Variational autoencoder punët
...formatting standards and includes placeholders for each section 3. Implementation and Validation of Cryptographic Mechanisms Objective: Recreate or develop code to implement the hybrid cryptographic mechanism (ALO-DHT) described in the original article. Steps: Reproduce the Ant Lion Optimization algorithm and its integration with the Diffie-Hellman and Twofish cryptographic techniques. Integrate Autoencoder neural networks for anomaly detection as described in the article. Expected Output: Well-documented code with explanations for each component, ideally in Python. 4. Conducting Tests and Gathering Results Objective: Run simulations or tests to gather results comparable to those in the original article, specifically metrics like accuracy, precision, recall, time consumption, and...
...implementation is mostly complete, but there are a few bugs that need to be resolved.] I am looking for someone to assist with a project focused on generative models, specifically involving Variational Auto-Encoders (VAE) and Auto-Decoders. The task includes training an Auto Decoder on the Fashion MNIST dataset, minimizing the reconstruction loss, and analyzing the latent space. You will need to justify model architecture and training parameter choices, evaluate the model on both training and test sets, and generate visual results by decoding latent vectors. Skills required: - Deep understanding of Auto-Encoders and Variational Auto-Encoders (VAE) - Experience with generative models and latent space exploration - Proficiency in Python and deep learning libraries (e.g., P...
I need assistance with a nonlinear integral equation. I'm particularly interested in using analytical methods to solve it, with a focus on variational methods as the preferred approximation technique. Ideal skills and experience for the job: - Strong background in mathematical analysis - Proficiency in solving nonlinear integral equations - Experience in using variational methods - Ability to explain complex concepts in a simple manner - Good communication skills to discuss progress and challenges
I'm looking for an expert in quantitative analysis to help me solve specific nonlinear parabolic equations. The project involves: - Deriving universal estimates and Liouville theorems for superlinear problems - Conducting a thorough theoretical analysis - Utilizing variational methods, scaling method and doubling lemma. Ideal candidates should have a strong background in qualitative and quantitative analysis, and experience with perturbation techniques, and variational methods.
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...seamless deployment and address any integration issues. 6. Ongoing Support and Maintenance: Provide ongoing support for any technical issues. Regularly update and improve the AI models and APIs. Required Skills and Knowledge Technical Skills: Deep Learning Frameworks: Proficiency in TensorFlow, PyTorch, or similar frameworks. Generative AI: Experience with Generative Adversarial Networks (GANs), Variational Autoencoders (VAEs), and other generative models. Voice Cloning: Knowledge of voice synthesis techniques and tools (e.g., WaveNet, Tacotron). Image Processing: Expertise in image transformation and enhancement algorithms. Video Synthesis: Skills in generating high-quality videos from images. API Development: Experience in developing and documenting RESTful APIs. Professional...
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I am in need of an image compression model implemented in Python, or by Matlab for medical datasets. The primary aim is to achieve high compression levels on MRI and CT scans while maintaining diagnostic quality. Key Requirements: - High Compression Rate: We are prioritizing a small file size to allow for efficient storage and transfer of image data. - Image Quality: The final compressed images should retain a high level of visual quality, critical for accurate medical diagnosis. - Dataset Expertise: This project is focused on MRI scans and CT scans. Any experience with handling similar medical imaging datasets is a plus. Ideal Skills and Experience: - Strong programming skills in Python or Matlab. - Profound understanding of image processing. - Experience with autoencoders, particular...
...code base and dataset I provide, construct an Abstract Syntax Tree (AST) based on them, and then create an Autoencoder using TensorFlow to compress the resulting AST for a classification problem. Key requirements for this project include: - Proficiency in Python: You will be working with a Python code base and dataset. Familiarity with Python is essential for this project. - Understanding of AST: You should be able to construct an AST tree based on the provided dataset and code base. - TensorFlow Experience: I would like the Autoencoder to be developed using TensorFlow, so prior experience with this framework is a must. - Output format: The desired output format for the Autoencoder is JSON, so you should be comfortable working with this format. This project is i...
...knowledge in the use of autoencoders for feature extraction and GRU models. Key project elements include: * Professionals will need to implement an autoencoder for feature extraction with the core goal of reducing data dimensionality. Prior experience in working with high-dimensional data and in deploying autoencoders is necessary. * Subsequently, the system built should be capable of classifying Denial of Service (DoS), User to Root (U2R), and Probe attacks within the KDD dataset. Good working knowledge of GRU models and the mentioned attacks is required. * The project includes steps to ensure the accuracy and reliability of both the autoencoder and GRU model. This includes: 1. Hyperparameter Tuning: Applicant should be dexterous in practicing various optimization te...
The main task is to create the variational autoencoder.
For this project, I'm seeking a skilled machine learning engineer with proficiency using TensorFlow jupyter notebook to create a variational autoencoder model. Your task will be to detect anomalies related to mobility patterns within an Excel-format dataset. Key Tasks Include: - Analyzing a large dataset with more then am million rows and 32 columns. - Building a variational autoencoder in TensorFlow specifically designed to identify anomalies in mobility patterns. -Visualize the result between two time Ideal skills and experience: - Proficient in TensorFlow and machine learning algorithms. - Experience with variational autoencoder . - Demonstrable expertise in anomaly detection algorithms, particularly in mobility patterns data.
I need a skilled freelancer to tackle a specific issue I'm encountering with my autoencoder model in python on the Colab platform. **My Requirements:** - Diagnose and resolve training issues. - Experience with large image data handling. **Skills and Experience Needed:** - Proficiency in Machine Learning and Neural Networks. - Hands-on experience with autoencoders, particularly with image data. - Familiarity with the Colab environment. - Strong problem-solving and analytical skills. The ideal candidate should clearly understand the typical challenges faced while dealing with autoencoders and have a proven record of fixing similar issues. If you have worked on similar tasks and have a knack for ironing out computational wrinkles, I would love to work with you.
I need a skilled freelancer to tackle a specific issue I'm encountering with my autoencoder model in python on the Colab platform. **My Requirements:** - Diagnose and resolve training issues. - Experience with large image data handling. **Skills and Experience Needed:** - Proficiency in Machine Learning and Neural Networks. - Hands-on experience with autoencoders, particularly with image data. - Familiarity with the Colab environment. - Strong problem-solving and analytical skills. The ideal candidate should clearly understand the typical challenges faced while dealing with autoencoders and have a proven record of fixing similar issues. If you have worked on similar tasks and have a knack for ironing out computational wrinkles, I would love to work with you.
I need a skilled freelancer to tackle a specific issue I'm encountering with my autoencoder model in python on the Colab platform. **My Requirements:** - Diagnose and resolve training issues. - Experience with large image data handling. **Skills and Experience Needed:** - Proficiency in Machine Learning and Neural Networks. - Hands-on experience with autoencoders, particularly with image data. - Familiarity with the Colab environment. - Strong problem-solving and analytical skills. The ideal candidate should clearly understand the typical challenges faced while dealing with autoencoders and have a proven record of fixing similar issues. If you have worked on similar tasks and have a knack for ironing out computational wrinkles, I would love to work with you.
I'm seeking an adept freelancer with experience in generative AI to create synthetic data. This project aims to utilise synthetic data to effectively train machine learning models. A solid command in various generative AI techniques, specifically Variational Autoencoders, Generative Adversarial Networks, and PixelRNN, is required. Key Responsibilities: • Generate synthetic data of 1 Million questions and answers using GenAI techniques • Ensure the generated data is adequate for training generative AI • Create a robust framework for producing questions and answers pairs Ideal Candidate: •used to with Chat GPT • Background in synthetic data generation
This example shows how to train a deep learning variational autoencoder (VAE) to generate images. Ideal Skills and Experience: - Proficiency in MATLAB and experience with training Variational Autoencoders. - Strong understanding of image processing and deep learning techniques. - Ability to work with different input and output image sizes. - Familiarity with generating images using VAEs. If you are confident in your MATLAB skills and have experience with VAEs, please submit your proposal for this project.
I require a deep learning model where the nodes of a hop field network are made up of variational auto encoders. Where the number of node is expandable
...skilled Python developer to modify an existing autoencoder code. The code is written in Python and requires changes in the input of the autoencoder. Skills and Experience: - Proficiency in Python programming language - Strong understanding of autoencoders and their implementation - Experience in modifying existing code and making necessary changes - Familiarity with data preprocessing and manipulation techniques in Python Tasks: - Modify the input of the autoencoder code to meet the project requirements - Ensure the code runs efficiently and effectively - Debug and fix any issues that may arise during the modification process - Implement any additional features or improvements as needed Deliverables: - Updated Python code with the modified autoencoder inpu...
...changing market conditions Hybrid algorithm: RL algorithm: Deep Q-networks (DQNs) DL algorithm: Autoencoder EA: Neuroevolution Explanation: The RL algorithm would be used to learn a trading strategy that can adapt to changing market conditions. The autoencoder would be used to learn a compressed representation of market data. The neuroevolution algorithm would be used to evolve the RL algorithm to adapt to changing market conditions. The RL algorithm would be trained on a dataset of historical market data. The RL algorithm would learn to make trading decisions that are based on the current market conditions. The autoencoder would be trained on the same dataset of historical market data. The autoencoder would learn a compressed representation of market dat...
...Deep Learning, Computer Vision, Natural Language Processing, Algo Trading. Expertise: Training Machine learning, Deep Learning, Reinforcement Learning Models Frameworks are compatible with Pytorch, Tensorflow, Keras. Training ML models like Bayesian Networks, XGBoost, Random Forest, Decision Tree, KNN Classifier, GBM, GLM, SVM. Training DL models BERT and all its variants, DNN, CNN, LSTM, GRU, Variational Autoencoders using Bayesian Neural Networks. eXplainable AI (XAI) using LIME, SHAP, GRAD-CAM, DeepLIFT, DeepRED, CausalNex. Here are some of our previous works: Hair transplant startups require some image generation for their customers. Masters Thesis in Art Generation using GANs Head Gesture recognition using temporal signal data Hairstyle Classification Heartbeat recognition u...
We are seeking a highly skilled and motivated Generative AI Developer to join our innovative team. This role will be key in researching, developing, and implementing advanced generative AI models for a variety of applications. The ideal candidate will be well-versed in the latest developments in artificial intelligence, particularly in generative models such as GPT, Transformer models, Variational Autoencoders (VAEs), and Generative Adversarial Networks (GANs). Responsibilities and Duties: Design, implement and maintain state-of-the-art generative AI models. Collaborate with data scientists, machine learning engineers, and other stakeholders to understand requirements and provide AI solutions. Conduct ongoing research to identify new techniques and technologies in generative AI. I...
I am looking for a skilled freelancer who can develop an autoencoder dimensionality reduction code with good accuracy using Python. I have a code for PCA for dimensionality reduction on the same dataset I need a autoencoder code with fine-tuning which gives good accuracy. Dataset: I will provide the specific dataset that should be used for testing the code. Dataset is divided into 6 files 6 files needs to be dimensionality reduction using autoencoder Don't worry I have sample for that Accuracy: The desired accuracy level for the model is 80-90%. Ideal Skills and Experience: - Strong proficiency in Python programming language - Experience with developing autoencoder algorithms for dimensionality reduction - Knowledge of machine learning and deep...
Looking for help to complete the Project: (Communication Systems) In the ref paper shared for local model training they have used a unsupervised deep learning model called AMCNN LSTM , but we are planning to use supervised deep Learning model called Adversarial autoencoder, and the aggregation algorithm for federated learning used here is Fedavg, but we need FedProx and the gradient compression scheme mentioned in the same paper also needs to be implemented along with it .The datasets that needs to be used are 1) NF-TON-IOT dataset 2) NF-BOT-IOT dataset Reference document and more details on the Project are attached.
The goal of this project is to generate a matlab code implementation on approximation of a Discrete obstacle problem for a 4th order variational inequality by discontinuous Galerkin method using primal dual algorithm. This is a complex Finite element method (maths) problem, requiring advanced expertise and should be taken on by experienced individuals. It is very important for the contractor to use the specific resources I have prepared. The desired outcome of this project is a code implementation in a clearly written format. The code has been completed but the output is wrong and the issue needs to be identified and fixed, All code should be clear, efficient, follow industry standards, and come with full comments detailing its use and purpose. It is essential that the code be ab...
Hello, My name is Lucas, I am French and Data Scientist. I am looking for someone to do a deep learning study/model for me/with me. An autoencoder that will forecast a time series previously transformed into an image. You will find all the details in the attached document. Looking forward to discuss with you. Lucas
I am looking for a freelancer who can help me parallelise the training using autoencoders. Currently, I have a code written in Python, that works with any type of autoencoder – variational autoencoder (VAE), denoising autoencoder, or sparse autoencoder. The current code has 1-2 layers. I prefer to work on the model with the same layers, but if some further layers are required, I am open to discuss my project requirements. Furthermore, scalable and well-tested code is mandatory. To make this project successful, I need someone who has wide knowledge and experience of using different autoencoders, can work within time deadlines, and can handle tasks related to parallelizing models.
The objective is to build a system based on AutoEncoder to extract features from speech dataset for biometric access control
The research needs only review and working on certain notes. The objectives of the research are: • To filter and remove noise while preserving important features for improving the quality of low-resolution images by using novel filtering techniques. • To extract the most important facial features from the low-resolution images using Deep Autoencoder (DAE) for improved classification accuracy. • To design a low-resolution facial recognition model using a deep learning classifier NO AGENT MESSAGING PLEASE - WON'T RESPOND
Need to perform different SVM methods on a given dataset and use an autoencoder in another dataset. Need to use jupyter notebook.
I'm going to use a varational autoencoder to upload videos and sounds and then combine them all in one simple interface
1) Examine this implementation : 2)Swap CNN layers with CLTSM layers. () 3) Made CLSTM Autoencoder 4)Give input video, output gives dehazed video. Example Dataset in attachment. PLS write XX your at the beginning of the bid. So I can understand this is not AUTO-BID!
1) Examine this implementation : 2)Swap CNN layers with CLTSM layers. 3) Made CLSTM Autoencoder 4)Give input video, output gives dehazed video. Example Dataset in attachment. PLS write XX your at the beginning of the bid. So I can understand this is not AUTO-BID!
I have deep learning model for clustering, it does the clustering on data embedding learned by an Autoencoder. The problem is the AE weights seemed to be not effected by the clustering model being trained. This means that; I change the loss objective of the clustering model and it is still the "exact" same performance results (accuracy, precision, recall, F1 score) as with the previous loss objective.
I need a machine learning expert to change the autoencoder code of one file to reinforcements code. I have 3 more tasks after this. file: in
I need a ml expert to implement the autoencoder based on reinforcements for fibre optical communication. source code:
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The aim of this research project is to study and analyze the factors affecting the criticality of COVID-19 patients, and accurately predict the mortalit...COVID-19 patients, and accurately predict the mortality rate of the patients ahead of time. In this paper, COVID-19 data from the National Center for Data of Health which consists of data from 2019 to 2022. Different visualization techniques were used to extract patterns from the demographic and the clinical data of patients to determine the factors affecting COVID-19 patients. Random Forest and Autoencoder neural networks were trained to predict the mortality rate of the patients. Predictions were evaluated using AUC, ROC and accuracy scores. Neural Network resulted in an accuracy of 71.10% and Random Forest gave an accuracy of a...
Hello, I'm looking for an expert in deep learning especially the autoencoders to HELP me analyze some data(ionique images). The objectif is to find the most relevent ions and its parameters m/z. Each one of the files here(just a part of the data) is 1 ionique image, if we can fusion them all to have one complete image and then we can proceed to the analyzis with an autoencoder. It's my internship, so i need someone that will be open to have some videos calls to well discuss about the work.
Main Task - Image Reconstruction 1. Custom image Dataset must be loaded from the local drive. As of now you can load your own dataset. 2. Image Augmentation have to be included Important: There should not be any restriction on the dimensions of the image. It will work with all the image dimensions Step 1: 3. The various types of Autoencoder techniques and GAN must compared with and without hyper parameter tuning, Ensembling methods with various performance metrics. 4. There is an option to mention and control the types of noises with the range 5. The reconstructed results will be checked with the bunch of images or else the single image with similarity score with the input image.
Objective: Automate classification & verification of types of water leak in water distribution network with high accuracy Background: Local water operators with old-aged pipeline for their water distribution ne...for AI: > Historical Data of Acoustic Raw Data (6 months) > Historical On-Site Verification records (6 months) Expected Result: Minimum Viable Product (MVP) / Prototype that completes the objective in 2 months form agreed date What we're looking for: Someone with completed past development projects that heavily uses Machine Learning (Artificial Neural Network (ANN), Random Forest (RF), Autoencoder Neural (AE) Network, etc) About Rivil: Rivil is a Malaysian Water Technology company with the mission to accelerate access to freshwater at affordable co...
... and Objectives Study current unsupervised machine learning techniques, particularly state-ofthe-art on fraud detection • Investigate how transaction features cane be extracted to differentiate normal and abnormal cases • Investigate unsupervised machine learning techniques based on clustering and autoencoder to model normal transaction. • Implement an anomaly detection mechanism that using the previous model can detect outliers as potential fraud cases • Evaluate the performance of the proposed system and compare it against the state of the art in the field using standard datasets and appropriate metrics Skills This project is best suited to a person with an interest in Deep learning and strong
Labeling of the already generated univariate dataset (based on types of anomalies) Train deep learning model (except CNN) for univariate anomaly detection. (Preferred hybrid methods like autoencoder, lstm-ad, lstm-vae, mscred) Protocol the evaluation metrics such as f1-score and computational time. Also evaluate the precision, f1 score and computational time of the database with an existing repositories () containing the different neural network algorithms
...teacher asked me to do the following: autoencoders to differentiate between anomaly and normal condition taking a time window of size W. autoencoders using a pre-trained network as an encoder to differentiate between anomaly and normal condition by taking a time window of size W. I have already done part of it but I am blocked. I already made a datagenerator and have fed it to an autoencoder but the results seems really bad. I will also attached the .ipynb file so you can have a look at it. I would need not only the answer but also an explanation of how you have done it in case you accept it. THANKS. please also find the datasets here: training: Test: Validation:
Deep learning based Autoencoder to find bit error rate verses signal noise ratio using rician channel
Autoencoder to find bit error rate verses signal noise ratio using rician channel
Apply an Autoencoder to denoise real-world time-series data from inertial sensors and near-infrared (NIR) sensors for robotics.
Objective ----------------------------------- 1) Correct the error in and run to see final results 2) Create a custom fit or trainer model for Textvae model 3) Correct the error in and run to see final results 4) Create a custom fit or trainer model for FNET also.