Computer forensics is a part of forensic science, and is also known as digital forensics. It deals with legal evidence found in computers and other digital storage media. The main purpose of computer forensics is to show the current state of digital artifact, which include computer systems, digital storage mediums, electronic documents, or sequence of packets moving over a computer network.
This is a brief overview of what computer forensics is about.
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Computer forensic is:
Computer forensics (sometimes known as computer forensic scienceAnswers.com) is a branch of Digital_forensicspertaining to legal evidence found in computers and digital storage media. The goal of computer forensics is to examine digital media in a forensically sound manner with the aim of identifying, preserving, recovering, analyzing and presenting facts and opinions about the information.
Although it is most often associated with the investigation of a wide variety of Computer_crime, computer forensics may also be used in civil proceedings. The discipline involves similar techniques and principles to Data_recovery, but with additional guidelines and practices designed to create a legal audit trail.
Evidence from computer forensics investigations is usually subjected to the same guidelines and practices of other digital evidence. It has been used in a number of high profile cases and is becoming widely accepted as reliable within US and European court systems.
Source : http://en.wikipedia.org/wiki/Computer_forensics
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To work in digital forensics, you typically need a bachelor's degree in computer science, cybersecurity, or a related field. Specialized training or certifications in digital forensics tools and techniques, such as Certified Information Systems Security Professional (CISSP) or Certified Forensic Computer Examiner (CFCE), are also highly recommended. Additionally, hands-on experience through internships or practical training is valuable in this field.
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