# TensorFlow is much easier to install using Anaconda, especially # on Windows or when using a GPU. Please see the installation # instructions in INSTALL.md ##### Core scientific packages jupyter==1.0.0 matplotlib==3.4.3 numpy==1.19.5 pandas==1.3.3 scipy==1.7.1 ##### Machine Learning packages scikit-learn==1.0 # Optional: the XGBoost library is only used in chapter 7 xgboost==1.4.2 # Optional: the transformers library is only using in chapter 16 transformers==4.11.3 ##### TensorFlow-related packages # If you have a TF-compatible GPU and you want to enable GPU support, then # replace tensorflow-serving-api with tensorflow-serving-api-gpu. # Your GPU must have CUDA Compute Capability 3.5 or higher support, and # you must install CUDA, cuDNN and more: see tensorflow.org for the detailed # installation instructions. tensorflow==2.6.0 # Optional: the TF Serving API library is just needed for chapter 19. tensorflow-serving-api==2.6.0 # or tensorflow-serving-api-gpu if gpu tensorboard==2.6.0 tensorboard-plugin-profile==2.5.0 tensorflow-datasets==4.4.0 tensorflow-hub==0.12.0 tensorflow-probability==0.14.1 # Optional: only used in chapter 13. # NOT AVAILABLE ON WINDOWS tfx==1.3.0 # Optional: only used in chapter 16. # NOT AVAILABLE ON WINDOWS tensorflow-addons==0.14.0 ##### Reinforcement Learning library (chapter 18) # There are a few dependencies you need to install first, check out: # https://github.com/openai/gym#installing-everything gym[Box2D]==0.21.0 atari-py==0.2.5 # On Windows, install atari_py using: # pip install --no-index -f https://github.com/Kojoley/atari-py/releases atari_py tf-agents==0.10.0 ##### Image manipulation Pillow==8.3.2 graphviz==0.17 opencv-python==4.5.3.56 pyglet==1.5.21 #pyvirtualdisplay # needed in chapter 16, if on a headless server # (i.e., without screen, e.g., Colab or VM) ##### Additional utilities # Efficient jobs (caching, parallelism, persistence) joblib==0.14.1 # Easy http requests requests==2.26.0 # Nice utility to diff Jupyter Notebooks. nbdime==3.1.0 # May be useful with Pandas for complex "where" clauses (e.g., Pandas # tutorial). numexpr==2.7.3 # Optional: these libraries can be useful in the classification chapter, # exercise 4. nltk==3.6.3 urlextract==1.4.0 # Optional: these libraries are only used in chapter 16 ftfy==6.0.3 # Optional: tqdm displays nice progress bars, ipywidgets for tqdm's notebook support tqdm==4.62.3 ipywidgets==7.6.5