Lead Data Scientist

Company Overview

lncedo is a US-based consulting, data science and technology services firm with over 3000 people helping clients from our six offices across US, Mexico and India. We help our clients achieve competitive advantage through end-to-end digital transformation. Our uniqueness lies in bringing together strong engineering, data science, and design capabilities coupled with deep domain understanding. We combine services and products to maximize business impact for our clients in telecom, Banking, Wealth Management, product engineering and life science & healthcare industries.

Working at lncedo will provide you an opportunity to work with industry leading client organizations, deep technology and domain experts, and global teams. lncedo University, our learning platform, provides ample learning opportunities starting with a structured onboarding program and carrying throughout various stages of your career. A variety of fun activities is also an integral part of our friendly work environment. Our flexible career paths allow you to grow into a program manager, a technical architect or a domain expert based on your skills and interests.

Our Mission is to enable our clients to maximize business impact from technology by

  • Harnessing the transformational impact of emerging technologies
  • Bridging the gap between business and technology

Role Description

Conducting comprehensive analysis of telecommunications data to discern patterns, trends, and anomalies, employing statistical methods and machine learning techniques. Developing and refining predictive models to anticipate potential network issues and enhance customer experience. Collaborating with cross-functional teams to gather domain knowledge and integrating it into model development processes. Evaluating model performance using appropriate metrics and refine models iteratively to achieve desired outcomes. Communicating findings and insights to stakeholders through clear and concise presentations and reports. Leading the feature engineering process to extract relevant information from raw data, considering both domain expertise and algorithmic insights. Creating new features and transforming existing ones using advanced techniques such as dimensionality reduction and feature scaling. Employing statistical methods and domain knowledge to select the most informative features for model training, ensuring model interpretability and performance. Collaborating with domain experts to validate feature-engineering approaches and refining feature sets based on business requirements. Overseeing the training and optimization of predictive models, selecting appropriate algorithms and hyperparameters based on data characteristics and business objectives. Utilizing techniques such as cross-validation and ensemble learning to improve model generalization and robustness. Implementing advanced optimization algorithms, including gradient boosting and Bayesian optimization, to fine-tune model performance. Developing strategies for handling imbalanced data and mitigating overfitting, ensuring model reliability in real-world scenarios. Establishing protocols for model maintenance and retraining to adapt to evolving data and business needs. Leading the deployment of predictive models into production environments, collaborating with IT teams to ensure seamless integration and scalability. Developing monitoring systems to track model performance and detect deviations from expected behavior, implementing automated alerting mechanisms for timely intervention. Establishing governance processes to manage model lifecycle, including version control, documentation, and model retraining. Conducting regular audits and evaluations to assess model effectiveness and compliance with regulatory requirements. Engaging with stakeholders to gather feedback and insights from model users, facilitating continuous improvement and optimization efforts. Fostering a collaborative environment by actively engaging with cross-functional teams, sharing expertise, and aligning project objectives and priorities. Contributing to knowledge sharing initiatives by documenting best practices, lessons learned, and case studies to facilitate learning and development within the organization. Staying abreast of industry trends, research advancements, and emerging technologies in data science and telecommunications, leveraging this knowledge to drive innovation and enhance project outcomes.

Benefits

134,648.00. Medical/Dental/Vision/Life, HSA/FSA, AD&D/STD/LTD, PTO, Technical Certifications, International Mobility, Employee Assistance, Anniversary Bonus

Requirements

Requires a Master’s degree in Data Science, Computer Science, Information Technology, Engineering, Computer Information Systems or related, plus 1 year of experience in the IT field. Duties entail work with Python, Neo4j, Oracle SQL Developer, Tableau, Unix, Shell Scripting and Cypher. Email resumes to usjobs@incedoinc.com

Company Value

We value diversity at lncedo. We do not discriminate based on race, religion, color, national origin, gender, sexual orientation, age, marital status, veteran status, or disability status.

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