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Senior Aiops Engineer Jobs (NOW HIRING)

... SRE practices, and AI/agentic solutions to improve reliability, incident response, operational efficiency, and platform resilience. As a senior technical leader, you will work across Engineering ...

As a Senior Staff Engineer in Operations, you will lead and mentor a high-performing team to scale our AI-enabled operations model and deliver AIOps solutions that streamline operational workstreams ...

... SRE practices, and AI/agentic solutions to improve reliability, incident response, operational efficiency, and platform resilience. As a senior technical leader, you will work across Engineering ...

... SRE practices, and AI/agentic solutions to improve reliability, incident response, operational efficiency, and platform resilience. As a senior technical leader, you will work across Engineering ...

... SRE practices, and AI/agentic solutions to improve reliability, incident response, operational efficiency, and platform resilience. As a senior technical leader, you will work across Engineering ...

... SRE practices, and AI/agentic solutions to improve reliability, incident response, operational efficiency, and platform resilience. As a senior technical leader, you will work across Engineering ...

Senior Product Manager - AIOps

Santa Clara, CA · On-site

$148K - $196K/yr

NVIDIA is seeking a Senior Product Manager to help shape and deliver NVIDIA's AIOps software ... In this role, you will work closely with engineering, sales, and marketing to define product ...

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Senior Aiops Engineer information

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$59.5K

$126.6K

$183.5K

How much do senior aiops engineer jobs pay per year?

As of Jul 13, 2026, the average yearly pay for senior aiops engineer in the United States is $126,557.00, according to ZipRecruiter salary data. Most workers in this role earn between $104,500.00 and $143,500.00 per year, depending on experience, location, and employer.

What are Senior AIOps Engineers?

Senior AIOps Engineers are experienced IT professionals who leverage artificial intelligence and machine learning to automate and optimize IT operations. They design, implement, and maintain AIOps solutions that help organizations proactively manage and resolve IT issues, improve system reliability, and enhance performance. These engineers often lead teams, set best practices, and work closely with developers, IT staff, and business stakeholders to ensure technology systems run smoothly and efficiently.

What are some common challenges faced by Senior AIOps Engineers when implementing automation in large-scale IT environments?

Senior AIOps Engineers often encounter challenges such as integrating new automation tools with legacy systems, ensuring data quality for accurate anomaly detection, and managing the complexity of diverse IT infrastructures. They also need to address organizational resistance to change and establish trust in automated recommendations. Collaborating closely with IT operations, development, and business teams is essential to align automation initiatives with organizational goals and ensure smooth adoption.

Which 3 jobs will survive AI?

Senior AIOps Engineers are likely to continue to be in demand because they manage complex IT systems, analyze large data sets, and develop automation solutions that require specialized skills. Jobs that involve critical thinking, creativity, and emotional intelligence, such as healthcare professionals, software developers, and cybersecurity specialists, are also expected to persist despite AI advancements. These roles often require human judgment and adaptability that AI cannot fully replicate.

What engineer makes 500,000 a year?

Senior AIops engineers with extensive experience, specialized skills in cloud platforms, automation, and monitoring tools can earn salaries approaching or exceeding $500,000 annually, especially in high-demand industries or senior leadership roles. Compensation often includes bonuses, stock options, and other benefits.

What is the salary of senior AIOps engineer?

The salary of a senior AIOps engineer typically ranges from $110,000 to $160,000 annually, depending on experience, location, and company size. Professionals with expertise in machine learning, automation tools, and cloud platforms may earn higher compensation.

Is AIOps a good career?

AIOps is a growing field within IT operations that involves using artificial intelligence and machine learning to automate and enhance system management. Senior AIOps engineers typically require skills in data analysis, scripting, and familiarity with tools like ML frameworks and monitoring platforms, making it a valuable and in-demand career path for those interested in advanced automation and cloud environments.

What are the key skills and qualifications needed to thrive as a Senior AIOps Engineer, and why are they important?

To excel as a Senior AIOps Engineer, you need deep expertise in IT operations, machine learning, and data analytics, typically supported by a degree in computer science or a related field. Proficiency with AIOps platforms (like Moogsoft or Splunk), cloud services (AWS, Azure, or GCP), and automation tools, as well as relevant certifications, is highly valued. Strong problem-solving abilities, communication skills, and a proactive mindset distinguish top performers in this role. Mastering these competencies enables effective automation of IT operations, rapid incident response, and continual improvement of system reliability.
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What cities are hiring for Senior Aiops Engineer jobs? Cities with the most Senior Aiops Engineer job openings:
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Infographic showing various Senior Aiops Engineer job openings in the United States as of July 2026, with employment types broken down into 6% Locum Tenens, 9% As Needed, 51% Full Time, 1% Part Time, 1% Contract, and 32% Nights. Highlights an 74% Physical, 7% Hybrid, and 19% Remote job distribution, with an average salary of $126,557 per year, or $60.8 per hour.
Information Technology_USA - USA_Engineer

Information Technology_USA - USA_Engineer

Real Soft, Inc.

Jacksonville, FL • On-site

$106K - $127K/yr

Contractor

Re-posted 11 days ago


Job description

: MAX CONFIRMED
Location: ONSITE- Woodland Hills, CA
Duration: 6 months
COMPLETE ROLE CHANGE PLEASE PIVOT AND HELP WITH NEW PROFILES WHILE WE GET A NEW REQ PUSHED**
Role: Senior AIOps ML Engineer
Descriptions:
"Core Responsibilities
Lakehouse Architecture & Data Engineering
• Schema Design: Design and evolve the Lakehouse schema (Delta Lake / Apache Iceberg) for multi-domain observability data at petabyte scale.
• Pipeline Engineering: Build and maintain robust ingestion pipelines from the OTel Collector through Kafka to the Lakehouse, ensuring exactly-once semantics and strict schema enforcement.
• Data Transformation: Implement dbt transformation models to generate mart-ready, denormalized fact and dimension tables for each of the six domains.
• Data Quality Governance: Define and enforce data quality contracts, establishing SLAs for data freshness, completeness, and cardinality budgets per mart.
• Performance Optimization: Optimize query performance utilizing partitioning strategies, Z-ordering, bloom filters, and materialized views tailored for time-series patterns.
ML Model Development & AIOps
• AIOps Modeling: Design, train, and deploy machine learning models for streaming multivariate anomaly detection, root-cause analysis, and incident forecasting across all six mart domains.
• Streaming Inference: Build low-latency streaming inference pipelines (Flink / Spark Streaming) for real-time anomaly scoring on APM, infrastructure, and security signals.
• Log Intelligence: Develop sophisticated log intelligence models-including clustering (DRAIN3 / LogBERT), NLP classification, and error deduplication-over the Log mart.
• Behavioral Analytics: Implement unsupervised and semi-supervised methods for User Experience frustration detection and KPI correlation analysis.
• Feature Store Management: Own the ML feature store, managing feature engineering, versioning, backfill pipelines, and point-in-time correct joins for training datasets.
• Model Lifecycle MLOps: Instrument model performance tracking, including drift detection, accuracy monitoring, and automated retraining triggers.
AIOps Platform & Productionization
• Workflow Orchestration: Design and operate the end-to-end AIOps workflow, spanning signal ingestion, feature computation, model inference, alert routing, and auto-remediation hooks.
• Model Serving Infrastructure: Build high-performance model serving infrastructure-supporting real-time REST/gRPC endpoints and async batch scoring-with strict p99 latency SLOs.
• Incident Tool Integration: Integrate AIOps insights with incident management platforms (PagerDuty, Opsgenie) and internal runbooks to deliver enriched, noise-reduced alerting.
• Business Impact Quantification: Define and publish metrics from the Business KPI mart to quantify the blast radius, revenue loss, and affected user counts for each incident.
Security & Compliance Observability
• Security Mart Collaboration: Partner with the Security team to build the Security mart schema, including threat feed ingestion, UEBA baselines, and CVE correlation pipelines.
• Threat Detection: Train anomalous-access and lateral-movement detection models, tuning precision/recall thresholds in collaboration with the SOC team.
• Compliance & Governance: Ensure all data handling across the marts adheres strictly to data residency requirements, PII masking standards, and audit-log protocols.
Collaboration & Engineering Standards
• Schema Contracts: Define telemetry schema contracts with the OTel Instrumentation team to guarantee high upstream signal quality for downstream ML models.
• Organizational Standards: Author ML platform RFCs and contribute actively to observability data model standards across the broader engineering organization.
• Mentorship & Reviews: Mentor junior ML and data engineers, and conduct rigorous design reviews for new mart schemas and model architectures."
✅ Kafka + Streaming (Flink/Spark)
✅ Lakehouse (Delta / Iceberg)
✅ ML (Anomaly detection + time-series)
✅ Observability (OTel, APM, Logs)
✅ MLOps (feature store, drift, retraining)
✅ SQL + Python (strong)
Skills: AI Agents
Experience Required: 10 & Above, Project Code :