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Experience with IBM AI Fairness 360 (AIF360) preference; Machine Learning (ML); Natural Language Processing (NLP); spaCy and NLTK, as well as language models like BERT and RoBERTa, are desired.
Full-timeExpandApply NowActive JobUpdated 26 days ago - UpvoteDownvoteShare Job
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We are seeking a Data Scientist who will provide scientific support to the Materials Characterization Processing (MCP) Core Facility in the Department of Materials Science and Engineering (DMSE), Whiting School of Engineering, Johns Hopkins University.
ExpandApply NowActive JobUpdated 8 days ago - UpvoteDownvoteShare Job
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Experience using statistical analysis and computing, machine learning, deep learning, processing large data sets, data visualization, data wrangling, mathematics, and programming.
Full-timeExpandApply NowActive JobUpdated 27 days ago - UpvoteDownvoteShare Job
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Specialized experience for this position must include: Experience with data science and analytical methods from conducting machine learning, Natural Language Processing, and technical procedures such as, solution design, implementation, and deployment.
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Role: Data Scientist (PHD) · Minimum 8 Year (s) of Data Scientist experience. · Proven experience analyzing data, including data quality assessment, data governance, and data protection.
ExpandApply NowActive JobUpdated 26 days ago - UpvoteDownvoteShare Job
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The data scientist will apply analytics, machine learning, deep learning, and/or Natural Language Processing methods as appropriate to increase and optimize customer experience, drive value for the customer, and other positive business outcomes.
$126,000 - $141,000 a yearFull-timeExpandApply NowActive JobUpdated 1 month ago - UpvoteDownvoteShare Job
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Certifications in AI/ML technologies and Cloud platforms, such as AWS Certified Machine Learning - Specialty, Google Cloud Professional Machine Learning Engineer, Azure AI Engineer, Azure Data Scientist, or Azure Solutions Architect.
$167,325 - $278,875 a yearFull-timeExpandApply NowActive JobUpdated 1 month ago - UpvoteDownvoteShare Job
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Experience in Machine Learning (ML), Natural Language Processing (NLP), spaCy and NLTK, as well as language models like BERT and RoBERTa, are highly desired. Our technical expertise and innovations are comprised of codeless automation, identity intelligence, immersive technology, artificial intelligence/machine learning (AI/ML), virtualization, and digital transformation.
Full-timeExpandApply NowActive JobUpdated 8 days ago - UpvoteDownvoteShare Job
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Requirements Basic Qualifications Bachelor's degree in Statistics, Applied Mathematics, Computer Science, or Information Science with 13+ years of experience Bachelor degree in Statistics, Applied Mathematics, Computer Science, or Information Science Minimum 8 Year (s) of Data Scientist experience Experience with IBM AI Fairness 360 (AIF360) – preference; Machine Learning (ML); Natural Language Processing (NLP); spaCy and NLTK, as well as language models like BERT and RoBERTa, are desired.
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Understanding of machine learning algorithms (e.g. k-NN, GBM, Neural Networks Naive Bayes, SVM, and Decision Forests), statistical analysis, and data visualization techniques; Staying current with the latest advancements in data science and machine learning.
Full-timeExpandApply NowActive JobUpdated 8 days ago - UpvoteDownvoteShare Job
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Collaborating with teams comprised of technical, data science, and business specialists. Strong knowledge of modern JavaScript and experience with ES6+ features, such as classes, and arrows demonstrating an intimate understanding of privacy, data, and model governance activities including AI risks, oversight mechanisms, documentation, and development processes.
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We have an outstanding Contract position for a Data Scientist - Mitigating Bias in AI with AIF360. Provide support to the agency in creating a bias mitigation strategy and examine the Agency's race and ethnicity (R/E) data for consistency and completeness.
ExpandApply NowActive JobUpdated 2 days ago - UpvoteDownvoteShare Job
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Experience with IBM AI Fairness 360 (AIF360) – preference; Machine Learning (ML); Natural Language Processing (NLP); Job Title: Data Scientist. intimate understanding of privacy, data, and model governance activities including AI risks, oversight mechanisms.
ExpandApply NowActive JobUpdated 30 days ago - UpvoteDownvoteShare Job
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The successful candidate is a self-starter who can responsibly and independently analyze data, then collaborate with the Federal Government end-client leadership at all levels to present relevant information.
$150ExpandApply NowActive JobUpdated 5 days ago - UpvoteDownvoteShare Job
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Relevant experience must be in designing/implementing machine learning, data science, advanced analytical algorithms, programming (skill in at least one high-level language (e.g., Python.
Full-timeExpandApply NowActive JobUpdated 1 month ago
machine learning data scientist processing jobs in Baltimore, MD
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