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Remote Python Ai Jobs in Pennsylvania (NOW HIRING)

Manager, Data Engineer (Remote)

Home, PA · Remote

$100K - $174K/yr

Strong programmingexpertisein Python and SQL, including data engineering frameworks, large-scale data manipulation, and governed AI-assisted development practices * Apache Sparkproficiency ...

Manager, Data Engineer (Remote)

Home, PA · Remote

$100K - $174K/yr

Strong programmingexpertisein Python and SQL, including data engineering frameworks, large-scale data manipulation, and governed AI-assisted development practices * Apache Sparkproficiency ...

Build and lead a remote AI team, including recruiting, mentoring, and performance management ... Proficiency in Python and common ML frameworks (e.g., TensorFlow, PyTorch, scikit-learn). * Strong ...

A.I. Manager

PA · On-site +1

Build and lead a remote AI team, including recruiting, mentoring, and performance management ... Proficiency in Python and common ML frameworks (e.g., TensorFlow, PyTorch, scikit-learn). * Strong ...

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Remote Python Ai information

What are the key skills and qualifications needed to thrive as a Remote Python AI Developer, and why are they important?

To thrive as a Remote Python AI Developer, you need strong programming skills in Python, a solid understanding of machine learning concepts, and typically a degree in computer science or a related field. Familiarity with frameworks like TensorFlow or PyTorch, experience with cloud platforms (e.g., AWS, Azure), and relevant certifications such as TensorFlow Developer are highly valued. Exceptional problem-solving abilities, self-motivation, and effective remote communication skills help set professionals apart in this distributed role. These capabilities are critical for developing robust AI solutions, collaborating across virtual teams, and delivering impactful results in a rapidly evolving field.

What are Remote Python AI jobs?

Remote Python AI jobs are positions that involve developing, implementing, or maintaining artificial intelligence solutions using the Python programming language, all while working from a remote location. These roles can include tasks such as building machine learning models, automating data analysis, and deploying AI-powered applications. Professionals in these jobs collaborate with teams online, use cloud-based tools, and contribute to a variety of industries such as tech, finance, healthcare, and more. Python is a popular choice for AI due to its simplicity and the availability of powerful libraries like TensorFlow, PyTorch, and scikit-learn.

What is the difference between Remote Python Ai vs Data Scientist?

AspectRemote Python AiData Scientist
Required CredentialsPython programming, AI/ML knowledge, possibly certifications in AI or data analysisStatistics, programming, data analysis, often a master's degree or higher
Work EnvironmentRemote, tech companies, AI-focused teamsRemote or on-site, diverse industries including tech, finance, healthcare
Employer & Industry UsageTech startups, AI firms, software companiesVarious sectors like finance, healthcare, marketing, tech
Search & Comparison IntentFocus on AI development using PythonData analysis, insights, statistical modeling

Remote Python Ai roles primarily focus on developing AI models and applications using Python, often within tech or AI companies. Data Scientists analyze data to extract insights, requiring broader statistical skills. While both roles may involve Python, Remote Python Ai emphasizes AI/ML development, whereas Data Scientists focus on data analysis and interpretation.

How is collaboration typically structured in a remote Python AI role, and what tools are commonly used to facilitate teamwork?

In a remote Python AI role, collaboration is often structured through regular virtual meetings, code reviews, and the use of collaborative platforms. Teams typically use version control systems like GitHub or GitLab for code sharing, and platforms such as Slack or Microsoft Teams for daily communication. Project management tools like Jira or Trello help organize tasks and track progress, while video calls via Zoom or Google Meet are used for team discussions and brainstorming sessions. This structure ensures that even in a distributed setting, team members can efficiently work together, share insights, and resolve challenges.
What are the most commonly searched types of Python Ai jobs in Pennsylvania? The most popular types of Python Ai jobs in Pennsylvania are:
What job categories do people searching Remote Python Ai jobs in Pennsylvania look for? The top searched job categories for Remote Python Ai jobs in Pennsylvania are:
What cities in Pennsylvania are hiring for Remote Python Ai jobs? Cities in Pennsylvania with the most Remote Python Ai job openings:
Infographic showing various Remote Python Ai job openings in Pennsylvania as of July 2026, with employment types broken down into 69% Full Time, 25% Part Time, 1% Temporary, 4% Contract, and 1% Nights. Highlights an 64% Physical, 6% Hybrid, and 30% Remote job distribution.
Tech Lead Data Scientist, AI Evaluation & Monitoring

Tech Lead Data Scientist, AI Evaluation & Monitoring

Geisinger Health

Danville, PA • On-site, Remote

Full-time

Medical, Dental, Vision

Re-posted 16 days ago


Geisinger Health rating

6.9

Company rating: 6.9 out of 10

Based on 436 frontline employees who took The Breakroom Quiz

447th of 884 rated healthcare providers


Job description

Location:
Work from home (Pennsylvania)
Shift:
Days (United States of America)
Scheduled Weekly Hours:
40
Worker Type:
Regular
Exemption Status:
Yes
Job Summary:
The Tech Lead Data Scientist, AI Evaluation & Monitoring is the principal technical expert for how Geisinger evaluates, monitors, and optimizes AI systems in production. This is a hands-on technical leadership role. The Tech Lead sets the technical direction for AI evaluation across a large and growing portfolio, provides technical leadership to a team of data analysts who execute evaluation work, and partners directly with AI program teams to raise the quality of how AI is validated, monitored, and improved over time.
The role exists because AI at Geisinger has scaled past the point where oversight can be a document-review exercise. We need a technical leader who can guide program teams toward better-designed evaluations up front, instrument meaningful production monitoring, and continually advance the methods we use, from LLM-as-Judge frameworks to simulation-based testing to pragmatic experiment design that actually scales in healthcare.
Job Duties:
What You Will Own:
  • The technical evaluation methodology applied to AI programs across the enterprise, pre-production validation, production monitoring, and ongoing optimization
  • Hands-on guidance to program teams as they design validation studies, equity audits, monitoring plans, and escalation playbooks for their AI systems
  • Instrumentation of production monitoring: translating program-specific failure modes into concrete, measurable metrics
  • The evaluation toolkit: LLM-as-Judge frameworks, golden sets, simulation harnesses, experimental study designs, drift detection, subgroup fairness analysis
  • Reusable evaluation playbooks and templates that let each new program move faster than the last
  • Technical direction, design review, and mentorship for a team of data analysts supporting the evaluation function

What You Will Not Own:
  • People management, HR administration, or formal performance evaluations for the analyst team (those sit with the analysts' line manager; the Tech Lead provides technical input)
  • Program-level product strategy or go/no-go decisions
  • Final clinical validation judgment on whether a given AI is safe for a given clinical use
  • The software infrastructure behind the evaluation and monitoring tooling (built by the AI Platform team - the Tech Lead defines what's measured and how; Platform builds the backend)

Shape of the Work:
This is a role that lives at three altitudes at once:
With program teams (hands-on advisory). Partner with program owners early, before evaluations are designed, to shape study approach, sample size, stratification, gold-standard definition, and decision thresholds. Translate ambiguous failure modes into concrete, defensible evaluation designs. Coach teams through the technical work so that what arrives at governance review is rigorous, not performative.
With the evaluation toolkit (hands-on build). Design and operate the reusable assets that let evaluation scale: LLM-as-Judge rubrics and calibration methods, golden sets, simulation harnesses, A/B and shadow-mode study templates, subgroup fairness analyses, and drift monitors. Keep a pragmatic eye on what actually works in a clinical environment versus what works in a paper.
With the analyst team (technical leadership). Set technical direction, assign work across active evaluations, review analysis code and study designs, and raise the technical bar. Mentor analysts on methodology, statistical rigor, and the domain knowledge that makes evaluation credible. Grow them from execution into independent evaluation design.
Methods You'll Use:
  • Experimental and quasi-experimental design for production AI systems
  • LLM and generative AI evaluation: golden sets, judge-based evaluation, hallucination and grounding checks
  • Fairness and equity evaluation across patient and stakeholder subgroups
  • Production monitoring design: drift detection, performance decay, adoption, and outcome metrics
  • Causal inference methods appropriate to healthcare settings where full RCTs are often impractical
  • Simulation and adversarial testing for pre-production stress testing
  • Python, SQL, modern ML and evaluation tooling, cloud-native data platforms

Work is typically performed in an office or remote environment. Accountable for satisfying all job specific obligations and complying with all organization policies and procedures. The specific statements in this profile are not intended to be all-inclusive. They represent typical elements considered necessary to successfully perform the job.
*Relevant experience may be a combination of related work experience and degree obtained (Master's Degree = 2 years; PHD = 4 years ).
Position Details:
Required Skills & Qualifications:
  • 6+ years in data science, statistics, ML engineering, or applied quantitative research, with demonstrated experience as the senior technical voice on cross-functional projects

  • Strong foundation in experimental design and causal inference - and judgment about which method fits which situation

  • Hands-on experience designing and running model evaluation studies in real production settings

  • Experience evaluating LLM or generative AI systems, or comparable experience evaluating complex ML systems where ground truth is messy

  • Proven ability to translate ambiguous failure modes into concrete, defensible evaluation designs and monitoring metrics

  • Strong fluency in Python and SQL; working comfort with modern ML tooling and cloud-native data environments

  • Experience with fairness and equity evaluation for ML systems

  • Track record of providing technical leadership and mentorship without formal people-management authority

  • Clear written communication - the role produces evaluation memos and specifications that non-technical decision-makers rely on

  • Healthcare, clinical, or regulated-industry experience strongly preferred

  • MS or PhD in a quantitative field preferred; equivalent experience accepted

Education:
Bachelor's Degree-Related Field of Study (Required)
Experience:
Minimum of 6 years-Relevant experience* (Required)
Certification(s) and License(s):
Skills:
Analyzing, processing and building AI/ML solutions from Clinical and Operational data sources, such as Epic Clarity, HL7, DICOM, or ECG data, Clinical Databases, Communication, Critical Thinking, Data Analysis, Data Presentations, Group Collaboration, Leadership, Machine Learning Methods, Programming Languages, Structured Query Language (SQL)
OUR PURPOSE & VALUES: Everything we do is about caring for our patients, our members, our students, our Geisinger family and our communities.
  • KINDNESS: We strive to treat everyone as we would hope to be treated ourselves.
  • EXCELLENCE: We treasure colleagues who humbly strive for excellence.
  • LEARNING: We share our knowledge with the best and brightest to better prepare the caregivers for tomorrow.
  • INNOVATION: We constantly seek new and better ways to care for our patients, our members, our community, and the nation.
  • SAFETY: We provide a safe environment for our patients and members and the Geisinger family.

We offer healthcare benefits for full time and part time positions from day one, including vision, dental and domestic partners. Perhaps just as important, we encourage an atmosphere of collaboration, cooperation and collegiality.
We know that a diverse workforce with unique experiences and backgrounds makes our team stronger. Our patients, members and community come from a wide variety of backgrounds, and it takes a diverse workforce to make better health easier for all. We are proud to be an affirmative action, equal opportunity employer and all qualified applicants will receive consideration for employment regardless to race, color, religion, sex, sexual orientation, gender identity, national origin, disability or status as a protected veteran.

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