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Machine Learning Engineer - Credit United States, Austin Jobs

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Machine Learning Engineer
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Join Arrive Logistics in Austin as a Machine Learning Engineer. You will design and maintain scalable ML systems using Python, Postgres, and Elasticsearch. This role requires 3+ years of ML Ops, Python, and scalable backend services experience. Enjoy a comprehensive benefits package and a collabo...
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United States , Austin
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Arrive Logistics
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Senior Machine Learning Engineer
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Lead our ML platform strategy as a Senior Machine Learning Engineer in Austin. Design and build scalable systems using Python, cloud-native tools, and frameworks like Sklearn. Enjoy a comprehensive benefits package, 401(k) matching, and a collaborative, mentorship-focused environment.
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United States , Austin
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Arrive Logistics
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Senior Machine Learning System Engineer
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Join Atlassian's AI & ML Platform team as a Senior ML System Engineer. You will build core infrastructure for ML model lifecycle management, using Java/Kotlin, Python, and AWS. This remote US role offers a chance to impact millions of users while enjoying health benefits and paid volunteer time.
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United States , Seattle; San Francisco; New York; Austin
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165500.00 - 265800.00 USD / Year
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Atlassian
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Senior Machine Learning Engineering Manager
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Lead a core ML team at Atlassian, building advanced AI/ML models for revenue and forecasting. You'll manage the full ML lifecycle, from research to deployment, using cutting-edge techniques. Requires 5+ years managing ML engineering teams and a quantitative Master's/PhD. Role based in Seattle, Au...
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United States , Seattle; Austin; New York; Washington DC
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190300.00 - 305600.00 USD / Year
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Atlassian
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Senior Principal Machine Learning Systems Engineer
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Lead the development of foundational AI infrastructure at Atlassian as a Senior Principal ML Engineer. You will design systems, train complex models, and integrate AI capabilities across products. Requires 10+ years of ML experience, expertise in Python/Java, and cloud data platforms. Based in Se...
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United States , Seattle; San Francisco; Austin
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243100.00 - 407200.00 USD / Year
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Atlassian
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Staff Machine Learning Engineer
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Lead the development of next-generation AI as a Staff Machine Learning Engineer in Austin. You will architect and optimize cutting-edge LLMs and MoE systems, driving innovation from research to production. This role requires deep expertise in large-scale ML, PyTorch/TensorFlow, and a passion for ...
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United States , Austin
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Orbis Consultants
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Senior Software Engineer, Machine Learning
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Join Roku's Voice team in Austin as a Senior Machine Learning Engineer. You will design and develop core algorithms for a state-of-the-art voice system used by millions. This role requires 5+ years of ML experience, expertise in production systems, and skills in NLU, ASR, or LLMs. We offer compre...
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United States , Austin
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Roku
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Machine Learning Engineer - Credit Jobs: A Comprehensive Career Overview Machine Learning Engineers (MLEs) specializing in credit represent a critical fusion of advanced data science, software engineering, and deep financial domain expertise. Professionals in these roles are the architects of intelligent systems that power modern credit decisioning, risk assessment, fraud detection, and customer personalization within financial institutions, fintech companies, and credit bureaus. Pursuing Machine Learning Engineer jobs in the credit sector means building the core algorithmic engines that determine creditworthiness, optimize lending portfolios, and ensure regulatory compliance at scale. The typical day-to-day responsibilities of a Machine Learning Engineer in credit revolve around the end-to-end lifecycle of predictive models. This begins with translating complex business problems—such as predicting default probability or identifying synthetic fraud—into concrete, machine-solvable tasks. They are responsible for data acquisition, curation, and the creation of robust feature pipelines from vast and often sensitive financial datasets. A significant portion of their work involves designing, training, validating, and deploying machine learning models. These can range from traditional gradient-boosted trees for scorecard development to sophisticated deep learning and Generative AI models for analyzing unconventional data or generating financial insights. Beyond model building, a hallmark of the profession is the emphasis on production-grade engineering. MLEs don't just prototype; they build scalable, reliable, and monitorable ML systems. This involves writing clean, maintainable code in languages like Python, leveraging big data tools like Spark, and implementing robust MLOps practices. They design and maintain model serving infrastructure, automate retraining pipelines, and establish comprehensive monitoring for model performance, data drift, and concept drift to ensure decisions remain fair and accurate over time. Collaboration is key, as they frequently partner with Data Scientists, Software Engineers, Risk Analysts, and Product Managers to integrate models into consumer-facing applications and internal tools. Typical skills and requirements for these high-impact jobs include a strong foundation in computer science and quantitative disciplines (e.g., Computer Science, Statistics, Mathematics, Operations Research). Proficiency in machine learning frameworks (PyTorch, TensorFlow, scikit-learn) and software engineering best practices is essential. A solid understanding of credit risk principles, financial regulations (like fair lending laws), and the unique challenges of financial data (imbalanced datasets, temporal dependencies) is a major differentiator. As the field evolves, experience with cloud platforms (AWS, GCP, Azure), containerization (Docker, Kubernetes), and increasingly, frameworks for large language models (LLMs) and retrieval-augmented generation (RAG) for document analysis is highly valued. Ultimately, Machine Learning Engineer jobs in credit offer a unique opportunity to apply cutting-edge AI to solve problems with profound real-world consequences, directly impacting financial inclusion, institutional stability, and economic efficiency. It is a career path demanding technical rigor, ethical consideration, and a passion for building systems that are not only intelligent but also transparent, equitable, and robust.

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