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<nettime> DNA (((and) computers) or $VAR) digest [griffis, thacker] |
DNA and computers, or how i learned to love the myth of nanotech Ryan Griffis <grifray@yahoo.com> DNA and computers; or "is the genome a computer?" "Eugene Thacker" <eugene.thacker@lcc.gatech.edu> - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - Date: Tue, 9 Sep 2003 08:54:09 -0700 (PDT) From: Ryan Griffis <grifray@yahoo.com> Subject: DNA and computers, or how i learned to love the myth of nanotech regarding Steven's point about the purity of intention in acedemic science research, it may well be the case, but i think history gives us examples as to how isolated academic research can stay. academic research may operate under the ethics of a gift economy (ready for the MP3 verdicts), but that is hardly representative of the economic system that universities are certainly a part of. a fact becoming more significant every year. and the inherent link between nanotech and biotech that Eugene points out can be used to assess the possible trajectory of nanotech (myth or not). Contracts like that made between UC and Novartis in 1998, and the number of commercial patents (originally) coming out of university research institutions - whether the research is being conducted for the glory of the researchers or not - can't be disputed. is there any doubt that all technology and science has as it's final destination a commodity? maybe it does... but it seems suspect to me. and HP seems excited about the myth... ryan From: steven schkolne <steven@schkolne.com> "hi nettimers, some of these comments about researcher's motivation have hit a little close to home, and fundamentally contradict some of my experience - i am just wrapping up my PhD on 3d interaction at Caltech and based on my stint here i'd have to say that this corporate drive is not so strong on campus, especially in Erik Winfree's dna computation group (http://dna.caltech.edu)... <...> __________________________________ Do you Yahoo!? Yahoo! SiteBuilder - Free, easy-to-use web site design software http://sitebuilder.yahoo.com - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - Subject: DNA and computers; or "is the genome a computer?" Date: Tue, 9 Sep 2003 23:00:50 -0400 From: "Eugene Thacker" <eugene.thacker@lcc.gatech.edu> hi all - I'd be interested in picking up on where this discussion started - DNA computing - maybe this is a splinter-thread specifically I've been interested in DNA computing on both the ontological level (in its practice it re-defines biological materiality in terms of computability) and on the political level (why is DNA computing generally ignored by biotech and molecular biology? is this a new sub-industry for microprocessors?) I was reminded of Jacob & Monod's papers on gene expression during the 1960s, in which they use the term "gene informateur" and "cybernetique enzymatique", and, to my knowledge, were the first to explicitly conceptualize molecular-genetic mechanisms in terms of the computer, a la Von Neumann and Wiener (who themselves borrowed from neurobiology) re: industry and corporatism, I'm not aware of many DNA computing start-ups (Steve mentions his work w/ Winfree, maybe you can confirm this?) - generally IT companies seems to be very very cautious with regard to the whole next-generation DNA microprocessor idea - otherwise Bell Labs is using DNA to build tiny tweezers, USC (Adleman's lab) is attempting to black-box the DNA computer, and CalTech (Winfree's lab) has been working on using enzymes to solve tiling problems the only actual app (far from being a killer app) I've read about is using DNA computing for cryptography - Richard Lipton et al's use of DNA computers to crack the DES standard for those interested, I've pasted below an excerpt from a longer chapter on DNA computing to be published this year - I was interested in understanding the relation between the computer science of Mind/intelligence and DNA computing, as a shift from computer-as-Mind to computer-as-biology: a biological functionality that has no biological function... -Eugene ____________________________________ Eugene Thacker, Assistant Professor School of Literature, Communication & Culture Georgia Institute of Technology eugene.thacker@lcc.gatech.edu http://www.lcc.gatech.edu/~ethacker ____________________________________ ************************************************************************* * "DNA Memory & DNA Intelligence" In the context of biocomputing, the Turing test is noteworthy, not because it presages anything in biocomputing, but precisely because it rules out the possibility of biocomputers. Note that Turing's question is not "is biology computational?" but rather "is intelligence computational?" In other words, it might be more accurate to say that Turing relates organisms and machines in the specific terms of humans and computers. This is done on the level of a certain type of cognitive performance; humans and computers are compared via the notion of "Mind." By contrast, von Neumann's interest in the functional correspondences between the computer and the brain express a different sort of question, which also forecloses the possibility of biocomputers. If Turing's question concerns "intelligence," von Neumann's question is "is memory-based cognition in the brain a stored-program computer?" To simply greatly, we can suggest that for Turing the issue in comparing humans and computers revolves around intelligence, while for von Neumann it revolves around memory. However, as we've noted, these terms need to be understood in very particular ways. For Turing "intelligence" is not an a priori quality exclusive to human beings, but rooted in communication, performance, and practical assessment of behavior. Likewise, for von Neumann, "memory" is not so much a mysterious set of impressions specific to human beings or other organisms, but, when seen functionally as a pattern arising from switches (flip-flops), it can be considered a mechanical property of biological or computational systems. At no point in their respective texts do Turing or von Neumann question the existence of intelligence or memory in human beings as we commonly use the terms. Though Turing, not without some irony, asks "why shouldn't I be considered a computer?" it is important to note that both Turing and von Neumann begin by analyzing cognition in the organism through the lens of computer science =96 for both, the data processing involved in Mind, brain, and computers, proceeds through a series of discrete, finite-state machines. This is evident in the Turing test (series of question and answer) as well as in the von Neumann architecture (correlation of control unit and memory unit, of arithmetic unit and control unit). In the process, the terms themselves (intelligence, memory) become transformed, not only quanitatively, but also qualitatively. The Turing test and the von Neumann architecture fold back on human-centered notions of Mind and brain, questioning the tendency to transcendentalise either. However, while Turing is explicit in his refutation of common arguments against the notion of intelligent machines, von Neumann is more evasive in the epistemological implications of his analyses. Von Neumann's lectures only briefly touch on the implications of understanding computers and brains as stored-program machines, noting that, although both can be seen in computational terms, the hybrid analog-digital character of the brain and nervous system requires a unique language in which to understand its logical structure. Both make use of computer science (that is, mathematical foundations to assessing computable problems), and in this process, they intentionally or unintentionally raise issues that are philosophical. Systems configurations beget ontological questions. Both discuss Mind or brain in reference to modern digital computers, and while Turing emphasizes the performance factor (in both the cultural and technical sense of the term), von Neumann emphasizes the functional factor (the computing architecture aspects of the brain's functioning). Thus, in relation to biocomputing, both Turing and von Neumann offer two paradigms for thinking about the human-computer relationship as a relationship between organism and machine. While Turing emphasizes intelligence through the performance of the Turing test, von Neumann emphasizes memory as data processing through the architecture of the stored-program computer. Both make reference to modern digital computers, and, while not reducing the human to the computer, they nevertheless raise contentious questions concerning how our understanding of cognition, Mind, and the biological may be transformed by computer logics. We might say that for Turing, intelligence is a "state" of mind, while for von Neumann, the brain is just the "memory" of the computer . What should be apparent in these two paradigms of thinking about humans and computers is both the anthropocentrism and the emphasis on defining the organism in terms of cognitive processes. Both Turing and von Neumann are only concerned about the body to the extent that it provides a framework or hardware on top of which higher-level processes can occur. Even von Neumann's materialist approach, focusing as it does on developments in neuroscience, displays a predilection to consider the nervous system solely in terms of brain activity, while Turing's test appears to raise the question of embodiment, only to abstract it behind the logical operators seen to inhere in language. Thus, in the comparisons of humans and computers, we see different paradigms that are united in their emphasis on approaching both computers as the human on the level of cognition (Turing's interest in Mind, von Neumann's interest in the brain). In these examples of computer science, we can detect more than a hint of biologism: the Turing test assumes as its level of success the intractability of gender from biological sex, while the von Neumann architecture employs a constructionist view of cognition as proceeding from aggregates of lower-level functions in neurons or switches. This biologism provides the foundation for further thinking about computers as more than computers; calculation and "computability" provide the materialist correlatives for the constructionist view of cognition. For both Turing and von Neumann, the comparison of computers to humans is to be made in terms of "computability," and this computability is set up as the criteria for the higher-level processes of "learning" (Turing) and "memory" (von Neumann). To compute therefore becomes the functional analogue of intelligence (in terms of learning) and memory (in terms of data storage), beneath which run the lower-level hardware or biology of the system. The field of biocomputing offers both a corrective to the assumptions in the intelligent machine discourse, but it also raises its own set of problematics not explored by either Turing or von Neumann. If Turing and von Neumann see the human-computer relationship in predominantly cognitive terms, gauging "the human" in terms of higher-level processes such as learning, memory retrieval, or communication, biocomputing sees the human-computer relationship in predominantly biomolecular terms, displacing any interest in the human with an interest in biomolecular process. Biocomputing inverts the intelligent machine discourse's interest in cognition, and places higher priority on the seemingly secondary, lower-level processes of the organism at the biomolecular level. Biocomputing keeps the relationship of organism and machine at the level of organism and machine, and resists the analogous comparison of human and computer which both Turing and von Neumann carry out. The key to this difference is that for Turing and von Neumann, the differentiation between organism and machine takes place at the level of human cognition: intelligence/learning and memory/data processing are the limits of what computers can do. By contrast, biocomputing suggests that the difference between organisms and machines is not anything human, but rather a difference between living and non-living systems: cell metabolism, gene regulation, and cell membrane signaling are the limits of what computers can do. Again, we can detect not only a biologism but a anthropocentrism in Turing and von Neumann, in the sense that the human is the standard against which computer performance is judged. Biocomputing does not necessarily assume this; it rather looks to the complex, "parallel" processes in the living cell as the threshold of computability. For Turing and von Neumann, what is at stake is essentially Mind, with the human as its most sophisticated manifestation (one that is nevertheless amenable to computation). For biocomputing, what is at stake is "life," by this meaning the ability of biomolecular systems to carry out exceedingly complex calculations "naturally." In a strange way, neither Turing nor von Neumann are really interested in computation, but rather the computational explanation of human-centered attributes such as intelligence, learning, or memory access. Biocomputing researchers, however, are centrally concerned with computation, with the understanding that computation in the 1990s comes to take on more than it had in the 1950s. For biocomputing, computation becomes, in part, synonymous with complexity and parallelism. In this context, "life" is both non-human as well as "intelligent." We should be clear here: the interest of biocomputing, as well as the intelligent machine discourse, is in computer science. As we've noted, researchers in biocomputing are first and foremost interested in what molecular biology can do for computer science. Biocomputing is therefore not to be considered a subfield in biotechnology, simply because its interest is not in the medical, agricultural, or even economic use of biological components and processes. Biocomputing is interested in what biology can do for computers, rather than what computers can do for biology (the field of computational biology or bioinformatics). In this sense, biocomputing has more in common with research in supercomputing, parallel processing, and even quantum computing. While biocomputing makes use of biological components and processes, and while researchers use standard molecular biology techniques, biocomputing is predominantly interested in computer science issues. Like the earlier work of Turing and von Neumann, biocomputing approaches the organism-machine (or human-computer) relation in terms of computer science (computability, logical structure, intractability). But it reformulates the central concepts in terms of a non-human intelligence defined more in terms of complexity than in terms of anthropomorphic cognition. We can therefore see the changes in the way that the computer is related to the human as a shift from an emphasis on "Mind" (or cognition) to an emphasis on "life" (or complexity). This is not just a historical shift, for much AI research is still very much interested in the human-specific properties of cognition, intelligence, and the concept of Mind. Likewise, one can already detect in the molecular biology research of the 1960s the seeds of a view of the organism as a complex system. The key link between this emphasis on Mind vs. life is the changing artifact of the computer itself. From a historical perspective, it is obvious that the computer shifts from a room-sized, military-funded "electronic brain," to a microelectronic, industry-marketed "personal" computer. While the computer as an artifact plays many roles and takes on many meanings, the point to be made here is that, from the perspective of computer science, the modern digital computer of Turing and von Neumann conceives of computation as a cognitive function, whereas in the PC-era of biocomputing research, computation is seen as inherently non-conscious, distributed, and in parallel. The slogan of mainframe computing is "never mind that man behind the curtain"; the slogan of biocomputing is "even cells do it." [Note: It might be noted here that biocomputing's emphasis on "life" is strikingly similar to the approach of a-life, which approaches "life" as a bottom-up phenomenon emerging from simple local interactions which take on an aggregate complex effect (thus swarms and flocks are favored highly in a-life simulations). While there is indeed a comparison to be made here, a-life has not been considered because, in its originary formulation, its primary interest was biological and not computational. A-life bears more comparison with biotechnology, in its interest in the rules and principles of biological life, than it does with biocomputing, whose primary interest is in computability and computer science. The point of the comparison between biocomputing and Turing/von Neumann can in be seen as an unlikely pairing between different interests united by a concern over computability (in silico or in vivo). Likewise, the pairing of a-life and biotechnology can be seen to be united by a common concern over elucidating the principles of biological functioning (in silico or in vivo). A further distinction between biocomputing and a-life is that for the latter, computation serves to largely simulate patterns of living pheneomena (and thus serves as an aid to the study of life). By contrast, biocomputing sees computation as manifesting itself in a unique way in organisms as opposed to silicon computers. The computer does not model or simulate the organism; the organism is a computer in its own right. One cannot help but to speculate what an a-life biocomputing field would be like =96 organisms simulating organisms via computation, a kind of universal biological Turing machine.] [from Eugene Thacker, _Biomedia_ (Univ. Minnesota, forthcoming 2004] ************************************************************************* # distributed via <nettime>: no commercial use without permission # <nettime> is a moderated mailing list for net criticism, # collaborative text filtering and cultural politics of the nets # more info: majordomo@bbs.thing.net and "info nettime-l" in the msg body # archive: http://www.nettime.org contact: nettime@bbs.thing.net