採用
必須スキル
Python
Java
JavaScript
TypeScript
SQL
AWS
Azure
WHO YOU’LL WORK WITH
This role typically reports to Sr Manager S/w Engineering within Global Converse Technology (ITC), within the Supply chain, Planning and Corporate Functions
-
Product Managers and Business Partners across Supply Chain, Planning, Finance, and Corporate functions
-
Software Engineers and Integration Engineers
-
Platform, DevOps, and Site Reliability Engineering (SRE) teams
-
Data Engineering, Analytics, Architecture, and Security teams
-
External technology vendors and system integrators
WHO WE ARE LOOKING FOR
We are seeking a Lead Software Engineer – Full Stack Agentic AI- for Global Converse within the ITC, within the Supply chain, Planning and Corporate Functions. You will build reliable, secure, and scalable systems— partnering across product, design, and platform teams to deliver meaningful consumer and enterprise experiences. This is a hybrid role that combines hands‑on software engineering with quality engineering and testing responsibilities.
You will contribute to building, testing, and delivering enterprise solutions that support Supply Chain, Planning, and Corporate Functions, with the flexibility to take on engineering or QA work as needed. The ideal candidate has strong coding fundamentals, understands end‑to‑end delivery, and brings a quality‑first mindset to everything they build.
Details on qualifications:
-
Bachelor’s degree in Computer Science, Engineering, or a related field.
-
Will accept any suitable combination of education, experience, and training.
-
10+ years of experience in a Software Engineering role supporting enterprise systems.
-
Strong coding skills in one or more of the following: Java, JavaScript/TypeScript, Python, or similar languages.
-
Solid understanding of software delivery lifecycle, including requirements, development, testing, release, and production support.
-
Experience testing and/or building integrations and data flows using APIs, messaging, and batch processing.
-
Working knowledge of CI/CD pipelines and how to integrate automated tests into build and deployment workflows.
-
Experience validating data accuracy and integrity, with working knowledge of SQL and data reconciliation techniques.
-
Exposure to Supply Chain, Planning, ERP, or Finance systems (order management, inventory, planning, financial posting) is highly preferred.
-
Familiarity with cloud environments (AWS and/or Azure).
-
Strong communication skills and the ability to collaborate effectively across engineering and business teams.
-
A flexible mindset, comfortable switching between engineering delivery and QA ownership based on team needs.
-
Exposure to AI assisted development or testing tools—or a strong interest in learning and applying AI to improve engineering productivity and quality
-
Experience with AI/ML technologies or a strong interest and demonstrated eagerness to learn and apply AI driven solutions to improve software design, development, and operational efficiency.
-
Strong collaboration, communication, and growth mindset.
-
Strong understanding of Full Stack Proficiency: Strong skills in Python, TypeScript, or JavaScript, API integration, data connectors, SQL/No-SQL databases etc
-
AI/LLM Experience: Proven experience with Large Language Models (LLMs) and building AI agents.
-
Experience with RESTful APIs and database management (Dataverse or SQL).
-
Problem-Solving: Ability to debug agent behaviors, handle hallucinations, and optimize prompt engineering.
-
Knowledge of AWS/Azure OpenAI Service.
WHAT YOU’LL WORK ON
-
AI Agent Development/orchestration: Design, build, and implement AI agents and copilots using frameworks such as RAG
-
Explore and integrate AI-driven automation tools to enhance process efficiency and decision-making
-
Coordinate with cross-functional teams to ensure seamless integration and delivery.
-
Document processes, best practices, and maintain compliance with organizational standards.
-
Backend & Frontend Development: Create secure, high-quality, full-stack applications (React, Angular, or Vue.js for frontend?; Python/Node.js for backend?) that interact with AI models via RESTful or GraphQL APIs.
-
Deployment & Optimization: Deploy, monitor, and optimize AI-driven applications using containerization (Docker, Kubernetes) and cloud services (Azure).
-
Agentic Workflows: Implement Retrieval Augmented Generation (RAG) systems to enhance agent knowledge and accuracy.
-
Contribute hands on engineering work, including building and enhancing services, integrations, and automation supporting enterprise platforms.
-
Test and validate end to end business workflows across Supply Chain, Planning, Finance, and Corporate systems.
-
Validate integrations and data flows between systems such as ERP, OMS, WMS, Planning tools, and Finance platforms (REST APIs, events, batch jobs).
-
Participate in feature delivery, production validation, and post deployment support as needed.
-
Identify, document, and track defects; collaborate with engineering teams on root cause analysis and resolution.
-
Support release planning and execution, including smoke testing, sanity checks, and rollback validation.
-
Contribute to architecture evolution, security by design, and cost efficient solutions.
-
Mentor engineers through pairing, feedback, and knowledge sharing.
総閲覧数
0
応募クリック数
0
模擬応募者数
0
スクラップ
0
類似の求人

TECHNICAL LEAD L1
Wipro · Chennai, India

Lead Software Engineer
JPMorgan Chase · Bengaluru, Karnataka, India, IN

TECHNICAL LEAD L1
Wipro · Hyderabad, India

Technology Director - Gen AI Product Lead
Wells Fargo · Bengaluru, India

Applications Development Senior Programmer Analyst – Assistant Vice President
Citigroup · CHENNAI, Tamil Nādu, India
Nikeについて

Nike
PublicNike, Inc. is an American athletic footwear and apparel corporation headquartered near Beaverton, Oregon. It is the world's largest supplier of athletic shoes and apparel and a major manufacturer of sports equipment, with revenue in excess of US$46 billion in its fiscal year 2022.
10,001+
従業員数
Beaverton
本社所在地
$200B
企業価値
レビュー
4.2
10件のレビュー
ワークライフバランス
4.3
報酬
3.8
企業文化
4.1
キャリア
3.2
経営陣
4.0
82%
友人に勧める
良い点
Flexible scheduling and work environment
Great learning opportunities
Positive and supportive culture
改善点
Limited career growth opportunities
Office politics
Challenging upward mobility
給与レンジ
33件のデータ
Mid/L4
Senior/L5
Mid/L4 · Data Analyst
2件のレポート
$134,195
年収総額
基本給
$116,500
ストック
-
ボーナス
-
$131,895
$136,359
面接体験
4件の面接
難易度
3.3
/ 5
期間
14-28週間
内定率
25%
体験
ポジティブ 0%
普通 75%
ネガティブ 25%
面接プロセス
1
Application Review
2
Recruiter Screen
3
Hiring Manager Interview
4
Technical Assessment
5
Final Interview
6
Offer
よくある質問
Technical Knowledge
Behavioral/STAR
Past Experience
Culture Fit
ニュース&話題
Nike’s New Air Max Plus Collaboration Is a Celebration of African Culture - WWD
WWD
News
·
2d ago
Insider trades: Tim Cook shops Nike shares; Micron, Broadcom among other notable names (NKE:NYSE) - Seeking Alpha
Seeking Alpha
News
·
2d ago
Caitlin Clark’s Kobe 6 colorway emerges as the NBA’s most‑worn shoe - Hawk Central
Hawk Central
News
·
2d ago
1 Bullish Sign for Struggling Nike Stock - Yahoo Finance
Yahoo Finance
News
·
3d ago