The Conference for Machine Learning Innovation

Prof. Debjyoti Paul

Prof. Debjyoti Paul
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Register until October 20:
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✓ Team discount
✓ Extra Specials for Freelancers
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Join the ML Revolution!
Register until October 20:
✓ Save up to $233
✓ Team discount
✓ Extra Specials for Freelancers
Register Now
Join the ML Revolution!
Register until November 03:
✓ Save up to €494
✓ 10% Team Discount
✓ Special discount for freelancers
Register Now
Join the ML Revolution!
Register until November 03:
✓ Save up to €494
✓ 10% Team Discount
✓ Special discount for freelancers
Register Now
Join the ML Revolution!
Until the Conference starts:
✓ Group discount
✓ Special discount for freelancers
Register Now
Join the ML Revolution!
Until the Conference starts:
✓ Group discount
✓ Special discount for freelancers
Register Now

Prof. Debjyoti Paul

Amazon

I am a Machine Learning expert with Amazon.
I have worked with financial decision science division of HSBC and in Machine Learning for Microsoft R&D Bing Ads.
I have 6 years experience in Machine learning and 3+ industry experience. I am working on Knowledge Graph and Visual Question Answering.

Take me to the full program of Zum vollständigen Programm von Singapore Singapore .

Take me to the full program of Zum vollständigen Programm von Berlin Berlin .

This Speaker belongs to the Dieser Speaker gehört zum Programm vom SingaporeSingapore and  und BerlinBerlin program. Take me to the program of . Hier geht es zum Programm von Munich Munich .

This Speaker Dieser Speaker belongs to the gehört zum Programm von SingaporeSingapore and  und BerlinBerlin program. Take me to the current program of . Hier geht es zum aktuellen Programm von Singapore Singapore , Berlin Berlin or oder Munich Munich .

All talks by Prof. Debjyoti Paul

Singapore 2022 Singapore 2022 Berlin 2022 Berlin 2022 -

Data Centric AI vs Model Centric AI – The “right” data vs “best” model culture




All talks by Prof. Debjyoti Paul from other editions

München 2021 Munich 2021 -

Federated Learning: The Next Generation Machine Learning for Regulated Domains – Healthcare and Banking



München 2020 Munich 2020 -

Interpretable Machine Learning – Application to Finance and Banks



Singapore 2020 Singapore 2020 -

Multi Tasking Deep Learning for Natural Language Processing – Transfer Learning



All talks by Prof. Debjyoti Paul

Singapore 2022 Singapore 2022 Berlin 2022 Berlin 2022 -

Data Centric AI vs Model Centric AI – The “right” data vs “best” model culture




All talks by Prof. Debjyoti Paul from other editions

München 2021 Munich 2021 -

Federated Learning: The Next Generation Machine Learning for Regulated Domains – Healthcare and Banking



München 2020 Munich 2020 -

Interpretable Machine Learning – Application to Finance and Banks



Singapore 2020 Singapore 2020 -

Multi Tasking Deep Learning for Natural Language Processing – Transfer Learning



All talks by Prof. Debjyoti Paul

No current talks available.

All talks by Prof. Debjyoti Paul from other editions

Singapore 2022 Singapore 2022 Berlin 2022 Berlin 2022 -

Data Centric AI vs Model Centric AI – The “right” data vs “best” model culture



München 2021 Munich 2021 -

Federated Learning: The Next Generation Machine Learning for Regulated Domains – Healthcare and Banking



München 2020 Munich 2020 -

Interpretable Machine Learning – Application to Finance and Banks



Singapore 2020 Singapore 2020 -

Multi Tasking Deep Learning for Natural Language Processing – Transfer Learning



All talks by Prof. Debjyoti Paul

Singapore 2022 Singapore 2022 Berlin 2022 Berlin 2022 -

Data Centric AI vs Model Centric AI – The “right” data vs “best” model culture




All talks by Prof. Debjyoti Paul from other editions

München 2021 Munich 2021 -

Federated Learning: The Next Generation Machine Learning for Regulated Domains – Healthcare and Banking



München 2020 Munich 2020 -

Interpretable Machine Learning – Application to Finance and Banks



Singapore 2020 Singapore 2020 -

Multi Tasking Deep Learning for Natural Language Processing – Transfer Learning



Behind the Tracks