PM with Digital Banking Operations and AI

Nexus Jobs Ltd
London
1 month ago
Applications closed

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Project Manager with Digital Banking Operations and Artificial Intelligence AIWe are seeking a Project Manager with Digital Banking Operations and Artificial Intelligence (AI) Projects experience to join our Client a bank based in Central London.As an AI project manager, you be responsible for overseeing and managing the implementation of AI projects within our digital banking operations.Experience and Qualifications * Previous experience in project management, preferably within the banking or financial services industry * Strong understanding of digital banking operations and Artificial Intelligence AI technologies * Proven track record of successfully delivering complex projects on time and within budget * Project management certification (e.g., PMP) is a plus * Bachelor's degree in a relevant fieldAreas to Consider1. Customer Service Enhancement * Chatbots and Virtual Assistants: Deploy AI-driven chatbots to handle routine inquiries, provide 24/7 support, and reduce wait times. * Sentiment Analysis: Use AI to analyze customer feedback and sentiment from various channels to improve services.2. Fraud Detection and Prevention * Real-Time Monitoring: Implement AI algorithms to detect and flag unusual transactions in real-time. * Predictive Analytics: Use machine learning models to predict potential fraud based on historical data and behavioural patterns.3. Loan Processing Automation * Credit Scoring: AI can evaluate creditworthiness more accurately by analyzing a wider range of data points. * Document Verification: Automate the verification of documents submitted for loan applications, speeding up the approval process.4. Personalized Banking Services * Customer Insights: Leverage AI to gain insights into customer behaviour and preferences, allowing for personalized product recommendations. * Marketing Campaigns: Use AI to target customers with tailored marketing campaigns based on their transaction history and preferences.5. Risk Management * Risk Assessment: AI can analyze market trends and economic indicators to provide early warnings about potential risks. * Compliance Monitoring: Automate compliance checks and monitoring to ensure adherence to regulations and reduce the risk of non-compliance penalties.6. Operational Efficiency * Process Automation: Use robotic process automation (RPA) to handle repetitive tasks such as data entry, account reconciliation, and report generation. * Workflow Optimization: AI can optimize workflows by identifying bottlenecks and suggesting improvements.Implementation Strategy 1. Assessment: Evaluate the current state of digital banking operations and identify areas where AI can add value. 2. Pilot Projects: Start with pilot projects to test AI applications in a controlled environment. 3. Scalability: Ensure that AI solutions are scalable and can handle increasing volumes of data and transactions. 4. Employee Training: Train staff on AI tools and their applications to ensure seamless integration. 5. Continuous Improvement: Regularly update AI models and algorithms based on new data and evolving business needs.Challenges and Considerations * Data Quality: Ensure high-quality data for accurate AI predictions and analysis. * Regulatory Compliance: Stay compliant with financial regulations while implementing AI solutions. * Customer Trust: Maintain transparency in AI-driven decisions to build and maintain customer trust. * Integration: Seamlessly integrate AI with existing banking systems and processes.The main emphasis of this position to is harness the data from a variety of data tables at the bank and collate a Data Lake from which to extract a variety of AI reports to increase the banks customer strategy.By strategically implementing AI in these areas, a Digital Banking Operations Manager can greatly improve the efficiency, security, and customer satisfaction in digital banking operations.The position will be hybrid 3 days a week in the office.The salary is negotiable depending on experience but probably in the range £80K - £120K plus benefits.Do send your CV to us in Word format along with your salary and notice period

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