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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.
25,380レビューから、クライアントは Deep Learning Specialists 4.9/5個の星で評価します。Deep Learning Specialists を採用する
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.
25,380レビューから、クライアントは Deep Learning Specialists 4.9/5個の星で評価します。Deep Learning Specialists を採用する
I am expanding my software-engineering agency into the US, Canada, and European markets and I need a confident voice on interview calls who can represent our senior developers. So US, Canada, Australia Citizens are prefered. When a potential client schedules a technical interview—whether the topic is JavaScript micro-services, Python data pipelines, Machine Learning with PyTorch, or the finer points of Software Architecture—you will join the call, introduce yourself on behalf of the engineer, and guide the conversation toward closing the engagement. Because every prospect is different, I am looking for someone already comfortable in the technology sector. Familiarity with Software Architecture is essential; being able to reference image processing, deep-learning or NLP concept...
I need a rock-solid, real-time player tracking module for football matches that guarantees the ID assigned to each athlete at kick-off never changes until the final whistle. Right now, our OpenCV–TensorFlow–YOLO pipeline sometimes swaps or loses IDs when athletes overlap, leave the frame briefly, or the camera angle shifts, and that ruins every speed, distance, position, and heat-map metric we generate. Key requirements • Sport: football. • Camera setup: five or more synchronized feeds. • Existing stack: OpenCV, TensorFlow, YOLO – your solution must plug into this environment. What I expect 1. A multi-object tracker with integrated re-identification that preserves the same unique ID through occlusion, crossings, short disappearances, or camera changes...
I’m producing a live-action music video built around a love-and-relationships storyline and want to amplify it with cutting-edge AI work. Principal footage will already be shot (approx. 3 min), and the task now is to layer in artificial-intelligence magic that elevates the emotional arc without losing the organic feel of the performances. The two core enhancements I need are: • Special effects and cinematic filters that accentuate mood shifts (think colour-graded dream sequences, particle light flares, etc.). • Facial recognition and tasteful face substitution for brief flashback moments where the same actors appear younger/older or in imagined scenarios. Smooth integration is essential—skin tones, lighting and lip-sync have to stay believable. Adobe After Effec...
I need a one-minute, ultra-realistic “deep-fake” birthday greeting that feels as if it was shot on set. The final clip has to feature five people on screen: me, my wife, an A-list actor, a high-profile business leader, and a well-known politician. I’ll provide head-shots, additional reference photos, short voice samples, and a rough script that sets up a light, humorous conversation which wraps up with everyone singing or shouting a quick happy-birthday tag line. Your task is to: • Face-swap each celebrity seamlessly onto look-alike bodies, matching skin tone, lighting, and camera movement so the effect is utterly convincing. • Clone voices from my samples and blend them naturally into the dialogue, keeping comic timing tight. • Composite the five ...
I'm seeking an AI/ML programmer to develop an image classification model specifically for fingerprint recognition. Key requirements include: - Expertise in image recognition and classification - Experience with deep learning frameworks (e.g., TensorFlow, PyTorch) - Strong background in handling and processing image datasets - Knowledge of security and privacy considerations in biometric data Ideal candidates will have a proven track record in similar projects and the ability to deliver accurate and efficient models.
I have a short video—under sixty seconds—in which I want to convincingly replace the original face with another. This is strictly for personal use, so artistic flair and attention to detail matter more to me than commercial polish. The swap must look natural in motion: skin tones matched, lighting consistent, no obvious warping around expressions, and lips staying in sync. I will supply: • The source clip (MP4, 1080p, steady lighting). • High-resolution reference images of the face to insert. Your tasks: • Run a high-quality model (DeepFaceLab, FaceSwap, or similar) to train on my provided images. • Composite the new face onto the entire clip, maintaining frame-by-frame consistency. • Deliver a final render in the same resolution and a lossless ...
I have just 700 indoor photos that must be labelled for an my project upcoming object-detection model. Every visible person and every seat that is currently occupied needs its own bounding box, and because the network will train on oriented-bounding-box (OBB) data, the rectangles have to follow the exact rotation of the body or seat—especially when someone is leaning. Data is of infrared camera of a cinema check samples , please note there can be many people in one image i want each to be marked properly You will work inside the simple browser-based annotation tool I built for this purpose or any other annotation tool you like. drag the box corners, spin the angle handle where needed, hit save, and move to the next frame; the app tracks progress automatically so nothing is missed....
I want to put an AI tutor in every algebra student’s pocket. To make that happen, I need you to design and code a Retrieval-Augmented Generation pipeline that can understand a question, pull the most relevant snippets from my curated algebra textbooks, formula sheets, and problem sets, then explain the answer step-by-step with rock-solid reasoning. Here is what success looks like from my side: • A working RAG stack (embeddings → vector database → LLM) wired together with modern tooling such as LangChain, LlamaIndex, or an approach you can justify. FAISS, Pinecone, Weaviate, or similar are fine for the vector layer; OpenAI, Claude, Llama 2/3, or comparable models may drive generation. • Retrieval tuned for high recall and low latency—students should see a...
Hybrid Artificial Intelligence System for Autonomous Drone Detection Using Computer Vision and RF Signal Analysis The idea is to build AI detection system based on hybrid method (Computer vision and RF signal) and present results :Accuracy, Precision, Recall and False Alarm Rate Algorithms: Computer vision: YOLOv8 (Object Detection) RF analysis: CNN for Spectrogram analysis Merge in : Rule-Based Fusion • or Neural Network Fusion Dataset : Vision Datasets: • Anti-UAV Dataset • VisDrone RF Datasets: • DeepSig RadioML Dataset • Custom SDR Capture (HackRF / RTL-SDR) Budget : 150$
We are looking for a talented frontend developer to bring our Figma designs to life by building a visually stunning, high-performance website using HTML, CSS, and JavaScript. This project involves translating Japanese content, so proficiency in Japanese is required. The ideal candidate will have a strong eye for design and be able to accurately replicate layouts while enhancing them with smooth animations and professional styling. Responsibilities: Convert Figma designs into clean, responsive HTML/CSS/JavaScript code Ensure pixel-perfect implementation aligned with the original design Translate Japanese content accurately into the website Implement modern UI animations and interactions Optimize for performance and cross-browser compatibility Requirements: Proven experience in frontend deve...
I have just 700 indoor photos that must be labelled for an my project upcoming object-detection model. Every visible person and every seat that is currently occupied needs its own bounding box, and because the network will train on oriented-bounding-box (OBB) data, the rectangles have to follow the exact rotation of the body or seat—especially when someone is leaning. Data is of infrared camera of a cinema check samples , please note there can be many people in one image i want each to be marked properly You will work inside the simple browser-based annotation tool I built for this purpose or any other annotation tool you like. drag the box corners, spin the angle handle where needed, hit save, and move to the next frame; the app tracks progress automatically so nothing is missed....
I have a large, continually growing collection of emails that needs to be processed automatically. The goal is twofold: 1. Classify each email into predefined business categories with high accuracy. 2. Extract relevant entities (names, dates, IDs, product references, etc.) from the same messages. You will own the entire machine-learning workflow. That means cleaning and exploring the raw email text, crafting useful features, training and tuning your models, and packaging the final solution behind an API that I can call from our existing back-end. Python is a must, and I’m comfortable with either TensorFlow or PyTorch for the deep-learning components—use whichever lets you move fastest. Traditional techniques with Scikit-learn are welcome wherever they make sense. Because t...
I need an experienced Natural Language Processing specialist to build a predictive model that learns from text data and produces accurate, repeatable forecasts. The project centers on end-to-end model creation: cleaning and preprocessing raw text, selecting the right architecture, training, and evaluating performance against clearly defined metrics. I will supply the text dataset along with the target variable I want predicted. You will decide on the most suitable NLP approach—whether that’s classical techniques with scikit-learn or a deep-learning stack such as TensorFlow or PyTorch—document your reasoning, and implement the solution in clean, well-commented Python. Deliverables: • Reproducible code (Jupyter notebook or .py files) with setup instructions • ...
deploy a dual-model pipeline on AWS. Scope of Work Dual-Model Deployment: Deploy the Pillar-0 (Atlas architecture) for multi-finding classification across Chest, Abdomen, and Brain. Integrate Sybil-1.5 for specialized future lung cancer risk prediction (1–6 year horizon). Inference Pipeline & Report Generation: deploy pipeline that takes zipped DICOM files, performs 3D volumetric reconstruction, and runs concurrent inference. script (attached). This script shows how to read the (Zip file), stack of the medical pictures (DICOMs) into a 3D block, and run both the Pillar-0 model (for findings) and Sybil-1.5 (for cancer risk) -This tells AWS which specialized tools to install to read 3D medical images AWS Cloud Architecture: Host models on AWS SageMaker (GPU instances like m...
Contest: Real-Time Lipsync Avatar from a Single Photo — POC / Skills Test Important: This is a Paid Proof of Concept This contest is a skills assessment. We are looking for a talented engineer to join a multi-week (potentially multi-month) project to build a full real-time avatar platform — similar in quality and capability to HeyGen, LiveAvatar, Replika, Candy AI, and D-ID. The winner of this contest will be offered a long-term contract to build the full pipeline with us. Do NOT apply if you can only deliver pre-rendered video. We need real-time. What We Need (POC Deliverable) Build a working prototype that does the following in real time: Take a single static photo (portrait/face) as input Take a live audio stream (microphone or audio chunks) as input Output a video stream ...
I’m building ViewSeek AI as a full-featured web application that puts advanced artificial intelligence directly in the browser. The core of the product is AI itself, so every major workflow must be driven by machine-learning models and thoughtful UX. Here is what the first release needs to deliver: • Image recognition that can tag, classify and return metadata in near real-time. • Natural language processing so users can type questions, receive context-aware answers and carry on multi-turn chats (“Asking AI”). • Predictive analytics modules that surface trends or recommendations based on uploaded data sets. • Generative tools capable of creating both images and short video clips from text prompts, with download options in common formats. All ...
The project centres on building a production-ready medical image -classification pipeline that leverages modern deep-learning techniques. I have a labelled dataset and need end-to-end code that ingests the text, handles cleaning and tokenisation, and trains an accurate classifier. Python is the preferred language; The preprocessing must involve Quantum computing techniques using Pennylane. PyTorch, TensorFlow or another mainstream framework is fine as long as the solution is reproducible and easy to extend. Key deliverables: • Well-commented source code (data loading, model, training loop, evaluation) • Clear instructions to run training on a fresh machine (README or notebook) • Metrics report showing accuracy, precision, recall and F1 on a held-out set • Export...
AI & MACHINE LEARNING TRAINING MANUAL DEVELOPMENT We are urgently seeking a highly qualified Expert Trainer to develop a comprehensive, hands-on Manual and deliver specialized training to Customs of an African country. This project aims to enable the beneficiary organization to autonomously design, optimize, and deploy AI/ML solutions for risk management and customs clearance efficiency. Scope of Work: Develop curriculum and content focusing on advanced technical modules, including: Data Science & Machine Learning: Deep Learning and Python Data Science foundations. Generative AI & LLMs: Advanced Prompt Engineering, Fine-tuning, NLP/Transformers, and API Deployment (LangChain). Methodology: Emphasize practical application, real-world customs use cases, and Capstone projects (...
I am working on an academic research project focused on multi-cloud resource orchestration using a decentralized framework called IMACO (Intelligent Multi-Agent Cloud Orchestration). Currently, I have implemented a Python-based simulation system that includes: Task scheduling using real workload data (Google Cluster Workload Traces) Existing scheduling strategies: Round Robin (RR) Cost-based scheduling IMACO (adaptive rule-based scheduler) objective : I want to extend the system by implementing: 1. MAS-Cloud+ (Multi-Agent System) Each cloud provider should act as an independent agent Agents evaluate tasks using scoring logic (cost, latency, load, SLA) A coordinator selects the best agent for task allocation Output must match existing format for comparison 2. Reinforcement Learning Inte...
I am preparing a scientific-grade computer-science paper that explores how Artificial Intelligence can be applied to Disease Diagnosis, with a sharp focus on Genetic Disorders. I already have a broad outline but need a researcher-writer who can turn it into a publishable manuscript that meets typical IEEE or Springer journal standards. Here’s what I’m after: • Scope. A clear literature review on AI techniques currently used for diagnosing genetic conditions such as cystic fibrosis, sickle-cell, or rare chromosomal abnormalities. Contrast traditional pipelines with cutting-edge deep-learning approaches (CNNs, Transformers, multimodal models, etc.). • Original contribution. Either propose a novel framework or run a small-scale experimental study on an open dataset (...
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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