
Aaizel helps organizations turn spatial and environmental data into actionable decisions. They implement AI-powered weather prediction, geospatial visualization and analysis, and edge analytics for…

Aaizel helps organizations turn spatial and environmental data into actionable decisions. They implement AI-powered weather prediction, geospatial visualization and analysis, and edge analytics for…
Your next opportunity is in here somewhere. Sign up to explore 70,000+ startups and their open roles. No spam. No gamification. Just jobs.
70,000+
Startups
81,000+
Open Roles
4,000+
New This Week
Job Title:
DevOps/MLOps Expert
Location:
Gurugram (On-Site)
Employment Type:
Full-Time (Immediate Joiner)
Experience:
6 + years
Qualification:
B.Tech CSE
About the Role
We are seeking a highly skilled DevOps/MLOps Expert to join our rapidly growing AI-based startup building and deploying cutting-edge enterprise AI/ML solutions. This is a critical role that will shape our infrastructure, deployment pipelines, and scale our ML operations to serve large-scale enterprise clients.
As our DevOps/MLOps Expert, you will be responsible for bridging the gap between our AI/ML development teams and production systems, ensuring seamless deployment, monitoring, and scaling of our ML-powered enterprise applications. You’ll work at the intersection of DevOps, Machine Learning, and Data Engineering in a fast-paced startup environment with enterprise-grade requirements.
Key Responsibilities
MLOps & Model Deployment
• Design, implement, and maintain end-to-end ML pipelines from model development to production deployment
• Build automated CI/CD pipelines specifically for ML models using tools like MLflow, Kubeflow, and custom solutions
• Implement model versioning, experiment tracking, and model registry systems
• Monitor model performance, detect drift, and implement automated retraining pipelines
• Manage feature stores and data pipelines for real-time and batch inference
• Build scalable ML infrastructure for high-volume data processing and analytics
Enterprise Cloud Infrastructure & DevOps
• Architect and manage cloud-native infrastructure with focus on scalability, security, and compliance
• Implement Infrastructure as Code (IaC) using Terraform, CloudFormation, or Pulumi
• Design and maintain Kubernetes clusters for containerized ML workloads
• Build and optimize Docker containers for ML applications and microservices
• Implement comprehensive monitoring, logging, and alerting systems
• Manage secrets, security, and enterprise compliance requirements
Data Engineering & Real-time Processing
• Build and maintain large-scale data pipelines using Apache Airflow, Prefect, or similar tools
• Implement real-time data processing and streaming architectures
• Design data storage solutions for structured and unstructured data at scale
• Implement data validation, quality checks, and lineage tracking
• Manage data security, privacy, and enterprise compliance requirements
• Optimize data processing for performance and cost efficiency
Enterprise Platform Operations
• Ensure high availability (99.9%+) and performance of enterprise-grade platforms
• Implement auto-scaling solutions for variable ML workloads
• Manage multi-tenant architecture and data isolation
• Optimize resource utilization and cost management across environments
• Implement disaster recovery and backup strategies
• Build 24x7 monitoring and alerting systems for mission-critical applications
Required Qualifications
Experience & Education
• 4-8 years of experience in DevOps/MLOps with at least 2+ years focused on enterprise ML systems
• Bachelor’s/Master’s degree in Computer Science, Engineering, or related technical field
• Proven experience with enterprise-grade platforms or large-scale SaaS applications
• Experience with high-compliance environments and enterprise security requirements
• Strong background in data-intensive applications and real-time processing systems
Technical Skills
Core MLOps Technologies
• ML Frameworks: TensorFlow, PyTorch, Scikit-learn, Keras, XGBoost
• MLOps Tools: MLflow, Kubeflow, Metaflow, DVC, Weights & Biases
• Model Serving: TensorFlow Serving, PyTorch TorchServe, Seldon Core, KFServing
• Experiment Tracking: MLflow, Neptune.ai, Weights & Biases, Comet
DevOps & Cloud Technologies
• Cloud Platforms: AWS, Azure, or GCP with relevant certifications
• Containerization: Docker, Kubernetes (CKA/CKAD preferred)
• CI/CD: Jenkins, GitLab CI, GitHub Actions, CircleCI
• IaC: Terraform, CloudFormation, Pulumi, Ansible
• Monitoring: Prometheus, Grafana, ELK Stack, Datadog, New Relic
Programming & Scripting
• Python (advanced) - primary language for ML operations and automation
• Bash/Shell scripting for automation and system administration
• YAML/JSON for configuration management and APIs
• SQL for data operations and analytics
• Basic understanding of Go or Java (advantage)
Data Technologies
• Data Pipeline Tools: Apache Airflow, Prefect, Dagster, Apache NiFi
• Streaming & Real-time: Apache Kafka, Apache Spark, Apache Flink, Redis
• Databases: PostgreSQL, MongoDB, Elasticsearch, ClickHouse
• Data Warehousing: Snowflake, BigQuery, Redshift, Databricks
• Data Versioning: DVC, LakeFS, Pachyderm
Preferred Qualifications
Advanced Technical Skills
• Enterprise Security: Experience with enterprise security frameworks, compliance (SOC2, ISO27001)
• High-scale Processing: Experience with petabyte-scale data processing and real-time analytics
• Performance Optimization: Advanced system optimization, distributed computing, caching strategies
• API Development: REST/GraphQL APIs, microservices architecture, API gateways
Enterprise & Domain Experience
• Previous experience with enterprise clients or B2B SaaS platforms
• Experience with compliance-heavy industries (finance, healthcare, government)
• Understanding of data privacy regulations (GDPR, SOX, HIPAA)
• Experience with multi-tenant enterprise architectures
Leadership & Collaboration
• Experience mentoring junior engineers and technical team leadership
• Strong collaboration with data science teams, product managers, and enterprise clients
• Experience with agile methodologies and enterprise project management
• Understanding of business metrics, SLAs, and enterprise ROI
Growth Opportunities
• Career Path: Clear progression to Lead DevOps Engineer or Head of Infrastructure
• Technical Growth: Work with cutting-edge enterprise AI/ML technologies
• Leadership: Opportunity to build and lead the DevOps/Infrastructure team
• Industry Exposure: Work with Government & MNCs enterprise clients and cutting-edge technology stacks
Success Metrics & KPIs
Technical KPIs
• System Uptime: Maintain 99.9%+ availability for enterprise clients
• Deployment Frequency: Enable daily deployments with zero downtime
• Performance: Ensure optimal response times and system performance
• Cost Optimization: Achieve 20-30% annual infrastructure cost reduction
• Security: Zero security incidents and full compliance adherence
Business Impact
• Time to Market: Reduce deployment cycles and improve development velocity
• Client Satisfaction: Maintain 95%+ enterprise client satisfaction scores
• Team Productivity: Improve engineering team efficiency by 40%+
• Scalability: Support rapid client base growth without infrastructure constraints
Why Join Us
How to Apply
Please submit your resume and a cover letter outlining your relevant experience and how you can contribute to Aaizel Tech Labs’ success. Send your application to hr@aaizeltech.com , or anju@aaizeltech.com.