WelcomeOverviewMachine learning typesMachine learning algorithmsStatistical machine learningLinear algebra for machine learningData visualization for machine learningUncertainty quantificationBias variance tradeoffBayesian StatisticsSingular value decompositionOverviewFeature selectionFeature extractionVector embeddingLatent spacePrincipal component analysisLinear discriminant analysisUpsamplingDownsamplingSynthetic dataData leakageOverviewLinear regressionLasso regressionRidge regressionState space modelTime seriesAutoregressive modelOverviewDecision treesK-nearest neighbors (KNNs)Naive bayesRandom forestSupport vector machineLogistic regressionOverviewBoostingBaggingGradient boostingGradient boosting classifierOverviewTransfer learningOverviewOverviewK means clusteringHierarchical clusteringA priori algorithmGaussian mixture modelAnomaly detectionOverviewCollaborative filteringContent based filteringOverviewReinforcement learning human feedbackDeep reinforcement learningOverviewOverviewBackpropagationEncoder-decoder modelRecurrent neural networksLong short-term memory (LSTM)Convolutional neural networksOverviewAttention mechanismGrouped query attentionPositional encodingAutoencoderMamba modelGraph neural networkOverviewGenerative modelGenerative AI vs. predictive AIOverviewReasoning modelsSmall language modelsInstruction tuningLLM parametersLLM temperatureLLM benchmarksLLM customizationLLM alignmentTutorial: Multilingual LLM agentDiffusion modelsVariational autoencoder (VAE)Generative adversarial networks (GANs)OverviewVision language modelsTutorial: Build an AI stylistTutorial: Multimodal AI queries using LlamaTutorial: Multimodal AI queries using PixtralTutorial: Automatic podcast transcription with GraniteTutorial: PPT AI image analysis answering systemOverviewGraphRAGTutorial: Build a multimodal RAG system with Docling and GraniteTutorial: Evaluate RAG pipline using RagasTutorial: RAG chunking strategiesTutorial: Graph RAG using knowledge graphsTutorial: Inference scaling to improve multimodal RAGOverviewVibe codingVisit the 2025 Guide to AI AgentsOverviewLLM trainingLoss functionTraining dataModel parametersOverviewGradient descentStochastic gradient descentHyperparameter tuningLearning rateOverviewParameter efficient fine tuning (PEFT)LoRATutorial: Fine tuning Granite model with LoRARegularizationFoundation modelsOverfittingUnderfittingFew shot learningZero shot learningKnowledge distillationMeta learningData augmentationCatastrophic forgettingOverviewScikit-learnXGboostPyTorchOverviewAI lifecyleAI inferenceModel deploymentMachine learning pipelineData labelingModel risk managementModel driftAutoMLModel selectionFederated learningDistributed machine learningAI stackOverviewNatural language understandingOverviewSentiment analysisTutorial: Spam text classifier with PyTorchMachine translationOverviewInformation retrievalInformation extractionTopic modelingLatent semantic analysisLatent Dirichlet AllocationNamed entity recognitionWord embeddingsBag of wordsIntelligent searchSpeech recognitionStemming and lemmatizationText summarizationConversational AIConversational analyticsNatural language generationOverviewImage classificationObject detectionInstance segmentationSemantic segmentationOptical character recognitionImage recognitionVisual inspectionDave Bergmannartificial intelligenceMachine learningdata sciencelinear regressionpseudocodeAI modeltrain a machine learning modelmodel’s parametersoverfittingIBM Privacy StatementSupervised learningground truth,Unsupervised learningReinforcement learning (RL)semi-supervised learningself-supervised learninglarge language models (LLMs)“pre-training”fine-tunedWatch all episodes of Mixture of Expertsmodel parametersloss functionClassificationLinear regressionDecision treeState space models (SSMs)natural language processing (NLP).Naïve BayesBayes’ TheoremLogistic regressionsigmoid functionK-nearest neighbor (KNN)vector embedding spaceSupport vector machines (SVMs)semi-supervised learningself-supervised learningautoencoderslarge language models (LLMs)computer visionmultimodal AIUnsupervised machine learninghyperparameter tuningClustering algorithmsanomaly detectionK-means clusteringapriori algorithmDimensionality reductionlatent spacePrincipal component analysis (PCA)Autoencodersensemble learningReinforcement learningreasoning modelsreinforcement learning from human feedback (RLHF)Ensemble learningBoosting algorithmsXGBoostmachine learning libraryBaggingrandom forestknowledge distillationDeep learningmachine learningneural networksgenerative AIartificial intelligencefeature engineeringmachine learningdeep learningrestricted Boltzmann machinesmodel trainingimage segmentationconvolutionalregularizationEbook
Data science and MLOps for data leaders
Join forces with other leaders to drive the three essential pillars of MLOps and trustworthy AI: trust in data, trust in models and trust in processes.
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Learn fundamental concepts and build your skills with hands-on labs, courses, guided projects, trials and more.
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Unlock the power of generative AI + ML
Learn how to confidently incorporate generative AI and machine learning into your business.
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Machine learning explained
Techsplainers by IBM breaks down the essentials of machine learning, from key concepts to real‑world use cases. Clear, quick episodes help you learn the fundamentals fast.
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Put AI to work: Driving ROI with gen AI
Want to get a better return on your AI investments? Learn how scaling gen AI in key areas drives change by helping your best minds build and deliver innovative new solutions.
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How to choose the right foundation model
Learn how to select the most suitable AI foundation model for your use case.
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Explore IBM Granite
IBM® Granite® is our family of open, performant and trusted AI models, tailored for business and optimized to scale your AI applications. Explore language, code, time series and guardrail options.
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How to thrive in this new era of AI with trust and confidence
Dive into the 3 critical elements of a strong AI strategy: creating a competitive edge, scaling AI across the business and advancing trustworthy AI.
Read the guideExplore watsonx OrchestrateExplore AI development toolsExplore AI servicesExplore watsonx OrchestrateExplore watsonx.ai“Energy-Based Self-Supervised Learning,”“CHARM: An Efficient Algorithm for Closed Itemset Mining,”“Online Association Rule Mining,”“Semi-Supervised Learning with Ladder Networks,”“Kolmogorov’s Mapping Neural Network Existence Theorem,”“Multilayer Feedforward Networks with a Non-Polynomial Activation Function Can Approximate Any Function,”
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