def compare_foodLR_xpos(
			rootdir : Path = 'data/run/',
			bodydat : Path = 'body.dat',
			# params : Path = 'params.json',
			idx : Optional[int] = None,
			to_compare : Tuple[str,str] = ('food_left','food_right'),
			show : bool = True,
		):
		# we will put the data in here
		dct_weight_to_xpos_foodL : Dict[float,float] = dict()
		dct_weight_to_xpos_foodR : Dict[float,float] = dict()

		# get all the directories, loop over them
		lst_wgt_dirs : List[Path] = os.listdir(rootdir)
		# filter out only the directories
		lst_wgt_dirs = list(filter(lambda p : os.path.isdir(joinPath(rootdir, p)), lst_wgt_dirs))
		
		count : int = 1
		count_max : int = len(lst_wgt_dirs)

		for wgt_dir in lst_wgt_dirs:
			# figure out the weight
			wgt : float = float(wgt_dir.split('_')[-1])
			print(f'  >>  loading data for weight = {wgt} \t ({count} / {count_max})')
			
			# get data for both sides
			data_L : NDArray[(Any,Any), CoordsRotArr] = read_body_data(joinPath(rootdir,wgt_dir,to_compare[0],bodydat))
			data_R : NDArray[(Any,Any), CoordsRotArr] = read_body_data(joinPath(rootdir,wgt_dir,to_compare[1],bodydat))
			
			# get the index -- this only happens once, if at all
			if idx is None:
				idx = data_L.shape[0] - 1

			# store distance
			dct_weight_to_xpos_foodL[wgt] = data_L[idx][0]['x']
			dct_weight_to_xpos_foodR[wgt] = data_R[idx][0]['x']

			count += 1

		# plot
		plt.plot(*split_dict_arrs(dct_weight_to_xpos_foodL), 'o', label = 'food left')
		plt.plot(*split_dict_arrs(dct_weight_to_xpos_foodR), 'o', label = 'food right')
		plt.xlabel('connection strength')
		plt.ylabel('x-axis position at end of run')
		plt.title(rootdir)

		plt.legend()

		if show:
			plt.show()
Exemplo n.º 2
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def plot_act(
    rootdir: str = 'data/run/act.dat',
    names: Union[str, List[str], None] = None,
    strict_fname: bool = True,
    show: bool = True,
):
    """plot activations of worm neurons
	
	### Parameters:
	 - `rootdir : str`   
	   file to look for, expects tsv forums
	   (defaults to `'data/run/act.dat'`)
	 - `names : Union[str,List[str],None]`   
	   comma-separated (or regular) list of strings. will attempt to match using regex
	   (defaults to `None`)
	 - `strict_fname : bool`   
	   set this to false if you want to use a rootdir other than `'act.dat'`
	   (defaults to `True`)
	"""

    # fix rootdir if only dir given
    if rootdir.endswith('/') or (strict_fname
                                 and not rootdir.endswith('act.dat')):
        rootdir = joinPath(rootdir, 'act.dat')

    print(rootdir)

    # split names
    if isinstance(names, str):
        names = names.split(',')

    print(f'> raw names: {names}')

    # read data
    data_raw = pd.read_csv(rootdir, sep=' ').to_records(index=False)
    fields_raw: List[str] = list(data_raw.dtype.fields.keys())
    # data_raw = np.genfromtxt(rootdir, delimiter = ' ', dtype = np.float).T
    # print(data_raw.shape, fields_raw)

    names_new: List[str] = pattern_match_names(names, fields_raw)

    # dont plot the time
    if 't' in names_new:
        names_new.remove('t')

    # plot
    T: NDArray = data_raw['t']
    V: Dict[str, NDArray] = {x: data_raw[x] for x in names_new}

    for v_name, v_arr in V.items():
        # print(v_name, v_arr.shape, v_arr.dtype)
        plt.plot(T, v_arr, label=v_name)

    plt.title(rootdir)
    plt.xlabel('time')
    plt.ylabel('neuron output')

    plt.legend()
    if show:
        plt.show()
Exemplo n.º 3
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def run_genetic_algorithm_loadJSON(cfgfile: Path):

    raise NotImplementedError(
        "this function wont work yet due to some parameters being callables")

    # get the specified json file
    with open(cfgfile, 'r') as f_json:
        config: Dict[str, Any] = json.load(f_json)

    # copy the read-in contents to the run's folder
    if "rootdir" not in config:
        raise KeyError("missing 'rootdir' key!")

    mkdir(config["rootdir"])
    with open(joinPath(config["rootdir"], 'run_config.json'), 'w') as f_out:
        json.dump(config, f_out)

    # run the main function, passing params
    run_genetic_algorithm(**config)
Exemplo n.º 4
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def plot_net(
    params: str,
    nrvsys: Union[str, List[str]] = ["Head", "VentralCord"],
    strict_fname: bool = False,
    show_weights: bool = True,
    spring_layout: bool = False,
):
    if params.endswith('/') or (strict_fname
                                and not params.endswith('params.json')):
        params = joinPath(params, 'params.json')

    # figure out which nervous systems to plot
    if isinstance(nrvsys, str):
        nrvsys = nrvsys.split(',')

    # load network
    with open(params, 'r') as fin:
        data = json.load(fin)

    # create network
    G = nx.DiGraph()
    edges_byType: Dict[str, list] = {
        'ele': list(),
        'chem': list(),
    }
    weights_byType: Dict[str, dict] = {
        'ele': dict(),
        'chem': dict(),
    }

    for ns in nrvsys:
        for nrn in data[ns]["neurons"]:
            G.add_node(nrn)

        if ("n_units" in data[ns]) and (int(data[ns]["n_units"]) > 1):
            raise NotImplementedError()
            n_units = int(data[ns]["n_units"])
            for u in range(n_units):
                for conn in data[ns]["connections"]:
                    G.add_edge(conn["from"], conn["to"])

        else:
            for conn in data[ns]["connections"]:
                G.add_edge(conn["from"], conn["to"])
                edges_byType[conn["type"]].append((conn["from"], conn["to"]))
                weights_byType[conn["type"]][(conn["from"],
                                              conn["to"])] = conn["weight"]

    print(G.nodes())
    print(G.edges())

    if spring_layout:
        pos: Dict[str, Tuple[float, float]] = nx.spring_layout(G)
    else:
        pos = DEFAULT_POS

    nx.draw_networkx_nodes(G, pos, node_size=1500, node_color='#E3FFB2')
    nx.draw_networkx_labels(G, pos)
    # draw chem (directed)
    nx.draw_networkx_edges(
        G,
        pos,
        edgelist=edges_byType['chem'],
        edge_color='r',
        arrows=True,
        arrowsize=30,
        connectionstyle='arc3,rad=0.1',
        min_target_margin=20,
    )

    # draw ele (undirected)
    nx.draw_networkx_edges(G,
                           pos,
                           edgelist=edges_byType['ele'],
                           edge_color='b',
                           arrows=False)

    # draw weights
    if show_weights:
        nx.draw_networkx_edge_labels(
            G,
            pos,
            edge_labels=weights_byType['chem'],
        )
        nx.draw_networkx_edge_labels(
            G,
            pos,
            edge_labels=weights_byType['ele'],
        )

    plt.title(params)
    plt.show()
    def multi_food_run(
        rootdir: Path = 'data/run/',
        foodPos: Union[None, str, Tuple[float, float]] = (-0.003, 0.005),
        angle: Optional[float] = 1.57,
        **kwargs,
    ):
        """runs multiple trials of the simulation with food on left, right, and absent
		
		runs each of the following:
		```python
		dct_runs : Dict[str,str] = {
			'food_none/' : 'DISABLE',
			'food_left/' : f'{-food_x},{food_y}',
			'food_right/' : f'{food_x},{food_y}',
		}
		```
		with `food_x`, `food_y` extracted from `foodPos` parameter, or `params` json file if `foodPos is None`
		
		### Parameters:
		 - `rootdir : Path`   
		   output path, will create folders for each food position inside this directory
		   (defaults to `'data/run/'`)
		 - `foodPos : Optional[str]`   
		   food position tuple
		   (defaults to `None`)
		
		### Raises:
		 - `TypeError` : if `foodPos` cant be read
		 - `KeyError` : shouldn't ever be raised -- state *should* be inacessible
		"""

        # get food position
        if foodPos is None:
            # from params json
            with open(kwargs['params'], 'r') as fin_json:
                params_json: dict = json.load(fin_json)

                food_x = params_json["ChemoReceptors"]["foodPos"]["x"]
                food_y = params_json["ChemoReceptors"]["foodPos"]["y"]
        else:
            # or from CLI (takes priority, if given)
            if isinstance(foodPos, str):
                food_x, food_y = foodPos.split(',')
            elif isinstance(foodPos, tuple):
                food_x, food_y = foodPos
            else:
                raise TypeError(
                    f'couldnt read foodpos, expected str or tuple:   {foodPos}'
                )
            food_x = float(food_x)
            food_y = float(food_y)

        # take absolute value for left/right to match
        food_x = abs(food_x)

        # make sure we dont pass the food pos further down
        if 'foodPos' in kwargs:
            raise KeyError(
                f'"foodPos" still specified? this should be inacessible')

        # create output dir
        mkdir(rootdir)

        # save state
        dump_state(locals(), rootdir)

        # set up the different runs
        dct_runs: Dict[str, str] = {
            'food_none/': 'DISABLE',
            'food_left/': f'{-food_x},{food_y}',
            'food_right/': f'{food_x},{food_y}',
        }

        # dictionary of running processes
        dct_procs: dict = dict()

        # start each process
        for name, foodPos in dct_runs.items():

            # make the output dir
            out_path: str = joinPath(rootdir, name)

            mkdir(out_path)

            # set up the command by passing kwargs down
            cmd: List[str] = genCmd_singlerun(
                output=out_path,
                foodPos=foodPos,
                angle=angle,
                **kwargs,
            ).split(' ')

            print(cmd)

            # run the process, write stderr and stdout to the log file
            with open(out_path + 'log.txt', 'w') as f_log:
                p = subprocess.Popen(
                    cmd,
                    stderr=subprocess.STDOUT,
                    stdout=f_log,
                )

            # store process in dict for later
            dct_procs[name] = p

        # wait for all of them to finish
        for name, p in dct_procs.items():
            p.wait()

            if p.returncode:
                print(
                    f'  >>  ERROR: process terminated with exit code 1, check log.txt for:\n\t{str(p.args)}'
                )
            else:
                print(f'  >>  process complete: {name}')
    def sweep_param(
        rootdir: Path = 'data/run/',
        param_key: Union[tuple, str] = 'ChemoReceptors.alpha',
        param_range: Union[dict, tuple, str] = '0.0,1.0,lin,3',
        params: Path = 'input/params.json',
        multi_food: bool = False,
        ASK_CONTINUE: bool = True,
        **kwargs,
    ):

        # create output dir
        mkdir(rootdir)

        # save state
        dump_state(locals(), rootdir)

        # open base json
        with open(params, 'r') as fin_json:
            params_data: dict = json.load(fin_json)

        # convert input string-lists
        # (useful as shorthand when using python-fire CLI)

        # split up path to parameter by dot
        param_key_tup: Tuple[str,
                             ...] = (tuple(param_key.split('.')) if isinstance(
                                 param_key, str) else tuple(param_key))
        param_key_sdot: str = '.'.join(param_key_tup)

        # convert into a dict
        param_range_dict: Dict[str, Any] = strList_to_dict(
            in_data=param_range,
            keys_list=['min', 'max', 'scale', 'npts'],
            type_map={
                'min': float,
                'max': float,
                'npts': int
            },
        )

        print(f'>> parameter to modify: {param_key_sdot}')
        print(f'>> range of values: {param_range_dict}')

        param_fin_dict: dict = params_data
        param_fin_key: str = ''
        try:
            param_fin_dict, param_fin_key = keylist_access_nested_dict(
                params_data, param_key_tup)
        except KeyError as ex:
            print(
                f'\n{param_key_sdot} was not a valid parameter for the params file read from {params}. Be sure that the parameter you want to modify exists in the json file.\n'
            )
            raise ex
            exit(1)

        # figure out the range of values to try
        param_vals: NDArray = SPACE_GENERATOR_MAPPING[
            param_range_dict['scale']](
                param_range_dict['min'],
                param_range_dict['max'],
                param_range_dict['npts'],
            )

        count: int = 1
        count_max: int = len(param_vals)

        print(
            f'> will modify parameter: {param_key_sdot}\n\t>>  {param_fin_dict}\t-->\t{param_fin_key}'
        )
        print(f'> will try {len(param_vals)} values:\n\t>>  {param_vals}')
        if ASK_CONTINUE:
            input('press enter to continue...')

        # run for each value of connection strength
        for pv in param_vals:
            print(f'> running for param val {pv} \t ({count} / {count_max})')

            # make dir
            outpath: str = f"{rootdir}{param_key_sdot}_{pv:.5}/"
            outpath_params: str = joinPath(outpath, 'in-params.json')
            mkdir(outpath)

            # set value
            param_fin_dict[param_fin_key] = pv

            # save modified params
            with open(outpath_params, 'w') as fout:
                json.dump(params_data, fout, indent='\t')

            # run
            if multi_food:
                Launchers.multi_food_run(rootdir=outpath,
                                         params=outpath_params,
                                         **kwargs)
            else:
                cmd: str = genCmd_singlerun(
                    output=outpath,
                    params=outpath_params,
                    **kwargs,
                )

                print(cmd)

                # run the process, write stderr and stdout to the log file
                with open(outpath + 'log.txt', 'w') as f_log:
                    p = subprocess.Popen(
                        cmd,
                        stderr=subprocess.STDOUT,
                        stdout=f_log,
                    )

            count += 1
    def sweep_conn_weight(
        rootdir: Path = 'data/run/',
        conn_key: Union[dict, tuple, str] = 'Head,AWA,RIM,chem',
        conn_range: Union[dict, tuple, str] = '0.0,1.0,lin,3',
        params: Path = 'input/params.json',
        special_scaling_map: Optional[Dict[str, float]] = None,
        ASK_CONTINUE: bool = True,
        **kwargs,
    ):

        # create output dir
        mkdir(rootdir)

        # save state
        dump_state(locals(), rootdir)

        # open base json
        with open(params, 'r') as fin_json:
            params_data: dict = json.load(fin_json)

        # convert input string-lists to dictionaries
        # (useful as shorthand when using python-fire CLI)
        conn_key = strList_to_dict(
            in_data=conn_key,
            keys_list=['NS', 'from', 'to', 'type'],
        )

        conn_range = strList_to_dict(
            in_data=conn_range,
            keys_list=['min', 'max', 'scale', 'npts'],
            type_map={
                'min': float,
                'max': float,
                'npts': int
            },
        )

        print(f'>> connection to modify: {conn_key}')
        print(f'>> range of values: {conn_range}')

        # find the appropriate connection to modify
        conn_idxs: List[Optional[int]] = find_conn_idx_regex(
            params_data=params_data,
            conn_key=conn_key,
            # special_scaling_map = special_scaling_map,
        )

        if None in conn_idxs:
            # REVIEW: this is probably not good behavior
            # if the connection doesnt exist, add it
            params_data[conn_key['NS']]['connections'].append({
                'from':
                conn_key['from'],
                'to':
                conn_key['to'],
                'type':
                conn_key['type'],
                'weight':
                float('nan'),
            })

            # if the connection still doesn't exist, something has gone wrong
            conn_idxs = [
                find_conn_idx(
                    params_data[conn_key['NS']]['connections'],
                    conn_key,
                )
            ]

        if (None in conn_idxs) or (len(conn_idxs) == 0):
            raise KeyError(
                f'couldnt find connection index -- this state should be innaccessible.   list:  {conn_idxs}'
            )

        # figure out the range of values to try
        weight_vals: NDArray = SPACE_GENERATOR_MAPPING[conn_range['scale']](
            conn_range['min'],
            conn_range['max'],
            conn_range['npts'],
        )

        count: int = 1
        count_max: int = len(weight_vals)

        print('> will modify connections:')
        for cidx in conn_idxs:
            print('\t>>  ' +
                  str(params_data[conn_key['NS']]['connections'][cidx]))
        print('> will try weights:')
        print(f'\t>>  {weight_vals}')

        if ASK_CONTINUE:
            input('press enter to continue...')

        # set up for scaling the weight
        wgt_scale: float = 1.0
        if special_scaling_map is None:
            special_scaling_map = dict()

        # run for each value of connection strength
        for wgt in weight_vals:
            print(f'> running for weight {wgt} \t ({count} / {count_max})')
            # make dir
            outpath: str = f"{rootdir}{conn_key['from']}-{conn_key['to'].replace('*','x')}_{wgt:.5}/"
            outpath_params: str = joinPath(outpath, 'in-params.json')
            mkdir(outpath)

            # set weights
            for cidx in conn_idxs:
                # scale the weight if the neuron name is in the map
                cidx_nrn_to: str = params_data[
                    conn_key['NS']]['connections'][cidx]['to']
                if cidx_nrn_to in special_scaling_map:
                    wgt_scale = special_scaling_map[cidx_nrn_to]
                else:
                    wgt_scale = 1.0

                # set the new weight
                params_data[conn_key['NS']]['connections'][cidx][
                    'weight'] = wgt * wgt_scale

            # save modified params
            with open(outpath_params, 'w') as fout:
                json.dump(params_data, fout, indent='\t')

            # run
            Launchers.multi_food_run(rootdir=outpath,
                                     params=outpath_params,
                                     **kwargs)

            count += 1