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100% Remote || Senior ML Scientist with Pricing & Reinforcement Learning || Long Term Contract at Remote, Remote, USA
Email: [email protected]
Candidate must have

Pricing & Reinforcement Learning

experience in recent years, Please mention if have.

Please mention the Visa status and Current location while sharing Resume.

Job Title- Senior ML Scientist with Pricing & Reinforcement Learning Exp Must

Location- 100% Remote (Plano TX , Canada)

Long Term Contract

Required Skills: 

5+ Yrs Experience in Pricing Reinforcement Learning

8+ Yrs Experience in Machine Learning

Expert in Python &
Tabular Data

SQL 

Knowledge of
AB Testing.

Python strong.

Job Description:

We seek a Senior ML Scientist to drive innovation in AI MLbased dynamic pricing algorithms and personalized offer experiences This role will focus on designing and implementing
advanced machine learning models including reinforcement learning techniques like Contextual Bandits Qlearning SARSA and more By leveraging algorithmic expertise in classical ML and statistical methods you will develop solutions that optimize pricing strategies
improve customer value and drive measurable business impact

Key Responsibilities

Algorithm Development Conceptualize design and implement state-of-the-art ML models for dynamic pricing and personalized recommendations

Reinforcement Learning Expertise Develop and apply RL techniques including Contextual Bandits Qlearning SARSA and concepts like Thompson Sampling and Bayesian Optimization to
solve pricing and optimization challenges

AI Agents for Pricing Build AIdriven pricing agents that incorporate consumer behaviour demand elasticity and competitive insights to optimize revenue and conversion

Rapid ML Prototyping Experience in quickly building testing and iterating on ML prototypes to validate ideas and refine algorithms

Feature Engineering Engineer largescale consumer behavioural feature stores to support ML models ensuring scalability and performance

CrossFunctional Collaboration Work closely with Marketing Product and Sales teams to ensure solutions align with strategic objectives and deliver measurable impact

Controlled Experiments Design analyze and troubleshoot AB and multivariate tests to validate the effectiveness of your models

Qualifications

8 years in machine learning 5 years in reinforcement learning recommendation systems pricing algorithms pattern recognition or artificial intelligence

Expertise in classical ML techniques eg Classification Clustering Regression using algorithms like XGBoost Random Forest SVM and KMeans with handson experience in RL methods
such as Contextual Bandits Qlearning SARSA and Bayesian approaches for pricing optimization

Proficiency in handling tabular data including sparsity cardinality analysis standardization and encoding

Proficient in
Python and SQL including Window Functions Group By Joins and Partitioning

Experience with ML frameworks and libraries such as scikitlearn TensorFlow and PyTorch

Knowledge of controlled experimentation techniques including causal AB testing and multivariate testing

Your sincerely
,

Ajay Sharma | Sr. Technical Recruiter.

Net
2Source Inc.

Fax: (201) 221-8131
| Email:

[email protected]

Global HQ Address: 270 Davidson Ave, Suite 704, Somerset, NJ 08873, USA

Web:

www.net2source.com

Social:

Facebook

Twitter

LinkedIn

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Keywords: artificial intelligence machine learning information technology New Jersey Texas
100% Remote || Senior ML Scientist with Pricing & Reinforcement Learning || Long Term Contract
[email protected]
[email protected]
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11:06 PM 28-Jan-25


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