Job Url: https://www.indeed.com/jobs?q=python&l=United+States&sc=0kf%3Aattr%28DSQF7%29%3B&radius=50&fromage=1&start=70&vjk=b296b180a8d7852e Job Description: Machine Learning Engineer- job post Penn Interactive 2.0 2.0 out of 5 stars Remote $75,000 - $150,000 a year Penn Interactive Remote $75,000 - $150,000 a year Apply now Profile insights Here’s how the job qualifications align with your profile. Skills Terraform TensorFlow Scala Rust (programming language) R PyTorch Natural language processing Machine learning frameworks Machine learning Keras Google Cloud Platform Data science Confluence CI/CD C++ Software deployment SQL Python Kubernetes Go Git Docker AWS APIs - show less Do you have experience in Terraform? Yes No Skip   Job details Here’s how the job details align with your profile. Pay $75,000 - $150,000 a year   Benefits Pulled from the full job description Parental leave 401(k) matching Health insurance Paid time off   Full job description PENN Entertainment, Inc. is North America's leading provider of integrated entertainment, sports content, and casino gaming experiences. From casinos and racetracks to online gaming, sports betting and entertainment content, we deliver the experiences people want, how and where they want them. We're always on the lookout for those who are passionate about creating and delivering cutting-edge online gaming and sports media products. Whether it's through ESPN BET, Hollywood Casino, theScore Bet Sportsbook & Casino, or theScore media app, we're excited to push the boundaries of what's possible. These state-of-the-art platforms are powered by proprietary in-house technology, a key component of PENN's omnichannel gaming and entertainment strategy. When you join PENN Entertainment's digital team, you'll not only work on these cutting-edge platforms through theScore and PENN Interactive, but you'll also be part of a company that truly cares about your career growth. We're committed to supporting you as you expand your skills and explore new opportunities. With locations throughout North America, you can build a future at PENN Entertainment wherever you are. If you want to challenge conventions in gaming, media and entertainment, we want to talk to you. About the Role & Team The Data Science & Machine Learning team is responsible for building models and APIs to help improve all of Penn Entertainments digital offerings. Our team values creativity, collaboration, ingenuity, and ownership. As a Machine Learning Engineer, you'll be instrumental in crafting the next generation of user experiences. You will design, build, and deploy sophisticated machine learning models and infrastructure that directly impact how users discover content, engage with our community, and explore the full spectrum of Penn Entertainment's offerings. This role offers a unique chance to contribute to high-impact projects while helping to advance our cutting-edge ML platform. About the Work We're focused on projects that directly improve user engagement and satisfaction. Some examples include: Personalized Recommendation Engines – Help users discover the games, promotions, and content they care about most through behavioral, contextual, and collaborative filtering models. Chat Toxicity Detection – Ensure a safe and welcoming community environment with NLP-based classification. Cross-sell Propensity Modeling – Predict which offerings resonate with each user and surface the right experience at the right time. Dynamic Personalization – Enable real-time decision-making in product features, content feeds, and user journeys using machine learning. You'll also be instrumental in scaling our ML platform to support these future efforts. As part of the Machine Learning Engineering team, you will: Build and optimize end-to-end machine learning pipelines from data ingestion to deployment. Work closely with Product, Marketing, and Operations teams to align ML solutions with business goals. Improve our ML platform and deploy infrastructure using MLOps best practices. Evaluate and integrate new tools, models, and frameworks to enhance scalability and performance. Clearly communicate technical concepts to both technical and non-technical stakeholders. Document your systems and workflows using Git, Confluence, and related tools. About You You're someone who's passionate about putting machine learning into production and making personalization work at scale. You bring: 3+ years of professional experience as a Machine Learning Engineer or in a similar role. A background in Computer Science, Data Science, Engineering, or a related technical field. Strong programming skills in Python and SQL. Bonus for Go, Rust, Scala, R, or C++. Experience with Docker, Kubernetes, Terraform, and scalable deployment tools. Hands-on experience building CI/CD pipelines for ML systems. Proficiency in orchestration tools like Airflow, Kubeflow, or Dagster. Experience working on or contributing to dbt projects. Comfort working in cloud environments like AWS, GCP, or Azure. Familiarity with ML frameworks such as PyTorch, TensorFlow, Keras, or similar. Nice to have: Experience building real-time personalization or recommendation systems at scale. Familiarity with virtual feature stores like Feast or Featureform. Exposure to working with or deploying large language models (LLMs) in production. What We Offer : Competitive compensation package Fun, relaxed work environment Education and conference reimbursements. Parental leave top up Opportunities for career progression and mentoring others #LI-REMOTE Initial placement within the salary range is based on an individual's relevant knowledge, skills, and experience. Base salary is just one component of our competitive Total Rewards package, which includes wellness programs designed to support our team members' financial, physical, and mental well-being. Specific benefits—such as day-one medical coverage, 401(k) matching, annual performance bonus and equity package — depending on position. Paid time off is earned according to the local policy and increases with the length of employment. Click HERE to discover how we empower team members to grow, thrive, and advance in their careers. 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