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            "name": "R-partykit",
            "description": "Toolkit for recursive partytioning"
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            "name": "R-pastecs",
            "description": "Package for analysis of space-time ecological series"
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            "name": "R-PASWR",
            "description": "Probability and Statistics with R"
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            "name": "R-patchwork",
            "description": "Composer of ggplots"
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            "name": "R-patrick",
            "description": "Parameterized unit testing"
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            "name": "R-pbANOVA",
            "description": "Parametric Bootstrap for ANOVA models"
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            "name": "R-pbapply",
            "description": "Adding progress bar to *apply functions"
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        {
            "name": "R-pbdMPI",
            "description": "Interface to MPI"
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        {
            "name": "R-pbdSLAP",
            "description": "ScaLAPACK/PBLAS/BLACS/LAPACK library for use with pbdR"
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        {
            "name": "R-pbdZMQ",
            "description": "Interface to ZeroMQ"
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            "name": "R-pbivnorm",
            "description": "Vectorized bivariate normal CDF"
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        {
            "name": "R-pbkrtest",
            "description": "Parametric Bootstrap, Kenward–Roger and Satterthwaite based methods for test in mixed models"
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        {
            "name": "R-pbmcapply",
            "description": "Tracking the progress of mc*pply with progress bar"
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            "name": "R-pBrackets",
            "description": "Plot brackets"
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            "name": "R-pbs",
            "description": "Periodic b-splines"
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            "name": "R-pbv",
            "description": "Probabilities for Bivariate Normal distribution"
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            "name": "R-pcadapt",
            "description": "Fast principal component analysis for outlier detection"
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            "name": "R-pcalg",
            "description": "Methods for graphical models and causal inference"
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            "name": "R-pcaMethods",
            "description": "Collection of PCA methods"
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            "name": "R-PCAmixdata",
            "description": "Multivariate analysis of mixed data"
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            "name": "R-pcaPP",
            "description": "Robust PCA by Projection Pursuit"
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            "name": "R-pcFactorStan",
            "description": "Stan models for the paired comparison factor model"
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            "name": "R-pcgen",
            "description": "Reconstruction of causal networks for data with random genetic effects"
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            "description": "Bayesian network learning with the PCHC"
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            "name": "R-PCICt",
            "description": "Implementation of POSIXct work-alike for 365- and 360-day calendars"
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            "name": "R-pcLasso",
            "description": "Principal Components Lasso"
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            "name": "R-pcnetmeta",
            "description": "Bayesian arm-based network meta-analysis for datasets with binary, continuous and count outcomes"
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        {
            "name": "R-PCovR",
            "description": "Principal covariates regression"
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            "name": "R-pcse",
            "description": "Panel-corrected standard error estimation in R"
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            "name": "R-pcts",
            "description": "Periodically correlated and periodically integrated time series"
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            "name": "R-pdc",
            "description": "Permutation Distribution Clustering"
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        {
            "name": "R-pder",
            "description": "Panel Data Econometrics with R"
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            "name": "R-pdfCluster",
            "description": "Cluster analysis via non-parametric density estimation"
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            "name": "R-pdfetch",
            "description": "Fetch economic and financial time series data"
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            "name": "R-pdftools",
            "description": "Text extraction, rendering and converting of PDF documents"
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            "name": "R-pdist",
            "description": "Partitioned distance function"
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            "name": "R-pdp",
            "description": "Partial Dependence Plots"
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        {
            "name": "R-pdqr",
            "description": "Create, transform and summarize custom random variables with distribution functions"
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            "name": "R-PDQutils",
            "description": "PDQ functions via Gram Charlier, Edgeworth and Cornish Fisher approximations"
        },
        {
            "name": "R-pdR",
            "description": "Threshold model and unit root tests in cross-section and time series data"
        },
        {
            "name": "R-PDSCE",
            "description": "Positive Definite Sparse Covariance Estimators"
        },
        {
            "name": "R-PDShiny",
            "description": "Probability Distribution Shiny"
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        {
            "name": "R-PeakError",
            "description": "Compute the label error of peak calls"
        },
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            "name": "R-PeakSegDisk",
            "description": "Disk-based constrained change-point detection"
        },
        {
            "name": "R-PeakSegDP",
            "description": "Dynamic programming algorithm for peak detection in ChIP-Seq data"
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        {
            "name": "R-PeakSegJoint",
            "description": "Joint peak detection in several ChIP-Seq samples"
        },
        {
            "name": "R-PeakSegOptimal",
            "description": "Optimal segmentation subject to up-down constraints"
        },
        {
            "name": "R-PearsonDS",
            "description": "Pearson Distribution System"
        },
        {
            "name": "R-pec",
            "description": "Prediction error curves for risk prediction models in survival analysis"
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            "name": "R-pema",
            "description": "Penalized Meta-Analysis"
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