Forward Deployed Engineer
Archetype: Builder · Learner · Pair programmer
Role Summary
You are an on-the-ground builder who writes real production code inside client environments from day one. You come in hungry, move fast, and turn ambiguous problems into working prototypes within hours — not weeks. Your credibility comes entirely from working software, not slides.
What You Will Do
• Embed directly at client sites to prototype and deploy agentic AI workflows using frameworks such as LangGraph, CrewAI, AutoGen, or AWS Bedrock Agents — shipping working code, not slide decks.
• Build RAG pipelines end-to-end: chunking strategies, vector store configuration (Pinecone, pgvector, Weaviate), retrieval tuning, and response evaluation.
• Instrument LLM-powered applications with observability tooling (LangSmith, Braintrust, Arize) so clients can see exactly what their agents are doing in production.
• Participate actively in daily client stand-ups and technical reviews, communicating clearly about progress, blockers, and trade-offs with both engineers and business stakeholders.
• Rapidly iterate on prototypes based on user feedback — from zero to demo in 24–48 hours is the expectation, not the exception.
• Document deployment architectures, prompt engineering decisions, and integration patterns so knowledge persists after you rotate off an engagement.
• Contribute reusable agent templates and accelerators to Cognizant's internal AI toolkit between engagements.
Technical Foundation
• Strong Python; basic TypeScript / JavaScript
• REST API design and integration
• Git, CI/CD basics, containerisation (Docker)
• SQL and at least one cloud platform (AWS / Azure / GCP)
• Hands-on LLM experience (OpenAI, Anthropic, Gemini APIs)
GenAI / Agentic AI Requirements
• Has built at least one end-to-end RAG or agent application — personal projects count as strongly as work experience
• Understands prompt engineering, few-shot design, and chain-of-thought prompting
• Familiar with agentic orchestration concepts: tool use, memory, planning loops
• Knows how to evaluate LLM output quality — even informal logging or manual review frameworks
What Makes You Stand Out
• You have shipped something real with AI — a GitHub repo, a side project, a hackathon win — not just certificates
• You are comfortable being wrong in front of a client and pivoting immediately
You ask 'what does done look like?' before writing a single line of code
コグニザントについて
コグニザント(NASDAQ: CTSH)は、AI Builderおよびテクノロジーサービスプロバイダーとして、お客様にフルスタックのAIソリューションを構築することで、AI投資と企業価値を結ぶ架け橋となっています。業界、ビジネスプロセス、エンジニアリングに関する当社の深い専門知識を活かし、組織固有のビジネス環境をテクノロジー・システムに組み込みます。これにより、人間の可能性を最大限に引き出し、確かな成果を実現するとともに、急速に変化する世界においてグローバル企業が常に一歩先を行くための支援を行っています。 詳細については、cognizant.ai をご覧ください。
雇用に関する追加情報
本募集に記載されている報酬情報は、掲載日時点で正確なものです。Cognizantは、適用される法令に従い、いつでも本情報を変更する権利を留保します。
応募者は、対面またはビデオ会議による面接への参加を求められる場合があります。また、各面接の際に、現在有効な州政府または政府発行の身分証明書の提示を求められる場合があります。
Cognizantは機会均等雇用主です。応募および選考において、人種、肌の色、性別、宗教、信条、性的指向、性自認、国籍、障がい、遺伝情報、妊娠、退役軍人の地位、その他連邦法・州法・地方自治体の法律により保護されるいかなる特性に基づく差別も行いません。







