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If you do have a version of the boost libraries pre-installed and you want to use your own version, be careful when you build the code.
#UNINSTALL PYTHON 2.7 MAC 10.12 INSTALL#
This may require that you install a sqlite3-dev package. This probably means that you need to install the python-dev package (or whatever it’s called) for your linux distribution. The following are required if you are planning on using the Python wrappers if your linux distribution doesn’t have an appropriate package. Visual Studio 2015: it may be that older versions of the compiler also work, but we haven’t tested them.Ĭmake. It will automatically be disabled when this older compiler is used.Ĭlang v3.9: it may be that older versions of the compiler also work, but we haven’t tested them.
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G++ v4.8: though note that the SLN parser code cannot be built with v4.8. This means that the compilers used to build it cannot be completely ancient. Starting with the 2018_03 release, the RDKit core C++ code is written in modern C++ for this release that means C++11. Thanks to Gianluca Sforna’s work, binary RPMs for the RDKit are now part of the official Fedora repositories:Įddie Cao has produced a homebrew formula that can be used to easily build the RDKit Building from Source ¶ $ sudo apt-get install python-rdkit librdkit1 rdkit-data
#UNINSTALL PYTHON 2.7 MAC 10.12 HOW TO#
How to install RDKit with Conda ¶Ĭreating a new conda environment with the RDKit installed requires one single command similar to the following:: The conda source code repository is available on github and additional documentation is provided by the project website. A possible (but a bit more complex to use) alternative is provided with the smaller and more self-contained Miniconda. The easiest way to get Conda is having it installed as part of the Anaconda Python distribution. It has several analogies with pip and virtualenv, but it is designed to be more “python-agnostic” and more suitable for the distribution of binary packages and their dependencies. It supports the packaging and distribution of software components, and manages their installation inside isolated execution environments. Cross-platform under anaconda python (fastest install) ¶ Introduction to anaconda ¶Ĭonda is an open-source, cross-platform, software package manager. Below a number of installation recipes is presented, with varying degree of complexity.