Logo for Givzey

AI Platform Engineer at Givzey

Role overview

Qualifications

  • 5+ years building and operating production software systems
  • Strong experience with AWS in production environments
  • Experience designing Infrastructure as Code using Pulumi, Terraform, or CloudFormation
  • Strong Python experience

Responsibilities

  • Design, build, and maintain AWS infrastructure
  • Own Infrastructure as Code strategy using Pulumi
  • Build and maintain deployment pipelines for applications and infrastructure
  • Monitor production systems and improve observability

About the company

Givzey logo

Givzey

Givzey's standalone Gift Agreement Platform empowers fundraisers to formalize and book gift commitments in seconds.

Company details

Company typeSmall startup
Company size2 - 10

Your match analysis

See how your profile stacks up against this role.

We compared the job requirements to your profile to show where you're strong and where you fall short.

Job description

About Givzey / Version2.ai

Join the Future of Fundraising at Givzey!Givzey is one of the fastest-growing and most innovative technology companies serving the nonprofit sector, on a mission to unlock more generosity through AI-powered donor engagement. At the center of that innovation is Version2.ai, the world’s first Autonomous AI fundraisers—Virtual Engagement Officers (VEOs)—designed to independently manage donor engagement and generate revenue. Unlike traditional AI tools that simply make staff more efficient, VEOs expand fundraising capacity by acting as AI workers that operate donor portfolios, build relationships, and secure gifts on their own. In just three years, Givzey’s platform has already helped organizations raise $10M+ through autonomous engagement, including individual gifts as large as $100,000. Alongside this breakthrough technology, Givzey’s Gift Agreement Platform modernizes the multi-year giving process, enabling nonprofits to secure, manage, and forecast commitments with unprecedented ease.

About the role

This role owns the platform that keeps Givzey secure, compliant, reliable, and scalable. You'll work across AWS infrastructure, Infrastructure as Code, CI/CD, AI services, observability, and developer tooling to make sure engineers spend their time building product instead of fighting deployments.

You'll partner closely with engineering, ML, and product to design the platform that powers everything from customer-facing APIs to LLM workflows running on Amazon Bedrock and SageMaker.

This is not a "keep the lights on" devops role. You'll actively shape how we deploy software, provision infrastructure, manage AI workloads, and scale the engineering organization.

Who thrives here

You're the engineer who gets excited about replacing a manual deployment with a one-click pipeline, automating infrastructure instead of clicking around the AWS console, and designing systems that make the rest of engineering move faster.

You think in terms of reliability, observability, automation, and repeatability.

You're comfortable wearing multiple hats. One morning you might be debugging IAM permissions. That afternoon you're building a Pulumi module, improving GitHub Actions, tuning ECS workloads, or helping an ML engineer deploy a SageMaker endpoint.

What you'll do

Cloud infrastructure

  • Design, build, and maintain our AWS infrastructure
  • Manage networking, IAM, compute, storage, databases, and security across environments
  • Build scalable infrastructure capable of supporting rapid product growth
  • Improve resiliency, availability, and disaster recovery

Infrastructure as Code

  • Own our Infrastructure as Code strategy using Pulumi
  • Build reusable infrastructure components and shared modules
  • Eliminate manual infrastructure changes wherever possible
  • Review and evolve our cloud architecture as the company grows

CI/CD

  • Build and maintain deployment pipelines for applications and infrastructure
  • Improve release automation and deployment safety
  • Reduce friction in local development and engineering workflows
  • Help establish engineering best practices around testing and deployment

AI Platform

  • Build and maintain the infrastructure powering our AI systems
  • Work with services such as Amazon Bedrock, SageMaker, OpenSearch, and supporting AWS services
  • Support LLM evaluation pipelines, RAG infrastructure, vector search, and model deployment
  • Partner with ML engineers to operationalize new AI capabilities

Platform Operations

  • Monitor production systems and improve observability
  • Respond to production incidents and drive root-cause analysis
  • Improve system reliability through automation rather than manual processes
  • Continuously evaluate performance, cost, and scalability

Engineering

  • Collaborate closely with product, engineering, ML, and customer success
  • Help define technical standards and infrastructure direction
  • Participate in architecture discussions across the platform
  • Mentor other engineers on cloud infrastructure and operational best practices

What we're looking for

Experience

  • 5+ years building and operating production software systems
  • Strong experience with AWS in production environments
  • Experience designing Infrastructure as Code using Pulumi, Terraform, or CloudFormation
  • Experience building CI/CD pipelines using GitHub Actions
  • Strong Python experience
  • Experience building APIs and backend systems

Cloud & Platform

You should be comfortable working with technologies such as:

  • AWS (multi-account environments using AWS Organizations)
  • ECS
  • Docker
  • IAM
  • VPC networking
  • RDS
  • S3
  • Lambda
  • CloudWatch
  • SNS/SQS
  • Event-driven architectures

AI Infrastructure

Experience with some of the following is highly desirable:

  • Amazon Bedrock
  • SageMaker
  • Vector databases
  • Retrieval-Augmented Generation (RAG)
  • LLM evaluation pipelines
  • Model deployment
  • ML infrastructure
  • Dagster or similar orchestration platforms

Working Style

  • You automate repetitive work instead of documenting it.
  • You care about reliability as much as shipping features.
  • You enjoy improving developer experience.
  • You think systems should become simpler over time.
  • You take ownership rather than waiting for someone else to fix infrastructure problems.

Mindset

  • Strong written communication.
  • Comfortable working in ambiguity.
  • Curious about modern AI infrastructure and where it's headed.
  • Interested in building systems that engineers enjoy working in.
  • Excited by the challenge of building infrastructure from the ground up rather than inheriting a mature platform.

Nice to have

  • Pulumi experience
  • Dagster experience
  • Amazon Bedrock
  • SageMaker
  • OpenSearch
  • ECS
  • PostgreSQL
  • Redis
  • New Relic or modern observability platforms
  • Experience supporting AI or ML products
  • SOC 2 or security/compliance experience
  • Startup experience

What this isn't

This isn't a traditional DevOps role where tickets get tossed over the wall after development.

This isn't an SRE role focused exclusively on uptime.

This isn't an ML engineering role building models.

You're building the platform that allows all of those disciplines to move faster. You'll own infrastructure decisions, improve how software gets delivered, and help shape the technical foundation of an AI company that's still early enough for your decisions to matter years from now.

Apply once. Then go straight to the hiring manager.

After you apply, unlock the direct contact details of the people who actually make the call. A quick follow-up makes you 5x more likely to land an interview.

MR

Marcus Rivera

Chief Revenue Officer

m.rivera@company.com
linkedin.com/in/marcusrivera
Unlocked after you apply
·

Platform Engineer Related jobs

Other jobs at Givzey

Premium

Reach out to the hiring manager directly.

Gain access to the contact details of the hiring managers who actually decide, and reach out to network with them directly. That, plus more when you upgrade:

  • Full match report with fit score and gaps
  • Career diagnostics on how recruiters read you
  • Curated company matches and warm intros
  • 48h early access to new roles

Cancel anytime.