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Submission declined on 8 September 2025 by Pythoncoder (talk).
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Portfolio Optimization: Generates optimized portfolios based on investment goals and constraints (e.g. yield, duration, ESG scores).
Portfolio Rebalancing: Identifies and adjusts portfolios that deviate from targets due to market changes or cash flows.
Bond Ladder Construction: Enables creation of custom bond ladders with configurable parameters such as credit quality, duration, and issuer limits.
Supporting mixed integer solutions tailored for fixed income investing and "solve anyway" functions for complex constraints.
Model Management: Supports large-scale account management with features like batch optimization, block trading, and trade allocation.
Compliance Monitoring: Provides real-time alerts and pre/post-trade checks to ensure adherence to investment policy statements (IPS) and regulatory guidelines.
Performance and Risk Reporting: Offers on-demand and scheduled reports with performance, risk, and compliance metrics.
Multi-venue liquidity access and best execution.
Custody-to-trade integration.
End-to-end portfolio management, from construction to reporting.
Predicts rating transition probabilities for 3,000 corporate and financial issuers globally.
Analyses more than 250 data variables daily to assess downgrade and upgrade risks.
Explainable AI (XAI): Provides transparency into the drivers behind risk assessments, allowing users to understand the impact of various data variables (fundamentals, financial statements, capital markets data) on predictions
Generates alerts and smart lists for identifying investment opportunities and risks.
Performance analysis shows it accurately predicts "90.2% of downgrades vs 79% indicated by rating agency outlooks" and "78.2% vs 54.7% for upgrades.
bondIT’s technology stack incorporates proprietary algorithms, machine learning models, and explainable AI. The platform is data-agnostic and API-ready, allowing integration with custodial systems, trading venues, and third-party data providers. It supports direct indexing, ESG integration, and scenario analysis, and is designed for scalability across thousands of accounts.
bondIT has been recognized in fintech and wealth management publications for its innovation in AI-driven portfolio management. bondIT partnered with BNY Mellon Pershing to developed BondWise, a market leading fixed income platform for U.S. RIA’s and Broker Dealers.[13][14]
bondIT published a number of research articles: Portfolio selection in non-stationary markets[15], and Universal Mean-Variance Portfolios
- Promotional tone, editorializing and other words to watch
- Vague, generic, and speculative statements extrapolated from similar subjects
- Essay-like writing
- Hallucinations (plausible-sounding, but false information) and non-existent references
- Close paraphrasing
Please address these issues. The best way is usually to read reliable sources and summarize them, instead of using a large language model. See our help page on large language models.