Senior Data and AI Platform Architect

Job not on LinkedIn

September 19

Apply Now
Logo of Veralto

Veralto

B2B • Energy • Science

Veralto is a global enterprise comprising 13 operating companies and over 300 locations worldwide. With a workforce of 16,000 associates, Veralto focuses on impactful work in areas crucial to everyday life, such as water, food, and medicine. The company's Water Quality division manages, treats, purifies, and protects water on a global scale, while the Product Quality & Innovation division ensures the safety and authenticity of essential goods in the global supply chain. Committed to fostering a diverse and inclusive workplace, Veralto invests in its employees' growth through hands-on learning and career development opportunities, supported by a global network and the resources of an S&P 500 company.

📋 Description

• Lead the design and implementation of TraceGains' next-generation data and MLOps platform on Azure • Architect end-to-end MLOps capabilities that support Intelligent Document Processing, supply chain risk prediction, and knowledge graph applications • Architect scalable, multi-tenant data platform using Azure Data Factory, Databricks, and Azure Synapse Analytics • Design hybrid data architectures supporting operational systems, AI workloads, and knowledge graphs • Build vector databases and graph database infrastructure for RAG applications and semantic search • Design and implement comprehensive MLOps platform on Azure supporting the full ML lifecycle • Build automated ML pipelines using Azure ML, MLflow, and Azure DevOps for CI/CD • Implement real-time inference infrastructure with monitoring, alerting, and automated drift detection • Build and hire a technical team of data engineers • End-to-end knowledge graph lifecycle management including hydration from taxonomies/ontologies • Implement Infrastructure as Code using Terraform and build CI/CD pipelines for data products and ML models • Design containerized microservices architecture using Docker and Azure Kubernetes Service • Create self-service capabilities with comprehensive monitoring and observability • Report to the VP of Engineering

🎯 Requirements

• Master's degree in Computer Science, Data Engineering, or related field (or equivalent experience) • 8-12 years building enterprise data and AI platforms in production environments • Proven track record designing and implementing MLOps platforms on Azure with measurable business impact • 5+ years hands-on experience with Azure ML, Azure Synapse, Azure Data Factory, and/or Azure Kubernetes Service • MLOps & AI Platforms: MLflow, Kubeflow or Azure ML pipelines, model monitoring and drift detection • Data Engineering: Modern data stack (dbt, Airflow), real-time streaming, data lake/warehouse architecture • Cloud Infrastructure: Azure native services, Terraform, Kubernetes, containerization strategies • Databases & Storage: PostgreSQL, graph databases, vector stores, distributed systems design • DevOps & Platform Engineering: CI/CD for ML, Infrastructure as Code, monitoring and observability • Proven ability to establish shared platform capabilities that serve multiple product teams • Strong communication skills with ability to present to executive leadership • Track record of cross-functional collaboration with AI product teams, ML, and business stakeholders • Experience establishing technical standards and governance frameworks across distributed teams

🏖️ Benefits

• paid time off • medical/dental/vision insurance • 401(k)

Apply Now

Similar Jobs

September 19

Senior Integration & API Developer at Qued designing APIs and AWS/Python integrations. Client-facing role delivering Salesforce and third-party system integrations.

AWS

Python

Terraform

September 19

Senior Rust Engineer developing and deploying smart contracts for blockchain projects. Building scalable, secure decentralized applications and collaborating with cross-functional teams.

Rust

Web3

September 19

Java developer designing backend services and frontends for Veeva's internal tools. Supporting Vault Platform integrations and troubleshooting for life sciences customers.

AWS

Cloud

Docker

Hibernate

Java

JavaScript

Jenkins

Maven

Mockito

Postgres

Python

React

Spring

Spring Boot

SpringBoot

SQL

Vault

Vue.js

September 18

Senior SDET building Python backend and JavaScript frontend test automation for a media SaaS company. Embedded in agile teams to design, implement, and maintain automated test suites.

AWS

Cloud

Cypress

Docker

JavaScript

NGINX

Postgres

Python

September 18

Senior Java Engineer developing scalable enterprise applications for Veeva's life-sciences cloud. Lead backend features, mentor engineers, and collaborate with Product and QA.

AWS

Cloud

Docker

Gradle

Java

Jenkins

Kubernetes

Linux

Mockito

MySQL

Open Source

Spring

SQL

Vagrant

Built by Lior Neu-ner. I'd love to hear your feedback — Get in touch via DM or support@remoterocketship.com