Good day, everyone, and welcome to our fiscal fourth quarter and full year 2023 financial results earnings call. The 2023 fiscal year was filled with many positive developments, new partnerships, and progress toward achieving our goals. We also experienced setbacks and unforeseen delays on several fronts with the APU. We learned a lot during the year about the addressable market Gemini-I can reasonably pursue with our team, given our limited resources. However, we recently have made significant strides in leveraging third-party resources to help identify users, resellers, and OEMs. These resources are proving valuable in helping us identify opportunities for capturing revenue and increasing awareness of the APU’s tremendous capabilities. We have also sharpened our focus for Gemini-I to leverage our resources and prioritize near-term opportunities, such as synthetic aperture radar, or SAR, and satellites, where we have a superior solution. We understand these markets and know whom we can support and help with our offering. Another focus application for Gemini-I is vector search engines, where our APU plug-in has demonstrated enhanced performance. To this end, we have dedicated more resources and prioritized the target customers that have expressed interest in leveraging our solution. Our data science team has been busy working on a SaaS search project with one leading provider, and we plan to pivot to other players in the space once we have met our deliverables with the first partner. Looking ahead on our roadmap, we will build upon the work we are doing today in future APU versions to address large language model or LLM for natural language processing. Vector search engines are a fundamental part of ChatGPT architecture and essentially function as the memory for ChatGPT. Large language models use deep neural networks, such as transformers, to learn billions or trillions of words and produce text. This is another reason that vector search is an appropriate focus application with the APU. Additionally, we are improving our SearchiumAI SaaS platform to support our go-to-market strategy for search. We intend to use this tool to develop more potential partnerships like an Open AI plugin integration that we recently launched, and with other open-source, decentralized search engines that use machine learning algorithms and vector search engines. The increasing size and complexity of enterprise data sets and the proliferation of AI in all aspects of business are driving rapid growth in these search engines. Encouraged by the positive reception of our APU plug-in by several key players, we are optimistic about generating modest revenue from this market in the fiscal year 2024. For both of the Gemini-I focus applications I have just mentioned, SAR and Fast Vector Search, we have set specific revenue goals that we aim to achieve this fiscal year. Our L-Python compiler stack has progressed in the past quarter. Our L-Python compiler stack is designed to offer Python's development advantages while delivering C's high performance without compromising either. Although our current focus applications do not require a compiler, we have a beta version in use currently and are on track to release a production-ready version later this year. L-Python will demystify the APU for any Python or C-developer. I am excited to announce that we are on track to complete the tape-out for Gemini-II by this summer and evaluate the first silicon chip by the end of calendar year 2023. We aim to bring this solution to market in the second half of 2024. Gemini-II’s design will provide significant performance enhancements with reduced power consumption and latency. These features will expand the future addressable market for the APU to larger markets such as edge applications, Fast Vector Search, LLM, and advanced driver assistance systems, or ADAS, the last one being a vertical we would go after with a strategic partner rather than directly. Gemini-II is built with TSMC 16nm process. The chip contains 6 Mega-Byte of associative memory connected to 100 Meg-Byte distributed SRAM with 45 Mega Byte per second bandwidth or 15 times the memory bandwidth of the state-of-the-art parallel processor for AI. This is more than 4 times the processing power and 8 times of memory density compared to Gemini-I. The Gemini APU is built with bit processing, which allows fully flexible data format operation, an inherent advantage versus other parallel processors. Gemini-II is a complete package that includes a DDR4 controller and external interfaces for PCIe Gen4 by 16 and PCIe Gen4 by 4. This integrated solution allows Gemini-II to be used in affordable edge applications while still providing significant processing capabilities. In simpler terms, Gemini-II combines different components together, allowing it to be used in less expensive devices while still being powerful enough to handle demanding tasks at the edge of a network. Put another way, Gemini-II brings data center capabilities to the edge. This means that computationally intense applications can be done locally. For example, ADAS, delivery drones, autonomous robots, and UAV or unmanned aerial vehicles and satellites. Another application for Gemini-II would be IoT edge applications like critical infrastructure or processes requiring a reliable and efficient operation, for example, wind farms, to mitigate failure modes that can lead to significant financial losses or operational disruptions. Gemini-II’s combination of high processing power, large built-in memory with tremendous bandwidth and low-cost solution provides a best-in-class solution for AI applications like Fast Vector Search, a growing market driven by the proliferation of big data and the need for fast and accurate processing. Recently, we were granted a new patent for Gemini-II's in-memory full adder, which is a basic building block to allow Gemini-II to perform high processing power. We are thrilled to announce that we are currently in very early-stage discussions with a top Cloud Service Provider to explore how Gemini-II’s foundational architecture could deliver performance advantages. Just this year, we have seen the disruptive impact of large language models that understand and generate human-like language, like ChatGPT, Microsoft BING and Google’s Bard. As the boundaries of Natural Language Processing continue to be pushed, we envision abundant opportunities in this market for Gemini-II and future versions of the APU. We believe that we have merely scratched the surface of the potential of large language models and the transformative impact they can have across numerous fields. Large language models’ attention memory requires very large built-in memory and very large memory bandwidth on-chip. The state-of-the-art GPU solutions have built-in 3D memory to address the high-capacity memory requirement but has poor memory bandwidth for adequate memory access. The limitation is going to get worse as large language models are progressing. Gemini chip architecture has inherently large memory bandwidth, it is a natural migration to add 3D memory for the next generation Gemini chip to address the large memory requirement. This substantial improvement potentially translates into orders of magnitude better performance. As a result, we would be strongly positioned to compete effectively in the rapidly expanding AI market, standing ahead of the industry's leading competitors. Our resources and teams are focused on applications where we have a high probability of generating revenue to capitalize on Gemini-I’s capabilities. As we bring Gemini-II to market, we will be more experienced in approaching target customers and creating new revenue streams. We are formulating our roadmap for the APU, which holds tremendous potential. With future versions, the APU has the capability to cater to much larger markets, and the potential opportunities are quite promising. In parallel with our Board of Directors, we are actively exploring various options to create shareholder value. I remain fully committed to driving sustained growth and innovation in the years ahead. Thank you for your support and for joining us today. We look forward to updating you on our progress in the coming quarters. Now I'll hand the call over to Didier, who will discuss our business performance further. Please go ahead, Didier.