Best AI tools for< Process Input Data >
20 - AI tool Sites
PageChat
PageChat is an AI tool that allows users to chat with any page, content, or document using artificial intelligence technology. Users can input a URL, content, or document and start a chat to receive information, summaries, or answers based on the input. The tool leverages AI algorithms to understand and process the input data, providing a conversational interface for users to interact with the content in a more engaging and interactive way. PageChat aims to enhance the user experience by offering a seamless and intuitive platform for accessing information and insights from various sources.
AI Document Creator
AI Document Creator is an innovative tool that leverages artificial intelligence to assist users in generating various types of documents efficiently. The application utilizes advanced algorithms to analyze input data and create well-structured documents tailored to the user's needs. With AI Document Creator, users can save time and effort in document creation, ensuring accuracy and consistency in their outputs. The tool is user-friendly and accessible, making it suitable for individuals and businesses seeking to streamline their document creation process.
Lazy Write
Lazy Write is an AI content writing tool that assists users in generating high-quality written content efficiently. The tool utilizes artificial intelligence algorithms to analyze input data and produce well-structured articles, blog posts, or any other written material. With Lazy Write, users can save time and effort by automating the writing process, allowing them to focus on other aspects of their work. The tool is designed to be user-friendly, making it accessible to individuals with varying levels of writing expertise. Lazy Write aims to revolutionize the way content is created by providing a seamless and efficient writing experience.
Hepta AI
Hepta AI is an AI-powered statistics tool designed for scientific research. It simplifies the process of statistical analysis by allowing users to easily input their data and receive comprehensive results, including tables, graphs, and statistical analysis. With a focus on accuracy and efficiency, Hepta AI aims to streamline the research process for scientists and researchers, providing valuable insights and data visualization. The tool offers a user-friendly interface and advanced AI algorithms to deliver precise and reliable statistical outcomes.
Enhans AI Model Generator
Enhans AI Model Generator is an advanced AI tool designed to help users generate AI models efficiently. It utilizes cutting-edge algorithms and machine learning techniques to streamline the model creation process. With Enhans AI Model Generator, users can easily input their data, select the desired parameters, and obtain a customized AI model tailored to their specific needs. The tool is user-friendly and does not require extensive programming knowledge, making it accessible to a wide range of users, from beginners to experts in the field of AI.
Token Counter
Token Counter is an AI tool designed to convert text input into tokens for various AI models. It helps users accurately determine the token count and associated costs when working with AI models. By providing insights into tokenization strategies and cost structures, Token Counter streamlines the process of utilizing advanced technologies.
Deal Protectors
Deal Protectors is an AI-driven website designed to help users evaluate their car deals to ensure they are getting the best possible price. The platform allows users to upload their deal or input essential details for analysis by an advanced AI machine. Deal Protectors aims to provide transparency, empowerment, and community support in the car purchasing process by comparing deals with national and regional averages. Additionally, the website features a protection forum for sharing dealership experiences, a game called 'Beat The Dealer,' and testimonials from satisfied customers.
Rgx.tools
Rgx.tools is an AI-powered text-to-regex generator that helps users create regular expressions quickly and easily. It is a wrapper around OpenAI's gpt-3.5-chat model, which generates clean, readable, and efficient regular expressions based on user input. Rgx.tools is designed to make the process of writing regular expressions less painful and more accessible, even for those with limited experience.
ScrapeComfort
ScrapeComfort is an AI-driven web scraping tool that offers an effortless and intuitive data mining solution. It leverages AI technology to extract data from websites without the need for complex coding or technical expertise. Users can easily input URLs, download data, set up extractors, and save extracted data for immediate use. The tool is designed to cater to various needs such as data analytics, market investigation, and lead acquisition, making it a versatile solution for businesses and individuals looking to streamline their data collection process.
GPTSHunter
GPTSHunter is an AI-powered tool that leverages advanced natural language processing to generate human-like text based on the input provided. The tool is designed to assist users in creating content, generating ideas, and improving writing efficiency. By utilizing cutting-edge AI technology, GPTSHunter aims to streamline the content creation process and enhance user productivity.
SpeechForms
SpeechForms is an AI-powered application that revolutionizes the traditional form-filling process by enabling users to verbally input information instead of typing. By leveraging cutting-edge voice recognition technology, SpeechForms simplifies data entry tasks and enhances user experience. Developed by Toggl ai, this innovative tool streamlines the form completion process, offering a seamless and efficient solution for individuals and businesses alike.
SmartPlate
SmartPlate is an AI-powered application designed to simplify meal planning for nutritionists, dietitians, and health practitioners. The platform generates personalized meal plans based on individual client preferences and dietary restrictions, allowing users to save time and focus on providing tailored nutrition advice. With features like client management, meal plan generation, and 24/7 AI support, SmartPlate aims to streamline the meal planning process, increase profitability, and save time for health professionals.
Quick Resume
Quick Resume is an AI resume creation tool that allows users to generate professional resumes and CVs in seconds using advanced AI models. The tool offers a simple and quick process where users can select the type of resume they want, input their personal information, work experience, education, and skills, and then download the resume in PDF or LaTeX format. Quick Resume utilizes Google Gemini AI, a state-of-the-art artificial intelligence system, to ensure that resumes stand out in the job market. The tool is designed to be ATS-friendly, making it easier for users to pass through Applicant Tracking Systems used by companies.
Suppa
Suppa is an AI tool that empowers businesses by providing a platform to design AI backends and customized chatbots without any coding. It allows users to integrate AI into their mobile apps easily and connect to various systems. With multi-source data capabilities and a no-code AI chatbot builder, Suppa simplifies the process of creating powerful AI solutions for businesses.
Ai Drawing Generator
Ai Drawing Generator is a free online tool that revolutionizes drawing generation with AI. It introduces ControlNet, a neural network structure designed to enhance pretrained large diffusion models by incorporating additional input conditions. The tool enables users to convert scribbled drawings into detailed images through deep learning algorithms. It is adaptable for training on personal devices and can handle large datasets ranging from millions to billions. Ai Drawing Generator provides experimental compatibility with various diffusion models, offering users flexibility in choosing models based on their specific needs and preferences.
MonAi
MonAi is an AI-powered expense tracker that simplifies the process of tracking expenses by allowing users to input their expenses through voice messages. The AI technology automatically categorizes the expenses and generates a short description and amount. Users can easily confirm and save the details without the need for logging in. The data is securely stored in the user's private iCloud account. MonAi also enables users to share and collaborate on expense tracking. It offers a convenient and efficient way to manage expenses with the help of AI technology.
Upword
Upword is an AI-powered research assistant that seamlessly integrates AI with traditional research methods, empowering users to control every step of the research process. By combining Generative AI with user input, Upword enhances research efficiency and insights. The platform allows users to define research projects, curate trusted sources, collaborate with AI for insights, organize and refine research findings, and create impactful documents. Upword offers features such as summarizing YouTube videos, studying academic articles, analyzing market reports, and reading professional papers. With a privacy-first approach, Upword ensures data safety and provides users with an unfair advantage in research endeavors.
Rankify
Rankify is an AI SEO keyword research tool designed for SEO teams, freelancers, and agencies. It simplifies the process of finding relevant keywords and blog topics by allowing users to input seed keywords or semantically describe the keywords they want to find. The tool offers features such as search volume analysis, color-coded keyword difficulty, keyword lists segmentation, bulk copy and paste, and the ability to manage multiple projects. Rankify also provides enterprise-grade encryption and security for data protection.
Capitol AI
Capitol AI is an AI tool designed to help users create persuasive content from data. It is currently in beta phase, where AI-generated content may be incorrect or misleading. The platform offers users the ability to leverage AI technology to generate compelling content based on data inputs. Capitol AI aims to streamline the content creation process and provide users with valuable insights to enhance their communication strategies.
ePlant
ePlant is an advanced plant-data intelligence platform that offers remote monitoring of trees and vines health status, enabling users to easily track thousands of trees individually. The TreeTag system utilizes state-of-the-art wireless plant health monitors and AI technology to process collected data into actionable insights. It revolutionizes plant data collection and application in various sectors such as tree services, precision agriculture, and forestry. ePlant has been recognized as one of TIME's Best Inventions 2023 and is trusted by experts for its innovative approach to plant monitoring and research.
20 - Open Source AI Tools
NExT-GPT
NExT-GPT is an end-to-end multimodal large language model that can process input and generate output in various combinations of text, image, video, and audio. It leverages existing pre-trained models and diffusion models with end-to-end instruction tuning. The repository contains code, data, and model weights for NExT-GPT, allowing users to work with different modalities and perform tasks like encoding, understanding, reasoning, and generating multimodal content.
julep
Julep is an advanced platform for creating stateful and functional AI apps powered by large language models. It offers features like statefulness by design, automatic function calling, production-ready deployment, cron-like asynchronous functions, 90+ built-in tools, and the ability to switch between different LLMs easily. Users can build AI applications without the need to write code for embedding, saving, and retrieving conversation history, and can connect to third-party applications using Composio. Julep simplifies the process of getting started with AI apps, whether they are conversational, functional, or agentic.
instructor-php
Instructor for PHP is a library designed for structured data extraction in PHP, powered by Large Language Models (LLMs). It simplifies the process of extracting structured, validated data from unstructured text or chat sequences. Instructor enhances workflow by providing a response model, validation capabilities, and max retries for requests. It supports classes as response models and provides features like partial results, string input, extracting scalar and enum values, and specifying data models using PHP type hints or DocBlock comments. The library allows customization of validation and provides detailed event notifications during request processing. Instructor is compatible with PHP 8.2+ and leverages PHP reflection, Symfony components, and SaloonPHP for communication with LLM API providers.
data-juicer
Data-Juicer is a one-stop data processing system to make data higher-quality, juicier, and more digestible for LLMs. It is a systematic & reusable library of 80+ core OPs, 20+ reusable config recipes, and 20+ feature-rich dedicated toolkits, designed to function independently of specific LLM datasets and processing pipelines. Data-Juicer allows detailed data analyses with an automated report generation feature for a deeper understanding of your dataset. Coupled with multi-dimension automatic evaluation capabilities, it supports a timely feedback loop at multiple stages in the LLM development process. Data-Juicer offers tens of pre-built data processing recipes for pre-training, fine-tuning, en, zh, and more scenarios. It provides a speedy data processing pipeline requiring less memory and CPU usage, optimized for maximum productivity. Data-Juicer is flexible & extensible, accommodating most types of data formats and allowing flexible combinations of OPs. It is designed for simplicity, with comprehensive documentation, easy start guides and demo configs, and intuitive configuration with simple adding/removing OPs from existing configs.
XLearning
XLearning is a scheduling platform for big data and artificial intelligence, supporting various machine learning and deep learning frameworks. It runs on Hadoop Yarn and integrates frameworks like TensorFlow, MXNet, Caffe, Theano, PyTorch, Keras, XGBoost. XLearning offers scalability, compatibility, multiple deep learning framework support, unified data management based on HDFS, visualization display, and compatibility with code at native frameworks. It provides functions for data input/output strategies, container management, TensorBoard service, and resource usage metrics display. XLearning requires JDK >= 1.7 and Maven >= 3.3 for compilation, and deployment on CentOS 7.2 with Java >= 1.7 and Hadoop 2.6, 2.7, 2.8.
mentals-ai
Mentals AI is a tool designed for creating and operating agents that feature loops, memory, and various tools, all through straightforward markdown syntax. This tool enables you to concentrate solely on the agent’s logic, eliminating the necessity to compose underlying code in Python or any other language. It redefines the foundational frameworks for future AI applications by allowing the creation of agents with recursive decision-making processes, integration of reasoning frameworks, and control flow expressed in natural language. Key concepts include instructions with prompts and references, working memory for context, short-term memory for storing intermediate results, and control flow from strings to algorithms. The tool provides a set of native tools for message output, user input, file handling, Python interpreter, Bash commands, and short-term memory. The roadmap includes features like a web UI, vector database tools, agent's experience, and tools for image generation and browsing. The idea behind Mentals AI originated from studies on psychoanalysis executive functions and aims to integrate 'System 1' (cognitive executor) with 'System 2' (central executive) to create more sophisticated agents.
LLM-workshop-2024
LLM-workshop-2024 is a tutorial designed for coders interested in understanding the building blocks of large language models (LLMs), how LLMs work, and how to code them from scratch in PyTorch. The tutorial covers topics such as introduction to LLMs, understanding LLM input data, coding LLM architecture, pretraining LLMs, loading pretrained weights, and finetuning LLMs using open-source libraries. Participants will learn to implement a small GPT-like LLM, including data input pipeline, core architecture components, and pretraining code.
data-prep-kit
Data Prep Kit is a community project aimed at democratizing and speeding up unstructured data preparation for LLM app developers. It provides high-level APIs and modules for transforming data (code, language, speech, visual) to optimize LLM performance across different use cases. The toolkit supports Python, Ray, Spark, and Kubeflow Pipelines runtimes, offering scalability from laptop to datacenter-scale processing. Developers can contribute new custom modules and leverage the data processing library for building data pipelines. Automation features include workflow automation with Kubeflow Pipelines for transform execution.
DeepDanbooru
DeepDanbooru is an anime-style girl image tag estimation system written in Python. It allows users to estimate images using a live demo site. The tool requires specific packages to be installed and provides a structured dataset for training projects. Users can create training projects, download tags, filter datasets, and start training to estimate tags for images. The tool uses a specific dataset structure and project structure to facilitate the training process.
allms
allms is a versatile and powerful library designed to streamline the process of querying Large Language Models (LLMs). Developed by Allegro engineers, it simplifies working with LLM applications by providing a user-friendly interface, asynchronous querying, automatic retrying mechanism, error handling, and output parsing. It supports various LLM families hosted on different platforms like OpenAI, Google, Azure, and GCP. The library offers features for configuring endpoint credentials, batch querying with symbolic variables, and forcing structured output format. It also provides documentation, quickstart guides, and instructions for local development, testing, updating documentation, and making new releases.
SPAG
This repository contains the implementation of Self-Play of Adversarial Language Game (SPAG) as described in the paper 'Self-playing Adversarial Language Game Enhances LLM Reasoning'. The SPAG involves training Language Models (LLMs) in an adversarial language game called Adversarial Taboo. The repository provides tools for imitation learning, self-play episode collection, and reinforcement learning on game episodes to enhance LLM reasoning abilities. The process involves training models using GPUs, launching imitation learning, conducting self-play episodes, assigning rewards based on outcomes, and learning the SPAG model through reinforcement learning. Continuous improvements on reasoning benchmarks can be observed by repeating the episode-collection and SPAG-learning processes.
paper-qa
PaperQA is a minimal package for question and answering from PDFs or text files, providing very good answers with in-text citations. It uses OpenAI Embeddings to embed and search documents, and includes a process of embedding docs, queries, searching for top passages, creating summaries, using an LLM to re-score and select relevant summaries, putting summaries into prompt, and generating answers. The tool can be used to answer specific questions related to scientific research by leveraging citations and relevant passages from documents.
Chinese-Tiny-LLM
Chinese-Tiny-LLM is a repository containing procedures for cleaning Chinese web corpora and pre-training code. It introduces CT-LLM, a 2B parameter language model focused on the Chinese language. The model primarily uses Chinese data from a 1,200 billion token corpus, showing excellent performance in Chinese language tasks. The repository includes tools for filtering, deduplication, and pre-training, aiming to encourage further research and innovation in language model development.
Customer-Service-Conversational-Insights-with-Azure-OpenAI-Services
This solution accelerator is built on Azure Cognitive Search Service and Azure OpenAI Service to synthesize post-contact center transcripts for intelligent contact center scenarios. It converts raw transcripts into customer call summaries to extract insights around product and service performance. Key features include conversation summarization, key phrase extraction, speech-to-text transcription, sensitive information extraction, sentiment analysis, and opinion mining. The tool enables data professionals to quickly analyze call logs for improvement in contact center operations.
WeatherGFT
WeatherGFT is a physics-AI hybrid model designed to generalize weather forecasts to finer-grained temporal scales beyond the training dataset. It incorporates physical partial differential equations (PDEs) into neural networks to simulate fine-grained physical evolution and correct biases. The model achieves state-of-the-art performance in forecasting tasks at different time scales, from nowcasting to medium-range forecasts, by utilizing a lead time-aware training framework and a carefully designed PDE kernel. WeatherGFT bridges the gap between nowcast and medium-range forecast by extending forecasting abilities to predict accurately at a 30-minute time scale.
create-million-parameter-llm-from-scratch
The 'create-million-parameter-llm-from-scratch' repository provides a detailed guide on creating a Large Language Model (LLM) with 2.3 million parameters from scratch. The blog replicates the LLaMA approach, incorporating concepts like RMSNorm for pre-normalization, SwiGLU activation function, and Rotary Embeddings. The model is trained on a basic dataset to demonstrate the ease of creating a million-parameter LLM without the need for a high-end GPU.
evalscope
Eval-Scope is a framework designed to support the evaluation of large language models (LLMs) by providing pre-configured benchmark datasets, common evaluation metrics, model integration, automatic evaluation for objective questions, complex task evaluation using expert models, reports generation, visualization tools, and model inference performance evaluation. It is lightweight, easy to customize, supports new dataset integration, model hosting on ModelScope, deployment of locally hosted models, and rich evaluation metrics. Eval-Scope also supports various evaluation modes like single mode, pairwise-baseline mode, and pairwise (all) mode, making it suitable for assessing and improving LLMs.
upgini
Upgini is an intelligent data search engine with a Python library that helps users find and add relevant features to their ML pipeline from various public, community, and premium external data sources. It automates the optimization of connected data sources by generating an optimal set of machine learning features using large language models, GraphNNs, and recurrent neural networks. The tool aims to simplify feature search and enrichment for external data to make it a standard approach in machine learning pipelines. It democratizes access to data sources for the data science community.
DB-GPT-Hub
DB-GPT-Hub is an experimental project leveraging Large Language Models (LLMs) for Text-to-SQL parsing. It includes stages like data collection, preprocessing, model selection, construction, and fine-tuning of model weights. The project aims to enhance Text-to-SQL capabilities, reduce model training costs, and enable developers to contribute to improving Text-to-SQL accuracy. The ultimate goal is to achieve automated question-answering based on databases, allowing users to execute complex database queries using natural language descriptions. The project has successfully integrated multiple large models and established a comprehensive workflow for data processing, SFT model training, prediction output, and evaluation.
kafka-ml
Kafka-ML is a framework designed to manage the pipeline of Tensorflow/Keras and PyTorch machine learning models on Kubernetes. It enables the design, training, and inference of ML models with datasets fed through Apache Kafka, connecting them directly to data streams like those from IoT devices. The Web UI allows easy definition of ML models without external libraries, catering to both experts and non-experts in ML/AI.
20 - OpenAI Gpts
Source Evaluation and Fact Checking v1.3
FactCheck Navigator GPT is designed for in-depth fact checking and analysis of written content and evaluation of its source. The approach is to iterate through predefined and well-prompted steps. If desired, the user can refine the process by providing input between these steps.
Process Map Optimizer
Upload your process map and I will analyse and suggest improvements
Process Engineering Advisor
Optimizes production processes for improved efficiency and quality.
Customer Service Process Improvement Advisor
Optimizes business operations through process enhancements.
R&D Process Scale-up Advisor
Optimizes production processes for efficient large-scale operations.
Process Optimization Advisor
Improves operational efficiency by optimizing processes and reducing waste.
Manufacturing Process Development Advisor
Optimizes manufacturing processes for efficiency and quality.
Trademarks GPT
Trademark Process Assistant, Not an Attorney & Definitely Not Legal Advice (independently verify info received). Gain insights on U.S. trademark process & concepts, USPTO resources, application steps & more - all while being reminded of the importance of consulting legal pros 4 specific guidance.
Prioritization Matrix Pro
Structured process for prioritizing marketing tasks based on strategic alignment. Outputs in Eisenhower, RACI and other methodologies.
👑 Data Privacy for Insurance Companies 👑
Insurance providers collect and process personal health, financial, and property information, making it crucial to implement comprehensive data protection strategies.