You will get Develop BERT Question Answering model explanations with visualization

Indumati D.Status: Offline
Indumati D. Indumati D.
5.0
Top Rated

Let a pro handle the details

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Indumati D.Status: Offline
Indumati D. Indumati D.
5.0
Top Rated

Let a pro handle the details

Buy Other AI & Machine Learning services from Indumati, priced and ready to go.

Project details

Client: A Leading Tech Firm in the USA
Industry Type: IT Consulting
Services: Software, Consulting
Organization Size: 100+

Project Description
We need to use a pre-trained bert question answering model and create a notebook that has explanations of model’s working with some visuals of bertviz, allennlp and gradient values.

Our Solution
We created a notebook first and explained the model with model view and head view visuals of bertviz library. It gives similarity between words so we can easily find related words. We used the allennlp library and created bar charts and heatmaps to show higher and lower attention words. It means when it finds question related words in the context it gives higher value to those words and if words are not related it gives lower values.

Project Deliverables
A notebook which has an explanation of the bert question answering model using some visualization.

Tools
Google colab notebooks, Tensorflow, Bertviz, Allennlp, Transformers

Language/techniques
Python, Deep learning, NLP, Data Visualization

Models
Pretrained bert-base-uncased model and distilbert model (both trained on squad2 dataset)

Skills
Data visualization, Deep learning, NLP, python
AI Development Type
Deep Learning, Knowledge Representation, Model Tuning, Recommendation System, Software Maintenance
AI Tools
Azure Machine Learning, deeplearn.js, Keras, MLflow, NVIDIA AI Platform, OpenCV, PyBrain, PyTorch, Sonnet, TensorFlow
AI Development Language
Python
What's included
Service Tiers Starter
$50
Standard
$400
Advanced
$2,000
Delivery Time 1 day 10 days 30 days
Number of Revisions
112
AI Model Integration
Detailed Code Comments
Knowledge Graph
Model Documentation
Ontology
Source Code
Taxonomy
5.0
1 review
100% Complete
1% Complete
(0)
1% Complete
(0)
1% Complete
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1% Complete
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DF

Danisavage F.
5.00
Aug 14, 2025
Spam detection and email analytics dashboard
Indumati D.Status: Offline

About Indumati

Indumati D.Status: Offline
AI Engineer | Python, React, Node.js, LLM App, SQL, GraphQL, AWS, API
100% Job Success
5.0  (1 review)
Jamui, India - 3:21 am local time
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After purchasing the project, send requirements so Indumati can start the project.

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Develop BERT Question Answering model

We need to use a pre-trained bert question answering model and create a notebook that has explanations of model’s working with some visuals of bertviz, allennlp and gradient values.

Review the work, release payment, and leave feedback to Indumati.