{ lib , stdenv , python , fetchurl , anki }: python.pkgs.buildPythonApplication rec { pname = "mnemosyne"; version = "2.10.1"; src = fetchurl { url = "mirror://sourceforge/project/mnemosyne-proj/mnemosyne/mnemosyne-${version}/Mnemosyne-${version}.tar.gz"; sha256 = "sha256-zI79iuRXb5S0Y87KfdG+HKc0XVNQOAcBR7Zt/OdaBP4="; }; nativeBuildInputs = with python.pkgs; [ pyqtwebengine.wrapQtAppsHook ]; buildInputs = [ anki ]; propagatedBuildInputs = with python.pkgs; [ cheroot cherrypy googletrans gtts matplotlib pyopengl pyqt6 pyqt6-webengine argon2-cffi webob ]; prePatch = '' substituteInPlace setup.py \ --replace '("", ["/usr/local/bin/mplayer"])' "" ''; # No tests/ directory in tarball doCheck = false; postInstall = '' mkdir -p $out/share/applications mv mnemosyne.desktop $out/share/applications ''; dontWrapQtApps = true; makeWrapperArgs = [ "\${qtWrapperArgs[@]}" ]; meta = { homepage = "https://mnemosyne-proj.org/"; description = "Spaced-repetition software"; mainProgram = "mnemosyne"; longDescription = '' The Mnemosyne Project has two aspects: * It's a free flash-card tool which optimizes your learning process. * It's a research project into the nature of long-term memory. We strive to provide a clear, uncluttered piece of software, easy to use and to understand for newbies, but still infinitely customisable through plugins and scripts for power users. ## Efficient learning Mnemosyne uses a sophisticated algorithm to schedule the best time for a card to come up for review. Difficult cards that you tend to forget quickly will be scheduled more often, while Mnemosyne won't waste your time on things you remember well. ## Memory research If you want, anonymous statistics on your learning process can be uploaded to a central server for analysis. This data will be valuable to study the behaviour of our memory over a very long time period. The results will be used to improve the scheduling algorithms behind the software even further. ''; }; }