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    Explore "machine-learning" with insightful episodes like "Orca 2: Enhancing Reasoning in Smaller Language Models - Example from Benchmarks and Output", "Orca 2: Enhancing Reasoning in Smaller Language Models - Technical Details" and "Can You Open Medical Data (MR, CT, X-Ray) in Python and Find Tumors With AI?! Maybe" from podcasts like ""Programming Tech Brief By HackerNoon", "Programming Tech Brief By HackerNoon" and "Programming Tech Brief By HackerNoon"" and more!

    Episodes (3)

    Orca 2: Enhancing Reasoning in Smaller Language Models - Example from Benchmarks and Output

    Orca 2: Enhancing Reasoning in Smaller Language Models - Example from Benchmarks and Output

    This story was originally published on HackerNoon at: https://hackernoon.com/orca-2-enhancing-reasoning-in-smaller-language-models-example-from-benchmarks-and-output.
    Orca 2 enhances small language models' reasoning by teaching diverse strategies for tasks, outperforming models up to 10x larger in complex benchmarks.
    Check more stories related to programming at: https://hackernoon.com/c/programming. You can also check exclusive content about #language-models, #orca-2, #reasoning-techniques, #machine-learning, #small-models, #imitation-learning, #ai-benchmarks, #model-training, and more.

    This story was written by: @textmodels. Learn more about this writer by checking @textmodels's about page, and for more stories, please visit hackernoon.com.

    Teaching Orca 2 to be a Cautious Reasoner is based on the work of Arindam Mitra, Luciano Del Corro, Shweti Mahajan, Andres Codas, Guoqing Zheng, Corby Rosset, Hamed Khanpour, and Ahmed Awadall.

    Orca 2: Enhancing Reasoning in Smaller Language Models - Technical Details

    Orca 2: Enhancing Reasoning in Smaller Language Models - Technical Details

    This story was originally published on HackerNoon at: https://hackernoon.com/orca-2-enhancing-reasoning-in-smaller-language-models-technical-details.
    Orca 2 enhances small language models' reasoning by teaching diverse strategies for tasks, outperforming models up to 10x larger in complex benchmarks.
    Check more stories related to programming at: https://hackernoon.com/c/programming. You can also check exclusive content about #language-models, #orca-2, #reasoning-techniques, #machine-learning, #small-models, #imitation-learning, #ai-benchmarks, #model-training, and more.

    This story was written by: @textmodels. Learn more about this writer by checking @textmodels's about page, and for more stories, please visit hackernoon.com.

    The Orca 2 dataset has four main sources:FLAN: Our main source of prompts for synthetic data generation is the FLAN-v2 Collection 33, which consists of five sub-collections. Following Orca 1 42, we consider tasks from only CoT, NiV2, T0, Flan 2021 and Dialogue. Some of the tasks are associated with an associated answer. For the Cautious Reasoning dataset we selected ~602 zero-shot user queries from the split of 1448 high quality tasks out of 1913.

    Can You Open Medical Data (MR, CT, X-Ray) in Python and Find Tumors With AI?! Maybe

    Can You Open Medical Data (MR, CT, X-Ray) in Python and Find Tumors With AI?! Maybe

    This story was originally published on HackerNoon at: https://hackernoon.com/can-you-open-medical-data-mr-ct-x-ray-in-python-and-find-tumors-with-ai-maybe.
    How to access medical data in DICOM format (MR, CT, X-Ray) from Python
    Check more stories related to programming at: https://hackernoon.com/c/programming. You can also check exclusive content about #programming, #python, #medical-technology, #artificial-intelligence, #data-science, #machine-learning, #health-tech, #hackernoon-top-story, #hackernoon-es, #hackernoon-hi, #hackernoon-zh, #hackernoon-fr, #hackernoon-bn, #hackernoon-ru, #hackernoon-vi, #hackernoon-pt, #hackernoon-ja, #hackernoon-de, #hackernoon-ko, #hackernoon-tr, and more.

    This story was written by: @thebojda. Learn more about this writer by checking @thebojda's about page, and for more stories, please visit hackernoon.com.

    When a programmer hears about processing medical data, they might think it's something serious, something that only universities and research institutes can handle (at least, that's what I thought). As you can see, we're talking about simple grayscale images, which are very easy to process and ideal for things like neural network processing.