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[{"model": "core.projectfund", "pk": 24566, "fields": {"project": 1753, "organisation": 4, "amount": 58127, "start_date": "2021-01-01", "end_date": "2021-03-30", "raw_data": 38715}}]
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[{"model": "core.projectperson", "pk": 53797, "fields": {"project": 1753, "person": 11669, "role": "PM_PER"}}]
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{"external_links": []}
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[{"model": "core.projectfund", "pk": 16669, "fields": {"project": 1753, "organisation": 4, "amount": 58127, "start_date": "2021-01-01", "end_date": "2021-03-30", "raw_data": 7533}}]
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[{"model": "core.projectorganisation", "pk": 62839, "fields": {"project": 1753, "organisation": 2111, "role": "PARTICIPANT_ORG"}}]
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[{"model": "core.projectorganisation", "pk": 62838, "fields": {"project": 1753, "organisation": 2111, "role": "LEAD_ORG"}}]
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[{"model": "core.projectperson", "pk": 38830, "fields": {"project": 1753, "person": 2490, "role": "PM_PER"}}]
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{"title": ["", "Maritime ANalyTics Intelligence System - MANTIS"], "description": ["", "\nPublic description\nMANTIS is a project focused on using geospatial data to address new and emerging challenges facing shipping and maritime navigational services within UK waters. The challenge is posed by the General Lighthouse Authority (and its sister organisation, Trinity House) who, under the jurisdiction of the Department for Transport, provide maritime aids to navigation services for the safety of all mariners, efficiency of maritime trade and protection of the marine environment throughout waters of the British Isles.\n\nThe need is to better understand, and then predict, the impacts to shipping of the UK's stated aim to significantly increase off-shore wind farming capacity.\n\nThis project will achieve this through the innovative analysis of ship movements and positions, throughout UK waters over periods of time, and utilising AI and machine learning technologies to identify evolving patterns of movement, leading to predictive outcomes for proposed future wind farm implementations.\n\nLead applicant, Emu Analytics, is a young, UK-based micro-SME with extensive experience in creating innovative geospatial analytics and visualisation solutions designed for big, fast and real-time data.\n\nIts solutions are currently used extensively within the aviation sector, with notable users including IAG (British Airways), Heathrow and the Civil Aviation Authority, wherein analysis of aircraft behaviours and patterns within UK airspace are undertaken, using big geospatial aircraft positioning data.\n\nMANTIS will seek to adapt, evolve and transfer this expertise and capability from aviation to maritime, utilising the comparable maritime sector ship positional data, and ultimately producing a powerful, commercial grade solution that could be utilised by a broad range of public and private sector organisations.\n\n"], "extra_text": ["", "\n\n\n\n"], "status": ["", "Closed"]}
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{"external_links": [6354]}
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April 11, 2022, 1:47 a.m. |
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[{"model": "core.project", "pk": 1753, "fields": {"owner": null, "is_locked": false, "coped_id": "13cb4dd3-310c-4695-afcd-13ad59af58e9", "title": "", "description": "", "extra_text": "", "status": "", "start": null, "end": null, "raw_data": 7516, "created": "2022-04-11T01:32:27.180Z", "modified": "2022-04-11T01:32:27.180Z", "external_links": []}}]
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