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Deep Learning is an artificial intelligence subdomain which uses algorithms to make decisions and perform complex tasks. It has become a powerful force in helping businesses find new opportunities, improve efficiency, automate processes, and stay ahead of the competition. With the increasing availability of affordable computing resources, deep learning is quickly becoming the standard for many businesses.
Deep learning expertise comes with a wealth of experience in developing algorithms and applying them to solve a wide variety of problems. From speech recognition and natural language processing, to computer vision, stock forecasting and autonomous systems – a deep learning specialist can help create intelligent and innovative systems that remain ahead of their time.
Here's some projects that our expert Deep Learning Specialists have made real:
- Delivering realistic augmented reality experiences by overlaying images into live video streams
- Developing more accurate methods of classification by recognizing patterns on audio or visual data
- Using CNNs or SVMs to detect security threats from incoming financial data
- Creating facial recognition models that respond to eye blinks
- Developing distance measurement models using deep learning for object detection
- Deploying a Machine Learning model for a given time series sensor signal data
- Using Reinforcement Learning methodology to train agents engaged in complex tasks
As you can see, there is virtually no limit to the potential applications for deep learning. With Freelancer.com's talented pool of specialists, your business can benefit from the expertise of experts who are well versed in deep learning techniques as well as state-of-the art technologies like YOLO, OpenCV, PyTorch and more. Take your project to the next level by hiring a knowledgeable Deep Learning Specialist on Freelancer.com and receive a custom solution tailored to your specific needs.
Na podstawie 25,719 opinii klienci oceniają nas na Deep Learning Specialists 4.9 na 5 gwiazdek.Zatrudnij użytkownika Deep Learning Specialists
Deep Learning is an artificial intelligence subdomain which uses algorithms to make decisions and perform complex tasks. It has become a powerful force in helping businesses find new opportunities, improve efficiency, automate processes, and stay ahead of the competition. With the increasing availability of affordable computing resources, deep learning is quickly becoming the standard for many businesses.
Deep learning expertise comes with a wealth of experience in developing algorithms and applying them to solve a wide variety of problems. From speech recognition and natural language processing, to computer vision, stock forecasting and autonomous systems – a deep learning specialist can help create intelligent and innovative systems that remain ahead of their time.
Here's some projects that our expert Deep Learning Specialists have made real:
- Delivering realistic augmented reality experiences by overlaying images into live video streams
- Developing more accurate methods of classification by recognizing patterns on audio or visual data
- Using CNNs or SVMs to detect security threats from incoming financial data
- Creating facial recognition models that respond to eye blinks
- Developing distance measurement models using deep learning for object detection
- Deploying a Machine Learning model for a given time series sensor signal data
- Using Reinforcement Learning methodology to train agents engaged in complex tasks
As you can see, there is virtually no limit to the potential applications for deep learning. With Freelancer.com's talented pool of specialists, your business can benefit from the expertise of experts who are well versed in deep learning techniques as well as state-of-the art technologies like YOLO, OpenCV, PyTorch and more. Take your project to the next level by hiring a knowledgeable Deep Learning Specialist on Freelancer.com and receive a custom solution tailored to your specific needs.
Na podstawie 25,719 opinii klienci oceniają nas na Deep Learning Specialists 4.9 na 5 gwiazdek.Zatrudnij użytkownika Deep Learning Specialists
Temporal Lesion-Aware Dynamic Gated Multimodal Fusion Framework for DR and DME Analysis Using OLIVES and MMRDR Datasets Framework Overview The proposed framework introduces a Temporal Lesion-Aware Dynamic Gated Multimodal Fusion System for automated analysis of Diabetic Retinopathy (DR) and Diabetic Macular Edema (DME) using multimodal retinal imaging data. The framework combines fundus images, OCT scans, longitudinal retinal information, and optional clinical metadata to improve retinal disease classification, biomarker understanding, and temporal disease progression analysis. Unlike conventional multimodal retinal systems that use static feature fusion, the proposed framework employs a: Dynamic Gated Cross-Modal Fusion Mechanism that adaptively learns the importance of each retinal modal...
Project: ComfyUI / Flux / Z-Image Beauty Filter — Visual Tuning Specialist I'm running a production AI beauty retouching web service (). The full pipeline is built and deployed — what I need is an experienced ComfyUI / Flux / LoRA specialist to dial in the final visual quality. This is a tuning job, not infrastructure work. Pipeline (already running on Modal / A100): Stage 1: Flux 2 Klein 9B + custom Beauty LoRA + ultra_real LoRA Stage 2: Z-Image Turbo + Kook LoRA + ControlNet tile (masked, face/body) MediaPipe FaceMesh eye-preservation blend Custom LAB skin-tone correction (Python) Stage 3: SeedVR2 GGUF upscale to ~2048px Side-by-side composite output Visual problems I need solved: Skin texture too fine / too smooth — natural pore patterns are removed, reads as p...
I need a complete, end-to-end pipeline that starts with a screenshot of a live trading terminal, pulls every ticker, quote, or indicator visible on the image, and ends with a single buy-or-sell probability score that consistently reaches 90 %+ confidence. Scope • Screenshot ingestion and parsing: an OCR/visual-recognition routine that can handle typical broker or data screens, isolate each symbol, price, volume and time stamp, and structure it as tabular data. • Feature engineering: enrich the extracted snapshot with any historical data you deem necessary (you may tap your own CSV archives or free APIs), then create derived variables such as intraday return, volatility, or technical signals. • Probabilistic modeling: build and train a machine-learning model—choi...
Complete Lottery Prediction and Betting Automation System (Focused on Loterías y Apuestas del Estado - Spain) 2. System Features 2.1. Historical Data Collection and Update The system must automatically download complete historical results (drawn numbers, draw dates, prize breakdowns by category, accumulated jackpots) from the first draw of each lottery, directly from or reliable associated sources. Specific sources: Euromillones: (since Feb 13, 2004) La Primitiva: (since Oct 17, 1985 – modern version) El Gordo de la Primitiva: (since Oct 31, 1993) Updates automatic at exactly 00:02 the day after each draw, using ethical scraping (BeautifulSoup/Scrapy) with proper user-agent headers to mimic human behavior. Store data in PostgreSQL (structured) or MongoDB (flexible), incl...
Brain disorder detection using Deep Learning Uses MRI brain scan images Detects multiple brain diseases automatically Early disease detection and diagnosis Multi-class classification system Diseases detected: Glioma tumor Pituitary tumor Meningioma tumor Alzheimer’s disease Healthy brain Uses Convolutional Neural Networks (CNN) Uses Transfer Learning techniques Models used: CNN VGG16 ResNet50 Dataset collected from Kaggle MRI datasets Combined brain tumor and Alzheimer datasets 1000 images used for training 250 images used for testing Image preprocessing and normalization Pixel values converted from 0–255 to 0–1 Feature extraction using convolution layers Pooling layers reduce computation Fully connected layers perform classification Softmax activation used for multi-clas...
1. Smart CT Scan Analyzer An AI system that analyzes lung CT scan images and detects possible lung cancer signs early. Main Features Upload CT scan or X-ray images AI detects lung nodules Cancer risk prediction Heatmap highlighting suspicious areas Doctor dashboard Patient history tracking PDF medical report generation Technologies Frontend: Vue.js / React Backend: Node.js or Python Flask AI Model: TensorFlow / PyTorch Database: MySQL / PostgreSQL Image Processing: OpenCV AI Models CNN (Convolutional Neural Network) ResNet50 YOLO for object detection Users Doctors Radiologists Hospitals Patients 2. AI + IoT Lung Monitoring System A smart healthcare platform connected to wearable devices. Features Real-time breathing monitoring Oxygen level tracking AI predicts lung disease risk Emergen...
We are looking for a hands-on Senior Computer Vision Architect to scale our live multi-camera video analytics platform from 100 to 1,000+ cameras across NVIDIA DeepStream and distributed edge device architectures. The ideal candidate must have strong production experience with NVIDIA DeepStream SDK, TensorRT optimization, edge AI deployments, and large-scale camera infrastructure. Responsibilities: • Design and manage a scalable 1,000-camera architecture with high availability and low latency • Optimize DeepStream pipelines (NvInfer, NvTracker, NVDEC, GStreamer) for stable FPS under heavy load • Deploy an manage CV models on Jetson or equivalent edge devices • Fine-tune YOLO models and export optimized TensorRT engines • Build and improve infrastructure using Doc...
I am building a research-grade pipeline that focuses first and foremost on Diabetic Retinopathy (DR) grading, while keeping an eye on downstream extensions such as DME detection, retinal biomarker discovery, longitudinal modelling, cross-dataset generalisation and explainable retinal AI. Data at hand • Thousands of colour fundus photographs sourced from OLIVES, MMRDR and my own curated set. • Structured patient medical history accompanying a subset of those images. Core objectives 1. Train and validate a model that assigns the correct severity level to every DR image. 2. Surface early-stage indicators that could alert clinicians before conventional thresholds are reached. 3. Provide per-patient progression tracking so that sequential visits can be plotted and foreca...
I have a growing library of MP4 recordings of casino-grade slot machines and I need a reliable way to turn each session into structured data. For every spin I want the script to capture the start time, end time, bet size, win amount, any bonus triggers, and jackpots, then tally an overall spin count. The videos cover many different games, so the screen layout shifts from title to title; your solution therefore has to locate each region of interest on its own instead of relying on hard-coded coordinates. Because bonuses and jackpots are marked with visually distinct graphics, you can leverage that cue when classifying events. Accuracy matters more than raw speed, but I still expect processing to run unattended once configured. Please build a computer-vision / OCR pipeline that: • Au...
I am putting together a small educational AI/ML project that detects diabetic retinopathy on the publicly-available OLIVES dataset. The goal is not only to build a working multimodal model (fundus images plus any supporting clinical metadata you find useful) but also to showcase clear explainability and rigorous evaluation so the project can be presented in an academic setting. Scope of work • Prepare the OLIVES dataset, handle any class imbalance, and document the preprocessing pipeline. • Design and train a multimodal architecture of your choice in Python—PyTorch, TensorFlow or another modern framework is fine—as long as the code is clean and reproducible. • Produce the quantitative metrics I need: Accuracy, Precision, F1-score, AUC and Cohen Kappa on a ...
I aim to build an advanced, research-grade Virtual Try-On (VTON) engine that can realistically place Tops (e.g., shirts, blouses), Bottoms (e.g., pants, skirts), and Full outfits (e.g., dresses, suits) onto a human model from nothing more than a single 2-D photograph. The workflow should centre on state-of-the-art deep generative techniques—diffusion models, flow-matching, and transformer-based architectures—so the final renders look genuinely photo-realistic, preserve garment texture, and respect body pose and occlusion. The system will be trained on a curated dataset I already possess, then fine-tuned to accept JPEG and PNG uploads at inference time. Clean, modular PyTorch (or equivalent) code, a reproducible training pipeline, and inference scripts that run on a single high...
I have a collection of general-purpose images and need a complete Python-based pipeline that extracts meaningful features and classifies each image accurately. The project centres on image feature extraction and subsequent classification, so solid experience with OpenCV, scikit-learn or a deep-learning stack such as TensorFlow or PyTorch is essential. You will begin by deciding on (and justifying) an appropriate feature strategy—traditional descriptors like SIFT/ORB, transfer-learning from a CNN, or another proven method—then train and validate a classifier that reaches reliable accuracy on a held-out test set. Clean, well-commented code and clear, reproducible training steps are critical because I need to retrain the model as new data arrives. Deliverables • Python sour...
我准备上线一套面向居家场景的智能监测系统,希望通过视觉与物联网技术,及早发现老人或慢病人群的高危状况并推送告警。 核心需求 1. 高危动作异常 —— 同时精准识别“摔倒”与“跌倒”,第一时间触发报警。 2. 状态失能异常 —— 既要判断“长时间静止不动”,也要捕捉“无自主行为”状态,实现持续跟踪。 3. 出入与行为节律 —— 对家门进出时间、频次和时段进行建模,结合如厕频率、徘徊轨迹、家电使用等行为模式,挖掘偏离日常规律的征兆。 4. 生理体征 —— 基于微动信号提取呼吸、心率等指标,与个人基线比较后给出健康风险提示。 我期望的交付 • 场景与传感器选型报告:摄像头、毫米波雷达、惯性传感器等可行性分析。 • 算法与模型:包含数据清洗、特征工程、深度学习或传统 CV/信号处理方案,需给出训练脚本与推理 API。 • 功能性原型:可在本地或边缘端实时运行,界面展示告警信息,并通过 MQTT/HTTP 推送到后台。 • 技术文档:部署指南、接口说明、测试用例及关键性能指标(例如跌倒检测准确率、误报率等)。 理想人选 熟悉 OpenCV、PyTorch/TensorFlow 或 mmWave SDK,对人体姿态估计、时序异常检测有实战经验;能在 Linux + Docker 环境里快速迭代;对养老、康复或智慧家居项目有交付记录更佳。 请附上相关案例、模型效果或仓库链接,让我能快速评估你的解决思路和交付能力。期待与你合作,把这套居家安全“护身符”尽快落地。
Goal: Create a FULLY AUTOMATED process that takes a male audio file and converts it into a female voice. What you must do: 1) Take the male audio I provide 2) Convert it into a female voice 3) Upload the final audio into a Google Drive folder 4) Add the Google Drive link in your competition entry 5) Explain clearly what software/tools you will use 6) Explain clearly how you will automate the FULL process from start to finish Important: - The automation must run locally - The final voice must sound perfectly natural and human - The female voice must correctly reproduce the multiple emotions, tone and intonations from the original audio - The result must NOT sound robotic or AI-generated - The automation must be able to process multiple audio files - Do NOT clean the original audio more...
我正在搭建一套基于 YOLOv8 的垃圾分类演示,需要完整的软硬件方案: • 软 件 – 使用 Python + YOLOv8 训练/部署模型,能在普通电脑上直接运行; – 摄像头以 USB 方式接入树莓派,再把画面实时传输到电脑; – 识别目标包含:塑料、纸张以及易拉罐,模型应能在画面上框出目标并同时在终端输出中文文字描述(如“检测到易拉罐”); – 运行界面可为简单命令行或轻量 GUI,只要识别结果与文字描述同步显示即可; – 提供完整的源代码、模型权重、依赖清单与一键安装脚本。 • 硬 件 – 树莓派主板(任意 3/4/5 型号均可)+ 原厂摄像头模块; – 摄像头默认 USB 连接,可在本地测试无误后将整套硬件打包寄送给我(运费我承担)。 • 交付要求 1. 远程演示识别过程,确认三类垃圾均能被准确框选并输出文字; 2. 打包代码与文档(环境配置、使用说明、模型训练思路); 3. 寄送硬件并提供收件追踪号; 4. 收到设备后,如有环境差异需协助我本地跑通。 如果你熟悉树莓派、YOLOv8 和 Python 部署,并具备打包邮寄能力,期待与你合作!
The project centers on building a production-ready TensorFlow 2.x model that classifies tabular data delivered to us through an internal API. I have the API specifications and sample payloads ready; you will turn those streams into a clean training pipeline, engineer the right features, and iterate until the classifier meets our performance targets in real-world tests. Scope of work • Data pipeline – pull the API data, handle preprocessing, and produce TensorFlow-friendly datasets for train/val/test splits. • Model development – design, train, and tune a deep learning architecture suitable for tabular inputs (e.g., wide & deep, Transformer, or other proven structures). • Optimization – experiment with hyperparameters, regularization, and callback...
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