Difference between revisions of "Algorithm Administration"
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*** [[Excel - Data Analysis]] | *** [[Excel - Data Analysis]] | ||
* [[Hyperparameter]]s | * [[Hyperparameter]]s | ||
| + | * [Automated Machine Learning (AML) - AutoML] | ||
* [[Visualization]] | * [[Visualization]] | ||
* [[Evaluation]] | * [[Evaluation]] | ||
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* [[Git - GitHub and GitLab]] | * [[Git - GitHub and GitLab]] | ||
* [http://www.camelot-mc.com/en/client-services/information-data-management/global-community-for-artificial-intelligence-in-mdm/ Global Community for Artificial Intelligence (AI) in Master Data Management (MDM) | Camelot Management Consultants] | * [http://www.camelot-mc.com/en/client-services/information-data-management/global-community-for-artificial-intelligence-in-mdm/ Global Community for Artificial Intelligence (AI) in Master Data Management (MDM) | Camelot Management Consultants] | ||
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= <span id="Versioning"></span>Versioning = | = <span id="Versioning"></span>Versioning = | ||
| + | * [http://dvc.org/ DVC | DVC.org] | ||
* [http://www.pachyderm.com/ Pachyderm] | * [http://www.pachyderm.com/ Pachyderm] | ||
* [http://www.dataiku.com/ Dataiku] | * [http://www.dataiku.com/ Dataiku] | ||
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| + | <youtube>LQF6vHm_QIY</youtube> | ||
| + | <b>How to manage model and data versions | ||
| + | </b><br>Raj Ramesh Managing data versions and model versions is critical in deploying machine learning models. This is because if you want to re-create the models or go back to fix them, you will need both the data that went into training the model and as well as the model hyperparameters itself. In this video I explained that concept. | ||
| + | Here's what I can do to help you. I speak on the topics of architecture and AI, help you integrate AI into your organization, educate your team on what AI can or cannot do, and make things simple enough that you can take action from your new knowledge. I work with your organization to understand the nuances and challenges that you face, and together we can understand, frame, analyze, and address challenges in a systematic way so you see improvement in your overall business, is aligned with your strategy, and most importantly, you and your organization can incrementally change to transform and thrive in the future. If any of this sounds like something you might need, please reach out to me at dr.raj.ramesh@topsigma.com, and we'll get back in touch within a day. Thanks for watching my videos and for subscribing. www.topsigma.com www.linkedin.com/in/rajramesh | ||
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| + | <youtube>PVo3Wu8ZUFk</youtube> | ||
| + | <b>AutoML with Dataiku: And End-to-End Demo | ||
| + | </b><br>If you're looking to leverage AutoML in your enterprise, this webinar will show you how with one tool, you can easily go from raw data to machine learning model in production using Dataiku's visual AutoML features. Nicolas Omont is a Product Manager at Dataiku. He holds a PhD in Computer Science, and he's been working in operations research and statistics for the past 15 years. | ||
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<b>Alessia Marcolini: Version Control for Data Science | PyData Berlin 2019 | <b>Alessia Marcolini: Version Control for Data Science | PyData Berlin 2019 | ||
</b><br>Track:PyData Are you versioning your Machine Learning project as you would do in a traditional software project? How are you keeping track of changes in your datasets? Recorded at the PyConDE & PyData Berlin 2019 conference. http://pycon.de | </b><br>Track:PyData Are you versioning your Machine Learning project as you would do in a traditional software project? How are you keeping track of changes in your datasets? Recorded at the PyConDE & PyData Berlin 2019 conference. http://pycon.de | ||
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Revision as of 02:30, 19 September 2020
YouTube search... Quora search... ...Google search
- AI Governance
- Data Science
- Managed Vocabularies
- Datasets
- Benchmarks
- Batch Norm(alization) & Standardization
- Data Preprocessing
- Data Encoding
- Data Cleaning
- Feature Exploration/Learning
- Data Interoperability
- Data Augmentation, Data Labeling, and Auto-Tagging
- Imbalanced Data
- Privacy in Data Science
- Bias and Variances
- Excel - Data Analysis
- Data Science
- Hyperparameters
- [Automated Machine Learning (AML) - AutoML]
- Visualization
- Evaluation
- alteryx: Feature Labs, Featuretools
- How can we improve Azure Data Catalog?
- Automate your data lineage
- Benefiting from AI: A different approach to data management is needed
- Git - GitHub and GitLab
- Global Community for Artificial Intelligence (AI) in Master Data Management (MDM) | Camelot Management Consultants
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