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NLP Data Scientist

Expired Job

Lawrence Harvey Newark , NJ 07101

Posted 6 months ago

Data/NLP Scientist

Who will you be working for
My client is a leading operations management and analytics company that helps businesses enhance growth and profitability. They look deeper to help companies improve global operations, enhance data-driven insights, increase customer satisfaction, and manage risk and compliance. You will have the opportunity to work across the insurance, healthcare, banking and financial services, utilities, travel, transportation and logistics industries. They have office in locations across The United States, Europe, Asia, Latin America, Australia and South Africa. This organisation provides data-driven, action-oriented solutions to business problems through statistical data mining, cutting edge analytics techniques and a consultative approach. Leveraging proprietary methodology and the most up to date technology, they take an industry-specific approach to transform their clients* decisions and embed analytics more deeply into their business processes. Their global team of data scientists and analysts that have almost hit the 2000 nark assist client organizations with complex risk minimization methods, advanced marketing, pricing and CRM strategies, internal cost analysis, and cost and resource optimization within the organization

Leads all NLP/NLG driven solutions for the project
Design NLP models for searching structured/unstructured data in real/near-real time
Guide the development team in programming and implementation of the logic
Design statistical models/ML models in a way that utilizes benefits of parallel processing and returns the search results in real time on large datasets
Plays critical role in defining the problem, structuring the solution, and executing against it
Clearly defines project deliverables, timelines and methodology laying out the project plan
Owns the execution of the project, with on time delivery every time, ensuring all project goals are met
Interacts regularly with product team members ensuring successful integration of NLP solutions in the product architecture
Keeps the solutions updated with the recent developments in NLP/NLG

BS / MS in Computer Science or a relevant subject
Human conversation/Chat-bot related projects/research papers in reputed publication
Information Retrieval related projects/research papers in reputed publication
Good in designing language models (involves all steps of development - data collection too)
Good understanding of AI based search and planning algorithms
Good understanding of DBMS, Relational Algebra, Symbolic Logic, Predicate Logic etc.
Good grasp in Statistics, Probabilistic Graphical Model and Deep learning
Design of complex data structures such as knowledge graph optimal for use in real/near-real time
Experience in reinforcement learning and online learning
Strong programming background for industry like Python (with expertise in scipy, numpy, pandas etc.)
Knowledge of ML Frameworks (Tensorflow, PyTorch etc.)

NLP, Analytics, Data Science, Python, R, Chat Bott, NLQ

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NLP Data Scientist

Expired Job

Lawrence Harvey