We are seeking an
AI/ML Engineer – Agents
to help build the core intelligence layer of our AI-powered MarTech and AdTech platform. This role will focus on designing, developing, and deploying
agentic AI systems
,
LLM-powered applications
, and
real-time inference pipelines
that drive intelligent automation, personalization, and decision-making at scale.
This is a high-impact, hands-on engineering role for someone who thrives in fast-moving environments and wants to help shape next-generation AI products from the ground up.
Key Responsibilities
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Design and deploy agentic AI systems using frameworks such as LangGraph, AutoGen, CrewAI, or similar.
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Build and scale LLM/GenAI applications for MarTech and AdTech use cases, including content generation, campaign optimization, audience segmentation, personalization, and workflow automation.
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Fine-tune and optimize LLMs/SLMs for domain-specific tasks such as classification, extraction, recommendation, and intent understanding.
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Develop and manage training and inference pipelines for production-scale ML systems.
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Build scalable infrastructure for real-time and batch inference, experimentation, and deployment.
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Implement best practices for evaluation, A/B testing, model monitoring, and continuous improvement.
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Partner closely with product, data, and engineering teams to turn prototypes and research into production-ready AI services.
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Rapidly prototype and apply emerging research to practical product use cases.
Qualifications
-
3+ years
of experience in AI/ML engineering, machine learning, or applied NLP roles.
-
Master’s degree in Computer Science, Engineering, or a related field required; PhD preferred.
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Hands-on experience with agent-based AI frameworks such as LangGraph, AutoGen, CrewAI, or similar.
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Strong expertise in deep learning and natural language processing using frameworks such as PyTorch or TensorFlow.
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Experience fine-tuning and deploying foundation models such as LLaMA, Mistral, or similar.
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Strong experience with Hugging Face, LoRA, PEFT, and modern fine-tuning workflows.
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Experience with RAG pipelines, vector databases, semantic search, and embedding optimization tools such as FAISS, Pinecone, or PGVector.
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Experience deploying ML systems in cloud environments such as AWS, GCP, or Azure.
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Strong software engineering skills in Python, APIs, microservices, and containerized environments such as Docker and Kubernetes.
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Solid understanding of GPU optimization, distributed training, and inference performance tuning.
Preferred Qualifications
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Experience in MarTech, AdTech, personalization, targeting, or attribution systems.
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Experience with real-time decisioning or ad-serving systems.
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Contributions to open-source AI/LLM frameworks or published research.
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Prior experience in a startup or high-growth environment.