Job Closed

This listing is no longer active.

Capgemini logo
Capgemini

Founded in 1967, Capgemini is revered as one of the world's leading consulting, technology, and outsourcing agencies. In 2016 alone, the company reported global

FBS Power Platform Developer

Location

Mexico

Posted

129 days ago

Salary

0

Seniority

Senior

EnglishSQL

Job Description

FBS Power Platform Developer

Capgemini

• FBS – Farmer Business Services is part of Farmers operations to build a global approach to identifying, recruiting, hiring, and retaining top talent. • Deliver consistent and sustainable results by building diverse and high-performing teams. • A solid and innovative company with a strong market presence. • Continuous learning and development.

Job Requirements

  • Highly experienced Power Platform Developer responsible for building and supporting enterprise-grade applications, data flows, automation, and analytics solutions across the Microsoft Power Platform.
  • Advanced expertise with Power Apps, Power Automate, Power BI, and Microsoft Fabric.
  • Secondary proficiency with SharePoint Online and Copilot/AI-enabled automation.
  • Solution Development & Delivery: Build enterprise-grade Power Platform solutions using Power Apps, Power Automate workflows, Power BI models/reports, and Fabric pipelines.
  • Develop secure, scalable integrations using Microsoft Graph API, Dataverse, SQL, and enterprise connectors.
  • Design and optimize data models, semantic layers, and pipelines in Fabric to support advanced analytics.
  • Create AI-driven automations using Microsoft Copilot and Copilot Studio.
  • Develop internal agents, generative workflows, and intelligent automation patterns aligned with IX governance and security.
  • Build solutions within IX’s governance structure including DLP policies, environment strategy, connector controls, and solution-layering guidelines.
  • Collaborate with Architecture, Security, and Platform teams to ensure compliance with enterprise controls.

Benefits

  • A competitive salary and performance-based bonuses.
  • Comprehensive benefits package.
  • Flexible work arrangements (remote and/or office-based).
  • You will also enjoy a dynamic and inclusive work culture within a globally renowned group.
  • Private Health Insurance.
  • Paid Time Off.
  • Training & Development opportunities in partnership with renowned companies.

Related Categories

Related Job Pages

More Platform Engineer Jobs

OtherRemoteTeam 51-200Since 2022H1B No Sponsor

• You'll own the APIs, data pipelines, and workflow orchestration that power our AI products—from real-time model inference to long-running optimization pipelines. • This role sits at the intersection of backend engineering and data engineering: you'll build the services that serve up models, manage workflows, and connect AI capabilities to the structured data that makes them useful. • You'll work closely with our Active Learning and LLM/Agents team leads, translating their product vision into scalable, production-grade systems. • The infrastructure you build will power model playgrounds for chemists, inverse design pipelines that optimize experiments across high-dimensional spaces, and orchestrated agent workflows that reason through complex scientific problems. • Design and build high-performance Python APIs that serve models, manage workflows, and expose AI capabilities to the broader platform • Architect backend services for scalability, reliability, and low latency • Build integrations between AI/ML systems, graph databases, and external data sources • Build and maintain long-running workflow pipelines using Ray and Temporal. • Design orchestration patterns for multi-step agent pipelines, batch inference, and numerical optimization workflows • Ensure fault tolerance, graceful degradation, and efficient resource utilization. • Architect and maintain data pipelines that feed AI/ML workflows • Work with Neptune (graph), Redis, DynamoDB, and other data stores to enable efficient data access patterns • Implement observability including logging, metrics, tracing, and alerting • Own system reliability—troubleshoot issues, conduct post-mortems, and continuously improve. • Design CI/CD pipelines and promote automation best practices.

California
Afresh logo

ML Platform Engineer

Afresh

The smartest solution for fresh

Platform Engineer129 days ago
OtherRemoteTeam 51-200Since 2017H1B Sponsor

• You will be instrumental in elevating our core ML platform to its next level of performance, reliability, and scalability. • You'll work on the critical infrastructure that directly enables all of Afresh's Machine Learning and Applied Science teams to innovate faster and deliver impact. • Your contributions will empower our product suite, including our flagship Prediction Engine, to power replenishment decisions on more than 15% of all produce sold in the United States. • In your first 3 months, you might deliver a feature that helps generalize model configuration, enables no-code model deploys for our various ML solutions, or vastly improves integration testing across our ML systems. • By the end of your first 6 months, you will have owned the implementation of significant scalability improvements and additions to our ML platform.

Alabama + 20 moreAll locations: Alabama | California | Colorado | Florida | Illinois | Kentucky | Montana | Nevada | New Jersey | New York | North Carolina | Oregon | Massachusetts | Michigan | Missouri | Pennsylvania | Texas | Utah | Virginia | Washington | Wisconsin
$130K - $176K / year
Job Closed
Axiomatic_AI logo

Senior Platform Engineer

Axiomatic_AI

https://www.axiomatic-ai.com/

Platform Engineer130 days ago
OtherRemoteTeam 11-50Since 2024H1B No Sponsor

This description is a summary of our understanding of the job description. Click on 'Apply' button to find out more. Role Description As a Senior Platform Engineer at Axiomatic, you will own the reliability, deployment, and operational excellence of our AI platform. This role focuses primarily on infrastructure, CI/CD, and operations, with additional responsibilities for automation and tooling development. - Lead deployment strategies and CI/CD pipelines across multiple environments - Architect and maintain multi-cloud infrastructure (Azure, AWS, GCP) and on-premise deployments - Own infrastructure as code using Terraform to automate provisioning and configuration - Build comprehensive observability systems: monitoring, metrics, logging, and alerting - Implement security controls, compliance frameworks, and data governance policies - Develop automation tools, APIs, and scripts (Python) to improve operational efficiency - Ensure system reliability, performance, and scalability - Drive incident response, postmortems, and continuous improvement - Troubleshoot infrastructure and application issues across multiple environments Qualifications - 7+ years of experience in Platform Engineering, Site Reliability Engineering, DevOps, or Infrastructure Engineering roles - Deployment expert: Deep experience with CI/CD pipelines, release strategies, and production deployments at scale - Multi-cloud expertise: Hands-on experience with Azure and AWS required (GCP is a plus) - On-premise deployment experience: Linux system administration, bare-metal provisioning, networking - Terraform expert: Deep experience writing and maintaining infrastructure as code - Observability systems: Proven track record building monitoring, alerting, and metrics platforms - Security mindset: Experience implementing security controls and best practices. Security certification preferred (CISSP, CEH, AWS/Azure Security Specialty, or similar) - Data governance: Understanding of data privacy, residency requirements, and governance frameworks - Backend/scripting skills: Python (preferred) or Go for automation, tooling, and operational scripts - Kubernetes and container orchestration in production - Strong Linux/Unix administration and scripting (Bash, Python) - CI/CD platforms: GitHub Actions, GitLab CI, Jenkins, or similar - Version control and GitOps practices - Strong problem-solving and debugging skills - Fluent in English (Spanish is a plus) Requirements - Design and implement deployment pipelines for multi-environment releases (dev, staging, production) - Own the full deployment lifecycle: build, test, release, and rollback strategies - Implement blue-green deployments, canary releases, and progressive rollouts - Build automated deployment tooling and workflows - Ensure zero-downtime deployments and rollback capabilities - Optimize build and deployment performance - Manage artifact repositories and container registries - Design and operate multi-cloud infrastructure across Azure, AWS, and GCP - Architect and deploy on-premise solutions for enterprise customers (Linux-based) - Manage Kubernetes clusters, container orchestration, and networking - Implement disaster recovery, backup strategies, and business continuity - Optimize cloud costs and resource utilization - Define and track SLIs, SLOs, and error budgets for critical services - Write and maintain Terraform modules for infrastructure provisioning - Implement GitOps workflows for infrastructure changes - Automate infrastructure scaling, updates, and operations - Ensure reproducible and version-controlled infrastructure - Design comprehensive monitoring, logging, and alerting (Prometheus, Grafana, Datadog, or similar) - Build dashboards for system health, performance, and business metrics - Implement distributed tracing for microservices - Conduct capacity planning and performance analysis - Drive reliability improvements through data-driven insights - Implement security best practices: identity management, secrets management, network policies - Work towards or maintain security certifications (SOC 2, ISO 27001, or similar) - Conduct security audits and vulnerability remediation - Implement data governance policies for AI pipelines and user data - Ensure compliance with data privacy regulations (GDPR, CCPA) - Write automation scripts and tools in Python for operational tasks - Build internal tooling for deployments, monitoring, and incident response - Develop runbooks, automation, and self-healing systems - Create APIs for infrastructure operations when needed - Maintain high code quality and testing standards for tooling - Participate in on-call rotation and lead incident response - Conduct blameless postmortems and drive action items - Build and maintain incident response playbooks - Improve system resilience and failure modes - Partner with engineering teams on deployment strategies and architecture - Work with security team on compliance and governance - Mentor engineers on operational best practices - Document systems, procedures, and runbooks Benefits - Opportunity to work on technology that drives innovation in AI for scientific and engineering applications - Contribute to the development of new AI architectures that can reason coherently and produce interpretable and verifiable solutions - Collaborate with a global team of engineers and AI specialists - Flexible working arrangements, including hybrid or fully remote options Company Description Axiomatic AI is building a new class of AI systems designed to reason with the rigor of the scientific method. Our mission, 30×30, is to deliver a 30× improvement in the speed, accessibility, and cost of semiconductor and photonic hardware development by 2030.

United States + 1 moreAll locations: United States | Spain
Job Closed
Curri logo

Platform Engineer

Curri

Transforming the way construction and industrial supplies are delivered.

Platform Engineer130 days ago
OtherRemoteTeam 51-200Since 2018H1B No Sponsor

• Build and maintain CI/CD pipelines and deployment automation using RWX, focusing on reliability, speed, and cost efficiency. • Manage and evolve AWS infrastructure (Aurora, ElastiCache, VPC, IAM, EC2, Secrets Manager) using Infrastructure as Code with Pulumi. • Operate, debug, and scale Kubernetes workloads in production environments. • Improve developer experience by reducing build times, enhancing tooling, and creating self-service capabilities for engineering teams. • Support and optimize the TypeScript monorepo build infrastructure and related tooling. • Collaborate closely with product engineers on debugging, system design, and performance optimization. • Participate in the on-call rotation (Tuesday-to-Tuesday) and support incident response without burnout-driven expectations.

California
Job Closed