TL;DR:
- AI is enhancing the front office’s decision-making capabilities in professional sports.
- Predictive AI models can estimate the likelihood of injuries and player performance.
- AI allows teams to make better recruitment decisions based on specific player profiles.
- Multiple NFL teams are adopting AI technologies to gain a competitive advantage.
- AI is an augmentation tool for human decision-making, not a replacement.
- It improves risk management, enables targeted interventions, and informs personnel decisions.
- AI integration with financial decision-making enhances resource allocation efficiency.
- AI’s predictive power has transformative implications for performance and returns.
- AI startups in the sports industry received substantial funding in recent years.
- While AI is a game-changer, human judgment and strategic decision-making remain crucial.
Main AI News:
The kickoff of the National Football League’s new season on March 15, 2023, not only signaled the start of exciting games but also the onset of the free agency period. During this time, teams negotiate contracts with players who are no longer bound to their former teams, with each deal potentially involving millions of dollars from a team’s budget.
Given the significant financial stakes, making accurate recruitment decisions becomes paramount. Like any business, NFL executives and leaders in professional sports face the challenge of allocating their limited budgets wisely. They must place informed bets on the return on investment (ROI) they can expect from their assets, which, in this case, are the players. This involves considering various factors such as expected performance, both on and off the field, future injuries, and other variables.
However, what if this year, AI could provide insights into how many games a player has left in their career, how many points they will score in the next season, or whether they are prone to major injuries in the near future?
While free agency and other recruitment mechanisms have existed for decades, the way decisions about players are made is rapidly evolving. The application of AI-based technologies to vast amounts of sports data is revolutionizing the decision-making capabilities of front offices. AI empowers them to make better choices regarding player recruitment, development, benching, or trading. This transformation is poised to permanently reshape the landscape of professional sports.
The question that arises is whether AI will eventually replace the front offices of sports teams. Despite the undeniable augmentation of human decision-making by this new technology, it is unlikely to replace general management teams in the near future, not only in sports but also in other industries.
Unleashing Predictive Power
Amidst the growing number of AI-based offerings tailored for sports, several focus on aiding team decision-makers in predicting athlete injuries and longevity. Knowing the likelihood of an injury occurring within a specific timeframe significantly impacts recruitment decisions. Teams naturally seek players who are expected to remain injury-free for extended periods. While industry executives have traditionally relied on experience-based intuition to consider factors contributing to injuries, such as time and the physical toll of playing, these predictions often prove unreliable.
The difference now is that AI can substantiate certain conventional wisdom. For example, in the NFL, wide receivers over 30 years of age are more susceptible to injuries and other challenges. AI can provide more precise estimates regarding the likelihood of injury or diminished performance, enabling teams to gauge a player’s availability and the potential cost associated with it. Probility AI, a company in this field, claims a 96% accuracy rate in predicting which players will miss games in the upcoming season. Executives can leverage these insights to transition from a stance of “I believe this factor is crucial” to “I know this factor is vital, and I can estimate its impact and cost with unprecedented confidence.”
The insights generated by AI go far beyond existing knowledge or intuition-based predictions. For example, Probility AI trains its injury-prediction models on data from specific NFL teams, in addition to utilizing other public and private data sources. By examining factors such as a player’s alma mater, the coaching staff they worked with, and the resultant practice and workload demands, AI can delve deep into its predictive analyses.
Consequently, instead of general managers simply aiming for the best overall wide receiver, they can now identify the most suitable receiver for their specific team based on AI’s predictions of future injuries and performance. Since players tend to exhibit different predicted career lengths and performance outcomes depending on factors like coaches, field conditions, or teammates, an arbitrage situation arises. This situation leads to variations in a player’s market value depending on the team they play for.
Multiple NFL teams are already deploying AI technologies from Probility AI and other sources, recognizing that failing to do so would put them at a disadvantage against their AI-equipped counterparts. Such models are also finding application in other sports like soccer and basketball, as well as across various business sectors. They enhance decision-making processes, boost productivity, and improve customer service.
Augmentation, Not Replacement
As AI continues to develop its predictive capabilities across crucial aspects of sports, including injuries and trade timing, the question of whether it will replace the front office emerges. In short, the answer is no. At present, AI should be seen as a tool augmenting human decision-making. Rather than replacing executives, it assists them in making better choices, particularly in areas where human error and bias are more likely to occur, such as relying heavily on intuition and past successes.
Similar to how the Moneyball movement revolutionized the use of player statistics in a more rigorous and systematic manner over the past two decades, AI utilizes deep learning to generate even more accurate performance predictions.
Accurate predictions of player availability across all active players significantly enhance decision-making in three key dimensions:
- Risk management: If a productive wide receiver is likely to sustain an injury, a team may choose to invest more in talented backups. This minimizes the drop-off in team performance during the injured player’s absence.
- Training and targeted interventions: If AI suggests that a player is prone to injuries, teams can tailor customized training, nutrition, or other regimens to reduce the likelihood of such injuries. Alternatively, a team might opt to reduce a player’s workload, thereby mitigating risks.
- Personnel decisions: By identifying factors that predict injury or other forms of unavailability, teams can strategically draft, trade for, or acquire players whom they believe are more likely to be available throughout the season. Additionally, teams may choose to trade players who appear susceptible to injury.
Savvy executives will also incorporate injury prediction into financial decision-making. AI not only generates predictions on player availability but can also input these predictions into financial decision-making engines. This enables team leaders to create granular metrics regarding expected productivity per dollar spent. For example, a running back predicted to play in only 50% of games in a given year becomes, functionally, twice as expensive as a similarly priced one who can play every game. By considering the price paid per outcome, teams can allocate their resources in a maximally efficient manner, optimizing productivity for each dollar spent.
Nevertheless, the technology itself is insufficient. While software can analyze player performance and resource allocation, sports executives’ judgment and risk tolerance must ultimately guide decisions and resolve inevitable trade-offs. The importance of human decision-making is further emphasized in the last section.
Still, AI represents an absolute game-changer in professional sports. It is replacing informal or statistics-based decision-making with a comprehensive system fueled by big data and unprecedented predictive power. This transformation empowers front offices and coaches, extends players’ careers, and keeps fans exhilarated. However, it remains a story of augmentation, where leaders, informed by new technologies, make strategic calls to the best of their abilities while being accountable for the outcomes on the field and the financial balance sheet.
Conclusion:
The application of AI in professional sports is revolutionizing decision-making processes and augmenting human capabilities. The predictive power of AI enables teams to make more informed choices regarding player recruitment, risk management, training interventions, and personnel decisions. This not only improves performance but also enhances returns on investment. AI’s impact extends beyond sports, with implications for various markets and industries. Predictive AI can drive better decision-making, optimize resource allocation, and improve productivity across sectors. As AI continues to evolve, businesses need to leverage this technology to gain a competitive edge and maximize their outcomes.