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How AI Empowers Business with Advanced Financial Modeling and Forecastin

November 29, 2024

The financial sector is leading the way in embracing artificial intelligence, showcasing one of the most significant adoption rates across industries.

In 2023, the financial services sector allocated roughly $35 billion towards AI projects. Within this investment, the banking industry was at the forefront, contributing about $21 billion.

The core of artificial intelligence within the financial sector is represented by financial modeling and prediction. However, that’s not all AI-powered solutions bring to the table. Among the advantages of using AI for financial modeling are:

  • Improved data processing
  • Automated operations
  • Personalized business insights.

Financial modeling and forecasting software enables business executives to better manage the complexity of the current financial world. Read on to find out how using artificial intelligence boosts enterprise financial efforts.

What is AI financial modeling and forecasting?

Financial forecasting estimates future financial performance using historical data. Traditional methods require manual efforts and niche knowledge, posing challenges for small and medium-sized businesses.

What’s more, in many cases, modeling relies on assumptions and guesswork, as unforeseen factors can significantly impact business outcomes. Only high-profile analysts have the kind of wit to navigate these waters.

Financial models simplify tasks like company valuation and risk assessment. AI adoption in financial modeling enables predictive models that reveal unseen patterns and revenue drivers, accelerating mundane tasks.

We know this from experience. Our team at Coherent used AI to help a global tech company understand key performance indicators impacting their revenue and streamlined their forecasting efforts to shorten the timeframe from weeks to just a few days.

AI financial forecasting applications

AI-powered financial modeling empowers us to analyze extensive datasets, revealing patterns that often elude human analysts. Enabling more accurate predictions, personalized user experiences, streamlined operations, and informed decision-making, financial forecasting systems catalyze innovation and drive business evolution.

Let’s take a closer look at how AI technology finds its way to business operations and forms different shades of financial analytics.

Financial planning and analysis (FP&A)

With AI, financial planning and analysis become much more effective.

AI models improve over time, adapting to changes like market shifts and economic trends, providing FP&A experts with accurate, flexible forecasts. Digital twins, virtual replicas of processes or products, enable us to test assumptions and prepare for any outcomes, serving as an ultimate risk management solution.

Siemens is a good example of a company using AI to elevate their financial reporting. With advanced AI models feeding data to interactive dashboards, it is transformed into actionable insight that Siemens managers use to make informed decisions. Thanks to AI financial modeling, their team witnessed a 10% prediction accuracy boost.

Risk management

In today’s high-speed world, businesses need real-time data analysis tools for risk assessment. They face various risks, from loan defaults to stock market fluctuations. AI surpasses traditional methods, providing deep understanding and predictive capabilities for proactive risk management.

BlackRock, an asset management company, leverages artificial intelligence to enhance data quality and analysis for advanced risk management. Through AI, they can analyze more than 5,000 earnings call transcripts each quarter and over 6,000 broker reports daily.

Credit risk assessment

AI accelerates the credit process for banks, automating credit memos and contracts. It generates code for sourcing and analyzing credit data, providing a comprehensive view of customer risk profiles and estimating default probabilities.

Upstart, an AI-powered online lending platform, weighs factors beyond conventional credit metrics to offer more precise and equitable credit assessments, particularly for individuals with limited credit history. Their solution approves 44.28% more borrowers than traditional models, all the while maintaining a 36% lower annual percentage rate.

Fraud detection

Artificial intelligence and its modern implementations, like neural networks and generative AI models empower experts to analyze extensive datasets for detecting fraudulent activities. It also throws real-time monitoring and proactive fraud prevention into the picture.

Having a broader data outlook and swiftly detecting patterns, anomalies, and correlations, fraud prevention officers can block fraudulent activities with the utmost efficiency.

For instance, most eCommerce store owners are aware that Shopify employs AI algorithms to identify potentially fraudulent transactions on its platform. These algorithms analyze various factors, including transaction location, device information, and the user’s historical behavior, to assess the likelihood of a transaction being fraudulent.

Portfolio management

AI’s processing speed in analyzing financial data aids investors in decision-making and data handling. It predicts liquidity issues, enabling informed choices on asset liquidity. AI identifies low-risk investments and cultivates conservative portfolios, ensuring consistent returns.

AI financial forecasting systems make for more resilient portfolios that withstand market volatility, creating a stable profile that appeals to investors.

As an example, BlackRock leverages artificial intelligence for constructing and analyzing a variety of portfolios, with their AI-powered Aladdin analytics platform enriching the overall investment experience.

Personal finance assistance

AI technologies enable global populations to access banking services using just an ID and phone number. Expense management and budgeting are now automated, creating a profitable market. AI tools can also forecast financial impacts on credit scores and offer debt management advice.

For instance, the SoFi online bank incorporates AI into its personal finance and lending solutions, analyzing customer data to offer reduced interest rates and increased savings opportunities.

Another great example of AI application in personal finance is Wally. The app automatically classifies all client expenses and income sources from linked checking, savings, credit card, loan, and investment accounts. Their in-app chatbot service, WallyGPT, further streamlines this process for users.

Algorithmic trading

Algorithmic trading now uses AI to transform variables into trade suggestions. Its adaptive learning allows strategy changes for financial shifts. AI tools analyze market data, predict future movements, and help traders navigate market fluctuations.

Federico Dominguez, Founding Partner of MyStockDNA, an AI-powered investment platform with over 30 years of experience in the financial and technology sectors, comments:

‘No human being can keep up with the pace of change of modern markets: so rapidly and continuously evolving. No strategy, algorithm, or TA will hold good performance forever, trading strategies tend to decay over time, some faster than others. Some have a good run, fall from grace for a period, and then retake virtuosity. You have to leave the creation of new and better trading algorithms to another algorithm.’

Stock market prediction

The stock market’s volatility and complexity challenge traders and investors. AI algorithms quickly evaluate technical indicators like EMA, RSI, Bollinger bands, Fibonacci retracement, and stochastic oscillators for accurate forecasts, helping identify profitable trading opportunities.

Working with hedge funds and other asset management firms, our AI development team at Coherent has witnessed that incorporating financial modeling AI boosts the accuracy rate of stock price prediction to nearly 80%.

Recent reports have shown that AI-powered hedge funds return almost triple the global industry average, besting traditional investment houses in every conceivable metric.

Insurance underwriting and pricing

AI-enhanced underwriting allows for precise pricing, improved risk management, and personalized offers. It uses varied data, like travel histories, destination specifics, and risk assessments.

This enables insurers to offer customized plans based on unique customer risk profiles. For example, property insurers can use smart home data, while life insurers can use fitness tracker data for predictive modeling.

Allianz, a global leader in insurance, reported that after integrating AI into its operations, particularly underwriting and pricing for travel insurance, it experienced a 15% year-over-year revenue growth and a 30 to 50% reduction in operational costs.

Real estate investment

AI tools can now enhance conventional property valuation methods, which rely on market dynamics and local trends. They analyze extensive data, including real-time market conditions and social media sentiment, to predict future trends and provide a nuanced perspective on a property’s potential worth.

AI’s proactive predictive maintenance capabilities may also contribute to property upkeep, safeguarding its investment value.

Jim Fried, the president and founder of Sandstone Realty Advisors speaks highly of using AI tools for real estate affairs. Here’s what he had to say about DeepBlocks,  an AI-powered platform for real estate investment:

‘I used Deepblocks on a property that I’ve been looking at, and it probably saved me a week and a half of sending it to somebody and $10k to evaluate it. This software is a game-changer for me.’

Financial modeling AI: market state

In 2024, the financial sector grapples with technological challenges like generative AI, cloud migration, fraud, and cybersecurity risks. Concepts such as embedded finance blur the industry’s boundaries. The global economy slows down amidst a divergent landscape, supply chain disruptions, trade shifts, and geopolitical tensions.

To navigate this turbulence, leaders in finance must embrace agility and take advantage of innovative strategic solutions to become flexible and efficient. Here are some of the current financial modeling trends:

  • By 2030, it is anticipated that 95% of financial models will incorporate Environmental, Social, and Governance (ESG) parameters.
  • Since 2021, there has been a 150% increase in the adoption of cloud-based financial modeling platforms, and the demand for skilled professionals in financial modeling has risen by 60% compared to 2020.
  • According to Gartner’s 2024 Tech Trends in Finance report, 72% of finance companies intend to boost their software spending in the upcoming year, with a strong focus on IT security and management.
  • NVIDIA’s financial services survey highlighted an impressive 86% of financial institutions experiencing a positive impact on their revenue due to AI, while 82% observed a reduction in costs.
  • The same report from NVIDIA claims that this optimistic outlook has led a staggering 97% of companies to plan increased investments in AI technologies in the near future.
  • Also, 75% of financial service companies consider their AI capabilities industry-leading or in the middle of the pack.

How AI in financial modeling works

AI in financial modeling works by converging diverse data sources and computational methods to forecast financial results, detect patterns, and inform decision-making based on data analysis:

1. Data collection and preparation

To begin, we collect an extensive set of historical data that is pertinent to the financial model. This dataset encompasses:

  • Historical financial statements: Obtain detailed financial statements for the companies or entities you intend to model.
  • Market data: Retrieve historical stock prices, trading volumes, and market indices.
  • Economic indicators: Collect macroeconomic data, including interest rates, inflation rates, and GDP growth figures.
  • Social media sentiment analysis: Examine sentiments expressed on platforms such as Twitter.
  • Satellite Imagery Monitoring: Observe changes in infrastructure or logistics.
  • Web Scraping for Financial Insights: Extract data from websites to gain specific financial information.

Next, we perform data cleaning and preprocessing to address missing values, eliminate outliers, and normalize the data, ensuring its suitability for analysis:

  • Exploratory data analysis: Examine data mean and median values, assess variability, check data distribution, and explore data relationships.
  • Data cleaning: Address missing values, remove duplicates, and handle outliers.
  • Feature engineering: Create new relevant features or transform existing ones to improve model performance.
  • Normalization: Standardize numerical features to ensure they are on a similar scale.

2. Model choice and development

Depending on the problem’s complexity and the data’s nature, various AI models can be employed:

  • Linear and logistic regression are suitable for straightforward predictions and classifications.
  • Decision trees and random forests handle non-linear relationships and classifications.
  • Neural networks and deep learning excel at capturing intricate patterns and relationships in large datasets.
  • Time series analysis is useful for forecasting future values based on historical data sequences.
  • Reinforcement learning: is an exciting field in AI that can be applied to develop adaptive trading strategies.

3. Training the AI model

In AI training, the model learns from dataset examples to refine its predictions. Sometimes, adjustments are made to the model’s parameters, so that it can improve faster with each learning iteration.

In financial modeling, the model’s parameters are tweaked to improve the accuracy of predictions.

A feedback loop, quantified by a loss function, measures prediction deviation and helps minimize errors. The aim is to achieve convergence, aligning the model’s predictions with the training data.

4. Model evaluation, testing, and validation

Post-training, the model is validated and tested with unseen data to evaluate its performance and generalization ability. Metrics like accuracy, precision, recall, and mean squared error are used for these assessments.

The key elements in model validation are:

  • Metrics for financial models: Appropriate metrics are vital for assessing financial models’ accuracy and performance in prediction and risk evaluation.
  • Cross-validation techniques: Cross-validation evaluates a financial model’s performance on new data, validating its generalization and robustness.
  • Backtesting and simulation: Backtesting tests model performance with historical data, while simulation evaluates it under different market conditions.
  • Model interpretability and explainability: Interpreting financial models is crucial when dealing with stakeholders. Transparent models boost trust and aid in decision-making.

Using the performance metrics, model developers guide its optimization and evaluate whether the model is ready to be deployed. Modifying the parameters, selecting features, or adjusting architecture can enhance prediction accuracy and generalization of AI financial forecasting models.

5. Deployment and monitoring

After optimization, the AI model is deployed into production, enabling it to make real-time predictions or decisions based on live data.

It becomes essential to continuously monitor the model’s performance as financial markets and economic conditions may shift rapidly and make a complete turn-around on current strategies.

6. Continuous development and integration

In an ideal scenario, AI models used in financial modeling continuously learn from new data. This adaptive learning ensures that the model remains relevant and accurate over time, adapting to emerging trends and patterns.

AI technologies used in financial modeling

Financial forecasting artificial intelligence tools are revolutionizing the industry, enabling more accurate predictions, efficient processes, and data-driven decision-making.

Here’s a breakdown of the technologies offered through AI solutions:

Machine learning (ML)

ML algorithms can predict various outcomes by learning from sourced data. In finance, they analyze market trends and credit risk. For example, ML credit scoring models assess creditworthiness by considering factors like social media activity and transaction history.

Deep learning (DL)

Deep Learning uses multi-layered neural networks, excelling in fraud detection, sentiment analysis, and portfolio optimization. Its ability to process unstructured data like news or social media posts proves handy in financial market predictions.

Natural language processing (NLP)

NLP helps computers understand human language and extract insights from financial texts. It aids in gauging market sentiment and improving customer service through chatbots.

Predictive analytics

Predictive models in finance forecast stock prices and economic indicators, aiding investment decisions and risk management.

Big data analytics

Big data is vast and hard for traditional tools to process. AI financial modeling and forecasting help extract insights from it, revealing trends and anomalies in transactions, market data, and social media.

Quantitative and algorithmic trading

Quantitative models evaluate investment strategies mathematically. AI-powered algorithmic trading automates trades, reacts to market changes quickly, optimizes strategies, and reduces bias.

Robotic process automation (RPA)

RPA automates repetitive financial tasks like data entry and compliance checks, enhancing efficiency and accuracy, and freeing humans for higher-value tasks.

Tech stack of financial forecasting artificial intelligence

Data ingestion & storagePostgreSQL MySQL MongoDB CassandraAmazon Redshift Google BigQuery SnowflakeAmazon S3 Google Cloud Storage Azure Data Lake
Data processing & analyticsApache NiFi Talend Informatica for Extract Transform Load (ETL)Apache Hadoop Apache Spark 
Machine learning & deep learning frameworksScikit-learnTensorFlow PyTorchKeras
Natural language processingNLTK spaCyBERT GPT (from OpenAI) 
Development & collaboration toolsJupyter Notebook PyCharm Visual Studio CodeGit GitHubTrello Jira Asana
Model deployment & monitoringDocker KubernetesAWS SageMaker Google AI Platform Azure MLPrometheus Grafana
APIs & microservicesFlask FastAPIMicroservices architecture 

Looking for AI financial modeling engineers?

Today’s dynamic business landscape dictates that companies look beyond the horizon and utilize advanced forecasting, risk assessment, and strategic decision-making.

Ready to harness the potential of AI in financial modeling? Reach out to Coherent’s experts now for customized solutions tailored to your business needs.

How AI benefits financial forecasting

Explore how AI significantly benefits financial forecasting, revolutionizing the way businesses make informed decisions:Enhanced precision in predictive analysis AI algorithms analyze historical data and identify patterns. Using ML and DL, they improve accuracy in predicting stock prices and market trends, aiding informed decision-making.
Operational efficiency takes center stage AI streamlines tasks like data entry and risk assessment, enhancing efficiency. RPA handles routine processes, freeing financial professionals for strategic tasks.
Navigating regulatory landscapes AI aids in financial compliance by monitoring transactions, detecting irregularities, and enforcing legal norms. NLP tools extract insights from regulatory documents, ensuring organizations stay compliant.
Real-time analysis is no longer a luxury AI transforms financial models with real-time data and predictive analytics, enabling quick responses to market changes. High-frequency trading and portfolio rebalancing gain from AI’s real-time insights.
Tailored forecasts AI provides context-specific predictions and offers personalized investment advice based on an individual’s risk profile and goals, enhancing client empowerment and financial planning.
Cutting expenses and operational costs AI reduces costs and offers automated resource management and fault-tolerance solutions. Businesses benefit from improved operations and logistics while chatbots take over customer support.
Risk management and fraud detection AI models excel at preventing financial losses through anomaly detection. They can identify unusual patterns, assess credit risk, and detect fraudulent transactions.
Portfolio optimization AI evaluates risk-return trade-offs, asset correlations, and market conditions. It enhances portfolio optimization by evaluating multiple factors, aiding in diversification, and maximizing returns.
Scenario analysis and stress testing AI stress testing models can easily evaluate how portfolios perform during market downturns or economic crises. These insights guide risk mitigation strategies.
Predictive customer behavior analysis AI analyzes customer data to predict behavior, preferences, and churn rates. Financial institutions use this information to tailor marketing campaigns, improve customer experiences, and retain clients.

Challenges and limitations of AI in financial modeling

While AI offers immense potential in financial modeling, addressing these limitations is crucial for its responsible and effective use in the current dynamic market conditions:

Data quality and availability

Quality data is vital for precise financial modeling. Yet, data quality issues and access limitations due to privacy can lead to inaccurate predictions. It’s crucial to maintain data cleanliness and relevance.

Overfitting and underfitting models

Overfitting is sticking too close to the original data inputs, leading to poor generalization. Underfitting is failing to capture key patterns due to a simplified model architecture. Balancing model complexity is crucial for robust predictions.

The black-box nature of some AI models

AI models, particularly deep learning, lack transparency. They predict accurately but offer little insight into their decisions. This black-box nature raises ethical and regulatory issues.

Ethical and privacy concerns

AI financial models may perpetuate biases in data, leading to biased decisions and discrimination. Extensive data collection raises privacy concerns, especially with sensitive information.

Regulatory challenges

Financial institutions must comply with regulations while adopting AI. Regulatory bodies are increasingly scrutinizing AI models for fairness, transparency, and accountability. Striking a balance between innovation and compliance is a delicate task.

Market dynamics and unpredictability

Financial markets are influenced by complex interactions, geopolitical events, and investor sentiments. AI models struggle to capture sudden shifts, black swan events, or market sentiment changes. Predicting extreme events remains a challenge.

Model validation and backtesting

Validating AI models against historical data (backtesting) is essential. However, financial markets evolve, rendering past data less relevant. Models that perform well in backtesting may fail in real-world scenarios due to changing market dynamics.

Interconnectedness and systemic risks

AI models can inadvertently amplify systemic risks. Their collective behavior, especially in high-frequency trading, can lead to market instability. Understanding how AI interacts with other models and affects the entire financial system is crucial.

Human-AI collaboration

Striking the right balance between human judgment and AI predictions is challenging. Overreliance on AI can lead to blind spots, while ignoring AI insights may hinder decision-making. Effective collaboration between humans and AI is essential.

Interpretability and explainability

Financial professionals need to understand AI models’ decisions. Developing interpretable AI techniques (e.g., explainable AI) is crucial for building trust and ensuring accountability in financial applications.

Avoid bias and pitfalls with your custom AI forecasting solution

Are you ready to revolutionize your business forecasting? Our team of seasoned engineers excels at tackling intricate challenges in AI adaptability, ensuring that your forecasting models are not only efficient but also robust.

Reach out to us immediately for a complimentary consultation. Let’s explore how Coherent can elevate your forecasting game and drive better business outcomes.

Use cases and examples of AI in finance

Financial modeling software, powered by artificial intelligence, has revolutionized operations across a diverse pool of projects in various industries.

Major financial institutions such as JPMorgan Chase and Goldman Sachs have embraced issuing and paying agents (IPA) to automate and streamline operations. Mastercard and PayPal employ AI systems that analyze transaction data in real-time. These systems swiftly identify and prevent fraudulent activity, safeguarding financial transactions.

Let’s take a closer look at some of the most prominent projects featuring AI for financial modeling and forecasting.

AlphaSense: business insights for smart decision-making

AlphaSense, a market intelligence and search platform, caters to banks, investment firms, and Fortune 500 companies. By leveraging natural language processing and analyzing keywords in filings, transcripts, research, and news, it uncovers changes and trends within financial markets.

Since 2011, their AI-based technology has helped professionals make smarter business decisions, delivering insights from an extensive library of market data.

Brokers and traders can use the platform to access information on both private and public companies and use it to make smarter business decisions with confidence and speed.

Kavout: intelligence-driven investment platform

Kavout leverages advanced AI algorithms to identify real-time patterns in financial markets. One of its notable solutions is the K Score, an AI-powered stock ranking system. The K Score analyzes extensive sets of data, including SEC filings and price patterns, and condenses this information into a numerical rank for stocks.

Kavout operates on the intersection of cutting-edge AI and big data which empowers it to gain deeper insights and inspire smarter investment decisions.

Simudyne: simulation solutions for risk management

Simudyne’s platform enables financial institutions to conduct stress test analyses and assess market contagion on a large scale. The company offers simulation solutions for risk management, as well as environmental, social, and governance scenarios.

Global financial institutions, authorities, and exchanges use their scalable, enterprise-ready platform to maximize financial crime analytics, market execution, and crisis management.

Providing the most accurate simulations of real-world scenarios, Simudyne creates an innovative approach to test-driving decisions and accelerating growth.

Zest AI: streamlining underwriting and assessment

Leveraging thousands of data points, Zest AI offers transparency that enables lenders to assess traditionally considered ‘at-risk’ populations more effectively. By doing so, it manages to improve risk prediction accuracy and minimize losses by over 25%.

Lenders who adopted Zest are now able to make informed decisions and provide better loan products, leading to increased revenue, reduced risk, and streamlined compliance.

Enova: transcendence in lending services

Enova is a prominent technology company offering online financial services powered by machine learning through its lending platform. It caters to the needs of non-prime consumers and small businesses, often overlooked by traditional banks.

Over the years, Enova has served more than 9 million customers, providing loans and financing totaling over $52 billion. Their market-leading products pave the way for customers to enhance their financial well-being.

Lessons learned from failed AI projects in finance

Extensive analysis and industry discussions reveal that unsuccessful AI projects frequently encounter common challenges:

  • Lack of well-defined strategy
  • Subpar data quality and consistency
  • Underestimating the need for corporate culture changes
  • Overlooking the significance of data explainability
  • Ethical aspects of AI development.

Financial organizations that have overcome these struggles prioritize the wide adoption of AI methodologies over other initiatives and train their personnel accordingly. Making these changes allows them to drive revenue growth, enhance customer engagement, and further develop their pipelines by acquiring new AI capabilities.

Harness AI for financial forecasting with Coherent

We are Coherent Solutions, a leading digital product engineering company with over 25 years of experience, specializing in AI consulting and development.

Our bespoke AI financial forecasting systems are meticulously tailored to meet the unique requirements of your business.

Whether it be on-premise, cloud, or SaaS solutions, we revolutionize FP&A operations and transform them into your business’s strategic asset.

Why choose Coherent

Solid track record of delivering B2B financial systems30 years of expertise across core technologies
Expertise in Tableau, Qlik, and Power BI platforms1.5–2x faster AI development
Customer satisfaction score of 95%20–50% reduction in AI project costs

FAQ

How will AI forecasting software integrate with the existing systems?

Drawing on over 30 years of experience, Coherent Solutions focuses on the smooth incorporation of AI financial modeling systems into current operations. At the beginning of each initiative, in the discovery stage, the team chooses a technical stack that complements and improves the present system structure and operational procedures.

These careful methods guarantee a cohesive merger with existing financial systems, data repositories, and analytical instruments, promoting uninterrupted data exchange and reducing the likelihood of downtime.

What is the expected ROI of an AI financial forecasting system?

Estimating ROI for AI in financial forecasting is complex, varying with deployment scale, operational compatibility, and strategic goals. It’s vital to consider benefits beyond cost-cutting.

Quantitative gains include financial savings via automation, productivity boosts by refocusing employees on strategic tasks, and scalability. Qualitative benefits, though harder to measure, include improved accuracy in forecasts, increased job satisfaction by removing mundane tasks, and better financial process control.

How does the AI software ensure data security and compliance?

To maintain regulatory compliance, AI financial forecasting applications incorporate a variety of safeguards including:

  • Secure data, whether it’s stored or being transmitted, and render it inaccessible to unauthorized individuals.
  • Establish role-specific access controls, allowing users to interact only with information pertinent to their job functions.
  • Employ AI to detect irregular patterns that may indicate security incidents or improper use.
  • Configure AI systems to continuously align with financial regulations such as GDPR, CCPA, and SOX to ensure compliance.
  • Monitor and document every instance of data access and alteration, creating a clear audit trail.
  • Safeguard confidential data during the AI model’s testing and training phases.
  • Swiftly implement updates to guard against emerging security threats.
  • Verify that AI systems conform to standards like PCI DSS, which pertains to the security of payment information.
  • Train users in security best practices to minimize the risk of human error.

Can the AI system adapt to our specific forecasting needs and evolve?

AI financial forecasting platforms are generally flexible, designed for growth, and cater to specific needs. They use machine learning for precision and integrate it with various data inputs and applications for comprehensive analysis. They can adapt to data complexities, new methodologies, regulations, and strategic changes. At the same time, user feedback ensures their relevance and efficiency.