Comprehensive pesquisa reprodutível Tools for Every Need

Get access to pesquisa reprodutível solutions that address multiple requirements. One-stop resources for streamlined workflows.

pesquisa reprodutível

  • An AI Agent platform automating data science workflows by generating code, querying databases, and visualizing data seamlessly.
    0
    0
    What is Cognify?
    Cognify enables users to define data science goals and lets AI Agents handle the heavy lifting. Agents can write and debug code, connect to databases for querying insights, produce interactive visualizations, and even export reports. With a plugin architecture, users can extend functionality to custom APIs, scheduling systems, and cloud services. Cognify offers reproducibility, collaboration features, and logging to track agent decisions and outputs, making it suitable for rapid prototyping and production workflows.
  • Annotate web pages with research papers and workflows.
    0
    1
    What is Collective Knowledge?
    Collective Knowledge is a Chrome extension that empowers users to annotate any web page with associated research papers, code snippets, and reproducible results. It also enables the creation of portable workflows and reusable artifacts, consolidating information from various sources directly into your browser. This tool makes it easier to reference essential materials, collaborate effectively, and maintain clarity in research efforts or project tasks. Ideal for both academic and professional settings, it enhances productivity by keeping relevant information at your fingertips.
  • An open-source AI agent automating data cleaning, visualization, statistical analysis, and natural language querying of datasets.
    0
    0
    What is Data Analysis LLM Agent?
    Data Analysis LLM Agent is a self-hosted Python package that integrates with OpenAI and other LLM APIs to automate end-to-end data exploration workflows. Upon providing a dataset (CSV, JSON, Excel, or database connection), the agent generates code for data cleaning, feature engineering, exploratory visualization (histograms, scatter plots, correlation matrices), and statistical summaries. It interprets natural language queries to dynamically run analyses, update visuals, and produce narrative reports. Users benefit from reproducible Python scripts alongside conversational interaction, enabling both programmers and non-programmers to derive insights efficiently and compliantly.
  • MARFT is an open-source multi-agent RL fine-tuning toolkit for collaborative AI workflows and language model optimization.
    0
    0
    What is MARFT?
    MARFT is a Python-based LLMs, enabling reproducible experiments and rapid prototyping of collaborative AI systems.
  • Implements prediction-based reward sharing across multiple reinforcement learning agents to facilitate cooperative strategy development and evaluation.
    0
    0
    What is Multiagent-Prediction-Reward?
    Multiagent-Prediction-Reward is a research-oriented framework that integrates prediction models and reward distribution mechanisms for multi-agent reinforcement learning. It includes environment wrappers, neural modules for forecasting peer actions, and customizable reward routing logic that adapts to agent performance. The repository provides configuration files, example scripts, and evaluation dashboards to run experiments on cooperative tasks. Users can extend the code to test novel reward functions, integrate new environments, and benchmark against established multi-agent RL algorithms.
  • A Python framework for easily defining and executing AI agent workflows declaratively using YAML-like specifications.
    0
    0
    What is Noema Declarative AI?
    Noema Declarative AI allows developers and researchers to specify AI agents and their workflows in a high-level, declarative manner. By writing YAML or JSON configuration files, you define agents, prompts, tools, and memory modules. The Noema runtime then parses these definitions, loads language models, executes each step of your pipeline, handles state and context, and returns structured results. This approach reduces boilerplate, improves reproducibility, and separates logic from execution, making it ideal for prototyping chatbots, automation scripts, and research experiments.
Featured