πŸ—’οΈ Summary

Join Supelinked to build an ML framework for turning complex data into vector embeddings, that make vector-powered RAG, RecSys, Search & Analytics actually work. We raised a $9.5M Seed from Index Ventures, Tom Tunguz (details) and other San Francisco based investors (announcement, details), partnered with MongoDB, Redis, Starburst & Dataiku with many more in the pipeline, closed our first 6-figure client, launched unique marketing initiatives and open sourced a big chunk of the product.

In this, Israeli hub - based Senior ML Engineer role, you will be working directly with Eli and the Superlinked team on building the product, making it work for our clients and partners and engaging with the developer community.

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πŸ‘€ Your Role

You are a versatile software engineer with hands-on experience in software engineering and AI/ML applied research experience and strong communication skills, who can deliver results across a range of responsibilities:

We are a team of 16 now, mostly senior engineers - we don’t expect you to do all the above jobs alone all at once - but you should be reasonably comfortable with any of them as the situation requires. Our goal is to support you and help you grow across all these dimensions.

πŸ“Β You

You have 5+ years of hands-on experience in software engineering and AI/ML research/development.

We expect you to be proficient in Python, Apache Spark / PySpark, PyTorch/TensorFlow, FastAPI, mainstream relational databases with bonus for prior exposure to Kafka, Kubernetes, message queues, Redis / MongoDB / other vector DBs, more esoteric databases (graph, time series).

Exposure to LLMs is also quite important, you must have looked at at least a few of: OSS model fine-tuning, prompt engineering frameworks like DSPy, structured output frameworks like instructor, serving frameworks like vllm, building Retrieval Augmented Generation with a vector database, cross encoder / ColBERT re-ranking.

Experience working on information retrieval systems (Search, RecSys, RAG) and the evaluation and tuning of their quality and performance is a huge advantage.