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Senior AI Engineer

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Job

  • Level
    Senior
  • Job Feld
    Data
  • Anstellung
    Vollzeit
  • Vertragsart
    Unbefristetes Dienstverhältnis
  • Ort
    Hamburg, Stuttgart, Erlangen
  • Arbeitsmodell
    Onsite
  • Job Zusammenfassung

    In diesem Job entwickelst du innovative Generative AI-Lösungen, arbeitest an maßgeschneiderten Projekten mit LLMs und Agenten und implementierst Standards für Interoperabilität und Sicherheit in KI-Systemen.

    Job Technologien

    Deine Rolle im Team

    • We are seeking an accomplished Generative AI Consultant to drive the design and implementation of innovative AI solutions for our clients.
    • The Generative AI Consultant will play a critical role in understanding client needs, designing tailored solutions, and ensuring the successful delivery of projects that meet defined metrics.
    • This role requires strong technical expertise across Generative and Agentic AI-including LLMs, retrieval-augmented generation (RAG), autonomous and multi-agent systems, and modern interoperability standards such as the Model Context Protocol (MCP)-coupled with excellent communication skills to engage with clients and internal teams effectively.

    Unsere Erwartungen an dich

    Qualifikationen

    • Generative AI Expertise: Good understanding of modern Generative AI techniques and foundation models, including transformer-based Large Language Models (LLMs), diffusion models, and multimodal models, as well as earlier architectures such as GANs and VAEs.
    • Hands-on exposure to both API-based (e.g., Claude, GPT, Gemini) and open-source (e.g., Llama, Mistral) LLM-based solution design.
    • Familiarity with agentic design patterns (e.g., ReAct, planning, reflection, tool use, human-in-the-loop) and agent frameworks such as LangGraph, CrewAI, MAF, the OpenAI Agents SDK, and Google's Agent Development Kit (ADK).
    • Model Context Protocol (MCP) & Interoperability: Practical understanding of the Model Context Protocol (MCP) for standardized, secure connectivity between LLMs/agents and external tools, data sources, and systems.
    • Ability to build and consume MCP servers and clients, and to work with MCP primitives such as tools, resources, and prompts.
    • Awareness of related interoperability standards (e.g., agent-to-agent communication) for composing enterprise-grade agentic systems.
    • Ability to design custom tools, connectors, and skills that let agents perform specialized, domain-specific tasks reliably and safely.
    • Familiarity with advanced patterns such as GraphRAG and agentic RAG to reduce hallucination and improve factual grounding.
    • Technical Proficiency: An overall understanding of below technologies is required : Machine learning algorithms: Linear regression, logistic regression, decision trees, random forests, support vector machines, neural networks.
    • Data science tools: NumPy, SciPy, Pandas, Matplotlib, TensorFlow, Keras.
    • Cloud computing platforms: AWS, Azure, GCP.
    • Natural language processing (NLP): Transformer models, attention mechanisms, word embeddings.
    • Computer vision: Convolutional neural networks, recurrent neural networks, object detection.
    • Robotics: Reinforcement learning, motion planning, control systems.
    • Data ethics: Bias in machine learning, fairness in algorithms.
    • Foundation models & LLMs: GPT, Claude, Gemini, Llama, Mistral; multimodal and reasoning models; context windows, tokenization, and fine-tuning (LoRA/PEFT), RLHF/RLAIF concepts.
    • LLM application & agent frameworks: LangChain, LangGraph, LlamaIndex, Semantic Kernel, Haystack, CrewAI, AutoGen.
    • Interoperability & integration: Model Context Protocol (MCP), function/tool calling, structured outputs, API integration, event-driven and orchestration patterns.
    • Cloud AI platforms & model hosting: Amazon Bedrock, Azure OpenAI / AI Foundry, Google Vertex AI, Hugging Face.
    • Vector databases & retrieval: Pinecone, Weaviate, Chroma, pgvector, FAISS; embeddings, semantic and hybrid search, reranking.
    • MLOps / LLMOps & deployment: Docker, Kubernetes, FastAPI, CI/CD; observability, tracing, and evaluation tooling (e.g., LangSmith, LangFuse); guardrails and prompt/version management.
    • Responsible AI & safety: bias and fairness, hallucination mitigation, evaluation, privacy, security, and governance of AI and agentic systems.
    • Solution Design: Ability to design end-to-end Generative and Agentic AI solutions, from requirement elicitation and model selection to deployment strategy.
    • Familiarity with guardrails, red-teaming, and responsible deployment of AI systems in production.
    • Communication Skills: Excellent verbal and written communication skills to engage with clients, articulate technical concepts to non-technical stakeholders, and work collaboratively with cross-functional teams.

    Erfahrung

    • Proven experience in applying these techniques to real-world problems for tasks such as text, code, image, and multimodal generation.
    • Agentic AI & Orchestration: Hands-on experience designing autonomous and multi-agent systems that reason, plan, and act using tools.
    • Experience building agentic workflows with memory, state management, and reliable multi-step task execution.
    • Agent Skills & Extensibility: Experience extending agent capabilities through modular, reusable skills-packaged instructions, scripts, and resources (e.g., SKILL.md-style capability modules) that agents load on demand via progressive disclosure.
    • Retrieval-Augmented Generation (RAG) & Knowledge Systems: Proven experience designing RAG and knowledge-grounded systems, including chunking strategies, embeddings, vector databases (e.g., Pinecone, Weaviate, Chroma, pgvector, FAISS), hybrid search, reranking, and evaluation of retrieval quality.
    • Experience crafting architectures that encompass data preprocessing, RAG pipelines, agent orchestration, MCP-based tool and system integration, model integration, guardrails, and performance, cost, and latency optimization.
    • LLMOps, Evaluation & Optimization: Experience operationalizing LLM and agentic applications-building evaluation harnesses and offline/online metrics for quality, groundedness, and safety; implementing observability, tracing, and monitoring; and continuously optimizing accuracy, cost, and latency.

    Unser Angebot

    • Compensation is competitive, including bonus.

    Themen mit denen du dich im Job beschäftigst

    Job Standorte

    • Standort Stuttgart

      Baden-Württemberg

      Deutschland

    • Standort Erlangen

      Bayern

      Deutschland

    • Standort Hamburg

      Deutschland

    Das ist dein Arbeitgeber

    Infosys Consulting

    Infosys Consulting

    Infosys Consulting ist eine Management- und IT-Beratungsfirma innerhalb der größeren Infosys-Organisation, die sich auf strategische Beratung, IT-Transformation, Change Management und Geschäftsanalysen spezialisiert hat.

    Description

  • Unternehmenstyp
    Etablierte Firma
  • Arbeitsmodell
    Hybrid, Onsite
  • Branche
    Beratung, Internet, IT, Telekom
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    Logo Infosys Consulting

    Senior AI Engineer

    Ort
    Hamburg, Stuttgart, Erlangen
    Arbeitsmodell
    Onsite
    Diversität
    Für alle Personen geeignet (m/w/d)
    Nur Englisch
    Nur Englisch erforderlich

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