
Airbus receives order for two A350F Freighters from MNG Airlines
The new aircraft can carry up to 111 metric tons with a range of 8,700 kilometres (5,406 miles) and will offer an up to 40% reduction in fuel consumption and CO2 emissions compared to previous generation aircraft, Airbus said.
The two companies have signed a memorandum of understanding for the airplanes.

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Finextra
2 hours ago
- Finextra
A Data Dilemma: Reclaiming Time for Profit in the Financial Markets
The financial markets are a relentless, data-driven ecosystem. Success hinges on the speed and accuracy with which institutions can extract, analyze, and interpret the torrent of market information. Data analysts and quantitative analysts (quants) are the critical navigators of this complex landscape, yet they often find themselves mired in a Sisyphean task: wrestling with the sheer volume and complexity of messy financial data. This "data wrangling" bottleneck consumes valuable time, hindering the strategic analysis that drives profitability, maintains regulatory compliance, and ultimately, defines competitive advantage. This article delves into the core challenges facing data professionals in finance and explores how intelligent automation, particularly through the strategic application of Artificial Intelligence (AI), offers a powerful and transformative solution, directly impacting the bottom line. The Data Wrangling Bottleneck: A Costly Impediment to Profitability The core dilemma stems from the inherent complexity of financial data. Analysts in the financial sector are routinely confronted with: Data Silos & Fragmented Information: Imagine a global investment bank. Data is scattered across a multitude of sources: real-time market data feeds (Bloomberg, Refinitiv), internal trading platforms, legacy systems, and various proprietary databases. This fragmented landscape necessitates manual data aggregation, a time-consuming process that delays critical insights. Business Use Case: A proprietary trading desk struggles to correlate market sentiment derived from news feeds with trading volume data from different exchanges. Manual aggregation delays their ability to identify and capitalize on emerging trading opportunities, leading to missed profits. Imagine a global investment bank. Data is scattered across a multitude of sources: real-time market data feeds (Bloomberg, Refinitiv), internal trading platforms, legacy systems, and various proprietary databases. This fragmented landscape necessitates manual data aggregation, a time-consuming process that delays critical insights. Data Quality Issues: The Silent Killer of Accuracy: Inconsistent formats, missing values, and inherent errors are commonplace. This necessitates painstaking cleansing, validation, and transformation. Business Use Case: A hedge fund's risk management team relies on accurate pricing data for its portfolio. Data quality issues, such as inaccurate closing prices, can lead to flawed risk assessments and potentially disastrous trading decisions. The time spent correcting these errors directly impacts the speed and effectiveness of their risk mitigation strategies. Inconsistent formats, missing values, and inherent errors are commonplace. This necessitates painstaking cleansing, validation, and transformation. Manual Reporting Demands: Compliance at a Cost: The regulatory landscape is constantly evolving (MiFID II, Dodd-Frank, Basel III, etc.), demanding complex reporting on trading activities, risk exposure, and portfolio performance. These reports often require tedious manual processes, diverting valuable analyst time away from strategic initiatives. This is where data security and privacy become paramount. Regulations like GDPR and CCPA mandate strict control over data, requiring robust security measures throughout the data lifecycle. Business Use Case: A global asset manager faces mounting pressure to comply with evolving ESG (Environmental, Social, and Governance) reporting standards. Manually compiling and analyzing the necessary data to meet these requirements is time-intensive and limits their ability to focus on investment strategy and client service. Moreover, they must ensure the security and privacy of the data used in these reports, especially when dealing with client information. This includes secure storage, access controls, and adherence to data minimization principles. The regulatory landscape is constantly evolving (MiFID II, Dodd-Frank, Basel III, etc.), demanding complex reporting on trading activities, risk exposure, and portfolio performance. These reports often require tedious manual processes, diverting valuable analyst time away from strategic initiatives. This is where data security and privacy become paramount. Regulations like GDPR and CCPA mandate strict control over data, requiring robust security measures throughout the data lifecycle. These activities, while essential for operational integrity, represent a significant opportunity cost. This time drain translates into: Reduced Productivity & Diminished Returns: Analysts spend less time on value-added activities, such as model building, strategy development, and in-depth market analysis, directly impacting the development of new products and services. Analysts spend less time on value-added activities, such as model building, strategy development, and in-depth market analysis, directly impacting the development of new products and services. Missed Trading Opportunities: The Cost of Delay: Delayed insights and slower decision-making can result in missed opportunities to capitalize on market fluctuations, impacting revenue generation. Business Use Case: A high-frequency trading firm relies on milliseconds to gain an edge. Delays in data processing and analysis, even by fractions of a second, can mean the difference between a profitable trade and a missed opportunity. Delayed insights and slower decision-making can result in missed opportunities to capitalize on market fluctuations, impacting revenue generation. Increased Risk Exposure: Vulnerability to the Unseen: Delays in risk assessments and anomaly detection can leave firms vulnerable to unforeseen risks, potentially leading to substantial financial losses. Furthermore, inadequate data security practices can expose sensitive financial data to breaches, leading to financial and reputational damage. Robust security protocols are crucial for mitigating this risk. Business Use Case: A derivatives trading desk struggles to identify and mitigate potential flash crashes or "fat finger" errors. The inability to process data quickly enough can expose them to significant downside risk. Delays in risk assessments and anomaly detection can leave firms vulnerable to unforeseen risks, potentially leading to substantial financial losses. Furthermore, inadequate data security practices can expose sensitive financial data to breaches, leading to financial and reputational damage. Robust security protocols are crucial for mitigating this risk. AI as a Strategic Asset: Automating the Mundane, Empowering the Strategic AI offers a compelling solution by automating the most time-consuming and repetitive aspects of the data analysis workflow, freeing up analysts to focus on higher-level tasks that directly impact profitability, innovation, and competitive differentiation. Key applications of AI in this context include: Automated Data Extraction: Streamlining the Intake: Intelligent connectors can ingest data from diverse sources, automatically formatting and integrating market data, internal data, and external feeds. Business Use Case: An investment bank can use AI-powered data ingestion to automatically pull data from multiple sources (market data feeds, internal order management systems, etc.) and standardize it for use in their trading algorithms, reducing manual effort and improving data consistency. Crucially, these connectors must incorporate robust security measures, including encryption, access controls, and secure data transfer protocols, to prevent unauthorized access and data breaches. Data privacy must also be considered during extraction, ensuring compliance with regulations. Intelligent connectors can ingest data from diverse sources, automatically formatting and integrating market data, internal data, and external feeds. Automated Data Cleansing and Transformation: Ensuring Data Integrity: AI-powered anomaly detection and data validation tools can automatically handle missing values, outliers, and inconsistencies, ensuring data quality. This process must be conducted within a secure environment, protecting the data from unauthorized access or modification. Data masking and anonymization techniques can be employed to protect sensitive information during cleansing and transformation. Business Use Case: A broker-dealer can use AI to automatically cleanse and validate trade data, eliminating errors and inconsistencies that could lead to regulatory violations or financial losses. AI-powered anomaly detection and data validation tools can automatically handle missing values, outliers, and inconsistencies, ensuring data quality. This process must be conducted within a secure environment, protecting the data from unauthorized access or modification. Data masking and anonymization techniques can be employed to protect sensitive information during cleansing and transformation. Automated Reporting & Intelligent Insights: From Data to Decisions: AI can generate real-time reports on portfolio risk, trading performance, and regulatory compliance, freeing up analysts from manual reporting. The generation and distribution of these reports must adhere to strict security protocols, including access controls, encryption, and secure transmission channels. Data privacy considerations must be integrated, ensuring that only authorized individuals have access to sensitive information. Business Use Case: A private equity firm can use AI to automatically generate reports on the performance of its portfolio companies, providing insights into key metrics and identifying potential problems early on. This allows them to make faster, more informed investment decisions and improve returns. AI can also be used to analyze historical data and identify patterns that can be used to predict future performance. AI can generate real-time reports on portfolio risk, trading performance, and regulatory compliance, freeing up analysts from manual reporting. The generation and distribution of these reports must adhere to strict security protocols, including access controls, encryption, and secure transmission channels. Data privacy considerations must be integrated, ensuring that only authorized individuals have access to sensitive information. Predictive Analytics for Proactive Strategies: AI can analyze historical and real-time data to predict market trends, identify arbitrage opportunities, and optimize trading strategies. The models used for predictive analytics must be developed and deployed with robust security and privacy measures. This includes secure model storage, access controls, and regular security audits to prevent unauthorized access or model manipulation. Business Use Case: A quantitative hedge fund can use AI to build predictive models that identify high-probability trading opportunities, enabling them to generate alpha more efficiently. AI can analyze historical and real-time data to predict market trends, identify arbitrage opportunities, and optimize trading strategies. The models used for predictive analytics must be developed and deployed with robust security and privacy measures. This includes secure model storage, access controls, and regular security audits to prevent unauthorized access or model manipulation. This automation translates into tangible, measurable benefits: Increased Efficiency & Optimized Operations: Analysts can process more data, analyze more opportunities, and respond to market changes more rapidly, leading to greater throughput and reduced operational costs. Analysts can process more data, analyze more opportunities, and respond to market changes more rapidly, leading to greater throughput and reduced operational costs. Improved Decision-Making & Enhanced Returns: AI-driven insights can provide a deeper understanding of market dynamics, leading to more informed trading decisions and ultimately, improved investment returns. AI-driven insights can provide a deeper understanding of market dynamics, leading to more informed trading decisions and ultimately, improved investment returns. Enhanced Risk Management & Mitigation of Losses: Faster and more accurate risk assessments can help firms mitigate potential losses, safeguarding capital and preserving reputation. Faster and more accurate risk assessments can help firms mitigate potential losses, safeguarding capital and preserving reputation. Improved Compliance & Reduced Regulatory Risk: Automated reporting and data validation can streamline compliance efforts, reducing the risk of regulatory penalties and ensuring operational resilience. Crucially, AI systems must be designed to comply with all relevant data security and privacy regulations, ensuring that data is handled securely and in accordance with legal requirements. Key Considerations for Successful Implementation: While the benefits of AI are undeniable, successful implementation in the financial sector demands careful planning and execution: Security and Compliance: Data Integrity as a Cornerstone: Solutions must prioritize data security, adhere to stringent regulatory standards (GDPR, CCPA, etc.), and provide auditable processes to maintain trust and meet regulatory requirements. This includes robust encryption, access controls, regular security audits, and data loss prevention measures. Compliance with industry-specific regulations like PCI DSS is also critical. Solutions must prioritize data security, adhere to stringent regulatory standards (GDPR, CCPA, etc.), and provide auditable processes to maintain trust and meet regulatory requirements. This includes robust encryption, access controls, regular security audits, and data loss prevention measures. Compliance with industry-specific regulations like PCI DSS is also critical. Transparency and Explainability: Building Trust Through Understanding: AI-driven insights should be traceable and explainable to maintain trust with regulators, clients, and internal stakeholders. "Black box" AI models are often unacceptable in regulated environments. AI-driven insights should be traceable and explainable to maintain trust with regulators, clients, and internal stakeholders. "Black box" AI models are often unacceptable in regulated environments. Seamless Integration & Minimizing Disruption: Tools should integrate seamlessly with existing trading platforms, risk management systems, and data infrastructure to minimize disruption and ensure a smooth transition. Tools should integrate seamlessly with existing trading platforms, risk management systems, and data infrastructure to minimize disruption and ensure a smooth transition. Skill Development & Talent Acquisition: Successful AI implementation requires a skilled workforce with expertise in data science, machine learning, and financial markets. Investment in training and talent acquisition is crucial. The Path Forward: Embracing AI for a Competitive Edge By strategically embracing AI-powered solutions, financial institutions can empower their data analysts and quants to reclaim their time and focus on what matters most: generating profitable trades, driving innovation, and navigating the complexities of the financial landscape. The shift from data preparation to strategic analysis is crucial for staying competitive in today's fast-paced financial markets. The future of financial data analysis is undeniably shaped by AI, offering a powerful path to unlock the full potential of data and fuel sustained business success. However, the integration of AI must be coupled with a strong commitment to data security and privacy. This includes implementing robust security measures, complying with relevant regulations, and building a culture of data protection. Only then can financial institutions fully realize the benefits of AI while mitigating the risks. Those who embrace this transformation will be best positioned to thrive in the years to come.


Reuters
6 hours ago
- Reuters
Amphenol boosts defense portfolio with $1 billion buyout deal for Trexon
Aug 18 (Reuters) - Amphenol (APH.N), opens new tab will buy cable assembly firm Trexon for about $1 billion in cash, the electronic equipment maker said on Monday, as it aims to tap into rising defense spending and expand its military-focused product portfolio. Trexon specializes in connectivity products, including wire, cable and connectors, designed for industries ranging from military and defense to medical and quantum computing. "Trexon's unique portfolio of high-reliability cable assembly products will be highly complementary to our existing offerings in the defense market," said Amphenol CEO Adam Norwitt. The proposed buyout comes just weeks after Amphenol — which makes cables, sensors and antennas — agreed to acquire CommScope's (COMM.O), opens new tab connectivity and cable solutions unit in a $10.5 billion deal, as it looks to capitalize on surging demand for AI-driven applications and high-speed data center infrastructure. Shares of Amphenol, which expects to finance the deal with Trexon through cash on hand, were up marginally in premarket trading. They have risen more than 57% so far this year. Trexon, which has facilities in the U.S. and the UK, is expected to have 2025 sales of around $290 million and EBITDA margin of 26%. Amphenol expects the acquisition to boost its earnings per share in the first year after closing, which is likely in the fourth quarter of this year.


The Independent
9 hours ago
- The Independent
UK consumer sentiment recovers to strongest level since October
Sentiment among UK consumers recovered to its strongest level since before the autumn budget last year, according to new figures. The latest monthly S&P Global UK Consumer Sentiment Index found that surveyed consumers were still relatively downbeat but saw sentiment move higher after the latest cut to interest rates. Earlier this month, the Bank of England voted to cut its base interest rate from 4.25% to 4%. The CSI, which surveys more than 1,500 households, reported a reading of 47.0 for August, rising from 45.1 in July. The reading is the highest since October. Any reading below 50 points to negative sentiment, with a reading above 50 suggesting positive feeling among consumers. Households reported the strongest sentiment about their personal finances for 13 months, although this remained in firmly negative territory. There was also an improvement about how households viewed the labour market, with rises in job security and activity at work. Maryam Baluch, economist at S&P Global Market Intelligence, said: 'August CSI data comes hot on the heels of the recent rate cut decision made by the Bank of England earlier in the month. 'Data collection began just a day after the central bank's announcement, providing a timely snapshot of sentiment in the wake of monetary policy easing. 'Encouragingly, the data reveals a slight revival in household confidence, which is a telling sign that the easing of monetary policy has been received positively by households across the country.'