What strategies can you use to reduce data errors caused by human input in Machine Learning?
Data errors caused by human input can affect the quality and performance of your machine learning models. Human input can introduce noise, bias, inconsistency, or missing values in your data, which can lead to inaccurate or misleading results. To reduce data errors caused by human input, you need to apply some strategies to clean, validate, and transform your data before feeding it to your machine learning algorithms. Here are some of the strategies you can use to reduce data errors caused by human input in machine learning.
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Abhirami V.SSenior Machine Learning Engineer at Conga | IIT Jammu | Generative AI | Quantum Computing Researcher
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Vijayant MehlaFinancial Risk Engineer | Goldman Sachs
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Shreya KhandelwalLinkedIn Top Voices | Data Scientist @IBM | GenAI | LLMs | AI & Analytics | 10 x Multi- Hyperscale-Cloud Certified