#mlworkflow search results
Data cleaning isn’t glamorous, but it's 80% of the job. Fix these rookie errors and your models will thank you later. #DataCleaning #datascience #mlworkflow #datapreprocessing #zell #MachineLearning #dataquality

7/ If you care about performance, FastSet isn’t optional—it’s essential. Built by @Pi_Squared_Pi2. Used by people who want results. #FastSet #MLworkflow #AItools #FeatureEngineerin
The development workflow is the same as 20 years ago. Your expensive GPUs stay idle, and complex workflows for more compute. Learn why this happens and how to fix that: velda.io/blog/why-stuck… #cloudcomputing #mlworkflow #gpu #cloudcost #mlplatform #ai #mlinfra #costsaving #ai
In practice, data preparation and cleaning often consume up to 80% of a machine learning project’s timeline. Model development is only a fraction of the work — data is the foundation. #DataScience #MLWorkflow
Manual + KFold + StratifiedKFold on Iris & Digits Generalization power = Cross-Validation > Train-Test Used cross_val_score for clean validation Generalization power = Cross-Validation > Train-Test #MachineLearning #MLWorkflow #BiasVariance #CrossValidation


Export the winner Deploy like a boss No manual tweaking. No wasted cycles. Just clean, optimized features—ready to roll. Props to @Pi_Squared_Pi2 for building a beast. 🧠💥 #FastSet #MLworkflow #AItools
⚡️ Why is FastSet a game-changer for data scientists? Let’s break down the key benefits in this thread 👇 @Pi_Squared_Pi2 #FastSet #MLworkflow #DataScience
I rely on Perplexity for deep research and Comet for managing my ML projects. Both save time and keep my workflow organized. Highly recommended! #AIDaily #MLWorkflow
🤖 Master the Machine Learning Workflow! From data acquisition to continuous monitoring—automate your ML process for better accuracy and efficiency. 👉 Explore the full workflow now! #MachineLearning #MLWorkflow #DataScience #AI #Automation #TechSolutions #ML

Jaiganesh Prabhakaran shares his great agenda for today's talk! #MLOpsSalon #MLWorkflow #Kubeflow #ModelDB

Focus on results, not grunt work Athina AI streamlines the AI development process, letting your team focus on what matters—creating impact. #AItools #MLworkflow 🔗 buff.ly/41Plo1t

🔍 How does an ML model go from raw data to real-world impact? Let me take you on a 10-step journey — from idea to deployment! 🚀 This is the real workflow Data Scientists & ML Engineers follow. 🧵👇 #MLWorkflow #DataScience
🎥 Have you seen MLT's latest Data and Analytics video with Wilco van Ginkel? Click the link to view 🔗youtube.com/watch?v=Lua8_2… #MachineLearning #MLworkflow

🧠 From Data to Deployment – Here’s how AI Magpie builds smart ML solutions step-by-step: 📊 Data Collection → Preprocessing → Model → Evaluation → Training → Deployment 🔗 aimagpie.com #MachineLearning #AI #MLWorkflow #SmartSolutions #AIMagpie #AIinBusiness

Take this FREE on-demand course – learn the basic concepts of #AI and #ML and how to build ML projects that maximize business results. #MLworkflow hpe.to/6014H9vTn

When reducing data dimensionality, what’s your go-to technique? 🔘 PCA 🔘 Feature Selection (e.g. RFE, SelectKBest) 🔘 Autoencoders 🔘 Depends on the dataset Vote & comment why 👇 #DataPreprocessing #MLWorkflow #PCA
The next @LFAI_Foundation ML Workflow & InterOp Committee meeting is next week. Join the mail list here: bddy.me/31qEZW2 and visit the wiki to learn more about how to participate: bddy.me/3gz8720 #mlworkflow #LFAI_Foundation #AI #ML #DL @linuxfoundation

6. Tools & Languages Wetin people dey use build ML: – Python (King for ML work) – Libraries: scikit-learn, TensorFlow, PyTorch – Data fit come from: CSV, Excel, database, web scraping #Python4AI #TechTools #MLWorkflow
In practice, data preparation and cleaning often consume up to 80% of a machine learning project’s timeline. Model development is only a fraction of the work — data is the foundation. #DataScience #MLWorkflow
7/ If you care about performance, FastSet isn’t optional—it’s essential. Built by @Pi_Squared_Pi2. Used by people who want results. #FastSet #MLworkflow #AItools #FeatureEngineerin
Export the winner Deploy like a boss No manual tweaking. No wasted cycles. Just clean, optimized features—ready to roll. Props to @Pi_Squared_Pi2 for building a beast. 🧠💥 #FastSet #MLworkflow #AItools
Data cleaning isn’t glamorous, but it's 80% of the job. Fix these rookie errors and your models will thank you later. #DataCleaning #datascience #mlworkflow #datapreprocessing #zell #MachineLearning #dataquality

⚡️ Why is FastSet a game-changer for data scientists? Let’s break down the key benefits in this thread 👇 @Pi_Squared_Pi2 #FastSet #MLworkflow #DataScience
I rely on Perplexity for deep research and Comet for managing my ML projects. Both save time and keep my workflow organized. Highly recommended! #AIDaily #MLWorkflow
Manual + KFold + StratifiedKFold on Iris & Digits Generalization power = Cross-Validation > Train-Test Used cross_val_score for clean validation Generalization power = Cross-Validation > Train-Test #MachineLearning #MLWorkflow #BiasVariance #CrossValidation


🧠 From Data to Deployment – Here’s how AI Magpie builds smart ML solutions step-by-step: 📊 Data Collection → Preprocessing → Model → Evaluation → Training → Deployment 🔗 aimagpie.com #MachineLearning #AI #MLWorkflow #SmartSolutions #AIMagpie #AIinBusiness

Training an AI model involves data, algorithms, and iteration. This guide explains the full process clearly. #TrainAI #MLworkflow #SmartModels andrewroche.ai/ai-model-train…
💡 Plus: a full Titanic dataset case study, clean Python code, and tips on avoiding common pitfalls. 🚀 Dive in: buff.ly/0yatT3e #PythonDataScience #MLworkflow #EDA
When reducing data dimensionality, what’s your go-to technique? 🔘 PCA 🔘 Feature Selection (e.g. RFE, SelectKBest) 🔘 Autoencoders 🔘 Depends on the dataset Vote & comment why 👇 #DataPreprocessing #MLWorkflow #PCA
Tired of complex Databricks deployments? Learn how Databricks Asset Bundles (DABs) simplify workflows with version control & CI/CD. Practical tips inside 🔗 okt.to/ztX7mO. #Databricks #DataEngineering #MLWorkflow #Xebia

PHP works great with APIs. Train your model in Python, call it from PHP. Or use services like TensorFlow.js or OpenAI APIs to make your PHP apps AI-powered without full ML stacks. #PHP #MLworkflow
Behind every AI is a training process—feeding it data, adjusting outputs, and fine-tuning performance. Learn how supervised, unsupervised, and reinforcement learning shape today’s smartest models. #ModelTraining #AIDevelopment #MLWorkflow andrewroche.ai/ai-model-train…
Data cleaning isn’t glamorous, but it's 80% of the job. Fix these rookie errors and your models will thank you later. #DataCleaning #datascience #mlworkflow #datapreprocessing #zell #MachineLearning #dataquality

🤖 Master the Machine Learning Workflow! From data acquisition to continuous monitoring—automate your ML process for better accuracy and efficiency. 👉 Explore the full workflow now! #MachineLearning #MLWorkflow #DataScience #AI #Automation #TechSolutions #ML

Take this FREE on-demand course – learn the basic concepts of #AI and #ML and how to build ML projects that maximize business results. #MLworkflow hpe.to/6014H9vTn

Manual + KFold + StratifiedKFold on Iris & Digits Generalization power = Cross-Validation > Train-Test Used cross_val_score for clean validation Generalization power = Cross-Validation > Train-Test #MachineLearning #MLWorkflow #BiasVariance #CrossValidation


Focus on results, not grunt work Athina AI streamlines the AI development process, letting your team focus on what matters—creating impact. #AItools #MLworkflow 🔗 buff.ly/41Plo1t

Jaiganesh Prabhakaran shares his great agenda for today's talk! #MLOpsSalon #MLWorkflow #Kubeflow #ModelDB

The next @LFAI_Foundation ML Workflow & InterOp Committee meeting is next week. Join the mail list here: bddy.me/31qEZW2 and visit the wiki to learn more about how to participate: bddy.me/3gz8720 #mlworkflow #LFAI_Foundation #AI #ML #DL @linuxfoundation

🧠 From Data to Deployment – Here’s how AI Magpie builds smart ML solutions step-by-step: 📊 Data Collection → Preprocessing → Model → Evaluation → Training → Deployment 🔗 aimagpie.com #MachineLearning #AI #MLWorkflow #SmartSolutions #AIMagpie #AIinBusiness

#OptimalFlow - "Pipeline Cluster Traversal Experiments" #MLWorkflow x #EnsembleLearning as #DSL and runtime for #FeatureSelection & #ModelSelection #ExperimentTracking #AutoML #MachineLearningEngineering - beyond "#datapipeline" - beyond "#MLOps"




End-to-end OptimalFlow Automated Machine Learning Tutorial with Real Projects — Formula E Laps… by Tony Dong buff.ly/2DwH2Ph
Struggling to manage your #MLLifecycle? #MLOps ensures smooth, scalable & efficient #MLWorkflow. Learn more: tenupsoft.com/blog/mlops-ML-… Streamline your #ML processes with TenUp

🎥 Have you seen MLT's latest Data and Analytics video with Wilco van Ginkel? Click the link to view 🔗youtube.com/watch?v=Lua8_2… #MachineLearning #MLworkflow

Tired of complex Databricks deployments? Learn how Databricks Asset Bundles (DABs) simplify workflows with version control & CI/CD. Practical tips inside 🔗 okt.to/ztX7mO. #Databricks #DataEngineering #MLWorkflow #Xebia

We are pleased to welcome Jaiganesh Prabhakaran, Machine Learning Engineer, Data & Machine Learning at @zulily. He's here to discuss "Accelerating ML Workflow with Kubeflow, ModelDB, and Feast" #MLOpsSalon #MLWorkflow #Kubeflow #ModelDB

#ApacheSubmarine - #experimentTracking #MLWorkflow abstractions / #DSL and runtime over "#MLOps" (#Docker, #Kubernetes, etc) with focus on #modelTraining github.com/apache/submari… #MachineLearningEngineering



"target-based encoders with Double Validation: #Catboost Encoder, James-Stein Encoder, and Target Encoder" robust but "target leakage, model overfits the training data => unreliable validation and lower test scores" #MLworkflow #modelValidation #MachineLearningEngineering

“Benchmarking Categorical Encoders” by Denis Vorotyntsev link.medium.com/RNdfuNzdq1
Navigate the journey of a typical ML project from data collection to deployment. Learn best practices and crucial steps to ensure accurate predictions. Read more: constantlythinking.com/posts/from-dat… #MachineLearning #MLWorkflow

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