Difference between revisions of "Checklists"
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<b>Common mistakes made in Machine Learning Models | <b>Common mistakes made in Machine Learning Models | ||
| − | </b><br>Analytics University You will learn the common mistake people make while building machine learning models. Machine learning models are easy to build but need attention to details. | + | </b><br>[[Analytics]] University You will learn the common mistake people make while building machine learning models. Machine learning models are easy to build but need attention to details. |
| − | The common mistakes could be: 1- taking Default Loss Function for granted, 2- Using one Algorithm / Method For All Problems: 3- Ignoring Outliers: 4- No Proper Dealing With Cyclical Features, 5- L1/L2 Regularisation Without Standardization, 6- Interpreting Coefficients From Linear or Logistic Regressions as features importance. Analytics Study Pack : https://analyticuniversity.com/ | + | The common mistakes could be: 1- taking Default Loss Function for granted, 2- Using one Algorithm / Method For All Problems: 3- Ignoring Outliers: 4- No Proper Dealing With Cyclical Features, 5- L1/L2 Regularisation Without Standardization, 6- Interpreting Coefficients From Linear or Logistic Regressions as features importance. [[Analytics]] Study Pack : https://analyticuniversity.com/ |
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Revision as of 07:55, 9 July 2023
YouTube search... ... Quora search ...Google search ...Google News ...Bing News
- AI Solver
- Strategy & Tactics ... Project Management ... Best Practices ... Checklists ... Project Check-in ... Evaluation ... Measures
- Risk, Compliance and Regulation ... Ethics ... Privacy ... Law ... AI Governance ... AI Verification and Validation
- Data Science ... Governance ... Preprocessing ... Exploration ... Interoperability ... Master Data Management (MDM) ... Bias and Variances ... Benchmarks ... Datasets
- Case Studies
- ML Design Guides | Google ... People + AI Guidebook is a set of methods, best practices and examples for designing with AI
- Co-Designing Checklists to Understand Organizational Challenges and Opportunities around Fairness in AI | M. Madaio, L. Stark, J. Vaughan, and H. Wallach
Lists...
- The Essential Machine Learning Project Checklist | |Patrick De Guzman - Towards Data Science ...To guide you step-by-step from raw data to a working ML model.
- ML project checklist | Subhojit Banerjee - Medium
- The Machine Learning Project Checklist | Matthew Mayo
- A Checklist for working with Complex ML Problems | Sanchit Aggarwal
- Data project checklist | fast.ai
- 5 Questions To Ask Before Putting AI Into Practice And A Checklist For Success | Acquisition International
- Machine Learning cheat sheets – Compilation 2020 | RoboticsBiz
- Cheat Sheets for AI, Neural Networks, Machine Learning, Deep Learning & Big Data | Stefan Kojouharov - BecomingHuman.AI - Medium ...GitHub ...PDF
- The complete list to make you an AI Pro | Rita Dass - Predict - Medium
- How to Use a Machine Learning Checklist to Get Accurate Predictions, Reliably (even if you are a beginner) | Jason Brownlee
- Machine Learning project checklist | IC-Unicamp
- Machine Learning: Are You Ready? A 7-Part Checklist | Kimberly Nevala
- New code completeness checklist and reproducibility updates | Facebook AI
- Organizing machine learning projects: project management guidelines | Jeremy Jordan
Common Mistakes
YouTube search... ...Google search
- 12 predictive analytics screw-ups | Robert L. Mitchell
- Ten quick tips for machine learning in computational biology | Davide Chicco
- Top 6 errors novice machine learning engineers make | Christopher Dossman
- 5 machine learning mistakes – and how to avoid them | SAS
- 13 Common Mistakes Amateur Data Scientists Make and How to Avoid Them? | Pranav Dar - Analytics Vidhya
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AI Failures
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