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The AI Process

Towards AI

Last Updated on August 17, 2023 by Editorial Team Author(s): Jeff Holmes MS MSCS Originally published on Towards AI. Jason Leung on Unsplash AI is still considered a relatively new field, so there are really no guides or standards such as SWEBOK. 85% or more of AI projects fail [1][2]. 85% or more of AI projects fail [1][2].

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What is Alteryx certification: A comprehensive guide

Pickl AI

Alteryx’s Capabilities Data Blending: Effortlessly combine data from multiple sources. Predictive Analytics: Leverage machine learning algorithms for accurate predictions. This makes Alteryx an indispensable tool for businesses aiming to glean insights and steer their decisions based on robust data.

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Predicting Heart Failure Survival with Machine Learning Models — Part II

Towards AI

Last Updated on July 19, 2023 by Editorial Team Author(s): Anirudh Chandra Originally published on Towards AI. In our exercise, we will try to deal with this imbalance by — Using a stratified k-fold cross-validation technique to make sure our model’s aggregate metrics are not too optimistic (meaning: too good to be true!)

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Common Pitfalls in Computer Vision Projects

DagsHub

Computer vision is a subfield of artificial intelligence (AI) that teaches computers to see, observe, and interpret visual cues in the world. Using various algorithms and tools, a computer vision model can extract valuable information and make decisions by analyzing digital content like images and videos.

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How to Choose MLOps Tools: In-Depth Guide for 2024

DagsHub

A traditional machine learning (ML) pipeline is a collection of various stages that include data collection, data preparation, model training and evaluation, hyperparameter tuning (if needed), model deployment and scaling, monitoring, security and compliance, and CI/CD. It is designed to leverage hardware acceleration (e.g.,

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How to Use Machine Learning (ML) for Time Series Forecasting?—?NIX United

Mlearning.ai

All the previously, recently, and currently collected data is used as input for time series forecasting where future trends, seasonal changes, irregularities, and such are elaborated based on complex math-driven algorithms. This results in quite efficient sales data predictions. In its core, lie gradient-boosted decision trees.

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An Introduction to Exponential Smoothing for Time Series Forecasting

Pickl AI

You can use techniques like grid search, cross-validation, or optimization algorithms to find the best parameter values that minimize the forecast error. It’s important to consider the specific characteristics of your data and the goals of your forecasting project when configuring the model.