The concept of dataism, initially introduced by David Brooks in The New York Times in February 2013, gained momentum through works like Steve Lohr’s book “Data-ism” (2015) and Yuval Noah Harari’s “Homo Deus: A Brief History of Tomorrow” (2016). This emerging trend proposes that data holds unprecedented significance in shaping the future of society, culture, and even spirituality.
David Brooks introduced the term “dataism” in a 2013 article titled “The Philosophy of Data.” Brooks discussed the increasing influence of data and its interpretation in various aspects of society. His focus was on prompting thoughtful discussions about the implications of an increasingly data-driven world and the potential limitations of relying solely on data to understand human behavior and society.
Lohr’s work highlights how data is being used to analyze patterns, make predictions, and optimize processes in fields such as business, healthcare, education, and more. He discusses how data-driven technologies like artificial intelligence and machine learning are revolutionizing decision-making and offering new possibilities for understanding complex systems.
In “Homo Deus,” Harari examines the implications of dataism alongside other possible future scenarios, such as the rise of artificial intelligence, genetic engineering, and biotechnology. His goal is to stimulate thought and discussion about the potential consequences of these developments on human society, culture, and even spirituality. Harari’s approach is more analytical and speculative rather than prescriptive, leaving room for readers to form their own opinions about the merits and challenges of dataism and its implications for the future.
Dataism can be seen as a belief system that regards data as the most fundamental and powerful force driving human progress. As we understand more and more from data, decisions will be based more on analyzing data rather than experience and intuition. This means more science and less experience. Bear in mind though, that experience and intuition are in essence huge amounts of data processed by our brains. However, since our brain’s computational power is outperformed by the computational power of machines, science will rely more on machine data rather than the human brain’s data.
Dataism suggests that the entire universe can be interpreted as data flows and that all phenomena, including human behavior, can be reduced to data processes. In this worldview, human consciousness, emotions, and creativity are seen as complex algorithms arising from data interactions. Human progress is determined by a single question: How do we generate and process more data and how do we make the most out of it? The good of the data and the good of mankind are supposed to be one and the same.
But what if “the good of the data” in some cases happens to be against privacy, security, awareness, and our right to data control and consent?
To understand how data affects technology and what drives the need for more and more data I will showcase three technological areas. IoT is a good example of where all that data is coming from. Big data and analytics then come into play to gather and analyze massive amounts of data in a rally toward technological progress. As a final application, AI with ML is also explored.
IoT refers to a network of interconnected devices, objects, and systems that can communicate, exchange data, and perform actions without direct human intervention. These devices are embedded with sensors, actuators, and communication capabilities, allowing them to collect and transmit data over the Internet or other communication networks.
IoT devices are equipped with various types of sensors that can gather data from the physical environment or user interactions. These sensors can capture information such as temperature, humidity, pressure, light levels, motion, location, and more. The data collected by IoT devices is sent to central platforms or cloud-based systems for processing, analysis, and interpretation.
Applications include, but are not limited to:
Urban Planning
IoT data is invaluable for optimising urban infrastructure and city planning. Sensors embedded in traffic lights, parking spaces, waste management systems, and public transportation can provide real-time data on traffic flow, occupancy rates, energy consumption, and environmental conditions. Urban planners can use this data to make informed decisions about traffic management, waste collection routes, and resource allocation.
The exponential growth of data generated by individuals, businesses, devices, or sensors in various industries has paved the way for big data analytics. It enables insights into consumer behavior, societal trends, and scientific discoveries that were previously unattainable. Big data refers to extremely large and complex datasets that are beyond the capabilities of traditional data processing tools to manage, store, and analyze effectively. These datasets are characterized by the three Vs:
Big data analytics refers to the process of extracting valuable insights and patterns from large and complex datasets. Its profound impact on a number of industries can be summarised as follows:
AI and machine learning heavily rely on data for training and improvement. These technologies analyze massive datasets to recognize patterns and make predictions, often outperforming human capabilities. The potential for AI to understand and manipulate data could lead to new breakthroughs in various fields.
Here are ways that data plays a crucial role:
At an individual level data can help people to gain self-insight, improve, and prosper. At a community or company level data is also of paramount importance. Analyzing strengths, weaknesses, opportunities, and trends is a data-driven endeavor. At a country level, policies for the country’s internals as well as external geopolitical decisions are vastly driven by data.
The importance of data cannot be overstated nowadays, and for the years to come. Dataism may be just a thought-provoking idea or it may evolve into an ideology. In any case, as data integrates deeper into society, ethical considerations surrounding data ownership, privacy, and consent become increasingly vital. Regulation across the globe is necessary and frameworks like GDPR and CCPA are a good starting point. Privacy policies, employee and citizen training, data security measures, user access control and consent mechanisms, data breach response plans, transparency, and ethics initiatives, are things to consider.
After all, data should be the tool to achieve goals, not the goal itself.
This article was originally published by Stelios Manioudakis on Hackernoon.
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