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Remote Causal Inference Jobs in New York (NOW HIRING)

Data Scientist

New York, NY · On-site +1

$180K - $220K/yr

Fully remote (EST timezone only) Why we need you Junction sits in the flow of high-value ... Experience applying causal inference methods, such as diff-in-diff, propensity scoring, or ...

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Remote Causal Inference information

What are the key skills and qualifications needed to thrive as a Remote Causal Inference Specialist, and why are they important?

To thrive as a Remote Causal Inference Specialist, you need strong quantitative and statistical skills, a solid background in econometrics or data science, and typically an advanced degree in a related field. Proficiency with statistical programming languages such as R or Python, experience with causal inference frameworks like propensity score matching or instrumental variables, and familiarity with data visualization tools are crucial. Outstanding problem-solving abilities, clear communication, and self-motivation are essential soft skills for working independently and conveying complex results to non-technical stakeholders. These skills enable accurate, actionable insights from data, which drive evidence-based decision-making in remote, collaborative environments.

How does a remote Causal Inference specialist typically collaborate with cross-functional teams, and what tools are commonly used?

As a remote Causal Inference specialist, you’ll frequently work with data scientists, product managers, and engineers to design and interpret experiments, analyze observational data, and provide actionable insights. Collaboration usually happens through regular video meetings, shared documentation, and project management tools. Commonly used platforms include Slack or Microsoft Teams for communication, GitHub for code collaboration, and Jupyter Notebooks or RMarkdown for sharing reproducible analyses. These tools help ensure transparency and maintain strong teamwork despite the remote environment.

What is a Remote Causal Inference job?

A Remote Causal Inference job involves using statistical and analytical methods to determine cause-and-effect relationships from data, often for fields like healthcare, social sciences, or business. Professionals in this role work remotely, leveraging tools such as R, Python, or specialized software to analyze experiments, observational studies, or large datasets. Their insights help organizations make data-driven decisions, design better interventions, and accurately measure the impact of policies or treatments. Strong skills in statistics, machine learning, and communication are essential for success in this position.
What are the most commonly searched types of Causal Inference jobs in New York? The most popular types of Causal Inference jobs in New York are:
What are popular job titles related to Remote Causal Inference jobs in New York? For Remote Causal Inference jobs in New York, the most frequently searched job titles are:
What cities in New York are hiring for Remote Causal Inference jobs? Cities in New York with the most Remote Causal Inference job openings:
Data Scientist

Data Scientist

Junction

New York, NY • On-site, Remote

$180K - $220K/yr

Full-time

Posted 6 days ago


Job description

Healthcare is in crisis and the people behind the results deserve better. With more and more data coming from wearables, lab tests, and patient-doctor interactions, we're entering an era where data is abundant.
Junction is building the infrastructure layer for diagnostic healthcare, making patient data accessible, actionable, and automated across labs and devices. Our mission is simple but ambitious: use health data to unlock unprecedented insight into human health and disease.
If you're passionate about how technology can supercharge healthcare, you'll fit right in.
Backed by Creandum, Point Nine, 20VC, YC, and leading angels, we're working to solve one of the biggest challenges of our time: making healthcare personalized, proactive, and affordable. We're already connecting millions and scaling fast.
Short on time? TL;DR
  • You: Can define what should be measured, how it should be modeled, and how those insights should shape product and company decisions.
  • Ownership: You'll own Junction's highest-leverage statistical, modeling, and evaluation work across diagnostics, clinical workflows, and AI-enabled product development.
  • Scope: This is not a pure IC modeling role and not a reporting role. You'll set the methodology, research roadmap, and decision framework for how Junction uses data to drive product, clinical, and business outcomes.
  • Salary: $180,000 - $220,000 + equity
  • Location: Fully remote (EST timezone only)

Why we need you
Junction sits in the flow of high-value diagnostics and clinical data. As the company grows, our advantage moves beyond just having data to having the ability to turn it into reliable intelligence improving product decisions, customer outcomes, and the performance of the business.
Some of that work exists today, but it is not yet owned as a coherent function. Models get built. Analyses get done. Experiments answer local questions. But we need someone who can define the broader scientific and analytical system: what we should measure, what methods we trust, where modeling creates real leverage, and how that work translates into products and decisions that hold up outside a demo.
We're hiring our first Data Scientist to take ownership of, and establish that standard.
This role will lead Junction's most important modeling, experimentation, and evaluation work. You'll partner closely with data, product engineering and leadership teams to drive the analytical roadmap by which Junction can leverage differentiated value from data.
What you'll be doing day to day
  • Own the research and modeling work underlying Junction's highest-priority data science opportunities across diagnostics, clinical workflows, and AI-enabled product features
  • Define rigorous frameworks for measurement, experimentation, and causal evaluation so we can distinguish signal from noise and make decisions we can defend
  • Lead development of predictive models, segmentation approaches, risk or routing logic, and other statistical systems that directly inform product and business strategy
  • Build the analytical foundation behind customer-facing features - from model development through to validation and performance tracking
  • Partner with engineering and data engineering to ensure models and analytical systems can be put in production, are reliable, and useful in real workflows
  • Establish how Junction evaluates data-driven and AI-enabled features, including methodology, quality thresholds, monitoring, and performance review
  • Communicate complex technical findings clearly to technical and non-technical stakeholders, including tradeoffs, limitations, and implications for action

Requirements
  • Strong track record of leading high-stakes analytical work that influenced product, operational, or business decisions
  • Deep foundation in statistical inference, experimental design, observational analysis, and model evaluation
  • Strong Python and/or R skills, with experience working on large, messy real-world datasets
  • Experience building predictive or decision-support models in production or near-production environments
  • Experience partnering closely with engineering to move work from analysis or prototype into deployed systems
  • Ability to operate at both strategic and hands-on levels: defining the roadmap while also getting into the details when needed
  • Strong communication and stakeholder management skills; able to explain methods, findings, and tradeoffs to executives as well as technical peers
  • Comfort operating in a startup environment with ambiguity, limited structure, and high ownership

Nice to have
  • Experience designing, executing, and publishing research studies
  • Experience with HIPAA, PHI, or other regulatory clinical frameworks
  • Deep familiarity with modern data tooling and production workflows across warehouses, orchestration, and transformation layers
  • Experience developing, deploying, and designing evaluation frameworks for LLM or AI-powered features in customer-facing products
  • Expertise directly working with healthcare, diagnostics, lab data, wearable data, and other clinical data
  • Experience applying causal inference methods, such as diff-in-diff, propensity scoring, or instrumental variables in practice

What this role isn't
  • Not an analytics role focused on dashboards, reporting, or one-off analysis
  • Not an ML platform role - you won't own infrastructure or tooling
  • Not a good fit if you mainly want to experiment with models or AI ideas without being accountable for how they perform in production
  • Not a good fit if you struggle with ambiguity. Knowing what to work on is part of the job

How you'll be compensated
  • Salary: $180,000 - $220,000 + equity
  • Your salary is dependent on your location and experience level
  • Generous early stage options (extended exercise post 2 years employment)
  • Regular in-person offsites, last were in Tenerife and Miami
  • Monthly learning budget of $300 for personal development and productivity
  • Flexible, remote-first working - including $1K for home office equipment
  • Monthly budget of $150 to use towards a coworking space
  • 25 days off a year + national holidays
  • Healthcare coverage depending on location

Oh and before we forget:
  • Backend Stack: Python (FastAPI), Go, PostgreSQL, Google Cloud Platform (Cloud Run, GKE, Cloud BigTable, etc), Temporal Cloud
  • Frontend Stack: TypeScript, Next.js
  • API docs are here: https://docs.junction.com/
  • Company handbook is here with engineering values + principles

Important details before applying:
  • We only hire folks physically based in GMT and EST timezones - more information here
  • We do not sponsor visas right now given our stage