AI Engineer
In-Office, Bengaluru, Karnataka
- 求人ID
- R-547776
- Category
- Information Technology
- Location
- バンガロール, インド
私たちの前進を支える仕事をリードする
BDのコーポレート部門は、グローバルビジネスが成果を上げ、成長し続けるための、仕組み、意思決定、そして能力を支えています。あなたは、複数の部門、地域、様々なレベルのリーダーたちと連携しながら、複雑な課題を解決し、オペレーショナルエクセレンスを推進し、お客様や医療従事者に最も近いチームをサポートしていくことになります。
BDの各コーポレート部門では、意義のある成果を生み出し、自らの影響力へのオーナーシップを持ち、長期的な成功を見据えてつくられた組織でキャリアを成長させる機会が用意されています。世界最大級のメドテックカンパニーの一つとして、BDには世界中のヘルスケアシステムにインパクトをもたらすための規模、展開、そしてイノベーション基盤があります。
あなたなしでは、「明日の医療を、あらゆる人々に™」は実現できません。
We are the people who give possibilities purpose
BD is one of the largest global medical technology companies in the world. Advancing the world of health™ is our Purpose, and it’s no small feat. It takes the imagination and passion of all of us—from design and engineering to the manufacturing and marketing of our billions of MedTech products per year—to look at the impossible and find transformative solutions that turn dreams into possibilities.
Job Description
Role Summary
We are looking for a hands-on AI Engineer to drive the design, development, and innovation of AI capabilities within our enterprise-grade AI platform — a secure, internal environment offering services such as document translation, intelligent chatbots, LLM APIs, and other AI-powered workflows.
You will own the end-to-end lifecycle of Generative AI, Agentic AI, and applied AI/ML solutions — from ideation and rapid prototyping, through model training and fine-tuning where needed, to inference and production deployment in collaboration with engineering teams. While our preferred deployment environment is Azure, the role is not strictly cloud-native; we value engineers who can deliver robust AI solutions across diverse stacks. This role blends deep technical expertise with product thinking to deliver tangible business value through AI.
Key Responsibilities
AI Solution Design & Development
- Design, prototype, and validate AI-powered features spanning Generative AI, NLP, and Agentic AI use cases.
- Train, fine-tune, and evaluate language or vision models where pre-built or hosted models are insufficient — and operationalize them for inference in production.
- Architect and deliver production-ready, large-document advanced RAG workflows, including chunking strategies, hybrid retrieval, re-ranking, and evaluation.
- Build complex multi-agent systems — designing reusable, composable agent capabilities (skills, tools, actions) that can be dynamically invoked by LLMs.
- Implement agent interoperability and orchestration using protocols such as Agent-to-Agent (A2A), Agent Communication Protocol (ACP), and Model Context Protocol (MCP).
- Develop modular, reusable Python APIs and reference implementations for use cases including chatbots, document Q&A, summarization, and intelligent automation.
- Apply prompt engineering, context engineering, and solution tuning to optimize accuracy, latency, and cost.
Deployment & Optimization
- Provide well-documented proof-of-concepts and reference implementations to Full Stack and DevOps teams for integration and deployment.
- Collaborate with backend and cloud engineers to ensure AI solutions meet performance, cost, and security constraints.
- Build and optimize inference pipelines; monitor token usage, latency, and model performance, recommending improvements across the stack.
Product Innovation & Evangelism
- Act as an internal AI product evangelist — identifying, championing, and prototyping new AI-powered use cases.
- Collaborate with stakeholders to shape AI product concepts and contribute to roadmap development.
- Lead internal PoCs, technical demos, and feasibility assessments.
- Stay current with the evolving AI landscape and evaluate emerging tools, models, and techniques for adoption.
Required Skills & Experience
- 3–5+ years in applied AI/ML engineering, with demonstrated delivery of production Generative and Agentic AI solutions.
- Ability to build AI solutions across Generative AI and Agentic AI, including training and fine-tuning language models when required and deploying them for inference.
- Proven experience building Agentic AI systems — multi-agent orchestration, reusable agent skills/tools, and agent interoperability (A2A, ACP, MCP).
- Hands-on experience designing and shippingadvanced RAG pipelinesin production — including hybrid retrieval, re-ranking, query transformation, and systematic evaluation — over large, unstructured document collections.
- Hands-on experiencebuilding and orchestrating agent skills— authoring and managing reusable skill definitions (e.g.,skills.md/Claude Skills-style capability files) that can be dynamically discovered and invoked by LLMs.
- Experiencebuilding custom MCP (Model Context Protocol) servers— exposing tools, resources, and data sources to LLMs/agents through standardized, interoperable interfaces.
- Proven experience buildingentity extraction and document understandingsolutions at scale across diverse, unstructured document formats.
- Practical experience with LLM orchestration frameworks and vector/retrieval systems (e.g., LangChain, LlamaIndex, LangGraph, CrewAI, AutoGen, Semantic Kernel; FAISS, Qdrant, Pinecone, Weaviate, Azure AI Search — or equivalents).
- Strong proficiency in Python, including API development (FastAPI/Flask), async/concurrent programming, data wrangling, and rapid prototyping (Streamlit, Gradio, etc.).
- Hands-on experience integrating at least one major LLM provider (e.g., OpenAI, Azure OpenAI, Anthropic/Claude, Hugging Face, Cohere, Meta Llama).
- Solid grasp of prompt engineering, context engineering, and latency-vs-cost trade-offs.
- Working familiarity with the Azure AI ecosystem (Azure AI Studio/Foundry, Azure OpenAI, Azure AI Services such as Vision, Translator, and Document Intelligence) — or willingness to ramp up quickly.
- Experience with the Anthropic/Claude ecosystem (Claude Skills, Claude Code, Agent SDK).
- Familiarity with fine-tuning and model optimization techniques (PEFT, LoRA, quantization, distillation, pruning).
Preferred Qualifications( Good to have)
- Experience with experiment tracking and evaluation tools (e.g., LangSmith, MLflow)
- Familiarity with deep learning / classical ML libraries (PyTorch, TensorFlow, Scikit-learn) and CV/NLP toolkits (Transformers, spaCy, OpenCV), and exposure to computer vision (image classification, object detection, segmentation) where appropriate — a plus, not mandatory.
- A strong track record in Kaggle competitions, AI/ML hackathons, or similar applied challenges is a definite plus.
Collaboration & Integration
- Partner with Full Stack Developers to translate AI capabilities into usable, well-documented APIs.
- Coordinate with DevOps and Cloud Engineers to align AI features with infrastructure, security, and deployment requirements.
- Participate in design reviews and planning sessions to ensure smooth handoff of AI features into production.
What You'll Bring
- A builder's mindset — you turn ideas into working prototypes quickly.
- Full-spectrum capability — you pick the right approach (GenAI, agents, deep learning, or classical ML) for the problem at hand, and can train or fine-tune models when off-the-shelf won't do.
- Product intuition — you think beyond code and understand business impact.
- Collaborative spirit — you communicate clearly across engineering, product, and infrastructure teams.
- Curiosity — you stay ahead of the rapidly evolving GenAI and Agentic AI landscape.
Why Join Us?
To find purpose in the possibilities, we need people who can see the bigger picture, who understand the human story that underpins everything we do. We welcome people with the imagination and drive to help us reinvent the future of healthcare. At BD, you’ll discover a culture in which you can learn, grow and thrive.
We believe that when people connect in person, we learn faster, collaborate more deeply, and build a stronger culture. Join us and enjoy a culture where face-to-face collaboration supports your learning, your progress, and your success.
To learn more about BD visithttps://bd.com/careers.
Becton, Dickinson, and Company is an Equal Opportunity Employer. We evaluate applicants without regard to race, color, religion, age, sex, creed, national origin, ancestry, citizenship status, marital or domestic or civil union status, familial status, affectional or sexual orientation, gender identity or expression, genetics, disability, military eligibility or veteran status, and other legally protected characteristics.
Required Skills
Optional Skills
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Primary Work Location
IND Bengaluru - Technology CampusAdditional Locations
Work Shift
求められる人物像
BDのコーポレート部門で活躍しているのは、どのような人たちでしょうか。主な特性をご覧ください。それはあなたかもしれません。
- 柔軟に適応できる方
- 協働的な方
- 主体的・積極的な方
- 問題解決力のある方
- 結果志向の方
- 自発的に行動を起こす方
次のチャレンジの準備はできていますか?
ここは、影響力を発揮し、責任を持ち、存在感を高めたいプロフェッショナルのための環境です。あなたは世界中のチームと協働し、リーダーにアドバイスを行い、大胆な戦略を測定可能な成果へとつなげ、ビジネスを強化し、世界の医療を前進させる役割を担います。
BDが、絶え間ないイノベーションとパーパスのための協働を通じて、どのように可能性を進歩へと変えていくのかご覧ください。BDと共に、医療の未来を築くとは、どのようなことなのかご確認ください。
人を中心に築かれた職場環境
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「BDには、私たちのBDバリューに心から共感する人々が集まっています。私は、一緒に働く仲間が意義のある成果を生みだす姿を日々目の当たりにしています。BDのカルチャーは、とても支援的で協力的であり、それは私自身の価値観にも合うものです。」
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「私のキャリアの成長は、資格取得の機会をもらったり、成長につながる役割変更を経験できたりと、様々な方法で支えられてきました。時には、役割が大きく変わることもあり、そのおかげで新しい知識を得て、異なるキャリアパスを探求したりすることができました。」
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「ファイナンスでは、患者さんやお客様と直接接する最前線にはいません。しかし、財務の知見がどのようにインパクトのある戦略を後押しできるのかを深く理解することができます。これらの戦略は、結果として医療にプラスの影響を与え、最終的には人々が健康的な生活を送ることを支えることにつながります。その一端を担えていると実感できるのは、とてもやりがいがあります。」
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「ヘルスケア業界は安定している一方で、成長も続けており、人々がしかるべきケアを受けるためにはBDの製品とソリューションを必要としているという点に魅力を感じ、BDに惹かれました。BDは業界で高く評価されており、私自身も会社の一員としてとても尊重されていると感じています。BDのピープルマネージャーはプロフェッショナルに接してくれます。ここで私はこれまでに良いマネージャーに恵まれてきました。」
福利厚生
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競争力のある報酬
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退職金制度
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医療保険
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有給休暇
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育児休暇
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従業員支援プログラム(EAP)
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報奨・表彰制度
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