Exemplo n.º 1
0
def load_tf(path):
    logs = pl.load_file(path)
    df = pd.DataFrame(l.__dict__ for l in logs)
    df = df[df.type.isin(tf_events)].drop(['level', 'loc', 'entry_type'],
                                          axis=1)
    # make sure step is int
    df['step'] = df.step.astype(int)

    # discard some internal or async op: _SOURCE, _Recv, _Send
    ignored = ['_Recv', '_Send']
    df = df[~df.kernel.isin(ignored)]
    df = df[df.op != '_SOURCE']

    steptf = df.pivot_table(values='timestamp',
                            index=['step', 'op', 'kernel'],
                            columns='type',
                            aggfunc='first').reset_index()

    # add a name column
    def name(row):
        return '{}[{}]'.format(row['op'], row['kernel'])

    steptf['name'] = steptf.apply(name, axis=1).values

    # reorder
    steptf = steptf[['step', 'name', 'op', 'kernel'] + tf_events]

    return steptf.sort_values(by=tf_events).reset_index(drop=True)
Exemplo n.º 2
0
def load_memmap(path):
    logs = pl.load_file(path)
    df = pd.DataFrame(l.__dict__ for l in logs)
    df = df[df.type == 'memmap']
    df = df.drop(['level', 'loc', 'entry_type', 'thread', 'type'], axis=1)
    # make sure size is int
    df['Size'] = df.Size.astype(int)

    return df
Exemplo n.º 3
0
def load_enditermap(path):
    df = pd.DataFrame(l.__dict__ for l in pl.load_file(path))
    #df = df[df.type == 'generic_evt']
    df = df.query(
        'type == "generic_evt" & (evt == "start_iter" | evt == "end_iter")')
    df = df.drop(['level', 'loc', 'entry_type', 'thread', 'type'], axis=1)
    df = df.dropna(how='all', axis=1)

    # get only end_iter events for memmory map
    return df[df.evt == 'end_iter']
Exemplo n.º 4
0
def load_sessiter(path, return_logs=False, parallel_workers=0):
    try:
        logs = pl.load_file(path, parallel_workers)
    except TypeError:
        logs = path

    df = pd.DataFrame(l.__dict__ for l in logs)
    df = df[df.type == 'generic_evt']
    df = df[df.evt.isin(['start_iter', 'end_iter'])]
    df = df.drop(['entry_type', 'level', 'loc', 'thread'],
                 axis=1).dropna(axis=1)

    enditers = df[df.evt == 'end_iter']
    mainiters = df[df.GraphId.isin(enditers.GraphId)]
    return mainiters
Exemplo n.º 5
0
def load_failure(path):
    logs = pl.load_file(str(path))
    df = pd.DataFrame(l.__dict__ for l in logs)
    df = df[df.type == 'optracing_evt']
    df = df.drop(['entry_type', 'level', 'loc', 'thread', 'type'], axis=1)
    # make sure step is int
    df['step'] = df.step.astype(int)

    ss = select_steps(df)
    step25 = df[df.step.isin(ss)]

    # discard unneeded event
    step25 = step25[step25.evt == 'done']

    # add a name column
    def name(row):
        return '{}[{}]'.format(row['op'], row['kernel'])

    step25['name'] = step25.apply(name, axis=1).values

    return step25
Exemplo n.º 6
0
        def wrapped(config):
            local_dir = os.path.join(config.log_dir, name)
            if not os.path.isdir(local_dir):
                return None
            log_file = os.path.join(local_dir, 'alloc.output')
            iter_file = os.path.join(local_dir, 'mem-iter.output')

            logs = None
            iters = None

            if mem:
                try:
                    logs = pl.load_file(log_file)
                except IOError:
                    pass

                if os.path.isfile(iter_file):
                    sessstart, iters = pn.parse_iterations(iter_file)

            fig = func(config, local_dir, logs, iters)
            # fig.set_size_inches(2.35, 2.35, forward=True)
            return fig
Exemplo n.º 7
0
def load_salus(path, filter_step=True):
    logs = pl.load_file(path)
    df = pd.DataFrame(l.__dict__ for l in logs)
    df = df[df.type == 'optracing_evt']
    df = df.drop(['entry_type', 'level', 'loc', 'thread', 'type'], axis=1)
    # make sure step is int
    df['step'] = df.step.astype(int)

    if filter_step:
        ss = select_steps(df)
        step25 = df[df.step.isin(ss)]
    else:
        step25 = df

    # discard some internal or async op: _SOURCE, _Recv, _Send
    ignored = ['_Recv', '_Send']
    step25 = step25[~step25.kernel.isin(ignored)]
    step25 = step25[step25.op != '_SOURCE']

    # discard unneeded event
    step25 = step25[step25.evt != 'scheduled']

    # convert evt values to columns
    step = step25.pivot_table(values='timestamp',
                              index=['step', 'op', 'kernel', 'sess'],
                              columns='evt',
                              aggfunc='last').reset_index()

    # add a name column
    def name(row):
        return '{}[{}]'.format(row['op'], row['kernel'])

    step['name'] = step.apply(name, axis=1).values

    # reorder
    step = step[['sess', 'step', 'name', 'op', 'kernel'] + salus_events]

    # sort
    return step.sort_values(by=salus_events).reset_index(drop=True)