9 盛泳潘 When Knowledge Graph meet Python
Knowledge Graph meet Python Yongpan Sheng 目录 CONTENTS The Pipeline of Knowledge Graph Construction by Data- driven manner Python Tools for Graph Data Management Domain-specific Knowledge Graph Construction relation, object> Mapping from natural questions to structured queries executable on knowledge graph (机器的潜台词:“我”会推理,so easy !)。 所以,通俗的来说,在AI system中:要么从原有的知识体系中直接提取信息来使用,要 么进行推理。 将知识融合在机器中,使机器能够利 BigKE将显著提升机器的认知水平。 Preliminaries 本页PPT借鉴于复旦大学肖仰华老师《大数据时代的知识工程与知识管理》 Knowledge Graph – KG引领KE复兴 Knowledge graph is a large-scale semantic network consisting of entities and concepts as well as0 码力 | 57 页 | 1.98 MB | 1 年前3Celery 3.1 Documentation
additional components can be defined by the user. The worker is built up using “bootsteps” — a dependency graph enabling fine grained control of the worker’s internals. 8 Chapter 2. Contents Celery Documentation exceptions import Reject @app.task(bind=True, acks_late=True) def render_scene(self, path): file = get_file(path) try: renderer.render_scene(file) # if the file is too big to fit in memory # we reject it so children[0].get() 64 The result instance also has a collect() method that treats the result as a graph, enabling you to iterate over the results: >>> list(res.collect()) [(0 码力 | 607 页 | 2.27 MB | 1 年前3Celery 3.1 Documentation
additional components can be defined by the user. The worker is built up using “bootsteps” — a dependency graph enabling fine grained control of the worker’s internals. Framework Integration Celery is easy to import Reject @app.task(bind=True, acks_late=True) def render_scene(self, path): file = get_file(path) try: renderer.render_scene(file) # if the file is too big to fit in memory # we children[0].get() 64 The result instance also has a collect() method that treats the result as a graph, enabling you to iterate over the results: >>> list(res.collect()) [(0 码力 | 887 页 | 1.22 MB | 1 年前3Celery v4.0.1 Documentation
additional components can be defined by the user. The worker is built up using “bootsteps” — a dependency graph enabling fine grained control of the worker’s internals. Framework Integration Celery is easy to import Reject @app.task(bind=True, acks_late=True) def render_scene(self, path): file = get_file(path) try: renderer.render_scene(file) # if the file is too big to fit in memory # we children[0].get() 64 The result instance also has a collect() method that treats the result as a graph, enabling you to iterate over the results: >>> list(res.collect()) [(0 码力 | 1040 页 | 1.37 MB | 1 年前3Celery v4.0.2 Documentation
additional components can be defined by the user. The worker is built up using “bootsteps” — a dependency graph enabling fine grained control of the worker’s internals. Framework Integration Celery is easy to import Reject @app.task(bind=True, acks_late=True) def render_scene(self, path): file = get_file(path) try: renderer.render_scene(file) # if the file is too big to fit in memory # we children[0].get() 64 The result instance also has a collect() method that treats the result as a graph, enabling you to iterate over the results: >>> list(res.collect()) [(0 码力 | 1042 页 | 1.37 MB | 1 年前3Celery v4.1.0 Documentation
additional components can be defined by the user. The worker is built up using “bootsteps” — a dependency graph enabling fine grained control of the worker’s internals. Framework Integration Celery is easy to import Reject @app.task(bind=True, acks_late=True) def render_scene(self, path): file = get_file(path) try: renderer.render_scene(file) # if the file is too big to fit in memory # we children[0].get() 64 The result instance also has a collect() method that treats the result as a graph, enabling you to iterate over the results: >>> list(res.collect()) [(0 码力 | 1057 页 | 1.35 MB | 1 年前3Celery 4.0 Documentation
additional components can be defined by the user. The worker is built up using “bootsteps” — a dependency graph enabling fine grained control of the worker’s internals. Framework Integration Celery is easy to import Reject @app.task(bind=True, acks_late=True) def render_scene(self, path): file = get_file(path) try: renderer.render_scene(file) # if the file is too big to fit in memory # we children[0].get() 64 The result instance also has a collect() method that treats the result as a graph, enabling you to iterate over the results: >>> list(res.collect()) [(0 码力 | 1042 页 | 1.37 MB | 1 年前3Celery 3.0 Documentation
additional components can be defined by the user. The worker is built up using “bootsteps” — a dependency graph enabling fine grained control of the worker’s internals. Framework Integration Celery is easy to exceptions import Reject @app.task(bind=True, acks_late=True) def render_scene(self, path): file = get_file(path) try: renderer.render_scene(file) # if the file is too big to fit in memory # we reject it so children[0].get() 64 The result instance also has a collect() method that treats the result as a graph, enabling you to iterate over the results: >>> list(res.collect()) [(0 码力 | 703 页 | 2.60 MB | 1 年前3Celery v4.1.0 Documentation
additional components can be defined by the user. The worker is built up using “bootsteps” — a dependency graph enabling fine grained control of the worker’s internals. Framework Integration Celery is easy to exceptions import Reject @app.task(bind=True, acks_late=True) def render_scene(self, path): file = get_file(path) try: renderer.render_scene(file) 60 Chapter 2. Contents Celery Documentation, Release 4.1.0 children[0].get() 64 The result instance also has a collect() method that treats the result as a graph, enabling you to iterate over the results: >>> list(res.collect()) [(0 码力 | 714 页 | 2.63 MB | 1 年前3Celery v4.0.1 Documentation
additional components can be defined by the user. The worker is built up using “bootsteps” — a dependency graph enabling fine grained control of the worker’s internals. Framework Integration Celery is easy to exceptions import Reject @app.task(bind=True, acks_late=True) def render_scene(self, path): file = get_file(path) try: renderer.render_scene(file) 60 Chapter 2. Contents Celery Documentation, Release 4.0.1 children[0].get() 64 The result instance also has a collect() method that treats the result as a graph, enabling you to iterate over the results: >>> list(res.collect()) [(0 码力 | 705 页 | 2.63 MB | 1 年前3共 167 条- 1
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