Shulph Ink
Federated Learning in Finance: Unlocking Privacy-Preserving and Cyber Resilience using AI
Federated Learning in Finance: Unlocking Privacy-Preserving and Cyber Resilience using AI
💎 Earn 571 Points (£5.71) on this item.
YOU SAVE £5.76
- Condition: Brand new
- UK Delivery times: Usually arrives within 2 - 3 working days
- UK Shipping: Fee starts at £2.39. Subject to product weight & dimension
Bulk ordering. Want 15 or more copies? Get a personalised quote and bigger discounts. Learn more about bulk orders.
Couldn't load pickup availability
- More about Federated Learning in Finance: Unlocking Privacy-Preserving and Cyber Resilience using AI
Format: Hardback
Length: 326 pages
Publication date: 12 May 2026
Publisher: Taylor & Francis Ltd
Federated Intelligence: Unlocking Privacy-Preserving and Cyber Resilience using AI in the Finance Industry" is an edited volume designed to explores how Federated Intelligence can help the finance industry defend against cyber threats, detect fraud, and comply with regulations.
Weight: 790g
Dimension: 254 x 178 (mm)
ISBN-13: 9781041115106
This item can be found in:
UK and International shipping information
UK and International shipping information
UK Delivery and returns information:
- Delivery within 2 - 3 days when ordering in the UK.
- Shipping fee for UK customers from £2.39. Fully tracked shipping service available.
- Returns policy: Return within 30 days of receipt for full refund.
International deliveries:
Shulph Ink now ships to Australia, Belgium, Canada, France, Germany, Ireland, Italy, India, Luxembourg Saudi Arabia, Singapore, Spain, Netherlands, New Zealand, United Arab Emirates, United States of America.
- Delivery times: within 5 - 10 days for international orders.
- Shipping fee: charges vary for overseas orders. Only tracked services are available for most international orders. Some countries have untracked shipping options.
- Customs charges: If ordering to addresses outside the United Kingdom, you may or may not incur additional customs and duties fees during local delivery.
