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CleanML: Optimizing Data And Increasing Efficiency In NER
An MLOps tool for data-centric AI is called CleanML. To assist a machine learning team in managing the Named Entity Recognition (NER) project lifecycle, CleanML was developed. CleanML allows data to be vetted, annotated, modified, and uploaded from a single platform in an effective manner. Annotated data, which can be readily exported in a variety of data formats, may potentially provide insights. Astutic AI, an AI firm that is a part of the Intel Liftoff program, created the tool.
Named Entity Recognition (NER)
The Challenge
It may be quite difficult to oversee the whole lifespan of large-scale, intricate Named Entity Recognition (NER) projects. The procedure entails carefully selecting and annotating the data before drawing the required conclusions from it. This often proves to be an extremely difficult undertaking with the technological tools and platforms available today. This is where artificial intelligence (AI)-based software applications become useful, as they automatically group all connected activities and jobs that need to be finished.
The Solution
CleanML is a SaaS that helps commercial machine learning teams find the best models rapidly. Its major purpose is to improve Named Entity Recognition (NER), an important part of NLP. CleanML unifies key machine learning operations into a single platform, streamlining the analysis and processing of natural language.
The following activities may be accomplished by project managers, data scientists, annotators, and developers using CleanML:
Model training, comparison, experimentation, and lifecycle management
Assessment and correction of data quality
Segmenting data for training and assessment
Sophisticated data retagging and annotating
Using data-centric analytics, CleanML enables teams to find and fix common data and annotation errors while simultaneously maintaining and experimenting with models to optimize performance. Additionally, you can monitor and compare training iterations and see how modifications to data or code affect overall model metrics by delving deeply into model evaluation records.
Who stands to gain from CleanML use?
Project managers have the ability to start many projects and monitor each one separately.
Data scientists may learn more about the distribution of annotated entities, training and test data, and how to curate additional data for greater accuracy.
With CleanML‘s useful features, annotators may expedite and enhance the annotation process from a single window.
Using various libraries, software developers may test various algorithms on GPUs, CPUs, on-premises systems, or cloud computing environments.
CleanML‘s data-centric dashboard makes it possible to identify and resolve problems with data and data categorization. Additionally, drill-down analytics on the dataset are possible.
Which are the salient characteristics?
Data-centric dashboard: Investigate in-depth analytics while identifying and fixing data and categorization issues. Learn about the grouping of data and what categories were omitted or out of the ordinary.
Advanced workbench: Access to prior classifications, text annotation, renaming entities across records, in-place content editing, tag and auto-labeling recommendations, and the ability to build a custom dictionary are just a few of the useful capabilities that Workbench provides.
Built-in data versioning: CleanML keeps track of data versions automatically, which facilitates the replication of training outcomes. It also lets you evaluate how well a model performs when compared to other models, versions, and even methods that are presently being used.
Train, test, compare, and repeat: Using the same dataset, train and compare models using various techniques. CleanML keeps track of training and data versions, which facilitates in-depth comparisons and increases efficiency.
Auto-labeling recommendations: To expedite and simplify data annotation, get automatic labeling ideas from algorithms that have been trained.
Advanced Workbenches from CleanML provide practical capabilities like text annotation, entity renaming across records, in-place content editing, and more.
Models using several techniques may be trained and compared using the same dataset.
How does CleanML assist?
CleanML versions all of the training and facilitates data and training version comparisons.
Scientists of Data: Learn more about the distribution of annotated entities, training and test data, and how to curate additional data for greater accuracy.
Annotators: Uses CleanML’s useful features to enhance and speed up the annotation process all from a single window.
Developers: Try out several algorithms with various libraries, whether they be on a GPU, CPU, on-premises, or cloud.
By training a new model or algorithm in CleanML and comparing its results to those of the existing models in your project, you may quickly experiment with it.
Learn many algorithms, then contrast them.
Monitor the data annotation process.
Develop unique word embeddings for applications that are domain-specific.
Examine each entity’s over- and under-fitting in relation to the training results.
Incorporate production data and evaluate the model’s accuracy in the real world.
Compare the production model to a recently created and trained model.
Features
Dashboard focused on data
Determine and address problems with the data and data categorization, and do drill-down analysis on the dataset. Learn about data that has been categorized into many categories or classes, missing classifications, and classification anomalies.
Advanced Workstation
A custom dictionary may be added to Workbench, along with other helpful capabilities like annotation of text, entity renaming across records, in-place content editing, tag recommendations, auto-labeling suggestions, and prior classifications.
Integrated data versioning
Data versioning is done automatically by CleanML. Reproducible training is aided by this. Additionally, CleanML offers the option to compare a model’s training with that of an upgraded version of the model, a model that employs an alternative method, and even a model that has been put into operation.
Test, Train, Compare, and Repeat
Models using several techniques may be trained and compared using the same dataset. CleanML versions all of the training and facilitates data and training version comparisons. Your productivity will rise dramatically if you can compare both models and data at a record level.
Automatic labeling recommendations
Receive recommendations for labeling based on algorithms that have been learned; they may help annotators and expedite the annotation of fresh data.
Multiple data types are supported
Data may be imported into CoNLL-2003, JSONL, txt, IOB (IOB1/2, BILOU, IOBES), and IOB. Bring in data from the Singer Taps, UI, API, and command line. Utilize the command-line to export annotated data in a variety of data formats.
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