AI/ML Engineer

Synergy Technologies, LLC
yesterday

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior

Job location

Tech stack

API
Artificial Intelligence
Azure
Encodings
Databases
Continuous Integration
Data Cleansing
Python
Machine Learning
MongoDB
Parsing
Performance Tuning
TensorFlow
Search Technologies
Unstructured Data
Enterprise Software Applications
Large Language Models
Prompt Engineering
Generative AI
Build Management
Machine Learning Operations
Data Pipelines

Job description

This role is for a hands-on Data Science Engineer who will design, build, and deploy production-grade Machine Learning and Generative Al solutions. The candidate must have strong Python expertise and practical experience taking ML and GenAl use cases from development to deployment.

The role focuses heavily on LLM-based applications, including prompt engineering, document processing pipelines, and embedding-based search solutions. The engineer will work with both structured and unstructured data, building pipelines for document extraction, parsing, and chunking, and integrating ML models with Vector Databases and MongoDB.

An ideal candidate is someone who understands end-to-end ML workflows from data preparation, tagging, and labeling, through model training, evaluation, and fine-tuning while ensuring solutions are scalable, high quality, and production ready., * Design and implement AI/ML solutions using Python and modern ML frameworks

  • Develop and optimize Prompt Engineering strategies for LLM- based systems

  • Build and deploy Retrieval-Augmented Generation (RAG) pipelines

  • Integrate LLMs via APIs (Azure OpenAl preferred) into enterprise applications

  • Develop and orchestrate Agentic Al workflows with tool/function calling

  • Implement vector search solutions using Vector Databases

  • Ensure CI/CD integration and cloud deployment (Azure preferred) Establish observability, monitoring, and evaluation frameworks for Al systems

  • Collaborate with cross-functional teams to deliver production- ready Al features

Requirements

  • Machine Learning & Model Training: Training, evaluation, fine-tuning, Tagging and labeling workflows

  • Generative Al & LLMs: Prompt engineering for LLM-based applications

  • Document Processing: Document extraction, parsing, and chunking, Handling structured & unstructured data

  • Embeddings & Vector Search: Embedding generation, Vector database integration

  • Databases: Vector Databases, MongoDB

  • Production-grade ML Engineering: Scalable, production-ready ML/GenAl solutions

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