Generative AI Engineer

LLM EngineerMachine Learning EngineerFull TimeRemoteSeniorTeam 501-1,000Since 2002H1B No SponsorCompany SiteLinkedIn

Location

India

Posted

10 days ago

Salary

₹1,000K - ₹5,000K / year

Seniority

Senior

Bachelor Degree5 yrs expEnglishAzurePythonPyTorchScikit-LearnSQLTensorflow

Job Description

Generative AI Engineer

Weekday

• This is a full-time Remote role for a Generative AI Engineer and ML expert. • You can work from home (anywhere in INDIA) and will be responsible for researching and developing our platform with cutting-edge AI agents.

Job Requirements

  • Experience in AI/GenAI solution for prompt engineering, architecture, consulting, and enterprise architecture
  • Experience in software development
  • Excellent communication skills (customer facing position)
  • A deep understanding of GenAI/ML technologies and their implementations
  • Experience in the financial, healthcare, or insurance industries is a plus
  • Bachelor's/Master's degree in Computer Science/data science or related field
  • Demonstrated expertise in statistical analysis and machine learning concepts, with proficiency in Python
  • Solid understanding and experience in designing, implementing, and optimizing end-to-end machine learning pipelines.
  • Minimum 5+ years of experience in Generative AI and Minimum 2+ years in traditional Machine Learning, with a focus on the creation, training, and deployment of services such as recommendation engines, deep learning, and generative AI models.
  • LLM (GPT); prompt engineering for reflex, model and self-learning agents
  • Facility with Python to code wrappers, interface with APIs, develop utilities
  • Experience with packages such as LangChain and LangGraph
  • Experience with assembling intelligent AI agents to implement variety of use cases
  • A recent use case for Agentic AI powered by LLMs: NLQ to SQL translator
  • You MUST have the ability to think through clearly for a solution design,
  • Experienced in Large Language Models, Transformers, CNN, TensorFlow, Scikit-learn, Pytorch, NLP libraries, Embedding Models, Vector Databases
  • Hands-on experience with OpenAI, Llama/Llama2 and other open-source models, and Azure OpenAI models
  • Education- Engineering, Math and Statistics foundation, (Data Science/Computer Science preferred)
  • Bachelor's Degree

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