Master advanced edge ai concepts with expert-level content and cutting-edge techniques.
Advanced topics may require specialized math
Expert-level skills in relevant technologies
Transformers, explained: Understand the model behind GPT, BERT, and T5
AdvancedNatural Language Processing Specialization
AdvancedStatistical Learning
AdvancedState-of-the-Art Machine Learning Papers Implementation
AdvancedDeploying TinyML
IntermediateDeep learning using Tensorflow Lite on Raspberry Pi
IntermediateTransformers, explained: Understand the model behind GPT, BERT, and T5
AdvancedNatural Language Processing Specialization
AdvancedStatistical Learning
AdvancedState-of-the-Art Machine Learning Papers Implementation
AdvancedDeploying TinyML
IntermediateDeep learning using Tensorflow Lite on Raspberry Pi
IntermediateFollow these courses in order to complete the learning path. Click on any course to enroll.
Learn Transformers, explained: Understand the model behind GPT, BERT, and T5
Complete natural language processing specialization covering transformers, attention mechanisms, and modern NLP techniques.
State-of-the-Art Machine Learning Papers Implementation
As a key component of the TinyML Professional Certificate, this course offers hands-on experience in deploying machine learning models on small embedded devices. Students learn to program in TensorFlow Lite for Microcontrollers, write the necessary code, and deploy their models to a tiny microcontroller. The course utilizes a TinyML Program Kit that includes an Arduino board for practical projects.
Course Workflow:This course is focused on Embedded Deep learning in Python . Raspberry PI 4 is utilized as a main hardware and we will be building practical projects with custom data .We will start with trigonometric functions approximation . In which we will generate random data and produce a model for Sin function approximation Next is a calculator that takes images as input and builds up an equation and produces a result .This Computer vision based project is going to be using convolution network architecture for Categorical classification Another amazing project is focused on convolution network but the data is custom voice recordings . We will involve a little bit of electronics to show the output by controlling our multiple LE Ds using own voice .Unique learning point in this course is Post Quantization applied on TensorFlow models trained on Google Colab . Reducing size of models to 3 times and increasing inferencing speed up to 0.03 sec per input . Sections :Non-Linear Function Approximation Visual Calculator Custom Voice Controlled Led Outcomes After this Course : You can create Deep Learning Projects on Embedded Hardware Convert your models into TensorFlow Lite models Speed up Inferencing on embedded devices Post Quantization Custom Data for Ai Projects Hardware Optimized Neural Networks Computer Vision projects with OpenCV Deep Neural Networks with fast inferencing Speed Hardware Requirements Raspberry PI 412V Power Bank2 LE Ds ( Red and Green )Jumper Wires Bread
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