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About Asendia AI
Asendia AI is building the future of job search and hiring through AI. We help job seekers find the right opportunities through a smart AI career coach and help companies hire faster by vetting technical talent with real-time AI interviews. We work with early-stage startups, fast-growing tech companies, and top global universities.
🚀 This position is for one of Asendia AI’s trusted partners.
We’re helping them hire a Machine Learning Engineer to develop core AI systems that power real-world features—from intelligent matching to personalized candidate scoring. You’ll work in a product-driven environment with real impact, fast cycles, and the opportunity to grow quickly.
What You’ll Do
- Design, build, and fine-tune ML models for ranking, prediction, and personalization
- Collaborate with engineering to deploy models into production
- Develop data pipelines to support training and inference workflows
- Analyze performance, run experiments, and iterate on improvements
- Contribute to model evaluation, explainability, and ongoing optimization
- Research new ML approaches and apply them to real user problems
What We’re Looking For
- 0–2 years of experience in machine learning or applied data science
- Strong Python skills with experience in ML libraries (e.g., Scikit-learn, PyTorch, TensorFlow)
- Solid understanding of ML fundamentals (classification, regression, evaluation metrics)
- Experience working with structured data and real-world datasets (Pandas, SQL)
- Strong problem-solving ability and clear communication
- Comfort working in a collaborative, remote-first team
Nice to Have
- Experience in NLP, embeddings, or recommendation systems
- Familiarity with ML Ops tools (MLflow, Airflow, Weights & Biases)
- Experience with cloud platforms (AWS, GCP, or Azure)
- Startup or fast-paced product development experience