ML Framework Internals"
    },
    {
      "is_primary": true,
      "skill_name": "Distributed Systems"
    }
  ],
  "jd_role": {
    "display_name": "MLOps Engineer",
    "rationale": null,
    "role_archetype": "Engineering",
    "slug": ""
  },
  "nano_parsed": {
    "JD_type": "pass",
    "about_company": {
      "source_marker": {
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        "last_5_words": "including Mercor, Scale AI,"
      },
      "text": "Para AI Labs is the curated destination for high-quality AI training and evaluation roles from leading platforms including Mercor, Scale AI, Turing, and others.",
      "word_count": 27
    },
    "certifications": [],
    "company_name": "Mercor",
    "ctc": {
      "currency": "USD",
      "max": 45,
      "min": 35,
      "period": "hourly",
      "raw": "$35\u2013$45/hour USD"
    },
    "domain": {
      "primary": {
        "aliases": [],
        "domain": "IT Services \u0026 Consulting"
      },
      "secondary": null
    },
    "education": [],
    "experience": {
      "max": null,
      "min": 2,
      "raw": "2+ years of professional experience"
    },
    "job_locations": [
      {
        "aliases": [],
        "city": null,
        "country": "India",
        "state": null,
        "work_mode": "remote"
      }
    ],
    "role": "MLOps Engineer",
    "role_aliases": [
      "MLOps Engineer",
      "Machine Learning Operations Engineer"
    ],
    "role_archetype": "Engineering",
    "roles_and_responsibilities": [
      {
        "bullet_count": 6,
        "heading": "What you\u0027ll do",
        "heading_was_present": true,
        "source_marker": {
          "first_5_words": "Design challenging tasks across MLOps,",
          "last_5_words": "gaps in ML framework internals"
        },
        "text": "Design challenging tasks across MLOps, ML infrastructure, and ML systems for use in model training\nWrite accurate, well-structured reference solutions covering distributed training, training pipelines, and GPU kernel optimization\nEvaluate submissions from other engineers and provide clear, written technical feedback\nDevelop rubrics and guidelines for assessing training pipeline design, distributed systems reasoning, and kernel-level optimization\nCollaborate with other ML subject matter experts to maintain consistency and accuracy across the training data\nGuide research and engineering teams toward closing specific knowledge gaps in ML framework internals",
        "word_count": 66
      },
      {
        "bullet_count": 6,
        "heading": "What you need",
        "heading_was_present": true,
        "source_marker": {
          "first_5_words": "2+ years of professional experience",
          "last_5_words": "on weekdays"
        },
        "text": "2+ years of professional experience in ML Infrastructure, MLOps, or ML Systems Engineering at a recognized, top-tier organization\nHands-on production experience with JAX and/or Py Torch at scale \u2014 real training workloads, not coursework or hobby projects\nExperience writing or optimizing custom GPU kernels with Pallas (JAX) or Triton\nDemonstrable career progression\nStrong written English \u2014 you can explain complex technical decisions clearly\nReliable availability for at least 30 hours/week on weekdays",
        "word_count": 66
      }
    ],
    "urls": []
  },
  "rejected": false,
  "rejection_reason": null,
  "run_id": "865c7c39-cc12-456d-8251-d26de5c4a2fe",
  "stage3_signals": {
    "alias_match_roles": [
      {
        "display_name": "ML Ops Engineer",
        "matched_count": null,
        "role_id": 16,
        "score": 1.0,
        "slug": "ml-ops-engineer",
        "total_count": null
      }
    ],
    "kra_match_roles": [
      {
        "display_name": "ML Ops Engineer",
        "matched_count": null,
        "role_id": 16,
        "score": 0.4844,
        "slug": "ml-ops-engineer",
        "total_count": null
      },
      {
        "display_name": "ML Engineer",
        "matched_count": null,
        "role_id": 3,
        "score": 0.4771,
        "slug": "ml-engineer",
        "total_count": null
      },
      {
        "display_name": "DevOps Engineer",
        "matched_count": null,
        "role_id": 10,
        "score": 0.3801,
        "slug": "devops-engineer",
        "total_count": null
      },
      {
        "display_name": "Android Engineer",
        "matched_count": null,
        "role_id": 4,
        "score": 0.3657,
        "slug": "android-engineer",
        "total_count": null
      },
      {
        "display_name": "Backend Engineer",
        "matched_count": null,
        "role_id": 1,
        "score": 0.3565,
        "slug": "backend-engineer",
        "total_count": null
      }
    ],
    "skill_match_roles": [
      {
        "display_name": "ML Engineer",
        "matched_count": 8,
        "role_id": 3,
        "score": 0.6154,
        "slug": "ml-engineer",
        "total_count": 13
      },
      {
        "display_name": "ML Ops Engineer",
        "matched_count": 5,
        "role_id": 16,
        "score": 0.3846,
        "slug": "ml-ops-engineer",
        "total_count": 13
      },
      {
        "display_name": "DevOps Engineer",
        "matched_count": 2,
        "role_id": 10,
        "score": 0.1538,
        "slug": "devops-engineer",
        "total_count": 13
      },
      {
        "display_name": "Data Engineer",
        "matched_count": 2,
        "role_id": 2,
        "score": 0.1538,
        "slug": "data-engineer",
        "total_count": 13
      },
      {
        "display_name": "AI Engineer",
        "matched_count": 2,
        "role_id": 13,
        "score": 0.1538,
        "slug": "ai-engineer",
        "total_count": 13
      }
    ],
    "stage35_ran": false
  },
  "stage4_decision": {
    "alias_collision_detected": false,
    "case": "A",
    "chosen_role": {
      "display_name": "ML Ops Engineer",
      "matched_count": null,
      "role_id": 16,
      "score": 1.0,
      "slug": "ml-ops-engineer",
      "total_count": null
    },
    "confidence": 0.4844,
    "llm2_fired": false,
    "llm2_reasoning": null,
    "queued": false,
    "reasoning": "Stage 1 title \u0027ML Ops Engineer\u0027 (alias match, sim 1.00); KRA agrees (0.48)"
  },
  "stage5_updates": {
    "centroid_n_after": 1,
    "centroid_updated": true,
    "collision_log_id": null,
    "new_kra_attached": null,
    "new_skills_attached": [],
    "queue_entry_id": null,
    "v3_pipeline_triggered": false,
    "v3_role_slug": null,
    "v3_run_id": null
  }
}
API 2 — extract-details
{}
API 3 — final-role-output
{}

LLM Calls

Every model call made for this run, in pipeline order. Click a card to see the model's response.

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