Esempio n. 1
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    def test_meta_run_tree_contexts_and_names(self):
        train_context = {'subset': 'train'}
        val_context = {'subset': 'val'}
        empty_context = {}

        run = Run(repo=self.repo, system_tracking_interval=None)
        run.track(1, name='metric 1', context=train_context)
        run.track(1, name='metric 2', context=train_context)
        run.track(1, name='metric 1', context=val_context)
        run.track(1, name='metric 2', context=val_context)
        run.track(1, name='metric 3', context=val_context)
        run.track(0, name='metric')

        meta_container_path = os.path.join(self.repo.path, 'meta', 'chunks', run.hash)
        rc = RocksContainer(meta_container_path, read_only=True)
        tree = ContainerTreeView(rc)

        contexts = tree.view(('meta', 'chunks', run.hash, 'contexts')).collect()
        for ctx in [train_context, val_context, empty_context]:
            self.assertIn(Context(ctx).idx, contexts)
            self.assertDictEqual(contexts[Context(ctx).idx], ctx)

        traces = tree.view(('meta', 'chunks', run.hash, 'traces', Context(train_context).idx)).collect()
        self.assertSetEqual({'metric 1', 'metric 2'}, set(traces.keys()))
        traces = tree.view(('meta', 'chunks', run.hash, 'traces', Context(val_context).idx)).collect()
        self.assertSetEqual({'metric 1', 'metric 2', 'metric 3'}, set(traces.keys()))
        traces = tree.view(('meta', 'chunks', run.hash, 'traces', Context(empty_context).idx)).collect()
        self.assertSetEqual({'metric'}, set(traces.keys()))
Esempio n. 2
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def _track_legacy_run_step(run: Run, metric_name: str, context: dict, val):
    (value, step, epoch, timestamp) = val

    from aim.storage.context import Context, Metric
    if context is None:
        context = {}

    ctx = Context(context)
    metric = Metric(metric_name, ctx)

    if ctx not in run.contexts:
        run.meta_tree['contexts', ctx.idx] = ctx.to_dict()
        run.meta_run_tree['contexts', ctx.idx] = ctx.to_dict()
        run.contexts[ctx] = ctx.idx
        run._idx_to_ctx[ctx.idx] = ctx

    time_view = run.series_run_tree.view(metric.selector).array('time').allocate()
    val_view = run.series_run_tree.view(metric.selector).array('val').allocate()
    epoch_view = run.series_run_tree.view(metric.selector).array('epoch').allocate()

    max_idx = run.series_counters.get((ctx, metric_name), None)
    if max_idx == None:
        max_idx = len(val_view)
    if max_idx == 0:
        run.meta_tree['traces', ctx.idx, metric_name] = 1
    run.meta_run_tree['traces', ctx.idx, metric_name, "last"] = value

    run.series_counters[ctx, metric_name] = max_idx + 1

    time_view[step] = timestamp
    val_view[step] = value
    epoch_view[step] = epoch
Esempio n. 3
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    def track(
        self,
        value,
        name: str,
        step: int = None,
        epoch: int = None,
        *,
        context: AimObject = None,
    ):
        track_time = time()
        # TODO move to Trace
        if context is None:
            context = {}

        value = convert_to_py_number(value)

        ctx = Context(context)
        metric = Metric(name, ctx)

        if ctx not in self.contexts:
            self.meta_tree['contexts', ctx.idx] = ctx.to_dict()
            self.meta_run_tree['contexts', ctx.idx] = ctx.to_dict()
            self.contexts[ctx] = ctx.idx
            self._idx_to_ctx[ctx.idx] = ctx

        val_view = self.series_run_tree.view(
            metric.selector).array('val').allocate()
        epoch_view = self.series_run_tree.view(
            metric.selector).array('epoch').allocate()
        time_view = self.series_run_tree.view(
            metric.selector).array('time').allocate()

        max_idx = self.series_counters.get((ctx, name), None)
        if max_idx == None:
            max_idx = len(val_view)
        if max_idx == 0:
            self.meta_tree['traces', ctx.idx, name] = 1
        self.meta_run_tree['traces', ctx.idx, name, "last"] = value

        self.series_counters[ctx, name] = max_idx + 1

        # TODO perform assignments in an atomic way

        if step is None:
            step = max_idx
        val_view[step] = value
        epoch_view[step] = epoch
        time_view[step] = track_time
Esempio n. 4
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def requested_figure_object_traces_streamer(
        run: Run, requested_traces: List[TraceBase], rec_range, rec_num: int = 50
) -> List[dict]:
    for requested_trace in requested_traces:
        trace_name = requested_trace.name
        context = Context(requested_trace.context)
        trace = run.get_figure_sequence(name=trace_name, context=context)
        if not trace:
            continue

        record_range_missing = rec_range.start is None or rec_range.stop is None
        if record_range_missing:
            rec_range = IndexRange(trace.first_step(), trace.last_step() + 1)

        steps = []
        values = []
        steps_vals = trace.values.items_in_range(
            rec_range.start, rec_range.stop, rec_num
        )
        for step, val in steps_vals:
            steps.append(step)
            values.append(preparer(val, trace, step, decode=True))

        trace_dict = {
            'name': trace.name,
            'context': trace.context.to_dict(),
            'values': values,
            'iters': steps,
            'record_range': (trace.first_step(), trace.last_step() + 1),
        }
        encoded_tree = encode_tree(trace_dict)
        yield collect_run_streamable_data(encoded_tree)
Esempio n. 5
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def collect_requested_metric_traces(run: Run, requested_traces: List[TraceBase], steps_num: int = 200) -> List[dict]:
    processed_traces_list = []
    for requested_trace in requested_traces:
        metric_name = requested_trace.name
        context = Context(requested_trace.context)
        trace = run.get_metric(name=metric_name, context=context)
        if not trace:
            continue

        iters, values = trace.values.sparse_list()

        values = list(map(lambda x: x if float('-inf') < x < float('inf') and x == x else None, values))

        num_records = len(values)
        step = (num_records // steps_num) or 1
        _slice = slice(0, num_records, step)

        processed_traces_list.append({
            'name': trace.name,
            'context': trace.context.to_dict(),
            'values': sliced_array(values, _slice),
            'iters': sliced_array(iters, _slice),
        })

    return processed_traces_list
Esempio n. 6
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def custom_aligned_metrics_streamer(requested_runs: List[AlignedRunIn], x_axis: str, repo: 'Repo') -> bytes:
    for run_data in requested_runs:
        run_hash = run_data.run_id
        requested_traces = run_data.traces
        run = Run(run_hash, repo=repo, read_only=True)

        traces_list = []
        for trace_data in requested_traces:
            context = Context(trace_data.context)
            trace = run.get_metric(name=trace_data.name,
                                   context=context)
            x_axis_trace = run.get_metric(name=x_axis,
                                          context=context)
            if not (trace and x_axis_trace):
                continue

            _slice = slice(*trace_data.slice)
            iters = trace.values.sparse_numpy()[0]
            sliced_iters = sliced_np_array(iters, _slice)
            x_axis_iters, x_axis_values = collect_x_axis_data(x_axis_trace, sliced_iters)
            traces_list.append({
                'name': trace.name,
                'context': trace.context.to_dict(),
                'x_axis_values': x_axis_values,
                'x_axis_iters': x_axis_iters,
            })
        run_dict = {
            run_hash: traces_list
        }
        encoded_tree = encode_tree(run_dict)
        yield collect_run_streamable_data(encoded_tree)
Esempio n. 7
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    def test_type_compatibility_for_empty_list(self):
        run = Run(system_tracking_interval=None)
        context = {}
        ctx = Context(context)
        seq_name = 'obj_list'

        sequence_info = run.meta_run_tree.subtree(
            ('traces', ctx.idx, seq_name))
        typed_sequences_info = run.meta_tree.subtree('traces_types')

        run.track([], name=seq_name, context=context)
        self.assertEqual('list', sequence_info['dtype'])
        self.assertEqual(1, typed_sequences_info['list', ctx.idx, seq_name])
        self.assertIsNone(
            typed_sequences_info.get(('list(float)', ctx.idx, seq_name), None))

        run.track([], name=seq_name, context=context)
        self.assertEqual('list', sequence_info['dtype'])
        self.assertIsNone(
            typed_sequences_info.get(('list(float)', ctx.idx, seq_name), None))

        run.track([1.], name=seq_name, context=context)
        self.assertEqual('list(float)', sequence_info['dtype'])
        self.assertEqual(
            1, typed_sequences_info['list(float)', ctx.idx, seq_name])

        run.track([], name=seq_name, context=context)
        self.assertEqual('list(float)', sequence_info['dtype'])

        with self.assertRaises(ValueError) as cm:
            run.track([5], name=seq_name, context=context)
        exception = cm.exception
        self.assertEqual(
            f'Cannot log value \'{[5]}\' on sequence \'{seq_name}\'. Incompatible data types.',
            exception.args[0])
Esempio n. 8
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    def test_run_trace_dtype_and_last_value(self):
        run = Run()
        run.track(1.0, name='metric 1', context={})
        run.track(2.0, name='metric 1', context={})
        run.track(3.0, name='metric 1', context={})
        run.track(1.0, name='metric 1', context={'subset': 'train'})

        meta_container_path = os.path.join(self.repo.path, 'meta', 'chunks', run.hash)
        rc = RocksContainer(meta_container_path, read_only=True)
        tree = ContainerTreeView(rc)
        metric_1_dict = tree.view(('meta', 'chunks', run.hash, 'traces', Context({}).idx, 'metric 1')).collect()
        self.assertEqual(3.0, metric_1_dict['last'])
        self.assertEqual('float', metric_1_dict['dtype'])

        metric_1_dict = tree.view(('meta', 'chunks', run.hash, 'traces',
                                   Context({'subset': 'train'}).idx, 'metric 1')).collect()
        self.assertEqual(1.0, metric_1_dict['last'])
Esempio n. 9
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 def idx_to_ctx(self, idx: int) -> Context:
     ctx = Run._idx_to_ctx.get(idx)
     if ctx is not None:
         return ctx
     ctx = Context(self.meta_tree['contexts', idx])
     Run._idx_to_ctx[idx] = ctx
     self.contexts[ctx] = idx
     return ctx
Esempio n. 10
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 def setUpClass(cls) -> None:
     super().setUpClass()
     cls.image_blobs = {}
     run = Run(run_hash=cls.run_hash, read_only=True)
     empty_context = Context({})
     for step in range(10):
         for idx in range(5):
             img_view = run.series_run_tree.subtree(
                 (empty_context.idx, 'random_images', 'val', step, idx))
             cls.image_blobs[img_view['caption']] = img_view['data'].load()
Esempio n. 11
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def requested_image_traces_streamer(run: Run,
                                    requested_traces: List[TraceBase],
                                    rec_range, idx_range,
                                    rec_num: int = 50, idx_num: int = 5) -> List[dict]:
    for requested_trace in requested_traces:
        trace_name = requested_trace.name
        context = Context(requested_trace.context)
        trace = run.get_image_sequence(name=trace_name, context=context)
        if not trace:
            continue

        record_range_missing = rec_range.start is None or rec_range.stop is None
        if record_range_missing:
            rec_range = IndexRange(trace.first_step(), trace.last_step() + 1)
        index_range_missing = idx_range.start is None or idx_range.stop is None
        if index_range_missing:
            idx_range = IndexRange(0, trace.record_length() or 1)

        rec_length = trace.record_length() or 1
        idx_step = rec_length // idx_num or 1
        idx_slice = slice(idx_range.start, idx_range.stop, idx_step)

        steps_vals = trace.values.items_in_range(rec_range.start, rec_range.stop, rec_num)
        steps = []
        values = []
        for step, val in steps_vals:
            steps.append(step)
            if isinstance(val, list):
                values.append(
                    img_collection_record_to_encodable(sliced_custom_object_record(val, idx_slice), trace, step)
                )
            elif idx_slice.start == 0:
                values.append(img_record_to_encodable(val, trace, step))
            else:
                values.append([])

        trace_dict = {
            'record_range': (trace.first_step(), trace.last_step() + 1),
            'index_range': (0, rec_length),
            'name': trace.name,
            'context': trace.context.to_dict(),
            'values': values,
            'iters': steps,
        }
        encoded_tree = encode_tree(trace_dict)
        yield collect_run_streamable_data(encoded_tree)
Esempio n. 12
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    def test_series_tree_values(self):
        # sequential steps
        run = Run()
        run.track(1.0, name='metric 1', context={})
        run.track(2.0, name='metric 1', context={})
        run.track(3.0, name='metric 1', context={})

        series_container_path = os.path.join(self.repo.path, 'seqs', 'chunks', run.hash)
        rc = RocksContainer(series_container_path, read_only=True)
        tree = ContainerTreeView(rc)
        traces_dict = tree.view(('seqs', 'chunks', run.hash, Context({}).idx, 'metric 1')).collect()
        self.assertSetEqual({'val', 'epoch', 'time'}, set(traces_dict.keys()))
        self.assertEqual(3, len(traces_dict['val']))
        self.assertEqual(3, len(traces_dict['epoch']))
        self.assertEqual(3, len(traces_dict['time']))
        self.assertEqual(1.0, traces_dict['val'][0])
        self.assertEqual(2.0, traces_dict['val'][1])
        self.assertEqual(3.0, traces_dict['val'][2])

        # user-specified steps
        run = Run()
        run.track(1.0, name='metric 1', step=10, context={})
        run.track(2.0, name='metric 1', step=20, context={})
        run.track(3.0, name='metric 1', step=30, context={})

        series_container_path = os.path.join(self.repo.path, 'seqs', 'chunks', run.hash)
        rc = RocksContainer(series_container_path, read_only=True)
        tree = ContainerTreeView(rc)
        traces_dict = tree.view(('seqs', 'chunks', run.hash, Context({}).idx, 'metric 1')).collect()
        self.assertEqual(31, len(traces_dict['val']))  # last index is 30
        # sparse array
        self.assertTrue(all(x is None for x in traces_dict['val'][0:10]))
        self.assertEqual(1.0, traces_dict['val'][10])
        self.assertTrue(all(x is None for x in traces_dict['val'][11:20]))
        self.assertEqual(2.0, traces_dict['val'][20])
        self.assertTrue(all(x is None for x in traces_dict['val'][21:30]))
        self.assertEqual(3.0, traces_dict['val'][30])
        val_array_view = tree.view(('seqs', 'chunks', run.hash, Context({}).idx, 'metric 1')).array('val')
        self.assertEqual(31, len(val_array_view))
        self.assertEqual(3, len(list(val_array_view)))
        self.assertEqual(1.0, val_array_view[10])
        self.assertEqual(2.0, val_array_view[20])
        self.assertEqual(3.0, val_array_view[30])

        # user-specified steps, unordered
        run = Run()
        run.track(3.0, name='metric 1', step=30, context={})
        run.track(1.0, name='metric 1', step=10, context={})
        run.track(2.0, name='metric 1', step=20, context={})

        series_container_path = os.path.join(self.repo.path, 'seqs', 'chunks', run.hash)
        rc = RocksContainer(series_container_path, read_only=True)
        tree = ContainerTreeView(rc)
        traces_dict = tree.view(('seqs', 'chunks', run.hash, Context({}).idx, 'metric 1')).collect()
        self.assertEqual(31, len(traces_dict['val']))  # last index is 30
        # sparse array
        self.assertTrue(all(x is None for x in traces_dict['val'][0:10]))
        self.assertEqual(1.0, traces_dict['val'][10])
        self.assertTrue(all(x is None for x in traces_dict['val'][11:20]))
        self.assertEqual(2.0, traces_dict['val'][20])
        self.assertTrue(all(x is None for x in traces_dict['val'][21:30]))
        self.assertEqual(3.0, traces_dict['val'][30])
Esempio n. 13
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    def _track_impl(
        self,
        value,
        track_time: float,
        name: str,
        step: int = None,
        epoch: int = None,
        *,
        context: AimObject = None,
    ):
        if context is None:
            context = {}

        if is_number(value):
            val = convert_to_py_number(value)
        elif isinstance(value, (CustomObject, list, tuple)):
            val = value
        else:
            raise ValueError(
                f'Input metric of type {type(value)} is neither python number nor AimObject'
            )

        dtype = get_object_typename(val)

        ctx = Context(context)
        sequence = SequenceDescriptor(name, ctx)

        if ctx not in self.contexts:
            self.meta_tree['contexts', ctx.idx] = context
            self.meta_run_tree['contexts', ctx.idx] = context
            self.contexts[ctx] = ctx.idx
            self._idx_to_ctx[ctx.idx] = ctx

        seq_info = self.sequence_info[sequence.selector]
        if not seq_info.initialized:
            seq_info.val_view = self.series_run_tree.subtree(
                sequence.selector).array('val').allocate()
            seq_info.epoch_view = self.series_run_tree.subtree(
                sequence.selector).array('epoch').allocate()
            seq_info.time_view = self.series_run_tree.subtree(
                sequence.selector).array('time').allocate()

            seq_info.count = len(seq_info.val_view)
            seq_info.sequence_dtype = self.meta_run_tree.get(
                ('traces', ctx.idx, name, 'dtype'), None)
            if seq_info.count != 0 and seq_info.sequence_dtype is None:  # continue tracking on old sequence
                seq_info.sequence_dtype = 'float'
            seq_info.initialized = True

        if seq_info.sequence_dtype is not None:

            def update_trace_dtype(new_dtype):
                self.meta_tree['traces_types', new_dtype, ctx.idx, name] = 1
                seq_info.sequence_dtype = self.meta_run_tree[
                    'traces', ctx.idx, name, 'dtype'] = new_dtype

            compatible = check_types_compatibility(dtype,
                                                   seq_info.sequence_dtype,
                                                   update_trace_dtype)
            if not compatible:
                raise ValueError(
                    f'Cannot log value \'{value}\' on sequence \'{name}\'. Incompatible data types.'
                )

        step = step or seq_info.count

        if seq_info.count == 0:
            self.meta_tree['traces_types', dtype, ctx.idx, name] = 1
            seq_info.sequence_dtype = self.meta_run_tree['traces', ctx.idx,
                                                         name, 'dtype'] = dtype
            self.meta_run_tree['traces', ctx.idx, name, 'first_step'] = step

        self.meta_run_tree['traces', ctx.idx, name, 'last'] = val
        self.meta_run_tree['traces', ctx.idx, name, 'last_step'] = step
        if isinstance(val, (tuple, list)):
            record_max_length = self.meta_run_tree.get(
                ('traces', ctx.idx, name, 'record_max_length'), 0)
            self.meta_run_tree['traces', ctx.idx, name,
                               'record_max_length'] = max(
                                   record_max_length, len(val))

        # TODO perform assignments in an atomic way
        seq_info.val_view[step] = val
        seq_info.epoch_view[step] = epoch
        seq_info.time_view[step] = track_time
        seq_info.count = seq_info.count + 1