Forward Deployment Engineer, Generative AI

🕒 May 18

Apply Now
Find Similar Remote Jobs

📊 Check your resume score for this job

Improve your chances of getting an interview by checking your resume score before you apply.

Logo of Tiger Analytics

Tiger Analytics

1001 - 5000 employees

Founded 2011

đŸ€– Artificial Intelligence

đŸ€ B2B

Artificial Intelligence ‱ B2B ‱ Consulting

Tiger Analytics is a leading AI and analytics consulting firm that specializes in leveraging data science and machine learning to provide strategic business insights across various industries. They offer services in data strategy, AI engineering, and business intelligence to enable data-driven decision-making and digital transformation for their clients. Tiger Analytics collaborates with top technology partners like Microsoft, Google Cloud, and AWS to deliver cutting-edge solutions. They serve a diverse range of sectors including consumer packaged goods, healthcare, and finance, helping businesses operationalize insights and differentiate with AI and machine learning technologies.

📋 Description

‱ The Forward Deployment Engineer (FDE) drives the on-site deployment, integration, and scaling of our enterprise Generative AI solutions. ‱ This role embeds directly within customer engineering teams to operationalize Large Language Models (LLMs) and retrieval systems across multi-cloud environments (AWS, Azure, GCP). ‱ You will bridge the gap between AI research and production-grade cloud infrastructure. ‱ You will collaborate with cross-functional teams and business partners and will have the opportunity to drive current and future strategy by leveraging your analytical skills as you ensure business value and communicate the results.

🎯 Requirements

‱ AI Solution Deployment: Deploy, fine-tune, and optimize large-scale Gen AI models and LLM orchestration frameworks within customer cloud environments. ‱ Infrastructure Engineering: Architect scalable infrastructure for AI workloads utilizing GPU/TPU orchestration, high-performance storage, and low-latency networking. ‱ Data & Retrieval Pipelines: Design and implement high-throughput data ingestion pipelines and Vector Database architectures for Retrieval-Augmented Generation (RAG). ‱ Multi-Cloud Management: Build agnostic, resilient cloud deployments across AWS, Azure, and GCP using Infrastructure as Code (IaC). ‱ Technical Advocacy: Act as the primary technical consultant, guiding enterprise clients through AI safety, prompt engineering patterns, and inference cost optimization. ‱ Product Collaboration: Feed edge-case deployment insights back to core AI research and platform engineering teams to improve product robustness. ‱ Technical Requirements- AI Frameworks: Hands-on experience with LLM orchestration tools (LangChain, LlamaIndex, AutoGen) and deep learning frameworks (PyTorch, Hugging Face). ‱ Vector Databases: Production experience setting up and querying vector stores (Milvus, Pinecone, Qdrant, Chroma, or pgvector). ‱ Model Operations (LLMOps): Proficiency in model serving frameworks (vLLM, TGI, Triton Inference Server) and evaluation tools. ‱ Cloud & Containers: Advanced knowledge of cloud AI primitives (AWS Bedrock/SageMaker, Azure OpenAI, GCP Vertex AI) and Kubernetes (K8s) for GPU workloads. ‱ IaC & Automation: Mastery of Terraform or OpenTofu to provision complex multi-cloud compute environments. ‱ Programming: Strong coding skills in Python (preferred) or Go, with an emphasis on writing clean, concurrent code. ‱ Soft Skills- AI Consultation: Ability to manage customer expectations around LLM non-determinism, hallucinations, and performance trade-offs. ‱ Rapid Adaptability: Passion for keeping pace with the weekly advancements in the Generative AI landscape. ‱ Critical Debugging: Exceptional skill in isolating errors across complex software layers, from GPU drivers up to prompt engineering logic. ‱ Mobility: Willingness to travel to client sites to lead high-stakes, on-site deployment sprints.

đŸ–ïž Benefits

‱ This position offers an excellent opportunity for significant career development in a fast-growing and challenging entrepreneurial environment with a high degree of individual responsibility. ‱ Tiger Analytics provides equal employment opportunities to applicants and employees without regard to race, color, religion, age, sex, sexual orientation, gender identity/expression, pregnancy, national origin, ancestry, marital status, protected veteran status, disability status, or any other basis as protected by federal, state, or local law.

Apply Now

Similar Jobs

🕒 May 18

decircle

1 - 10

DevOps Engineer for M0, a stablecoin platform optimizing AWS infrastructure and CI/CD pipelines. Collaborating with product teams and ensuring security and performance of cloud-native applications.

Ansible

AWS

Chef

Cloud

Cyber Security

Distributed Systems

Docker

Grafana

Jenkins

Kubernetes

Prometheus

Puppet

Terraform

🕒 May 16

Granicus

501 - 1000

đŸ›ïž Government

☁ SaaS

📋 Compliance

Site Reliability Engineer ensuring reliability, scalability, and performance of Granicus services. Leading efforts in automation, monitoring, and incident management for cloud-based solutions.

Ansible

AWS

Azure

Chef

Cloud

Grafana

Java

Linux

Prometheus

Puppet

Python

Ruby

Splunk

Unix

Go

🕒 May 15

ImagineX

201 - 500

đŸ€– Artificial Intelligence

🔒 Cybersecurity

🏱 Enterprise

Senior Azure DevOps Engineer at ImagineX deploying Azure infrastructure and CI/CD pipelines. Collaborating with teams for secure and scalable solutions in a remote environment.

Azure

Cloud

Docker

Firewalls

Kubernetes

Python

SQL

Terraform

🕒 May 14

AceHack 4.0

11 - 50

⚡ Productivity

☁ SaaS

Site Reliability Engineer at Orkes solving distributed systems challenges and managing cloud infrastructure. Engaging in incident management and improving system reliability through observability tools.

AWS

Azure

Cloud

Distributed Systems

Google Cloud Platform

Grafana

Kubernetes

Microservices

Prometheus

Python

Terraform

🕒 May 14

NVIDIA

10,000+ employees

đŸ€– Artificial Intelligence

🎼 Gaming

Senior Network Reliability Engineer maintaining NVIDIA's cloud and datacenter networks. Engaging in global support and driving operational improvements across teams.

AWS

Azure

Cloud

DNS

Google Cloud Platform

TCP/IP