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Bosch India

Senior AI & Generative AI Specialist

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Job Description

Job Description

Role Summary

We are seeking a Senior AI & Generative AI Specialist to architect, build, and scale production-grade AI and GenAI solutions. The role demands deep hands-on expertise, strong system architecture skills, and the ability to lead cross-functional teams delivering result oriented & compliant AI systems.

This role will own end-to-end AI lifecycle - from problem framing and model design to deployment, monitoring, governance, and business impact - with a strong emphasis on Machine learning,GenAI, LLM fine-tuning, RAG systems, and Responsible AI.

Key Responsibilities

AI & GenAI Architecture

  • Design and architect enterprise-scale AI and Generative AI systems, including LLM-based applications, RAG pipelines, fine-tuned models, and multimodal AI systems.
  • Lead development of AI platforms and frameworks enabling reusable, scalable AI services (AI-as-a-Service).
  • Define model selection strategies , fine-tuning approaches, and inference optimization.

Machine Learning & Deep Learning

  • Develop and deploy advanced ML/DL models across:
    • Computer Vision (segmentation, detection, classification)
    • NLP (BERT, GPT, Transformers)
    • Generative AI (Diffusion models, GANs, multimodal systems)
    • Time-series forecasting, predictive analytics, anomaly detection
  • Drive model optimization, hyperparameter tuning, and performance benchmarking.
  • Ensure model explainability, fairness, bias detection, and mitigation.

GenAI & LLM Systems

  • Build GenAI applications & Agents including:
    • Intelligent document processing
    • Automated report generation
    • Smart ticketing and customer escalation systems
    • Knowledge assistants using RAG + vector databases
  • Implement prompt engineering, evaluation frameworks, and guardrails.
  • Optimize inference cost, latency, and scalability in cloud environments.

MLOps & Production Deployment

  • Establish MLOps best practices:
    • CI/CD for ML
    • Model versioning and monitoring
    • Automated retraining pipelines
  • Deploy AI services using Docker, Kubernetes, MLflow, FastAPI, Flask.
  • Ensure high availability, low latency, and cloud cost optimization.

Cloud & Big Data

  • Architect AI workloads on Azure, Databricks, Spark.
  • Build scalable data pipelines for large-scale training and inference.
  • Leverage distributed computing for large datasets and real-time inference.

Leadership & Stakeholder Engagement

  • Consult and mentor AI engineering and data science teams.
  • Collaborate with the AI working group & international stakeholder community.
  • Translate business and domain problems into AI solutions with measurable impact.
  • Drive innovation initiatives, patents, and hackathon-level experimentation.


    Qualifications

    • BE/Btech/Master's degree in Data Science, AI, or related field
    • Experience in AI , Agentic AI , Advance data analytics usecases in a manufacturing environment
    • Strong understanding of AI governance and compliance
    • 8 years of experience in buildup and delivery of AI/ML usecases with proven business benefits
    • Leadership of AI/ML teams would be an added advantage

    Required Technical Skills

    Programming & Frameworks

    • Python (expert), PyTorch, Keras, PySpark, SQL
    • REST API development: FastAPI, Flask
    • Version control & CI/CD: Git, GitHub Actions

    AI / ML

    • Supervised & Unsupervised Learning
    • Deep Learning: CNNs, RNNs, Transformers
    • Generative AI: LLMs, Diffusion models, GANs
    • Reinforcement Learning (applied understanding)

    NLP & Computer Vision

    • BERT, GPT, Text Summarization, NER
    • Speech-to-Text / Text-to-Speech
    • Image segmentation, object detection, multimodal AI

    Cloud & MLOps

    • AWS, Azure, Databricks, Spark
    • Docker, Kubernetes, MLflow
    • Scalable inference engines

    Additional Information

    Impact & Success Metrics

    • Deliver AI systems with measurable business outcomes (efficiency, accuracy, cost reduction).
    • Reduce manual workloads through automation and GenAI adoption.
    • Improve decision-making accuracy using explainable and responsible AI.
    • Scale AI platforms adopted across multiple plants & divisions

    More Info

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    About Company

    Job ID: 147772871