Design, train, and ship machine learning and generative AI systems into production, where they actually move metrics, for enterprise clients and our own products.
About the role
You will own models from problem framing to production and monitoring. You will work close to the business, choosing the simplest approach that works, and you will care as much about reliability, latency, and cost as you do about accuracy. Expect a healthy mix of classical ML and modern LLM and RAG work.
What you will do
- Frame business problems as ML problems and choose pragmatic, well-scoped approaches.
- Build, train, and rigorously evaluate models, from gradient boosting to LLM and RAG systems.
- Own feature engineering, training pipelines, experiment tracking, and reproducibility.
- Package and deploy models behind reliable APIs with proper versioning.
- Operate models in production with monitoring for drift, latency, cost, and quality.
- Optimize the accuracy, latency, and cost trade-off for real workloads.
- Integrate models into products in partnership with backend and data engineers.
- Write clear documentation and help raise the team's MLOps maturity.
What we are looking for
- 3+ years building and shipping ML systems to production.
- Strong Python and fluency in PyTorch, TensorFlow, or scikit-learn.
- A deep, practical understanding of the full ML lifecycle and honest evaluation.
- Experience deploying and operating models on a major cloud (AWS, Azure, or GCP).
- Comfort with APIs, containers, SQL, and working with messy real-world data.
Nice to have
- LLMs, RAG, vector databases, and prompt and output evaluation.
- Docker, Kubernetes, MLflow, feature stores, and streaming data.
- Experience with cost and latency optimization for inference at scale.
What success looks like
- In 30 days: you have shipped a model or a meaningful improvement to one.
- In 90 days: you own an ML service in production with monitoring in place.
- In 6 months: you are setting ML best practices that the team adopts.
What we offer
- Remote-first culture with collaboration hubs across the USA, India, Singapore, and the UAE.
- Work on applied AI and real products that ship to production, not slideware or endless pilots.
- Senior mentorship, a dedicated learning budget, and sponsored cloud and AI certifications.
- Competitive compensation, meaningful ownership, and a clear, fast path to grow.
- A small, senior team where your work is visible and your decisions matter.
Two ways to apply: use the button above, or email your résumé and the role title to careers@7hadex.com.
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