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Evidently AI VS Papers with Code

Compare Evidently AI VS Papers with Code and see what are their differences

Evidently AI logo Evidently AI

Open-source monitoring for machine learning models

Papers with Code logo Papers with Code

The latest in machine learning at your fingerprints
  • Evidently AI Landing page
    Landing page //
    2023-08-19
  • Papers with Code Landing page
    Landing page //
    2022-07-17

Evidently AI features and specs

  • Automated Monitoring
    Evidently AI provides automated monitoring of machine learning models, which helps in identifying performance degradation or drift, ensuring models remain accurate and reliable over time.
  • User-Friendly Interface
    The platform offers a user-friendly interface that allows practitioners with varying levels of expertise to easily navigate through features and monitor models effectively.
  • Comprehensive Reporting
    Evidently AI generates detailed reports that include key metrics and insights about model performance, making it easier to communicate findings with stakeholders.
  • Integration Capabilities
    It can be integrated seamlessly with existing data pipelines and machine learning infrastructures, allowing for more streamlined workflows.
  • Open Source
    As an open-source tool, Evidently AI enables greater flexibility and customization, allowing users to modify and extend its features to suit specific needs.

Possible disadvantages of Evidently AI

  • Limited Advanced Features
    While Evidently AI covers basic and intermediate monitoring needs well, it may lack some of the more advanced features offered by other specialized commercial platforms.
  • Dependency Management
    Being open-source, managing dependencies and ensuring compatibility with other tools or libraries can sometimes be challenging and may require additional effort.
  • Resource Intensive
    The tool may require significant computational resources for large scale models or big datasets, which could be a limitation for some users.
  • Initial Setup Complexity
    Initial setup and configuration of the platform might be complex for users without a strong technical background, potentially causing a steeper learning curve.

Papers with Code features and specs

  • Open Access
    Papers with Code provides free access to a vast repository of research papers and code implementations, making cutting-edge research available to a wider audience.
  • Reproducibility
    By linking research papers with their corresponding code, it promotes reproducibility, allowing researchers to verify results and build upon previous work more effectively.
  • Benchmarking
    The platform offers benchmarking tools and leaderboards, facilitating the comparison of different models and approaches on standard datasets and fostering competition in the research community.
  • Community Engagement
    Researchers and developers can contribute their own code and evaluations, which encourages community collaboration and the sharing of knowledge.
  • Resource Saving
    By providing implementations and datasets, it saves researchers time and resources, enabling them to focus on innovation rather than recreating existing work.

Possible disadvantages of Papers with Code

  • Quality Control
    Not all code implementations are thoroughly vetted or peer-reviewed, which can lead to issues with code quality and reliability.
  • Misalignment of Benchmarks
    Benchmarks and evaluations might not perfectly align with certain niche or novel research tasks, potentially skewing perceptions about model performance.
  • Dependence on Contributor Participation
    The platform relies heavily on community contributions; if participation wanes, the updates and breadth of resources could stagnate.
  • Integration Challenges
    Integrating and adapting third-party code into different environments or existing projects can sometimes be challenging due to dependencies or compatibility issues.
  • Information Overload
    With a vast amount of available papers and code, navigating and finding the most relevant and high-quality resources can be overwhelming for users.

Evidently AI videos

How to Monitor Machine Learning Models (Evidently AI)

Papers with Code videos

The best site for research papers with codes on Machine/Deep Learning | Research paper search

More videos:

  • Review - Papers With Code Machine Learning Papers and Code Free Resource

Category Popularity

0-100% (relative to Evidently AI and Papers with Code)
AI
45 45%
55% 55
Developer Tools
62 62%
38% 38
Data Science And Machine Learning
Open Source
100 100%
0% 0

User comments

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Social recommendations and mentions

Based on our record, Papers with Code seems to be a lot more popular than Evidently AI. While we know about 99 links to Papers with Code, we've tracked only 2 mentions of Evidently AI. We are tracking product recommendations and mentions on various public social media platforms and blogs. They can help you identify which product is more popular and what people think of it.

Evidently AI mentions (2)

  • [D] Using MLFlow for model performance tracking
    It is doable. However the main focus of MLFlow is in experiment tracking. I would suggest for you to look into another monitoring tools such evidentlyai . You can track more things than performance (e.g.data drift). Which may be helpful in a production setting. Source: over 2 years ago
  • Five Data Quality Tools You Should Know
    Evidently is an open-source Python library that analyzes and monitors machine learning models. It generates interactive reports based on Panda DataFrames and CSV files for troubleshooting models and checking data integrity. These reports show model health, data drift, target drift, data integrity, feature analysis, and performance by segment. - Source: dev.to / over 3 years ago

Papers with Code mentions (99)

  • Computer Vision Made Simple with ReductStore and Roboflow
    An helpful approach is to browse the state of the art models in paperswithcode. This will give you an idea of the performance of different models on various tasks. - Source: dev.to / 7 months ago
  • Show HN: Simple Science – The Newest Science Explained Simply
    I think a way around this would some sort of voting/ popularity system? Papers with code (https://paperswithcode.com/) does this via Github stars sorting. Sure it doesn't mean something is established. But it at least gives some way to filter through the firehose of papers. Love this project btw! I think it has potential (and the timing is right now that everyone is looking for the next "attention is all... - Source: Hacker News / 9 months ago
  • Essential Deep Learning Checklist: Best Practices Unveiled
    Adapting to Evolving Standards: With the rapid progress in deep learning research and applications, staying current with the latest developments is crucial. The checklist underscores the importance of considering established standard architectures and leveraging current state-of-the-art (SOTA) resources, like paperswithcode.com, to guide project decisions. This dynamic approach ensures that projects benefit from... - Source: dev.to / 11 months ago
  • Understanding Technical Research Papers
    Papers With Code is one of the good resources to get you to get started. - Source: dev.to / about 1 year ago
  • Ask HN: Is there a data set for GitHub repos associated with academic papers?
    For ML/DL papers you can check https://paperswithcode.com/. - Source: Hacker News / over 1 year ago
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What are some alternatives?

When comparing Evidently AI and Papers with Code, you can also consider the following products

ML5.js - Friendly machine learning for the web

ML Showcase - A curated collection of machine learning projects

Amazon Machine Learning - Machine learning made easy for developers of any skill level

Pretrained AI - Integrate pretrained machine learning models in minutes.

Machine Learning Playground - Breathtaking visuals for learning ML techniques.

Censius.ai - Building the future of MLOps