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Senior Data Scientist (Forecasting & Assumptions Analytics)

LOGICEXCELL LLCUnited States🇺🇸United StatesPosted 9 Jul 2026

Quick Overview

Work Type
Hybrid
Level
Mid Senior

Job Description

Position Summary

We are seeking a Senior Data Scientist to join a healthcare analytics team focused on improving the accuracy of critical business and market assumptions that drive forecasting and decision-making. This role sits at the intersection of data science, analytics, and data engineering, requiring strong modeling expertise as well as the ability to work hands-on with data to develop scalable solutions.

The ideal candidate will analyze existing forecasting assumptions, quantify business impact from improving prediction accuracy, and build models that enhance decision quality across the organization.

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Project Overview

What Type of Project Will This Person Work On?

This role will support a healthcare/pharmaceutical forecasting initiative focused on predicting market behavior and utilization trends.

Example Use Case: When a branded pharmaceutical drug loses patent protection and generic alternatives enter the market, the team forecasts:

             How much utilization will shift from the brand drug to generic alternatives

             The timing and magnitude of market adoption

             Financial and operational impacts of these transitions

             Accuracy of current forecasting assumptions

The team evaluates whether existing assumptions are accurate, identifies areas where assumptions can be improved, measures the potential business value of improved predictions, and develops models to increase forecasting accuracy.

Key Project Phases

Phase 1: Assumption Analysis

             Evaluate current business and forecasting assumptions

             Assess historical accuracy versus actual outcomes

             Identify gaps, biases, and opportunities for improvement

Phase 2: Value Attribution

             Quantify potential business impact of improving assumption accuracy

             Measure risk, opportunity, and forecast variance

             Develop business cases for modeling initiatives

Phase 3: Predictive Modeling

             Build and deploy models to improve forecast accuracy

             Enhance decision-making through data-driven recommendations

             Continuously monitor and refine model performance

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Key Responsibilities

Data Science & Modeling

             Develop predictive and forecasting models to improve healthcare and pharmaceutical utilization assumptions

             Analyze historical patterns, trends, and market behavior

             Apply statistical and machine learning techniques to improve forecast accuracy

             Evaluate model performance and recommend enhancements

Analytics & Business Impact Assessment

             Analyze existing assumptions and identify areas of underperformance

             Quantify the financial and operational value of improved forecasting accuracy

             Present findings and recommendations to business stakeholders

             Translate complex analytical results into actionable insights

Data Engineering & Technical Execution

             Extract, cleanse, transform, and analyze large datasets using SQL and Python

             Build reusable analytics pipelines and workflows

             Support model deployment and operationalization efforts

             Work with cloud-based tools and platforms to enable scalable analytics solutions

Collaboration

             Partner closely with data scientists, business stakeholders, and leadership

             Collaborate with teams responsible for forecasting, market analytics, and strategic planning

             Contribute to technical discussions and solution design

             Support continuous improvement initiatives across the analytics organization

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Required Qualifications

Experience

             5–7+ years of professional experience in Data Science, Advanced Analytics, Machine Learning, or a related field

             Proven experience working on predictive analytics and forecasting initiatives

             Experience delivering models that drive measurable business outcomes

Technical Skills

Python (Required)

             Intermediate to advanced proficiency

             Data analysis and manipulation

             Statistical modeling

             Machine learning development

             Model evaluation and validation

SQL (Required)

             Intermediate to advanced proficiency

             Complex querying

             Data transformation

             Performance optimization

             Large-scale data analysis

Modeling & Data Science

             Predictive modeling

             Forecasting techniques

             Statistical analysis

             Machine learning

             Model performance assessment

             Feature engineering

Cloud & AI Tools

             Experience working within cloud environments

             Ability to leverage AI tools to improve productivity and analytical workflows

             Familiarity with modern AI solutions such as Claude, ChatGPT, Copilot, or similar tools is preferred

             Not expected to build foundational LLMs, but should understand how to effectively utilize AI technologies

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Preferred Qualifications

             Experience in healthcare, pharmaceutical, payer, or life sciences analytics

             Understanding of brand-to-generic market transitions and utilization forecasting

             Experience with time series analysis and forecasting methodologies

             Exposure to machine learning production environments

             Familiarity with modern AI-enabled analytics workflows

Skills

SQL
Machine Learning
Python

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