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  • 1
    Language: English
    Pages: 1 online resource (1 video file (3 hr., 37 min.)) , sound, color.
    Edition: [First edition].
    DDC: 004.67/82
    Keywords: Database management ; Big data ; Data mining ; Instructional films ; Nonfiction films ; Internet videos
    Abstract: Sponsored by Redpanda Millions (if not billions) of touch points from customers, systems, and processes enter the average business's data stream every day. Farther down that stream, analysts, data scientists, and ML engineers take that data and use it to develop hypotheses, identify insights, feed learning models, and so much more. The job of the data engineer is to manage this lifecycle from initial generation through storage to ingestion, transformation, and finally serving the data, using tools like AWS, Azure, Google Cloud, Spark, Kafka, SQL, and many more. It's extremely important and no small feat. That's why data engineering is one of the fastest growing jobs--and why data engineers are employed by many of the most recognizable tech companies in the world, including IBM, Amazon, Microsoft, Apple, Google, and Facebook. Join experienced industry experts to learn how the data engineering lifecycle fits into the overall data lifecycle, explore the technologies you'll need to conquer along the path from generation to service, and better understand how to meet the needs of analysts, scientists, and ML engineers as well as the business stakeholders and customers driving decisions. What you'll learn and how you can apply it Discover how the data engineering lifecycle allows data professionals to design and build a robust architecture Standardize the process of ML model deployment and monitoring with MLOps Learn essential data preprocessing techniques crucial for harnessing the potential of LLMs This live course is for you because... You're a data engineer, ML engineer, or data scientist. You want to effectively approach the data lifecycle from ingestion to labeling to solving problems with machine learning. You want to learn more about prompt engineering and management to tame the inherent unpredictability of AI-generated outputs. Recommended follow-up: Read Fundamentals of Data Engineering (book) Read Designing Machine Learning Systems (book) Read Machine Learning Design Patterns (book).
    Note: Online resource; title from title details screen (O'Reilly, viewed October 10, 2023)
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  • 2
    Language: English
    Pages: 1 online resource (1 video file (3 hr., 41 min.)) , sound, color.
    Edition: [First edition].
    DDC: 006.3
    Keywords: Artificial intelligence ; Natural language processing (Computer science) ; Instructional films ; Nonfiction films ; Internet videos
    Abstract: Large language models have taken the field of natural language processing and other domains of AI application by storm. The introduction of the transformer architecture by Google Brain in 2017 allowed these models to expand beyond individual word processing to the broader contexts of sentences or paragraphs, and the results have been groundbreaking, even renewing debates about the sentience of AI. But while the applications for these models are endless--from personal assistants and coding assistants to translation and copywriting--the power of LLMs comes with many questions and challenges. The size of LLMs can raise questions of latency and costs when put into production, and debates around the potential harmful effects of LLMs that produce hate speech and misinformation have only just begun. Join experts and practitioners in the field who are tackling these challenges head-on. ML and NLP researchers, data scientists, ML engineers, and AI leaders interested in these powerful models will explore everything from researching the potential of new LLMs to creating state-of-the art applications and more. What you'll learn and how you can apply it Get expert perspectives on the latest tools and techniques for building large language model applications Learn about the latest open source projects making powerful LLM applications achievable for more organizations This Superstream is for you because... You're a current or future AI product owner or AI/machine learning practitioner. You want to learn about the state of the art in artificial intelligence and how large language models can be leveraged to build new applications and solve your organizational challenges. Please note that slides or supplemental materials are not available for download from this recording. Resources are only provided at the time of the live event.
    Note: Online resource; title from title details screen (O'Reilly, viewed Decenber 19, 2023)
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  • 3
    Language: English
    Pages: 1 online resource (1 video file (2 hr., 51 min.)) , sound, color.
    Edition: [First edition].
    DDC: 006.3/1
    Keywords: Machine learning ; Instructional films ; Nonfiction films ; Internet videos
    Abstract: MLOps is consistently one of the greatest challenges engineers face when creating and maintaining machine learning systems. Join expert practitioners to learn techniques and best practices for operationalizing machine learning models and explore case studies of them in action, showing you what works--and what doesn't. What you'll learn and how you can apply it Understand MLOps processes for model deployment, containerization, and automation as well as monitoring, continuous experimentation, and improvement Learn how an understanding of SRE and DevOps principles can enhance the practice of MLOps Avoid common pitfalls in the process of building end-to-end machine learning pipelines This recording of a live event is for you because... You're a data or machine learning practitioner who puts machine learning models into production, or you're embarking on an MLOps career path. You want to improve your process of productionizing machine learning models by applying new techniques and best practices. Recommended follow-up: Read Practical MLOps (book) Read Reliable Machine Learning (book) Watch Radar Talks: Hugo Bowne-Anderson on MLOps Versus DevOps (video) Take Practical MLOps (live online course with Noah Gift) Take Open Source MLOps in 4 Weeks (live online course with Alex Kim) Read Site Reliability Engineering (book).
    Note: Online resource; title from title details screen (O'Reilly, viewed December 12, 2022)
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  • 4
    Language: English
    Pages: 1 online resource (1 video file, approximately 3 hr., 10 min.)
    Edition: 1st edition
    Keywords: Electronic videos
    Abstract: Sponsored by Intel As AI becomes more pervasive, the question of how to build, test, and maintain risk-averse systems grows too. Join experts from the field to learn how they analyze and handle privacy, risk, and safety in their work. About the AI Superstream Series: This four-part series is packed with insights from some of the brightest minds in AI. You’ll get a deeper understanding of the latest tools and technologies that can help keep your organization competitive and learn to leverage AI to drive real business results. What you’ll learn and how you can apply it Understand what secure AI does (and doesn’t) include See what secure AI might look like from design through deployment Discover real-world technical applications of secure AI This recording of a live event is for you because… You're a machine learning engineer or data scientist interested in the challenges of building secure AI and machine learning tools. You want to better understand how industry experts handle security. You want to learn how to improve your AI and machine learning systems. Recommended follow-up: Read AI and the Law (report)
    Note: Online resource; Title from title screen (viewed December 1, 2021) , Mode of access: World Wide Web.
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  • 5
    Language: English
    Pages: 1 online resource (1 video file, approximately 6 hr., 52 min.)
    Edition: 1st edition
    Keywords: Electronic videos
    Abstract: O’Reilly Radar: Data & AI will showcase what’s new, what’s important, and what’s coming in the field. It includes two keynotes and two concurrent three-hour tracks—designed to lay out for tech leaders the issues, tools, and best practices that are critical to an organization at any step of their data and AI journey. You’ll explore everything from prototyping and pipelines to deployment and DevOps to responsible and ethical AI.
    Note: Online resource; Title from title screen (viewed October 14, 2021) , Mode of access: World Wide Web.
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  • 6
    Online Resource
    Online Resource
    [Sebastopol, California] : O'Reilly Media, Inc.
    Language: English
    Pages: 1 online resource (1 video file (3 hr., 13 min.)) , sound, color.
    Edition: [First edition].
    Series Statement: Artificial intelligence superstream
    DDC: 006.3/1
    Keywords: Machine learning ; Apprentissage automatique ; Instructional films ; Nonfiction films ; Internet videos ; Films de formation ; Films autres que de fiction ; Vidéos sur Internet ; Webcast
    Abstract: Sponsored by Intel Machine learning has grown significantly, and with it the footprint of ML models--which can make training, deploying, and monitoring difficult and expensive. What if you could make your ML models and systems more efficient, whether in the form of cost, compute, storage, latency, or carbon footprint? Join us for this Superstream where experts dive into techniques for using fewer resources and delivering better quality. About the AI Superstream Series: This three-part series of half-day online events is packed with insights from some of the brightest minds in AI. You'll get a deeper understanding of the latest tools and technologies that can help keep your organization competitive and learn to leverage AI to drive real business results. What you'll learn and how you can apply it Understand hardware and software resources required for deep learning Learn how to optimize ML models and workloads Discover how to build robust and scalable machine learning systems Explore AI efficiencies that combat climate change This recording of a live event is for you because... You're an ML engineer or data practitioner who wants to use more-efficient algorithms and improve ML model efficiency. You're a data team leader or CDO who wants to proactively reduce the cost and resource use of ML systems and pipelines. You're a product stakeholder who wants to learn more about how ML efficiencies align with business goals. Recommended follow-up: Read Efficient Deep Learning (early release book) Watch Data Structures, Algorithms, and Machine Learning Optimization (video).
    Note: Online resource; title from title details screen (O’Reilly, viewed March 10, 2022)
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