DELTA is a deep learning based natural language and speech processing platform.
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Updated
Apr 19, 2024 - Python
DELTA is a deep learning based natural language and speech processing platform.
Potato Disease Classification - Training, Rest APIs, and Frontend to test.
👩🔬 Train and Serve TensorFlow Models at Scale with Kubernetes and Kubeflow on Azure
Adlik: Toolkit for Accelerating Deep Learning Inference
中文NER的那些事儿
tensorflow prediction using c++ api
Free and Open Source alternative to Amazon's Rekognition service. CCExtractor Development | Poor Man's Rekognition
End-to-end image search engine based on the Deep learning techniques.
Examples to server tensorflow models with tensorflow serving
Kafka Streams + Java + gRPC + TensorFlow Serving => Stream Processing combined with RPC / Request-Response
Helmut Hoffer von Ankershoffen experimenting with arm64 based NVIDIA Jetson (Nano and AGX Xavier) edge devices running Kubernetes (K8s) for machine learning (ML) including Jupyter Notebooks, TensorFlow Training and TensorFlow Serving using CUDA for smart IoT.
ClearML - Model-Serving Orchestration and Repository Solution
Deploying Keras models using TensorFlow Serving and Flask
export bert model for serving
MLModelCI is a complete MLOps platform for managing, converting, profiling, and deploying MLaaS (Machine Learning-as-a-Service), bridging the gap between current ML training and serving systems.
A step-by-step tutorial on developing a practical recommendation system (retrieval and ranking) using TensorFlow Recommenders and Keras.
Code and presentation for Strata Model Serving tutorial
A Tutorial for Serving Tensorflow Models using Kubernetes
基于tensorflow & tf-servering & flask 的图像检索
This project demonstrates how to run and save predictions locally using exported tensorflow estimator model
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