Machine Learning Engineer / Data Scientist
Job Title: Machine Learning Engineer / Data Scientist
Role Summary
We are seeking a strong Machine Learning Engineer + Data Scientist hybrid to design,
build, and productionize ML-driven observability solutions on top of large-scale session
data (RUM, logs, WebRTC, clickstreams). The role focuses on behavioral inference,
anomaly detection, multimodal signal fusion, and scalable ML systems to reduce
MTTR/MTTD and improve user experience insights.
Required Skills
Core ML & DS
Strong foundation in:
o Supervised & unsupervised learning
o Anomaly detection
o Time-series modeling (Prophet/ARIMA/Deep Learning)
o NLP (Transformers, BERT variants)
o GenAI LLM, RAG, Agentic
Experience with multimodal ML systems
Engineering & Systems
Strong Python skills
Experience with:
o PySpark / Spark / distributed data processing
o Streaming systems (Kafka)
o APIs & microservices
Ability to handle high-scale event data pipelines
Modeling Techniques
Clustering ( hierarchical, KMeans, density-based)
Classification (XGBoost, tree-based models)
Feature extraction (TF-IDF, embeddings)
MLOps & Deployment
Experience with:
o ML pipelines (Airflow, Kubeflow, etc.)
o Docker/Kubernetes
o Model versioning & monitoring
Good to Have
Experience with observability/RUM tools
Knowledge of WebRTC/audio signal processing
Exposure to LLMs, RAG, and prompt engineering
Understanding of frontend performance metrics (LCP, INP, CLS)
Experience
6+ years in Data Science / Machine Learning Engineering roles
Prior experience in production ML systems is mandatory