Job Description
Application Developer - AI Technical Consultant - 9216
Job Location:  Bangalore, Chennai, Hyderabad, Noida, Pune
Location Flexibility:  Multiple Locations in Country
Req Id:  9216
Posting Start Date:  6/24/26

At Fujitsu, our purpose is to make the world more sustainable by building trust in society through innovation. Founded in Japan in 1935, Fujitsu has been a pioneer in technology and innovation for decades. Today, as a world-leading digital transformation partner, we are committed to transforming business and society in the digital age.

With approximately 130,000 employees across over 50 countries, Fujitsu offers a broad range of products, services, and solutions. We collaborate with our customers to co-create solutions that drive enterprise-wide digitalization while actively working to address social issues and contribute to the United Nations Sustainable Development Goals (SDGs).

 

Job Description – AI Technical Consultant

AI Agents | GenAI | RAG | APIs | Enterprise Integration | AI Accelerators


Role Title: AI Technical Consultant

 

Experience:

  • 4–8 years of relevant professional experience.
  • Experience in software engineering, AI/ML engineering, data engineering, or automation roles.
  • Hands-on experience in developing LLM-based or AI-enabled solutions.
  • Experience in delivering production or near-production AI applications is preferred.

 

Role Summary:

This approach combines AI-native ways of working, strong business understanding, and trust-led transformation.

We are looking for an AI Technical Consultant who can design and build intelligent AI agents and client-facing accelerators.

The candidate will work across:

  • Large Language Models
  • Agentic AI
  • Retrieval-Augmented Generation
  • APIs and microservices
  • Enterprise data sources
  • Cloud platforms
  • Consulting workflows

The role requires strong technical development and client collaboration skills.

The candidate should be able to understand a business problem and quickly convert it into a practical AI solution.

The candidate will also be responsible for taking solutions from initial idea and prototype to deployment and operational support.

 

Role Objectives:

The AI Technical Consultant will:

  • Own and lead the development of AI agents used by consultants.
  • Build reusable AI accelerators for client engagements.
  • Convert business requirements into practical AI solutions.
  • Integrate AI agents with enterprise systems and data sources.
  • Support rapid prototyping and production-ready implementation.
  • Balance delivery speed, engineering quality, security, and business value.
  • Promote responsible and controlled use of AI.

 

Primary Skills:

  • Python and FastAPI
  • TypeScript or Node.js
  • REST API and GraphQL development
  • Large Language Models
  • Agentic AI development
  • Retrieval-Augmented Generation
  • Prompt engineering
  • LangChain
  • Microsoft Agent Framework
  • OpenAI SDK
  • Azure AI SDK
  • Microsoft Copilot Studio
  • Vector databases
  • Enterprise system integration
  • Docker
  • Cloud platforms
  • Git and CI/CD

 

Key Responsibilities:

1. AI Agent Design and Development

  • Design and build intelligent AI agents for consulting and business workflows.
  • Develop AI agents using platforms and frameworks such as:
    • Microsoft Copilot Studio
    • Azure AI
    • LangChain
    • Microsoft Agent Framework
    • OpenAI SDK
    • Claude
    • Gemini
    • Llama
  • Build single-agent and multi-agent solutions based on business needs.
  • Define agent goals, tasks, tools, memory, and decision logic.
  • Develop reusable agent components and templates.
  • Implement tool-calling and workflow execution.
  • Ensure agents provide accurate, relevant, and controlled responses.
  • Maintain human validation for important business decisions.

2. AI Accelerator Development

  • Build reusable AI accelerators for client engagements.
  • Develop tools that improve consultant productivity.
  • Support AI accelerators for areas such as:
    • research and document analysis
    • proposal development
    • knowledge discovery
    • data analysis
    • business process support
    • decision support
    • project delivery automation
  • Convert proof of concepts into scalable applications.
  • Maintain reusable code, APIs, templates, and implementation guides.
  • Ensure accelerators can be configured for different clients and use cases.

3. Prompt Engineering and AI Orchestration

  • Design clear and effective prompts for different business use cases.
  • Develop system prompts, task prompts, and reusable prompt templates.
  • Build prompt chaining and workflow orchestration.
  • Develop tool-calling and function-calling logic.
  • Manage conversation context and memory.
  • Implement structured output formats.
  • Validate AI responses against required schemas.
  • Improve prompt quality through regular testing and evaluation.
  • Reduce incorrect or unsupported responses.

4. RAG Solution Development

  • Design and implement Retrieval-Augmented Generation pipelines.
  • Connect LLMs with enterprise documents and knowledge sources.
  • Build document ingestion and preprocessing pipelines.
  • Define suitable document chunking strategies.
  • Generate, store, and manage embeddings.
  • Work with vector search platforms such as:
    • Qdrant
    • Pinecone
    • FAISS
    • Azure AI Search
    • equivalent vector database platforms
  • Implement metadata filtering and hybrid search.
  • Apply reranking methods where required.
  • Improve retrieval relevance and response accuracy.
  • Maintain source references and traceability.
  • Ensure answers are grounded in approved information.

5. Enterprise Data Integration

  • Connect AI solutions with enterprise data sources such as:
    • SharePoint
    • CRM platforms
    • relational databases
    • NoSQL databases
    • cloud storage
    • business applications
    • REST APIs
    • GraphQL services
  • Build secure and reliable integration workflows.
  • Handle structured and unstructured data.
  • Implement authentication and authorisation.
  • Manage data transformation between source systems and AI applications.
  • Ensure smooth and secure data flow across platforms.
  • Handle API failures, data quality issues, and integration errors.

6. Backend and API Development

  • Build scalable backend services using Python and FastAPI.
  • Develop services using TypeScript or Node.js where required.
  • Create REST and GraphQL APIs.
  • Expose AI agent and RAG capabilities through secure APIs.
  • Implement request and response validation.
  • Implement exception handling, retry logic, and logging.
  • Develop asynchronous processing where required.
  • Prepare clear API documentation.
  • Build reusable services for multiple applications and accelerators.
  • Optimise APIs for performance and scalability.

7. AI-Assisted Software Development

  • Use modern AI-assisted coding tools to improve development speed.
  • Work with approved tools such as:
    • GitHub Copilot
    • Claude Code
    • Gemini
    • other AI development assistants
  • Review and validate all AI-generated code.
  • Ensure generated code follows quality and security standards.
  • Use AI tools for:
    • code generation
    • code review
    • unit test creation
    • technical documentation
    • troubleshooting
    • refactoring
  • Maintain human review and approval for important code changes.

8. LLM Platform Integration

  • Integrate applications with approved commercial and open-source LLMs.
  • Work with models and services such as:
    • Azure OpenAI
    • OpenAI
    • Anthropic Claude
    • Google Gemini
    • Llama
    • other approved models
  • Select suitable models based on:
    • business use case
    • accuracy
    • latency
    • security
    • privacy
    • cost
  • Implement model fallback and routing where required.
  • Monitor token usage, latency, and API cost.
  • Handle rate limits and service errors.
  • Support private, cloud, and hybrid deployment models.

9. AI Evaluation and Quality Assurance

  • Define test scenarios for AI agents and RAG applications.
  • Evaluate response:
    • accuracy
    • relevance
    • completeness
    • consistency
    • safety
    • source grounding
  • Test retrieval quality and source relevance.
  • Create benchmark datasets for repeated evaluation.
  • Perform regression testing after changes to prompts, models, data, or workflows.
  • Analyse failure patterns and improve the solution.
  • Track evaluation results and quality improvements.
  • Ensure the solution meets agreed business acceptance criteria.
  • Collect and use stakeholder feedback for continuous improvement.

10. Responsible AI, Guardrails, and Security

  • Implement guardrails for safe and controlled AI usage.
  • Protect confidential and sensitive information.
  • Apply role-based access controls.
  • Follow least-privilege access principles.
  • Implement input and output validation.
  • Support content filtering and prompt-injection protection.
  • Prevent unauthorised access to enterprise data.
  • Maintain audit logs where required.
  • Follow responsible AI guidelines.
  • Ensure human review for sensitive or high-impact outputs.
  • Support data privacy, retention, and compliance requirements.

11. Cloud and Container Deployment

  • Package applications using Docker.
  • Create and maintain Dockerfiles and container images.
  • Deploy AI solutions on Azure, AWS, or GCP.
  • Manage application configurations and environment variables.
  • Use secure secrets-management services.
  • Support development, test, staging, and production environments.
  • Troubleshoot deployment and runtime issues.
  • Support scaling and availability requirements.
  • Monitor container health and application performance.

12. CI/CD and Engineering Practices

  • Use Git for source-code management.
  • Follow suitable branching and pull-request practices.
  • Build and maintain CI/CD pipelines using:
    • GitHub Actions
    • Azure DevOps
    • other approved pipeline tools
  • Automate:
    • application build
    • unit testing
    • integration testing
    • security scanning
    • container creation
    • deployment
  • Maintain environment-specific configurations.
  • Support code reviews and release validation.
  • Prepare deployment and rollback plans.
  • Ensure changes are traceable and properly documented.

13. Client Consulting and Business Collaboration

  • Work closely with consultants and client stakeholders.
  • Understand business problems and expected outcomes.
  • Convert business needs into technical solution options.
  • Explain AI concepts in simple business language.
  • Conduct discovery sessions and solution workshops.
  • Prepare and deliver solution demonstrations.
  • Support AI use-case assessment and prioritisation.
  • Share realistic estimates, assumptions, risks, and dependencies.
  • Manage stakeholder expectations clearly.
  • Focus on measurable business value and practical adoption.
  • Avoid building technology solutions without a clear business purpose.

14. Solution Architecture and Technical Design

  • Prepare high-level and detailed technical designs.
  • Define:
    • application architecture
    • integration architecture
    • data architecture
    • AI architecture
    • deployment architecture
  • Select suitable models, frameworks, databases, and cloud services.
  • Consider security, performance, scalability, maintainability, and cost.
  • Identify technical risks and mitigation actions.
  • Review solution designs with architecture, security, and infrastructure teams.
  • Maintain architecture diagrams and technical decision records.

15. Testing, Deployment, and Production Support

  • Prepare unit, integration, functional, performance, and regression tests.
  • Validate end-to-end AI workflows.
  • Support user acceptance testing.
  • Plan and support application deployments.
  • Monitor applications after deployment.
  • Investigate incidents and complete root cause analysis.
  • Implement permanent fixes to avoid repeated issues.
  • Maintain operational runbooks and support documents.
  • Provide post-deployment support and knowledge transfer.

16. Documentation and Knowledge Sharing

  • Prepare and maintain:
    • requirement documents
    • solution design documents
    • architecture diagrams
    • API specifications
    • prompt libraries
    • test reports
    • evaluation reports
    • deployment guides
    • operational runbooks
    • user guides
  • Conduct technical knowledge-sharing sessions.
  • Support junior team members through reviews and guidance.
  • Maintain reusable technical and consulting standards.
  • Document assumptions, limitations, and known risks clearly.

 

Mandatory Skills:

AI and GenAI

  • Hands-on experience in building LLM-based applications.
  • Strong understanding of AI agents and agent workflows.
  • Experience with prompt engineering and tool integration.
  • Good knowledge of RAG architecture.
  • Understanding of embeddings, chunking, retrieval, and grounding.
  • Knowledge of LLM limitations and evaluation methods.
  • Experience in implementing AI guardrails.
  • Understanding of responsible AI principles.

Programming and Backend Development

  • Strong hands-on experience in Python.
  • Experience with FastAPI or a similar Python framework.
  • Experience with TypeScript or Node.js is preferred.
  • Strong API development experience.
  • Good knowledge of REST services.
  • Working knowledge of GraphQL.
  • Ability to write clean, reusable, and maintainable code.
  • Strong debugging and troubleshooting skills.

AI Frameworks and SDKs

Hands-on experience with one or more of the following:

  • LangChain
  • Microsoft Agent Framework
  • OpenAI SDK
  • Azure AI SDK
  • Microsoft Copilot Studio
  • equivalent LLM or agent frameworks

Vector Search and RAG Platforms

Experience with one or more of the following:

  • Azure AI Search
  • Qdrant
  • Pinecone
  • FAISS
  • equivalent vector search platforms

Enterprise Integration

  • Experience integrating multiple applications and data sources.
  • Knowledge of authentication and authorisation.
  • Experience with APIs, databases, and enterprise platforms.
  • Ability to convert data and system capabilities into usable AI workflows.
  • Understanding of secure enterprise integration patterns.

Cloud and Deployment

  • Experience with Azure, AWS, or GCP.
  • Hands-on experience with Docker.
  • Understanding of container-based deployments.
  • Familiarity with Git and CI/CD pipelines.
  • Experience working across development and production-like environments.
  • Basic understanding of application monitoring and observability.

 

Good-to-Have Skills

  • Microsoft Copilot Studio.
  • Azure AI Foundry or Azure AI services.
  • Azure OpenAI.
  • Claude, Gemini, or open-source LLM integration.
  • Multi-agent architecture.
  • Model Context Protocol.
  • AI workflow orchestration.
  • Knowledge graph or GraphRAG exposure.
  • SQL and NoSQL database experience.
  • SharePoint and Microsoft 365 integration.
  • CRM integration experience.
  • Azure Functions or AWS Lambda.
  • Kubernetes exposure.
  • Infrastructure-as-Code knowledge.
  • Observability and monitoring tools.
  • LLMOps or MLOps experience.
  • AI evaluation frameworks.
  • Experience in consulting accelerators or internal productivity tools.
  • Basic user interface development knowledge.
  • Experience with React or another modern frontend framework.

 

Tools and Technology Stack:

AI and Agent Platforms

  • Microsoft Copilot Studio
  • Azure AI
  • Azure OpenAI
  • LangChain
  • Microsoft Agent Framework
  • OpenAI SDK
  • Anthropic Claude
  • Google Gemini
  • Llama

Programming and APIs

  • Python
  • FastAPI
  • TypeScript
  • Node.js
  • REST APIs
  • GraphQL

RAG and Search

  • Azure AI Search
  • Qdrant
  • Pinecone
  • FAISS
  • Embedding models
  • Hybrid search
  • Reranking models

Data and Enterprise Platforms

  • SharePoint
  • CRM platforms
  • SQL databases
  • NoSQL databases
  • Enterprise APIs
  • Cloud storage

DevOps and Deployment

  • Git
  • GitHub
  • Azure DevOps
  • GitHub Actions
  • Docker
  • Container registries
  • Azure, AWS, or GCP

 

Experience Requirements:

  • 4–8 years of relevant professional experience.
  • Experience in software engineering, AI/ML engineering, data engineering, or automation roles.
  • Proven experience in building scalable applications or enterprise tools.
  • Hands-on experience with LLM or AI-enabled systems.
  • Experience integrating multiple enterprise systems.
  • Experience with production or near-production AI solutions.
  • Experience in rapid prototyping and iterative development.
  • Experience working with both technical and non-technical stakeholders.

A background in consulting, product development, or internal tooling will be an advantage.

 

Educational Qualification:

Bachelor’s or Master’s degree in:

  • Computer Science
  • Information Technology
  • Artificial Intelligence
  • Data Science
  • Software Engineering
  • Information Systems
  • or a related discipline

Strong practical experience can also be considered.

 

Soft Skills:

  • Strong ownership and accountability.
  • Builder and problem-solving mindset.
  • Ability to convert ideas into working solutions quickly.
  • Comfortable working with changing or unclear requirements.
  • Ability to balance delivery speed with engineering quality.
  • Clear communication with technical and non-technical stakeholders.
  • Strong collaboration and consulting skills.
  • Good documentation and presentation skills.
  • Willingness to experiment, learn, and improve.
  • Ability to work independently and within a cross-functional team.
  • Customer-focused and business-value-oriented approach.
  • Ability to raise risks and dependencies early.

 

Preferred Candidate Profile:

The preferred candidate should have:

  • Strong hands-on AI application development experience.
  • Experience building AI agents, copilots, or productivity tools.
  • Ability to own a solution from initial idea to deployment and support.
  • Strong backend and API development skills.
  • Practical experience with RAG and enterprise data integration.
  • Experience working directly with business or consulting teams.
  • Ability to build rapid prototypes without compromising basic quality and security.
  • Strong understanding of AI limitations, governance, and responsible use.
  • Interest in applying AI to real business and consulting challenges.
  • Ability to work effectively in a fast-moving and experimental environment.
  • Ability to balance technical design with business outcomes.
Relocation Supported:  No
Visa Sponsorship Approved:  No

At Fujitsu, we are committed to an inclusive recruitment process that values the diverse backgrounds and experiences of all applicants. We believe that hiring people from a wide variety of backgrounds makes us stronger, not because it's the right thing to do, but because it allows us to draw on a wider range of perspectives and life experiences.