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Director Data Science Startup Jobs in Oregon (NOW HIRING)

As Director of Data Science, you'll own the models, evaluation systems, and analytical frameworks that make those experiences smarter, more responsive, and more human over time. Your work won't live ...

The US Data Science (USDS) Earnix Design Excellence and Support team is looking for an Analyst I/Analyst II/Asst. Director, Data Science, to design and build major pricing programs in Earnix and ...

Description We're seeking an exceptional, hands-on Data Scientist with deep expertise in data science, MLOps, and building GenAI solutions to join our Enterprise Data & Data Science team. In this ...

As an expert in the leading edge of AI and data science, you will direct the team on the methodologies, practices, algorithms, experiments and processes they perfo rm. * Hands On: You are expected to ...

Guidehouse is seeking a Director in our Health AI and Data Science practice to lead the delivery of data products, AI-enabled solutions, and scientific support that help healthcare leaders make ...

OR · On-site

This role ensures the rigorous application of statistical principles and advanced data science methodologies to optimize clinical trial efficiency and accelerate innovation. The Executive Director ...

The Senior Director, Data & Analytics will shape KEEN's data vision and transform the organization ... Required : • Bachelor's Degree in Computer Science, Data Science, Information Systems, Business ...

This position reports to the Director, Data Science and is part of the Diagnostics Platform and will be fully remote. In this role, you will have the opportunity to: * Lead assay development ...

Sr. Director, Data & Analytics

Portland, OR · On-site

$217.60K - $229.62K/yr

The Senior Director will connect strategy to execution - translating business priorities into ... Bachelor's Degree in Computer Science, Data Science, Information Systems, Business Analytics ...

The Director, CX Platform & Data Strategy owns the CX technology and data backbone that powers ... This role ensures CX platforms, analytics, and data science operate as a single, coherent ...

We're looking for a strategic, technical, and data-obsessed leader to own both our growth engine and our data science function. You'll lead end-to-end growth initiatives-from acquisition and ...

Director, Data Engineering

OR · On-site +1

$155.20K - $288K/yr

The Director, DataEngineering, is responsible forleading the strategy, development, and operation ... Partner with Data Science, Analytics, and business teams to align priorities and unlock the full ...

... years of direct hands-on experience in data processing, data science, or GPU-accelerated computing. * Proven experience leading, partnering, and scaling developer programs at major technology ...

OR · On-site

Its lead asset, zolucatetide (FOG-001), is a first-in-class, clinically validated direct inhibitor ... The VP, Development Data Science will build and lead a cross functional data centric matrix to ...

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Director Data Science Startup information

What are the key skills and qualifications needed to thrive as a Director of Data Science at a Startup, and why are they important?

To thrive as a Director of Data Science at a startup, you need deep expertise in statistical modeling, machine learning, and data strategy, often supported by an advanced degree in a quantitative field. Familiarity with tools like Python, R, SQL, cloud platforms (e.g., AWS, GCP), and experience with data pipeline architectures are typically required. Strong leadership, communication, and business acumen are vital soft skills for aligning data initiatives with startup objectives and motivating cross-functional teams. These skills are crucial for driving product innovation, scaling data operations, and delivering actionable insights in a fast-paced, resource-constrained environment.

What are some unique challenges a Director of Data Science faces in a startup environment?

As a Director of Data Science in a startup, you will often need to balance hands-on technical work with strategic leadership, since resources and team sizes are usually limited. You'll likely be tasked with building and mentoring a team from the ground up, establishing best practices, and aligning data initiatives with fast-changing business goals. Additionally, you may need to advocate for data-driven decision-making across non-technical teams and adapt quickly as the company's priorities shift. This environment fosters rapid professional growth but requires flexibility, strong communication skills, and a willingness to wear multiple hats.

What does a Director of Data Science do at a startup?

A Director of Data Science at a startup leads the development and execution of data-driven strategies, overseeing teams of data scientists and analysts to drive business growth. They are responsible for aligning data initiatives with the company's goals, building predictive models, and ensuring the integrity and scalability of data solutions. This role often involves close collaboration with engineering, product, and executive teams to translate business needs into actionable data projects. Additionally, they help shape the data culture and mentor team members in a fast-paced, resource-constrained environment.

What is the difference between Director Data Science Startup vs Data Scientist?

AspectDirector Data Science StartupData Scientist
Required CredentialsAdvanced degree (Master's/PhD), leadership experienceBachelor's or Master's in Data Science, Computer Science, or related field
Work EnvironmentLeadership role overseeing teams, strategic planningHands-on data analysis, model development, research
Employer & Industry UsageStartups, tech companies, innovation-driven firmsVaries from startups to large corporations, research labs
Search & Comparison IntentUnderstanding leadership roles, strategic responsibilitiesTechnical skills, project work, data analysis

The Director Data Science Startup typically holds a leadership position with strategic oversight and team management responsibilities, requiring advanced degrees and experience. In contrast, a Data Scientist focuses on technical data analysis and model development, often with less emphasis on leadership. Both roles are common in startup environments and tech industries, but they differ significantly in scope and responsibilities.

What are the most commonly searched types of Data Science Startup jobs in Oregon? The most popular types of Data Science Startup jobs in Oregon are:
What are popular job titles related to Director Data Science Startup jobs in Oregon? For Director Data Science Startup jobs in Oregon, the most frequently searched job titles are:
What job categories do people searching Director Data Science Startup jobs in Oregon look for? The top searched job categories for Director Data Science Startup jobs in Oregon are:
What cities in Oregon are hiring for Director Data Science Startup jobs? Cities in Oregon with the most Director Data Science Startup job openings:
Infographic showing various Director Data Science Startup job openings in Oregon as of May 2026, with employment types broken down into 100% Full Time. Highlights an 70% Physical, 2% Hybrid, and 28% Remote job distribution.

Full-time

Posted 6 hours ago


Risepoint rating

7.6

Company rating: 7.6 out of 10

Based on 8 frontline employees who took The Breakroom Quiz

12th of 72 rated education support services


Job description

Risepoint is an education technology company that provides world-class support and trusted expertise to more than 100 universities and colleges. We primarily work with regional universities, helping them develop and grow their high-ROI, workforce-focused online degree programs in critical areas such as nursing, teaching, business, and public service. Risepoint is dedicated to increasing access to affordable education so that more students, especially working adults, can improve their careers and meet employer and community needs.

The Impact You Will Make

You will lead the data science behind our Student Journey Platform - a system designed to know what a student needs before they ask, intervene at the moments that matter most, and personalize the experience across every university we serve. This isn't about reactive tooling. It's about building the intelligence layer that orchestrates real-time decisions across the full arc of a student's journey - from first inquiry through completion - and doing it at a scale that no single institution could achieve alone.

How You Will Bring Our Mission to Life

At Risepoint, data science isn't a reporting function - it's the engine powering predictive AI voice and text experiences that meet students where they are and guide them where they need to go. As Director of Data Science, you'll own the models, evaluation systems, and analytical frameworks that make those experiences smarter, more responsive, and more human over time. Your work won't live in dashboards. It will show up in conversations, decisions, and outcomes for hundreds of thousands of students.

What You Will Do

You'll lead a multidisciplinary team across three interrelated domains:

Machine learning models & Lifecycle - Build cutting edge machine learning models and own the end-to-end lifecycle of production ML models powering predictive and conversational AI experiences. Drive next best action, propensity, and intervention models from discovery through deployment, with governance and monitoring frameworks that ensure they stay accurate and reliable in the wild.

Multimodal Intelligence (Voice, Text & Generative AI) - Architect frameworks to extract high-signal insights from voice, text, and behavioral interaction data - spanning classical NLP, large language models, and generative AI techniques - to surface what structured data alone will never reveal. Integrate disparate signals to build a unified, real-time view of student intent and experience.

Tech Product Analytics & Experimentation - Drive the experimentation roadmap (A/B testing, feature rollouts, behavioral studies) with statistical rigor to ensure AI-powered product decisions are backed by hard data. Define evaluation standards for generative and predictive features, and close the loop between model outputs and product requirements.

Technical Leadership - Scale a multidisciplinary team by fostering a culture of ownership, analytical rigor, and rapid iteration. Partner with Product and Engineering to define technical success metrics that translate directly into business ROI. Distill complex technical outcomes into compelling narratives that drive alignment and action at the leadership level.

What Success Looks Like
  • Predictive Precision - Models that anticipate student needs, surface the right intervention at the right moment, and improve with every interaction
  • Voice & Text as a Strategic Asset - Conversational data is no longer raw signal - it's a structured, queryable source of truth that drives product and operational decisions
  • Rigorous AI Evaluation - Every generative and predictive feature ships with clear evaluation criteria, performance baselines, and monitoring in place
  • Data-Backed Outcomes - A measurable link between AI-driven interactions and improved student outcomes, including reduced drop-off at critical journey moments and higher completion rates
  • Team Excellence - A growing, engaged team that ships consequential work with increasing speed and independence
How Impact Will Be Measured
  • A prioritized roadmap of ML and analytics initiatives with clear owners, success metrics, and decision timelines reviewed on a recurring cadence
  • An AI evaluation and monitoring program for key AI-enabled features, including scorecards, decision thresholds, and alerting for performance regressions
  • A standardized conversational taxonomy and recurring reporting across voice and text interactions that surfaces top drivers, trend movement, and emerging issues
  • Measurable improvement in at least two agreed student or operational outcome measures through data science-led changes
What You'll Bring to the Team
  • A builder's mindset - you create structure from ambiguity and rally people around shared goals
  • Deep intuition for how predictive and generative AI systems behave in production - and what it takes to keep them performing
  • The ability to move fluidly between strategic thinking and hands-on technical work without losing altitude
  • A track record of translating complex models and analyses into narratives that drive executive action
  • Deep credibility with engineers, product managers, and analysts alike
  • A genuine investment in developing the people around you
Experience That Matters Most
  • 10+ years in data science, machine learning, or analytics roles
  • 5+ years leading multidisciplinary data science or analytics teams
  • Hands-on experience building or evaluating predictive AI systems in voice or text-based products
  • Production machine learning experience - model building, launch, governance, monitoring, and lifecycle management
  • Strong command of Python, SQL, and modern ML frameworks (PyTorch, TensorFlow, scikit-learn)
  • Experience designing evaluation frameworks for LLM or generative AI features
  • Proven experience designing and analyzing experiments (A/B testing, feature rollouts, behavioral studies)
  • Master's or Ph.D. in Computer Science, Data Science, Statistics, or a related field - or equivalent experience
Experience That's Great to Have
  • Familiarity with generative AI applications in a product or customer experience context or agentic workflow design
  • Experience with next-best-action, recommendation, or real-time intervention modeling
  • Familiarity with cloud data platforms and distributed data technologies (Spark, Databricks, etc.)
  • Background in EdTech, higher education, or other mission-driven industries
  • Experience partnering with GTM or operations teams, not just product and engineering

Risepoint is an equal-opportunity employer and supports a diverse and inclusive workforce.