Location
Remote
Salary
Not specified
Type
fulltime
Posted
Today
Job Description
Job Title : Capacity Engineer with Data Engineer
Location: Remote
Please search in below order
Tools \& Techniques
- Data Engineering Stack:
SQL, Python, Spark, Airflow for data processing and orchestration. - 3-4 years [we can go little lower also fine]
- Monitoring \& Observability:
Prometheus, Grafana, Datadog.
- Chaos Engineering:
Test system resilience under stress.
- Infrastructure as Code:
Terraform, Ansible, Harness.
Data Engineer
with strong
Site Reliability Engineering (SRE)
expertise in
capacity planning
. This role ensures our infrastructure scales efficiently to meet user demand, balancing performance with cost. The engineer will forecast growth, analyze usage trends, and automate resource provisioning to prevent outages, over-provisioning, or under-provisioning. In addition, the role requires building robust data pipelines and analytical models to support forecasting and decision-making.
Key Responsibilities
·
Data Pipeline Development:
Design and maintain ETL/ELT pipelines to collect, transform, and store infrastructure usage data.
·
Data Modeling:
Build models to analyze system metrics and predict future resource needs.
·
Demand Forecasting:
Analyze historical usage patterns to predict CPU, memory, and storage requirements.
·
Load Testing \& Scaling:
Simulate traffic spikes to identify bottlenecks and ensure systems scale linearly.
·
Cost Efficiency:
Optimize resource allocation to avoid unnecessary costs while maintaining service availability.
·
Automation:
Use Infrastructure as Code (IaC) tools like Terraform to automate scaling and provisioning.
·
Architecture Review:
Collaborate with software teams to flag single points of failure and ensure resilient service design.
Tools \& Techniques
·
Monitoring \& Observability:
Prometheus, Grafana, Datadog.
·
Chaos Engineering:
Test system resilience under stress.
·
Infrastructure as Code:
Terraform, Ansible, Harness.
·
Data Engineering Stack:
SQL, Python, Spark, Airflow for data processing and orchestration.
Qualifications
· Strong background in
data engineering
and
SRE practices
.
. 10-15 years of experience
· Hands-on experience with
capacity planning, forecasting, and scaling
.
· Proficiency in
IaC tools
(Terraform, Ansible, Harness).
· Experience with
data pipelines, ETL/ELT frameworks, and big data tools
.
· Familiarity with
monitoring/observability platforms
(Prometheus, Grafana, Datadog).
· Knowledge of
chaos engineering
and resilience testing.
· Excellent collaboration and communication skills.
Looking for more opportunities?
Browse thousands of graduate jobs and entry-level positions.