Pipeline run
48e4c2bb-75ae-4079-bd0d-3d0aa1a77ea5
Pipeline LLM cost (USD)
API 1: $0.0040
API 2: $0.0000
API 3: $0.0000
Total: $0.0040
Client output enrichment
v2 Skill cluster · Nature of work · AI index · Tech stack maturity · Evidence · KRA description
role baseline loaded
sources · ai_index: jd · nature_of_work: jd · tech_stack_maturity: jd
Nature of work
· Data pipeline development
Build and operate AWS/Azure data pipelines and ML deployment tooling for high-volume time-series data, with CI/CD, monitoring, and incident response to keep releases and analytics services reliable.
""Design and develop scalable solutions for storing and retrieving high-volume time-series data.""
Tech stack maturity
Modern Cloud Native
The stack centers on cloud platforms, infrastructure as code, CI/CD, observability, and data/ML tooling commonly used in modern cloud-native data engineering environments.
AI index (0 = no AI use, 5 = totally AI-dependent · v2.1)
1.70 / 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):
MLOps, ML
Evidence — skills matched in JD (20)
AWS
Azure
Spark
Kafka
Kinesis
Azure Data Factory
MLflow
Jenkins
GitHub Actions
Terraform
Prometheus
Grafana
CI/CD
MLOps
ETL
ELT
Time-series data
High availability
Zero-downtime deployments
Root cause analysis
Skill cluster (8 dimension groups, role-scoped)
Cloud Platforms
AWS
Azure
Observability and Operations
Prometheus
Grafana
Data Lineage and Metadata
MLOps
ETL and ELT Tooling
Spark
Infrastructure as Code
Terraform
Messaging and Event Streaming
Kafka
Site Troubleshooting and Debugging
Root cause analysis
Cross-cutting / unaligned
Kinesis
Azure Data Factory
MLflow
Jenkins
GitHub Actions
CI/CD
ETL
ELT
Time-series data
High availability
Zero-downtime deployments
Show KRA description ↓
• Data Infrastructure & Engineering: Design and develop scalable solutions for storing and retrieving high-volume time-series data. Build robust ETL/ELT pipelines using AWS and Azure big data tools (e.g., Spark, Kafka, Kinesis, Azure Data Factory).
• CI/CD & MLOps: Develop and manage CI/CD pipelines for ML models and data infrastructure using MLflow, Jenkins, GitHub Actions, and Terraform. Enable reproducible, secure, and scalable deployments.
• Monitoring & Automation: Implement end-to-end monitoring for infrastructure, data pipelines, and ML services using Prometheus, Grafana, and custom alerting tools. Automate workflows to ensure high availability and zero-downtime deployments.
• Release & Incident Management: Manage releases across staging and production environments. Respond to Severity 1 incidents, lead root cause analysis (RCA), and implement permanent fixes.
• Collaboration & Process Improvement: Work with product teams to deploy releases, resolve customer escalations, and drive automation to improve onboarding and integration timelines.
• Analytics Enablement: Build tools to deliver insights into customer acquisition, operational efficiency, and business KPIs.
Signals
Skill
devops-engineer
0.40
Alias
devops-engineer
0.39
KRA
data-engineer
0.52
Post-classification
Centroidupdated · n=9
Alias collision log#30
New-role queue—
New skills captured8
New KRA captured—
Captured for admin review
Spark
primary
↔
Data Engineer
pending
Kinesis
primary
↔
Data Engineer
pending
Azure Data Factory
primary
↔
Data Engineer
pending
ETL
primary
↔
Data Engineer
pending
ELT
primary
↔
Data Engineer
pending
Time-series data
↔
Data Engineer
pending
Zero-downtime deployments
↔
Data Engineer
pending
Root cause analysis
↔
Data Engineer
pending
Status:
extract_from_jd_done
Created: 2026-05-19T00:14:41.384431Z
Updated: 2026-05-19T00:14:42.350465Z
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
Site Reliability Engineer Vestas is the world leader in wind technology and a Defining-force in the development of the wind power industry. Vestas’ core business comprises the development, manufacture, sale, marketing and maintenance of Wind Turbines. Come and Join us at Vestas! Service > Global Service Operations > Security & Platform, Product and Model Operation The Site Reliability Engineer will ensure the high availability, performance, and reliability of our Scipher platform's infrastructure, supporting seamless operations and customer experiences. The right candidate for the position will bring expertise in incident management, coupled with strong problem-solving abilities and collaboration with development teams to ensure uninterrupted access to our Scipher products' offerings and enhancing overall customer satisfaction. We count on our site reliability engineers (SREs) to empower users with a rich feature set, high availability, and stellar performance level to pursue their missions. As we expand customer deployments, we are seeking an experienced Site Reliability Engineer to deliver insights from massive-scale data in real time. Specifically, the incumbent will be someone who has fresh ideas and a unique viewpoint, and who enjoys collaborating with a cross-functional team to develop real-world solutions and positive user experiences for every interaction. This Site Reliability Engineer position reports to Operations Manager. This position is based in our Bengaluru, India office. Responsibilities • Data Infrastructure & Engineering: Design and develop scalable solutions for storing and retrieving high-volume time-series data. Build robust ETL/ELT pipelines using AWS and Azure big data tools (e.g., Spark, Kafka, Kinesis, Azure Data Factory). • CI/CD & MLOps: Develop and manage CI/CD pipelines for ML models and data infrastructure using MLflow, Jenkins, GitHub Actions, and Terraform. Enable reproducible, secure, and scalable deployments. • Monitoring & Automation: Implement end-to-end monitoring for infrastructure, data pipelines, and ML services using Prometheus, Grafana, and custom alerting tools. Automate workflows to ensure high availability and zero-downtime deployments. • Release & Incident Management: Manage releases across staging and production environments. Respond to Severity 1 incidents, lead root cause analysis (RCA), and implement permanent fixes. • Collaboration & Process Improvement: Work with product teams to deploy releases, resolve customer escalations, and drive automation to improve onboarding and integration timelines. • Analytics Enablement: Build tools to deliver insights into customer acquisition, operational efficiency, and business KPIs. Qualifications • Education & Certification: Bachelor’s or Master’s in Engineering with 4+ years in SRE or related roles. AWS Solution Architect Associate or Azure certification preferred. Familiarity with DevOps tools like Jenkins, Terraform, Ansible. • Technical Skills: Strong experience with cloud platforms (AWS, Azure), big data technologies (Spark, Kafka, Databricks), and data storage (S3, Blob Storage). Proficient in SQL, Python, Java/Scala, and container orchestration (Kubernetes preferred). • Soft Skills: Excellent communication, documentation, and time management. Strong problem-solving and customer-handling capabilities. Competencies • Problem Solving & RCA • Technical Expertise in Cloud & Data Engineering • Cross-functional Collaboration • Adaptability to evolving tech • Customer Focus & Escalation Management • Innovation & Automation • Analytical Thinking & Process Optimization What We Offer You will be a part of a highly dedicated team motivated by creating business value and by developing innovative technical solutions. We offer a place where your dreams of constantly learning can come true. We offer an informal and agile workplace with a high level of freedom in defining the way forward. We expect a lot of our team members when it comes to taking responsibility and ownership of tasks and deadlines, but we stand shoulder by shoulder when celebrating our achievements and mitigating our failures. Additional Information The work location is in Bengaluru, India. Please note: We do amend or withdraw our jobs and reserve the right to do so at any time, including prior to the advertised closing date. Please be advised to apply on or before 30th September 2025. Learn more about Vestas at www.vestas.com and follow us on our social media channels. BEWARE – RECRUITMENT FRAUD It has come to our attention that there are a number of fraudulent emails from people pretending to work for Vestas. Read more via this link, https://www.vestas.com/en/careers/our-recruitment-process DEIB Statement At Vestas, we recognise the value of diversity, equity, and inclusion in driving innovation and success. We strongly encourage individuals from all backgrounds to apply, particularly those who may hesitate due to their identity or feel they do not meet every criterion. As our CEO states, "Expertise and talent come in many forms, and a diverse workforce enhances our ability to think differently and solve the complex challenges of our industry". Your unique perspective is what will help us powering the solution for a sustainable, green energy future. About Vestas Vestas is the energy industry’s global partner on sustainable energy solutions. We are specialised in designing, manufacturing, installing, and servicing wind turbines, both onshore and offshore. Across the globe, we have installed more wind power than anyone else. We consider ourselves pioneers within the industry, as we continuously aim to design new solutions and technologies to create a more sustainable future for all of us. With more than 185 GW of wind power installed worldwide and 40+ years of experience in wind energy, we have an unmatched track record demonstrating our expertise within the field. With 30,000 employees globally, we are a diverse team united by a common goal: to power the solution – today, tomorrow, and far into the future. Vestas promotes a diverse workforce which embraces all social identities and is free of any discrimination. We commit to create and sustain an environment that acknowledges and harvests different experiences, skills, and perspectives. We also aim to give everyone equal access to opportunity. To learn more about our company and life at Vestas, we invite you to visit our website at www.vestas.com and follow us on our social media channels. We also encourage you to join our Talent Universe to receive notifications on new and relevant postings.
Skills from this JD
Each row merges API 1 extraction, API 2 library match / v3 orchestration (dimensions + locked dims), and API 3 persistence tags.
AWS
Primary
No API 2 row (run stopped after API 1 or history missing)
Azure
Primary
No API 2 row (run stopped after API 1 or history missing)
Spark
Primary
No API 2 row (run stopped after API 1 or history missing)
Kafka
Primary
No API 2 row (run stopped after API 1 or history missing)
Kinesis
Primary
No API 2 row (run stopped after API 1 or history missing)
Azure Data Factory
Primary
No API 2 row (run stopped after API 1 or history missing)
MLflow
Primary
No API 2 row (run stopped after API 1 or history missing)
Jenkins
Primary
No API 2 row (run stopped after API 1 or history missing)
GitHub Actions
Primary
No API 2 row (run stopped after API 1 or history missing)
Terraform
Primary
No API 2 row (run stopped after API 1 or history missing)
Prometheus
Primary
No API 2 row (run stopped after API 1 or history missing)
Grafana
Primary
No API 2 row (run stopped after API 1 or history missing)
CI/CD
Primary
No API 2 row (run stopped after API 1 or history missing)
MLOps
Primary
No API 2 row (run stopped after API 1 or history missing)
ETL
Primary
No API 2 row (run stopped after API 1 or history missing)
ELT
Primary
No API 2 row (run stopped after API 1 or history missing)
Time-series data
Secondary
No API 2 row (run stopped after API 1 or history missing)
High availability
Secondary
No API 2 row (run stopped after API 1 or history missing)
Zero-downtime deployments
Secondary
No API 2 row (run stopped after API 1 or history missing)
Root cause analysis
Secondary
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
RoleSite Reliability Engineer
CompanyVestas
Experience4+ years in SRE or related roles
DomainEnergy & Utilities
Location
Bengaluru, India
(onsite)
JD type
pass
Certifications
AWS Solution Architect Associate
Azure certification
Show raw JSON
{
"JD_type": "pass",
"about_company": {
"source_marker": {
"first_5_words": "Vestas is the energy industry\u2019s",
"last_5_words": "equal access to opportunity."
},
"text": "Vestas is the energy industry\u2019s global partner on sustainable energy solutions. We are specialised in designing, manufacturing, installing, and servicing wind turbines, both onshore and offshore.\n\nAcross the globe, we have installed more wind power than anyone else. We consider ourselves pioneers within the industry, as we continuously aim to design new solutions and technologies to create a more sustainable future for all of us. With more than 185 GW of wind power installed worldwide and 40+ years of experience in wind energy, we have an unmatched track record demonstrating our expertise within the field.\n\nWith 30,000 employees globally, we are a diverse team united by a common goal: to power the solution \u2013 today, tomorrow, and far into the future.\n\nVestas promotes a diverse workforce which embraces all social identities and is free of any discrimination. We commit to create and sustain an environment that acknowledges and harvests different experiences, skills, and perspectives. We also aim to give everyone equal access to opportunity.",
"word_count": 186
},
"certifications": [
"AWS Solution Architect Associate",
"Azure certification"
],
"company_name": "Vestas",
"ctc": null,
"domain": {
"primary": {
"aliases": [
"Wind Power",
"Sustainable Energy"
],
"domain": "Energy \u0026 Utilities"
},
"secondary": null
},
"education": [
{
"level": "Bachelor\u0027s",
"qualification": "BTECH/BE - Engineering",
"raw": "Bachelor\u2019s or Master\u2019s in Engineering",
"requirement": "required"
}
],
"experience": {
"max": null,
"min": 4,
"raw": "4+ years in SRE or related roles"
},
"job_locations": [
{
"aliases": [
"Bangalore"
],
"city": "Bengaluru",
"country": "India",
"state": "Karnataka",
"work_mode": "onsite"
}
],
"role": "Site Reliability Engineer",
"role_archetype": "DevOps",
"roles_and_responsibilities": [
{
"bullet_count": 6,
"heading": "Responsibilities",
"heading_was_present": true,
"source_marker": {
"first_5_words": "\u2022 Data Infrastructure \u0026 Engineering:",
"last_5_words": "customer acquisition, operational efficiency, and business KPIs."
},
"text": "\u2022 Data Infrastructure \u0026 Engineering: Design and develop scalable solutions for storing and retrieving high-volume time-series data. Build robust ETL/ELT pipelines using AWS and Azure big data tools (e.g., Spark, Kafka, Kinesis, Azure Data Factory).\n\u2022 CI/CD \u0026 MLOps: Develop and manage CI/CD pipelines for ML models and data infrastructure using MLflow, Jenkins, GitHub Actions, and Terraform. Enable reproducible, secure, and scalable deployments.\n\u2022 Monitoring \u0026 Automation: Implement end-to-end monitoring for infrastructure, data pipelines, and ML services using Prometheus, Grafana, and custom alerting tools. Automate workflows to ensure high availability and zero-downtime deployments.\n\u2022 Release \u0026 Incident Management: Manage releases across staging and production environments. Respond to Severity 1 incidents, lead root cause analysis (RCA), and implement permanent fixes.\n\u2022 Collaboration \u0026 Process Improvement: Work with product teams to deploy releases, resolve customer escalations, and drive automation to improve onboarding and integration timelines.\n\u2022 Analytics Enablement: Build tools to deliver insights into customer acquisition, operational efficiency, and business KPIs.",
"word_count": 205
}
],
"urls": [
{
"type": "other",
"url": "https://www.vestas.com/en/careers/our-recruitment-process"
},
{
"type": "website",
"url": "http://www.vestas.com"
}
]
}
API 1 — extract-from-jd click to toggle
{
"final_skills": [
{
"is_primary": true,
"skill_name": "AWS"
},
{
"is_primary": true,
"skill_name": "Azure"
},
{
"is_primary": true,
"skill_name": "Spark"
},
{
"is_primary": true,
"skill_name": "Kafka"
},
{
"is_primary": true,
"skill_name": "Kinesis"
},
{
"is_primary": true,
"skill_name": "Azure Data Factory"
},
{
"is_primary": true,
"skill_name": "MLflow"
},
{
"is_primary": true,
"skill_name": "Jenkins"
},
{
"is_primary": true,
"skill_name": "GitHub Actions"
},
{
"is_primary": true,
"skill_name": "Terraform"
},
{
"is_primary": true,
"skill_name": "Prometheus"
},
{
"is_primary": true,
"skill_name": "Grafana"
},
{
"is_primary": true,
"skill_name": "CI/CD"
},
{
"is_primary": true,
"skill_name": "MLOps"
},
{
"is_primary": true,
"skill_name": "ETL"
},
{
"is_primary": true,
"skill_name": "ELT"
},
{
"is_primary": false,
"skill_name": "Time-series data"
},
{
"is_primary": false,
"skill_name": "High availability"
},
{
"is_primary": false,
"skill_name": "Zero-downtime deployments"
},
{
"is_primary": false,
"skill_name": "Root cause analysis"
}
],
"jd_role": {
"display_name": "Site Reliability Engineer",
"rationale": null,
"role_archetype": "DevOps",
"slug": ""
},
"nano_parsed": {
"JD_type": "pass",
"about_company": {
"source_marker": {
"first_5_words": "Vestas is the energy industry\u2019s",
"last_5_words": "equal access to opportunity."
},
"text": "Vestas is the energy industry\u2019s global partner on sustainable energy solutions. We are specialised in designing, manufacturing, installing, and servicing wind turbines, both onshore and offshore.\n\nAcross the globe, we have installed more wind power than anyone else. We consider ourselves pioneers within the industry, as we continuously aim to design new solutions and technologies to create a more sustainable future for all of us. With more than 185 GW of wind power installed worldwide and 40+ years of experience in wind energy, we have an unmatched track record demonstrating our expertise within the field.\n\nWith 30,000 employees globally, we are a diverse team united by a common goal: to power the solution \u2013 today, tomorrow, and far into the future.\n\nVestas promotes a diverse workforce which embraces all social identities and is free of any discrimination. We commit to create and sustain an environment that acknowledges and harvests different experiences, skills, and perspectives. We also aim to give everyone equal access to opportunity.",
"word_count": 186
},
"certifications": [
"AWS Solution Architect Associate",
"Azure certification"
],
"company_name": "Vestas",
"ctc": null,
"domain": {
"primary": {
"aliases": [
"Wind Power",
"Sustainable Energy"
],
"domain": "Energy \u0026 Utilities"
},
"secondary": null
},
"education": [
{
"level": "Bachelor\u0027s",
"qualification": "BTECH/BE - Engineering",
"raw": "Bachelor\u2019s or Master\u2019s in Engineering",
"requirement": "required"
}
],
"experience": {
"max": null,
"min": 4,
"raw": "4+ years in SRE or related roles"
},
"job_locations": [
{
"aliases": [
"Bangalore"
],
"city": "Bengaluru",
"country": "India",
"state": "Karnataka",
"work_mode": "onsite"
}
],
"role": "Site Reliability Engineer",
"role_archetype": "DevOps",
"roles_and_responsibilities": [
{
"bullet_count": 6,
"heading": "Responsibilities",
"heading_was_present": true,
"source_marker": {
"first_5_words": "\u2022 Data Infrastructure \u0026 Engineering:",
"last_5_words": "customer acquisition, operational efficiency, and business KPIs."
},
"text": "\u2022 Data Infrastructure \u0026 Engineering: Design and develop scalable solutions for storing and retrieving high-volume time-series data. Build robust ETL/ELT pipelines using AWS and Azure big data tools (e.g., Spark, Kafka, Kinesis, Azure Data Factory).\n\u2022 CI/CD \u0026 MLOps: Develop and manage CI/CD pipelines for ML models and data infrastructure using MLflow, Jenkins, GitHub Actions, and Terraform. Enable reproducible, secure, and scalable deployments.\n\u2022 Monitoring \u0026 Automation: Implement end-to-end monitoring for infrastructure, data pipelines, and ML services using Prometheus, Grafana, and custom alerting tools. Automate workflows to ensure high availability and zero-downtime deployments.\n\u2022 Release \u0026 Incident Management: Manage releases across staging and production environments. Respond to Severity 1 incidents, lead root cause analysis (RCA), and implement permanent fixes.\n\u2022 Collaboration \u0026 Process Improvement: Work with product teams to deploy releases, resolve customer escalations, and drive automation to improve onboarding and integration timelines.\n\u2022 Analytics Enablement: Build tools to deliver insights into customer acquisition, operational efficiency, and business KPIs.",
"word_count": 205
}
],
"urls": [
{
"type": "other",
"url": "https://www.vestas.com/en/careers/our-recruitment-process"
},
{
"type": "website",
"url": "http://www.vestas.com"
}
]
},
"rejected": false,
"rejection_reason": null,
"run_id": "48e4c2bb-75ae-4079-bd0d-3d0aa1a77ea5",
"stage3_signals": {
"alias_match_roles": [
{
"display_name": "DevOps Engineer",
"matched_count": null,
"role_id": 10,
"score": 0.3871,
"slug": "devops-engineer",
"total_count": null
},
{
"display_name": "AR/VR Engineer",
"matched_count": null,
"role_id": 8,
"score": 0.3784,
"slug": "ar-vr-engineer",
"total_count": null
},
{
"display_name": "Cybersecurity Engineer",
"matched_count": null,
"role_id": 5,
"score": 0.375,
"slug": "cybersecurity-engineer",
"total_count": null
},
{
"display_name": "Backend Engineer",
"matched_count": null,
"role_id": 1,
"score": 0.3235,
"slug": "backend-engineer",
"total_count": null
},
{
"display_name": "AI Engineer",
"matched_count": null,
"role_id": 13,
"score": 0.3103,
"slug": "ai-engineer",
"total_count": null
}
],
"kra_match_roles": [
{
"display_name": "Data Engineer",
"matched_count": null,
"role_id": 2,
"score": 0.5201,
"slug": "data-engineer",
"total_count": null
},
{
"display_name": "DevOps Engineer",
"matched_count": null,
"role_id": 10,
"score": 0.4896,
"slug": "devops-engineer",
"total_count": null
},
{
"display_name": "ML Engineer",
"matched_count": null,
"role_id": 3,
"score": 0.4825,
"slug": "ml-engineer",
"total_count": null
},
{
"display_name": "Cloud Architect",
"matched_count": null,
"role_id": 9,
"score": 0.4658,
"slug": "cloud-architect",
"total_count": null
},
{
"display_name": "Backend Engineer",
"matched_count": null,
"role_id": 1,
"score": 0.4624,
"slug": "backend-engineer",
"total_count": null
}
],
"skill_match_roles": [
{
"display_name": "DevOps Engineer",
"matched_count": 8,
"role_id": 10,
"score": 0.4,
"slug": "devops-engineer",
"total_count": 20
},
{
"display_name": "ML Engineer",
"matched_count": 8,
"role_id": 3,
"score": 0.4,
"slug": "ml-engineer",
"total_count": 20
},
{
"display_name": "Cloud Architect",
"matched_count": 6,
"role_id": 9,
"score": 0.3,
"slug": "cloud-architect",
"total_count": 20
},
{
"display_name": "Backend Engineer",
"matched_count": 5,
"role_id": 1,
"score": 0.25,
"slug": "backend-engineer",
"total_count": 20
},
{
"display_name": "Data Engineer",
"matched_count": 4,
"role_id": 2,
"score": 0.2,
"slug": "data-engineer",
"total_count": 20
}
],
"stage35_ran": false
},
"stage4_decision": {
"alias_collision_detected": true,
"case": "B",
"chosen_role": {
"display_name": "Data Engineer",
"matched_count": null,
"role_id": 2,
"score": 0.5201,
"slug": "data-engineer",
"total_count": null
},
"confidence": 0.5201,
"llm2_fired": false,
"llm2_reasoning": null,
"queued": false,
"reasoning": "Stage 1 title \u0027Site Reliability Engineer\u0027 not in catalog; KRA top-2 within margin -\u003e classify into nearest neighbor data-engineer (0.52)"
},
"stage5_updates": {
"centroid_n_after": 9,
"centroid_updated": true,
"collision_log_id": 30,
"new_kra_attached": null,
"new_skills_attached": [
{
"is_primary": true,
"queue_id": 544,
"role_display_name": "Data Engineer",
"role_slug": "data-engineer",
"skill_name": "Spark",
"status": "pending"
},
{
"is_primary": true,
"queue_id": 545,
"role_display_name": "Data Engineer",
"role_slug": "data-engineer",
"skill_name": "Kinesis",
"status": "pending"
},
{
"is_primary": true,
"queue_id": 546,
"role_display_name": "Data Engineer",
"role_slug": "data-engineer",
"skill_name": "Azure Data Factory",
"status": "pending"
},
{
"is_primary": true,
"queue_id": 547,
"role_display_name": "Data Engineer",
"role_slug": "data-engineer",
"skill_name": "ETL",
"status": "pending"
},
{
"is_primary": true,
"queue_id": 548,
"role_display_name": "Data Engineer",
"role_slug": "data-engineer",
"skill_name": "ELT",
"status": "pending"
},
{
"is_primary": false,
"queue_id": 549,
"role_display_name": "Data Engineer",
"role_slug": "data-engineer",
"skill_name": "Time-series data",
"status": "pending"
},
{
"is_primary": false,
"queue_id": 550,
"role_display_name": "Data Engineer",
"role_slug": "data-engineer",
"skill_name": "Zero-downtime deployments",
"status": "pending"
},
{
"is_primary": false,
"queue_id": 551,
"role_display_name": "Data Engineer",
"role_slug": "data-engineer",
"skill_name": "Root cause analysis",
"status": "pending"
}
],
"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.
Loading…