Software Dev Engineer, AWS Identity Analytics Platform
Company: Amazon
Location: Seattle
Posted on: April 3, 2026
|
|
|
Job Description:
AWS Identity Analytics is reimagining how identity data is
understood, acted on, and used to protect customers at scale. We
build an AI-driven analytics platform that turns 50 PB of raw logs
and metrics into proactive, actionable insights for AWS Identity
leadership and core service teams — including IAM and STS. AWS
teams across the organization also rely on our platform for impact
analysis related to AWS Auth. Our platform is the foundation on
which everything else stands: ingesting petabyte-scale data from
dozens of Identity services, transforming it into structured,
queryable intelligence, and serving it reliably to the ML models,
LLM agents, and dashboards that our customers act on every day. Are
you excited by the prospect of building AI-powered solutions that
let stakeholders access insights without needing to understand how
the underlying data is organized or connected? Do you want to work
on petabyte-scale data processing, enrichment, and querying
engines? Do you want to work on a platform that directly shapes how
AWS Identity services evolve — influencing decisions that affect
hundreds of millions of customers globally? Do you thrive in
ambiguous, fast-paced environments where your engineering work
drives measurable business outcomes? As a Software Development
Engineer on the Identity Analytics team, you will own the data
platform infrastructure that makes our AI and analytics
capabilities possible. You will design and operate the ingestion,
transformation, and serving pipelines that feed our ML models and
LLM-powered agents. You will be the engineering partner to our
Applied Scientist — translating research prototypes into
production-grade systems that run reliably at scale. What makes
this role distinct is the combination of deep platform engineering
with direct scientific impact: the pipelines you build and the
infrastructure you operate determine the quality, freshness, and
reliability of every insight our customers receive. Key job
responsibilities • Design, build, and operate scalable data
ingestion, transformation, and loading pipelines that process
petabyte-scale Identity logs, metrics, and policy data from IAM,
STS, and other AWS Identity services — using services such as AWS
Glue, EMR, Spark, Athena, S3, and Redshift. • Own the
productionization lifecycle for ML models developed by the Applied
Scientist: package, deploy, monitor, and maintain models in
production environments using SageMaker, ECS, and EKS — ensuring
reliability, latency, and scalability meet production standards. •
Build and maintain the feature engineering infrastructure that
transforms raw Identity data into structured datasets ready for ML
training, evaluation, and inference. • Drive platform resilience
and operational excellence — designing for failure, building robust
monitoring and alerting, reducing operational load through
automation, and ensuring the platform scales automatically to the
demands of incoming data. • Partner with the Applied Scientist,
BIEs, and product managers to understand analytical requirements,
design data models that support both current and future use cases,
and ensure the platform evolves ahead of customer needs. • Identify
and build onboarding capabilities that reduce the time it takes for
new Identity service teams to integrate their data into the
platform and begin consuming insights. Contribute to the team's
technical direction by participating in design reviews, raising the
engineering bar through code reviews, and bringing a
systems-thinking perspective to how the platform scales over the
next three to five years. - 3 years of non-internship professional
software development experience - 2 years of non-internship design
or architecture (design patterns, reliability and scaling) of new
and existing systems experience - 1 years of designing and
developing large-scale, multi-tiered, multi-threaded, embedded or
distributed software applications, tools, systems, and services
using: C#, C++, Java, or Perl experience - Bachelor's degree or
foreign equivalent in Computer Science, Engineering, Mathematics,
or a related field - 3 years of full software development life
cycle, including coding standards, code reviews, source control
management, build processes, testing, and operations experience -
Bachelor's degree in computer science or equivalent - Knowledge of
Machine Learning and LLM fundamentals, including transformer
architecture, training/inference lifecycles, and optimization
techniques - Experience developing, deploying and managing AI
products at scale Amazon is an equal opportunity employer and does
not discriminate on the basis of protected veteran status,
disability, or other legally protected status. Our inclusive
culture empowers Amazonians to deliver the best results for our
customers. If you have a disability and need a workplace
accommodation or adjustment during the application and hiring
process, including support for the interview or onboarding process,
please visit
https://amazon.jobs/content/en/how-we-hire/accommodations for more
information. If the country/region you’re applying in isn’t listed,
please contact your Recruiting Partner. The base salary range for
this position is listed below. Your Amazon package will include
sign-on payments and restricted stock units (RSUs). Final
compensation will be determined based on factors including
experience, qualifications, and location. Amazon also offers
comprehensive benefits including health insurance (medical, dental,
vision, prescription, Basic Life & AD&D insurance and option
for Supplemental life plans, EAP, Mental Health Support, Medical
Advice Line, Flexible Spending Accounts, Adoption and Surrogacy
Reimbursement coverage), 401(k) matching, paid time off, and
parental leave. Learn more about our benefits at
https://amazon.jobs/en/benefits . USA, WA, Seattle - 143,700.00 -
194,400.00 USD annually
Keywords: Amazon, Shoreline , Software Dev Engineer, AWS Identity Analytics Platform, IT / Software / Systems , Seattle, Washington