Data Scientist with Contextual Bandit exp || REMOTE at Remote, Remote, USA |
Email: [email protected] |
Job Description: Mandatory - Contextual Bandit exp An undergraduate degree in statistics, mathematics, computer science, engineering, or related discipline. 6+ years relevant real-world experience researching, developing, and delivering high impact data driven insights through machine learning. Strong in Reinforcement Learning (e.g. DQN, Bandit, Policy Gradient, PPO, etc.) and Deep Learning implementation Experience with AI Call Routing Working knowledge of Transfer Learning Good understanding of supervised, unsupervised and NLP / NLU / LLM techniques. High proficiency in exploratory data analysis, data profiling, and feature engineering on large structured and unstructured datasets. In depth knowledge and hands-on computer programming in SQL, Python, R or similar programming language. Excellent written and verbal communication and consultancy skills - ability to succinctly communicate results and tell compelling stories with data to any audience. Preferred: Masters degree or PhD in statistics, mathematics, computer science, engineering, or related discipline. Deep knowledge of probability, statistics and machine learning algorithms and be able to determine when to apply them. Familiarity with big data platforms (like Spark, Databricks), machine learning frameworks (like Tensorflow, Keras, MXNet or PyTorch) and libraries (like scikit-learn, numpy, pandas, and scikit-learn) and ability to learn new technologies quickly. Knowledge of Azure, or similar cloud platforms. Experience presenting to both technical and non-technical audiences and a history of publications or presentations at conferences is a plus. Thanks, and Regards , Muskan Shukla Desk: 212-729-6543 Ext 635 Tanisha Systems Inc. 99 Wood Ave South, Suite # 308, Iselin, NJ 08830 Email: [email protected] Muskan Shukla | LinkedIn -- Keywords: artificial intelligence rlang information technology New Jersey |
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Mon Jan 15 21:39:00 UTC 2024 |