Solution Architect with GenAI & ML background in Azure - 100% Remote
These are long term roles > 6 months.
JD
- Knowledge of Azure GENAI services – AI Search , AI doc intelligence , Azure functions , Logic apps, GitHub code deployment .
- Knowledge of Langchain , related tech , python
- Background in data , or machine learning
- Able to have proven work on document chunking , chatbots querying routing , entity extraction , document comparison , sentiment analysis . Ability to do bulk documents for main projects and avoid profiles with POCs only.
- Knowledge of DEVOPS – terraforms ( good to have)
- Domain knowledge in Legal , Procurement , Finance good to have.
WORK LOCATION & SCHEDULE: The selected candidate will work 100% While this person may work remotely from home anywhere in the USA, they will work on an East Coast schedule (Core Working Hours 9:00am-5:00pm Eastern).
Scope:
Individual contributor that works under limited supervision. Apply subject matter knowledge. Capacity to understand specific needs or requirements to apply skills/knowledge.
Qualified candidates must be
authorized
to work in the United States.
WHAT YOU NEED TO SUCCEED (required/minimum qualifications):
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Bachelor’s Degree Computer Science/equivalent area of study or equivalent professional experience required.
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6+ years professional experience in Data Science with ML and min 2 years GenAI
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Minimum of 6+ years’ experience using MS Azure, Amazon Web Services (AWS) or GCP
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Demonstrated ability to design, implement, and evaluate conversational system solutions: conversational flows, intents, and entities.
WHAT WILL GIVE YOU A COMPETITIVE EDGE (preferred qualifications):
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Experience evaluating and designing ML & GenAI Solutions
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Experience using Bot Framework SDK, Bot Framework Composer or Power Virtual Agents (PVA)
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Experience with Azure and Azure Data Services
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Experience with Azure Cognitive Services, Azure AI Services, Azure Bot Service (ABS)
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Deep Software engineering experience with Python
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Experience with CI/CD pipelines like Jenkins or Azure DevOps