As a machine learning engineer in Trust, your contributions will span a variety of shapes:
Work with large-scale structured and unstructured data to build and continuously improve cutting-edge machine learning models for Airbnb’s product, business, and operational use cases. Some recent works include:
Supervised model ensembles that include multiple DNNs and graph-based models
Contextual Decision engine
Unsupervised clustering models for natural language understanding
LLM experimentation with label taxonomy and manual agent automation
Optimizing ranking algorithms for search
Collaborate with a wide variety of business functions to predict and prevent physical safety and property damage incidents.
Develop new holistic machine learning model detection strategies by partnering with other teams across the Trust Organization.
Work collaboratively with cross-functional partners, including software engineers, data scientists, product managers, and operations to identify opportunities for business impact, and refine and prioritize requirements for fraud detection and mitigation.
Hands-on develop, productionize, and operate machine learning models and pipelines at scale, including both batch and real-time use cases.
Enhance and extend risk investigation tools to enable efficient decision-making on behaviors that could result in physical safety or property damage incidents.
Create products to deter bad actors and restrict their usage on the platform.
Provide and educate on guest and host safety standards to mitigate vulnerabilities.
Your Expertise:
2+ years of industry experience in applied machine learning, including a MS or PhD in relevant fields.
A Bachelor’s, Master’s, or PhD in CS/ML or related field.
Strong programming skills in Scala, Python, Java, C++, or equivalent languages, and data engineering skills.
Strong understanding of machine learning best practices (e.g., training/serving skew minimization, A/B testing, feature engineering, feature/model selection), algorithms (e.g., neural networks/deep learning, gradient boosted trees, optimization), and domains (e.g., natural language processing, computer vision, personalization and recommendation, anomaly detection).
Experience with two or more of these technologies: TensorFlow, PyTorch, Kubernetes, Spark, Airflow (or equivalent), Kafka (or equivalent), data warehouses (e.g., Hive).
Industry experience building end-to-end machine learning infrastructure and/or building and productionizing machine learning models.
Exposure to architectural patterns of large, high-scale software applications (e.g., well-designed APIs, high volume data pipelines, efficient algorithms, models).
Experience with test-driven development, familiarity with A/B testing, incremental delivery, and deployment.
Experience with the Trust and Risk domain is a plus.